能力标签
评估范围
🛠
AI工具

评估范围

基于 Python · 开源免费,本地部署,数据完全自主可控
英文名:evalscope
⭐ 2.9k Stars 🍴 341 Forks 💻 Python 📄 Apache-2.0 🏷 AI 8.0分
8.0AI 综合评分
llmvlmaiperformanceevaluation
✦ AI Skill Hub 推荐

AI Skill Hub 强烈推荐:评估范围 是一款优质的AI工具。已获得 2.9k 颗 GitHub Star,AI 综合评分 8.0 分,在同类工具中表现稳健。如果你正在寻找可靠的AI工具解决方案,这是一个值得深入了解的选择。

📚 深度解析

评估范围 是一款基于 Python 的开源工具,在 GitHub 上收获 3k+ Star,是llm、vlm、ai、performance领域中的优质开源项目。开源工具的最大优势在于代码完全透明,你可以审计每一行代码的安全性,也可以根据自身需求进行二次开发和定制。

**为什么要使用开源工具而非商业 SaaS?**
对于个人开发者和有隐私需求的用户,本地部署的开源工具意味着数据不离本机,不受第三方服务商的数据政策约束。同时,开源工具通常没有使用次数限制和月度费用,一次安装即可长期使用,对于高频使用场景的总拥有成本(TCO)远低于订阅制商业工具。

**安装与环境准备**
评估范围 依赖 Python 运行环境。建议通过 pyenv(Python)或 nvm(Node.js)管理 Python 版本,避免全局环境污染。对于新手用户,推荐先创建虚拟环境(python -m venv venv && source venv/bin/activate),再安装依赖,这样即使出现问题也可以随时删除虚拟环境重新开始,不影响系统稳定性。

**社区与维护**
GitHub Issue 和 Discussion 是获取帮助的最快渠道。在提问前建议先检查 Closed Issues(已关闭的问题),大多数常见问题都已有解答。遇到 Bug 时,提供 pip list 的输出、完整错误堆栈和最小可复现示例,能显著提高开发者响应速度。AI Skill Hub 将持续追踪 评估范围 的版本更新,及时通知重要功能变化。

📋 工具概览

评估范围 是一款基于 Python 开发的开源工具,专注于 llm、vlm、ai 等核心功能。作为 GitHub 开源项目,它拥有活跃的社区支持和持续的版本迭代,代码完全透明可审计,支持本地部署以保护数据隐私。无论是个人使用还是集成到企业工作流,都能提供稳定可靠的解决方案。

GitHub Stars
⭐ 2.9k
开发语言
Python
支持平台
Windows / macOS / Linux
维护状态
持续维护,定期更新
开源协议
Apache-2.0
AI 综合评分
8.0 分
工具类型
AI工具
Forks
341

📖 中文文档

以下内容由 AI Skill Hub 根据项目信息自动整理,如需查看完整原始文档请访问底部「原始来源」。

评估范围 是一款基于 Python 开发的开源工具,专注于 llm、vlm、ai 等核心功能。作为 GitHub 开源项目,它拥有活跃的社区支持和持续的版本迭代,代码完全透明可审计,支持本地部署以保护数据隐私。无论是个人使用还是集成到企业工作流,都能提供稳定可靠的解决方案。

📌 核心特色
  • 开源免费,支持本地部署,数据完全自主可控
  • 活跃的 GitHub 开源社区,持续迭代更新
  • 提供详细文档和使用示例,新手友好
  • 支持自定义配置,灵活适配不同使用环境
  • 可作为基础组件集成进现有技术栈或进行二次开发
🎯 主要使用场景
  • 本地部署运行,保护数据隐私,满足合规要求
  • 自定义集成到现有系统,扩展技术栈能力
  • 作为开源基础组件进行商业化二次开发
以下安装命令基于项目开发语言和类型自动生成,实际以官方 README 为准。
安装命令
# 方式一:pip 安装(推荐)
pip install evalscope

# 方式二:虚拟环境安装(推荐生产环境)
python -m venv .venv
source .venv/bin/activate  # Windows: .venv\Scripts\activate
pip install evalscope

