Collegese

Welcome to Collegese! Sign in →

Collegese

    Search colleges and courses

    Search and navigate to colleges and courses

    Start your journey

    Ready to find your dream college?

    Join thousands of students making smarter education decisions.

    Watch How It WorksGet Started

    Discover

    Browse & filter colleges

    Compare

    Side-by-side analysis

    Explore

    Detailed course info

    Collegese

    India's education marketplace helping students discover the right colleges, compare courses, and build careers they deserve.

    © 2026 Collegese. All rights reserved. A product of Nxthub Consulting Pvt. Ltd.

    Apply

    Scholarships & exams

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

    Duration

    4 Years

    Artificial Intelligence

    Chinmaya Vishwavidyapeeth
    Duration
    4 Years
    Artificial Intelligence UG OFFLINE

    Duration

    4 Years

    Artificial Intelligence

    Chinmaya Vishwavidyapeeth
    Duration
    Apply

    Fees

    ₹8,00,000

    Placement

    94.5%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹25,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Artificial Intelligence
    UG
    OFFLINE

    Fees

    ₹8,00,000

    Placement

    94.5%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹25,00,000

    Seats

    150

    Students

    250

    ApplyCollege

    Seats

    150

    Students

    250

    Curriculum

    Course Structure Overview

    The curriculum for the Artificial Intelligence program at Chinmaya Vishwavidyapeeth is designed to provide a comprehensive foundation in both theoretical and applied aspects of AI, with an emphasis on practical implementation, ethical considerations, and innovation. The program spans four years (eight semesters) and includes core courses, departmental electives, science electives, and laboratory-based learning experiences.

    SemesterCourse CodeFull Course TitleCredit Structure (L-T-P-C)Prerequisites
    IMATH101Calculus and Analytical Geometry3-0-0-3-
    IPHYS101Physics for Engineering3-0-0-3-
    ICS101Programming Fundamentals2-0-2-4-
    IENG101English for Technical Communication2-0-0-2-
    IMATH102Linear Algebra and Differential Equations3-0-0-3MATH101
    ICS102Data Structures and Algorithms3-0-0-3CS101
    IIMATH201Probability and Statistics3-0-0-3MATH101
    IICS201Object-Oriented Programming3-0-0-3CS101
    IICS202Digital Logic Design3-0-0-3CS101
    IIENG201Technical Writing and Presentation Skills2-0-0-2-
    IIPHYS201Modern Physics3-0-0-3PHYS101
    IICS203Database Systems3-0-0-3CS101
    IIICS301Introduction to Machine Learning3-0-0-3CS201, MATH201
    IIICS302Computational Thinking and Problem Solving2-0-0-2CS101
    IIICS303Statistical Methods in AI3-0-0-3MATH201
    IIICS304Operating Systems3-0-0-3CS201, CS202
    IIIPHYS301Quantum Physics and Applications3-0-0-3PHYS201
    IVCS401Neural Networks and Deep Learning3-0-0-3CS301, CS303
    IVCS402Reinforcement Learning3-0-0-3CS301, MATH201
    IVCS403Computer Vision3-0-0-3CS301, CS304
    IVCS404Natural Language Processing3-0-0-3CS301, MATH201
    IVCS405AI Ethics and Responsible Innovation2-0-0-2CS301
    VCS501Advanced Topics in Machine Learning3-0-0-3CS401
    VCS502Robotics and Automation3-0-0-3CS304, CS401
    VCS503Computational Intelligence3-0-0-3CS401
    VCS504AI in Healthcare Applications3-0-0-3CS401, CS403
    VCS505Research Methodology and Project Planning2-0-0-2CS301
    VICS601Capstone Project I: AI Research4-0-0-4CS501, CS505
    VICS602Capstone Project II: Implementation and Deployment4-0-0-4CS601
    VICS603Internship Preparation and Career Guidance2-0-0-2-
    VIICS701Advanced Capstone Project: Industry Collaboration6-0-0-6CS602
    VIIICS801Final Thesis/Research Dissertation6-0-0-6CS701

    Advanced Departmental Electives

    Departmental electives in the AI program allow students to deepen their understanding of specialized topics and prepare for advanced research or industry roles. These courses are taught by faculty members who are experts in their respective fields and often involve hands-on projects and collaborative research opportunities.

    • Advanced Deep Learning Architectures: This course covers state-of-the-art architectures such as Transformers, GANs, and Attention Mechanisms. Students learn to implement these models using frameworks like PyTorch and TensorFlow while exploring their applications in NLP, computer vision, and speech recognition.
    • Explainable AI (XAI): Focused on transparency and interpretability of AI systems, this course explores techniques for explaining model decisions. Students develop projects that integrate XAI methods into real-world scenarios to improve trust and accountability in AI deployment.
    • Edge AI and Embedded Systems: Designed to explore how AI can be implemented on resource-constrained devices such as smartphones, IoT sensors, and embedded platforms. This course includes lab sessions with Raspberry Pi, Arduino, and NVIDIA Jetson Nano.
    • Cognitive Modeling and Human-Machine Interaction: Combines insights from cognitive science and AI to build systems that simulate human-like interaction patterns. Students work on projects involving conversational agents, user interface design, and assistive technologies for individuals with disabilities.
    • AI for Climate Change Mitigation: Addresses how AI can be leveraged to combat climate change through energy optimization, carbon footprint tracking, and environmental monitoring. Students collaborate with researchers from environmental science departments on real-world projects.
    • Quantum Machine Learning: Explores the intersection of quantum computing and machine learning, including quantum algorithms for optimization and classification tasks. This course introduces students to quantum programming using Qiskit and Cirq.
    • AI in Financial Markets: Covers financial applications of AI including algorithmic trading, risk modeling, fraud detection, and credit scoring. Students engage with industry professionals and use real datasets from financial institutions.
    • Reinforcement Learning for Robotics: Focuses on applying RL algorithms to robot control, autonomous navigation, and manipulation tasks. Students work with robotic platforms in our lab environment to develop and test reinforcement learning policies.
    • AI for Smart Cities: Examines how AI technologies can be integrated into urban infrastructure for traffic management, energy efficiency, public safety, and citizen services. Projects include smart grid simulations and predictive policing models.
    • Natural Language Generation: Explores the generation of coherent and contextually appropriate text using large language models and neural text synthesis techniques. Students create tools for content creation, chatbots, and automated summarization systems.

    Project-Based Learning Philosophy

    The AI program at Chinmaya Vishwavidyapeeth places a strong emphasis on project-based learning as the primary mode of knowledge acquisition and skill development. The philosophy behind this approach is rooted in the belief that students learn best when they are actively engaged in solving real-world problems using AI technologies.

    Mini-projects begin in the third year and continue through the final year, allowing students to explore specific areas of interest while building technical competencies. These projects are typically completed in teams and involve multiple phases including problem definition, literature review, design, implementation, testing, and documentation.

    Each mini-project is supervised by a faculty mentor who provides guidance on methodology, tools, and best practices. Students are encouraged to present their work at internal symposiums, conferences, and competitions, fostering collaboration and peer feedback.

    The final-year capstone project, known as the 'AI Innovation Challenge,' requires students to identify a societal challenge and propose an AI-based solution. Projects are selected based on innovation potential, technical rigor, and social impact. Successful projects may receive funding for prototyping or commercialization through our Institute’s Innovation Hub.

    The evaluation criteria for projects include conceptual clarity, technical depth, documentation quality, presentation skills, peer review scores, and mentor feedback. Students must also submit a final report detailing their methodology, results, challenges encountered, and future directions.