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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Computer Science

    Roorkee College Of Engineering
    Duration
    4 Years
    Computer Science UG OFFLINE

    Duration

    4 Years

    Computer Science

    Roorkee College Of Engineering
    Duration
    Apply

    Fees

    ₹2,50,000

    Placement

    98.0%

    Avg Package

    ₹6,20,000

    Highest Package

    ₹11,50,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Computer Science
    UG
    OFFLINE

    Fees

    ₹2,50,000

    Placement

    98.0%

    Avg Package

    ₹6,20,000

    Highest Package

    ₹11,50,000

    Seats

    120

    Students

    800

    ApplyCollege

    Seats

    120

    Students

    800

    Curriculum

    Curriculum

    The Computer Science curriculum at Roorkee College Of Engineering is meticulously designed to provide a robust foundation in theoretical principles while emphasizing practical applications and industry relevance. The program spans eight semesters, with each semester carefully structured to build upon prior knowledge and introduce new concepts gradually.

    Course Structure Overview

    The curriculum includes core courses, departmental electives, science electives, and laboratory components that collectively form a comprehensive educational experience. Core courses lay the groundwork for understanding fundamental concepts in computing, while electives allow students to specialize based on their interests and career goals.

    Core Courses

    Core courses are mandatory for all Computer Science students and include foundational subjects such as Introduction to Programming, Data Structures and Algorithms, Object-Oriented Programming, Database Management Systems, Operating Systems, Computer Networks, Compiler Design, Software Engineering, and Web Technologies.

    Departmental Electives

    These courses allow students to explore specialized areas within computer science. Students select electives based on their interests and career aspirations, choosing from options such as Artificial Intelligence, Cybersecurity, Data Science, Human-Computer Interaction, Mobile Computing, Internet of Things, Game Development, Computational Biology, and Quantitative Finance.

    Science Electives

    To broaden the educational experience, students also take science electives that complement their technical training. These include courses in Mathematics, Physics, Chemistry, and Biology, offering insights into how scientific principles apply to computing applications.

    Laboratory Courses

    Each course is supported by laboratory components where students engage in hands-on experimentation and application of theoretical concepts. Labs provide opportunities for troubleshooting, debugging, and developing practical skills essential for professional success.

    Course Schedule

    Semester Course Code Course Title Credit Structure (L-T-P-C) Prerequisites
    1 CS101 Introduction to Programming 3-0-0-3 -
    1 CS102 Mathematics for Computing 3-0-0-3 -
    1 CS103 Digital Logic Design 3-0-0-3 -
    2 CS201 Data Structures and Algorithms 3-0-0-3 CS101
    2 CS202 Object-Oriented Programming 3-0-0-3 CS101
    2 CS203 Database Management Systems 3-0-0-3 CS101
    3 CS301 Operating Systems 3-0-0-3 CS201, CS202
    3 CS302 Computer Networks 3-0-0-3 CS201, CS202
    3 CS303 Compiler Design 3-0-0-3 CS201, CS202
    4 CS401 Software Engineering 3-0-0-3 CS201, CS202
    4 CS402 Web Technologies 3-0-0-3 CS201, CS202
    4 CS403 Mobile Application Development 3-0-0-3 CS201, CS202
    5 CS501 Artificial Intelligence 3-0-0-3 CS201, CS202
    5 CS502 Cybersecurity Fundamentals 3-0-0-3 CS201, CS202
    5 CS503 Data Science and Analytics 3-0-0-3 CS201, CS202
    6 CS601 Advanced Algorithms 3-0-0-3 CS201, CS202
    6 CS602 Distributed Systems 3-0-0-3 CS301, CS302
    6 CS603 Cloud Computing 3-0-0-3 CS301, CS302
    7 CS701 Capstone Project I 0-0-6-6 All previous semesters
    8 CS801 Capstone Project II 0-0-6-6 All previous semesters

    Advanced Departmental Electives

    The department offers a wide range of advanced elective courses that allow students to delve deeper into specific areas of interest within computer science. These courses are designed to be both rigorous and relevant, preparing students for advanced roles in industry or further academic pursuits.

    Neural Networks

    This course explores the architecture and training of deep learning models, covering topics such as backpropagation, convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformers. Students engage in practical exercises using TensorFlow and PyTorch to build and train their own models.

    Computer Vision

    Focused on image processing techniques and object recognition systems, this course introduces students to fundamental concepts like edge detection, feature extraction, and machine learning algorithms for visual data interpretation. Practical components include building a face recognition system or autonomous robot navigation.

    Cryptography and Network Security

    Students learn cryptographic algorithms, secure communication protocols, and methods for protecting digital information. The course covers both symmetric and asymmetric encryption techniques, hash functions, digital signatures, and blockchain technology applications.

    Big Data Analytics

    Utilizing tools like Hadoop and Spark, students gain experience in processing large datasets and extracting meaningful insights through statistical modeling and data mining techniques. The course includes hands-on labs where students work with real-world datasets from various industries.

    Human-Computer Interaction

    This course examines the design and evaluation of interactive systems for users. Topics include usability testing, interface design principles, accessibility standards, and user experience research methods. Students often create prototypes and conduct user studies to refine their designs.

    Game Development

    Through this elective, students learn to develop interactive entertainment software using modern game engines like Unity or Unreal. The curriculum covers game mechanics, scripting, visual design, sound integration, and optimization techniques for performance.

    Mobile App Development

    Students gain proficiency in developing cross-platform mobile applications using frameworks such as React Native or Flutter. The course includes designing user interfaces, integrating APIs, and deploying apps to app stores.

    Embedded Systems Programming

    This course focuses on programming microcontrollers and embedded devices for real-time applications. Students learn about hardware-software co-design, real-time operating systems, and interfacing sensors and actuators in smart devices.

    Quantitative Finance

    Combining mathematics and computer science with finance, this elective introduces students to financial modeling, algorithmic trading strategies, and risk management tools. Students implement pricing models for derivatives and perform portfolio optimization exercises.

    Computational Biology

    This interdisciplinary course bridges biology and computational methods, focusing on bioinformatics applications such as genome assembly, protein structure prediction, and phylogenetic analysis. Students use programming languages like Python to analyze biological data sets.

    Project-Based Learning Philosophy

    Project-based learning is central to the department's philosophy, integrating theory with hands-on experience throughout the curriculum. This approach ensures that students not only understand academic concepts but also apply them in real-world scenarios.

    Mini Projects

    Starting from the second year, students participate in mini-projects that simulate real-world challenges. These projects typically involve working in teams and require students to research, design, implement, and present solutions to specific problems. Mini-projects are assessed based on technical execution, teamwork, and presentation quality.

    Final-Year Thesis/Capstone Project

    The final-year thesis or capstone project represents the culmination of a student's academic journey. Students select projects aligned with their interests and career goals, often in collaboration with faculty mentors or industry partners. The project involves extensive research, experimentation, and documentation.

    Project Selection Process

    Students are guided through a structured process to select appropriate projects based on their interests, available resources, and faculty expertise. Faculty mentors provide guidance throughout the project lifecycle, helping students navigate challenges and refine their approaches.

    Evaluation Criteria

    Projects are evaluated using multiple criteria including technical depth, innovation, feasibility, documentation quality, and presentation effectiveness. Regular progress reviews ensure that projects stay on track and meet academic standards.