Deploy DL/ ML inference pipelines with minimal extra code.
Project description
fastDeploy
Deploy DL/ ML inference pipelines with minimal extra code.
Installation:
pip install --upgrade fastdeploy
Usage:
# Invoke fastdeploy
fastdeploy --help
# or
python -m fastdeploy --help
# Start prediction "loop" for recipe "deepsegment"
fastdeploy --recipe ./deepsegment --mode loop
# Start rest apis for recipe "deepsegment"
fastdeploy --recipe ./deepsegment --mode rest
# Run prediction using curl
curl -d '{"data": ["I was hungry i ordered a pizza"]}'\
-H "Content-Type: application/json" -X POST http://localhost:8080/infer
# Run prediction using python
python -c 'import requests; print(requests.post("http://localhost:8080/infer",\
json={"data": ["I was hungry i ordered a pizza"]}).json())'
# Response
[{'prediction': [['I was hungry', 'i ordered a pizza']], 'success': True}, '200 OK']
Features:
- Minimal extra code: No model exporting/ conversion/ freezing required. fastDeploy is the easiest way to serve and/or dockerize your existing inference code with minimal work.
- Fully configurable dynamic batching: fastDeploy dynamically batches concurrent requests for optimal resource usage.
- Containerization with no extra code: fastDeploy auto generates optimal dockerfiles and builds the image with no extra code.
- One consumer, multiple producers: Single fastDeploy loop (consumer) can simultaneously be connected to multiple (types of) producers (rest, websocket, file).
- One producer, multiple consumers: Distribute one producer's work load to multiple consumers running on multiple nodes (assuming common storage is available for queues)
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