Dave Chodos
Cloud Program Manager at PointClickCare
As a software company specializing in the long-term care sector, we aimed to optimize our hosting costs and uncover revenue opportunities through a context-driven unit economics approach.
We initiated our journey by concentrating on our “cost per bed,” as this metric aligned perfectly with our core business model. By adopting this approach, we gained a size-independent understanding of our hosting costs, which enabled us to identify areas for cost-efficiency improvements, regardless of scale or hosting environment.
We used the following data sources to inform our processes and workflow:
These personas have played a role in the evolution of our Unit Economics analysis. Each group had a specific interest in our analysis, from optimizing cloud infrastructure to helping us align pricing models with hosting costs.
Our journey began at the “Crawl” level, with manual ad-hoc cost reconciliation. However, we progressed to the “Walk” level, where key stakeholders now understand cloud costs in terms of units of business value and can pinpoint cost-revenue misalignments.
This user story encapsulates our quest to optimize costs and enhance revenue streams through a context-driven unit economics approach, ultimately benefiting our organization and customers.
We enjoyed support from top-level executives, including the SVP of SaaS Ops and SVP Engineering, ensuring the success of our FinOps unit economics initiative.
To overcome data disparities between DB hosting and revenue data, we created a mapping table to match entries. Any mismatches were reviewed and addressed as needed. We also streamlined data collection and processing, reducing manual effort through ongoing automation efforts.
Our cloud leadership gained invaluable insights from the cost per bed analysis and similar metrics, identifying areas for investigation where efficiency expectations were not met. Our cost-per-GB analysis for DB-oriented products uncovered opportunities to recover revenue, which is projected to total over $250,000 USD in regained annual revenue (based on a revised product pricing model), when aggregated across all customers.