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Welcome to Univet University. It was founded in 1966, and Univet University has grown into one of the leading institutions of higher education.

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M.Sc. in Data Analytics

Data analytics goes beyond spreadsheets and reports. This program prepares students to transform complex data into actionable insights, build predictive models, and support data-driven decision making across industries.

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Our university offers a comprehensive range of academic programs designed to inspire innovation, analytical thinking, and real-world impact. The M.Sc. in Data Analytics program blends theoretical knowledge with practical data engineering and analytics experience to ensure students gain the skills required in today’s data-driven global environment. From data management and distributed systems to predictive analytics and visualization, the curriculum emphasizes critical thinking, hands-on learning, and industry relevance. With guidance from experienced faculty and access to modern computing environments, students gain opportunities to analyze complex datasets and develop intelligent analytical solutions.

Program Highlight

Faculty

Technology

Duration

2 Years

Credits

36

Language

English

About Programs

The Master of Science in Data Analytics focuses on developing advanced expertise in data analysis, statistical modeling, and modern analytical technologies. The program integrates computing fundamentals with data science techniques and large-scale data processing frameworks. Students gain practical experience working with real datasets, building predictive models, and communicating analytical insights through visualization and data storytelling.

Master of Science in Data Analytics (24 Months)

Session: 2025 - 2026
Typical Program Structure

A 24-month M.Sc. in Data Analytics program usually follows a structured academic plan across several academic terms. The curriculum combines advanced coursework with hands-on data analysis projects and applied research activities.

Core Curriculum Topics
Computing Systems & Infrastructure
Data Engineering & Development
Security & Professional Practice
Data Analysis & Visualization
Advanced Analytics & Capstone

Curriculum Overview

Our M.Sc. in Data Analytics curriculum is designed to provide a balanced and future-oriented learning experience that combines advanced analytical theory with practical data engineering skills. The program integrates computing systems, statistical analysis, data visualization, and modern analytics technologies. Through hands-on projects and applied analytical research, students develop strong capabilities in data modeling, predictive analysis, and data-driven decision making while strengthening their problem-solving and technical expertise.

Curriculum Breakdown Summary

The curriculum is structured to provide a comprehensive and progressive learning pathway that supports both academic excellence and practical analytical skill development. It is organized into four major components: Core Computing Courses, Data Analytics & Modeling, Big Data & Intelligent Systems, and Professional Practice with Capstone Project.

Regular Students Required Credits
Core Courses 33 Credits
Capstone Project 3 Credits
Total 36 Credits

Computing Systems & Infrastructure

Cours Code Course Name Course Description Credits
DA601 Advanced Computing Systems and Architecture Explores modern computing architectures, parallel processing techniques, and scalable infrastructures used for large-scale data processing systems. 3 Credits
DA602 Data Management and Database Systems Introduces database design, data modeling, query optimization, and efficient data storage techniques used in analytics environments. 3 Credits

Data Engineering & Development

Cours Code Course Name Course Description Credits
DA603 Programming and Software Development Focuses on programming principles, data processing techniques, and software development practices for analytics applications. 3 Credits
DA604 Distributed and Cloud-Based Systems Examines distributed computing frameworks and cloud infrastructures used for large-scale data processing and analytics systems. 3 Credits
DA605 Software Quality, Testing, and Reliability Covers testing strategies, debugging techniques, and quality assurance practices for reliable analytical software systems. 3 Credits

Security & Professional Practice

Cours Code Course Name Course Description Credits
DA606 Secure Systems and Software Practices Introduces data security principles, secure system architectures, and risk mitigation strategies in analytics environments. 3 Credits
DA607 IT Project Management and Professional Practice Focuses on project planning, agile methodologies, teamwork, and professional practices in data analytics projects. 3 Credits

