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FastDeploy Serving Deployment

Introduction

FastDeploy builds an end-to-end serving deployment based on Triton Inference Server. The underlying backend uses the FastDeploy high-performance Runtime module and integrates the FastDeploy pre- and post-processing modules to achieve end-to-end serving deployment. It can achieve fast deployment with easy-to-use process and excellent performance.

FastDeploy also provides an easy-to-use Python service deployment method, refer PaddleSeg deployment example for its usage.

Prepare the environment

Environment requirements

  • Linux
  • If using a GPU image, NVIDIA Driver >= 470 is required (for older Tesla architecture GPUs, such as T4, the NVIDIA Driver can be 418.40+, 440.33+, 450.51+, 460.27+)

Obtain Image

CPU Image

CPU images only support Paddle/ONNX models for serving deployment on CPUs, and supported inference backends include OpenVINO, Paddle Inference, and ONNX Runtime

docker pull registry.baidubce.com/paddlepaddle/fastdeploy:1.0.7-cpu-only-21.10

GPU Image

GPU images support Paddle/ONNX models for serving deployment on GPU and CPU, and supported inference backends including OpenVINO, TensorRT, Paddle Inference, and ONNX Runtime

docker pull registry.baidubce.com/paddlepaddle/fastdeploy:1.0.7-gpu-cuda11.4-trt8.5-21.10

Users can also compile the image by themselves according to their own needs, referring to the following documents:

Other Tutorials

Serving Deployment Demo

Task Model
Classification PaddleClas
Detection PaddleDetection
Detection ultralytics/YOLOv5
NLP PaddleNLP/ERNIE-3.0
NLP PaddleNLP/UIE
Speech PaddleSpeech/PP-TTS
OCR PaddleOCR/PP-OCRv3