Advanced Manufacturing Engineer(iphone) - Smart Manufacturing

Apple Apple · Big Tech · Suzhou, China · Operations and Supply Chain

This role focuses on driving manufacturing research and development for iPhone final assembly line automation, integrating AI/ML and smart manufacturing technologies. The engineer will lead automation projects, leverage AI/ML and LLMs to optimize processes, and develop data-driven methods. Responsibilities include spearheading AI/ML adoption, leading core engineering projects, developing intelligent testing methods, conducting advanced data analysis, and mentoring teams on AI-augmented manufacturing.

What you'd actually do

  1. Drive Smart Manufacturing Innovation: Spearhead the adoption of AI/ML, Large Language Models (LLMs), and advanced data analytics to revolutionize traditional AME workflows—ranging from predictive automation performance modeling and automated root-cause analysis to intelligent reporting.
  2. Lead Core Engineering Projects: Direct manufacturing engineering projects from concept through production, focusing on design for manufacturability, cost reduction, and continuous improvement for final assembly.
  3. Develop Intelligent Processes: Develop and implement sophisticated, data-driven manufacturing processes and intelligent testing methods that leverage machine learning to optimize production efficiency and product quality.
  4. Advanced Data & Failure Analysis: Conduct failure and data analysis on upcoming products, utilizing a combination of traditional statistical tools and modern AI-driven insights to drive design changes and final assembly standards.
  5. Mechanical Design Evaluation: Evaluate and define mechanical design approaches, including creating and managing tolerance stack-ups for assemblies and individual components, enhanced by computational modeling and data trends.

Skills

Required

  • Mechanical Engineering
  • Automation
  • Computer Science
  • Data Science
  • Python
  • R
  • SQL
  • Artificial Intelligence (AI)
  • Machine Learning (ML)
  • Engineering team leadership
  • Project management
  • Cost reduction
  • Mechanical engineering design

Nice to have

  • Robot arm applications
  • Calibration processes
  • Pneumatics
  • Servo motors
  • Programmable logic controller (PLC) systems
  • Edge computing
  • IoT data pipelines
  • Optics principles
  • 2D and 3D vision systems
  • AI-driven computer vision (CV)
  • Adhesives and dispensing technologies
  • Statistical analysis tools (JMP, Minitab, Six Sigma)
  • Deep learning
  • Generative AI tools
  • LLMs for engineering workflows
  • Smart factory applications
  • Communicating technical information across global, cross-functional teams

What the JD emphasized

  • AI/ML
  • Large Language Models (LLMs)
  • AI-driven insights
  • AI-augmented manufacturing practices
  • AI-driven computer vision (CV)

Other signals

  • AI/ML integration in manufacturing
  • LLM for process optimization
  • Data-driven standard practices
  • Smart manufacturing technologies