Skip to content
This repository has been archived by the owner on Sep 12, 2023. It is now read-only.

lightonai/lightonmuse

Repository files navigation

lightonmuse

Twitter Follow

Python bindings for the Muse API: production-ready intelligence primitives powered by state-of-the-art language models. By LightOn.

Create. Process. Understand. Learn.

Uplift your product with the natural language generation & understanding capabilities of Muse. State-of-the-art large language models in French, English, Italian, and Spanish—with more to come—are just an API call away. Our models can help you build conversational AI, copywriting tools, text classifiers, semantic search, and more.

🛣️ Accessing the Muse API public beta

The Muse API is currently in public beta. Learn more about Muse and sign up at muse.lighton.ai.

Installation and documentation

You can install this package from PyPi with:

pip install lightonmuse

To install from source:

git clone https://github.com/lightonai/lightonmuse.git
cd lightonmuse
pip install ./

Once the package is installed, make sure to define an environment variable MUSE_API_KEY to your API key, e.g. by adding the following line to your .bashrc

export MUSE_API_KEY="<your api key>"

Guides and documentation can be found at the API docs website.

Quickstart

Using lightonmuse is pretty simple, the interface matches the endpoints offered by the Muse API

Create

from lightonmuse import Create


creator = Create("lyra-en")
print(creator("Wow, the Muse API is really amazing"))

Select

from lightonmuse import Select


selector = Select("orion-fr-v2")
print(selector("Quel nom est correct?", candidates=["pain au chocolat", "chocolatine"]))

CalibratedSelect

from lightonmuse import CalibratedSelect


selector = CalibratedSelect("orion-fr-v2")
selector.fit(
    content_free_inputs='Voici une critique : "" \n',
    candidates=["positive", "négative"],
    conjunction="Cette critique est"
)
critique = 'Voici une critique : "Ce film est super pour s\'endormir"'
print(selector(critique, candidates=["positive", "négative"], conjunction="Cette critique est"))

Analyse

from lightonmuse import Analyse

analyser = Analyse("orion-fr-v2")
print(analyser("Avec \"Analyse\" on peut toujours trouver les parties plus surprenantes d'une phrase."))

Embed

from lightonmuse import Embed

embedder = Embed("lyra-en")
print(embedder("This sentence will be transformed in a nice matrix of numbers."))

Compare

from lightonmuse import Compare

comparer = Compare("lyra-en")
print(comparer("This is the reference.", candidates=["This is close to the reference", "While this is most definitely not"]))

Tokenize

from lightonmuse import Tokenize

tokenizer = Tokenize("lyra-en")
print(tokenizer("Let's discover how many tokens is this text"))

Access to LightOn MUSE

Access the public beta of LightOn MUSE and try our intelligence primitives at muse.lighton.ai