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Bird, Andrew. The the Python Workshop [[electronic resource]]: A Practical, No-Nonsense Introduction to Python Development. — Birmingham: Packt Publishing, Limited, 2019. — 1 online resource (606 p.). — Description based upon print version of record. — <URL:http://elib.fa.ru/ebsco/2291496.pdf>.

Record create date: 11/23/2019

Subject: Python (Computer program language)

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Cut through the noise and get real results with a step-by-step approach to learning Python 3.X programming.

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Table of Contents

  • Cover
  • FM
  • Copyright
  • Table of Contents
  • Preface
  • Chapter 1: Vital Python – Math, Strings, Conditionals, and Loops
    • Introduction
    • Vital Python
    • Numbers: Operations, Types, and Variables
      • To Open a Jupyter Notebook
    • Python as a Calculator
      • Standard Math Operations
      • Basic Math Operations
      • Order of Operations
      • Exercise 1: Getting to Know the Order of Operations
      • Spacing in Python
      • Number Types: Integers and Floats
      • Exercise 2: Integer and Float Types
      • Complex Number Types
      • Errors in Python
      • Variables
      • Variable Assignment
      • Exercise 3: Assigning Variables
      • Changing Types
      • Reassigning Variables in Terms of Themselves
      • Activity 1: Assigning Values to Variables
      • Variable Names
      • Exercise 4: Variable Names
      • Multiple Variables
      • Exercise 5: Multiple Variables in Python
      • Comments
      • Exercise 6: Comments in Python
      • Docstrings
      • Activity 2: Finding a Solution Using the Pythagorean Theorem in Python
    • Strings: Concatenation, Methods, and input()
      • String Syntax
      • Exercise 7: String Error Syntax
      • Escape Sequences with Quotes
      • Multi-Line Strings
      • The print() Function
      • Exercise 8: Displaying Strings
      • String Operations and Concatenation
      • Exercise 9: String Concatenation
    • String Interpolation
      • Comma Separators
      • Format
      • The len() Function
      • String Methods
      • Exercise 10: String Methods
      • Casting
      • Exercise 11: Types and Casting
      • The input() Function
      • Exercise 12: The input() Function
      • Activity 3: Using the input() Function to Rate Your Day
    • String Indexing and Slicing
      • Indexing
    • Slicing
      • Strings and Their Methods
    • Booleans and Conditionals
      • Booleans
      • Exercise 13: Boolean Variables
      • Logical Operators
      • Comparison Operators
      • Exercise 14: Comparison Operators
      • Comparing Strings
      • Exercise 15: Comparing Strings
      • Conditionals
      • The if Syntax
      • Indentation
      • Exercise 16: Using the if Syntax
      • if else
      • Exercise 17: Using the if-else Syntax
      • The elif Statement
    • Loops
      • The while Loops
      • An Infinite Loop
      • break
      • Activity 4: Finding the Least Common Multiple (LCM)
      • Programs
      • Exercise 18: Calculating Perfect Squares
      • Exercise 19: Real Estate Offer
      • The for Loop
      • Exercise 20: Using for Loops
      • The continue Keyword
      • Activity 5: Building Conversational Bots Using Python
    • Summary
  • Chapter 2: Python Structures
    • Introduction
    • The Power of Lists
      • Exercise 21: Working with Python Lists
      • Matrices as Nested Lists
      • Exercise 22: Using a Nested List to Store Data from a Matrix
      • Activity 6: Using a Nested List to Store Employee Data
    • Matrix Operations
      • Exercise 23: Implementing Matrix Operations (Addition and Subtraction)
      • Matrix Multiplication Operations
      • Exercise 24: Implementing Matrix Operations (Multiplication)
    • List Methods
      • Exercise 25: Basic List Operations
      • Accessing an Item from a List
      • Exercise 26: Accessing an Item from Shopping List Data
      • Adding an Item to a List
      • Exercise 27: Adding Items to Our Shopping List
    • Dictionary Keys and Values
      • Exercise 28: Using a Dictionary to Store a Movie Record
      • Activity 7: Storing Company Employee Table Data Using a List and a Dictionary
      • Zipping and Unzipping Dictionaries Using zip()
      • Exercise 29: Using the zip() Method to Manipulate Dictionaries
    • Dictionary Methods
      • Exercise 30: Accessing a Dictionary Using Dictionary Methods
    • Tuples
      • Exercise 31: Exploring Tuple Properties in Our Shopping List
    • A Survey of Sets
      • Exercise 32: Using Sets in Python
      • Set Operations
      • Exercise 33: Implementing Set Operations
    • Choosing Types
    • Summary
  • Chapter 3: Executing Python – Programs, Algorithms, and Functions
    • Introduction
    • Python Scripts and Modules
      • Exercise 34: Writing and Executing Our First Script
      • Exercise 35: Writing and Importing Our First Module
      • Shebangs in Ubuntu
      • Docstrings
      • Exercise 36: Adding a Docstring to my_module.py
      • Imports
      • Exercise 37: Finding the System Date
      • The if __name__ == "__main__" Statement
      • Activity 8: What's the Time?
