TensorFlow: Difference between revisions
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TensorFlow can run on all GPU node types. Cedar's large GPU node type, which is equipped with 4 x P100-PCIE-16GB with GPUDirect P2P enabled between each pair, is highly recommended for large scale Deep Learning or Machine Learning research. See [[Using GPUs with SLURM]] for more information. | TensorFlow can run on all GPU node types. Cedar's large GPU node type, which is equipped with 4 x P100-PCIE-16GB with GPUDirect P2P enabled between each pair, is highly recommended for large scale Deep Learning or Machine Learning research. See [[Using GPUs with SLURM]] for more information. | ||
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Revision as of 14:15, 25 October 2017
Installing Tensorflow
These instructions install Tensorflow into your home directory using Compute Canada's pre-built Python wheels. Custom Python wheels are stored in /cvmfs/soft.computecanada.ca/custom/python/wheelhouse/
. To install Tensorflow's wheel we will use the pip
command and install it into a Python virtual environments. The below instructions install for Python 3.5.2 but you can also install for Python 3.5.Y or 2.7.X by loading a different Python module.
Load modules required by Tensorflow:
[name@server ~]$ module load python/3.5.2
Create a new python virtual environment:
[name@server ~]$ virtualenv tensorflow
Activate your newly created python virtual environment:
[name@server ~]$ source tensorflow/bin/activate
Install TensorFlow into your newly created virtual environment using the command from either one of the two following subsections.
CPU-only
(tensorflow) [name@server $] pip install tensorflow-cpu
GPU
(tensorflow) [name@server $] pip install tensorflow-gpu
Submitting a TensorFlow job with a GPU
Once you have the above setup completed you can submit a Tensorflow job as
[name@server ~]$ sbatch tensorflow-test.sh
The job submission script has the contents
#!/bin/bash
#SBATCH --gres=gpu:1 # request GPU "generic resource"
#SBATCH --cpus-per-task=6 # maximum CPU cores per GPU request: 6 on Cedar, 16 on Graham.
#SBATCH --mem=32000M # memory per node
#SBATCH --time=0-03:00 # time (DD-HH:MM)
#SBATCH --output=%N-%j.out # %N for node name, %j for jobID
module load cuda cudnn python/3.5.2
source tensorflow/bin/activate
python ./tensorflow-test.py
while the Python script has the form,
import tensorflow as tf
node1 = tf.constant(3.0, dtype=tf.float32)
node2 = tf.constant(4.0) # also tf.float32 implicitly
print(node1, node2)
sess = tf.Session()
print(sess.run([node1, node2]))
Once the above job has completed (should take less than a minute) you should see an output file called something like cdr116-122907.out with contents similar to the following example,
2017-07-10 12:35:19.489458: I tensorflow/core/common_runtime/gpu/gpu_device.cc:940] Found device 0 with properties:
name: Tesla P100-PCIE-12GB
major: 6 minor: 0 memoryClockRate (GHz) 1.3285
pciBusID 0000:82:00.0
Total memory: 11.91GiB
Free memory: 11.63GiB
2017-07-10 12:35:19.491097: I tensorflow/core/common_runtime/gpu/gpu_device.cc:961] DMA: 0
2017-07-10 12:35:19.491156: I tensorflow/core/common_runtime/gpu/gpu_device.cc:971] 0: Y
2017-07-10 12:35:19.520737: I tensorflow/core/common_runtime/gpu/gpu_device.cc:1030] Creating TensorFlow device (/gpu:0) -> (device: 0, name: Tesla P100-PCIE-12GB, pci bus id: 0000:82:00.0)
Tensor("Const:0", shape=(), dtype=float32) Tensor("Const_1:0", shape=(), dtype=float32)
[3.0, 4.0]
TensorFlow can run on all GPU node types. Cedar's large GPU node type, which is equipped with 4 x P100-PCIE-16GB with GPUDirect P2P enabled between each pair, is highly recommended for large scale Deep Learning or Machine Learning research. See Using GPUs with SLURM for more information.