By Hemang Davé and Reinier Aerdts
FinOps is approaching a turning point in its maturity journey.
Nearly three-quarters (75%) of the Forbes’ Global 2000 companies now use the financial management methodology to maximize the business impact of their cloud and hybrid cloud technology.1 Yet with global cloud-related spending growing 26% annually,2 many FinOps teams are seeking avenues for more value.
AI and generative AI offer such a way forward.
Applying these advanced technologies to an established FinOps framework can amplify the speed, accuracy and effectiveness of traditional practices. These enhancements should, in turn, put your FinOps program on a path for long-term, sustainable growth.
Potential use cases for AI in FinOps
As a recognized strategy, integrating AI and generative AI with FinOps is still in its infancy. However, we expect adoption rates to increase as more organizations explore the approach. Use cases may include:
- Automated cost anomaly detection
With traditional FinOps, anomaly detection often relies on manual reviews or static threshold-based alerts. Though effective, this method can be time-consuming, less scalable, and prone to missing subtle or emerging patterns in spending behavior.
On the other hand, AI and generative AI tools integrated with FinOps can continuously monitor spending patterns and automatically flag unusual activities. This automated approach enables more comprehensive analysis of large datasets, which speeds detection and helps reduce cost spikes or anomalies in real time.
- Enhanced forecasting and budgeting
Standard FinOps methodologies depend on historical averages and manual estimations for forecasting and budgeting. However, this approach can lack the agility and precision needed to adapt to dynamic cloud usage patterns and external market influences like economic shifts and changes in consumer preferences.
AI- and generative AI-enabled FinOps can analyze historical data, usage trends and external factors to provide more accurate predictions for forecasting and budgeting.3 FinOps teams can also use AI tools to simulate different scenarios to help anticipate various outcomes, improving financial management and resource planning.
- Dynamic resource optimization
Traditional FinOps uses scheduled reviews and manual rightsizing to optimize resources. Without automation, FinOps teams can sometimes delay making adjustments and miss opportunities for real-time efficiency gains.
When FinOps teams deploy AI and generative AI, the tools dynamically adjust cloud resource allocations based on real-time demand and workload requirements. This process, which may include shutting down unused or underutilized resources, helps maximize cloud resource usage and costs.