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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Artificial Intelligence

    Birla Institute of Management Technology
    Duration
    4 Years
    Artificial Intelligence UG OFFLINE

    Duration

    4 Years

    Artificial Intelligence

    Birla Institute of Management Technology
    Duration
    Apply

    Fees

    ₹12,00,000

    Placement

    95.0%

    Avg Package

    ₹12,00,000

    Highest Package

    ₹18,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Artificial Intelligence
    UG
    OFFLINE

    Fees

    ₹12,00,000

    Placement

    95.0%

    Avg Package

    ₹12,00,000

    Highest Package

    ₹18,00,000

    Seats

    250

    Students

    250

    ApplyCollege

    Seats

    250

    Students

    250

    Curriculum

    Curriculum Overview

    The curriculum for the AI program at Birla Institute of Management Technology is meticulously structured to provide a balanced blend of theoretical knowledge and practical application. It spans eight semesters, with each semester building upon previous learnings while introducing new challenges and concepts.

    SEMESTERCOURSE CODECOURSE TITLECREDIT STRUCTURE (L-T-P-C)PREREQUISITES
    IMTH101Calculus and Linear Algebra3-1-0-4-
    ICSE101Introduction to Programming2-0-2-3-
    ICSE102Data Structures and Algorithms3-1-0-4MTH101, CSE101
    IPHY101Physics for Engineers3-1-0-4-
    ICHM101Chemistry for Engineers2-1-0-3-
    IHSS101English Communication Skills2-0-0-2-
    IIMTH201Probability and Statistics3-1-0-4MTH101
    IICSE201Database Management Systems3-1-0-4CSE102
    IICSE202Software Engineering3-1-0-4CSE102
    IICSE203Digital Logic and Computer Organization3-1-0-4CSE102
    IIPHY201Optics, Waves and Modern Physics3-1-0-4PHY101
    IIIMTH301Numerical Methods3-1-0-4MTH201
    IIICSE301Machine Learning Fundamentals3-1-0-4MTH201, CSE201
    IIICSE302Computer Architecture3-1-0-4CSE203
    IIICSE303Operating Systems3-1-0-4CSE201, CSE203
    IIICSE304Computer Networks3-1-0-4CSE201, CSE302
    IVMTH401Advanced Calculus and Differential Equations3-1-0-4MTH101
    IVCSE401Deep Learning3-1-0-4CSE301
    IVCSE402Natural Language Processing3-1-0-4CSE301
    IVCSE403Computer Vision3-1-0-4CSE301
    IVCSE404Reinforcement Learning3-1-0-4CSE301
    VCSE501AI Ethics and Responsible Innovation3-1-0-4CSE301
    VCSE502Human-Computer Interaction3-1-0-4CSE301
    VCSE503AI for Healthcare3-1-0-4CSE401
    VCSE504Autonomous Systems3-1-0-4CSE401, CSE403
    VICSE601Quantum Machine Learning3-1-0-4CSE401
    VICSE602Advanced Topics in AI3-1-0-4CSE501
    VICSE603Research Methodology2-0-2-3-
    VIICSE701Capstone Project I4-0-0-4CSE602
    VIIICSE801Capstone Project II4-0-0-4CSE701

    The curriculum integrates both core and elective subjects designed to give students a comprehensive understanding of AI principles and applications. Core courses provide foundational knowledge in mathematics, computer science, and engineering disciplines essential for advanced AI studies.

    Advanced Departmental Electives

    Several advanced departmental electives are offered to deepen student expertise in specialized areas:

    • Deep Learning: This course explores convolutional neural networks (CNNs), recurrent neural networks (RNNs), transformers, and generative adversarial networks (GANs). Students gain hands-on experience with frameworks like TensorFlow and PyTorch.
    • Natural Language Processing: Covering topics such as sentiment analysis, machine translation, named entity recognition, and dialogue systems. Students work on real datasets to build language models capable of understanding context and generating human-like text.
    • Computer Vision: Focuses on image processing techniques, object detection, facial recognition, and 3D reconstruction using deep learning approaches.
    • Reinforcement Learning: Examines policy gradients, Q-learning, actor-critic methods, and multi-agent systems. Practical implementation involves building agents that learn optimal strategies through trial-and-error interactions.
    • AI Ethics and Responsible Innovation: Addresses ethical dilemmas in AI deployment, algorithmic bias, privacy protection, and regulatory compliance. Students engage with case studies from real-world applications to understand the societal impact of AI decisions.
    • Human-Computer Interaction: Studies user interface design principles, usability testing, and accessibility standards. This course emphasizes creating intuitive systems that enhance human performance through intelligent interaction.
    • AI for Healthcare: Applies AI techniques to medical diagnostics, drug discovery, personalized treatment plans, and health data analysis. Students collaborate with healthcare professionals to develop solutions addressing critical medical challenges.
    • Autonomous Systems: Focuses on robotics, navigation systems, control theory, and sensor fusion. Practical components include building self-driving vehicles or drones capable of autonomous decision-making.
    • Quantum Machine Learning: Introduces quantum computing concepts and their integration with machine learning algorithms. Students explore quantum circuits, quantum algorithms, and hybrid classical-quantum systems for solving complex problems.

    Project-Based Learning Philosophy

    The department places significant emphasis on project-based learning to ensure that students apply theoretical knowledge in practical scenarios. This approach fosters creativity, collaboration, and critical thinking skills essential for success in AI research and industry roles.

    Mini-projects are assigned during the third and fourth semesters to reinforce key concepts learned in core courses. These projects typically last 8-12 weeks and involve teams of 3-5 students working under faculty supervision. Each project has clear learning objectives, deliverables, and evaluation criteria.

    The final-year thesis/capstone project is a substantial endeavor that spans the entire eighth semester. Students select a topic aligned with their interests or industry needs and work closely with a faculty advisor. The project culminates in a comprehensive report, presentation, and demonstration of the developed system or solution.

    Project selection is facilitated through an online portal where students can browse available topics proposed by faculty members or submit their own ideas for approval. Faculty mentors are matched based on expertise and availability to ensure optimal guidance throughout the project lifecycle.