Wir verwenden Cookies und Analyse-Tools, um die Nutzerfreundlichkeit der Internet-Seite zu verbessern und für Marketingzwecke. Wenn Sie fortfahren, diese Seite zu verwenden, nehmen wir an, dass Sie damit einverstanden sind. Zur Datenschutzerklärung.
Data Mapping for Data Warehouse Design
Details
Informationen zum Autor Qamar shahbaz Ul Haq is currently a senior business intelligence consultant with Stewart Title where he creates cloud based business intelligence and SAAS Big Data applications. He has more than 9 years of experience designing Business Intelligence / Data Warehouses solutions and has spent most of this time in data mapping, working across different industries and cultures learning different aspects of this field. In previous roles he has created solutions ranging from billing systems to semantic design to performance optimization for maximum throughput of data processing. Klappentext Data mapping in a data warehouse is the process of creating a link between two distinct data models' (source and target) tables/attributes. Data mapping is required at many stages of DW life-cycle to help save processor overhead; every stage has its own unique requirements and challenges. Therefore! many data warehouse professionals want to learn data mapping in order to move from an ETL (extract! transform! and load data between databases) developer to a data modeler role. Data Mapping for Data Warehouse Design provides basic and advanced knowledge about business intelligence and data warehouse concepts including real life scenarios that apply the standard techniques to projects across various domains. After reading this book! readers will understand the importance of data mapping across the data warehouse life cycle.
Autorentext
Qamar shahbaz Ul Haq is currently a senior business intelligence consultant with Stewart Title where he creates cloud based business intelligence and SAAS Big Data applications. He has more than 9 years of experience designing Business Intelligence / Data Warehouses solutions and has spent most of this time in data mapping, working across different industries and cultures learning different aspects of this field. In previous roles he has created solutions ranging from billing systems to semantic design to performance optimization for maximum throughput of data processing.
Klappentext
Data mapping in a data warehouse is the process of creating a link between two distinct data models' (source and target) tables/attributes. Data mapping is required at many stages of DW life-cycle to help save processor overhead; every stage has its own unique requirements and challenges. Therefore, many data warehouse professionals want to learn data mapping in order to move from an ETL (extract, transform, and load data between databases) developer to a data modeler role. Data Mapping for Data Warehouse Design provides basic and advanced knowledge about business intelligence and data warehouse concepts including real life scenarios that apply the standard techniques to projects across various domains. After reading this book, readers will understand the importance of data mapping across the data warehouse life cycle.
Inhalt
- Introduction
- Data Mapping Stages
- Data Mapping Types
- Data Models
- Data Mapper's Strategy and Focus
- Uniqueness of Attributes and Its Importance
- Pre-Requisites of Data Mapping
- Surrogate Keys Vs. Natural Keys
- Data Mapping Document Format
- Data Analysis Techniques
- Data Quality
- Data Mapping Scenarios
Weitere Informationen
- Allgemeine Informationen
- GTIN 09780128051856
- Genre Information Technology
- Anzahl Seiten 180
- Größe H9mm x B152mm x T229mm
- Jahr 2015
- EAN 9780128051856
- Format Kartonierter Einband
- ISBN 978-0-12-805185-6
- Titel Data Mapping for Data Warehouse Design
- Autor Qamar Shahbaz
- Gewicht 323g
- Herausgeber Elsevier Science Publishing Co Inc
- Sprache Englisch