A Demo server serving Bert through ONNX with GPU written in Rust with <3

Overview

Demo BERT ONNX server written in rust

This demo showcase the use of onnxruntime-rs on BERT with a GPU on CUDA 11 served by actix-web and tokenized with Hugging Face tokenizer.

Requirement

  • Linux x86_64
  • NVIDIA GPU with CUDA 11 (Not sure if CUDA 10 works)
  • Rust (obviously)
  • git lfs for the models

Installation

export ORT_USE_CUDA=1
git lfs install
cargo build --release

Run

cargo run --release

or

export LD_LIBRARY_PATH=path/to/onnxruntime-linux-x64-gpu-1.8.0/lib:${LD_LIBRARY_PATH}
./target/release/onnx-server

Call

curl http://localhost:8080/\?data=Hello+World

Python alternative

To compare with standart python server with FastAPI, I've added the code for the same server in src called python_alternative.py

Install

pip install -r requirements.txt

Run

cd src
uvicorn python_alternative:app --reload --workers 1

Call

curl http://localhost:8000/\?data=Hello+World

training and converting to ONNX

The training pipeline is in another repo: https://github.com/haixuanTao/bert-onnx-rs-pipeline

Owner
Xavier Tao
Xavier Tao
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