AM
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.
DM
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.
By Jorge M
•Jun 17, 2021
Needs to cover the subject in greater detail
By anns
•Dec 21, 2021
It's a good tutorial for beginner
By Maria Y
•Mar 25, 2021
Good learning experience.
By Elhassan A
•Feb 28, 2021
The labs are so important
By NISHAN K M
•Feb 4, 2021
learned something new
By Srinivasan P V
•Jan 31, 2021
Material is good
By Akshay P
•Feb 22, 2021
Good Course
By Meghana M
•Sep 25, 2024
good
By András B
•Jan 21, 2021
The course gives a nice overview, but either it should be more generic and fun, or more detailed and techy but also longer. Now it feels like its trying to do both and failing at it. It is a bit too condensed and boring on the practical parts, and most of the tasks can be solved with copy paste, and somehow I don't feel that the whole course motivated me into stop copy-pasting and instead actually learn these things. Several of the Qliklab workshops seem to be buggy.
By Anirban S
•Apr 20, 2021
The content is well designed and explained. The Hands-on Lab sessions need a lot of improvement. MLOps is implemented in a really complex manner (but that is more about a comparison between GCP and other providers). But for ramping up MLOps on GCP, this course is a really good starting point. Best of Luck!
By Chima K P
•Mar 21, 2023
A good course to get started with MLOps. The reason why I think the course deserves not more than 3 stars is that it lacks the depth that is needed to aid a better understanding of the concepts and components discussed. Overall, it's a good place to start and gain intuition about MLOps.
By Connor O
•Jun 9, 2021
I took this so I could get better at Kubeflow on EKS (not Google Cloud) and it was not worth it. The Beginning is promising and the explanation of kubernetes was great, but then it quickly became not applicable. If you are using it for GCP then it may be worth while.
By Miguel A C D
•Feb 10, 2021
The labs are too basic, I expected to view how to use tools such as tensorboard with kfp, with the intention to track progress of the models. But more relevant is the lack of examples on how to train/hyperparameter-tunning using a kfp alone avoiding AI jobs tool.
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 A 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 Ning L
•Jan 5, 2023
Good intro level course overall but lots of the hands on labs are out of date
By Mano
•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