Data analytics platform Microsoft Fabric, built for trustworthy numbers.
Fabric is the right call when you already run on Microsoft 365 and Azure, and the hard part of your analytics sits upstream of the report. That means messy ingestion, data scattered across systems, and figures that change depending on which spreadsheet you open. It is the wrong call if your data is already governed and you only need dashboards, where Power BI on its own is cheaper and simpler. It is also wrong if you are chasing real machine learning at volume, where a dedicated platform may fit better. We work out which situation you are in first, then build a single trusted copy of your data in OneLake that every report reads from.
Book a discovery callWhat we build for you on Fabric
One source of numbers in OneLake
A single governed copy of your data that ingestion, modelling and reporting all read from, so revenue means the same figure in every report instead of three different answers.
Versioned metric definitions
Each metric defined once in the semantic model and kept under version control, so when the rule for active customer changes you change it in one place and every report stays consistent.
Pipelines built in Fabric Data Factory
Documented, repeatable ingestion that pulls from your systems on a schedule, with the steps written down so the data feeding your numbers is never a black box.
Self-serve reporting with a golden path
Power BI reports inside Fabric where your team can answer their own questions safely, instead of ten people building ten versions of the truth in private files.
Where you are stuck
The data exists. That is the frustrating part. The sales figures are in one system, the finance numbers in another, and someone keeps a spreadsheet that nobody else can find. Reports are pulled by hand, arrive late, and get argued over in meetings because two people open two dashboards and see two different totals. So the conversation stops being about the decision and starts being about whose number is right. Early attempts at clever analytics, or an AI add-on someone trialled, give answers that look confident and turn out to be wrong, because the data underneath was never cleaned or unified.
You do not need a data-science lab to fix this. Most Australian firms of ten to two hundred staff need trustworthy reporting they can act on, built on a foundation that holds.
Why the platform alone will not save you
Buying Fabric and switching it on does not give you trusted numbers. A platform is plumbing. Pointed at scattered, inconsistent data, it produces the same conflicting reports faster and at greater cost. This is our first principle in plain terms, quality in, quality out. An analytics platform laid over messy data hands you confident-looking nonsense, and the bigger the platform the more convincing the nonsense looks.
The two parts that actually decide whether your numbers can be trusted do not come switched on in the box. The first is a healthy data ecosystem, where your data is cleaned, modelled and unified into one copy before any reporting sits on top. The second is versioned metric definitions, so the rule for revenue or active customer is written down once and applied everywhere, and stops drifting between reports. Fabric gives you the place to do both well. It does not do them for you.
How we deliver it on Fabric
We start from the decision you need to make, not the data you happen to have. That is our result-focused principle, and on Fabric it means we pick one question that matters, build the slice that answers it, and check it against a source your team already trusts before going wider.

The build follows a documented, repeatable shape. We model one trusted copy of your data in OneLake, so ingestion, modelling and reporting all read from the same source. We write the pipelines in Fabric Data Factory and keep the steps documented, so the data feeding your numbers is never a mystery. We define each metric once in the semantic model and put those definitions under version control, so a change happens in one place and every report follows. Then we validate the figures against what your team knows to be true, and only widen the scope once they hold. Where some of your data already lives outside Microsoft, we use OneLake shortcuts so you do not have to migrate everything before you see value.
When Fabric is the right call, and when it is not
Choose Fabric when you are already a Microsoft organisation and the hard work is upstream of the report, in ingestion and modelling and getting to one trustworthy copy of data. That is where it pays for itself.
It is the wrong choice in two common cases. If your data is already well governed and you only need dashboards over it, Power BI on its own is simpler and cheaper, and we will tell you so rather than sell you more platform. And if you are reaching for genuine machine learning at large volume, a dedicated platform may suit better. We also size capacity to your real workload, because Fabric bills on capacity units rather than per query, so the cost tracks how heavily the platform is used. We watch utilisation once you are live and tell you the trade-offs before you commit to a tier.
Related work
See how this fits the broader service in Data Insights & Analysis, and compare platforms in Power BI and Databricks. For how the same foundation plays out by sector, see FinTech & Banking, Insurance and Utilities.
Read more about our Data Insights & Analysis service and the Microsoft Fabric technology.
Representative solutions.
Frequently asked.
Is Microsoft Fabric an ETL tool?
How much does it cost to get Microsoft Fabric certified?
Is Microsoft Fabric in demand?
What is Microsoft Fabric?
What is Microsoft Fabric versus Azure?
What is the difference between ADF and Fabric Data Factory?
What exactly does Microsoft Fabric do, and how does it work?
See your numbers agree for once
If you run on Microsoft and your reports still argue with each other, tell us the questions you need answered. We will show you whether Fabric is the fit, and say so plainly if a lighter setup would serve you better.
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