Read data fluently
Reason about grain, keys, relationships, and the shape of any dataset.
The rigorous core every senior data role rests on. Build genuine command of data literacy, SQL, data modeling, metadata, data quality, and the basics of pipelines and governance, so the architecture, product, and platform work later in the path sits on solid ground.
The eight modules build cumulatively toward a real capstone. Watch the work move, and the value compound, at every stage.
Each module builds the capability the next one depends on, ending in a portfolio-ready capstone.
Reason about grain, keys, relationships, and the shape of any dataset.
Move from conceptual to logical to physical models deliberately.
Query, join, aggregate, and shape data to answer real questions.
Apply metadata, quality checks, and lineage thinking from the start.
Understand ETL and ELT patterns and where each fits.
Use the language of ownership, stewardship, and controlled access.
Eight modules of five chapters each, sequenced so the material builds cumulatively to a real, portfolio-ready capstone. Expand any module for its focus and lessons.
Build the mental model of what data is and how it flows through an organization.
Model relational data well and query it with confidence.
Model data for analytics with facts, dimensions, and clear grain.
Make data understandable through metadata and shared definitions.
Measure and improve data quality so consumers can rely on it.
Understand how data moves and where each integration pattern fits.
Speak the language of governance, ownership, and controlled access.
Assemble the skills into a small but complete, documented data foundation.
Professionals entering data who need a rigorous, non-superficial base.
Those with practical skills who want to close the gaps in fundamentals.
People who work with data daily and want the modeling and quality depth.
Anyone on the path to architecture who needs the core rock-solid first.
Work through it at your own pace, with lifetime access to every module and the capstone.
A guided cohort with live sessions, reviews, and a peer group working the same path.
A closed cohort for your team, tailored to your platforms, domains, and priorities.
Every module produces an artifact; the capstone assembles them into a portfolio deliverable.
Run Data Foundation as a private, closed cohort tailored to your platforms, domains, and priorities, as part of building the architecture capability your organization needs.
Anyone who needs a rigorous, non-superficial base in data: career-changers, self-taught practitioners closing gaps, analysts and engineers, and future architects who want the fundamentals solid before moving up the path.
No. It builds from first principles, though it moves at a pace that assumes you are a motivated professional. It is the natural first step in the data-architecture path.
Yes. You profile real data, write SQL, build models, and produce a documented capstone artifact you can show.
It is step one. Everything later, from data products and platforms to enterprise architecture, assumes the modeling, quality, and metadata command this program builds.
Both. Self-paced with lifetime access is standard; mentor-led and private corporate cohorts are available.
Yes, a Durga Analytics certificate of completion with a digital badge, plus the capstone artifact itself.
Enrol, enquire, or explore the full IC-to-Head of Data Architecture path.