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Neural Networks Beginnings
Neural Networks Beginnings
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Neural Networks Beginnings

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#Compilation of the model

model.compile(

optimizer=keras.optimizers.Adam(learning_rate=0.001),

loss=keras.losses.CategoricalCrossentropy(),

metrics=["accuracy"],

)

#Loading audio file

audio_file = tf.io.read_file("audio.wav")

audio, _ = tf.audio.decode_wav(audio_file)

audio = tf.squeeze(audio, axis=-1)

audio = tf.cast(audio, tf.float32)

# splitting into segments

frame_length = 640

frame_step = 320

audio_length = tf.shape(audio)[0]

num_frames = tf.cast(tf.math.ceil(audio_length / frame_step), tf.int32)

padding_length = num_frames * frame_step – audio_length

audio = tf.pad(audio, [[0, padding_length]])

audio = tf.reshape(audio, [num_frames, frame_length])

#Extracting MFCC features

mfccs = tf.signal.mfccs_from_log_mel_spectrograms(

tf.math.log(tf.abs(tf.signal.stft(audio))),

audio.shape[-1],

num_mel_bins=13,

dct_coefficient_count=13,

)

# Data preparation for training

labels = ["one", "two", "three", "four", "five", "six", "seven", "eight", "nine", "zero"]

label_to_index = dict(zip(labels, range(len(labels))))

index_to_label = dict(zip(range(len(labels)), labels))

text = "one two three four five six seven eight nine zero"

target = tf.keras.preprocessing.text.one_hot(text, len(labels))

X_train = mfccs[None, …]

y_train = target[None, …]

# Training the model

history = model.fit(X_train, y_train, epochs=10)

# Making predictions

predicted_probs = model.predict(X_train)

predicted_indexes = tf.argmax(predicted_probs, axis=-1)[0]

predicted_labels = [index_to_label[i] for i in predicted_indexes]

# Outputting results

print("Predicted labels:", predicted_labels)

This code implements automatic speech recognition using a neural network based on TensorFlow and Keras. The first step is to define the neural network architecture using Keras Sequential API. In this case, a recurrent LSTM layer is used, which takes in a sequence of 13-length sound segments. Then there are several fully connected layers with a relu activation function and one output layer with a softmax activation function, which outputs probabilities for each speech class.

Next, the model is compiled using the compile method. The Adam optimizer with a learning rate of 0.001 is chosen, the loss function is categorical cross-entropy, and the classification accuracy is used as the metric.

Then a sound file in the wav format is loaded, decoded using tf.audio.decode_wav, and transformed into float32 numerical values. The file is then split into fragments of length 640 with a step of 320. If the file cannot be divided into equal fragments, padding is added.

This code implements automatic speech recognition using a neural network based on TensorFlow and Keras. The first step is to define the architecture of the neural network using the Keras Sequential API. In this case, a recurrent LSTM layer is used, which takes in a sequence of 13-length sound snippets. Then there are several fully connected layers with the relu activation function, and one output layer with the softmax activation function, which outputs probabilities for each speech class.

Next, the model is compiled using the compile method. The optimizer chosen is Adam with a learning rate of 0.001, the loss function is categorical cross-entropy, and the classification accuracy is used as the metric.

Then, a sound file in the wav format is loaded and decoded using tf.audio.decode_wav, and transformed into float32 numerical values. The file is then split into fragments of length 640 with a step of 320. If the file cannot be evenly divided into fragments, padding is added.

Next, Mel-frequency cepstral coefficients (MFCC) features are extracted from each sound fragment using the tf.signal.mfccs_from_log_mel_spectrograms function. These extracted features are used for training the model.

To train the model, the data needs to be prepared. In this case, text is used that indicates all possible classes and the corresponding label for each class. For convenience, the text is converted into one-hot encoding using the tf.keras.preprocessing.text.one_hot method. The prepared data is then passed to the model for training using the fit method.

After training the model, the results are predicted on the same data using the predict method. The index with the highest probability and its corresponding class are selected.

Finally, the predicted class labels are outputted.

Recommender system

For convenience, let's describe the process in five steps:

Step 1: Data collection

The first step in creating a recommender system is data collection. This involves gathering data about users, such as their preferences, purchases, browsing history, and so on. This data can be obtained from various sources, such as databases or user logs.

Step 2: Data preparation

After the data is collected, it needs to be prepared. For example, data preprocessing may be required to clean it from noise and outliers. Various techniques can be used for this, such as standardization and normalization of the data.

Step 3: Model training

Once the data is prepared, we can proceed to model training. To create a recommender system, we can use various types of neural networks, such as convolutional neural networks or recurrent neural networks. The model should be trained on the training set of data.

Step 4: Model testing

After training the model, we need to test it to ensure that it works correctly. To do this, we can use a testing set of data. During testing, we can analyze metrics such as accuracy and recall.

Step 5: Model application

After the model has passed testing, it can be used to recommend content to users. For example, we can use the model to recommend science fiction books to a user who has previously purchased such books. In this case, the model can use data about the user to predict what they might be interested in.

The code for a recommender system will depend on what data about users and items is being used, as well as what neural network architecture is being employed. Below is an example code for a simple matrix factorization-based recommender system that utilizes user and item ratings data:

import numpy as np

#loading the data

ratings = np.array([

[5, 3, 0, 1],

[4, 0, 0, 1],

[1, 1, 0, 5],

[1, 0, 0, 4],

[0, 1, 5, 4],

])

# initializing the parameters

num_users, num_items = ratings.shape

num_factors = 2

learning_rate = 0.01

num_epochs = 1000

# initializing the user and item matrices

user_matrix = np.random.rand(num_users, num_factors)

item_matrix = np.random.rand(num_factors, num_items)

The code for a recommender system will depend on the type of user and item data being used, as well as the neural network architecture being used. Here is an example code for a simple matrix factorization-based recommender system that uses user and item ratings data:

import numpy as np

#load data

ratings = np.array([

[5, 3, 0, 1],

[4, 0, 0, 1],

[1, 1, 0, 5],

[1, 0, 0, 4],

[0, 1, 5, 4],

])

#initialize parameters

num_users, num_items = ratings.shape

num_factors = 2

learning_rate = 0.01

num_epochs = 1000

#initialize user and item matrices

user_matrix = np.random.normal(scale=1./num_factors, size=(num_users, num_factors))

item_matrix = np.random.normal(scale=1./num_factors, size=(num_factors, num_items))