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Index
Title Page Copyright and Credits
Hands-On Automated Machine Learning
Packt Upsell
Why subscribe? PacktPub.com
Contributors
About the authors About the reviewers 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
Introduction to AutoML
Scope of machine learning What is AutoML? Why use AutoML and how does it help? When do you automate ML? What will you learn?
Core components of AutoML systems
Automated feature preprocessing Automated algorithm selection Hyperparameter optimization
Building prototype subsystems for each component Putting it all together as an end–to–end AutoML system
Overview of AutoML libraries
Featuretools Auto-sklearn MLBox TPOT
Summary
Introduction to Machine Learning Using Python
Technical requirements Machine learning
Machine learning process Supervised learning Unsupervised learning
Linear regression
What is linear regression?
Working of OLS regression Assumptions of OLS
Where is linear regression used? By which method can linear regression be implemented?
Important evaluation metrics – regression algorithms Logistic regression
What is logistic regression? Where is logistic regression used? By which method can logistic regression be implemented?
Important evaluation metrics – classification algorithms Decision trees
What are decision trees? Where are decision trees used? By which method can decision trees be implemented?
Support Vector Machines
What is SVM? Where is SVM used? By which method can SVM be implemented?
k-Nearest Neighbors
What is k-Nearest Neighbors? Where is KNN used? By which method can KNN be implemented?
Ensemble methods
What are ensemble models?
Bagging Boosting Stacking/blending
Comparing the results of classifiers Cross-validation Clustering
What is clustering? Where is clustering used? By which method can clustering be implemented? Hierarchical clustering Partitioning clustering (KMeans)
Summary
Data Preprocessing
Technical requirements Data transformation
Numerical data transformation
Scaling Missing values Outliers
Detecting and treating univariate outliers Inter-quartile range Filtering values Winsorizing Trimming Detecting and treating multivariate outliers
Binning Log and power transformations
Categorical data transformation
Encoding Missing values for categorical data transformation
Text preprocessing
Feature selection
Excluding features with low variance Univariate feature selection Recursive feature elimination Feature selection using random forest Feature selection using dimensionality reduction
Principal Component Analysis
Feature generation Summary
Automated Algorithm Selection
Technical requirements Computational complexity
Big O notation
Differences in training and scoring time
Simple measure of training and scoring time  Code profiling in Python Visualizing performance statistics Implementing k-NN from scratch Profiling your Python script line by line
Linearity versus non-linearity
Drawing decision boundaries Decision boundary of logistic regression The decision boundary of random forest Commonly used machine learning algorithms
Necessary feature transformations Supervised ML
Default configuration of auto-sklearn Finding the best ML pipeline for product line prediction Finding the best machine learning pipeline for network anomaly detection
Unsupervised AutoML
Commonly used clustering algorithms Creating sample datasets with sklearn K-means algorithm in action The DBSCAN algorithm in action Agglomerative clustering algorithm in action Simple automation of unsupervised learning Visualizing high-dimensional datasets Principal Component Analysis in action t-SNE in action Adding simple components together to improve the pipeline
Summary
Hyperparameter Optimization
Technical requirements Hyperparameters Warm start Bayesian-based hyperparameter tuning An example system Summary
Creating AutoML Pipelines
Technical requirements An introduction to machine learning pipelines A simple pipeline FunctionTransformer A complex pipeline Summary
Dive into Deep Learning
Technical requirements Overview of neural networks
Neuron Activation functions
The step function The sigmoid function The ReLU function The tanh function
A feed-forward neural network using Keras Autoencoders Convolutional Neural Networks
Why CNN? What is convolution? What are filters? The convolution layer The ReLU layer The pooling layer The fully connected layer
Summary
Critical Aspects of ML and Data Science Projects
Machine learning as a search Trade-offs in machine learning Engagement model for a typical data science project The phases of an engagement model
Business understanding Data understanding Data preparation Modeling Evaluation Deployment
Summary
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