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Senior ML Platform Engineer Jobs (On-site work)

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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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Until further notice
Explore the critical and growing field of Senior ML Platform Engineer jobs, where specialized software engineering meets the operational demands of artificial intelligence. A Senior ML Platform Engineer is a foundational architect who builds, scales, and maintains the robust infrastructure that allows data scientists and machine learning engineers to develop, deploy, and monitor models efficiently and reliably. This role is less about creating individual algorithms and more about constructing the production-grade platforms, tools, and automated pipelines that empower entire AI organizations. Professionals in these positions act as force multipliers, enabling faster experimentation, consistent deployment, and scalable inference. Typical responsibilities center on the full lifecycle of machine learning operations, or MLOps. This includes designing and implementing cloud-native ML infrastructure using services from providers like AWS, GCP, or Azure, often managed with infrastructure-as-code tools such as Terraform. A core duty is creating and maintaining the essential platforms for the ML workflow: experiment tracking systems, model registries, feature stores, and centralized metadata repositories. Engineers in this role develop end-to-end CI/CD pipelines specifically tailored for ML models, ensuring rigorous testing, version control, and seamless promotion from development to production. They build and optimize both real-time and batch inference serving systems, often containerized with Docker and orchestrated with Kubernetes. Furthermore, they implement comprehensive observability frameworks to monitor model performance, detect data drift, and trigger alerts for accuracy degradation, ensuring models remain healthy and effective post-deployment. The required skill set is a hybrid of advanced software engineering, cloud expertise, and a deep understanding of ML workflows. Proficiency in Python is paramount, alongside experience in building distributed systems and APIs. Hands-on knowledge of MLOps tools like MLflow, Kubeflow, or Weights & Biases is standard, as is expertise in data pipeline frameworks like Apache Airflow. A strong grasp of data engineering principles is necessary to interface effectively with data lakes and streaming platforms. Crucially, Senior ML Platform Engineers must possess outstanding cross-functional collaboration skills to partner with data science and product teams, translating research needs into stable, scalable platform capabilities. They are proactive evaluators of emerging technologies, constantly seeking to enhance platform efficiency and reliability. For those passionate about building the foundational systems that power the AI revolution, Senior ML Platform Engineer jobs offer a challenging and impactful career path at the intersection of infrastructure and innovation.

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