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Senior Machine Learning Engineer, GenAI Security
Reddit, Inc.Senior Machine Learning Engineer developing security-focused ML models for Reddit’s GenAI traffic. Leading model development across the full lifecycle to protect AI systems.
Tech Stack
Tools & technologiesETLGoPythonPyTorchTensorflow
About the role
Key responsibilities & impact- Build and improve security-focused ML models for Reddit’s GenAI traffic, including guardrail models, semantic classifiers, anomaly detection models, and other neural network based security signals.
- Own model development end to end: define the security problem, assemble and label datasets, build ETL pipelines, engineer features, train models, evaluate quality, deploy to production, monitor performance, and retrain from production feedback.
- Use modern deep learning architectures, including neural networks, transformers, sequence models, embeddings, and model distillation where they are the right practical fit.
- Design rigorous evaluation suites for adversarial examples, hard negatives, long-context inputs, structured payloads, tool calls, multi-turn workflows, and real production traffic.
- Improve model precision, recall, latency, cost, calibration, and operational reliability for high-impact production surfaces.
- Build repeatable MLOps workflows for SPACE, including training pipelines, model lineage, artifact management, holdout evaluation, dashboards, rollback paths, and retraining loops.
- Partner closely with ML Infrastructure, LLM Gateway, DevX, Ads, Answers, Safety, Privacy, Compliance, and other Security teams to bring security models into real production workflows.
- Work pragmatically with Reddit’s evolving ML platform, using existing infrastructure where possible and building focused tooling when needed to keep model iteration moving.
- Translate security goals into measurable model outcomes and help partners understand tradeoffs between risk reduction, latency, false positives, and product impact.
- Provide technical direction to other engineers and serve as a go-to ML expert for GenAI Security and broader SPACE model needs.
Requirements
What you’ll need- 5+ years of experience building, training, evaluating, and deploying production ML or deep learning models.
- Hands-on experience with modern ML frameworks such as PyTorch, TensorFlow, or similar.
- Strong practical understanding of the full ML lifecycle: problem definition, data ETL, feature engineering, training, evaluation, deployment, monitoring, debugging, and retraining.
- Experience building data pipelines and working with large-scale datasets.
- Experience designing rigorous model evaluations, including precision/recall/F1, false positive analysis, threshold tuning, calibration, holdout sets, regression tests, and production-quality validation.
- Experience shipping production-quality software, preferably in Python and/or Go.
- Strong communication skills and ability to explain model behavior, risk tradeoffs, and technical decisions to cross-functional partners.
- BS degree in Computer Science, Machine Learning, a related technical field, or equivalent practical experience.
Benefits
Comp & perks- 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
ATS Keywords
✓ Tailor your resumeApplicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
machine learningdeep learningneural networkstransformersfeature engineeringmodel evaluationdata ETLmodel deploymentPythonGo
Soft Skills
strong communication skillstechnical directioncross-functional collaboration