In this video, preview Life Sciences API and work with BigQuery for genomics.
- [Instructor] As much as I love getting a complex data … pipeline, working properly, what I love even more, … is building an even simpler pipeline. … Simple, so long as it's functional, … is almost always better. … And there's an elegance to it that is … so important when solving these types of problems. … Google's vision for Genomics is expressed in this diagram. … And it's quite beautiful. … The idea is that three serverless services … will facilitate the research work. … The first is Google Cloud Storage. … So true data like architecture. … The processing will be handled by Google Genomics, … which is a layer of abstraction sitting on top … of the distributed compute delivered through beam … and other services. … And the most fascinating aspect to me, … is the vision for querying. … It's via my absolute favorite GCP service BigQuery. … I like to say that SQL … is the most pervasive programming language. … Some people would argue that SQL … isn't a programming language. … But I would argue, here, we're using it to solve one …
- Enterprise concerns
- Enterprise scenarios
- Setting up your organization’s account
- Managing billing
- Enterprise compute services
- Enterprise storage and database services
- Enterprise data pipelines
- GCP developer and DevOps tools
Skill Level Intermediate
Work with cloud services1m 13s
1. GCP for the Enterprise
2. Enterprise Setup and Security
3. Enterprise Compute
4. Enterprise Storage and Database
5. Enterprise Data Pipelines
6. Dev and DevOps Tools
- 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.