ML Ops Engineer (Remote)

United States - Remote

Canibuild Au Pty Ltd

Site plan software allowing residential contractors and home builders to determine site suitability, position and price point for any build remotely.

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About Us

Canibuild automates the residential construction industry’s design, approval, and sales processes, allowing clients to answer 'Can I build this on this plot of land?' instantly. As a fast-growing SaaS platform backed by Australia’s largest hedge fund, we serve clients across Australia, New Zealand, Canada, and the US.

Job Overview

The MLOps Engineer will establish and maintain AI/ML infrastructure, ensuring models are efficiently trained, deployed, and monitored. This role focuses on automating ML workflows, optimizing AI operations, and improving model reliability. The MLOps Engineer will work closely with the ML team and IT/Engineering to streamline AI deployment at Canibuild.

Key Responsibilities

  • CI/CD for ML: Implement CI/CD pipelines for model training, testing, and deployment.
  • Model Deployment & Monitoring: Develop scalable ML infrastructure to ensure reliable AI model performance.
  • Automation & Infrastructure Optimization: Automate model retraining, versioning, and monitoring using MLflow, Kubeflow, or Airflow.
  • Cloud & Containerization: Deploy ML models on cloud platforms (AWS, Azure, GCP) and manage Kubernetes/Docker environments.
  • Data Engineering Support: Assist in optimizing data pipelines and integrating AI models with production systems.
  • Security & Compliance: Ensure AI deployments adhere to security, governance, and compliance standards.

Requirements

  • Bachelor’s/Master’s in Computer Science, AI, or related field
  • 4+ years in MLOps, AI infrastructure, or DevOps
  • Strong expertise in CI/CD tools for ML (e.g., MLflow, Kubeflow, Airflow)
  • xperience with cloud ML services (AWS SageMaker, Google Vertex AI, Azure ML)
  • Proficiency in container orchestration (Docker, Kubernetes).
  • Understanding of AI model monitoring, logging, and explainability frameworks

Benefits

  • Flexible remote work opportunities with career development opportunities
  • Engagement with a supportive and collaborative global team
  • Competitive market based salary
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* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

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Tags: Airflow AWS Azure CI/CD Computer Science Data pipelines DevOps Docker Engineering GCP Kubeflow Kubernetes Machine Learning MLFlow ML infrastructure ML models MLOps Model deployment Model training Pipelines SageMaker Security Testing Vertex AI

Perks/benefits: Career development Competitive pay

Regions: Remote/Anywhere North America
Country: United States

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