How to Build Flexible, Portable ML Stacks with Kubeflow and Elastifile (Cloud Next '18)
Building any production-ready machine learning system involves various components, often mixing vendors, and hand-rolled solutions. Connecting and managing these services for even moderately sophisticated setups introduces huge barriers of complexity, with data management often emerging as an especially daunting concern. In this session, we will demonstrate how Kubeflow’s support portable ML pipelines integrates with Elastifile’s scalable, high-performance file services to address these challenges both on-premises and in Google Cloud. Join us and learn how to make ML on Kubernetes easy, fast, and extensible.
MLAI235
Event schedule → http://g.co/next18
Watch more Machine Learning & AI sessions here → http://bit.ly/2zGKfcg
Next ‘18 All Sessions playlist → http://bit.ly/Allsessions
Subscribe to the Google Cloud channel! → http://bit.ly/NextSub
re_ty: Publish; product: Cloud - Containers - Google Kubernetes Engine (GKE); fullname: David Aronchick; event: Google Cloud Next 2018;
Видео How to Build Flexible, Portable ML Stacks with Kubeflow and Elastifile (Cloud Next '18) канала Google Cloud Tech
MLAI235
Event schedule → http://g.co/next18
Watch more Machine Learning & AI sessions here → http://bit.ly/2zGKfcg
Next ‘18 All Sessions playlist → http://bit.ly/Allsessions
Subscribe to the Google Cloud channel! → http://bit.ly/NextSub
re_ty: Publish; product: Cloud - Containers - Google Kubernetes Engine (GKE); fullname: David Aronchick; event: Google Cloud Next 2018;
Видео How to Build Flexible, Portable ML Stacks with Kubeflow and Elastifile (Cloud Next '18) канала Google Cloud Tech
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Where Should I Run My Code? Serverless, Containers, VMs and More (Cloud Next '18)AI for Manufacturing (Machine Vision, Edge AI, Federated Learning)Data and Analytics Platform Overview and Customer Examples (Cloud Next '18)Managing Machine Learning in Production with Kubeflow and DevOps - David Aronchick, MicrosoftBigtable, BigQuery, and iCharts for ingesting and visualizing data at scale (Google Cloud Next '17)Starting with Kubernetes Engine: Developer-friendly Deployment Strategies (Cloud Next '18)Data Warehousing Migrations: Lessons from Home Depot (Cloud Next '18)VPC Deep Dive and Best Practices (Cloud Next '18)Better API Design with OpenAPI (Cloud Next '18)Machine Learning with Scikit-Learn and Xgboost on Google Cloud Platform (Cloud Next '18)CI/CD in a Serverless World (Cloud Next '18)Introduction to Cloud SQL and Kubernetes (Cloud Next '18)Google Cloud Translate API with DotNet | Google Cloud Translate API | Google.Cloud.Translation.V2Best Practices for Storage Classes, Reliability, Performance and Scalability (Cloud Next '18)Using Kubernetes, Spinnaker and Istio to Manage a Multi-cloud Environment (Cloud Next '18)30 Ways Google Sheets Can Help Your Company Uncover and Share Data Insights (Cloud Next '18)Minigo: Building a Go AI with Kubernetes and TensorFlow (Cloud Next '18)Google Cloud Platform 101 (Cloud Next '18)Flexible, Easy Data Pipelines on Google Cloud with Cloud Composer (Cloud Next '18)