Remove {nbsp} twice
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@ -4,7 +4,7 @@ The second edition has six main objectives:
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1. Cover additional ML topics: additional unsupervised learning techniques (including clustering, anomaly detection, density estimation and mixture models), additional techniques for training deep nets (including self-normalized networks), additional computer vision techniques (including Xception, SENet, object detection with YOLO, and semantic segmentation using R-CNN), handling sequences using CNNs (including WaveNet), natural language processing using RNNs, CNNs and Transformers, generative adversarial networks
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2. Cover additional libraries and APIs: Keras, the Data API, TF-Agents for Reinforcement Learning, training and deploying TF models at scale using the Distribution Strategies API, TF-Serving and Google Cloud AI Platform. Also briefly introduce TF Transform, TFLite, TF Addons/Seq2Seq, TensorFlow.js and more.
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3. Mention some of the latest important results from Deep Learning research.
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4. Migrate all TensorFlow chapters to TensorFlow{nbsp}2, and use TensorFlow's implementation of the Keras API (called tf.keras) whenever possible, to simplify the code examples.
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4. Migrate all TensorFlow chapters to TensorFlow 2, and use TensorFlow's implementation of the Keras API (called tf.keras) whenever possible, to simplify the code examples.
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5. Update the code examples to use the latest version of Scikit-Learn, NumPy, Pandas, Matplotlib and other libraries.
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6. Clarify some sections and fix some errors, thanks to plenty of great feedback from readers.
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@ -61,7 +61,7 @@ More specifically, here are the main changes for the 2nd edition (other than cla
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* Added a note about the risks of adaptive optimization methods.
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* Updated the practical guidelines.
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* Chapter 12 – Custom Models and Training with TensorFlow (completely rewritten)
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* A tour of TensorFlow{nbsp}2.
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* A tour of TensorFlow 2.
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* TensorFlow's lower-level Python API.
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* Writing custom loss functions, metrics, layers, models.
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* Using auto-differentiation and creating custom training algorithms.
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