Contract Lead MLOPs Engineer - AWS

Fruition Group
London
1 month ago
Applications closed

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Contract Lead MLOPS Engineer (SC Clearance Required)
Duration - 6 months
Outside IR35 - Competitive Market Rate
Fully Remote - Must be UK based + SC cleared
Fruition Group are representing a boutique technology consultancy who are specialist at delivering cutting edge solutions for public and private sector clients. They're known as the 'Knights in Shining Armour'. We are looking for an experienced SC cleared Lead DevOps Engineer with strong MLOps experience to land ASAP.
You will be working on a project of utmost importance for the UK Government supporting the build of data solutions involving machine learning and image identification. This is completely greenfield.
Key Skills required:
AWS - Airflow / Athena / S3 / Sagemaker / Redshift / Glue etc
Kubernetes
Terraform
Python
This role will require an active SC Clearance. British Citizenship is required due to the secure nature of the project. Please contact

for more information.

TPBN1_UKTJ

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