Software Development Engineer

AppleCupertino, CA
Onsite

About The Position

Imagine what you can do here. Apple is a place where extraordinary people gather to do their lives best work. Together we create products and experiences people once couldn’t have imagined, and now, can’t imagine living without. It’s the diversity of those people and their ideas that inspires the innovation that runs through everything we do. APPLE INC has the following available in Cupertino, California and various unanticipated locations throughout the USA.

Requirements

  • Implementing and develop metrics and add them to the monitoring pipelines to be used for quality measurement and monitoring
  • Utilizing designing, automating, and optimizing data ingestion, transformation experience, validation, and quality assurance workflows at scale to manage training and evaluation data.
  • Integrating AI models into production, and monitoring performance for latency, drift, and reliability.
  • Setting up CI/CD pipelines for deploying AI-driven applications, automating data and model versioning, and managing reproducibility.
  • Utilizing semi-supervised learning, human-in-the-loop data labeling, and synthetic data generation using LLMs to scale annotation efforts.
  • Developing and maintaining software tooling in Python for data processing, management, and automation
  • Communicating risks and insights related to model quality and data pipeline performance to technical and non-technical stakeholders, including leadership teams.
  • Applying strong software engineering principles, including code testability, automation, metric-driven development, and adaptability to new technologies through documentation code reviews, design patterns, and proven architectural frameworks

Responsibilities

  • Design, automate, and optimize AI deployment pipelines for large-scale model serving using python and internal tools.
  • Implement end-to-end data quality monitoring, validation, and anomaly detection for AI systems using python and internal tools.
  • Develop comprehensive testing, benchmarking, and continuous evaluation frameworks for AI models using python and internal tools.
  • Collaborate with machine learning engineers and infrastructure teams to integrate and optimize AI models in production using python and internal tools.
  • Generate and automate data labeling pipelines using LLMs for large-scale AI datasets including python and internal tools.

Benefits

  • Comprehensive medical and dental coverage
  • retirement benefits
  • a range of discounted products and free services
  • reimbursement for certain educational expenses — including tuition
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