alphaxiv
$
npx mdskill add wanshuiyin/Auto-claude-code-research-in-sleep/alphaxivLookup paper: $ARGUMENTS
SKILL.md
.github/skills/alphaxivView on GitHub ↗
---
name: alphaxiv
description: Quick single-paper lookup via AlphaXiv LLM-optimized summaries with tiered source fallback. Use when user says "explain this paper", "summarize paper", pastes an arXiv/AlphaXiv URL, or provides a bare arXiv ID for quick understanding - not for broad literature search.
argument-hint: [arxiv-id-or-url]
allowed-tools: Bash(*), Read, Write, Glob
---
# AlphaXiv Paper Lookup
Lookup paper: $ARGUMENTS
> Quick single-paper reader with tiered source fallback (overview → full markdown → LaTeX source). Powered by [AlphaXiv](https://alphaxiv.org).
## Role & Positioning
This skill is the **quick single-paper reader** that returns LLM-optimized summaries:
| Skill | Source | Best for |
|-------|--------|----------|
| `/arxiv` | arXiv API | Batch search, PDF download, metadata |
| `/deepxiv` | DeepXiv SDK | Progressive section-level reading |
| `/semantic-scholar` | S2 API | Published venue metadata, citation counts |
| **`/alphaxiv`** | **alphaxiv.org** | **Instant LLM-optimized summary of one paper, with LaTeX source fallback** |
**Do NOT use this skill for** topic discovery, broad literature search, or multi-paper surveys — use `/research-lit` or `/arxiv` instead.
## Constants
- **OVERVIEW_URL** = `https://alphaxiv.org/overview/{PAPER_ID}.md`
- **ABS_URL** = `https://alphaxiv.org/abs/{PAPER_ID}.md`
- **ARXIV_SRC_URL** = `https://arxiv.org/src/{PAPER_ID}`
- **ALPHAXIV_UA** = `Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/124.0.0.0 Safari/537.36` — any modern browser UA works; update the version numbers if AlphaXiv starts blocking this value again
> Overrides (append to arguments):
> - `/alphaxiv 2401.12345` — quick overview
> - `/alphaxiv "https://arxiv.org/abs/2401.12345"` — auto-extract ID
> - `/alphaxiv 2401.12345 - depth: src` — force LaTeX source inspection
> - `/alphaxiv 2401.12345 - depth: abs` — force full markdown
## Workflow
### Step 1: Parse Arguments & Extract Paper ID
Parse `$ARGUMENTS` to extract a bare arXiv paper ID. Accept these input formats:
- `https://arxiv.org/abs/2401.12345` or `https://arxiv.org/abs/2401.12345v2`
- `https://arxiv.org/pdf/2401.12345`
- `https://alphaxiv.org/overview/2401.12345`
- `https://alphaxiv.org/abs/2401.12345`
- `2401.12345` or `2401.12345v2`
Strip version suffixes (`v1`, `v2`, ...) for API calls. Store as `PAPER_ID`.
Parse optional directives:
- **`- depth: overview|abs|src`**: force a specific tier instead of cascading
### Step 2: Fetch AlphaXiv Overview (Tier 1 — Fastest)
Use `curl` with `{ALPHAXIV_UA}` to fetch the AlphaXiv overview. AlphaXiv may return 403 for non-browser User-Agents; setting a standard browser UA reduces false positives from bot-detection:
```bash
curl -sL --max-time 15 -A "{ALPHAXIV_UA}" "https://alphaxiv.org/overview/{PAPER_ID}.md"
```
This returns a **structured, LLM-optimized report** designed for machine consumption. Use this as the default and preferred source.
If the overview answers the user's question, **stop here**. Do not fetch deeper tiers unnecessarily.
If the request fails (HTTP 4xx — 403 bot-block or 404 not-yet-processed) or returns empty content, proceed to Step 3.
### Step 3: Fetch Full AlphaXiv Markdown (Tier 2 — More Detail)
Use `curl` with `{ALPHAXIV_UA}` to fetch the full paper markdown:
```bash
curl -sL --max-time 15 -A "{ALPHAXIV_UA}" "https://alphaxiv.org/abs/{PAPER_ID}.md"
```
This provides the full paper body as markdown. Use when the user needs:
- Specific methodology details
- Detailed experimental results
- Particular sections not covered in the overview
If this still does not answer the question, proceed to Step 4.
### Step 4: Fetch arXiv LaTeX Source (Tier 3 — Deepest)
When the overview and full markdown are both insufficient (e.g., the user asks about equations, proofs, appendix details, or implementation specifics), download the paper's LaTeX source from `https://arxiv.org/src/{PAPER_ID}`.
The source is a `.tar.gz` archive. Download it to a temporary directory, extract it, and list the `.tex` files inside.
