TV Script Generation

In this project, you'll generate your own Simpsons TV scripts using RNNs. You'll be using part of the Simpsons dataset of scripts from 27 seasons. The Neural Network you'll build will generate a new TV script for a scene at Moe's Tavern.

Get the Data

The data is already provided for you. You'll be using a subset of the original dataset. It consists of only the scenes in Moe's Tavern. This doesn't include other versions of the tavern, like "Moe's Cavern", "Flaming Moe's", "Uncle Moe's Family Feed-Bag", etc..


In [1]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
import helper

data_dir = './data/simpsons/moes_tavern_lines.txt'
text = helper.load_data(data_dir)

# Ignore notice, since we don't use it for analysing the data
text = text[81:]

Explore the Data

Play around with view_sentence_range to view different parts of the data.


In [2]:
view_sentence_range = (0, 10)

"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
import numpy as np

print('Dataset Stats')
print('Roughly the number of unique words: {}'.format(len({word: None for word in text.split()})))
scenes = text.split('\n\n')
print('Number of scenes: {}'.format(len(scenes)))
sentence_count_scene = [scene.count('\n') for scene in scenes]
print('Average number of sentences in each scene: {}'.format(np.average(sentence_count_scene)))

sentences = [sentence for scene in scenes for sentence in scene.split('\n')]
print('Number of lines: {}'.format(len(sentences)))
word_count_sentence = [len(sentence.split()) for sentence in sentences]
print('Average number of words in each line: {}'.format(np.average(word_count_sentence)))

print()
print('The sentences {} to {}:'.format(*view_sentence_range))
print('\n'.join(text.split('\n')[view_sentence_range[0]:view_sentence_range[1]]))


Dataset Stats
Roughly the number of unique words: 11492
Number of scenes: 262
Average number of sentences in each scene: 15.248091603053435
Number of lines: 4257
Average number of words in each line: 11.50434578341555

The sentences 0 to 10:
Moe_Szyslak: (INTO PHONE) Moe's Tavern. Where the elite meet to drink.
Bart_Simpson: Eh, yeah, hello, is Mike there? Last name, Rotch.
Moe_Szyslak: (INTO PHONE) Hold on, I'll check. (TO BARFLIES) Mike Rotch. Mike Rotch. Hey, has anybody seen Mike Rotch, lately?
Moe_Szyslak: (INTO PHONE) Listen you little puke. One of these days I'm gonna catch you, and I'm gonna carve my name on your back with an ice pick.
Moe_Szyslak: What's the matter Homer? You're not your normal effervescent self.
Homer_Simpson: I got my problems, Moe. Give me another one.
Moe_Szyslak: Homer, hey, you should not drink to forget your problems.
Barney_Gumble: Yeah, you should only drink to enhance your social skills.


Implement Preprocessing Functions

The first thing to do to any dataset is preprocessing. Implement the following preprocessing functions below:

  • Lookup Table
  • Tokenize Punctuation

Lookup Table

To create a word embedding, you first need to transform the words to ids. In this function, create two dictionaries:

  • Dictionary to go from the words to an id, we'll call vocab_to_int
  • Dictionary to go from the id to word, we'll call int_to_vocab

Return these dictionaries in the following tuple (vocab_to_int, int_to_vocab)


In [3]:
import numpy as np
import problem_unittests as tests

def create_lookup_tables(text):
    """
    Create lookup tables for vocabulary
    :param text: The text of tv scripts split into words
    :return: A tuple of dicts (vocab_to_int, int_to_vocab)
    """

    vocab_to_int = {word:integer for integer,word in enumerate(set(text))}
    int_to_vocab = {integer:word for integer,word in enumerate(set(text))}
    
    return vocab_to_int, int_to_vocab


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_create_lookup_tables(create_lookup_tables)


Tests Passed

Tokenize Punctuation

We'll be splitting the script into a word array using spaces as delimiters. However, punctuations like periods and exclamation marks make it hard for the neural network to distinguish between the word "bye" and "bye!".

Implement the function token_lookup to return a dict that will be used to tokenize symbols like "!" into "||Exclamation_Mark||". Create a dictionary for the following symbols where the symbol is the key and value is the token:

  • Period ( . )
  • Comma ( , )
  • Quotation Mark ( " )
  • Semicolon ( ; )
  • Exclamation mark ( ! )
  • Question mark ( ? )
  • Left Parentheses ( ( )
  • Right Parentheses ( ) )
  • Dash ( -- )
  • Return ( \n )

This dictionary will be used to token the symbols and add the delimiter (space) around it. This separates the symbols as it's own word, making it easier for the neural network to predict on the next word. Make sure you don't use a token that could be confused as a word. Instead of using the token "dash", try using something like "||dash||".


In [4]:
def token_lookup():
    """
    Generate a dict to turn punctuation into a token.
    :return: Tokenize dictionary where the key is the punctuation and the value is the token
    """
    
    dictionary = {
        '.' : '||Period||',
        ',' : '||Comma||',
        '"' : '||Quotation_Mark||',
        ';' : '||Semicolon||',
        '!' : '||Exclamation_Mark||',
        '?' : '||Question_Mark||',
        '(' : '||Left_Parentheses||',
        ')' : '||Right_Parentheses||',
        '--': '||Dash||',
        '\n': '||Return||',
    }
    
    #print(dictionary)
    return dictionary

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_tokenize(token_lookup)


Tests Passed

Preprocess all the data and save it

Running the code cell below will preprocess all the data and save it to file.


In [5]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
# Preprocess Training, Validation, and Testing Data
helper.preprocess_and_save_data(data_dir, token_lookup, create_lookup_tables)

Check Point

This is your first checkpoint. If you ever decide to come back to this notebook or have to restart the notebook, you can start from here. The preprocessed data has been saved to disk.


