WM260-15 Applied Maths - II
Introductory description
Mathematics underpins the understanding, design and development of digital and technological solutions in many areas of business. Students will study maths concepts and methods to develop a broad and solid foundation for more advanced topics taught in later years.
Module aims
Students will gain an appreciation of the applications of differential calculus and linear algebra concepts in digital and technological systems. The module also equips students with mathematical skills to formulate and solve real-world problems using linear programming and dynamic programming. Students will also develop problem-solving techniques through the analysis of networks and the use of algorithms to model and solve problems in digital technologies and information systems.
Outline syllabus
This is an indicative module outline only to give an indication of the sort of topics that may be covered. Actual sessions held may differ.
Differential Calculus:
- Partial differentiation of functions of two or more variables;
- Differentiation Techniques;
- Applications of Differentiation (Optimization – Stationary points, Maximum, Minimum and Saddle Points).
Linear Algebra:
- Lines, Planes, Distance.
- Vectors: Norms, Inner products, Angles and orthogonality, Linear independence, Span, Basis.
- Matrices: Linear Transformation, Matrix Algebra, Determinant, Solving system of linear equations (Cramer’s method and Inverse matrix method), Eigenvalues and Eigenvectors, Trace, Rank, Eigen-decomposition and diagonalization.
Decision Mathematics:
- Linear Programming: Graphical method of solving linear programming problems; Minimization & Maximization. Simplex Method.
- Analysing Networks: Route inspection problem. Travelling Salesperson problem.
- Dynamic Programming: Floyd’s Algorithm.
Learning outcomes
By the end of the module, students should be able to:
- Select and apply techniques in differential calculus to solve applied problems involving partial derivatives of multivariable functions.
- Demonstrate awareness and comprehension of linear algebra concepts and methods.
- Employ linear programming techniques to formulate and solve optimization problems.
- Analyse networks and implement dynamic programming algorithms to solve shortest-path problems.
Indicative reading list
- Kuldeep, S. (2011) Engineering Mathematics Through Applications. Second edition. Bloomsbury Publishing Plc, ISBN: 9780230345980, 9780230274792.
- Hu, Q. (2017) Concise Introduction to Linear Algebra. First edition. Boca Raton, FL: CRC Press, EBOOK ISBN: 9781315172309.
- Cormen, T. H. (2009) Introduction to algorithms. 3rd ed. Cambridge, Mass: MIT Press, ISBN: 0262033844.
View reading list on Talis Aspire
Subject specific skills
communicating mathematically,
quantitative reasoning,
manipulation of precise and intricate ideas,
application of analytical and critical thinking skills to technology solutions development and systematic analysis, and application of structured problem solving techniques to complex systems and situations.
Transferable skills
analytical skills,
problem solving,
flexibility ,
persistence
flexible attitude,
ability to perform under pressure,
thorough approach to work,
logical thinking and creative approach to problem solving.
Study time
Type | Required |
---|---|
Lectures | 14 sessions of 1 hour (9%) |
Seminars | 7 sessions of 1 hour (5%) |
Online learning (scheduled sessions) | 9 sessions of 1 hour (6%) |
Online learning (independent) | 8 sessions of 1 hour (5%) |
Other activity | 2 hours (1%) |
Private study | 50 hours (33%) |
Assessment | 60 hours (40%) |
Total | 150 hours |
Private study description
Inclusive of:
- Pre-block and Post-block problem sets released on Moodle.
- Online Quiz for revision.
- Online forum for discussing queries with course peers and tutor.
- Online tutor-recorded videos.
Recapping of prior learning is expected where necessary. Reading around the topics covered will provide the depth of understanding required to complete the course to a good standard. This may be both prior to and/or after the teaching and learning sessions. Support from teaching staff is available but students will be expected to increasingly develop their independent learning skills.
Other activity description
Support Sessions
Costs
No further costs have been identified for this module.
You must pass all assessment components to pass the module.
Assessment group D1
Weighting | Study time | Eligible for self-certification | |
---|---|---|---|
Coursework | 40% | 25 hours | Yes (extension) |
One assignment with questions focusing on Differential Calculus and Linear Algebra. |
|||
Online Written Examination | 60% | 35 hours | No |
This is a 2 hour online written examination focussing on the decision maths topics outlined in the syllabus. |
Feedback on assessment
Feedback will be given as appropriate to the assessment type:
- individual feedback is provided for the assignment.
- summative cohort-level feedback on exam.
Pre-requisites
To take this module, you must have passed:
Courses
This module is Core for:
- Year 2 of DWMS-H655 Undergraduate Digital and Technology Solutions (Cyber) (Degree Apprenticeship)
- Year 2 of DWMS-H652 Undergraduate Digital and Technology Solutions (Data Analytics) (Degree Apprenticeship)
- Year 2 of DWMS-H653 Undergraduate Digital and Technology Solutions (Network Engineering) (Degree Apprenticeship)
- Year 2 of DWMS-H654 Undergraduate Digital and Technology Solutions (Software Engineering) (Degree Apprenticeship)