Search and analyze research papers, find related work, summarize key ideas. Use when user says "find papers", "related work", "literature review", "what does this paper say", or needs to understand academic papers.
Research topic: $ARGUMENTS
codex — Default: Codex MCP (xhigh). Override with — reviewer: oracle-pro for GPT-5.4 Pro via Oracle MCP. See shared-references/reviewer-routing.md.papers/ in the current project directoryliterature/ in the current project directoryCLAUDE.md under ## Paper Librarytrue, download top 3-5 most relevant arXiv PDFs to PAPER_LIBRARY after search. When false (default), only fetch metadata (title, abstract, authors) via arXiv API — no files are downloaded.ARXIV_DOWNLOAD = true.💡 Overrides:
/research-lit "topic" — paper library: ~/my_papers/— custom local PDF path/research-lit "topic" — sources: zotero, local— only search Zotero + local PDFs/research-lit "topic" — sources: zotero— only search Zotero/research-lit "topic" — sources: web— only search the web (skip all local)/research-lit "topic" — sources: web, semantic-scholar— also search Semantic Scholar for published venue papers (IEEE, ACM, etc.)/research-lit "topic" — sources: deepxiv— only search via DeepXiv progressive retrieval/research-lit "topic" — sources: all, deepxiv— use default sources plus DeepXiv/research-lit "topic" — arxiv download: true— download top relevant arXiv PDFs/research-lit "topic" — arxiv download: true, max download: 10— download up to 10 PDFs
This skill checks multiple sources in priority order. All are optional — if a source is not configured or not requested, skip it silently.
Parse $ARGUMENTS for a — sources: directive:
— sources: is specified: Only search the listed sources (comma-separated). Valid values: zotero, obsidian, local, web, semantic-scholar, deepxiv, exa, all.all — search every available source in priority order (semantic-scholar, deepxiv, and exa are excluded from all; they must be explicitly listed).Examples:
/research-lit "diffusion models" → all (default, no S2)
/research-lit "diffusion models" — sources: all → all (default, no S2)
/research-lit "diffusion models" — sources: zotero → Zotero only
/research-lit "diffusion models" — sources: zotero, web → Zotero + web
/research-lit "diffusion models" — sources: local → local PDFs only
/research-lit "topic" — sources: obsidian, local, web → skip Zotero
/research-lit "topic" — sources: web, semantic-scholar → web + S2 API (IEEE/ACM venue papers)
/research-lit "topic" — sources: deepxiv → DeepXiv only
/research-lit "topic" — sources: all, deepxiv → default sources + DeepXiv
/research-lit "topic" — sources: all, semantic-scholar → all + S2 API
/research-lit "topic" — sources: exa → Exa only (broad web + content extraction)
/research-lit "topic" — sources: all, exa → default sources + Exa web search
| Priority | Source | ID | How to detect | What it provides |
|---|---|---|---|---|
| 1 | Zotero (via MCP) | zotero | Try calling any mcp__zotero__* tool — if unavailable, skip | Collections, tags, annotations, PDF highlights, BibTeX, semantic search |
| 2 | Obsidian (via MCP) | obsidian | Try calling any mcp__obsidian-vault__* tool — if unavailable, skip | Research notes, paper summaries, tagged references, wikilinks |
| 3 | Local PDFs | local | Glob: papers/**/*.pdf, literature/**/*.pdf | Raw PDF content (first 3 pages) |
| 4 | Web search | web | Always available (WebSearch) | arXiv, Semantic Scholar, Google Scholar |
| 5 | Semantic Scholar API | semantic-scholar | tools/semantic_scholar_fetch.py exists | Published venue papers (IEEE, ACM, Springer) with structured metadata: citation counts, venue info, TLDR. Only runs when explicitly requested via — sources: semantic-scholar or — sources: web, semantic-scholar |
| 6 | DeepXiv CLI | deepxiv | tools/deepxiv_fetch.py and installed deepxiv CLI | Progressive paper retrieval: search, brief, head, section, trending, web search. Only runs when explicitly requested via — sources: deepxiv or — sources: all, deepxiv |
| 7 | Exa Search | exa | tools/exa_search.py and installed exa-py SDK | AI-powered broad web search with content extraction (highlights, text, summaries). Covers blogs, docs, news, companies, and research papers beyond arXiv/S2. Only runs when explicitly requested via — sources: exa or — sources: all, exa |
Graceful degradation: If no MCP servers are configured, the skill works exactly as before (local PDFs + web search). Zotero and Obsidian are pure additions.
Skip this step entirely if Zotero MCP is not configured.
Try calling a Zotero MCP tool (e.g., search). If it succeeds:
/paper-write later)📚 Zotero annotations are gold — they show what the user personally highlighted as important, which is far more valuable than generic summaries.
Skip this step entirely if Obsidian MCP is not configured.
Try calling an Obsidian MCP tool (e.g., search). If it succeeds:
#diffusion-models, #paper-review)📝 Obsidian notes represent the user's processed understanding — more valuable than raw paper content for understanding their perspective.
Before searching online, check if the user already has relevant papers locally:
Locate library: Check PAPER_LIBRARY paths for PDF files
Glob: papers/**/*.pdf, literature/**/*.pdf
De-duplicate against Zotero: If Step 0a found papers, skip any local PDFs already covered by Zotero results (match by filename or title).
Filter by relevance: Match filenames and first-page content against the research topic. Skip clearly unrelated papers.
Summarize relevant papers: For each relevant local PDF (up to MAX_LOCAL_PAPERS):
Build local knowledge base: Compile summaries into a "papers you already have" section. This becomes the starting point — external search fills the gaps.
