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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Bachelor of Technology in Engineering

    University Of Science And Technology Meghalaya
    Duration
    4 Years
    Engineering UG OFFLINE

    Duration

    4 Years

    Bachelor of Technology in Engineering

    University Of Science And Technology Meghalaya
    Duration
    Apply

    Fees

    ₹3,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,50,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Engineering
    UG
    OFFLINE

    Fees

    ₹3,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,50,000

    Seats

    120

    Students

    1,200

    ApplyCollege

    Seats

    120

    Students

    1,200

    Curriculum

    Curriculum Overview

    The curriculum for the Engineering program at University of Science and Technology Meghalaya is designed to provide students with a comprehensive and rigorous education in engineering principles and practices. The program is structured over eight semesters, with each semester building upon the previous one to ensure a deep and holistic understanding of engineering disciplines.

    Course Structure

    The curriculum is divided into core subjects, departmental electives, science electives, and laboratory courses. Core subjects provide foundational knowledge in engineering principles, while departmental electives allow students to specialize in their chosen field. Science electives enhance analytical and problem-solving skills, and laboratory courses provide hands-on experience with real-world applications.

    Semester-wise Course Breakdown

    Semester Course Code Course Title Credit Structure (L-T-P-C) Pre-requisites
    1 ENG101 Engineering Mathematics I 3-1-0-4 None
    1 ENG102 Physics for Engineers 3-1-0-4 None
    1 ENG103 Chemistry for Engineers 3-1-0-4 None
    1 ENG104 Engineering Graphics 2-1-0-3 None
    1 ENG105 Programming for Engineers 2-1-0-3 None
    1 ENG106 Engineering Mechanics 3-1-0-4 None
    2 ENG201 Engineering Mathematics II 3-1-0-4 ENG101
    2 ENG202 Electrical Circuits 3-1-0-4 ENG102
    2 ENG203 Thermodynamics 3-1-0-4 ENG102
    2 ENG204 Fluid Mechanics 3-1-0-4 ENG102
    2 ENG205 Materials Science 3-1-0-4 ENG103
    2 ENG206 Computer Programming Lab 0-0-3-2 ENG105
    3 ENG301 Advanced Mathematics 3-1-0-4 ENG201
    3 ENG302 Signals and Systems 3-1-0-4 ENG201
    3 ENG303 Control Systems 3-1-0-4 ENG202
    3 ENG304 Manufacturing Processes 3-1-0-4 ENG106
    3 ENG305 Structural Analysis 3-1-0-4 ENG106
    3 ENG306 Database Systems 3-1-0-4 ENG105
    4 ENG401 Advanced Control Systems 3-1-0-4 ENG303
    4 ENG402 Heat Transfer 3-1-0-4 ENG203
    4 ENG403 Machine Design 3-1-0-4 ENG106
    4 ENG404 Environmental Engineering 3-1-0-4 ENG204
    4 ENG405 Software Engineering 3-1-0-4 ENG306
    4 ENG406 Embedded Systems 3-1-0-4 ENG105
    5 ENG501 Artificial Intelligence 3-1-0-4 ENG302
    5 ENG502 Machine Learning 3-1-0-4 ENG501
    5 ENG503 Cybersecurity 3-1-0-4 ENG306
    5 ENG504 Data Analytics 3-1-0-4 ENG302
    5 ENG505 Renewable Energy 3-1-0-4 ENG203
    5 ENG506 Robotics 3-1-0-4 ENG403
    6 ENG601 Advanced Algorithms 3-1-0-4 ENG302
    6 ENG602 Computer Vision 3-1-0-4 ENG501
    6 ENG603 Neural Networks 3-1-0-4 ENG502
    6 ENG604 Power Electronics 3-1-0-4 ENG202
    6 ENG605 Advanced Materials 3-1-0-4 ENG205
    6 ENG606 Project Management 3-1-0-4 ENG306
    7 ENG701 Research Methodology 3-1-0-4 ENG301
    7 ENG702 Capstone Project I 3-1-0-4 ENG501
    7 ENG703 Industrial Internship 0-0-6-2 ENG306
    8 ENG801 Capstone Project II 3-1-0-4 ENG702
    8 ENG802 Entrepreneurship 3-1-0-4 ENG606
    8 ENG803 Professional Ethics 3-1-0-4 None

    Advanced Departmental Elective Courses

    Departmental electives play a crucial role in allowing students to specialize in their chosen field and gain in-depth knowledge in specific areas. These courses are designed to provide advanced technical skills and real-world applications, preparing students for careers in specialized engineering roles.