# 方式三:从源码安装(获取最新功能)
git clone https://github.com/modelscope/evalscope
cd evalscope
pip install -e .

# 验证安装
python -c "import evalscope; print('安装成功')"
📋 安装步骤说明
  1. 访问 GitHub 仓库页面
  2. 按照 README 文档完成依赖安装
  3. 根据系统环境完成初始化配置
  4. 参考官方示例或文档开始使用
  5. 遇到问题可在 GitHub Issues 中查找解答
以下用法示例由 AI Skill Hub 整理,涵盖最常见的使用场景。
常用命令 / 代码示例
# 命令行使用
evalscope --help

# 基本用法
evalscope input_file -o output_file

# Python 代码中调用
import evalscope

# 示例
result = evalscope.process("input")
print(result)
以下配置示例基于典型使用场景生成,具体参数请参照官方文档调整。
配置示例
# evalscope 配置文件示例(config.yml)
app:
  name: "evalscope"
  debug: false
  log_level: "INFO"

# 运行时指定配置文件
evalscope --config config.yml

# 或通过环境变量配置
export EVALSCOPE_API_KEY="your-key"
export EVALSCOPE_OUTPUT_DIR="./output"
📑 README 深度解析 真实文档 完整度 56/100 查看 GitHub 原文 →
以下内容由系统直接从 GitHub README 解析整理,保留代码块、表格与列表结构。

简介

<p align="center"> <br> <img src="docs/en/_static/images/evalscope_logo.png"/> <br> <p>

<p align="center"> <a href="README_zh.md">中文</a> &nbsp | &nbsp English &nbsp </p>

<p align="center"> <img src="https://img.shields.io/badge/python-%E2%89%A53.10-5be.svg"> <a href="https://badge.fury.io/py/evalscope"><img src="https://badge.fury.io/py/evalscope.svg" alt="PyPI version" height="18"></a> <a href="https://pypi.org/project/evalscope"><img alt="PyPI - Downloads" src="https://static.pepy.tech/badge/evalscope"></a> <a href="https://github.com/modelscope/evalscope/pulls"><img src="https://img.shields.io/badge/PR-welcome-55EB99.svg"></a> <a href='https://evalscope.readthedocs.io/en/latest/?badge=latest'><img src='https://readthedocs.org/projects/evalscope/badge/?version=latest' alt='Documentation Status' /></a> <p>

<p align="center"> <a href="https://evalscope.readthedocs.io/zh-cn/latest/"> 📖 中文文档</a> &nbsp | &nbsp <a href="https://evalscope.readthedocs.io/en/latest/"> 📖 English Documentation</a> <p>

⭐ If you like this project, please click the "Star" button in the upper right corner to support us. Your support is our motivation to move forward!

📝 Introduction

EvalScope is a one-stop LLM evaluation framework built by the ModelScope Community. Just one command to start — it supports model capability evaluation, inference performance stress testing, and result visualization.

pip install evalscope
evalscope eval --model your-model-name --api-url $OPENAI_API_BASE_URL --api-key $OPENAI_API_KEY --eval-type openai_api --datasets gsm8k --limit 5

✨ Key Features

  • 📚 Comprehensive Evaluation Benchmarks: Built-in multiple industry-recognized evaluation benchmarks including MMLU, C-Eval, GSM8K, and more.
  • 🧩 Multi-modal and Multi-domain Support: Supports evaluation of various model types including Large Language Models (LLM), Vision Language Models (VLM), Embedding, Reranker, AIGC, and more.
  • 🚀 Multi-backend Integration: Seamlessly integrates multiple evaluation backends including OpenCompass, VLMEvalKit, RAGEval to meet different evaluation needs.
  • 🤖 Agent Evaluation Mode: Drives benchmarks (e.g. GSM8K, AIME, SWE-bench Agentic) inside a controlled multi-turn AgentLoop with pluggable strategies, tools and Docker sandbox; full per-sample Agent Trace is recorded and visualizable.
  • ⚡ Inference Performance Testing: Provides powerful model service stress testing tools, supporting multiple performance metrics such as TTFT, TPOT.
  • 📊 Interactive Reports: Provides WebUI visualization interface, supporting multi-dimensional model comparison, report overview and detailed inspection.
  • ⚔️ Arena Mode: Supports multi-model battles (Pairwise Battle), intuitively ranking and evaluating models.
  • 🔧 Highly Extensible: Developers can easily add custom datasets, models and evaluation metrics.

