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AIML - Sr. Machine Learning Data Engineer, Machine Learning Platform Technologies

Apple
Full-time
On-site
Seattle, Washington, United States
Machine Learning
In this role, you'll be architecting and building Apple's next-generation ML dataset management platform. This platform enables ML teams across the company to efficiently manage the full lifecycle of datasets, from initial curation and annotation through versioning, model training and evaluation, sharing, and compliance. You'll design scalable infrastructure that supports dataset operations at massive scale while maintaining strong governance guarantees. Your work will include building data lineage tracking systems, implementing automated compliance workflows, creating intuitive APIs and SDKs for dataset access, and ensuring seamless integration with ML training and evaluation pipelines, You'll collaborate with teams building customer-facing ML features across iOS, macOS, and other Apple platforms, as well as compute infrastructure teams and ML framework owners. Your platform work directly enables the ML innovations that millions of customers experience daily. This role offers the opportunity to have broad impact across Apple's ML initiatives and to shape how thousands of ML practitioners build the intelligent experiences our customers love.


  • Bachelor's degree in Computer Science, related field, or equivalent practical experience.
  • 10+ years building and scaling data infrastructure for petabyte-scale ML workloads with high reliability
  • Deep expertise in modern data technologies (Apache Iceberg, Spark, S3, distributed systems), data modeling, schema evolution, and efficient storage formats (Parquet, Arrow, ORC)
  • Experience building data pipelines that handle diverse ML data types: structured/tabular data, unstructured media (images, video, audio), embeddings, and multimodal datasets
  • Proven track record building dataset management systems including versioning, metadata management, discovery, and integration with production ML training pipelines
  • Experience designing data governance frameworks including lineage tracking, access control, retention policies, and compliance workflows
  • Experience with cloud platforms (AWS, GCP, Azure) and container orchestration (Kubernetes)
  • Strong cross-functional collaboration skills to understand diverse stakeholder needs and articulate technical decisions across ML engineering, data science, legal, and product teams


  • Hands-on experience curating or managing datasets for production ML models
  • Experience with data cataloging systems, metadata platforms, MLOps tools, or ML training frameworks
  • Knowledge of privacy-preserving technologies and data quality/validation frameworks