2018-03-04

Deploying TensorFlow models with tfdeploy

Share

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.

View Slides

Speakers

Profile picture of Javier Luraschi

Javier Luraschi

Javier is the author of “Mastering Spark with R”, pins, sparklyr, mlflow and torch. He holds a double degree in Math and Software Engineer and decades of industry experience with a focus on data analysis. Javier is currently working on a project of his own; and previously worked in RStudio, Microsoft Research and SAP.