Bachelor’s Degree in Quantitative and Statistical Methods Applied to Management

Mode of Study

Online classes, interactive LMS, and on-site workshops

Intake

29th January 2026

Duration

1 year top up available, 3 Years

Free offered

Payments

Registration Fee :
Rs.32030
Course Fee :
Top-Up : Rs.383000
3 Years : 620000

Programme Overview

The Bachelor’s Degree in Quantitative and Statistical Methods Applied to Management is designed to train professionals capable of using mathematical, statistical, and computational tools to analyze economic, financial, and managerial data in support of evidence-based decision-making in public and private organizations.

The programme combines management sciences, applied mathematics, statistics, and data analysis technologies, preparing graduates to operate effectively in data-driven business, economic, and institutional environments.

The curriculum is structured in accordance with the LMD (Licence–Master–Doctorate) system and aligned with international higher education and ECTS-equivalent standards.

Programme Objectives

The programme aims to:

  • Develop strong mastery of quantitative and statistical methods applied to management

  • Train students to collect, process, analyze, and interpret data

  • Build proficiency in statistical and data analysis software such as
    SPSS, R, Python, Excel, and Power BI

  • Enable students to conduct economic studies and quantitative research

  • Prepare analysts capable of integrating research outcomes into managerial decision-making

Programme Structure

  • Duration: 3 Years (6 Semesters)

  • Academic System: LMD

  • Total Credits: 180 ECTS

  • Field: Economics and Management

  • Specialization: Quantitative and Statistical Methods

Year 1 – Foundations in Management and Mathematics (60 Credits)

Core Courses (48 Credits)

Code Course Title Credits
MQS 101 Introduction to Management and Economics 6
MQS 102 General Mathematics I (Algebra and Analysis) 6
MQS 103 Descriptive Statistics 6
MQS 104 Basic Computing and Spreadsheets (Excel, SPSS) 6
MQS 105 Microeconomics 6
MQS 106 General Accounting 6
MQS 107 University Methodology and Academic Communication 6
MQS 108 Financial Mathematics 6

Optional Courses (Choose two – 12 Credits)

Code Course Title Credits
MQS 109 Introduction to Programming (Python / R) 6
MQS 110 English for Economics and Statistics 6
MQS 111 Scientific Writing and Presentation Techniques 6
MQS 112 Law and Economic Institutions 6

Year 2 – Quantitative Methods Applied to Management (60 Credits)

Core Courses (48 Credits)

Code Course Title Credits
MQS 201 Inferential Statistics 6
MQS 202 General Mathematics II (Linear Algebra & Differential Calculus) 6
MQS 203 Probability and Modeling 6
MQS 204 Econometric Methods I 6
MQS 205 Data Analysis (SPSS / Advanced Excel) 6
MQS 206 Game Theory and Decision Making 6
MQS 207 Research Methodology and Observation Internship 6
MQS 208 Information Technology Applied to Management (Statistical Software) 6

Optional Courses (Choose two – 12 Credits)

Code Course Title Credits
MQS 209 Social and Demographic Statistics 6
MQS 210 Introduction to Data Science 6
MQS 211 Simulation and Mathematical Modeling 6
MQS 212 Advanced Regression Analysis 6

Year 3 – Professional Applications and Advanced Analysis (60 Credits)

Code Course Title Credits
MQS 301 Advanced Econometrics and Time Series Analysis 6
MQS 302 Multivariate Analysis 6
MQS 303 Operations Research and Optimization 6
MQS 304 Statistics for Decision Making 6
MQS 305 Data Science Applied to Management (Python / R / Power BI) 6
MQS 306 Professional Dissertation / Final Year Project 12
MQS 307 Professional Internship (Minimum 3 Months) 12
Total 60

Overall Credit Allocation

Academic Year Focus Area Credits
Year 1 Mathematical, statistical, and economic foundations 60
Year 2 Quantitative methods and data analysis 60
Year 3 Professional applications and data science 60
Total Full Programme (LMD) 180 ECTS

Learning Outcomes and Skills Acquired

Graduates of the programme will be able to:

  • Apply quantitative and statistical methods to management and research problems

  • Use statistical software and programming tools for data analysis

  • Design decision-support and optimization models

  • Conduct economic, financial, and managerial studies

  • Produce professional analytical reports and academic research outputs

Career Opportunities

Graduates may pursue careers as:

  • Statistician / Data Analyst

  • Quantitative Economist

  • Management or Performance Analyst

  • Economic Studies and Evaluation Officer

  • Management Information Systems (MIS) Officer

  • Research, Planning, and Policy Consultant

Progression and Further Studies

The degree provides access to:

  • Master’s Degrees in Economics, Management, or Statistics

  • Master’s Degrees in Data Analytics, Business Analytics, or Econometrics

  • MBA programmes with quantitative or analytics specialization

  • Research-oriented postgraduate programmes
    (subject to admission requirements)

Academic Note

This programme is structured in compliance with the LMD academic framework and an ECTS-aligned credit system, ensuring academic rigor, transparency, and international comparability.

Frequently Asked Questions

Email: [email protected] Phone: +94 777-29-90-91
Yes. Degrees are awarded by globally recognized universities and can be verified through our official verification process.
Yes. We have certified training centers including SITC, MIBA, ISBM, and HDI CAMPUS II. You may visit the nearest one for support.
Once reviewed, you’ll receive a formal welcome email from the awarding university and an offer letter from HDI CAMPUS.
Yes. The degrees we offer are awarded by universities recognized by the University Grants Commission (UGC) of Sri Lanka.
Yes. This degree is accepted as a valid qualification for employment in both the government and private sectors in Sri Lanka. It can also be used to meet the eligibility requirements for promotions within those sectors.
This is a Blended Learning program, which combines both online and on-site components. All lectures are delivered online via Zoom, ensuring accessibility and flexibility for students. In addition, each subject includes relevant practical workshops and training sessions to enhance hands-on learning and real-world application.