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| """ | |
| Title: Character-level recurrent sequence-to-sequence model | |
| Author: [fchollet](https://twitter.com/fchollet) | |
| Date created: 2017/09/29 | |
| Last modified: 2023/11/22 | |
| Description: Character-level recurrent sequence-to-sequence model. | |
| Accelerator: GPU | |
| """ | |
| """ | |
| ## Introduction | |
| This example demonstrates how to implement a basic character-level | |
| recurrent sequence-to-sequence model. We apply it to translating | |
| short English sentences into short French sentences, | |
| character-by-character. Note that it is fairly unusual to | |
| do character-level machine translation, as word-level | |
| models are more common in this domain. | |
| **Summary of the algorithm** | |
| - We start with input sequences from a domain (e.g. English sentences) | |
| and corresponding target sequences from another domain | |
| (e.g. French sentences). | |
| - An encoder LSTM turns input sequences to 2 state vectors | |
| (we keep the last LSTM state and discard the outputs). | |
| - A decoder LSTM is trained to turn the target sequences into | |
| the same sequence but offset by one timestep in the future, | |
| a training process called "teacher forcing" in this context. | |
| It uses as initial state the state vectors from the encoder. | |
| Effectively, the decoder learns to generate `targets[t+1...]` | |
| given `targets[...t]`, conditioned on the input sequence. | |
| - In inference mode, when we want to decode unknown input sequences, we: | |
| - Encode the input sequence into state vectors | |
| - Start with a target sequence of size 1 | |
| (just the start-of-sequence character) | |
| - Feed the state vectors and 1-char target sequence | |
| to the decoder to produce predictions for the next character | |
| - Sample the next character using these predictions | |
| (we simply use argmax). | |
| - Append the sampled character to the target sequence | |
| - Repeat until we generate the end-of-sequence character or we | |
| hit the character limit. | |
| """ | |
| """ | |
| ## Setup | |
| """ | |
| import numpy as np | |
| import keras | |
| import os | |
| from pathlib import Path | |
| """ | |
| ## Download the data | |
| """ | |
| fpath = keras.utils.get_file(origin="http://www.manythings.org/anki/fra-eng.zip") | |
| dirpath = Path(fpath).parent.absolute() | |
| os.system(f"unzip -q {fpath} -d {dirpath}") | |
| """ | |
| ## Configuration | |
| """ | |
| batch_size = 64 # Batch size for training. | |
| epochs = 100 # Number of epochs to train for. | |
| latent_dim = 256 # Latent dimensionality of the encoding space. | |
| num_samples = 10000 # Number of samples to train on. | |
| # Path to the data txt file on disk. | |
| data_path = os.path.join(dirpath, "fra.txt") | |
| """ | |
| ## Prepare the data | |
| """ | |
| # Vectorize the data. | |
| input_texts = [] | |
| target_texts = [] | |
| input_characters = set() | |
| target_characters = set() | |
| with open(data_path, "r", encoding="utf-8") as f: | |
| lines = f.read().split("\n") | |
| for line in lines[: min(num_samples, len(lines) - 1)]: | |
| input_text, target_text, _ = line.split("\t") | |
| # We use "tab" as the "start sequence" character | |
| # for the targets, and "\n" as "end sequence" character. | |
| target_text = "\t" + target_text + "\n" | |
| input_texts.append(input_text) | |
| target_texts.append(target_text) | |
| for char in input_text: | |
| if char not in input_characters: | |
| input_characters.add(char) | |
| for char in target_text: | |
| if char not in target_characters: | |
| target_characters.add(char) | |
| input_characters = sorted(list(input_characters)) | |
| target_characters = sorted(list(target_characters)) | |
| num_encoder_tokens = len(input_characters) | |
| num_decoder_tokens = len(target_characters) | |
| max_encoder_seq_length = max([len(txt) for txt in input_texts]) | |
| max_decoder_seq_length = max([len(txt) for txt in target_texts]) | |
| print("Number of samples:", len(input_texts)) | |
| print("Number of unique input tokens:", num_encoder_tokens) | |
| print("Number of unique output tokens:", num_decoder_tokens) | |
| print("Max sequence length for inputs:", max_encoder_seq_length) | |
| print("Max sequence length for outputs:", max_decoder_seq_length) | |
| input_token_index = dict([(char, i) for i, char in enumerate(input_characters)]) | |
| target_token_index = dict([(char, i) for i, char in enumerate(target_characters)]) | |
| encoder_input_data = np.zeros( | |
| (len(input_texts), max_encoder_seq_length, num_encoder_tokens), | |
| dtype="float32", | |
| ) | |
| decoder_input_data = np.zeros( | |
| (len(input_texts), max_decoder_seq_length, num_decoder_tokens), | |
| dtype="float32", | |
| ) | |
| decoder_target_data = np.zeros( | |
| (len(input_texts), max_decoder_seq_length, num_decoder_tokens), | |
| dtype="float32", | |
| ) | |
| for i, (input_text, target_text) in enumerate(zip(input_texts, target_texts)): | |
| for t, char in enumerate(input_text): | |
| encoder_input_data[i, t, input_token_index[char]] = 1.0 | |
| encoder_input_data[i, t + 1 :, input_token_index[" "]] = 1.0 | |
| for t, char in enumerate(target_text): | |
| # decoder_target_data is ahead of decoder_input_data by one timestep | |
| decoder_input_data[i, t, target_token_index[char]] = 1.0 | |
| if t > 0: | |
