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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Data Science

    Bipin Tripathi Kumaon Institute Of Technology
    Duration
    4 Years
    Data Science UG OFFLINE

    Duration

    4 Years

    Data Science

    Bipin Tripathi Kumaon Institute Of Technology
    Duration
    Apply

    Fees

    N/A

    Placement

    94.5%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹15,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Data Science
    UG
    OFFLINE

    Fees

    N/A

    Placement

    94.5%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹15,00,000

    Seats

    N/A

    Students

    N/A

    ApplyCollege

    Seats

    N/A

    Students

    N/A

    Curriculum

    Comprehensive Course Structure

    The Data Science program at Bipin Tripathi Kumaon Institute Of Technology is structured over eight semesters, with a blend of core subjects, departmental electives, science electives, and laboratory sessions designed to provide students with a holistic understanding of data science principles and practices.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Pre-requisites
    1DS101Introduction to Data Science3-0-0-3None
    1DS102Mathematics for Data Science I4-0-0-4None
    1DS103Programming Fundamentals3-0-0-3None
    1DS104Statistics for Data Science3-0-0-3None
    1DS105Lab: Programming and Tools0-0-2-1DS103
    2DS201Mathematics for Data Science II4-0-0-4DS102
    2DS202Data Structures and Algorithms3-0-0-3DS103
    2DS203Database Management Systems3-0-0-3None
    2DS204Probability and Inference3-0-0-3DS104
    2DS205Lab: Data Structures and Algorithms0-0-2-1DS202
    3DS301Machine Learning Fundamentals3-0-0-3DS201, DS204
    3DS302Data Mining Techniques3-0-0-3DS204
    3DS303Statistical Inference and Modeling3-0-0-3DS104, DS201
    3DS304Data Visualization and Communication3-0-0-3DS104
    3DS305Lab: Machine Learning Applications0-0-2-1DS301
    4DS401Deep Learning and Neural Networks3-0-0-3DS301, DS302
    4DS402Natural Language Processing3-0-0-3DS301
    4DS403Time Series Analysis and Forecasting3-0-0-3DS303
    4DS404Advanced Statistical Methods3-0-0-3DS303
    4DS405Lab: Deep Learning and NLP0-0-2-1DS401, DS402
    5DS501Data Engineering and Big Data3-0-0-3DS302
    5DS502Financial Data Science3-0-0-3DS303
    5DS503Healthcare Analytics3-0-0-3DS301, DS303
    5DS504Geospatial Data Science3-0-0-3DS302
    5DS505Lab: Specialized Applications0-0-2-1DS501, DS502
    6DS601Research Methodology3-0-0-3DS401, DS501
    6DS602Advanced Topics in Data Science3-0-0-3DS501
    6DS603Industry Internship0-0-0-3DS501, DS502
    6DS604Capstone Project I0-0-0-3DS601
    7DS701Advanced Capstone Project II0-0-0-6DS604
    7DS702Professional Development3-0-0-3None
    7DS703Entrepreneurship in Data Science3-0-0-3None
    8DS801Final Year Thesis/Project0-0-0-6DS701
    8DS802Internship Report and Presentation0-0-0-3DS603

    Advanced Departmental Elective Courses

    These advanced elective courses are designed to provide depth in specialized areas of data science, enabling students to tailor their education according to their interests and career goals.

    1. Advanced Machine Learning Algorithms

    This course delves into cutting-edge machine learning models such as ensemble methods, boosting algorithms, generative adversarial networks (GANs), and reinforcement learning. Students will implement these models using Python frameworks like TensorFlow and PyTorch, gaining hands-on experience with complex datasets.

    2. Ethical Data Science

    Exploring the ethical implications of data collection, processing, and interpretation, this course addresses privacy concerns, bias in algorithms, and regulatory compliance. It prepares students to navigate the moral landscape of modern data science practices responsibly.

    3. Quantum Computing for Data Science

    Introducing quantum computing concepts and their applications in data science, this course explores how quantum algorithms can revolutionize optimization problems and machine learning tasks. Students will experiment with quantum simulators and understand the potential future impact of quantum technologies.

    4. Computational Social Science

    Using large-scale social media data, this course investigates human behavior through computational methods. Topics include network analysis, sentiment classification, influence propagation, and social dynamics modeling using real-world datasets.

    5. Computer Vision and Image Processing

    Focusing on image recognition, object detection, and facial recognition systems, this course combines theoretical knowledge with practical implementation using libraries like OpenCV and scikit-image. It explores applications in autonomous vehicles, medical imaging, and surveillance systems.

    6. Recommender Systems

    Students learn to design and evaluate recommendation algorithms used by platforms like Netflix, Spotify, and Amazon. The course covers collaborative filtering, content-based filtering, hybrid methods, and deep learning approaches for personalized recommendations.

    7. Data Privacy and Security

    This course examines cryptographic techniques, secure multi-party computation, differential privacy, and anonymization strategies. It equips students with the knowledge needed to protect sensitive data while extracting valuable insights.

    8. Time Series Forecasting

    Building upon foundational statistical methods, this course explores advanced forecasting models including ARIMA, GARCH, LSTM-based approaches, and state-space models. Applications in financial markets, climate modeling, and supply chain management are discussed.

    9. Natural Language Understanding

    Advanced NLP techniques such as transformers, BERT, RoBERTa, and language modeling are covered in this course. Students will work with pre-trained models and fine-tune them for specific tasks like question answering, summarization, and text generation.

    10. Data Governance and Quality Assurance

    This course emphasizes the importance of maintaining data integrity and quality within organizations. Topics include metadata management, data validation techniques, audit trails, and governance frameworks that ensure compliance with industry standards.

    Project-Based Learning Philosophy

    The department strongly believes in project-based learning as a core component of the curriculum. Through structured mini-projects and capstone initiatives, students are encouraged to apply theoretical knowledge to solve real-world problems.

    Mini-Projects

    Mini-projects are assigned at regular intervals throughout each semester to reinforce classroom concepts. These projects typically involve small teams (3-5 members) working under faculty supervision. Each project is evaluated based on technical execution, creativity, presentation quality, and adherence to deadlines.

    Final-Year Thesis/Capstone Project

    The capstone project serves as the culmination of the undergraduate experience. Students select a topic aligned with their interests or industry needs, conduct extensive research, develop prototypes, and present findings to a panel of experts. The project is supervised by a faculty mentor who provides guidance throughout the process.

    Project Selection Process

    Students are encouraged to propose project ideas in consultation with faculty advisors. The selection process involves a proposal submission, peer review, and final approval by the department head. Projects can be individual or team-based, depending on complexity and scope.