Jan 16, 2025
Episode 242: Wells Fargo has established a clear position on artificial intelligence: If you can't explain how an AI model works, you shouldn't deploy it. This stance challenges the common assumption that black box algorithms are acceptable costs of advanced AI capabilities.
In this episode, Kunal Madhok, Head of Data, Analytics, and AI for Wells Fargo's consumer business, reveals how the bank has operationalized this philosophy to enhance customer experiences while maintaining rigorous standards for model explainability and ethical deployment.
The stakes for financial institutions are substantial. As banking becomes increasingly digitized, organizations must balance sophisticated personalization with transparency and trust. Wells Fargo's approach demonstrates that explainability isn't merely about regulatory compliance—it's a fundamental driver of business value and customer trust.
Through rigorous review processes and a commitment to "plain English" explanations of algorithmic decisions, Wells Fargo ensures its models remain logical, aligned with business objectives, and comprehensible to stakeholders at all levels. This transparency serves multiple purposes: avoiding unintended consequences, maintaining human oversight of automated systems, and ensuring data-driven decisions actually drive business value.
Discover how Wells Fargo's insistence on explainable AI is reshaping everything from product recommendations to customer service, while setting new standards for responsible innovation in financial services.
Guest: Kunal Madhok, EVP, Head of Data, Analytics and AI, Wells Fargo
Host: Rob Markey, Partner, Bain & Company
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