Workflow Orchestrator MCP Server
@jeanibarz
About Workflow Orchestrator MCP Server
No overview available yet
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"orchestrator-mcp-server": {
"command": "uv",
"args": [
"sync"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Workflow Orchestrator MCP Server?
An AI-powered MCP server that manages and executes complex, dynamic workflows using a Large Language Model for intelligent decision-making. It is designed for developers who need adaptable, non-linear workflows within MCP-compatible clients like Cline.
How to use Workflow Orchestrator MCP Server?
Install dependencies with uv sync, set required environment variables (WORKFLOW_DEFINITIONS_DIR, WORKFLOW_DB_PATH, GEMINI_MODEL_NAME), then run uv run python -m orchestrator_mcp_server or the orchestrator-mcp-server command. The server exposes MCP tools: list_workflows, start_workflow, get_workflow_status, advance_workflow, resume_workflow. Workflows are defined as Markdown files in the configured definitions directory.
Key features of Workflow Orchestrator MCP Server?
- AI-driven decisions for dynamic branching and error handling.
- Workflows and steps defined in human-readable Markdown.
- Persistent state stored in a local SQLite database.
- Resumption of interrupted workflows with state reconciliation.
- Reusable, modular step definitions.
- Human-readable and editable workflow definitions.
Use cases of Workflow Orchestrator MCP Server?
- Automating multi-step code review and refactoring processes.
- Managing long-running task pipelines that can be paused and resumed.
- Creating adaptable GitLab issue analysis workflows.
- Generating commit suggestions or jokes with dynamic AI steps.
- Building custom orchestration logic for data processing or CI/CD.
FAQ from Workflow Orchestrator MCP Server
How is the server configured?
Configuration is done via environment variables: WORKFLOW_DEFINITIONS_DIR (path to Markdown workflow files), WORKFLOW_DB_PATH (path to SQLite database), GEMINI_MODEL_NAME (e.g., `gemini-2.
More Reasoning MCP servers
🚀 Aider-MCP: AI Coding Server with Universal Auto-Detection
jacv888Aider-MCP-Upgraded is a production-grade multi-agent AI coding system that combines Desktop Commander (DC) investigation capabilities with Aider's implementation power. Features 70%+ token reduction, modular architecture, and intelligent workflow automation through strategic agen
ArduPilot MCP Server Sandbox
hfujikawa77ArduPilotドローンをAIエージェントから操作するMCPサーバーです。
Deno Sandbox MCP Server
bewt85An MCP server that allows you to run TypeScript, JavaScript, and Python code in a sandbox on your local machine using the Deno® sandbox. This server provides a controlled environment for executing code with explicit permission controls.
🐢🚀 Node.js Sandbox MCP Server
alfonsograzianoA Node.js–based Model Context Protocol server that spins up disposable Docker containers to execute arbitrary JavaScript.
Proplan Mcp
King-ProplanMCP server that gives Claude persistent project memory — roadmap, session history, and codebase context. Type continue and Claude picks up exactly where you left off
Comments