Data Warehousing and Data Mining (4-0-0)
Course Details:
Data Warehousing
- Introduction to Data Warehousing – Batch, OLTP, DSS Applications. Different natures of
OLTP and DW databases. Commercial Importance of DW. Data Marts
- Basic Elements of DataWarehouse – Source System, Data Staging Area, Presentation
Server
- Business Dimensional Life Cycle
- Dimensional Modeling. Multidimensional Data Model, Data Cubes, OLAP
- DW Bus Architecture, Conformed Dimensions
- Star Schema and Snowflake Schema
- Normalization VS Dimensional Modeling
- Slicing and Dicing, Drilling, Drill-up, Drill-down, Drill-within, Drill-across.
- Bitmap Index
- Aggregation
- Metadata
- Design Issues, Partitioning, Size Estimation
- Example Applications: Retail, CRM, Telecom, E-Commerce, Insurance
Data Mining
- KDD and Data Mining
- SQL and Data Mining
- Association Rules
- Clustering
- Decision Trees
- Neural Networks
- Temporal and Spatial Data Mining
- Sequence Mining
- Text Mining
- Web Mining
Suggested Text Books
a. J. Hahn and Micheline Kamber - Data Mining: Concepts and Techniques (Morgan Kaufmann)
b. R.Kimball - DataWarehouse Toolkit (J.Wiley)
c. A.K.Pujari - Data mining (University Press)
All the above books have Indian editions.