Home Industry Ecosystems Capabilities About Us Careers Contact Us
System Status
Online: 3K+ Agents Active
AI Agent Enterprise Document Intelligence Active

Retrieval Agent

Generates query embeddings using text-embedding-3-large. Executes hybrid search combining vector similarity (cosine) with BM25 lexical matching.

Agent ID
retrieval_agent
Sector Value-Added Distribution (VAD) & IT Wholesale
Status
Operational

Problem Statement

The challenge addressed

Finding relevant information across large document corpora requires semantic understanding that goes beyond keyword matching while maintaining precision.

Core Logic

How the agent solves it

Generates query embeddings using text-embedding-3-large. Executes hybrid search combining vector similarity (cosine) with BM25 lexical matching. Applies cross-encoder reranking for precision. Uses MMR...

System Navigation

Explore related components