Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Ecommerce Catalog Agent

FreeNot checked

Enables conversational product search and validation for e-commerce catalogs, with hybrid retrieval and live price/stock checks from a database.

GitHubEmbed

About

Enables conversational product search and validation for e-commerce catalogs, with hybrid retrieval and live price/stock checks from a database.

README

A conversational AI agent that answers product questions over an online store's catalog. It understands natural-language queries, finds matching products via hybrid search, and always reports live price and availability validated against the database.

Built as a tool-calling (ReAct) agent with a strict trust boundary: the model decides what to say and which products to show, but code owns the customer-facing numbers — so a hallucinated or injected price can never reach the user.

Features

  • Hybrid retrieval — BM25 (keyword) + vector embeddings (semantic) + Reciprocal Rank Fusion + cross-encoder reranking. Catches word forms and synonyms that exact matching misses (e.g. "взуття для бігу" → running shoes).
  • Filter-first — hard constraints (price, stock) are applied in SQL to build the candidate set before semantic ranking, avoiding the classic "top-k then filter → zero results" trap.
  • Two sources of truth — PostgreSQL is authoritative for volatile fields (price/stock); the vector index is a search cache only. Price and stock are re-fetched live before every answer.
  • Structured-output contract — the agent finishes by calling present_results with product SKUs + prose; price/stock are filled by code from live SQL. The model has no field to write a number into → containment against hallucination and prompt injection ("attacker needs capability, not just instruction").
  • Bounded agent loop — independent stoppers (max iterations, token budget, latency) plus deterministic, score-based escalation to a human operator (on the reranker confidence, never the model's self-report).
  • Conversation memory — per-session history for multi-turn context.
  • Custom MCP server — the catalog tools are exposed over the Model Context Protocol, so one contract serves the agent, an internal copilot, and Claude Desktop.
  • Multi-channel — a FastAPI /chat service, a Telegram bot via n8n (webhook), and a standalone aiogram bot (long-polling).
  • Eval harness — a golden set scored with Recall@K / MRR to catch retrieval regressions with numbers, not vibes.

Architecture

  Customer channels  (Telegram / web / Claude Desktop)
            │
        [n8n]  webhook intake + routing ── low confidence ──► human operator
            │
        [FastAPI /chat]  models warmed at startup
            │
        [ReAct agent loop]  bounded: max_iter / budget / latency
            │   parse → retrieve → validate → respond
            ▼
        [catalog tools]  (also exposed as a custom MCP server)
          search_products  → hybrid BM25 + vector + rerank, filter-first
          get_live_price / check_stock  → live SQL
            │
   PostgreSQL (price/stock = truth)   +   Chroma (search cache)
            ▲
   n8n schedule: XML feed → parse → upsert → re-embed

Tech stack

Python · FastAPI · OpenAI (LiteLLM-swappable) · PostgreSQL · Chroma · BM25 · sentence-transformers · cross-encoder reranker · custom MCP server · n8n · aiogram

Quick start

pip install -r requirements.txt
cp .env.example .env            # fill OPENAI_API_KEY + PG_*

# create the schema, load the sample feed (builds the hybrid index)
psql -d catalog -f schema.sql
python ingest.py

# ask from the CLI
python agent.py "червоні кросівки до 2000 в наявності"

# or run the HTTP service
uvicorn api:app --port 8000     # → http://localhost:8000/docs

# or the Telegram bot (set TELEGRAM_BOT_TOKEN in .env)
python bot.py

Project layout

File What
agent.py ReAct agent loop, bounded stoppers, structured-output contract
retrieval.py hybrid retrieval (BM25 + vector + RRF + cross-encoder) + confidence scores
catalog_tools.py read-only catalog tools + structured get_facts for live validation
server.py the catalog tools exposed as a custom MCP server
api.py FastAPI /chat service (per-session memory, warmup at startup)
bot.py standalone Telegram bot (aiogram, long-polling)
ingest.py XML feed → PostgreSQL + rebuild the hybrid index
eval.py retrieval eval on a golden set (Recall@K / MRR)
n8n/workflow.json Telegram → /chat → reply + escalation routing

Design notes

  • Why hybrid, not pure vector — vector search alone can't honor exact filters (price/stock) or exact tokens (SKUs, model codes); BM25 + structured SQL cover what embeddings miss.
  • Why the vector index is never the source of price/stock — it's rebuilt on a schedule, so its copy of volatile fields is stale by design; the answer always re-validates against SQL.
  • Why MCP — the catalog tools are reused across consumers (the agent, an internal copilot, Claude Desktop): one contract, many clients.

The sample catalog and prompts are in Ukrainian; the agent replies in the customer's language.

from github.com/EHrekov/ecommerce-catalog-agent

Installing Ecommerce Catalog Agent

This server has no published package — it is built from source. Open the repository and follow its README.

▸ github.com/EHrekov/ecommerce-catalog-agent

FAQ

Is Ecommerce Catalog Agent MCP free?

Yes, Ecommerce Catalog Agent MCP is free — one-click install via Unyly at no cost.

Does Ecommerce Catalog Agent need an API key?

No, Ecommerce Catalog Agent runs without API keys or environment variables.

Is Ecommerce Catalog Agent hosted or self-hosted?

A hosted option is available: Unyly runs the server in the cloud, no local setup required.

How do I install Ecommerce Catalog Agent in Claude Desktop, Claude Code or Cursor?

Open Ecommerce Catalog Agent on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

Related MCPs

Compare Ecommerce Catalog Agent with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All data MCPs