MLOps / Machine Learning Engineer

<h3><strong><span style="color: #000000">About us</span></strong></h3><p><span style="color: #000000">GTO Wizard is the leading poker training tool, trusted by top players and industry brands worldwide. Recognized as the #1 educational resource in poker, we’re revolutionizing poker education and providing thousands of players with the tools to elevate their game. Our global team thrives on a culture of autonomy, responsibility, and excellence, empowering talented professionals to grow and succeed as part of a fast-growing company. If you're passionate about poker, eager to shape the future of the game, and ready to move up in stakes by joining a company that values passion, growth, and innovation, join us in redefining how poker is studied and played.</span></p><h3><strong><span style="color: #000000">About the role</span></strong></h3><p><span style="color: #000000">We are looking for a talented </span><strong><span style="color: #000000">MLOps / Machine Learning Engineer</span></strong><span style="color: #000000"> to help us build the infrastructure and machine learning systems behind our </span><strong><span style="color: #000000">Universal Solver</span></strong><span style="color: #000000"> project, an ambitious initiative to build a platform that can provide high-quality strategic insights across any poker game in just a few seconds.  </span></p><p><span style="color: #000000">In this role, you will design, build, and optimize the large-scale ML infrastructure needed to train and evaluate advanced Deep Reinforcement Learning agents. You will build distributed training systems capable of scaling across large amounts of compute, from multi-GPU setups to multi-node and multi-cluster environments, as well as complex evaluation workflows, head-to-head performance systems against previous agents, dashboards, and monitoring tools that help us understand and improve model performance.</span></p><p><span style="color: #000000">You will work directly with the ML and research side of the project, helping improve the accuracy, training speed, inference performance, and compute efficiency of our deep learning models. You will also play a key role in infrastructure decisions, cost optimization, and making our research iteration loop faster, more reliable, and more scalable.</span></p><p><span style="color: #000000">If you are excited by large-scale Deep RL, distributed training systems, performance optimization, and solving complex games with AI, this role is for you.</span></p><h3><strong><span style="color: #000000">In this role you will:</span></strong></h3><ul><li><p><span style="color: #000000">Build and maintain </span><strong><span style="color: #000000">large-scale distributed training and evaluation pipelines</span></strong><span style="color: #000000"> for Deep Reinforcement Learning.</span></p></li><li><p><span style="color: #000000">Design scalable infrastructure for training, evaluation, model management, and experiment tracking.</span></p></li><li><p><span style="color: #000000">Build dashboards and monitoring tools to track training progress, model quality, compute usage, and agent performance.</span></p></li><li><p><span style="color: #000000">Optimize the training and inference performance of our Deep Learning models.</span></p></li><li><p><span style="color: #000000">Improve cost efficiency across cloud/GPU infrastructure and make high-impact infrastructure decisions.</span></p></li><li><p><span style="color: #000000">Work closely with researchers and engineers to reduce iteration time and improve model accuracy.</span></p></li><li><p><span style="color: #000000">Help design reproducible ML workflows, including data pipelines, checkpointing, evaluation, versioning, and deployment.</span></p></li><li><p><span style="color: #000000">Identify bottlenecks across the full ML stack: model architecture, data loading, GPU utilization, distributed training, inference, and infrastructure.</span></p></li><li><p><span style="color: #000000">Contribute directly to ML improvements that increase accuracy, robustness, and compute efficiency.</span></p></li></ul><h3><strong><span style="color: #000000">We’re looking for someone who:</span></strong></h3><ul><li><p><span style="color: #000000">Thrives in a fast-paced startup environment.</span></p></li><li><p><span style="color: #000000">Communicates effectively, with the ability to convey complex ideas clearly to both technical and non-technical audiences.</span></p></li><li><p><span style="color: #000000">Has sharp analytical skills to approach complex problems methodically, think creatively, and develop innovative solutions in an evolving field.</span></p></li><li><p><span style="color: #000000">Enjoys working at the intersection of ML research, infrastructure, and engineering.</span></p></li><li><p><span style="color: #000000">Takes ownership of ambiguous problems and can turn research needs into reliable, scalable systems.</span></p></li><li><p><span style="color: #000000">Cares deeply about correctness, reproducibility, performance, and cost efficiency.</span></p></li><li><p><span style="color: #000000">Is enthusiastic about mentoring and collaborating with colleagues, providing constructive feedback, and helping the team deliver high-quality, impactful outcomes.</span></p></li></ul><h3><strong><span style="color: #000000">What you bring to GTO Wizard:</span></strong></h3><ul><li><p><span style="color: #000000">Strong software engineering skills and experience building reliable production-quality systems.</span></p></li><li><p><span style="color: #000000">Hands-on experience with PyTorch or similar deep learning frameworks.</span></p></li><li><p><span style="color: #000000">Experience building infrastructure for machine learning training and evaluation.</span></p></li><li><p><span style="color: #000000">Experience with distributed training at scale across GPUs or clusters.</span></p></li><li><p><span style="color: #000000">Strong understanding of ML training workflows, model evaluation, experiment tracking, and performance monitoring.</span></p></li><li><p><span style="color: #000000">Ability to optimize systems for speed, reliability, and cost efficiency.</span></p></li><li><p><span style="color: #000000">Applied ML or ML infrastructure experience with a successful track record of delivering quality results.</span></p></li><li><p><span style="color: #000000">Exceptional communication, cross-discipline collaboration, and leadership skills.</span></p></li><li><p><span style="color: #000000">Passion for games and how intelligent systems can teach humans problem-solving skills.</span></p></li></ul><h3><strong><span style="color: #000000">Why you’ll love being part of the GTO Wizard team:</span></strong></h3><ul><li><p><strong><span style="color: #000000">Impactful Work:</span></strong><span style="color: #000000"> Be part of a company that's transforming how poker is studied and played worldwide.</span></p></li><li><p><strong><span style="color: #000000">Innovative Environment:</span></strong><span style="color: #000000"> Work with cutting-edge technology and contribute to a platform that's pushing the boundaries of poker strategy.</span></p></li><li><p><strong><span style="color: #000000">Professional Growth:</span></strong><span style="color: #000000"> We support your personal and professional development with opportunities to learn new skills and take on exciting challenges.</span></p></li><li><p><strong><span style="color: #000000">Collaborative Culture:</span></strong><span style="color: #000000"> Join a team where your ideas are valued, and you can make a real impact in a supportive, inclusive environment.</span></p></li><li><p><strong><span style="color: #000000">Flexible Work Arrangements:</span></strong><span style="color: #000000"> Enjoy the benefits of remote work while collaborating with a global team.</span></p></li><li><p><strong><span style="color: #000000">Passionate Community:</span></strong><span style="color: #000000"> Engage with a vibrant community of poker enthusiasts and professionals who are passionate about the game.</span></p></li></ul><p><br><br></p><br><br>

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