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Exploring Parallelism in FPGA-Based Accelerators for Machine Learning Applications

Distributed, Parallel, and Cluster Computing 2025-11-18 v1 Hardware Architecture Machine Learning

Abstract

Speculative backpropagation has emerged as a promising technique to accelerate the training of neural networks by overlapping the forward and backward passes. Leveraging speculative weight updates when error gradients fall within a specific threshold reduces training time without substantially compromising accuracy. In this work, we implement speculative backpropagation on the MNIST dataset using OpenMP as the parallel programming platform. OpenMP's multi-threading capabilities enable simultaneous execution of forward and speculative backpropagation steps, significantly improving training speed. The application is planned for synthesis on a state-of-the-art FPGA to demonstrate its potential for hardware acceleration. Our CPU-based experimental results demonstrate that speculative backpropagation achieves a maximum speedup of 24% in execution time when using a threshold of 0.25, and accuracy remaining within 3-4% of the baseline across various epochs. Additionally, when comparing individual step execution time, speculative backpropagation yields a maximum speedup of 35% over the baseline, demonstrating the effectiveness of overlapping forward and backward passes.

Keywords

Cite

@article{arxiv.2511.11640,
  title  = {Exploring Parallelism in FPGA-Based Accelerators for Machine Learning Applications},
  author = {Sed Centeno and Christopher Sprague and Arnab A Purkayastha and Ray Simar and Neeraj Magotra},
  journal= {arXiv preprint arXiv:2511.11640},
  year   = {2025}
}

Comments

5 pages

R2 v1 2026-07-01T07:38:03.110Z