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Machine Learning Engineer I
Location
United States
Posted
70 days ago
Salary
$112.2K - $168.4K / year
Seniority
Junior
Job Description
Machine Learning Engineer I
Payscale
• Partner with Data Science to package models for deployment and integrate them into our products and internal services. • Implement and improve ML deployment and inference workflows (batch and/or real-time), including automation and CI/CD patterns with guidance from senior engineers. • Build and maintain API endpoints or services that expose model predictions, including input validation, error handling, and documentation. • Write tests (unit/performance/integration) to validate model behavior and service reliability; help create repeatable validation checks and release processes. • Instrument services with logging/metrics and help monitor production behavior; participate in incident triage and troubleshooting with support from the team. • Contribute to performance and cost improvements through profiling and practical techniques like batching, basic caching, and efficiency-minded design. • Stay current on relevant AI/ML engineering best practices and share learnings with the team.
Job Requirements
- Bachelor's or master's degree in Computer Science, Engineering, or related field.
- 1+ years of experience (including internships/co-ops) building software in a production environment.
- Proficiency in Python with a focus on readable, testable code.
- Familiarity with core ML concepts and at least one ML framework (e.g., PyTorch, TensorFlow, scikit-learn).
- Familiarity with building or consuming APIs (HTTP/JSON) and basic service development patterns.
- Comfort working in a collaborative environment: asking questions, communicating tradeoffs, and incorporating feedback.
- Willingness to learn cloud, containerization, and MLOps practices as part of day-to-day work.
- Exposure to MLOps tools or patterns (e.g., MLflow, Airflow, Kubeflow, feature stores, model registries).
- Experience with containers (Docker) and/or orchestration (Kubernetes).
- Experience with observability tools (e.g., Datadog, Prometheus/Grafana) and production troubleshooting.
- Basic performance tuning experience (profiling, async patterns, caching concepts).
- Experience working with data platforms (e.g., Snowflake, Spark) or large-scale data pipelines.
Benefits
- Flexible paid time off, giving you the opportunity to rest, relax and recharge away from work
- 14 Paid Company Holidays, includes 2 floating holidays (you choose!)
- A comprehensive benefits plan including medical, dental, life, vision, disability, and life insurance covered up to 100% by Payscale
- Unlimited infertility coverage benefits through our medical plans
- Additional supplemental health benefits offered to you and your family
- 401(k) retirement program with a fully vested immediate company match
- 16 weeks of paid parental leave for birthing and non-birthing parents
- Health Savings Account (HSA) options and company contributions each pay period
- Flexible Spending Account (FSA) options for pre-tax employee allocations
- Annual remote work stipend to be used on wellness or home office equipment
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