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PHP 7 Data Structures and Algorithms

You're reading from   PHP 7 Data Structures and Algorithms Implement linked lists, stacks, and queues using PHP

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Product type Paperback
Published in May 2017
Publisher Packt
ISBN-13 9781786463890
Length 340 pages
Edition 1st Edition
Languages
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Author (1):
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Mizanur Rahman Mizanur Rahman
Author Profile Icon Mizanur Rahman
Mizanur Rahman
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Table of Contents (14) Chapters Close

Preface 1. Introduction to Data Structures and Algorithms FREE CHAPTER 2. Understanding PHP Arrays 3. Using Linked Lists 4. Constructing Stacks and Queues 5. Applying Recursive Algorithms - Recursion 6. Understanding and Implementing Trees 7. Using Sorting Algorithms 8. Exploring Search Options 9. Putting Graphs into Action 10. Understanding and Using Heaps 11. Solving Problems with Advanced Techniques 12. PHP Built-In Support for Data Structures and Algorithms 13. Functional Data Structures with PHP

Understanding the big O (big oh) notation

The big O notation is very important for the analysis of algorithms. We need to have a solid understanding of this notation and how to use this in the future. We are going to discuss the big O notation throughout this section.

Our algorithm for finding the books and placing them has n number of items. For the first book search, it will compare n number of books for the worst case situation. If we say time complexity is T, then for the first book the time complexity will be:

T(1) = n

As we are removing the founded book from the list, the size of the list is now n-1. For the second book search, it will compare n-1 number of books for the worst case situation. Then for the second book, the time complexity will be n-1. Combining the both time complexities, for first two books it will be:

T(2) = n + (n - 1)

If we continue like this, after the n-1 steps the last book search will only have 1 book left to compare. So, the total complexity will look like:

T(n) = n + (n - 1) + (n - 2) + . . . . . . .  . . . . + 3 + 2 + 1 

Now if we look at the preceding series, doesn't it look familiar? It is also known as the sum of n numbers equation as shown:

So we can write:

T(n) = n(n + 1)/2 

Or:

T(n) = n2/2 + n/2 

For asymptotic analysis, we ignore low order terms and constant multipliers. Since we have n2, we can easily ignore the n here. Also, the 1/2 constant multiplier can also be ignored. Now we can express the time complexity with the big O notation as the order of n squared:

T(n) = O(n2) 

Throughout the book, we will be using this big O notation to describe complexity of the algorithms or operations. Here are some common big O notations:

Type

Notation

Constant

O (1)

Linear

O (n)

Logarithmic

O (log n)

n log n

O (n log n)

Quadratic

O (n2)

Cubic

O (n3)

Exponential

O (2n)

You have been reading a chapter from
PHP 7 Data Structures and Algorithms
Published in: May 2017
Publisher: Packt
ISBN-13: 9781786463890
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