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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Diploma in Engineering

    Shri Vaishnav Polytechnic College
    Duration
    4 Years
    Engineering DIPLOMA OFFLINE

    Duration

    4 Years

    Diploma in Engineering

    Shri Vaishnav Polytechnic College
    Duration
    Apply

    Fees

    ₹80,000

    Placement

    92.0%

    Avg Package

    ₹4,20,000

    Highest Package

    ₹7,50,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Engineering
    DIPLOMA
    OFFLINE

    Fees

    ₹80,000

    Placement

    92.0%

    Avg Package

    ₹4,20,000

    Highest Package

    ₹7,50,000

    Seats

    1,200

    Students

    1,200

    ApplyCollege

    Seats

    1,200

    Students

    1,200

    Curriculum

    Comprehensive Course Structure

    The curriculum for the Diploma in Engineering program at Shri Vaishnav Polytechnic College is meticulously structured to ensure a progressive learning experience that builds upon foundational knowledge and advances into specialized areas. The following table outlines all courses across eight semesters, including course codes, titles, credit structure (L-T-P-C), and prerequisites.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Prerequisites
    IENG101English Communication3-0-0-3-
    IMAT101Mathematics I4-0-0-4-
    IPHY101Physics I3-0-0-3-
    ICHE101Chemistry I3-0-0-3-
    IBEE101Basic Electrical Engineering3-0-0-3-
    ICP101Computer Programming2-0-2-4-
    ILAB101Basic Electrical Lab0-0-2-2-
    ILAB102Programming Lab0-0-2-2-
    IIMAT102Mathematics II4-0-0-4MAT101
    IIPHY102Physics II3-0-0-3PHY101
    IIBEE102Electrical Circuits3-0-0-3BEE101
    IIMAT103Applied Mathematics3-0-0-3MAT102
    IICP102Data Structures and Algorithms2-0-2-4CP101
    IILAB103Circuits Lab0-0-2-2BEE101
    IIIMAT104Mathematics III4-0-0-4MAT103
    IIIME101Mechanics of Materials3-0-0-3BEE102
    IIICP201Database Management Systems2-0-2-4CP102
    IIICIV101Building Materials3-0-0-3-
    IIILAB201Database Lab0-0-2-2CP102
    IVMAT201Differential Equations3-0-0-3MAT104
    IVME102Mechanical Engineering Principles3-0-0-3ME101
    IVCP202Operating Systems2-0-2-4CP102
    IVCIV201Structural Analysis3-0-0-3CIV101
    IVLAB202OS Lab0-0-2-2CP102
    VMAT301Numerical Methods3-0-0-3MAT201
    VME201Thermodynamics3-0-0-3ME102
    VCP301Software Engineering2-0-2-4CP202
    VCIV301Geotechnical Engineering3-0-0-3CIV201
    VLAB301Software Engineering Lab0-0-2-2CP202
    VIMAT401Probability and Statistics3-0-0-3MAT301
    VIME301Manufacturing Processes3-0-0-3ME201
    VICP401Machine Learning2-0-2-4CP301
    VICIV401Transportation Engineering3-0-0-3CIV301
    VILAB401ML Lab0-0-2-2CP301
    VIIME401Advanced Control Systems3-0-0-3ME301
    VIICP501Cybersecurity2-0-2-4CP401
    VIICIV501Environmental Engineering3-0-0-3CIV401
    VIILAB501Cybersecurity Lab0-0-2-2CP401
    VIIIME501Project Management3-0-0-3ME401
    VIIICP601Capstone Project2-0-2-4CP501
    VIIICIV601Sustainable Infrastructure3-0-0-3CIV501
    VIIILAB601Capstone Project Lab0-0-2-2-

    Advanced Departmental Electives

    The following are detailed descriptions of key departmental elective courses offered in the program:

    Machine Learning

    This course introduces students to the fundamental concepts and algorithms of machine learning, including supervised and unsupervised learning techniques. Students will gain hands-on experience with popular frameworks such as TensorFlow and PyTorch while working on real-world datasets. The course emphasizes practical implementation and evaluation of models for applications in image recognition, natural language processing, and predictive analytics.

    Cybersecurity

    This elective explores the principles of information security and network defense. Topics include cryptographic systems, intrusion detection, secure programming practices, and risk assessment methodologies. Students will engage in simulations of cyber attacks and learn how to defend against them using industry-standard tools and protocols.

    Advanced Control Systems

    This course delves into modern control theory and its applications in industrial systems. Students study state-space representation, optimal control, and robust control design. The curriculum includes practical labs where students implement control algorithms on physical systems such as robotic arms and motor drives.

    Renewable Energy Systems

    This course examines the technologies and challenges associated with renewable energy sources such as solar, wind, hydroelectricity, and geothermal power. Students learn to model and simulate renewable energy systems, analyze their efficiency, and propose solutions for integrating them into existing power grids.

    Industrial Design

    This elective focuses on the design process in manufacturing environments. Students explore human factors engineering, ergonomics, and product development cycles. The course includes projects where students design products from concept to prototype, considering market needs, usability, and manufacturability.

    Data Analytics

    This course teaches students how to extract insights from large datasets using statistical methods and machine learning algorithms. Emphasis is placed on data visualization, data cleaning, hypothesis testing, and regression modeling. Students will use tools such as Python, R, and SQL to analyze real-world business problems.

    Embedded Systems

    This course introduces students to the design and implementation of embedded systems used in IoT devices, automotive systems, and smart appliances. Topics include microcontroller architecture, real-time operating systems, hardware-software integration, and debugging techniques.

    Sustainable Manufacturing

    This elective addresses sustainable practices in manufacturing industries. Students study lifecycle assessment, waste minimization, energy efficiency, and green supply chain management. The course includes case studies of companies implementing sustainability initiatives and discussions on regulatory compliance.

    Project-Based Learning Philosophy

    The department believes that project-based learning is essential for developing critical thinking and practical skills in engineering students. Projects are assigned at different stages of the program to ensure a progressive development of technical competencies.

    Mini-Projects

    Mini-projects are introduced in the second year, allowing students to apply basic concepts learned in class to real-world scenarios. These projects typically last 3-4 weeks and involve small groups of 3-5 students. Evaluation is based on technical execution, presentation quality, and peer feedback.

    Final-Year Thesis/Capstone Project

    The capstone project forms the culmination of the diploma program and requires students to work on a comprehensive engineering problem under the supervision of a faculty member. Projects can be either theoretical or experimental, depending on the student's interest and specialization area. The final submission includes a detailed report, oral presentation, and demonstration of the solution.

    Project Selection and Mentorship

    Students are encouraged to propose project ideas aligned with their interests and career goals. A faculty advisor is assigned based on the relevance of the topic and availability. The selection process involves a proposal defense where students present their concept, methodology, and expected outcomes to a panel of experts.