Invention Application
- Patent Title: COMPILER CONFIGURABLE TO GENERATE INSTRUCTIONS EXECUTABLE BY DIFFERENT DEEP LEARNING ACCELERATORS FROM A DESCRIPTION OF AN ARTIFICIAL NEURAL NETWORK
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Application No.: US17092013Application Date: 2020-11-06
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Publication No.: US20220147808A1Publication Date: 2022-05-12
- Inventor: Andre Xian Ming Chang , Aliasger Tayeb Zaidy , Eugenio Culurciello , Jaime Cummins , Marko Vitez
- Applicant: Micron Technology, Inc.
- Applicant Address: US ID Boise
- Assignee: Micron Technology, Inc.
- Current Assignee: Micron Technology, Inc.
- Current Assignee Address: US ID Boise
- Main IPC: G06N3/08
- IPC: G06N3/08 ; G06N3/063 ; G06F9/50 ; G06F17/16 ; G06F7/544 ; G06F7/523 ; G06F7/50

Abstract:
Systems, devices, and methods related to a Deep Learning Accelerator and memory are described. For example, an integrated circuit device may be configured to execute instructions with matrix operands and configured with random access memory (RAM). A compiler can convert a description of an artificial neural network into a generic result of compilation according to a specification of a generic Deep Learning Accelerator and then map the first result of compilation into a platform-specific result according to a specification of a specific hardware platform of Deep Learning Accelerators. The platform-specific result can be stored into the RAM of the integrated circuit device to enable the integrated circuit device to autonomously perform the computation of the artificial neural network in generating an output in response to an input to the artificial neural network.
Information query