Collegese

Welcome to Collegese! Sign in →

Collegese

    Search colleges and courses

    Search and navigate to colleges and courses

    Start your journey

    Ready to find your dream college?

    Join thousands of students making smarter education decisions.

    Watch How It WorksGet Started

    Discover

    Browse & filter colleges

    Compare

    Side-by-side analysis

    Explore

    Detailed course info

    Collegese

    India's education marketplace helping students discover the right colleges, compare courses, and build careers they deserve.

    © 2026 Collegese. All rights reserved. A product of Nxthub Consulting Pvt. Ltd.

    Apply

    Scholarships & exams

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

    Duration

    4 Years

    Electronics Engineering

    JAWAHARLAL INSTITUTE OF TECHNOLOGY BORAWAN
    Duration
    4 Years
    Electronics Engineering UG OFFLINE

    Duration

    4 Years

    Electronics Engineering

    JAWAHARLAL INSTITUTE OF TECHNOLOGY BORAWAN
    Duration
    Apply

    Fees

    ₹3,00,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹9,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Electronics Engineering
    UG
    OFFLINE

    Fees

    ₹3,00,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹9,00,000

    Seats

    150

    Students

    1,200

    ApplyCollege

    Seats

    150

    Students

    1,200

    Curriculum

    Course Structure Across 8 Semesters

    Semester Course Code Course Title Credit (L-T-P-C) Prerequisite
    1 EC101 Engineering Mathematics I 3-1-0-4 -
    1 EC102 Physics for Electronics 3-1-0-4 -
    1 EC103 Basic Electrical Engineering 3-1-0-4 -
    1 EC104 Introduction to Programming 2-0-2-3 -
    1 EC105 Engineering Drawing & Graphics 2-0-2-3 -
    1 EC106 Workshop Practice 0-0-2-1 -
    2 EC201 Engineering Mathematics II 3-1-0-4 EC101
    2 EC202 Electromagnetic Field Theory 3-1-0-4 EC102
    2 EC203 Analog Electronics I 3-1-0-4 EC103
    2 EC204 Digital Logic Design 3-1-0-4 -
    2 EC205 Signals & Systems 3-1-0-4 EC101
    2 EC206 Circuit Analysis 3-1-0-4 -
    3 EC301 Engineering Mathematics III 3-1-0-4 EC201
    3 EC302 Digital Electronics 3-1-0-4 EC204
    3 EC303 Analog Electronics II 3-1-0-4 EC203
    3 EC304 Microprocessor & Microcontroller 3-1-0-4 EC204
    3 EC305 Communication Systems 3-1-0-4 EC205
    3 EC306 Control Systems 3-1-0-4 EC205
    4 EC401 Probability & Random Processes 3-1-0-4 EC201
    4 EC402 Digital Signal Processing 3-1-0-4 EC205
    4 EC403 VLSI Design Principles 3-1-0-4 EC302
    4 EC404 Power Electronics 3-1-0-4 EC203
    4 EC405 Antenna & Wave Propagation 3-1-0-4 EC202
    4 EC406 Embedded Systems 3-1-0-4 EC304
    5 EC501 Wireless Communication 3-1-0-4 EC305
    5 EC502 Optical Fiber Communication 3-1-0-4 EC305
    5 EC503 Computer Architecture 3-1-0-4 EC304
    5 EC504 Renewable Energy Systems 3-1-0-4 EC404
    5 EC505 Biomedical Instrumentation 3-1-0-4 -
    5 EC506 Advanced Digital Electronics 3-1-0-4 EC302
    6 EC601 Machine Learning for Electronics 3-1-0-4 EC402
    6 EC602 Smart Sensors & Actuators 3-1-0-4 -
    6 EC603 Internet of Things (IoT) 3-1-0-4 EC304
    6 EC604 Advanced Control Systems 3-1-0-4 EC306
    6 EC605 Digital Image Processing 3-1-0-4 EC402
    6 EC606 Industrial Automation 3-1-0-4 EC306
    7 EC701 Capstone Project I 2-0-4-4 -
    7 EC702 Research Methodology 3-1-0-4 -
    7 EC703 Project Management 3-1-0-4 -
    7 EC704 Special Topics in Electronics 3-1-0-4 -
    8 EC801 Capstone Project II 2-0-4-4 -
    8 EC802 Internship & Industry Exposure 0-0-4-4 -
    8 EC803 Professional Ethics & Social Responsibility 2-0-0-2 -

