CLAIFeb 1

From Pragmas to Partners: A Symbiotic Evolution of Agentic High-Level Synthesis

arXiv:2602.01401v1
Originality Synthesis-oriented
AI Analysis

This is an incremental position paper for hardware designers and AI researchers, focusing on integrating HLS with AI agents.

This paper argues that high-level synthesis (HLS) remains essential for AI-driven hardware design, as it provides faster iteration and portability that enable agentic optimization, and proposes a taxonomy for evolving HLS tools to shift responsibility from humans to AI agents.

The rise of large language models has sparked interest in AI-driven hardware design, raising the question: does high-level synthesis (HLS) still matter in the agentic era? We argue that HLS remains essential. While we expect mature agentic hardware systems to leverage both HLS and RTL, this paper focuses on HLS and its role in enabling agentic optimization. HLS offers faster iteration cycles, portability, and design permutability that make it a natural layer for agentic optimization.This position paper makes three contributions. First, we explain why HLS serves as a practical abstraction layer and a golden reference for agentic hardware design. Second, we identify key limitations of current HLS tools, namely inadequate performance feedback, rigid interfaces, and limited debuggability that agents are uniquely positioned to address. Third, we propose a taxonomy for the symbiotic evolution of agentic HLS, clarifying how responsibility shifts from human designers to AI agents as systems advance from copilots to autonomous design partners.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes