Error when profiling keras models - tensorflow

I want to profile my Keras model according to this comment on github. I use the tf.Keras API with Tensorflow version: 1.9.0-rc2 and Keras version: 2.1.6-tf.
run_options = tf.RunOptions(trace_level=tf.RunOptions.FULL_TRACE)
run_metadata = tf.RunMetadata()
training_set = load_datasets(...)
model.compile(loss=helpers.mean_categorical_crossentropy,optimizer='adam',options=run_options,run_metadata=run_metadata)
model.fit(training_set.make_one_shot_iterator(), steps_per_epoch=steps_per_epoch_train,epochs=num_epochs, verbose=2)
trace = timeline.Timeline(step_stats=run_metadata.step_stats)
with open('timeline.ctf.json', 'w') as f:
f.write(trace.generate_chrome_trace_format())
Error
('Some keys in session_kwargs are not supported at this time: %s',
dict_keys(['options', 'run_metadata']))
In another github post someone gives this example and somehow it runs without errors. I however get the same error as above.
import keras
from keras.layers.core import Dense
from keras.models import Sequential
import tensorflow as tf
from tensorflow.python.client import timeline
import numpy as np
x = np.random.randn(10000, 2)
y = (x[:, 0] * x[:, 1]) > 0 # xor
run_options = tf.RunOptions(trace_level=tf.RunOptions.FULL_TRACE)
run_metadata = tf.RunMetadata()
model = Sequential()
model.add(Dense(units=64, activation='relu', input_dim=2))
model.add(Dense(units=2, activation='softmax'))
model.compile(loss='categorical_crossentropy',
optimizer='sgd',
options=run_options,
run_metadata=run_metadata)
model.fit(x, keras.utils.to_categorical(y), epochs=1)
trace = timeline.Timeline(step_stats=run_metadata.step_stats)
with open('timeline.ctf.json', 'w') as f:
f.write(trace.generate_chrome_trace_format())
I also found this issue on github which suggests that profiling with Keras models isn't implemented yet. I am confused.
Does anybody know how to fix it?

There's a pull request that fixes this: https://github.com/tensorflow/tensorflow/pull/19932
It's not merged yet to master, but I got it to work by merging it locally, or simply applying the changes manually to the installed tensorflow library

Related

degraded accuracy performance with overfitting when downgrading from tensorflow 2.3.1 to tensorflow 1.14 or 1.15 on multiclass categorization

