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

    Duration

    4 Years

    Computer Science

    Pandit Deendayal Energy University Gandhinagar
    Duration
    4 Years
    Computer Science UG OFFLINE

    Duration

    4 Years

    Computer Science

    Pandit Deendayal Energy University Gandhinagar
    Duration
    Apply

    Fees

    ₹3,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Computer Science
    UG
    OFFLINE

    Fees

    ₹3,50,000

    Placement

    92.0%

    Avg Package

    ₹4,50,000

    Highest Package

    ₹8,00,000

    Seats

    120

    Students

    1,200

    ApplyCollege

    Seats

    120

    Students

    1,200

    Curriculum

    Curriculum Overview

    The Computer Science program at Pandit Deendayal Energy University Gandhinagar is structured to provide a comprehensive and progressive learning experience. The curriculum is designed to balance theoretical knowledge with practical application, ensuring students are well-prepared for careers in technology or further studies.

    Course Structure Across 8 Semesters

    Semester Course Code Course Title Credit Structure (L-T-P-C) Pre-requisites
    1 CS101 Introduction to Programming 3-0-0-3 None
    1 CS102 Mathematics for Computing 4-0-0-4 None
    1 CS103 Basic Electronics & Digital Logic 3-0-0-3 None
    1 CS104 Communication Skills 2-0-0-2 None
    1 CS105 Lab: Introduction to Programming 0-0-3-1.5 CS101
    2 CS201 Data Structures & Algorithms 3-0-0-3 CS101
    2 CS202 Object-Oriented Programming 3-0-0-3 CS101
    2 CS203 Databases & SQL 3-0-0-3 CS101
    2 CS204 Operating Systems 3-0-0-3 CS101
    2 CS205 Lab: Data Structures & Algorithms 0-0-3-1.5 CS201
    3 CS301 Computer Networks 3-0-0-3 CS204
    3 CS302 Software Engineering 3-0-0-3 CS202
    3 CS303 Web Technologies 3-0-0-3 CS202
    3 CS304 Artificial Intelligence 3-0-0-3 CS201
    3 CS305 Lab: Software Engineering 0-0-3-1.5 CS302
    4 CS401 Cybersecurity Fundamentals 3-0-0-3 CS204
    4 CS402 Machine Learning 3-0-0-3 CS201
    4 CS403 Data Mining & Big Data 3-0-0-3 CS201
    4 CS404 Mobile Application Development 3-0-0-3 CS202
    4 CS405 Lab: Machine Learning 0-0-3-1.5 CS402
    5 CS501 Distributed Systems 3-0-0-3 CS301
    5 CS502 Cloud Computing 3-0-0-3 CS301
    5 CS503 User Experience Design 3-0-0-3 CS202
    5 CS504 Internet of Things 3-0-0-3 CS301
    5 CS505 Lab: Cloud Computing 0-0-3-1.5 CS502
    6 CS601 Research Methodology 3-0-0-3 CS201
    6 CS602 Advanced Data Structures 3-0-0-3 CS201
    6 CS603 Computer Graphics 3-0-0-3 CS202
    6 CS604 Game Development 3-0-0-3 CS202
    6 CS605 Lab: Computer Graphics 0-0-3-1.5 CS603
    7 CS701 Capstone Project 0-0-0-6 CS501, CS502
    7 CS702 Internship 0-0-0-6 CS501, CS502
    8 CS801 Advanced Topics in Computer Science 3-0-0-3 CS501, CS502
    8 CS802 Final Year Thesis 0-0-0-6 CS701

    Advanced Departmental Elective Courses

    The department offers several advanced elective courses that allow students to explore specialized areas of interest:

    Machine Learning

    This course provides a comprehensive understanding of machine learning algorithms and their applications. Students will learn supervised and unsupervised learning techniques, including decision trees, neural networks, clustering, and reinforcement learning. The course emphasizes practical implementation using Python libraries such as scikit-learn and TensorFlow.

