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MLOps Engineer

●

1 month ago

Greece
Full Time
Associate
Hybrid

Basic Information

 We are looking for a skilled MLOps Engineer to join our team and play a key role in bridging the gap between our Data Science and Infrastructure teams. You will be responsible for supporting the Data Science team in MLOps-related tasks while also helping in DevOps initiatives, including CI/CD pipeline creation, provisioning of cloud resources using tools like Terraform, and Kubernetes orchestration. You will collaborate closely with data scientists and engineers to deploy data pipelines, train machine learning models, and manage their deployment within scalable cloud environments while ensuring high performance, security, and reliability throughout the ML lifecycle. 

Responsibilities

  •  Assist in designing, implementing, and maintaining scalable MLOps pipelines on AWS using services such as SageMaker, EC2, EKS, S3, Lambda and other relevant AWS tools
  • Coordinate with our platform team to troubleshoot Kubernetes clusters (EKS) to orchestrate the deployment of machine learning models and other microservices
  • Develop and maintain CI/CD pipelines for model and application deployment, testing, and monitoring
  • Collaborate closely with Data Science, and DevOps team to streamline the model development lifecycle, from experimentation to production deployment
  • Implement security best practices, including network security, data encryption, and role-based access controls within the AWS infrastructure
  • Monitor, troubleshoot, and optimize data and ML pipelines to ensure high availability and performance
  • Set up and manage model monitoring systems for performance drift, ensuring continuous model improvement

Requirements

Amazon Web Services (AWS)
DevOps
Kubernetes
Machine Learning
Python
Terraform
  •  Bachelor’s degree in Computer Science, Engineering, or related field
  • 1+ years of hands-on experience in MLOps, DevOps, or related fields
  • Knowledge and preferable working experience in AWS services for machine learning, such as SageMaker, EKS, S3, EC2, Lambda, and others
  • Exposure to Kubernetes for container orchestration
  • Experience with Docker
  • Exposure to infrastructure-as-code tools such as Terraform or CloudFormation
  • Familiarity with CI/CD tools such as GitLab CI
  • Understanding machine learning model lifecycle
  • Familiarity with monitoring and logging solutions like Prometheus, Grafana, CloudWatch and ELK Stack
  • Understanding of networking concepts and cloud security best practices
  • Proficiency in Python and Bash, and comfortable working in Linux environments
  • Strong problem-solving and communication skills

Benefits

Bonus structure
Certifications and training
Continuous education
Free snacks
Pension/Retirement plan
Private health insurance
Team building events
Work equipment (ex. phone, laptop etc)
  •  Attractive remuneration package plus performance related reward  
  • Private health insurance  
  • Corporate pension fund  
  • Intellectually stimulating work environment 
  • Continuous personal development and international training opportunities 

Good to have

  •  Experience working with serverless architectures and event-driven processing on AWS
  • Familiarity with advanced Kubernetes concepts such as Helm 
  • Experience with Data Engineering pipelines, ETL processes, or big data platforms
  • Experience with ML frameworks like TensorFlow, PyTorch and Keras
  • Experience with ML platforms like Kubeflow and/or SageMaker
  • Experience with workflow engines like Argo Workflows and/or Airflow

Recruitment process

  •  Let’s Connect – Intro Chat with Talent Acquisition
  • Deep Dive – First Interview with Your Future Team
  • Final Connection – Final Interview
About the company

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About the company

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XM

XM

Information Technology
DevOps Engineer