I made a script in tensorflow 2.x but I had to downconvert it to tensorflow 1.x (tested in 1.14 and 1.15). However, the tf1 version performs very differently (10% accuracy lower on the test set). See also the plot for train and validation performance (diagram is attached below).
Looking at the operations needed for the migration from tf1 to tf2 it seems that only the Adam learning rate may be a problem but I'm defining it explicitly tensorflow migration
I've reproduced the same behavior both locally on GPU and CPU and on colab. The keras used was the one built-in in tensorflow (tf.keras). I've used the following functions (both for train,validation and test), using a sparse categorization (integers):
train_datagen = tf.keras.preprocessing.image.ImageDataGenerator(
horizontal_flip=horizontal_flip,
#rescale=None, #not needed for resnet50
preprocessing_function=None,
validation_split=None)
train_dataset = train_datagen.flow_from_directory(
directory=train_dir,
target_size=image_size,
class_mode='sparse',
batch_size=batch_size,
shuffle=True)
And the model is a simple resnet50 with a new layer on top:
IMG_SHAPE = img_size+(3,)
inputs = Input(shape=IMG_SHAPE, name='image_input',dtype = tf.uint8)
x = tf.cast(inputs, tf.float32)
# not working in this version of keras. inserted in imageGenerator
x = preprocess_input_resnet50(x)
base_model = tf.keras.applications.ResNet50(
include_top=False,
input_shape = IMG_SHAPE,
pooling=None,
weights='imagenet')
# Freeze the pretrained weights
base_model.trainable = False
x=base_model(x)
# Rebuild top
x = GlobalAveragePooling2D(data_format='channels_last',name="avg_pool")(x)
top_dropout_rate = 0.2
x = Dropout(top_dropout_rate, name="top_dropout")(x)
outputs = Dense(num_classes,activation="softmax", name="pred_out")(x)
model = Model(inputs=inputs, outputs=outputs,name="ResNet50_comp")
optimizer = tf.keras.optimizers.Adam(lr=learning_rate)
model.compile(optimizer=optimizer,
loss="sparse_categorical_crossentropy",
metrics=['accuracy'])
And then I'm calling the fit function:
history = model.fit_generator(train_dataset,
steps_per_epoch=n_train_batches,
validation_data=validation_dataset,
validation_steps=n_val_batches,
epochs=initial_epochs,
verbose=1,
callbacks=[stopping])
I've reproduced the same behavior for example with the following full script (applied to my dataset and changed to adam and removed intermediate final dense layer):
deep learning sandbox
The easiest way to replicate this behavior was to enable or disable the following line on a tf2 environment with the same script and add the following line to it. However, I've tested also on tf1 environments (1.14 and 1.15):
tf.compat.v1.disable_v2_behavior()
Sadly I cannot provide the dataset.
Update 26/11/2020
For full reproducibility I've obtained a similar behaviour by means of the food101 (101 categories) dataset enabling tf1 behaviour with 'tf.compat.v1.disable_v2_behavior()'. The following is the script executed with tensorflow-gpu 2.2.0:
#%% ref https://medium.com/deeplearningsandbox/how-to-use-transfer-learning-and-fine-tuning-in-keras-and-tensorflow-to-build-an-image-recognition-94b0b02444f2
import os
import sys
import glob
import argparse
import matplotlib.pyplot as plt
import tensorflow as tf
# enable and disable this to obtain tf1 behaviour
tf.compat.v1.disable_v2_behavior()
from tensorflow.keras import __version__
from tensorflow.keras.applications.resnet50 import ResNet50, preprocess_input
from tensorflow.keras.models import Model
from tensorflow.keras.layers import Dense, GlobalAveragePooling2D
from tensorflow.keras.optimizers import Adam
# since i'm using resnet50 weights from imagenet, i'm using food101 for
# similar but different categorization tasks
# pip install tensorflow-datasets if tensorflow_dataset not found
import tensorflow_datasets as tfds
(train_ds,validation_ds),info= tfds.load('food101', split=['train','validation'], shuffle_files=True, with_info=True)
assert isinstance(train_ds, tf.data.Dataset)
print(train_ds)
#%%
IM_WIDTH, IM_HEIGHT = 224, 224
NB_EPOCHS = 10
BAT_SIZE = 32
def get_nb_files(directory):
"""Get number of files by searching directory recursively"""
if not os.path.exists(directory):
return 0
cnt = 0
for r, dirs, files in os.walk(directory):
for dr in dirs:
cnt += len(glob.glob(os.path.join(r, dr + "/*")))
return cnt
def setup_to_transfer_learn(model, base_model):
