business/enterprise-search/search-strategy/SKILL.md
Query decomposition and multi-source search orchestration. Breaks natural language questions into targeted searches per source, translates queries into source-specific syntax, ranks results by relevance, and handles ambiguity and fallback strategies.
npx skillsauth add harsh040506/claude-code-unified-skill-plugin-library search-strategyInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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The core intelligence behind enterprise search. Transforms a single natural language question into parallel, source-specific searches and produces ranked, deduplicated results.
Turn this:
"What did we decide about the API migration timeline?"
Into targeted searches across every connected source:
~~chat: "API migration timeline decision" (semantic) + "API migration" in:#engineering after:2025-01-01
~~knowledge base: semantic search "API migration timeline decision"
~~project tracker: text search "API migration" in relevant workspace
Then synthesize the results into a single coherent answer.
Classify the user's question to determine search strategy:
| Query Type | Example | Strategy | |-----------|---------|----------| | Decision | "What did we decide about X?" | Prioritize conversations (~~chat, email), look for conclusion signals | | Status | "What's the status of Project Y?" | Prioritize recent activity, task trackers, status updates | | Document | "Where's the spec for Z?" | Prioritize Drive, wiki, shared docs | | Person | "Who's working on X?" | Search task assignments, message authors, doc collaborators | | Factual | "What's our policy on X?" | Prioritize wiki, official docs, then confirmatory conversations | | Temporal | "When did X happen?" | Search with broad date range, look for timestamps | | Exploratory | "What do we know about X?" | Broad search across all sources, synthesize |
From the query, extract:
For each available source, create one or more targeted queries:
Prefer semantic search for:
Prefer keyword search for:
Generate multiple query variants when the topic might be referred to differently:
User: "Kubernetes setup"
Queries: "Kubernetes", "k8s", "cluster", "container orchestration"
Semantic search (natural language questions):
query: "What is the status of project aurora?"
Keyword search:
query: "project aurora status update"
query: "aurora in:#engineering after:2025-01-15"
query: "from:<@UserID> aurora"
Filter mapping:
| Enterprise filter | ~~chat syntax |
|------------------|--------------|
| from:sarah | from:sarah or from:<@USERID> |
| in:engineering | in:engineering |
| after:2025-01-01 | after:2025-01-01 |
| before:2025-02-01 | before:2025-02-01 |
| type:thread | is:thread |
| type:file | has:file |
Semantic search — Use for conceptual queries:
descriptive_query: "API migration timeline and decision rationale"
Keyword search — Use for exact terms:
query: "API migration"
query: "\"API migration timeline\"" (exact phrase)
Task search:
text: "API migration"
workspace: [workspace_id]
completed: false (for status queries)
assignee_any: "me" (for "my tasks" queries)
Filter mapping:
| Enterprise filter | ~~project tracker parameter |
|------------------|----------------|
| from:sarah | assignee_any or created_by_any |
| after:2025-01-01 | modified_on_after: "2025-01-01" |
| type:milestone | resource_subtype: "milestone" |
Score each result on these factors (weighted by query type):
| Factor | Weight (Decision) | Weight (Status) | Weight (Document) | Weight (Factual) | |--------|-------------------|------------------|--------------------|-------------------| | Keyword match | 0.3 | 0.2 | 0.4 | 0.3 | | Freshness | 0.3 | 0.4 | 0.2 | 0.1 | | Authority | 0.2 | 0.1 | 0.3 | 0.4 | | Completeness | 0.2 | 0.3 | 0.1 | 0.2 |
Depends on query type:
For factual/policy questions:
Wiki/Official docs > Shared documents > Email announcements > Chat messages
For "what happened" / decision questions:
Meeting notes > Thread conclusions > Email confirmations > Chat messages
For status questions:
Task tracker > Recent chat > Status docs > Email updates
When a query is ambiguous, prefer asking one focused clarifying question over guessing:
Ambiguous: "search for the migration"
→ "I found references to a few migrations. Are you looking for:
1. The database migration (Project Phoenix)
2. The cloud migration (AWS → GCP)
3. The email migration (Exchange → O365)"
Only ask for clarification when:
Do NOT ask for clarification when:
When a source is unavailable or returns no results:
If initial queries return too few results:
Original: "PostgreSQL migration Q2 timeline decision"
Broader: "PostgreSQL migration"
Broader: "database migration"
Broadest: "migration"
Remove constraints in this order:
Always execute searches across sources in parallel, never sequentially. The total search time should be roughly equal to the slowest single source, not the sum of all sources.
[User query]
↓ decompose
[~~chat query] [~~email query] [~~cloud storage query] [Wiki query] [~~project tracker query]
↓ ↓ ↓ ↓ ↓
(parallel execution)
↓
[Merge + Rank + Deduplicate]
↓
[Synthesized answer]
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