mirror of
https://github.com/hesamsheikh/awesome-openclaw-usecases.git
synced 2026-02-20 01:35:11 +00:00
- YouTube Content Pipeline: Automated video idea scouting with X/Twitter integration - Personal CRM: Contact discovery and meeting prep automation - AI Earnings Tracker: Tech earnings monitoring and summaries - Knowledge Base (RAG): Searchable repository of saved content - Health & Symptom Tracker: Food and symptom logging with pattern analysis - Multi-Channel Assistant: Unified interface across Telegram, Slack, Google Workspace All use cases verified in daily production use by @matthewberman
1.6 KiB
1.6 KiB
Personal Knowledge Base (RAG)
You read articles, tweets, and watch videos all day but can never find that one thing you saw last week. Bookmarks pile up and become useless.
This workflow builds a searchable knowledge base from everything you save:
• Drop any URL into Telegram or Slack and it auto-ingests the content (articles, tweets, YouTube transcripts, PDFs) • Semantic search over everything you've saved: "What did I save about agent memory?" returns ranked results with sources • Feeds into other workflows — e.g., the video idea pipeline queries the KB for relevant saved content when building research cards
Skills you Need
- knowledge-base skill (or build custom RAG with embeddings)
web_fetch(built-in)- Telegram topic or Slack channel for ingestion
How to Set it Up
- Install the knowledge-base skill from ClawdHub.
- Create a Telegram topic called "knowledge-base" (or use a Slack channel).
- Prompt OpenClaw:
When I drop a URL in the "knowledge-base" topic:
1. Fetch the content (article, tweet, YouTube transcript, PDF)
2. Ingest it into the knowledge base with metadata (title, URL, date, type)
3. Reply with confirmation: what was ingested and chunk count
When I ask a question in this topic:
1. Search the knowledge base semantically
2. Return top results with sources and relevant excerpts
3. If no good matches, tell me
Also: when other workflows need research (e.g., video ideas, meeting prep), automatically query the knowledge base for relevant saved content.
- Test it by dropping a few URLs and asking questions like "What do I have about LLM memory?"