HomeCoursesData Structures for Coding Interviews in Python
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Beginner

30h

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Data Structures for Coding Interviews in Python

Explore proven strategies developed by FAANG engineers to ace coding interviews with a structured approach to data structures in Python. Prep faster with real-world questions.
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Data structures are amongst the most fundamental concepts of Computer Science. The data structure chosen can make or break an entire computer program. Consequently, they are also largely categorized as a vital benchmark of computer science knowledge when it comes to industry interviews. This course contains a detailed review of all the common data structures and provides implementation level details in Python to allow readers to become well equipped. Now with more code solutions, lessons, and illustrations than ever, this is the course for you!
Data structures are amongst the most fundamental concepts of Computer Science. The data structure chosen can make or break an en...Show More

Content

1.

Introduction to Complexity Measures

22 Lessons

Sharpen your skills in evaluating the time and space complexity of algorithms.

2.

Introduction to Lists

26 Lessons

Unpack the core of lists and arrays in Python, and tackle essential list manipulation challenges.

3.

Introduction to Linked Lists

30 Lessons

Examine the fundamentals, operations, and challenges of singly and doubly linked lists.

4.

Introduction to Stacks and Queues

25 Lessons

Grasp the fundamentals of stacks and queues, their implementations, and practical challenges.

5.

Introduction to Graphs

26 Lessons

Dig into graph concepts, representations, algorithms, and their practical applications in coding.

6.

Introduction to Trees

38 Lessons

Focus on trees' structures, properties, and traversal methods, covering binary, AVL, and Red-Black Trees.

9.

Introduction to Hashing

33 Lessons

Walk through hash table fundamentals, efficient operations, implementation strategies, and algorithmic challenges.

10.

Summary of Data Structures

2 Lessons

Examine linear and non-linear data structures, their complexities, and practical applications.
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Frequently Asked Questions

What are the data structures for coding interviews in Python?

For coding interviews in Python, focus on these essential data structures:

  • Lists: Used for dynamic arrays that support fast access, insertion, and deletion.
  • Dictionaries: Implement hash tables for efficient key-value storage and lookups.
  • Sets: Store unique elements and provide fast membership checks.
  • Tuples: Immutable sequences used for fixed-size collections.
  • Queues and stacks: Use collections.deque for double-ended queues, which can also efficiently implement stacks and queues.
  • Heaps: Use heapq for priority queues.
  • Linked lists, trees, and graphs: Implement manually using classes to handle more complex problems.

Mastering these structures and their operations will prepare you well for Python coding interviews.

Can I use Python for DSA in an interview?

Yes, you can use Python for DSA in interviews. Python is highly popular for its simple syntax, readability, and powerful built-in libraries, which make implementing data structures and algorithms easier. It offers built-in support for lists, dictionaries, sets, and other data structures, along with libraries like collections and heapq for more advanced needs. Python’s versatility and ease of use make it a great choice for demonstrating problem-solving skills in interviews.

How to prepare for a coding interview in Python

To prepare for a coding interview in Python, focus on mastering key data structures (like lists, dictionaries, sets, and heaps) and algorithms (such as sorting, searching, and dynamic programming). Practice solving problems on platforms like LeetCode or HackerRank to build familiarity with Python’s syntax and libraries. Understand time and space complexities and review Python-specific features like list comprehensions, generator expressions, and built-in functions. Regularly simulate coding interviews to improve your problem-solving speed and communication skills.

Is Python a good choice for coding interviews?

Yes, Python is an excellent choice for coding interviews. Its clean and concise syntax allows you to write and debug code quickly, making it ideal for solving complex problems under time constraints. Python’s extensive standard library provides built-in data structures (like lists, dictionaries, and sets) and algorithms, which help simplify implementations. It’s widely accepted in interviews across various companies, and many interviewers are familiar with its capabilities, making it a strong option for effectively demonstrating problem-solving skills.

What are the five data types in Python?

The five primary data types in Python are as follows:

  • Integers (int): Represent whole numbers, such as 1, 42, or -7.
  • Floating-point numbers (float): Represent decimal numbers, such as 3.14, 0.001, or -2.5.
  • Strings (str): Represent sequences of characters, such as “hello”, “Python”, or “123”.
  • Booleans (bool): Represent truth values, either True or False.
  • NoneType (None): Represents the absence of a value or a null value, expressed as None.

These basic data types form the foundation for handling and manipulating data in Python.