Advanced Manufacturing Engineer(iphone) - Smart Manufacturing

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

This role focuses on driving manufacturing research and development for iPhone final assembly line automation, integrating AI/ML and LLMs into smart manufacturing processes. The engineer will lead technical automation projects, develop intelligent testing methods, and conduct data/failure analysis to optimize production efficiency and product quality.

What you'd actually do

  1. 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. Direct manufacturing engineering projects from concept through production, focusing on design for manufacturability, cost reduction, and continuous improvement for final assembly.
  3. Develop and implement sophisticated, data-driven manufacturing processes and intelligent testing methods that leverage machine learning to optimize production efficiency and product quality.
  4. 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. 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, or equivalent experience
  • 5+ years of engineering experience in an automation or smart manufacturing role
  • Practical coding experience (e.g., Python, R, SQL)
  • Demonstrated ability to apply Artificial Intelligence (AI) or Machine Learning (ML) techniques to solve engineering or production problems
  • Experience directing an engineering team through new product introductions
  • Experience with project management, cost reduction, and mechanical engineering design
  • Fluent in both written and spoken English and Mandarin

Nice to have

  • Robot arm applications, calibration processes, pneumatics, servo motors, and programmable logic controller (PLC) systems, and how to integrate them with edge computing or IoT data pipelines
  • Optics principles for 2D and 3D vision systems, positioning, and critical alignment fixtures, ideally combined with AI-driven computer vision (CV)
  • Adhesives and dispensing technologies
  • Statistical analysis tools (e.g., JMP, Minitab, Six Sigma)
  • Advanced methodologies (e.g., Machine Learning, deep learning, LLMs)
  • Leveraging LLMs or Generative AI tools to automate engineering workflows, summarize technical documents, or build smart factory applications
  • Communicating technical information across global, cross-functional teams, specifically bridging the gap between traditional hardware manufacturing and software/data science teams

What the JD emphasized

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

Other signals

  • AI/ML integration in manufacturing
  • LLM applications for process optimization
  • Data-driven manufacturing standards