"""Freeze all layers and compile the model"""
for layer in base_model.layers:
layer.trainable = False
model.compile(optimizer='rmsprop', loss='sparse_categorical_crossentropy', metrics=['accuracy'])
def add_new_last_layer(base_model, nb_classes):
"""Add last layer to the convnet
Args:
base_model: keras model excluding top
nb_classes: # of classes
Returns:
new keras model with last layer
"""
x = base_model.output
x = GlobalAveragePooling2D()(x)
#x = Dense(FC_SIZE, activation='relu')(x) #new FC layer, random init
predictions = Dense(nb_classes, activation='softmax')(x) #new softmax layer
model = Model(inputs=base_model.input, outputs=predictions)
return model
def train(nb_epoch, batch_size):
"""Use transfer learning and fine-tuning to train a network on a new dataset"""
#nb_train_samples = train_ds.cardinality().numpy()
nb_train_samples=info.splits['train'].num_examples
nb_classes = info.features['label'].num_classes
classes_names = info.features['label'].names
#nb_val_samples = validation_ds.cardinality().numpy()
nb_val_samples = info.splits['validation'].num_examples
#nb_epoch = int(args.nb_epoch)
#batch_size = int(args.batch_size)
def preprocess(features):
#print(features['image'], features['label'])
image = tf.image.resize(features['image'], [224,224])
#image = tf.divide(image, 255)
#print(image)
# data augmentation
image=tf.image.random_flip_left_right(image)
image = preprocess_input(image)
label = features['label']
# for categorical crossentropy
#label = tf.one_hot(label,101,axis=-1)
#return image, tf.cast(label, tf.float32)
return image, label
#pre-processing the dataset to fit a specific image size and 2D labelling
train_generator = train_ds.map(preprocess).batch(batch_size).repeat()
validation_generator = validation_ds.map(preprocess).batch(batch_size).repeat()
#train_generator=train_ds
#validation_generator=validation_ds
#fig = tfds.show_examples(validation_generator, info)
# setup model
base_model = ResNet50(weights='imagenet', include_top=False) #include_top=False excludes final FC layer
model = add_new_last_layer(base_model, nb_classes)
# transfer learning
setup_to_transfer_learn(model, base_model)
history = model.fit(
train_generator,
epochs=nb_epoch,
steps_per_epoch=nb_train_samples//BAT_SIZE,
validation_data=validation_generator,
validation_steps=nb_val_samples//BAT_SIZE)
#class_weight='auto')
#execute
history = train(nb_epoch=NB_EPOCHS, batch_size=BAT_SIZE)
And the performance on food101 dataset:
update 27/11/2020
It's possible to see the discrepancy also in the way smaller oxford_flowers102 dataset:
(train_ds,validation_ds,test_ds),info= tfds.load('oxford_flowers102', split=['train','validation','test'], shuffle_files=True, with_info=True)
Nb: the above plot shows confidences given by running the same training multiple times and evaluatind mean and std to check for the effects on random weights initialization and data augmentation.
Moreover I've tried some hyperparameter tuning on tf2 resulting in the following picture:
changing optimizer (adam and rmsprop)
not applying horizontal flipping aumgentation
deactivating keras resnet50 preprocess_input
Thanks in advance for every suggestion. Here are the accuracy and validation performance on tf1 and tf2 on my dataset:
Update 14/12/2020
I'm sharing the colab for reproducibility on oxford_flowers at the clic of a button:
colab script
I came across something similar, when doing the opposite migration (from TF1+Keras to TF2).
Running this code below:
# using TF2
import numpy as np
from tensorflow.keras.applications.resnet50 import ResNet50
fe = ResNet50(include_top=False, pooling="avg")
out = fe.predict(np.ones((1,224,224,3))).flatten()
sum(out)
>>> 212.3205274187726
# using TF1+Keras
import numpy as np
from keras.applications.resnet50 import ResNet50
fe = ResNet50(include_top=False, pooling="avg")
out = fe.predict(np.ones((1,224,224,3))).flatten()
sum(out)
>>> 187.23898954353717
you can see the same model from the same library on different versions does not return the same value (using sum as a quick check-up). I found the answer to this mysterious behavior in this other SO answer: ResNet model in keras and tf.keras give different output for the same image
Another recommendation I'd give you is, try using pooling from inside applications.resnet50.ResNet50 class, instead of the additional layer in your function, for simplicity, and to remove possible problem-generators :)

