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公开(公告)号:US11853891B2
公开(公告)日:2023-12-26
申请号:US16816153
申请日:2020-03-11
Applicant: SHARECARE AI, INC.
Inventor: Walter Adolf De Brouwer , Srivatsa Akshay Sharma , Neerajshyam Rangan Kashyap , Kartik Thakore , Philip Joseph Dow
CPC classification number: G06N3/084 , G06N3/08 , G06V10/764 , G06V10/809 , G06V10/945 , G06V10/95 , G06V10/96 , G16H70/60
Abstract: Method and system with federated learning model for health care applications are disclosed. The system for federated learning comprises multiple edge devices of end users, one or more federated learner update repository, and one or more cloud. Each edge device comprises a federated learner model, configured to send tensors to federated learner update repository. Cloud comprises a federated learner model, configured to send tensors to federated learner update repository. Federated learner update repository comprises a back-end configuration, configured to send model updates to edge devices and cloud.
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公开(公告)号:US11755709B2
公开(公告)日:2023-09-12
申请号:US17676797
申请日:2022-02-21
Applicant: SHARECARE AI, INC.
Inventor: Axel Sly , Srivatsa Akshay Sharma , Brett Robert Redinger , Devin Daniel Reich , Geert Trooskens , Meelis Lootus , Young Jin Lee , Ricardo Lopez Arredondo , Frederick Franklin Kautz, IV , Satish Srinivasan Bhat , Scott Michael Kirk , Walter Adolf De Brouwer , Kartik Thakore
IPC: G06F21/32 , G06F21/45 , G06N20/00 , H04L9/32 , G16H10/60 , G06K7/14 , G06N5/04 , H04L9/08 , G06V40/70 , G06K19/06 , G06F18/214 , G06V10/74 , G06V10/77 , G06V10/80 , G06V10/44 , G06V40/16 , G06V10/774 , H04L9/40 , G06N3/08 , G06N3/04
CPC classification number: G06F21/32 , G06F18/214 , G06F21/45 , G06K7/1417 , G06K19/06037 , G06N5/04 , G06N20/00 , G06V10/451 , G06V10/761 , G06V10/774 , G06V10/7715 , G06V10/803 , G06V40/161 , G06V40/168 , G06V40/70 , G16H10/60 , H04L9/085 , H04L9/0841 , H04L9/0866 , H04L9/0894 , H04L9/3228 , H04L9/3231 , H04L9/3236 , H04L9/3239 , H04L9/3242 , H04L9/3247 , H04L9/3297 , G06N3/04 , G06N3/08 , H04L63/0861
Abstract: The technology disclosed relates to authenticating users using a plurality of non-deterministic registration biometric inputs. During registration, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate sets of feature vectors. The non-deterministic biometric inputs can include a plurality of face images and a plurality of voice samples of a user. A characteristic identity vector for the user can be determined by averaging feature vectors. During authentication, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate a set of authentication feature vectors. The sets of feature vectors are projected onto a surface of a hyper-sphere. The system can authenticate the user when a cosine distance between the authentication feature vector and a characteristic identity vector for the user is less than a pre-determined threshold.
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公开(公告)号:US11177960B2
公开(公告)日:2021-11-16
申请号:US17235889
申请日:2021-04-20
Applicant: Sharecare AI, Inc.
Inventor: Axel Sly , Srivatsa Akshay Sharma , Brett Robert Redinger , Devin Daniel Reich , Geert Trooskens , Meelis Lootus , Young Jin Lee , Ricardo Lopez Arredondo , Frederick Franklin Kautz, IV , Satish Srinivasan Bhat , Scott Michael Kirk , Walter Adolf De Brouwer , Kartik Thakore
Abstract: The technology disclosed relates to authenticating users using a plurality of non-deterministic registration biometric inputs. During registration, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate sets of feature vectors. The non-deterministic biometric inputs can include a plurality of face images and a plurality of voice samples of a user. A characteristic identity vector for the user can be determined by averaging feature vectors. During authentication, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate a set of authentication feature vectors. The sets of feature vectors are projected onto a surface of a hyper-sphere. The system can authenticate the user when a cosine distance between the authentication feature vector and a characteristic identity vector for the user is less than a pre-determined threshold.
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4.
公开(公告)号:US11321447B2
公开(公告)日:2022-05-03
申请号:US17235876
申请日:2021-04-20
Applicant: SHARECARE AI, INC.
Inventor: Axel Sly , Srivatsa Akshay Sharma , Brett Robert Redinger , Devin Daniel Reich , Geert Trooskens , Meelis Lootus , Young Jin Lee , Ricardo Lopez Arredondo , Frederick Franklin Kautz, IV , Satish Srinivasan Bhat , Scott Michael Kirk , Walter Adolf De Brouwer , Kartik Thakore
IPC: G06K9/00 , G06F21/45 , G06N20/00 , H04L9/32 , G16H10/60 , G06F21/32 , G06K9/62 , G06K7/14 , G06N5/04 , H04L9/08 , H04L29/06 , G06N3/08 , G06N3/04
Abstract: The technology disclosed relates to authenticating users using a plurality of non-deterministic registration biometric inputs. During registration, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate sets of feature vectors. The non-deterministic biometric inputs can include a plurality of face images and a plurality of voice samples of a user. A characteristic identity vector for the user can be determined by averaging feature vectors. During authentication, a plurality of non-deterministic biometric inputs are given as input to a trained machine learning model to generate a set of authentication feature vectors. The sets of feature vectors are projected onto a surface of a hyper-sphere. The system can authenticate the user when a cosine distance between the authentication feature vector and a characteristic identity vector for the user is less than a pre-determined threshold.
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公开(公告)号:US11915802B2
公开(公告)日:2024-02-27
申请号:US16985183
申请日:2020-08-04
Applicant: SHARECARE AI, INC.
Inventor: Brett Robert Redinger , Kartik Thakore , Sandra Ann R Steyaert , Walter Adolf De Brouwer , Srivatsa Akshay Sharma , Lijing Guo
IPC: G16H10/40 , G06F16/27 , G16H70/60 , G06F9/451 , G16B45/00 , G16B50/30 , G06F16/13 , G06F9/50 , G06F9/48
CPC classification number: G16H10/40 , G06F9/451 , G06F9/4881 , G06F9/5027 , G06F9/5061 , G06F16/134 , G06F16/27 , G16B45/00 , G16B50/30 , G16H70/60 , G06F9/5066 , G06F9/5072
Abstract: The technology disclosed relates to efficient tertiary analysis of genomic data. The technology disclosed includes splitting a genomic data file into a plurality of segments, and storing segments in the plurality of segments across nodes of a distributed storage system, pushing the segments from the nodes of the distributed storage system to nodes of a distributed, in-memory computing engine, distributing directives of tertiary analysis job contexts for the genomic data file across the nodes of the distributed, in-memory computing engine, directly executing the distributed directives on the segments stored on the nodes of the distributed, in-memory computing engine to cause parallel processing of the segments, and aggregating results of the parallel processing across the nodes of the distributed, in-memory computing engine to produce an output.
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