SciAgentGym: Benchmarking Multi-Step Scientific Tool-use in LLM Agents
SciAgentGym provides a scalable scientific tool-use environment with 1,780 domain-specific tools, a tiered benchmark for long-horizon agent evaluation, and SciForge for synthesizing logic-aware training trajectories to advance autonomous scientific agents.
Scientific reasoning inherently demands integrating sophisticated toolkits to navigate domainspecific knowledge. Yet, current benchmarks largely overlook agents’ ability to orchestrate tools for such rigorous workflows. To bridge this gap, we introduce SciAgentGym, a scalable interactive environment featuring 1,780 domain-specific tools across four natural science disciplines, supported by a robust execution infrastructure. Complementing this, we present SciAgentBench, a tiered evaluation suite designed to stress-test agentic capabilities from elementary actions to long-horizon workflows. Our evaluation identifies a critical bottleneck: state-of-the-art models struggle with complex scientific tool-use. Even for a leading model like GPT-5, success rates drop sharply from 60.6% to 30.9% as interaction horizons extend, primarily due to failures in multi-step workflow execution. To address this, we propose SciForge, a data synthesis method that models the tool action space as a dependency graph to generate logic-aware training trajectories. By fine-tuning on these trajectories, our SciAgent-8B outperforms the significantly larger Qwen3-VL-235B-Instruct while exhibiting positive cross-domain transfer of scientific tool-use capabilities. These results underscore the promising potential of next-generation autonomous scientific agents. The code and data are released in https://github.com/CMarsRover/SciAgentGYM