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Serving YOLO with BentoML

YOLO (You Only Look Once) is a series of popular convolutional neural network (CNN) models used for object detection tasks.

This is a BentoML example project, demonstrating how to build an object detection inference API server, using the YOLOv8 model. See here for a full list of BentoML example projects.

Install dependencies

git clone https://github.com/bentoml/BentoYolo.git
cd BentoYolo

# Recommend Python 3.11
pip install -r requirements.txt

Run the BentoML Service

We have defined a BentoML Service in service.py. Run bentoml serve in your project directory to start the Service.

$ bentoml serve .

2024-03-19T10:02:15+0000 [WARNING] [cli] Converting 'YoloV8' to lowercase: 'yolov8'.
2024-03-19T10:02:16+0000 [INFO] [cli] Starting production HTTP BentoServer from "service:YoloV8" listening on http://localhost:3000 (Press CTRL+C to quit)

The server is now active at http://localhost:3000. You can interact with it using the Swagger UI or in other different ways.

CURL

curl -X 'POST' \
  'http://localhost:3000/predict' \
  -H 'accept: application/json' \
  -H 'Content-Type: multipart/form-data' \
  -F 'image=@demo-image.jpg;type=image/jpeg'

Python client

import bentoml
from pathlib import Path

with bentoml.SyncHTTPClient("http://localhost:3000") as client:
    result = client.predict(
        image=Path("demo-image.jpg"),
    )

Deploy to BentoCloud

After the Service is ready, you can deploy the application to BentoCloud for better management and scalability. Sign up if you haven't got a BentoCloud account.

Make sure you have logged in to BentoCloud, then run the following command to deploy it.

bentoml deploy .

Once the application is up and running on BentoCloud, you can access it via the exposed URL.

Note: For custom deployment in your own infrastructure, use BentoML to generate an OCI-compliant image.