Gwybodaeth Modiwlau
Course Delivery
Delivery Type | Delivery length / details |
---|---|
Tutorial | 6 x 1 Hour Tutorials |
Lecture | 20 x 1 Hour Lectures |
Lecture | 22 x 1 Hour Lectures |
Assessment
Assessment Type | Assessment length / details | Proportion |
---|---|---|
Semester Assessment | There will also be regular worksheets with penalties for non-submission. Course Work: Two pieces. | 50% |
Semester Exam | 2 Hours Written examination at end of semester 2 | 50% |
Supplementary Assessment | 2 Hours Resit failed examination and/or resubmission of failed/non-submitted coursework components or ones of equvalent value. | 50% |
Supplementary Exam | 2 Hours | 50% |
Learning Outcomes
On successful completion of this module students should be able to:
1. demonstrate their understanding of the principles of abstraction and encapsulation as they apply to the design of abstract data types and programs;
2. analyse and evaluate the time and space behaviour of algorithms and understand how this is expressed and determined;
3. recognise the importance of this analysis in the design of software;
4. recognise the importance of the classes P and NP in the analysis of algorithms);
5. describe some of the main approaches to algorithm design such as greedy algorithms, divide and conquer and dynamic programming;
6. demonstrate judgement in evaluating and choosing appropriate data structures and algorithms for a range of programming problems;)
7. design and implement significant programs in Java).
- describe some of the main approaches to algorithm design such as greedy algorithms, divide and conquer and dynamic programming;
- demonstrate judgement in evaluating and choosing appropriate data structures and algorithms for a range of programming problems;
- design and implement significant programes in Java.
- analyse and evaluate the time and space behaviour of algorithms and understand how this is expressed and determined;
- recognise the importance of this analysis in the design of software;
- recognise the importance of the classes P and NP in the analysis of algorithms);
- describe some of the main approaches to algorithm design such as greedy algorithms, divide and conquer and dynamic programming;
- demonstrate judgement in evaluating and choosing appropriate data structures and algorithms for a range of programming problems;)
- design and implement significant programs in Java).
Brief description
This module builds on the foundations of the first year modules on program design and provides a thorough grounding in the design of data structures and algorithms and gives further insight into object-oriented design.
Aims
The module is also concerned with the reuse of software design patterns and frameworks, thereby reducing the need to build programs from first principles.
As well as providing a solid grounding in the major data structures and algorithms of Computer Science, the module stresses the development of problem solving skills through a number of programming worksheets.
Content
An overview of the method of teaching and assessment, and a road-map of the topics to be covered and their relationships. Some basic concepts are introduced.
2. Program design issues - 4 Lectures
Explanation of design issues such as object-orientation and identification of components through case-study examples.
3. Design patterns and frameworks - 5 Lectures
An introduction to object-oriented design patterns and frameworks. Support for reuse. General concepts, representation and examples. How patterns may be implemented in Java.
4. Introduction to Complexity - 2 Lectures
O() notation, growth rates. Measurement of execution time of some example programs and estimation of their time complexity. P and NP.
5. Classes of Algorithm - 2 Lectures
An overview will be given on the different classes of algorithm; for example, divide and conquer and greedy algorithms.
6. Recursion - 2 Lectures
An introduction to recursive thinking. Examples of recursion.
7. Storing and Retrieving Data by Key (1) - 13 Lectures
This problem will be used to motivate the discussion of a wide variety of different implementation techniques. The features of some typical solutions will be related to the dimensions of the problem such as the volume of data to be handled, volatility and the operations required. Internal Storage: linear and binary searching. Linked representations; an introduction to hashing, binary search trees, AVL trees and heaps.
8. Storing and Retrieving Data by Key (2): External storage - 4 Lectures
Performance issues. Hashing and B-tree organisations. The Hashable class in Java.
9. Sorting - 4 Lectures
A comparison of divide and conquer, priority queue and address calculation based sorting algorithms. Performance characteristics of these algorithms will be discussed.
10. Representing Complex Relationships: Graphs - 7 Lectures
Some examples of greedy algorithms. Terminology and implementation considerations. A look at some graph-related problems such as: finding a route (shortest paths); planning a communications network (minimum spanning trees); network routing management (flow graphs); compiling a program or planning a project (topological sorting).
Module Skills
Skills Type | Skills details |
---|---|
Application of Number | Yes, particularly in algorithm analysis. |
Communication | Written skills will be needed to complete supporting documents to accompany assessed coursework. |
Improving own Learning and Performance | See 2 above. |
Information Technology | The whole module concerns this area. |
Personal Development and Career planning | Carefully time management will be needed as so to enable students to complete coursework etc. |
Problem solving | This is inherent in both the formative practical work and the assessed coursework. |
Research skills | The students will need to search for and use relevant technical information while completing practical and assessed coursework. |
Subject Specific Skills | Yes. See module title and content. |
Team work | No. |
Notes
This module is at CQFW Level 5