In a context of increasing regulatory demand and competitiveness in the financial sector, building a robust data strategy is no longer a differential but essential.
It was in this scenario that a Large Financial Institution in Brazil relied on act to modernize its credit risk engine through an advanced data architecture based on Databricks.
The project was structured with a focus on Data Intelligence, capable of supporting dozens of models, allowing not only compliance with regulatory standards such as standard 4966, but also substantial gains in operational efficiency, data governance, and cost optimization.
Regulation 4966 introduced new requirements for calculating PDD (Allowance for Doubtful Accounts) and PE (Expected Loss), in line with the national adoption of IFRS 9. For the financial institution, this translated into a large-scale challenge:
In addition to the regulatory challenge, there were structural issues:
act digital implemented a modern data architecture platform based on Databricks, enabling data centralization, processing, and governance at scale.
This approach was instrumental in enabling a value-driven data strategy, supporting both analytics and advanced machine learning.
act digital designed and implemented a cloud data platform (AWS), with Databricks as the core of the analytical processing layer and operationalization of credit risk models. The solution integrated:
In the first phase, the priority was to ensure operational continuity and compliance within the regulatory deadline:
With the platform in place, the second phase focused on scale, efficiency, and governance:
This architecture consolidated Databricks as the core platform for the credit engine data lifecycle.

Adopting the Data Intelligence platform with Databricks has brought measurable gains in process efficiency, costs, and data maturity.
90% reduction in processing time:
The execution time of flows in AWS/Databricks has dropped from more than 1 day to just 1 hour.
This allowed you to:
87% reduction in total processing cost after Phase 02 optimizations.
The combination of Databricks, fine-tuning cloud resources, and FinOps practices has made it possible to:
The initiative went beyond the technical dimension and drove the wider adoption of the Data Platform within the institution:
The new architecture made it possible to strengthen data governance:
Crosslink suggestions:
This case shows how a structured approach to data architecture and data strategy can transform regulatory challenges into opportunities for innovation and efficiency. By implementing a Data Intelligence platform with Databricks, act digital enabled the institution to:
More than a technological modernization, the project consolidated a true data-driven transformation, aligned with act digital's positioning: transforming complex challenges into opportunities to generate value through scalable, intelligent, and business-centric solutions.
In a context of increasing regulatory demand and competitiveness in the financial sector, building a robust data strategy is no longer a differential but essential.
It was in this scenario that a Large Financial Institution in Brazil relied on act to modernize its credit risk engine through an advanced data architecture based on Databricks.
The project was structured with a focus on Data Intelligence, capable of supporting dozens of models, allowing not only compliance with regulatory standards such as standard 4966, but also substantial gains in operational efficiency, data governance, and cost optimization.
Regulation 4966 introduced new requirements for calculating PDD (Allowance for Doubtful Accounts) and PE (Expected Loss), in line with the national adoption of IFRS 9. For the financial institution, this translated into a large-scale challenge:
In addition to the regulatory challenge, there were structural issues:
act digital implemented a modern data architecture platform based on Databricks, enabling data centralization, processing, and governance at scale.
This approach was instrumental in enabling a value-driven data strategy, supporting both analytics and advanced machine learning.
act digital designed and implemented a cloud data platform (AWS), with Databricks as the core of the analytical processing layer and operationalization of credit risk models. The solution integrated:
In the first phase, the priority was to ensure operational continuity and compliance within the regulatory deadline:
With the platform in place, the second phase focused on scale, efficiency, and governance:
This architecture consolidated Databricks as the core platform for the credit engine data lifecycle.

Adopting the Data Intelligence platform with Databricks has brought measurable gains in process efficiency, costs, and data maturity.
90% reduction in processing time:
The execution time of flows in AWS/Databricks has dropped from more than 1 day to just 1 hour.
This allowed you to:
87% reduction in total processing cost after Phase 02 optimizations.
The combination of Databricks, fine-tuning cloud resources, and FinOps practices has made it possible to:
The initiative went beyond the technical dimension and drove the wider adoption of the Data Platform within the institution:
The new architecture made it possible to strengthen data governance:
Crosslink suggestions:
This case shows how a structured approach to data architecture and data strategy can transform regulatory challenges into opportunities for innovation and efficiency. By implementing a Data Intelligence platform with Databricks, act digital enabled the institution to:
More than a technological modernization, the project consolidated a true data-driven transformation, aligned with act digital's positioning: transforming complex challenges into opportunities to generate value through scalable, intelligent, and business-centric solutions.