Collegese

Welcome to Collegese! Sign in →

Collegese

    Search colleges and courses

    Search and navigate to colleges and courses

    Start your journey

    Ready to find your dream college?

    Join thousands of students making smarter education decisions.

    Watch How It WorksGet Started

    Discover

    Browse & filter colleges

    Compare

    Side-by-side analysis

    Explore

    Detailed course info

    Collegese

    India's education marketplace helping students discover the right colleges, compare courses, and build careers they deserve.

    © 2026 Collegese. All rights reserved. A product of Nxthub Consulting Pvt. Ltd.

    Apply

    Scholarships & exams

    support@collegese.com
    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Data Science

    School of Computer Science and Information Technology
    Duration
    4 Years
    Data Science UG OFFLINE

    Duration

    4 Years

    Data Science

    School of Computer Science and Information Technology
    Duration
    Apply

    Fees

    ₹8,50,000

    Placement

    93.0%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹18,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Data Science
    UG
    OFFLINE

    Fees

    ₹8,50,000

    Placement

    93.0%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹18,00,000

    Seats

    120

    Students

    300

    ApplyCollege

    Seats

    120

    Students

    300

    Curriculum

    Comprehensive Course Structure

    The curriculum for the B.Tech in Data Science is structured over eight semesters, with a balanced mix of foundational subjects, core engineering principles, and specialized electives. The program ensures that students gain both breadth and depth in their understanding of data science while developing practical skills through laboratory sessions, mini-projects, and capstone research.

    SemesterCourse CodeCourse TitleCredits (L-T-P-C)Prerequisites
    1CS101Introduction to Programming3-0-0-3None
    1MAT101Calculus I4-0-0-4None
    1STA101Probability and Statistics3-0-0-3None
    1CS102Data Structures and Algorithms3-0-0-3CS101
    1MAT102Linear Algebra3-0-0-3None
    1ENG101English Communication2-0-0-2None
    2CS201Object-Oriented Programming with Java3-0-0-3CS101
    2MAT201Calculus II4-0-0-4MAT101
    2STA201Statistical Inference3-0-0-3STA101
    2CS202Database Systems3-0-0-3CS102
    2CS203Computer Organization and Architecture3-0-0-3None
    2MAT202Discrete Mathematics3-0-0-3None
    3CS301Machine Learning Fundamentals3-0-0-3CS201, MAT201, STA201
    3CS302Big Data Technologies3-0-0-3CS202
    3CS303Data Mining and Warehousing3-0-0-3CS202, STA201
    3CS304Statistical Modeling3-0-0-3MAT201, STA201
    3CS305Software Engineering3-0-0-3CS201
    3MAT301Optimization Techniques3-0-0-3MAT201
    4CS401Deep Learning and Neural Networks3-0-0-3CS301, MAT301
    4CS402Natural Language Processing3-0-0-3CS301, CS304
    4CS403Data Visualization and Reporting3-0-0-3STA201, CS303
    4CS404Reinforcement Learning3-0-0-3CS301, MAT301
    4CS405Cybersecurity in Data Science3-0-0-3CS203, CS302
    4MAT401Advanced Probability and Stochastic Processes3-0-0-3MAT201, MAT202
    5CS501Time Series Analysis3-0-0-3STA201, MAT301
    5CS502Computational Biology3-0-0-3CS304, MAT301
    5CS503Financial Engineering and Risk Analytics3-0-0-3STA201, MAT301
    5CS504Advanced Data Mining Techniques3-0-0-3CS303
    5CS505Big Data Analytics with Hadoop and Spark3-0-0-3CS302, CS401
    5MAT501Mathematical Optimization for AI3-0-0-3MAT301
    6CS601Industry Internship I2-0-0-2CS501, CS504
    6CS602Capstone Project - Phase I3-0-0-3CS401, CS501
    7CS701Industry Internship II2-0-0-2CS601
    7CS702Capstone Project - Phase II3-0-0-3CS602
    8CS801Final Year Thesis4-0-0-4CS702
    8CS802Professional Development and Ethics in Data Science2-0-0-2None

    Detailed Course Descriptions for Departmental Electives

    The department offers a wide range of advanced elective courses that allow students to specialize in their chosen areas within data science. These courses are designed by leading faculty members and align with current industry trends and research advancements.

    Advanced Deep Learning: This course explores modern architectures such as Transformers, GANs, and Autoencoders, providing students with hands-on experience using frameworks like TensorFlow and PyTorch. The focus is on developing models for complex tasks such as image generation, natural language understanding, and reinforcement learning.

    Natural Language Processing: Students learn about text preprocessing, language modeling, sentiment analysis, machine translation, and dialogue systems. This course utilizes cutting-edge tools like BERT, RoBERTa, and Hugging Face Transformers to build intelligent applications for processing human language.

    Reinforcement Learning: The course covers Q-learning, policy gradients, actor-critic methods, and multi-agent systems. Students apply these concepts in simulations and real-world environments using platforms like OpenAI Gym and MuJoCo.

    Cybersecurity for Data Science: This course introduces students to the intersection of data science and cybersecurity, focusing on threat detection, privacy-preserving analytics, and secure data handling practices. Students learn to identify vulnerabilities in data pipelines and implement robust defense mechanisms.

    Financial Engineering and Risk Analytics: The curriculum covers quantitative modeling, portfolio optimization, derivatives pricing, and risk management. Students use financial datasets to simulate market scenarios and develop predictive models for asset valuation and investment strategies.

    Data Visualization and Reporting: This course emphasizes visual storytelling through tools like Tableau, Power BI, and D3.js. Students learn how to design dashboards, create interactive reports, and communicate insights effectively to stakeholders across different domains.

    Big Data Analytics with Hadoop and Spark: Students explore distributed computing frameworks for processing large-scale datasets. Topics include MapReduce, YARN, Spark SQL, and streaming analytics using Kafka and Storm.

    Computational Biology: This course applies data science techniques to biological problems such as gene expression analysis, protein structure prediction, and drug discovery. Students gain experience with bioinformatics tools and databases like UniProt and NCBI.

    Advanced Data Mining Techniques: The course delves into clustering algorithms, association rule mining, anomaly detection, and recommendation systems. Students learn to implement these techniques on real-world datasets using Python libraries such as Scikit-learn and MLlib.

    Time Series Analysis: This course focuses on forecasting models for temporal data, including ARIMA, SARIMA, LSTM networks, and seasonal decomposition methods. Applications include economic forecasting, weather prediction, and stock market analysis.

    Mathematical Optimization for AI: The course covers linear programming, convex optimization, and integer programming techniques used in machine learning. Students apply these methods to solve complex problems in AI and robotics.

    Project-Based Learning Philosophy

    The department believes that project-based learning is essential for developing practical skills and deepening understanding of data science concepts. The program includes mandatory mini-projects in the second and third years, followed by a comprehensive final-year thesis or capstone project.

    Mini-projects are designed to be collaborative efforts that simulate real-world challenges. Students form teams of 3–5 members and work on a problem assigned by faculty or industry partners. These projects span several weeks and require students to apply multiple skills from the curriculum, including data preprocessing, model development, evaluation metrics, and presentation.

    The capstone project is an extended research endeavor that allows students to explore a topic of personal interest in depth. Students select their topics with guidance from faculty mentors and develop original solutions or methodologies. The final project is presented at a national symposium and may lead to publication opportunities or patent applications.

    Projects are evaluated based on several criteria including technical proficiency, creativity, teamwork, communication skills, and impact. Feedback from industry experts and faculty members ensures continuous improvement in student outcomes.