
Principal Engineer in Automation, Machine Learning & AI
- Kuala Lumpur
- Tetap
- Sepenuh masa
- Design and implement automation solutions for wafer test, final test, visual inspection, and packing processes.
- Develop and integrate ATE, probe station automation, and handler robotics to enhance efficiency.
- Implement PLC, robotics, and IoT-based automation to minimize manual intervention.
- Optimize automated visual inspection with AI-based defect detection and marking verification.
- Develop and deploy AI-driven machine vision for defect detection, OCR accuracy, and wafer/package quality inspection.
- Use ML algorithms for predictive maintenance to improve OEE of probe stations, testers, and handlers.
- Optimize test parameters dynamically with ML-based adaptive testing to reduce test time and improve yield.
- Apply AI to analyze test data, detect failure patterns, and recommend corrective actions.
- Implement ML-based predictive analytics to improve yield, OEE, and defect classification.
- Reduce human reliance in visual inspection by enhancing AI-based self-learning models.
- Work with internal teams to reduce vendor dependency by developing in-house automation & AI solutions.
- Conduct hands-on training sessions to upskill engineers in automation, ML, and AI applications.
- Provide technical mentorship on AI-based test optimization and automation programming.
- Establish best practices for machine learning model deployment and continuous improvement.
- Bachelor’s or Master’s degree in Electrical Engineering, Automation, Computer Science, AI, or a related field.
- 8+ years of experience in semiconductor automation, ML/AI development, or smart manufacturing.
- Automation & Robotics: expertise in PLC programming, robotics, and IoT-based automation.
- Wafer Test & Final Test Optimization: Experience with ATE systems, handlers, probe stations, and scanners automation.
- Machine Learning & AI: Proficiency in Python, TensorFlow, PyTorch, MATLAB, and AI model deployment for predictive analytics.
- Machine Vision & Defect Detection: Experience in OCR, AI-based defect classification, and automated visual inspection.
- Data Analytics & Predictive Maintenance: Knowledge of big data analysis, ML-driven failure prediction, and OEE optimization.
- Strong problem-solving and analytical skills for automation and AI-driven improvements.
- Excellent communication and training abilities to mentor engineers.
- Ability to work independently and drive automation/AI initiatives.