資料搜尋諮詢服務
找不到您所需要的資料嗎?
我們能協助您找到最符合您研究需求的資訊
請撥打 +886-2-2799-3110
或透過電子郵件與我們聯絡 mi@hintoninfo.com
IHS_EWBIEEE xploreSTRATEGY ANALYTICSIHS_EWB_GF

頁面路徑選單

Mastering Numerical Computing with NumPy

  • LinkedIn
  • facebook
  • Twitter
出 版 商:Packt Publishing
出版日期:2018/06/28
About This Book
Grasp all aspects of numerical computing and understand NumPy
Explore examples to learn exploratory data analysis (EDA), regression, and clustering
Access NumPy libraries and use performance benchmarking to select the right tool
Who This Book Is For
Mastering Numerical Computing with NumPy is for you if you are a Python programmer, data analyst, data engineer, or a data science enthusiast, who wants to master the intricacies of NumPy and build solutions for your numeric and scientific computational problems. You are expected to have familiarity with mathematics to get the most out of this book.

What You Will Learn
Perform vector and matrix operations using NumPy
Perform exploratory data analysis (EDA) on US housing data
Develop a predictive model using simple and multiple linear regression
Understand unsupervised learning and clustering algorithms with practical use cases
Write better NumPy code and implement the algorithms from scratch
Perform benchmark tests to choose the best configuration for your system
In Detail
NumPy is one of the most important scientific computing libraries available for Python. Mastering Numerical Computing with NumPy teaches you how to achieve expert level competency to perform complex operations, with in-depth coverage of advanced concepts.

Beginning with NumPy's arrays and functions, you will familiarize yourself with linear algebra concepts to perform vector and matrix math operations. You will thoroughly understand and practice data processing, exploratory data analysis (EDA), and predictive modeling. You will then move on to working on practical examples which will teach you how to use NumPy statistics in order to explore US housing data and develop a predictive model using simple and multiple linear regression techniques. Once you have got to grips with the basics, you will explore unsupervised learning and clustering algorithms, followed by understanding how to write better NumPy code while keeping advanced considerations in mind. The book also demonstrates the use of different high-performance numerical computing libraries and their relationship with NumPy. You will study how to benchmark the performance of different configurations and choose the best for your system.

By the end of this book, you will have become an expert in handling and performing complex data manipulations.

Style and approach
This mastering guide will help you master your skills required to perform a complex numerical computation. The book contains the right mixture of theory and practical examples that will help you in dealing with the advanced NumPy and build solutions for your numeric and scientific computational problems

Invent your own Python scripts to automate your infrastructure
回上頁