From antigravity-awesome-skills
Searches Semantic Scholar (200M+ papers), inspects citations, downloads arXiv PDFs, and extracts text via a bundled Python CLI. Use for literature scans, deep reads, impact analysis, or reading lists.
How this skill is triggered — by the user, by Claude, or both
Slash command
/antigravity-awesome-skills:papers-skillThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Papers Skill turns a coding agent into a literature-research assistant. It
Papers Skill turns a coding agent into a literature-research assistant. It
orchestrates a bundled Python CLI (scripts/papers.py) that hits the free
Semantic Scholar and arXiv APIs, downloads arXiv PDFs, and extracts text with
PyMuPDF. The agent decides which subcommand to invoke and how to combine
results into a literature scan, a deep read of one paper, an impact analysis,
or a reading list.
This skill is the Skill-mode port of the papers-mcp MCP server by the same author. Both projects share the same feature set; this one ships as a Claude Code plugin so it can be installed with a single command and needs no long-running MCP process.
Three Python packages are required. The skill should check once per session, using the same interpreter to import-check and install so the dependency check and install target stay in sync:
python -c "import httpx, arxiv, fitz" 2>&1 || python -m pip install httpx arxiv PyMuPDF
If python is not on PATH, fall back to py (Windows launcher) or the
absolute interpreter path — and remember to invoke pip via the same
interpreter, e.g. py -m pip install httpx arxiv PyMuPDF.
The script lives at ${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py
and is bundled with this skill (no separate install needed). Always quote the
path so it survives spaces.
python "${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py" <subcommand> [args]
| Subcommand | Purpose | Example |
|---|---|---|
search <query> [--limit N] | Semantic Scholar search, max 20 | search "diffusion models" --limit 5 |
detail <paper_id> | Full metadata, TL;DR, top references | detail 10.48550/arXiv.2310.06825 |
citations <paper_id> [--limit N] | Papers citing this one, max 20 | citations <id> --limit 15 |
arxiv <query> [--max-results N] | arXiv preprint search, max 10 | arxiv "RLHF" --max-results 5 |
download <arxiv_id> [--save-dir D] | Save PDF locally | download 2310.06825 --save-dir ./pdfs |
read <pdf_path> [--max-pages N] | Extract PDF text via PyMuPDF | read ./pdfs/foo.pdf --max-pages 20 |
detail and citations auto-detect the ID type: DOIs starting with 10.
are used as-is, bare numeric IDs of 10+ digits are treated as arXiv IDs, and
long hex strings are treated as Semantic Scholar paperIds.
python "${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py" search "retrieval augmented generation" --limit 10
Present results as a ranked table with # | Title | Year | Citations | ID, then ask the user which papers to dig into.
# 1. Confirm match
python "${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py" detail 2005.11401
# 2. Download
python "${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py" download 2005.11401 --save-dir ./pdfs
# 3. Extract abstract + intro + conclusion
python "${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py" read ./pdfs/2005.11401v4.RAG.pdf --max-pages 10
Summarize as: problem · method · key result · limitations.
python "${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py" detail 10.48550/arXiv.2005.11401
python "${CLAUDE_PLUGIN_ROOT}/skills/papers-skill/scripts/papers.py" citations 10.48550/arXiv.2005.11401 --limit 20
Cluster the citing papers by year/theme and highlight the most-cited follow-ups.
detail before download to confirm the paper matches user
intent. Skipping this leads to wrong PDFs being fetched.[FirstAuthor et al., Year] *Title* (cites: N).--max-pages to 100+ without warning the user — it can
consume a large amount of context.PDF无法提取文本(可能是扫描件); offer the user an
alternative version or note that OCR is required.搜索失败: rate limit, retries exhausted.api.semanticscholar.org and
arxiv.org (and the arXiv-listed mirror for the bundled arxiv package).
No authentication tokens are sent.download writes a PDF to the directory the user specifies (default: the
current working directory). Confirm the save path with the user before
downloading to an unexpected location.read opens a local PDF file with PyMuPDF — make sure the path the user
supplies is one they trust.Problem: 需要安装 arxiv: pip install arxiv or 需要安装 PyMuPDF: pip install PyMuPDF.
Solution: The script returns this friendly message instead of crashing
when an optional dependency is missing. Offer to run the install command.
Problem: 搜索失败: rate limit, retries exhausted from search or
detail or citations.
Solution: Semantic Scholar is rate-limiting. Wait ~10 seconds and
retry once. For repeated runs, fall back to arxiv for arXiv-indexed work.
Problem: download fails with 找不到 arXiv ID: ….
Solution: The user gave a non-arXiv ID (likely a DOI for a non-arXiv
paper). Use detail to inspect; only papers with an externalIds.ArXiv
field can be downloaded.
Problem: Garbled Chinese output on Windows.
Solution: The script already forces UTF-8 stdout. If the host
terminal is still misconfigured, set PYTHONIOENCODING=utf-8 in the
shell environment.
npx claudepluginhub sickn33/antigravity-awesome-skills --plugin antigravity-bundle-aas-localization-international-growth3plugins reuse this skill
First indexed Jun 12, 2026
Provides workflows for systematic literature reviews: PubMed/Semantic Scholar searches, paper screening with rubrics, data extraction, citation traversal. Use for research questions or session starts.
Discovers and retrieves scholarly literature via Semantic Scholar, arXiv, and optional OpenAlex, Perplexity Sonar, bgpt.pro. Handles paper discovery, citation-graph traversal, full-text snippet search, and experimental-result extraction. Degrades to WebSearch/WebFetch on failure.
Searches academic literature via arXiv, Semantic Scholar, and open-access sources. Fetches and parses PDFs for abstracts, key findings, methodology, and citations. Use for research, literature reviews, or formal citations.