Data engineering

If you have massive amounts of data which needs to be available across the extent of your organisation, even your ecosystem, you will need data engineering. Data engineering could be regarded as the antidote to (prevalent) organic (as opposed to purposefully architected) information flows in application-centric organisations. You need to design & deliver optimal circulation…

Data validation

Data validation tests the accuracy, consistency (of format and standards), quality and integrity of the data (& associated metadata) for onward information engineering, data provisioning and curation. Note that ‘reliable’ data still needs to be validated. Even though this is not its primary purpose, data anomalies revealed by validation techniques can reveal hitherto unnoticed business…

Data transformation

It seems obvious, but migrating to cloud can be a frustrating process if your data is not suitably transformed before you try the ETL process. As data volumes get bigger; formats more varied and growth, exponential, data transformation techniques are vital. Routine transformations ensure harmony of data format and target destination. But more importantly, data…

Data quality

Poor data quality, taking a reactive, rather than proactive, stance to data errors is a massive own goal. DQ negatively impacts the business so that: Financial data, trades & transactions, are highly regulated and subject to time stamping. Delays and mistakes are not only corrosive, they have much more immediate and damaging implications. The European…

Data audit

A data audit will help your organisation identify potential: For example, ‘dark’ data: data which is not analysed and from which no value accrues, is now expected to normalise at over 90%+ of unstructured organisational data according to IDC. That means: Dark data may be junk, or it may be a hoard with potential value…