🎉 What's New

  • 🔥 [2026.05.27] Added Trie agentic trace replay for perf benchmarking: three new dataset plugins (trie_agentic_coding / trie_code_qa / trie_office_work) replay real multi-turn agent traces with per-turn token caps and tool-call latency simulation. Also introduced a --duration wall-clock budget for all benchmark modes and a Turn dataclass for per-turn overrides.
  • 🔥 [2026.05.27] Added Vendor Verifier benchmarks (k2_verifier, kimi_verifier, minimax_verifier) for validating whether third-party API deployments faithfully reproduce official model behavior, with a shared VendorVerifierAdapter base class.
  • 🔥 [2026.05.26] Added the GAIA agent benchmark (multi-turn ReAct + bash in a Docker sandbox, official rule-based scorer) and generic MCP server support — any NativeAgentConfig-driven benchmark can now plug in stdio / HTTP / SSE MCP servers (fetch, web search, GitHub, ...) without per-benchmark wiring.
  • 🔥 [2026.05.22] Introduced the External Agent Bridge mode: evaluate off-the-shelf agent CLIs such as Anthropic's Claude Code and OpenAI's Codex directly through EvalScope. The bridge transparently forwards each CLI's LLM traffic (Anthropic Messages / OpenAI Chat / OpenAI Responses, including SSE streaming) to your evaluation model, while recording the full trajectory as an agent_trace. Bring-your-own-runner via @register_runner. See the External Agent Bridge guide.
  • 🔥 [2026.05.19] Added support for SWE-bench_Pro and τ³-bench: SWE-bench_Pro is a more challenging multilingual long-horizon software-engineering benchmark from Scale AI (recommended over the original SWE-bench for less data contamination and broader language coverage; per-instance Docker images are pulled directly from DockerHub, no local image build required); τ³-bench is the v1.0.0 release of the tau-bench family, extending τ²-bench with a new banking_knowledge retrieval domain (RAG), 75+ task fixes across existing domains, and pluggable retrieval pipelines (BM25 / embeddings / rerankers / sandbox shell).
  • 🔥 [2026.05.15] Introduced Agent Evaluation Mode: any benchmark based on DefaultDataAdapter (GSM8K, AIME, IFEval, etc.) can now be driven through a multi-turn AgentLoop with pluggable strategies (function_calling / react / swe_bench_*), tools (bash / python_exec / submit) and local / docker environments. Per-sample agent_trace is recorded and rendered step-by-step in the dashboard's Predictions tab. See the Agent Evaluation guide for details.
  • 🔥 [2026.05.08] Partnered with LightSeek to launch TokenSpeed, a speed-of-light LLM inference engine for agentic workloads. EvalScope provides the SWE-smith benchmarking pipeline — using real coding-agent traces to measure per-GPU throughput (TPM) and per-user latency (TPS) — serving as the official benchmark tool for TokenSpeed performance evaluation. Refer to the SWE-smith usage guide to get started.
  • 🔥 [2026.05.07] Replaced the Gradio-based WebUI with a new React + Vite web interface for better performance and user experience.
  • 🔥 [2026.04.23] Added support for recording performance (perf) metrics during evaluation tasks, enabling simultaneous tracking of model accuracy and inference efficiency metrics such as TTFT, TPOT, and throughput in a single evaluation run.
  • 🔥 [2026.04.17] Added support for multi-turn conversation performance stress testing, enabling load testing of dialogue-based model services with multi-turn context. Refer to the usage documentation.
  • 🔥 [2026.04.10] Added support for TIR-Bench (Thinking-with-Images Reasoning Benchmark), a multimodal benchmark evaluating agentic visual reasoning capabilities of vision-language models.
  • 🔥 [2026.03.24] Added support for Agent Skill. Any agent model that supports Skill/Tool calling can use natural language to drive EvalScope for model evaluation, performance benchmarking, and result visualization.
  • 🔥 [2026.03.09] Added support for evaluation progress tracking and HTML format visualization report generation.

