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    Scholarships & exams

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

    Duration

    4 Years

    Vocational Training

    Matrix Skilltech University Geyzing
    Duration
    4 Years
    Vocational Training UG OFFLINE

    Duration

    4 Years

    Vocational Training

    Matrix Skilltech University Geyzing
    Duration
    Apply

    Fees

    ₹8,00,000

    Placement

    92.5%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹18,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Vocational Training
    UG
    OFFLINE

    Fees

    ₹8,00,000

    Placement

    92.5%

    Avg Package

    ₹6,50,000

    Highest Package

    ₹18,00,000

    Seats

    300

    Students

    1,200

    ApplyCollege

    Seats

    300

    Students

    1,200

    Curriculum

    Comprehensive Curriculum Overview

    The vocational training program at Matrix Skilltech University Geyzing is designed to provide a comprehensive and rigorous academic experience that combines theoretical knowledge with practical application. The curriculum is structured over eight semesters, each building upon the previous one to ensure progressive skill development.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Pre-requisites
    1MATH101Calculus and Differential Equations3-1-0-4None
    1PHYS101Physics for Engineering3-1-0-4None
    1CS101Introduction to Programming2-1-0-3None
    1ENG101Engineering Graphics2-1-0-3None
    1MECH101Basic Mechanics3-1-0-4None
    2MATH201Linear Algebra and Statistics3-1-0-4MATH101
    2PHYS201Electromagnetic Fields3-1-0-4PHYS101
    2CS201Data Structures and Algorithms3-1-0-4CS101
    2ECE201Basic Electronics3-1-0-4PHYS101
    2CIVIL201Engineering Materials3-1-0-4MECH101
    3MATH301Probability and Queuing Theory3-1-0-4MATH201
    3PHYS301Optics and Lasers3-1-0-4PHYS201
    3CS301Database Management Systems3-1-0-4CS201
    3ECE301Analog Circuits3-1-0-4ECE201
    3CIVIL301Structural Analysis3-1-0-4CIVIL201
    4MATH401Numerical Methods3-1-0-4MATH301
    4PHYS401Quantum Physics3-1-0-4PHYS301
    4CS401Software Engineering3-1-0-4CS301
    4ECE401Digital Circuits3-1-0-4ECE301
    4CIVIL401Geotechnical Engineering3-1-0-4CIVIL301
    5CS501Machine Learning3-1-0-4CS401
    5ECE501Communication Systems3-1-0-4ECE401
    5CIVIL501Transportation Engineering3-1-0-4CIVIL401
    6CS601Computer Vision3-1-0-4CS501
    6ECE601Embedded Systems3-1-0-4ECE501
    6CIVIL601Environmental Engineering3-1-0-4CIVIL501
    7CS701Artificial Intelligence3-1-0-4CS601
    7ECE701Power Electronics3-1-0-4ECE601
    7CIVIL701Construction Management3-1-0-4CIVIL601
    8CS801Capstone Project0-0-6-12All previous courses
    8ECE801Advanced Embedded Design3-1-0-4ECE701
    8CIVIL801Infrastructure Planning3-1-0-4CIVIL701

    The curriculum includes a variety of advanced departmental elective courses that allow students to specialize in their areas of interest while maintaining core competencies. These electives are carefully selected to reflect current industry trends and emerging technologies.

    Advanced Departmental Elective Courses

    One of the most comprehensive offerings is the Machine Learning course, which delves into supervised and unsupervised learning techniques, neural networks, deep learning architectures, and reinforcement learning algorithms. Students gain hands-on experience with popular frameworks like TensorFlow and PyTorch while working on real-world datasets. The course emphasizes practical implementation over theoretical mathematics, preparing students for roles as data scientists, machine learning engineers, or AI researchers.

    The Computer Vision course explores image processing techniques, object detection algorithms, computer vision applications in robotics and autonomous systems, and advanced topics like facial recognition and augmented reality. Students learn to implement complex vision algorithms using OpenCV, MATLAB, and Python-based libraries while working on projects involving real-time video analysis and scene understanding.

    The Artificial Intelligence course covers expert systems, natural language processing, robotics, and ethical considerations in AI development. Students develop AI applications that can reason about complex problems, understand human language, and interact with physical environments through robotic interfaces. The course includes a project component where students build an intelligent system from scratch.

    The Embedded Systems course focuses on designing, developing, and testing embedded software for microcontrollers, real-time operating systems, device drivers, and hardware-software co-design. Students work with ARM Cortex-M processors, Arduino platforms, and Raspberry Pi to create practical embedded applications that control physical devices in industrial and consumer environments.

    The Power Electronics course addresses power conversion techniques, DC-DC converters, AC-DC rectifiers, inverters, and motor drives. Students learn to design efficient power electronic circuits for renewable energy systems, electric vehicles, and industrial applications while understanding the principles of switching devices, filters, and control strategies.

    The Communication Systems course covers analog and digital communication principles, modulation techniques, signal processing in communication networks, wireless technologies, and fiber optic communications. Students gain experience with spectrum analysis tools, network simulators, and real-world communication equipment while understanding the mathematical foundations of information theory.

    The Transportation Engineering course explores traffic flow theory, highway design, urban transportation planning, and intelligent transportation systems. Students analyze transportation networks, model traffic patterns, and propose solutions for congestion management and infrastructure optimization using industry-standard software tools.

    The Environmental Engineering course addresses water quality analysis, waste management systems, pollution control technologies, and sustainable engineering practices. Students learn to design environmental monitoring systems, evaluate impact assessments, and develop sustainable solutions for industrial and urban environments.

    The Construction Management course covers project planning, risk assessment, cost estimation, scheduling techniques, and quality control in construction projects. Students gain experience with BIM software, project management methodologies, and safety protocols while working on realistic construction scenarios.

    The Infrastructure Planning course explores urban development strategies, infrastructure design, sustainability metrics, and policy frameworks for large-scale engineering projects. Students learn to integrate environmental, economic, and social considerations into infrastructure planning processes while using advanced modeling tools.

    Project-Based Learning Philosophy

    The department's philosophy on project-based learning is rooted in the belief that practical application accelerates learning and enhances professional readiness. Students engage in both mandatory mini-projects and a comprehensive final-year thesis/capstone project that integrates all learned concepts.

    Mini-projects are introduced in the second year and continue through the fourth year, with each project building upon previous knowledge and skills. These projects are typically completed in teams of 3-5 students and involve working with industry partners or faculty on real-world challenges. The evaluation criteria include technical competence, innovation, teamwork, presentation skills, and documentation quality.

    The final-year capstone project is a significant undertaking that spans the entire eighth semester. Students select projects from a curated list provided by faculty members or propose their own ideas after consultation with mentors. Projects often involve collaboration with industry partners, allowing students to address actual business needs while developing advanced technical skills.

    Students are assigned faculty mentors based on their interests and project requirements. The mentorship process includes regular meetings, progress reviews, and feedback sessions. Faculty members guide students through the entire project lifecycle, from conceptualization to final implementation and documentation.