Machine Learning Researcher - LLM/VLM

Staines
9 months ago
Applications closed

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Machine Learning Researcher - LLM/VLM

Are you a PhD-educated Machine Learning Researcher looking for a new opportunity? If so, our client, a global consumer electronics company, is actively expanding their team. This role is based at one of their flagship AI centres in Cambridge, Cambridgeshire.

Key Responsibilities:

As a Machine Learning Researcher, you will:

Work on on-device LLMs and VLMs, as well as adaptive inference methods and mobile ML systems.
Conduct cutting-edge research and translate findings into practical applications, contributing to the commercialisation of AI across millions of devices.
Design and develop groundbreaking machine learning algorithms and systems.

Key Requirements:

To be considered for this Machine Learning Researcher role, you must have:

A PhD in Natural Language Processing, AI, Electrical Engineering, or a related field.
Experience with ML frameworks such as PyTorch, TensorFlow, or JAX.
Strong programming skills in C++, C, or Python.
Experience working with embedded or mobile devices.
Ideally, 2+ years of industry experience post-PhD.

How to Apply:

To apply, please send your CV to (url removed) or contact Nick on (phone number removed) / (phone number removed)

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