Spring Ai Mcp

Created By
rifatcakira year ago
AI-powered chat assistant for banking microservices using Spring AI and Model Context Protocol (MCP). Interact with your microservices through natural language chat, view accounts, personal details, and transactions—all in one unified interface.
Overview

what is Spring AI MCP?

Spring AI MCP is an AI-powered chat assistant designed for banking microservices, enabling users to interact with their accounts, personal details, and transactions through natural language chat.

how to use Spring AI MCP?

To use Spring AI MCP, clone the repository, build the project using Maven, and start the chat-client application to access the chat interface.

key features of Spring AI MCP?

  • Natural language processing for seamless service interactions
  • Unified chat interface for multiple banking microservices
  • Real-time communication and contextual understanding
  • Easy integration of new microservices into the chat system

use cases of Spring AI MCP?

  1. Viewing personal details and account information through chat
  2. Querying transaction history for specific accounts
  3. Creating new accounts or managing existing ones via natural language requests

FAQ from Spring AI MCP?

  • Can I add new microservices to the system?

Yes! You can easily add new microservices by implementing the Model Context Protocol and updating the chat client.

  • What technologies are required to run this project?

You need Java 21, Maven 3.8+, Spring Boot 3.5.0, and Spring AI 1.0.0.

  • Is there a user guide available?

Yes, the project documentation provides detailed instructions on setup and usage.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
rifatcakir
Star
0
Language
TypeScript
License
-

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