A3D: Agentic AI flow for autonomous Accelerator Design
Abinand Nallathambi, Christopher Knight, Shantanu Ganguly, Wilfried Haensch, Anand Raghunathan

TL;DR
A3D introduces an autonomous agentic AI system that automates the end-to-end design of hardware accelerators, significantly reducing manual effort and expertise required for complex applications.
Contribution
The paper presents A3D, a novel AI-driven framework that automates workload analysis, micro-architecture generation, and design space exploration for accelerators.
Findings
A3D successfully designs accelerators for scientific applications without human intervention.
It automates tasks like code refactoring and performance bottleneck identification.
The system explores diverse design options optimizing speed and area.
Abstract
Accelerating applications through the design of hardware accelerators can significantly enhance system performance and energy efficiency. Despite advances, such as high-level synthesis (HLS), designing accelerators for complex applications still remains highly labor-intensive, demanding considerable expertise in understanding workloads to be accelerated, hardware design, micro-architecture, and EDA tool usage, posing challenges for application domain experts. Therefore, most accelerator solutions are limited to applications with a regular predictable dataflow. Advances in AI have enabled agents that perform autonomous planning, reasoning, execution and reflection, leading to unprecedented potential for automation through agentic AI. We present A3D, an Agentic AI flow for end-to-end Automation of hardware Accelerator Design. A3D automates workload analysis, performance bottleneck…
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