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    Scholarships & exams

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

    Duration

    4 Years

    Data Science

    Get Group Of Institution Faculty Of Technology
    Duration
    4 Years
    Data Science UG OFFLINE

    Duration

    4 Years

    Data Science

    Get Group Of Institution Faculty Of Technology
    Duration
    Apply

    Fees

    ₹12,00,000

    Placement

    92.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹9,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Data Science
    UG
    OFFLINE

    Fees

    ₹12,00,000

    Placement

    92.0%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹9,00,000

    Seats

    250

    Students

    1,500

    ApplyCollege

    Seats

    250

    Students

    1,500

    Curriculum

    Course Structure Overview

    The Data Science program at Get Group Of Institution Faculty Of Technology is structured over eight semesters, with a balanced blend of core courses, departmental electives, science electives, and laboratory sessions. Each semester carries a specific focus that builds upon previous learnings to achieve comprehensive mastery in the field.

    Semester-wise Course Breakdown

    Semester Course Code Course Title Credit Structure (L-T-P-C) Prerequisites
    Semester I DS101 Introduction to Data Science 3-1-0-4 None
    MA101 Calculus I 3-1-0-4 None
    CS101 Programming Fundamentals 3-0-2-5 None
    PH101 Physics I 3-1-0-4 None
    CH101 Chemistry I 3-1-0-4 None
    ME101 Introduction to Engineering 2-1-0-3 None
    ES101 English Communication Skills 2-0-0-2 None
    PH102 Physics Lab I 0-0-2-2 PH101
    Semester II DS201 Linear Algebra & Probability 3-1-0-4 MA101
    MA201 Calculus II 3-1-0-4 MA101
    CS201 Data Structures & Algorithms 3-1-2-6 CS101
    PH201 Physics II 3-1-0-4 PH101
    CH201 Chemistry II 3-1-0-4 CH101
    EE201 Electrical Engineering Fundamentals 3-1-0-4 PH101
    ES201 Technical Writing & Presentation Skills 2-0-0-2 ES101
    CS202 Data Structures Lab 0-0-2-2 CS101, CS201
    Semester III DS301 Database Systems 3-1-0-4 CS201
    MA301 Statistics I 3-1-0-4 MA201
    CS301 Machine Learning Fundamentals 3-1-0-4 DS201, CS201
    PH301 Thermodynamics & Statistical Physics 3-1-0-4 PH201
    CH301 Organic Chemistry 3-1-0-4 CH201
    ME301 Mechanics & Materials 3-1-0-4 PH201, ME201
    ES301 Social Sciences & Ethics in Engineering 2-0-0-2 None
    DS302 Database Systems Lab 0-0-2-2 DS301
    Semester IV DS401 Advanced Statistical Methods 3-1-0-4 MA301
    CS401 Deep Learning 3-1-0-4 CS301
    MA401 Probability & Stochastic Processes 3-1-0-4 MA301
    PH401 Quantum Physics I 3-1-0-4 PH301
    CH401 Inorganic Chemistry 3-1-0-4 CH301
    ME401 Fluid Mechanics & Heat Transfer 3-1-0-4 ME301
    ES401 Environmental Studies 2-0-0-2 None
    CS402 Deep Learning Lab 0-0-2-2 CS401
    Semester V DS501 Big Data Technologies 3-1-0-4 DS301, CS301
    CS501 Natural Language Processing 3-1-0-4 CS401
    MA501 Time Series Analysis 3-1-0-4 MA401
    PH501 Quantum Physics II 3-1-0-4 PH401
    CH501 Physical Chemistry 3-1-0-4 CH401
    ME501 Thermodynamics & Control Systems 3-1-0-4 ME401
    ES501 Business Analytics 2-0-0-2 DS401, MA301
    DS502 Big Data Analytics Lab 0-0-2-2 DS501
    Semester VI DS601 Computer Vision 3-1-0-4 CS401, DS501
    CS601 Reinforcement Learning 3-1-0-4 CS401, MA401
    MA601 Bayesian Inference 3-1-0-4 MA501
    PH601 Quantum Computing Concepts 3-1-0-4 PH501
    CH601 Chemical Engineering Fundamentals 3-1-0-4 CH501
    ME601 Applied Mechanics 3-1-0-4 ME501
    ES601 Project Management 2-0-0-2 None
    DS602 Computer Vision Lab 0-0-2-2 DS601
    Semester VII DS701 Data Ethics & Governance 3-1-0-4 ES501, DS601
    CS701 Advanced Topics in Machine Learning 3-1-0-4 CS601
    MA701 Mathematical Modeling 3-1-0-4 MA601
    PH701 Quantum Information Theory 3-1-0-4 PH601
    CH701 Materials Science 3-1-0-4 CH601
    ME701 Engineering Design & Optimization 3-1-0-4 ME601
    ES701 Leadership & Team Dynamics 2-0-0-2 None
    DS702 Capstone Project I 0-0-4-6 DS501, DS601
    Semester VIII DS801 Capstone Project II 0-0-4-6 DS702
    CS801 Research Methodology 3-1-0-4 MA701, DS701
    MA801 Advanced Probability & Measure Theory 3-1-0-4 MA701
    PH801 Quantum Field Theory 3-1-0-4 PH701
    CH801 Industrial Chemistry 3-1-0-4 CH701
    ME801 Advanced Control Systems 3-1-0-4 ME701
    ES801 Entrepreneurship & Innovation 2-0-0-2 None
    DS802 Internship/Research Thesis 0-0-6-10 DS702, CS701