<details><summary>More historical updates</summary>

  • 🔥 [2026.03.02] Added support for Anthropic Claude API evaluation. Use --eval-type anthropic_api to evaluate models via Anthropic API service.
  • 🔥 [2026.02.03] Comprehensive update to dataset documentation, adding data statistics, data samples, usage instructions and more.
  • 🔥 [2026.01.13] Added support for Embedding and Rerank model service stress testing.
  • 🔥 [2025.12.26] Added support for Terminal-Bench-2.0, which evaluates AI Agent performance on 89 real-world multi-step terminal tasks.
  • 🔥 [2025.12.18] Added support for SLA auto-tuning model API services.
  • 🔥 [2025.12.16] Added support for audio evaluation benchmarks such as Fleurs, LibriSpeech; added support for multilingual code evaluation benchmarks such as MultiplE, MBPP.
  • 🔥 [2025.12.02] Added support for custom multimodal VQA evaluation; added support for visualizing model service stress testing in ClearML.
  • 🔥 [2025.11.26] Added support for OpenAI-MRCR, GSM8K-V, MGSM, MicroVQA, IFBench, SciCode benchmarks.
  • 🔥 [2025.11.18] Added support for custom Function-Call (tool invocation) datasets to test whether models can timely and correctly call tools.
  • 🔥 [2025.11.14] Added support for SWE-bench_Verified, SWE-bench_Lite, SWE-bench_Verified_mini code evaluation benchmarks.
  • 🔥 [2025.11.12] Added pass@k, vote@k, pass^k and other metric aggregation methods; added support for multimodal evaluation benchmarks such as A_OKVQA, CMMU, ScienceQA, V*Bench.
  • 🔥 [2025.11.07] Added support for τ²-bench, an extended and enhanced version of τ-bench that includes a series of code fixes and adds telecom domain troubleshooting scenarios.
  • 🔥 [2025.10.30] Added support for BFCL-v4, enabling evaluation of agent capabilities including web search and long-term memory.
  • 🔥 [2025.10.27] Added support for LogiQA, HaluEval, MathQA, MRI-QA, PIQA, QASC, CommonsenseQA and other evaluation benchmarks. Thanks to @penguinwang96825 for the code implementation.
  • 🔥 [2025.10.26] Added support for Conll-2003, CrossNER, Copious, GeniaNER, HarveyNER, MIT-Movie-Trivia, MIT-Restaurant, OntoNotes5, WNUT2017 and other Named Entity Recognition evaluation benchmarks. Thanks to @penguinwang96825 for the code implementation.
  • 🔥 [2025.10.21] Optimized sandbox environment usage in code evaluation, supporting both local and remote operation modes.
  • 🔥 [2025.10.20] Added support for evaluation benchmarks including PolyMath, SimpleVQA, MathVerse, MathVision, AA-LCR; optimized evalscope perf performance to align with vLLM Bench.
  • 🔥 [2025.10.14] Added support for OCRBench, OCRBench-v2, DocVQA, InfoVQA, ChartQA, and BLINK multimodal image-text evaluation benchmarks.
  • 🔥 [2025.09.22] Code evaluation benchmarks (HumanEval, LiveCodeBench) now support running in a sandbox environment.
  • 🔥 [2025.09.19] Added support for multimodal image-text evaluation benchmarks including RealWorldQA, AI2D, MMStar, MMBench, and OmniBench, as well as pure text evaluation benchmarks such as Multi-IF, HealthBench, and AMC.
  • 🔥 [2025.09.05] Added support for vision-language multimodal model evaluation tasks, such as MathVista and MMMU.
  • 🔥 [2025.09.04] Added support for image editing task evaluation, including the GEdit-Bench benchmark.
  • 🔥 [2025.08.22] Version 1.0 Refactoring. Break changes, please refer to.
  • 🔥 [2025.07.18] The model stress testing now supports randomly generating image-text data for multimodal model evaluation.
  • 🔥 [2025.07.16] Support for τ-bench has been added.
  • 🔥 [2025.07.14] Support for "Humanity's Last Exam" (Humanity's-Last-Exam).
  • 🔥 [2025.07.03] Refactored Arena Mode.
  • 🔥 [2025.06.28] Optimized custom dataset evaluation; enhanced LLM judge usage.
  • 🔥 [2025.06.19] Added support for the BFCL-v3 benchmark.
  • 🔥 [2025.06.02] Added support for the Needle-in-a-Haystack test.
  • 🔥 [2025.05.29] Added support for two long document evaluation benchmarks: DocMath and FRAMES.
  • 🔥 [2025.05.16] Model service performance stress testing now supports setting various levels of concurrency.
  • 🔥 [2025.05.13] Added support for the ToolBench-Static dataset, DROP and Winogrande benchmarks.
  • 🔥 [2025.04.29] Added Qwen3 Evaluation Best Practices.
  • 🔥 [2025.04.27] Support for text-to-image evaluation.
  • 🔥 [2025.04.10] Model service stress testing tool now supports the /v1/completions endpoint.
  • 🔥 [2025.04.08] Support for evaluating embedding model services compatible with the OpenAI API has been added.
  • 🔥 [2025.03.27] Added support for AlpacaEval and ArenaHard evaluation benchmarks.
  • 🔥 [2025.03.20] The model inference service stress testing now supports generating prompts of specified length using random values.
  • 🔥 [2025.03.13] Added support for the LiveCodeBench code evaluation benchmark.
  • 🔥 [2025.03.11] Added support for the SimpleQA and Chinese SimpleQA evaluation benchmarks.
  • 🔥 [2025.03.07] Added support for the QwQ-32B model evaluation.
  • 🔥 [2025.03.04] Added support for the SuperGPQA dataset.
  • 🔥 [2025.03.03] Added support for evaluating the IQ and EQ of models.
  • 🔥 [2025.02.27] Added support for evaluating the reasoning efficiency of models.
  • 🔥 [2025.02.25] Added support for MuSR and ProcessBench benchmarks.
  • 🔥 [2025.02.18] Supports the AIME25 dataset.
  • 🔥 [2025.02.13] Added support for evaluating DeepSeek distilled models.
  • 🔥 [2025.01.20] Support for visualizing evaluation results.
  • 🔥 [2025.01.07] Native backend: Support for model API evaluation.
  • 🔥🔥 [2024.12.31] Support for adding benchmark evaluations.
  • 🔥 [2024.12.13] Model evaluation optimization.
  • 🔥 [2024.11.26] The model inference service performance evaluator has been completely refactored.
  • 🔥 [2024.10.31] The best practice for evaluating Multimodal-RAG has been updated.
  • 🔥 [2024.10.23] Supports multimodal RAG evaluation.
  • 🔥 [2024.10.8] Support for RAG evaluation.
  • 🔥 [2024.09.18] Documentation added blog module.
  • 🔥 [2024.09.12] Support for LongWriter evaluation.
  • 🔥 [2024.08.30] Support for custom dataset evaluations.
  • 🔥 [2024.08.20] Updated the official documentation.
  • 🔥 [2024.08.09] Simplified the installation process.
  • 🔥 [2024.07.31] Important change: The package name llmuses has been changed to evalscope.
  • 🔥 [2024.07.26] Support for VLMEvalKit as a third-party evaluation framework.
  • 🔥 [2024.06.29] Support for OpenCompass as a third-party evaluation framework.
  • 🔥 [2024.06.13] EvalScope integrates with SWIFT; Integrated the Agent evaluation dataset ToolBench.

