Arrayo
AI

MLops Engineer

Arrayo ·

Actively hiring Posted 7 months ago

**MLops Engineer (Training Scalability & Workflow Optimization)

Overview**

We are seeking an
MLops Engineer
to lead the scaling of machine learning training pipelines and ensure the robustness and efficiency of our end-to-end ML workflows. This role focuses on leveraging
Flyte
,
Kubernetes (GPU optimization)
,
Docker
, and distributed training frameworks such as
Ray
to optimize and streamline our ML infrastructure.

Responsibilities

  • Workflow Orchestration: Develop and maintain ML workflows using Flyte to manage complex ML pipelines for training, testing, and deployment.
  • Training Scalability: Architect and scale large-scale ML training systems on GPU-backed Kubernetes clusters , including auto-scaling and performance tuning for multi-node/multi-GPU workloads.
  • Distributed Computing: Implement distributed model training pipelines using frameworks like Ray for parallelization and resource efficiency.
  • Containerization: Design, build, and optimize Docker images for ML workloads with a focus on reproducibility and security.
  • Resource Optimization: Debug and optimize GPU utilization, memory, and compute bottlenecks during training and inference phases.
  • Monitoring & Maintenance: Integrate monitoring for ML jobs, track resource consumption, and enforce cost-efficient resource utilization.
  • Collaboration: Work closely with data scientists and ML engineers to productize and scale ML experiments.

Qualifications

  • Strong proficiency with Kubernetes (GPU scheduling, Helm, cluster autoscaling).
  • Hands-on experience with Flyte or similar workflow orchestration tools (Airflow, Prefect).
  • Deep knowledge of distributed ML training (e.g., PyTorch DDP, Ray, Horovod).
  • Expertise in Docker and container lifecycle management.
  • Solid understanding of GPU hardware/software stack (CUDA, NCCL).
  • Familiarity with CI/CD for ML (MLops pipelines using tools like GitHub Actions, ArgoCD).
  • Bonus: Familiarity with observability tools for ML systems (Prometheus, Grafana).

Tags & focus areas

Used for matching and alerts on DevFound
Machine Learning Data Science Mlops Pytorch Ai Fulltime
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