MBA in Business Analytics/Data Analytics
Semester-wise Syllabus for an MBA in Business Analytics/Data Analytics
Semester 1: Foundation in Business & Analytics
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Principles of Management
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Basics of management, organizational behavior, and leadership.
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Managerial Economics
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Demand forecasting, cost analysis, and decision-making under uncertainty.
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Financial Accounting
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Financial statements, ratio analysis, and accounting for decision-making.
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Statistics for Business Analytics
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Descriptive/inferential stats, probability, hypothesis testing, and regression.
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Introduction to Business Analytics
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Overview of analytics lifecycle, tools (Excel, Tableau), and applications.
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IT for Business
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Databases (SQL), data warehousing, and basics of programming (Python/R).
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Semester 2: Core Analytics & Business Functions
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Predictive Analytics
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Regression models, time-series forecasting, and machine learning basics.
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Marketing Analytics
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Customer segmentation, CLV, campaign ROI, and digital marketing metrics.
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Operations & Supply Chain Analytics
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Inventory optimization, logistics modeling, and simulation.
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Financial Analytics
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Risk modeling, portfolio optimization, and credit scoring.
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Data Visualization & Storytelling
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Tools: Power BI, Tableau; best practices in dashboard design.
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Big Data Technologies
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Hadoop, Spark, and NoSQL databases (MongoDB).
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Semester 3: Advanced Analytics & Electives
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Machine Learning for Business
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Supervised/unsupervised learning (decision trees, clustering, NLP).
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Prescriptive Analytics
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Optimization techniques, Monte Carlo simulations.
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HR & People Analytics
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Talent analytics, attrition prediction, and workforce planning.
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AI in Business
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Deep learning, chatbots, and AI-driven decision systems.
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Elective 1 (Choose one):
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Retail Analytics | Healthcare Analytics | Fraud Analytics
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Elective 2 (Choose one):
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Social Media Analytics | Risk Analytics | Supply Chain AI
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Semester 4: Capstone & Specialization
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Business Strategy with Analytics
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Aligning analytics with organizational goals (case studies).
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Ethics & Data Privacy
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GDPR, ethical AI, and responsible data usage.
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Elective 3 (Domain-specific):
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FinTech Analytics | Marketing Mix Modeling | IoT Analytics
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Capstone Project
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Real-world analytics project (e.g., predictive model for a client).
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Internship (Optional)
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Industry immersion in analytics roles.
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Tools & Technologies Covered
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Programming: Python, R, SQL
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Visualization: Tableau, Power BI, ggplot
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Big Data: Hadoop, Spark, AWS/GCP
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ML/AI: Scikit-learn, TensorFlow, NLP libraries
Elective Specializations
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Marketing Analytics: Customer journey mapping, churn prediction.
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Financial Analytics: Algorithmic trading, blockchain analytics.
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Operations Analytics: Predictive maintenance, route optimization.