Agent skill
deepxiv
Search and progressively read open-access academic papers through DeepXiv. Use when the user wants layered paper access, section-level reading, trending papers, or DeepXiv-backed literature retrieval.
Install this agent skill to your Project
npx add-skill https://github.com/wanshuiyin/Auto-claude-code-research-in-sleep/tree/main/skills/deepxiv
SKILL.md
DeepXiv Paper Search & Progressive Reading
Search topic or paper ID: $ARGUMENTS
Role & Positioning
DeepXiv is the progressive-reading literature source:
| Skill | Best for |
|---|---|
/arxiv |
Direct preprint search and PDF download |
/semantic-scholar |
Published venue metadata, citation counts, DOI links |
/deepxiv |
Layered reading: search → brief → head → section, plus trending and web search |
Use DeepXiv when you want to avoid loading full papers too early.
Constants
- FETCH_SCRIPT —
tools/deepxiv_fetch.pyrelative to the current project. If unavailable, fall back to the rawdeepxivCLI. - MAX_RESULTS = 10 — Default number of results to return.
Overrides (append to arguments):
/deepxiv "agent memory" - max: 5— top 5 results/deepxiv "2409.05591" - brief— quick paper summary/deepxiv "2409.05591" - head— metadata + section overview/deepxiv "2409.05591" - section: Introduction— read one section only/deepxiv "trending" - days: 14 - max: 10— trending papers/deepxiv "karpathy" - web— DeepXiv web search/deepxiv "258001" - sc— Semantic Scholar metadata by ID
Setup
DeepXiv is optional. If the CLI is not installed, tell the user:
pip install deepxiv-sdk
On first use, deepxiv auto-registers a free token and stores it in ~/.env.
Workflow
Step 1: Parse Arguments
Parse $ARGUMENTS for:
- Query or ID: a paper topic, arXiv ID, or Semantic Scholar ID
- max: N: overrideMAX_RESULTS- brief: fetch paper brief- head: fetch metadata and section map- section: NAME: fetch one named section- trendingor querytrending: fetch trending papers- days: 7|14|30: trending time window- web: run DeepXiv web search- sc: fetch Semantic Scholar metadata by ID
If the main argument looks like an arXiv ID and no explicit mode is given, default to - brief.
Step 2: Locate the Adapter
Prefer the ARIS adapter:
python3 tools/deepxiv_fetch.py --help
If tools/deepxiv_fetch.py is not available, fall back to raw deepxiv commands.
Step 3: Execute the Minimal Command
Search papers
python3 tools/deepxiv_fetch.py search "QUERY" --max MAX_RESULTS
Fallback:
deepxiv search "QUERY" --limit MAX_RESULTS --format json
Brief summary
python3 tools/deepxiv_fetch.py paper-brief ARXIV_ID
Fallback:
deepxiv paper ARXIV_ID --brief --format json
Section map
python3 tools/deepxiv_fetch.py paper-head ARXIV_ID
Fallback:
deepxiv paper ARXIV_ID --head --format json
Specific section
python3 tools/deepxiv_fetch.py paper-section ARXIV_ID "SECTION_NAME"
Fallback:
deepxiv paper ARXIV_ID --section "SECTION_NAME" --format json
Trending
python3 tools/deepxiv_fetch.py trending --days 7 --max MAX_RESULTS
Fallback:
deepxiv trending --days 7 --limit MAX_RESULTS --output json
Web search
python3 tools/deepxiv_fetch.py wsearch "QUERY"
Fallback:
deepxiv wsearch "QUERY" --output json
Semantic Scholar metadata
python3 tools/deepxiv_fetch.py sc "SEMANTIC_SCHOLAR_ID"
Fallback:
deepxiv sc "SEMANTIC_SCHOLAR_ID" --output json
Step 4: Present Results
When searching, present a compact table:
| # | ID | Title | Year | Citations | Notes |
|---|----|-------|------|-----------|-------|
When reading a paper, show:
- title
- arXiv ID
- authors
- venue/date if available
- TLDR or abstract summary
- suggested next step:
brief→head→section
Step 5: Escalate Depth Only When Needed
Use this progression:
searchpaper-briefpaper-headpaper-section- full paper only if necessary
Do not jump to full-paper reads when a brief or one section answers the question.
Key Rules
- Prefer the adapter script over raw
deepxivcommands when available. - DeepXiv is optional. If unavailable, give the install command and suggest
/arxivor/research-lit "topic" - sources: web. - Use section-level reads to save tokens.
- Treat DeepXiv as complementary to
/arxivand/semantic-scholar, not a replacement. - If the result overlaps with a published venue paper from Semantic Scholar, keep the richer venue metadata in the final summary.
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