AM
11. März 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
1. Feb. 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.
von Kenneth H
•25. Jan. 2021
Enjoyed the course and it is very interesting. Although there is no formal "prerequisite" for the course, you will get much more if you have various basic concepts in AI/ML, python, Jupyter notebook, CI/CD & Google Cloud Build, K8S & GKE, YAML, Github - especially for the labs, I really enjoy them. You might see some people saying that they hit minor problems - in fact, those minor problems are also part of the learning.
von Ronit S
•16. Feb. 2021
It was amazing course and content. No doubt that you are best content provider for the study material. you are feeling the gap between industry and university. As a learner i also faced some difficulty which you need to review it once in "QUICKLABS" cluster creation.
THANKS :)
Ronit Sagar
von RUCHITHA G
•29. Mai 2021
I learnt new concepts in machine learning through google cloud platform and i am so happy for that. Thank you Coursera for giving this opportunity to gain Google certification and i learnt a lot about google cloud, Kubeflow, and had practical experience through graded external tool.
von Rakesh R
•20. Mai 2021
Good course for overall view of Kubeflow orchestration, basics of kubeflow and containerisations and ML ops services available on GCP. Highly recommended if you wanna deploy models with best practices!
von Aditya K
•21. Feb. 2021
Loved the content, labs, and regularly intervened quiz. The only suggestion is that, for Juniper Labs, a detailed video solution would have added more value to this course.
von Chauhan S
•31. Jan. 2021
I think there should be more content about AIML can be better choice or preferable.
Otherwise all the things are okay I enjoyed this course and learn a lot.
ThankYou So much.
von Sushant K R
•15. Feb. 2021
It is a good designed course, but I would prefer to have basic knowledge of Machine learning and data science in order to understand this course even much better.
von Taylor C
•27. Aug. 2021
A few of the labs didn't work, had to contact support. Also would be good to point to documentation for various tools like kfp-cli
Otherwise good.
von Glen G
•8. Feb. 2021
Content well written. Some lab issues. Resolved but frustrating. Language processing a bit off on transcribed material from speakers.
von Al M B N
•21. Jan. 2021
The course is quite educational, yet the lab material can sometimes be confusing, especially for beginner users
von Roberto C L
•6. Jan. 2022
It's ok. There are example notebooks to understand the code. The pricing part is missing.
von Prateek G
•3. Juni 2021
It was good experience learning about the deployment process of ML application on GCP.
von surena
•13. Apr. 2022
I miss a chapter on automating monitoring models when metrics diverge
von Jorge M
•17. Juni 2021
Needs to cover the subject in greater detail
von anns
•21. Dez. 2021
It's a good tutorial for beginner
von Maria Y
•25. März 2021
Good learning experience.
von Elhassan A
•28. Feb. 2021
The labs are so important
von NISHAN K M
•4. Feb. 2021
learned something new
von Srinivasan P V
•31. Jan. 2021
Material is good
von Akshay P
•22. Feb. 2021
Good Course
von Walter H
•8. Sep. 2021
while this course teaches some useful skills, in particular how to to offload ML workloads to GCP, and introduces Kubeflow well, it doesn't go into enough depth to really let the students master the material. It doesn't help that Kubeflow (and its GCP implementation) are fundamentally fairly complicated technologies that compete with other, more mature (but less specialized) tools like Airflow. All in all, a good starting point, but don't expect to master the material - further study will be required. This course only scratches the surface.
von András B
•21. Jan. 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.
von Anirban S
•20. Apr. 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!
von Connor O
•9. Juni 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.
von Miguel A C D
•10. Feb. 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.