Invention Grant
- Patent Title: Updating machine learning models across devices
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Application No.: US17677614Application Date: 2022-02-22
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Publication No.: US12094451B1Publication Date: 2024-09-17
- Inventor: Tao Zhang , Jie Ding , Huili Chen
- Applicant: Amazon Technologies, Inc.
- Applicant Address: US WA Seattle
- Assignee: Amazon Technologies, Inc.
- Current Assignee: Amazon Technologies, Inc.
- Current Assignee Address: US WA Seattle
- Agency: Pierce Atwood LLP
- Main IPC: G10L15/05
- IPC: G10L15/05 ; G06N20/20 ; G10L15/06

Abstract:
A system may create a localized machine learning model including one or more customized local parameter values using a global model and variance data. The localized machine learning model may be used by a device or cohort of devices to perform evaluations of data. The localized model may be trained based off a global model that is adjusted and then trained a certain number of steps, where the number of steps is based at least in part on the variance data. The variance data may include variance data from other device cohorts which is received from a remote device, which can also re-train the global model using the variance data and/or the localized machine learning model(s).
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