Agentic Architect: An Agentic AI Framework for Architecture Design Exploration and Optimization
arXiv cs.AI / 4/29/2026
📰 NewsDeveloper Stack & InfrastructureSignals & Early TrendsIdeas & Deep AnalysisModels & Research
Key Points
- The paper proposes “Agentic Architect,” an agentic AI framework that uses LLM-driven code evolution together with cycle-accurate simulation to explore and optimize computer architecture designs.
- Human architects define key constraints—such as optimization targets, seed designs, scoring functions, simulator interfaces, and benchmark splits—while the LLM searches for improved implementations within those bounds.
- The framework is evaluated across cache replacement, data prefetching, and branch prediction, where evolved designs match or exceed prior state-of-the-art results with reported IPC speedups.
- The authors find that while evolved components often map to known microarchitecture techniques, the key novelty is how the techniques are coordinated, and they emphasize that seed quality and objective/constraint design strongly affect reliability and generalization.
- Agentic Architect is presented as the first end-to-end open-source framework focused on agentic AI-driven microarchitecture exploration and optimization.
Related Articles

What to Build Still Beats How
Dev.to

I Build Systems, Flip Land, and Drop Trap Music — Meet Tyler Moncrieff aka Father Dust
Dev.to

From Claim Denials to Smart Decisions: My Experience Using AI in Healthcare Claims Processing
Dev.to

Whatsapp AI booking system in one prompt in 5 minutes
Dev.to
v0.22.1
Ollama Releases