Search icon CANCEL
Arrow left icon
Explore Products
Best Sellers
New Releases
Books
Videos
Audiobooks
Learning Hub
Conferences
Free Learning
Arrow right icon
Arrow up icon
GO TO TOP
Dancing with Python

You're reading from   Dancing with Python Learn to code with Python and Quantum Computing

Arrow left icon
Product type Paperback
Published in Aug 2021
Publisher Packt
ISBN-13 9781801077859
Length 744 pages
Edition 1st Edition
Languages
Arrow right icon
Author (1):
Arrow left icon
Robert S. Sutor Robert S. Sutor
Author Profile Icon Robert S. Sutor
Robert S. Sutor
Arrow right icon
View More author details
Toc

Table of Contents (29) Chapters Close

Preface 1. Chapter 1: Doing the Things That Coders Do 2. Part I: Getting to Know Python FREE CHAPTER
3. Chapter 2: Working with Expressions 4. Chapter 3: Collecting Things Together 5. Chapter 4: Stringing You Along 6. Chapter 5: Computing and Calculating 7. Chapter 6: Defining and Using Functions 8. Chapter 7: Organizing Objects into Classes 9. Chapter 8: Working with Files 10. PART II: Algorithms and Circuits
11. Chapter 9: Understanding Gates and Circuits 12. Chapter 10: Optimizing and Testing Your Code 13. Chapter 11: Searching for the Quantum Improvement 14. PART III: Advanced Features and Libraries
15. Chapter 12: Searching and Changing Text 16. Chapter 13: Creating Plots and Charts 17. Chapter 14: Analyzing Data 18. Chapter 15: Learning, Briefly 19. References
20. Other Books You May Enjoy
21. Index
Appendices
1. Appendix A: Tools 2. Appendix B: Staying Current 3. Appendix C: The Complete UniPoly Class
4. Appendix D: The Complete Guitar Class Hierarchy
5. Appendix E: Notices 6. Appendix F: Production Notes

What does this book cover?

Given the wide use of Python and the wide variety of learning and reference materials, I have chosen to structure this book into three main parts. I give you the information you need as you need it.

Before jumping into those, however, we together explore what coders do, how they think about using programming languages, and what they expect from the tools they use. That chapter,

  • 1. Doing the Things That Coders Do

is not specific to Python and is occasionally philosophical about the art and engineering of writing code.

After that introduction, the rest of the book proceeds in the following way.

Part I. Getting to Know Python

Being a full-featured programming language, Python implements the features described in the first chapter mentioned above. In this part, we learn how to write basic expressions including numbers and textual strings, collect objects together using data structures such as lists, and explore Python’s core and extended mathematical facilities.

We then jump into defining functions to organize and make our code reusable, introduce object-oriented coding through classes, and finally interact with information within the computing environment via files.

  • 2. Working with Expressions
  • 3. Collecting Things Together
  • 4. Stringing You Along
  • 5. Computing and Calculating
  • 6. Defining and Using Functions
  • 7. Organizing Objects into Classes
  • 8. Working with Files

The Python modules we introduce in this part include abc, cmath, collections, datetime, enum, fractions, functools, glob, json, math, os, pickle, random, shutil, sympy, and time.

Part II. Algorithms and Circuits

Now that we understand Python’s core features, we’re ready to explore how to make it useful to solve problems. Although many books only speak about functions and classes, we enlarge our discussion to include gates and circuits for classical and quantum computing. It’s then a good time to see how we can test our code and make it run faster.

We then look at traditional problems and see how we can attack them classically. Quantum computing’s reason for existence and development is that it might solve some of those problems significantly faster. We explore the how and why of that, and I point you to further reading on the topic.

  • 9. Understanding Gates and Circuits
  • 10. Optimizing and Testing Your Code
  • 11. Searching for the Quantum Improvement

The Python modules we introduce in this part include coverage, pytest, qiskit, time, timeit, and wrapt.

Part III. Advanced Features and Libraries

In the final part, we address some heavy-duty but frequent applications of Python. Though we worked with text as strings earlier in the book, we revisit it with more sophisticated tools such as regular expressions and natural language processing (NLP).

The final three chapters focus on data: how to bring it into an application and manipulate it, how to visualize what it represents, and how to gain insights from it through machine learning. Machine learning itself is worth a book or two (or three or ten), so I introduce the key concepts and tools, and you can then jump off into more sophisticated Python and AI applications.

  • 12. Searching and Changing Text
  • 13. Creating Plots and Charts
  • 14. Analyzing Data
  • 15. Learning, Briefly

The Python modules we introduce in this part include flashtext, matplotlib, nltk, pandas, pillow, pytorch, re, scikit-learn, spacy, string, and textblob.

lock icon The rest of the chapter is locked
Register for a free Packt account to unlock a world of extra content!
A free Packt account unlocks extra newsletters, articles, discounted offers, and much more. Start advancing your knowledge today.
Unlock this book and the full library FREE for 7 days
Get unlimited access to 7000+ expert-authored eBooks and videos courses covering every tech area you can think of
Renews at $19.99/month. Cancel anytime