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Yolov5_torchserve

This folder contains scripts to setup Torchserve for Yolov5, popular open-source object detection method.

Usage

   1. Create env

       sh create_env.sh
       Note: assume os is linux with cuda 11.0 

   2. Download the model from YoloV5 releases
      
      cd yolov5_mar
      sh download_model.sh

   3. Archive the model files

       cd yolov5_mar
       zip -r ../yolo5.mar .
       cd ..

   4. Host the yolov5 model

       mkdir model_store
       mv yolo5.mar model_store/.

   5. Run the server
      
      nohup sh start_server.sh &

   6. Check the healthy
     
      curl "http://localhost:8081/models/yolo5"

      or check logs/ts_log.log

   7. Test object detection API

      curl -X POST http://127.0.0.1:8080/predictions/yolo5 -T doggo.png

Performance

Coco 2017 Val Images(5K) is used to test throughput/latency in the above setup.

   1. Server machine: Intel xeon Gold 6159 [email protected], 2 Tesla P4 with CentOS 7
   2. Test setup
      a. 10 http clients in parallel. Each client which runs in other machine sends 500 images sequentially. 
         Throughput: 26 images/second  Average latency: 384 millisec/request

      b. Native torch program (yolov5_mar/simple_batch_test.py) without torchserve. Run two processes (batch_size: 10). Each one has own gpu and dataset (#images: 2500). 
         Throughput: 26 images/second.

Reference

  1. Torchserve
  2. Ultralytics/yolov5

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TorchServe for Yolov5

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