Download presentation
Presentation is loading. Please wait.
Published byBrook Lynch Modified over 9 years ago
1
DataMAPPER - Applied Database Tech. 이화여대 과학기술대학원 석사 3 학기 992COG08 김지혜
2
2000-03-27 지식공학 -DataMAPPING 2 What is DataMAPPER? A high-performance data migration tool Designed for large-scale data movement projects Client-server design Work in graphical environment without sacrificing the performance
3
2000-03-27 지식공학 -DataMAPPING 3 Well balanced Client Server Architecture Client : defining metadata, mapping relations, conversion and validation rules Server : generating scripts in turn with client Eliminates the network costs by executing the scripts on the server Why DataMAPPER?
4
2000-03-27 지식공학 -DataMAPPING 4 DataMAPPER’s design Project focus Based on methodology Stand-alone migration Give a wider perspective over the whole migration project Why DataMAPPER?
5
2000-03-27 지식공학 -DataMAPPING 5 Data Validation Extensive data validation features User defined additional validation rules along with the mappings Option to drop or disable all constraints on the tables Tremendous freedom and flexibility for moving data Why DataMAPPER?
6
2000-03-27 지식공학 -DataMAPPING 6 Reusable Code Generation DataMAPPER generates SQL*Loader, and SQL*Plus scripts which can be used outside of the tool Used for interfacing two application systems on an on-going basis Used for periodically loading data into a data warehouse Why DataMAPPER?
7
2000-03-27 지식공학 -DataMAPPING 7 Turned for Oracle Designed and tuned specifically for migrating into Oracle databases Utilizes Oracle tools Integrates with the Oracle data dictionary and recognizes the target metadata Why DataMAPPER?
8
2000-03-27 지식공학 -DataMAPPING 8 Why DataMAPPER?
9
2000-03-27 지식공학 -DataMAPPING 9 How It Works Define data source (metadata definition window) View the contents of the source data files Choose fixed or delimited text file format or use another Oracle table Define the field attributes like data type and null constraints Define indexes to speed up join operations or to insure uniqueness(optional)
10
2000-03-27 지식공학 -DataMAPPING 10 How It Works Fig1. Define data sources
11
2000-03-27 지식공학 -DataMAPPING 11 Map target tables (intuitive mapping window) Associate target and source columns Define conversion rules using table lookups or SQL expressions Enter business rules as user-defined validations Map from multiple sources Define multiple mapping sheets for the same target table Provide useful information about the source and target data items How It Works
12
2000-03-27 지식공학 -DataMAPPING 12 How It Works Fig2. Map target tables
13
2000-03-27 지식공학 -DataMAPPING 13 Generate and run scripts (script generator window) Select table, a script type Save and run hundreds of lines of code Scripts are highly optimized and save automatically by dataMAPPER How It Works
14
2000-03-27 지식공학 -DataMAPPING 14 How It Works Fig3. Generate and run scripts
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.