SUPPLY CHAIN ANALYTICS - 2019/0

Module code: MANM304

Module Overview

Management Science is used to solve supply chain (SC) aspects analytically. Techniques examine the Supply Chain’s underlying transportation network which connects suppliers via transhipment nodes to its demand locations. Best locations for warehouses (or transhipment nodes) are determined using quantitative methods. Decision Science is used for in rational decision making under uncertainty. For instance optimal inventory levels are determined for warehouses and manufacturing. All kinds of business activities are optimised to give businesses a competitive advantage by maximising profit and minimising costs.

Module provider

Surrey Business School

Module Leader

HILL Andrew (SBS)

Number of Credits: 15

ECTS Credits: 7.5

Framework: FHEQ Level 7

Module cap (Maximum number of students): N/A

Overall student workload

Independent Learning Hours: 106

Lecture Hours: 22

Tutorial Hours: 11

Laboratory Hours: 11

Module Availability

Semester 2

Prerequisites / Co-requisites

None

Module content

The module content will focus on a selected set of critical areas in Management. As an indication of the kind of issues that will be covered, please find below an indicative set of topics.


  • Decision Analysis (e.g. Utility theory)

  • Linear Programming (e.g. transportation optimisations)

  • Network Analysis  (e.g. Shortest Route, minimal spanning tree)

  • Inventory Systems (e.g. Economic Order Quantity model)

  • Simulations and Waiting Line Models (e.g. Multiple Server Waiting Line)


Assessment pattern

Assessment type Unit of assessment Weighting
Coursework COURSEWORK (STUDENTS DEMONSTRATE THE ABILITY TO SOLVE PROBLEMS DURING THE COURSE OF THE SEMESTER) 50
Examination 2 HOUR EXAMINATION 50

Alternative Assessment

N/A

Assessment Strategy

In order to achieve the threshold standard for the award of credits for this module, the student must meet the following criteria related to the learning outcomes:


  • apply the theories, conceptual frameworks and methodologies that underpin operational research;

  • prove the ability to synthesise Management Science concepts within an analytical context;

  • demonstrate evidence of background reading and research of the academic and practitioner literature relevant to Management Science.



Formative assessment will be provided throughout the course, i.e. students demonstrate ability to solve problems during the course of the semester. They will be given four business problems per week (i.e. 40 for the whole semester) as homework. Each student has to present two solutions during the semester. Presentations are scheduled in week 3, 5, 7, 9 and 11. For instance in week w3 student s must have prepared 6 solutions out of 8. Student s will be asked to present the solution (using prepared notes) and obtains m1.  Student s will not be asked a second time in the same week. However student s might have to present another solution in week w9. In case student s cannot attend one of the presentations, then six exercises should be submitted to the module convenor and the student might be invited to present one of them.

Summative assessments are covered by a coursework and an exam. Both are linked to the learning outcomes. They require to:


  • analyse the efficiency and productivity of business firms;

  • evaluate and define “challenges” in a concise, precise and logical   manner;

  • apply a selected number of classical and state-of-the art Operational Research methods and tools to solve supply chain problems analytically;

  • create solution models and algorithms that offer competitive advantage to the businesses;

  • provide results to the management for decision making and implementation.



 

Module aims

  • To solve Supply Chain problems analytically.

Learning outcomes

Attributes Developed
001 Analyse the efficiency and productivity of business firms; CPT
002 Evaluate and define “challenges” in a concise, precise and logical   manner; CPT
003 Apply a selected number of classical and state-of-the art Operational Research methods and tools to solve supply chain problems analytically; KCPT
004 Create solution models and algorithms that offer competitive advantage to the businesses; CPT
005 Provide results to the management for decision making and implementation. KCPT

Attributes Developed

C - Cognitive/analytical

K - Subject knowledge

T - Transferable skills

P - Professional/Practical skills

Methods of Teaching / Learning

The teaching and learning strategy is designed to: cultivate an understanding of the main issues and challenges; provide a coherent conceptual framework; develop a critical awareness of the various approaches of operational research in business firms.

The teaching and learning methods include: a lecture every week as well as several student exercises. Web-based learning support and electronic resources will be provided.

Indicated Lecture Hours (which may also include seminars, tutorials, workshops and other contact time) are approximate and may include in-class tests where one or more of these are an assessment on the module. In-class tests are scheduled/organised separately to taught content and will be published on to student personal timetables, where they apply to taken modules, as soon as they are finalised by central administration. This will usually be after the initial publication of the teaching timetable for the relevant semester.

Reading list

https://readinglists.surrey.ac.uk
Upon accessing the reading list, please search for the module using the module code: MANM304

Programmes this module appears in

Programme Semester Classification Qualifying conditions
Business Analytics MSc 2 Compulsory A weighted aggregate mark of 50% is required to pass the module
Operations and Supply Chain in the Digital Era MSc 2 Optional A weighted aggregate mark of 50% is required to pass the module

Please note that the information detailed within this record is accurate at the time of publishing and may be subject to change. This record contains information for the most up to date version of the programme / module for the 2019/0 academic year.