Review patterns for implementing HA for serverless IoT and machine learning API-based solutions.
- [Instructor] This next scenario is really modern.…It's using the IoT services of AWS and machine learning…and you might think it's a little futuristic,…but I've actually built this out for a customer.…All the services that are used are serverless,…really interesting in terms of high availability as well.…So we have compute, files, data, and other, as is usual.…So for compute, we're using Lambda.…For files, we're using S3.…For data, we're using IoT.…And I'm gonna go into a little bit more detail on that…because it's I think indicative of the way…a lot of services are going to go on…not only the Amazon but the public cloud ecosystem.…
And then we have Cognito and Amazon Machine Learning.…So our HA considerations for Lambda,…we should be really familiar by this point,…we need versioning and possibly a VPC configuration…if we're gonna use VPCs.…For S3, cross-region bucket replication and VPC endpoints…if we're gonna use VPCs.…You might say, "Why am I talking about VPCs?…"I just said this is a serverless solution."…
- Understanding high availability (HA)
- Preparing for HA
- Designing for HA
- Understanding continuous deployment (CD)
- Types of verification tests used in CD
- Server mutability and CD
- Implementing CD
- Advanced CD pipeline techniques
- CD pipeline with Step Functions
Skill Level Intermediate
1. Understanding High Availability
2. Design for High Availability
HA for a big data pipeline5m 51s
3. Understanding Continuous Deployment
4. Implementing Continuous Delivery
Next steps1m 6s
- Mark as unwatched
- Mark all as unwatched
Are you sure you want to mark all the videos in this course as unwatched?
This will not affect your course history, your reports, or your certificates of completion for this course.Cancel
Take notes with your new membership!
Type in the entry box, then click Enter to save your note.
1:30Press on any video thumbnail to jump immediately to the timecode shown.
Notes are saved with you account but can also be exported as plain text, MS Word, PDF, Google Doc, or Evernote.