by modelscope
The evaluation benchmark on MCP servers
# Add to your Claude Code skills
git clone https://github.com/modelscope/MCPBenchGuides for using mcp servers skills like MCPBench.
Last scanned: 5/30/2026
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}MCPBench is an open-source mcp servers skill for AI coding assistants such as Claude Code, Codex CLI, and ChatGPT, built by modelscope. The evaluation benchmark on MCP servers. It has 249 GitHub stars.
Yes. MCPBench passed SkillsLLM's automated security scan — a dependency vulnerability audit plus prompt-injection heuristics — with no high-severity issues. You can read the full report in the Security Report section on this page.
Clone the repository with "git clone https://github.com/modelscope/MCPBench" and add it to your Claude Code skills directory (see the Installation section above).
MCPBench is primarily written in Python. It is open-source under modelscope on GitHub, so you can review or fork the full source.
Yes. SkillsLLM lists many other MCP Servers skills you can browse and compare side by side. Open the MCP Servers category from the badge at the top of this page, or use the Related Skills and comparison links further down to weigh MCPBench against similar tools.
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MCPBench is an evaluation framework for MCP Servers. It supports the evaluation of three types of servers: Web Search, Database Query and GAIA, and is compatible with both local and remote MCP Servers. The framework primarily evaluates different MCP Servers (such as Brave Search, DuckDuckGo, etc.) in terms of task completion accuracy, latency, and token consumption under the same LLM and Agent configurations. Here is the evaluation report.
The implementation refers to LangProBe: a Language Programs Benchmark.
Big thanks to Qingxu Fu for the initial implementation!
Sep. 1, 2025 🌟 Modelscope AI hackathon will be hold on Sep. 23rd, ref: https://modelscope.cn/active/aihackathon-mcp-agentApr. 29, 2025 🌟 Update the code for evaluating the MCP Server Package within GAIA.Apr. 14, 2025 🌟 We are proud to announce that MCPBench is now open-sourced.The framework requires Python version >= 3.11, nodejs and jq.
conda create -n mcpbench python=3.11 -y
conda activate mcpbench
pip install -r requirements.txt
Please first determine the type of MCP server you want to use:
First, you need to write the following configuration:
{
"mcp_pool": [
{
"name": "firecrawl",
"run_config": [
{
"command": "npx -y firecrawl-mcp",
"args": "FIRECRAWL_API_KEY=xxx",
"port": 8005
}
]
}
]
}
Save this config file in the configs folder and launch it using:
sh launch_mcps_as_sse.sh YOUR_CONFIG_FILE
For example, save the above configuration in the configs/firecrawl.json file and launch it using:
sh launch_mcps_as_sse.sh firecrawl.json
To evaluate the MCP Server's performance, you need to set up the necessary MCP Server information. the code will automatically detect the tools and parameters in the Server, so you don't need to configure them manually, like:
{
"mcp_pool": [
{
"name": "Remote MCP example",
"url": "url from https://modelscope.cn/mcp or https://smithery.ai"
},
{
"name": "firecrawl (Local run example)",
"run_config": [
{
"command": "npx -y firecrawl-mcp",
"args": "FIRECRAWL_API_KEY=xxx",
"port": 8005
}
]
}
]
}
To evaluate the MCP Server's performance on WebSearch tasks:
sh evaluation_websearch.sh YOUR_CONFIG_FILE
To evaluate the MCP Server's performance on Database Query tasks:
sh evaluation_db.sh YOUR_CONFIG_FILE
To evaluate the MCP Server's performance on GAIA tasks:
sh evaluation_gaia.sh YOUR_CONFIG_FILE
For example, save the above configuration in the configs/firecrawl.json file and launch it using:
sh evaluation_websearch.sh firecrawl.json
Our framework provides two datasets for evaluation. For the WebSearch task, the dataset is located at MCPBench/langProBe/WebSearch/data/websearch_600.jsonl, containing 200 QA pairs each from Frames, news, and technology domains. Our framework for automatically constructing evaluation datasets will be open-sourced later.
For the Database Query task, the dataset is located at MCPBench/langProBe/DB/data/car_bi.jsonl. You can add your own dataset in the following format:
{
"unique_id": "",
"Prompt": "",
"Answer": ""
}
We have evaluated mainstream MCP Servers on both tasks. For detailed experimental results, please refer to Documentation
If you find this work useful, please consider citing our project or giving us a 🌟:
@misc{mcpbench,
title={MCPBench: A Benchmark for Evaluating MCP Servers},
author={Zhiling Luo, Xiaorong Shi, Xuanrui Lin, Jinyang Gao},
howpublished = {\url{https://github.com/modelscope/MCPBench}},
year={2025}
}
Alternatively, you may reference our report.
@article{mcpbench_report,
title={Evaluation Report on MCP Servers},
author={Zhiling Luo, Xiaorong Shi, Xuanrui Lin, Jinyang Gao},
year={2025},
journal={arXiv preprint arXiv:2504.11094},
url={https://arxiv.org/abs/2504.11094},
primaryClass={cs.AI}
}