In [6]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
import helper
import numpy as np
import problem_unittests as tests

int_text, vocab_to_int, int_to_vocab, token_dict = helper.load_preprocess()

Build the Neural Network

You'll build the components necessary to build a RNN by implementing the following functions below:

  • get_inputs
  • get_init_cell
  • get_embed
  • build_rnn
  • build_nn
  • get_batches

Check the Version of TensorFlow and Access to GPU


In [7]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
from distutils.version import LooseVersion
import warnings
import tensorflow as tf

# Check TensorFlow Version
assert LooseVersion(tf.__version__) >= LooseVersion('1.0'), 'Please use TensorFlow version 1.0 or newer'
print('TensorFlow Version: {}'.format(tf.__version__))

# Check for a GPU
if not tf.test.gpu_device_name():
    warnings.warn('No GPU found. Please use a GPU to train your neural network.')
else:
    print('Default GPU Device: {}'.format(tf.test.gpu_device_name()))


TensorFlow Version: 1.0.0
/opt/conda/lib/python3.6/site-packages/ipykernel_launcher.py:14: UserWarning: No GPU found. Please use a GPU to train your neural network.
  

Input

Implement the get_inputs() function to create TF Placeholders for the Neural Network. It should create the following placeholders:

  • Input text placeholder named "input" using the TF Placeholder name parameter.
  • Targets placeholder
  • Learning Rate placeholder

Return the placeholders in the following tuple (Input, Targets, LearningRate)


In [8]:
def get_inputs():
    """
    Create TF Placeholders for input, targets, and learning rate.
    :return: Tuple (input, targets, learning rate)
    """
    
    inputs = tf.placeholder(dtype=tf.int32, shape=[None, None], name='input')
    targets = tf.placeholder(dtype=tf.int32, shape=[None, None], name='targets')
    learningRate = tf.placeholder(dtype=tf.float32, shape=None, name='learning_rate')
    
    return inputs, targets, learningRate

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_get_inputs(get_inputs)


Tests Passed

Build RNN Cell and Initialize

Stack one or more BasicLSTMCells in a MultiRNNCell.

  • The Rnn size should be set using rnn_size
  • Initalize Cell State using the MultiRNNCell's zero_state() function
    • Apply the name "initial_state" to the initial state using tf.identity()

Return the cell and initial state in the following tuple (Cell, InitialState)


In [9]:
def get_init_cell(batch_size, rnn_size):
    """
    Create an RNN Cell and initialize it.
    :param batch_size: Size of batches
    :param rnn_size: Size of RNNs
    :return: Tuple (cell, initialize state)
    """
    
    cell = tf.contrib.rnn.BasicLSTMCell(rnn_size)
    cell = tf.contrib.rnn.MultiRNNCell([cell])

    initial_state = tf.identity(cell.zero_state(batch_size, tf.float32), name='initial_state')

    return cell, initial_state

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_get_init_cell(get_init_cell)


Tests Passed

Word Embedding

Apply embedding to input_data using TensorFlow. Return the embedded sequence.

From Skip-gram word2vec

Tensorflow provides a convenient function tf.nn.embedding_lookup that does this lookup for us. You pass in the embedding matrix and a tensor of integers, then it returns rows in the matrix corresponding to those integers. Below, set the number of embedding features you'll use (200 is a good start), create the embedding matrix variable, and use tf.nn.embedding_lookup to get the embedding tensors. For the embedding matrix, I suggest you initialize it with a uniform random numbers between -1 and 1 using tf.random_uniform.


In [10]:
def get_embed(input_data, vocab_size, embed_dim):
    """
    Create embedding for <input_data>.
    :param input_data: TF placeholder for text input.
    :param vocab_size: Number of words in vocabulary.
    :param embed_dim: Number of embedding dimensions
    :return: Embedded input.
    """
    
    embedding = tf.Variable(tf.random_uniform((vocab_size, embed_dim), -1, 1))
    embed = tf.nn.embedding_lookup(embedding, input_data)
    
    return embed


"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_get_embed(get_embed)


Tests Passed

Build RNN

You created a RNN Cell in the get_init_cell() function. Time to use the cell to create a RNN.

Return the outputs and final_state state in the following tuple (Outputs, FinalState)


In [11]:
def build_rnn(cell, inputs):
    """
    Create a RNN using a RNN Cell
    :param cell: RNN Cell
    :param inputs: Input text data
    :return: Tuple (Outputs, Final State)
    """
    
    outputs, final_state = tf.nn.dynamic_rnn(cell, inputs, dtype=tf.float32)
    final_state = tf.identity(final_state, name='final_state')
    
    return outputs, final_state

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_build_rnn(build_rnn)


Tests Passed

Build the Neural Network

Apply the functions you implemented above to:

  • Apply embedding to input_data using your get_embed(input_data, vocab_size, embed_dim) function.
  • Build RNN using cell and your build_rnn(cell, inputs) function.
  • Apply a fully connected layer with a linear activation and vocab_size as the number of outputs.

Return the logits and final state in the following tuple (Logits, FinalState)


In [12]:
def build_nn(cell, rnn_size, input_data, vocab_size, embed_dim):
    """
    Build part of the neural network
    :param cell: RNN cell
    :param rnn_size: Size of rnns
    :param input_data: Input data
    :param vocab_size: Vocabulary size
    :param embed_dim: Number of embedding dimensions
    :return: Tuple (Logits, FinalState)
    """
    
    embed = get_embed(input_data, vocab_size, rnn_size)
    outputs, final_state = build_rnn(cell, embed)
    logits = tf.contrib.layers.fully_connected(outputs, vocab_size, activation_fn=None)
    
    return logits, final_state

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_build_nn(build_nn)


Tests Passed

Batches

Implement get_batches to create batches of input and targets using int_text. The batches should be a Numpy array with the shape (number of batches, 2, batch size, sequence length). Each batch contains two elements:

  • The first element is a single batch of input with the shape [batch size, sequence length]
  • The second element is a single batch of targets with the shape [batch size, sequence length]

If you can't fill the last batch with enough data, drop the last batch.

