mcp-retialops
Verified Safeby sarthaksolow
Overview
Predicts future demand for retail products using historical sales, seasonal events, and historical surge profiles, providing a narrative explanation.
Installation
python servers/forecasting/server.pyEnvironment Variables
- OPENROUTER_API_KEY
Security Notes
API key loaded from environment variable. No 'eval' or similar dangerous functions observed. Relies on external LLM API (OpenRouter) for narrative generation, which is a controlled network interaction.
Similar Servers
mcp-reference-server
Standardize and manage fulfillment operations for AI agents by providing a universal interface to various fulfillment systems.
MCP-Server-and-PostgreSQL-Sample-Retail
Enables AI assistants to securely access and analyze retail sales data through a Model Context Protocol (MCP) server, integrating with PostgreSQL and Azure AI services.
faim-mcp
Integrates FAIM time series forecasting SDK with any Model Context Protocol (MCP)-compatible AI assistant, enabling AI-powered forecasting capabilities for models like Chronos2 and TiRex.
mcp
Semilattice allows LLM agents to predict how specific audiences will answer questions, enabling content testing, personalization, and A/B testing decisions.