</details>

Installation

pip install evalscope
For detailed installation instructions (source install, extra dependencies, etc.), please refer to the 📖 Installation Guide.

🚀 Quick Start

📈 Advanced Usage

Example evaluation results

Model WinRate (%) CI (%) ------------ ------------- --------------- qwen2.5-72b 69.3 (-13.3 / +12.2) qwen2.5-7b 50 (+0.0 / +0.0) qwen2.5-0.5b 4.7 (-2.5 / +4.4) ``` For details, please refer to 📖 Arena Mode Usage Guide.

🎯 aiskill88 AI 点评 A 级 2026-05-29

高效的大型模型评估框架,值得关注

📚 实用指南(长尾问题)
适合谁
  • 需要让 Claude / Cursor 操作本地工具的 AI 工程师
  • 构建多智能体协作系统的 Agent 开发者
  • 构建企业知识库 / RAG 检索应用的团队
最佳实践
  • 配置 MCP 服务器时建议使用 stdio 传输 + JSON-RPC,避免暴露公网
  • 生产部署优先使用 Docker Compose 隔离依赖,并挂载 volume 持久化数据
  • 分块大小建议 256-512 tokens,向量库优选 pgvector 或 Qdrant
  • Agent 任务先做 dry-run 验证工具调用链,再开启自主执行
常见错误
  • API key 直接提交到 git 仓库(请用 .env 并加入 .gitignore)
  • MCP 配置路径拼错或权限不足,重启 Claude Desktop 才生效
  • 容器内无法访问宿主机 localhost — 使用 host.docker.internal
  • embedding 模型与查询模型不一致导致检索失效
  • Python 依赖冲突:建议用 venv / uv 隔离环境
部署方案
  • Docker:evalscope 提供官方镜像,docker compose up 一键启动
  • CLI:直接 npm install -g / pip install,命令行调用
  • 云端托管:可放在 Vercel / Railway / Fly.io 等 PaaS 平台
相关搜索
evalscope 中文教程evalscope 安装报错怎么办evalscope MCP 配置evalscope Docker 部署evalscope Agent 工作流evalscope 与同类工具对比evalscope 最佳实践evalscope 适合谁用

