Machine Learning Data Engineer

AppleCupertino, CA

About The Position

We are seeking a highly experienced and strategic Machine Learning Data Engineer to drive our machine learning data with a strong focus on quality. In this role, you will transform ambiguous data challenges into scalable processes, clear policies, and high-fidelity datasets that power diverse ML use cases, specifically focused on innovative consumer products and user-facing technologies. You will act as the crucial link between technical tools and infrastructure, cross-functional engineering teams, and regulatory compliance (including privacy, legal, and consumer data protection). If your passion is making sense of complex data, designing data evaluation frameworks, and leading initiatives to maximize model ROI through rigorous data quality, we want you on our team.

Requirements

  • BS in Computer Science, Data Engineering, Data Science, Math, or related fields.
  • Experience in data analysis, data engineering, and machine learning data operations.
  • Experience designing data quality control processes, data curation workflows, or Human-in-the-Loop initiatives.
  • Experience managing or coordinating cross-functional projects spanning multiple technical teams or organizations.
  • Experience leading end-to-end data strategy for ML development lifecycle, including iterating rapidly to drive improvements.

Nice To Haves

  • 10+ years of experience in data analysis or ML data operations, including identifying trends, generating summary statistics, and drawing insights from quantitative and qualitative data.
  • Experience operating within global data privacy frameworks (e.g., GDPR, CCPA) and aligning consumer ML data handling with legal compliance and ethical guidelines.
  • Proven background in leading complex, cross-functional programs focused specifically on ML data quality at scale.
  • Experience with prompt engineering, machine learning tools, and fine-tuning Large Language Models (LLMs).
  • Demonstrated ability to consult with diverse engineering stakeholders to gather requirements, explain complex models, and iterate rapidly to drive improvements.
  • Excellent written and verbal communication skills, with a specialized ability to distill highly technical analyses to non-technical audiences effectively.
  • Exceptional problem-solving skills, adaptability, and agility to navigate high ambiguity, learn proprietary tools quickly, and thrive in a fast-paced environment.

Responsibilities

  • Transform ambiguous data challenges into scalable processes, clear policies, and high-fidelity datasets.
  • Power diverse ML use cases, specifically focused on innovative consumer products and user-facing technologies.
  • Act as the crucial link between technical tools and infrastructure, cross-functional engineering teams, and regulatory compliance (including privacy, legal, and consumer data protection).
  • Design data evaluation frameworks.
  • Lead initiatives to maximize model ROI through rigorous data quality.
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