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Data & AI Engineer

JOB SUMMARY

RemoteRemote work possiblePosted on 1/30/2026

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Job details

We’re seeking a Data AI Engineer to develop intelligent data pipelines and analytics solutions that power smarter decisions across silicon design, verification, and manufacturing.

You’ll transform engineering data into actionable insights through automation, modeling, and visualization. ResponsibilitiesBuild and maintain data pipelines to support machine learning and analytics workflows. Collect, clean, and transform large, complex datasets from engineering environments. Develop and train predictive models for yield, performance, and anomaly detection. Automate recurring data analysis tasks and integrate models into engineering processes. Collaborate with design and software teams to embed AI-driven insights into products. Create dashboards and visualization tools for reporting and decision-making. Document code, models, and processes for transparency and reproducibility.

Qualifications

Proficiency in Python and ML frameworks (TensorFlow, PyTorch, Scikit-learn). Strong skills in data manipulation (Pandas, NumPy, SQL). Experience with workflow orchestration (Airflow, Spark, or similar). 3–5 years of experience in data engineering or applied AI. Bachelor’s degree in Electrical Engineering, Computer Science, or related field. Preferred / PlusFamiliarity with semiconductor design, verification, or manufacturing datasets. Understanding of statistical modeling and predictive maintenance. Experience with cloud environments (AWS, Azure, GCP) and version control (Git). Knowledge of MLOps principles (deployment, monitoring, CI/CD).