For exmple, get_batches([1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 11, 12, 13, 14, 15, 16, 17, 18, 19, 20], 3, 2) would return a Numpy array of the following:

[
  # First Batch
  [
    # Batch of Input
    [[ 1  2], [ 7  8], [13 14]]
    # Batch of targets
    [[ 2  3], [ 8  9], [14 15]]
  ]

  # Second Batch
  [
    # Batch of Input
    [[ 3  4], [ 9 10], [15 16]]
    # Batch of targets
    [[ 4  5], [10 11], [16 17]]
  ]

  # Third Batch
  [
    # Batch of Input
    [[ 5  6], [11 12], [17 18]]
    # Batch of targets
    [[ 6  7], [12 13], [18  1]]
  ]
]

Notice that the last target value in the last batch is the first input value of the first batch. In this case, 1. This is a common technique used when creating sequence batches, although it is rather unintuitive.


In [13]:
def get_batches(int_text, batch_size, seq_length):
    """
    Return batches of input and target
    :param int_text: Text with the words replaced by their ids
    :param batch_size: The size of batch
    :param seq_length: The length of sequence
    :return: Batches as a Numpy array
    """

    n_batch = len(int_text) // (batch_size * seq_length)

    int_text_x = np.array(int_text[:batch_size * seq_length * n_batch])
    int_text_y = np.roll(int_text_x, -1)
    x_batches  = np.split(int_text_x.reshape(batch_size, -1), n_batch, 1)
    y_batches  = np.split(int_text_y.reshape(batch_size, -1), n_batch, 1)
    
    return np.array(list(zip(x_batches, y_batches)))

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_get_batches(get_batches)


Tests Passed

Neural Network Training

Hyperparameters

Tune the following parameters:

  • Set num_epochs to the number of epochs.
  • Set batch_size to the batch size.
  • Set rnn_size to the size of the RNNs.
  • Set embed_dim to the size of the embedding.
  • Set seq_length to the length of sequence.
  • Set learning_rate to the learning rate.
  • Set show_every_n_batches to the number of batches the neural network should print progress.

In [15]:
# Number of Epochs
num_epochs = 200

# Batch Size
batch_size = 128

# RNN Size
rnn_size = 256

# Embedding Dimension Size
embed_dim = 300

# Sequence Length
seq_length = 20

# Learning Rate
learning_rate = 0.01

# Show stats for every n number of batches
show_every_n_batches = 13

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
save_dir = './save'

Build the Graph

Build the graph using the neural network you implemented.


In [16]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
from tensorflow.contrib import seq2seq

train_graph = tf.Graph()
with train_graph.as_default():
    vocab_size = len(int_to_vocab)
    input_text, targets, lr = get_inputs()
    input_data_shape = tf.shape(input_text)
    cell, initial_state = get_init_cell(input_data_shape[0], rnn_size)
    logits, final_state = build_nn(cell, rnn_size, input_text, vocab_size, embed_dim)

    # Probabilities for generating words
    probs = tf.nn.softmax(logits, name='probs')

    # Loss function
    cost = seq2seq.sequence_loss(
        logits,
        targets,
        tf.ones([input_data_shape[0], input_data_shape[1]]))

    # Optimizer
    optimizer = tf.train.AdamOptimizer(lr)

    # Gradient Clipping
    gradients = optimizer.compute_gradients(cost)
    capped_gradients = [(tf.clip_by_value(grad, -1., 1.), var) for grad, var in gradients if grad is not None]
    train_op = optimizer.apply_gradients(capped_gradients)

Train

Train the neural network on the preprocessed data. If you have a hard time getting a good loss, check the forms to see if anyone is having the same problem.


In [17]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
batches = get_batches(int_text, batch_size, seq_length)

with tf.Session(graph=train_graph) as sess:
    sess.run(tf.global_variables_initializer())

    for epoch_i in range(num_epochs):
        state = sess.run(initial_state, {input_text: batches[0][0]})

        for batch_i, (x, y) in enumerate(batches):
            feed = {
                input_text: x,
                targets: y,
                initial_state: state,
                lr: learning_rate}
            train_loss, state, _ = sess.run([cost, final_state, train_op], feed)

            # Show every <show_every_n_batches> batches
            if (epoch_i * len(batches) + batch_i) % show_every_n_batches == 0:
                print('Epoch {:>3} Batch {:>4}/{}   train_loss = {:.3f}'.format(
                    epoch_i,
                    batch_i,
                    len(batches),
                    train_loss))

