7 Tips To Achieve A 99% Cloud Deployment Success Rate


Extract. Transform. Read.

A newsletter from Pipeline: Your Data Engineering Resource

Hi past, present or future data professional!

Few aspects of data engineering are as shame-inducing as saying, after a failed deployment, “But it ran in my environment!”

In my first year as a data engineer I was that guy who made excuses like this and grew frustrated that I would complete a build and then struggle to push it over the finish line.

Here’s what helped me:

  • Learning the subtle but important difference between a dependency-related error and a code-oriented issue
  • Taking time to actually read documentation rather than skimming it
  • Understanding my chosen cloud platform (Google Cloud Platform)
  • Distinguishing the important bits of an error string to properly Google a mistake (both in local and cloud dev contexts)
  • Not running to my seniors for answers; StackOverflow, Medium, Reddit and platform-specific communities (like Google Community) are hive minds for solving specific errors
  • Logging status codes and outputs; you can’t fix what you can’t see
  • Creating “clean” dev environments that contain only the dependencies I need

I don’t track my deployment success rate (probably for the best given my initial failures), but I estimate that following the above advice has reduced my failure rate from 20% to between 1-5%.

None of these bullets, however, is a substitute for hands-on experience.

To step through your own deployment, enroll in my free 5-day Deploy Your First Cloud Function course.

Enroll here: https://pipe_line.ck.page/33a3ad0f36

As always, please send me any questions: zach@pipelinetode.com.

Thanks for ingesting,

-Zach

Pipeline To DE

Top data engineering writer on Medium & Senior Data Engineer in media; I use my skills as a former journalist to demystify data science/programming concepts so beginners to professionals can target, land and excel in data-driven roles.

Read more from Pipeline To DE

Extract. Transform. Read. A newsletter from Pipeline: Your Data Engineering Resource Hi past, present or future data professional! Somewhere along your professional development journey someone lied to you. They told you to crank out resumes because no one reads cover letters. This couldn’t be further from the truth as 87% of hiring managers read cover letters. Such a high read rate represents a compelling opportunity to sell your data skills and showcase a bit of personality. The problem?...

The Latest From Pipeline: Your Data Engineering Resource Hi past, present or future data professional! I hope you’ll indulge my sharing of an important career milestone; unfortunately, I’m not retiring with a gold Rolex snug on my wrist. Instead, this week marks 3 years in data engineering. I’m excited about this work-iversary because it marks a period of time in which I’ve been working in data engineering longer than my prior non-data job. If you’ve read my work you know I’ve taken an...

Extract. Transform. Read. A newsletter from Pipeline: Your Data Engineering Resource Hi past, present or future data professional! Browsing through files recently, I found 100+ old resumes I used to apply for data jobs in 2021. While data science is sold as a “good career”, the truth is it’s always been tough to break in. Those looking for jobs need to do more than ever to distinguish themselves. For anyone looking for a job you may have been taught to network with recruiters and hiring...