-
This work is based on https://github.com/CardLin/SFEGO_PyOpenCL
-
Now, I write a Server and Client that can runs on different GPU Server
-
Require GPU on Server to execute OpenCL Kernel Code
-
Recommend to use NVIDIA GPU with 1GB+ VRAM (VRAM usage is depend on Image Size)
-
AMD Integrated GPU and Intel Integrated GPU can also run this project
-
Although It can also run OpenCL on CPU mode but even the Intel Integrated GPU is faster than high-end CPU
-
Modify PLATFORMS = [(0,0,4),(0,1,8)] in Server.py which is (Platform_ID, Device_ID, Worker_Count)
-
I have two AMD GPU on this server. [(0,0,4),(0,1,8)] means run 4 thread on (Platform_ID=0, Device_ID=0) and 8 thread on (Platform_ID=0, Device_ID=1)
-
python Server.py
-
Modify ServerList = [ ("127.0.0.1", 8888, 12), ("192.168.1.33", 8888, 8) ] in Client.py which is ((IP, port, ExecuteCount))
-
ExecuteCount is concurrent thread that how many socket connect to specific Server, you can set this number as Worker_Count on server
-
Client.py support send image to different server to increase throughput
-
Modify IN_Folder for read image and OUT_Folder for save Spatial Frame
-
python Client.py