    Artificial Intelligence

    This course introduces students to the fundamentals of artificial intelligence, including machine learning, deep learning, and neural networks. Students will explore algorithms for problem-solving, knowledge representation, and reasoning. The course includes practical projects on image recognition, natural language processing, and robotics.

    Machine Learning

    The Machine Learning course focuses on supervised and unsupervised learning algorithms, including decision trees, clustering, regression, and classification. Students will learn to implement machine learning models using Python and scikit-learn, and will work on real-world datasets to build predictive models.

    Cybersecurity

    This course covers the principles of cybersecurity, including network security, cryptography, and ethical hacking. Students will learn to identify vulnerabilities, implement security protocols, and develop secure software systems. The course includes hands-on labs on penetration testing and security auditing.

    Data Analytics

    Data Analytics teaches students how to collect, process, and analyze large datasets using statistical methods and machine learning techniques. The course includes practical applications in business intelligence, data visualization, and predictive analytics using tools like R, Python, and SQL.

    Renewable Energy

    This course explores the principles of renewable energy systems, including solar, wind, and hydroelectric power. Students will study energy conversion processes, system design, and environmental impact assessment. The course includes field visits to renewable energy installations and project work on sustainable energy solutions.

    Robotics

    The Robotics course covers the design and programming of robotic systems, including sensors, actuators, and control systems. Students will build and program robots to perform specific tasks, and will explore applications in manufacturing, healthcare, and exploration.

    Advanced Algorithms

    This course delves into advanced algorithmic techniques, including graph algorithms, dynamic programming, and optimization methods. Students will learn to analyze the complexity of algorithms and apply them to solve complex computational problems in engineering and computer science.

    Computer Vision

    Computer Vision introduces students to the principles of image processing and pattern recognition. The course covers topics such as edge detection, feature extraction, and object recognition. Students will implement computer vision algorithms using OpenCV and TensorFlow.

    Neural Networks

    This course explores the architecture and training of neural networks, including feedforward, convolutional, and recurrent networks. Students will learn to design and train neural networks for various applications, including image classification, speech recognition, and natural language processing.

    Power Electronics

    The Power Electronics course covers the principles of power conversion and control, including rectifiers, inverters, and DC-DC converters. Students will study the design and application of power electronic circuits in renewable energy systems, electric drives, and power supplies.

    Advanced Materials

    This course explores the properties and applications of advanced materials, including composites, nanomaterials, and smart materials. Students will study the synthesis, characterization, and performance evaluation of materials for engineering applications.

    Project Management

    Project Management teaches students how to plan, execute, and monitor engineering projects. The course covers project lifecycle, risk management, resource allocation, and quality control. Students will work on real-world projects and develop project management skills using industry-standard tools.

    Project-Based Learning Philosophy

    The department strongly emphasizes project-based learning as a core component of the curriculum. This approach ensures that students gain practical experience and apply theoretical concepts to real-world problems. The program includes both mini-projects and a final-year thesis/capstone project, providing students with opportunities to develop technical and professional skills.

    Mini-Projects

    Mini-projects are undertaken during the third and fourth semesters. These projects are typically team-based and focus on solving specific engineering problems. Students work under the guidance of faculty mentors and are evaluated based on their technical contribution, teamwork, and presentation skills.

    Final-Year Thesis/Capstone Project

    The final-year project is a comprehensive endeavor that allows students to integrate their learning and demonstrate their expertise in a chosen area of engineering. Students select a project topic in consultation with faculty mentors and work on it for the entire academic year. The project includes literature review, design, implementation, testing, and documentation. Students present their work in a final defense and are evaluated based on the quality of the project, innovation, and presentation.

    Project Selection and Mentorship

    Students are encouraged to choose projects that align with their interests and career goals. The department provides a list of project ideas and research areas, and students can also propose their own projects. Faculty mentors are assigned based on the project topic and the expertise of the faculty member. The mentorship process includes regular meetings, progress reviews, and guidance on technical and professional development.