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ML Platform Engineer Jobs

8 Job Offers

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ML Platform Engineer
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Join Duetto as an ML Platform Engineer to build and scale AWS-native machine learning infrastructure. You will develop reusable tooling for the full ML lifecycle, supporting thousands of hotel-specific models. This role requires strong Python, AWS (SageMaker, EKS), and Kubernetes skills, plus exp...
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United States
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Not provided
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Duetto
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Sr. Staff ML Platform Engineer
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Lead the development of a cutting-edge ML platform at EarnIn in Mountain View. This hands-on leadership role requires 8+ years of experience, expertise in Python, TensorFlow/PyTorch, and cloud platforms like AWS SageMaker. You will design the full ML lifecycle tooling, mentor a talented team, and...
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United States , Mountain View
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360000.00 - 440000.00 USD / Year
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EarnIn
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Senior Platform Engineer, ML Data Systems
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Join Khan Academy as a Senior Platform Engineer for ML Data Systems. Design and deploy scalable dataset management frameworks using Go, Python, and Airflow on GCP. Ensure clean, representative data for AI tutoring by collaborating with engineering and labeling teams. This remote-first role offers...
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United States , Mountain View
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137871.00 - 172339.00 USD / Year
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Khan Academy
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Senior ML Platform Engineer
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Join WHOOP in Boston as a Senior ML Platform Engineer. You will scale our ML infrastructure and build robust MLOps platforms on AWS. This role requires 5+ years of experience in Python, cloud-native services, and tools like MLflow and Kubernetes. Your work will directly empower our Data Science t...
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United States , Boston
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150000.00 - 210000.00 USD / Year
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Whoop
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Site Reliability Engineer SRE – ML platform
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Join our team in Sunnyvale as a Site Reliability Engineer for our ML platform. You will design AWS cloud solutions and build MLOps pipelines using Kubernetes, Docker, and Python. This role involves deploying ML models and collaborating with data scientists, requiring strong expertise in Kubeflow,...
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United States , Sunnyvale
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Thirdeye Data
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Senior MLOps Engineer, ML Platform
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Join our ML Platform Team in Berlin as a Senior MLOps Engineer. Design scalable systems to deploy ML/AI algorithms into production, using Python and MLOps best practices. Enjoy a flexible, global work policy, a personal growth budget, and team events. Help us reduce time-to-market and operational...
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Germany , Berlin
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GetYourGuide
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Sr. Engineer, ML Platform
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Join a leading delivery platform in London as a Senior ML Platform Engineer. Design and build scalable infrastructure for traditional and generative AI models. Utilize Python, MLOps, and cloud services (AWS/GCP) to empower data science teams. Drive innovation with cutting-edge genAI technologies ...
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United Kingdom , London
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Delivery Hero
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Senior Staff Data Engineer- ML & AI Platform
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Lead the evolution of our ML & AI Platform in Amsterdam. Architect scalable solutions for both traditional ML and cutting-edge GenAI, including LLMs and RAG. Leverage 10+ years in Data Engineering and MLOps to build robust infrastructure and mentor senior engineers. Enjoy a competitive package wi...
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Netherlands , Amsterdam
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Adevinta
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Explore the world of ML Platform Engineer jobs, a critical and growing profession at the intersection of software engineering, cloud infrastructure, and machine learning operations (MLOps). ML Platform Engineers are the architects and builders of the foundational systems that enable data scientists and machine learning practitioners to develop, deploy, and maintain models at scale. They focus on creating robust, automated, and efficient platforms that abstract away infrastructure complexity, allowing AI/ML teams to focus on innovation rather than operational overhead. Professionals in this role are responsible for designing, implementing, and maintaining the entire machine learning lifecycle infrastructure. This typically involves architecting cloud-native solutions on platforms like AWS, GCP, or Azure using infrastructure-as-code principles. A core duty is building and managing MLOps frameworks that standardize model development, experimentation, training, and deployment. They develop CI/CD pipelines specifically tailored for ML models, ensuring rigorous testing, version control, and reproducible workflows. ML Platform Engineers also create and maintain core services such as feature stores, model registries, and experiment tracking systems using tools like MLflow or Kubeflow. They build scalable serving infrastructure for both real-time and batch inference, often containerizing models with Docker and orchestrating them with Kubernetes. Furthermore, they implement comprehensive monitoring and observability tooling to track model performance, detect data drift, and trigger alerts for accuracy degradation, ensuring models remain healthy and effective in production. The typical skill set for ML Platform Engineer jobs is multifaceted. Strong software engineering fundamentals are paramount, with proficiency in Python being almost universal. Deep expertise in cloud services, containerization, and orchestration (Docker, Kubernetes) is essential. Practical experience with MLOps tools and frameworks for workflow orchestration (e.g., Airflow, Prefect, Argo) and model management is required. A solid understanding of machine learning concepts and the data science workflow is necessary to build empathetic and effective platforms for ML practitioners. Skills in building and maintaining APIs, data pipelines, and storage systems are also common. Importantly, successful candidates possess strong cross-functional collaboration skills to partner with data science and product teams, translating business needs into technical specifications. They are problem-solvers focused on automation, reliability, scalability, and cost-efficiency, ultimately empowering organizations to harness the full potential of their machine learning initiatives through a world-class internal platform.

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