At the QCon London conference, Hien Luu, Senior Engineering Manager for the Machine Learning Platform at DoorDash, discussed strategies and principles for scaling and evolving MLOps. With 85% of ML projects failing, understanding MLOps at an engineering level is crucial. Luu shared three core principles: “Dream Big, Start Small,” “1% Better Every Day,” and “Customer Obsession.” By Roland Meertens At the QCon London conference, Hien Luu, Senior Engineering Manager for the Machine Learning Platform at DoorDash, discussed strategies and principles for scaling and evolving MLOps. With 85% of ML projects failing, understanding MLOps at an engineering level is crucial. Luu shared three core principles: “Dream Big, Start Small,” “1% Better Every Day,” and “Customer Obsession.” By Roland MeertensRead More
AWS Data on EKS Provides Opinionated Data Workload Blueprints
AWS has released Data on EKS (DoEKS) an open-source project providing templates, guidance, and best practices for deploying data workloads on Amazon Elastic Kubernetes Service (EKS). While the main focus is on running Apache Spark on Amazon EKS, blueprints also exist for other data workloads such as Ray, Apache Airflow, Argo Workflows, and Kubeflow. By Matt Campbell AWS has released Data on EKS (DoEKS) an open-source project providing templates, guidance, and best practices for deploying data workloads on Amazon Elastic Kubernetes Service (EKS). While the main focus is on running Apache Spark on Amazon EKS, blueprints also exist for other data workloads such as Ray, Apache Airflow, Argo Workflows, and Kubeflow. By Matt CampbellRead More