    # Save Model
    saver = tf.train.Saver()
    saver.save(sess, save_dir)
    print('Model Trained and Saved')


Epoch   0 Batch    0/26   train_loss = 8.825
Epoch   0 Batch   13/26   train_loss = 5.910
Epoch   1 Batch    0/26   train_loss = 5.192
Epoch   1 Batch   13/26   train_loss = 4.903
Epoch   2 Batch    0/26   train_loss = 4.517
Epoch   2 Batch   13/26   train_loss = 4.482
Epoch   3 Batch    0/26   train_loss = 4.172
Epoch   3 Batch   13/26   train_loss = 4.053
Epoch   4 Batch    0/26   train_loss = 3.816
Epoch   4 Batch   13/26   train_loss = 3.672
Epoch   5 Batch    0/26   train_loss = 3.507
Epoch   5 Batch   13/26   train_loss = 3.315
Epoch   6 Batch    0/26   train_loss = 3.193
Epoch   6 Batch   13/26   train_loss = 2.998
Epoch   7 Batch    0/26   train_loss = 2.920
Epoch   7 Batch   13/26   train_loss = 2.748
Epoch   8 Batch    0/26   train_loss = 2.693
Epoch   8 Batch   13/26   train_loss = 2.551
Epoch   9 Batch    0/26   train_loss = 2.519
Epoch   9 Batch   13/26   train_loss = 2.378
Epoch  10 Batch    0/26   train_loss = 2.341
Epoch  10 Batch   13/26   train_loss = 2.213
Epoch  11 Batch    0/26   train_loss = 2.153
Epoch  11 Batch   13/26   train_loss = 2.049
Epoch  12 Batch    0/26   train_loss = 2.012
Epoch  12 Batch   13/26   train_loss = 1.885
Epoch  13 Batch    0/26   train_loss = 1.879
Epoch  13 Batch   13/26   train_loss = 1.770
Epoch  14 Batch    0/26   train_loss = 1.751
Epoch  14 Batch   13/26   train_loss = 1.616
Epoch  15 Batch    0/26   train_loss = 1.618
Epoch  15 Batch   13/26   train_loss = 1.482
Epoch  16 Batch    0/26   train_loss = 1.497
Epoch  16 Batch   13/26   train_loss = 1.383
Epoch  17 Batch    0/26   train_loss = 1.395
Epoch  17 Batch   13/26   train_loss = 1.305
Epoch  18 Batch    0/26   train_loss = 1.317
Epoch  18 Batch   13/26   train_loss = 1.245
Epoch  19 Batch    0/26   train_loss = 1.279
Epoch  19 Batch   13/26   train_loss = 1.172
Epoch  20 Batch    0/26   train_loss = 1.210
Epoch  20 Batch   13/26   train_loss = 1.107
Epoch  21 Batch    0/26   train_loss = 1.132
Epoch  21 Batch   13/26   train_loss = 1.013
Epoch  22 Batch    0/26   train_loss = 1.049
Epoch  22 Batch   13/26   train_loss = 0.949
Epoch  23 Batch    0/26   train_loss = 0.974
Epoch  23 Batch   13/26   train_loss = 0.879
Epoch  24 Batch    0/26   train_loss = 0.912
Epoch  24 Batch   13/26   train_loss = 0.818
Epoch  25 Batch    0/26   train_loss = 0.837
Epoch  25 Batch   13/26   train_loss = 0.769
Epoch  26 Batch    0/26   train_loss = 0.778
Epoch  26 Batch   13/26   train_loss = 0.717
Epoch  27 Batch    0/26   train_loss = 0.727
Epoch  27 Batch   13/26   train_loss = 0.678
Epoch  28 Batch    0/26   train_loss = 0.679
Epoch  28 Batch   13/26   train_loss = 0.626
Epoch  29 Batch    0/26   train_loss = 0.621
Epoch  29 Batch   13/26   train_loss = 0.582
Epoch  30 Batch    0/26   train_loss = 0.574
Epoch  30 Batch   13/26   train_loss = 0.542
Epoch  31 Batch    0/26   train_loss = 0.548
Epoch  31 Batch   13/26   train_loss = 0.507
Epoch  32 Batch    0/26   train_loss = 0.525
Epoch  32 Batch   13/26   train_loss = 0.490
Epoch  33 Batch    0/26   train_loss = 0.515
Epoch  33 Batch   13/26   train_loss = 0.477
Epoch  34 Batch    0/26   train_loss = 0.487
Epoch  34 Batch   13/26   train_loss = 0.456
Epoch  35 Batch    0/26   train_loss = 0.458
Epoch  35 Batch   13/26   train_loss = 0.444
Epoch  36 Batch    0/26   train_loss = 0.453
Epoch  36 Batch   13/26   train_loss = 0.411
Epoch  37 Batch    0/26   train_loss = 0.420
Epoch  37 Batch   13/26   train_loss = 0.387
Epoch  38 Batch    0/26   train_loss = 0.391
Epoch  38 Batch   13/26   train_loss = 0.352
Epoch  39 Batch    0/26   train_loss = 0.361
Epoch  39 Batch   13/26   train_loss = 0.334
Epoch  40 Batch    0/26   train_loss = 0.335
Epoch  40 Batch   13/26   train_loss = 0.308
Epoch  41 Batch    0/26   train_loss = 0.309
Epoch  41 Batch   13/26   train_loss = 0.284
Epoch  42 Batch    0/26   train_loss = 0.289
Epoch  42 Batch   13/26   train_loss = 0.267
Epoch  43 Batch    0/26   train_loss = 0.270
Epoch  43 Batch   13/26   train_loss = 0.256
Epoch  44 Batch    0/26   train_loss = 0.264
Epoch  44 Batch   13/26   train_loss = 0.244
Epoch  45 Batch    0/26   train_loss = 0.251
Epoch  45 Batch   13/26   train_loss = 0.236
Epoch  46 Batch    0/26   train_loss = 0.247
Epoch  46 Batch   13/26   train_loss = 0.220
Epoch  47 Batch    0/26   train_loss = 0.237
Epoch  47 Batch   13/26   train_loss = 0.220
Epoch  48 Batch    0/26   train_loss = 0.229
Epoch  48 Batch   13/26   train_loss = 0.201
