- Patent Title: Reinforcement learning techniques for selecting a software policy network and autonomously controlling a corresponding software client based on selected policy network
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Application No.: US16617949Application Date: 2019-03-06
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Publication No.: US11651196B2Publication Date: 2023-05-16
- Inventor: Victor Carbune , Thomas Deselaers
- Applicant: Google LLC
- Applicant Address: US CA Mountain View
- Assignee: GOOGLE LLC
- Current Assignee: GOOGLE LLC
- Current Assignee Address: US CA Mountain View
- Agency: Gray Ice Higdon
- International Application: PCT/US2019/020925 2019.03.06
- International Announcement: WO2020/176112A 2020.09.03
- Date entered country: 2019-11-27
- Main IPC: G06N3/04
- IPC: G06N3/04 ; G10L15/22 ; G06N3/00 ; G06N3/02 ; G10L15/20 ; G10L15/00

Abstract:
Techniques are disclosed that enable automating user interface input by generating a sequence of actions to perform a task utilizing a multi-agent reinforcement learning framework. Various implementations process an intent associated with received user interface input using a holistic reinforcement policy network to select a software reinforcement learning policy network. The sequence of actions can be generated by processing the intent, as well as a sequence of software client state data, using the selected software reinforcement learning policy network. The sequence of actions are utilized to control the software client corresponding to the selected software reinforcement learning policy network.
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