    Deep Learning

    Building upon foundational knowledge in machine learning, this course delves into deep learning architectures such as convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformers. Students will implement complex models for image recognition, natural language processing, and time series analysis.

    Cryptography

    This course explores the mathematical foundations of modern cryptography, including symmetric and asymmetric encryption, hash functions, digital signatures, and key exchange protocols. Students will understand how cryptographic systems protect data integrity and confidentiality in real-world applications.

    Software Architecture

    Students learn principles of software architecture design, focusing on scalability, maintainability, and performance optimization. The course covers architectural patterns, microservices, cloud-native development, and system design methodologies.

    Data Mining

    This course teaches techniques for extracting meaningful patterns from large datasets. Topics include association rule mining, classification algorithms, clustering methods, and data preprocessing techniques using tools like Weka and Python libraries.

    Computer Vision

    Students explore the field of computer vision, covering image processing, feature detection, object recognition, and scene understanding. The course integrates theory with hands-on projects involving OpenCV, TensorFlow, and PyTorch frameworks.

    Network Security

    This course focuses on protecting networks against cyber threats through secure protocol design, vulnerability assessment, intrusion detection systems, and incident response strategies. Students will gain practical skills in penetration testing and network monitoring tools.

    DevOps & CI/CD

    Students learn DevOps practices including continuous integration, deployment automation, containerization with Docker, orchestration with Kubernetes, and infrastructure as code using Terraform and Ansible. The course emphasizes real-world implementation in enterprise environments.

    Human-Computer Interaction

    This course examines user-centered design principles and evaluation methods for creating effective interfaces. Students will explore usability testing, prototyping techniques, accessibility standards, and interaction design patterns.

    Embedded Systems Programming

    The course covers programming microcontrollers and designing embedded systems for IoT applications. Students will learn C/C++ programming for ARM-based processors, real-time operating systems, and hardware-software integration.

    Database Management Systems

    This advanced course delves into database design, query optimization, transaction management, and distributed databases. Students will work with relational and non-relational databases to solve complex data modeling challenges.

    Mobile Application Development

    Students develop cross-platform mobile applications using frameworks like React Native and Flutter. The course covers UI/UX design for mobile interfaces, backend integration, and deployment strategies for iOS and Android platforms.

    Cloud Computing

    This course explores cloud infrastructure models, service offerings (IaaS, PaaS, SaaS), and management tools. Students will implement scalable applications on AWS, Azure, and Google Cloud Platform while understanding security and compliance aspects.

    Internet of Things (IoT)

    The course introduces IoT concepts including sensor networks, communication protocols, edge computing, and smart device integration. Practical projects involve building IoT solutions using Arduino, Raspberry Pi, and cloud platforms.

    Big Data Technologies

    Students learn big data processing frameworks such as Hadoop, Spark, and Kafka. The course covers data ingestion, storage, analytics, and visualization techniques for handling large-scale datasets efficiently.

    Project-Based Learning Philosophy

    The department emphasizes project-based learning to enhance student engagement and skill development:

    • Mini-Projects: Introduced in the second year, these projects allow students to apply theoretical concepts in practical scenarios. Each mini-project is typically completed within a semester and involves team collaboration.
    • Capstone Project: The final-year project is a comprehensive endeavor that integrates knowledge from all previous years. Students work closely with faculty mentors to select topics relevant to industry trends or research interests.
    • Thesis/Capstone Evaluation: Projects are evaluated based on innovation, technical execution, documentation quality, presentation skills, and team dynamics. External reviewers may be invited for major project assessments.

    Project Selection Process

    Students select their projects through a structured process involving:

    • Faculty Mentor Allocation: Students express interest in specific areas, and mentors are assigned based on expertise and availability.
    • Proposal Submission: Detailed project proposals outlining objectives, methodology, timeline, and expected outcomes must be submitted for approval.
    • Research Review: Faculty committees review proposals to ensure feasibility, relevance, and alignment with departmental goals.