DiffAxE: Diffusion-driven Hardware Accelerator Generation and Design Space Exploration
Arkapravo Ghosh, Abhishek Moitra, Abhiroop Bhattacharjee, Ruokai Yin, Priyadarshini Panda

TL;DR
DiffAxE introduces a novel generative framework for hardware accelerator design space exploration, significantly improving efficiency and solution quality for complex, large-scale design problems in AI hardware.
Contribution
It presents a diffusion-based generative approach for hardware design space exploration, enabling efficient handling of large, complex, and irregular design spaces beyond prior methods.
Findings
Achieves 0.86% lower generation error than Bayesian optimization.
Attains 17000x faster search compared to traditional methods.
Reduces energy-delay product by 9.8% and improves performance by 6% in structured DSE.
Abstract
Design space exploration (DSE) is critical for developing optimized hardware architectures, especially for AI workloads such as deep neural networks (DNNs) and large language models (LLMs), which require specialized acceleration. As model complexity grows, accelerator design spaces have expanded to O(10^17), becoming highly irregular, non-convex, and exhibiting many-to-one mappings from design configurations to performance metrics. This complexity renders direct inverse derivation infeasible and necessitates heuristic or sampling-based optimization. Conventional methods - including Bayesian optimization, gradient descent, reinforcement learning, and genetic algorithms - depend on iterative sampling, resulting in long runtimes and sensitivity to initialization. Deep learning-based approaches have reframed DSE as classification using recommendation models, but remain limited to…
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