Patents by Inventor Leo Parker Dirac
Leo Parker Dirac has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).
-
Patent number: 12229642Abstract: At a machine learning service, a determination is made that an analysis to detect whether at least a portion of contents of one or more observation records of a first data set are duplicated in a second set of observation records is to be performed. A duplication metric is obtained, indicative of a non-zero probability that one or more observation records of the second set are duplicates of respective observation records of the first set. In response to determining that the duplication metric meets a threshold criterion, one or more responsive actions are initiated, such as the transmission of a notification to a client of the service.Type: GrantFiled: March 26, 2021Date of Patent: February 18, 2025Assignee: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Aleksandr Mikhaylovich Ingerman
-
Publication number: 20250021884Abstract: A machine learning service implements programmatic interfaces for a variety of operations on several entity types, such as data sources, statistics, feature processing recipes, models, and aliases. A first request to perform an operation on an instance of a particular entity type is received, and a first job corresponding to the requested operation is inserted in a job queue. Prior to the completion of the first job, a second request to perform another operation is received, where the second operation depends on a result of the operation represented by the first job. A second job, indicating a dependency on the first job, is stored in the job queue. The second job is initiated when the first job completes.Type: ApplicationFiled: July 17, 2024Publication date: January 16, 2025Applicant: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Nicolle M. Correa, Aleksandr Mikhaylovich Ingerman, Sriram Krishnan, Jin Li, Sudhakar Rao Puvvadi, Saman Zarandioon
-
Patent number: 12118456Abstract: A machine learning environment utilizing training data generated by customer networks. A reinforcement learning machine learning environment receives and processes training data generated by simulated hosted, or integrated, customer networks. The reinforcement learning machine learning environment corresponds to machine learning clusters that receive and process training data sets provided by the integrated customer networks. The customer networks include an agent process that collects training data and forwards the training data to the machine learning clusters. The machine learning clusters can be configured in a manner to automatically process the training data without requiring additional user inputs or controls to configure the application of the reinforcement learning machine learning processes.Type: GrantFiled: November 21, 2018Date of Patent: October 15, 2024Assignee: Amazon Technologies, Inc.Inventors: Sahika Genc, Bharathan Balaji, Urvashi Chowdhary, Leo Parker Dirac, Saurabh Gupta, Vineet Khare, Sunil Mallya Kasaragod
-
Patent number: 12112259Abstract: Features related to systems and methods for reinforcement learning are described. The environment includes one or more agents for automating the training of reinforcement learning (RL) models. The environment may include a simulator or real-world observations. The features described identify key training parameters, resource configurations, virtual network configurations, and simulators based on historical training data.Type: GrantFiled: November 21, 2018Date of Patent: October 8, 2024Assignee: Amazon Technologies, Inc.Inventor: Leo Parker Dirac
-
Patent number: 12073298Abstract: A machine learning service implements programmatic interfaces for a variety of operations on several entity types, such as data sources, statistics, feature processing recipes, models, and aliases. A first request to perform an operation on an instance of a particular entity type is received, and a first job corresponding to the requested operation is inserted in a job queue. Prior to the completion of the first job, a second request to perform another operation is received, where the second operation depends on a result of the operation represented by the first job. A second job, indicating a dependency on the first job, is stored in the job queue. The second job is initiated when the first job completes.Type: GrantFiled: July 8, 2022Date of Patent: August 27, 2024Assignee: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Nicolle M. Correa, Aleksandr Mikhaylovich Ingerman, Sriram Krishnan, Jin Li, Sudhakar Rao Puvvadi, Saman Zarandioon
-
Patent number: 12061963Abstract: Techniques for automated machine learning (ML) pipeline exploration and deployment are described. An automated ML pipeline generation system allows users to easily construct optimized ML pipelines by providing a dataset, identifying a target column in the dataset, and providing an exploration budget. Multiple candidate ML pipelines can be identified and evaluated through an exploration process, and a best ML pipeline can be provided to the requesting user or deployed for production inference. Users can configure, monitor, and adapt the exploration at multiple points in time throughout.Type: GrantFiled: June 23, 2023Date of Patent: August 13, 2024Assignee: Amazon Technologies, Inc.Inventors: Tanya Bansal, Piali Das, Leo Parker Dirac, Fan Li, Zohar Karnin, Philip Gautier, Patricia Grao Gil, Laurence Louis Eric Rouesnel, Ravikumar Anantakrishnan Venkateswar, Orchid Majumder, Stefano Stefani, Vladimir Zhukov
