Data science workflows have traditionally been slow and cumbersome, relying on CPUs to load, filter, and manipulate data and train and deploy models. GPUs substantially reduce infrastructure costs and provide superior performance for end-to-end data science workflows using RAPIDS™ open source software libraries. GPU-accelerated data science is available everywhere—on the laptop, in the data center, at the edge, and in the cloud.