Mastering Python Data Analysis
English | ISBN: 1783553294 | 2016 | EPUB | 284 Pages | 16 MB
Become an expert at using Python for advanced statistical analysis of data using real-world examples
About This Book
Clean, format, and explore data using graphical and numerical summaries
Leverage the IPython environment to efficiently analyze data with Python
Packed with easy-to-follow examples to develop advanced computational skills for the analysis of complex data
Who This Book Is For
If you are a competent Python developer who wants to take your data analysis skills to the next level by solving complex problems, then this advanced guide is for you. Familiarity with the basics of applying Python libraries to data sets is assumed.
What You Will Learn
Read, sort, and map various data into Python and Pandas
Recognise patterns so you can understand and explore data
Use statistical models to discover patterns in data
Review classical statistical inference using Python, Pandas, and SciPy
Detect similarities and differences in data with clustering
Clean your data to make it useful
Work in Jupyter Notebook to produce publication ready figures to be included in reports
Python, a multi-paradigm programming language, has become the language of choice for data scientists for data analysis, visualization, and machine learning. Ever imagined how to become an expert at effectively approaching data analysis problems, solving them, and extracting all of the available information from your data? Well, look no further, this is the book you want!
Through this comprehensive guide, you will explore data and present results and conclusions from statistical analysis in a meaningful way. You'll be able to quickly and accurately perform the hands-on sorting, reduction, and subsequent analysis, and fully appreciate how data analysis methods can support business decision-making.
You'll start off by learning about the tools available for data analysis in Python and will then explore the statistical models that are used to identify patterns in data. Gradually, you'll move on to review statistical inference using Python, Pandas, and SciPy. After that, we'll focus on performing regression using computational tools and you'll get to understand the problem of identifying clusters in data in an algorithmic way. Finally, we delve into advanced techniques to quantify cause and effect using Bayesian methods and you'll discover how to use Python's tools for supervised machine learning.
Style and approach
This book takes a step-by-step approach to reading, processing, and analyzing data in Python using various methods and tools. Rich in examples, each topic connects to real-world examples and retrieves data directly online where possible. With this book, you are given the knowledge and tools to explore any data on your own, encouraging a curiosity befitting all data scientists.
New Trends in Data Warehousing and Data Analysis
Using SQLite: Small. Fast. Reliable. Choose Any Three.
Google BigQuery Analytics
S Q L: The Ultimate Guide From Beginner To Expert - Learn And Master SQL In No Time!
Pro SQL Server Relational Database Design and Implementation
Microsoft SQL Server 2000 Unleashed, 2nd Edition
SAS/Warehouse Administrator 2.3. Metadata API Reference
Pro Oracle Fusion Applications: Installation and Administration
Database Systems: A Pragmatic Approach, Second Edition
Handbook On Big Data Analytics
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.
Real-World Machine Learning(2643)
Data Analytics: Models and Algorithms for (2451)
Mastering Data Mining with Python - Find p(2361)
Python Data Science Handbook: Essential To(2212)
Practical Data Analysis - Second Edition(2203)
Principles of Data Mining, 3rd edition(2064)
Text Analytics with Python: A Practical Re(2018)
Tableau: Creating Interactive Data Visuali(1924)
Mastering Social Media Mining with Python(1921)
Introduction to Artificial Intelligence(1891)
Big Data Analytics with Spark and Hadoop(1880)
Beginning SQL Queries: From Novice to Prof(1880)
Murach's MySQL, 2nd Edition(1840)
Scientific Computing with Python 3 - Secon(1784)
R: Unleash Machine Learning Techniques(1741)