# leptonai **Repository Path**: wqlxx/leptonai ## Basic Information - **Project Name**: leptonai - **Description**: No description available - **Primary Language**: Unknown - **License**: Apache-2.0 - **Default Branch**: main - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2024-01-26 - **Last Updated**: 2024-01-26 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # Lepton AI **A Pythonic framework to simplify AI service building** HomepageAPI PlaygroundExamplesDocumentationCLI ReferencesTwitterBlog The LeptonAI python library allows you to build an AI service from python code with ease. Key features include: - A pythonic abstraction `Photon`, allowing you to convert research and modeling code into a service with a few lines of code. - Simple abstractions to launch models like those on [HuggingFace](https://huggingface.co) in few lines of code. - Prebuilt examples for common models such as Llama, SDXL, Whisper, and others. - AI tailored batteries included such as autobatching, background jobs, etc. - A client to automatically call your service like native Python functions. - Pythonic configuration specs to be readily shipped in a cloud environment. ## Getting started with one-liner Install the library with: ```shell pip install -U leptonai ``` This installs the `leptonai` python library, as well as the commandline interface `lep`. You can then launch a HuggingFace model, say `gpt2`, in one line of code: ```python lep photon run --name gpt2 --model hf:gpt2 --local ``` If you have access to the Llama2 model ([apply for access here](https://huggingface.co/meta-llama/Llama-2-7b)) and you have a reasonably sized GPU, you can launch it with: ```python # hint: you can also write `-n` and `-m` for short lep photon run -n llama2 -m hf:meta-llama/Llama-2-7b-chat-hf --local ``` (Be sure to use the `-hf` version for Llama2, which is compatible with huggingface pipelines.) You can then access the service with: ```python from leptonai.client import Client, local c = Client(local(port=8080)) # Use the following to print the doc print(c.run.__doc__) print(c.run(inputs="I enjoy walking with my cute dog")) ``` Fully managed Llama2 models and CodeLlama models can be found in the [playground](https://dashboard.lepton.ai/playground). Many standard HuggingFace pipelines are supported - find out more details in the [documentation](https://www.lepton.ai/docs/advanced/prebuilt_photons#hugging-face-photons). Not all HuggingFace models are supported though, as many of them contain custom code and are not standard pipelines. If you find a popular model you would like to support, please [open an issue or a PR](https://github.com/leptonai/leptonai/issues/new). ## Checking out more examples You can find out more examples from the [examples repository](https://github.com/leptonai/examples). For example, launch the Stable Diffusion XL model with: ```shell git clone git@github.com:leptonai/examples.git cd examples ``` ```python lep photon run -n sdxl -m advanced/sdxl/sdxl.py --local ``` Once the service is running, you can access it with: ```python from leptonai.client import Client, local c = Client(local(port=8080)) img_content = c.run(prompt="a cat launching rocket", seed=1234) with open("cat.png", "wb") as fid: fid.write(img_content) ``` or access the mounted Gradio UI at [http://localhost:8080/ui](http://localhost:8080/ui). Check the [README file](https://github.com/leptonai/examples/blob/main/advanced/sdxl/README.md) for more details. A fully managed SDXL is hosted at [https://dashboard.lepton.ai/playground/sdxl](https://dashboard.lepton.ai/playground/sdxl) with API access. ## Writing your own photons Writing your own photon is simple: write a python Photon class and decorate functions with `@Photon.handler`. As long as your input and output are JSON serializable, you are good to go. For example, the following code launches a simple echo service: ```python # my_photon.py from leptonai.photon import Photon class Echo(Photon): @Photon.handler def echo(self, inputs: str) -> str: """ A simple example to return the original input. """ return inputs ``` You can then launch the service with: ```shell lep photon run -n echo -m my_photon.py --local ``` Then, you can use your service as follows: ```python from leptonai.client import Client, local c = Client(local(port=8080)) # will print available paths print(c.paths()) # will print the doc for c.echo. You can also use `c.echo?` in Jupyter. print(c.echo.__doc__) # will actually call echo. c.echo(inputs="hello world") ``` For more details, checkout the [documentation](https://lepton.ai/docs/) and the [examples](https://github.com/leptonai/examples). ## Contributing Contributions and collaborations are welcome and highly appreciated. Please check out the [contributor guide](https://github.com/leptonai/leptonai/blob/main/CONTRIBUTING.md) for how to get involved. ## License The Lepton AI python library is released under the Apache 2.0 license. Developer Note: early development of LeptonAI was in a separate mono-repo, which is why you may see commits from the `leptonai/lepton` repo. We intend to use this open source repo as the source of truth going forward.