Cloud-Experte werden – mit praxisorientierten Schulungen
Sie erhalten vorübergehende Anmeldedaten für Google Cloud Platform und Amazon Web Services, um die Nutzung der Cloud direkt auf der echten Plattform zu erlernen. Individuelle 30-minütige Labs oder mehrtägige Kurse, Einsteiger- oder Expertenlevel, mit Kursleiter oder im Selbststudium – Sie haben die Wahl, wie Sie in vielfältige Themen wie maschinelles Lernen, Sicherheit, Infrastruktur und Anwendungsentwicklung eintauchen wollen.
Google Cloud Run Serverless Workshop
Twelve years ago Lily started the Pet Theory chain of veterinary clinics, and has been expanding rapidly. Now, Pet Theory is experiencing some growing pains: their appointment scheduling system is not able to handle the increased load, customers aren't receiving lab results reliably through email and text,and veteranerians are spending more time with insurance companies than with their patients. Lily wants to build a cloud-based system that scales better than the legacy solution and doesn't require lots of ongoing maintenance. The team has decided to go with serverless technology. For the labs in the GCP Serverless Workshop: Pet Theory Quest, you will read through a fictitious business scenario in each lab and assist the characters in implementing a serverless solution.
Anthos: Service Mesh
This intermediate-level quest is unique among Qwiklabs quests. These labs have been curated to give operators hands-on practice with Anthos—a new, open application modernization platform on GCP. Anthos enables you to build and manage modern hybrid applications. Tasks include: installing service mesh, collecting telemetry, and securing your microservices with service mesh policies. This quest is composed of labs targeted to teach you everything you need to know to introduce service mesh, and Anthos, into your next hybrid cloud project.
DevOps is an organizational and cultural movement that aims to increase software delivery velocity, improve service reliability, and build shared ownership among software stakeholders. In this quest you will learn how to use Google Cloud to improve the speed, stability, availability, and security of your software delivery capability. DevOps Research and Assessment has joined Google Cloud. How does your team measure up? Take this five multiple-choice question quiz and find out!
Applied Data: Blockchain
Blockchain and related technologies such as distributed ledger and distributed apps are becoming new value drivers and solution priorities in many industries. In this Quest you will gain hands-on experience with distributed ledger and the exploration of blockchain datasets in Google Cloud. This Quest brings the research and solution work of Google's Allen Day into self-paced labs for you to run and learn directly. As this Quest utilizes advanced SQL in BigQuery, we've added a SQL-in-BigQuery refresher lab at the start. The final lab is an advanced challenge-style lab in which there are elements where you are not provided the answer but must solve it for yourself.
Cloud Healthcare API
Cloud Healthcare API bridges the gap between care systems and applications built on Google Cloud. By supporting standards-based data formats and protocols of existing healthcare technologies, Cloud Healthcare API connects your data to advanced Google Cloud capabilities, including streaming data processing with Cloud Dataflow, scalable analytics with BigQuery, and machine learning with Cloud Machine Learning Engine. In this Quest you will use the Cloud Healthcare API to ingest and process data in the industry standard FHIR, HL7v2 and DICOM formats, train a TensorFlow model for prediction with FHIR data, and also gain practice with de-identification of datasets.
OK Google: Build Interactive Apps with Google Assistant
With Google Assistant expected to be part of over a billion consumer devices by the end of this year, this Quest teaches you how to build practical Google Assistant applications integrated with Google Cloud services via APIs. Example apps will use the Dialogflow conversational suite and the Actions and Cloud Functions frameworks. Over the course of 5 labs, you will build 5 different applications that explore useful and fun tools you can extend on your own. No hardware required -- these labs use the cloud-based Google Assistant simulator environment for developing and testing -- but if you do have your own device, such as a Google Home or a Google Hub, additional instructions are provided on how to deploy your apps to your own hardware.
Optimizing Your GCP Costs
This is the second Quest in a two-part series on GCP billing and cost management essentials. This Quest is most suitable for those in a Finance and/or IT related role responsible for optimizing their organization’s cloud infrastructure. Here you'll learn several ways to control and optimize your GCP costs, including setting up budgets and alerts, managing quota limits, and taking advantage of committed use discounts. In the hands-on labs, you’ll practice using various tools to control and optimize your GCP costs or to influence your technology teams to apply the cost optimization best practices.