Epoch  49 Batch    0/26   train_loss = 0.216
Epoch  49 Batch   13/26   train_loss = 0.198
Epoch  50 Batch    0/26   train_loss = 0.207
Epoch  50 Batch   13/26   train_loss = 0.188
Epoch  51 Batch    0/26   train_loss = 0.203
Epoch  51 Batch   13/26   train_loss = 0.185
Epoch  52 Batch    0/26   train_loss = 0.196
Epoch  52 Batch   13/26   train_loss = 0.181
Epoch  53 Batch    0/26   train_loss = 0.197
Epoch  53 Batch   13/26   train_loss = 0.178
Epoch  54 Batch    0/26   train_loss = 0.190
Epoch  54 Batch   13/26   train_loss = 0.173
Epoch  55 Batch    0/26   train_loss = 0.189
Epoch  55 Batch   13/26   train_loss = 0.169
Epoch  56 Batch    0/26   train_loss = 0.185
Epoch  56 Batch   13/26   train_loss = 0.164
Epoch  57 Batch    0/26   train_loss = 0.176
Epoch  57 Batch   13/26   train_loss = 0.156
Epoch  58 Batch    0/26   train_loss = 0.174
Epoch  58 Batch   13/26   train_loss = 0.153
Epoch  59 Batch    0/26   train_loss = 0.172
Epoch  59 Batch   13/26   train_loss = 0.148
Epoch  60 Batch    0/26   train_loss = 0.167
Epoch  60 Batch   13/26   train_loss = 0.145
Epoch  61 Batch    0/26   train_loss = 0.164
Epoch  61 Batch   13/26   train_loss = 0.144
Epoch  62 Batch    0/26   train_loss = 0.163
Epoch  62 Batch   13/26   train_loss = 0.142
Epoch  63 Batch    0/26   train_loss = 0.163
Epoch  63 Batch   13/26   train_loss = 0.142
Epoch  64 Batch    0/26   train_loss = 0.161
Epoch  64 Batch   13/26   train_loss = 0.141
Epoch  65 Batch    0/26   train_loss = 0.161
Epoch  65 Batch   13/26   train_loss = 0.141
Epoch  66 Batch    0/26   train_loss = 0.160
Epoch  66 Batch   13/26   train_loss = 0.140
Epoch  67 Batch    0/26   train_loss = 0.160
Epoch  67 Batch   13/26   train_loss = 0.140
Epoch  68 Batch    0/26   train_loss = 0.159
Epoch  68 Batch   13/26   train_loss = 0.139
Epoch  69 Batch    0/26   train_loss = 0.159
Epoch  69 Batch   13/26   train_loss = 0.139
Epoch  70 Batch    0/26   train_loss = 0.158
Epoch  70 Batch   13/26   train_loss = 0.139
Epoch  71 Batch    0/26   train_loss = 0.159
Epoch  71 Batch   13/26   train_loss = 0.138
Epoch  72 Batch    0/26   train_loss = 0.158
Epoch  72 Batch   13/26   train_loss = 0.139
Epoch  73 Batch    0/26   train_loss = 0.158
Epoch  73 Batch   13/26   train_loss = 0.138
Epoch  74 Batch    0/26   train_loss = 0.157
Epoch  74 Batch   13/26   train_loss = 0.138
Epoch  75 Batch    0/26   train_loss = 0.158
Epoch  75 Batch   13/26   train_loss = 0.137
Epoch  76 Batch    0/26   train_loss = 0.157
Epoch  76 Batch   13/26   train_loss = 0.138
Epoch  77 Batch    0/26   train_loss = 0.157
Epoch  77 Batch   13/26   train_loss = 0.137
Epoch  78 Batch    0/26   train_loss = 0.156
Epoch  78 Batch   13/26   train_loss = 0.137
Epoch  79 Batch    0/26   train_loss = 0.157
Epoch  79 Batch   13/26   train_loss = 0.137
Epoch  80 Batch    0/26   train_loss = 0.156
Epoch  80 Batch   13/26   train_loss = 0.137
Epoch  81 Batch    0/26   train_loss = 0.157
Epoch  81 Batch   13/26   train_loss = 0.136
Epoch  82 Batch    0/26   train_loss = 0.156
Epoch  82 Batch   13/26   train_loss = 0.137
Epoch  83 Batch    0/26   train_loss = 0.156
Epoch  83 Batch   13/26   train_loss = 0.136
Epoch  84 Batch    0/26   train_loss = 0.155
Epoch  84 Batch   13/26   train_loss = 0.136
Epoch  85 Batch    0/26   train_loss = 0.156
Epoch  85 Batch   13/26   train_loss = 0.136
Epoch  86 Batch    0/26   train_loss = 0.155
Epoch  86 Batch   13/26   train_loss = 0.136
Epoch  87 Batch    0/26   train_loss = 0.156
Epoch  87 Batch   13/26   train_loss = 0.136
Epoch  88 Batch    0/26   train_loss = 0.155
Epoch  88 Batch   13/26   train_loss = 0.136
Epoch  89 Batch    0/26   train_loss = 0.156
Epoch  89 Batch   13/26   train_loss = 0.135
Epoch  90 Batch    0/26   train_loss = 0.155
Epoch  90 Batch   13/26   train_loss = 0.136
Epoch  91 Batch    0/26   train_loss = 0.156
Epoch  91 Batch   13/26   train_loss = 0.135
Epoch  92 Batch    0/26   train_loss = 0.155
Epoch  92 Batch   13/26   train_loss = 0.136
Epoch  93 Batch    0/26   train_loss = 0.155
Epoch  93 Batch   13/26   train_loss = 0.135
Epoch  94 Batch    0/26   train_loss = 0.155
Epoch  94 Batch   13/26   train_loss = 0.136
Epoch  95 Batch    0/26   train_loss = 0.155
Epoch  95 Batch   13/26   train_loss = 0.135
Epoch  96 Batch    0/26   train_loss = 0.154
Epoch  96 Batch   13/26   train_loss = 0.135
Epoch  97 Batch    0/26   train_loss = 0.155
Epoch  97 Batch   13/26   train_loss = 0.135
Epoch  98 Batch    0/26   train_loss = 0.154
Epoch  98 Batch   13/26   train_loss = 0.135
Epoch  99 Batch    0/26   train_loss = 0.155
