- Patent Title: Neural architecture search for fusing multiple networks into one
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Application No.: US18161777Application Date: 2023-01-30
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Publication No.: US11967141B2Publication Date: 2024-04-23
- Inventor: Adrien David Gaidon , Jie Li
- Applicant: TOYOTA RESEARCH INSTITUTE, INC.
- Applicant Address: US CA Los Altos
- Assignee: TOYOTA RESEARCH INSTITUTE, INC.
- Current Assignee: TOYOTA RESEARCH INSTITUTE, INC.
- Current Assignee Address: US CA Los Altos
- Agency: SHEPPARD, MULLIN, RICHTER & HAMPTON LLP
- Agent Hector A. Agdeppa; Daniel N. Yannuzzi
- Main IPC: G06N3/04
- IPC: G06N3/04 ; G06F17/18 ; G06F18/20 ; G06F18/2113 ; G06F18/25 ; G06N3/045 ; G06V10/764 ; G06V10/771 ; G06V10/80 ; G06V10/82 ; G06V20/56 ; G06V40/10

Abstract:
One or more embodiments of the present disclosure include systems and methods that use neural architecture fusion to learn how to combine multiple separate pre-trained networks by fusing their architectures into a single network for better computational efficiency and higher accuracy. For example, a computer implemented method of the disclosure includes obtaining multiple trained networks. Each of the trained networks may be associated with a respective task and has a respective architecture. The method further includes generating a directed acyclic graph that represents at least a partial union of the architectures of the trained networks. The method additionally includes defining a joint objective for the directed acyclic graph that combines a performance term and a distillation term. The method also includes optimizing the joint objective over the directed acyclic graph.
Public/Granted literature
- US20230177825A1 NEURAL ARCHITECTURE SEARCH FOR FUSING MULTIPLE NETWORKS INTO ONE Public/Granted day:2023-06-08
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