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// Developer Tools

any-llm

Communicate with an LLM provider using a single interface

// Developer Tools[ api ][ claude ]#claude#ai#anthropic#developer-tools#inference#llm#openai#python#devtoolsApache-2.0$open-sourceupdated 15 days ago
Actively maintained
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last commit 8 days ago
last release 13 days ago
releases 71
open issues 22
// install
git clone https://github.com/mozilla-ai/any-llm

Project logo

any-llm

Communicate with any LLM provider using a single, unified interface. Switch between OpenAI, Anthropic, Azure / Microsoft Foundry, Mistral, Ollama, and more without changing your code.

Documentation | otari.ai | Try the Demos | Contributing

Quickstart

pip install 'any-llm-sdk[mistral,ollama]'

export MISTRAL_API_KEY="YOUR_KEY_HERE"  # or OPENAI_API_KEY, etc
from any_llm import completion
import os

# Make sure you have the appropriate environment variable set
assert os.environ.get('MISTRAL_API_KEY')

response = completion(
    model="mistral-small-latest",
    provider="mistral",
    messages=[{"role": "user", "content": "Hello!"}]
)
print(response.choices[0].message.content)

That's it! Change the provider name and add provider-specific keys to switch between LLM providers.

Coming from LiteLLM? Your API keys and environment variables carry over unchanged. Install the SDK with extras for the providers you need, then update your import and model strings:

pip install 'any-llm-sdk[openai,anthropic]'  # or [all] for everything
# before
from litellm import completion
response = completion(model="openai/gpt-4o", messages=[...])

# after
from any_llm import completion
response = completion(model="openai:gpt-4o", messages=[...])

See Supported Providers to map your existing model strings.

That's the full migration — no proxy, no extra config.

Installation

Requirements

  • Python 3.11 or newer
  • API keys for whichever LLM providers you want to use

Basic Installation

Install support for specific providers:

pip install 'any-llm-sdk[openai]'           # Just OpenAI
pip install 'any-llm-sdk[mistral,ollama]'   # Multiple providers
pip install 'any-llm-sdk[all]'              # All supported providers

See our list of supported providers to choose which ones you need.

Setting Up API Keys

Set environment variables for your chosen providers:

export OPENAI_API_KEY="your-key-here"
export ANTHROPIC_API_KEY="your-key-here"
export MISTRAL_API_KEY="your-key-here"
# ... etc

Alternatively, pass API keys directly in your code (see Usage examples).

Otari Gateway

For budget management, API key management, usage analytics, and multi-tenant support, see mozilla-ai/otari.

Why choose any-llm?

  • Simple, unified interface - Single function for all providers, switch models with just a string change
  • Developer friendly - Full type hints for better IDE support and clear, actionable error messages
  • Leverages official provider SDKs - Ensures maximum compatibility
  • Stays framework-agnostic so it can be used across different projects and use cases
  • Battle-tested - Powers our own production tools (any-agent)

Usage

any-llm offers two main approaches for interacting with LLM providers:

Recommended approach: Use separate provider and model parameters:

from any_llm import completion
import os

# Make sure you have the appropriate environment variable set
assert os.environ.get('MISTRAL_API_KEY')

response = completion(
    model="mistral-small-latest",
    provider="mistral",
    messages=[{"role": "user", "content": "Hello!"}]
)
print(response.choices[0].message.content)

Alternative syntax: Use combined provider:model format:

response = completion(
    model="mistral:mistral-small-latest", # <provider_id>:<model_id>
    messages=[{"role": "user", "content": "Hello!"}]
)

For applications that need to reuse providers, perform multiple operations, or require more control:

from any_llm import AnyLLM

llm = AnyLLM.create("mistral", api_key="your-mistral-api-key")

response = llm.completion(
    model="mistral-small-latest",
    messages=[{"role": "user", "content": "Hello!"}]
)

When to Use Which Approach

ApproachBest ForConnection Handling
Direct API Functions (completion)Scripts, notebooks, single requestsNew client per call (stateless)
AnyLLM Class (AnyLLM.create)Production apps, multiple requestsReuses client (connection pooling)

Both approaches support identical features: streaming, tools, responses API, etc.

Responses API

For providers that implement the OpenAI-style Responses API, use responses or aresponses:

from any_llm import responses

result = responses(
    model="gpt-4o-mini",
    provider="openai",
    input_data=[
        {"role": "user", "content": [
            {"type": "text", "text": "Summarize this in one sentence."}
        ]}
    ],
)

# Non-streaming returns an OpenAI-compatible Responses object alias
print(result.output_text)

Finding the Right Model

The provider_id should match our supported provider names.

The model_id is passed directly to the provider. To find available models:

  • Check the provider's documentation
  • Use our list_models API (if the provider supports it)

Motivation

The landscape of LLM provider interfaces is fragmented. While OpenAI's API has become the de facto standard, providers implement slight variations in parameter names, response formats, and feature sets. This creates a need for light wrappers that gracefully handle these differences while maintaining a consistent interface.

Existing Solutions and Their Limitations:

  • LiteLLM: Popular but reimplements provider interfaces rather than leveraging official SDKs, leading to potential compatibility issues.
  • AISuite: Clean, modular approach but lacks active maintenance, comprehensive testing, and modern Python typing standards.
  • Framework-specific solutions: Some agent frameworks either depend on LiteLLM or implement their own provider integrations, creating fragmentation
  • Proxy Only Solutions: solutions like OpenRouter and Portkey require a hosted proxy between your code and the LLM provider.

any-llm addresses these challenges by leveraging official SDKs when available, maintaining framework-agnostic design, and requiring no proxy servers.

Documentation

Contributing

We welcome contributions from developers of all skill levels! Please see our Contributing Guide or open an issue to discuss changes.

License

This project is licensed under the Apache License 2.0 - see the LICENSE file for details.

// compatibility

Platformsapi
Operating systems
AI compatibilityclaude
LicenseApache-2.0
Pricingopen-source
LanguagePython

// faq

What is any-llm?

Communicate with an LLM provider using a single interface. It is open-source on GitHub.

Is any-llm free to use?

any-llm is open-source under the Apache-2.0 license, so it is free to use.

What category does any-llm belong to?

any-llm is listed under devtools in the Claudeers registry of Claude-compatible tools.

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