W2232 Big-O Notation
Prerequisites[edit]
Background[edit]
- Watch Introduction to Big O Notation and Time Complexity (CS Dojo)
- Watch Getting Sorted & Big O Notation (Computerphile)
- Read A beginner's guide to Big O notation (Rob Bell)
- Watch Why My Teenage Code Was Terrible: Sorting Algorithms and Big O Notation (Tom Scott)
Big-O Notation[edit]
Big-O Notation is used to describe the performance of an algorithm and establishes a worst-case run time. It calculates the number of operations performed and the memory required for an algorithm to conclude. There are different formulas to calculate the operations performed and memory requirements for each sorting algorithm. Big-O Notation is unable to tell you how long an algorithm will run because there are too many factors that influence the time an algorithm takes to run.
Common Formulas[edit]
O(log n) - Binary Search
O(n) - Linear Search
O(n * log n) - Quicksort
O(n2) - Bubble Sort/Insertion Sort/Selection Sort
Growth Rate | Name | Description |
---|---|---|
O(1) | Constant | Statement |
O(log(n)) | Logarithmic | Divide in half / Binary search |
O(n) | Linear | Loop |
O(n * log(n)) | Linearithmic | Effective sorting algorithm |
O(n^2) | Quadratic | Nested loop |
O(n^3) | Cubic | Triple-nested loop |
O(xn) | Example | Exhaustive search |
Big-O Notation can also be calculated by hand. You can go through each line of code and determine if it will be "1", "log(n)", n, etc. You can then add all of the growth rates together and it can be expressed as, for example, O(1+3n) where the "1" represents one line of O(1), and the "3n" represents 3 lines of O(n).
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Exercises[edit]
Write an essay (minimum 500 words) which:
- Defines Big-O
- Compares and contrasts Big-O for:
- Bubble-Sort
- Selection Sort
- Insertion Sort
- Merge Sort
- Based upon the above, which sort is most time-efficient for the average case?
Complete your essay in your Journal directory and push to GitHub.
References[edit]
Big-O Notation for Beginners (AdrianMejia)
Big-O Notation (Wikipedia)