Machine Learning Engineer

Bright Purple
London
9 months ago
Applications closed

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Machine Learning Engineer Remote with Travel Are you an experienced Machine Learning Engineer looking to work on cutting edge cloud projects for prestigious clients? This organization has experienced continual strong growth since founding, and this exciting role would see the successful candidate design, build, and deliver complex new solutions within an entirely new function focused on AI and ML.
Benefits A generous holiday allowance.
Flexible working options.
Fantastic Healthcare and Pension Scheme.
Opportunities for career development and progression within the company and support for this.
Bonus.
About the role As a mid-to-senior level Machine Learning Engineer, you will be involved in creating ML models to be deployed in the cloud and supporting Data Engineering, DataOps, and DevOps. You will be working with the latest technology on highly visible and large-scale projects.
What you’ll bring to the role Strong grounding in ML approaches, techniques, and frameworks.
Proficiency in Python, Pandas, TensorFlow, Scikit-learn, Numpy, SciPy.
Experience deploying to the cloud and working with Azure (Azure DevOps, Azure ML, Azure SQL, ADF, etc.).
Ability to work with databases like SQL Server, NoSQL, etc.
Experience with ETL processes, data pipelines, DevOps.
This role is hybrid, requiring occasional presence in one of their UK offices in Scotland or England, and occasional travel to visit clients. Please apply today for immediate consideration. Bright Purple is an equal opportunities employer: we are proud to work with clients who share our values of diversity and inclusion in our industry.

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