    Detailed Course Descriptions for Advanced Departmental Electives

    Machine Learning for Electronics: This course introduces students to machine learning algorithms and their applications in electronic systems. Topics include supervised and unsupervised learning, neural networks, deep learning architectures, and optimization techniques tailored for hardware implementations. Students will explore real-world case studies involving sensor data processing, predictive maintenance, and autonomous systems.

    Smart Sensors & Actuators: Focused on the development of intelligent sensing technologies, this elective covers sensor design principles, signal conditioning circuits, actuator control mechanisms, and integration with embedded platforms. Emphasis is placed on low-power design strategies, wireless communication protocols, and data fusion techniques for smart monitoring systems.

    Internet of Things (IoT): This course explores the architecture, protocols, and applications of IoT systems. Students will learn about device connectivity, cloud computing integration, edge computing, security considerations, and privacy issues in connected environments. Practical sessions involve building end-to-end IoT solutions using microcontrollers, sensors, and communication modules.

    Advanced Control Systems: Building on foundational control theory, this course delves into modern control techniques such as state-space representation, optimal control, robust control, and adaptive control. Students will apply these concepts to complex systems including robotic arms, power plants, and aerospace vehicles, using simulation tools like MATLAB/Simulink.

    Digital Image Processing: This course focuses on algorithms and techniques used in digital image processing and computer vision. It covers image enhancement, filtering, segmentation, feature extraction, object detection, and recognition methods. Practical assignments involve implementing image processing pipelines using Python libraries such as OpenCV and scikit-image.

    Industrial Automation: Designed to bridge theory with practice, this course provides an overview of industrial control systems, programmable logic controllers (PLCs), SCADA systems, and automation software. Students will engage in hands-on laboratory experiments involving process control, robot programming, and factory floor simulations.

    Capstone Project I: In this initial phase of the capstone experience, students work under faculty supervision to define a research problem or design challenge related to electronics engineering. They develop project proposals, conduct literature reviews, and create implementation plans. Regular progress meetings ensure timely completion of milestones.

    Research Methodology: This course equips students with essential skills for conducting independent research in electronics engineering. It covers scientific method, hypothesis testing, experimental design, data analysis, and report writing. Students learn how to structure research papers, present findings at conferences, and seek funding for innovative projects.

    Project Management: Focused on managing complex engineering projects effectively, this course teaches project planning, risk assessment, resource allocation, timeline management, and team coordination strategies. Students will gain experience in using project management tools like Gantt charts, critical path method (CPM), and agile methodologies.

    Special Topics in Electronics: This elective allows students to explore emerging areas in electronics engineering through specialized lectures and workshops. Past topics have included quantum computing, neuromorphic chips, flexible electronics, and bioelectronics. The course encourages interdisciplinary thinking and fosters creativity in tackling novel challenges.

    Project-Based Learning Philosophy

    Our department believes that learning by doing is the most effective way to develop technical proficiency and innovation capabilities. Project-based learning is integrated throughout the curriculum, starting from early semesters with mini-projects and culminating in a final-year capstone project.

    The structure of our project framework emphasizes iterative development cycles, collaboration between students and faculty mentors, and real-world relevance. Students begin by selecting a topic aligned with their interests and career goals, followed by proposal writing, literature review, design phase, implementation, testing, and documentation.

    Evaluation criteria include technical execution, creativity, presentation quality, peer feedback, and adherence to deadlines. Faculty members guide students through each stage, providing mentorship, resources, and constructive criticism to enhance learning outcomes.