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    +91 88943 57155
    Pune, Maharashtra, India

    Duration

    4 Years

    Business Analytics

    Brd College Of Management And Sciences
    Duration
    4 Years
    Business Analytics UG OFFLINE

    Duration

    4 Years

    Business Analytics

    Brd College Of Management And Sciences
    Duration
    Apply

    Fees

    ₹2,50,000

    Placement

    94.5%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹15,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Business Analytics
    UG
    OFFLINE

    Fees

    ₹2,50,000

    Placement

    94.5%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹15,00,000

    Seats

    120

    Students

    1,200

    ApplyCollege

    Seats

    120

    Students

    1,200

    Curriculum

    Course Structure and Elective Offerings

    The Business Analytics program at Brd College follows a rigorous academic calendar spanning eight semesters. Each semester includes core courses, departmental electives, science electives, and laboratory components designed to provide students with a comprehensive understanding of data-driven decision-making.

    SemesterCourse CodeCourse TitleCredit Structure (L-T-P-C)Prerequisites
    1BAN-101Introduction to Business Analytics3-0-0-3None
    1MAT-101Calculus for Business Applications3-0-0-3None
    1BAN-102Programming Fundamentals using Python2-0-2-4None
    1BAN-103Statistics for Business3-0-0-3None
    1BAN-104Introduction to Data Visualization2-0-2-4None
    1ENG-101English Communication Skills2-0-0-2None
    2BAN-201Data Structures and Algorithms3-0-0-3BAN-102
    2BAN-202Database Systems3-0-0-3BAN-102
    2BAN-203Probability Theory and Random Variables3-0-0-3MAT-101
    2BAN-204Business Process Modeling2-0-0-2None
    2BAN-205Research Methodology2-0-0-2None
    3BAN-301Predictive Modeling Techniques3-0-0-3BAN-203
    3BAN-302Machine Learning Fundamentals3-0-0-3BAN-201
    3BAN-303Data Mining and Knowledge Discovery3-0-0-3BAN-202
    3BAN-304Business Intelligence Tools2-0-2-4BAN-104
    3BAN-305Time Series Analysis3-0-0-3BAN-203
    4BAN-401Advanced Statistical Inference3-0-0-3BAN-203
    4BAN-402Natural Language Processing3-0-0-3BAN-302
    4BAN-403Deep Learning and Neural Networks3-0-0-3BAN-302
    4BAN-404Computer Vision Applications3-0-0-3BAN-302
    4BAN-405Data Ethics and Privacy2-0-0-2BAN-205
    5BAN-501Financial Analytics3-0-0-3BAN-301
    5BAN-502Risk Management using Analytics3-0-0-3BAN-301
    5BAN-503Marketing Analytics3-0-0-3BAN-301
    5BAN-504Social Media Analytics2-0-0-2BAN-301
    5BAN-505Healthcare Data Analytics3-0-0-3BAN-301
    6BAN-601E-commerce Analytics3-0-0-3BAN-503
    6BAN-602Supply Chain Optimization3-0-0-3BAN-301
    6BAN-603Data Governance and Compliance3-0-0-3BAN-405
    6BAN-604Capstone Project Planning2-0-2-4BAN-501, BAN-502, BAN-503
    7BAN-701Capstone Project Execution4-0-0-4BAN-604
    8BAN-801Advanced Capstone Research4-0-0-4BAN-701

    Detailed Course Descriptions for Advanced Electives

    Predictive Modeling Techniques: This course explores various predictive modeling techniques including regression analysis, classification algorithms, and clustering methods. Students learn to build models that forecast future trends based on historical data, using tools like R, Python, and specialized software packages. The emphasis is on model selection, validation, and interpretation.

    Machine Learning Fundamentals: A comprehensive introduction to machine learning principles and applications. Topics include supervised and unsupervised learning, decision trees, neural networks, support vector machines, and ensemble methods. Students gain hands-on experience with real-world datasets and learn to implement algorithms using scikit-learn and TensorFlow.

    Data Mining and Knowledge Discovery: This course focuses on extracting meaningful patterns from large datasets. Students study association rules, anomaly detection, and feature selection techniques. The curriculum includes practical applications in market basket analysis, fraud detection, and recommendation systems.

    Business Intelligence Tools: Students are introduced to enterprise-level business intelligence platforms such as Tableau, Power BI, and QlikSense. They learn to design dashboards, perform data visualization, and generate actionable insights from complex datasets.

    Time Series Analysis: Focused on analyzing temporal data, this course covers stationary and non-stationary processes, ARIMA models, seasonal decomposition, and forecasting techniques. Applications in economics, finance, and operational planning are emphasized.

    Natural Language Processing: This elective delves into the analysis of textual data using computational linguistics and machine learning approaches. Topics include sentiment analysis, topic modeling, named entity recognition, and text classification. Students work with NLP libraries like NLTK and spaCy to develop language processing applications.

    Deep Learning and Neural Networks: An advanced exploration of deep learning architectures including convolutional neural networks (CNNs), recurrent neural networks (RNNs), and transformers. Students learn to train models using PyTorch and Keras, with applications in image recognition, natural language understanding, and speech synthesis.

    Computer Vision Applications: This course covers the fundamentals of computer vision and image processing techniques. Students study object detection, segmentation, and recognition algorithms, implementing them using OpenCV and deep learning frameworks. Practical projects include facial recognition, autonomous vehicle navigation, and medical imaging analysis.

    Data Ethics and Privacy: An examination of ethical considerations in data science practice, including bias mitigation, fairness in AI systems, and privacy protection mechanisms. The course addresses regulatory compliance frameworks such as GDPR, CCPA, and HIPAA, preparing students to navigate complex legal landscapes.

    Financial Analytics: This course applies statistical and computational methods to financial markets. Students analyze stock prices, evaluate investment strategies, and build quantitative models for risk assessment and portfolio optimization.

    Risk Management using Analytics: Focuses on quantifying and mitigating business risks through data-driven approaches. Topics include credit risk modeling, operational risk assessment, and scenario planning. Students learn to use Monte Carlo simulations and stress testing frameworks to evaluate risk exposure.

    Marketing Analytics: Explores how analytics can optimize marketing campaigns and improve customer engagement. Students study customer segmentation, attribution modeling, and conversion funnel analysis using CRM platforms and web analytics tools.

    Social Media Analytics: Analyzes social media data to understand user behavior and influence marketing strategies. Techniques include sentiment analysis, hashtag tracking, influencer identification, and viral content prediction using APIs from Twitter, Facebook, Instagram, and LinkedIn.

    Healthcare Data Analytics: Applies analytical methods to healthcare datasets for clinical decision support and public health initiatives. Students analyze patient records, epidemiological data, and medical imaging to improve treatment outcomes and reduce costs.

    Project-Based Learning Philosophy

    Our department believes that project-based learning is essential for developing practical skills and fostering innovation among students. The curriculum integrates both mini-projects and a final-year capstone project that challenges students to solve real-world problems using advanced analytics techniques.

    Mini-projects are assigned during the second and third years, focusing on specific course concepts. These projects allow students to apply theoretical knowledge in practical settings while developing teamwork, communication, and time management skills.

    The final-year capstone project is a major undertaking that spans multiple semesters. Students select topics aligned with their interests or industry needs, working closely with faculty mentors who guide them through the research process. Projects often result in publishable papers, patent applications, or commercial products that showcase student capabilities to potential employers.

    Faculty mentors are selected based on their expertise and availability, ensuring students receive quality guidance throughout their project journey. The selection process includes a proposal submission phase where students outline their objectives, methodology, and expected outcomes. Regular progress reviews and milestone evaluations ensure timely completion of projects.