TensorFlow: Difference between revisions

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parser = argparse.ArgumentParser(description='cifar10 classification models, tensorflow MultiWorkerMirrored test')
parser = argparse.ArgumentParser(description='cifar10 classification models, tensorflow MultiWorkerMirrored test')
parser.add_argument('--lr', default=0.1, help='')
parser.add_argument('--lr', default=0.001, help='')
parser.add_argument('--batch_size', type=int, default=256, help='')
parser.add_argument('--batch_size', type=int, default=256, help='')



Revision as of 14:22, 23 February 2022

Other languages:

TensorFlow is "an open-source software library for Machine Intelligence".

If you are porting a TensorFlow program to a Compute Canada cluster, you should follow our tutorial on the subject.

Installing TensorFlow

These instructions install TensorFlow in 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 a TensorFlow wheel we will use the pip command and install it into a Python virtual environment.

Load modules required by TensorFlow. In some cases, other modules may be required (e.g. CUDA).

[name@server ~]$ module load python/3


Create a new Python virtual environment.

[name@server ~]$ virtualenv --no-download tensorflow


Activate your newly created Python virtual environment.

[name@server ~]$ source tensorflow/bin/activate


Install TensorFlow in your newly created virtual environment using the following command.

(tensorflow) [name@server ~]$ pip install --no-index tensorflow==2.7

Load modules required by TensorFlow. TF 1.x requires StdEnv/2018.

Note: TF 1.x is not available on Narval, since StdEnv/2018 is not available on this cluster.

[name@server ~]$ module load StdEnv/2018 python/3


Create a new Python virtual environment.

[name@server ~]$ virtualenv --no-download tensorflow


Activate your newly created Python virtual environment.

[name@server ~]$ source tensorflow/bin/activate


Install TensorFlow in your newly created virtual environment using one of the commands below, depending on whether you need to use a GPU.

Do not install the tensorflow package (without the _cpu or _gpu suffixes) as it has compatibility issues with other libraries.

CPU-only

(tensorflow) [name@server ~]$ pip install --no-index tensorflow_cpu==1.15.0


GPU

(tensorflow) [name@server ~]$ pip install --no-index tensorflow_gpu==1.15.0


R package

To use TensorFlow in R, you will need to first follow the preceding instructions on creating a virtual environment and installing TensorFlow in it. Once this is done, follow these instructions.

Load the required modules.

[name@server ~]$ module load gcc r

Activate your Python virtual environment.

[name@server ~]$ source tensorflow/bin/activate

Launch R.

(tensorflow)_[name@server ~]$ R

In R, install package devtools, then tensorflow:

install.packages('devtools', repos='https://cloud.r-project.org')
devtools::install_github('rstudio/tensorflow')

You are then good to go. Do not call install_tensorflow() in R, as TensorFlow has already been installed in your virtual environment with pip. To use the TensorFlow installed in your virtual environment, enter the following commands in R after the environment has been activated.

library(tensorflow)
use_virtualenv(Sys.getenv('VIRTUAL_ENV'))

Submitting a TensorFlow job with a GPU

Once you have the above setup completed you can submit a TensorFlow job.

[name@server ~]$ sbatch tensorflow-test.sh

The job submission script contains

File : tensorflow-test.sh

#!/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 
source tensorflow/bin/activate
python ./tensorflow-test.py


while the Python script has the form

File : tensorflow-test.py

import tensorflow as tf
node1 = tf.constant(3.0)
node2 = tf.constant(4.0)
print(node1, node2)
print(node1 + node2)


File : tensorflow-test.py

import tensorflow as tf
node1 = tf.constant(3.0)
node2 = tf.constant(4.0)
print(node1, node2)
sess = tf.Session()
print(sess.run(node1 + node2))


Once the 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 (the logged messages from TensorFlow are only examples, expect different messages and more messages):

File : cdr116-122907.out

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)
tf.Tensor(3.0, shape=(), dtype=float32) tf.Tensor(4.0, shape=(), dtype=float32)
tf.Tensor(7.0, shape=(), dtype=float32)


File : cdr116-122907.out

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)
7.0



TensorFlow can run on all GPU node types. Cedar's GPU large 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.

Monitoring

It is possible to connect to the node running a job and execute processes. This can be used to monitor resources used by TensorFlow and to visualize the progress of the training. See Attaching to a running job for examples.

