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Product Director ID & Fraud, Europe

Equifax, Inc.
London
5 months ago
Applications closed

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Equifax is seeking a European Product leader to lead the strategy, development and management of our ID & Fraud Product Domain.

For a complete understanding of this opportunity, and what will be required to be a successful applicant, read on.

What you’ll doThe Product Director plays a crucial role in the successful execution of the UK growth strategy.

This position entails defining, developing, and implementing the product strategy for the ID & Fraud product domain, including ownership of the product proposition, management of the existing product portfolio, and the creation of product roadmaps, as well as the delivery of New Product Initiatives (NPI).

You will lead a talented Product team in the ideation, management of current offerings, and execution of New Product Initiatives as outlined in the Strategy Playbook (SPB) and Product Domain Strategies, while adhering to the standards set forth in the Equifax Product Management Handbook (PMHB).

What experience you needExtensive expertise in identity verification (IDV) and fraud prevention technologies, including biometrics, device and email verification, digital KYC, known fraud exchanges, orchestration, and multi-factor authentication.

Practical experience with customer authentication solutions that effectively balance security and user experience.

Familiarity with best practices for creating customer-focused fraud and ID solutions that reduce friction and ensure a smooth customer journey.

Demonstrated experience in the development and management of fraud prevention tools and systems.

A comprehensive understanding of advanced fraud detection methodologies, such as machine learning models, anomaly detection, and behavioral analytics.

A solid grasp of financial services regulations, including AML (Anti-Money Laundering), KYC (Know Your Customer), CDD (Customer Due Diligence), the Money Laundering Directive, and GDPR.

What could set you apartA good network and understanding of the current ID & Fraud ecosystem including platform, solution and data providers. Previous experience developing products on Cloud based environments, utilising artificial intelligence would be advantageous.

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