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Learner Reviews & Feedback for MLOps (Machine Learning Operations) Fundamentals by Google Cloud

348 ratings
100 reviews

About the Course

This course introduces participants to MLOps tools and best practices for deploying, evaluating, monitoring and operating production ML systems on Google Cloud. MLOps is a discipline focused on the deployment, testing, monitoring, and automation of ML systems in production. Machine Learning Engineering professionals use tools for continuous improvement and evaluation of deployed models. They work with (or can be) Data Scientists, who develop models, to enable velocity and rigor in deploying the best performing models. This course is primarily intended for the following participants: Data Scientists looking to quickly go from machine learning prototype to production to deliver business impact. Software Engineers looking to develop Machine Learning Engineering skills. ML Engineers who want to adopt Google Cloud for their ML production projects. >>> By enrolling in this course you agree to the Qwiklabs Terms of Service as set out in the FAQ and located at: <<<...

Top reviews


Mar 11, 2021

The whole process of building the Kubeflow pipelines for MLOPs including the configuration part (what does into the Dockerfile, cloud build) has been explained fully.


Feb 1, 2021

Thank You , Coursera & Google, It was great session & learn some practical Aspects & fundamentals of ML. I hope it will help me in the future. Thank You.

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76 - 100 of 100 Reviews for MLOps (Machine Learning Operations) Fundamentals

By Serhiy P

Feb 23, 2021

Even though class was taught by instructors from Google, the quality of tech around it was not Google-like. The labs in two week have serious issues once the pre-requisite steps are complete and experimental/fun//learning part of the lab begins.

By thibault b

Feb 9, 2021

Donne une bonne vue théorique du MLOps sur GCP mais la pratique est moyenne. Il manque un réel cas d'étude pour solidifier les acquis.

By Abo Y

Jun 11, 2021

​good content, but labs tend. To fail and debugging/support is not fantastic, forums dont have so. Many posts to support Either.

By Kwodwo G

Jan 21, 2021

The Labs took a lot of the promise the course had. It was a good time overall. Learnt a lot that requires further attention.

By Efim L

Mar 10, 2021

Lab infrastructure doesn't work. For example, folders "mlops-on-gcp" was hidden. So, I can't touch labs properly :(

By Alexander R

May 26, 2021

Some of the labs works only with out of course workarounds, the course needs updating.

By Mano M

Feb 9, 2021

Good but in lastest lab on chapter3 should work with git also.

By Arnaldo M

Jan 26, 2021

The structure and sequencing of this course is not clear

By simon

Jul 21, 2021

Hard to follow

Assigment is not actually interesting

By Francisco L M

May 27, 2021

Algunos laboratorios no funcionan adecuadamente

By Abd-El-Rahman A

Jun 5, 2021

there was a lot of bugs in this course

By Holger H

Mar 29, 2021

The labs did not make any sense for me

By suppakarn w

Jul 5, 2021

The last lab has too many error

By Saeed R

Aug 26, 2021

Good material but buggy labs

By Asha Y L

Jan 29, 2021

It was gud

By Yağızhan A A

Feb 7, 2022

Videos are nice and good for learning new perspectives but there is a huge problem in this course. Labs (required to complete if you want certificate) are bugy and for example i need to wait for one lab problem to be solved if i want my certificate (which is going on for more than 2 weeks as i can see in forums). Overall, good quality videos but unexpectedly very poor technical management.

By Zach T

Feb 15, 2021

Course focuses entirely too much on Google's managed offerings, many of which are still in Beta. The course could significantly be improved by focusing on foundational knowledge such as deeper dives into containers, CI/CD processes, and should add a DataOps component which is completely skipped over.

By shweta k

Feb 1, 2021

Lectures about theory concepts were good but should have also explained hands-on part. And qwicklabs sucked. Had high expectations from this course but it turned out to be very disappointing.

By Hyunkil K

Nov 2, 2021

so duplicated, poor lab

By Imam S 0

Dec 21, 2021


By Nils B

Jan 28, 2021

Cannot complete the course because the last lab requires you to create a git fork using the qwiklab account, but there is no way to receive the verification email on the account, which results in in inability to complete the course.

Also, every lab takes 15 minutes of loading time to even start which wastes a lot of time.

By Rowen R

Jan 31, 2021

When you have issues working out instructions and need help, The Tech Support is slow getting back to you, there's too many of them messaging you asking the same question about your problems. Plus the Instructions are poorly delivered which sets in a lot of confusion.

By Sunilkumar G

Jan 21, 2021

Bad lab experience needs to give more precise information as it is taking too long to find small details and improper explanation of what is expected from the Learners. Hope that the improvements are made to ease the learning experience of future learners.

By cor

Jan 16, 2021

Certain qwiklabs are not working and response from help desk states the problem is being addressed which has been over 3 weeks ago; no status as of yet.

By Yannick P

Sep 22, 2021

You should really give simpler examples