Epoch  99 Batch   13/26   train_loss = 0.135
Epoch 100 Batch    0/26   train_loss = 0.154
Epoch 100 Batch   13/26   train_loss = 0.135
Epoch 101 Batch    0/26   train_loss = 0.155
Epoch 101 Batch   13/26   train_loss = 0.135
Epoch 102 Batch    0/26   train_loss = 0.154
Epoch 102 Batch   13/26   train_loss = 0.135
Epoch 103 Batch    0/26   train_loss = 0.155
Epoch 103 Batch   13/26   train_loss = 0.135
Epoch 104 Batch    0/26   train_loss = 0.154
Epoch 104 Batch   13/26   train_loss = 0.135
Epoch 105 Batch    0/26   train_loss = 0.155
Epoch 105 Batch   13/26   train_loss = 0.135
Epoch 106 Batch    0/26   train_loss = 0.154
Epoch 106 Batch   13/26   train_loss = 0.135
Epoch 107 Batch    0/26   train_loss = 0.155
Epoch 107 Batch   13/26   train_loss = 0.134
Epoch 108 Batch    0/26   train_loss = 0.154
Epoch 108 Batch   13/26   train_loss = 0.135
Epoch 109 Batch    0/26   train_loss = 0.155
Epoch 109 Batch   13/26   train_loss = 0.134
Epoch 110 Batch    0/26   train_loss = 0.154
Epoch 110 Batch   13/26   train_loss = 0.135
Epoch 111 Batch    0/26   train_loss = 0.154
Epoch 111 Batch   13/26   train_loss = 0.134
Epoch 112 Batch    0/26   train_loss = 0.154
Epoch 112 Batch   13/26   train_loss = 0.135
Epoch 113 Batch    0/26   train_loss = 0.154
Epoch 113 Batch   13/26   train_loss = 0.134
Epoch 114 Batch    0/26   train_loss = 0.154
Epoch 114 Batch   13/26   train_loss = 0.135
Epoch 115 Batch    0/26   train_loss = 0.154
Epoch 115 Batch   13/26   train_loss = 0.134
Epoch 116 Batch    0/26   train_loss = 0.154
Epoch 116 Batch   13/26   train_loss = 0.134
Epoch 117 Batch    0/26   train_loss = 0.154
Epoch 117 Batch   13/26   train_loss = 0.134
Epoch 118 Batch    0/26   train_loss = 0.154
Epoch 118 Batch   13/26   train_loss = 0.134
Epoch 119 Batch    0/26   train_loss = 0.154
Epoch 119 Batch   13/26   train_loss = 0.134
Epoch 120 Batch    0/26   train_loss = 0.153
Epoch 120 Batch   13/26   train_loss = 0.135
Epoch 121 Batch    0/26   train_loss = 0.154
Epoch 121 Batch   13/26   train_loss = 0.135
Epoch 122 Batch    0/26   train_loss = 0.154
Epoch 122 Batch   13/26   train_loss = 0.135
Epoch 123 Batch    0/26   train_loss = 0.154
Epoch 123 Batch   13/26   train_loss = 0.135
Epoch 124 Batch    0/26   train_loss = 0.154
Epoch 124 Batch   13/26   train_loss = 0.135
Epoch 125 Batch    0/26   train_loss = 0.155
Epoch 125 Batch   13/26   train_loss = 0.139
Epoch 126 Batch    0/26   train_loss = 0.201
Epoch 126 Batch   13/26   train_loss = 1.198
Epoch 127 Batch    0/26   train_loss = 3.086
Epoch 127 Batch   13/26   train_loss = 3.403
Epoch 128 Batch    0/26   train_loss = 3.127
Epoch 128 Batch   13/26   train_loss = 2.627
Epoch 129 Batch    0/26   train_loss = 2.313
Epoch 129 Batch   13/26   train_loss = 1.929
Epoch 130 Batch    0/26   train_loss = 1.769
Epoch 130 Batch   13/26   train_loss = 1.517
Epoch 131 Batch    0/26   train_loss = 1.417
Epoch 131 Batch   13/26   train_loss = 1.198
Epoch 132 Batch    0/26   train_loss = 1.144
Epoch 132 Batch   13/26   train_loss = 0.989
Epoch 133 Batch    0/26   train_loss = 0.972
Epoch 133 Batch   13/26   train_loss = 0.801
Epoch 134 Batch    0/26   train_loss = 0.792
Epoch 134 Batch   13/26   train_loss = 0.696
Epoch 135 Batch    0/26   train_loss = 0.683
Epoch 135 Batch   13/26   train_loss = 0.581
Epoch 136 Batch    0/26   train_loss = 0.603
Epoch 136 Batch   13/26   train_loss = 0.513
Epoch 137 Batch    0/26   train_loss = 0.536
Epoch 137 Batch   13/26   train_loss = 0.455
Epoch 138 Batch    0/26   train_loss = 0.484
Epoch 138 Batch   13/26   train_loss = 0.408
Epoch 139 Batch    0/26   train_loss = 0.440
Epoch 139 Batch   13/26   train_loss = 0.365
Epoch 140 Batch    0/26   train_loss = 0.395
Epoch 140 Batch   13/26   train_loss = 0.343
Epoch 141 Batch    0/26   train_loss = 0.370
Epoch 141 Batch   13/26   train_loss = 0.308
Epoch 142 Batch    0/26   train_loss = 0.334
Epoch 142 Batch   13/26   train_loss = 0.279
Epoch 143 Batch    0/26   train_loss = 0.318
Epoch 143 Batch   13/26   train_loss = 0.264
Epoch 144 Batch    0/26   train_loss = 0.279
Epoch 144 Batch   13/26   train_loss = 0.249
Epoch 145 Batch    0/26   train_loss = 0.262
Epoch 145 Batch   13/26   train_loss = 0.233
Epoch 146 Batch    0/26   train_loss = 0.256
Epoch 146 Batch   13/26   train_loss = 0.221
Epoch 147 Batch    0/26   train_loss = 0.242
Epoch 147 Batch   13/26   train_loss = 0.207
Epoch 148 Batch    0/26   train_loss = 0.227
Epoch 148 Batch   13/26   train_loss = 0.195
Epoch 149 Batch    0/26   train_loss = 0.219
Epoch 149 Batch   13/26   train_loss = 0.189
