Training Programs Programming Python Developer
cart-icn

You already have a course in your cart

You can only add one course to your cart at a time! By adding this course, you will replace the existing course from your cart. How would you like to proceed?

Python Developer

Whether you're new to programming or just want to learn a new language, this in-depth course will teach you the ins and outs of Python programming.

python-programming
$995.00 (USD)

Have a question?We're here to help

Overview

Objective

Outline

  1. Introduction to Python
    1. Python Basics
      1. Getting Familiar with the Terminal
      2. Running Python
      3. Running a Python File
      4. Exercise: Hello, world!
      5. Literals
      6. Exercise: Exploring Types
      7. Variables
      8. Exercise: A Simple Python Script
      9. Constants and Deleting Variables
      10. Writing a Python Module
      11. print() Function
      12. Collecting User Input
      13. Exercise: Hello, You!
      14. Reading from and Writing to Files
      15. Exercise: Working with Files
    2. Functions and Modules
      1. Defining Functions
      2. Variable Scope
      3. Global Variables
      4. Function Parameters
      5. Exercise: A Function with Parameters
      6. Returning Values
      7. Exercise: Parameters with Default Values
      8. Returning Values
      9. Importing Modules
      10. Methods vs. Functions
    3. Math
      1. Arithmetic Operators
      2. Exercise: Floor and Modulus
      3. Assignment Operators
      4. Precedence of Operations
      5. Built-in Math Functions
      6. The math Module
      7. The random Module
      8. Exercise: How Many Pizzas Do We Need?
      9. Exercise: Dice Rolling
    4. Python Strings
      1. Quotation Marks and Special Characters
      2. String Indexing
      3. Exercise: Indexing Strings
      4. Slicing Strings
      5. Exercise: Slicing Strings
      6. Concatenation and Repetition
      7. Exercise: Repetition
      8. Combining Concatenation and Repetition
      9. Python Strings are Immutable
      10. Common String Methods
      11. String Formatting
      12. Exercise: Playing with Formatting
      13. Formatted String Literals (f-strings) (introduced in Python 3.6)
      14. Built-in String Functions
      15. Exercise: Outputting Tab-delimited Text
    5. Iterables: Sequences, Dictionaries, and Sets
      1. Definitions
      2. Sequences
      3. Lists
      4. Sequences and Random
      5. Exercise: Remove and Return Random Element
      6. Tuples
      7. Ranges
      8. Converting Sequences to Lists
      9. Indexing
      10. Exercise: Simple Rock, Paper, Scissors Game
      11. Slicing
      12. Exercise: Slicing Sequences
      13. min(), max(), and sum()
      14. Converting between Sequences and Strings
      15. Unpacking Sequences
      16. Dictionaries
      17. The len() Function
      18. Exercise: Creating a Dictionary from User Input
      19. Sets
      20. *args and **kwargs
    6. Virtual Environments, Packages, and pip
      1. Exercise: Creating, Activiting, Deactivating, and Deleting a Virtual Environment
      2. Packages with pip
      3. Exercise: Working with a Virtual Environment
    7. Flow Control
      1. Conditional Statements
      2. Compound Conditions
      3. The is and is not Operators
      4. all() and any() and the Ternary Operator
      5. In Between
      6. Loops in Python
      7. Exercise: All True and Any True
      8. break and continue
      9. Looping through Lines in a File
      10. Exercise: Word Guessing Game
      11. The else Clause in Loops
      12. Exercise: for...else
      13. The enumerate() Function
      14. Generators
      15. List Comprehensions
    8. Exception Handling
      1. Exception Basics
      2. Generic Exceptions
      3. Exercise: Raising Exceptions
      4. The else and finally Clauses
      5. Using Exceptions for Flow Control
      6. Exercise: Running Sum
      7. Raising Your Own Exceptions
    9. Python Dates and Times
      1. Understanding Time
      2. The time Module
      3. Time Structures
      4. Times as Strings
      5. Time and Formatted Strings
      6. Pausing Execution with time.sleep()
      7. The datetime Module
      8. datetime.datetime Objects
      9. Exercise: What Color Pants Should I Wear?
      10. datetime.timedelta Objects
      11. Exercise: Report on Departure Times
    10. File Processing
      1. Opening Files
      2. Exercise: Finding Text in a File
      3. Writing to Files
      4. Exercise: Writing to Files
      5. Exercise: List Creator
      6. The os Module
      7. os.walk()
      8. The os.path Module
      9. A Better Way to Open Files
      10. Exercise: Comparing Lists
    11. PEP8 and Pylint
      1. PEP8
      2. Pylint
  2. Advanced Python
    1. Advanced Python Concepts
      1. Lambda Functions
