This blog post is co-written by Jonathan Lee, Nelson Leung, Paul Min, and Troy Squillaci from Intel. 
In Part 1 of this post, we discussed how Intel®3DAT collaborated with AWS Machine Learning Professional Services (MLPS) to build a scalable AI SaaS application. 3DAT uses computer vision and AI to recognize, track, and analyze over 1,000 biomechanics data points from standard video. It allows customers to create rich and powerful biomechanics-driven products, such as web and mobile applications with detailed performance data and three-dimensional visualizations.
In Part 2 of this post, we dive deeper into each stage of the architecture. We explore the AWS services used to meet the 3DAT design requirements, including Amazon Kinesis Data Streams and Amazon Elastic Kubernetes Service (Amazon EKS), in order to scalably deploy the necessary pose estimation models for this software as a service (SaaS) application.
Architecture overview
The primary goal of the MLPS team

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