Published 9/2024
MP4 | Video: h264, 1920×1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.10 GB | Duration: 4h 53m
Become a Python Expert: Comprehensive Course Covering Fundamentals, Advanced Techniques & Practical Success Strategies
What you’ll learn
Overview of algorithms and their applications
Basic Python programming refresher
Operations on lists and tuples
Use cases and applications
Applications of stacks (e.g., backtracking, browser history)
Introduction to queues and types (FIFO, priority queues)
Implementing linked lists in Python
Binary trees, binary search trees, AVL trees
Basics of graph theory and types of graphs
Applications of hash tables
Bubble sort, selection sort, insertion sort
Merge sort, quicksort, heap sort
Implementing linear and binary search algorithms
Principles of dynamic programming
Heaps, tries, and segment trees
Implementing and using advanced data structures
Requirements
No prior programming experience is required.
Description
Unlock your full potential with Python Programming: The Complete Course for Success! Whether you’re a beginner or looking to sharpen your skills, this comprehensive course will guide you through the fundamentals of Python, one of the most popular and versatile programming languages. Learn to write clean, efficient code from scratch and build practical projects that reinforce your knowledge.What You’ll Learn:Python fundamentals: variables, data types, loops, and functionsObject-Oriented Programming (OOP) conceptsHow to work with libraries like NumPy, Pandas, and MatplotlibWeb scraping, data analysis, and automation techniquesBest practices for debugging, testing, and writing efficient codeWhy This Course?This course is designed with real-world applications in mind. You’ll not only master Python syntax but also learn how to apply it in real-life scenarios like web development, data analysis, and automation. With hands-on exercises and interactive coding challenges, you’ll gain the confidence to tackle complex projects and prepare for your career in tech.Step-by-step lessons, practical examples, and engaging challenges ensure you stay motivated throughout the learning process. By the end of this course, you’ll have a deep understanding of Python and the ability to solve problems with creativity and efficiency.Start your journey to success in Python programming today!
Overview
Section 1: Module 1: Introduction to Data Structures and Algorithms
Lecture 1 Definition and importance of data structures
Lecture 2 Overview of algorithms and their applications
Lecture 3 Basic Python programming refresher
Section 2: Module 2: Basic Data Structures in Python
Lecture 4 Operations on lists and tuples
Lecture 5 Use cases and applications
Lecture 6 Understanding stack data structure
Lecture 7 Implementing stacks using lists
Lecture 8 Applications of stacks (e.g., backtracking, browser history)
Lecture 9 Introduction to queues and types (FIFO, priority queues)
Lecture 10 Implementing queues using lists and deque
Section 3: Module 3: Advanced Data Structures
Lecture 11 Implementing linked lists in Python
Lecture 12 Use cases and applications of linked lists
Lecture 13 Binary trees, binary search trees, AVL trees
Lecture 14 Tree traversal techniques (in-order, pre-order, post-order)
Lecture 15 Basics of graph theory and types of graphs
Lecture 16 Graph traversal algorithms (BFS, DFS)
Lecture 17 Understanding hash functions and hash tables
Lecture 18 Applications of hash tables (e.g., caching, indexing)
Section 4: Module 4: Algorithmic Techniques and Sorting Algorithms
Lecture 19 Divide and conquer, greedy algorithms, dynamic programming
Lecture 20 Bubble sort, selection sort, insertion sort
Lecture 21 Merge sort, quicksort, heap sort
Lecture 22 Comparing the efficiency of different sorting algorithms
Section 5: Module 5: Searching Algorithms
Lecture 23 Implementing linear and binary search algorithms
Lecture 24 Understanding algorithm efficiency and use cases
Lecture 25 Dijkstra’s algorithm for shortest paths
Section 6: Module 6: Recursion and Dynamic Programming
Lecture 26 Principles of dynamic programming
Section 7: Module 7: Advanced Topics and Optimization Techniques
Lecture 27 Heaps, tries, and segment trees
Lecture 28 Techniques to optimize algorithms for better performance
Lecture 29 Memory and space optimization strategies
Anyone interested in Python Programming Complete Course for Success,Anyone interested in automating tasks or diving into data analysis
Homepage