skills$openclaw/airweave
lennertjansen3.2k

by lennertjansen

airweave – OpenClaw Skill

airweave is an OpenClaw Skills integration for planning workflows. Context retrieval layer for AI agents across users' applications. Search and retrieve context from Airweave collections. Airweave indexes and syncs data from user applications to enable optimal context retrieval by AI agents. Supports semantic, keyword, and agentic search. Use when users ask about their data in connected apps (Slack, GitHub, Notion, Jira, Confluence, Google Drive, Salesforce, Linear, SharePoint, Stripe, etc.), need to find documents or information from their workspace, want answers based on their company data, or need you to check app data for context to complete a task.

3.2k stars5.9k forksSecurity L1
Updated Feb 7, 2026Created Feb 7, 2026planning

Skill Snapshot

nameairweave
descriptionContext retrieval layer for AI agents across users' applications. Search and retrieve context from Airweave collections. Airweave indexes and syncs data from user applications to enable optimal context retrieval by AI agents. Supports semantic, keyword, and agentic search. Use when users ask about their data in connected apps (Slack, GitHub, Notion, Jira, Confluence, Google Drive, Salesforce, Linear, SharePoint, Stripe, etc.), need to find documents or information from their workspace, want answers based on their company data, or need you to check app data for context to complete a task. OpenClaw Skills integration.
ownerlennertjansen
repositorylennertjansen/airweave
languageMarkdown
licenseMIT
topics
securityL1
installopenclaw add @lennertjansen/airweave
last updatedFeb 7, 2026

Maintainer

lennertjansen

lennertjansen

Maintains airweave in the OpenClaw Skills directory.

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references
EXAMPLES.md
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PARAMETERS.md
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scripts
search.py
6.8 KB
_meta.json
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SKILL.md
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SKILL.md

Search and retrieve context from Airweave collections using the search script at {baseDir}/scripts/search.py.

When to Search

Search when the user:

  • Asks about data in their connected apps ("What did we discuss in Slack about...")
  • Needs to find documents, messages, issues, or records
  • Asks factual questions about their workspace ("Who is responsible for...", "What's our policy on...")
  • References specific tools by name ("in Notion", "on GitHub", "in Jira")
  • Needs recent information you don't have in your training
  • Needs you to check app data for context ("check our Notion docs", "look at the Jira ticket")

Don't search when:

  • User asks general knowledge questions (use your training)
  • User already provided all needed context in the conversation
  • The question is about Airweave itself, not data within it

Turn user intent into effective search queries:

User SaysSearch Query
"What did Sarah say about the launch?""Sarah product launch"
"Find the API documentation""API documentation"
"Any bugs reported this week?""bug report issues"
"What's our refund policy?""refund policy customer"

Tips:

  • Use natural language — Airweave uses semantic search
  • Include context — "pricing feedback" beats just "pricing"
  • Be specific but not too narrow
  • Skip filler words like "please find", "can you search for"

Running a Search

Execute the search script:

python3 {baseDir}/scripts/search.py "your search query"

Optional parameters:

  • --limit N — Max results (default: 20)
  • --temporal N — Temporal relevance 0-1 (default: 0, use 0.7+ for "recent", "latest")
  • --strategy TYPE — Retrieval strategy: hybrid, semantic, keyword (default: hybrid)
  • --raw — Return raw results instead of AI-generated answer
  • --expand — Enable query expansion for broader results
  • --rerank / --no-rerank — Toggle LLM reranking (default: on)

Examples:

# Basic search
python3 {baseDir}/scripts/search.py "customer feedback pricing"

# Recent conversations
python3 {baseDir}/scripts/search.py "product launch updates" --temporal 0.8

# Find specific document
python3 {baseDir}/scripts/search.py "API authentication docs" --strategy keyword

# Get raw results for exploration
python3 {baseDir}/scripts/search.py "project status" --limit 30 --raw

# Broad search with query expansion
python3 {baseDir}/scripts/search.py "onboarding" --expand

Handling Results

Interpreting scores:

  • 0.85+ → Highly relevant, use confidently
  • 0.70-0.85 → Likely relevant, use with context
  • 0.50-0.70 → Possibly relevant, mention uncertainty
  • Below 0.50 → Weak match, consider rephrasing

Presenting to users:

  1. Lead with the answer — don't start with "I found 5 results"
  2. Cite sources — mention where info came from ("According to your Slack conversation...")
  3. Synthesize — combine relevant parts into a coherent response
  4. Acknowledge gaps — if results don't fully answer, say so

Handling No Results

If search returns nothing useful:

  1. Broaden the query — remove specific terms
  2. Try different phrasing — use synonyms
  3. Increase limit — fetch more results
  4. Ask for clarification — user might have more context

Parameter Reference

See PARAMETERS.md for detailed parameter guidance.

Examples

See EXAMPLES.md for complete search scenarios.

README.md

No README available.

Permissions & Security

Security level L1: Low-risk skills with minimal permissions. Review inputs and outputs before running in production.

Requirements

  • OpenClaw CLI installed and configured.
  • Language: Markdown
  • License: MIT
  • Topics:

FAQ

How do I install airweave?

Run openclaw add @lennertjansen/airweave in your terminal. This installs airweave into your OpenClaw Skills catalog.

Does this skill run locally or in the cloud?

OpenClaw Skills execute locally by default. Review the SKILL.md and permissions before running any skill.

Where can I verify the source code?

The source repository is available at https://github.com/openclaw/skills/tree/main/skills/lennertjansen/airweave. Review commits and README documentation before installing.