DETECTING ANOMALOUS BEHAVIOR OF A DEVICE
Detecting anomalous behavior of a device, including: generating, using information describing historical activity associated with a user device, a trained model for detecting normal activity for the user device; gathering information describing current activity associated with the user device; and determining, by using the information describing current activity associated with the user device as input to the trained model, whether the user device has deviated from normal activity.
This is a continuation in-part application for patent entitled to a filing date and claiming the benefit of earlier-filed U.S. patent application Ser. No. 17/196,887, filed Mar. 9, 2021, herein incorporated by reference in its entirety, which is a continuation of U.S. Pat. No. 10,986,114, issued Mar. 31, 2021, which is a continuation of U.S. Pat. No. 10,419,469, issued Sep. 17, 2019, which claims priority from U.S. Provisional Applications 62/590,986, filed Nov. 27, 2017 and 62/650,971, filed Mar. 30, 2018; this application also claims priority from U.S. Provisional Application No. 63/240,818, filed Sep. 3, 2021.
BRIEF DESCRIPTION OF THE DRAWINGSThe accompanying drawings illustrate various embodiments and are a part of the specification. The illustrated embodiments are merely examples and do not limit the scope of the disclosure. Throughout the drawings, identical or similar reference numbers designate identical or similar elements.
Various illustrative embodiments are described herein with reference to the accompanying drawings. It will, however, be evident that various modifications and changes may be made thereto, and additional embodiments may be implemented, without departing from the scope of the invention as set forth in the claims. For example, certain features of one embodiment described herein may be combined with or substituted for features of another embodiment described herein. The description and drawings are accordingly to be regarded in an illustrative rather than a restrictive sense.
Cloud environment 14 may include any suitable network-based computing environment as may serve a particular application. For example, cloud environment 14 may be implemented by one or more compute resources provided and/or otherwise managed by one or more cloud service providers, such as Amazon Web Services (AWS), Google Cloud Platform (GCP), Microsoft Azure, and/or any other cloud service provider configured to provide public and/or private access to network-based compute resources.
Compute assets 16 may include, but are not limited to, containers (e.g., container images, deployed and executing container instances, etc.), virtual machines, workloads, applications, processes, physical machines, compute nodes, clusters of compute nodes, software runtime environments (e.g., container runtime environments), and/or any other virtual and/or physical compute resource that may reside in and/or be executed by one or more computer resources in cloud environment 14. In some examples, one or more compute assets 16 may reside in one or more datacenters.
A compute asset 16 may be associated with (e.g., owned, deployed, or managed by) a particular entity, such as a customer or client of cloud environment 14 and/or data platform 12. Accordingly, for purposes of the discussion herein, cloud environment 14 may be used by one or more entities.
Data platform 12 may be configured to perform one or more data security monitoring and/or remediation services, compliance monitoring services, anomaly detection services, DevOps services, compute asset management services, and/or any other type of data analytics service as may serve a particular implementation. Data platform 12 may be managed or otherwise associated with any suitable data platform provider, such as a provider of any of the data analytics services described herein. The various resources included in data platform 12 may reside in the cloud and/or be located on-premises and be implemented by any suitable combination of physical and/or virtual compute resources, such as one or more computing devices, microservices, applications, etc.
Data ingestion resources 18 may be configured to ingest data from cloud environment 14 into data platform 12. This may be performed in various ways, some of which are described in detail herein. For example, as illustrated by arrow 26, data ingestion resources 18 may be configured to receive the data from one or more agents deployed within cloud environment 14, utilize an event streaming platform (e.g., Kafka) to obtain the data, and/or pull data (e.g., configuration data) from cloud environment 14. In some examples, data ingestion resources 18 may obtain the data using one or more agentless configurations.
The data ingested by data ingestion resources 18 from cloud environment 14 may include any type of data as may serve a particular implementation. For example, the data may include data representative of configuration information associated with compute assets 16, information about one or more processes running on compute assets 16, network activity information, information about events (creation events, modification events, communication events, user-initiated events, etc.) that occur with respect to compute assets 16, etc. In some examples, the data may or may not include actual customer data processed or otherwise generated by compute assets 16.
As illustrated by arrow 28, data ingestion resources 18 may be configured to load the data ingested from cloud environment 14 into a data store 30. Data store 30 is illustrated in
Data store 30 may be implemented by any suitable data warehouse, data lake, data mart, and/or other type of database structure as may serve a particular implementation. Such data stores may be proprietary or may be embodied as vendor provided products or services such as, for example, Snowflake, Google BigQuery, Druid, Amazon Redshift, IBM Db2, Dremio, Databricks Lakehouse Platform, Cloudera, Azure Synapse Analytics, and others.
Although the examples described herein largely relate to embodiments where data is collected from agents and ultimately stored in a data store such as those provided by Snowflake, in other embodiments data that is collected from agents and other sources may be stored in different ways. For example, data that is collected from agents and other sources may be stored in a data warehouse, data lake, data mart, and/or any other data store.
A data warehouse may be embodied as an analytic database (e.g., a relational database) that is created from two or more data sources. Such a data warehouse may be leveraged to store historical data, often on the scale of petabytes. Data warehouses may have compute and memory resources for running complicated queries and generating reports. Data warehouses may be the data sources for business intelligence (‘BI’) systems, machine learning applications, and/or other applications. By leveraging a data warehouse, data that has been copied into the data warehouse may be indexed for good analytic query performance, without affecting the write performance of a database (e.g., an Online Transaction Processing (‘OLTP’) database). Data warehouses also enable the joining data from multiple sources for analysis. For example, a sales OLTP application probably has no need to know about the weather at various sales locations, but sales predictions could take advantage of that data. By adding historical weather data to a data warehouse, it would be possible to factor it into models of historical sales data.
Data lakes, which store files of data in their native format, may be considered as “schema on read” resources. As such, any application that reads data from the lake may impose its own types and relationships on the data. Data warehouses, on the other hand, are “schema on write,” meaning that data types, indexes, and relationships are imposed on the data as it is stored in an enterprise data warehouse (EDW). “Schema on read” resources may be beneficial for data that may be used in several contexts and poses little risk of losing data. “Schema on write” resources may be beneficial for data that has a specific purpose, and good for data that must relate properly to data from other sources. Such data stores may include data that is encrypted using homomorphic encryption, data encrypted using privacy-preserving encryption, smart contracts, non-fungible tokens, decentralized finance, and other techniques.
Data marts may contain data oriented towards a specific business line whereas data warehouses contain enterprise-wide data. Data marts may be dependent on a data warehouse, independent of the data warehouse (e.g., drawn from an operational database or external source), or a hybrid of the two. In embodiments described herein, different types of data stores (including combinations thereof) may be leveraged.
Data processing resources 20 may be configured to perform various data processing operations with respect to data ingested by data ingestion resources 18, including data ingested and stored in data store 30. For example, data processing resources 20 may be configured to perform one or more data security monitoring and/or remediation operations, compliance monitoring operations, anomaly detection operations, DevOps operations, compute asset management operations, and/or any other type of data analytics operation as may serve a particular implementation. Various examples of operations performed by data processing resources 20 are described herein.
As illustrated by arrow 32, data processing resources 20 may be configured to access data in data store 30 to perform the various operations described herein. In some examples, this may include performing one or more queries with respect to the data stored in data store 30. Such queries may be generated using any suitable query language.
In some examples, the queries provided by data processing resources 20 may be configured to direct data store 30 to perform one or more data analytics operations with respect to the data stored within data store 30. These data analytics operations may be with respect to data specific to a particular entity (e.g., data residing in one or more silos within data store 30 that are associated with a particular customer) and/or data associated with multiple entities. For example, data processing resources 20 may be configured to analyze data associated with a first entity and use the results of the analysis to perform one or more operations with respect to a second entity.
One or more operations performed by data processing resources 20 may be performed periodically according to a predetermined schedule. For example, one or more operations may be performed by processing resources 20 every hour or any other suitable time interval. Additionally or alternatively, one or more operations performed by data processing resources 20 may be performed in substantially real-time (or near real-time) as data is ingested into data platform 12. In this manner, the results of such operations (e.g., one or more detected anomalies in the data) may be provided to one or more external entities (e.g., computing device 24 and/or one or more users) in substantially real-time and/or in near real-time.
User interface resources 22 may be configured to perform one or more user interface operations, examples of which are described herein. For example, user interface resources 22 may be configured to present one or more results of the data processing performed by data processing resources 20 to one or more external entities (e.g., computing device 24 and/or one or more users), as illustrated by arrow 34. As illustrated by arrow 36, user interface resources 22 may access data in data store 30 to perform the one or more user interface operations
Agents 38 may be deployed in any suitable manner. For example, an agent 38 may be deployed as a containerized application or as part of a containerized application. As described herein, agents 38 may selectively report information to data platform 12 in varying amounts of detail and/or with variable frequency.
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The embodiments described herein can be implemented in numerous ways, including as a process; an apparatus; a system; a composition of matter; a computer program product embodied on a computer readable storage medium; and/or a processor, such as a processor configured to execute instructions stored on and/or provided by a memory coupled to the processor. In this specification, these implementations, or any other form that the invention may take, may be referred to as techniques. In general, the order of the steps of disclosed processes may be altered within the scope of the principles described herein. Unless stated otherwise, a component such as a processor or a memory described as being configured to perform a task may be implemented as a general component that is temporarily configured to perform the task at a given time or a specific component that is manufactured to perform the task. As used herein, the term ‘processor’ refers to one or more devices, circuits, and/or processing cores configured to process data, such as computer program instructions.
In some examples, a non-transitory computer-readable medium storing computer-readable instructions may be provided in accordance with the principles described herein. The instructions, when executed by a processor of a computing device, may direct the processor and/or computing device to perform one or more operations, including one or more of the operations described herein. Such instructions may be stored and/or transmitted using any of a variety of known computer-readable media.
A non-transitory computer-readable medium as referred to herein may include any non-transitory storage medium that participates in providing data (e.g., instructions) that may be read and/or executed by a computing device (e.g., by a processor of a computing device). For example, a non-transitory computer-readable medium may include, but is not limited to, any combination of non-volatile storage media and/or volatile storage media. Exemplary non-volatile storage media include, but are not limited to, read-only memory, flash memory, a solid-state drive, a magnetic storage device (e.g. a hard disk, a floppy disk, magnetic tape, etc.), ferroelectric random-access memory (“RAM”), and an optical disc (e.g., a compact disc, a digital video disc, a Blu-ray disc, etc.). Exemplary volatile storage media include, but are not limited to, RAM (e.g., dynamic RAM).
As shown in
Communication interface 52 may be configured to communicate with one or more computing devices. Examples of communication interface 52 include, without limitation, a wired network interface (such as a network interface card), a wireless network interface (such as a wireless network interface card), a modem, an audio/video connection, and any other suitable interface.
Processor 54 generally represents any type or form of processing unit capable of processing data and/or interpreting, executing, and/or directing execution of one or more of the instructions, processes, and/or operations described herein. Processor 54 may perform operations by executing computer-executable instructions 62 (e.g., an application, software, code, and/or other executable data instance) stored in storage device 56.
Storage device 56 may include one or more data storage media, devices, or configurations and may employ any type, form, and combination of data storage media and/or device. For example, storage device 56 may include, but is not limited to, any combination of the non-volatile volatile media and/or volatile media described herein. Electronic data, including data described herein, may be temporarily and/or permanently stored in storage device 56. For example, data representative of computer-executable instructions 62 configured to direct processor 54 to perform any of the operations described herein may be stored within storage device 56. In some examples, data may be arranged in one or more databases residing within storage device 56.
I/O module 58 may include one or more I/O modules configured to receive user input and provide user output. I/O module 58 may include any hardware, firmware, software, or combination thereof supportive of input and output capabilities. For example, I/O module 58 may include hardware and/or software for capturing user input, including, but not limited to, a keyboard or keypad, a touchscreen component (e.g., touchscreen display), a receiver (e.g., an RF or infrared receiver), motion sensors, and/or one or more input buttons.
I/O module 58 may include one or more devices for presenting output to a user, including, but not limited to, a graphics engine, a display (e.g., a display screen), one or more output drivers (e.g., display drivers), one or more audio speakers, and one or more audio drivers. In certain embodiments, I/O module 58 is configured to provide graphical data to a display for presentation to a user. The graphical data may be representative of one or more graphical user interfaces and/or any other graphical content as may serve a particular implementation.
Two example datacenters (104 and 106) are shown in
Both datacenter 104 and datacenter 106 include a plurality of nodes, depicted collectively as set of nodes 108 and set of nodes 110, respectively, in
As described herein, agents can selectively report information to data platform 12 in varying amounts of detail and/or with variable frequency. As is also described herein, the data collected by agents may be used by data platform 12 to create polygraphs, which are graphs of logical entities, connected by behaviors. In some embodiments, agents report information directly to data platform 12. In other embodiments, at least some agents provide information to a data aggregator, such as data aggregator 114, which in turn provides information to data platform 12. The functionality of a data aggregator can be implemented as a separate binary or other application (distinct from an agent binary), and can also be implemented by having an agent execute in an “aggregator mode” in which the designated aggregator node acts as a Layer 7 proxy for other agents that do not have access to data platform 12. Further, a chain of multiple aggregators can be used, if applicable (e.g., with agent 112 providing data to data aggregator 114, which in turn provides data to another aggregator (not pictured) which provides data to data platform 12). An example way to implement an aggregator is through a program written in an appropriate language, such as C or Golang.
Use of an aggregator can be beneficial in sensitive environments (e.g., involving financial or medical transactions) where various nodes are subject to regulatory or other architectural requirements (e.g., prohibiting a given node from communicating with systems outside of datacenter 104). Use of an aggregator can also help to minimize security exposure more generally. As one example, by limiting communications with data platform 12 to data aggregator 114, individual nodes in nodes 108 need not make external network connections (e.g., via Internet 124), which can potentially expose them to compromise (e.g., by other external devices, such as device 118, operated by a criminal). Similarly, data platform 12 can provide updates, configuration information, etc., to data aggregator 114 (which in turn distributes them to nodes 108), rather than requiring nodes 108 to allow incoming connections from data platform 12 directly.
Another benefit of an aggregator model is that network congestion can be reduced (e.g., with a single connection being made at any given time between data aggregator 114 and data platform 12, rather than potentially many different connections being open between various of nodes 108 and data platform 12). Similarly, network consumption can also be reduced (e.g., with the aggregator applying compression techniques/bundling data received from multiple agents).
One example way that an agent (e.g., agent 112, installed on node 116) can provide information to data aggregator 114 is via a REST API, formatted using data serialization protocols such as Apache Avro. One example type of information sent by agent 112 to data aggregator 114 is status information. Status information may be sent by an agent periodically (e.g., once an hour or once any other predetermined amount of time). Alternatively, status information may be sent continuously or in response to occurrence of one or more events. The status information may include, but is not limited to, a. an amount of event backlog (in bytes) that has not yet been transmitted, b. configuration information, c. any data loss period for which data was dropped, d. a cumulative count of errors encountered since the agent started, e. version information for the agent binary, and/or f. cumulative statistics on data collection (e.g., number of network packets processed, new processes seen, etc.).
A second example type of information that may be sent by agent 112 to data aggregator 114 is event data (described in more detail herein), which may include a UTC timestamp for each event. As applicable, the agent can control the amount of data that it sends to the data aggregator in each call (e.g., a maximum of 10MB) by adjusting the amount of data sent to manage the conflicting goals of transmitting data as soon as possible, and maximizing throughput. Data can also be compressed or uncompressed by the agent (as applicable) prior to sending the data.
Each data aggregator may run within a particular customer environment. A data aggregator (e.g., data aggregator 114) may facilitate data routing from many different agents (e.g., agents executing on nodes 108) to data platform 12. In various embodiments, data aggregator 114 may implement a SOCKS 5 caching proxy through which agents can connect to data platform 12. As applicable, data aggregator 114 can encrypt (or otherwise obfuscate) sensitive information prior to transmitting it to data platform 12, and can also distribute key material to agents which can encrypt the information (as applicable). Data aggregator 114 may include a local storage, to which agents can upload data (e.g., pcap packets). The storage may have a key-value interface. The local storage can also be omitted, and agents configured to upload data to a cloud storage or other storage area, as applicable. Data aggregator 114 can, in some embodiments, also cache locally and distribute software upgrades, patches, or configuration information (e.g., as received from data platform 12).
Various examples associated with agent data collection and reporting will now be described.
In the following example, suppose that a user (e.g., a network administrator) at entity A (hereinafter “user A”) has decided to begin using the services of data platform 12. In some embodiments, user A may access a web frontend (e.g., web app 120) using a computer 126 and enrolls (on behalf of entity A) an account with data platform 12. After enrollment is complete, user A may be presented with a set of installers, pre-built and customized for the environment of entity A, that user A can download from data platform 12 and deploy on nodes 108. Examples of such installers include, but are not limited to, a Windows executable file, an iOS app, a Linux package (e.g., .deb or .rpm), a binary, or a container (e.g., a Docker container). When a user (e.g., a network administrator) at entity B (hereinafter “user B”) also signs up for the services of data platform 12, user B may be similarly presented with a set of installers that are pre-built and customized for the environment of entity B.
User A deploys an appropriate installer on each of nodes 108 (e.g., with a Windows executable file deployed on a Windows-based platform or a Linux package deployed on a Linux platform, as applicable). As applicable, the agent can be deployed in a container. Agent deployment can also be performed using one or more appropriate automation tools, such as Chef, Puppet, Salt, and Ansible. Deployment can also be performed using managed/hosted container management/orchestration frameworks such as Kubernetes, Mesos, and/or Docker Swarm.
In various embodiments, the agent may be installed in the user space (i.e., is not a kernel module), and the same binary is executed on each node of the same type (e.g., all Windows-based platforms have the same Windows-based binary installed on them). An illustrative function of an agent, such as agent 112, is to collect data (e.g., associated with node 116) and report it (e.g., to data aggregator 114). Other tasks that can be performed by agents include data configuration and upgrading.
One approach to collecting data as described herein is to collect virtually all information available about a node (and, e.g., the processes running on it). Alternatively, the agent may monitor for network connections, and then begin collecting information about processes associated with the network connections, using the presence of a network packet associated with a process as a trigger for collecting additional information about the process. As an example, if a user of node 116 executes an application, such as a calculator application, which does not typically interact with the network, no information about use of that application may be collected by agent 112 and/or sent to data aggregator 114. If, however, the user of node 116 executes an ssh command (e.g., to ssh from node 116 to node 122), agent 112 may collect information about the process and provide associated information to data aggregator 114. In various embodiments, the agent may always collect/report information about certain events, such as privilege escalation, irrespective of whether the event is associated with network activity.
An approach to collecting information (e.g., by an agent) is as follows, and described in conjunction with process 200 depicted in
The agent may also determine a process associated with the network connection (203). One example approach is for the agent to use a kernel network diagnostic API (e.g., netlink_diag) to obtain inode/process information from the kernel. Another example approach is for the agent to scan using netstat (e.g., on /proc/net/tcp, /proc/net/tcp6, /proc/net/udp, and /proc/net/udp6) to obtain sockets and relate them to processes. Information such as socket state (e.g., whether a socket is connected, listening, etc.) can also be collected by the agent.
One way an agent can obtain a mapping between a given inode and a process identifier is to scan within the /proc/pid directory. For each of the processes currently running, the agent examines each of their file descriptors. If a file descriptor is a match for the inode, the agent can determine that the process associated with the file descriptor owns the inode. Once a mapping is determined between an inode and a process identifier, the mapping is cached. As additional packets are received for the connection, the cached process information is used (rather than a new search being performed).
