Engineering a Secure AML Platform for Cross-Bank Fraud Detection
Over view
Overcoming Development Hurdles
Banks have highly restrictive environments. Since different banks provide different quality of data, it can be tough to make sure the model is improving consistently, and building a fraud detection system that spans multiple banks in the AML sector presents a lot of tough challenges. Our team had to be extra vigilant with any sensitive information. Additionally, the inconsistency in data quality among different banks made it even more difficult to ensure that our models would perform well consistently. Since our platform needed to combine models without having direct access to the raw data, we had to figure out how to train these models using representative data while still protecting privacy. Another big challenge was developing software that could work across various banking systems. Standard container and package management techniques were not suitable because banks had to inspect the software and scan the contents, and Docker was not commonly used in their environments.
This meant we had to think outside the box to create solutions that did not depend on the bank’s current software or infrastructure assumptions while still being compatible across different platforms.
A New Route to Success
and deploy pipelines in a consistent way across different operating systems and data analytics environments.
This new solution could operate on any modern operating system and improved the platform’s flexibility without sacrificing security.
Redefining Financial Crime Detection
The new innovative federated learning technology allows the platform to now manage data sets that go beyond traditional memory limits. This advancement allows it to meet the intricate data needs of today’s financial crime detection.
The platform now offers fully testable features, which enhance the accuracy and dependability of fraud detection. It can be easily installed on any modern operating system without requiring prior infrastructure, and it is now compatible with different banking settings. This adaptability allows Consilient to quickly test, iterate, and roll out new features, speeding up innovation in the fight against financial crime.
Achieving a Limitless Future
Concept to Cloud helped Consilient take financial crime detection to the next level by changing the way secure and scalable platforms are created. With their advanced cloud architecture, we helped Consilient to safely manage and integrate machine learning models from various banks. The new platform has allowed them to maintain privacy while still delivering high performance. By smoothly connecting the platform with different banking systems, Consilient’s platform is now ready for a bright future ahead with the highest quality security measures in place.
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