Skip to main content

Unofficial Async Python client library for the OpenAI API

Project description

async-openai

Unofficial Async Python client library for the OpenAI API based on Documented Specs

Latest Version: PyPI version

Official Client

Features

  • Asyncio based with Sync and Async Support with httpx

  • Supports all API endpoints

  • Strongly typed validation of requests and responses with Pydantic Models with transparent access to the raw response and object-based results.

  • Handles Retries automatically through backoff

  • Supports Local and Remote Cloud Object Storage File Handling Asyncronously through file-io

    • Supports S3: s3://bucket/path/to/file.txt

    • Supports GCS: gs://bucket/path/to/file.txt

    • Supports Minio: minio://bucket/path/to/file.txt

  • Supports limited cost tracking for Completions and Edits requests (when stream is not enabled)


Installation

# Install from stable
pip install async-openai

# Install from dev/latest
pip install git+https://github.com/GrowthEngineAI/async-openai.git

Quick Usage

import asyncio
from async_openai import OpenAI, settings, CompletionResponse

# Environment variables should pick up the defaults
# however, you can also set them explicitly.

# `api_key` - Your OpenAI API key.                  Env: [`OPENAI_API_KEY`]
# `url` - The URL of the OpenAI API.                Env: [`OPENAI_URL`]
# `api_type` - The OpenAI API type.                 Env: [`OPENAI_API_TYPE`]
# `api_version` - The OpenAI API version.           Env: [`OPENAI_API_VERSION`]
# `organization` - The OpenAI organization.         Env: [`OPENAI_ORGANIZATION`]
# `proxies` - A dictionary of proxies to be used.   Env: [`OPENAI_PROXIES`]
# `timeout` - The timeout in seconds to be used.    Env: [`OPENAI_TIMEOUT`]
# `max_retries` - The number of retries to be used. Env: [`OPENAI_MAX_RETRIES`]

OpenAI.configure(
    api_key = "sk-XXXX",
    organization = "org-XXXX",
    debug_enabled = False,
)

# Alternatively you can configure the settings through environment variables
# settings.configure(
#    api_key = "sk-XXXX",
#     organization = "org-XXXX",
# )


# [Sync] create a completion
# Results return a CompletionResult object
result: CompletionResponse = OpenAI.completions.create(
    prompt = 'say this is a test',
    max_tokens = 4,
    stream = True
)

# print the completion text
# which are concatenated together from the result['choices'][n]['text']

print(result.text)

# print the number of choices returned
print(len(result))

# get the cost consumption for the request
print(result.consumption)

# [Async] create a completion
# All async methods are generally prefixed with `async_`

result: CompletionResponse = asyncio.run(
    OpenAI.completions.async_create(
        prompt = 'say this is a test',
        max_tokens = 4,
        stream = True
    )
)

Dependencies

The aim of this library is to be as lightweight as possible. It is built on top of the following libraries:

  • aiohttpx: Unified Async / Sync HTTP Client that wraps around httpx

    • httpx: Async / Sync HTTP Requests

    • lazyops: Provides numerous utility functions for working with Async / Sync code and data structures

  • pydantic: Type Support

  • file-io: Async Cloud-based File Storage I/O

  • backoff: Retries with Exponential Backoff

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

async_openai-0.0.6.tar.gz (25.2 kB view hashes)

Uploaded Source

Built Distribution

async_openai-0.0.6-py3-none-any.whl (30.3 kB view hashes)

Uploaded Python 3

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page