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公开(公告)号:US10567334B1
公开(公告)日:2020-02-18
申请号:US16021579
申请日:2018-06-28
Applicant: Amazon Technologies, Inc.
Inventor: Ragav Venkatesan , Gurumurthy Swaminathan
Abstract: Implementations detailed herein include description of a computer-implemented method. In an implementation, the computer-implemented method including training a machine learning model using domain mapped third party data; and performing inference using the machine learning model by: receiving scoring data, domain mapping the received scoring data using a domain mapper that was used to generate the domain mapped third party data, and applying the machine learning model to the domain mapped received scoring data to generate an output result.
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公开(公告)号:US12277192B1
公开(公告)日:2025-04-15
申请号:US16560814
申请日:2019-09-04
Applicant: Amazon Technologies, Inc.
Inventor: Ragav Venkatesan , Xiong Zhou , Gurumurthy Swaminathan , Fedor Zhdanov
IPC: G06F18/214 , G06N3/08 , G06N5/04 , G06N20/00
Abstract: Techniques for zero-shot and few-shot transfer of domain-adapted base networks are described. Multiple machine learning task layers are trained using a shared base feature extractor network. At least one task layer is trained with samples and corresponding labels from a first domain as well as a second domain. At least one other task layer is trained with samples and corresponding labels from only the first domain. Ultimately, the other task layer(s) are adapted to generate labels for the first domain via the base network being weighted based on all trainings.
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公开(公告)号:US11809992B1
公开(公告)日:2023-11-07
申请号:US16836376
申请日:2020-03-31
Applicant: Amazon Technologies, Inc.
Inventor: Gurumurthy Swaminathan , Ragav Venkatesan , Xiong Zhou , Runfei Luo , Vineet Khare
Abstract: Neural networks with similar architectures may be compressed using shared compression profiles. A request to compress a trained neural network may be received and an architecture of the neural network identified. The identified architecture may be compared with the different network architectures mapped to compression profiles to select a compression profile for the neural network. The compression profile may be applied to remove features of the neural network to generate a compressed version of the neural network.
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公开(公告)号:US11501173B1
公开(公告)日:2022-11-15
申请号:US16831595
申请日:2020-03-26
Applicant: Amazon Technologies, Inc.
Inventor: Gurumurthy Swaminathan , Ragav Venkatesan , Xiong Zhou , Runfei Luo , Vineet Khare
Abstract: A compression policy to produce compression profiles for compressing trained machine learning models may be trained using reinforcement learning. An iterative reinforcement learning may be performed response to a search request. Different prospective compression profiles may be generated for received machine learning models according to a compression policy being trained. Performance of compressed versions of the trained neural networks according to the compression profiles may be caused using data sets used to train the machine learning models. The compression policy may be updated according to reward signal determined from an application of a reward function for performance criteria to performance results of the different versions of the machine learning models. When a search criteria is satisfied, the trained compression policy may be provided.
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公开(公告)号:US11861490B1
公开(公告)日:2024-01-02
申请号:US16198726
申请日:2018-11-21
Applicant: Amazon Technologies, Inc.
Inventor: Saurabh Gupta , Bharathan Balaji , Leo Parker Dirac , Sahika Genc , Vineet Khare , Ragav Venkatesan , Gurumurthy Swaminathan
IPC: G06N3/08 , G06N3/04 , G06F18/214 , G06F18/21
CPC classification number: G06N3/08 , G06F18/214 , G06F18/2178 , G06N3/04
Abstract: 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.
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公开(公告)号:US20230409584A1
公开(公告)日:2023-12-21
申请号:US18334091
申请日:2023-06-13
Applicant: Amazon Technologies, Inc.
Inventor: Ragav Venkatesan , Gurumurthy Swaminathan , Xiong Zhou , Runfei Luo , Vineet Khare
IPC: G06F16/2458 , G06F16/25 , G06F16/248 , G06N3/04 , H03M7/30 , G06N3/082
CPC classification number: G06F16/2474 , G06F16/252 , G06F16/248 , G06N3/04 , H03M7/30 , G06N3/082 , G06Q10/10
Abstract: Compression profiles may be searched for trained neural networks. An iterative compression profile search may be performed response to a search request. Different prospective compression profiles may be generated for trained neural networks according to a search policy. Performance of compressed versions of the trained neural networks according to the compression profiles may be tracked. The search policy may be updated according to an evaluation of the performance of the compression profiles for the compressed versions of the trained neural networks using compression performance criteria. When a search criteria is satisfied, a result for the compression profile search may be provided.
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公开(公告)号:US11755603B1
公开(公告)日:2023-09-12
申请号:US16831584
申请日:2020-03-26
Applicant: Amazon Technologies, Inc.
Inventor: Ragav Venkatesan , Gurumurthy Swaminathan , Xiong Zhou , Runfei Luo , Vineet Khare
IPC: G06F16/24 , G06F16/2458 , G06F16/25 , G06F16/248 , G06N3/04 , H03M7/30 , G06N3/082 , G06Q10/10
CPC classification number: G06F16/2474 , G06F16/248 , G06F16/252 , G06N3/04 , G06N3/082 , H03M7/30 , G06Q10/10
Abstract: Compression profiles may be searched for trained neural networks. An iterative compression profile search may be performed response to a search request. Different prospective compression profiles may be generated for trained neural networks according to a search policy. Performance of compressed versions of the trained neural networks according to the compression profiles may be tracked. The search policy may be updated according to an evaluation of the performance of the compression profiles for the compressed versions of the trained neural networks using compression performance criteria. When a search criteria is satisfied, a result for the compression profile search may be provided.
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