EX267

Practice EX267 Exam

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Latest EX267 Exam Dumps Questions

The dumps for EX267 exam was last updated on Jan 02,2026 .

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Question#1

What happens when idle culling is triggered?

A. Notebook pods are stopped
B. Notebooks are deleted
C. User sessions are paused
D. JupyterHub restarts

Explanation:
When idle culling is triggered, notebook pods are stopped to free up compute resources, but the notebooks themselves are not deleted.

Question#2

How can you list all workbench resources in the openshift-ai namespace?

A. oc get pods -n openshift-ai
B. oc get notebooks -n openshift-ai
C. oc describe ai -n openshift-ai
D. oc get deployments -n openshift-ai

Explanation:
oc get notebooks -n openshift-ai lists all workbench instances deployed in the openshift-ai namespace.

Question#3

How do you merge changes from one branch into another?

A. git merge <branch>
B. git sync <branch>
C. git combine <branch>
D. git pull <branch>

Explanation:
git merge <branch> incorporates changes from the specified branch into the current branch. It combines the commit histories and updates files accordingly. Merging is commonly used to integrate feature branches into the main branch.

Question#4

Which interface provides a more flexible and extensible environment than Jupyter notebooks?

A. JupyterHub
B. RStudio
C. Jupyter Console
D. JupyterLab

Explanation:
JupyterLab offers a modular and extensible interface that enhances Jupyter notebook functionality with additional tools and flexibility.

Question#5

Which two techniques allow processing datasets too large to fit into memory?

A. Data streaming
B. Data chunking
C. Model pruning
D. Gradient clipping

Explanation:
Data streaming and chunking process large datasets in smaller parts that fit into memory. This approach is efficient for handling large-scale data without overloading system resources.

Exam Code: EX267         Q & A: 300 Q&As         Updated:  Jan 02,2026

 

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