MianshiyaServer

Created By
springaialibabaa year ago
Overview

what is MianshiyaServer?

MianshiyaServer is a repository containing various examples to demonstrate the usage of Spring AI Alibaba, ranging from basic to advanced applications and best practices in AI projects.

how to use MianshiyaServer?

To use MianshiyaServer, explore the examples provided in the repository, and refer to the README.md files for detailed instructions on each sub-project.

key features of MianshiyaServer?

  • Comprehensive examples for Spring AI Alibaba usage
  • Modular project structure for easy navigation
  • Integration with various AI models and tools

use cases of MianshiyaServer?

  1. Learning how to implement AI solutions using Spring AI Alibaba.
  2. Contributing to the project by adding new examples or best practices.
  3. Exploring different AI model integrations and their applications.

FAQ from MianshiyaServer?

  • How can I contribute to MianshiyaServer?

Contributions are welcome in any form, including usage examples, API usage, and best practices.

  • Is there documentation available?

Yes! Each example has its own README.md for detailed instructions, and a roadmap is available for future developments.

  • What AI models are integrated?

The project includes models like DashScope, OpenAI, and others for various functionalities.

Server Config

{
  "mcpServers": {
    "mianshiyaServer": {
      "command": "java"
    }
  }
}
Project Info
Created At
a year ago
Updated At
a year ago
Author Name
springaialibaba
Star
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Language
-
License
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