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    Scholarships & exams

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

    Duration

    4 Years

    Computer Engineering

    UJJAIN ENGINEERING COLLEGE FORMERLY GOVERNMENT ENGINEERING COLLEGE
    Duration
    4 Years
    Computer Engineering UG OFFLINE

    Duration

    4 Years

    Computer Engineering

    UJJAIN ENGINEERING COLLEGE FORMERLY GOVERNMENT ENGINEERING COLLEGE
    Duration
    Apply

    Fees

    ₹3,50,000

    Placement

    94.0%

    Avg Package

    ₹5,50,000

    Highest Package

    ₹8,50,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Computer Engineering
    UG
    OFFLINE

    Fees

    ₹3,50,000

    Placement

    94.0%

    Avg Package

    ₹5,50,000

    Highest Package

    ₹8,50,000

    Seats

    180

    Students

    180

    ApplyCollege

    Seats

    180

    Students

    180

    Curriculum

    Comprehensive Course Structure

    The Computer Engineering program at UJJAIN ENGINEERING COLLEGE FORMERLY GOVT ENGG COLLEGE is meticulously structured over eight semesters to provide a progressive and comprehensive educational experience. The curriculum integrates foundational sciences, core engineering principles, and specialized electives to ensure students develop both breadth and depth in their understanding of computer systems and technologies.

    Semester-wise Course Distribution

    Semester Course Code Course Title Credit Structure (L-T-P-C) Prerequisites
    I CE101 Engineering Mathematics I 3-1-0-4 -
    I CE102 Physics for Engineers 3-1-0-4 -
    I CE103 Chemistry for Engineers 3-1-0-4 -
    I CE104 Introduction to Programming 3-1-2-5 -
    I CE105 Basic Electrical Engineering 3-1-0-4 -
    I CE106 Engineering Graphics & Design 2-1-2-4 -
    I CE107 Workshop Practice 0-0-2-2 -
    II CE201 Engineering Mathematics II 3-1-0-4 CE101
    II CE202 Digital Electronics 3-1-0-4 CE105
    II CE203 Data Structures & Algorithms 3-1-2-5 CE104
    II CE204 Object Oriented Programming with C++ 3-1-2-5 CE104
    II CE205 Electronics Circuits 3-1-0-4 CE105
    II CE206 Environmental Science & Engineering 3-1-0-4 -
    III CE301 Computer Organization & Architecture 3-1-0-4 CE202
    III CE302 Operating Systems 3-1-2-5 CE203
    III CE303 Database Management Systems 3-1-2-5 CE203
    III CE304 Web Technologies 3-1-2-5 CE204
    III CE305 Digital Signal Processing 3-1-0-4 CE201
    III CE306 Microprocessors & Microcontrollers 3-1-2-5 CE202
    IV CE401 Software Engineering 3-1-2-5 CE303
    IV CE402 Computer Networks 3-1-0-4 CE301
    IV CE403 Artificial Intelligence 3-1-2-5 CE301
    IV CE404 Cybersecurity Fundamentals 3-1-2-5 CE301
    IV CE405 Embedded Systems 3-1-2-5 CE306
    IV CE406 Internet of Things 3-1-2-5 CE306
    V CE501 Machine Learning 3-1-2-5 CE403
    V CE502 Big Data Analytics 3-1-2-5 CE401
    V CE503 Cloud Computing 3-1-2-5 CE401
    V CE504 Robotics & Automation 3-1-2-5 CE405
    V CE505 Human-Computer Interaction 3-1-2-5 CE401
    V CE506 Advanced Computer Architecture 3-1-0-4 CE301
    VI CE601 Deep Learning 3-1-2-5 CE501
    VI CE602 Blockchain Technology 3-1-2-5 CE404
    VI CE603 Reinforcement Learning 3-1-2-5 CE501
    VI CE604 Mobile Application Development 3-1-2-5 CE401
    VI CE605 Signal Processing Applications 3-1-0-4 CE305
    VI CE606 Advanced Cybersecurity 3-1-2-5 CE404
    VII CE701 Research Methodology 2-0-2-3 -
    VII CE702 Capstone Project I 0-0-6-6 -
    VIII CE801 Capstone Project II 0-0-6-6 CE702
    VIII CE802 Internship 0-0-12-12 -

    Advanced Departmental Elective Courses

    Advanced departmental electives are designed to deepen students' understanding of specialized areas within computer engineering. These courses provide exposure to emerging technologies and industry-relevant topics that align with current trends in the field.

