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

About Us

Our goal is simple: we help you grow to be your best. Whether you’re a student, working professional, corporate organization or institution, we have tailored initiatives backed by industry specific expertise to meet your unique needs.

Contact Info

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

M.Com in Business Analytics

Semester-wise Syllabus for M.Com in Business Analytics

 

Semester 1: Foundations of Business & Analytics

  1. Principles of Management

    • Management theories, organizational behavior, and leadership.

  2. Business Statistics & Mathematics

    • Probability, descriptive & inferential statistics, and quantitative techniques.

  3. Financial Accounting & Analysis

    • Financial statements, ratio analysis, and accounting standards.

  4. Introduction to Business Analytics

    • Basics of analytics, types (descriptive, predictive, prescriptive), and applications.

  5. Database Management Systems (DBMS)

    • SQL, data warehousing, and relational database concepts.


Semester 2: Advanced Analytics & Tools

  1. Data Visualization & Reporting

    • Tools like Tableau, Power BI, and dashboard creation.

  2. Predictive Analytics & Forecasting

    • Regression analysis, time series forecasting, and trend analysis.

  3. Marketing Analytics

    • Customer segmentation, campaign analysis, and ROI measurement.

  4. Python/R for Business Analytics

    • Basics of Python/R programming, data manipulation (Pandas, NumPy).

  5. Business Research Methods

    • Data collection techniques, hypothesis testing, and research design.


Semester 3: Machine Learning & Big Data

  1. Machine Learning for Business

    • Supervised & unsupervised learning (classification, clustering).

  2. Big Data Analytics

    • Hadoop, Spark, and handling large datasets.

  3. Financial Analytics

    • Risk modeling, portfolio analysis, and fraud detection.

  4. Supply Chain & Operations Analytics

    • Inventory optimization, logistics analytics, and demand forecasting.

  5. Optimization Techniques

    • Linear programming, decision-making models.


Semester 4: Advanced Applications & Capstone Project

  1. Artificial Intelligence in Business

    • AI applications in finance, marketing, and HR.

  2. Customer & Social Media Analytics

    • Sentiment analysis, churn prediction, and NLP techniques.

  3. Ethics & Legal Aspects of Data Analytics

    • Data privacy (GDPR), ethical AI, and compliance.

  4. Capstone Project / Industry Internship

    • Real-world analytics project (e.g., predictive model for sales).

  5. Elective (Choose One)

    • Healthcare Analytics / HR Analytics / Retail Analytics


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