In some cases, exhaustively scanning for an inode match across every file descriptor may not be feasible (e.g., due to CPU limitations). In various embodiments, searching through file descriptors is accordingly optimized. User filtering is one example of such an optimization. A given socket is owned by a user. Any processes associated with the socket will be owned by the same user as the socket. When matching an inode (identified as relating to a given socket) against processes, the agent can filter through the processes and only examine the file descriptors of processes sharing the same user owner as the socket. In various embodiments, processes owned by root are always searched against (e.g., even when user filtering is employed).
Another example of an optimization is to prioritize searching the file descriptors of certain processes over others. One such prioritization is to search through the subdirectories of /proc/starting with the youngest process. One approximation of such a sort order is to search through /proc/in reverse order (e.g., examining highest numbered processes first). Higher numbered processes are more likely to be newer (i.e., not long-standing processes), and thus more likely to be associated with new connections (i.e., ones for which inode-process mappings are not already cached). In some cases, the most recently created process may not have the highest process identifier (e.g., due to the kernel wrapping through process identifiers).
Another example prioritization is to query the kernel for an identification of the most recently created process and to search in a backward order through the directories in /proc/ (e.g., starting at the most recently created process and working backwards, then wrapping to the highest value (e.g., 32768) and continuing to work backward from there). An alternate approach is for the agent to keep track of the newest process that it has reported information on (e.g., to data aggregator 114), and begin its search of /proc/ in a forward order starting from the PID of that process.
Another example prioritization is to maintain, for each user actively using node 116, a list of the five (or any other number) most recently active processes. Those processes are more likely than other processes (less active, or passive) on node 116 to be involved with new connections, and can thus be searched first. For many processes, lower valued file descriptors tend to correspond to non-sockets (e.g., stdin, stdout, stderr). Yet another optimization is to preferentially search higher valued file descriptors (e.g., across processes) over lower valued file descriptors (that are less likely to yield matches).
In some cases, while attempting to locate a process identifier for a given inode, an agent may encounter a socket that does not correspond to the inode being matched against and is not already cached. The identity of that socket (and its corresponding inode) can be cached, once discovered, thus removing a future need to search for that pair.
In some cases, a connection may terminate before the agent is able to determine its associated process (e.g., due to a very short-lived connection, due to a backlog in agent processing, etc.). One approach to addressing such a situation is to asynchronously collect information about the connection using the audit kernel API, which streams information to user space. The information collected from the audit API (which can include PID/inode information) can be matched by the agent against pcap/inode information. In some embodiments, the audit API is always used, for all connections. However, due to CPU utilization considerations, use of the audit API can also be reserved for short/otherwise problematic connections (and/or omitted, as applicable).
Once the agent has determined which process is associated with the network connection (203), the agent can then collect additional information associated with the process (204). As will be described in more detail below, some of the collected information may include attributes of the process (e.g., a process parent hierarchy, and an identification of a binary associated with the process). As will also be described in more detail below, other of the collected information is derived (e.g., session summarization data and hash values).
The collected information is then transmitted (205), e.g., by an agent (e.g., agent 112) to a data aggregator (e.g., data aggregator 114), which in turn provides the information to data platform 12. In some embodiments, all information collected by an agent may be transmitted (e.g., to a data aggregator and/or to data platform 12). In other embodiments, the amount of data transmitted may be minimized (e.g., for efficiency reasons), using various techniques.
One approach to minimizing the amount of data flowing from agents (such as agents installed on nodes 108) to data platform 12 is to use a technique of implicit references with unique keys. The keys can be explicitly used by data platform 12 to extract/derive relationships, as necessary, in a data set at a later time, without impacting performance.
As previously mentioned, some data collected about a process is constant and does not change over the lifetime of the process (e.g., attributes), and some data changes (e.g., statistical information and other variable information). Constant data can be transmitted (210) once, when the agent first becomes aware of the process. And, if any changes to the constant data are detected (e.g., a process changes its parent), a refreshed version of the data can be transmitted (210) as applicable.
In some examples, an agent may collect variable data (e.g., data that may change over the lifetime of the process). In some examples, variable data can be transmitted (210) at periodic (or other) intervals. Alternatively, variable data may be transmitted in substantially real time as it is collected. In some examples, the variable data may indicate a thread count for a process, a total virtual memory used by the process, the total resident memory used by the process, the total time spent by the process executing in user space, and/or the total time spent by the process executing in kernel space. In some examples, the data may include a hash that may be used within data platform 12 to join process creation_time attributes with runtime attributes to construct a full dataset.
Below are additional examples of data that an agent, such as agent 112, can collect and provide to data platform 12.
1. User Data
Core User Data: user name, UID (user ID), primary group, other groups, home directory.
Failed Login Data: IP address, hostname, username, count.
User Login Data: user name, hostname, IP address, start time, TTY (terminal), UID (user ID), GID (group ID), process, end time.
2. Machine Data
Dropped Packet Data: source IP address, destination IP address, destination port, protocol, count.
Machine Data: hostname, domain name, architecture, kernel, kernel release, kernel version, OS, OS version, OS description, CPU, memory, model number, number of cores, last boot time, last boot reason, tags (e.g., Cloud provider tags such as AWS, GCP, or Azure tags), default router, interface name, interface hardware address, interface IP address and mask, promiscuous mode.
3. Network Data
Network Connection Data: source IP address, destination IP address, source port, destination port, protocol, start time, end time, incoming and outgoing bytes, source process, destination process, direction of connection, histograms of packet_length, inter packet delay, session_lengths, etc.
Listening Ports in Server: source IP address, port number, protocol, process.
Dropped Packet Data: source IP address, destination IP address, destination port, protocol, count.
Arp Data: source hardware address, source IP address, destination hardware address, destination IP address.
DNS Data: source IP address, response code, response string, question (request), packet length, final answer (response).
4. Application Data
Package Data: exe path, package name, architecture, version, package path, checksums (MD5, SHA-1, SHA-256), size, owner, owner ID.
Application Data: command line, PID (process ID), start time, UID (user ID), EUID (effective UID), PPID (parent process ID), PGID (process group ID), SID (session ID), exe path, username, container ID.
5. Container Data
Container Image Data: image creation_time, parent ID, author, container type, repo, (AWS) tags, size, virtual size, image version.
Container Data: container start time, container type, container name, container ID, network mode, privileged, PID mode, IP addresses, listening ports, volume map, process ID.
6. File Data
File path, file data hash, symbolic links, file creation data, file change data, file metadata, file mode.
As mentioned above, an agent, such as agent 112, can be deployed in a container (e.g., a Docker container), and can also be used to collect information about containers. Collection about a container can be performed by an agent irrespective of whether the agent is itself deployed in a container or not (as the agent can be deployed in a container running in a privileged mode that allows for monitoring).
Agents can discover containers (e.g., for monitoring) by listening for container create events (e.g., provided by Docker), and can also perform periodic ordered discovery scans to determine whether containers are running on a node. When a container is discovered, the agent can obtain attributes of the container, e.g., using standard Docker API calls (e.g., to obtain IP addresses associated with the container, whether there's a server running inside, what port it is listening on, associated PIDs, etc.). Information such as the parent process that started the container can also be collected, as can information about the image (which comes from the Docker repository).
In various embodiments, agents may use namespaces to determine whether a process is associated with a container. Namespaces are a feature of the Linux kernel that can be used to isolate resources of a collection of processes. Examples of namespaces include process ID (PID) namespaces, network namespaces, and user namespaces. Given a process, the agent can perform a fast lookup to determine whether the process is part of the namespace the container claims to be its namespace.
As mentioned, agents can be configured to report certain types of information (e.g., attribute information) once, when the agent first becomes aware of a process. In various embodiments, such static information is not reported again (or is reported once a day, every twelve hours, etc.), unless it changes (e.g., a process changes its parent, changes its owner, or a SHA-1 of the binary associated with the process changes).
In contrast to static/attribute information, certain types of data change constantly (e.g., network-related data). In various embodiments, agents are configured to report a list of current connections every minute (or other appropriate time interval). In that connection list will be connections that started in that minute interval, connections that ended in that minute interval, and connections that were ongoing throughout the minute interval (e.g., a one minute slice of a one hour connection).
In various embodiments, agents are configured to collect/compute statistical information about connections (e.g., at the one minute level of granularity and or at any other time interval). Examples of such information include, for the time interval, the number of bytes transferred, and in which direction. Another example of information collected by an agent about a connection is the length of time between packets. For connections that span multiple time intervals (e.g., a seven minute connection), statistics may be calculated for each minute of the connection. Such statistical information (for all connections) can be reported (e.g., to a data aggregator) once a minute.
In various embodiments, agents are also configured to maintain histogram data for a given network connection, and provide the histogram data (e.g., in the Apache Avro data exchange format) under the Connection event type data. Examples of such histograms include: 1. a packet_length histogram (packet_len_hist), which characterizes network packet distribution; 2. a session_length histogram (session_len_hist), which characterizes a network session_length; 3. a session_time histogram (session_time_hist), which characterizes a network session_time; and 4. a session_switch_time histogram (session_switch_time_hist), which characterizes network session switch_time (i.e., incoming->outgoing and vice versa). For example, histogram data may include one or more of the following fields: 1. count, which provides a count of the elements in the sampling; 2. sum, which provides a sum of elements in the sampling; 3. max, which provides the highest value element in the sampling; 4. std_dev, which provides the standard deviation of elements in the sampling; and 5. buckets, which provides a discrete sample bucket distribution of sampling data (if applicable).
For some protocols (e.g., HTTP), typically, a connection is opened, a string is sent, a string is received, and the connection is closed. For other protocols (e.g., NFS), both sides of the connection engage in a constant chatter. Histograms allow data platform 12 to model application behavior (e.g., using machine learning techniques), for establishing baselines, and for detecting deviations. As one example, suppose that a given HTTP server typically sends/receives 1,000 bytes (in each direction) whenever a connection is made with it. If a connection generates 500 bytes of traffic, or 2,000 bytes of traffic, such connections would be considered within the typical usage pattern of the server. Suppose, however, that a connection is made that results in 10G of traffic. Such a connection is anomalous and can be flagged accordingly.
Returning to
Agent service 132 is a microservice that is responsible for accepting data collected from agents (e.g., provided by aggregator 114). In various embodiments, agent service 132 uses a standard secure protocol, such as HTTPS to communicate with aggregators (and as applicable agents), and receives data in an appropriate format such as Apache Avro. When agent service 132 receives an incoming connection, it can perform a variety of checks, such as to see whether the data is being provided by a current customer, and whether the data is being provided in an appropriate format. If the data is not appropriately formatted (and/or is not provided by a current customer), it may be rejected.
If the data is appropriately formatted, agent service 132 may facilitate copying the received data to a streaming data stable storage using a streaming service (e.g., Amazon Kinesis and/or any other suitable streaming service. Once the ingesting into the streaming service is complete, service 132 may send an acknowledgement to the data provider (e.g., data aggregator 114). If the agent does not receive such an acknowledgement, it is configured to retry sending the data to data platform 12. One way to implement agent service 132 is as a REST API server framework (e.g., Java DropWizard), configured to communicate with Kinesis (e.g., using a Kinesis library).
In various embodiments, data platform 12 uses one or more streams (e.g., Kinesis streams) for all incoming customer data (e.g., including data provided by data aggregator 114 and data aggregator 128), and the data is sharded based on the node (also referred to herein as a “machine”) that originated the data (e.g., node 116 vs. node 122), with each node having a globally unique identifier within data platform 12. Multiple instances of agent service 132 can write to multiple shards.
Kinesis is a streaming service with a limited period (e.g., 1-7 days). To persist data longer than a day, the data may be copied to long term storage 42 (e.g., S3). Data loader 136 is a microservice that is responsible for picking up data from a data stream (e.g., a Kinesis stream) and persisting it in long term storage 42. In one example embodiment, files collected by data loader 136 from the Kinesis stream are placed into one or more buckets, and segmented using a combination of a customer identifier and time slice. Given a particular time segment, and a given customer identifier, the corresponding file (stored in long term storage) contains five minutes (or another appropriate time slice) of data collected at that specific customer from all of the customer's nodes. Data loader 136 can be implemented in any appropriate programming language, such as Java or C, and can be configured to use a Kinesis library to interface with Kinesis. In various embodiments, data loader 136 uses the Amazon Simple Queue Service (SQS) (e.g., to alert DB loader 140 that there is work for it to do).
DB loader 140 is a microservice that is responsible for loading data into an appropriate data store 30, such as SnowflakeDB or Amazon Redshift, using individual per-customer databases. In particular, DB loader 140 is configured to periodically load data into a set of raw tables from files created by data loader 136 as per above. DB loader 140 manages throughput, errors, etc., to make sure that data is loaded consistently and continuously. Further, DB loader 140 can read incoming data and load into data store 30 data that is not already present in tables of data store 30 (also referred to herein as a database). DB loader 140 can be implemented in any appropriate programming language, such as Java or C, and an SQL framework such as jOOQ (e.g., to manage SQLs for insertion of data), and SQL/JDBC libraries. In some examples, DB loader 140 may use Amazon S3 and Amazon Simple Queue Service (SQS) to manage files being transferred to and from data store 30.
Customer data included in data store 30 can be augmented with data from additional data sources, such as AWS CloudTrail and/or other types of external tracking services. To this end, data platform may include a tracking service analyzer 144, which is another microservice. Tracking service analyzer 144 may pull data from an external tracking service (e.g., Amazon CloudTrail) for each applicable customer account, as soon as the data is available. Tracking service analyzer 144 may normalize the tracking data as applicable, so that it can be inserted into data store 30 for later querying/analysis. Tracking service analyzer 144 can be written in any appropriate programming language, such as Java or C. Tracking service analyzer 144 also makes use of SQL/JDBC libraries to interact with data store 30 to insert/query data.
As described herein, data platform 12 can model activities that occur within datacenters, such as datacenters 104 and 106. The model may be stable over time, and differences, even subtle ones (e.g., between a current state of the datacenter and the model) can be surfaced. The ability to surface such anomalies can be particularly beneficial in datacenter environments where rogue employees and/or external attackers may operate slowly (e.g., over a period of months), hoping that the elastic nature of typical resource use (e.g., virtualized servers) will help conceal their nefarious activities.
Using techniques described herein, data platform 12 can automatically discover entities (which may implement compute assets 16) deployed in a given datacenter. Examples of entities include workloads, applications, processes, machines, virtual machines, containers, files, IP addresses, domain names, and users. The entities may be grouped together logically (into analysis groups) based on behaviors, and temporal behavior baselines can be established. In particular, using techniques described herein, periodic graphs can be constructed (also referred to herein as polygraphs), in which the nodes are applicable logical entities, and the edges represent behavioral relationships between the logical entities in the graph. Baselines can be created for every node and edge.
Communication (e.g., between applications/nodes) is one example of a behavior. A model of communications between processes is an example of a behavioral model. As another example, the launching of applications is another example of a behavior that can be modeled. The baselines may be periodically updated (e.g., hourly) for every entity. Additionally or alternatively, the baselines may be continuously updated in substantially real-time as data is collected by agents. Deviations from the expected normal behavior can then be detected and automatically reported (e.g., as anomalies or threats detected). Such deviations may be due to a desired change, a misconfiguration, or malicious activity. As applicable, data platform 12 can score the detected deviations (e.g., based on severity and threat posed). Additional examples of analysis groups include models of machine communications, models of privilege changes, and models of insider behaviors (monitoring the interactive behavior of human users as they operate within the datacenter).
Two example types of information collected by agents are network level information and process level information. As previously mentioned, agents may collect information about every connection involving their respective nodes. And, for each connection, information about both the server and the client may be collected (e.g., using the connection-to-process identification techniques described above). DNS queries and responses may also be collected. The DNS query information can be used in logical entity graphing (e.g., collapsing many different IP addresses to a single service—e.g., s3.amazon.com). Examples of process level information collected by agents include attributes (user ID, effective user ID, and command line). Information such as what user/application is responsible for launching a given process and the binary being executed (and its SHA-256 values) may also be provided by agents.
The dataset collected by agents across a datacenter can be very large, and many resources (e.g., virtual machines, IP addresses, etc.) are recycled very quickly. For example, an IP address and port number used at a first point in time by a first process on a first virtual machine may very rapidly be used (e.g., an hour later) by a different process/virtual machine.
A dataset (and elements within it) can be considered at both a physical level, and a logical level, as illustrated in
A physical representation of the 5-tuple is depicted in region 216. A process 218 (executing on machine 219) has opened a connection to machine 220. In particular, process 218 is in communication with process 221. Information such as the number of packets exchanged between the two machines over the respective ports can be recorded.
As previously mentioned, in a datacenter environment, portions of the 5-tuple may change—potentially frequently—but still be associated with the same behavior. Namely, one application (e.g., Apache) may frequently be in communication with another application (e.g., Oracle), using ephemeral datacenter resources. Further, either/both of Apache and Oracle may be multi-homed. This can lead to potentially thousands of 5-tuples (or more) that all correspond to Apache communicating with Oracle within a datacenter. For example, Apache could be executed on a single machine, and could also be executed across fifty machines, which are variously spun up and down (with different IP addresses each time). An alternate representation of the 5-tuple of data 210 is depicted in region 217, and is logical. The logical representation of the 5-tuple aggregates the 5-tuple (along with other connections between Apache and Oracle having other 5-tuples) as logically representing the same connection. By aggregating data from raw physical connection information into logical connection information, using techniques described herein, a size reduction of six orders of magnitude in the data set can be achieved.
Behaviors of the seven processes are clustered together, into a single summary. As indicated in region 227, statistical information about the connections is also maintained (e.g., number of connections, histogram information, etc.). A polygraph such as is depicted in
In various embodiments, polygraph data is maintained for every application in a datacenter, and such polygraph data can be combined to make a single datacenter view across all such applications.
In the particular polygraph shown in
In the following examples, suppose that user B, an administrator of datacenter 106, is interacting with data platform 12 to view visualizations of polygraphs in a web browser (e.g., as served to user B via web app 120). One type of polygraph user B can view is an application-communication polygraph, which indicates, for a given one hour window (or any other suitable time interval), which applications communicated with which other applications. Another type of polygraph user B can view is an application launch polygraph. User B can also view graphs related to user behavior, such as an insider behavior graph which tracks user connections (e.g., to internal and external applications, including chains of such behavior), a privilege change graph which tracks how privileges change between processes, and a user login graph, which tracks which (logical) machines a user logs into.
As shown in
Returning to the polygraph depicted in
Suppose user B now clicks on region 245 of the interface shown in
Suppose user B now clicks on region 246 of the interface shown in
As previously mentioned, the polygraph depicted in
Returning to
As previously mentioned, in various embodiments, data platform 12 may make use of a collection of microservices. Each microservice can have multiple instances, and may be configured to recover from failure, scale, and distribute work amongst various such instances, as applicable. For example, microservices are auto-balancing for new instances, and can distribute workload if new instances are started or existing instances are terminated. In various embodiments, microservices may be deployed as self-contained Docker containers. A Mesos-Marathon or Spark framework can be used to deploy the microservices (e.g., with Marathon monitoring and restarting failed instances of microservices as needed). The service etcd2 can be used by microservice instances to discover how many peer instances are running, and used for calculating a hash-based scheme for workload distribution. Microservices may be configured to publish various health/status metrics to either an SQS queue, or etcd2, as applicable. In some examples, Amazon DynamoDB can be used for state management.
Additional information on various microservices used in embodiments of data platform 12 is provided below.
