How Federated Machine Learning Is Transforming Customer Risk Rating in Financial Services
By Richard Hills (K2 Integrity) and Ajit Tharaken (Consilient)
Unlock a New Era of Customer Risk Assessment
Legacy customer risk rating (CRR) models—built on static KYC data and subjective judgment—are no longer sufficient in a world of dynamic threats and tightening regulatory expectations. Financial institutions are under increasing pressure to deliver CRRs that are consistent, transparent, and free from bias—without compromising data privacy.
In this new co-authored white paper, “A Collaborative Approach to Customer Risk Assessment,” K2 Integrity’s Richard Hills and Consilient’s Ajit Tharaken explore how machine learning, and in particular federated machine learning, is enabling financial institutions to modernize risk assessments, enhance compliance outcomes, and collaborate across the industry—securely and at scale.
Download the paper to explore:
- Why traditional CRR methods fall short—and the regulatory risks they pose
- How machine learning enables objective, behavior-based risk scoring
- The role of federated learning in facilitating cross-institutional collaboration without sharing sensitive customer data
- Regulatory expectations around fairness, transparency, and explainability in AI-based CRR systems
- Strategic advantages of adopting a modernized, data-driven approach to risk assessment
Whether you’re a compliance leader, risk manager, data scientist, or regulatory advisor, this paper provides practical insights into how federated machine learning can help you improve risk oversight, reduce operational inefficiencies, and meet evolving regulatory standards.
Download your copy of “A Collaborative Approach to Customer Risk Assessment”
Fill out the form to access the full PDF and learn how your institution can move toward more intelligent, consistent, and future-ready customer risk assessments.