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

    Bachelor of Technology in Engineering

    G D Goenka University Gurugram
    Duration
    4 Years
    Engineering UG OFFLINE

    Duration

    4 Years

    Bachelor of Technology in Engineering

    G D Goenka University Gurugram
    Duration
    Apply

    Fees

    ₹8,00,000

    Placement

    92.0%

    Avg Package

    ₹6,00,000

    Highest Package

    ₹18,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Engineering
    UG
    OFFLINE

    Fees

    ₹8,00,000

    Placement

    92.0%

    Avg Package

    ₹6,00,000

    Highest Package

    ₹18,00,000

    Seats

    300

    Students

    1,200

    ApplyCollege

    Seats

    300

    Students

    1,200

    Curriculum

    Course Structure Overview

    The engineering program at G D Goenka University Gurugram is meticulously structured to ensure a seamless transition from foundational knowledge to specialized expertise. The curriculum spans eight semesters, with each semester comprising core subjects, departmental electives, science electives, and laboratory sessions designed to build both theoretical understanding and practical application.

    SEMESTERCOURSE CODECOURSE TITLEL-T-P-CPRE-REQUISITES
    IPH101Physics for Engineers3-1-0-4-
    ICH101Chemistry for Engineers3-1-0-4-
    IMA101Mathematics I4-0-0-4-
    ICS101Introduction to Programming2-0-2-3-
    IEE101Basic Electrical Engineering3-1-0-4-
    IME101Engineering Drawing and Graphics2-0-2-3-
    IHS101English for Engineers2-0-0-2-
    IPH102Physics Lab I0-0-3-1PH101
    ICH102Chemistry Lab I0-0-3-1CH101
    ICS102Programming Lab0-0-3-1CS101
    IIPH201Electromagnetic Fields and Waves3-1-0-4PH101
    IICH201Organic Chemistry3-1-0-4CH101
    IIMA201Mathematics II4-0-0-4MA101
    IICS201Data Structures and Algorithms3-1-0-4CS101
    IIEE201Circuit Analysis3-1-0-4EE101
    IIME201Mechanics of Materials3-1-0-4ME101
    IIHS201Communication Skills2-0-0-2-
    IIPH202Electromagnetic Lab0-0-3-1PH201
    IICH202Organic Chemistry Lab0-0-3-1CH201
    IICS202Data Structures Lab0-0-3-1CS201
    IIIPH301Quantum Physics and Applications3-1-0-4PH201
    IIICH301Inorganic Chemistry3-1-0-4CH201
    IIIMA301Mathematics III4-0-0-4MA201
    IIICS301Database Management Systems3-1-0-4CS201
    IIIEE301Signals and Systems3-1-0-4EE201
    IIIME301Thermodynamics3-1-0-4ME201
    IIIHS301Leadership and Ethics2-0-0-2-
    IIIPH302Quantum Physics Lab0-0-3-1PH301
    IIICH302Inorganic Chemistry Lab0-0-3-1CH301
    IIICS302DBMS Lab0-0-3-1CS301
    IVPH401Statistical Mechanics3-1-0-4PH301
    IVCH401Physical Chemistry3-1-0-4CH301
    IVMA401Mathematics IV4-0-0-4MA301
    IVCS401Software Engineering3-1-0-4CS301
    IVEE401Control Systems3-1-0-4EE301
    IVME401Fluid Mechanics3-1-0-4ME301
    IVHS401Entrepreneurship Development2-0-0-2-
    IVPH402Statistical Mechanics Lab0-0-3-1PH401
    IVCH402Physical Chemistry Lab0-0-3-1CH401
    IVCS402Software Engineering Lab0-0-3-1CS401
    VPH501Advanced Electromagnetic Theory3-1-0-4PH401
    VCH501Chemistry of Polymers3-1-0-4CH401
    VMA501Advanced Mathematics4-0-0-4MA401
    VCS501Machine Learning3-1-0-4CS401
    VEE501Digital Signal Processing3-1-0-4EE401
    VME501Heat Transfer3-1-0-4ME401
    VHS501Global Perspectives2-0-0-2-
    VPH502Advanced Electromagnetic Lab0-0-3-1PH501
    VCH502Polymers Lab0-0-3-1CH501
    VCS502ML Lab0-0-3-1CS501
    VIPH601Quantum Field Theory3-1-0-4PH501
    VICH601Nuclear Chemistry3-1-0-4CH501
    VIMA601Numerical Methods4-0-0-4MA501
    VICS601Big Data Analytics3-1-0-4CS501
    VIEE601Power Electronics3-1-0-4EE501
    VIME601Manufacturing Processes3-1-0-4ME501
    VIHS601Project Management2-0-0-2-
    VIPH602Quantum Field Theory Lab0-0-3-1PH601
    VICH602Nuclear Chemistry Lab0-0-3-1CH601
    VICS602Big Data Lab0-0-3-1CS601
    VIIPH701Advanced Optics3-1-0-4PH601
    VIICH701Environmental Chemistry3-1-0-4CH601
    VIIMA701Operations Research4-0-0-4MA601
    VIICS701Computer Vision3-1-0-4CS601
    VIIEE701Renewable Energy Systems3-1-0-4EE601
    VIIME701Advanced Materials3-1-0-4ME601
    VIIHS701Leadership in Technology2-0-0-2-
    VIIPH702Advanced Optics Lab0-0-3-1PH701
    VIICH702Environmental Chemistry Lab0-0-3-1CH701
    VIICS702Computer Vision Lab0-0-3-1CS701
    VIIIPH801Condensed Matter Physics3-1-0-4PH701
    VIIICH801Biochemistry3-1-0-4CH701
    VIIIMA801Stochastic Processes4-0-0-4MA701
    VIIICS801Deep Learning3-1-0-4CS701
    VIIIEE801Smart Grid Technologies3-1-0-4EE701
    VIIIME801Robotics and Automation3-1-0-4ME701
    VIIIHS801Technology and Society2-0-0-2-
    VIIIPH802Condensed Matter Lab0-0-3-1PH801
    VIIICH802Biochemistry Lab0-0-3-1CH801
    VIIICS802Deep Learning Lab0-0-3-1CS801