    Detailed Departmental Elective Courses

    The department offers a rich selection of advanced elective courses designed to deepen students' understanding and practical application of data science concepts. Below are descriptions of key electives:

    • Advanced Machine Learning: This course explores modern machine learning paradigms including ensemble methods, boosting algorithms, and unsupervised learning techniques. Students engage in hands-on projects involving real-world datasets, enhancing their ability to design and evaluate complex ML models.
    • Natural Language Processing (NLP): Focused on extracting semantic meaning from text data, this course covers tokenization, sentiment analysis, named entity recognition, and transformer-based architectures. Students build applications like chatbots, summarizers, and language translators using state-of-the-art libraries.
    • Computer Vision: This elective delves into image processing, object detection, and neural network-based solutions for visual recognition tasks. Through practical sessions, students learn to implement convolutional neural networks (CNNs) and apply them to real-world problems like autonomous driving and medical imaging.
    • Time Series Forecasting: Students study advanced forecasting techniques using ARIMA models, seasonal decomposition, and deep learning approaches for temporal data prediction. Emphasis is placed on building robust models for stock price forecasting, weather prediction, and demand planning.
    • Bayesian Inference: This course introduces probabilistic reasoning and Bayesian modeling frameworks. Students learn to construct prior distributions, perform posterior inference, and utilize Markov Chain Monte Carlo (MCMC) methods in computational applications.
    • Reinforcement Learning: Designed for students interested in autonomous agents and decision-making systems, this course covers Q-learning, policy gradients, and actor-critic methods. Practical assignments involve training robotic arms and game-playing AI systems.
    • Data Visualization & Communication: Focused on presenting data insights effectively, this course teaches tools like Tableau, Power BI, D3.js, and matplotlib. Students learn to create interactive dashboards, informative charts, and compelling narratives around data findings.
    • Big Data Technologies: This course explores distributed computing frameworks such as Apache Spark, Hadoop, and Kafka. Students gain experience in processing massive datasets using cluster computing environments and implementing scalable solutions for data engineering tasks.
    • Quantitative Finance: Tailored for students interested in financial modeling, this elective covers stochastic calculus, option pricing models, risk management techniques, and algorithmic trading strategies. Real-world applications include portfolio optimization and derivative valuation.
    • Healthcare Informatics: This course bridges healthcare domains with data science, focusing on EHR systems, clinical decision support, genomic data analysis, and public health analytics. Students work with anonymized medical datasets to solve real clinical challenges.

    Project-Based Learning Philosophy

    Our department strongly advocates for project-based learning as a means of integrating theoretical knowledge with practical skills. Projects are assigned at multiple levels throughout the program, from small lab exercises to major capstone initiatives.

    Mini-Projects

    Mini-projects are undertaken in the second and third years, allowing students to apply newly acquired concepts in controlled environments. These projects typically last one semester and are supervised by faculty members or senior researchers. Assessment criteria include:

    • Technical Implementation
    • Problem-Solving Approach
    • Documentation Quality
    • Presentation Skills
    • Team Collaboration

    Final-Year Thesis/Capstone Project

    The final-year capstone project represents the culmination of the student’s academic journey. It is a substantial, independent research endeavor that addresses a relevant problem in data science. Students may choose to work individually or form teams, with guidance from faculty mentors.

    Key aspects of the capstone process include:

    • Proposal Submission
    • Regular Progress Reports
    • Midterm Evaluation
    • Final Presentation and Defense
    • Documentation and Publication Potential

    The selection of projects is influenced by:

    • Industry Partnerships
    • Faculty Research Interests
    • Student Interests and Career Goals
    • Availability of Resources and Datasets

    Mentorship Structure

    Each student is paired with a faculty mentor based on mutual interest areas and availability. Mentors provide ongoing support, guidance on methodology, and feedback on progress throughout the project lifecycle.