Machine Learning Engineer (MLOps / Production ML Engineer)

Info Dinamica Inc
2 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Intermediate

Job location

Tech stack

Automation of Tests
Continuous Integration
Information Engineering
Information Leak Prevention
DevOps
Distributed Computing Environment
Python
Machine Learning
TensorFlow
Azure
Software Engineering
Management of Software Versions
PyTorch
Kubernetes
Deployment Automation
Machine Learning Operations
Api Design
REST
Docker

Requirements

Translate data science prototypes into production-grade ML services and pipelines.- Build training and inference code with reproducibility, versioning, and automated testing.- Implement scalable model serving (online/offline), batching, and latency/throughput optimization.- Integrate model lifecycle tooling (tracking, registry, deployment automation, monitoring).- Collaborate with Data Engineering on feature pipelines and data contracts.- Own production health drift detection, performance regression, rollback strategies, and incident response.""- 5+ years software engineering with 2+ years shipping ML models to production.- Strong Python skills and experience with ML frameworks (TensorFlow/PyTorch).- Experience with containers and orchestration (Docker/Kubernetes) and API development.- Understanding of ML system design (data leakage, training-serving skew, drift).- CI/CD and DevOps practices applied to ML workloads (MLOps).""- Experience with feature stores, model registries, and model monitoring stacks.- GPU optimization and distributed training experience.- Experience with responsible AI toolkits and compliance requirements."Python, TensorFlow, PyTorch, Docker, REST APIs

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