Keras vs. TensorFlow code comparison sources

This isn't really a question that's code-specific, but I haven't been able to find any answers or resources.
I'm currently trying to teach myself some "pure" TensorFlow rather than just using Keras, and I felt that it would be very helpful if there were some sources where they have TensorFlow code and the equivalent Keras code side-by-side for comparison.
Unfortunately, most of the results I find on the Internet talk about performance-wise differences or have very simple comparison examples (e.g. "and so this is why Keras is much simpler to use"). I'm not so much interested in those details as much as I am in the code itself.
Does anybody know if there are any resources out there that could help with this?
Here you have two models, in Tensorflow and in Keras, that are correspondent:
import tensorflow as tf
import numpy as np
import pandas as pd
from keras.datasets import mnist
(x_train, y_train), (x_test, y_test) = mnist.load_data()
Tensorflow
X = tf.placeholder(dtype=tf.float64)
Y = tf.placeholder(dtype=tf.float64)
num_hidden=128
# Build a hidden layer
W_hidden = tf.Variable(np.random.randn(784, num_hidden))
b_hidden = tf.Variable(np.random.randn(num_hidden))
p_hidden = tf.nn.sigmoid( tf.add(tf.matmul(X, W_hidden), b_hidden) )
# Build another hidden layer
W_hidden2 = tf.Variable(np.random.randn(num_hidden, num_hidden))
b_hidden2 = tf.Variable(np.random.randn(num_hidden))
p_hidden2 = tf.nn.sigmoid( tf.add(tf.matmul(p_hidden, W_hidden2), b_hidden2) )
# Build the output layer
W_output = tf.Variable(np.random.randn(num_hidden, 10))
b_output = tf.Variable(np.random.randn(10))
p_output = tf.nn.softmax( tf.add(tf.matmul(p_hidden2, W_output), b_output) )
loss = tf.reduce_mean(tf.losses.mean_squared_error(
labels=Y,predictions=p_output))
accuracy=1-tf.sqrt(loss)
minimization_op = tf.train.AdamOptimizer(learning_rate=0.01).minimize(loss)
feed_dict = {
X: x_train.reshape(-1,784),
Y: pd.get_dummies(y_train)
}
with tf.Session() as session:
session.run(tf.global_variables_initializer())
for step in range(10000):
J_value = session.run(loss, feed_dict)
acc = session.run(accuracy, feed_dict)
if step % 100 == 0:
print("Step:", step, " Loss:", J_value," Accuracy:", acc)
session.run(minimization_op, feed_dict)
pred00 = session.run([p_output], feed_dict={X: x_test.reshape(-1,784)})
Keras
import tensorflow as tf
from tensorflow.keras.layers import Input, Dense
from keras.models import Model
l = tf.keras.layers
model = tf.keras.Sequential([
l.Flatten(input_shape=(784,)),
l.Dense(128, activation='relu'),
l.Dense(128, activation='relu'),
l.Dense(10, activation='softmax')
])
model.compile(loss='categorical_crossentropy', optimizer='adam',metrics = ['accuracy'])
model.summary()
model.fit(x_train.reshape(-1,784),pd.get_dummies(y_train),nb_epoch=15,batch_size=128,verbose=1)
You can take a look to this toy example, but it may be too simple.