TensorBoard

TensorFlow comes with a suite of visualization tools called TensorBoard. TensorBoard operates by reading TensorFlow events and model files. To know how to create these files, read TensorBoard tutorial on summaries.

TensorBoard requires too much processing power to be run on a login node. Users are strongly encouraged to execute it in the same job as the Tensorflow process. To do so, launch TensorBoard in the background by calling it before your python script, and appending an ampersand (&) to the call:

# Your SBATCH arguments here

tensorboard --logdir=/tmp/your_log_dir --host 0.0.0.0 --load_fast false &
python train.py  # example

Once the job is running, to access TensorBoard with a web browser, you need to create a connection between your computer and the compute node running TensorFlow and TensorBoard. To do this you first need the hostname of the compute node running the Tensorboard server. Show the list of your jobs using the command sq; find the job, and note the value in the "NODELIST" column (this is the hostname).

To create the connection, use the following command on your local computer:

[name@my_computer ~]$ ssh -N -f -L localhost:6006:computenode:6006 userid@cluster.computecanada.ca


Replace computenode with the node hostname you retrieved from the preceding step, userid by your Compute Canada username, cluster by the cluster hostname (i.e.: beluga, cedar, graham, etc.). If port 6006 was already in use, tensorboard will be using another one (e.g. 6007, 6008...).

Once the connection is created, go to http://localhost:6006.

TensorFlow with Multi-GPUs

TensorFlow 1.x

TensorFlow provides different methods of managing variables when training models on multiple GPUs. "Parameter Server" and "Replicated" are the most two common methods.

  • In this section, TensorFlow Benchmarks code will be used as an example to explain the different methods. Users can reference the TensorFlow Benchmarks code to implement their own.

Parameter Server

Variables are stored on a parameter server that holds the master copy of the variable. In distributed training, the parameter servers are separate processes in the different devices. For each step, each tower gets a copy of the variables from the parameter server, and sends its gradients to the param server.

Parameters can be stored in CPU:

python tf_cnn_benchmarks.py --variable_update=parameter_server --local_parameter_device=cpu

or GPU:

python tf_cnn_benchmarks.py --variable_update=parameter_server --local_parameter_device=gpu

Replicated

With this method, each GPU has its own copy of the variables. To apply gradients, an all_reduce algorithm or or regular cross-device aggregation is used to replicate the combined gradients to all towers (depending on the all_reduce_spec parameter's setting).

All reduce method can be default:

python tf_cnn_benchmarks.py --variable_update=replicated

Xring --- use one global ring reduction for all tensors:

python tf_cnn_benchmarks.py --variable_update=replicated --all_reduce_spec=xring

Pscpu --- use CPU at worker 0 to reduce all tensors:

python tf_cnn_benchmarks.py --variable_update=replicated --all_reduce_spec=pscpu

NCCL --- use NCCL to locally reduce all tensors:

python tf_cnn_benchmarks.py --variable_update=replicated --all_reduce_spec=nccl

Different variable managing methods perform differently with different models. Users are highly recommended to test their own models with all methods on different types of GPU node.

Benchmarks

This section will give ResNet-50 and VGG-16 benchmarking results on both Graham and Cedar with single and multiple GPUs using different methods for managing variables. TensorFlow v1.5 (built with CUDA 9 and cuDNN 7) is used. The benchmark can be found on github at TensorFlow Benchmarks.

  • ResNet-50

Batch size is 32 per GPU. Data parallelism is used. (Results in "images per second")

Node type 1 GPU Number of GPUs ps,cpu ps, gpu replicated replicated, xring replicated, pscpu replicated, nccl
Graham GPU node 171.23 2 93.31 324.04 318.33 316.01 109.82 315.99
Cedar GPU Base 172.99 4 662.65 595.43 616.02 490.03 645.04 608.95
Cedar GPU Large 205.71 4 673.47 721.98 754.35 574.91 664.72 692.25
  • VGG-16

Batch size is 32 per GPU. Data parallelism is used. (Results in "images per second")

Node type 1 GPU Number of GPUs ps,cpu ps, gpu replicated replicated, xring replicated, pscpu replicated, nccl
Graham GPU node 115.89 2 91.29 194.46 194.43 203.83 132.19 219.72
Cedar GPU Base 114.77 4 232.85 280.69 274.41 341.29 330.04 388.53
Cedar GPU Large 137.16 4 175.20 379.80 336.72 417.46 225.37 490.52

TensorFlow 2.x

Much like TensorFlow 1.x, TensorFlow 2.x offers a number of different strategies to make use of multiple GPUs through the high-level API tf.distribute. In the following sections, we provide code examples of each strategy using Keras for simplicity. For more details, please refer to the official TensorFlow documentation.

