Description
What you’ll learn
-
Understanding recursion
-
Understand backtracking
-
Understand dynamic programming
-
Understand divide and conquer methods
-
Implement 15+ algorithmic problems from scratch
-
Improve your problem solving skills and become a stronger developer
This course is about the fundamental concepts of algorithmic problems focusing on recursion, backtracking, dynamic programming and divide and conquer approaches. As far as I am concerned, these techniques are very important nowadays, algorithms can be used (and have several applications) in several fields from software engineering to investment banking or R&D.
Section 1 – RECURSION
-
what are recursion and recursive methods
-
stack memory and heap memory overview
-
what is stack overflow?
-
Fibonacci numbers
-
factorial function
-
tower of Hanoi problem
Section 2 – SEARCH ALGORITHMS
-
linear search approach
-
binary search algorithm
Section 3 – SELECTION ALGORITHMS
-
what are selection algorithms?
-
Hoare’s algorithm
-
how to find the k-th order statistics in O(N) linear running time?
-
quickselect algorithm
-
median of medians algorithm
-
the secretary problem
Section 4 – BIT MANIPULATION PROBLEMS
-
binary numbers
-
logical operators and shift operators
-
checking even and odd numbers
-
bit length problem
-
Russian peasant multiplication
Section 5 – BACKTRACKING
-
what is backtracking?
-
n-queens problem
-
Hamiltonian cycle problem
-
coloring problem
-
knight’s tour problem
-
maze problem
-
Sudoku problem
Section 6 – DYNAMIC PROGRAMMING
-
what is dynamic programming?
-
knapsack problem
-
rod cutting problem
-
subset sum problem
-
Kadane’s algorithm
-
longest common subsequence (LCS) problem
Section 7 – OPTIMAL PACKING
-
what is optimal packing?
-
bin packing problem
Section 8 – DIVIDE AND CONQUER APPROACHES
-
what is the divide and conquer approach?
-
dynamic programming and divide and conquer method
-
how to achieve sorting in O(NlogN) with merge sort?
-
the closest pair of points problem
Section 9 – Substring Search Algorithms
-
substring search algorithms
-
brute-force substring search
-
Z substring search algorithm
-
Rabin-Karp algorithm and hashing
-
Knuth-Morris-Pratt (KMP) substring search algorithm
Section 10 – COMMON INTERVIEW QUESTIONS
-
top interview questions (Google, Facebook and Amazon)
-
anagram problem
-
palindrome problem
-
integer reversion problem
-
dutch national flag problem
-
trapping rain water problem
Section 11 – Algorithms Analysis
-
how to measure the running time of algorithms
-
running time analysis with big O (ordo), big Ω (omega) and big θ (theta) notations
-
complexity classes
-
polynomial (P) and non-deterministic polynomial (NP) algorithms
In each section we will talk about the theoretical background for all of these algorithms then we are going to implement these problems together from scratch in Python.
Thanks for joining the course, let’s get started!
Who this course is for:
- This course is meant for newbies who are not familiar with algorithmic problems in the main or students looking for some refresher
- Anyone preparing for programming interviews or interested in improving their problem solving skills
Course content
- Introduction1 lecture • 2min
- Introduction
- Environment Setup2 lectures • 6min
- Environment Setup
- Recursion20 lectures • 1hr 49min
- Recursion
- Search Algorithms5 lectures • 18min
- Search Algorithms
- Selection Algorithms10 lectures • 1hr 13min
- Selection Algorithms
- Bit Manipulation Problems7 lectures • 30min
- Bit Manipulation Problems
- Backtracking27 lectures • 2hr 58min
- Backtracking
- Dynamic Programming18 lectures • 2hr 58min
- Dynamic Programming
- Optimal Packing Problem3 lectures • 22min
- Optimal Packing Problem
- Divide and Conquer Algorithms10 lectures • 1hr 21min
- Divide and Conquer Algorithms
Reviews
There are no reviews yet.