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公开(公告)号:US20230368028A1
公开(公告)日:2023-11-16
申请号:US18217929
申请日:2023-07-03
Applicant: Amazon Technologies, Inc.
Inventor: Hagay Lupesko , Anirudh Acharya , Cheng-Che Lee , Lai Wei , Kalyanee Chendke , Ankit Khedia , Vandana Kannan , Sandeep Krishnamurthy , Roshani Nagmote
Abstract: Features related to systems and methods for automated generation of a machine learning model based in part on a pretrained model are described. The pretrained model is used as a starting point to augment and retrain according to client specifications. The identification of an appropriate pretrained model is based on the client specifications such as model inputs, model outputs, and similarities between the data used to train the models.
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公开(公告)号:US10997409B1
公开(公告)日:2021-05-04
申请号:US16001618
申请日:2018-06-06
Applicant: Amazon Technologies, Inc.
Inventor: Sandeep Krishnamurthy , Rajankumar Singh , Aaron Markham , Lai Wei
Abstract: Techniques are described for using machine learning (ML) models to create information technology (IT) infrastructures at a service provider network based on image of IT system architecture diagrams. To create IT system architecture diagrams, system architects often use tools ranging from pen and paper and whiteboards to various types of software-based drawing programs. Based on a user-provided image of an IT system architecture diagram (for example, a digital scan of a hand drawn system diagram, an image file created by a software-based drawing program, or the like), a service provider network uses one or more ML models to analyze the image to identify the constituent elements of the depicted IT system architecture and to create an infrastructure template that can be used to automatically provision corresponding computing resources at the service provider network.
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公开(公告)号:US11763154B1
公开(公告)日:2023-09-19
申请号:US16262677
申请日:2019-01-30
Applicant: Amazon Technologies, Inc.
Inventor: Hagay Lupesko , Anirudh Acharya , Lee Cheng-Che , Lai Wei , Kalyanee Chendke , Ankit Khedia , Vandana Kannan , Sandeep Krishnamurthy , Roshani Nagmote
Abstract: Features related to systems and methods for automated generation of a machine learning model based in part on a pretrained model are described. The pretrained model is used as a starting point to augment and retrain according to client specifications. The identification of an appropriate pretrained model is based on the client specifications such as model inputs, model outputs, and similarities between the data used to train the models.
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公开(公告)号:US11769035B1
公开(公告)日:2023-09-26
申请号:US16219751
申请日:2018-12-13
Applicant: Amazon Technologies, Inc.
Inventor: Lai Wei , Hagay Lupesko , Anirudh Acharya , Ankit Khedia , Sandeep Krishnamurthy , Cheng-Che Lee , Kalyanee Shriram Chendke , Vandana Kannan , Roshani Nagmote
Abstract: Techniques are described automatically determining runtime configurations used to execute recurrent neural networks (RNNs) for training or inference. One such configuration involves determining whether to execute an RNN in a looped, or “rolled,” execution pattern or in a non-looped, or “unrolled,” execution pattern. Execution of an RNN using a rolled execution pattern generally consumes less memory resources than execution using an unrolled execution pattern, whereas execution of an RNN using an unrolled execution pattern typically executes faster. The configuration choice thus involves a time-memory tradeoff that can significantly affect the performance of the RNN execution. This determination is made automatically by a machine learning (ML) runtime by analyzing various factors such as, for example, a type of RNN being executed, the network structure of the RNN, characteristics of the input data to the RNN, an amount of computing resources available, and so forth.
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