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Anthropic Prompt MCP

The MCP Anthropic Server is a server - side project that provides tools for interacting with Anthropic's experimental prompt engineering API.
2.5 points
12

What is the MCP Anthropic Server?

The MCP Anthropic Server is a powerful tool that provides the ability to generate, optimize, and template prompts through Anthropic's experimental API. It is suitable for tasks that require the efficient generation of high - quality text.

How to use the MCP Anthropic Server?

You can set up and run the server in a few simple steps, and then use its generation, optimization, and templating functions to complete tasks.

Applicable Scenarios

Suitable for generating creative copywriting, optimizing existing content, and creating reusable prompt templates. Widely used in content creation, education, customer service, and other fields.

Main Features

Generate PromptsGenerate prompts suitable for the target model based on the task description.
Optimize PromptsImprove existing prompts based on user feedback.
Template PromptsConvert specific prompt examples into reusable templates.

Advantages and Limitations

Advantages
Quickly generate high - quality prompts
Support adaptation to multiple models
The templating function improves efficiency
Limitations
Depends on the Anthropic API key
May require a certain network latency

How to Use

Install Dependencies
Ensure that Node.js and npm are installed, and run `npm install` to install project dependencies.
Configure the API Key
Create a `.env` file in the project root directory and add the Anthropic API key.
Start the Server
Build the TypeScript code and start the server.

Usage Examples

Example of Generating a PromptGenerate a suitable prompt for a new task.
Example of Optimizing a PromptImprove an existing prompt based on feedback.
Example of Templating a PromptConvert a specific prompt into a template.

Frequently Asked Questions

How to obtain an Anthropic API key?
What if the server fails to start?
How to determine if a prompt is valid?

Related Resources

Anthropic Official Documentation
Official documentation for the Anthropic API.
GitHub Repository
Open - source code for the MCP Anthropic Server.
LibreChat Documentation
LibreChat integration guide.
Installation
Copy the following command to your Client for configuration
Note: Your key is sensitive information, do not share it with anyone.
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