Graph generator 146 is a microservice that may be responsible for generating raw behavior graphs on a per customer basis periodically (e.g., once an hour). In particular, graph generator 146 may generate graphs of entities (as the nodes in the graph) and activities between entities (as the edges). In various embodiments, graph generator 146 also performs other functions, such as aggregation, enrichment (e.g., geolocation and threat), reverse DNS resolution, TF-IDF based command line analysis for command type extraction, parent process tracking, etc.
Graph generator 146 may perform joins on data collected by the agents, so that both sides of a behavior are linked. For example, suppose a first process on a first virtual machine (e.g., having a first IP address) communicates with a second process on a second virtual machine (e.g., having a second IP address). Respective agents on the first and second virtual machines may each report information on their view of the communication (e.g., the PID of their respective processes, the amount of data exchanged and in which direction, etc.). When graph generator performs a join on the data provided by both agents, the graph will include a node for each of the processes, and an edge indicating communication between them (as well as other information, such as the directionality of the communication—i.e., which process acted as the server and which as the client in the communication).
In some cases, connections are process to process (e.g., from a process on one virtual machine within the cloud environment associated with entity A to another process on a virtual machine within the cloud environment associated with entity A). In other cases, a process may be in communication with a node (e.g., outside of entity A) which does not have an agent deployed upon it. As one example, a node within entity A might be in communication with node 172, outside of entity A. In such a scenario, communications with node 172 are modeled (e.g., by graph generator 146) using the IP address of node 172. Similarly, where a node within entity A does not have an agent deployed upon it, the IP address of the node can be used by graph generator in modeling.
Graphs created by graph generator 146 may be written to data store 30 and cached for further processing. A graph may be a summary of all activity that happened in a particular time interval. As each graph corresponds to a distinct period of time, different rows can be aggregated to find summary information over a larger timestamp. In some examples, picking two different graphs from two different timestamps can be used to compare different periods. If necessary, graph generator can parallelize its workload (e.g., where its backlog cannot otherwise be handled within a particular time period, such as an hour, or if is required to process a graph spanning a long time period).
Graph generator 146 can be implemented in any appropriate programming language, such as Java or C, and machine learning libraries, such as Spark's MLLib. Example ways that graph generator computations can be implemented include using SQL or Map-R, using Spark or Hadoop.
SSH tracker 148 is a microservice that may be responsible for following ssh connections and process parent hierarchies to determine trails of user ssh activity. Identified ssh trails are placed by the SSH tracker 148 into data store 30 and cached for further processing.
SSH tracker 148 can be implemented in any appropriate programming language, such as Java or C, and machine libraries, such as Spark's MLLib. Example ways that SSH tracker computations can be implemented include using SQL or Map-R, using Spark or Hadoop.
Threat aggregator 150 is a microservice that may be responsible for obtaining third party threat information from various applicable sources, and making it available to other micro-services. Examples of such information include reverse DNS information, GeoIP information, lists of known bad domains/IP addresses, lists of known bad files etc. As applicable, the threat information is normalized before insertion into data store 30. Threat aggregator 150 can be implemented in any appropriate programming language, such as Java or C, using SQL/JDBC libraries to interact with data store 30 (e.g., for insertions and queries).
Scheduler 152 is a microservice that may act as a scheduler and that may run arbitrary jobs organized as a directed graph. In some examples, scheduler 152 ensures that all jobs for all customers are able to run during at a given time interval (e.g., every hour). Scheduler 152 may handle errors and retrying for failed jobs, track dependencies, manage appropriate resource levels, and/or scale jobs as needed. Scheduler 152 can be implemented in any appropriate programming language, such as Java or C. A variety of components can also be used, such as open source scheduler frameworks (e.g., Airflow), or AWS services (e.g., the AWS Data pipeline) which can be used for managing schedules.
Graph Behavior Modeler (GBM) 154 is a microservice that may compute polygraphs. In particular, GBM 154 can be used to find clusters of nodes in a graph that should be considered similar based on some set of their properties and relationships to other nodes. As described herein, the clusters and their relationships can be used to provide visibility into a datacenter environment without requiring user specified labels. GBM 154 may track such clusters over time persistently, allowing for changes to be detected and alerts to be generated.
GBM 154 may take as input a raw graph (e.g., as generated by graph generator 146). Nodes are actors of a behavior, and edges are the behavior relationship itself. For example, in the case of communication, example actors include processes, which communicate with other processes. The GBM 154 clusters the raw graph based on behaviors of actors and produces a summary (the polygraph). The polygraph summarizes behavior at a datacenter level. The GBM also produces “observations” that represent changes detected in the datacenter. Such observations may be based on differences in cumulative behavior (e.g., the baseline) of the datacenter with its current behavior. The GBM 154 can be implemented in any appropriate programming language, such as Java, C, or Golang, using appropriate libraries (as applicable) to handle distributed graph computations (handling large amounts of data analysis in a short amount of time). Apache Spark is another example tool that can be used to compute polygraphs. The GBM can also take feedback from users and adjust the model according to that feedback. For example, if a given user is interested in relearning behavior for a particular entity, the GBM can be instructed to “forget” the implicated part of the polygraph.
GBM runner 156 is a microservice that may be responsible for interfacing with GBM 154 and providing GBM 154 with raw graphs (e.g., using a query language, such as SQL, to push any computations it can to data store 30). GBM runner 156 may also insert polygraph output from GBM 154 to data store 30. GBM runner 156 can be implemented in any appropriate programming language, such as Java or C, using SQL/JDBC libraries to interact with data store 30 to insert and query data.
Alert generator 158 is a microservice that may be responsible for generating alerts. Alert generator 158 may examine observations (e.g., produced by GBM 154) in aggregate, deduplicate them, and score them. Alerts may be generated for observations with a score exceeding a threshold. Alert generator 158 may also compute (or retrieves, as applicable) data that a customer (e.g., user A or user B) might need when reviewing the alert. Examples of events that can be detected by data platform 12 (and alerted on by alert generator 158) include, but are not limited to the following:
new user: This event may be created the first time a user (e.g., of node 116) is first observed by an agent within a datacenter.
user launched new binary: This event may be generated when an interactive user launches an application for the first time.
new privilege escalation: This event may be generated when user privileges are escalated and a new application is run.
new application or container: This event may be generated when an application or container is seen for the first time.
new external connection: This event may be generated when a connection to an external IP/domain is made from a new application.
new external host or IP: This event may be generated when a new external host or IP is involved in a connection with a datacenter.
new internal connection: This event may be generated when a connection between internal-only applications is seen for the first time.
new external client: This event may be generated when a new external connection is seen for an application which typically does not have external connections.
new parent: This event may be generated when an application is launched by a different parent.
connection to known bad IP/domain: Data platform 12 maintains (or can otherwise access) one or more reputation feeds. If an environment makes a connection to a known bad IP or domain, an event will be generated.
login from a known bad IP/domain: An event may be generated when a successful connection to a datacenter from a known bad IP is observed by data platform 12.
Alert generator 158 can be implemented in any appropriate programming language, such as Java or C, using SQL/JDBC libraries to interact with data store 30 to insert and query data. In various embodiments, alert generator 158 also uses one or more machine learning libraries, such as Spark's MLLib (e.g., to compute scoring of various observations). Alert generator 158 can also take feedback from users about which kinds of events are of interest and which to suppress.
QsJob Server 160 is a microservice that may look at all the data produced by data platform 12 for an hour, and compile a materialized view (MV) out of the data to make queries faster. The MV helps make sure that the queries customers most frequently run, and data that they search for, can be easily queried and answered. QsJob Server 160 may also precompute and cache a variety of different metrics so that they can quickly be provided as answers at query time. QsJob Server 160 can be implemented using any appropriate programming language, such as Java or C, using SQL/JDBC libraries. In some examples, QsJob Server 160 is able to compute an MV efficiently at scale, where there could be a large number of joins. An SQL engine, such as Oracle, can be used to efficiently execute the SQL, as applicable.
Alert notifier 162 is a microservice that may take alerts produced by alert generator 158 and send them to customers' integrated Security Information and Event Management (SIEM) products (e.g., Splunk, Slack, etc.). Alert notifier 162 can be implemented using any appropriate programming language, such as Java or C. Alert notifier 162 can be configured to use an email service (e.g., AWS SES or pagerduty) to send emails. Alert notifier 162 may also provide templating support (e.g., Velocity or Moustache) to manage templates and structured notifications to SIEM products.
Reporting module 164 is a microservice that may be responsible for creating reports out of customer data (e.g., daily summaries of events, etc.) and providing those reports to customers (e.g., via email). Reporting module 164 can be implemented using any appropriate programming language, such as Java or C. Reporting module 164 can be configured to use an email service (e.g., AWS SES or pagerduty) to send emails. Reporting module 164 may also provide templating support (e.g., Velocity or Moustache) to manage templates (e.g., for constructing HTML-based email).
Web app 120 is a microservice that provides a user interface to data collected and processed on data platform 12. Web app 120 may provide login, authentication, query, data visualization, etc. features. Web app 120 may, in some embodiments, include both client and server elements. Example ways the server elements can be implemented are using Java DropWizard or Node.Js to serve business logic, and a combination of JSON/HTTP to manage the service. Example ways the client elements can be implemented are using frameworks such as React, Angular, or Backbone. JSON, jQuery, and JavaScript libraries (e.g., underscore) can also be used.
Query service 166 is a microservice that may manage all database access for web app 120. Query service 166 abstracts out data obtained from data store 30 and provides a JSON-based REST API service to web app 120. Query service 166 may generate SQL queries for the REST APIs that it receives at run time. Query service 166 can be implemented using any appropriate programming language, such as Java or C and SQL/JDBC libraries, or an SQL framework such as jOOQ. Query service 166 can internally make use of a variety of types of databases, including a relational database engine 168 (e.g., AWS Aurora) and/or data store 30 to manage data for clients. Examples of tables that query service 166 manages are OLTP tables and data warehousing tables.
Cache 170 may be implemented by Redis and/or any other service that provides a key-value store. Data platform 12 can use cache 170 to keep information for frontend services about users. Examples of such information include valid tokens for a customer, valid cookies of customers, the last time a customer tried to login, etc.
At 302, a logical graph model is generated, using at least a portion of the monitored activities. A variety of approaches can be used to generate such logical graph models, and a variety of logical graphs can be generated (whether using the same, or different approaches). The following is one example of how data received at 301 can be used to generate and maintain a model.
During bootstrap, data platform 12 creates an aggregate graph of physical connections (also referred to herein as an aggregated physical graph) by matching connections that occurred in the first hour into communication pairs. Clustering is then performed on the communication pairs. Examples of such clustering, described in more detail below, include performing Matching Neighbor clustering and similarity (e.g., SimRank) clustering. Additional processing can also be performed (and is described in more detail below), such as by splitting clusters based on application type, and annotating nodes with DNS query information. The resulting graph (also referred to herein as a base graph or common graph) can be used to generate a variety of models, where a subset of node and edge types (described in more detail below) and their properties are considered in a given model. One example of a model is a UID to UID model (also referred to herein as a Uid2Uid model) which clusters together processes that share a username and show similar privilege change behavior. Another example of a model is a CType model, which clusters together processes that share command line similarity. Yet another example of a model is a PType model, which clusters together processes that share behaviors over time.
Each hour (or any other predetermined time interval) after bootstrap, a new snapshot is taken (i.e., data collected about a datacenter in the last hour is processed) and information from the new snapshot is merged with existing data to create and (as additional data is collected/processed) maintain a cumulative graph. The cumulative graph (also referred to herein as a cumulative PType graph and a polygraph) is a running model of how processes behave over time. Nodes in the cumulative graph are PType nodes, and provide information such as a list of all active processes and PIDs in the last hour, the number of historic total processes, the average number of active processes per hour, the application type of the process (e.g., the CType of the PType), and historic CType information/frequency. Edges in the cumulative graph can represent connectivity and provide information such as connectivity frequency. The edges can be weighted (e.g., based on number of connections, number of bytes exchanged, etc.). Edges in the cumulative graph (and snapshots) can also represent transitions.
One approach to merging a snapshot of the activity of the last hour into a cumulative graph is as follows. An aggregate graph of physical connections is made for the connections included in the snapshot (as was previously done for the original snapshot used during bootstrap). And, clustering/splitting is similarly performed on the snapshot's aggregate graph. Next, PType clusters in the snapshot's graph are compared against PType clusters in the cumulative graph to identify commonality.
One approach to determining commonality is, for any two nodes that are members of a given CmdType (described in more detail below), comparing internal neighbors and calculating a set membership Jaccard distance. The pairs of nodes are then ordered by decreasing similarity (i.e., with the most similar sets first). For nodes with a threshold amount of commonality (e.g., at least 66% members in common), any new nodes (i.e., appearing in the snapshot's graph but not the cumulative graph) are assigned the same PType identifier as is assigned to the corresponding node in the cumulative graph. For each node that is not classified (i.e., has not been assigned a PType identifier), a network signature is generated (i.e., indicative of the kinds of network connections the node makes, who the node communicates with, etc.). The following processing is then performed until convergence. If a match of the network signature is found in the cumulative graph, the unclassified node is assigned the PType identifier of the corresponding node in the cumulative graph. Any nodes which remain unclassified after convergence are new PTypes and are assigned new identifiers and added to the cumulative graph as new. As applicable, the detection of a new PType can be used to generate an alert. If the new PType has a new CmdType, a severity of the alert can be increased. If any surviving nodes (i.e., present in both the cumulative graph and the snapshot graph) change PTypes, such change is noted as a transition, and an alert can be generated. Further, if a surviving node changes PType and also changes CmdType, a severity of the alert can be increased.
Changes to the cumulative graph (e.g., a new PType or a new edge between two PTypes) can be used (e.g., at 303) to detect anomalies (described in more detail below). Two example kinds of anomalies that can be detected by data platform 12 include security anomalies (e.g., a user or process behaving in an unexpected manner) and devops/root cause anomalies (e.g., network congestion, application failure, etc.). Detected anomalies can be recorded and surfaced (e.g., to administrators, auditors, etc.), such as through alerts which are generated at 304 based on anomaly detection.
Additional detail regarding processing performed, by various components depicted in
As explained above, an aggregated physical graph can be generated on a per customer basis periodically (e.g., once an hour) from raw physical graph information, by matching connections (e.g., between two processes on two virtual machines). In various embodiments, a deterministic fixed approach is used to cluster nodes in the aggregated physical graph (e.g., representing processes and their communications). As one example, Matching Neighbors Clustering (MNC) can be performed on the aggregated physical graph to determine which entities exhibit identical behavior and cluster such entities together.
In MNC, only those processes exhibiting identical (communication) behavior will be clustered. In various embodiments, an alternate clustering approach can also/instead be used, which uses a similarity measure (e.g., constrained by a threshold value, such as a 60% similarity) to cluster items. In some embodiments, the output of MNC is used as input to SimRank, in other embodiments, MNC is omitted.
One approach to similarity clustering is to use SimRank. In an embodiment of the SimRank approach, for a given node v in a directed graph, I(v) and O(v) denote the respective set of in-neighbors and out-neighbors of v. Individual in-neighbors are denoted as Ii(v), for 1≤i≤|I(v)|, and individual out-neighbors are denoted as Oi(v), for 1≤i≤|O(v)|. The similarity between two objects a and b can be denoted by s(a,b) ϵ[1,0]. A recursive equation (hereinafter “the SimRank equation”) can be written for s(a,b), where, if a=b, then s(a,b) is defined as 1, otherwise,
where C is a constant between 0 and 1. One example value for the decay factor C is 0.8 (and a fixed number of iterations such as five). Another example value for the decay factor C is 0.6 (and/or a different number of iterations). In the event that a or b has no in-neighbors, similarity is set to s(a,b)=0, so the summation is defined to be 0 when I(a)=Ø or I(b)=Ø
The SimRank equations for a graph G can be solved by iteration to a fixed point. Suppose n is the number of nodes in G. For each iteration k, n2 entries sk(*,*) are kept, where sk(a,b) gives the score between a and b on iteration k. Successive computations of sk+1(*,*) are made based on sk(*,*). Starting with s0(*,*), where each s0(a,b) is a lower bound on the actual SimRank score s(a,b):
The SimRank equation can be used to compute sk+1(a, b) from sk(*,*) with
for a≠b, and sk+1(a, b)=1 for a=b. On each iteration k+1, the similarity of (a,b) is updated using the similarity scores of the neighbors of (a,b) from the previous iteration k according to the SimRank equation. The values sk(*,*) are nondecreasing as k increases.
Returning to
In various embodiments, SimRank is modified (from what is described above) to accommodate differences between the asymmetry of client and server connections. As one example, SimRank can be modified to use different thresholds for client communications (e.g., an 80% match among nodes c1-c6) and for server communications (e.g., a 60% match among nodes s1 and s2). Such modification can also help achieve convergence in situations such as where a server process dies on one node and restarts on another node.
The application of MNC/SimRank to an aggregated physical graph results in a smaller graph, in which processes which are determined to be sufficiently similar are clustered together. Typically, clusters generated as output of MNC will be underinclusive. For example, for the nodes depicted in
As previously mentioned, data platform 12 may maintain a mapping between processes and the applications to which they belong. In various embodiments, the output of SimRank (e.g., SimRank clusters) is split based on the applications to which cluster members belong (such a split is also referred to herein as a “CmdType split”). If all cluster members share a common application, the cluster remains. If different cluster members originate from different applications, the cluster members are split along application-type (CmdType) lines. Using the nodes depicted in
A variety of approaches can be used to determine a CmdType for a given process. As one example, for some applications (e.g., sshd), a one-to-one mapping exists between the CmdType and the application/binary name. Thus, processes corresponding to the execution of sshd will be classified using a CmdType of sshd. In various embodiments, a list of common application/binary names (e.g., sshd, apache, etc.) is maintained by data platform 12 and manually curated as applicable. Other types of applications (e.g., Java, Python, and Ruby) are multi-homed, meaning that several very different applications may all execute using the binary name, “java.” For these types of applications, information such as command line / execution path information can be used in determining a CmdType. In particular, the subapplication can be used as the CmdType of the application, and/or term frequency analysis (e.g., TF/IDF) can be used on command line information to group, for example, any marathon related applications together (e.g., as a python.marathon CmdType) and separately from other Python applications (e.g., as a python. airflow CmdType).
In various embodiments, machine learning techniques are used to determine a CmdType. The CmdType model is constrained such that the execution path for each CmdType is unique. One example approach to making a CmdType model is a random forest based approach. An initial CmdType model is bootstrapped using process parameters (e.g., available within one minute of process startup) obtained using one hour of information for a given customer (e.g., entity A). Examples of such parameters include the command line of the process, the command line of the process's parent(s) (if applicable), the uptime of the process, UID/EUID and any change information, TTY and any change information, listening ports, and children (if any). Another approach is to perform term frequency clustering over command line information to convert command lines into cluster identifiers.
The random forest model can be used (e.g., in subsequent hours) to predict a CmdType for a process (e.g., based on features of the process). If a match is found, the process can be assigned the matching CmdType. If a match is not found, a comparison between features of the process and its nearest CmdType (e.g., as determined using a Levenstein distance) can be performed. The existing CmdType can be expanded to include the process, or, as applicable, a new CmdType can be created (and other actions taken, such as generating an alert). Another approach to handling processes which do not match an existing CmdType is to designate such processes as unclassified, and once an hour, create a new random forest seeded with process information from a sampling of classified processes (e.g., 10 or 100 processes per CmdType) and the new processes. If a given new process winds up in an existing set, the process is given the corresponding CmdType. If a new cluster is created, a new CmdType can be created.
