I want to run a Python script that also uses Tensorflow on a server. When I ran it with no session configuration, the process allocated all of GPU memory, preventing any other process to access to GPU.
The server specs are the following:
- CPU: 2x email@example.com GHz,
- RAM: 256GB,
- Disks: 2x 240GB SSD, 6x 4TB@7200RPM,
- GPU: 2x Nvidia Titan X.
This server is shared among other colleagues, so I am not really allowed to allocate all of the GPU memory.
On the website of Tensorflow, I found out these instructions to set a threshold to the used GPU memory.
config = tf.ConfigProto() config.gpu_options.per_process_gpu_memory_fraction = 0.4 session = tf.Session(config=config, ...)
I have two questions regarding these: 1. If the allocated GPU memory is not enough, will the process automatically use the CPU instead, or will it crash ? 2. What happens if a process wants to use the GPU but the GPU is already fully allocated ?