M.Com in Business Analytics
Semester-wise Syllabus for M.Com in Business Analytics
Semester 1: Foundations of Business & Analytics
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Principles of Management
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Management theories, organizational behavior, and leadership.
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Business Statistics & Mathematics
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Probability, descriptive & inferential statistics, and quantitative techniques.
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Financial Accounting & Analysis
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Financial statements, ratio analysis, and accounting standards.
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Introduction to Business Analytics
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Basics of analytics, types (descriptive, predictive, prescriptive), and applications.
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Database Management Systems (DBMS)
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SQL, data warehousing, and relational database concepts.
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Semester 2: Advanced Analytics & Tools
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Data Visualization & Reporting
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Tools like Tableau, Power BI, and dashboard creation.
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Predictive Analytics & Forecasting
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Regression analysis, time series forecasting, and trend analysis.
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Marketing Analytics
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Customer segmentation, campaign analysis, and ROI measurement.
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Python/R for Business Analytics
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Basics of Python/R programming, data manipulation (Pandas, NumPy).
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Business Research Methods
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Data collection techniques, hypothesis testing, and research design.
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Semester 3: Machine Learning & Big Data
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Machine Learning for Business
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Supervised & unsupervised learning (classification, clustering).
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Big Data Analytics
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Hadoop, Spark, and handling large datasets.
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Financial Analytics
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Risk modeling, portfolio analysis, and fraud detection.
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Supply Chain & Operations Analytics
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Inventory optimization, logistics analytics, and demand forecasting.
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Optimization Techniques
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Linear programming, decision-making models.
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Semester 4: Advanced Applications & Capstone Project
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Artificial Intelligence in Business
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AI applications in finance, marketing, and HR.
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Customer & Social Media Analytics
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Sentiment analysis, churn prediction, and NLP techniques.
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Ethics & Legal Aspects of Data Analytics
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Data privacy (GDPR), ethical AI, and compliance.
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Capstone Project / Industry Internship
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Real-world analytics project (e.g., predictive model for sales).
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Elective (Choose One)
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Healthcare Analytics / HR Analytics / Retail Analytics
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Key Tools & Technologies Covered
✔ Programming: Python, R, SQL
✔ Visualization: Tableau, Power BI, Excel (Advanced)
✔ Big Data: Hadoop, Spark
✔ Machine Learning: Scikit-learn, TensorFlow (Basics)
✔ Statistical Software: SPSS, SAS