ML / MLOps Engineer
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 the Data Science teams to harden experimental code and take it from a sandbox environment into production by applying engineering best practices
Design, implement and own scalable ML infrastructure and deployment pipelines capable of handling high-volume model training and inference workloads
Build and maintain automated CI/CD pipelines for ML model development, testing, validation, and deployment, integrating with customer platforms and Databricks environments
Define, monitor and continuously improve KPIs covering model performance, data quality, system reliability, deployment velocity, and operational efficiency
Establish and implement MLOps best practices including experiment tracking, model versioning, feature stores, and governance (e.g. MLflow, Unity Catalog)
Optimize ML infrastructure for cost efficiency and performance through automated scaling and resource management
Requirements:
Master’s degree in computer science, Machine Learning, Data Engineering, or a related field
2+ years of professional experience in ML Engineering, MLOps, or DevOps with a strong focus on production ML systems
Strong Python programming skills and proficiency with ML frameworks (PyTorch, TensorFlow, scikit-learn)
Experience across the full ML lifecycle: experiment tracking (e.g. MLFlow), model deployment, and production operations
Hands-on experience with ML workflow orchestration and pipeline automation
Experience deploying and operating ML systems preferably on cloud platforms (Azure preferred; AWS or GCP also valued)
Strong problem-solving skills and ability to work independently in fast-paced environments
Fluency in English, both written and spoken
Nice to have:
PhD degree in Computer Science, Data Engineering, AI, or a related field (completed or in progress)
Hands-on experience deploying and managing ML models in Databricks environments
Experience with containerized ML workloads using Docker and Kubernetes
Experience implementing model monitoring, observability, and performance tracking
Knowledge of feature stores and model versioning best practices

Grape Up
Hi, we are Grape Up! Our company provides technology consulting and modern software development services for mission-critical products. We specialize in delivering innovative solutions powered by AI and cloud.
ML / MLOps Engineer
ML / MLOps Engineer