This is an old revision of the document!
Table of Contents
GPU at ÚFAL
This page summarizes which UFAL servers have some GPU card, and suggests basic diagnostic commands, paths to installed tools, etc., simply everything necessary at the very beginning of using GPUs for experiments.
Servers with GPU units
machine | GPU; Capability [cc] | cores | GPU RAM | Cuda | Theano | TensorFlow | Comment |
titan-gpu | GeForce GTX Titan Z; cc3.5 | 2 | 6 GB each core | V7.5.17 | works | works | |
twister1 | …has burnt | ||||||
twister2 | GeForce GTX 570; cc2.0 | 1 | 1 GB | V7.5.17 | 0.7.0 | no, needs cc3.0+ | |
kronos-dev | Tesla K40c; cc3.5 | 1 | 12 GB | V7.5.17 | 0.6 | 0.8 works | |
kronos-dev | Tesla K40c; cc? | 1 | - | - | - | - | missing power cable |
now unused | Quadro K2000; cc3.0 | 1 | 2 GB | worked with V6.5.12 | worked with 0.6.0 | had ImportError: libcudart.so.7.5 (should work though) | |
victoria | GeForce GT 630; cc3.0 | 1 | 2 GB | V7.5 | 0.7.0 | ? | Ondrej Bojar's desktop machine |
tap | GeForce GT 8400GS; cc 1.1?? | ? | ? | pending | ? | ? | Ales/Tom's desktop machine |
Summary of future plans:
- Current Troja servers won't get any GPUs (the only option would be Quadro K1200 4GB, horribly cost-inefficient)
- The old Quadro K2000 we have is a much more low end piece, so we can't test is in Troja.
- There is MetaCentrum which also has GPUs, so testing can be done there.
- It is impossible (wasteful in terms of space and forbidden by a dean regulation) to put non-rack machines to our servers rooms. So we won't be buying GeForce GTX 1080 (~20000CZK, out of stock now), for a non-rack machine since we most likely don't have any available.
- Yes, there are grant applications under review which include rack machines with GPUs, e.g. 5×2 or something like that; more will be known in 2017.
Performance tests:
Installed toolkits
This should mention where each interesting toolkit lives (on a particular machine).
TensorFlow
This script installs TensorFlow 0.7.1 (and all other dependencies we need for Multimodal Translation) into `tf' and `tf-gpu' virtual environments. The GPU environment can be loaded by calling
source tf-gpu/bin/activate-gpu
OP: I created script which install Tensorflow 0.8 and test it if it uses GPU. TF is installed into `user` or `global` installation either for `python3.4` or `python2.7`
Select GPU device
Use variable CUDA_VISIBLE_DEVICES to constrain tensorflow to compute only on the selected one. For the use of first GPU use:
export CUDA_VISIBLE_DEVICES=0
Basic commands
lspci # is any such hardware there? nvidia-smi # more details, incl. running processes on the GPU # nvidia-* are typically located in /usr/bin watch nvidia-smi # For monitoring GPU activity in a separate terminal (thanks to Jindrich Libovicky for this!) nvcc --version # this should tell CUDA version # nvcc is typically installed in /usr/local/cuda/bin/ theano-test # dela to vubec neco uzitecneho? :-) # theano-* are typically located in /usr/local/bin/ /usr/local/cuda/samples/1_Utilities/deviceQuery/deviceQuery # shows CUDA capability etc.
Links
GPU specs for those GPUs we have: