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

    Duration

    4 Years

    Financial Engineering

    The Institute Of Chartered Financial Analysts Of India University Aizawl
    Duration
    4 Years
    Financial Engineering UG OFFLINE

    Duration

    4 Years

    Financial Engineering

    The Institute Of Chartered Financial Analysts Of India University Aizawl
    Duration
    Apply

    Fees

    ₹4,50,000

    Placement

    93.5%

    Avg Package

    ₹4,80,000

    Highest Package

    ₹8,50,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Financial Engineering
    UG
    OFFLINE

    Fees

    ₹4,50,000

    Placement

    93.5%

    Avg Package

    ₹4,80,000

    Highest Package

    ₹8,50,000

    Seats

    120

    Students

    120

    ApplyCollege

    Seats

    120

    Students

    120

    Curriculum

    Comprehensive Course Listing for Financial Engineering Program

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Prerequisites
    1MATH101Calculus I3-0-0-3-
    1MATH102Linear Algebra3-0-0-3-
    1PHYS101Physics I3-0-0-3-
    1CHEM101Chemistry I3-0-0-3-
    1COMP101Programming Fundamentals2-0-2-3-
    1ENG101English for Technical Communication2-0-0-2-
    1INTRO101Introduction to Financial Engineering2-0-0-2-
    2MATH201Calculus II3-0-0-3MATH101
    2MATH202Probability and Statistics3-0-0-3MATH101
    2PHYS201Physics II3-0-0-3PHYS101
    2CHEM201Chemistry II3-0-0-3CHEM101
    2COMP201Data Structures and Algorithms2-0-2-3COMP101
    2ENG201Technical Writing and Presentation2-0-0-2-
    2MATH203Differential Equations3-0-0-3MATH101
    3MATH301Advanced Calculus3-0-0-3MATH201
    3ECON301Microeconomics3-0-0-3-
    3FIN301Financial Markets and Institutions3-0-0-3-
    3COMP301Database Systems2-0-2-3COMP201
    3STAT301Statistical Inference3-0-0-3MATH202
    3ECON302Macroeconomics3-0-0-3ECON301
    3MATH302Linear Programming and Optimization3-0-0-3MATH201
    4MATH401Stochastic Calculus3-0-0-3MATH301
    4FIN401Derivatives and Risk Management3-0-0-3FIN301
    4ECON401Financial Econometrics3-0-0-3ECON301
    4COMP401Advanced Programming and Simulation2-0-2-3COMP301
    4STAT401Time Series Analysis3-0-0-3STAT301
    4MATH402Numerical Methods for Finance3-0-0-3MATH301
    5MATH501Monte Carlo Methods for Finance3-0-0-3MATH401
    5FIN501Quantitative Risk Analysis3-0-0-3FIN401
    5ECON501Advanced Econometrics3-0-0-3ECON401
    5COMP501Machine Learning for Finance2-0-2-3COMP401
    5STAT501Advanced Statistical Modeling3-0-0-3STAT401
    5MATH502Financial Mathematics3-0-0-3MATH401
    6MATH601Computational Finance3-0-0-3MATH501
    6FIN601Algorithmic Trading Strategies3-0-0-3FIN501
    6ECON601Behavioral Finance3-0-0-3ECON501
    6COMP601Financial Data Analytics2-0-2-3COMP501
    6STAT601Advanced Time Series Analysis3-0-0-3STAT501
    6MATH602Optimization Techniques in Finance3-0-0-3MATH502
    7FIN701Capstone Project I4-0-0-4FIN601
    7COMP701Research Methodology2-0-0-2-
    7MATH701Special Topics in Financial Engineering3-0-0-3MATH601
    8FIN801Capstone Project II4-0-0-4FIN701
    8COMP801Advanced Research Project4-0-0-4COMP701
    8MATH801Thesis Preparation2-0-0-2MATH701

    Detailed Course Descriptions for Advanced Departmental Electives

    The department's philosophy on project-based learning is deeply rooted in the belief that practical experience is essential for developing competent professionals. Our approach emphasizes hands-on learning where students apply theoretical knowledge to solve real-world problems, fostering critical thinking and innovation.

    Mini-projects are integrated throughout the curriculum as a way to reinforce concepts learned in lectures and provide early exposure to research methodologies. These projects typically last 4-6 weeks and require students to work in teams of 3-5 members, mirroring professional environments where collaboration is key. Each project includes clear learning objectives, evaluation criteria, and mentorship from faculty members.

