What is Data as a Service (DaaS) and why it matters
A clear definition of Data as a Service (DaaS): what it includes, how it differs from building your own infrastructure and why more companies adopt it.
Read articleWhat data modelling is, why a good structure eases analysis and reporting, and the basic concepts leadership should know.

Behind a good dashboard there is almost always a good data model. Modelling is one of those invisible disciplines whose absence shows immediately: slow reports, figures that do not match and questions impossible to answer.
Data modelling is the process of defining how data is structured, named and related so it is coherent and useful. It is the blueprint on which all analytics is built.
A well-designed model answers questions quickly and consistently; a poorly designed one forces convoluted calculations, produces figures that depend on who pulls them, and makes every new question a project.
Modelling combines technical and business knowledge: you must understand both the data and the questions it will answer. In a managed service, the provider designs and maintains the model from the business needs, so leadership gets reliable reports without worrying about the underlying structure.
A good model answers questions quickly and consistently; a bad one makes every question a project.
Data modelling is the blueprint of analytics: it defines entities, relationships, facts, dimensions and granularity so reports are fast and consistent. A bad model produces slow, inconsistent reporting. It combines technical and business knowledge — handled for you in a managed service.
The process of defining how data is structured and related so it is coherent and useful. It is the blueprint for analytics.
A good model enables fast, consistent reports; a bad one produces inconsistent figures and slow queries.
Not in a managed service: the provider designs and maintains the model based on business needs.
Facts are the measurable values (sales, costs); dimensions are the context (time, region, product) you analyse them by.
The level of detail of each data point — e.g. per transaction vs. per day — which shapes what questions the model can answer.
Both technical knowledge of the data and business understanding of the questions it must answer.
Tell us what you want to achieve. Data Layer connects, processes and delivers the result up and running, with no infrastructure for you to manage.