Watsonx.ai Flows Engine

Created byIBMIBM

Examples and tutorials for building AI applications with watsonx.ai Flows Engine

Overview

What is wxflows?

wxflows is an innovative platform developed by IBM that provides examples and tutorials for building AI applications using the watsonx.ai Flows Engine. This repository serves as a comprehensive resource for developers looking to leverage AI capabilities in their applications, offering practical insights and hands-on examples.

Features of wxflows

  • Comprehensive Tutorials: wxflows includes a variety of tutorials that guide users through the process of creating AI applications, making it easier for developers to understand and implement AI features.
  • Open Source: The wxflows repository is publicly accessible, allowing developers to contribute, fork, and adapt the code to suit their needs.
  • Integration with watsonx.ai: The platform is designed to work seamlessly with IBM's watsonx.ai, providing users with powerful AI tools and functionalities.
  • Community Support: Being an open-source project, wxflows benefits from community contributions, ensuring that the repository is continuously updated and improved.

How to Use wxflows

  1. Clone the Repository: Start by cloning the wxflows repository from GitHub to your local machine using the command:
    git clone https://github.com/IBM/wxflows.git
    
  2. Explore the Tutorials: Navigate through the various tutorials provided in the repository to learn how to build your AI applications effectively.
  3. Implement Examples: Follow the examples to implement AI features in your applications. Modify the code as needed to fit your specific use case.
  4. Contribute: If you have improvements or new features to add, consider contributing back to the wxflows repository by submitting a pull request.

Frequently Asked Questions

Q: What is the main purpose of wxflows?

A: wxflows is designed to help developers build AI applications using the watsonx.ai Flows Engine by providing tutorials and examples.

Q: Is wxflows free to use?

A: Yes, wxflows is an open-source project, and it is free to use and modify.

Q: How can I contribute to wxflows?

A: You can contribute by forking the repository, making your changes, and submitting a pull request on GitHub.

Q: Where can I find more information about watsonx.ai?

A: For more information about watsonx.ai, you can visit the official IBM website or the specific documentation related to the watsonx.ai platform.

Q: Can I use wxflows for commercial projects?

A: Yes, since wxflows is open-source and licensed under the MIT license, you can use it for both personal and commercial projects.

Details

watsonx.ai Flows Engine

Build, run & deploy Tools for AI Agents 🚀

With watsonx.ai Flows Engine you can build tools out of any data source, and deploy them to an endpoint in the cloud. Tools built with watsonx.ai Flows Engine can be used in any Agentic Framework using the SDK for Python & JavaScript.

building AI applications with watsonx.ai Flows Engine

📹 VIDEOS | 📝 BLOGS | 📗 DOCUMENTATION | 💬 DISCORD | 🆓 FREE SIGNUP

Tools

Build your own tool

Integrations

Examples

Support

Please reach out to us on Discord if you have any questions or want to share feedback. We'd love to hear from you!

Server Config

{
  "mcpServers": {
    "javascript": {
      "command": "docker",
      "args": [
        "run",
        "-i",
        "--rm",
        "ghcr.io/metorial/mcp-container--ibm--wxflows--javascript",
        "node ./build/index.js"
      ],
      "env": {
        "WXFLOWS_APIKEY": "wxflows-apikey",
        "WXFLOWS_ENDPOINT": "wxflows-endpoint"
      }
    }
  }
}

Project Info

Watsonx.ai Flows Eng... Alternative

For some alternatives to Watsonx.ai Flows Eng... that you may need, we provide you with sites divided by category.

A MCP server implementation for hyperbrowser

Heroku Platform MCP Server using the Heroku CLI

Model Context Protocol (MCP) Server for Graphlit Platform

Gotohuman Mcp Server

GitHub's official MCP Server

Exa is Web Search API | This is Exa MCP (Model Context Protocol)

DevHub CMS LLM integration through the Model Context Protocol

Model Context Protocol (MCP) implementation for Opik enabling seamless IDE integration and unified access to prompts, projects, traces, and metrics.

View More >>