    • Python Algorithms
      • Exercise 38: The Maximum Number
      • Time Complexity
      • Time Complexity for the Maximum Number Algorithm
      • Sorting Algorithms
      • Exercise 39: Using Bubble Sort in Python
      • Searching Algorithms
      • Exercise 40: Linear Search in Python
      • Exercise 41: Binary Search in Python
    • Basic Functions
      • Exercise 42: Defining and Calling the Function in Shell
      • Exercise 43: Defining and Calling the Function in Python Script
      • Exercise 44: Importing and Calling the Function from the Shell
      • Positional Arguments
      • Keyword Arguments
      • Exercise 45: Defining the Function with Keyword Arguments
      • Exercise 46: Defining the Function with Positional and Keyword Arguments
      • Exercise 47: Using **kwargs
      • Activity 9: Formatting Customer Names
    • Iterative Functions
      • Exercise 48: A Simple Function with a for Loop
      • Exiting Early
      • Exercise 49: Exiting the Function During the for Loop
      • Activity 10: The Fibonacci Function with an Iteration
    • Recursive Functions
      • A Terminating Case
      • Exercise 50: Recursive Countdown
      • Exercise 51: Factorials with Iteration and Recursion
      • Activity 11: The Fibonacci Function with Recursion
    • Dynamic Programming
      • Exercise 52: Summing Integers
      • Timing Your Code
      • Exercise 53: Timing Your Code
      • Activity 12: The Fibonacci Function with Dynamic Programming
    • Helper Functions
      • Don't Repeat Yourself
      • Exercise 54: Helper Currency Conversion
    • Variable Scope
      • Variables
      • Defining inside versus outside a Function
      • The Global Keyword
      • The Nonlocal Keyword
    • Lambda Functions
      • Exercise 55: The First Item in a List
      • Mapping with Lambda Functions
      • Exercise 56: Mapping with a Logistic Transform
      • Filtering with Lambda Functions
      • Exercise 57: Using the Filter Lambda
      • Sorting with Lambda Functions
    • Summary
  • Chapter 4: Extending Python, Files, Errors, and Graphs
    • Introduction
    • Reading Files
      • Exercise 58: Reading a Text File Using Python
      • Exercise 59: Reading Partial Content from a Text File
    • Writing Files
      • Exercise 60: Creating and Writing Content to Files to Record the Date and Time in a Text File
    • Preparing for Debugging (Defensive Code)
      • Writing Assertions
      • Exercise 61: Working with Incorrect Parameters to Find the Average Using Assert with Functions
    • Plotting Techniques
      • Exercise 62: Drawing a Scatter Plot to Study the Data between Ice Cream Sales versus Temperature
      • Exercise 63: Drawing a Line Chart to Find the Growth in Stock Prices
      • Exercise 64: Plotting Bar Plots to Grade Students
      • Exercise 65: Creating a Pie Chart to Visualize the Number of Votes in a School
      • Exercise 66: Generating a Heatmap to Visualize the Grades of Students
      • Exercise 67: Generating a Density Plot to Visualize the Score of Students
      • Exercise 68: Creating a Contour Plot
      • Extending Graphs
      • Exercise 69: Generating 3D plots to Plot a Sine Wave
    • The Don'ts of Plotting Graphs
      • Manipulating the Axis
      • Cherry Picking Data
      • Wrong Graph, Wrong Context
      • Activity 13: Visualizing the Titanic Dataset Using a Pie Chart and Bar Plots
    • Summary
  • Chapter 5: Constructing Python – Classes and Methods
    • Introduction
    • Classes and Objects
      • Exercise 70: Exploring Strings
    • Defining Classes
      • Exercise 71: Creating a Pet Class
    • The __init__ method
      • Exercise 72: Creating a Circle Class
      • Keyword Arguments
      • Exercise 73: The Country Class with Keyword Arguments
    • Methods
      • Instance Methods
      • Exercise 74: Adding an Instance Method to Our Pet Class
      • Adding Arguments to Instance Methods
      • Exercise 75: Computing the Size of Our Country
      • The __str__ method
      • Exercise 76: Adding an __str__ Method to the Country Class
      • Static Methods
      • Exercise 77: Refactoring Instance Methods Using a Static Method
      • Class Methods
      • Exercise 78: Extending Our Pet Class with Class Methods
    • Properties
      • The Property Decorator
      • Exercise 79: The Full Name Property
      • The Setter Method
      • Exercise 80: Writing a Setter Method
      • Validation via the Setter Method
    • Inheritance
      • The DRY Principle Revisited
      • Single Inheritance
      • Exercise 81: Inheriting from the Person Class
      • Sub-Classing Classes from Python Packages
      • Exercise 82: Sub-Classing the datetime.date Class
      • Overriding Methods
      • Calling the Parent Method with super()
