Data Structures and Algorithms
Data Structures and Algorithms - Table of Contents
Front Page
Course Outline
Introduction
Programming Strategies
2.1 Objects and ADTs
2.1.1 An Example: Collections
2.2 Constructors and destructors
2.3 Data Structure
2.4 Methods
2.5 Pre- and post-conditions
2.6 C conventions
2.7 Error Handling
2.8 Some Programming Language Notes
Data Structures
3.1 Arrays
3.2 Lists
3.3 Stacks
3.3.1 Stack Frames
3.4 Recursion
3.4.1 Recursive Functions
3.4.2 Example: Factorial
Searching
4.1 Sequential Searches
4.2 Binary Search
4.3 Trees
Complexity
5. Complexity (PS)
Queues
6.1 Priority Queues
6.2 Heaps
Sorting
7.1 Bubble
7.2 Heap
7.3 Quick
7.4 Bin
7.5 Radix
Searching Revisited
8.1 Red-Black trees
8.1.1 AVL trees
8.2 General n-ary trees
8.3 Hash Tables
Dynamic Algorithms
9.1 Fibonacci Numbers
9.2 Binomial Coefficients
9.3 Optimal Binary Search Trees
9.4 Matrix Chain Multiplication
9.5 Longest Common Subsequence
9.6 Optimal Triangulation
Graphs
10.1 Minimum Spanning Tree
10.2 Dijkstra's Algorithm
Huffman Encoding
FFT
Hard or Intractable Problems
13.1 Eulerian or Hamiltonian Paths
13.2 Travelling Salesman's Problem
Games
Appendices
ANSI C
Source code listings
Getting these notes
Slides
Slides
from 1998 lectures (PowerPoint).
Course Management
Key Points from Lectures
Workshops
Past Exams
Tutorials
Texts
Texts available in UWA library
Other on-line courses and texts
Algorithm Animations
©
John Morris
, 1998