Epoch 150 Batch    0/26   train_loss = 0.216
Epoch 150 Batch   13/26   train_loss = 0.180
Epoch 151 Batch    0/26   train_loss = 0.211
Epoch 151 Batch   13/26   train_loss = 0.178
Epoch 152 Batch    0/26   train_loss = 0.207
Epoch 152 Batch   13/26   train_loss = 0.174
Epoch 153 Batch    0/26   train_loss = 0.196
Epoch 153 Batch   13/26   train_loss = 0.168
Epoch 154 Batch    0/26   train_loss = 0.191
Epoch 154 Batch   13/26   train_loss = 0.163
Epoch 155 Batch    0/26   train_loss = 0.189
Epoch 155 Batch   13/26   train_loss = 0.160
Epoch 156 Batch    0/26   train_loss = 0.187
Epoch 156 Batch   13/26   train_loss = 0.158
Epoch 157 Batch    0/26   train_loss = 0.179
Epoch 157 Batch   13/26   train_loss = 0.155
Epoch 158 Batch    0/26   train_loss = 0.174
Epoch 158 Batch   13/26   train_loss = 0.153
Epoch 159 Batch    0/26   train_loss = 0.173
Epoch 159 Batch   13/26   train_loss = 0.150
Epoch 160 Batch    0/26   train_loss = 0.170
Epoch 160 Batch   13/26   train_loss = 0.149
Epoch 161 Batch    0/26   train_loss = 0.170
Epoch 161 Batch   13/26   train_loss = 0.149
Epoch 162 Batch    0/26   train_loss = 0.168
Epoch 162 Batch   13/26   train_loss = 0.148
Epoch 163 Batch    0/26   train_loss = 0.167
Epoch 163 Batch   13/26   train_loss = 0.146
Epoch 164 Batch    0/26   train_loss = 0.165
Epoch 164 Batch   13/26   train_loss = 0.145
Epoch 165 Batch    0/26   train_loss = 0.165
Epoch 165 Batch   13/26   train_loss = 0.145
Epoch 166 Batch    0/26   train_loss = 0.164
Epoch 166 Batch   13/26   train_loss = 0.143
Epoch 167 Batch    0/26   train_loss = 0.164
Epoch 167 Batch   13/26   train_loss = 0.143
Epoch 168 Batch    0/26   train_loss = 0.162
Epoch 168 Batch   13/26   train_loss = 0.142
Epoch 169 Batch    0/26   train_loss = 0.162
Epoch 169 Batch   13/26   train_loss = 0.142
Epoch 170 Batch    0/26   train_loss = 0.161
Epoch 170 Batch   13/26   train_loss = 0.141
Epoch 171 Batch    0/26   train_loss = 0.161
Epoch 171 Batch   13/26   train_loss = 0.141
Epoch 172 Batch    0/26   train_loss = 0.160
Epoch 172 Batch   13/26   train_loss = 0.140
Epoch 173 Batch    0/26   train_loss = 0.161
Epoch 173 Batch   13/26   train_loss = 0.140
Epoch 174 Batch    0/26   train_loss = 0.160
Epoch 174 Batch   13/26   train_loss = 0.139
Epoch 175 Batch    0/26   train_loss = 0.160
Epoch 175 Batch   13/26   train_loss = 0.140
Epoch 176 Batch    0/26   train_loss = 0.159
Epoch 176 Batch   13/26   train_loss = 0.139
Epoch 177 Batch    0/26   train_loss = 0.159
Epoch 177 Batch   13/26   train_loss = 0.139
Epoch 178 Batch    0/26   train_loss = 0.159
Epoch 178 Batch   13/26   train_loss = 0.138
Epoch 179 Batch    0/26   train_loss = 0.159
Epoch 179 Batch   13/26   train_loss = 0.139
Epoch 180 Batch    0/26   train_loss = 0.158
Epoch 180 Batch   13/26   train_loss = 0.138
Epoch 181 Batch    0/26   train_loss = 0.158
Epoch 181 Batch   13/26   train_loss = 0.138
Epoch 182 Batch    0/26   train_loss = 0.158
Epoch 182 Batch   13/26   train_loss = 0.137
Epoch 183 Batch    0/26   train_loss = 0.158
Epoch 183 Batch   13/26   train_loss = 0.138
Epoch 184 Batch    0/26   train_loss = 0.157
Epoch 184 Batch   13/26   train_loss = 0.137
Epoch 185 Batch    0/26   train_loss = 0.157
Epoch 185 Batch   13/26   train_loss = 0.138
Epoch 186 Batch    0/26   train_loss = 0.157
Epoch 186 Batch   13/26   train_loss = 0.137
Epoch 187 Batch    0/26   train_loss = 0.157
Epoch 187 Batch   13/26   train_loss = 0.137
Epoch 188 Batch    0/26   train_loss = 0.157
Epoch 188 Batch   13/26   train_loss = 0.136
Epoch 189 Batch    0/26   train_loss = 0.157
Epoch 189 Batch   13/26   train_loss = 0.137
Epoch 190 Batch    0/26   train_loss = 0.156
Epoch 190 Batch   13/26   train_loss = 0.136
Epoch 191 Batch    0/26   train_loss = 0.156
Epoch 191 Batch   13/26   train_loss = 0.137
Epoch 192 Batch    0/26   train_loss = 0.156
Epoch 192 Batch   13/26   train_loss = 0.136
Epoch 193 Batch    0/26   train_loss = 0.156
Epoch 193 Batch   13/26   train_loss = 0.137
Epoch 194 Batch    0/26   train_loss = 0.156
Epoch 194 Batch   13/26   train_loss = 0.136
Epoch 195 Batch    0/26   train_loss = 0.156
Epoch 195 Batch   13/26   train_loss = 0.136
Epoch 196 Batch    0/26   train_loss = 0.156
Epoch 196 Batch   13/26   train_loss = 0.135
Epoch 197 Batch    0/26   train_loss = 0.156
Epoch 197 Batch   13/26   train_loss = 0.136
Epoch 198 Batch    0/26   train_loss = 0.155
Epoch 198 Batch   13/26   train_loss = 0.135
Epoch 199 Batch    0/26   train_loss = 0.155
Epoch 199 Batch   13/26   train_loss = 0.136
Model Trained and Saved

