πAlgorithm Design and Analysis (2025β2026 Edition) is a complete syllabus-oriented book crafted for BSCS, BSIT, BS Software Engineering students, researchers, software developers, and competitive programmers who aim to master algorithm design, complexity analysis, and optimization techniques.
This edition integrates MCQs, quizzes, and practice problems to help learners strengthen both theoretical understanding and practical application. It covers classical and advanced algorithms, asymptotic notations, recursion, graph theory, dynamic programming, NP-completeness, and approximation techniques with real-world examples.
Students will not only learn to design efficient algorithms but also analyze their correctness, performance, and applicability in diverse computing problems.
π Chapters & Topics
πΉ Chapter 1: Introduction to Algorithms
Definition and Characteristics
Importance and Applications
Design Goals: Correctness, Efficiency, Simplicity
Pseudocode Conventions
πΉ Chapter 2: Growth of Functions & Asymptotic Notations
Mathematical Preliminaries
Best, Worst & Average Case Analysis
Big-O, Big-Ξ©, Big-Ξ Notations
Growth Rate Comparisons
πΉ Chapter 3: Recursion and Recurrence Relations
Recursion Basics
Recurrence Solving Techniques
Substitution, Iteration, and Master Theorem
πΉ Chapter 4: Divide-and-Conquer Approach
Strategy and Applications
Binary Search, Merge Sort, Quick Sort
Strassenβs Matrix Multiplication
πΉ Chapter 5: Sorting and Searching Algorithms
Basic, Advanced & Linear-Time Sorting
Binary Search and Variations
πΉ Chapter 6: Advanced Data Structures
BST, AVL, Red-Black Trees, B-Trees
Heaps, Priority Queues, and Hashing
πΉ Chapter 7: Greedy Algorithms
Greedy Methodology
MST (Primβs & Kruskalβs), Huffman Coding
Activity Selection Problem
πΉ Chapter 8: Dynamic Programming
Overlapping Subproblems & Optimal Substructure
Case Studies: Fibonacci, LCS, Knapsack, OBST
πΉ Chapter 9: Graph Algorithms
Representations: Adjacency List/Matrix
BFS, DFS, Topological Sort, SCCs
πΉ Chapter 10: Shortest Path Algorithms
Dijkstraβs Algorithm
Bellman-Ford
Floyd-Warshall & Johnsonβs Algorithm
πΉ Chapter 11: Network Flow and Matching
Flow Networks & Ford-Fulkerson
Maximum Bipartite Matching
πΉ Chapter 12: Disjoint Sets and Union-Find
Union by Rank & Path Compression
Applications in Kruskalβs Algorithm
πΉ Chapter 13: Polynomial and Matrix Calculations
Polynomial Multiplication
Fast Fourier Transform (FFT)
Strassenβs Algorithm Revisited
πΉ Chapter 14: String Matching Algorithms
NaΓ―ve, Rabin-Karp, KMP, Boyer-Moore
πΉ Chapter 15: NP-Completeness
NP, NP-Hard & NP-Complete Problems
Reductions & Cookβs Theorem
Example Problems (SAT, 3-SAT, Clique, Vertex Cover)
πΉ Chapter 16: Approximation Algorithms
Approximation Ratios
Vertex Cover, TSP, Set Cover
π Why Choose this Book/app?
β
Covers complete syllabus of Algorithm Design & Analysis
Includes MCQs, quizzes, and practice problems for mastery
β
Explains recursion, dynamic programming, greedy & graph algorithms in depth
β
Bridges theory with real-world problem-solving
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Perfect for exam preparation, coding interviews, and competitive programming
β This app is inspired by authors:
Thomas H. Cormen, Charles Leiserson, Ronald Rivest, Clifford Stein, Jon Kleinberg, Γva Tardos
π₯ Download Now!
Master efficiency, complexity, and optimization with Algorithm Design and Analysis (2025β2026Β Edition).