My e-Notes about DataScience, Machine Learning, Python, Data Analytics, DataStage, DWH and ETL Concepts

Breaking

Monday, 1 February 2016

5 Tips For Better DataStage Design #8



#1. Templates have to be created to enhance reusability and enforce coding standard. Jobs should be created using templates.
#2. The template should contain the standard job flow along with proper naming conventions of components, proper Job level annotation and short/long description. Change record section should be kept in log description to keep track.



#3. Don't copy the job design only. copy using 'save as' or create copy option at the job level.
#4. The DataStage connection should be logged off after completion of work to avoid locked jobs.
#5. Creation of common lookup jobs
#6. Some extraction jobs can be created to created reference datasets. The datasets can then be used in different conversion modules





Like the below page to get update  
https://www.facebook.com/datastage4you
https://twitter.com/datagenx
https://plus.google.com/+AtulSingh0/posts
https://groups.google.com/forum/#!forum/datagenx

No comments:

Post a comment

Disclaimer

The postings on this site are my own and don't necessarily represent IBM's or other companies positions, strategies or opinions. All content provided on this blog is for informational purposes and knowledge sharing only.
The owner of this blog makes no representations as to the accuracy or completeness of any information on this site or found by following any link on this site. The owner will not be liable for any errors or omissions in this information nor for the availability of this information. The owner will not be liable for any losses, injuries, or damages from the display or use of his information.