AWS MLOps Engineer

Spectrum IT Recruitment
London, United Kingdom
Last month
Applications closed

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We are looking for a skilled AWS MLOps Engineer to help deploy, automate, and manage production-grade machine learning solutions within our clients AWS environment. This is a great opportunity for a MLOps Engineer to become a vital part on a new data team.

This is a hybrid role with the expectation to be in the London office 1-2 times per week.

Key Responsibilities

Deploy ML models as real-time endpoints using Amazon SageMaker

* Build and manage batch inference pipelines

* Implement CI/CD workflows for ML using Git-based processes

* Containerize applications using Docker

* Monitor model performance, data drift, and system health using CloudWatch

* Automate data pipelines and feature workflows using Python & SQL

* Ensure secure access and governance using AWS IAM and best practices

Core AWS Stack

Amazon SageMaker | Amazon S3 | Amazon Redshift | AWS Lambda | Amazon CloudWatch | AWS IAM

What We're Looking For

✔ Strong hands-on experience with AWS ML infrastructure

✔ Experience deploying and monitoring ML models in production

✔ Proficiency in Python and SQL

✔ Knowledge of Docker and CI/CD pipelines

✔ Experience with Infrastructure-as-Code (CloudFormation preferred)

This role focuses on transforming machine learning from experimentation into secure, scalable, production-ready systems.

Spectrum IT Recruitment (South) Limited is acting as an Employment Agency in relation to this vacancy

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