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A simple GPT interface

Project description

ezgpt

ezgpt is a Python library designed to simplify the interaction with OpenAI's GPT (Generative Pre-trained Transformer) models. It provides a convenient interface for sending prompts to the model and receiving responses, with optional logging for debugging purposes.

Installation

You can install ezgpt via pip:

pip install ezgpt

Usage

To use ezgpt, you need to have an API key from OpenAI. This key must be set as an environment variable OpenAI_APIKey before using the library.

Initialization

First, import the ezgpt module and initialize the gpt class:

import ezgpt

gpt = ezgpt.gpt()

The gpt class constructor accepts the following parameters:

  • model: The identifier of the GPT model to use (default: 'gpt-3.5-turbo').
  • system: An optional system-level prompt that provides instructions or context for the GPT model.
  • temperature: Controls randomness in the response generation (default: 0).
  • top_p: Controls diversity of the response generation (default: 0).
  • max_tokens: The maximum number of tokens to generate in the response (default: 2048).
  • frequency_penalty: Decreases the likelihood of repetition in the response (default: 0).
  • presence_penalty: Encourages the model to talk about new topics (default: 0).
  • logs: Enables or disables logging of the interaction (default: False).

Sending Prompts

To send a prompt to the GPT model, use the get method of the gpt instance:

response = gpt.get(user="Your prompt here")

The get method accepts the following parameters:

  • system: Overrides the system-level prompt for this request.
  • user: The user-level prompt to send to the model.
  • messages: A list of previous message exchanges to maintain context.
  • temperature: Overrides the default temperature for this request.
  • top_p: Overrides the default top_p for this request.
  • max_tokens: Overrides the default max_tokens for this request.
  • frequency_penalty: Overrides the default frequency_penalty for this request.
  • presence_penalty: Overrides the default presence_penalty for this request.

Since your last request is stored under self.previous, you can append a message to your conversation like that:

response = gpt.get(messages=gpt.previous, user="Another message")

Logging

If logging is enabled, ezgpt will print the interaction with the GPT model to the console. This includes the prompts sent by the user and system, as well as the responses from the assistant.

Notes

  • The ezgpt library assumes that the OpenAI API key is set in the environment variable OpenAI_APIKey.
  • The gpt class maintains a history of the conversation in the previous attribute, which can be used to provide context for subsequent requests.

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