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AI/MLplurigrid

depth-search

Deep multi-source research combining academic MCPs (arxiv, semantic-scholar, paper-search, deepwiki), Exa semantic search, and local ~/.topos knowledge base. Use for comprehensive research requiring multiple sources. NEVER fall back to web_search - ask user for help instead.

Stars
23
Source
plurigrid/asi
Updated
2026-04-26
Slug
plurigrid--asi--depth-search
View on GitHubRaw SKILL.md

// install — copy + paste into any project

mkdir -p .claude/skills && curl -fsSL https://raw.githubusercontent.com/plurigrid/asi/HEAD/plugins/asi/skills/depth-search/SKILL.md -o .claude/skills/depth-search.md

Drops the SKILL.md into .claude/skills/depth-search.md. Works with Claude Code, Cursor, and any agent that loads SKILL.md files from .claude/skills/.

Depth Search

Comprehensive multi-source research skill. Searches across academic databases, semantic web search, and local knowledge before asking the user for help.

Search Order

Execute searches in this order, using parallel subagents where possible:

1. Local Knowledge Base (~/.topos)

Search ~/.topos directory first for existing research, notes, and cached data:

  • Use glob and Grep to find relevant files
  • Check .md, .org, .jl, .py, .json files
  • Look in subdirectories: skills/, archived/, Gay.jl/, etc.

2. Academic MCPs (parallel)

Launch parallel subagents to search all 4 academic sources:

MCP Tools Best For
arxiv search_papers, get_paper, download_paper Preprints, CS/physics/math papers
semantic-scholar paper_relevance_search, paper_details, paper_citations Citation analysis, author profiles
paper-search search_arxiv, search_pubmed, search_biorxiv, etc. Multi-source aggregation
deepwiki read_wiki_structure, read_wiki_contents, ask_question GitHub repo documentation

3. Exa Semantic Search

Use Exa MCP for high-quality web search:

  • web_search_exa - Semantic web search
  • crawling_exa - Extract web content
  • company_research_exa - Company research
  • deep_researcher_start / deep_researcher_check - Deep research tasks

4. Ask User for Help

If all sources fail to find what's needed:

  • DO NOT fall back to web_search - it's basic keyword matching only
  • Instead, ask the user:
    • "I couldn't find [X] in academic databases, Exa, or local files. Can you provide a link, paper title, or more context?"
    • Suggest specific sources they might check manually
    • Offer to try different search terms

Critical Rules

  1. NEVER use web_search as a fallback - it's not equivalent to Exa
  2. NEVER use web_search in Task subagents - use Exa tools instead
  3. Always search local ~/.topos first - may have cached/annotated versions
  4. Use parallel subagents for academic MCPs to maximize speed
  5. Ask user for help rather than guessing or using inferior search

Example Workflow

User: "Find papers on world models for LLMs"

1. Search ~/.topos for existing notes/papers
2. Launch 4 parallel Task subagents:
   - arxiv: search_papers("world models LLM")
   - semantic-scholar: paper_relevance_search("world models language models")
   - paper-search: search across all sources
   - deepwiki: check relevant GitHub repos
3. If needed, use Exa: web_search_exa("world models LLM research")
4. Synthesize results from all sources
5. If still not found: ask user for clarification

Parallel Subagent Template

When searching academic sources, use this pattern:

Launch 4 parallel Task subagents:
- Task 1: Use arxiv MCP to search for [query]
- Task 2: Use semantic-scholar MCP to search for [query]  
- Task 3: Use paper-search MCP to search for [query]
- Task 4: Use deepwiki MCP to find related repos/docs

What NOT To Do

web_search as fallback when Exa fails
❌ Single-source search when multiple are available
❌ Skipping local ~/.topos search
❌ Guessing answers without exhausting sources
❌ Sequential searches when parallel is possible

What TO Do

✅ Search ~/.topos first for cached knowledge
✅ Parallel subagents for academic MCPs
✅ Exa for semantic web search
✅ Ask user when sources are exhausted
✅ Synthesize results from multiple sources

Scientific Skill Interleaving

This skill connects to the K-Dense-AI/claude-scientific-skills ecosystem:

Graph Theory

  • networkx [○] via bicomodule
    • Universal graph hub

Bibliography References

  • algorithms: 19 citations in bib.duckdb

Cat# Integration

This skill maps to Cat# = Comod(P) as a bicomodule in the equipment structure:

Trit: 0 (ERGODIC)
Home: Prof
Poly Op: ⊗
Kan Role: Adj
Color: #26D826

GF(3) Naturality

The skill participates in triads satisfying:

(-1) + (0) + (+1) ≡ 0 (mod 3)

This ensures compositional coherence in the Cat# equipment structure.