bentoml 1.3.3

Creator: codyrutscher

Last updated:

0 purchases

bentoml 1.3.3 Image
bentoml 1.3.3 Images
Add to Cart

Description:

bentoml 1.3.3

Unified Model Serving Framework
🍱 Build model inference APIs and multi-model serving systems with any open-source or custom AI models. πŸ‘‰ Join our Slack community!





What is BentoML?
BentoML is a Python library for building online serving systems optimized for AI apps and model inference.

🍱 Easily build APIs for Any AI/ML Model. Turn any model inference script into a REST API server with just a few lines of code and standard Python type hints.
🐳 Docker Containers made simple. No more dependency hell! Manage your environments, dependencies and model versions with a simple config file. BentoML automatically generates Docker images, ensures reproducibility, and simplifies how you deploy to different environments.
🧭 Maximize CPU/GPU utilization. Build high performance inference APIs leveraging built-in serving optimization features like dynamic batching, model parallelism, multi-stage pipeline and multi-model inference-graph orchestration.
πŸ‘©β€πŸ’» Fully customizable. Easily implement your own APIs or task queues, with custom business logic, model inference and multi-model composition. Supports any ML framework, modality, and inference runtime.
πŸš€ Ready for Production. Develop, run and debug locally. Seamlessly deploy to production with Docker containers or BentoCloud.

Getting started
Install BentoML:
# Requires Pythonβ‰₯3.8
pip install -U bentoml

Define APIs in a service.py file.
from __future__ import annotations

import bentoml

@bentoml.service(
resources={"cpu": "4"}
)
class Summarization:
def __init__(self) -> None:
import torch
from transformers import pipeline

device = "cuda" if torch.cuda.is_available() else "cpu"
self.pipeline = pipeline('summarization', device=device)

@bentoml.api(batchable=True)
def summarize(self, texts: list[str]) -> list[str]:
results = self.pipeline(texts)
return [item['summary_text'] for item in results]

Run the service code locally (serving at http://localhost:3000 by default):
pip install torch transformers # additional dependencies for local run

bentoml serve service.py:Summarization

Now you can run inference from your browser at http://localhost:3000 or with a Python script:
import bentoml

with bentoml.SyncHTTPClient('http://localhost:3000') as client:
summarized_text: str = client.summarize([bentoml.__doc__])[0]
print(f"Result: {summarized_text}")

Deploying your first Bento
To deploy your BentoML Service code, first create a bentofile.yaml file to define its dependencies and environments. Find the full list of bentofile options here.
service: "service:Summarization" # Entry service import path
include:
- "*.py" # Include all .py files in current directory
python:
packages: # Python dependencies to include
- torch
- transformers
docker:
python_version: 3.11

Then, choose one of the following ways for deployment:

🐳 Docker Container
Run bentoml build to package necessary code, models, dependency configs into a Bento - the standardized deployable artifact in BentoML:
bentoml build

Ensure Docker is running. Generate a Docker container image for deployment:
bentoml containerize summarization:latest

Run the generated image:
docker run --rm -p 3000:3000 summarization:latest



☁️ BentoCloud
BentoCloud provides compute infrastructure for rapid and reliable GenAI adoption. It helps speed up your BentoML development process leveraging cloud compute resources, and simplify how you deploy, scale and operate BentoML in production.
Sign up for BentoCloud for personal access; for enterprise use cases, contact our team.
# After signup, run the following command to create an API token:
bentoml cloud login

# Deploy from current directory:
bentoml deploy .



For detailed explanations, read Quickstart.
Use cases

LLMs: Llama 3, Mixtral, Solar, Mistral, and more
Image Generation: Stable Diffusion, Stable Video Diffusion, Stable Diffusion XL Turbo, ControlNet, LCM LoRAs
Text Embeddings: SentenceTransformers
Audio: ChatTTS, XTTS, WhisperX, Bark
Computer Vision: YOLO
Multimodal: BLIP, CLIP
RAG: RAG-as-a-Service with custom models

Check out the examples folder for more sample code and usage.
Advanced topics

Model composition
Workers and model parallelization
Adaptive batching
GPU inference
Distributed serving systems
Concurrency and autoscaling
Model packaging and Model Store
Observability
BentoCloud deployment

See Documentation for more tutorials and guides.
Community
Get involved and join our Community Slack πŸ’¬, where thousands of AI/ML engineers help each other, contribute to the project, and talk about building AI products.
To report a bug or suggest a feature request, use
GitHub Issues.
Contributing
There are many ways to contribute to the project:

Report bugs and "Thumbs up" on issues that are relevant to you.
Investigate issues and review other developers' pull requests.
Contribute code or documentation to the project by submitting a GitHub pull request.
Check out the Contributing Guide and Development Guide to learn more.
Share your feedback and discuss roadmap plans in the #bentoml-contributors channel here.

Thanks to all of our amazing contributors!



Usage tracking and feedback
The BentoML framework collects anonymous usage data that helps our community improve the product. Only BentoML's internal API calls are being reported. This excludes any sensitive information, such as user code, model data, model names, or stack traces. Here's the code used for usage tracking. You can opt-out of usage tracking by the --do-not-track CLI option:
bentoml [command] --do-not-track

Or by setting the environment variable:
export BENTOML_DO_NOT_TRACK=True

License
Apache License 2.0

License

For personal and professional use. You cannot resell or redistribute these repositories in their original state.

Customer Reviews

There are no reviews.