Save Parameters

Save seq_length and save_dir for generating a new TV script.


In [18]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
# Save parameters for checkpoint
helper.save_params((seq_length, save_dir))

Checkpoint


In [19]:
"""
DON'T MODIFY ANYTHING IN THIS CELL
"""
import tensorflow as tf
import numpy as np
import helper
import problem_unittests as tests

_, vocab_to_int, int_to_vocab, token_dict = helper.load_preprocess()
seq_length, load_dir = helper.load_params()

Implement Generate Functions

Get Tensors

Get tensors from loaded_graph using the function get_tensor_by_name(). Get the tensors using the following names:

  • "input:0"
  • "initial_state:0"
  • "final_state:0"
  • "probs:0"

Return the tensors in the following tuple (InputTensor, InitialStateTensor, FinalStateTensor, ProbsTensor)


In [20]:
def get_tensors(loaded_graph):
    """
    Get input, initial state, final state, and probabilities tensor from <loaded_graph>
    :param loaded_graph: TensorFlow graph loaded from file
    :return: Tuple (InputTensor, InitialStateTensor, FinalStateTensor, ProbsTensor)
    """

    input_tensor=loaded_graph.get_tensor_by_name("input:0")
    initial_state_tensor=loaded_graph.get_tensor_by_name("initial_state:0")
    final_state_tensor=loaded_graph.get_tensor_by_name("final_state:0")
    probs_tensor=loaded_graph.get_tensor_by_name("probs:0")
    
    return input_tensor, initial_state_tensor, final_state_tensor, probs_tensor

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_get_tensors(get_tensors)


Tests Passed

Choose Word

Implement the pick_word() function to select the next word using probabilities.


In [21]:
def pick_word(probabilities, int_to_vocab):
    """
    Pick the next word in the generated text
    :param probabilities: Probabilites of the next word
    :param int_to_vocab: Dictionary of word ids as the keys and words as the values
    :return: String of the predicted word
    """
    
    return int_to_vocab[np.argmax(probabilities)]

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
tests.test_pick_word(pick_word)


Tests Passed

Generate TV Script

This will generate the TV script for you. Set gen_length to the length of TV script you want to generate.


In [22]:
gen_length = 200
# homer_simpson, moe_szyslak, or Barney_Gumble
prime_word = 'moe_szyslak'

"""
DON'T MODIFY ANYTHING IN THIS CELL THAT IS BELOW THIS LINE
"""
loaded_graph = tf.Graph()
with tf.Session(graph=loaded_graph) as sess:
    # Load saved model
    loader = tf.train.import_meta_graph(load_dir + '.meta')
    loader.restore(sess, load_dir)

    # Get Tensors from loaded model
    input_text, initial_state, final_state, probs = get_tensors(loaded_graph)

    # Sentences generation setup
    gen_sentences = [prime_word + ':']
    prev_state = sess.run(initial_state, {input_text: np.array([[1]])})

    # Generate sentences
    for n in range(gen_length):
        # Dynamic Input
        dyn_input = [[vocab_to_int[word] for word in gen_sentences[-seq_length:]]]
        dyn_seq_length = len(dyn_input[0])

        # Get Prediction
        probabilities, prev_state = sess.run(
            [probs, final_state],
            {input_text: dyn_input, initial_state: prev_state})
        
        pred_word = pick_word(probabilities[dyn_seq_length-1], int_to_vocab)

        gen_sentences.append(pred_word)
    
    # Remove tokens
    tv_script = ' '.join(gen_sentences)
    for key, token in token_dict.items():
        ending = ' ' if key in ['\n', '(', '"'] else ''
        tv_script = tv_script.replace(' ' + token.lower(), key)
    tv_script = tv_script.replace('\n ', '\n')
    tv_script = tv_script.replace('( ', '(')
        
    print(tv_script)


moe_szyslak:(into phone) gotcha ya down for forty bucks. good luck your eminence.
moe_szyslak: sorry, homer.
homer_simpson:(indignant) so you're just gonna let me spend any money-- even counterfeit money!


moe_szyslak: refund? hey, i'm looking for a mrs. o'problem. first name, waylon.
moe_szyslak: oh, so you're looking for a mr. smithers, a then i'll just get back and on the floor.(more clips)
kent_brockman:(to smithers, who is the(raises glass in front of mouth) atlanta falcons(lowers glass). yeah, ever since i was a good thing.
lenny_leonard: y'know, if it isn't little miss" i'm not.
barney_gumble:(gasps) what happened? it's bright in the middle of my life: nineteen ninety-six.
carl_carlson:(dying) too out! and edna right now.
moe_szyslak:(laughing) this is a gentleman's club where are the little about you could" change that" blue man group? i'm not bettin'!
moe_szyslak:

The TV Script is Nonsensical

It's ok if the TV script doesn't make any sense. We trained on less than a megabyte of text. In order to get good results, you'll have to use a smaller vocabulary or get more data. Luckly there's more data! As we mentioned in the begging of this project, this is a subset of another dataset. We didn't have you train on all the data, because that would take too long. However, you are free to train your neural network on all the data. After you complete the project, of course.

Submitting This Project

When submitting this project, make sure to run all the cells before saving the notebook. Save the notebook file as "dlnd_tv_script_generation.ipynb" and save it as a HTML file under "File" -> "Download as". Include the "helper.py" and "problem_unittests.py" files in your submission.


In [ ]: