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    Collegese

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    Scholarships & exams

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

    Duration

    4 Years

    Business Analytics

    Satyendra Chandra Guria Institute Of Management Andtechnology
    Duration
    4 Years
    Business Analytics UG OFFLINE

    Duration

    4 Years

    Business Analytics

    Satyendra Chandra Guria Institute Of Management Andtechnology
    Duration
    Apply

    Fees

    ₹6,50,000

    Placement

    94.5%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹25,00,000

    OverviewAdmissionsCurriculumFeesPlacements
    4 Years
    Business Analytics
    UG
    OFFLINE

    Fees

    ₹6,50,000

    Placement

    94.5%

    Avg Package

    ₹7,50,000

    Highest Package

    ₹25,00,000

    Seats

    120

    Students

    120

    ApplyCollege

    Seats

    120

    Students

    120

    Curriculum

    Comprehensive Course Structure

    SemesterCourse CodeCourse TitleCredit (L-T-P-C)Prerequisites
    IBA-101Introduction to Business Analytics3-1-0-4-
    IBA-102Calculus for Data Science4-0-0-4-
    IBA-103Programming Fundamentals3-0-2-5-
    IBA-104Statistics for Business3-1-0-4-
    IBA-105Business Communication2-0-0-2-
    IBA-106Computer Applications Lab0-0-3-1-
    IIBA-201Probability & Random Variables4-0-0-4BA-102
    IIBA-202Data Structures and Algorithms3-1-0-4BA-103
    IIBA-203Database Management Systems3-1-0-4BA-103
    IIBA-204Quantitative Methods in Business3-1-0-4BA-104
    IIBA-205Business Ethics and Governance2-0-0-2-
    IIBA-206Database Lab0-0-3-1BA-203
    IIIBA-301Data Mining and Warehousing3-1-0-4BA-202, BA-203
    IIIBA-302Machine Learning Fundamentals3-1-0-4BA-201
    IIIBA-303Statistical Inference3-1-0-4BA-201
    IIIBA-304Business Intelligence Tools3-1-0-4BA-203
    IIIBA-305Entrepreneurship for Analytics2-0-0-2-
    IIIBA-306Data Mining Lab0-0-3-1BA-301
    IVBA-401Advanced Predictive Modeling3-1-0-4BA-302
    IVBA-402Time Series Forecasting3-1-0-4BA-301
    IVBA-403Big Data Analytics3-1-0-4BA-202
    IVBA-404Capstone Project I0-0-6-6BA-301, BA-302
    IVBA-405Ethics in Data Science2-0-0-2-
    IVBA-406Analytics Workshop0-0-3-1-
    VBA-501Natural Language Processing3-1-0-4BA-302
    VBA-502Deep Learning Applications3-1-0-4BA-401
    VBA-503Risk Analytics3-1-0-4BA-301
    VBA-504Capstone Project II0-0-6-6BA-404
    VBA-505Financial Data Analytics3-1-0-4BA-204
    VBA-506Special Topics in Analytics0-0-3-3-
    VIBA-601Capstone Project III0-0-6-6BA-504
    VIBA-602Internship Program0-0-6-10-
    VIBA-603Industry Project0-0-6-8BA-504
    VIBA-604Research Methodology2-0-0-2-
    VIBA-605Capstone Presentation0-0-3-2BA-601
    VIBA-606Professional Skills Development2-0-0-2-
    VIIBA-701Advanced Machine Learning3-1-0-4BA-502
    VIIBA-702Supply Chain Analytics3-1-0-4BA-301
    VIIBA-703Marketing Analytics3-1-0-4BA-204
    VIIBA-704Healthcare Data Analysis3-1-0-4BA-301
    VIIBA-705Human Resources Analytics3-1-0-4BA-303
    VIIBA-706Advanced Visualization Techniques3-1-0-4BA-403
    VIIIBA-801Research Thesis0-0-6-12BA-701
    VIIIBA-802Industry Internship0-0-6-10-
    VIIIBA-803Capstone Presentation0-0-3-2BA-801
    VIIIBA-804Final Portfolio Development0-0-3-2-

    Detailed Elective Course Descriptions

    Natural Language Processing: This course introduces students to the fundamental techniques of processing and analyzing natural language data. Topics include text preprocessing, sentiment analysis, named entity recognition, and topic modeling. Students will gain hands-on experience with libraries such as NLTK and spaCy while working on projects involving social media monitoring and customer feedback analysis.

    Deep Learning Applications: Designed for advanced learners, this course covers the theory and practice of deep neural networks, including convolutional networks, recurrent networks, transformers, and attention mechanisms. Students will implement models for image classification, language translation, and time series prediction using frameworks like TensorFlow and PyTorch.

    Risk Analytics: This course explores how statistical methods and computational tools are used to quantify and manage financial risks. It covers risk metrics, value at risk (VaR), stress testing, and regulatory compliance. Students will learn to build risk models for portfolios, derivatives, and operational exposures using historical data.

    Financial Data Analytics: A comprehensive exploration of financial datasets and their analytical applications. This course delves into stock market analysis, portfolio optimization, algorithmic trading strategies, and quantitative investment management. Students will work with real-time financial databases and perform backtesting of trading algorithms.

    Supply Chain Analytics: Focuses on optimizing supply chain operations using data analytics. Students will learn to model supply chains, forecast demand, optimize inventory levels, and improve logistics efficiency. The course includes case studies from global companies like Amazon, Walmart, and UPS.

    Marketing Analytics: Examines the role of data in modern marketing strategies. Topics include customer segmentation, behavioral analytics, A/B testing, conversion rate optimization, and campaign effectiveness measurement. Students will use tools like Google Analytics, Adobe Analytics, and CRM platforms to analyze marketing performance.

    Healthcare Data Analysis: Applies analytical techniques to healthcare datasets to improve patient outcomes and operational efficiency. This course covers electronic health records (EHR), medical imaging analysis, public health surveillance, and clinical trial design. Students will work with anonymized datasets from hospitals and research institutions.

    Human Resources Analytics: Demonstrates how data can be leveraged to optimize workforce planning, recruitment, employee engagement, and performance management. Students will learn to design HR dashboards, interpret retention rates, and evaluate training program effectiveness using HRIS systems.

    Advanced Visualization Techniques: Emphasizes the importance of visual storytelling in business analytics. This course covers advanced charting, interactive dashboards, geospatial mapping, and data storytelling. Students will use tools like Tableau, Power BI, and D3.js to create compelling narratives from complex datasets.

    Advanced Machine Learning: Builds upon foundational knowledge of machine learning to introduce cutting-edge algorithms such as ensemble methods, reinforcement learning, and unsupervised learning techniques. Students will explore applications in fraud detection, recommendation systems, and anomaly detection using real-world datasets.

    Project-Based Learning Philosophy

    The department believes that practical experience is crucial for developing competent professionals. Project-based learning (PBL) forms the backbone of our curriculum, starting from early semesters and culminating in a comprehensive final-year thesis or capstone project.

    In the first year, students engage in mini-projects involving basic data collection and visualization tasks. By the second year, they tackle more complex challenges related to statistical modeling and algorithm implementation. The third year introduces them to collaborative projects with industry partners, where they apply learned skills to solve real business problems.

    Final-year projects are undertaken under faculty supervision, allowing students to explore specialized interests or pursue innovative solutions. These projects often lead to publications, patents, or entrepreneurial ventures, providing valuable experiences for future careers or graduate studies.

    Evaluation criteria include peer review, presentation skills, technical depth, innovation, and impact on business outcomes. Faculty mentors are selected based on expertise and availability, ensuring personalized guidance throughout the project lifecycle.