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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Data Analytics

    Kerala University of Digital Sciences, Innovation and Technology
    Duration
    4 Years
    Data Analytics UG OFFLINE

    Duration

    4 Years

    Data Analytics

    Kerala University of Digital Sciences, Innovation and Technology
    Duration
    Apply

    Fees

    ₹2,50,000

    Placement

    93.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹12,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Data Analytics
    UG
    OFFLINE

    Fees

    ₹2,50,000

    Placement

    93.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹12,00,000

    Seats

    180

    Students

    300

    ApplyCollege

    Seats

    180

    Students

    300

    Curriculum

    Comprehensive Course Structure

    SemesterCourse CodeCourse TitleCredit (L-T-P-C)Pre-requisites
    1MATH101Calculus and Analytical Geometry3-1-0-4-
    1MATH102Linear Algebra and Vector Calculus3-1-0-4-
    1CS101Introduction to Programming3-1-2-6-
    1STAT101Probability and Statistics3-1-0-4-
    1ENG101English for Communication2-0-0-2-
    1PHY101Physics for Engineers3-1-0-4-
    1LAB101Programming Lab0-0-2-2-
    2MATH201Differential Equations3-1-0-4MATH101
    2CS201Data Structures and Algorithms3-1-2-6CS101
    2STAT201Statistical Inference3-1-0-4STAT101
    2CS202Database Management Systems3-1-2-6CS101
    2PHYS201Modern Physics3-1-0-4PHY101
    2LAB201Data Structures Lab0-0-2-2CS101
    3MATH301Advanced Mathematics3-1-0-4MATH201
    3CS301Machine Learning Fundamentals3-1-2-6CS201, STAT201
    3STAT301Data Mining and Warehousing3-1-0-4STAT201
    3CS302Web Technologies3-1-2-6CS201
    3CS303Big Data Analytics3-1-2-6CS202
    3LAB301Machine Learning Lab0-0-2-2CS201
    4CS401Deep Learning3-1-2-6CS301
    4STAT401Time Series Analysis3-1-0-4STAT301
    4CS402Recommender Systems3-1-2-6CS301
    4CS403Advanced Visualization Techniques3-1-2-6CS302
    4CS404Capstone Project I0-0-6-6CS301
    5CS501Advanced NLP3-1-2-6CS401
    5STAT501Bayesian Statistics3-1-0-4STAT401
    5CS502Cloud Computing for Analytics3-1-2-6CS303
    5CS503AI Ethics and Governance3-1-0-4CS401
    5CS504Capstone Project II0-0-6-6CS404
    6CS601Research Methodology3-1-0-4-
    6CS602Internship Preparation0-0-0-4-
    6CS603Advanced Data Modeling3-1-2-6CS502
    6CS604Thesis Writing0-0-0-4-
    7CS701Special Topics in Analytics3-1-2-6CS603
    7CS702Capstone Project III0-0-6-6CS504
    8CS801Final Thesis0-0-0-12CS702

    Advanced Departmental Electives

    The program offers a wide range of advanced departmental electives designed to deepen students' understanding and specialization in various aspects of data analytics. These courses are taught by faculty with international recognition and industry experience.

    • Deep Learning for Image Recognition: This course delves into convolutional neural networks, transfer learning, and computer vision applications. Students will work on projects involving image classification, object detection, and segmentation using frameworks like TensorFlow and PyTorch.
    • Natural Language Processing (NLP): Focused on linguistic analysis and text processing, this course explores language models, sentiment analysis, and machine translation. Practical assignments include building chatbots, summarizing documents, and performing named entity recognition.
    • Recommender Systems: This elective covers collaborative filtering, content-based recommendation, and hybrid approaches. Students implement systems for e-commerce platforms, streaming services, and social networks, leveraging techniques like matrix factorization and deep learning.
    • Financial Data Analytics: Designed for students interested in quantitative finance, this course examines time series analysis, risk modeling, and algorithmic trading strategies. Practical sessions involve using Python libraries like pandas and scipy to analyze market data and build predictive models.
    • Data Visualization with Tableau: This hands-on course teaches advanced visualization techniques using Tableau and other tools. Students learn to design dashboards, create interactive reports, and communicate insights effectively through compelling visual narratives.

    Project-Based Learning Framework

    Project-based learning is central to our program's pedagogy, providing students with opportunities to apply theoretical knowledge in practical contexts. The framework includes mandatory mini-projects throughout the curriculum and a final-year capstone project.

    The mini-projects are structured to encourage collaboration, critical thinking, and innovation. Each project is assigned a faculty mentor who guides students through the research process, from problem identification to solution implementation. Projects often involve real-world datasets provided by industry partners or government agencies.

    The final-year thesis/capstone project allows students to pursue an area of personal interest within data analytics. Students select their projects in consultation with faculty mentors and submit a detailed proposal outlining methodology, expected outcomes, and timeline. The project culminates in a presentation and report that demonstrates mastery of advanced analytical techniques.

    Evaluation criteria for all projects include technical competency, creativity, clarity of communication, adherence to deadlines, and peer collaboration. Students are encouraged to present their work at conferences or publish papers in journals, enhancing their academic profile and professional development.