Micron Technology, Inc.
DISCOVERY OF HARDWARE CHARACTERISTICS OF DEEP LEARNING ACCELERATORS FOR OPTIMIZATION VIA COMPILER

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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. A computing device running a compiler can interact and/or probe an integrated circuit device to identify hardware characteristics of the integrated circuit device in performing matrix computations. The compiler can generate and optimize a result of compilation from a description of an artificial neural network based at least in part on the hardware characteristics of the integrated circuit device. The result of compilation can include first data representative of parameters of the artificial neural network and second data representative of instructions executable by the integrated circuit device to generate an output of the artificial neural network based on the first data and an input to the artificial neural network.

Status:
Application
Type:

Utility

Filling date:

6 Nov 2020

Issue date:

12 May 2022