Resumo da vaga

MLOps / Machine Learning Engineer

Requisitos e responsabilidades

Conteúdo da vaga extraído em seções para revisão mais rápida.

In this role you will:

  • Build and maintain large-scale distributed training and evaluation pipelines for Deep Reinforcement Learning.
  • Design scalable infrastructure for training, evaluation, model management, and experiment tracking.
  • Build dashboards and monitoring tools to track training progress, model quality, compute usage, and agent performance.
  • Optimize the training and inference performance of our Deep Learning models.
  • Improve cost efficiency across cloud/GPU infrastructure and make high-impact infrastructure decisions.
  • Work closely with researchers and engineers to reduce iteration time and improve model accuracy.
  • Help design reproducible ML workflows, including data pipelines, checkpointing, evaluation, versioning, and deployment.
  • Identify bottlenecks across the full ML stack: model architecture, data loading, GPU utilization, distributed training, inference, and infrastructure.
  • Contribute directly to ML improvements that increase accuracy, robustness, and compute efficiency.

We’re looking for someone who:

  • Thrives in a fast-paced startup environment.
  • Communicates effectively, with the ability to convey complex ideas clearly to both technical and non-technical audiences.
  • Has sharp analytical skills to approach complex problems methodically, think creatively, and develop innovative solutions in an evolving field.
  • Enjoys working at the intersection of ML research, infrastructure, and engineering.
  • Takes ownership of ambiguous problems and can turn research needs into reliable, scalable systems.
  • Cares deeply about correctness, reproducibility, performance, and cost efficiency.
  • Is enthusiastic about mentoring and collaborating with colleagues, providing constructive feedback, and helping the team deliver high-quality, impactful outcomes.

What you bring to GTO Wizard:

  • Strong software engineering skills and experience building reliable production-quality systems.
  • Hands-on experience with PyTorch or similar deep learning frameworks.
  • Experience building infrastructure for machine learning training and evaluation.
  • Experience with distributed training at scale across GPUs or clusters.
  • Strong understanding of ML training workflows, model evaluation, experiment tracking, and performance monitoring.
  • Ability to optimize systems for speed, reliability, and cost efficiency.
  • Applied ML or ML infrastructure experience with a successful track record of delivering quality results.
  • Exceptional communication, cross-discipline collaboration, and leadership skills.
  • Passion for games and how intelligent systems can teach humans problem-solving skills.

Why you’ll love being part of the GTO Wizard team:

  • Impactful Work: Be part of a company that's transforming how poker is studied and played worldwide.
  • Innovative Environment: Work with cutting-edge technology and contribute to a platform that's pushing the boundaries of poker strategy.
  • Professional Growth: We support your personal and professional development with opportunities to learn new skills and take on exciting challenges.
  • Collaborative Culture: Join a team where your ideas are valued, and you can make a real impact in a supportive, inclusive environment.
  • Flexible Work Arrangements: Enjoy the benefits of remote work while collaborating with a global team.
  • Passionate Community: Engage with a vibrant community of poker enthusiasts and professionals who are passionate about the game.
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