Conceptually, a polygraph represents the smallest possible graph of clusters that preserve a set of rules (e.g., in which nodes included in the cluster must share a CmdType and behavior). As a result of performing MNC, SimRank, and cluster splitting (e.g., CmdType splitting) many processes are clustered together based on commonality of behavior (e.g., communication behavior) and commonality of application type. Such clustering represents a significant reduction in graph size (e.g., compared to the original raw physical graph). Nonetheless, further clustering can be performed (e.g., by iterating on the graph data using the GBM to achieve such a polygraph). As more information within the graph is correlated, more nodes can be clustered together, reducing the size of the graph, until convergence is reached and no further clustering is possible.
Communications between a cluster of nodes (e.g., nodes of cluster 320) and the first IP address can be considered different behavior from communications between the same set of nodes and the second IP address, and thus communications 324 and 325 will not be combined by MNC/SimRank in various embodiments. Nonetheless, it could be desirable for nodes of clusters 320/322 to be combined (into cluster 326), and for nodes of clusters 321/323 to be combined (into cluster 327), as representing (collectively) communications between a1 and a2. One task that can be performed by data platform 12 is to use DNS query information to map IP addresses to logical entities. As will be described in more detail below, GBM 154 can make use of the DNS query information to determine that graph nodes of cluster 320 and graph nodes of cluster 322 both made DNS queries for “appserverabc.example.com,” which first resolved to 1.1.1.1 and then to 2.2.2.2, and to combine nodes 320/322 and 321/323 together into a single pair of nodes (326 communicating with 327).
In various embodiments, GBM 154 operates in a batch manner in which it receives as input the nodes and edges of a graph for a particular time period along with its previous state, and generates as output clustered nodes, cluster membership edges, cluster-to-cluster edges, events, and its next state.
GBM 154 may not try to consider all types of entities and their relationships that may be available in a conceptual common graph all at once. Instead, GBM uses a concept of models where a subset of node and edge types and their properties are considered in a given model. Such an approach is helpful for scalability, and also to help preserve detailed information (of particular importance in a security context)—as clustering entities in a more complex and larger graph could result in less useful results. In particular, such an approach allows for different types of relationships between entities to be preserved/more easily analyzed.
While GBM 154 can be used with different models corresponding to different subgraphs, core abstractions remain the same across types of models.
For example, each node type in a GBM model is considered to belong to a class. The class can be thought of as a way for the GBM to split nodes based on the criteria it uses for the model. The class for a node is represented as a string whose value is derived from the node's key and properties depending on the GBM Model. Note that different GBM models may create different class values for the same node. For each node type in a given GBM model, GBM 154 can generate clusters of nodes for that type. A GBM generated cluster for a given member node type cannot span more than one class for that node type. GBM 154 generates edges between clusters that have the same types as the edges between source and destination cluster node types.
Additionally or alternatively, the processes described herein as being used for a particular model can be used (can be the same) across models, and different models can also be configured with different settings.
Additionally or alternatively, the node types and the edge types may correspond to existing types in the common graph node and edge tables but this is not necessary. Even when there is a correspondence, the properties provided to GBM 154 are not limited to the properties that are stored in the corresponding graph table entries. They can be enriched with additional information before being passed to GBM 154.
Logically, the input for a GBM model can be characterized in a manner that is similar to other graphs. Edge triplets can be expressed, for example, as an array of source node type, edge type, and destination node type. And, each node type is associated with node properties, and each edge type is associated with edge properties. Other edge triplets can also be used (and/or edge triplets can be extended) in accordance with various embodiments.
Note that the physical input to the GBM model need not (and does not, in various embodiments) conform to the logical input. For example, the edges in the PtypeConn model correspond to edges between Matching Neighbors (MN) clusters, where each process node has an MN cluster identifier property. In the User ID to User ID model (also referred to herein as the Uid2Uid model), edges are not explicitly provided separately from nodes (as the euid array in the node properties serves the same purpose). In both cases, however, the physical information provides the applicable information necessary for the logical input.
The state input for a particular GBM model can be stored in a file, a database, or other appropriate storage. The state file (from a previous run) is provided, along with graph data, except for when the first run for a given model is performed, or the model is reset. In some cases, no data may be available for a particular model in a given time period, and GBM may not be run for that time period. As data becomes available at a future time, GBM can run using the latest state file as input.
GBM 154 outputs cluster nodes, cluster membership edges, and inter-cluster relationship edges that are stored (in some embodiments) in the graph node tables: node_c, node_cm, and node_icr, respectively. The type names of nodes and edges may conform to the following rules:
A given node type can be used in multiple different GBM models. The type names of the cluster nodes generated by two such models for that node type will be different. For instance, process type nodes will appear in both PtypeConn and Uid2Uid models, but their cluster nodes will have different type names.
The membership edge type name is “MemberOf.”
The edge type names for cluster-to-cluster edges will be the same as the edge type names in the underlying node-to-node edges in the input.
The following are example events GBM 154 can generate: new class, new cluster, new edge from class to class, split class (the notion that GBM 154 considers all nodes of a given type and class to be in the same cluster initially and if GBM 154 splits them into multiple clusters, it is splitting a class), new edge from cluster and class, new edge between cluster and cluster, and/or new edge from class to cluster.
One underlying node or edge in the logical input can cause multiple types of events to be generated. Conversely, one event can correspond to multiple nodes or edges in the input. Not every model generates every event type.
Additional information regarding examples of data structures/models that can be used in conjunction with models used by data platform 12 is now provided.
In some examples, a PTypeConn Model clusters nodes of the same class that have similar connectivity relationships. For example, if two processes had similar incoming neighbors of the same class and outgoing neighbors of the same class, they could be clustered.
The node input to the PTypeConn model for a given time period includes non-interactive (i.e., not associated with tty) process nodes that had connections in the time period and the base graph nodes of other types (IP Service Endpoint (IPSep) comprising an IP address and a port), DNS Service Endpoint (DNSSep) and IPAddress) that have been involved in those connections. The base relationship is the connectivity relationship for the following type triplets:
Process, ConnectedTo, Process
Process, ConnectedTo, IP Service Endpoint (IPSep)
Process, ConnectedTo, DNS Service Endpoint (DNSSep)
IPAddress, ConnectedTo, ProcessProcess, DNS, ConnectedTo, Process
The edge inputs to this model are the ConnectedTo edges from the MN cluster, instead of individual node-to-node ConnectedTo edges from the base graph. The membership edges created by this model refer to the base graph node type provided in the input.
Class Values:
The class values of nodes are determined as follows depending on the node type (e.g., Process nodes, IPSep nodes, DNSSep nodes, and IP Address nodes).
Process Nodes:
Events:
A new class event in this model for a process node is equivalent to seeing a new CType being involved in a connection for the first time. Note that this does not mean the CType was not seen before. It is possible that it was previously seen but did not make a connection at that time.
A new class event in this model for an IPSep node with IP_internal=0 is equivalent to seeing a connection to a new external IP address for the first time.
A new class event in this model for a DNSSep node is equivalent to seeing a connection to a new domain for the first time.
A new class event in this model for an IPAddress node with IP_internal=0 and severity=0 is equivalent to seeing a connection from any external IP address for the first time.
A new class event in this model for an IPAddress node with IP_internal=0 and severity>0 is equivalent to seeing a connection from any bad external IP address for the first time.
A new class to class to edge from a class for a process node to a class for a process node is equivalent to seeing a communication from the source CType making a connection to the destination CType for the first time.
A new class to class to edge from a class for a process node to a class for a DNSSep node is equivalent to seeing a communication from the source CType making a connection to the destination domain name for the first time.
An IntPConn Model may be similar to the PtypeConn Model, except that connection edges between parent/child processes and connections between processes where both sides are not interactive are filtered out.
A Uid2Uid Model may cluster processes with the same username that show similar privilege change behavior. For instance, if two processes with the same username had similar effective user values, launched processes with similar usernames, and were launched by processes with similar usernames, then they could be clustered.
An edge between a source cluster and destination cluster generated by this model means that all of the processes in the source cluster had a privilege change relationship to at least one process in the destination cluster.
The node input to this model for a given time period includes process nodes that are running in that period. The value of a class of process nodes is “<username>”.
The base relationship that is used for clustering is privilege change, either by the process changing its effective user ID, or by launching a child process which runs with a different user.
The physical input for this model includes process nodes (only), with the caveat that the complete ancestor hierarchy of process nodes active (i.e., running) for a given time period is provided as input even if an ancestor is not active in that time period. Note that effective user IDs of a process are represented as an array in the process node properties, and launch relationships are available from ppid_hash fields in the properties as well.
A new class event in this model is equivalent to seeing a user for the first time.
A new class to class edge event is equivalent to seeing the source user making a privilege change to the destination user for the first time.
A Ct2Ct Model may cluster processes with the same CType that show similar launch behavior. For instance, if two processes with the same CType have launched processes with similar CTypes, then they could be clustered.
The node input to this model for a given time period includes process nodes that are running in that period. The value class of process nodes is CType (similar to how it is created for the PtypeConn Model).
The base relationship that is used for clustering is a parent process with a given CType launching a child process with another given destination CType.
The physical input for this model includes process nodes (only) with the caveat that the complete ancestor hierarchy active process nodes (i.e., that are running) for a given time period is provided as input even if an ancestor is not active in that time period. Note that launch relationships are available from ppid_hash fields in the process node properties.
An edge between a source cluster and destination cluster generated by this model means that all of the processes in the source cluster launched at least one process in the destination cluster.
A new class event in this model is equivalent to seeing a CType for the first time. Note that the same type of event will be generated by the PtypeConn Model as well.
A new class to class edge event is equivalent to seeing the source CType launching the destination CType for the first time.
An MTypeConn Model may cluster nodes of the same class that have similar connectivity relationships. For example, if two machines had similar incoming neighbors of the same class and outgoing neighbors of the same class, they could be clustered.
A new class event in this model will be generated for external IP addresses or (as applicable) domain names seen for the first time. Note that a new class to class to edge Machine, class to class for an IPSep or DNSName node will also be generated at the same time.
The membership edges generated by this model will refer to Machine, IPAddress, DNSName, and IPSep nodes in the base graph. Though the nodes provided to this model are IPAddress nodes instead of IPSep nodes, the membership edges it generates will refer to IPSep type nodes. Alternatively, the base graph can generate edges between Machine and IPSep node types. Note that the Machine to IPAddress edges have tcp_dst_ports/udp_dst_ports properties that can be used for this purpose.
The node input to this model for a given time period includes machine nodes that had connections in the time period and the base graph nodes of other types (IPAddress and DNSName) that were involved in those connections.
The base relationship is the connectivity relationship for the following type triplets:
Machine, ConnectedTo, Machine
Machine, ConnectedTo, IPAddress
Machine, ConnectedTo, DNSName
IPAddress, ConnectedTo, Machine, DNS, ConnectedTo, Machine
The edge inputs to this model are the corresponding ConnectedTo edges in the base graph.
Class Values:
Machine:
The class value for all Machine nodes is “Machine.”
The machine_terms property in the Machine nodes is used, in various embodiments, for labeling machines that are clustered together. If a majority of the machines clustered together share a term in the machine_terms, that term can be used for labeling the cluster.
IPSep:
The class value for IPSep nodes is determined as follows:
The class value for IpAddress nodes is determined as follows:
DNSName:
The class value for DNSName nodes is determined as follows:
An example structure for a New Class Event is now described.
The key field for this event type looks as follows (using the PtypeConn model as an example):
It contains the class value and also the ID of the cluster where that class value is observed. Multiple clusters can be observed with the same value in a given time period. It contains the class value and also the ID of the cluster where that class value is observed. Multiple clusters can be observed with the same value in a given time period. Accordingly, in some embodiments, GBM 154 generates multiple events of this type for the same class value.
The properties field looks as follows:
The set_size indicates the size of the cluster referenced in the keys field.
Conditions:
For a given model and time period, multiple NewClass events can be generated if there is more than one cluster in that class. NewNode events will not be generated separately in this case.
Example New Class to Class Edge Event Structure:
The key field for this event type looks as follows (using the PtypeConn model as an example):
The key field contains source and destination class values and also source and destination cluster identifiers (i.e., the src/dst_node:key.cid represents the src/dst cluster identifier).
In a given time period for a given model, an event of this type could involve multiple edges between different cluster pairs that have the same source and destination class values. GBM 154 can generate multiple events in this case with different source and destination cluster identifiers.
The props fields look as follows for this event type:
The source and destination sizes represent the sizes of the clusters given in the keys field.
Conditions:
For a given model and time period, multiple NewClassToClass events can be generated if there are more than one pair of clusters in that class pair. NewNodeToNode events are not generated separately in this case.
Combining Events at the Class Level: for a given model and time period, the following example types of events can represent multiple changes in the underlying GBM cluster level graph in terms of multiple new clusters or multiple new edges between clusters:
NewClass
NewEdgeClassToClass
NewEdgeNodeToClass
NewEdgeClassToNode
Multiple NewClass events with the same model and class can be output if there are multiple clusters in that new class.
Multiple NewEdgeClassToClass events with the same model and class pair can be output if there are multiple new cluster edges within that class pair.
Multiple NewEdgeNodeToClass events with the same model and destination class can be output if there are multiple new edges from the source cluster to the destination clusters in that destination class (the first time seeing this class as a destination cluster class for the source cluster).
Multiple NewEdgeClassToNode events with the same model and source class can be output if there are multiple new edges from source clusters to the destination clusters in that source class (the first time seeing this class as a source cluster class for the destination cluster).
These events may be combined at the class level and treated as a single event when it is desirable to view changes at the class level, e.g., when one wants to know when there is a new CType.
In some examples, different models may have partial overlap in the types of nodes they use from the base graph. Therefore, they can generate NewClass type events for the same class. NewClass events can also be combined across models when it is desirable to view changes at the class level.
Using techniques herein, actions can be associated with processes and (e.g., by associating processes with users) actions can thus also be associated with extended user sessions. Such information can be used to track user behavior correctly, even where a malicious user attempts to hide his trail by changing user identities (e.g., through lateral movement). Extended user session tracking can also be useful in operational use cases without malicious intent, e.g., where users make original logins with distinct usernames (e.g., “charlie” or “dave”) but then perform actions under a common username (e.g., “admin” or “support”). One such example is where multiple users with administrator privileges exist, and they need to gain superuser privilege to perform a particular type of maintenance. It may be desirable to know which operations are performed (as the superuser) by which original user when debugging issues. In the following examples describing extended user session tracking, reference is generally made to using the secure shell (ssh) protocol as implemented by openssh (on the server side) as the mechanism for logins. However, extended user session tracking is not limited to the ssh protocol or a particular limitation and the techniques described herein can be extended to other login mechanisms.
On any given machine, there will be a process that listens for and accepts ssh connections on a given port. This process can run the openssh server program running in daemon mode or it could be running another program (e.g., initd on a Linux system). In either case, a new process running openssh will be created for every new ssh login session and this process can be used to identify an ssh session on that machine. This process is called the “privileged” process in openssh.
After authentication of the ssh session, when an ssh client requests a shell or any other program to be run under that ssh session, a new process that runs that program will be created under (i.e., as a child of) the associated privileged process. If an ssh client requests port forwarding to be performed, the connections will be associated with the privileged process.
In modern operating systems such as Linux and Windows, each process has a parent process (except for the very first process) and when a new process is created the parent process is known. By tracking the parent-child hierarchy of processes, one can determine if a particular process is a descendant of a privileged openssh process and thus if it is associated with an ssh login session.
For user session tracking across machines (or on a single machine with multiple logins) in a distributed environment, it is established when two login sessions have a parent-child relationship. After that, the “original” login session, if any, for any given login session can be determined by following the parent relationship recursively.
The external domain could be a malicious domain, or it could be benign. Suppose the external domain is malicious (and, e.g., Charlie has malicious intent). It would be advantageous (e.g., for security reasons) to be able to trace the contact with the external domain back to Machine A, and then back to Charlie's IP address. Using techniques described herein (e.g., by correlating process information collected by various agents), such tracking of Charlie's activities back to his original login (330) can be accomplished. In particular, an extended user session can be tracked that associates Charlie's ssh processes together with a single original login and thus original user.
As described herein, software agents (such as agent 112) may run on machines (such as a machine that implements one of nodes 116) and detect new connections, processes, and/or logins. As also previously explained, such agents send associated records to data platform 12 which includes one or more datastores (e.g., data store 30) for persistently storing such data. Such data can be modeled using logical tables, also persisted in datastores (e.g., in a relational database that provides an SQL interface), allowing for querying of the data. Other datastores such as graph oriented databases and/or hybrid schemes can also be used.
The following identifiers are commonly used in the tables:
MID
PID_hash
An ssh login session can be identified uniquely by an (MID, PID_hash) tuple. The MID is a machine identifier that is unique to each machine, whether physical or virtual, across time and space. Operating systems use numbers called process identifiers (PIDs) to identify processes running at a given time. Over time processes may die and new processes may be started on a machine or the machine itself may restart. The PID is not necessarily unique across time in that the same PID value can be reused for different processes at different times. In order to track process descendants across time, one should therefore account for time as well. In order to be able to identify a process on a machine uniquely across time, another number called a PID hash is generated for the process. In various embodiments, the PID hash is generated using a collision-resistant hash function that takes the PID, start time, and (in various embodiments, as applicable) other properties of a process.
Input data collected by agents comprises the input data model and is represented by the following logical tables:
connections
processes
logins
A connections table may maintain records of TCP/IP connections observed on each machine. Example columns included in a connections table are as follows:
The source fields (IP address and port) correspond to the side from which the connection was initiated. On the destination side, the agent associates an ssh connection with the privileged ssh process that is created for that connection.
For each connection in the system, there will be two records in the table, assuming that the machines on both sides of the connection capture the connection. These records can be matched based on equality of the tuple (src_IP_addr, src_port, dst_IP_addr, dst_port, Prot) and proximity of the start time fields (e.g., with a one minute upper threshold between the start time fields).
A processes table maintains records of processes observed on each machine. It may have the following columns:
A logins table may maintain records of logins to machines. It may have the following columns:
Output data generated by session tracking is represented with the following logical tables:
login-local-descendant
login-connection
login-lineage
Using data in these tables, it is possible to determine descendant processes of a given ssh login session across the environment (i.e., spanning machines). Conversely, given a process, it is possible to determine if it is an ssh login descendant as well as the original ssh login session for it if so.
A login-local-descendant table maintains the local (i.e., on the same machine) descendant processes of each ssh login session. It may have the following columns:
A login-connections table may maintain the connections associated with ssh logins. It may have the following columns:
A login-lineage table may maintain the lineage of ssh login sessions. It may have the following columns:
The parent_MID and parent_sshd_PID hash columns can be null if there is no parent ssh login. In that case, the (MID, sshd_PID_hash) tuple will be the same as the (origin_MID, origin_sshd_PID_hash) tuple.
At time t1 (365), a first ssh connection is made to Machine A (366) from an external source (367) by a user having a username of “X.” In the following example, suppose the external source has an IP address of 1.1.1.10 and uses source port 10000 to connect to Machine A (which has an IP address of 2.2.2.20 and a destination port 22). External source 367 is considered an external source because its IP address is outside of the environment being monitored (e.g., is a node outside of entity A's datacenter, connecting to a node inside of entity A's datacenter).
A first ssh login session LS1 is created on machine A for user X. The privileged openssh process for this login is A1 (368). Under the login session LS1, the user creates a bash shell process with PID_hash A2 (369).
