agentdb-vector-search
π―Skillfrom natea/fitfinder
Performs semantic vector search across agent documents using embeddings to retrieve contextually relevant information efficiently.
Part of
natea/fitfinder(30 items)
Installation
npx skills add https://github.com/natea/fitfinder --skill agentdb-vector-searchNeed more details? View full documentation on GitHub β
More from this repository10
threejs-game skill from natea/fitfinder
reddit-sentiment-analysis skill from natea/fitfinder
market-analyst skill from natea/fitfinder
Analyzes game concepts for monetization potential, ranking them by revenue opportunity and identifying top financial strategies.
demo-builder skill from natea/fitfinder
Analyzes product performance metrics, identifying key performance indicators and generating insights to optimize market fit and strategic decision-making.
Assists developers by dynamically matching AI coding partners to collaborate on software development tasks and provide real-time code suggestions.
Orchestrates multi-step workflows by chaining agent outputs sequentially, enabling complex data transformations and pipeline processing.
Manages persistent memory and retrieval patterns for AI agents using a structured database approach with advanced caching and indexing strategies.
Optimizes database performance for agent interactions by improving query efficiency, indexing, and data retrieval strategies in the FitFinder multi-agent system.