Einführung in Qwiklabs und die Google Cloud Platform
In diesem Lab rufen Sie Qwiklabs und die Google Cloud Platform Console auf und verwenden die grundlegenden Features der GCP: Projekte, Ressourcen, IAM-Nutzer, Rollen, Berechtigungen, APIs und Cloud Shell.
Exploring Google Ngrams with Amazon EMR
This lab demonstrates how to launch an Amazon Elastic MapReduce (EMR) cluster for Big Data processing and use Hive with SQL-style queries to analyze data. You will create a Hadoop cluster using Amazon EMR which will allow to run interactive Hive queries against data stored in Amazon S3. You will use Hive to normalize the data in a more useful way, and you will run queries to analyze the data.
Introduction to AWS Identity and Access Management (IAM)
This lab shows you how to manage access and permissions to your AWS services using AWS Identity and Access Management (IAM). Practice the steps to add users to groups, manage passwords, log in with IAM-created users, and see the effects of IAM policies on access to specific services.
Virtuelle Maschine erstellen
In diesem Lab lernen Sie, wie Sie in Google Compute Engine virtuelle Maschinen erstellen. Außerdem erfahren Sie mehr über die Funktionsweise von Zonen, Regionen und Maschinentypen. Sehen Sie sich vorab dieses kurze Video an.
Building Scalable Web Applications with AWS Elastic Beanstalk
This lab demonstrates the common steps of developing a web application and deploying it to production on AWS. At the start of this lab, you will deploy a functioning web application to AWS Elastic Beanstalk and learn how to deploy applications from version control using command line tools. You will expose a scalability problem with the application, and iterate over the application so that it can seamlessly scale by externalizing server side sessions. You will verify that the issue has been solved with the second deployment. You will learn about AWS Elastic Beanstalk, AWS ElastiCache, and managing AWS resources in an AWS Elastic Beanstalk application via configuration files.
Serverless Architectures with Amazon DynamoDB and Amazon Kinesis Streams with AWS Lambda
This is a two part lab. In part one of the lab, you will create a Lambda function from a blueprint, create an Amazon Kinesis Stream, then trigger the function with data from your stream and monitor the process with Amazon CloudWatch. In part two of the lab, you will learn the basics of event-driven programming using Amazon DynamoDB, its Streams feature, and AWS Lambda. You will walk through the process of building a real-world application using AWS Triggers, which combines DynamoDB Streams and Lambda. Prerequisites: To successfully complete this lab, you should be familiar with DynamoDB and Kinesis through taking those introductory labs. Node.js and Python programming are required, although full solution code is provided. You should have at a minimum taken the Introduction to AWS Lambda lab.
Applied Machine Learning: Building Models for an Amazon Use Case
In this lab you will clean data, conduct feature engineering, compare algorithms, and get a firsthand look at how Amazon employees working with machine learning approach ML pipelines.
Hardening Default GKE Cluster Configurations
This lab demonstrates some of the security concerns of a default GKE cluster configuration and the corresponding hardening measures to prevent multiple paths of pod escape and cluster privilege escalation
Video on Demand with AWS Elemental MediaConvert
In this lab, you will utilize the AWS Elemental MediaConvert Service to convert input video into multiple output formats, combine multiple videos into one during the conversion process, add captions/watermarks to the videos, and work with ad insertion metadata.
Infrastruktur und DevOps
Anwendungen in der Cloud implementieren, bereitstellen, migrieren und pflegen
Websites und App Dev
Für Softwareentwickler, die Anwendungen in der Cloud entwickeln.
Big Data-Lösungen entwerfen, erstellen, analysieren und optimieren
Verteilte Modelle für maschinelles Lernen schreiben, die skaliert werden können.
Sicherheit, Sicherung und Wiederherstellung
Compliance-Vorschriften erfüllen und Daten, Datenanwendungen und Infrastruktur schützen.