Back to search
Call For Referral Linkedin · Posted 16d ago

Machine Learning Ops Engineer | Remote | $90 –$140/hr

Canada

Linkedin
Continue to application Add your email once, then Caio opens the original posting.

Indexed description

About The Role

This role focuses on advancing next-generation AI systems through large-scale ML infrastructure, training optimization, and framework-level engineering. The work involves supporting cutting-edge GenAI initiatives, improving model performance, and contributing to highly scalable AI training environments.

Position: MLOps Engineer

Type: W2 | Full-Time Contingent Role

Engagement: Remnote Global | Full-time

Compensation: $90–$140/hour

Location: United States (Remote)

Role Responsibilities

  • Support AI research and engineering teams in improving ML infrastructure and training systems
  • Design advanced MLOps and ML systems tasks with accurate, structured technical solutions
  • Evaluate ML systems outputs and provide detailed technical feedback
  • Develop evaluation rubrics and frameworks for distributed systems, training pipelines, and kernel-level optimization
  • Collaborate with domain experts to maintain consistency and quality across AI training workflows
  • Contribute to improvements in large-scale model training performance and infrastructure reliability

Requirements

  • 2+ years of professional experience in ML infrastructure, MLOps, or ML systems engineering
  • Hands-on production experience with JAX and/or PyTorch at scale
  • Experience writing or optimizing GPU kernels using Pallas or Triton
  • Strong understanding of ML training systems and distributed infrastructure
  • Demonstrated career progression in engineering or AI infrastructure roles
  • Ability to commit to a full-time 40-hour/week weekday schedule
  • Strong written communication and technical documentation skills

Engagement Details

  • W2 employment engagement
  • Full-time, 40 hours/week
  • No conflicting full-time engagements permitted
  • Remote role within the United States
  • Opportunity to contribute to leading frontier AI initiatives

Application & Onboarding Process

  • Upload resume
  • AI interview: A short, 15-minute conversational session to assess background and technical expertise
  • Follow-up communication with next steps and onboarding details
Free. 20 seconds. No password. See every match in this search.

Create a free Caio profile to unlock more results and save your role and location preferences.

Unlock free search
Want help applying to roles like this? Search Caio for free. If the repetitive CV tweaking gets heavy, Daniel can help set up Caio Agent.
Ask about Agent