Verilog-Evolve uses executable feedback from simulation, synthesis, timing, and GEMM metrics to refine LLM-generated Verilog and evolves skills across tasks, improving functional success and downstream hardware quality on VerilogEval and mixed-precision GEMM benchmarks.
Towards efficient agents: A co-design of inference architecture and system,
2 Pith papers cite this work. Polarity classification is still indexing.
years
2026 2verdicts
UNVERDICTED 2representative citing papers
MiniPIC enables multiple position-independent caching methods inside vLLM via unrotated KV storage, per-request RoPE application, and three primitives, delivering 49% prefill throughput gains and up to 100x lower cached-span TTFT on 2WikiMultihopQA.
citing papers explorer
-
Verilog-Evolve: Feedback-Driven and Skill-Evolving Verilog Generation
Verilog-Evolve uses executable feedback from simulation, synthesis, timing, and GEMM metrics to refine LLM-generated Verilog and evolves skills across tasks, improving functional success and downstream hardware quality on VerilogEval and mixed-precision GEMM benchmarks.
-
MiniPIC: Flexible Position-Independent Caching in <100LOC
MiniPIC enables multiple position-independent caching methods inside vLLM via unrotated KV storage, per-request RoPE application, and three primitives, delivering 49% prefill throughput gains and up to 100x lower cached-span TTFT on 2WikiMultihopQA.