Points to consider :
Doug Laney, research VP at Gartner stated that “Most deployments are ultimately unsuccessful when end users are given access to manipulate their own data — sometimes from unreliable sources.” This can be corrected with correct data governance which can be included within an enterprise BI tool that traces data source and journey. Alternatively, any business that has a fully managed data warehouse, resolves this as the data warehouse will have adhered to what Gartner terms “smart data preparation.”
A data warehouse removes the dependency on the BI developers who would have to model, build and test multiple reporting layers to achieve the desired reports. A data warehouse is often used to examine business trends to establish a strategy for the future. The viability of business decisions is contingent on good data, and good data is contingent on an effective approach to data quality management.
Thus it concludes that self-service BI can only be achieved with the correct data governance, project governance and data warehouse underpinning any and all projects.
Forrester carried out research to find that successful BI project tips (Ref 6);
Without proper data governance, a company risks a lack of accuracy and accountability. And yet the pendulum has swung away from the governance of the data by the IT department, towards a preference for Self-Service BI and these do not insist on the correct data governance of control and accuracy.
Stated Wayne Eckerson from Inside Analysis; “Self-service BI is great for users with analytical experience, but bad for users without an analytical background”.
This point was elaborated on by Iain Plunkett of Garrett “As soon as you enable end users to make the decisions about how they access and use data – then you have a huge central problem. You cannot ever then control where that data is being replicated and used. Enter enterprise content management and a central data warehouse – where data is controlled.”
Self-service BI dramatically increases the need for data governance because of the potential introduction of un-governed data sources and the freedom allows business users to create their own data modelling.
The use of a data warehouse can put an effective “data firewall” in place, giving not only one view of the data and thus true accuracy but also preventing the reintroduction of bad data and only allowing the display of controlled, quality, approved information.
Andrew Mennie
PrecisionPoint – Where data becomes trusted insight
References
Save
Save
Save