Cyber Monday 2024! Hurry Up, Grab the Special Discount - Save 25% - Ends In 00:00:00 Coupon code: SAVE25
Welcome to Pass4Success

- Free Preparation Discussions

Microsoft Exam AI-900 Topic 4 Question 71 Discussion

Actual exam question for Microsoft's AI-900 exam
Question #: 71
Topic #: 4
[All AI-900 Questions]

You plan to use Azure Machine Learning Studio and automated machine learning (automated ML) to build and train a model What should you create first?

Show Suggested Answer Hide Answer
Suggested Answer: B

Contribute your Thoughts:

Kiley
3 months ago
I believe a registered dataset is important, but setting up the workspace should come first for overall project management.
upvoted 0 times
...
Marge
3 months ago
But don't we need a registered dataset to start training the model?
upvoted 0 times
...
Nieves
3 months ago
B) a Machine Learning workspace, definitely. You need that foundational environment set up first before you can start doing anything else with automated ML. Easy peasy!
upvoted 0 times
...
Destiny
3 months ago
A) a Jupyter notebook? Really? I thought that was more for manual model building, not automated ML. Seems like an odd choice here.
upvoted 0 times
...
Hollis
3 months ago
Hmm, I'm not sure. C) a registered dataset might be the best choice to begin with, so you have the data ready to feed into the automated ML process.
upvoted 0 times
Glen
3 months ago
Once we have the dataset registered, we can move on to building and training the model.
upvoted 0 times
...
Dierdre
3 months ago
I agree, having the data ready is important for the automated ML process.
upvoted 0 times
...
Mireya
3 months ago
I think C) a registered dataset is a good starting point.
upvoted 0 times
...
...
Yasuko
4 months ago
I agree with Kris, a workspace is essential for organizing our project.
upvoted 0 times
...
Kris
4 months ago
I think we should create a Machine Learning workspace first.
upvoted 0 times
...
Colton
4 months ago
D) a Machine Learning designer pipeline sounds like the way to go. That's where I'd start to build and train the model, right?
upvoted 0 times
Rodolfo
3 months ago
That's correct! The pipeline is where you will build and train the model.
upvoted 0 times
...
Jettie
4 months ago
After that, you can create a Machine Learning designer pipeline.
upvoted 0 times
...
Mariko
4 months ago
Yes, you should create a Machine Learning workspace first.
upvoted 0 times
...
...
Kanisha
4 months ago
Yes, we need both a workspace and a dataset, but the workspace should come first for overall project management.
upvoted 0 times
...
Carin
4 months ago
But don't we also need to create a registered dataset to train our model?
upvoted 0 times
...
Sean
4 months ago
I agree with Nidia, a workspace is essential for organizing our project.
upvoted 0 times
...
Gerri
4 months ago
I think the correct answer is B) a Machine Learning workspace. It seems like the most logical first step to set up the environment for automated ML.
upvoted 0 times
Narcisa
4 months ago
Finally, we can use automated ML to find the best model for our dataset.
upvoted 0 times
...
Felicidad
4 months ago
After that, we can explore different models and algorithms to train our data.
upvoted 0 times
...
Margot
4 months ago
Once the workspace is created, we can start importing and preparing our data.
upvoted 0 times
...
Tammara
4 months ago
I agree, setting up the workspace is essential for using Azure Machine Learning Studio.
upvoted 0 times
...
...
Nidia
4 months ago
I think we should create a Machine Learning workspace first.
upvoted 0 times
...

Save Cancel
az-700  pass4success  az-104  200-301  200-201  cissp  350-401  350-201  350-501  350-601  350-801  350-901  az-720  az-305  pl-300  

Warning: Cannot modify header information - headers already sent by (output started at /pass.php:70) in /pass.php on line 77