Data Analysis & Visualization

Cours Code Course Name Course Description Credits
DA608 Statistical Analysis and Data Modeling Covers statistical methods, data modeling techniques, and analytical approaches for interpreting complex datasets. 3 Credits
DA609 Data Visualization and Communication Explores visualization tools and techniques used to communicate analytical insights effectively to decision-makers. 3 Credits

Advanced Analytics & Capstone

Cours Code Course Name Course Description Credits
DA610 Big Data Analytics and Processing Introduces big data frameworks and technologies used for processing and analyzing large-scale datasets. 3 Credits
DA611 Predictive Analytics and Decision Intelligence Focuses on predictive modeling, machine learning techniques, and data-driven decision-making systems. 3 Credits
DA612 Data Analytics Capstone Project Students develop a complete analytics project using real-world datasets and advanced analytical methods. 3 Credits

Programs Cost

Our program costs are designed to remain transparent, competitive, and accessible for students from diverse backgrounds. The M.Sc. in Data Analytics program includes tuition fees, registration charges, and essential learning resources ensuring students receive high-quality education and comprehensive academic support. Costs may vary based on program type, course load, and mode of study (on-campus, hybrid, or online). We aim to provide exceptional value through modern facilities, expert faculty, and industry-aligned curriculum.

Spring 2025 Summer 2025 Fall 2025 Winter 2025 Annual
17 weeks 6 weeks Summer 1 3 Weeks Summer 2 3 Weeks 16 weeks 17 weeks Winter 1 3 Weeks Winter 2 3 Weeks Costs USD
Enrollment Fee (Onetime fee) $560 $560* $660
Orientations Fee (Onetime fee) $159 $159* $159
Medical Insurance (Yearly) $68 $68
Tuition $6,250 $3,125 $9,375 $6,250 $25,000
Technology Fee $150 $75 $150 $75 $450
Activity Fee $100 $100 $200
Total Fast Year $7,287 $3,200 $10,344 $6,325 $27,156
Total Second Year $5,192 $1,503 $7,133 $1,392 $15,220

Apply Now

Our admissions process is designed to be simple, transparent, and accessible for students from diverse academic backgrounds. The M.Sc. in Data Analytics program welcomes applicants who are passionate about data-driven innovation, analytical problem solving, and modern technology. Whether you are continuing your academic journey or advancing your professional expertise, our admissions team provides guidance and support throughout the application process.

Undergraduate

Begin your academic journey with flexible entry requirements and supportive learning environments designed to build strong foundational knowledge.

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Graduate

Advance your career through specialized graduate programs that focus on research, innovation, and professional development in modern technology fields.

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International Students

Join a diverse global community of learners and researchers with dedicated support for international admissions, documentation, and enrollment assistance.

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Requirements and Deadlines

Our program costs are designed to remain transparent competitive and accessible for students from diverse backgrounds. Each academic program includes tuition fees, registration charges and essential learning resources ensuring students receive high-quality education and comprehensive academic support Costs may vary based on program type, course load, and mode of study (on-campus, hybrid, or online) We aim to provide exceptional value through modern facilities, expert faculty, and industry aligned curriculum making your investment in education both meaningful and future-focused.

Admissions Requirements

1. Academic Qualifications
3. English Language Proficiency
5. Additional Requirements (Program-Specific)
7. Visa Requirements (International Students)
2. Academic Qualifications
4. Entrance Exam / Interview
6. Financial Requirements
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Application Deadlines

Program Level Adnations Session Applications Opens Appellation Deadline Classes Begin
Undergraduate Spring Intake October 1 December 15 January 10
Undergraduate Fall Intake April 1 July 30 September 1
Postgraduate Spring Intake October 1 December 30 January 15
Postgraduate Fall Intake April1 August 10 September 5
International Students All Intake 6 Month Before 2 Months Before As Scheduled

Requirements and Deadlines

Our program costs are designed to remain transparent competitive and accessible for students from diverse backgrounds. Each academic program includes tuition fees, registration charges and essential learning resources ensuring students receive high-quality education and comprehensive academic.

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