      2. Advanced List Comprehensions
      3. Exercise: Rolling Five Dice
      4. Collections Module
      5. Exercise: Creating a defaultdict
      6. Counters
      7. Exercise: Creating a Counter
      8. Mapping and Filtering
      9. Mutable and Immutable Built-in Objects
      10. Sorting
      11. Exercise: Converting list.sort() to sorted(iterable)
      12. Sorting Sequences of Sequences
      13. Creating a Dictionary from Two Sequences
      14. Unpacking Sequences in Function Calls
      15. Exercise: Converting a String to a datetime.date Object
      16. Modules and Packages
    2. Regular Expressions
      1. Regular Expression Tester
      2. Regular Expression Syntax
      3. Python's Handling of Regular Expressions
      4. Exercise: Green Glass Door
    3. Working with Data
      1. Virtual Environment
      2. Relational Databases
      3. Passing Parameters
      4. SQLite
      5. Exercise: Querying a SQLite Database
      6. SQLite Database in Memory
      7. Exercise: Inserting File Data into a Database
      8. Drivers for Other Databases
      9. CSV
      10. Exercise: Finding Data in a CSV File
      11. Creating a New CSV File
      12. Exercise: Creating a CSV with DictWriter
      13. Getting Data from the Web
      14. Exercise: HTML Scraping
      15. XML
      16. JSON
      17. Exercise: JSON Home Runs
    4. Testing and Debugging
      1. Testing for Performance
      2. Exercise: Comparing Times to Execute
      3. The unittest Module
      4. Exercise: Fixing Functions
      5. Special unittest.TestCase Methods
    5. Classes and Objects
      1. Attributes
      2. Behaviors
      3. Classes vs. Objects
      4. Attributes and Methods
      5. Exercise: Adding a roll() Method to Die
      6. Private Attributes
      7. Properties
      8. Exercise: Properties
      9. Objects that Track their Own History
      10. Documenting Classes
      11. Exercise: Documenting the Die Class
      12. Inheritance
      13. Exercise: Extending the Die Class
      14. Extending a Class Method
      15. Exercise: Extending the roll() Method
      16. Static Methods
      17. Class Attributes and Methods
      18. Abstract Classes and Methods
      19. Understanding Decorators
  3. Python Data Analysis with JupyterLab
    1. JupyterLab
      1. Exercise: Creating a Virtual Environment
      2. Exercise: Getting Started with JupyterLab
      3. Jupyter Notebook Modes
      4. Exercise: More Experimenting with Jupyter Notebooks
      5. Markdown
      6. Exercise: Playing with Markdown
      7. Magic Commands
      8. Exercise: Playing with Magic Commands
      9. Getting Help
    2. NumPy
      1. Exercise: Demonstrating Efficiency of NumPy
      2. NumPy Arrays
      3. Exercise: Multiplying Array Elements
      4. Multi-dimensional Arrays
      5. Exercise: Retrieving Data from an Array
      6. More on Arrays
      7. Using Boolean Arrays to Get New Arrays
      8. Random Number Generation
      9. Exploring NumPy Further
    3. pandas
      1. Getting Started with pandas
      2. Introduction to Series
      3. np.nan
      4. Accessing Elements in a Series
      5. Exercise: Retrieving Data from a Series
      6. Series Alignment
      7. Exercise: Using Boolean Series to Get New Series
      8. Comparing One Series with Another
      9. Element-wise Operations and the apply() Method
      10. Series: A More Practical Example
      11. Introduction to DataFrames
      12. Creating a DataFrame using Existing Series as Rows
      13. Creating a DataFrame using Existing Series as Columns
      14. Creating a DataFrame from a CSV
      15. Exploring a DataFrame
      16. Exercise: Practice Exploring a DataFrame
      17. Changing Values
      18. Getting Rows
      19. Combining Row and Column Selection
      20. Boolean Selection
      21. Pivoting DataFrames
      22. Be careful using properties!
      23. Exercise: Series and DataFrames
      24. Plotting with matplotlib
      25. Exercise: Plotting a DataFrame
      26. Other Kinds of Plots

Requirements

Prerequisites

You've got questions.
We're here to help.

Our highly knowledgeable Enrollment Specialists will answer any questions you might have about the course and payment options.

REQUEST INFO

Instructor

FAQs

Reviews

You've got questions.
We're here to help.

Our highly knowledgeable Enrollment Specialists will answer any questions you might have about the course and payment options.

REQUEST INFO
Chicago State University

9501 S. King Drive - Jacoby Dickens Athletic Center Room 201
Continuing Education & Nontraditional Degree Programs
Chicago, IL 60628 US
MAIN CONTENT

Copyright © 1997 - 2024 All rights reserved. The material on this site cannot be reproduced or redistributed unless you have obtained prior written permission from Cengage Learning. Privacy Policy