At time t2 (370), inside the bash shell process A2, the user runs an ssh program under a new process A3 (371) to log in to machine B (372) with a different username (“Y”). In particular, an ssh connection is made from source IP address 2.2.2.20 and source port 10001 (Machine A's source information) to destination IP address 2.2.2.21 and destination port 22 (Machine B's destination information).
A second ssh login session LS2 is created on machine B for user Y. The privileged openssh process for this login is B1 (373). Under the login session LS2, the user creates a bash shell process with PID_hash B2 (374).
At time t3 (376), inside the bash shell process B2, the user runs a curl command under a new process B3 (377) to download a file from an external destination (378). In particular, an HTTPS connection is made from source IP address 2.2.2.21 and source port 10002 (Machine B's source information) to external destination IP address 3.3.3.30 and destination port 443 (the external destination's information).
Using techniques described herein, it is possible to determine the original user who initiated the connection to external destination 378, which in this example is a user having the username X on machine A (where the extended user session can be determined to start with ssh login session LS1).
Based on local descendant tracking, the following determinations can be on machine A and B without yet having performed additional processing (described in more detail below):
A3 is a descendant of A1 and thus associated with LS1.
The connection to the external domain from machine B is initiated by B3.
B3 is a descendant of B1 and is thus associated with LS2.
Connection to the external domain is thus associated with LS2.
An association between A3 and LS2 can be established based on the fact that LS2 was created based on an ssh connection initiated from A3. Accordingly, it can be determined that LS2 is a child of LS1.
To determine the user responsible for making the connection to the external destination (e.g., if it were a known bad destination), first, the process that made the connection would be traced, i.e., from B3 to LS2. Then LS2 would be traced to LS1 (i.e., LS1 is the origin login session for LS2). Thus the user for this connection is the user for LS1, i.e., X. As represented in
In the example scenario, it is assumed that both ssh connections occur in the same analysis period. However, the approaches described herein will also work for connections and processes that are created in different time periods.
The process begins at 381 when new ssh connection records are identified. In particular, new ssh connections started during the current time period are identified by querying the connections table. The query uses filters on the start time and dst_port columns. The values of the range filter on the start time column are based on the current time period. The dst_port column is checked against ssh listening port(s). By default, the ssh listening port number is 22. However, as this could vary across environments, the port(s) that openssh servers are listening to in the environment can be determined by data collection agents dynamically and used as the filter value for the dst_port as applicable. In the scenario depicted in
At 382, ssh connection records reported from source and destination sides of the same connection are matched. The ssh connection records (e.g., returned from the query at 381) are matched based on the following criteria:
The five tuples (src_IP, dst_IP, IP_prot, src_port, dst_port) of the connection records must match.
The delta between the start times of the connections must be within a limit that would account for the worst case clock difference expected between two machines in the environment and typical connection setup latency.
If there are multiple matches possible, then the match with the smallest time delta is chosen.
Note that record 390 from machine A for the incoming connection from the external source cannot be matched with another record as there is an agent only on the destination side for this connection. Example output of portion 382 of process 380 is shown in
At 383, new logins during the current time period are identified by querying the logins table. The query uses a range filter on the login_time column with values based on the current time period. In the example depicted in
At 384, matched ssh connection records created at 382 and new login records created at 383 are joined to create new records that will eventually be stored in the login-connection table. The join condition is that dst_MID of the matched connection record is equal to the MID of the login record and the dst_PID_hash of the matched connection record is equal to the sshd_PID_hash of the login record. In the example depicted in
At 385, login-local-descendant records in the lookback time period are identified. It is possible that a process that is created in a previous time period makes an ssh connection in the current analysis batch period. Although not depicted in the example illustrated in
At 386, new processes that are started in the current time period are identified by querying the processes table. The query uses a range filter on the start_time column with values based on the current time period. In the example depicted in
At 387, new login-local-descendant records are identified. The purpose is to determine whether any of the new processes in the current time period are descendants of an ssh login process and if so to create records that will be stored in the login-local-descendant table for them. In order to do so, the parent-child relationships between the processes are recursively followed. Either a top down or bottom up approach can be used. In a top down approach, the ssh local descendants in the lookback period identified at 385, along with new ssh login processes in the current period identified at 384 are considered as possible ancestors for the new processes in the current period identified at 386.
Conceptually, the recursive approach can be considered to include multiple sub-steps where new processes that are identified to be ssh local descendants in the current sub-step are considered as ancestors for the next step. In the example scenario depicted in
Sub-Step 1:
Process A2 is a local descendant of LS1 (i.e., MID=A, sshd_PID_hash=A1) because it is a child of process A1 which is the login process for LS1.
Process B2 is a local descendant of LS2 (i.e., MID=B, sshd_PID_hash=B1) because it is a child of process B1 which is the login process for LS2.
Sub-Step 2:
Process A3 is a local descendant of LS1 because it is a child of process A2 which is associated to LS1 in sub-step 1.
Process B3 is a local descendant of LS2 because it is a child of process B1 which is associated to LS2 in sub-step 1.
Implementation portion 387 can use a datastore that supports recursive query capabilities, or, queries can be constructed to process multiple conceptual sub-steps at once. In the example depicted in
At 388, the lineage of new ssh logins created in the current time period is determined by associating their ssh connections to source processes that may be descendants of other ssh logins (which may have been created in the current period or previous time periods). In order to do so, first an attempt is made to join the new ssh login connections in the current period (identified at 384) with the combination of the login local descendants in the lookback period (identified at 385) and the login local descendants in the current time period (identified at 386). This will create adjacency relationships between child and parent logins. In the example depicted in
Next, the adjacency relationships are used to find the original login sessions. While not shown in the sample scenario, there could be multiple ssh logins in a chain in the current time period, in which case a recursive approach (as in 387) could be used. At the conclusion of portion 388, the login lineage records depicted in
Finally, at 389, output data is generated. In particular, the new login-connection, login-local-descendant, and login-lineage records generated at 384, 387, and 388 are inserted into their respective output tables (e.g., in a transaction manner).
An alternate approach to matching TCP connections between machines running an agent is for the client to generate a connection GUID and send it in the connection request (e.g., the SYN packet) it sends and for the server to extract the GUID from the request. If two connection records from two machines have the same GUID, they are for the same connection. Both the client and server will store the GUID (if it exists) in the connection records they maintain and report. On the client side, the agent can configure the network stack (e.g., using IP tables functionality on Linux) to intercept an outgoing TCP SYN packet and modify it to add the generated GUID as a TCP option. On the server side, the agent already extracts TCP SYN packets and thus can look for this option and extract the GUID if it exists.
Example graph-based user tracking and threat detection embodiments associated with data platform 12 will now be described. Administrators and other users of network environments (e.g., entity A's datacenter 104) often change roles to perform tasks. As one example, suppose that at the start of a workday, an administrator (hereinafter “Joe Smith”) logs in to a console, using an individualized account (e.g., username=joe.smith). Joe performs various tasks as himself (e.g., answering emails, generating status reports, writing code, etc.). For other tasks (e.g., performing updates), Joe may require different/additional permission than his individual account has (e.g., root privileges). One way Joe can gain access to such permissions is by using sudo, which will allow Joe to run a single command with root privileges. Another way Joe can gain access to such permissions is by su or otherwise logging into a shell as root. After gaining root privileges, another thing that Joe can do is switch identities. As one example, to perform administrative tasks, Joe may use “su help” or “su database-admin” to become (respectively) the help user or the database-admin user on a system. He may also connect from one machine to another, potentially changing identities along the way (e.g., logging in as joe.smith at a first console, and connecting to a database server as database-admin). When he's completed various administrative tasks, Joe can relinquish his root privileges by closing out of any additional shells created, reverting back to a shell created for user joe.smith.
While there are many legitimate reasons for Joe to change his identity throughout the day, such changes may also correspond to nefarious activity. Joe himself may be nefarious, or Joe's account (joe.smith) may have been compromised by a third party (whether an “outsider” outside of entity A's network, or an “insider”). Using techniques described herein, the behavior of users of the environment can be tracked (including across multiple accounts and/or multiple machines) and modeled (e.g., using various graphs described herein). Such models can be used to generate alerts (e.g., to anomalous user behavior). Such models can also be used forensically, e.g., helping an investigator visualize various aspects of a network and activities that have occurred, and to attribute particular types of actions (e.g., network connections or file accesses) to specific users.
In a typical day in a datacenter, a user (e.g., Joe Smith) will log in, run various processes, and (optionally) log out. The user will typically log in from the same set of IP addresses, from IP addresses within the same geographical area (e.g., city or country), or from historically known IP addresses/geographical areas (i.e., ones the user has previously/occasionally used). A deviation from the user's typical (or historical) behavior indicates a change in login behavior. However, it does not necessarily mean that a breach has occurred. Once logged into a datacenter, a user may take a variety of actions. As a first example, a user might execute a binary/script. Such binary/script might communicate with other nodes in the datacenter, or outside of the datacenter, and transfer data to the user (e.g., executing “curl” to obtain data from a service external to the datacenter). As a second example, the user can similarly transfer data (e.g., out of the datacenter), such as by using POST. As a third example, a user might change privilege (one or more times), at which point the user can send/receive data as per above. As a fourth example, a user might connect to a different machine within the datacenter (one or more times), at which point the user can send/receive data as per the above.
In various embodiments, the above information associated with user behavior is broken into four tiers. The tiers represent example types of information that data platform 12 can use in modeling user behavior:
1. The user's entry point (e.g., domains, IP addresses, and/or geolocation information such as country/city) from which a user logs in.
2. The login user and machine class.
3. Binaries, executables, processes, etc. a user launches.
4. Internal servers with which the user (or any of the user's processes, child processes, etc.) communicates, and external contacts (e.g., domains, IP addresses, and/or geolocation information such as country/city) with which the user communicates (i.e., transfers data).
In the event of a security breach, being able to concretely answer questions about such information can be very important. And, collectively, such information is useful in providing an end-to-end path (e.g., for performing investigations).
In the following example, suppose a user (“UserA”) logs into a machine (“Machine01”) from a first IP address (“IP01”). Machine01 is inside a datacenter. UserA then launches a script (“runnable.sh”) on Machine01. From Machine01, UserA next logs into a second machine (“Machine02”) via ssh, also as UserA, also within the datacenter. On Machine02, UserA again launches a script (“new_runnable.sh”). On Machine02, UserA then changes privilege, becoming root on Machine02. From Machine02, UserA (now as root) logs into a third machine (“Machine03”) in the datacenter via ssh, as root on Machine03. As root on Machine03, the user executes a script (“collect_data.sh”) on Machine03. The script internally communicates (as root) to a MySQL-based service internal to the datacenter, and downloads data from the MySQL-based service. Finally, as root on Machine03, the user externally communicates with a server outside the datacenter (“External01”), using a POST command. To summarize what has occurred, in this example, the source/entry point is IP01. Data is transferred to an external server External01. The machine performing the transfer to External01 is Machine03. The user transferring the data is “root” (on Machine03), while the actual user (hiding behind root) is UserA.
In the above scenario, the “original user” (ultimately responsible for transmitting data to External01) is UserA, who logged in from IP01. Each of the processes ultimately started by UserA, whether started at the command line (tty) such as “runnable.sh” or started after an ssh connection such as “new_runnable.sh,” and whether as UserA, or as a subsequent identity, are all examples of child processes which can be arranged into a process hierarchy.
As previously mentioned, machines can be clustered together logically into machine clusters. One approach to clustering is to classify machines based on information such as the types of services they provide/binaries they have installed upon them/processes they execute. Machines sharing a given machine class (as they share common binaries/services/etc.) will behave similarly to one another. Each machine in a datacenter can be assigned to a machine cluster, and each machine cluster can be assigned an identifier (also referred to herein as a machine class). One or more tags can also be assigned to a given machine class (e.g., database_servers_west or prod_web_frontend). One approach to assigning a tag to a machine class is to apply term frequency analysis (e.g., TF/IDF) to the applications run by a given machine class, selecting as tags those most unique to the class. Data platform 12 can use behavioral baselines taken for a class of machines to identify deviations from the baseline (e.g., by a particular machine in the class).
The inclusion of an original user in both Tier 1 and Tier 2 allows for horizontal tiering. Such horizontal tiering ensures that there is no overlap between any two users in Tier 1 and Tier 2. Such lack of overlap provides for faster searching of an end-to-end path (e.g., one starting with a Tier 0 node and terminating at a Tier 3 node). Horizontal tiering also helps in establishing baseline insider behavior. For example, by building an hourly insider behavior graph, new edges/changes in edges between nodes in Tier 1 and Tier 2 can be identified. Any such changes correspond to a change associated with the original user. And, any such changes can be surfaced as anomalous and alerts can be generated.
As explained above, Tier 1 corresponds to a user (e.g., user “U”) logging into a machine having a particular machine class (e.g., machine class “M”). Tier 2 is a cluster of processes having command line similarity (e.g., CType “C”), having an original user “U,” and running as a particular effective user (e.g., user “U1”). The value of U1 may be the same as U (e.g., joe.smith in both cases), or the value of U1 may be different (e.g., U=joe.smith and U1=root). Thus, while an edge may be present from a Tier 1 node to a Tier 2 node, the effective user in the Tier 2 node may or may not match the original user (while the original user in the Tier 2 node will match the original user in the Tier 1 node).
A change from a user U into a user U1 can take place in a variety of ways. Examples include where U becomes U1 on the same machine (e.g., via su), and also where U sshes to other machine(s). In both situations, U can perform multiple changes, and can combine approaches. For example, U can become U1 on a first machine, ssh to a second machine (as U1), become U2 on the second machine, and ssh to a third machine (whether as user U2 or user U3). In various embodiments, the complexity of how user U ultimately becomes U3 (or U5, etc.) is hidden from a viewer of an insider behavior graph, and only an original user (e.g., U) and the effective user of a given node (e.g., U5) are depicted. As applicable (e.g., if desired by a viewer of the insider behavior graph), additional detail about the path (e.g., an end-to-end path of edges from user U to user U5) can be surfaced (e.g., via user interactions with nodes).
Nodes 414-423 are examples of Tier 2 nodes—processes that are launched by users in Tier 1 and their child, grandchild, etc. processes. Note that also depicted in
In the example shown in
The following are examples of changes that can be tracked using an insider behavior graph model:
A user logs in from a new IP address.
A user logs in from a geolocation not previously used by that user.
A user logs into a new machine class.
A user launches a process not previously used by that user.
A user connects to an internal server to which the user has not previously connected.
An original user communicates with an external server (or external server known to be malicious) with which that user has not previously communicated.
A user communicates with an external server which has a geolocation not previously used by that user.
Such changes can be surfaced as alerts, e.g., to help an administrator determine when/what anomalous behavior occurs within a datacenter. Further, the behavior graph model can be used (e.g., during forensic analysis) to answer questions helpful during an investigation. Examples of such questions include:
Was there any new login activity (Tier 0) in the timeframe being investigated? As one example, has a user logged in from an IP address with unknown geolocation information? Similarly, has a user started communicating externally with a new Tier 3 node (e.g., one with unknown geolocation information).
Has there been any suspicious login activity (Tier 0) in the timeframe being investigated? As one example, has a user logged in from an IP address that corresponds to a known bad IP address as maintained by Threat aggregator 150? Similarly, has there been any suspicious Tier 3 activity?
Were any anomalous connections made within the datacenter during the timeframe being investigated? As one example, suppose a given user (“Frank”) typically enters a datacenter from a particular IP address (or range of IP addresses), and then connects to a first machine type (e.g., bastion), and then to a second machine type (e.g., databaseprod). If Frank has directly connected to database_prod (instead of first going through bastion) during the timeframe, this can be surfaced using the insider graph.
Who is (the original user) responsible for running a particular process?
An example of an insider behavior graph being used in an investigation is depicted in
Suppose Bill's credentials are compromised by a nefarious outsider (“Eve”).
In some cases, a single edge can indicate a serious threat. For example, if server 432 (or 435) is included in a known bad IP listing, edge 436 (or 439) indicates compromise. An alert that includes an appropriate severity level (e.g., “threat level high”) can be generated. In other cases, a combination of edges could indicate a threat (where a single edge might otherwise result in a lesser warning). In the example shown in
Where is a user logging in from?
Have any users logged in from a known bad address?
Have any non-developer users accessed development machines?
Which machines does a particular user access?
Examples of alerts that can be generated using the user login graph include:
A user logs in from a known bad IP address.
A user logs in from a new country for the first time.
A new user logs into the datacenter for the first time.
A user accesses a machine class that the user has not previously accessed.
One way to track privilege changes in a datacenter is by monitoring a process hierarchy of processes. To help filter out noisy commands/processes such as “su-u,” the hierarchy of processes can be constrained to those associated with network activity. In a *nix system, each process has two identifiers assigned to it, a process identifier (PID) and a parent process identifier (PPID). When such a system starts, the initial process is assigned a PID 0. Each user process has a corresponding parent process.
Using techniques described herein, a graph can be constructed (also referred to herein as a privilege change graph) which models privilege changes. In particular, a graph can be constructed which identifies where a process P1 launches a process P2, where P1 and P2 each have an associated user U1 and U2, with U1 being an original user, and U2 being an effective user. In the graph, each node is a cluster of processes (sharing a CType) executed by a particular (original) user. As all the processes in the cluster belong to the same user, a label that can be used for the cluster is the user's username. An edge in the graph, from a first node to a second node, indicates that a user of the first node changed its privilege to the user of the second node.
As with other graphs, anomalies in graph 443 can be used to generate alerts. Three examples of such alerts are as follows:
New user entering the datacenter. Any time a new user enters the datacenter and runs a process, the graph will show a new node, with a new CType. This indicates a new user has been detected within the datacenter.
Privilege change. As explained above, a new edge, from a first node (user A) to a second node (user B) indicates that user A has changed privilege to user B.
Privilege escalation. Privilege escalation is a particular case of privilege change, in which the first user becomes root.
An example of an anomalous privilege change and an example of an anomalous privilege escalation are each depicted in graph 450 of
An Extensible query interface for dynamic data compositions and filter applications will now be described.
As described herein, datacenters are highly dynamic environments. And, different customers of data platform 12 (e.g., entity A vs. entity B) may have different/disparate needs/requirements of data platform 12, e.g., due to having different types of assets, different applications, etc. Further, as time progresses, new software tools will be developed, new types of anomalous behavior will be possible (and should be detectable), etc. In various embodiments, data platform 12 makes use of predefined relational schema (including by having different predefined relational schema for different customers). However, the complexity and cost of maintaining/updating such predefined relational schema can rapidly become problematic—particularly where the schema includes a mix of relational, nested, and hierarchical (graph) datasets. In other embodiments, the data models and filtering applications used by data platform 12 are extensible. As will be described in more detail below, in various embodiments, data platform 12 supports dynamic query generation by automatic discovery of join relations via static or dynamic filtering key specifications among composable data sets. This allows a user of data platform 12 to be agnostic to modifications made to existing data sets as well as creation of new data sets. The extensible query interface also provides a declarative and configurable specification for optimizing internal data generation and derivations.
As will also be described in more detail below, data platform 12 is configured to dynamically translate user interactions (e.g., received via web app 120) into SQL queries (and without the user needing to know how to write queries). Such queries can then be performed (e.g., by query service 166) against any compatible backend (e.g., data store 30).