    The final-year thesis/capstone project represents the culmination of a student's academic journey, requiring them to demonstrate comprehensive understanding of their chosen field. Students work closely with faculty mentors to select research topics that align with current industry challenges or emerging trends in financial engineering.

    Project selection involves a rigorous process where students present proposals to faculty committees. The selection criteria include the relevance of the topic, feasibility of implementation, and potential for innovation. Students are encouraged to propose projects that address real-world problems and have practical applications in the financial sector.

    The structure of our project-based learning approach includes several key components: problem identification, literature review, methodology development, implementation, analysis, and presentation. This comprehensive framework ensures that students develop both technical skills and professional competencies required for success in their careers.

    Advanced Departmental Elective Courses

    The Monte Carlo Methods for Finance course provides students with advanced techniques for pricing financial derivatives and managing risk using simulation-based approaches. Students learn to implement complex algorithms for option pricing, portfolio optimization, and risk assessment using Monte Carlo simulations. The course emphasizes both theoretical foundations and practical applications, with hands-on laboratory sessions that allow students to experiment with real market data.

    Quantitative Risk Analysis focuses on developing sophisticated methods for identifying, measuring, and mitigating financial risks. Students study various risk metrics including Value at Risk (VaR), Expected Shortfall, and stress testing methodologies. The course covers both traditional risk management approaches and cutting-edge techniques that incorporate machine learning and big data analytics.

    Advanced Econometrics introduces students to complex statistical models used in financial research and analysis. Topics include panel data analysis, time series modeling, and simultaneous equations estimation. Students learn to apply these methods to real-world financial problems and develop skills in using econometric software for large-scale data analysis.

    Machine Learning for Finance covers the application of artificial intelligence techniques to financial markets and instruments. Students study supervised and unsupervised learning algorithms, neural networks, and deep learning architectures specifically designed for financial applications. The course includes practical implementation projects that allow students to develop trading algorithms and predictive models.

    Financial Data Analytics focuses on extracting insights from large datasets using advanced statistical methods and data visualization techniques. Students learn to handle big data challenges in finance, including data cleaning, preprocessing, and feature engineering. The course emphasizes practical skills for analyzing financial markets and developing data-driven investment strategies.

    Algorithmic Trading Strategies explores the design and implementation of automated trading systems. Students study market microstructure, order book dynamics, and execution algorithms. The course includes hands-on experience with trading platforms and simulation environments that allow students to test their strategies in realistic market conditions.

    Behavioral Finance examines the psychological factors that influence financial decision-making and market behavior. Students learn about cognitive biases, prospect theory, and the impact of emotions on investment choices. The course combines theoretical concepts with practical applications through case studies and simulations.

    Financial Mathematics provides a comprehensive treatment of mathematical models used in finance. Students study stochastic processes, Brownian motion, and partial differential equations that form the foundation of modern financial engineering. The course emphasizes both theoretical understanding and practical applications in derivative pricing and risk management.

    Optimization Techniques in Finance covers advanced mathematical optimization methods applied to financial problems. Students learn about linear programming, nonlinear optimization, and dynamic programming techniques. The course includes applications to portfolio optimization, resource allocation, and risk management strategies.

    Computational Finance focuses on numerical methods for solving complex financial problems using computer simulations and algorithms. Students develop skills in implementing financial models, conducting sensitivity analysis, and optimizing computational efficiency. The course emphasizes practical implementation and performance optimization of financial algorithms.

    Financial Engineering Capstone Projects provide students with the opportunity to work on comprehensive projects that integrate knowledge from multiple disciplines. These projects typically involve collaboration with industry partners or research institutions and require students to apply their skills to address real-world challenges in financial engineering.

    Special Topics in Financial Engineering allows students to explore emerging areas of research and innovation in the field. Topics vary each semester based on current developments in financial markets and technology trends. Students engage in advanced research projects that contribute to the growing body of knowledge in financial engineering.

    Research Methodology provides students with essential skills for conducting independent research and scholarly work. The course covers literature review techniques, experimental design, data analysis methods, and academic writing standards. Students learn to formulate research questions, design studies, and communicate findings effectively through presentations and publications.

    Advanced Statistical Modeling introduces students to sophisticated statistical techniques used in financial research. Topics include multivariate analysis, Bayesian inference, and hierarchical modeling. Students learn to apply these methods to complex financial datasets and develop skills in using advanced statistical software for data analysis.

    Thesis Preparation guides students through the process of developing and writing a comprehensive research thesis. The course covers academic writing standards, literature review techniques, and research methodology. Students receive individual mentorship from faculty members to ensure successful completion of their final projects.