OpenAPITools SDK

Created By
kvssankara year ago
Your APIs, Now AI Tools. Build mcp servers in a minute.
Overview

What is OpenAPITools SDK?

OpenAPITools SDK is a Python package that enables developers to manage and execute tools across multiple AI API providers, providing a unified interface for working with tools in Anthropic's Claude, OpenAI's GPT models, and LangChain frameworks.

How to use OpenAPITools SDK?

To use OpenAPITools SDK, install it via PyPI using the command pip install reacter-openapitools requests, and set up your environment with the necessary API keys from supported AI providers. You can then create tools as Python or Bash scripts and access them through the SDK.

Key features of OpenAPITools SDK?

  • Unified interface for multiple AI API providers
  • Ability to create tools as Python or Bash scripts
  • Local execution of tools for privacy and performance
  • Integration with Claude, GPT, and LangChain models

Use cases of OpenAPITools SDK?

  1. Building interactive chatbots that utilize AI tools to solve complex tasks.
  2. Managing and executing scripts across different AI platforms seamlessly.
  3. Developing applications that require integration with multiple AI models.

FAQ from OpenAPITools SDK?

  • What are the prerequisites for using OpenAPITools SDK?

You need Python 3.8 or later and access keys to at least one of the supported AI providers.

  • Can I run Bash tools on Windows?

Bash tools are recommended for Linux environments or WSL, as they may not function correctly in Windows.

  • Is my code sent to external servers for execution?

No, all tool execution happens locally within your environment.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
kvssankar
Star
0
Language
Python
License
MIT license

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