ITAO7104 Data-Driven Decision-Making Assignment Brief 2026 | QUB
ITAO7104 Assignment BriefÂ
Instructions
The report must contain two sections only: Section A (Task 1) and Section B (Task 2) in the same report file.
General Requirements
– MSc Business Analytics
- Module: Data-Driven Decision-Making (D3M – ITAO7104) Report must contain ONLY TWO SECTIONS:
○ Section A – Task 1
○ Section B – Task 2
- NO appendix allowed in the report.
- Use 12pt font for body text and 14pt bold for section headings.
- Leave the cover page for me.
- Include page numbers at bottom of pages.
- Word count must be within ±10% of the limit.
- Overall Turnitin similarity must stay below 25%.
- Follow the rubric/marking criteria carefully for scoring.
- Write clearly and professionally with logical explanations and structure.
- Use Harvard referencing style for all citations.
- Visualizations and screenshots must be clear and readable (not too big or too small).
SECTION A – Task 1 (MILP Model + R Implementation) This section must include:
- Problem Explanation
- Briefly explain the GI endoscopy capacity planning problem.
- Identify the goal: minimize total cost while meeting weekly diagnostic and therapeutic demand.
- Mathematical Model (MILP) Clearly define:
Indices
- Rooms (r) Weeks (w)
Parameters
- Diagnostic demand per week
- Therapeutic demand per week
- Clinician hours available
- Room capacities
- Setup costs Allocation costs
Decision Variables
- Whether room r is:
- unavailable
â—‹ diagnostic configuration â—‹ therapeutic configuration Constraints Include:
- Demand satisfaction for diagnostic procedures
- Demand satisfaction for therapeutic procedures
- Room capacity limits
- Clinician hour limits
- Only one configuration per room per week
- Therapeutic procedures only allowed in therapeutic rooms
Objective Function
- Minimize total cost (setup + allocation cost).
Explain why each constraint exists and which part of the problem it represents.
Hii
- Solve using R
- Use R with the ompr package and a solver (GLPK / HiGHS / Symphony etc.).
- Include screenshots of R code and solver output in the report.
- Code must have short comments explaining key steps.
Also submit the functional R code file separately.
- Results Explanation
Explain in plain English:
- Which rooms are used each week
- Which configuration each room has
- How diagnostic and therapeutic hours are allocated State clearly:
- Minimum total cost
- MILP optimality gap
- Visualizations
Include charts such as:
Chart 1 ● Stacked chart showing each room’s configuration over the 26 weeks.
Chart 2
- Weekly aggregated capacity showing:
- diagnostic hours
â—‹ therapeutic hours
Charts must be clear and properly labeled.
Section B – Task 2 (Essay – max 1250 words)
Choose one healthcare journal article from the QUB library that uses MILP with an exact solution method.
Structure the essay using these headings:
- Healthcare Problem
- Explain the healthcare operational problem.
- Why it matters in practice.
- MILP Model Outline
Explain in simple terms:
- Decision variables
- Constraints
- Objective
Use bullet points instead of equations.
- Exact Method Used
Explain the optimization method used in the article (for example branch-and-bound, branchand-price, etc.).
Describe how the method works in the study.
- Method–Problem Fit
Explain why the chosen method works well for the model.
Discuss aspects like:
- scalability
- structure of the MILP
- computational efficiency
- Limitations and Practical InsightDiscuss:
- limitations of the model
- real-world challenges
- implementation issues in healthcare
Additional requirements
- Use Harvard references.
- The main article must be bold in the bibliography.
- The article must be recent if possible (preferably after 2023).
- You may include up to 5 additional references.
- Include at least one figure from the article with caption and citation.
- Provide the journal hyperlink in the reference list.
Final Deliverables
1. Assignment Report (Word or PDF) Contains:
- Section A
- Section B
2. R Code File (.R): Must run without errors and produce the same results shown in the report.
3. All screenshots must be clear and readable.
Please ensure the work is clear, well-structured, and written professionally according to the rubric.
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