Then inspect **only** the files needed to answer the question. Prioritize:
1. Top-level `*.tex` files (usually the main document)
2. Files referenced by `\input{}` or `\include{}`
3. Appendices, tables, or sections directly related to the user's question
**Do NOT read the entire source tree by default.** Read selectively.
Temporary source artifacts live under `/tmp`. Do not rely on persistence.
### Step 5: Present Results
#### Default Answer Shape
```markdown
## [Paper Title]
- **arXiv**: [PAPER_ID] — https://arxiv.org/abs/[PAPER_ID]
- **Source depth**: overview | abs | src
### Summary
[2-3 sentence summary]
### Key Points
- [point 1]
- [point 2]
- [point 3]
### Answer to Your Question
[Direct answer if the user asked a specific question]
```
If the user only asks for one specific detail, answer it directly — skip the full template.
**After presenting the summary, you MUST proceed to Step 6 before ending the turn.**
### Step 6: Research Wiki Ingest
**You MUST always run the bash block below — it checks for `research-wiki/` internally and exits silently when absent.** Do NOT skip this step based on your own directory check; the bash block handles that for you.
Substitute only `<paper_arxiv_id>` and `<thesis>`; keep `${ARIS_REPO:-...}` as-is so an already-set env var is preserved.
```bash
if [ -d research-wiki/ ]; then
cd "$(git rev-parse --show-toplevel 2>/dev/null || pwd)" || exit 1
ARIS_REPO="${ARIS_REPO:-$(awk -F'\t' '$1=="repo_root"{print $2; exit}' .aris/installed-skills.txt 2>/dev/null)}"
WIKI_SCRIPT=".aris/tools/research_wiki.py"
[ -f "$WIKI_SCRIPT" ] || WIKI_SCRIPT="tools/research_wiki.py"
[ -f "$WIKI_SCRIPT" ] || { [ -n "${ARIS_REPO:-}" ] && WIKI_SCRIPT="$ARIS_REPO/tools/research_wiki.py"; }
[ -f "$WIKI_SCRIPT" ] || {
echo "WARN: research_wiki.py not found; paper summary delivered, wiki ingest skipped. Fix: bash tools/install_aris.sh, export ARIS_REPO, or cp <ARIS-repo>/tools/research_wiki.py tools/." >&2
WIKI_SCRIPT=""
}
[ -n "$WIKI_SCRIPT" ] && python3 "$WIKI_SCRIPT" ingest_paper research-wiki/ \
--arxiv-id "<paper_arxiv_id>" \
[--thesis "<one-line thesis from the Tier 1 overview>"]
fi
```
The helper handles metadata fetch, slug, dedup, page creation, index
rebuild, and log append — **do not handwrite `papers/<slug>.md`**. See
[`shared-references/integration-contract.md`](../shared-references/integration-contract.md).
If wiki was not present at read time (or the helper was unreachable),
the user can backfill via
`python3 "$WIKI_SCRIPT" sync research-wiki/ --arxiv-ids <id>` after
resolving `$WIKI_SCRIPT` as above.
#### Suggest Follow-Up Skills (after Step 6 completes)
```text
/arxiv "PAPER_ID" - download - download the PDF to local library
/deepxiv "PAPER_ID" - section: Methods - read a specific section progressively
/research-lit "related topic" - multi-source literature survey
/novelty-check "idea from paper" - verify novelty against this paper's area
```
## Key Rules
- **Overview first**: `overview` is the fastest path and must always be tried before deeper tiers. Only escalate when needed.
- **Minimal reads**: At `src` tier, read only the files that answer the question. Full-tree reads waste tokens.
- **Cross-platform**: When downloading and extracting the source archive, prefer cross-platform approaches (e.g., Python stdlib) over platform-specific commands to ensure Windows/WSL compatibility.
- **No PDF parsing**: This skill reads structured markdown and LaTeX source, not raw PDFs. For PDF content, suggest `/arxiv` with download.
- **Rate limiting**: arXiv source download may rate-limit. If HTTP 429 occurs, wait 5 seconds and retry once. If still blocked, report the error and suggest `/deepxiv` as alternative.
- **Complementary, not competing**: This skill complements `/arxiv` (search + download) and `/deepxiv` (progressive reading). Do not re-implement their functionality.
## Integration with Other Skills
### As enrichment in `/research-lit`
`/research-lit` can use this skill's Tier 1 (overview) as a fast enrichment step between search and deep analysis. After finding arXiv papers in Step 1, fetch AlphaXiv overviews to quickly assess relevance before committing to full-text reads:
```
Step 1: Search → list of arXiv IDs
Step 1.5: AlphaXiv overview for top 5-8 papers (this skill, Tier 1 only)
Step 2: Deep analysis only for papers that pass the relevance filter
```
This saves significant tokens by filtering out marginally relevant papers before deep reading.
### As follow-up from other skills
After `/research-lit`, `/novelty-check`, or `/idea-discovery` surface a specific paper, users can invoke `/alphaxiv PAPER_ID` for a fast deep-dive without re-running the full survey.
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