-
Patent number: 11960935Abstract: Implementations detailed herein include description of a computer-implemented method.Type: GrantFiled: June 27, 2018Date of Patent: April 16, 2024Assignee: Amazon Technologies, Inc.Inventors: Sudipta Sengupta, Poorna Chand Srinivas Perumalla, Dominic Rajeev Divakaruni, Nafea Bshara, Leo Parker Dirac, Bratin Saha, Matthew James Wood, Andrea Olgiati, Swaminathan Sivasubramanian
-
Patent number: 11948022Abstract: Methods, apparatuses, and systems for a web services provider to interact with a client on remote job execution. For example, a web services provider may receive a job command, from an interactive programming environment of a client, applicable to job for a machine learning algorithm on a web services provider system, process the job command using at least one of a training instance and an inference instance, and provide metrics and log data during the processing of the job to the interactive programming environment.Type: GrantFiled: April 9, 2020Date of Patent: April 2, 2024Assignee: Amazon Technologies, Inc.Inventors: Thomas Albert Faulhaber, Jr., Leo Parker Dirac
-
Patent number: 11861490Abstract: A machine learning environment utilizing training data generated by customer environments. A reinforced learning machine learning environment receives and processes training data generated by independently hosted, or decoupled, customer environments. The reinforced learning machine learning environment corresponds to machine learning clusters that receive and process training data sets provided by the decoupled customer environments. The customer environments include an agent process that collects training data and forwards the training data to the machine learning clusters without exposing the customer environment. The machine learning clusters can be configured in a manner to automatically process the training data without requiring additional user inputs or controls to configured the application of the reinforced learning machine learning processes.Type: GrantFiled: November 21, 2018Date of Patent: January 2, 2024Assignee: AMAZON TECHNOLOGIES, INC.Inventors: Saurabh Gupta, Bharathan Balaji, Leo Parker Dirac, Sahika Genc, Vineet Khare, Ragav Venkatesan, Gurumurthy Swaminathan
-
Patent number: 11853390Abstract: Techniques for evaluating an output of a machine learning model and using the evaluation to retrain the machine learning model are described. For example, a data set that is output from a layer of the machine learning model is reduced to a 2-D or 3-D representation that is suitable for viewing. A user views the reduced data set in a viewing environment such as virtual reality or augmented reality. The user makes changes using that viewing environment. The changes are then used to retrain the machine learning model.Type: GrantFiled: August 3, 2018Date of Patent: December 26, 2023Assignee: Amazon Technologies, Inc.Inventors: Bradley Scott Bowman, Maksim Lapin, Leo Parker Dirac
-
Patent number: 11836577Abstract: A simulation management service receives a request to perform reinforcement learning for a robotic device. The request can include computer-executable code defining a reinforcement function for training a reinforcement learning model for the robotic device. In response to the request, the simulation management service generates a simulation environment and injects the computer-executable code into a simulation application for the robotic device. Using the simulation application and the computer-executable code, the simulation management service performs the reinforcement learning within the simulation environment.Type: GrantFiled: November 27, 2018Date of Patent: December 5, 2023Assignee: Amazon Technologies, Inc.Inventors: Sunil Mallya Kasaragod, Sahika Genc, Leo Parker Dirac, Bharathan Balaji, Eric Li Sun, Marthinus Coenraad De Clercq Wentzel
-
Patent number: 11748610Abstract: Techniques for sequence to sequence (S2S) model building and/or optimization are described. For example, a method of receiving a request to build a sequence to sequence (S2S) model for a use case, wherein the request includes at least a training data set, generating parts of a S2S algorithm based on the at least one use case, determined parameters, and determined hyperparameters, and training a S2S algorithm built from the parts of the S2S algorithm using the training data set to generate the S2S model is detailed.Type: GrantFiled: March 23, 2018Date of Patent: September 5, 2023Assignee: Amazon Technologies, Inc.Inventors: Orchid Majumder, Vineet Khare, Leo Parker Dirac, Saurabh Gupta
-
Patent number: 11727314Abstract: Techniques for automated machine learning (ML) pipeline exploration and deployment are described. An automated ML pipeline generation system allows users to easily construct optimized ML pipelines by providing a dataset, identifying a target column in the dataset, and providing an exploration budget. Multiple candidate ML pipelines can be identified and evaluated through an exploration process, and a best ML pipeline can be provided to the requesting user or deployed for production inference. Users can configure, monitor, and adapt the exploration at multiple points in time throughout.Type: GrantFiled: September 30, 2019Date of Patent: August 15, 2023Assignee: Amazon Technologies, Inc.Inventors: Tanya Bansal, Piali Das, Leo Parker Dirac, Fan Li, Zohar Karnin, Philip Gautier, Patricia Grao Gil, Laurence Louis Eric Rouesnel, Ravikumar Anantakrishnan Venkateswar, Orchid Majumder, Stefano Stefani, Vladimir Zhukov
