Risk & Control Health Data Analyst

Stripe
London
2 months ago
Applications closed

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Job Description

Who we are

About Stripe

Stripe is a financial infrastructure platform for businesses. Millions of companies - from the world’s largest enterprises to the most ambitious startups - use Stripe to accept payments, grow their revenue, and accelerate new business opportunities. Our mission is to increase the GDP of the internet, and we have a staggering amount of work ahead. That means you have an unprecedented opportunity to put the global economy within everyone's reach while doing the most important work of your career.

About The Team

What you’ll do

We're seeking a technically proficient and data-savvy Compliance Data Analyst to join our Risk & Controls Oversight function at Stripe. As part of the Risk & Control Health team, you'll be responsible for conducting technical assessments of our risk and control environment, developing data-driven insights, and creating dynamic dashboards to represent our risk and control health. This role is critical in ensuring Stripe maintains robust risk management and compliance through data-backed analysis and continuous improvement. This role offers an exciting opportunity to leverage your technical skills in data analysis and alongside subject matter expertise in risk and compliance to drive impactful improvements in Stripe's risk and control environment. You'll play a crucial role in enhanci...

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