YoVDO

Putting Chaos Into Continuous Delivery to Increase Application Resiliency

Offered By: CNCF [Cloud Native Computing Foundation] via YouTube

Tags

Conference Talks Courses GitOps Courses Chaos Engineering Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore the integration of chaos engineering into continuous delivery pipelines to enhance application resiliency in this 27-minute conference talk from KubeCon + CloudNativeCon North America 2021. Learn how GitOps and chaos engineering are revolutionizing cloud-native continuous delivery practices. Discover techniques for implementing "chaos stages" in pre-production environments to assess SLO compliance. Gain insights from Juergen Etzlstorfer of Dynatrace and Karthik Satchitanand of Mayadata, maintainers of the CNCF sandbox projects Keptn and LitmusChaos, respectively. Understand how to construct pipelines that incorporate chaos experimentation, simulate real-world load, and implement quality gates to ensure resilient application deployment. Explore methods for integrating chaos tests into existing CD pipelines without rewriting them, all while adhering to GitOps principles. The presentation covers key topics such as the importance of chaos engineering, assumptions, churn, hypothesis formulation, and the use of LitmusChaos, concluding with a practical demonstration and essential takeaways.

Syllabus

Introduction
Why is chaos engineering important
Assumptions
Churn
Hypothesis
Declarative
Litmus Chaos
Presentation Overview
Project Introduction
Evaluation
Use Case
Flow
Demo
Key takeaways


Taught by

CNCF [Cloud Native Computing Foundation]

Related Courses

Building Geospatial Apps on Postgres, PostGIS, & Citus at Large Scale
Microsoft via YouTube
Unlocking the Power of ML for Your JavaScript Applications with TensorFlow.js
TensorFlow via YouTube
Managing the Reactive World with RxJava - Jake Wharton
ChariotSolutions via YouTube
What's New in Grails 2.0
ChariotSolutions via YouTube
Performance Analysis of Apache Spark and Presto in Cloud Environments
Databricks via YouTube