Machine Learning Engineer in Milton Keynes - WorkBuzz

WorkBuzz
Milton Keynes
10 months ago
Applications closed

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Experience and Skills

  1. Experience in API development and integrating ML models with backend systems.
  2. Deep understanding of CI/CD pipelines for ML, including tools like GitLab CI/CD, MLflow, Docker, and ECS.
  3. Exposure to ECS, Kubernetes, Terraform, and Infrastructure as Code (IaC).
  4. Strong knowledge of cloud security and Identity and Access Management (IAM).
  5. Knowledge of vector databases and retrieval-augmented generation (RAG).
  6. Data pipeline development experience using Airflow, Spark, or similar tools.
  7. Experience with AWS Lambda and DynamoDB Streams.

Why you'll love working at WorkBuzz

- Our culture is fast-paced and dynamic...

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