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 lineage is, why it is key for trust, error debugging and compliance, and how to implement it in a modern architecture.

When a figure in a report does not add up, the first question is always the same: "where does this number come from?". Answering it in seconds, instead of days, is what data lineage provides. And in an audited environment, reconstructing that path is a requirement, not a convenience.
Data lineage is the traceability of a data point’s full journey: which source it comes from, what transformations it underwent and in which reports, APIs or models it is used. It is the map of the data’s journey through the organisation.
Traceability is not just a technical convenience. EU data protection law requires being able to demonstrate how personal data is processed, and the GDPR’s accountability principle relies on evidence like lineage. In audited environments, reconstructing a data point’s path is a requirement.
They are complementary: the catalogue describes what data exists and what it means; lineage describes where it comes from and how it transforms. The catalogue tells you what you have; lineage, how it got there.
Lineage is captured automatically as data flows through pipelines, recording each transformation. Modern platforms document it without manual effort and present it visually. Without automation, keeping lineage current is unfeasible in any evolving architecture.
Lineage turns "where does this number come from?" from a days-long investigation into a seconds-long answer.
Data lineage traces each data point’s full journey from origin to use, providing trust, debugging, impact analysis and GDPR compliance evidence. It complements the data catalogue and must be captured automatically to stay reliable as the architecture evolves.
The catalogue describes what data exists and what it means; lineage describes where it comes from and how it is transformed. They are complementary.
Because regulations like the GDPR require demonstrating how data is processed. Lineage provides that evidence in a traceable, auditable way.
It should not. In modern architectures, lineage is captured automatically as pipelines run, keeping it reliable and up to date.
Knowing which reports, APIs or models would break if a source or rule changes, before applying the change — reducing the risk of surprises.
It locates the exact point where a wrong data point was introduced, instead of reviewing the whole process blindly.
It adds value to any organisation that wants to trust its figures and comply with the GDPR; the more complex the architecture, the more essential.
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.