| name | Literature Overview |
| description | Quick landscape scan — discover papers on a topic without full-text reading |
| type | sop |
| layer | sop |
| agents | ["alphaxiv","semantic-scholar"] |
| tools | {"alphaxiv":["discover_papers"],"semantic-scholar":["relevanceSearch"]} |
| input | query (string) |
| output | PaperList[] with title, authors, year, citationCount, abstract snippet |
Literature Overview SOP
Layer Rules
- Layer: sop — wraps MCP tools directly
- Called by: Any tactic or strategy requiring a quick literature landscape scan
- Calls: alphaxiv MCP tools, semantic-scholar MCP tools (never calls other SOPs)
Purpose
Fast landscape scan. Understand what papers exist on a topic, who the key authors are, and rough citation counts. No full-text reading. This skill is for orientation — getting a bird's-eye view before committing to deeper reading.
Use this when you need to:
- Quickly assess how much literature exists on a topic
- Identify key papers and authors in a field
- Get citation counts to gauge paper impact
- Decide which papers deserve deeper reading (via literature-search or literature-research)
Tools
| Tool | Purpose | Returns |
|---|
alphaxiv.discover_papers | Semantic search for arXiv papers | Ranked paper list with title, abstract snippet, arXiv ID |
ss.relevanceSearch | Keyword search across all venues | Title, abstract, authors, year, citationCount, paperId |
Tool Roles
- alphaxiv.discover_papers = primary search for arXiv-covered fields (CS, math, physics, stats, EE, quant-bio/finance)
- ss.relevanceSearch = supplementary search for non-arXiv papers (biomedical, clinical, social science, humanities)
HARD-GATE
**This skill returns abstracts and metadata ONLY.**
Do NOT draw conclusions about:
- Methodology details
- Experimental results
- Specific contributions or findings
- Comparative analysis between papers
Abstracts are for ORIENTATION — identifying what exists and what looks promising.
For any substantive analysis, escalate to:
literature-search — read AI-summarized reports (medium depth)
literature-research — read raw full text (deep)
Treating abstracts as sufficient for research conclusions is PROHIBITED.
Workflow
Step 1: Search arXiv via alphaxiv
alphaxiv.discover_papers(
keywords: ["keyword1", "keyword2", "keyword3"],
question: "Detailed semantic description of desired papers",
difficulty: 3
)
Parameters:
keywords: 3-4 concise terms (method names, acronyms, authors)
question: Detailed description of what papers you're looking for
difficulty: 1-10 (use 3 for overview, higher = more retrieval effort)
Step 2: Supplement with semantic-scholar
ss.relevanceSearch(
query: "search terms",
limit: 20,
year: "2022-2024",
fields_of_study: "Computer Science"
)
Parameters:
query: keyword search string
limit: max results (default 10, max 100)
year: year range filter (e.g., "2023-2024", "2020-")
fields_of_study: field filter (optional)
min_citation_count: citation threshold (optional)
open_access_only: boolean (optional)
Step 3: Merge and Deduplicate
- Combine results from both sources
- Deduplicate by title similarity or matching arXiv IDs
- Sort by citation count (descending) as default ranking
Step 4: Return Structured Results
For each paper, present:
- Title
- Authors (first author + et al. for brevity)
- Year
- Citation Count (from ss if available)
- Abstract Snippet (first 2-3 sentences)
- Source (alphaxiv / semantic-scholar / both)
Tool-Specific Notes
alphaxiv.discover_papers
- Covers: computer science, mathematics, physics, statistics, quantitative biology/finance, electrical engineering
- Does NOT cover: biomedical, clinical, life science (PubMed, Cell, Nature)
- Returns: paper ID, title, authors, publication date, abstract snippet
difficulty parameter: 1-3 for quick scans, 5-7 for thorough discovery, 8-10 for exhaustive
ss.relevanceSearch
- Covers: all academic venues (broader than arXiv)
- Returns: title, abstract, authors, year, citationCount, paperId, externalIds
- ID formats in results: S2 ID, arXiv ID, DOI, PMID
- Rate limit: 1 req/s without API key, 100 req/s with SS_API_KEY
Example
Quick scan: "graph neural networks for drug discovery"
# Step 1: arXiv search
alphaxiv.discover_papers(
keywords: ["GNN", "drug discovery", "molecular"],
question: "Papers applying graph neural networks to drug discovery and molecular property prediction",
difficulty: 3
)
# Step 2: Supplement
ss.relevanceSearch(
query: "graph neural network drug discovery",
limit: 15,
year: "2022-2024",
min_citation_count: 50
)
# Step 3-4: Merge, deduplicate, return sorted list
Expected output: A list of 15-30 papers with titles, authors, years, and citation counts — enough to understand the landscape and pick papers for deeper reading.