HARDWARE ACCELERATED MACHINE LEARNING

Some embodiments of the present disclose relates to an apparatus with a CPU, a bus to couple the CPU to a DRAM; and a machine-learning hardware accelerator coupled to the CPU. The machine-learning accelerator comprises, among others, a plurality of operation units to perform a plurality of parallel...

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Hauptverfasser: Ng, Choong, Bruestle, Jeremy
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creator Ng, Choong
Bruestle, Jeremy
description Some embodiments of the present disclose relates to an apparatus with a CPU, a bus to couple the CPU to a DRAM; and a machine-learning hardware accelerator coupled to the CPU. The machine-learning accelerator comprises, among others, a plurality of operation units to perform a plurality of parallel MAC operations in accordance with a vector MAC instruction including an operation value indicating a MAC operation, an indication of a first plurality of the real numbers of the first multidimensional array and a second plurality of the real numbers of the second multidimensional array, and permutation information; and circuitry to permute the first plurality of the real numbers of the first multidimensional array in accordance with the permutation information to generate a permuted first plurality of real numbers. Each operation unit comprises: a multiplier to multiply a first real number of the permuted first plurality of real numbers and a corresponding second real number of a second plurality of the real numbers associated with the second multidimensional array to generate a product, and an accumulator to add the product to an accumulation value to generate a result value, the first real number and the second real number each having a first bit width and the accumulation value having a second bit width at least twice the first bit width.
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
PHYSICS
title HARDWARE ACCELERATED MACHINE LEARNING
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