# Anakin GPU Benchmark ## Machine: > CPU: `12-core Intel(R) Xeon(R) CPU E5-2620 v2 @2.10GHz` > GPU: `Tesla P4` > cuDNN: `v7` ## Counterpart of anakin : The counterpart of **`Anakin`** is the acknowledged high performance inference engine **`NVIDIA TensorRT 3`** , The models which TensorRT 3 doesn't support we use the custom plugins to support. ## Benchmark Model The following convolutional neural networks are tested with both `Anakin` and `TenorRT3`. You can use pretrained caffe model or the model trained by youself. > Please note that you should transform caffe model or others into anakin model with the help of [`external converter ->`](../docs/Manual/Converter_en.md) - [Vgg16](#1) *caffe model can be found [here->](https://gist.github.com/jimmie33/27c1c0a7736ba66c2395)* - [Yolo](#2) *caffe model can be found [here->](https://github.com/hojel/caffe-yolo-model)* - [Resnet50](#3) *caffe model can be found [here->](https://github.com/KaimingHe/deep-residual-networks#models)* - [Resnet101](#4) *caffe model can be found [here->](https://github.com/KaimingHe/deep-residual-networks#models)* - [Mobilenet v1](#5) *caffe model can be found [here->](https://github.com/shicai/MobileNet-Caffe)* - [Mobilenet v2](#6) *caffe model can be found [here->](https://github.com/shicai/MobileNet-Caffe)* - [RNN](#7) *not support yet* We tested them on single-GPU with single-thread. ### VGG16 - Latency (`ms`) of different batch | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 8.8690 | 8.2815 | | 2 | 15.5344 | 13.9116 | | 4 | 26.6000 | 21.8747 | | 8 | 49.8279 | 40.4076 | | 32 | 188.6270 | 163.7660 | - GPU Memory Used (`MB`) | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 963 | 997 | | 2 | 965 | 1039 | | 4 | 991 | 1115 | | 8 | 1067 | 1269 | | 32 | 1715 | 2193 | ### Yolo - Latency (`ms`) of different batch | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 16.4596| 15.2124 | | 2 | 26.6347| 25.0442 | | 4 | 43.3695| 43.5017 | | 8 | 80.9139 | 80.9880 | | 32 | 293.8080| 310.8810 | - GPU Memory Used (`MB`) | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 1569 | 1775 | | 2 | 1649 | 1815 | | 4 | 1709 | 1887 | | 8 | 1731 | 2031 | | 32 | 2253 | 2907 | ### Resnet50 - Latency (`ms`) of different batch | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 4.2459 | 4.1061 | | 2 | 6.2627 | 6.5159 | | 4 | 10.1277 | 11.3327 | | 8 | 17.8209 | 20.6680 | | 32 | 65.8582 | 77.8858 | - GPU Memory Used (`MB`) | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 531 | 503 | | 2 | 543 | 517 | | 4 | 583 | 541 | | 8 | 611 | 589 | | 32 | 809 | 879 | ### Resnet101 - Latency (`ms`) of different batch | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 7.5562 | 7.0837 | | 2 | 11.6023 | 11.4079 | | 4 | 18.3650 | 20.0493 | | 8 | 32.7632 | 36.0648 | | 32 | 123.2550 | 135.4880 | - GPU Memory Used (`MB)` | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 701 | 683 | | 2 | 713 | 697 | | 4 | 793 | 721 | | 8 | 819 | 769 | | 32 | 1043 | 1059 | ### MobileNet V1 - Latency (`ms`) of different batch | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 45.5156 | 1.3947 | | 2 | 46.5585 | 2.5483 | | 4 | 48.4242 | 4.3404 | | 8 | 52.7957 | 8.1513 | | 32 | 83.2519 | 31.3178 | - GPU Memory Used (`MB`) | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 329 | 283 | | 2 | 345 | 289 | | 4 | 371 | 299 | | 8 | 393 | 319 | | 32 | 531 | 433 | ### MobileNet V2 - Latency (`ms`) of different batch | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 65.6861 | 2.9842 | | 2 | 66.6814 | 4.7472 | | 4 | 69.7114 | 7.4163 | | 8 | 76.1092 | 12.8779 | | 32 | 124.9810 | 47.2142 | - GPU Memory Used (`MB`) | BatchSize | TensorRT | Anakin | | --- | --- | --- | | 1 | 341 | 293 | | 2 | 353 | 301 | | 4 | 385 | 319 | | 8 | 421 | 351 | | 32 | 637 | 551 | ## How to run those Benchmark models? > 1. At first, you should parse the caffe model with [`external converter`](https://github.com/PaddlePaddle/Anakin/blob/b95f31e19993a192e7428b4fcf852b9fe9860e5f/docs/Manual/Converter_en.md). > 2. Switch to *source_root/benchmark/CNN* directory. Use 'mkdir ./models' to create ./models and put anakin models into this file. > 3. Use command 'sh run.sh', we will create files in logs to save model log with different batch size. Finally, model latency summary will be displayed on the screen. > 4. If you want to get more detailed information with op time, you can modify CMakeLists.txt with setting `ENABLE_OP_TIMER` to `YES`, then recompile and run. You will find detailed information in model log file.