Data Structures and Algorithms in Python
Use the Data Structures and Algorithms in Python course and lab to master all the concepts associated with Data Structures algorithms. The lab is cloud-based, device-enabled, and can easily be integrated with an LMS. With this course, you will learn common data structures and algorithms in Python and gain skills on topics like object-oriented programming, algorithm analysis, graph algorithms, array-based sequences, memory management, text processing, linked lists, and recursions.
- Price: $279.99
- Delivery method: eLearning
- DIR Discount: 20%
Submit form to obtain discount
Test Prep
75+ Pre Assessment Questions |
75+ Post Assessment Questions |
Features
Why choose TOPTALENT?
- Get assistance every step of the way from our Texas-based team, ensuring your training experience is hassle-free and aligned with your goals.
- Access an expansive range of over 3,000 training courses with a strong focus on Information Technology, Business Applications, and Leadership Development.
- Have confidence in an exceptional 95% approval rating from our students, reflecting outstanding satisfaction with our course content, program support, and overall customer service.
- Benefit from being taught by Professionally Certified Instructors with expertise in their fields and a strong commitment to making sure you learn and succeed.
Outline
Lessons 1:
Python Primer
- Python Overview
- Objects in Python
- Expressions, Operators, and Precedence
- Control Flow
- Functions
- Simple Input and Output
- Exception Handling
- Iterators and Generators
- Additional Python Conveniences
- Scopes and Namespaces
- Modules and the Import Statement
- Exercises
Lessons 2:
Object-Oriented Programming
- Goals, Principles, and Patterns
- Software Development
- Class Definitions
- Inheritance
- Namespaces and Object-Orientation
- Shallow and Deep Copying
- Exercises
Lessons 3:
Algorithm Analysis
- Experimental Studies
- The Seven Functions Used in This Course
- Asymptotic Analysis
- Simple Justification Techniques
- Exercises
Lessons 4:
Recursion
- Illustrative Examples
- Analyzing Recursive Algorithms
- Recursion Run Amok
- Further Examples of Recursion
- Designing Recursive Algorithms
- Eliminating Tail Recursion
- Exercises
Lessons 5:
Array-Based Sequences
- Python’s Sequence Types
- Low-Level Arrays
- Dynamic Arrays and Amortization
- Efficiency of Python’s Sequence Types
- Using Array-Based Sequences
- Multidimensional Data Sets
- Exercises
Lessons 6:
Stacks, Queues, and Deques
- Stacks
- Queues
- Double-Ended Queues
- Exercises
Lessons 7:
Linked Lists
- Singly Linked Lists
- Circularly Linked Lists
- Doubly Linked Lists
- The Positional List ADT
- Sorting a Positional List
- Case Study: Maintaining Access Frequencies
- Link-Based vs. Array-Based Sequences
- Exercises
Lessons 8:
Trees
- General Trees
- Binary Trees
- Implementing Trees
- Tree Traversal Algorithms
- Case Study: An Expression Tree
- Exercises
Lessons 9:
Priority Queues
- The Priority Queue Abstract Data Type
- Implementing a Priority Queue
- Heaps
- Sorting with a Priority Queue
- Adaptable Priority Queues
- Exercises
Lessons 10:
Maps, Hash Tables, and Skip Lists
- Maps and Dictionaries
- Hash Tables
- Sorted Maps
- Skip Lists
- Sets, Multisets, and Multimaps
- Exercises
Lessons 11:
Search Trees
- Binary Search Trees
- Balanced Search Trees
- AVL Trees
- Splay Trees
- (2,4) Trees
- Red-Black Trees
- Exercises
Lessons 12:
Sorting and Selection
- Why Study Sorting Algorithms?
- Merge-Sort
- Quick-Sort
- Studying Sorting through an Algorithmic Lens
- Comparing Sorting Algorithms
- Python’s Built-In Sorting Functions
- Selection
- Exercises
Lessons 13:
Text Processing
- Abundance of Digitized Text
- Pattern-Matching Algorithms
- Dynamic Programming
- Text Compression and the Greedy Method
- Tries
- Exercises
Lessons 14:
Graph Algorithms
- Graphs
- Data Structures for Graphs
- Graph Traversals
- Transitive Closure
- Directed Acyclic Graphs
- Shortest Paths
- Minimum Spanning Trees
- Exercises
Lessons 15:
Memory Management and B-Trees
- Memory Management
- Memory Hierarchies and Caching
- External Searching and B-Trees
- External-Memory Sorting
- Exercises