      • Exercise 83: Overriding Methods Using super()
      • Multiple Inheritance
      • Exercise 84: Creating a Consultation Appointment System
      • Method Resolution Order
      • Activity 14: Creating Classes and Inheriting from a Parent Class
    • Summary
  • Chapter 6: The Standard Library
    • Introduction
    • The Importance of the Standard Library
      • High-Level Modules
      • Lower-Level Modules
      • Knowing How to Navigate in the Standard Library
      • Exercise 85: Using the dataclass Module
      • Exercise 86: Extending the echo.py Example
    • Dates and Times
      • Exercise 87: Comparing datetime across Time Zones
      • Exercise 88: Calculating the Time Delta between Two datetime Objects
      • Exercise 89: Calculating the Unix Epoch Time
      • Activity 15: Calculating the Time Elapsed to Run a Loop
    • Interacting with the OS
      • OS Information
      • Exercise 90: Inspecting the Current Process Information
      • Using pathlib
      • Exercise 91: Using the glob Pattern to List Files within a Directory
      • Listing All Hidden Files in Your Home Directory
    • Using the subprocess Module
      • Exercise 92: Customizing Child Processes with env vars
      • Activity 16: Testing Python Code
    • Logging
      • Using Logging
      • Logger Object
      • Exercise 93: Using a logger Object
      • Logging in warning, error, and fatal Categories
      • Configuring the Logging Stack
      • Exercise 94: Configuring the Logging Stack
    • Collections
      • Counters
      • Exercise 95: Counting Words in a Text Document
      • defaultdict
      • Exercise 96: Refactoring Code with defaultdict
      • ChainMap
    • Functools
      • Caching with functools.lru_cache
      • Exercise 97: Using lru_cache to Speed Up Our Code
      • Partial
      • Exercise 98: Creating a print Function That Writes to stderr
      • Activity 17: Using partial on class Methods
    • Summary
  • Chapter 7: Becoming Pythonic
    • Introduction
    • Using List Comprehensions
      • Exercise 99: Introducing List Comprehensions
      • Exercise 100: Using Multiple Input Lists
      • Activity 18: Building a Chess Tournament
    • Set and Dictionary Comprehensions
      • Exercise 101: Using Set Comprehensions
      • Exercise 102: Using Dictionary Comprehensions
      • Activity 19: Building a Scorecard Using Dictionary Comprehensions and Multiple Lists
    • Default Dictionary
      • Exercise 103: Adopting a Default Dict
    • Iterators
      • Exercise 104: The Simplest Iterator
      • Exercise 105: A Custom Iterator
      • Exercise 106: Controlling the Iteration
    • Itertools
      • Exercise 107: Using Infinite Sequences and takewhile
      • Exercise 108: Turning a Finite Sequence into an Infinite One, and Back Again
    • Generators
      • Exercise 109: Generating a Sieve
      • Activity 20: Using Random Numbers to Find the Value of Pi
    • Regular Expressions
      • Exercise 110: Matching Text with Regular Expressions
      • Exercise 111: Using Regular Expressions to Replace Text
      • Activity 21: Regular Expressions
    • Summary
  • Chapter 8: Software Development
    • Introduction
    • Debugging
      • Exercise 112: Debugging a Salary Calculator
      • Activity 22: Debugging Sample Python Code for an Application
    • Automated Testing
      • Test Categorization
      • Test Coverage
      • Writing Tests in Python with Unit Testing
      • Exercise 113: Checking Sample Code with Unit Testing
      • Writing a Test with pytest
    • Creating a PIP Package
      • Exercise 114: Creating a Distribution That Includes Multiple Files within a Package
      • Adding More Information to Your Package
    • Creating Documentation the Easy Way
      • Docstrings
      • Using Sphinx
      • Exercise 115: Documenting a Divisible Code File
      • More Complex Documentation
    • Source Management
      • Repository
      • Commit
      • Staging Area
      • Undoing Local Changes
      • History
      • Ignoring Files
      • Exercise 116: Making a Change in CPython Using git
    • Summary
  • Chapter 9: Practical Python – Advanced Topics
    • Introduction
    • Developing Collaboratively
      • Exercise 117: Writing Python on GitHub as a Team
    • Dependency Management
      • Virtual Environments
      • Exercise 118: Creating and Setting Up a conda Virtual Environment to Install numpy and pandas
      • Saving and Sharing Virtual Environments
      • Exercise 119: Sharing Environments between a conda Server and Your Local System
    • Deploying Code into Production
      • Exercise 120: Dockerizing Your Fizzbuzz Tool
    • Multiprocessing
      • Multiprocessing with execnet
      • Exercise 121: Working with execnet to Execute a Simple Python Squaring Program
