Description
Test Bank for Building Python Programs Plus MyLab Programming with Pearson eText, Stuart Reges, Marty Stepp, Allison Obourn
Table of Contents
Chapter 1 Introduction to Python Programming
1.1 Basic Computing Concepts
Why Programming?
Hardware and Software
The Digital Realm
The Process of Programming
Why Python?
The Python Programming Environment
1.2 And Now: Python
Printing Output
String Literals (Strings)
Escape Sequences
Printing a Complex Figure
Comments, Whitespace, and Readability
1.3 Program Errors
Syntax Errors
Logic Errors (Bugs)
1.4 Procedural Decomposition
Functions
Flow of Control
Identifiers and Keywords
Functions That Call Other Functions
An Example Runtime Error
1.5 Case Study: Drawing Figures
Structured Version
Final Version without Redundancy
Analysis of Flow of Execution
Chapter 2 Data and Definite Loops
2.1 Basic Data Concepts
Types
Expressions
Literals
Arithmetic Operators
Precedence
Mixing and Converting Types
2.2 Variables
A Program with Variables
Increment/Decrement Operators
Printing Multiple Values
2.3 The for Loop
Using a Loop Variable
Details about Ranges
String Multiplication and Printing Partial Lines
Nested for Loops
2.4 Managing Complexity
Scope
Pseudocode
Constants
2.5 Case Study: Hourglass Figure
Problem Decomposition and Pseudocode
Initial Structured Version
Adding a Constant
Chapter 3 Parameters and Graphics
3.1 Parameters
The Mechanics of Parameters
Limitations of Parameters
Multiple Parameters
Parameters versus Constants
Optional Parameters
3.2 Returning Values
The math Module
The random Module
Defining Functions That Return Values
Returning Multiple Values
3.3 Interactive Programs
Sample Interactive Program
3.4 Graphics
Introduction to DrawingPanel
Drawing Lines and Shapes
Colors
Drawing with Loops
Text and Fonts
Images
Procedural Decomposition with Graphics
3.5 Case Study: Projectile Trajectory
Unstructured Solution
Structured Solution
Graphical Version
Chapter 4 Conditional Execution
4.1 if/else Statements
Relational Operators
Nested if/else Statements
Factoring if/else Statements
Testing Multiple Conditions
4.2 Cumulative Algorithms
Cumulative Sum
Min/Max Loops
Cumulative Sum with if
Roundoff Errors
4.3 Functions with Conditional Execution
Preconditions and Postconditions
Raising Exceptions
Revisiting Return Values
Reasoning about Paths
4.4 Strings
String Methods
Accessing Characters by Index
Converting between Letters and Numbers
Cumulative Text Algorithms
4.5 Case Study: Basal Metabolic Rate
One-Person Unstructured Solution
Two-Person Unstructured Solution
Two-Person Structured Solution
Procedural Design Heuristics
Chapter 5 Program Logic and Indefinite Loops
5.1 The while Loop
A Loop to Find the Smallest Divisor
Loop Priming
5.2 Fencepost Algorithms
Fencepost with if
Sentinel Loops
Sentinel with Min/Max
5.3 Boolean Logic
Logical Operators
Boolean Variables and Flags
Predicate Functions
Boolean Zen
Short-Circuited Evaluation
5.4 Robust Programs
The try/except Statement
Handling User Errors
5.5 Assertions and Program Logic
Reasoning about Assertions
A Detailed Assertions Example
5.6 Case Study: Number Guessing Game
Initial Version without Hinting
Randomized Version with Hinting
Final Robust Version
Chapter 6 File Processing
6.1 File-Reading Basics
Data and Files
Reading a File in Python
Line-Based File Processing
Structure of Files and Consuming Input
Prompting for a File
6.2 Token-Based Processing
Numeric Input
Handling Invalid Input
Mixing Lines and Tokens
Handling Varying Numbers of Tokens
Complex Input Files
6.3 Advanced File Processing
Multi-Line Input Records
File Output
Reading Data from the Web
6.4 Case Study: ZIP Code Lookup
Chapter 7 Lists
7.1 List Basics
Creating Lists
Accessing List Elements
Traversing a List
A Complete List Program
Random Access
List Methods
7.2 List-Traversal Algorithms
Lists as Parameters
Searching a List
Replacing and Removing Values
Reversing a List
Shifting Values in a List
Nested Loop Algorithms
List Comprehensions
7.3 Reference Semantics
Values and References
Modifying a List Parameter
The Value None
Mutability
Tuples
7.4 Multidimensional Lists
Rectangular Lists
Jagged Lists
Lists of Pixels
7.5 Case Study: Benford’s Law
Tallying Values
Completing the Program
Chapter 8 Dictionaries and Sets
8.1 Dictionary Basics
Creating a Dictionary
Dictionary Operations
Looping Over a Dictionary
Dictionary Ordering
8.2 Advanced Dictionary Usage
Dictionary for Tallying
Nested Collections
Dictionary Comprehensions
8.3 Sets
Set Basics
Set Operations
Set Efficiency
Set Example: Lottery
Chapter 9 Recursion
9.1 Thinking Recursively
A Nonprogramming Example
Iteration to Recursion
Structure of Recursive Solutions
Reversing a File
The Recursive Call Stack
9.2 Recursive Functions and Data
Integer Exponentiation
Greatest Common Divisor
Directory Crawler
9.3 Recursive Graphics
Cantor Set
Sierpinski Triangle
9.4 Recursive Backtracking
Traveling North/East
Eight Queens Puzzle
Stopping after One Solution
9.5 Case Study: Prefix Evaluator
Infix, Prefix, and Postfix Notation
Evaluating Prefix Expressions
Complete Program
Chapter 10 Searching and Sorting
10.1 Searching and Sorting Libraries
Binary Search
Sorting
Shuffling
10.2 Program Complexity
Empirical Analysis
Complexity Classes
10.3 Implementing Searching and Sorting Algorithms
Sequential Search
Binary Search
Recursive Binary Search
Selection Sort
10.4 Case Study: Implementing Merge Sort
Splitting and Merging lists
Recursive Merge Sort
Runtime Performance
Hybrid Approach
Chapter 11 Classes and Objects
11.1 Object-Oriented Programming
Classes and Objects
Date Objects
11.2 Object State and Behavior
Data Attributes
Initializers
Methods
Accessors and Mutators
Making Objects Printable
Object Equality and Ordering
11.3 Encapsulation
Motivation for Encapsulation
Private Attributes and Properties
Class Invariants
11.4 Case Study: Designing a Stock Class
Object-Oriented Design Heuristics
Stock Attributes and Method Headers
Stock Method and Property Implementation
Chapter 12 Functional Programming
12.1 Functional Programming Concepts
Side Effects
First-Class Functions
Higher-Order Functions
Lambda Expressions
12.2 Functional Operations on Collections
Using Map
Using Filter
Using Reduce
List Comprehensions
12.3 Function Closures
Generator Functions
Lazy Evaluation
Iterable Objects
Generator Expressions
12.4 Case Study: Perfect Numbers
Computing Sums
The Fifth Perfect Number
Leveraging Concurrency
Appendix A: Python Summary
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