Machine Learning Engineer

SR2 REC LTD
London
2 days ago
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Machine Learning Engineer - Python / PyTorch - £575-£675/day - Outside IR35 - Remote (UK)

Contract: 6 months (extension likely)
Day Rate: £575-£675 per day
IR35 Status: Outside IR35
Location: Remote (UK)

Core Stack: Python, PyTorch / TensorFlow, AWS, Docker, Kubernetes

The Opportunity

We're working with a growing technology team looking for a Machine Learning Engineer to help design, build and deploy machine learning systems used in real-world applications.

This role sits at the intersection of software engineering, data science and applied machine learning, with a focus on taking models from experimentation through to scalable production ML systems.

You'll work closely with engineers, data specialists and product teams to develop ML capabilities that support new and existing products.

We're also happy to speak with Data Scientists who have strong Python engineering experience and have deployed machine learning models into production environments.

What You'll Be Working On

  • Building and deploying machine learning and deep learning models using Python, PyTorch, TensorFlow and Scikit-learn


  • Developing scalable data pipelines and feature engineering workflows using Python and SQL


  • Designing and maintaining ML training pipelines, experimentation workflows and model evaluation processes


  • Deploying machine learning models into production using Docker, Kubernetes and cloud platforms such as AWS, GCP or Azure


  • Integrating machine learning services and AI models into backend systems and APIs


  • Supporting MLOps practices, including model monitoring, versioning and retraining pipelines



Apply directly or reach out for a confidential discussion if you'd like to learn more.

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