📚 If no local papers are found, skip to Step 1. If the user has a comprehensive local collection, the external search can be more targeted (focus on what's missing).
arXiv API search (always runs, no download by default):
Locate the fetch script and search arXiv directly:
# Try to find arxiv_fetch.py
SCRIPT=$(find tools/ -name "arxiv_fetch.py" 2>/dev/null | head -1)
# If not found, check ARIS install
[ -z "$SCRIPT" ] && SCRIPT=$(find ~/.claude/skills/arxiv/ -name "arxiv_fetch.py" 2>/dev/null | head -1)
# Search arXiv API for structured results (title, abstract, authors, categories)
python3 "$SCRIPT" search "QUERY" --max 10
If arxiv_fetch.py is not found, fall back to WebSearch for arXiv (same as before).
The arXiv API returns structured metadata (title, abstract, full author list, categories, dates) — richer than WebSearch snippets. Merge these results with WebSearch findings and de-duplicate.
Semantic Scholar API search (only when semantic-scholar is in sources):
When the user explicitly requests — sources: semantic-scholar (or — sources: web, semantic-scholar), search for published venue papers beyond arXiv:
S2_SCRIPT=$(find tools/ -name "semantic_scholar_fetch.py" 2>/dev/null | head -1)
[ -z "$S2_SCRIPT" ] && S2_SCRIPT=$(find ~/.claude/skills/semantic-scholar/ -name "semantic_scholar_fetch.py" 2>/dev/null | head -1)
# Search for published CS/Engineering papers with quality filters
python3 "$S2_SCRIPT" search "QUERY" --max 10 \
--fields-of-study "Computer Science,Engineering" \
--publication-types "JournalArticle,Conference"
If semantic_scholar_fetch.py is not found, skip silently.
Why use Semantic Scholar? Many IEEE/ACM journal papers are NOT on arXiv. S2 fills the gap for published venue-only papers with citation counts and venue metadata.
De-duplication between arXiv and S2: Match by arXiv ID (S2 returns externalIds.ArXiv):
venue/publicationVenue — if it has been published in a journal/conference (e.g. IEEE TWC, JSAC), use S2's metadata (venue, citationCount, DOI) as the authoritative version, since the published version supersedes the preprint. Keep the arXiv PDF link for download.externalIds.ArXiv are venue-only papers not on arXiv — these are the unique value of this source.DeepXiv search (only when deepxiv is in sources):
When the user explicitly requests — sources: deepxiv (or includes deepxiv in a combined source list), use the DeepXiv adapter for progressive retrieval:
python3 tools/deepxiv_fetch.py search "QUERY" --max 10
Then deepen only for the most relevant papers:
python3 tools/deepxiv_fetch.py paper-brief ARXIV_ID
python3 tools/deepxiv_fetch.py paper-head ARXIV_ID
python3 tools/deepxiv_fetch.py paper-section ARXIV_ID "Experiments"
If tools/deepxiv_fetch.py or the deepxiv CLI is unavailable, skip this source gracefully and continue with the remaining requested sources.
Why use DeepXiv? It is useful when a broad search should be followed by staged reading rather than immediate full-paper loading. This reduces unnecessary context while still surfacing structure, TLDRs, and the most relevant sections.
De-duplication against arXiv and S2:
deepxiv as an additional sourceExa search (only when exa is in sources):
When the user explicitly requests — sources: exa (or includes exa in a combined source list), use the Exa tool for broad AI-powered web search with content extraction:
EXA_SCRIPT=$(find tools/ -name "exa_search.py" 2>/dev/null | head -1)
# Search for research papers with highlights
python3 "$EXA_SCRIPT" search "QUERY" --max 10 --category "research paper" --content highlights
# Search for broader web content (blogs, docs, news)
python3 "$EXA_SCRIPT" search "QUERY" --max 10 --content highlights
If tools/exa_search.py or the exa-py SDK is unavailable, skip this source gracefully and continue with the remaining requested sources.
Why use Exa? Exa provides AI-powered search across the broader web (blogs, documentation, news, company pages) with built-in content extraction. It fills a gap between academic databases (arXiv, S2) and generic WebSearch by returning richer content with each result.
De-duplication against arXiv, S2, and DeepXiv:
Optional PDF download (only when ARXIV_DOWNLOAD = true):
After all sources are searched and papers are ranked by relevance:
# Download top N most relevant arXiv papers
python3 "$SCRIPT" download ARXIV_ID --dir papers/
For each relevant paper (from all sources), extract:
Present as a structured literature table:
| Paper | Venue | Method | Key Result | Relevance to Us | Source |
|-------|-------|--------|------------|-----------------|--------|
Plus a narrative summary of the landscape (3-5 paragraphs).
If Zotero BibTeX was exported, include a references.bib snippet for direct use in paper writing.
literature/ or papers/This step is optional and automatic. Skip entirely if research-wiki/ does not exist in the project.
if research-wiki/ directory exists:
for each top relevant paper found (up to 8-12):
1. Generate slug: python3 tools/research_wiki.py slug "<title>" --author "<last>" --year <year>
2. Create page: research-wiki/papers/<slug>.md with structured schema
(node_id, title, authors, year, venue, tags, one-line thesis, problem/gap,
method, key results, limitations, reusable ingredients, open questions)
3. Add edges to graph/edges.jsonl for relationships to existing wiki papers:
python3 tools/research_wiki.py add_edge research-wiki/ --from "paper:<slug>" --to "<target>" --type <type> --evidence "<text>"
4. Update gap_map.md if new gaps are identified
Rebuild query pack:
python3 tools/research_wiki.py rebuild_query_pack research-wiki/
Log:
python3 tools/research_wiki.py log research-wiki/ "research-lit ingested N papers"