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Machine Learning Engineer, Ads
Location
United States
Posted
69 days ago
Salary
$185.8K - $260.1K / year
Seniority
Senior
Job Description
Machine Learning Engineer, Ads
Reddit, Inc.
• Design, build, and deploy industrial-level machine learning models to solve critical problems in ad ranking, bidding, and optimization. • Take full ownership of the ML lifecycle, from ideation and research to building scalable serving systems and maintaining models in production. • Perform systematic feature engineering to transform raw, diverse data into high-quality features that drive model performance. • Work closely with product managers, data scientists, and engineers to translate business challenges into effective ML solutions. • Improve the reliability and stability of our ML systems by building robust monitoring, alerting, and automated retraining pipelines. • Research new algorithms, stay up-to-date with state-of-the-art ML techniques, and contribute to the team’s strategy and roadmap.
Job Requirements
- At least 3+ years of end-to-end experience in training, evaluating, and deploying machine learning models in a production environment.
- Proficient in one or more general-purpose programming languages (e.g., Python, Scala) and have a solid understanding of software development best practices.
- Hands-on experience with a major machine learning framework (e.g., TensorFlow, PyTorch) and a deep understanding of core ML concepts and algorithms.
- Proven ability to work effectively with cross-functional teams, including product managers and data scientists, to translate business needs into technical solutions.
- Track record of using machine learning to drive key performance indicator (KPI) wins and solve complex, real-world problems.
Benefits
- Comprehensive Healthcare Benefits and Income Replacement Programs
- 401k with Employer Match
- Global Benefit programs that fit your lifestyle, from workspace to professional development to caregiving support
- Family Planning Support
- Gender-Affirming Care
- Mental Health & Coaching Benefits
- Flexible Vacation & Paid Volunteer Time Off
- Generous Paid Parental Leave
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