ML / MLOps Engineer
⚲ Kraków, Wrocław, Białystok
18 000 - 25 000 PLN netto (B2B) | 15 000 - 21 000 PLN brutto (UoP)
Wymagania
- AWS Sagemaker
- PyTorch or TensorFlow
- Databricks
- MLflow
- SQL
- Python
Opis stanowiska
At Grape Up, we transform businesses by unlocking the potential of AI and data through innovative software solutions.
We partner with industry leaders in the automotive and aviation to build sophisticated Data & Analytics platforms that support production machine learning and AI use cases. Our solutions provide comprehensive capabilities spanning data storage, management, advanced analytics, machine learning, enabling enterprises to accelerate innovation and make trusted, data-driven decisions.
Responsibilities
• Partner with Data Science teams to productionize models and work across the ML lifecycle – from experimentation and training to deployment, monitoring, and continuous improvement
• Design and implement scalable ML infrastructure, with the opportunity to take ownership of architecture and deployment decisions
• Build and maintain CI/CD pipelines for model development, testing, and deployment on Databricks or AWS SageMaker
• Establish MLOps best practices: experiment tracking, model versioning, feature stores, and governance (MLflow, Unity Catalog, or SageMaker ecosystem)
• Monitor and optimize ML infrastructure for performance, cost efficiency, and reliability
• Work on real-world ML systems running in production – not just experimental models
Requirements
• Master’s degree in computer science, Machine Learning, Data Engineering, or a related field
• 3+ years of professional experience in ML Engineering, MLOps, or DevOps, with hands-on exposure to production ML systems
• Strong Python programming skills and proficiency with ML frameworks (PyTorch, TensorFlow, scikit-learn)
• Experience with key parts of the ML lifecycle: experiment tracking (e.g. MLFlow), workflow orchestration, model deployment, and production operations
• Hands-on experience with Databricks or AWS SageMaker, or strong willingness to deepen expertise in one of these platforms
• Experience deploying and operating ML systems preferably on cloud platforms (Azure or AWS)
• Experience with model monitoring, observability, and performance tracking
• Strong problem-solving skills and ability to work independently in fast-paced environments
• Fluency in English and Polish both written and spoken
Nice to have
• PhD degree in Computer Science, Data Engineering, AI, or a related field (completed or in progress)
• Experience with containerized ML workloads using Docker and Kubernetes
• Experience with infrastructure-as-code (Terraform, CloudFormation, or similar)
Benefits of joining Grape Up
• Non-corporate work environment among experienced engineers
• Individual growth & development plan supported by cyclical feedback sessions
• Access to knowledge platforms (e.g. Pluralsight)
• Equipment of your choice
• Financing of conferences, external trainings, and certifications
• Language lessons (English, German and Polish for foreigners)
• LuxMed private medical care
• Weekly Lunch & Learn where we meet up in the office, lunch together, and share our knowledge
• Employee referral program
• Rewards for the success of the month and year awarded by our employees
• Special rewards for your years with us (G-Man)
• Integration activities
We partner with industry leaders in the automotive and aviation to build sophisticated Data & Analytics platforms that support production machine learning and AI use cases. Our solutions provide comprehensive capabilities spanning data storage, management, advanced analytics, machine learning, enabling enterprises to accelerate innovation and make trusted, data-driven decisions.
Responsibilities
• Partner with Data Science teams to productionize models and work across the ML lifecycle – from experimentation and training to deployment, monitoring, and continuous improvement
• Design and implement scalable ML infrastructure, with the opportunity to take ownership of architecture and deployment decisions
• Build and maintain CI/CD pipelines for model development, testing, and deployment on Databricks or AWS SageMaker
• Establish MLOps best practices: experiment tracking, model versioning, feature stores, and governance (MLflow, Unity Catalog, or SageMaker ecosystem)
• Monitor and optimize ML infrastructure for performance, cost efficiency, and reliability
• Work on real-world ML systems running in production – not just experimental models
Requirements
• Master’s degree in computer science, Machine Learning, Data Engineering, or a related field
• 3+ years of professional experience in ML Engineering, MLOps, or DevOps, with hands-on exposure to production ML systems
• Strong Python programming skills and proficiency with ML frameworks (PyTorch, TensorFlow, scikit-learn)
• Experience with key parts of the ML lifecycle: experiment tracking (e.g. MLFlow), workflow orchestration, model deployment, and production operations
• Hands-on experience with Databricks or AWS SageMaker, or strong willingness to deepen expertise in one of these platforms
• Experience deploying and operating ML systems preferably on cloud platforms (Azure or AWS)
• Experience with model monitoring, observability, and performance tracking
• Strong problem-solving skills and ability to work independently in fast-paced environments
• Fluency in English and Polish both written and spoken
Nice to have
• PhD degree in Computer Science, Data Engineering, AI, or a related field (completed or in progress)
• Experience with containerized ML workloads using Docker and Kubernetes
• Experience with infrastructure-as-code (Terraform, CloudFormation, or similar)
Benefits of joining Grape Up
• Non-corporate work environment among experienced engineers
• Individual growth & development plan supported by cyclical feedback sessions
• Access to knowledge platforms (e.g. Pluralsight)
• Equipment of your choice
• Financing of conferences, external trainings, and certifications
• Language lessons (English, German and Polish for foreigners)
• LuxMed private medical care
• Weekly Lunch & Learn where we meet up in the office, lunch together, and share our knowledge
• Employee referral program
• Rewards for the success of the month and year awarded by our employees
• Special rewards for your years with us (G-Man)
• Integration activities
🔍 Dekoder Ogłoszenia
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opportunity to take ownership of architecture and deployment decisions
Możesz mieć wpływ na architekturę i decyzje wdrożeniowe, ale niekoniecznie będziesz mieć pełną autonomię.
🟡
work across the ML lifecycle – from experimentation and training to deployment, monitoring, and continuous improvement
Oczekuje się od Ciebie szerokiego zakresu obowiązków obejmującego cały cykl życia modelu uczenia maszynowego.
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establish MLOps best practices
Może oznaczać wdrażanie istniejących najlepszych praktyk lub ich tworzenie od podstaw w zależności od dojrzałości procesów w firmie.
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partner with Data Science teams
Będziesz ściśle współpracować z zespołami Data Science, co może oznaczać konieczność tłumaczenia ich potrzeb na język techniczny i odwrotnie.
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accelerate innovation
Firma chce szybko wprowadzać nowe rozwiązania, co może wiązać się z presją czasu i koniecznością szybkiego dostarczania rezultatów.