Software Engineer, Machine Learning - Fraud

DoorDash USA

San Francisco, California$137,100 - $201,600 est.Full-timePosted 7h ago
About the Team The Fraud Machine Learning team builds cutting edge models that play central roles in our important anti-fraud systems. We operate at a massive scale, risking billions of events across 20 countries. We are looking for ML experts who can help us push the technology boundaries and make DoorDash the world’s most safe logistics engine! About the Role We’re looking for a passionate Applied Machine Learning engineer to join our team. As a Machine Learning Engineer, you’ll be conceptual…

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