AI/ML Engineer - 6 Month FTC

London
2 months ago
Applications closed

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An exciting job opportunity has arisen to join a global leader in consumer electronics as a AI/ML Engineer - 6 Month FTC in West London.

Our client is looking for a creative and dynamic AI/ML Engineer - 6 Month FTC who has a strong understanding of how the health care industry will evolve in the future.

As part of the research team, the AI/ML Engineer - 6 Month FTC will:

Develop and optimise machine learning models for disease prediction and early diagnosis
Process and analyse structured and unstructured health data - Implement deep learning for predictive health care applications
Contribute to the research on AI-driven user personalisation for visually impaired individuals
Develop AI-powered accessibility solutions for their products
Ensure compliance with data privacy and ethical AI guidelines

The successful candidate for the AI/ML Engineer - 6 Month FTC in West London will:

Machine learning & deep learning - Proficiency in TensorFlow (2.X), PyTorch, Scikit-Learn
Strong skills in Python, experience with R or JavaScript is a plus
Experience with Health data processing - HER, FHIR, Wearable sensor data
Knowledge of transformer models (BERT, GPT, Whisper, T5) for text generation and accessibility tools

This is initially a 6 Month Fixed Term Contract with the possibility this could be extended and be a permanent position.

If you have the relevant experience and are interested in this job as AI/ML Engineer - 6 Month FTC in West London, please send your CV to (url removed) or call Brett on (phone number removed) or (phone number removed)

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