Bachelor of Science (BSc)
BSc Information Technology Management for Business
- Typical A-level offer: AAA
- Typical contextual A-level offer: ABB
- Refugee/care-experienced offer: BBB
- Typical International Baccalaureate offer: 36 points overall with 6,6,6 at HL
Fees and funding
Fees
Tuition fees for home students commencing their studies in September 2025 will be £9,535 per annum (subject to Parliamentary approval). Tuition fees for international students will be £33,500 per annum. For general information please see the undergraduate finance pages.
Additional expenses
All students should normally be able to complete their programme of study without incurring additional study costs over and above the tuition fee for that programme.
Policy on additional costs
All students should normally be able to complete their programme of study without incurring additional study costs over and above the tuition fee for that programme. Any unavoidable additional compulsory costs totalling more than 1% of the annual home undergraduate fee per annum, regardless of whether the programme in question is undergraduate or postgraduate taught, will be made clear to you at the point of application. Further information can be found in the University's Policy on additional costs incurred by students on undergraduate and postgraduate taught programmes (PDF document, 91KB).
Scholarships/sponsorships
The Manchester Bursary is available to UK students registered on an undergraduate degree course at Alliance MBS who have had a full financial assessment carried out by Student Finance England.
In addition, Alliance MBS will award a range of Social Responsibility Scholarships to UK and international/EU students.
These awards are worth £2,000 per year across three years of study. You must achieve AAA at A-level (or equivalent qualification) and be able to demonstrate a significant contribution and commitment to social responsibility.
The School will also award a number of International Stellar Scholarships to international students achieving AAA at A-level (or equivalent qualification). Applicants who exceed AAA and/or have supplementary qualifications (such as EPQ) will receive additional consideration.
Additional eligibility criteria apply - please see our scholarship pages for full details.
Course unit details:
Fundamentals of Data Analytics
Unit code | BMAN11060 |
---|---|
Credit rating | 20 |
Unit level | Level 1 |
Teaching period(s) | Full year |
Available as a free choice unit? | No |
Overview
The course sets the foundation for the Data Analytics theme of the ITMB curriculum. It introduces students to core concepts in data analytics, business intelligence and machine learning, while fostering a critical understanding of the assumptions underpinning these methodologies and the ethical and legal implications of data analysis.
Pre/co-requisites
Academic programmes that course is available to: ITMB
Aims
The course unit aims to:
1. To equip students with a critical understanding of data analytics, business intelligence and machine learning in a business setting;
2. To help develop skills in the use of industry-leading software tools for business analytics, mainly Microsoft Excel and Tableau.
Learning outcomes
At the end of the course students should:
• Understand the fundamentals of data analytics, business intelligence and machine learning, and be able to reflect on ethical and legal implications of data use.
• Appreciate the importance of data wrangling as the foundation of meaningful data analytics, business intelligence and machine learning pipelines.
• Be familiar with a variety of descriptive analytics and visualization tools, and understand the complementary function of these methodologies.
• Have the ability to competently select and apply relevant visualization and statistical tools to identify patterns and trends in large sets of data in real-world problems, and to critically evaluate the results obtained.
• Be able to formulate, test and interpret simple regression models.
Syllabus
Introduction to Data Analytics
- Data Analysis model (eg: CRISP-DM) and BI/DA tools.
- Ethical and Legal Aspects of Data Analysis
- Data Wrangling
Introduction to Business Intelligence
- Statistical Tools
- Data Visualization
Introduction to Machine Learning
- Regression
- Bias Variance Trade-Off / Overfitting
Introduction to Data Visualization in Tableau
Introduction to Data Analytics in Excel
- Descriptive Statistics Toolbox
- Vlookups / Match & Index
- Pivot Tables
- Regression Analysis
- Use of Excel Macros
- VBA Scripting
Teaching and learning methods
SEMESTER 1:
1 hour of lecture and 1.5 hours of lab (10 weeks)
SEMESTER 2:
1 hour of lecture and 1.5 hours of labs (10 weeks)
Assessment methods
Formative assessment:
- Lab exercises
Summative assessment:
- Individual on campus 20-minute quizzes (4 submissions @ 10% each), 40%
- Individual Excel dashboard and accompanying coursework report, 60%
Feedback methods
Informal advice and discussion during lectures or seminars.
Response to student emails and questions from a member of staff including feedback provided via an online discussion forum.
Written and/or verbal comments on assessed and non-assessed work.
Generic feedback posted on Blackboard regarding overall examination performance.
Recommended reading
Alberto Ferrari, Analysing Data with Power BI and Power Pivot for Excel, 2016
Anil Maheshwari, Data Analytics Made Accessible, 2019 Edition
Study hours
Scheduled activity hours | |
---|---|
Lectures | 20 |
Practical classes & workshops | 30 |
Independent study hours | |
---|---|
Independent study | 150 |
Teaching staff
Staff member | Role |
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Ali Hassanzadeh Kalshani | Unit coordinator |
Additional notes
For Academic Year 2024/25
Updated: March 2024
Approved by: March UG Committee