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Google Cloud Next 2019 | Things I Wish I Knew Before Building Serverless ML Solutions

Google Cloud Next 2019 | Retail Sessions

Google Cloud Next 2019 | Things I Wish I Knew Before Building Serverless ML Solutions

Building ML models for a proof-of-concept app is easy. To deploy them in a production system is hard. It becomes even more challenging when you have to keep your models fresh by retraining them every day. These challenges are faced by every team working on deploying their ML solutions. The session will demonstrate how Omni Labs is doing this process in a serverless manner. After the talk you should be able to reason about your ML models and architect serverless ML pipelines.

Speaker(s): Martin Omander, Vikram Tiwari

Session ID: SVR301

Product:BigQuery,Cloud ML Engine,Cloud Dataflow;

Citi I/O

Aster.Cloud

DotLAH!

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