Mirrored Strategy

Single Node
File : tensorflow-singleworker.sh

#!/bin/bash
#SBATCH --nodes 1
#SBATCH --gres=gpu:4

#SBATCH --mem=8G      
#SBATCH --time=0-00:30
#SBATCH --output=%N-%j.out

module load python/3
virtualenv --no-download $SLURM_TMPDIR/env
source $SLURM_TMPDIR/env/bin/activate
pip install --no-index tensorflow

export NCCL_BLOCKING_WAIT=1  #Set this environment variable if you wish to use the NCCL backend for inter-GPU communication.

srun python tensorflow-singleworker.py


The Python script tensorflow-singleworker.py has the form:

File : tensorflow-singleworker.py

import tensorflow as tf
import numpy as np

import argparse


parser = argparse.ArgumentParser(description='cifar10 classification models, tensorflow MirroredStrategy test')
parser.add_argument('--lr', default=0.001, help='')
parser.add_argument('--batch_size', type=int, default=256, help='')

args = parser.parse_args()

strategy = tf.distribute.MirroredStrategy()

with strategy.scope():

    model = tf.keras.Sequential()

    model.add(tf.keras.layers.Conv2D(32, (3, 3), padding='same',
                 input_shape=(32,32,3)))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.Conv2D(32, (3, 3)))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.MaxPooling2D(pool_size=(2, 2)))
    model.add(tf.keras.layers.Dropout(0.25))

    model.add(tf.keras.layers.Conv2D(64, (3, 3), padding='same'))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.Conv2D(64, (3, 3)))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.MaxPooling2D(pool_size=(2, 2)))
    model.add(tf.keras.layers.Dropout(0.25))

    model.add(tf.keras.layers.Flatten())
    model.add(tf.keras.layers.Dense(512))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.Dropout(0.5))
    model.add(tf.keras.layers.Dense(10))

    model.compile(loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
         optimizer=tf.keras.optimizers.SGD(learning_rate=args.lr),metrics=['accuracy'])

### This next line will attempt to download the CIFAR10 dataset from the internet if you don't already have it stored in ~/.keras/datasets. 
### Run this line on a login node prior to submitting your job, or manually download the data from 
### https://www.cs.toronto.edu/~kriz/cifar-10-python.tar.gz, rename to "cifar-10-batches-py.tar.gz" and place it under ~/.keras/datasets

(x_train, y_train),_ = tf.keras.datasets.cifar10.load_data()

dataset = tf.data.Dataset.from_tensor_slices((x_train, y_train)).batch(args.batch_size)

model.fit(dataset, epochs=2)


Multiple Nodes

The syntax to use multiple GPUs distributed across multiple nodes is very similar to the single node case, the most notable difference being the use of MultiWorkerMirroredStrategy(). Here, we use SlurmClusterResolver() to tell TensorFlow to acquire all the necessary job information from SLURM, instead of manually assigning master and worker nodes, for example. We also need to add CommunicationImplementation.NCCL to the distribution strategy to specify that we want to use Nvidia's NCCL backend for inter-GPU communications. This was not necessary in the single-node case, as NCCL is the default backend with MirroredStrategy().


File : tensorflow-multiworker.sh

#!/bin/bash
#SBATCH --nodes 2              # Request 2 nodes so all resources are in two nodes.
#SBATCH --gres=gpu:2          # Request 2 GPU "generic resources”. You will get 2 per node.

