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Risk Strategy Analyst, San Francisco, California

CategoryData Science
CountryUnited States
CitySan Francisco
Risk Data Science and Analytics teams provide insights and develop machine learning models and strategies to combat payment fraud and marketplace abuse, improve account security and integrity, and minimize credit risk for financial products.

About the Role

We're looking for a Risk Strategy Analyst to join the team to apply a data-driven approach to identify, understand, and scope emerging fraud trends (including payment fraud and marketplace risk) on the Uber platform. In this role, you'll be part of and work closely with a cross-functional team consisting of engineers, product managers, operations, data scientists, and other analysts. You will require a mix of business and technical acumen, along with cross-functional skills to connect with various internal and external partners.

What You'll Do

• Perform analysis to understand Risk / Fraud behaviors, contribute to fraud detection features and models
• Build and maintain fraud rules in response to evolving fraud behaviors
• Extract insights from the large volumes of data and come up with new strategies to mitigate/stop fraudulent activities
• Build a deep understanding of the Risk data, reporting, and key metrics
• Participate in project definition and idea generation, work on collaborative projects with partners across the globe with a focus on the Risk/Fraud mitigation
• Effectively communicate and present findings to the management team to strengthen business decisions
• With guidance from manager, define and develop area of expertise
• Attend regular training courses, functional business review meetings, and all-hands
• Stay highly engaged and always hustle as Uber Risk is a very fast-paced environment

Basic Qualifications

• Minimum 1 year of experience in a data-focused role such as product analytics, business analytics, business operations, or data science
• Advanced degree in Mathematics, Statistics, Computer Science, Economics or other quantitative field
• Experience with data analysis and visualization tools, such as Python, R, Tableau
• Proficient at defining, utilizing and communicating performance metrics
• Proven track record of applying analytical/statistical methods to tackle real-world problems using big data

Preferred Qualifications

• 3+ years of experience in a data-focused role such as product analytics, business analytics, business operations, or data science
• Risk/Fraud/Payments experience
• 3+ years of SQL experience
• Prior work with Hive, Spark, and other big data tools
• Experience in experimentation, A/B testing, and statistical modeling a plus
• Python/R
• Creative problem solving, strong critical thinking, and a get things done mentality
• Hands-on and attentive to detail
• Comfort with ambiguity and the ability to work in a self-guided manner
• Passion for Uber!

At Uber, we ignite opportunity by setting the world in motion. We take on big problems to help drivers, riders, delivery partners, and eaters get moving in more than 600 cities around the world.

We welcome people from all backgrounds who seek the opportunity to help build a future where everyone and everything can move independently. If you have a curiosity, passion and collaborative spirit, work with us, and let's move the world forward, together.

Uber is proud to be an Equal Opportunity/Affirmative Action employer. All qualified applicants will receive consideration for employment without regard to sex, gender identity, sexual orientation, race, color, religion, national origin, disability, protected Veteran status, age, or any other characteristic protected by law. We also consider qualified applicants regardless of criminal histories, consistent with legal requirements.

If you have a disability or special need that requires accommodation, please let us know by completing[ this form](https://forms.gle/aDWTk9k6xtMU25Y5A).

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