This Course enables the students to
Course Outcomes (COs).
Course Outcome (at course level)
| Learning and teaching strategies | Assessment Strategies |
---|---|---|
On completion of this course, the students will: CO116. differentiate between operational and decision support systems. CO117. Explain the concepts and architecture of data warehouse. CO118. Identify steps to implement a Data Warehouse. CO119. Comprehend Data mining Techniques. CO120. Identify applications of data mining in different domains.
| Approach in teaching: Interactive Lectures, Tutorials, Demonstrations, Learning activities for the students: Self-learning assignments, Quizzes, Presentations, Discussions |
|
Need for strategic information, Decision support system, Operational versus Decision-Support Systems, Data Warehousing-the only solution, definitions of Data warehousing and data mining, features of Data warehouse, Data Marts, Metadata.
Trends in Data Warehousing: significant trends and growth.
Planning Data warehouse, project team, project management considerations, information packages & requirements gathering methods and Requirements definition: Scope and Content
Architectural components: Objectives, Data Warehouse Architecture, Distinguishing Characteristics, Architectural Framework. Infrastructure: Operational & Physical.
Implementation of Data warehouse, ETL (Extract, Transform and Load in Data warehouse) Physical design: steps, considerations, physical storage, indexing, Data lake vs. Data warehouse
Basics of data mining, related concepts, Data mining techniques, Data Mining Applications.
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