    Machine Learning

    This course introduces students to fundamental concepts in machine learning, including supervised and unsupervised learning algorithms, neural networks, decision trees, clustering techniques, and reinforcement learning. Students gain hands-on experience through practical projects involving real-world datasets and industry applications.

    Big Data Analytics

    Focused on processing and analyzing large volumes of data, this course covers Hadoop, Spark, NoSQL databases, and statistical modeling techniques. Students learn to extract meaningful insights from big data sources using modern tools and frameworks.

    Cloud Computing

    Students explore cloud architecture, deployment models, service types, and management platforms such as AWS, Azure, and Google Cloud. The course includes practical sessions on deploying scalable applications in cloud environments.

    Robotics & Automation

    This elective integrates mechanical engineering principles with computer science to design autonomous systems. Students work with robotic kits, sensors, actuators, and control algorithms to build functional robots capable of performing complex tasks.

    Human-Computer Interaction

    Students study human factors in computing, usability testing, interface design, and accessibility standards. The course emphasizes the importance of user-centered design in creating effective software and hardware products.

    Advanced Computer Architecture

    This course delves into advanced topics such as cache memory design, pipelining, instruction set architecture (ISA), and parallel processing techniques. It prepares students for roles in hardware design and performance optimization.

    Deep Learning

    Focusing on neural network architectures like convolutional networks, recurrent networks, transformers, and generative adversarial networks, this course equips students with skills to develop advanced AI applications.

    Blockchain Technology

    Students explore blockchain fundamentals, smart contracts, consensus mechanisms, cryptographic protocols, and decentralized applications. The course includes practical implementation of blockchain solutions using platforms like Ethereum and Hyperledger.

    Reinforcement Learning

    This course covers theoretical foundations and practical implementations of reinforcement learning algorithms. Students learn to design agents that can learn optimal behaviors through interaction with environments.

    Mobile Application Development

    Students develop applications for iOS and Android platforms using modern frameworks like React Native, Flutter, and Swift/Kotlin. The course includes UI/UX design principles and app deployment strategies.

    Signal Processing Applications

    This elective explores the application of signal processing techniques in audio, image, and video analysis. Students work on projects involving speech recognition, computer vision, and multimedia systems.

    Advanced Cybersecurity

    Students study advanced security threats, penetration testing, malware analysis, network forensics, and incident response procedures. The course prepares graduates for roles in cybersecurity consulting and enterprise security management.

    Project-Based Learning Philosophy

    The department emphasizes a project-based learning approach throughout the curriculum to ensure students develop practical skills and real-world experience. Projects are structured to simulate industry challenges, encouraging creativity, teamwork, and innovation.

    Mini-projects begin in the second year, allowing students to apply theoretical knowledge to small-scale problems. These projects typically last 4–6 weeks and involve individual or group work under faculty supervision. Students are evaluated based on project documentation, presentation skills, and technical execution.

    The final-year thesis/capstone project is a significant component of the program, lasting 12–16 weeks. Students select topics related to their specialization or industry needs, working closely with assigned faculty mentors. Projects often result in patents, publications, or startup ventures, providing tangible proof of students' capabilities and potential impact.

    Students choose their projects through a collaborative process involving faculty advisors, industry partners, and departmental reviews. The selection criteria consider student interest, academic performance, resource availability, and alignment with current technological trends. Faculty mentors provide continuous guidance throughout the project lifecycle, ensuring that students receive timely feedback and support.