#SBATCH --tasks-per-node=2   # Request 1 process per GPU. You will get 1 CPU per process by default. Request more CPUs with the "cpus-per-task" parameter if your input pipeline can handle parallel data-loading/data-transforms

#SBATCH --mem=8G      
#SBATCH --time=0-00:30
#SBATCH --output=%N-%j.out


module load python/3
virtualenv --no-download $SLURM_TMPDIR/env
source $SLURM_TMPDIR/env/bin/activate
pip install --no-index tensorflow

export NCCL_BLOCKING_WAIT=1  #Set this environment variable if you wish to use the NCCL backend for inter-GPU communication.

srun python tensorflow-multiworker.py


The Python script tensorflow-multiworker.py has the form:

File : tensorflow-multiworker.py

import tensorflow as tf
import numpy as np

import argparse


parser = argparse.ArgumentParser(description='cifar10 classification models, tensorflow MultiWorkerMirrored test')
parser.add_argument('--lr', default=0.001, help='')
parser.add_argument('--batch_size', type=int, default=256, help='')

args = parser.parse_args()

cluster_config = tf.distribute.cluster_resolver.SlurmClusterResolver()
comm_options = tf.distribute.experimental.CommunicationOptions(implementation=tf.distribute.experimental.CommunicationImplementation.NCCL)

strategy = tf.distribute.MultiWorkerMirroredStrategy(cluster_resolver=cluster_config, communication_options=comm_options)

with strategy.scope():

    model = tf.keras.Sequential()

    model.add(tf.keras.layers.Conv2D(32, (3, 3), padding='same',
                 input_shape=(32,32,3)))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.Conv2D(32, (3, 3)))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.MaxPooling2D(pool_size=(2, 2)))
    model.add(tf.keras.layers.Dropout(0.25))

    model.add(tf.keras.layers.Conv2D(64, (3, 3), padding='same'))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.Conv2D(64, (3, 3)))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.MaxPooling2D(pool_size=(2, 2)))
    model.add(tf.keras.layers.Dropout(0.25))

    model.add(tf.keras.layers.Flatten())
    model.add(tf.keras.layers.Dense(512))
    model.add(tf.keras.layers.Activation('relu'))
    model.add(tf.keras.layers.Dropout(0.5))
    model.add(tf.keras.layers.Dense(10))

    model.compile(loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
         optimizer=tf.keras.optimizers.SGD(learning_rate=args.lr),metrics=['accuracy'])

### This next line will attempt to download the CIFAR10 dataset from the internet if you don't already have it stored in ~/.keras/datasets. 
### Run this line on a login node prior to submitting your job, or manually download the data from 
### https://www.cs.toronto.edu/~kriz/cifar-10-python.tar.gz, rename to "cifar-10-batches-py.tar.gz" and place it under ~/.keras/datasets

(x_train, y_train),_ = tf.keras.datasets.cifar10.load_data()

dataset = tf.data.Dataset.from_tensor_slices((x_train, y_train)).batch(args.batch_size)

model.fit(dataset, epochs=2)


Horovod

Horovod is a distributed deep learning training framework for TensorFlow, Keras, PyTorch, and Apache MXNet. The following is the same tutorial from above re-implemented using Horovod:


File : tensorflow-horovod.sh

#!/bin/bash
#SBATCH --nodes 2              # Request 2 nodes so all resources are in two nodes.
#SBATCH --gres=gpu:2          # Request 2 GPU "generic resources”. You will get 2 per node.

#SBATCH --tasks-per-node=2   # Request 1 process per GPU. You will get 1 CPU per process by default. Request more CPUs with the "cpus-per-task" parameter if your input pipeline can handle parallel data-loading/data-transforms

#SBATCH --mem=8G      
#SBATCH --time=0-00:30
#SBATCH --output=%N-%j.out


module load python/3.8
virtualenv --no-download $SLURM_TMPDIR/env
source $SLURM_TMPDIR/env/bin/activate
pip install --no-index tensorflow==2.5.0 horovod

export NCCL_BLOCKING_WAIT=1  #Set this environment variable if you wish to use the NCCL backend for inter-GPU communication.

