Fr. 46.90

Python for Data Science - 3rd Edition

English · Paperback / Softback

Shipping usually within 4 to 7 working days

Description

Read more

Let Python do the heavy lifting for you as you analyze large datasets
 
Python for Data Science For Dummies lets you get your hands dirty with data using one of the top programming languages. This beginner's guide takes you step by step through getting started, performing data analysis, understanding datasets and example code, working with Google Colab, sampling data, and beyond. Coding your data analysis tasks will make your life easier, make you more in-demand as an employee, and open the door to valuable knowledge and insights. This new edition is updated for the latest version of Python and includes current, relevant data examples.
* Get a firm background in the basics of Python coding for data analysis
* Learn about data science careers you can pursue with Python coding skills
* Integrate data analysis with multimedia and graphics
* Manage and organize data with cloud-based relational databases
 
Python careers are on the rise. Grab this user-friendly Dummies guide and gain the programming skills you need to become a data pro.

List of contents

Introduction 1
 
Part 1: Getting Started with Data Science and Python 7
 
Chapter 1: Discovering the Match between Data Science and Python 9
 
Chapter 2: Introducing Python's Capabilities and Wonders 21
 
Chapter 3: Setting Up Python for Data Science 33
 
Chapter 4: Working with Google Colab 49
 
Part 2: Getting Your Hands Dirty with Data 71
 
Chapter 5: Working with Jupyter Notebook 73
 
Chapter 6: Working with Real Data 83
 
Chapter 7: Processing Your Data 105
 
Chapter 8: Reshaping Data 131
 
Chapter 9: Putting What You Know into Action 143
 
Part 3: Visualizing Information 157
 
Chapter 10: Getting a Crash Course in Matplotlib 159
 
Chapter 11: Visualizing the Data 177
 
Part 4: Wrangling Data 199
 
Chapter 12: Stretching Python's Capabilities 201
 
Chapter 13: Exploring Data Analysis 223
 
Chapter 14: Reducing Dimensionality 251
 
Chapter 15: Clustering 273
 
Chapter 16: Detecting Outliers in Data 291
 
Part 5: Learning from Data 305
 
Chapter 17: Exploring Four Simple and Effective Algorithms 307
 
Chapter 18: Performing Cross-Validation, Selection, and Optimization 327
 
Chapter 19: Increasing Complexity with Linear and Nonlinear Tricks 351
 
Chapter 20: Understanding the Power of the Many 391
 
Part 6: The Part of Tens 413
 
Chapter 21: Ten Essential Data Resources 415
 
Chapter 22: Ten Data Challenges You Should Take 421
 
Index 431

About the author










John Paul Mueller is a freelance author and technical editor who has written 124 books on topics ranging like networking, home security, database management, and heads-down programming. Luca Massaron is a data scientist specialized in solving real-world problems with AI, machine learning, and algorithms. He is also a Kaggle Grandmaster and a Google Developer Expert.

Customer reviews

No reviews have been written for this item yet. Write the first review and be helpful to other users when they decide on a purchase.

Write a review

Thumbs up or thumbs down? Write your own review.

For messages to CeDe.ch please use the contact form.

The input fields marked * are obligatory

By submitting this form you agree to our data privacy statement.