Policy-based management system with automatic policy selection and creation capabilities by using singular value decomposition technique
A statistical approach implementing Singular Value Decomposition (SVD) to a policy-based management system for autonomic and on-demand computing applications. The statistical approach empowers a class of applications that require policies to handle ambiguous conditions and allow the system to “evolve” in response to changing operation and environment conditions. In the system and method providing the statistical approach, observed event-policy associated data, which is represented by an event-policy matrix, is treated as a statistical problem with the assumption that there are some underlying or implicit higher order correlations among events and policies. The SVD approach enables such correlations to be modeled, extracted and modified. From these correlations, recommended policies can be selected or created without exact match of policy conditions. With a feedback mechanism, new knowledge can be acquired as new situations occur and the corresponding policies to manage them are recorded and used to generate new event and policy correlations. Consequently, based on these new correlations, new recommended policies can be derived.
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The present invention relates generally to on-demand and autonomic computing systems in IT systems and environments generally, including those computing systems that are managed by a policy-based management system. The invention particularly relates to a novel system and method by which policies can be selected or created automatically based on events observed and knowledge learned. This new approach treats the observed event-policy relationship represented by an event-policy matrix as a statistical problem that can be yield results using a Singular Value Decomposition (SVD) technique.
DESCRIPTION OF THE PRIOR ARTOn demand and autonomic computing, such as described in the reference authored by J. O. Kephart and D. M. Chess entitled “The Vision of Autonomic Computing. IEEE Computer Magazine, January 2003, require policy-based management systems to be responsive to changes in environments and adaptive to new operating conditions. In a typical IT environment, there are thousands of events reporting system faults, status and performance information. New events may also appear due to the on-demand operations, and the occurrences of these events are unpredictable. Traditional policy-based management systems and policy authoring, such as relying entirely on static authoring of “if [condition] then [actions]” rules, become insufficient. New approaches to the design and implementation of policy-based systems have emerged, including goal policies such as described in the references entitled “An AI Perspective on Autonomic Computing Policies”, Policies for Distributed Systems, Networks, 2004 by J. O. Kephart and W. E. Walsh, and “A Goal-based Approach to Policy Refinement”, Proceedings 5th IEEE Policy Workshop (Policy 2004) by A. K. Bandara, E. C. Lupu, J. Moffett, A. Russo. Other new approaches to the design and implementation of policy-based systems have emerged, including utility functions, and data mining and reinforcement learning such as described in the reference entitled “Reinforcement Learning: A Survey”, Journal of Artificial Intelligence Research, Volume 4, 1996 by L. P. Kaelbling, M. Littman, A. Moore.
However, it is the case that none of these approaches provides a systematic way to enable policy-based management system and its policies to be responsive to new and ambiguous situations.
It would be highly desirable to provide a statistical approach to the design and implementation of a policy-based management system by utilizing a mathematical technique called Singular Value Decomposition (SVD).
SUMMARY OF THE INVENTIONAccording to the present invention, there is provided a statistical approach to the design and implementation of a policy-based management system by utilizing a mathematical technique called Singular Value Decomposition (SVD). The SVD technique is closely related to a class of mathematical and statistical techniques, such as eigenvector decomposition, spectral analysis and factor analysis.
Generally, the invention provides a system and method using a statistical approach implementing Singular Value Decomposition (SVD) to a policy-based management system for autonomic and on-demand computing applications. The statistical approach empowers a class of applications that require policies to handle ambiguous conditions and allow the system to “evolve” in response to changing operation and environment conditions. In the system and method providing the statistical approach, observed event-policy associated data, which is represented by an event-policy matrix, is treated as a statistical problem with the assumption that there are some underlying or implicit higher order correlations among events and policies. The SVD approach according to the invention enables such correlations to be modeled, extracted and modified. From these correlations, recommended policies can be selected or created without exact match of policy conditions. With a feedback mechanism, new knowledge can be acquired as new situations occur and the corresponding policies to manage them are recorded and used to generate new event and policy correlations. Consequently, based on these new correlations, new recommended policies can be derived.
Thus, according to one embodiment of the invention, there is provided an adaptive policy-based management system, method and computer program product for computing systems. The adaptive policy-based management system comprises:
a means for representing the occurrences of computer system events and action response policies from computing system resources into a first event-policy data structure;
a means for constructing a second event-policy data structure from the first event-policy data structure, the second event-policy data structure representing an event-policy vector space comprising associative patterns and correlations in the event-policy data;
a means for receiving observed event data set from a computing system resource;
a means for recommending a policy for the observed event data set based on existing policy vectors in the constructed event-policy vector space; and,
a means enabling updating of the first event-policy data structure and the second event-policy data structure representing the event-policy vector space as new observed event data sets are received, thereby increasing accuracy in generating recommended policies as new event knowledge is input.