srun python tensorflow-horovod.py



File : tensorflow-horovod.py

import tensorflow as tf
import numpy as np
import horovod.tensorflow.keras as hvd

import argparse


parser = argparse.ArgumentParser(description='cifar10 classification models, tensorflow horovod test')
parser.add_argument('--lr', default=0.1, help='')
parser.add_argument('--batch_size', type=int, default=256, help='')

args = parser.parse_args()

hvd.init()

gpus = tf.config.experimental.list_physical_devices('GPU')

tf.config.experimental.set_visible_devices(gpus[hvd.local_rank()], 'GPU')

model = tf.keras.Sequential()

model.add(tf.keras.layers.Conv2D(32, (3, 3), padding='same',
                 input_shape=(32,32,3)))
model.add(tf.keras.layers.Activation('relu'))
model.add(tf.keras.layers.Conv2D(32, (3, 3)))
model.add(tf.keras.layers.Activation('relu'))
model.add(tf.keras.layers.MaxPooling2D(pool_size=(2, 2)))
model.add(tf.keras.layers.Dropout(0.25))

model.add(tf.keras.layers.Conv2D(64, (3, 3), padding='same'))
model.add(tf.keras.layers.Activation('relu'))
model.add(tf.keras.layers.Conv2D(64, (3, 3)))
model.add(tf.keras.layers.Activation('relu'))
model.add(tf.keras.layers.MaxPooling2D(pool_size=(2, 2)))
model.add(tf.keras.layers.Dropout(0.25))

model.add(tf.keras.layers.Flatten())
model.add(tf.keras.layers.Dense(512))
model.add(tf.keras.layers.Activation('relu'))
model.add(tf.keras.layers.Dropout(0.5))
model.add(tf.keras.layers.Dense(10))

optimizer = tf.keras.optimizers.SGD(learning_rate=args.lr)

optimizer = hvd.DistributedOptimizer(optimizer)

model.compile(loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
         optimizer=optimizer,metrics=['accuracy'])

callbacks = [
    hvd.callbacks.BroadcastGlobalVariablesCallback(0),
]

### This next line will attempt to download the CIFAR10 dataset from the internet if you don't already have it stored in ~/.keras/datasets. 
### Run this line on a login node prior to submitting your job, or manually download the data from 
### https://www.cs.toronto.edu/~kriz/cifar-10-python.tar.gz, rename to "cifar-10-batches-py.tar.gz" and place it under ~/.keras/datasets

(x_train, y_train),_ = tf.keras.datasets.cifar10.load_data()

dataset = tf.data.Dataset.from_tensor_slices((x_train, y_train)).batch(args.batch_size)

model.fit(dataset, epochs=2, callbacks=callbacks, verbose=2) # verbose=2 to avoid printing a progress bar to *.out files.


Creating Model Checkpoints

Whether or not you expect your code to run for long time periods, it is a good habit to create Checkpoints during training. A checkpoint is a snapshot of your model at a given point during the training process (after a certain number of iterations or after a number of epochs) that is saved to disk and can be loaded at a later time. It is a handy way of breaking jobs that are expected to run for a very long time, into multiple shorter jobs that may get allocated on the cluster more quickly. It is also a good way of avoiding losing progress in case of unexpected errors in your code or node failures.

With Keras

To create a checkpoint when training with keras, we recommend using the callbacks parameter of the model.fit() method. The following example shows how to instruct TensorFlow to create a checkpoint at the end of every training epoch:

callbacks = [tf.keras.callbacks.ModelCheckpoint(filepath="./ckpt",save_freq="epoch")] # Make sure the path where you want to create the checkpoint exists

model.fit(dataset, epochs=10 , callbacks=callbacks)

For more information, please refer to the official TensorFlow documentation.

With a Custom Training Loop

Please refer to the official TensorFlow documentation.

Custom TensorFlow Operators

In your research, you may come across code that leverages custom operators that are not part of the core tensorflow distribution, or you might want to create your own. In both cases, you will need to compile your custom operators before submitting your job. To ensure your code will run correctly, follow the steps below.

First, create a Python virtual environment and install a tensorflow version compatible with your custom operators. Then go to the directory containing the operators source code and follow the next steps according to the version you installed:

TensorFlow <= 1.4.x

If your custom operator is GPU-enabled:

[name@server ~]$ module load cuda/<version>
[name@server ~]$ nvcc <operator>.cu -o <operator>.cu.o -c -O2 -DGOOGLE_CUDA=1 -x cu -Xcompiler -fPI
[name@server ~]$ g++ -std=c++11 <operator>.cpp <operator>.cu.o -o <operator>.so -shared -fPIC -I /<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include -I/<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include/external/nsync/public -I /usr/local/cuda-<version>/include -lcudart -L /usr/local/cuda-<version>/lib64/


If your custom operator is not GPU-enabled:

[name@server ~]$ g++ -std=c++11 <operator>.cpp -o <operator>.so -shared -fPIC -I /<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include -I/<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include/external/nsync/public


