Machine Learning Engineer (London)

Noir
London
8 months ago
Applications closed

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Increase your chances of an interview by reading the following overview of this role before making an application.
(Tech stack: Machine Learning Engineer, Python, TensorFlow, PyTorch, scikit-learn, Keras, Natural Language Processing (NLP), Hugging Face Transformers, Pandas, NumPy, Jupyter Notebooks, Matplotlib, Seaborn, Flask (for building APIs), FastAPI, Docker, MLflow, DVC (Data Version Control), AWS SageMaker, Azure Machine Learning, Google Cloud AI Platform, TensorFlow Serving, ONNX (Open Neural Network Exchange)
We have several exciting new positions available for Machine Learning Engineers to join a forward-thinking AI company. This is your opportunity to collaborate with top talent in the field of artificial intelligence. Their latest AI advancements have redefined industry norms and empowered businesses to implement cutting-edge, personalized, and scalable AI solutions. Leveraging state-of-the-art technology, we are reshaping the landscape of AI, offering innovative models that exceed current industry benchmarks. Come aboard our team and help shape the future of machine learning and AI.
Our client is looking for passionate Machine Learning Engineer candidates with experience in some or all of the following (full training will be provided to fill any gaps in your skill set): Machine Learning Engineer, Python, TensorFlow, PyTorch, scikit-learn, Keras, Natural Language Processing (NLP), Hugging Face Transformers, Pandas, NumPy, Jupyter Notebooks, Matplotlib, Seaborn, Flask (for building APIs), FastAPI, Docker, MLflow, DVC (Data Version Control), AWS SageMaker, Azure Machine Learning, Google Cloud AI Platform, TensorFlow Serving, ONNX (Open Neural Network Exchange)
This is your chance to contribute to an innovative, technically demanding project focused on developing a cutting-edge machine learning application from the ground up. The field of artificial intelligence is rapidly advancing, and our clients are emerging as frontrunners in this dynamic market!
Location : London/ Hybrid Working
Salary : £90,000 - £150,000 + Bonus + Benefits
To apply for this position please send your CV to Sunny Bhalla at Noir.
Applicants must be based in the UK and have the right to work in the UK.
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