MLOps Engineer (AWS, PySpark, SageMaker)
Who are we?
Lumicode Sp. z o.o. is part of the Pentacomp Group, a provider of IT solutions and professional IT services for large enterprises and the public sector.
At Pentacomp, we create IT solutions that combine innovation with years of experience — and we have quite a lot of it. We have been operating on the market for nearly 30 years and have successfully delivered numerous projects
Project Details
Long-term B2B cooperation
Remote work model
International environment and cross-functional teams
Opportunity to work on large-scale AI and Machine Learning initiatives
Influence on architecture, tooling, and engineering best practices
About the Project
As a Data / MLOps Engineer, you will play a key role in designing, building, and optimizing data platforms and Machine Learning infrastructure. You will work closely with Data Scientists, helping bring models from notebooks into production while ensuring scalability, reliability, monitoring, and reproducibility across the entire ML lifecycle.
This role combines Data Engineering, Cloud Engineering, and MLOps, making it ideal for someone who enjoys working across multiple layers of the ML ecosystem.
Key Responsibilities
Design, build, and maintain end-to-end MLOps platforms and workflows
Develop automated model training, deployment, and versioning processes
Build and optimize large-scale data ingestion and processing pipelines using Spark and PySpark
Deploy and manage ML workloads on AWS, including SageMaker-based solutions
Implement and maintain CI/CD and Continuous Training (CT) pipelines
Monitor model performance, data quality, system reliability, and model drift
Collaborate closely with Data Scientists to productionize ML models
Implement infrastructure as code and support scalable cloud environments
Create and maintain technical documentation and architectural decisions
Required Skills
Solid experience in Data Engineering, MLOps, or Machine Learning Engineering
Strong Python and PySpark skills
Hands-on experience building and maintaining large-scale data pipelines
Practical experience with Amazon SageMaker and production ML deployments
Strong knowledge of Apache Spark
Experience working with AWS cloud services
Good understanding of CI/CD practices and deployment automation
Ability to translate Data Science prototypes into production-ready solutions
Understanding of different Machine Learning models, their strengths, limitations, and monitoring approaches
Strong SQL skills
Nice to Have
Experience with Feature Stores, experiment tracking, or model registries
Knowledge of AWS CDK, Terraform, or CloudFormation
Experience with PyTorch
Familiarity with observability and monitoring solutions for data and ML platforms
Experience working in Agile environments
MLOps Engineer (AWS, PySpark, SageMaker)
MLOps Engineer (AWS, PySpark, SageMaker)