How to log Keras loss output to a file
When you run a Keras neural network model you might see something like this in the console:
Epoch 1/3
6/1000 [..............................] - ETA: 7994s - loss: 5111.7661
As time goes on the loss hopefully improves. I want to log these losses to a file over time so that I can learn from them. I have tried:
logging.basicConfig(filename='example.log', filemode='w', level=logging.DEBUG)
but this doesn't work. I am not sure what level of logging I need in this situation.
I have also tried using a callback like in:
def generate_train_batch():
while 1:
for i in xrange(0,dset_X.shape[0],3):
yield dset_X[i:i+3,:,:,:],dset_y[i:i+3,:,:]
class LossHistory(keras.callbacks.Callback):
def on_train_begin(self, logs={}):
self.losses = []
def on_batch_end(self, batch, logs={}):
self.losses.append(logs.get('loss'))
logloss=LossHistory()
colorize.fit_generator(generate_train_batch(),samples_per_epoch=1000,nb_epoch=3,callbacks=['logloss'])
but obviously this isn't writing to a file. Whatever the method, through a callback or the logging module or anything else, I would love to hear your solutions for logging loss of a keras neural network to a file. Thanks!
You can use CSVLogger callback.
as example:
from keras.callbacks import CSVLogger
csv_logger = CSVLogger('log.csv', append=True, separator=';')
model.fit(X_train, Y_train, callbacks=[csv_logger])
Look at: Keras Callbacks
There is a simple solution to your problem. Every time any of the fit
methods are used - as a result the special callback called History Callback is returned. It has a field history
which is a dictionary of all metrics registered after every epoch. So to get list of loss function values after every epoch you can easly do:
history_callback = model.fit(params...)
loss_history = history_callback.history["loss"]
It's easy to save such list to a file (e.g. by converting it to numpy
array and using savetxt
method).
UPDATE:
Try:
import numpy
numpy_loss_history = numpy.array(loss_history)
numpy.savetxt("loss_history.txt", numpy_loss_history, delimiter=",")
UPDATE 2:
The solution to the problem of recording a loss after every batch is written in Keras Callbacks Documentation in a Create a Callback paragraph.
Old question, but here goes. Keras history output perfectly matches pandas DataSet input.
If you want the entire history to csv in one line:
pandas.DataFrame(model.fit(...).history).to_csv("history.csv")
Cheers
You can redirect the sys.stdout object to a file before the model.fit method and reassign it to the standard console after model.fit method as follows:
import sys
oldStdout = sys.stdout
file = open('logFile', 'w')
sys.stdout = file
model.fit(Xtrain, Ytrain)
sys.stdout = oldStdout
So In TensorFlow 2.0, it is quite easy to get Loss and Accuracy of each epoch because it returns a History object. Its History.history attribute is a record of training loss values and metrics values at successive epochs, as well as validation loss values and validation metrics values
If you have validation Data
History = model.fit(trainX,trainY,validation_data = (testX,testY),batch_size= 100, epochs = epochs,verbose = 1)
train_loss = History.history['loss']
val_loss = History.history['val_loss']
acc = History.history['accuracy']
val_acc = History.history['val_accuracy']
If you don't have validation Data
History = model.fit(trainX,trainY,batch_size= 100, epochs = epochs,verbose = 1)
train_loss = History.history['loss']
acc = History.history['accuracy']
Then to save list data into text file use the below code
import numpy as np
train_loss = np.array(loss_history)
np.savetxt("train_loss.txt", train_loss, delimiter=",")