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leon0401

AI Trending Radar

by Leon Stark · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ✓ Security Clean
101
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1
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0
Active Installs
1
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Install in OpenClaw
/install ai-trending-models
Description
This skill should be used when the user wants to discover, collect, or summarize the latest trending and viral open-source AI or LLM projects. Triggers inclu...
README (SKILL.md)

AI Trending Models Skill

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:

  1. GitHub stars velocity (stars gained / days since release)
  2. Cross-source mention frequency (appears in GitHub + HuggingFace + arXiv = higher rank)
  3. Recency (prefer projects released or updated within 30 days)
  4. 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
Usage Guidance
This skill appears coherent and limited to collecting public metadata from open sources. Before running: (1) be aware it will make outbound HTTP(S) requests to public services (GitHub, HuggingFace, arXiv, PapersWithCode, HN, social platforms); ensure network access is acceptable in your environment. (2) The included script writes a JSON report (trending_report.json) — review it or run in a sandbox if you prefer. (3) The arXiv endpoint is requested over HTTP in the script (export.arxiv.org); consider updating to HTTPS if you need encrypted fetches. (4) If you will run this in a sensitive environment, inspect the full script (the file is included) to confirm no additional behavior in the truncated portion modifies this assessment.
Capability Analysis
Type: OpenClaw Skill Name: ai-trending-models Version: 1.0.0 The skill is a legitimate tool designed to aggregate trending AI and LLM projects from public sources like GitHub, HuggingFace, arXiv, and Hacker News. The primary script, `scripts/fetch_trending.py`, uses standard Python libraries to query official APIs and does not exhibit any signs of data exfiltration, unauthorized execution, or obfuscation. The instructions in `SKILL.md` are well-defined and strictly aligned with the stated purpose of generating a structured research report.
Capability Assessment
Purpose & Capability
Name/description request trending AI projects and the included script plus SKILL.md perform web fetches from GitHub, HuggingFace, arXiv, Papers With Code, Hacker News, Twitter/X, Reddit, etc. All required resources and actions align with the stated purpose; no unrelated binaries or credentials are requested.
Instruction Scope
Runtime instructions are limited to running the included fetcher or performing web searches against the listed sources, deduplicating, ranking, and producing a Markdown report. The SKILL.md does not instruct the agent to read local files, environment secrets, or send data to unknown third parties. It does instruct the agent to fetch social-media content and repository metadata (expected for this task).
Install Mechanism
No install spec — instruction-only with a single Python script included. This minimizes disk-write/remote-install risk. The script uses Python stdlib (urllib) and does not pull external packages at install time.
Credentials
The skill declares no required environment variables, no primary credential, and no config paths. The script also does not read environment variables or local credential files in the visible code. Outbound network access to public APIs is necessary and proportional to the purpose.
Persistence & Privilege
The skill is not force-installed (always:false) and does not request persistent or elevated privileges. It produces local output (trending_report.json per SKILL.md) which is reasonable for a reporting tool.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install ai-trending-models
  3. After installation, invoke the skill by name or use /ai-trending-models
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release: Automatically Collect the Latest Trending AI Open-Source Projects from GitHub / arXiv
Metadata
Slug ai-trending-models
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is AI Trending Radar?

This skill should be used when the user wants to discover, collect, or summarize the latest trending and viral open-source AI or LLM projects. Triggers inclu... It is an AI Agent Skill for Claude Code / OpenClaw, with 101 downloads so far.

How do I install AI Trending Radar?

Run "/install ai-trending-models" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is AI Trending Radar free?

Yes, AI Trending Radar is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does AI Trending Radar support?

AI Trending Radar is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created AI Trending Radar?

It is built and maintained by Leon Stark (@leon0401); the current version is v1.0.0.

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