English | [简体中文](README_CN.md) # YOLOv5 Quantized Model Deployment FastDeploy supports the deployment of quantized models and provides a one-click model quantization tool. Users can use the one-click model quantization tool to quantize and deploy the models themselves or download the quantized models provided by FastDeploy directly for deployment. ## FastDeploy One-Click Model Quantization Tool FastDeploy provides a one-click quantization tool that allows users to quantize a model simply with a configuration file. For a detailed tutorial, please refer to: [One-Click Model Quantization Tool](../../../../../tools/common_tools/auto_compression/) ## Download Quantized YOLOv5s Model Users can also directly download the quantized models in the table below for deployment. | Model | Inference Backend | Hardware | FP32 Inference Time Delay | INT8  Inference Time Delay | Acceleration ratio | FP32 mAP | INT8 mAP | Method | | ----------------------------------------------------------------------- | ----------------- | -------- | ------------------------- | -------------------------- | ------------------ | -------- | -------- | ------------------------------- | | [YOLOv5s](https://bj.bcebos.com/paddlehub/fastdeploy/yolov5s_quant.tar) | TensorRT | GPU | 8.79 | 5.17 | 1.70 | 37.6 | 36.6 | Quantized distillation training | | [YOLOv5s](https://bj.bcebos.com/paddlehub/fastdeploy/yolov5s_quant.tar) | Paddle Inference | CPU | 217.05 | 133.31 | 1.63 | 37.6 | 36.8 | Quantized distillation training | The data in the above table shows the end-to-end inference performance of FastDeploy deployment before and after model quantization. - The test images are from COCO val2017. - The inference time delay is the inference latency on different Runtime in milliseconds. - CPU is Intel(R) Xeon(R) Gold 6271C, GPU is Tesla T4, TensorRT version 8.4.15, and the fixed CPU thread is 1 for all tests. ## More Detailed Tutorials - [Python Deployment](python) - [C++ Deployment](cpp)