Mcp Difyworkflow Server

Created By
excellentcoma year ago
mcp-difyworkflow-server is an mcp server Tools application that implements the query and invocation of Dify workflows, supporting the on-demand operation of multiple custom Dify workflows. ai, mcp, mcp-server
Overview

What is Mcp Difyworkflow Server?

Mcp Difyworkflow Server is a server application that facilitates the querying and invocation of Dify workflows, allowing for the on-demand operation of multiple custom workflows.

How to use Mcp Difyworkflow Server?

To use the Mcp Difyworkflow Server, clone the repository from GitHub, build the application using Go or Make, and configure the server with the necessary parameters. You can then list and execute workflows through specified commands.

Key features of Mcp Difyworkflow Server?

  • Supports querying and invoking multiple Dify workflows.
  • Allows on-demand execution of custom workflows.
  • Provides a simple command-line interface for interaction.

Use cases of Mcp Difyworkflow Server?

  1. Automating tasks through custom workflows.
  2. Integrating Dify workflows into larger applications.
  3. Managing and executing workflows in a development environment.

FAQ from Mcp Difyworkflow Server?

  • How do I install Mcp Difyworkflow Server?

You can install it by cloning the repository and building it using Go or Make.

  • What programming language is used?

The server is built using Go.

  • Is there a license for this project?

Yes, it is licensed under the Apache-2.0 license.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
excellentcom
Star
0
Language
Go
License
Apache-2.0 license

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