Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

CO-Bench: Benchmarking Language Model Agents in Algorithm Search for Combinatorial Optimization

About

Although LLM-based agents have attracted significant attention in domains such as software engineering and machine learning research, their role in advancing combinatorial optimization (CO) remains relatively underexplored. This gap underscores the need for a deeper understanding of their potential in tackling structured, constraint-intensive problems -- a pursuit currently limited by the absence of comprehensive benchmarks for systematic investigation. To address this, we introduce CO-Bench, a benchmark suite featuring 36 real-world CO problems drawn from a broad range of domains and complexity levels. CO-Bench includes structured problem formulations and curated data to support rigorous investigation of LLM agents. We evaluate multiple agentic frameworks against established human-designed algorithms, revealing the strengths and limitations of existing LLM agents and identifying promising directions for future research. CO-Bench is publicly available at https://github.com/sunnweiwei/CO-Bench.

Weiwei Sun, Shengyu Feng, Shanda Li, Yiming Yang• 2025

Related benchmarks

TaskDatasetResultRank
Combinatorial OptimizationOverall (test)
Average Performance56.91
17
Combinatorial OptimizationAircraft Landing (test)
Average Score80.35
17
Combinatorial OptimizationResource Constrained Shortest Path (test)
Average Score70.39
17
Combinatorial OptimizationEuclidean Steiner (test)
Average Performance71.67
15
Combinatorial OptimizationPeriodic Vehicle Routing (test)
Average Value0.378
14
Combinatorial OptimizationContainer Loading with Weight Restrictions (test)
Average Objective Value0.1015
12
Combinatorial OptimizationCrew Scheduling (test)
Average Performance55.45
12
Combinatorial OptimizationContainer Loading (test)
Avg Performance72.53
11
Showing 8 of 8 rows

Other info

Follow for update