A very simple LLM manager for Python.
Project description
L2M2: A Simple Python LLM Manager 💬👍
L2M2 ("LLM Manager" → "LLMM" → "L2M2") is a very simple LLM manager for Python that exposes lots of models through a unified API. This is useful for evaluation, demos, and other apps that need to easily be model-agnostic.
Features
- 12 supported models (see below), with more on the way
- Asynchronous and concurrent calls
- User-provided models from supported providers
Supported Models
L2M2 currently supports the following models:
Provider | Model Name | Model Version |
---|---|---|
openai |
gpt-4-turbo |
gpt-4-turbo-2024-04-09 |
openai |
gpt-4-turbo-0125 |
gpt-4-0125-preview |
google |
gemini-1.5-pro |
gemini-1.5-pro-latest |
google |
gemini-1.0-pro |
gemini-1.0-pro-latest |
anthropic |
claude-3-opus |
claude-3-opus-20240229 |
anthropic |
claude-3-sonnet |
claude-3-sonnet-20240229 |
anthropic |
claude-3-haiku |
claude-3-haiku-20240307 |
cohere |
command-r |
command-r |
cohere |
command-r-plus |
command-r-plus |
groq |
mixtral-8x7b |
mixtral-8x7b-32768 |
groq |
gemma-7b |
gemma-7b-it |
groq |
llama2-70b |
llama2-70b-4096 |
replicate |
llama3-8b |
meta/meta-llama-3-8b |
replicate |
llama3-8b-instruct |
meta/meta-llama-3-8b-instruct |
replicate |
llama3-70b |
meta/meta-llama-3-70b |
replicate |
llama3-70b-instruct |
meta/meta-llama-3-70b-instruct |
You can also call any language model from the above providers that L2M2 doesn't officially support, without guarantees of well-defined behavior.
Planned Featires
- Support for Huggingface & open-source LLMs
- Chat-specific features (e.g. context, history, etc)
- Typescript clone
- ...etc
Requirements
- Python >= 3.12
Installation
pip install l2m2
Usage
Import the LLM Client
from l2m2.client import LLMClient
Add Providers
In order to activate any of the available models, you must add the provider of that model and pass in your API key for that provider's API. Make sure to pass in a valid provider as shown in the table above.
client = LLMClient()
client.add_provider("<provider-name>", "<api-key>")
# Alternatively, you can pass in providers via the constructor
client = LLMClient({
"<provider-a>": "<api-key-a>",
"<provider-b>": "<api-key-b>",
...
})
Call your LLM 💬👍
The call
API is the same regardless of model or provider.
response = client.call(
model="<model name>",
prompt="<prompt>",
system_prompt="<system prompt>",
temperature=<temperature>,
max_tokens=<max_tokens>
)
model
and prompt
are required, while the remaining fields are optional. When possible, L2M2 uses the provider's default model parameter values when they are not given.
If you'd like to call a language model from one of the supported providers that isn't officially supported by L2M2 (for example, older models such as gpt-3.5-turbo
), you can similarly call_custom
with the additional required parameter provider
, and pass in the model name expected by the provider's API. Unlike call
, call_custom
doesn't guarantee correctness or well-defined behavior.
Example
# example.py
import os
from l2m2.client import LLMClient
client = LLMClient()
client.add_provider("openai", os.getenv("OPENAI_API_KEY"))
response = client.call(
model="gpt-4-turbo",
prompt="How's the weather today?",
system_prompt="Respond as if you were a pirate.",
temperature=0.5,
max_tokens=250,
)
print(response)
>> python3 example.py
Arrr, matey! The skies be clear as the Caribbean waters today, with the sun blazin' high 'bove us. A fine day fer settin' sail and huntin' fer treasure, it be. But keep yer eye on the horizon, for the weather can turn quicker than a sloop in a squall. Yarrr!
Async Calls
L2M2 utilizes asyncio
to allow for multiple concurrent calls. This is useful for calling multiple models at with the same prompt, calling the same model with multiple prompts, mixing and matching parameters, etc.
AsyncLLMClient
, which extends LLMClient
, is provided for this purpose. Its usage is similar to above:
# example_async.py
import asyncio
import os
from l2m2.client import AsyncLLMClient
client = AsyncLLMClient({
"openai": os.getenv("OPENAI_API_KEY"),
"google": os.getenv("GOOGLE_API_KEY"),
})
async def make_two_calls():
responses = await asyncio.gather(
client.call_async(
model="gpt-4-turbo",
prompt="How's the weather today?",
system_prompt="Respond as if you were a pirate.",
temperature=0.3,
max_tokens=100,
),
client.call_async(
model="gemini-1.0-pro",
prompt="How's the weather today?",
system_prompt="Respond as if you were a pirate.",
temperature=0.3,
max_tokens=100,
),
)
for response in responses:
print(response)
if __name__ == "__main__":
asyncio.run(make_two_calls())
>> python3 example_async.py
Arrr, the skies be clear and the winds be in our favor, matey! A fine day for sailin' the high seas, it be.
Avast there, matey! The weather be fair and sunny, with a gentle breeze from the east. The sea be calm, and the sky be clear. A perfect day for sailin' and plunderin'!
For convenience AsyncLLMClient
also provides call_concurrent
, which allows you to easily make concurrent calls mixing and matching models, prompts, and parameters. In the example shown below, parameter arrays of size n
are applied linearly to the n
concurrent calls, and arrays of size 1
are applied across all n
calls.
# example_concurrent.py
import asyncio
import os
from l2m2.client import AsyncLLMClient
client = AsyncLLMClient({
"openai": os.getenv("OPENAI_API_KEY"),
"google": os.getenv("GOOGLE_API_KEY"),
"cohere": os.getenv("COHERE_API_KEY"),
})
async def multiple_models_same_prompt():
responses = await client.call_concurrent(
n=3,
models=["gpt-4-turbo", "gemini-1.0-pro", "command-r"],
prompts=["What is your name, and which company made your model?"],
system_prompts=["Your name is Bob, and you respond to questions briefly."],
temperatures=[0.4, 0.5, 0.7],
max_tokens=[75],
)
for response in responses:
print(response)
if __name__ == "__main__":
asyncio.run(multiple_models_same_prompt())
>> python3 example_concurrent.py
My name is Bob, and OpenAI created my model.
Bob; Google
My name is Bob, and I am a product of Cohere, a company that focuses on developing outstanding AI technology.
Similarly to call_custom
, call_custom_async
and call_custom_concurrent
are provided as the custom counterparts to call_async
and call_concurrent
, with similar usage.
Contact
If you'd like to contribute, have feature requests, or have any other questions about l2m2 please shoot me a note at pierce@kelaita.com, open an issue on the Github repo, or DM me on the GenAI Collective Slack Channel.
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