Monish-KS/DL_and_ML_On_FPGA
This repository contains implementations of various machine learning (ML) and deep learning (DL) algorithms, showcasing their performance on FPGA and GPU platforms. The project evaluates models including regression, image classification, and BERT, comparing accuracy metrics to demonstrate the effectiveness of hardware acceleration.
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VHDL
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MIT
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Oct 06, 2024
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