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Now we will create the final training and test sets.
For creating the final training set train_set
,
we batch the reviews
then we convert them to short sequences of words using the preprocess()
function
then encode these words using a simple encode_words()
function that uses the table
we just built and finally prefetch the next batch.
Let us test the model(after training) on 1000 samples of the test data as it takes a lot of time to test on the whole test set. So we shall create the final test set on 1000 samples as follows.
For creating the final test set test_set
,
we create a batch of 1000 test samples
then we convert them to short sequences of words using the preprocess()
function
then encode these words using a simple encode_words()
function that uses the table
we just built.
Note:
dataset.repeat().batch(32)
repeatedly creates the batches of 32 samples in the dataset.
dataset.repeat().batch(32).map(preprocess)
applies the function preprocess
on every batch.
dataset.map(encode_words).prefetch(1)
applies the function encode_words
to the data samples and paralelly fetches the next batch.
Define the encode_words()
function to encode the words of train data using the lookup table table
.
def encode_words(X_batch, y_batch):
return table.lookup(X_batch), y_batch
Apply the function preprocess
on every batch of data with 32 samples repeatedly on the train data datasets["train"]
.
train_set = datasets["train"].repeat().batch(32).map(<< your code comes here >>)
Apply the function encode_words
to the train_set
and parallelly fetch the next batch.
train_set = train_set.map(<< your code comes here >>).prefetch(1)
Similarly, apply the function preprocess
on the test data datasets["test"]
.
test_set = datasets["test"].batch(1000).map(<< your code comes here >>)
Apply the function encode_words
to the test_set
.
test_set = test_set.map(<< your code comes here >>)
Let us see how the first data sample of the thus obtained train_set
looks like:
for X_batch, y_batch in train_set.take(1):
print(X_batch)
print(y_batch)
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