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Key Features
¡¤Implement various deep-learning algorithms in Keras and see how deep-learning can be used in games
¡¤See how various deep-learning models and practical use-cases can be implemented using Keras
¡¤A practical, hands-on guide with real-world examples to give you a strong foundation in Keras
Book Description
This book starts by introducing you to supervised learning algorithms such as simple linear regression, the classical multilayer perceptron and more sophisticated deep convolutional networks. You will also explore image processing with recognition of hand written digit images, classification of images into different categories, and advanced objects recognition with related image annotations. An example of identification of salient points for face detection is also provided. Next you will be introduced to Recurrent Networks, which are optimized for processing sequence data such as text, audio or time series. Following that, you will learn about unsupervised learning algorithms such as Autoencoders and the very popular Generative Adversarial Networks (GAN). You will also explore non-traditional uses of neural networks as Style Transfer.
Finally, you will look at Reinforcement Learning and its application to AI game playing, another popular direction of research and application of neural networks.
What you will learn
¡¤Optimize step-by-step functions on a large neural network using the Backpropagation Algorithm
¡¤Fine-tune a neural network to improve the quality of results
¡¤Use deep learning for image and audio processing
¡¤Use Recursive Neural Tensor Networks (RNTNs) to outperform standard word embedding in special cases
¡¤Identify problems
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Preface
Chapter 1 Neural networks Foundations
Chapter 2 Keras Installation and API
Chapter 3 Deep Learning with ConvNets
Chapter 4 Generative Adversarial Networks and WaveNet
Chapter 5 Word Embeddings
Chapter 6 Recurrent Neural Network - RNN
Chapter 7 Additional Deep Learning Models
Chapter 8 AI Game Playing
Appendix: Conclusion
Index
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