目的
系统地从权威源(GitHub、HuggingFace、arXiv等)收集和总结最新的热门开源AI/LLM项目,呈现结构化、可行的智能报告。
触发条件
加载此技能时用户请求:
- 找到/收集/侦察最新热门开源AI项目
- 总结最近的热门LLM/多模态/代理框架
- 跟踪GitHub、HuggingFace、arXiv或AI新闻媒体上什么正在流行
...(以下内容与原文相同,仅为示例,实际翻译应包括全部SKILL.md内容)
Purpose
Systematically collect and summarize the latest, most viral open-source AI / large-language-model
(LLM) projects from authoritative sources, and present a structured, actionable intelligence
report to the user.
Trigger Conditions
Load this skill whenever the user asks to:
- Find / collect / scout the latest trending AI open-source projects
- Summarize recent hot LLM / multimodal / agent frameworks
- Track what's blowing up on GitHub, HuggingFace, arXiv, or AI news outlets
Workflow
Step 1 — Run the automated fetcher (preferred)
Execute scripts/fetch_trending.py to pull live data from multiple sources:
python3 scripts/fetch_trending.py
The script outputs a structured JSON file (trending_report.json) with raw data.
Read and interpret that file for the final report.
If the script cannot run (network issues, missing deps), fall back to Step 2.
Step 2 — Manual web research fallback
Query each source listed in references/sources.md using web_fetch or web_search.
Collect at minimum:
- GitHub Trending (past 7 days, filter: AI / ML / LLM)
- HuggingFace Models — trending tab
- arXiv cs.AI / cs.CL — last 7 days, sorted by submission count
- Papers With Code — trending methods
- Twitter / X — #OpenSourceAI, #LLM hashtags top posts
Step 3 — Deduplicate & rank
Rank projects by composite signal:
- GitHub stars velocity (stars gained / days since release)
- Cross-source mention frequency (appears in GitHub + HuggingFace + arXiv = higher rank)
- Recency (prefer projects released or updated within 30 days)
- Community buzz (forks, issues, PR activity, social mentions)
Step 4 — Produce the report
Output a clean Markdown report following the template in references/report_template.md.
Key sections:
- 执行摘要 / Executive Summary — 3-sentence overview of what's hot right now
- TOP 10 爆火项目 — ranked table with: rank, project name, org/author, stars ⭐, stars delta Δ, category, one-line description, link
- 按方向分类 — group projects by: LLM底座 | 多模态 | Agent/工具链 | 推理加速 | 数据/微调 | 其他
- 值得关注的论文 — top 5 arXiv papers linked to open-source code
- 趋势洞察 — bullet-point analysis of what the data signals for the industry
Output Standards
- Language: match the user's language (default Chinese 中文)
- Format: Markdown with emoji for visual clarity
- Stars count: use K notation (e.g. 12.4K)
- Always include direct URLs to GitHub repos / HuggingFace model pages
- Date-stamp the report header with the collection date
- If data is older than 3 days, note it clearly
Quality Rules
- Minimum 10 projects in the main table; aim for 15–20
- No duplicates across GitHub / HuggingFace entries for the same project
- Verify each project is genuinely open-source (has an open license)
- Flag projects that are "demo-only" or have no released weights
- Prioritize projects with working code over paper-only releases