MSc Business Analytics
Semester-wise Syllabus for MSc Business Analytics
Semester 1: Foundations of Analytics
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Business Statistics & Probability
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Descriptive/inferential statistics
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Probability distributions, hypothesis testing
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Bayesian thinking in business decisions
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Data Management & SQL
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Database design (ER diagrams)
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Advanced SQL (window functions, CTEs)
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NoSQL basics (MongoDB for unstructured data)
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Programming for Analytics (Python/R)
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Python libraries (Pandas, NumPy)
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Data wrangling with R (dplyr, tidyr)
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APIs and web scraping
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Business Intelligence & Visualization
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Tableau/Power BI dashboarding
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Storytelling with data (design principles)
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Managerial Economics
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Demand forecasting, pricing models
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Game theory applications
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Semester 2: Core Analytics & Machine Learning
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Predictive Analytics
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Regression (linear, logistic, polynomial)
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Time series forecasting (ARIMA, Prophet)
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Machine Learning for Business
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Supervised learning (Decision Trees, SVM)
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Unsupervised learning (k-means, PCA)
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Model evaluation (ROC, precision-recall)
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Optimization & Decision Models
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Linear/non-linear programming
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Monte Carlo simulations
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Marketing Analytics
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Customer segmentation (RFM analysis)
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Campaign ROI measurement
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Digital marketing metrics (CTR, CAC)
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Big Data Technologies
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Hadoop/Spark ecosystem
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Cloud analytics (AWS Redshift, Google BigQuery)
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Semester 3: Advanced Applications & Electives
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Deep Learning for Business
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Neural networks for demand prediction
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Computer vision (product recognition)
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Risk & Financial Analytics
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Credit scoring models
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Fraud detection (anomaly detection)
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Portfolio optimization
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Electives (Choose 2)
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Supply Chain Analytics (Inventory optimization)
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HR Analytics (Attrition prediction)
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Healthcare Analytics (Patient readmission)
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Social Media Analytics (Sentiment analysis)
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Business Strategy with Analytics
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Competitive intelligence
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A/B testing frameworks
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Industry Internship (6-8 weeks)
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Live project with corporate partners
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Semester 4: Capstone & Emerging Trends
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Prescriptive Analytics
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Recommendation engines
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Real-time decision systems
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AI Ethics & Governance
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Bias mitigation in models
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GDPR/CCPA compliance
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Capstone Project
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End-to-end business problem (e.g., churn reduction)
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Client presentation with executable solution
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Blockchain for Business
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Smart contract analytics
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Cryptocurrency trend analysis
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