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Index
Title Page Copyright and Credits
Neural Network Projects with Python
Dedication About Packt
Why subscribe? Packt.com
Contributors
About the author About the reviewer Packt is searching for authors like you
Preface
Who this book is for What this book covers To get the most out of this book
Download the example code files Download the color images Conventions used
Get in touch
Reviews
Machine Learning and Neural Networks 101
What is machine learning?
Machine learning algorithms The machine learning workflow
Setting up your computer for machine learning Neural networks
Why neural networks? The basic architecture of neural networks Training a neural network from scratch in Python
Feedforward The loss function Backpropagation Putting it all together
Deep learning and neural networks
pandas – a powerful data analysis toolkit in Python
pandas DataFrames Data visualization in pandas Data preprocessing in pandas
Encoding categorical variables Imputing missing values
Using pandas in neural network projects
TensorFlow and Keras – open source deep learning libraries
The fundamental building blocks in Keras
Layers – the atom of neural networks in Keras Models – a collection of layers Loss function – error metric for neural network training Optimizers – training algorithm for neural networks
Creating neural networks in Keras
Other Python libraries Summary
Predicting Diabetes with Multilayer Perceptrons
Technical requirements Diabetes – understanding the problem AI in healthcare
Automated diagnosis
The diabetes mellitus dataset Exploratory data analysis Data preprocessing
Handling missing values Data standardization Splitting the data into training, testing, and validation sets
MLPs
Model architecture
Input layer Hidden layers Activation functions
ReLU Sigmoid activation function
Model building in Python using Keras
Model building Model compilation Model training
Results analysis
Testing accuracy Confusion matrix ROC curve Further improvements
Summary Questions
Predicting Taxi Fares with Deep Feedforward Networks
Technical requirements Predicting taxi fares in New York City The NYC taxi fares dataset Exploratory data analysis
Visualizing geolocation data Ridership by day and hour
Data preprocessing
Handling missing values and data anomalies
Feature engineering
Temporal features Geolocation features
Feature scaling Deep feedforward networks
Model architecture Loss functions for regression problems
Model building in Python using Keras Results analysis Putting it all together Summary Questions
Cats Versus Dogs - Image Classification Using CNNs
Technical requirements Computer vision and object recognition Types of object recognition tasks Digital images as neural network input Building blocks of CNNs
Filtering and convolution Max pooling
Basic architecture of CNNs A review of modern CNNs
LeNet (1998) AlexNet (2012) VGG16 (2014) Inception (2014) ResNet (2015) Where we stand today
The cats and dogs dataset Managing image data for Keras Image augmentation Model building
Building a simple CNN Leveraging on pre-trained models using transfer learning
Results analysis Summary Questions
Removing Noise from Images Using Autoencoders
Technical requirements What are autoencoders? Latent representation Autoencoders for data compression The MNIST handwritten digits dataset Building a simple autoencoder
Building autoencoders in Keras Effect of hidden layer size on autoencoder performance
Denoising autoencoders
Deep convolutional denoising autoencoder
Denoising documents with autoencoders
Basic convolutional autoencoder Deep convolutional autoencoder
Summary Questions
Sentiment Analysis of Movie Reviews Using LSTM
Technical requirements Sequential problems in machine learning NLP and sentiment analysis
Why sentiment analysis is difficult
RNN
What's inside an RNN? Long- and short-term dependencies in RNNs The vanishing gradient problem
The LSTM network
LSTMs – the intuition What's inside an LSTM network?
Forget gate Input gate Output gate Making sense of this
The IMDb movie reviews dataset Representing words as vectors
One-hot encoding Word embeddings
Model architecture
Input Word embedding layer LSTM layer Dense layer Output
Model building in Keras
Importing data Zero padding Word embedding and LSTM layers Compiling and training models
Analyzing the results
Confusion matrix
Putting it all together Summary Questions
Implementing a Facial Recognition System with Neural Networks
Technical requirements Facial recognition systems Breaking down the face recognition problem
Face detection
Face detection in Python
Face recognition
Requirements of face recognition systems
Speed Scalability High accuracy with small data
One-shot learning
Naive one-shot prediction – Euclidean distance between two vectors
Siamese neural networks Contrastive loss The faces dataset Creating a Siamese neural network in Keras Model training in Keras Analyzing the results Consolidating our code Creating a real-time face recognition program
The onboarding process Face recognition process Future work
Summary Questions
What's Next?
Putting it all together
Machine Learning and Neural Networks 101 Predicting Diabetes with Multilayer Perceptrons Predicting Taxi Fares with Deep Feedforward Nets Cats Versus Dogs – Image Classification Using CNNs Removing Noise from Images Using Autoencoders Sentiment Analysis of Movie Reviews Using LSTM Implementing a Facial Recognition System with Neural Networks
Cutting edge advancements in neural networks
Generative adversarial networks Deep reinforcement learning
Limitations of neural networks The future of artificial intelligence and machine learning
Artificial general intelligence Automated machine learning
Keeping up with machine learning
Books Scientific journals Practicing on real-world datasets
Favorite machine learning tools Summary
Other Books You May Enjoy
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