Ignatiuz
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MLOps Engineer
Description
About the Role We are looking for an MLOps Developer to own the model lifecycle, deployment pipelines, and operational health of this AI system. You will bridge the gap between model development and production, ensuring models are reliably trained, versioned, deployed, and monitored across diverse hardware environments. Key Responsibilities Optimize and deploy PyTorch models (detection + video classification) to TensorRT and ONNX for real-time GPU inference across both server and edge hardware. Build and maintain reproducible model training and evaluation pipelines with experiment tracking and dataset versioning Design CI/CD workflows for model validation, packaging, and rollout to remotely deployed devices. Monitor production inference pipelines GPU utilization, latency, frame throughput, and model performance drift Manage cloud storage (AWS S3) for model artifacts, video clips, and deployment assets Containerize services (Docker) and investigate Kubernetes-based orchestration for mu...