    Each course within the curriculum is designed to progressively build upon previous knowledge while introducing new concepts relevant to the field. The department places a strong emphasis on experiential learning through hands-on laboratory sessions, real-world case studies, and collaborative group projects.

    Advanced Departmental Elective Courses

    Departmental electives are offered in specialized areas that allow students to deepen their understanding and develop expertise in emerging technologies. Below are descriptions of several advanced elective courses:

    1. Machine Learning (CS501)

    This course provides an in-depth exploration of machine learning algorithms, including supervised learning, unsupervised learning, reinforcement learning, and deep learning techniques. Students learn to implement these methods using Python libraries like Scikit-learn, TensorFlow, and PyTorch. The course emphasizes practical applications through real-world datasets, preparing students for roles in data science, artificial intelligence, and algorithm development.

    2. Big Data Analytics (CS601)

    Focused on processing large-scale datasets, this course covers big data technologies such as Hadoop, Spark, and NoSQL databases. Students gain hands-on experience with tools like Hive, Pig, and Kafka, learning how to extract insights from complex data environments. The curriculum includes case studies from industries such as finance, healthcare, and e-commerce.

    3. Computer Vision (CS701)

    This elective introduces students to the principles and techniques of computer vision, including image processing, feature detection, object recognition, and neural network architectures for visual tasks. Through project-based learning, students develop applications such as facial recognition systems, autonomous vehicle navigation, and medical imaging analysis.

    4. Renewable Energy Systems (EE701)

    This course explores the design, implementation, and optimization of renewable energy technologies including solar panels, wind turbines, hydroelectric generators, and geothermal systems. Students analyze energy conversion processes, model system performance, and evaluate economic viability using simulation software.

    5. Advanced Materials (ME701)

    This course delves into the structure, properties, and applications of advanced materials such as composites, nanomaterials, smart materials, and biomaterials. Students conduct experiments to characterize material behavior under various conditions, gaining insights into cutting-edge developments in materials science.

    6. Embedded Systems and IoT (CS602)

    This course focuses on designing and developing embedded systems for Internet of Things (IoT) applications. Students learn about microcontrollers, sensors, wireless communication protocols, and real-time operating systems. Practical labs involve building IoT devices that collect environmental data, control home appliances, or monitor industrial processes.

    7. Smart Grid Technologies (EE801)

    This elective covers the integration of renewable energy sources into electrical grids, smart metering technologies, demand response programs, and grid stability management. Students study power system dynamics, cybersecurity in smart grids, and regulatory frameworks governing modern electricity markets.

    8. Deep Learning (CS801)

    This advanced course explores neural network architectures such as convolutional networks, recurrent networks, transformers, and generative adversarial networks. Students implement complex deep learning models for tasks like natural language processing, image generation, and predictive analytics using frameworks like TensorFlow and PyTorch.

    9. Robotics and Automation (ME801)

    This course combines mechanical design, electronics, control systems, and artificial intelligence to create robotic systems capable of performing complex tasks. Students build autonomous robots, program sensor integration, and apply machine learning techniques for navigation and manipulation.

    10. Data Science with R (CS702)

    While similar to Python-based analytics courses, this elective focuses specifically on using R for statistical modeling, data visualization, and exploratory analysis. Students learn advanced packages like dplyr, ggplot2, caret, and shiny, applying these tools to real-world datasets in fields such as business intelligence and public health.

    Project-Based Learning Philosophy

    At G D Goenka University Gurugram, project-based learning is central to the engineering education philosophy. The department recognizes that theoretical knowledge alone is insufficient for developing competent engineers capable of solving real-world problems. Therefore, students engage in both mini-projects and final-year capstone projects throughout their academic journey.

    Mini-projects are introduced in the second year, allowing students to apply basic principles learned in coursework to practical scenarios. These projects often involve small teams working on short-term tasks such as designing a simple electronic circuit or conducting a basic software application. The goal is to foster teamwork, problem-solving skills, and early exposure to professional practices.

    The final-year capstone project represents the culmination of the student's engineering education. Students select a topic aligned with their interests and career aspirations, often in collaboration with industry partners or faculty members. These projects typically span several months and require extensive research, design, implementation, and presentation components. The department supports students through dedicated mentorship, access to cutting-edge resources, and regular progress reviews.

    Project selection is facilitated through a structured process involving proposal submissions, faculty guidance, and peer evaluation. Students are encouraged to propose innovative ideas that address societal challenges or leverage emerging technologies. The department also facilitates connections with industry experts who serve as external mentors, providing valuable insights into professional expectations and market trends.

    The evaluation criteria for project work emphasize technical excellence, creativity, adherence to timelines, and effective communication. Students must document their methodology, present findings clearly, and demonstrate how their solutions meet stakeholder needs. This approach ensures that graduates are not only technically skilled but also capable of leading multidisciplinary teams in collaborative environments.