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Data Warehouse Design Xintao Wu University of North Carolina at Charlotte Nov 6, 2013 Organization • Concepts Data Warehousing Concepts (Ch1) • Logical Design Logical design in data warehouse (Ch2) • Physical Design Physical design in data warehouses (Ch3) Hardware and I/O considerations Parallelism and partitioning in data warehouses Indexes (Ch6) Integrity constraints (Ch7) Basic naterialized views (Ch8) Advanced materialized views Dimensions (Ch10) 2 Organization • Managing DW environment Overview of extraction, transformation, and loading Extraction Transportation Loading and transformation Maintaining the DW Change data capture SQLAccess advisor • DW performance Query rewrite Schema modeling techniques SQL for aggregation in DW SQL for analysis and reporting SQL for modeling OLAP and data mining Using parallel execution 3 What is DW 4 5 6 7 Logical vs. physical design • In the logical design, you look at the logical relationships among the objects. • In the physical design, you look at the most effective way of storing and retrieving the objects as well as handling them from a transportation and backup/recovery perspective. • Your logical design should result in a set of entities and attributes corresponding to fact tables and dimension tables A model of operational data from your source into subject-oriented informaiton in your target data warehouse schema. 8 9 10 11 12 Physical Design • • • Logical design can use pen/paper/oracle warehouse builder/oracle designer while physical design is the creation of database with SQL Physical design decisions are mainly driven by query performance and database maaintenance aspects. You need to create Tablespaces Tables and partitioned tables Views Integrity constraints A schema object that defines hierarchical relationships between columns or column sets. Indexes and partitioned indexes In OLTP, they prevent the insertion of invalid data while in DW, they are only used for query rewrite. Dimensions A view takes the output of a query and treats it as a table. Views do not require any space in the database Bitmap indexes vs. B-tree indexes. Bitmap indexes are efficient for set-oriented operations. Materialized views Query results that have been stored in advance . 13 Partition and parallel execution •Range partitioning •Hash partitioning •List partitioning •Composite partitioning 14 Bitmap index 15 16 One dimension table columns joins one fact table 17 18 extension 19 20 Integrity constraints • Unique constraints • NOT NULL constraints • FOREIGN KEY constraints 21 22 Basic materialized views 23 Materialized views with aggregates 24 25 Dimension 26 27 28 29