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    Scholarships & exams

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

    Duration

    4 Years

    Bachelor of Technology in Engineering

    Mangalayatan University Aligarh
    Duration
    4 Years
    Engineering UG OFFLINE

    Duration

    4 Years

    Bachelor of Technology in Engineering

    Mangalayatan University Aligarh
    Duration
    Apply

    Fees

    ₹6,00,000

    Placement

    94.0%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹18,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Engineering
    UG
    OFFLINE

    Fees

    ₹6,00,000

    Placement

    94.0%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹18,00,000

    Seats

    300

    Students

    1,200

    ApplyCollege

    Seats

    300

    Students

    1,200

    Curriculum

    Comprehensive Course Structure

    Semester Course Code Course Title Credit (L-T-P-C) Prerequisites
    1st Semester ENG101 English for Engineers 3-0-0-3 -
    MAT101 Calculus and Differential Equations 4-0-0-4 -
    PHY101 Physics for Engineers 3-0-0-3 -
    CHM101 Chemistry for Engineers 3-0-0-3 -
    CSE101 Introduction to Programming 3-0-0-3 -
    MAT102 Linear Algebra and Probability 3-0-0-3 MAT101
    CSE102 Computer Organization & Architecture 3-0-0-3 -
    Labs Physics Lab, Chemistry Lab - -
    2nd Semester MAT103 Statistics and Numerical Methods 3-0-0-3 MAT101
    PHY102 Electromagnetic Fields and Waves 3-0-0-3 PHY101
    CSE103 Data Structures and Algorithms 3-0-0-3 CSE101
    ECE101 Basic Electronics 3-0-0-3 -
    MAT104 Differential Equations 3-0-0-3 MAT102
    CSE104 Object-Oriented Programming 3-0-0-3 CSE101
    ECE102 Digital Logic Design 3-0-0-3 ECE101
    Labs Mathematics Lab, Programming Lab - -
    3rd Semester MAT201 Complex Variables and Transforms 3-0-0-3 MAT104
    CSE201 Database Management Systems 3-0-0-3 CSE103
    ECE201 Signals and Systems 3-0-0-3 ECE102
    CSE202 Operating Systems 3-0-0-3 CSE104
    MAT202 Applied Mathematics for Engineers 3-0-0-3 MAT103
    CSE203 Software Engineering 3-0-0-3 CSE201
    ECE202 Electromagnetic Waves and Antennas 3-0-0-3 ECE201
    Labs Database Lab, Operating Systems Lab - -
    4th Semester MAT203 Partial Differential Equations 3-0-0-3 MAT201
    CSE301 Computer Networks 3-0-0-3 CSE202
    ECE301 Control Systems 3-0-0-3 ECE202
    CSE302 Artificial Intelligence and Machine Learning 3-0-0-3 CSE201
    MAT204 Probability and Statistics 3-0-0-3 MAT202
    CSE303 Web Technologies 3-0-0-3 CSE203
    ECE302 Microprocessors and Microcontrollers 3-0-0-3 ECE201
    Labs Networks Lab, AI/ML Lab - -
    5th Semester CSE401 Machine Learning 3-0-0-3 CSE302
    ECE401 VLSI Design 3-0-0-3 ECE302
    CSE402 Data Mining and Analytics 3-0-0-3 CSE301
    CSE403 Cloud Computing 3-0-0-3 CSE301
    MAT301 Optimization Techniques 3-0-0-3 MAT203
    CSE404 Big Data Analytics 3-0-0-3 CSE402
    ECE402 Embedded Systems 3-0-0-3 ECE301
    Labs Big Data Lab, Embedded Systems Lab - -
    6th Semester CSE501 Internet of Things (IoT) 3-0-0-3 CSE403
    ECE501 Wireless Communication 3-0-0-3 ECE401
    CSE502 Security in Computing 3-0-0-3 CSE302
    CSE503 Recommender Systems 3-0-0-3 CSE401
    MAT302 Discrete Mathematics 3-0-0-3 MAT201
    CSE504 Natural Language Processing 3-0-0-3 CSE401
    ECE502 Power Electronics 3-0-0-3 ECE402
    Labs IoT Lab, NLP Lab - -
    7th Semester CSE601 Deep Learning 3-0-0-3 CSE503
    ECE601 RF and Microwave Engineering 3-0-0-3 ECE501
    CSE602 Blockchain Technologies 3-0-0-3 CSE502
    CSE603 Computer Vision 3-0-0-3 CSE501
    MAT303 Mathematical Modeling 3-0-0-3 MAT301
    CSE604 Quantum Computing 3-0-0-3 CSE503
    ECE602 Advanced Embedded Systems 3-0-0-3 ECE502
    Labs Deep Learning Lab, Quantum Computing Lab - -
    8th Semester CSE701 Capstone Project 3-0-0-3 All previous semesters
    ECE701 Final Year Thesis 3-0-0-3 All previous semesters
    CSE702 Internship 3-0-0-3 All previous semesters
    CSE703 Industry Collaboration Project 3-0-0-3 All previous semesters
    MAT304 Advanced Topics in Engineering Mathematics 3-0-0-3 MAT302
    CSE704 Research Methodology 3-0-0-3 All previous semesters
    ECE702 Advanced Power Systems 3-0-0-3 ECE601
    Labs Final Year Project Lab, Thesis Lab - -

    Advanced Departmental Elective Courses

    The department offers a range of advanced elective courses designed to provide students with specialized knowledge and skills in their chosen fields. These courses are taught by leading faculty members who are experts in their respective domains.

