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Index
Title Page Copyright and Credits
Mastering Numerical Computing with NumPy
Packt Upsell
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Contributors
About the authors 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
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Reviews
Working with NumPy Arrays
Technical requirements Why do we need NumPy? Who uses NumPy? Introduction to vectors and matrices Basics of NumPy array objects NumPy array operations Working with multidimensional arrays Indexing, slicing, reshaping, resizing, and broadcasting Summary
Linear Algebra with NumPy
Vector and matrix mathematics  What's an eigenvalue and how do we compute it? Computing the norm and determinant Solving linear equations Computing gradient Summary
Exploratory Data Analysis of Boston Housing Data with NumPy Statistics
Loading and saving files Exploring our dataset Looking at basic statistics Computing histograms Explaining skewness and kurtosis Trimmed statistics Box plots Computing correlations  Summary
Predicting Housing Prices Using Linear Regression
Supervised learning and linear regression  Independent and dependent variables Hyperparameters Loss and error functions Univariate linear regression with gradient descent Using linear regression to model housing prices Summary
Clustering Clients of a Wholesale Distributor Using NumPy
Unsupervised learning and clustering Hyperparameters The loss function Implementing our algorithm for a single variable Modifying our algorithm Summary
NumPy, SciPy, Pandas, and Scikit-Learn
NumPy and SciPy
Linear regression with SciPy and NumPy
NumPy and pandas
Quantitative modeling with stock prices using pandas
SciPy and scikit-learn
K-means clustering in housing data with scikit-learn
Summary
Advanced Numpy
NumPy internals
How does NumPy manage memory? Profiling NumPy code to understand the performance
Summary
Overview of High-Performance Numerical Computing Libraries
BLAS and LAPACK ATLAS Intel Math Kernel Library OpenBLAS Configuring NumPy with low-level libraries using AWS EC2
Installing BLAS and LAPACK Installing OpenBLAS Installing Intel MKL Installing ATLAS
Compute-intensive tasks for benchmarking
Matrix decomposition Singular-value decomposition Cholesky decomposition Lower-upper decomposition Eigenvalue decomposition QR decomposition Working with sparse linear systems
Summary
Performance Benchmarks
Why do we need a benchmark? Preparing for a performance benchmark
Performance with BLAS and LAPACK Performance with OpenBLAS Performance with ATLAS Performance with Intel MKL
Results Summary
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