In the example shown in
User A notes in the timeline (462) that a user, Harish, connected to a known bad server (examplebad.com) using wget, an event that has a critical severity level. User A can click on region 463 to expand details about the event inline (which will display, for example, the text “External connection made to known bad host examplebad.com at port 80 from application ‘wget’ running on host dev1.lacework.internal as user harish”) directly below line 462. User A can also click on link 464-1, which will take her to a dossier for the event (depicted in
As shown in interface 466, the event of Harish using wget to contact examplebad.com on March 16 was assigned an event ID of 9291 by data platform 12 (467). For convenience to user A, the event is also added to her dashboard in region 476 as a bookmark (468). A summary of the event is depicted in region 469. By interacting with boxes shown in region 470, user A can see a timeline of related events. In this case, user A has indicated that she would like to see other events involving the wget application (by clicking box 471). Events of critical and medium security involving wget occurred during the one hour window selected in region 472.
Region 473 automatically provides user A with answers to questions that may be helpful to have answers to while investigating event 9291. If user A clicks on any of the links in the event description (474), she will be taken to a corresponding dossier for the link. As one example, suppose user A clicks on link 475. She will then be presented with interface 477 shown in
Interface 477 is an embodiment of a dossier for a domain. In this example, the domain is “examplebad.com,” as shown in region 478. Suppose user A would like to track down more information about interactions entity A resources have made with examplebad.com between January 1 and March 20. She selects the appropriate time period in region 479 and information in the other portions of interface 477 automatically update to provide various information corresponding to the selected time frame. As one example, user A can see that contact was made with examplebad.com a total of 17 times during the time period (480), as well as a list of each contact (481). Various statistical information is also included in the dossier for the time period (482). If she scrolls down in interface 477, user A will be able to view various polygraphs associated with examplebad.com, such as an application-communication polygraph (483).
Data stored in data store 30 can be internally organized as an activity graph. In the activity graph, nodes are also referred to as Entities. Activities generated by Entities are modeled as directional edges between nodes. Thus, each edge is an activity between two Entities. One example of an Activity is a “login” Activity, in which a user Entity logs into a machine Entity (with a directed edge from the user to the machine). A second example of an Activity is a “launch” Activity, in which a parent process launches a child process (with a directed edge from the parent to the child). A third example of an Activity is a “DNS query” Activity, in which either a process or a machine performs a query (with a directed edge from the requestor to the answer, e.g., an edge from a process to www.example.com). A fourth example of an Activity is a network “connected to” Activity, in which processes, IP addresses, and listen ports can connect to each other (with a directed edge from the initiator to the server).
As will be described in more detail below, query service 166 provides either relational views or graph views on top of data stored in data store 30. Typically, a user will want to see data filtered using the activity graph. For example, if an entity was not involved in an activity in a given time period, that entity should be filtered out of query results. Thus, a request to show “all machines” in a given time frame will be interpreted as “show distinct machines that were active” during the time frame.
Query service 166 relies on three main data model elements: fields, entities, and filters. As used herein, a field is a collection of values with the same type (logical and physical). A field can be represented in a variety of ways, including: 1. a column of relations (table/view), 2. a return field from another entity, 3. an SQL aggregation (e.g., COUNT, SUM, etc.), 4. an SQL expression with the references of other fields specified, and 5. a nested field of a JSON object. As viewed by query service 166, an entity is a collection of fields that describe a data set. The data set can be composed in a variety of ways, including: 1. a relational table, 2. a parameterized SQL statement, 3. DynamicSQL created by a Java function, and 4. join/project/aggregate/subclass of other entities. Some fields are common for all entities. One example of such a field is a “first observed” timestamp (when first use of the entity was detected). A second example of such a field is the entity classification type (e.g., one of: 1. Machine (on which an agent is installed), 2. Process, 3. Binary, 4. UID, 5. IP, 6. DNS Information, 7. ListenPort, and 8. PType). A third example of such a field is a “last observed” timestamp.
A filter is an operator that: 1. takes an entity and field values as inputs, 2. a valid SQL expression with specific reference(s) of entity fields, or 3. is a conjunct/disjunct of filters. As will be described in more detail below, filters can be used to filter data in various ways, and limit data returned by query service 166 without changing the associated data set.
As mentioned above, a dossier is a template for a collection of visualizations. Each visualization (e.g., the box including chart 484) has a corresponding card, which identifies particular target information needed (e.g., from data store 30) to generate the visualization. In various embodiments, data platform 12 maintains a global set of dossiers/cards. Users of data platform 12 such as user A can build their own dashboard interfaces using preexisting dossiers/cards as components, and/or they can make use of a default dashboard (which incorporates various of such dossiers/cards).
A JSON file can be used to store multiple cards (e.g., as part of a query service catalog). A particular card is represented by a single JSON object with a unique name as a field name.
Each card may be described by the following named fields:
TYPE: the type of the card. Example values include:
Entity (the default type)
SQL
Filters
DynamicSQL
graphFilter
graph
Function
Template
PARAMETERS: a JSON array object that contains an array of parameter objects with the following fields:
name (the name of the parameter)
required (a Boolean flag indicating whether the parameter is required or not)
default (a default value of the parameter)
props (a generic JSON object for properties of the parameter. Possible values are: “utype” (a user defined type), and “scope” (an optional property to configure a namespace of the parameter))
value (a value for the parameter—non-null to override the default value defined in nested source entities)
SOURCES: a JSON array object explicitly specifying references of input entities. Each source reference has the following attributes:
name (the card/entity name or fully-qualified Table name)
type (required for base Table entity)
alias (an alias to access this source entity in other fields (e.g., returns, filters, groups, etc))
RETURNS: a required JSON array object of a return field object. A return field object can be described by the following attributes:
field (a valid field name from a source entity)
expr (a valid SQL scalar expression. References to input fields of source entities are specified in the format of #{Entity.Field}. Parameters can also be used in the expression in the format of ${ParameterName})
type (the type of field, which is required for return fields specified by expr. It is also required for all return fields of an Entity with an SQL type)
alias (the unique alias for return field)
aggr (possible aggregations are: COUNT, COUNT_DISTINCT, DISTINCT, MAX, MIN, AVG, SUM, FIRST_VALUE, LAST_VALUE)
case (JSON array object represents conditional expressions “when” and “expr”)
fieldsFrom, and, except (specification for projections from a source entity with excluded fields)
props (general JSON object for properties of the return field. Possible properties include: “filterGroup,” “title,” “format,” and “utype”)
PROPS: generic JSON objects for other entity properties
SQL: a JSON array of string literals for SQL statements. Each string literal can contain parameterized expressions ${ParameterName} and/or composable entity by #{EntityName}
GRAPH: required for graph entity. Has the following required fields:
source (including “type,” “props,” and “keys”)
target (including “type,” “props,” and “keys”)
edge (including “type” and “props”)
JOINS: a JSON array of join operators. Possible fields for a join operator include:
type (possible join types include: “loj”—Left Outer Join, “join”—Inner Join, “in”—Semi Join, “implicit”—Implicit Join)
left (a left hand side field of join)
right (a right hand side field of join)
keys (key columns for multi-way joins)
order (a join order of multi-way joins)
FKEYS: a JSON array of FilterKey(s). The fields for a FilterKey are:
type (type of FilterKey)
fieldRefs (reference(s) to return fields of an entity defined in the sources field)
alias (an alias of the FilterKey, used in implicit join specification)
FILTERS: a JSON array of filters (conjunct). Possible fields for a filter include:
type (types of filters, including: “eq”—equivalent to SQL=, “ne”—equivalent to SQL <>, “ge”—equivalent to SQL22 =, “gt”—equivalent to SQL >, “le”—equivalent to SQL <=, “lt”—equivalent to SQL <, “like”—equivalent to SQL LIKE, “not like”—equivalent to SQL NOT LIKE, “rlike”—equivalent to SQL RLIKE (Snowflake specific), “not_rlike”—equivalent to SQL NOT RLIKE (Snowflake specific), “in”—equivalent to SQL IN, “not_in”—equivalent to SQL NOT IN)
expr (generic SQL expression)
field (field name)
value (single value)
values (for both IN and NOT IN)
ORDERS: a JSON array of ORDER BY for returning fields. Possible attributes for the ORDER BY clause include:
field (field ordinal index (1 based) or field alias)
order (asc/desc, default is ascending order)
GROUPS: a JSON array of GROUP BY for returning fields. Field attributes are:
field (ordinal index (1 based) or alias from the return fields)
LIMIT: a limit for the number of records to be returned
OFFSET: an offset of starting position of returned data. Used in combination with limit for pagination.
Suppose customers of data platform 12 (e.g., entity A and entity B) request new data transformations or a new aggregation of data from an existing data set (as well as a corresponding visualization for the newly defined data set). As mentioned above, the data models and filtering applications used by data platform 12 are extensible. Thus, two example scenarios of extensibility are (1) extending the filter data set, and (2) extending a FilterKey in the filter data set.
Data platform 12 includes a query service catalog that enumerates cards available to users of data platform 12. New cards can be included for use in data platform 12 by being added to the query service catalog (e.g., by an operator of data platform 12). For reusability and maintainability, a single external-facing card (e.g., available for use in a dossier) can be composed of multiple (nested) internal cards. Each newly added card (whether external or internal) will also have associated FilterKey(s) defined. A user interface (UI) developer can then develop a visualization for the new data set in one or more dossier templates. The same external card can be used in multiple dossier templates, and a given external card can be used multiple times in the same dossier (e.g., after customization). Examples of external card customization include customization via parameters, ordering, and/or various mappings of external data fields (columns).
As mentioned above, a second extensibility scenario is one in which a FilterKey in the filter data set is extended (i.e., existing template functions are used to define a new data set). As also mentioned above, data sets used by data platform 12 are composable/reusable/extensible, irrespective of whether the data sets are relational or graph data sets. One example data set is the User Tracking polygraph, which is generated as a graph data set (comprising nodes and edges). Like other polygraphs, User Tracking is an external data set that can be visualized both as a graph (via the nodes and edges) and can also be used as a filter data set for other cards, via the cluster identifier (CID) field.
As mentioned above, as users such as user A navigate through/interact with interfaces provided by data platform 12 (e.g., as shown in
Each card (e.g., as stored in the query service catalog and used in a dossier) can be introspected by a /card/describe/CardID REST request.
At runtime (e.g., whenever it receives a request from web app 120), query service 166 parses the list of implicit joins and creates a Join graph to manifest relationships of FilterKeys among Entities. A Join graph (an example of which is depicted in
At runtime, each Implicit Join uses the Join graph to find all possible join paths. The search of possible join paths starts with the outer FilterKey of an implicit join. One approach is to use a shortest path approach, with breadth first traversal and subject to the following criteria:
Use the priority order list of Join Links for all entities in the same implicit join group.
Stop when a node (Entity) is reached which has local filter(s).
Include all join paths at the same level (depth).
Exclude join paths based on the predefined rules (path of edges).
At 487, a query is generated based on an implicit join. One example of processing that can be performed at 487 is as follows. As explained above, one way dynamic composition of filter datasets can be implemented is by using FilterKeys and FilterKey Types. And, instances of the same FilterKey Type can be formed as an Implicit Join Group. A Join graph for the entire search space can be constructed from a list of all relationships among all possible Join Groups. And, a final data filter set can be created by traversing edges and producing one or more Join Paths. Finally, the shortest path in the join paths is used to generate an SQL query string.
One approach to generating an SQL query string is to use a query building library (authored in an appropriate language such as Java). For example, a common interface “sqlGen” may be used in conjunction with process 485 is as follows. First, a card/entity is composed by a list of input cards/entities, where each input card recursively is composed by its own list of input cards. This nested structure can be visualized as a tree of query blocks(SELECT) in standard SQL constructs. SQL generation can be performed as the traversal of the tree from root to leaf entities (top-down), calling the sqlGen of each entity. Each entity can be treated as a subclass of the Java class(Entity). An implicit join filter (EntityFilter) is implemented as a subclass of Entity, similar to the right hand side of a SQL semi-join operator. Unlike the static SQL semi-join construct, it is conditionally and recursively generated even if it is specified in the input sources of the JSON specification. Another recursive interface can also be used in conjunction with process 485, preSQLGen, which is primarily the entry point for EntityFilter to run a search and generate nested implicit join filters. During preSQLGen recursive invocations, the applicability of implicit join filters is examined and pushed down to its input subquery list. Another top-down traversal, pullUpCachable, can be used to pull up common sub-query blocks, including those dynamically generated by preSQLGen, such that SELECT statements of those cacheable blocks are generated only once at top-level WITH clauses. A recursive interface, sqlWith, is used to generate nested subqueries inside WITH clauses. The recursive calls of a sqlWith function can generate nested WITH clauses as well. An sqlFrom function can be used to generate SQL FROM clauses by referencing those subquery blocks in the WITH clauses. It also produces INNER/OUTER join operators based on the joins in the specification. Another recursive interface, sqlWhere, can be used to generate conjuncts and disjuncts of local predicates and semi-join predicates based on implicit join transformations. Further, sqlProject, sqlGroupBy, sqlOrderBy, and sqlLimitOffset can respectively be used to translate the corresponding directives in JSON spec to SQL SELECT list, GROUP BY, ORDER BY, and LIMIT/OFFSET clauses.
Returning to process 485, at 488, the query (generated at 487) is used to respond to the request. As one example of the processing performed at 488, the generated query is used to query data store 30 and provide (e.g., to web app 120) fact data formatted in accordance with a schema (e.g., as associated with a card associated with the request received at 486).
Although the examples described herein largely relate to embodiments where data is collected from agents and ultimately stored in a data store such as those provided by Snowflake, in other embodiments data that is collected from agents and other sources may be stored in different ways. For example, data that is collected from agents and other sources may be stored in a data warehouse, data lake, data mart, and/or any other data store.
A data warehouse may be embodied as an analytic database (e.g., a relational database) that is created from two or more data sources. Such a data warehouse may be leveraged to store historical data, often on the scale of petabytes. Data warehouses may have compute and memory resources for running complicated queries and generating reports. Data warehouses may be the data sources for business intelligence (‘BI’) systems, machine learning applications, and/or other applications. By leveraging a data warehouse, data that has been copied into the data warehouse may be indexed for good analytic query performance, without affecting the write performance of a database (e.g., an Online Transaction Processing (‘OLTP’) database). Data warehouses also enable the joining data from multiple sources for analysis. For example, a sales OLTP application probably has no need to know about the weather at various sales locations, but sales predictions could take advantage of that data. By adding historical weather data to a data warehouse, it would be possible to factor it into models of historical sales data.
Data lakes, which store files of data in their native format, may be considered as “schema on read” resources. As such, any application that reads data from the lake may impose its own types and relationships on the data. Data warehouses, on the other hand, are “schema on write,” meaning that data types, indexes, and relationships are imposed on the data as it is stored in the EDW. “Schema on read” resources may be beneficial for data that may be used in several contexts and poses little risk of losing data. “Schema on write” resources may be beneficial for data that has a specific purpose, and good for data that must relate properly to data from other sources. Such data stores may include data that is encrypted using homomorphic encryption, data encrypted using privacy-preserving encryption, smart contracts, non-fungible tokens, decentralized finance, and other techniques.
Data marts may contain data oriented towards a specific business line whereas data warehouses contain enterprise-wide data. Data marts may be dependent on a data warehouse, independent of the data warehouse (e.g., drawn from an operational database or external source), or a hybrid of the two. In embodiments described herein, different types of data stores (including combinations thereof) may be leveraged. Such data stores may be proprietary or may be embodied as vendor provided products or services such as, for example, Google BigQuery, Druid, Amazon Redshift, IBM Db2, Dremio, Databricks Lakehouse Platform, Cloudera, Azure Synapse Analytics, and others.
The deployments (e.g., a customer's cloud deployment) that are analyzed, monitored, evaluated, or otherwise observed by the systems described herein (e.g., systems that include components such as the platform 12 of
In some embodiments, the deployments that are analyzed, monitored, evaluated, or otherwise observed by the systems described herein (e.g., systems that include components such as the platform 12 of
In some embodiments, the deployments (e.g., a customer's cloud deployment) that are analyzed, monitored, evaluated, or otherwise observed by the systems described herein (e.g., systems that include components such as the platform 12 of
In some embodiments, SaC may be implemented by initially classifying workloads (e.g., by sensitivity, by criticality, by deployment model, by segment). Policies that can be instantiated as code may subsequently be designed. For example, compute-related policies may be designed, access-related policies may be designed, application-related policies may be designed, network-related policies may be designed, data-related policies may be designed, and so on. Security as code may then be instantiated through architecture and automation, as successful implementation of SaC can benefit from making key architectural-design decisions and executing the right automation capabilities. Next, operating model protections may be built and supported. For example, an operating model may “shift left” to maximize self-service and achieve full-life-cycle security automation (e.g., by standardizing common development toolchains, CI/CD pipelines, and the like). In such an example, security policies and access controls may be part of the pipeline, automatic code review and bug/defect detection may be performed, automated build processes may be performed, vulnerability scanning may be performed, checks against a risk-control framework may be made, and other tasks may be performed all before deploying an infrastructure or components thereof.
The systems described herein may be useful in analyzing, monitoring, evaluating, or otherwise observing a GitOps environment. In a GitOps environment, Git may be viewed as the one and only source of truth. As such, GitOps may require that the desired state of infrastructure (e.g., a customer's cloud deployment) be stored in version control such that the entire audit trail of changes to such infrastructure can be viewed or audited. In a GitOps environment, all changes to infrastructure are embodied as fully traceable commits that are associated with committer information, commit IDs, time stamps, and/or other information. In such an embodiment, both an application and the infrastructure (e.g., a customer's cloud deployment) that supports the execution of the application are therefore versioned artifacts and can be audited using the gold standards of software development and delivery. Readers will appreciate that while the systems described herein are described as analyzing, monitoring, evaluating, or otherwise observing a GitOps environment, in other embodiments other source control mechanisms may be utilized for creating infrastructure, making changes to infrastructure, and so on. In these embodiments, the systems described herein may similarly be used for analyzing, monitoring, evaluating, or otherwise observing such environments.
As described in other portions of the present disclosure, the systems described herein may be used to analyze, monitor, evaluate, or otherwise observe a customer's cloud deployment. While securing traditional datacenters requires managing and securing an IP-based perimeter with networks and firewalls, hardware security modules (‘HSMs’), security information and event management (‘SIEM’) technologies, and other physical access restrictions, such solutions are not particularly useful when applied to cloud deployments. As such, the systems described herein may be configured to interact with and even monitor other solutions that are appropriate for cloud deployments such as, for example, “zero trust” solutions.
A zero trust security model (a.k.a., zero trust architecture) describes an approach to the design and implementation of IT systems. A primary concept behind zero trust is that devices should not be trusted by default, even if they are connected to a managed corporate network such as the corporate LAN and even if they were previously verified. Zero trust security models help prevent successful breaches by eliminating the concept of trust from an organization's network architecture. Zero trust security models can include multiple forms of authentication and authorization (e.g., machine authentication and authorization, human/user authentication and authorization) and can also be used to control multiple types of accesses or interactions (e.g., machine-to-machine access, human-to-machine access).
In some embodiments, the systems described herein may be configured to interact with zero trust solutions in a variety of ways. For example, agents that collect input data for the systems described herein (or other components of such systems) may be configured to access various machines, applications, data sources, or other entity through a zero trust solution, especially where local instances of the systems described herein are deployed at edge locations. Likewise, given that zero trust solutions may be part of a customer's cloud deployment, the zero trust solution itself may be monitored to identify vulnerabilities, anomalies, and so on. For example, network traffic to and from the zero trust solution may be analyzed, the zero trust solution may be monitored to detect unusual interactions, log files generated by the zero trust solution may be gathered and analyzed, and so on.
