بنقرة واحدة
literature-search
Medium-depth literature search — read AI-summarized reports for every paper analyzed
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Medium-depth literature search — read AI-summarized reports for every paper analyzed
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
| name | Literature Search |
| description | Medium-depth literature search — read AI-summarized reports for every paper analyzed |
| type | sop |
| layer | sop |
| agents | ["alphaxiv","semantic-scholar"] |
| tools | {"alphaxiv":["discover_papers","get_paper_content"],"semantic-scholar":["relevanceSearch","paper","paperBatch","citations","references"]} |
| input | query (string), scope (survey | gap-analysis | background) |
| output | PaperAnalysis[] with metadata + AI summary content |
Medium-depth reading. Understand methods, contributions, and findings via AI-generated summary reports. Suitable for literature surveys, gap analysis, and building background knowledge.
Use this when you need to:
This skill reads AI-summarized reports — not raw full text. For rigorous analysis requiring raw text, use literature-research.
| Tool | Purpose | Returns |
|---|---|---|
alphaxiv.discover_papers | Primary search — arXiv semantic search | Ranked paper list with metadata |
ss.relevanceSearch | Supplementary search — non-arXiv papers | Title, abstract, authors, citationCount |
ss.paper / ss.paperBatch | Metadata enrichment | Citation count, DOI, S2 ID, externalIds |
ss.citations | Papers that cite this paper (incoming) | Citing paper list with context |
ss.references | Papers this paper cites (outgoing) | Referenced paper list |
alphaxiv.get_paper_content | AI summary report (fullText: false) | Structured AI-generated paper report |
For EVERY paper selected for analysis, you MUST call:
alphaxiv.get_paper_content(url: arxiv_url, fullText: false)
This returns an AI-generated summary report optimized for LLM consumption.
PROHIBITED:
REQUIRED:
Primary (arXiv):
alphaxiv.discover_papers(
keywords: ["keyword1", "keyword2", "keyword3"],
question: "Detailed description of papers needed",
difficulty: 5
)
Supplementary (non-arXiv):
ss.relevanceSearch(
query: "search terms",
limit: 20,
year: "2022-2024"
)
For papers found via alphaxiv, enrich with citation data:
ss.paperBatch(
paper_ids: ["ARXIV:2301.xxxxx", "ARXIV:2302.xxxxx", ...]
)
Returns: citationCount, DOI, S2 ID for each paper.
Choose top N papers (typically 5-15) based on:
For each selected paper:
alphaxiv.get_paper_content(
url: "https://arxiv.org/abs/XXXX.XXXXX",
fullText: false
)
fullText: false (default) returns an AI-generated intermediate report:
To find related work not caught by keyword search:
ss.citations(paper_id: "ARXIV:XXXX.XXXXX", limit: 50)
ss.references(paper_id: "ARXIV:XXXX.XXXXX", limit: 50)
Filter results by year and citation count, then repeat Steps 3-4 for promising papers.
fullText: false (default) — AI-generated report, faster, structuredfullText: true — raw extracted text, slower, complete (use in literature-research, not here)https://arxiv.org/abs/XXXX.XXXXX), PDF URL, alphaXiv URL2301.12345 → ARXIV:2301.12345)offset and limit for pagination# Step 1: Search
alphaxiv.discover_papers(
keywords: ["vision transformer", "attention", "ViT"],
question: "Papers proposing or analyzing attention mechanisms in vision transformers",
difficulty: 5
)
ss.relevanceSearch(query: "vision transformer attention mechanism", limit: 15, year: "2022-2024")
# Step 2: Enrich
ss.paperBatch(paper_ids: ["ARXIV:2010.11929", "ARXIV:2103.14030", ...])
# Step 3: Select top 8 by citation count + relevance
# Step 4: Read each
alphaxiv.get_paper_content(url: "https://arxiv.org/abs/2010.11929") # ViT
alphaxiv.get_paper_content(url: "https://arxiv.org/abs/2103.14030") # Swin
# ... repeat for all 8
# Step 5: Expand via citations of ViT
ss.citations(paper_id: "ARXIV:2010.11929", limit: 30)
# Step 1: Broad search
alphaxiv.discover_papers(
keywords: ["LLM", "efficient inference", "quantization", "pruning"],
question: "Methods for making large language model inference faster or cheaper",
difficulty: 6
)
# Step 2-4: Enrich, select 10, read AI summaries
# Step 5: Check what recent papers cite the seminal works
ss.citations(paper_id: "ARXIV:2210.17323", limit: 50) # GPTQ
ss.citations(paper_id: "ARXIV:2306.00978", limit: 50) # AWQ