Tensorflow-Keras reproducibility problem on Google Colab

I have a simple code to run on Google Colab (I use CPU mode):
import numpy as np
import pandas as pd
## LOAD DATASET
datatrain = pd.read_csv("gdrive/My Drive/iris_train.csv").values
xtrain = datatrain[:,:-1]
ytrain = datatrain[:,-1]
datatest = pd.read_csv("gdrive/My Drive/iris_test.csv").values
xtest = datatest[:,:-1]
ytest = datatest[:,-1]
import tensorflow as tf
from tensorflow.keras.layers import Dense, Activation
from tensorflow.keras.utils import to_categorical
## SET ALL SEED
import os
os.environ['PYTHONHASHSEED']=str(66)
import random
random.seed(66)
np.random.seed(66)
tf.set_random_seed(66)
from tensorflow.keras import backend as K
session_conf = tf.ConfigProto(intra_op_parallelism_threads=1, inter_op_parallelism_threads=1)
sess = tf.Session(graph=tf.get_default_graph(), config=session_conf)
K.set_session(sess)
## MAIN PROGRAM
ycat = to_categorical(ytrain)
# build model
model = tf.keras.Sequential()
model.add(Dense(10, input_shape=(4,)))
model.add(Activation("sigmoid"))
model.add(Dense(3))
model.add(Activation("softmax"))
#choose optimizer and loss function
model.compile(loss='categorical_crossentropy', optimizer='sgd', metrics=['accuracy'])
# train
model.fit(xtrain, ycat, epochs=15, batch_size=32)
#get prediction
classes = model.predict_classes(xtest)
#get accuration
accuration = np.sum(classes == ytest)/len(ytest) * 100
I have read the setup to create a reproducibility code here Reproducible results using Keras with TensorFlow backend and I put all code in the same cell. But the result (e.g. the loss) is always different every time I run that cell (run the cell using shift + enter).
In my case, the result from the code above can be reproduced, if only:
I run using "runtime" > "restart and run all" or,
I put that code in a single file and run it using the command line (python3 file.py)
is there something I miss to make the result reproducible without restart the runtime?
You should also fix the seed for kernel_initializer in your Dense layers. So, your model will be like:
model = tf.keras.Sequential()
model.add(Dense(10, kernel_initializer=keras.initializers.glorot_uniform(seed=66), input_shape=(4,)))
model.add(Activation("sigmoid"))
model.add(Dense(3, kernel_initializer=keras.initializers.glorot_uniform(seed=66)))
model.add(Activation("softmax"))
I tried most of the solutions on the web and just the following codes worked for me :
seed=0
import os
os.environ['PYTHONHASHSEED'] = str(seed)
# For working on GPUs from "TensorFlow Determinism"
os.environ["TF_DETERMINISTIC_OPS"] = str(seed)
import numpy as np
np.random.seed(seed)
import random
random.seed(seed)
import tensorflow as tf
tf.random.set_seed(seed)
note that you should call this code before every run(at least for me)
if you want run your code on CPU:
seed=0
import os
os.environ['PYTHONHASHSEED'] = str(seed)
# For working on GPUs from "TensorFlow Determinism"
os.environ['CUDA_VISBLE_DEVICE'] = ''
import numpy as np
np.random.seed(seed)
import random
random.seed(seed)
import tensorflow as tf
tf.random.set_seed(seed)
I've tried to get Tensorflow 2.0 working reproducibly using Keras and Google Colab (CPU), with a version of the Iris dataset processing similar to that described above by #malioboro. This seems to work - might be useful:
# Install TensorFlow
try:
# %tensorflow_version only exists in Colab.
%tensorflow_version 2.x
except Exception:
pass
# Setup repro section from Keras FAQ with TF1 to TF2 adjustments
import numpy as np
import tensorflow as tf
import random as rn
# The below is necessary for starting Numpy generated random numbers
# in a well-defined initial state.
np.random.seed(42)
# The below is necessary for starting core Python generated random numbers
# in a well-defined state.
rn.seed(12345)
# Force TensorFlow to use single thread.
# Multiple threads are a potential source of non-reproducible results.
# For further details, see: https://stackoverflow.com/questions/42022950/
session_conf = tf.compat.v1.ConfigProto(intra_op_parallelism_threads=1,
inter_op_parallelism_threads=1)
# The below tf.set_random_seed() will make random number generation
# in the TensorFlow backend have a well-defined initial state.
# For further details, see:
# https://www.tensorflow.org/api_docs/python/tf/set_random_seed
tf.compat.v1.set_random_seed(1234)
sess = tf.compat.v1.Session(graph=tf.compat.v1.get_default_graph(), config=session_conf)
tf.compat.v1.keras.backend.set_session(sess)
# Rest of code follows ...
# Some adopted from: https://janakiev.com/notebooks/keras-iris/
# Some adopted from the question.
#
# Load Data
from sklearn.datasets import load_iris
from sklearn.model_selection import train_test_split
from sklearn.preprocessing import OneHotEncoder, StandardScaler
iris = load_iris()
X = iris['data']
y = iris['target']
names = iris['target_names']
feature_names = iris['feature_names']
# One hot encoding
enc = OneHotEncoder()
Y = enc.fit_transform(y[:, np.newaxis]).toarray()
# Scale data to have mean 0 and variance 1
# which is importance for convergence of the neural network
scaler = StandardScaler()
X_scaled = scaler.fit_transform(X)
# Split the data set into training and testing
X_train, X_test, Y_train, Y_test = train_test_split(
X_scaled, Y, test_size=0.5, random_state=2)
n_features = X.shape[1]
n_classes = Y.shape[1]
## MAIN PROGRAM
from tensorflow.keras.layers import Dense, Activation
# build model
model = tf.keras.Sequential()
model.add(Dense(10, input_shape=(4,)))
model.add(Activation("sigmoid"))
model.add(Dense(3))
model.add(Activation("softmax"))
#choose optimizer and loss function
model.compile(loss='categorical_crossentropy', optimizer='sgd', metrics=['accuracy'])
# train
model.fit(X_train, Y_train, epochs=20, batch_size=32)
#get prediction
classes = model.predict_classes(X_test)