    1. Machine Learning (CSE401)

    This course delves into the principles and applications of machine learning algorithms, covering supervised and unsupervised learning techniques, neural networks, deep learning frameworks, and reinforcement learning. Students learn to implement these concepts using Python and TensorFlow, gaining hands-on experience with real-world datasets. The course includes projects involving image recognition, natural language processing, and recommendation systems.

    2. Data Mining and Analytics (CSE402)

    This elective explores the techniques used to extract meaningful patterns from large datasets. Topics include data preprocessing, clustering, classification, association rule mining, and anomaly detection. Students use tools like Weka, RapidMiner, and Python libraries such as scikit-learn to analyze real-world datasets in domains such as healthcare, finance, and marketing.

    3. Cloud Computing (CSE403)

    This course provides a comprehensive overview of cloud computing technologies, including virtualization, distributed systems, scalability, and security. Students learn about major platforms like AWS, Azure, and Google Cloud, gaining practical experience through lab exercises and capstone projects involving deployment of web applications in the cloud.

    4. Internet of Things (IoT) (CSE501)

    The course introduces students to the fundamentals of IoT systems, covering sensor networks, embedded systems, communication protocols, and data processing. Through lab sessions, students build IoT applications using Raspberry Pi, Arduino, and microcontrollers, focusing on smart home automation, environmental monitoring, and industrial IoT solutions.

    5. Security in Computing (CSE502)

    This course covers cybersecurity principles, including network security, cryptography, access control, and malware analysis. Students study ethical hacking techniques, penetration testing, and secure software development practices. The curriculum includes hands-on labs using tools like Wireshark, Metasploit, and Kali Linux to simulate real-world attacks and defenses.

    6. Recommender Systems (CSE503)

    This course focuses on designing and implementing recommender systems that personalize user experiences based on preferences and behavior patterns. Students explore collaborative filtering, content-based filtering, hybrid methods, and deep learning approaches for recommendation engines. The course includes projects involving Netflix-style movie recommendations and Amazon-style product suggestions.

    7. Natural Language Processing (CSE504)

    This elective covers the techniques used to process and understand human language using computational methods. Topics include text preprocessing, sentiment analysis, named entity recognition, machine translation, and question answering systems. Students work with libraries like NLTK, spaCy, and Hugging Face Transformers to develop NLP applications for various domains.

    8. Deep Learning (CSE601)

    This advanced course explores deep neural networks, convolutional networks, recurrent networks, and transformers. Students learn to design and train complex models using frameworks like TensorFlow and PyTorch, applying them to image classification, speech recognition, and text generation tasks. The course includes hands-on labs involving computer vision projects and language modeling.

    9. Blockchain Technologies (CSE602)

    This course introduces students to blockchain architecture, consensus mechanisms, smart contracts, and decentralized applications. Through practical sessions, students develop blockchain-based solutions using platforms like Ethereum and Hyperledger Fabric, exploring applications in supply chain management, digital identity verification, and financial services.

    10. Computer Vision (CSE603)

    This course covers image processing techniques, object detection, segmentation, and recognition algorithms. Students learn to implement computer vision models using OpenCV, TensorFlow, and PyTorch, applying them to facial recognition, autonomous vehicles, medical imaging, and robotics.

    11. Quantum Computing (CSE604)

    This emerging course introduces quantum mechanics principles and quantum algorithms, focusing on quantum computing frameworks like Qiskit and Cirq. Students explore applications in cryptography, optimization, and simulation of quantum systems, developing skills for the future of computing.

    Project-Based Learning Philosophy

    The department emphasizes project-based learning as a core component of its educational approach. This philosophy is rooted in the belief that real-world problem-solving skills are best developed through hands-on experience and collaborative teamwork. Students engage in multiple projects throughout their academic journey, from early-stage mini-projects to final-year capstone endeavors.

    Mini-Projects

    Mini-projects are introduced in the second and third years of study. These short-term initiatives allow students to explore specific areas of interest under faculty guidance. Projects typically last 4–6 weeks and involve small teams working on defined problems with clear deliverables. Examples include developing a simple mobile app, analyzing a dataset using statistical methods, or designing an algorithm for a particular task.

    Final-Year Thesis/Capstone Project

    The final-year capstone project represents the culmination of a student's engineering education. Students select a topic aligned with their interests and career aspirations, working closely with a faculty advisor to develop a comprehensive solution. The project involves extensive research, experimentation, documentation, and presentation before a panel of experts. Successful projects often lead to publications, patents, or commercial applications.

    Project Selection Process

    Students begin the project selection process in their third year by attending project showcase events, where faculty members present current research opportunities and industry collaborations. Students are encouraged to propose ideas, seek feedback, and refine their concepts before finalizing a topic. The selection is based on academic performance, interest alignment, and resource availability.

    Evaluation Criteria

    Projects are evaluated based on several criteria including technical merit, innovation, documentation quality, teamwork, and presentation skills. Regular milestones and peer reviews ensure continuous improvement throughout the project lifecycle. Final evaluations are conducted by a panel of faculty members and industry experts to assess the impact and relevance of the work.