⚡ 核心功能

👥 适合谁
  • 需要让 Claude / Cursor 操作本地工具的 AI 工程师
  • 构建多智能体协作系统的 Agent 开发者
  • 构建企业知识库 / RAG 检索应用的团队
⭐ 最佳实践
  • 配置 MCP 服务器时建议使用 stdio 传输 + JSON-RPC,避免暴露公网
  • 生产部署优先使用 Docker Compose 隔离依赖,并挂载 volume 持久化数据
  • 分块大小建议 256-512 tokens,向量库优选 pgvector 或 Qdrant
  • Agent 任务先做 dry-run 验证工具调用链,再开启自主执行
⚠️ 常见错误
  • API key 直接提交到 git 仓库(请用 .env 并加入 .gitignore)
  • MCP 配置路径拼错或权限不足,重启 Claude Desktop 才生效
  • 容器内无法访问宿主机 localhost — 使用 host.docker.internal
  • embedding 模型与查询模型不一致导致检索失效

👥 适合人群

AI 技术爱好者研究人员和学生开发者和工程师技术创业者

🎯 使用场景

  • 本地部署运行,保护数据隐私,满足合规要求
  • 自定义集成到现有系统,扩展技术栈能力
  • 作为开源基础组件进行商业化二次开发

⚖️ 优点与不足

✅ 优点
  • +Apache-2.0 协议,可免费商用
  • +完全开源免费,无授权费用
  • +本地部署,数据完全自主可控
  • +开发者社区支持,遇问题可查可问
⚠️ 不足
  • 安装和初始配置可能需要一定技术基础
  • 功能完整性通常不如成熟商业产品
  • 技术支持主要依赖开源社区,响应速度不稳定
⚠️ 使用须知

AI Skill Hub 为第三方内容聚合平台,本页面信息基于公开数据整理,不对工具功能和质量作任何法律背书。

建议在沙箱或测试环境中充分验证后,再部署至生产环境,并做好必要的安全评估。

📄 License 说明

✅ Apache 2.0 — 宽松开源协议,可商用,需保留版权声明和 NOTICE 文件,含专利授权条款。

🔗 相关工具推荐

📚 相关教程推荐
📰 相关 AI 新闻
🍿 AI 圈相关吃瓜
🗺️ 相关解决方案
🧩 你可能还需要
基于当前 Skill 的能力图谱,自动补全的工具组合

❓ 常见问题 FAQ

evalscope 是一款Python开发的AI辅助工具。开源AI工具:A streamlined and customizable framework for efficient large model (LLM, VLM, AI。⭐2.9k · Python 主要应用场景包括:大型模型评估和优化。
💡 AI Skill Hub 点评

总体来看,评估范围 是一款质量优秀的AI工具,在同类工具中具备一定竞争力。AI Skill Hub 将持续追踪其更新动态,建议收藏备用,结合自身场景选择合适时机引入使用。

📚 深入学习 评估范围
查看分步骤安装教程和完整使用指南,快速上手这款工具
🌐 原始信息
原始名称 evalscope
原始描述 开源AI工具:A streamlined and customizable framework for efficient large model (LLM, VLM, AI。⭐2.9k · Python
Topics llmvlmaiperformanceevaluation
GitHub https://github.com/modelscope/evalscope
License Apache-2.0
语言 Python
🔗 原始来源
🐙 GitHub 仓库  https://github.com/modelscope/evalscope 🌐 官方网站  https://evalscope.readthedocs.io/en/latest/

收录时间:2026-05-29 · 更新时间:2026-05-30 · License:Apache-2.0 · AI Skill Hub 不对第三方内容的准确性作法律背书。