keras import error when kernel has been killed in spyder

I just started using tensorflow and keras in spyder. I was trying to run a tensor flow example: https://www.tensorflow.org/tutorials/keras/basic_classification. but when I kill the console and run my code again keras module seems not found and shows the error below
ImportError: cannot import name 'keras'
I have installed both keras and tensorflow on my anaconda. I am running this using windows 10 on spyder. the other answer that I have seen on stackoverflow is to install keras which I have done. I have tried to install and reinstall it, it works but after I killed the kernel the error appears again.
I have tried to remove and reinstall tensorflow and keras, it works but then the same problem keep occuring.
import tensorflow as tf
from tensorflow import keras
import numpy as np
import matplotlib.pyplot as plt
fashion_mnist = keras.datasets.fashion_mnist
(train_images, train_labels), (test_images, test_labels) = fashion_mnist.load_data()
class_names = ['T-shirt/top', 'Trouser', 'Pullover', 'Dress', 'Coat',
'Sandal', 'Shirt', 'Sneaker', 'Bag', 'Ankle boot']
model = keras.Sequential([
keras.layers.Flatten(input_shape=(28, 28)),
keras.layers.Dense(300, activation=tf.nn.relu),
keras.layers.Dense(10, activation=tf.nn.softmax)
])
model.compile(optimizer='adam',
loss='sparse_categorical_crossentropy',
metrics=['accuracy'])
model.fit(train_images, train_labels, epochs=10)
test_loss, test_acc = model.evaluate(test_images, test_labels)
print('Test accuracy:', test_acc)
#-----------------MAKING PREDICTIONS
predictions = model.predict(test_images)
predictions[0]
I expect the console will find keras module everytime I kill the kernel or console. my model also got stuck at accuracy of 0.1, this might have no connection to the error but the example shows an accuracy above 0.8
I am sorry, I named my script tensorflow.py

How ensure that Keras is using GPU with tensorflow backend?

