Deploying TensorFlow models with tfdeploy


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Deploying TensorFlow models with tfdeploy

This talk presents tools and packages now available to the R community to test and deploy TensorFlow models at scale across services like: TensorFlow Serving, Google Cloud and RStudio Connect. This talks gives an overview on how to train a model in TensorFlow, Keras or TensorFlow Estimators, then explains how to export models with a common interface across all packages, covers testing the exported models locally and explains different deployment services available and use cases for each of them. This talk closes with a walkthrough in RStudio covering training, testing and deployment. It also briefly covers an additional deployment alternative using kerasjs and answers a few questions from the audience.

Deploying TensorFlow models with tfdeploy, Javier Luraschi, @javierluraschi

Javier Luraschi - Software Engineer
Javier is a Software Engineer with experience in technologies ranging from desktop, web, mobile and backend; to augmented reality and deep learning applications. He previously worked for Microsoft Research and SAP and holds a double degree in Mathematics and Software Engineering.


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