How We Saved $110K in 90 Days by Rebuilding BI Before the Architecture Broke.
Most dashboards show what’s happening in the business. \n This one showed what was happening to our BI architecture.
It looked like this:
A jagged skyline of $800 - $1,400 cost spikes.
Wild swings between days.
A dotted trendline barely drifting downward.
It wasn’t random - it was a heartbeat monitor for a system under stress.
This dashboard became the one we avoided until the day we realized it was the only one that mattered.
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For years, our BI ecosystem did what most retail BI ecosystems do:
It worked - until it didn’t.
The chart revealed the problem we weren’t measuring.
Every click → a live query \n Every filter → a live query \n Every store and HQ team → dozens of live queries per minute
And our largest models were so big they could never be imported, which meant:
The problem wasn’t our Cloud Warehouse. The problem was the architecture we had built on top of it.
And the chart was its confession.
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Look at the chart around March 28. \n The cost line suddenly dips - permanently.
That was the first major intervention.
We took our giant 500M+ row models - the ones too large to import and split them into two logical pieces:
The entire system underwent a complete transformation because of this single architectural choice:
And the chart reflected it instantly.
This wasn’t tuning. \n This was a structural correction to BI debt that had been accumulating for years.
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The first act killed the ugliest spikes, but the chart made it clear we weren’t done yet. The problem remained visible although it had reduced in size.
The need for real-time dashboard data for critical operational decisions locked us into DirectQuery and that’s what drove the remaining cost spikes.
The solution we created during that year turned out to be one of our most important accomplishment.
It worked like this:
To the business, it felt identical to real-time. To the warehouse, it reduced load from hundreds of hits per minute to one hit every 5 minutes.
If you look at the chart around May 8, you’ll see the second drop and the point where the chaos stops.
After May 8, the chaotic spikes disappear the architecture finally enters a stable, predictable pattern.
From that day forward, cost became:
Spikes didn’t come back because the architectural cause of the spikes no longer existed.
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Here’s what 90 days of BI re-architecture delivered:
| Metric | Before | After | |----|----|----| | Avg Daily BigQuery Cost | ~$545 | ~$260 | | Annual Spend | ~$199,000 | ~$95,000 | | Annual Savings | - | ~$110,000 | | Model Size | Too large to import | Split + optimized | | DirectQuery Usage | Heavy | Minimal | | Stability | Chaotic | Controlled |
And most importantly:
Data freshness remained fast.
Query performance improved. User experience stayed “live.”
We didn’t sacrifice capability - we designed it intentionally.
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These 90 days taught us more about BI than any new tool could.
Not a data problem. \n Not a business problem. \n A structural BI problem.
Most retail operations don’t need sub-second freshness - they need predictability.
It looks easy. \n It sounds flexible. \n And it becomes expensive the moment users actually use it.
Every 5-minute refresh that doesn’t need to exist becomes a tax on the warehouse.
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Architecture is invisible until it becomes expensive. \n This chart made it visible.
Two structural changes on 3/28 and 5/8 were enough to turn three months of chaos into a stable, predictable and affordable BI ecosystem.
Not by throttling. \n Not by cutting features. \n Not by downgrading experience.
But by designing BI intentionally around how the business actually needs data, not how queries happen by default.
Every BI team has a chart like this somewhere. \n Most just haven’t looked at it yet.
And maybe that’s the real lesson here: BI is never done. \n The architecture stabilizes, the cost drops, the charts flatten but the curiosity doesn’t.
I’m constantly exploring new approaches, rethinking old ones, and finding ways to make BI lighter, faster, and more meaningful.
Continuous improvement isn’t a requirement in BI - it’s the passion that keeps the whole discipline moving forward.
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