Invention Grant
- Patent Title: Optimizing neural network structures for embedded systems
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Application No.: US18183515Application Date: 2023-03-14
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Publication No.: US12079723B2Publication Date: 2024-09-03
- Inventor: Harsimran Singh Sidhu , Paras Jagdish Jain , Daniel Paden Tomasello , Forrest Nelson Iandola
- Applicant: Tesla, Inc.
- Applicant Address: US TX Austin
- Assignee: Tesla, Inc.
- Current Assignee: Tesla, Inc.
- Current Assignee Address: US TX Austin
- Agency: FOLEY & LARDNER LLP
- The original application number of the division: US16522411 2019.07.25
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G05B13/02 ; G05D1/00 ; G06F9/455 ; G06N3/10

Abstract:
A model training and implementation pipeline trains models for individual embedded systems. The pipeline iterates through multiple models and estimates the performance of the models. During a model generation stage, the pipeline translates the description of the model together with the model parameters into an intermediate representation in a language that is compatible with a virtual machine. The intermediate representation is agnostic or independent to the configuration of the target platform. During a model performance estimation stage, the pipeline evaluates the performance of the models without training the models. Based on the analysis of the performance of the untrained models, a subset of models is selected. The selected models are then trained and the performance of the trained models are analyzed. Based on the analysis of the performance of the trained models, a single model is selected for deployment to the target platform.
Public/Granted literature
- US20230289599A1 OPTIMIZING NEURAL NETWORK STRUCTURES FOR EMBEDDED SYSTEMS Public/Granted day:2023-09-14
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