I've created virtual notebook on Paperspace cloud infrastructure with Tensorflow GPU P5000 virtual instance on the backend.
When i am starting to train my network, it woks 2x SLOWER than on my MacBook Pro with pure CPU runtime engine.
How could i ensure that Keras NN is using GPU instead of CPU during training process?
Please find my code below:
from tensorflow.contrib.keras.api.keras.models import Sequential
from tensorflow.contrib.keras.api.keras.layers import Dense
from tensorflow.contrib.keras.api.keras.layers import Dropout
from tensorflow.contrib.keras.api.keras import utils as np_utils
import numpy as np
import pandas as pd
# Read data
pddata= pd.read_csv('data/data.csv', delimiter=';')
# Helper function (prepare & test data)
def split_to_train_test (data):
trainLenght = len(data) - len(data)//10
trainData = data.loc[:trainLenght].sample(frac=1).reset_index(drop=True)
testData = data.loc[trainLenght+1:].sample(frac=1).reset_index(drop=True)
trainLabels = trainData.loc[:,"Label"].as_matrix()
testLabels = testData.loc[:,"Label"].as_matrix()
trainData = trainData.loc[:,"Feature 0":].as_matrix()
testData = testData.loc[:,"Feature 0":].as_matrix()
return (trainData, testData, trainLabels, testLabels)
# prepare train & test data
(X_train, X_test, y_train, y_test) = split_to_train_test (pddata)
# Convert labels to one-hot notation
Y_train = np_utils.to_categorical(y_train, 3)
Y_test = np_utils.to_categorical(y_test, 3)
# Define model in Keras
def create_model(init):
model = Sequential()
model.add(Dense(101, input_shape=(101,), kernel_initializer=init, activation='tanh'))
model.add(Dense(101, kernel_initializer=init, activation='tanh'))
model.add(Dense(101, kernel_initializer=init, activation='tanh'))
model.add(Dense(101, kernel_initializer=init, activation='tanh'))
model.add(Dense(3, kernel_initializer=init, activation='softmax'))
return model
# Train the model
uniform_model = create_model("glorot_normal")
uniform_model.compile(loss='categorical_crossentropy', optimizer='sgd', metrics=['accuracy'])
uniform_model.fit(X_train, Y_train, batch_size=1, epochs=300, verbose=1, validation_data=(X_test, Y_test))
You need to run your network with log_device_placement = True set in the TensorFlow session (the line before the last in the sample code below.) Interestingly enough, if you set that in a session, it will still apply when Keras does the fitting. So this code below (tested) does output the placement for each tensor. Please note, I've short-circuited the data reading because your data wan't available, so I'm just running the network with random data. The code this way is self-contained and runnable by anyone. Another note: if you run this from Jupyter Notebook, the output of the log_device_placement will go to the terminal where Jupyter Notebook was started, not the notebook cell's output.
from tensorflow.contrib.keras.api.keras.models import Sequential
from tensorflow.contrib.keras.api.keras.layers import Dense
from tensorflow.contrib.keras.api.keras.layers import Dropout
from tensorflow.contrib.keras.api.keras import utils as np_utils
import numpy as np
import pandas as pd
import tensorflow as tf
# Read data
#pddata=pd.read_csv('data/data.csv', delimiter=';')
pddata = "foobar"
# Helper function (prepare & test data)
def split_to_train_test (data):
return (
np.random.uniform( size = ( 100, 101 ) ),
np.random.uniform( size = ( 100, 101 ) ),
np.random.randint( 0, size = ( 100 ), high = 3 ),
np.random.randint( 0, size = ( 100 ), high = 3 )
)
trainLenght = len(data) - len(data)//10
trainData = data.loc[:trainLenght].sample(frac=1).reset_index(drop=True)
testData = data.loc[trainLenght+1:].sample(frac=1).reset_index(drop=True)
trainLabels = trainData.loc[:,"Label"].as_matrix()
testLabels = testData.loc[:,"Label"].as_matrix()
trainData = trainData.loc[:,"Feature 0":].as_matrix()
testData = testData.loc[:,"Feature 0":].as_matrix()
return (trainData, testData, trainLabels, testLabels)
# prepare train & test data
(X_train, X_test, y_train, y_test) = split_to_train_test (pddata)
# Convert labels to one-hot notation
Y_train = np_utils.to_categorical(y_train, 3)
Y_test = np_utils.to_categorical(y_test, 3)
# Define model in Keras
def create_model(init):
model = Sequential()
model.add(Dense(101, input_shape=(101,), kernel_initializer=init, activation='tanh'))
model.add(Dense(101, kernel_initializer=init, activation='tanh'))
model.add(Dense(101, kernel_initializer=init, activation='tanh'))
model.add(Dense(101, kernel_initializer=init, activation='tanh'))
model.add(Dense(3, kernel_initializer=init, activation='softmax'))
return model
# Train the model
uniform_model = create_model("glorot_normal")
uniform_model.compile(loss='categorical_crossentropy', optimizer='sgd', metrics=['accuracy'])
with tf.Session( config = tf.ConfigProto( log_device_placement = True ) ):
uniform_model.fit(X_train, Y_train, batch_size=1, epochs=300, verbose=1, validation_data=(X_test, Y_test))
Terminal output (partial, it was way too long):
...
VarIsInitializedOp_13: (VarIsInitializedOp): /job:localhost/replica:0/task:0/device:GPU:0
2018-04-21 21:54:33.485870: I tensorflow/core/common_runtime/placer.cc:884]
VarIsInitializedOp_13: (VarIsInitializedOp)/job:localhost/replica:0/task:0/device:GPU:0
training/SGD/mul_18/ReadVariableOp: (ReadVariableOp): /job:localhost/replica:0/task:0/device:GPU:0
2018-04-21 21:54:33.485895: I tensorflow/core/common_runtime/placer.cc:884]
training/SGD/mul_18/ReadVariableOp: (ReadVariableOp)/job:localhost/replica:0/task:0/device:GPU:0
training/SGD/Variable_9/Read/ReadVariableOp: (ReadVariableOp): /job:localhost/replica:0/task:0/device:GPU:0
2018-04-21 21:54:33.485903: I tensorflow/core/common_runtime/placer.cc:884]
training/SGD/Variable_9/Read/ReadVariableOp: (ReadVariableOp)/job:localhost/replica:0/task:0/device:GPU:0
...
Note the GPU:0 at the end of many lines.
Tensorflow manual's relevant page: Using GPU: Logging Device Placement.
Put this near the top of your jupyter notebook. Comment out what you don't need.
# confirm TensorFlow sees the GPU
from tensorflow.python.client import device_lib
assert 'GPU' in str(device_lib.list_local_devices())
# confirm Keras sees the GPU (for TensorFlow 1.X + Keras)
from keras import backend
assert len(backend.tensorflow_backend._get_available_gpus()) > 0
# confirm PyTorch sees the GPU
from torch import cuda
assert cuda.is_available()
assert cuda.device_count() > 0
print(cuda.get_device_name(cuda.current_device()))
NOTE: With the release of TensorFlow 2.0, Keras is now included as part of the TF API.
Originally answerwed here.
Considering keras is a built-in of tensorflow since version 2.0:
import tensorflow as tf
tf.test.is_built_with_cuda()
tf.test.is_gpu_available(cuda_only = True)
NOTE: the latter method may take several minutes to run.