Time and space complexity analysis (big-O notation)




Time and space complexity analysis (big-O notation)

You have issues with time and space complexity analysis? No worries, get ready to take a detailed course on time and space complexity analysis that will teach you how to analyze the time and space complexity of an algorithm, an important skill to have in computer science and competitive programming!

The course contains both theory and practice, theory to get all the knowledge you need to know about complexity analysis (notations, input cases, amortized complexity, complexity analysis of data structures...) and practice to apply that knowledge to analyze the time and space complexity of different algorithms!

And to make your learning experience better, the course will have quizzes, extra resources, captions, animations, slides, good audio/video quality...et cetera. And most importantly, the ability to ask the instructor when you don't understand something!

Hours and hours of researching, writing, animating, and recording, to provide you with this amazing course, don't miss it out!

The course will cover:

  • Complexity analysis basics

  • Big-O, big-Omega, and big-Theta notations

  • Best, average, and worst case

  • Complexities hierarchy

  • Complexity classes (P vs NP problem)

  • How to analyze the time and space complexity of an algorithm

  • How to compare algorithms efficiency

  • Amortized complexity analysis

  • Complexity analysis of searching algorithms

  • Complexity analysis of sorting algorithms

  • Complexity analysis of recursive functions

  • Complexity analysis of data structures main operations

  • Common mistakes and misconceptions

  • Complexity analysis of some popular interview coding problems

Hope to see you in the course!

Learn how to analyze the time complexity and the space complexity of an algorithm by using the big O notation

Url: View Details

What you will learn
  • Analyze the time and space complexity of an algorithm
  • Compare the complexity of two algorithms
  • Complexity of searching and sorting algorithms

Rating: 4.5625

Level: Beginner Level

Duration: 7.5 hours

Instructor: Inside Code


Courses By:   0-9  A  B  C  D  E  F  G  H  I  J  K  L  M  N  O  P  Q  R  S  T  U  V  W  X  Y  Z 

About US

The display of third-party trademarks and trade names on this site does not necessarily indicate any affiliation or endorsement of coursescompany.com.


© 2021 coursescompany.com. All rights reserved.
View Sitemap