cmr.edu.in M.Sc. Information Technology in Data Science | Programmes at CMR University

M.Sc. Information Technology in Data Science

Scope and Objective

An M.Sc. in IT with a specialisation in Data Science prepares graduates for high-level careers in data science, analytics, and machine learning. The programme covers advanced topics such as deep learning, big data technologies, statistical modelling, and artificial intelligence. Graduates can pursue careers as Data Scientists, Machine Learning Engineers, or Data Consultants in industries such as finance, healthcare, e-commerce, and telecommunications.

The programme also equips students with research skills, enabling them to contribute to cutting-edge innovations in data science. With the growing reliance on data-driven strategies across industries, the demand for data science professionals is expected to rise. Graduates may also pursue doctoral studies or certifications in specialised areas such as AI or data engineering.

  • To offer in-depth knowledge of advanced data science techniques, including machine learning, deep learning, and big data technologies.
  • To provide practical experience in managing large datasets and deriving insights using tools like Hadoop, Spark, and TensorFlow.
  • To develop the ability to apply data science methodologies to solve complex problems in various industries, including finance, healthcare, and retail.
  • To prepare graduates for high-level roles as Data Scientists, Machine Learning Engineers, and Data Consultants.
  • To cultivate research skills, enabling students to contribute to innovations in data science and AI.
  • To prepare students for further academic research (Ph.D.) or advanced certifications in areas such as AI, data engineering, or specialised fields of data science.
  • To promote teamwork, communication, and project management skills by engaging students in collaborative projects and internships.

Programme Structure

Semester I
  • Advanced Database Management Systems and Lab
  • Python and R Programming and Lab
  • Research Methodology and IPR
  • Probability and Statistics
  • Elective 1 : 
    • Computer Networks and Security
    • Distributed Computing
  • Elective 2:
    • Advanced Algorithms
    • Object-Oriented Modeling and Design
  • Community Service – I 
  • Common Core Courses
Semester II
  • Artificial Intelligence and Lab
  • Internet of Things and Lab
  • Introduction to Data Science
  • Software Project Management
  • Elective 3: 
    • Advanced Optimization Techniques
    • Multivariate Data Analysis
  • Elective 4: 
    • Introduction to Augmented Reality and Virtual Reality 
    • Data Mining
  • Interdisciplinary Elective I
  • Common Core Courses
  • Community Service – II 
Semester III
  • Machine Learning using Python and Lab
  • Data Visualization using PowerBI and Tableau and Lab
  • Advanced Cloud Computing
  • Soft Computing Techniques
  • Elective 5: 
    • Natural Language Processing Techniques 
    • Digital Marketing And Web Analytics
    • Predictive Analytics
  • Elective 6:
    • Blockchain Technology 
    • Digital Forensics
  • MOOC
  • Interdisciplinary Elective II
  • Internship
  • Common Core Courses
Semester IV
  • Big Data Analytics using Hadoop 
  • Elective 7:
    • Deep Learning
    • Digital Image Processing
  • Elective 8: 
    • Cloud Security
    • Wireless Sensor Networks
  • Capstone Project

Programme Assessment

  • Choice-Based Credit System (CBCS): CMR University follows CBCS, allowing students to choose courses and earn credits based on their performance.
  • Grades and GPA: Students are awarded grades for each course in a semester. SGPA is calculated to measure academic performance per semester, and CGPA evaluates overall performance across semesters.
  • Prescribed Curriculum: Each programme includes a Scheme of Teaching and Evaluation, incorporating required courses, laboratories, and degree requirements. It also includes MOOCs offered by reputed institutions through platforms like SWAYAM.
  • Auditing Courses: Students may audit courses to gain additional exposure without the pressure of grading. This may benefit students during placements.
  • Evaluation System: Evaluation is continuous and consists of Continuous Internal Evaluation (CIE) and Semester End Examination (SEE), each contributing 50% to the final grade.
  • Assessment Methods: Faculty may employ various methods, including assignments, seminars, group discussions, case studies, industry reports, quizzes, and presentations.
  • Semester End Examination: SEE is conducted for all registered courses at the end of each semester. Some courses may not require SEE if sufficient CIE is conducted.
  • Makeup Examinations: Students failing in SEE are eligible for makeup examinations to improve their grades.

Programme Outcome

  • PO1: Develop the ability to analyse problems, and identify and define computing requirements appropriate to their solutions.
  • PO2: Apply knowledge of mathematics and science fundamentals to develop solutions for complex problems.
  • PO3: Apply analytical methods to interpret and analyse results obtained from experiments, drawing appropriate conclusions.
  • PO4: Demonstrate soft skills and values to function effectively as individuals and as members or leaders in diverse teams and multidisciplinary settings.
  • PO5: Apply mathematical and experimental methods to study advanced concepts and principles across various branches of science.

Course Outcomes Visit

What expertise will you gain?
  • Advanced programming skills in languages such as Java, C#, or Python
  • Knowledge of software engineering principles and methodologies
  • Proficiency in database management systems and SQL
  • Understanding of computer networks and cybersecurity
  • Project management and software development lifecycle skills

Career Opportunities

  • 01
    Software Developer
  • 02
    Database Administrator
  • 03
    Systems Analyst
  • 04
    Software Engineer
  • 05
    IT Project Manager
  • 06
    Mobile Application Developer
ACCP AY(2025-26)