Senior Machine Learning Engineer

Galway
11 months ago
Applications closed

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Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Senior Machine Learning Engineer

Machine Learning Engineer – Hybrid in Galway (2 Days in Office)

Empower AI Innovation with Cutting-Edge Mobile Technology!

Are you passionate about AI and machine learning? Want to showcase the power of Generative AI on next-generation mobile devices? This is your chance to make an impact!

Compustaff is seeking a Machine Learning Engineer to join a dynamic and innovative team. You'll develop AI-powered demo applications, optimize machine learning models for mobile deployment, and collaborate with industry-leading developers worldwide.

What You’ll Do:

🔹 Create and optimize AI applications using Generative AI models

🔹 Work with cutting-edge technologies like ONNX, PyTorch, and TensorFlow

🔹 Develop Android applications with Android Studio, Java, and Kotlin

🔹 Collaborate with top-tier developers to revolutionize AI on mobile devices

What You Bring:

✔ Strong programming skills in C++ or Java

✔ Experience in Android app development

✔ Understanding of neural networks (bonus!)

✔ Familiarity with AI deployment frameworks (ONNX, PyTorch, TensorFlow)

Why Join?

💡 Influence the future of AI on mobile

🚀 Work with cutting-edge AI & ML technologies

📢 Get your work published and recognized globally

🏡 Hybrid role – 2 days in Galway office, flexible working

Ready to take your Machine Learning expertise to the next level? Apply now through Compustaff and be part of an exciting AI revolution!

📩 Apply today

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