Don’t sweat the big stuff. Make it Google’s problem.
Need to interpolate new time series data values over 5 billion rows? Don’t reach for python. Make that Google’s problem and do it in BigQuery.
Need to aggregate petabytes of geospatial data across arbitrary polygons and put it on a map for analysis? Make that Google’s problem and use BQ-GIS.
Great - your map was awesome and now we need it every hour. Roll your own Airflow server? Nope. Make that Google’s problem. You see the pattern.
Geotab has been a long-time customer of Google Cloud products. They leverage the entire GCP suite to empower data scientists to efficiently ingest, process, and analyze petabytes of IoT data. One of the keys to their pace of innovation and growth has been to focus on their key competencies and partner with others to fill in the gaps. For Geotab’s data scientists this means focusing on the data and model-building and whenever possible making the processing, storage, and orchestration, well Google’s problem.
Speakers: Daniel Lewis, Ryan Lippert
Watch more:
Google Cloud Next ’20: OnAir → https://goo.gle/next2020
Subscribe to the GCP Channel → https://goo.gle/GCP
#GoogleCloudNext
DA233
product: BigQuery, Cloud Dataflow, Cloud Composer; fullname: Ryan Lippert;
Видео Don’t sweat the big stuff. Make it Google’s problem. канала Google Cloud Platform
Need to aggregate petabytes of geospatial data across arbitrary polygons and put it on a map for analysis? Make that Google’s problem and use BQ-GIS.
Great - your map was awesome and now we need it every hour. Roll your own Airflow server? Nope. Make that Google’s problem. You see the pattern.
Geotab has been a long-time customer of Google Cloud products. They leverage the entire GCP suite to empower data scientists to efficiently ingest, process, and analyze petabytes of IoT data. One of the keys to their pace of innovation and growth has been to focus on their key competencies and partner with others to fill in the gaps. For Geotab’s data scientists this means focusing on the data and model-building and whenever possible making the processing, storage, and orchestration, well Google’s problem.
Speakers: Daniel Lewis, Ryan Lippert
Watch more:
Google Cloud Next ’20: OnAir → https://goo.gle/next2020
Subscribe to the GCP Channel → https://goo.gle/GCP
#GoogleCloudNext
DA233
product: BigQuery, Cloud Dataflow, Cloud Composer; fullname: Ryan Lippert;
Видео Don’t sweat the big stuff. Make it Google’s problem. канала Google Cloud Platform
Показать
Комментарии отсутствуют
Информация о видео
15 сентября 2020 г. 21:18:02
00:36:24
Другие видео канала
Using Python on Google Cloud with Cloud RunStill Falling For You #1 ⌛Best relaxing piano, Beautiful Piano Music | City MusicExplore AnthosCopying datasets in BigQueryMarket data in the CloudRun Windows Server & SQL Server on Google CloudServerless functions in any language everywhereHow to migrate to microservices & aim for statelessBuild for G SuiteOptimizing your costs on Compute EngineUsing AI in manufacturing for increased productivityActivate real-time web experiences with Stream AnalyticsAssisted grocery experienceGetting started with Data Loss Prevention on Security Command CenterFuel your growth with retail Market InsightsHome Stream! Connecting with You!Geotab and Google CloudSept 17th Analyze ThisImprove product quality using Visual Inspection AI