Shrimp Task Manager

Created By
cjo4m06a year ago
Shrimp Task Manager 透過結構化的工作流程引導,協助 Agent 系統性規劃程式開發步驟,強化任務記憶管理機制,有效避免冗餘與重複的編程工作。
Overview

What is Shrimp Task Manager?

Shrimp Task Manager is an intelligent task management system based on the Model Context Protocol (MCP) that assists AI agents in efficiently planning programming workflows.

How to use Shrimp Task Manager?

To use Shrimp Task Manager, install it via Smithery or manually set it up in a compatible client like Cursor IDE, and configure it according to your project needs.

Key features of Shrimp Task Manager?

  • Task planning and analysis to understand complex requirements
  • Intelligent task splitting into manageable sub-tasks
  • Dependency management to ensure correct execution order
  • Real-time tracking of task execution status
  • Verification of task completeness against expected outcomes
  • Automatic updates of task summaries upon completion

Use cases of Shrimp Task Manager?

  1. Planning and executing software development tasks
  2. Managing dependencies in programming projects
  3. Automating task summaries for better memory management

FAQ from Shrimp Task Manager?

  • Can Shrimp Task Manager be used with any programming language?

Yes! It can be integrated with any client that supports the Model Context Protocol.

  • Is there a specific environment required to run Shrimp Task Manager?

It is recommended to use Node.js and TypeScript for optimal performance.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
cjo4m06
Star
-
Language
-
License
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