Data Scientist - Credit & Fraud Risk Analytics - American Express

FreshieHire Author
Salary
Not Disclosed
Location
Multiple Locations

Highlights

Leverage advanced analytics, develop predictive models, innovate with machine learning, global collaboration.




Description

Join the visionary Credit and Fraud Risk team at American Express, where you’ll leverage cutting-edge analytics and machine learning to protect our customers, drive innovation, and enable profitable business growth. As a Data Scientist in this elite environment, you will:

• Develop and deploy predictive models that inform decision-making across risk management, fraud prevention, and marketing.

• Analyze massive datasets to uncover actionable insights, optimize business strategies, and enhance customer experiences.

• Innovate with advanced techniques like reinforcement learning, Bayesian models, and neural networks to stay ahead in a dynamic financial landscape.

• Collaborate closely with cross-functional teams globally, ensuring your work has real-world impact from the boardroom to the frontline.

Your role will be pivotal in shaping the future of American Express. Embrace the challenge and join us in leading the way towards a safer, more innovative financial ecosystem.



Skills

About the Author

FreshieHire Author
Hi, this is KD. On my blogs, you will find the best jobs for freshers all at one place. We curate jobs for you from various sources and combine them all at one place. Hope you got some value. : )
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