Entry level machine learning engineer [h1.location_city]
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Entry level machine learning engineer • aurora co
Machine Learning Engineer
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A company is looking for a Machine Learning Engineer, Risk & Fraud.
Key Responsibilities
Build and iterate on real-time fraud / risk models to support Risk decisioning
Own the full ML lifecycle for fraud detection models, including data exploration and deployment
Design evaluation strategies for imbalanced data and partner with teams to productionize models
Required Qualifications
3+ years of experience as a Machine Learning Engineer or in a similar applied ML role
Strong Python skills with hands-on experience in building supervised ML models
Proven ability to design and run robust experimentation under real-world constraints
Experience in taking models to production and supporting the full model lifecycle
Solid knowledge of ML metrics and their business implications