| # decoder_target_data will be ahead by one timestep | |
| # and will not include the start character. | |
| decoder_target_data[i, t - 1, target_token_index[char]] = 1.0 | |
| decoder_input_data[i, t + 1 :, target_token_index[" "]] = 1.0 | |
| decoder_target_data[i, t:, target_token_index[" "]] = 1.0 | |
| """ | |
| ## Build the model | |
| """ | |
| # Define an input sequence and process it. | |
| encoder_inputs = keras.Input(shape=(None, num_encoder_tokens)) | |
| encoder = keras.layers.LSTM(latent_dim, return_state=True) | |
| encoder_outputs, state_h, state_c = encoder(encoder_inputs) | |
| # We discard `encoder_outputs` and only keep the states. | |
| encoder_states = [state_h, state_c] | |
| # Set up the decoder, using `encoder_states` as initial state. | |
| decoder_inputs = keras.Input(shape=(None, num_decoder_tokens)) | |
| # We set up our decoder to return full output sequences, | |
| # and to return internal states as well. We don't use the | |
| # return states in the training model, but we will use them in inference. | |
| decoder_lstm = keras.layers.LSTM(latent_dim, return_sequences=True, return_state=True) | |
| decoder_outputs, _, _ = decoder_lstm(decoder_inputs, initial_state=encoder_states) | |
| decoder_dense = keras.layers.Dense(num_decoder_tokens, activation="softmax") | |
| decoder_outputs = decoder_dense(decoder_outputs) | |
| # Define the model that will turn | |
| # `encoder_input_data` & `decoder_input_data` into `decoder_target_data` | |
| model = keras.Model([encoder_inputs, decoder_inputs], decoder_outputs) | |
| """ | |
| ## Train the model | |
| """ | |
| model.compile( | |
| optimizer="rmsprop", loss="categorical_crossentropy", metrics=["accuracy"] | |
| ) | |
| model.fit( | |
| [encoder_input_data, decoder_input_data], | |
| decoder_target_data, | |
| batch_size=batch_size, | |
| epochs=epochs, | |
| validation_split=0.2, | |
| ) | |
| # Save model | |
| model.save("s2s_model.keras") | |
| """ | |
| ## Run inference (sampling) | |
| 1. encode input and retrieve initial decoder state | |
| 2. run one step of decoder with this initial state | |
| and a "start of sequence" token as target. | |
| Output will be the next target token. | |
| 3. Repeat with the current target token and current states | |
| """ | |
| # Define sampling models | |
| # Restore the model and construct the encoder and decoder. | |
| model = keras.models.load_model("s2s_model.keras") | |
| encoder_inputs = model.input[0] # input_1 | |
| encoder_outputs, state_h_enc, state_c_enc = model.layers[2].output # lstm_1 | |
| encoder_states = [state_h_enc, state_c_enc] | |
| encoder_model = keras.Model(encoder_inputs, encoder_states) | |
| decoder_inputs = model.input[1] # input_2 | |
| decoder_state_input_h = keras.Input(shape=(latent_dim,)) | |
| decoder_state_input_c = keras.Input(shape=(latent_dim,)) | |
| decoder_states_inputs = [decoder_state_input_h, decoder_state_input_c] | |
| decoder_lstm = model.layers[3] | |
| decoder_outputs, state_h_dec, state_c_dec = decoder_lstm( | |
| decoder_inputs, initial_state=decoder_states_inputs | |
| ) | |
| decoder_states = [state_h_dec, state_c_dec] | |
| decoder_dense = model.layers[4] | |
| decoder_outputs = decoder_dense(decoder_outputs) | |
| decoder_model = keras.Model( | |
| [decoder_inputs] + decoder_states_inputs, [decoder_outputs] + decoder_states | |
| ) | |
| # Reverse-lookup token index to decode sequences back to | |
| # something readable. | |
| reverse_input_char_index = dict((i, char) for char, i in input_token_index.items()) | |
| reverse_target_char_index = dict((i, char) for char, i in target_token_index.items()) | |
| def decode_sequence(input_seq): | |
| # Encode the input as state vectors. | |
| states_value = encoder_model.predict(input_seq, verbose=0) | |
| # Generate empty target sequence of length 1. | |
| target_seq = np.zeros((1, 1, num_decoder_tokens)) | |
| # Populate the first character of target sequence with the start character. | |
| target_seq[0, 0, target_token_index["\t"]] = 1.0 | |
| # Sampling loop for a batch of sequences | |
| # (to simplify, here we assume a batch of size 1). | |
| stop_condition = False | |
| decoded_sentence = "" | |
| while not stop_condition: | |
| output_tokens, h, c = decoder_model.predict( | |
| [target_seq] + states_value, verbose=0 | |
| ) | |
| # Sample a token | |
| sampled_token_index = np.argmax(output_tokens[0, -1, :]) | |
| sampled_char = reverse_target_char_index[sampled_token_index] | |
| decoded_sentence += sampled_char | |
| # Exit condition: either hit max length | |
| # or find stop character. | |
| if sampled_char == "\n" or len(decoded_sentence) > max_decoder_seq_length: | |
| stop_condition = True | |
| # Update the target sequence (of length 1). | |
| target_seq = np.zeros((1, 1, num_decoder_tokens)) | |
| target_seq[0, 0, sampled_token_index] = 1.0 | |
| # Update states | |
| states_value = [h, c] | |
| return decoded_sentence | |
| """ | |
| You can now generate decoded sentences as such: | |
| """ | |
| for seq_index in range(20): | |
| # Take one sequence (part of the training set) | |
| # for trying out decoding. | |
| input_seq = encoder_input_data[seq_index : seq_index + 1] | |
| decoded_sentence = decode_sequence(input_seq) | |
| print("-") | |
| print("Input sentence:", input_texts[seq_index]) | |
| print("Decoded sentence:", decoded_sentence) | |