Further to this embodiment of the invention, the adaptive policy-based management system includes a means for storing received observed data event sets and corresponding action response policies from computing system resources.
Moreover, the adaptive policy-based management system further comprises:
an interface means is provided for enabling a user to review and modify a recommended policy for the observed event data set; and,
a means for executing a recommended policy and determining a policy's effectiveness for managing the observed event data set, wherein the storing means is updated with the received observed data event sets and corresponding modified response policies.
Further to this embodiment, the means for recommending a policy for the observed event data set comprises: a means for constructing a pseudo-policy vector for an observed event set from data in the event-policy vector space; and, a means for determining a recommended policy based on proximity of the pseudo-policy vector and existing policy vectors included in the event-policy vector space. The means for determining a recommended policy comprises means for applying a similarity metric between the pseudo-policy vector and one or more policy vectors.
Preferably, according to the invention, first event-policy data structure comprises an event-policy matrix, and the means for constructing a second event-policy data structure from the first event-policy data structure comprises means for implementing Singular Value Decomposition (SVD)] function on the event-policy matrix.
According to another aspect of the invention, there is provided a method for policy-based management of computing systems, the method comprising:
representing the occurrences of computer system events and action response policies from computing system resources into a first event-policy data structure;
constructing a second event-policy data structure from the first event-policy data structure, the second event-policy data structure representing an event-policy vector space comprising associative patterns and correlations in the event-policy data;
receiving observed event data set from a computing system resource;
recommending a policy for the observed event data set based on existing policy vectors in the constructed event-policy vector space;
enabling updating of the first event-policy data structure and the second event-policy data structure representing the event-policy vector space as new observed event data sets are received, thereby increasing accuracy in generating recommended policies as new event knowledge is input.
Advantageously, the statistical approach implementing Singular Value Decomposition (SVD) to a policy-based management system for autonomic and on-demand computing applications not only is applicable for traditional policy systems where conditions in policy are fixed, but also is applicable for ambiguous and unpredictable situations. Moreover, the use of a SVD based-policy system and its attendant efficiencies may be implemented for specific areas of autonomic and on-demand computing such as a feedback loop, as a symptom recognition mechanism, and as a predictive mechanism.
The present invention may also be applied to other applications, such as applications for selecting preferred parties or persons (from a space of people) with low risks and/or charging them for low fees, for example, for insurance (auto, life) coverage, as well as loan granting or lending.
The objects, features and advantages of the present invention will become apparent to one skilled in the art, in view of the following detailed description taken in combination with the attached drawings, in which:
As shown in
As shown in
The AC device 15 provides a user interface(not shown) that enables an administrator or like authorized user to select one of two system operation modes: 1) a supervised mode whereby the administrator is enabled to examine or modify the recommended policy; or 2) an automatic mode, whereby a recommended policy is accepted without further examination. Initially, the system operates in the supervised mode, whereby the administrator examines the event set as problems occur and executes the corresponding policy to correct the problems. The system records the administrator's actions as event-policy data. After enough knowledge (or trust) has been established, the system may be left to operate in an automatic mode. However, should the automatically generated policies fail to perform as the administrator has expected, the administrator or like user may intervene via the AC or revert the system to run in supervised mode.
For ease of illustration and depicting operation of the invention, a simplified set of security policies P1-P5 is shown in
- E1=more than 25 failed logins in 5 minutes,
- E2=more than 25 logins by a single user/IP,
- E3=excessive logins in the entire system,
- E4=excessive logins in a domain,
- E5=excessive logins in an individual server,
- E6=excessive accounts are blocked by security,
- E7=excessive FTP connections,
- E8=connection established to suspicious IP,
- E9=excessive unknown application terminations, and
- Action for P1=block IP
- Action for P2=block network segment
- Action for P3=block sever access
- Action for P4=disable account
- Action for P5=restrict access to entire system.
Thus, as shown in the example dataset of
According to the invention, the matrix R is decomposed into three matrices by SVD technique as in equation (1) as follows:
R=ESP′ (1)
where E and P′ are the event-policy matrices of respective left singular vectors (gene coefficient vectors) and right singular vectors (expression level vectors) with an example left singular vector E 80 shown in
In a two dimensional model where k=2 as shown in the shaded elements 82, 87 and 92 in respective
The ability to select and/or create a policy based on a new set of events as enabled by the present invention is now described with respect to
In an alternate embodiment, referring back to
An illustrative example is now provided for generating a recommended policy based on a set of observed events is now provided. Specifically, for the example event-policy matrix 75 depicted in
In a further example, an observed event set consists of E4 and E5; a search indicates that there is no matching policy in the current repository. A pseudo-policy Ps is constructed from E4 and E5, represented as point “q” as shown in the two-dimensional event-policy space plot 95 generated as depicted in
In still a further example, an observed event set consists of E6 93, E9 94 and, a new event E10 (excessive external traffic). The system uses E6 and E9 to form the pseudo policy represented as point “f” as shown in
Advantageously, the statistical approach implementing Singular Value Decomposition (SVD) to a policy-based management system for autonomic and on-demand computing applications not only is applicable for traditional policy systems where conditions in policy are fixed, but also is applicable for ambiguous and unpredictable situations. Moreover, the use of a SVD based-policy system and its attendant efficiencies may be implemented for specific areas of autonomic and on-demand computing such as a feedback loop, as a symptom recognition mechanism, and as a predictive mechanism.
The present invention may be applied to other applications, such as applications for selecting preferred parties or persons (from a space of people) with low risks and/or charging them for low fees, for example, for insurance (auto, life) coverage, as well as loan granting or lending.
The present invention has been described with reference to diagrams of methods, apparatus (systems) and computer program products according to embodiments of the invention. It will be understood that each diagram can be implemented by computer program instructions. These computer program instructions may be provided to a processor of a general purpose computer, special purpose computer, embedded processor or other programmable data processing apparatus to produce a machine, such that the instructions, which execute via the processor of the computer or other programmable data processing apparatus, create means for implementing the functions specified herein.
These computer program instructions may also be stored in a computer-readable memory that can direct a computer or other programmable data processing apparatus to function in a particular manner, such that the instructions stored in the computer-readable memory produce an article of manufacture including instruction means which implement the functions specified herein.
The computer program instructions may also be loaded onto a computer-readable or other programmable data processing apparatus to cause a series of operational steps to be performed on the computer or other programmable apparatus to produce a computer implemented process such that the instructions which execute on the computer or other programmable apparatus provide steps for implementing the functions specified herein.
The invention has been described herein with reference to particular exemplary embodiments. Certain alterations and modifications may be apparent to those skilled in the art, without departing from the scope of the invention. The exemplary embodiments are meant to be illustrative, not limiting of the scope of the invention.
Claims
1. An adaptive policy-based management system for computing systems comprising:
- a means for representing the occurrences of computer system events and action response policies from computing system resources into a first event-policy data structure;
- a means for constructing a second event-policy data structure from said first event-policy data structure, said second event-policy data structure representing an event-policy vector space comprising associative patterns and correlations in the event-policy data;
- a means for receiving observed event data set from a computing system resource;
- a means for recommending a policy for said observed event data set based on existing policy vectors in said constructed event-policy vector space;
- a means enabling updating of said first event-policy data structure and said second event-policy data structure representing said event-policy vector space as new observed event data sets are received, thereby increasing accuracy in generating recommended policies as new event knowledge is input.
2. The adaptive policy-based management system as claimed in claim 1, further comprising:
- a means for storing received observed data event sets and corresponding action response policies from computing system resources;
- an interface device for enabling a user to review and modify a recommended policy for said observed event data set;
- a means for executing a recommended policy and determining that policy's effectiveness for managing said observed event data set; and,
- if said executed recommended policy is determined effective, updating said storing means with said received observed data event sets and corresponding modified response policies.
3. The adaptive policy-based management system as claimed in claim 1, wherein said means for recommending a policy for said observed event data set comprises:
- a means for constructing a pseudo-policy vector for an observed event set from data in said event-policy vector space; and,
- a means for determining a recommended policy based on proximity of said pseudo-policy vector and existing policy vectors included in said event-policy vector space.
4. The adaptive policy-based management system as claimed in claim 3, wherein said means for determining a recommended policy comprises means for applying a similarity metric between said pseudo-policy vector and one or more policy vectors.
5. The adaptive policy-based management system as claimed in claim 4, wherein said applied similarity metric includes a dot product function, said recommended policy comprising a policy vector based on a resulting dot product value within a threshold value.
6. The adaptive policy-based management system as claimed in claim 5, wherein more than one policy vectors provide dot product values below said threshold value, said system further comprising means for merging said one or more policy vectors to form a resultant recommended policy.
7. The adaptive policy-based management system as claimed in claim 3, wherein said means for constructing a pseudo-policy vector for an observed event data set comprises obtaining a centroid of said event data points in said observed event data set and generating an event vector corresponding to said centroid.
8. The adaptive policy-based management system as claimed in claim 1, wherein said first event-policy data structure comprises an event-policy matrix, said means for constructing a second event-policy data structure from said first event-policy data structure comprises means for implementing Singular Value Decomposition (SVD)] function on said event-policy matrix.
9. The adaptive policy-based management system as claimed in claim 1, wherein said observed event data set from a computing system resource comprises one or more of: system faults, system status or performance information of said resources.
10. The adaptive policy-based management system as claimed in claim 1, wherein said observed event data set includes a new event or new event patterns for which no existing policy matching condition exists.
11. A method for policy-based management of computing systems, said method comprising:
- representing the occurrences of computer system events and action response policies from computing system resources into a first event-policy data structure;
- constructing a second event-policy data structure from said first event-policy data structure, said second event-policy data structure representing an event-policy vector space comprising associative patterns and correlations in the event-policy data;
- receiving observed event data set from a computing system resource;
- recommending a policy for said observed event data set based on existing policy vectors in said constructed event-policy vector space;
- enabling updating of said first event-policy data structure and said second event-policy data structure representing said event-policy vector space as new observed event data sets are received, thereby increasing accuracy in generating recommended policies as new event knowledge is input.
12. The method as claimed in claim 11, further comprising:
- storing, in a data storage device, received observed data event sets and corresponding action response policies from computing system resources;
- enabling a user to review and modify a recommended policy for said observed event data set via an interface;
- executing a recommended policy and determining a policy's effectiveness for managing said observed event data set; and,
- if said executed recommended policy is determined effective, updating said storing means with said received observed data event sets and corresponding modified response policies.
13. The method as claimed in claim 11, wherein said recommending a policy for said observed event data set comprises:
- constructing a pseudo-policy vector for an observed event set from data in said event-policy vector space; and,
- determining a recommended policy based on proximity of said pseudo-policy vector and existing policy vectors included in said event-policy vector space.
14. The method as claimed in claim 13, wherein said determining a recommended policy comprises: applying a similarity metric between said pseudo-policy vector and one or more policy vectors.
15. The method as claimed in claim 14, wherein said applied similarity metric includes a dot product function, said recommended policy comprising a policy vector based on a resulting dot product value within a threshold value.
16. The method as claimed in claim 15, wherein more than one policy vectors provide dot product values below said threshold value, said method further comprising: merging said one or more policy vectors to form a resultant recommended policy.
17. The method as claimed in claim 11, wherein said first event-policy data structure comprises an event-policy matrix, said constructing a second event-policy data structure from said first event-policy data structure comprises implementing a Singular Value Decomposition (SVD)] function on said event-policy matrix.
18. A program storage device tangibly embodying software instructions which are adapted to be executed by a computing device to perform a method for policy-based management of computing systems according to claim 13.
19. A method for creating new policies for automated decision-making, the method comprising:
- creating a correlation matrix having entries reflecting the correlation, in a set of existing policies, between a plurality of events and/or circumstances and a plurality of policies;
- determining existence of a match between an observed set of events and/or circumstances against the entries in the correlation matrix, and,
- if there is no exact match between the observed set of events and/or circumstances and the entries in said correlation matrix, then,
- utilizing a singular-value decomposition (SVD) technique for constructing a new policy responsive to the observed set of events and/or circumstances and the correlation matrix.
20. The method as in claim 19, further comprising: updating the correlation matrix to include the newly-constructed policy.
Type: Application
Filed: Jun 5, 2006
Publication Date: Dec 6, 2007
Applicant: INTERNATIONAL BUSINESS MACHINES CORPORATION (ARMONK, NY)
Inventors: Hoi Y. Chan (New Canaan, CT), David M. Chess (Mohegan Lake, NY), Thomas Y. Kwok (Washington Township, NJ), Steve R. White (New York, NY)
Application Number: 11/446,761
International Classification: G06N 5/02 (20060101);