In some embodiments, the systems described herein may leverage various tools and mechanisms in the process of performing its primary tasks (e.g., monitoring a cloud deployment). For example, Linux eBPF is mechanism for writing code to be executed in the Linux kernel space. Through the usage of eBPF, user mode processes can hook into specific trace points in the kernel and access data structures and other information. For example, eBPF may be used to gather information that enables the systems described herein to attribute the utilization of networking resources or network traffic to specific processes. This may be useful in analyzing the behavior of a particular process, which may be important for observability/SIEM.
The systems described may be configured to collect security event logs (or any other type of log or similar record of activity) and telemetry in real time for threat detection, for analyzing compliance requirements, or for other purposes. In such embodiments, the systems described herein may analyze telemetry in real time (or near real time), as well as historical telemetry, to detect attacks or other activities of interest. The attacks or activities of interest may be analyzed to determine their potential severity and impact on an organization. In fact, the attacks or activities of interest may be reported, and relevant events, logs, or other information may be stored for subsequent examination.
In one embodiment, systems described herein may be configured to collect security event logs (or any other type of log or similar record of activity) and telemetry in real time to provide customers with a SIEM or SIEM-like solution. SIEM technology aggregates event data produced by security devices, network infrastructure, systems, applications, or other source. Centralizing all of the data that may be generated by a cloud deployment may be challenging for a traditional SIEM, however, as each component in a cloud deployment may generate log data or other forms of machine data, such that the collective amount of data that can be used to monitor the cloud deployment can grow to be quite large. A traditional SIEM architecture, where data is centralized and aggregated, can quickly result in large amounts of data that may be expensive to store, process, retain, and so on. As such, SIEM technologies may frequently be implemented such that silos are created to separate the data.
In some embodiments of the present disclosure, data that is ingested by the systems described herein may be stored in a cloud-based data warehouse such as those provided by Snowflake and others. Given that companies like Snowflake offer data analytics and other services to operate on data that is stored in their data warehouses, in some embodiments one or more of the components of the systems described herein may be deployed in or near Snowflake as part of a secure data lake architecture (a.k.a., a security data lake architecture, a security data lake/warehouse). In such an embodiment, components of the systems described herein may be deployed in or near Snowflake to collect data, transform data, analyze data for the purposes of detecting threats or vulnerabilities, initiate remediation workflows, generate alerts, or perform any of the other functions that can be performed by the systems described herein. In such embodiments, data may be received from a variety of sources (e.g., EDR or EDR-like tools that handle endpoint data, cloud access security broker (‘CASB’) or CASB-like tools that handle data describing interactions with cloud applications, Identity and Access Management (‘IAM’) or IAM-like tools, and many others), normalized for storage in a data warehouse, and such normalized data may be used by the systems described herein. In fact, the systems described herein may actually implement the data sources (e.g., an EDR tool, a CASB tool, an IAM tool) described above.
In some embodiments one data source that is ingested by the systems described herein is log data, although other forms of data such as network telemetry data (flows and packets) and/or many other forms of data may also be utilized. In some embodiments, event data can be combined with contextual information about users, assets, threats, vulnerabilities, and so on, for the purposes of scoring, prioritization and expediting investigations. In some embodiments, input data may be normalized, so that events, data, contextual information, or other information from disparate sources can be analyzed more efficiently for specific purposes (e.g., network security event monitoring, user activity monitoring, compliance reporting). The embodiments described here offer real-time analysis of events for security monitoring, advanced analysis of user and entity behaviors, querying and long-range analytics for historical analysis, other support for incident investigation and management, reporting (for compliance requirements, for example), and other functionality.
In some embodiments, the systems described herein may be part of an application performance monitoring (‘APM’) solution. APM software and tools enable the observation of application behavior, observation of its infrastructure dependencies, observation of users and business key performance indicators (‘KPIs’) throughout the application's life cycle, and more. The applications being observed may be developed internally, as packaged applications, as software as a service (‘SaaS’), or embodied in some other ways. In such embodiments, the systems described herein may provide one or more of the following capabilities:
The ability to operate as an analytics platform that ingests, analyzes, and builds context from traces, metrics, logs, and other sources.
Automated discovery and mapping of an application and its infrastructure components.
Observation of an application's complete transactional behavior, including interactions over a data communications network.
Monitoring of applications running on mobile (native and browser) and desktop devices.
Identification of probable root causes of an application's performance problems and their impact on business outcomes.
Integration capabilities with automation and service management tools.
Analysis of business KPIs and user journeys (for example, login to check-out).
Domain-agnostic analytics capabilities for integrating data from third-party sources.
Endpoint monitoring to understand the user experience and its impact on business outcomes.
Support for virtual desktop infrastructure (‘VDI’) monitoring.
In embodiments where the systems described herein are used for APM, some components of the system may be modified, other components may be added, some components may be removed, and other components may remain the same. In such an example, similar mechanisms as described elsewhere in this disclosure may be used to collect information from the applications, network resources used by the application, and so on. The graph based modelling techniques may also be leveraged to perform some of the functions mentioned above, or other functions as needed.
In some embodiments, the systems described herein may be part of a solution for developing and/or managing artificial intelligence (‘AI’) or machine learning (‘ML’) applications. For example, the systems described herein may be part of an AutoML tool that automate the tasks associated with developing and deploying ML models. In such an example, the systems described herein may perform various functions as part of an AutoML tool such as, for example, monitoring the performance of a series of processes, microservices, and so on that are used to collectively form the AutoML tool. In other embodiments, the systems described herein may perform other functions as part of an AutoML tool or may be used to monitor, analyze, or otherwise observe an environment that the AutoML tool is deployed within.
In some embodiments, the systems described herein may be used to manage, analyze, or otherwise observe deployments that include other forms of AI/ML tools. For example, the systems described herein may manage, analyze, or otherwise observe deployments that include AI services. AI services are, like other resources in an as-a-service model, ready-made models and AI applications that are consumable as services and made available through APIs. In such an example, rather than using their own data to build and train models for common activities, organizations may access pre-trained models that accomplish specific tasks. Whether an organization needs natural language processing (‘NLP’), automatic speech recognition (‘ASR’), image recognition, or some other capability, AI services simply plug-and-play into an application through an API. Likewise, the systems described herein may be used to manage, analyze, or otherwise observe deployments that include other forms of AI/ML tools such as Amazon Sagemaker (or other cloud machine-learning platform that enables developers to create, train, and deploy ML models) and related services such as Data Wrangler (a service to accelerate data prep for ML) and Pipelines (a CI/CD service for ML).
In some embodiments, the systems described herein may be used to manage, analyze, or otherwise observe deployments that include various data services. For example, data services may include secure data sharing services, data marketplace services, private data exchanges services, and others. Secure data sharing services can allow access to live data from its original location, where those who are granted access to the data simply reference the data in a controlled and secure manner, without latency or contention from concurrent users. Because changes to data are made to a single version, data remains up-to-date for all consumers, which ensures data models are always using the latest version of such data. Data marketplace services operate as a single location to access live, ready-to-query data (or data that is otherwise ready for some other use). A data marketplace can even include a “feature stores,” which can allow data scientists to repurpose existing work. For example, once a data scientist has converted raw data into a metric (e.g., costs of goods sold), this universal metric can be found quickly and used by other data scientists for quick analysis against that data.
In some embodiments, the systems described herein may be used to manage, analyze, or otherwise observe deployments that include distributed training engines or similar mechanisms such as, for example, such as tools built on Dask. Dask is an open source library for parallel computing that is written in Python. Dask is designed to enable data scientists to improve model accuracy faster, as Dask enables data scientists can do everything in Python end-to-end, which means that they no longer need to convert their code to execute in environments like Apache Spark. The result is reduced complexity and increased efficiency. The systems described herein may also be used to manage, analyze, or otherwise observe deployments that include technologies such as RAPIDS (an open source Python framework which is built on top of Dask). RAPIDS optimizes compute time and speed by providing data pipelines and executing data science code entirely on graphics processing units (GPUs) rather than CPUs. Multi-cluster, shared data architecture, DataFrames, Java user-defined functions (UDF) are supported to enable trained models to run within a data warehouse.
In some embodiments, the systems described herein may be leveraged for the specific use case of detecting and/or remediating ransomware attacks and/or other malicious action taken with respect to data, systems, and/or other resources associated with one or more entities. Ransomware is a type of malware from cryptovirology that threatens to publish the victim's data or perpetually block access to such data unless a ransom is paid. In such embodiments, ransomware attacks may be carried out in a manner such that patterns (e.g., specific process-to-process communications, specific data access patterns, unusual amounts of encryption/re-encryption activities) emerge, where the systems described herein may monitor for such patterns. Alternatively, ransomware attacks may involve behavior that deviates from normal behavior of a cloud deployment that is not experiencing a ransomware attack, such that the mere presence of unusual activity may trigger the systems described herein to generate alerts or take some other action, even without explicit knowledge that the unusual activity is associated with a ransomware attack.
In some embodiments, particular policies may be put in place the systems described herein may be configured to enforce such policies as part of an effort to thwart ransomware attacks. For example, particular network sharing protocols (e.g., Common Internet File System (‘CIFS’), Network File System (‘NFS’)) may be avoided when implementing storage for backup data, policies that protect backup systems may be implemented and enforced to ensure that usable backups are always available, multifactor authentication for particular accounts may be utilized and accounts may be configured with the minimum privilege required to function, isolated recovery environments may be created and isolation may be monitored and enforced to ensure the integrity of the recovery environment, and so on. As described in the present disclosure, the systems described herein may be configured to explicitly enforce such policies or may be configured to detect unusual activity that represents a violation of such policies, such that the mere presence of unusual activity may trigger the systems described herein to generate alerts or take some other action, even without explicit knowledge that the unusual activity is associated with a violation of a particular policy.
Readers will appreciate that ransomware attacks are often deployed as part of a larger attack that may involve, for example:
Penetration of the network through means such as, for example, stolen credentials and remote access malware.
Stealing of credentials for critical system accounts, including subverting critical administrative accounts that control systems such as backup, Active Directory (‘AD’), DNS, storage admin consoles, and/or other key systems.
Attacks on a backup administration console to turn off or modify backup jobs, change retention policies, or even provide a roadmap to where sensitive application data is stored.
Data theft attacks.
As a result of the many aspects that are part of a ransomware attack, embodiments of the present disclosure may be configured as follows:
The systems may include one or more components that detect malicious activity based on the behavior of a process.
The systems may include one or more components that store indicator of compromise (‘IOC’) or indicator of attack (‘IOA’) data for retrospective analysis.
The systems may include one or more components that detect and block fileless malware attacks.
The systems may include one or more components that remove malware automatically when detected.
The systems may include a cloud-based, SaaS-style, multitenant infrastructure.
The systems may include one or more components that identify changes made by malware and provide the recommended remediation steps or a rollback capability.
The systems may include one or more components that detect various application vulnerabilities and memory exploit techniques.
The systems may include one or more components that continue to collect suspicious event data even when a managed endpoint is outside of an organization's network.
The systems may include one or more components that perform static, on-demand malware detection scans of folders, drives, devices, or other entities.
The systems may include data loss prevention (DLP) functionality.
In some embodiments, the systems described herein may manage, analyze, or otherwise observe deployments that include deception technologies. Deception technologies allow for the use of decoys that may be generated based on scans of true network areas and data. Such decoys may be deployed as mock networks running on the same infrastructure as the real networks, but when an intruder attempts to enter the real network, they are directed to the false network and security is immediately notified. Such technologies may be useful for detecting and stopping various types of cyber threats such as, for example, Advanced Persistent Threats (‘APTs’), malware, ransomware, credential dumping, lateral movement and malicious insiders. To continue to outsmart increasingly sophisticated attackers, these solutions may continuously deploy, support, refresh and respond to deception alerts.
In some embodiments, the systems described herein may manage, analyze, or otherwise observe deployments that include various authentication technologies, such as multi-factor authentication and role-based authentication. In fact, the authentication technologies may be included in the set of resources that are managed, analyzed, or otherwise observed as interactions with the authentication technologies may monitored. Likewise, log files or other information retained by the authentication technologies may be gathered by one or more agents and used as input to the systems described herein.
In some embodiments, the systems described herein may be leveraged for the specific use case of detecting supply chain attacks. More specifically, the systems described herein may be used to monitor a deployment that includes software components, virtualized hardware components, and other components of an organization's supply chain such that interactions with an outside partner or provider with access to an organization's systems and data can be monitored. In such embodiments, supply chain attacks may be carried out in a manner such that patterns (e.g., specific interactions between internal and external systems) emerge, where the systems described herein may monitor for such patterns. Alternatively, supply chain attacks may involve behavior that deviates from normal behavior of a cloud deployment that is not experiencing a supply chain attack, such that the mere presence of unusual activity may trigger the systems described herein to generate alerts or take some other action, even without explicit knowledge that the unusual activity is associated with a supply chain attack.
In some embodiments, the systems described herein may be leveraged for other specific use cases such as, for example, detecting the presence of (or preventing infiltration from) cryptocurrency miners (e.g., bitcoin miners), token miners, hashing activity, non-fungible token activity, other viruses, other malware, and so on. As described in the present disclosure, the systems described herein may monitor for such threats using known patterns or by detecting unusual activity, such that the mere presence of unusual activity may trigger the systems described herein to generate alerts or take some other action, even without explicit knowledge that the unusual activity is associated with a particular type of threat, intrusion, vulnerability, and so on.
The systems described herein may also be leveraged for endpoint protection, such the systems described herein form all of or part of an endpoint protection platform. In such an embodiment, agents, sensors, or similar mechanisms may be deployed on or near managed endpoints such as computers, servers, virtualized hardware, internet of things (‘lotT’) devices, mobile devices, phones, tablets, watches, other personal digital devices, storage devices, thumb drives, secure data storage cards, or some other entity. In such an example, the endpoint protection platform may provide functionality such as:
Prevention and protection against security threats including malware that uses file-based and fileless exploits.
The ability to apply control (allow/block) to access of software, scripts, processes, microservices, and so on.
The ability to detect and prevent threats using behavioral analysis of device activity, application activity, user activity, and/or other data.
The ability for facilities to investigate incidents further and/or obtain guidance for remediation when exploits evade protection controls
The ability to collect and report on inventory, configuration and policy management of the endpoints.
The ability to manage and report on operating system security control status for the monitored endpoints.
The ability to scan systems for vulnerabilities and report/manage the installation of security patches.
The ability to report on internet, network and/or application activity to derive additional indications of potentially malicious activity.
Example embodiments are described in which policy enforcement, threat detection, or some other function is carried out by the systems described herein by detecting unusual activity, such that the mere presence of unusual activity may trigger the systems described herein to generate alerts or take some other action, even without explicit knowledge that the unusual activity is associated with a particular type of threat, intrusion, vulnerability, and so on. Although these examples are largely described in terms of identifying unusual activity, in these examples the systems described herein may be configured to learn what constitutes ‘normal activity’—where ‘normal activity’ is activity observed, modeled, or otherwise identified in the absence of a particular type of threat, intrusion, vulnerability, and so on. As such, detecting ‘unusual activity’ may alternatively be viewed as detecting a deviation from ‘normal activity’ such that ‘unusual activity’ does not need to be identified and sought out. Instead, deviations from ‘normal activity’ may be assumed to be ‘unusual activity’.
Readers will appreciate that while specific examples of the functionality that the systems described herein can provide are included in the present disclosure, such examples are not to be interpreted as limitations as to the functionality that the systems described herein can provide. Other functionality may be provided by the systems described herein, all of which are within the scope of the present disclosure. For the purposes of illustration and not as a limitation, additional examples can include governance, risk, and compliance (‘GRC’), threat detection and incident response, identity and access management, network and infrastructure security, data protection and privacy, identity and access management (‘IAM’), and many others.
In order to provide the functionality described above, the systems described herein or the deployments that are monitored by such systems may implement a variety of techniques. For example, the systems described herein or the deployments that are monitored by such systems may tag data and logs to provide meaning or context, persistent monitoring techniques may be used to monitor a deployment at all times and in real time, custom alerts may be generated based on rules, tags, and/or known baselines from one or more polygraphs, and so on.
Although examples are described above where data may be collected from one or more agents, in some embodiments other methods and mechanisms for obtaining data may be utilized. For example, some embodiments may utilize agentless deployments where no agent (or similar mechanism) is deployed on one or more customer devices, deployed within a customer's cloud deployment, or deployed at another location that is external to the data platform. In such embodiments, the data platform may acquire data through one or more APIs such as the APIs that are available through various cloud services. For example, one or more APIs that enable a user to access data captured by Amazon CloudTrail may be utilized by the data platform to obtain data from a customer's cloud deployment without the use of an agent that is deployed on the customer's resources. In some embodiments, agents may be deployed as part of a data acquisition service or tool that does not utilize a customer's resources or environment. In some embodiments, agents (deployed on a customer's resources or elsewhere) and mechanisms in the data platform that can be used to obtain data from through one or more APIs such as the APIs that are available through various cloud services may be utilized. In some embodiments, one or more cloud services themselves may be configured to push data to some entity (deployed anywhere), which may or may not be an agent. In some embodiments, other data acquisition techniques may be utilized, including combinations and variations of the techniques described above, each of which is within the scope of the present disclosure.
Readers will appreciate that while specific examples of the cloud deployments that may be monitored, analyzed, or otherwise observed by the systems described herein have been provided, such examples are not to be interpreted as limitations as to the types of deployments that may be monitored, analyzed, or otherwise observed by the systems described herein. Other deployments may be monitored, analyzed, or otherwise observed by the systems described herein, all of which are within the scope of the present disclosure. For the purposes of illustration and not as a limitation, additional examples can include multi-cloud deployments, on-premises environments, hybrid cloud environments, sovereign cloud environments, heterogeneous environments, DevOps environments, DevSecOps environments, GitOps environments, quantum computing environments, data fabrics, composable applications, composable networks, decentralized applications, and many others.
Readers will appreciate that while specific examples of the types of data that may be collected, transformed, stored, and/or analyzed by the systems described herein have been provided, such examples are not to be interpreted as limitations as to the types of data that may be collected, transformed, stored, and/or analyzed by the systems described herein. Other types of data can include, for example, data collected from different tools (e.g., DevOps tools, DevSecOps, GitOps tools), different forms of network data (e.g., routing data, network translation data, message payload data, Wi-Fi data, Bluetooth data, personal area networking data, payment device data, near field communication data, metadata describing interactions carried out over a network, and many others), data describing processes executing in a container, lambda, EC2 instance, virtual machine, or other execution environment), information describing the execution environment itself, and many other types of data.
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The private environment 502 also includes a connector 506 that can be used to connect the private environment to the distributed edge platform 510 via a zero trust 508 authentication service. The connecter 506 may be embodied, for example, as one or more modules of computer program instructions executing on computer hardware, virtualized hardware, or in some other execution environment (including on resources in a dedicated networking components such as a router). The connector may be configured to act as a communications interface between the private environment 502 and the distributed edge platform 510. In such an example, access between the private environment 502 and the distributed edge platform 510 may involve the zero trust 508 authentication service, as any participants in data communications between the private environment 502, the distributed edge platform 510, and the user devices 512, 514, 522 that are monitored by the distributed edge platform 510 must be authenticated by the zero trust 508 authentication service. The zero trust 508 authentication service may be embodied, for example, as a third party authentication service such as Okta, or in some other way. In fact, readers will appreciate that the distributed edge platform 510 may be integrated with (and may leverage) a variety of third party tools such as identity and access management tools, Mobile device management (‘MDM’) tools, and so on.
