AI Benchmark Results¶
Here we show the data and performance of GPUs by AI-Benchmark on ROScube series.
GPU Burn in / Test by AI-Benchmark.¶
AI Benchmark Alpha is an open source python library for evaluating AI performance of various hardware platforms, including CPUs, GPUs and TPUs.
It can be downloaded to any system running Windows, Linux or macOS.
In total, AI Benchmark consists of 42 tests and 19 sections provided below:
MobileNet-V2 [classification]
Inception-V3 [classification]
Inception-V4 [classification]
Inception-ResNet-V2 [classification]
ResNet-V2-50 [classification]
ResNet-V2-152 [classification]
VGG-16 [classification]
SRCNN 9-5-5 [image-to-image mapping]
VGG-19 [image-to-image mapping]
ResNet-SRGAN [image-to-image mapping]
ResNet-DPED [image-to-image mapping]
U-Net [image-to-image mapping]
Nvidia-SPADE [image-to-image mapping]
ICNet [image segmentation]
PSPNet [image segmentation]
DeepLab [image segmentation]
Pixel-RNN [inpainting]
LSTM [sentence sentiment analysis]
GNMT [text translation]
GPU Score¶
Here, we provided some test data of GPUs which we actual tested on ROScube series.
Device |
GPU |
Inference Score |
Training Score |
AI Score |
---|---|---|---|---|
ROScube-I-E |
NVIDIA RTX A2000 12G |
8530 |
8915 |
17445 |
ROScube-I-E |
NVIDIA GTX 1050 2G |
3200 |
X |
X |
ROScube-X-580 |
Jetson AGX Xavier |
2142 |
2192 |
4334 |
ROScube-Pico-NX |
Jetson Xavier NX |
709 |
787 |
1496 |
Note
GPU with at least 2GB of RAM is required for running inference tests / 4GB of RAM for training tests.
The benchmark is compatible with both TensorFlow 1.x and 2.x versions.