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Efficient Algorithm Design

You're reading from   Efficient Algorithm Design Unlock the power of algorithms to optimize computer programming

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Product type Paperback
Published in Oct 2024
Publisher Packt
ISBN-13 9781835886823
Length 360 pages
Edition 1st Edition
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Author (1):
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Masoud Makrehchi Masoud Makrehchi
Author Profile Icon Masoud Makrehchi
Masoud Makrehchi
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Table of Contents (21) Chapters Close

Preface 1. Part 1: Foundations of Algorithm Analysis
2. Chapter 1: Introduction to Algorithm Analysis FREE CHAPTER 3. Chapter 2: Mathematical Induction and Loop Invariant for Algorithm Correctness 4. Chapter 3: Rate of Growth for Complexity Analysis 5. Chapter 4: Recursion and Recurrence Functions 6. Chapter 5: Solving Recurrence Functions 7. Part 2: Deep Dive in Algorithms
8. Chapter 6: Sorting Algorithms 9. Chapter 7: Search Algorithms 10. Chapter 8: Symbiotic Relationship between Sort and Search 11. Chapter 9: Randomized Algorithms 12. Chapter 10: Dynamic Programming 13. Part 3: Fundamental Data Structures
14. Chapter 11: Landscape of Data Structures 15. Chapter 12: Linear Data Structures 16. Chapter 13: Non-Linear Data Structures 17. Part 4: Next Steps
18. Chapter 14: Tomorrow’s Algorithms 19. Index 20. Other Books You May Enjoy

Summary

In Chapter 4, we explored the intricacies of recurrence functions and their crucial role in analyzing the complexity of recursive algorithms. We began by examining the structure of recursive algorithms, distinguishing between subtractive and divide-and-conquer recurrence functions. These concepts were illustrated through various examples, highlighting how different types of recurrence functions impact the overall efficiency of an algorithm.

We then explained the components of recurrence functions, emphasizing the importance of both the recursive and non-recursive (driving) components. The chapter introduced the master theorem as a powerful tool for solving recurrence functions. By applying this theorem, we demonstrated how to estimate the computational complexity of recursive algorithms, taking into account the number of subproblems, the reduction scale, and the driving function. The detailed analysis and examples provided a comprehensive understanding of how to approach...

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