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Hands-On Data Structures and Algorithms with Kotlin

You're reading from   Hands-On Data Structures and Algorithms with Kotlin Level up your programming skills by understanding how Kotlin's data structure works

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Product type Paperback
Published in Feb 2019
Publisher Packt
ISBN-13 9781788994019
Length 220 pages
Edition 1st Edition
Languages
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Authors (2):
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Chandra Sekhar Nayak Chandra Sekhar Nayak
Author Profile Icon Chandra Sekhar Nayak
Chandra Sekhar Nayak
Rivu Chakraborty Rivu Chakraborty
Author Profile Icon Rivu Chakraborty
Rivu Chakraborty
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Toc

Table of Contents (16) Chapters Close

Preface 1. Section 1: Getting Started with Data Structures FREE CHAPTER
2. A Walk Through - Data Structures and Algorithms 3. Arrays - First Step to Grouping Data 4. Section 2: Efficient Grouping of Data with Various Data Structures
5. Introducing Linked Lists 6. Understanding Stacks and Queues 7. Maps - Working with Key-Value Pairs 8. Section 3: Algorithms and Efficiency
9. Deep-Dive into Searching Algorithms 10. Understanding Sorting Algorithms 11. Section 4: Modern and Advanced Data Structures
12. Collections and Data Operations in Kotlin 13. Introduction to Functional Programming 14. Other Books You May Enjoy 15. Assessments

Summary

In this chapter, we learned about a few of the most commonly used search algorithms. See the following table for a comparison of their relative performances. This will give you a better understanding when you come to choose which algorithm to use yourself:

Algorithm Performance
Linear Search O(n)
Binary Search O(log n)
Jump Search O(√n)
Exponential Search O(log n)

Here, n is the size of the collection.

In addition to item search algorithms, we've also covered a few commonly used pattern matching algorithms. Here is a comparison of their relative performance:

Algorithm Performance
Naive Pattern Search O(m * n)
Rabin-Karp Search O(m * n)
Knuth-Morris-Prath Search O(m) + O(k) = O(n + k)

Here, m is the length of the text, n is the length of the pattern and k is the length of temporary array created for KMP search (the same as the pattern...

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