Lead AI Engineer — Production ML & MLOps Leader

Kainos
Belfast
3 weeks ago
Applications closed

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A leading technology company in Northern Ireland is seeking a Lead AI Engineer to bridge the gap between data science and software engineering. This role involves delivering scalable AI solutions to enhance Workday product offerings, focusing on performance optimization and integration. The ideal candidate has extensive software development experience with proficiency in Python, Java, or C++, and a strong background in deploying AI models. Join us to make a real impact in a diverse and collaborative environment.
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