AI Agent
AI Solution Architect
Active
RAG Retriever Agent
Generates query embeddings using text-embedding-3-large (3072 dimensions), performs vector similarity search against the product catalog, applies BM25 lexical ranking, reranks results using cross-encoder models, and assembles optimized context windows for downstream agents. Sources include product catalogs, knowledge bases, pricing rules, and compatibility matrices.
Parent Worker
AI Solution Architect
Agent ID
rag_retriever
Portal
Nexgile-TradeNexus
Sector
Value-Added Distribution (VAD) & IT Wholesale
Status
Operational
Problem Statement
The challenge addressed
Core Logic
How the agent solves it
System Navigation
Explore related components
Portal
Nexgile-TradeNexus
Digital Worker
AI Solution Architect
Current Agent
RAG Retriever Agent
Here