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The distributed edge platform 510 may implement policies that identify which users may access which resources 520a-n, what privileges each user has, and other policies so that the user device 514 is only able to access various resources if the policies allow for such access. In fact, the distributed edge platform 510 can do all sorts of behavior analysis (i.e., analysis of device activity and user activity as described below) to add in anomaly detection capabilities, threat assessment, risk assessment, and other security related capabilities as described elsewhere in the present disclosure.
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Readers will appreciate that each instance of the distributed edge platform 510a, 510b, 510c, 510d may, in some embodiments, be deployed on a set of appliances that are deployed in various locations. Each appliance may include, for example, one or more servers or other computing devices, one or more networking devices, one or more storage devices, and so on. In such an example, each appliance may be configured to execute a particular instance of the distributed edge platform 510a, 510b, 510c, 510d.
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For further explanation,
The example method depicted in
Identifying 602 a location of a device that is associated with a user may be carried out in a variety of ways. In fact, identifying 602 a location of the device may be carried out using any of multiple mechanisms for determining a device's location and (in some embodiments) verifying that each mechanism yields the same outcome, or at least the same outcome within a predetermined threshold. For example, identifying 602 a location of the device may be carried out by identifying wireless networks or wireless access points that the device can connect to and determining the location of the available wireless networks or wireless access points. Once the locations of wireless networks or wireless access points that the device can connect to have been identified, other mechanisms may be used to verify the location of the device. For example, the source IP address of a data communications packet generated by the device may be used to determine the location of the device. In such an example, if the locations of wireless networks or wireless access points that the device can connect to and the location of the source IP address of a data communications packet generated by the device match each other, the matching locations may be identified 602 as being the location of a device. The mechanisms for determining a device's location will be explained in greater detail below.
The example method depicted in
Determining 604 device activity associated with the user may be carried out, for example, by one or more data collection agents that are executing on the device, by one or more data collection agents that executing at some other location off of the device, or in some other way. That is, while some information describing device activity may come from the device (OS version, what apps are running locally, etc.), the information describing device activity may also come from outside the device. For example, other cloud services that report what users are doing may be leveraged (e.g., activity logs from Office 365 may be used, activity logs from Dropbox may be used). In such an example, even if no agents or other data collection programs were deployed on the device itself, information describing device activity may still be obtained. As such, determining 604 device activity associated with the user may be carried out by local agents executing on the monitored device itself, by agents executing elsewhere, or by combinations and variations thereof. The data collection agents (whether deployed on the user's device or elsewhere) may include, for example, one or more programs that can carry out a stream-based capture of network traffic in and out of the device (i.e., stream-oriented traffic processing), one or more programs that capture the usage of a device interface (e.g., a keystroke recorder, a recording program for capturing data acquired via a microphone), or other programs. In such a way, the agents may capture various aspects describing how the device is being used, when it is being used, by whom it is being used, where the device is located when being used, and so on.
The example method depicted in
In the example method depicted in
Readers will appreciate that comparisons the device activity and the profile associated with the user may utilize ranges, thresholds, or similar concepts to allow for minor deviations between the device activity and the profile associated with the user. For example, if the profile associated with the user indicates that the device is typically located at the user's office between the hours of 9 AM and 5 PM on weekdays, but the device activity reveals that the user is still at the office at 6 PM on a particular Tuesday evening, this minor deviation may be tolerated and may not rise to the level of triggering an alarm. In contrast, if the device activity reveals that the user is at the office at 2:30 AM on a Sunday morning, this may be viewed as being a larger deviation. In this example, a threshold may be utilized such that the user deviating from their normal activity by 90 minutes (as a very simplified example used for ease of explanation) does not rise to the level of abnormal activity that would trigger an alarm or cause some other remediation workflow to be initiated. In other embodiments, other mechanisms may be used to allow for minor deviations between the device activity and the profile associated with the user, where such minor deviations do not result in determining 606 that the device activity associated with the user deviates from normal activity for the user.
For further explanation,
The example method depicted in
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For further explanation,
The example method depicted in
In the examples described herein, the device activity associated with the user may be continuously monitored for deviation from normal activity. The device activity may be continuously monitored for deviation from normal activity, for example, by determining whether device activity associated with the user deviates from normal activity for the user (as specified in a user profile) every time that a change to the device activity associated with the user occurs, as part of a process that is always executing on some computing resources, or in some other way. In such a way, the systems described herein may be provide real-time or near real-time detection of a deviation from normal activity—rather than batch processing or other form of delayed processing of device activity to determine whether such activity deviates from normal activity.
In the examples described herein, the device activity associated with the user and the profile associated with the user include temporal information. The temporal information may be embodied, for example, as specific dates or times when some activity occurred or normally occurs, as relative times when some activity occurred or normally occurs, ranges of times when some activity occurred or normally occurs, as durations of time when some activity occurred or normally occurs, and so on. As such, the time at which some activity occurred may factor into an evaluation as to whether the activity represents normal activity.
For further explanation,
Readers will appreciate that many forms of information associated with the location of a user device may gathered 902 through a variety of mechanisms. Gathering 902 information associated with the location of a user device may be carried out, for example, using location-related capabilities of the user device such as a global positioning system (‘GPS’) receiver, an Assisted GPS (‘AGPS’) chip, and so on. In other embodiments, gathering 902 information associated with the location of a user device may be carried out using data communications related capabilities of the user device. For example, a Wi-Fi adapter in the user device may detect nearby networks and the Service Set Identifier (‘SSID’) associated with a detected network may be mapped to a geolocation through the use of tools such as Google Geolocation API. Likewise, examining data communications traffic sent by the user device and extracting the client IP address that is associated with the data communications traffic may be used in gathering 902 information associated with the location of the user device. In such an example, the client IP address may be used to query one or more of a variety of services that convert IP addresses to geolocation information (e.g., a city/state, latitude and longitude, and so on). In fact, other embodiments could leverage image sensors or other capabilities of the user device to gather 902 information that may be informative for the purposes of identify a user device's location.
Readers will appreciate that because the information associated with the location of a user device may be gathered 902 for reasons that extend well beyond the context of a geolocation, the information associated with the location of a user device may be information that is more useful in describing the nature of a location rather than an absolute physical location. For example, the particular set of device types that the user device can communicate with may be indicative of a location. Consider an example in which the user device can detect the presence of a thermostat, a smart refrigerator, multiple smart TVs, a router, and the entertainment system of an automobile via its Wi-Fi adapter or Bluetooth adapter. In such an example, this combination of reachable device types may be taken as an indication that the user device is at a private residence. In an example where the user device can only detect the presence of other personal communications devices and also detect the presence of a wireless network that includes a phrase such as “free,” “public,” or “starbucks” in its network name, this combination of reachable devices may be taken as an indication that the user device is at a public location (perhaps a coffee shop). In these examples, rather than attempting to determine a geolocation, information may be gathered 902 that can be used to determine a relative location, a type of location, characteristics of a location, or some other information that may be associated with a particular location.
The example method depicted in
Readers will appreciate that a location is not necessarily ‘known’ in the sense that the device's geolocation is known, although in some embodiments a known location may include a specific geolocation (e.g., 123 Avenue A, San Francisco, Calif.). For example, while it may not be possible to determine the mailing address or street address where the user device is located, the detected presence of a particular set of other devices may be sufficient to determine that the user device is at a ‘home’ location, even if the exact street address of the home cannot be determined. Likewise, detecting that the user device is located at a particular set of GPS coordinates may be insufficient for determining that the location of the user device is ‘known’ if the set of GPS coordinates has no known relationship to a location where the user device has previously been used or is otherwise associated with a set of behaviors that would be expected to be observed when the user device is at the GPS coordinates. In fact, in some embodiments, the location of the user device may only be determined to be a ‘known’ location if the user device has previously been accessed at the location or at some other location where utilization of the user device would be expected to be similar. For example, if the location of the user device is at a hotel, this location may be determined to be a ‘known’ location by virtue of the fact that the user device has been used in the past at other hotels (even if the user device has not been previously used at the exact hotel that it is now located at).
The example method depicted in
In the example depicted in
Determining 908 a characterization of the known location may be carried, for example, through the use of a table, database, or some other data structure/repository that associates known locations with characterizations of each known location. Such a repository can be constructed over time by monitoring the behavior of the user device and other devices. As part of a process of generating characterizations of various locations, the activity of the user device (and other devices) may also be monitored to learn what behavior constitutes ‘normal’ behavior for the user or user device in various locations, using techniques such as those described herein.
The example method depicted in
The example method depicted in
In these examples, readers will appreciate that a library or catalog of known characterizations may be created by observing many devices over time. In fact, each entry (i.e., each known characterization of a location) in the catalog may associated with location information that tends to be associated with a particular characterization. For example, devices may be monitored to determine that when a device is placed in a silent mode between the hours of 8 AM-1 PM on a Sunday, and a touch screen display for the device is not being interacted with by the user, and a microphone in the device detects periods of singing, the device is at a location that is characterized as a ‘religious services’ location. As such, information that was gathered 902 and is associated with an unknown location may be compared to signatures for the entries in the catalog of characterizations to determine whether the unknown location should be characterized using one of the entries in the catalog.
Readers will appreciate that the characterization of an unknown location may be associated with a set of expected device behaviors. For example, when a user device is characterized as being ‘in transit to work’, it may be expected that utilization of the user device may be extremely limited as the user may be operating a vehicle. Likewise, when a user device is characterized as being at a ‘public location without secure Wi-Fi access’, it may be expected that the user device will not be used to access sensitive financial data or initiate substantial monetary transactions on behalf of the user's employer.
The example method depicted in
For further explanation,
In the example method depicted in
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In some embodiments, determining 910, 914 whether device utilization is anomalous may be further based on a temporal profile of device activity. The temporal profile of device activity may include, for example, information describing days and times that particular applications are used on the user device, information describing days and times that the user device is typically being accessed or not being accessed, information describing the relative timing of different user or device activities (e.g., updated code is committed from the user's device to a code repository after text editing software or some other software used to write code has been utilized), or any other information that associates user behavior or device behavior with times at which such behavior is common, permitted, prohibited, and so on. The temporal profile may be embodied as a database, table, or some other data structure. In such embodiments, the relationship between times and device or user activities may be identified through the usage of one or more machine learning models that take activities (and the times associated with the activities) as inputs to the machine learning models.
For further explanation,
In the example depicted in
Consider an example in which a user device is embodied as a laptop computer and the laptop computer can detect the presence of five distinct networks using its Wi-Fi adapter. In such an example, upon detecting the presence of each network, resources may be accessed that associate the access ID of the network with a physical location associated with the network. For example, Google maintains a database that can be accessed via various APIs to determine the latitude and longitude associated with a wireless network's access ID. In some examples, this database may be queried with the access ID of the detected network to receive latitude and longitude information associated with the network. Readers will appreciate that, over time, the results obtained from querying such a database may be cached such and reused. For example, if location information for each of the five distinct networks is obtained and the same user turns on a smartphone that detects the same five networks, the cached results of the previously executed queries may be utilized to determine the first geolocation of the smartphone. Cached results may similarly be used for other users whose devices detect the same networks.
In the example depicted in
Readers will appreciate that the location of a user device may be misidentified, for example, if the user device is connected to a virtual private network or if the user device is being operated in some other way where its IP address (or other data communications attribute) would not be an accurate representation of the device's location. As such, in some embodiments multiple pieces of information that are associated with a location can be used rather than relying exclusively on a single piece of information when determining a user device's location.
In some embodiments, a location cache may be maintained. As described above, as part of the process of determining a location of the user device, external resources may be accessed. For example, resources such as those maintained by Google may be accessed that associate the access ID of a network with a physical location associated with the network. Such resources, however, may not be free to access, may be timely to access, the resource may return location information in a less than ideal format (e.g., the resource return latitude and longitude information when the desired format of the location is a zip code), or may be undesirable to access for other reasons. As such, the results obtained from querying such resources may be cached and reused in a local location cache.
Such a location cache may be a data repository such as a database, a file, a table, or embodied in some other way. In some embodiments, the location cache may be ‘local’ in the sense that it is stored on the user device itself or stored in some location that does not suffer from the same undesirable characteristics as the original resource. Continuing with the example where a Google database may be accessed (for a monetary charge) that associate the access ID of a network with a physical location associated with the network, after that initial access the location information associated with the access ID of the network may be maintained in a database that the user device can access free of charge. Readers will appreciate that in these examples, the content contained in the local location cache may be stored in the format desired by the user device (e.g., stored as city/state information rather than GPS coordinates).
Readers will appreciate that some embodiments may include a different combination of the steps described above, including variations of such steps. For example, some embodiments of establishing a location profile for a user device may include gathering information associated with a location of a user device, determining a characterization of the location, and determining, based on a characterization of the known location, whether device utilization is anomalous such that the step of determining whether a location is known is optional.
For further explanation,
The example method depicted in
Consider an example in which training occurred at time t0. In such an example, any activity associated with the user device that occurred prior to time t0 would be ‘historical’ activity associated with the user device. Further assume that additional training occurred at time t1, which is later than time to. In this example, activity associated with the user device that occurred prior to time t1 would be ‘historical’ activity associated with the user device, at least with respect to the additional training (whereas activity that occurred between time t0 and time t1 would not be ‘historical’ activity with respect to the original training that occurred at time t0).
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For further explanation,
In the example method depicted in
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Readers will appreciate that while the embodiments described above are largely described as individual types of information (e.g., location information, temporal information, device usage information) that may be used to generate 1202 a trained model for detecting normal activity for the user device, readers will appreciate that the process of generating 1202 a trained model for detecting normal activity for the user device may actually include one or more machine learning algorithms ingesting combinations of these types of information. In fact, other types of information may also be used in the process of generating 1202 a trained model for detecting normal activity for the user device. Readers will appreciate that any information that can be captured by an agent that is executing on the user device, including combinations thereof, can be used when generating 1202 a trained model for detecting normal activity for the user device.
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For further explanation,
The user-specific polygraph 1500 depicted in
The user-specific polygraph 1500 depicted in
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The user-specific polygraph 1500 depicted in
For further explanation,
Readers will appreciate that the polygraph 1500 depicted in
One or more embodiments may be described herein with the aid of method steps illustrating the performance of specified functions and relationships thereof. The boundaries and sequence of these functional building blocks and method steps have been arbitrarily defined herein for convenience of description. Alternate boundaries and sequences can be defined so long as the specified functions and relationships are appropriately performed. Any such alternate boundaries or sequences are thus within the scope and spirit of the claims. Further, the boundaries of these functional building blocks have been arbitrarily defined for convenience of description. Alternate boundaries could be defined as long as the certain significant functions are appropriately performed. Similarly, flow diagram blocks may also have been arbitrarily defined herein to illustrate certain significant functionality.
To the extent used, the flow diagram block boundaries and sequence could have been defined otherwise and still perform the certain significant functionality. Such alternate definitions of both functional building blocks and flow diagram blocks and sequences are thus within the scope and spirit of the claims. One of average skill in the art will also recognize that the functional building blocks, and other illustrative blocks, modules and components herein, can be implemented as illustrated or by discrete components, application specific integrated circuits, processors executing appropriate software and the like or any combination thereof.
While particular combinations of various functions and features of the one or more embodiments are expressly described herein, other combinations of these features and functions are likewise possible. The present disclosure is not limited by the particular examples disclosed herein and expressly incorporates these other combinations.
Claims
1. A method of detecting anomalous behavior of a device, the method comprising:
- generating, using information describing historical activity associated with a user device, a trained model for detecting normal activity for the user device;
- gathering information describing current activity associated with the user device; and
- determining, by using the information describing current activity associated with the user device as input to the trained model, whether the user device has deviated from normal activity.
2. The method of claim 1 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing locations at which the user device was utilized; and
- gathering information describing current activity associated with the user device further comprises gathering information describing a location at which the user device is currently being used.
3. The method of claim 1 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing usage of one or more applications accessed by the device; and
- gathering information describing current activity associated with the user device further comprises gathering information describing usage of applications accessed by the device.
4. The method of claim 1 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing times at which activity previously occurred; and
- gathering information describing current activity associated with the user device further comprises gathering information describing times at which current activity occurred on the device.
5. The method of claim 1 further comprising periodically retraining the trained model.
6. The method of claim 1 further comprising generating an alert after determining that the user device has deviated from normal activity.
7. The method of claim 1 further comprising initiating a remediation workflow after determining that the user device has deviated from normal activity.
8. A system for detecting anomalous behavior of a device, the system including computer program instructions that, when executed, cause the system to carry out the steps of:
- generating, using information describing historical activity associated with a user device, a trained model for detecting normal activity for the user device;
- gathering information describing current activity associated with the user device; and
- determining, by using the information describing current activity associated with the user device as input to the trained model, whether the user device has deviated from normal activity.
9. The system of claim 8 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing physical locations at which the user device was utilized; and
- gathering information describing current activity associated with the user device further comprises gathering information describing a location at which the user device is currently being used.
10. The system of claim 8 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing usage of one or more applications accessed by the device; and
- gathering information describing current activity associated with the user device further comprises gathering information describing usage of applications accessed by the device.
11. The system of claim 8 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing times at which activity previously occurred; and
- gathering information describing current activity associated with the user device further comprises gathering information describing times at which current activity occurred on the device.
12. The system of claim 8 further comprising computer program instructions that, when executed, cause the system to carry out the step of periodically retraining the trained model.
13. The system of claim 8 further comprising computer program instructions that, when executed, cause the system to carry out the step of generating an alert after determining that the user device has deviated from normal activity.
14. The system of claim 8 further comprising computer program instructions that, when executed, cause the system to carry out the step of initiating a remediation workflow after determining that the user device has deviated from normal activity.
15. A computer program product for detecting anomalous behavior of a device, the computer program product disposed on a computer readable medium, the computer program product including computer program instructions that, when executed, carry out the steps of:
- generating, using information describing historical activity associated with a user device, a trained model for detecting normal activity for the user device;
- gathering information describing current activity associated with the user device; and
- determining, by using the information describing current activity associated with the user device as input to the trained model, whether the user device has deviated from normal activity.
16. The computer program product of claim 15 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing locations at which the user device was utilized; and
- gathering information describing current activity associated with the user device further comprises gathering information describing a location at which the user device is currently being used.
17. The computer program product of claim 15 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing usage of one or more applications accessed by the device; and
- gathering information describing current activity associated with the user device further comprises gathering information describing usage of applications accessed by the device.
18. The computer program product of claim 15 wherein:
- generating a trained model for detecting normal activity for the user device further comprises generating the trained model using information describing times at which activity previously occurred; and
- gathering information describing current activity associated with the user device further comprises gathering information describing times at which current activity occurred on the device.
19. The computer program product of claim 15 further comprising computer program instructions that, when executed, carry out the step of periodically retraining the trained model.
20. The computer program product of claim 15 further comprising computer program instructions that, when executed, carry out the step of initiating a remediation workflow after determining that the user device has deviated from normal activity.
Type: Application
Filed: Mar 25, 2022
Publication Date: Jul 21, 2022
Inventors: VIKRAM KAPOOR (CUPERTINO, CA), HARISH KUMAR BHARAT SINGH (MOUNTAIN VIEW, CA), WEIFEI ZENG (SUNNYVALE, CA), VIMALKUMAR JEYAKUMAR (LOS ALTOS, CA), THERON TOCK (MOUNTAIN VIEW, CA), YING XIE (CUPERTINO, CA), YIJOU CHEN (CUPERTINO, CA)
Application Number: 17/704,981