H a l t o n A c a d e m y

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Halton Academy For Management and Technology Private Limited,
39/2475-B1 LR Towers, South Janatha Road, Palarivattom, Ernakulam, Kerala - 682025, India.

+91-7511-1890-01

4 Francis Street, le2 2bd, England,
United Kingdom.

hello@haltonacademy.com

MSc Business Analytics

Semester-wise Syllabus for MSc Business Analytics

 

Semester 1: Foundations of Analytics

  1. Business Statistics & Probability

    • Descriptive/inferential statistics

    • Probability distributions, hypothesis testing

    • Bayesian thinking in business decisions

  2. Data Management & SQL

    • Database design (ER diagrams)

    • Advanced SQL (window functions, CTEs)

    • NoSQL basics (MongoDB for unstructured data)

  3. Programming for Analytics (Python/R)

    • Python libraries (Pandas, NumPy)

    • Data wrangling with R (dplyr, tidyr)

    • APIs and web scraping

  4. Business Intelligence & Visualization

    • Tableau/Power BI dashboarding

    • Storytelling with data (design principles)

  5. Managerial Economics

    • Demand forecasting, pricing models

    • Game theory applications


Semester 2: Core Analytics & Machine Learning

  1. Predictive Analytics

    • Regression (linear, logistic, polynomial)

    • Time series forecasting (ARIMA, Prophet)

  2. Machine Learning for Business

    • Supervised learning (Decision Trees, SVM)

    • Unsupervised learning (k-means, PCA)

    • Model evaluation (ROC, precision-recall)

  3. Optimization & Decision Models

    • Linear/non-linear programming

    • Monte Carlo simulations

  4. Marketing Analytics

    • Customer segmentation (RFM analysis)

    • Campaign ROI measurement

    • Digital marketing metrics (CTR, CAC)

  5. Big Data Technologies

    • Hadoop/Spark ecosystem

    • Cloud analytics (AWS Redshift, Google BigQuery)


Semester 3: Advanced Applications & Electives

  1. Deep Learning for Business

    • Neural networks for demand prediction

    • Computer vision (product recognition)

  2. Risk & Financial Analytics

    • Credit scoring models

    • Fraud detection (anomaly detection)

    • Portfolio optimization

  3. Electives (Choose 2)

    • Supply Chain Analytics (Inventory optimization)

    • HR Analytics (Attrition prediction)

    • Healthcare Analytics (Patient readmission)

    • Social Media Analytics (Sentiment analysis)

  4. Business Strategy with Analytics

    • Competitive intelligence

    • A/B testing frameworks

  5. Industry Internship (6-8 weeks)

    • Live project with corporate partners


Semester 4: Capstone & Emerging Trends

  1. Prescriptive Analytics

    • Recommendation engines

    • Real-time decision systems

  2. AI Ethics & Governance

    • Bias mitigation in models

    • GDPR/CCPA compliance

  3. Capstone Project

    • End-to-end business problem (e.g., churn reduction)

    • Client presentation with executable solution

  4. Blockchain for Business

    • Smart contract analytics

    • Cryptocurrency trend analysis