-
Patent number: 11715033Abstract: A first set of execution platforms is deployed for a set of operations of a training phase of a machine learning model. Prior to the completion of the training phase, a triggering condition for deployment of a different set of execution platforms is detected. The different set of execution platforms is deployed for a subsequent set of training phase operations.Type: GrantFiled: January 14, 2020Date of Patent: August 1, 2023Assignee: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Rakesh Madhavan Nambiar, Avinash Aghoram Ravichandran
-
Publication number: 20230126005Abstract: Consistency metadata, including a parameter for a pseudo-random number source, are determined for training-and-evaluation iterations of a machine learning model. Using the metadata, a first training set comprising records of at least a first chunk is identified from a plurality of chunks of a data set. The first training set is used to train a machine learning model during a first training-and-evaluation iteration. A first test set comprising records of at least a second chunk is identified using the metadata, and is used to evaluate the model during the first training-and-evaluation iteration.Type: ApplicationFiled: December 23, 2022Publication date: April 27, 2023Applicant: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Jin Li, Tianming Zheng, Donghui Zhuo
-
Patent number: 11599821Abstract: Implementations detailed herein include description of a computer-implemented method. In an implementation, the method at least includes receiving an application instance configuration, an application of the application instance to utilize a portion of an attached accelerator during execution of a machine learning model and the application instance configuration including: an indication of the central processing unit (CPU) capability to be used, an arithmetic precision of the machine learning model to be used, an indication of the accelerator capability to be used, a storage location of the application, and an indication of an amount of random access memory to use.Type: GrantFiled: June 27, 2018Date of Patent: March 7, 2023Assignee: Amazon Technologies, Inc.Inventors: Sudipta Sengupta, Poorna Chand Srinivas Perumalla, Dominic Rajeev Divakaruni, Nafea Bshara, Leo Parker Dirac, Bratin Saha, Matthew James Wood, Andrea Olgiati, Swaminathan Sivasubramanian
-
Patent number: 11544623Abstract: Consistency metadata, including a parameter for a pseudo-random number source, are determined for training-and-evaluation iterations of a machine learning model. Using the metadata, a first training set comprising records of at least a first chunk is identified from a plurality of chunks of a data set. The first training set is used to train a machine learning model during a first training-and-evaluation iteration. A first test set comprising records of at least a second chunk is identified using the metadata, and is used to evaluate the model during the first training-and-evaluation iteration.Type: GrantFiled: October 2, 2019Date of Patent: January 3, 2023Assignee: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Jin Li, Tianming Zheng, Donghui Zhuo
-
Publication number: 20220391763Abstract: A machine learning service implements programmatic interfaces for a variety of operations on several entity types, such as data sources, statistics, feature processing recipes, models, and aliases. A first request to perform an operation on an instance of a particular entity type is received, and a first job corresponding to the requested operation is inserted in a job queue. Prior to the completion of the first job, a second request to perform another operation is received, where the second operation depends on a result of the operation represented by the first job. A second job, indicating a dependency on the first job, is stored in the job queue. The second job is initiated when the first job completes.Type: ApplicationFiled: July 8, 2022Publication date: December 8, 2022Applicant: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Nicolle M. Correa, Aleksandr Mikhaylovich Ingerman, Sriram Krishnan, Jin Li, Sudhakar Rao Puvvadi, Saman Zarandioon
-
Patent number: 11494621Abstract: Implementations detailed herein include description of a computer-implemented method.Type: GrantFiled: June 27, 2018Date of Patent: November 8, 2022Assignee: Amazon Technologies, Inc.Inventors: Sudipta Sengupta, Poorna Chand Srinivas Perumalla, Dominic Rajeev Divakaruni, Nafea Bshara, Leo Parker Dirac, Bratin Saha, Matthew James Wood, Andrea Olgiati, Swaminathan Sivasubramanian
-
Publication number: 20220335338Abstract: At a machine learning service, a set of candidate variables that can be used to train a model is identified, including at least one processed variable produced by a feature processing transformation. A cost estimate indicative of an effect of implementing the feature processing transformation on a performance metric associated with a prediction goal of the model is determined. Based at least in part on the cost estimate, a feature processing proposal that excludes the feature processing transformation is implemented.Type: ApplicationFiled: July 1, 2022Publication date: October 20, 2022Applicant: Amazon Technologies, Inc.Inventors: Leo Parker Dirac, Nicolle M. Correa, Charles Eric Dannaker