Kubeflow on GCP培训

课程编码

kubeflowgcp

课程时长

28 小时 通常来说是4天,包括中间休息。

要求

  • An understanding of machine learning concepts.
  • Knowledge of cloud computing concepts.
  • A general understanding of containers (Docker) and orchestration (Kubernetes).
  • Some Python programming experience is helpful.
  • Experience working with a command line.

Audience

  • Data science engineers.
  • DevOps engineers interesting in machine learning model deployment.
  • Infrastructure engineers interesting in machine learning model deployment.
  • Software engineers wishing to automate the integration and deployment of machine learning features with their application.

课程概览

Kubeflow is a framework for running Machine Learning workloads on Kubernetes. TensorFlow is one of the most popular machine learning libraries. Kubernetes is an orchestration platform for managing containerized applications.

This instructor-led, live training (online or onsite) is aimed at engineers who wish to deploy Machine Learning workloads to Google Cloud Platform (GCP).

By the end of this training, participants will be able to:

  • Install and configure Kubernetes, Kubeflow and other needed software on GCP and GKE.
  • Use GKE (Kubernetes Kubernetes Engine) to simplify the work of initializing a Kubernetes cluster on GCP.
  • Create and deploy a Kubernetes pipeline for automating and managing ML models in production.
  • Train and deploy TensorFlow ML models across multiple GPUs and machines running in parallel.
  • Leverage other GCP services to extend an ML application.

Format of the Course

  • Interactive lecture and discussion.
  • Lots of exercises and practice.
  • Hands-on implementation in a live-lab environment.

Course Customization Options

  • To request a customized training for this course, please contact us to arrange.

课程大纲

Introduction

  • Kubeflow on GCK vs on-premise vs on other public cloud providers

Overview of Kubeflow Features on GCP

  • Declarative management of resources
  • GKE autoscaling for machine learning (ML) workloads
  • Secure connections to Jupyter
  • Persistent logs for debugging and troubleshooting
  • GPUs and TPUs to accelerate workloads

Overview of Environment Setup

  • Virtual machine preparation
  • Kubernetes cluster setup
  • Kubeflow installation

Deploying Kubeflow

  • Deploying  Kubeflow on GCP
  • Deploying Kubeflow across on-premises and cloud environments
  • Deploying Kubeflow on GKE
  • Setting up a custom domain on GKE

Pipelines on GCP

  • Setting up an end-to-end Kubeflow pipeline
  • Customizing Kubeflow Pipelines

Securing a Kubeflow Cluster

  • Setting up authentication and authorization
  • Using VPC service controls and private GKE

Storing, Accessing, Managing Data

  • Understanding shared filesystems and Network Attached Storage (NAS)
  • Using managed file storage services in GCE

Running an ML Training Job

  • Training an MNIST model

Administering Kubeflow

  • Logging and monitoring

Troubleshooting

Summary and Conclusion

客户评论

★★★★★
★★★★★

课程分类

相关课程

促销课程

订阅促销课程

为尊重您的隐私,我公司不会把您的邮箱地址提供给任何人。您可以享有优先权和随时取消订阅的权利。

我们的客户

is growing fast!

We are looking to expand our presence in China!

As a Business Development Manager you will:

  • expand business in China
  • recruit local talent (sales, agents, trainers, consultants)
  • recruit local trainers and consultants

We offer:

  • Artificial Intelligence and Big Data systems to support your local operation
  • high-tech automation
  • continuously upgraded course catalogue and content
  • good fun in international team

If you are interested in running a high-tech, high-quality training and consulting business.

Apply now!

该网站在其他国家/地区