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Data Structures & Algorithms
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Chapter 1: Algorithmic Thinking
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Why DSA Matters
4
Computational Thinking
4
Algorithms — Core Concepts
4
Measuring Algorithm Efficiency
3
Asymptotic Notation
4
Case Analysis & Cost Models
4
Problem Constraints & Trade-offs
5
Expressing Algorithms Clearly
5
Chapter 2: DSA Foundations & Classification
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Chapter 3: Primitive Data Structures
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Chapter 4: Strings
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Chapter 5: Arrays
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Chapter 6: Linked Lists
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Chapter 7: Stacks
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Chapter 8: Queues
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Chapter 9: Recursion
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Chapter 10: Hash Tables
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Chapter 11: Trees
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Chapter 12: Binary Search Trees
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Chapter 13: Balanced Search Trees
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Chapter 14: Heaps & Priority Queues
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What Is a Heap?
4
Complete Binary Trees
4
Array-Based Implementation
4
Min-Heap vs Max-Heap
4
Heap Operations
4
Heapify
4
Time Complexity
4
Priority Queues Revisited
4
1.
Recalling Priority Queues from Chapter 8
2.
Interface: insert, extractMax/extractMin
3.
Why Naive Implementations Are Insufficient
4.
The Heap as an Efficient Implementation
Top-K Problems
4
Common Heap Patterns
5
Chapter 15: Tries
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Chapter 16: Graphs
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Chapter 17: Searching Algorithms
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Chapter 18: Sorting Algorithms
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Chapter 19: Divide and Conquer
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Chapter 20: Greedy Algorithms
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Chapter 21: Dynamic Programming
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Chapter 22: Backtracking
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Chapter 23: Graph Algorithms
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Chapter 24: Advanced Graph Algorithms
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Chapter 25: String Algorithms
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Chapter 26: Bit Manipulation
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Chapter 27: Advanced Data Structures
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Chapter 28: Problem Solving Strategies
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