      • Multiprocessing with the Multiprocessing Package
      • Exercise 122: Using the Multiprocessing Package to Execute a Simple Python Program
      • Multiprocessing with the Threading Package
      • Exercise 123: Using the Threading Package
    • Parsing Command-Line Arguments in Scripts
      • Exercise 124: Introducing argparse to Accept Input from the User
      • Positional Arguments
      • Exercise 125: Using Positional Arguments to Accept Source and Destination Inputs from a User
    • Performance and Profiling
      • Changing Your Python
      • PyPy
      • Exercise 126: Using PyPy to Find the Time to Get a List of Prime Numbers
      • Cython
      • Exercise 127: Adopting Cython to Find the Time Taken to get a List of Prime Numbers
    • Profiling
      • Profiling with cProfile
      • Activity 23: Generating a List of Random Numbers in a Python Virtual Environment
    • Summary
  • Chapter 10: Data Analytics with pandas and NumPy
    • Introduction
    • NumPy and Basic Stats
      • Exercise 128: Converting Lists to NumPy Arrays
      • Exercise 129: Calculating the Mean of the Test Score
      • Exercise 130: Finding the Median from a Collection of Income Data
      • Skewed Data and Outliers
      • Standard Deviation
      • Exercise 131: Finding the Standard Deviation from Income Data
    • Matrices
      • Exercise 132: Matrices
      • Computation Time for Large Matrices
      • Exercise 133: Creating an Array to Implement NumPy Computations
    • The pandas Library
      • Exercise 134: Using DataFrames to Manipulate Stored Student testscore Data
      • Exercise 135: DataFrame Computations with the Student testscore Data
      • Exercise 136: Computing DataFrames within DataFrames
      • New Rows and NaN
      • Exercise 137: Concatenating and Finding the Mean with Null Values for Our testscore Data
      • Cast Column Types
    • Data
      • Downloading Data
      • Downloading the Boston Housing Data from GitHub
      • Reading Data
      • Exercise 138: Reading and Viewing the Boston Housing Dataset
      • Exercise 139: Gaining Data Insights on the Boston Housing Dataset
    • Null Values
      • Exercise 140: Null Value Operations on the Dataset
      • Replacing Null Values
    • Visual Analysis
      • The matplotlib Library
      • Histograms
      • Exercise 141: Creating a Histogram Using the Boston Housing Dataset
      • Histogram Functions
      • Scatter Plots
      • Exercise 142: Creating a Scatter Plot for the Boston Housing Dataset
      • Correlation
      • Exercise 143: Correlation Values from the Dataset
      • Regression
      • Plotting a Regression Line
      • StatsModel Regression Output
      • Additional Models
      • Exercise 144: Box Plots
      • Violin Plots
      • Activity 24: Data Analysis to Find the Outliers in Pay versus the Salary Report in the UK Statistics Dataset
    • Summary
  • Chapter 11: Machine Learning
    • Introduction
    • Introduction to Linear Regression
      • Simplify the Problem
      • From One to N-Dimensions
      • The Linear Regression Algorithm
      • Exercise 145: Using Linear Regression to Predict the Accuracy of the Median Values of Our Dataset
      • Linear Regression Function
    • Cross-Validation
      • Exercise 146: Using the cross_val_score Function to Get Accurate Results on the Dataset
    • Regularization: Ridge and Lasso
    • K-Nearest Neighbors, Decision Trees, and Random Forests
      • K-Nearest Neighbors
      • Exercise 147: Using K-Nearest Neighbors to Find the Median Value of the Dataset
      • Exercise 148: K-Nearest Neighbors with GridSearchCV to Find the Optimal Number of Neighbors
      • Decision Trees and Random Forests
      • Exercise 149: Decision Trees and Random Forests
      • Random Forest Hyperparameters
      • Exercise 150: Random Forest Tuned to Improve the Prediction on Our Dataset
    • Classification Models
      • Exercise 151: Preparing the Pulsar Dataset and Checking for Null Values
      • Logistic Regression
      • Exercise 152: Using Logistic Regression to Predict Data Accuracy
      • Other Classifiers
      • Naive Bayes
      • Exercise 153: Using GaussianNB, KneighborsClassifier, DecisionTreeClassifier, and RandomForestClassifier to Predict Accuracy in Our Dataset
      • Confusion Matrix
      • Exercise 154: Finding the Pulsar Percentage from the Dataset
      • Exercise 155: Confusion Matrix and Classification Report for the Pulsar Dataset
    • Boosting Methods
      • Exercise 156: Using AdaBoost to Predict the Best Optimal Values
      • Activity 25: Using Machine Learning to Predict Customer Return Rate Accuracy
    • Summary
  • Appendix
  • Index

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