TensorFlow > 1.4.x

If your custom operator is GPU-enabled:

[name@server ~]$ module load cuda/<version>
[name@server ~]$ nvcc <operator>.cu -o <operator>.cu.o -c -O2 -DGOOGLE_CUDA=1 -x cu -Xcompiler -fPI
[name@server ~]$ g++ -std=c++11 <operator>.cpp <operator>.cu.o -o <operator>.so -shared -fPIC -I /<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include -I /usr/local/cuda-<version>/include -I /<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include/external/nsync/public -lcudart -L /usr/local/cuda-<version>/lib64/ -L /<path to python virtual env>/lib/python<version>/site-packages/tensorflow -ltensorflow_framework


If your custom operator is not GPU-enabled:

[name@server ~]$ g++ -std=c++11 <operator>.cpp -o <operator>.so -shared -fPIC -I /<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include -I /<path to python virtual env>/lib/python<version>/site-packages/tensorflow/include/external/nsync/public -L /<path to python virtual env>/lib/python<version>/site-packages/tensorflow -ltensorflow_framework


Troubleshooting

scikit image

If you are using the scikit-image library, you may get the following error: OMP: Error #15: Initializing libiomp5.so, but found libiomp5.so already initialized.

This is because the tensorflow library tries to load a bundled version of OMP which conflicts with the system version. The workaround is as follows:

(tf_skimage_venv) name@server $ cd tf_skimage_venv
(tf_skimage_venv) name@server $ export LIBIOMP_PATH=$(strace python -c 'from skimage.transform import AffineTransform' 2>&1 | grep -v ENOENT | grep -ohP -e '(?<=")[^"]+libiomp5.so(?=")' | xargs realpath)
(tf_skimage_venv) name@server $ find -path '*_solib_local*' -name libiomp5.so -exec ln -sf $LIBIOMP_PATH {} \;

This will patch the tensorflow library installation to use the systemwide libiomp5.so.

libcupti.so

Some tracing features of Tensorflow require libcupti.so to be available, and might give the following error if they are not:

I tensorflow/stream_executor/dso_loader.cc:142] Couldn't open CUDA library libcupti.so.9.0. LD_LIBRARY_PATH: /usr/local/cuda-9.0/lib64

The solution is to run the following before executing your script:

[name@server ~]$ module load cuda/9.0.xxx
[name@server ~]$ export LD_LIBRARY_PATH=$LD_LIBRARY_PATH:$CUDA_HOME/extras/CUPTI/lib64/

Where xxx is the appropriate CUDA version, which can be found using module av cuda

libiomp5.so invalid ELF header

Sometimes the libiomp5.so shared object file will be erroneously installed as a text file. This might result in errors like the following:

/home/username/venv/lib/python3.6/site-packages/tensorflow/python/../../_solib_local/_U@mkl_Ulinux_S_S_Cmkl_Ulibs_Ulinux___Uexternal_Smkl_Ulinux_Slib/libiomp5.so: invalid ELF header

The workaround for such errors is to access the directory mentioned in the error (i.e. [...]/_U@mkl_Ulinux_S_S_Cmkl_Ulibs_Ulinux___Uexternal_Smkl_Ulinux_Slib) and execute the following command:

Question.png
[name@server ...Ulinux_Slib] $ ln -sf $(cat libiomp5.so) libiomp5.so

This will replace the text file with the correct symbolic link.

Controlling the number of CPUs and threads

TensorFlow 1.x

The config parameters device_count, intra_op_parallelism_threads and inter_op_parallelism_threads influence the number of threads used by TensorFlow. You can set those parameters when instantiating a session:

tf.Session(config=tf.ConfigProto(device_count={'CPU': num_cpus}, intra_op_parallelism_threads=num_intra_threads, inter_op_parallelism_threads=num_inter_threads))

For example, if you want to run multiple instances of TF in parallel on a single node, you might want to reduce those values, potentially down to 1.

TensorFlow 2.x

Sessions are not used anymore in TF 2.x, so here is the approach for configuring threads:

tf.config.threading.set_inter_op_parallelism_threads(num_threads)
tf.config.threading.set_intra_op_parallelism_threads(num_threads)

As of TF 2.1, there does not seem to be a way to set a CPU count.