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50 Algorithms Every Programmer Should Know

You're reading from   50 Algorithms Every Programmer Should Know Tackle computer science challenges with classic to modern algorithms in machine learning, software design, data systems, and cryptography

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Product type Paperback
Published in Sep 2023
Publisher Packt
ISBN-13 9781803247762
Length 538 pages
Edition 2nd Edition
Languages
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Author (1):
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Imran Ahmad Imran Ahmad
Author Profile Icon Imran Ahmad
Imran Ahmad
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Toc

Table of Contents (22) Chapters Close

Preface 1. Section 1: Fundamentals and Core Algorithms FREE CHAPTER
2. Overview of Algorithms 3. Data Structures Used in Algorithms 4. Sorting and Searching Algorithms 5. Designing Algorithms 6. Graph Algorithms 7. Section 2: Machine Learning Algorithms
8. Unsupervised Machine Learning Algorithms 9. Traditional Supervised Learning Algorithms 10. Neural Network Algorithms 11. Algorithms for Natural Language Processing 12. Understanding Sequential Models 13. Advanced Sequential Modeling Algorithms 14. Section 3: Advanced Topics
15. Recommendation Engines 16. Algorithmic Strategies for Data Handling 17. Cryptography 18. Large-Scale Algorithms 19. Practical Considerations 20. Other Books You May Enjoy
21. Index

GRU

GRUs represent an evolution of the basic RNN structure, specifically designed to address some of the challenges encountered with traditional RNNs, such as the vanishing gradient problem. The architecture of a GRU is illustrated in Figure 10.8:

Figure 10.11: GRU

Let us start discussing GRU with the first activation function, annotated as A. At each timestep t, GRU first calculates the hidden state using the tanh activation function and utilizing and as inputs. The calculation is no different than how the hidden state is determined in the original RNNs presented in the previous section. But there is an important difference. The output is a candidate hidden state, which is calculated using Eq. 10.6:

where is the candidate value of the hidden layer.

Now, instead of using the candidate hidden state straight away, the GRU takes a moment to decide whether to use it. Imagine it like someone pausing to think before making a decision. This pause-and-think step...

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