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Note! 1z0-1096-22 has been withdrawn. The new exam code is 1z0-1096-24

Practice Free 1z0-1096-22 Oracle Machine Learning using Autonomous Database 2022 Associate Exam Questions Answers With Explanation

We at Crack4sure are committed to giving students who are preparing for the Oracle 1z0-1096-22 Exam the most current and reliable questions . To help people study, we've made some of our Oracle Machine Learning using Autonomous Database 2022 Associate exam materials available for free to everyone. You can take the Free 1z0-1096-22 Practice Test as many times as you want. The answers to the practice questions are given, and each answer is explained.

Question # 6

In which three use cases are Oracle Machine Learning algorithms suitable?

A.

Customer segmentation

B.

Graph analytics

C.

Speech recognition

D.

Medical outcome analysis

E.

Anomaly and fraud detection

Question # 7

Which is a FALSE statement regarding Oracle Machine Learning (OML)?

A.

OML offerings need a separate data visualization tool for creating visualization.

B.

OML provides univariate and multivariate statistics.

C.

OML provides integration with open source Python and R statistical analysis functions.

D.

OML provides scalable statistical functions though OML4Py and OML4R.

Question # 8

To navigate to a specific notebook provided by another user, which is the correct workflow?

A.

Change user > Open notebook > Create project

B.

Change project > Change workspace > Open notebook

C.

Create user > Change workspace > Open notebook

D.

Select workspace > Select project > List notebooks > Open notebook

Question # 9

Which two components support in-database automatic machine learning (AutoML) functionality?

A.

OML4SQL

B.

OML4Py

C.

OML4R

D.

OML Services a

E.

OML AutoML UI

F.

Oracle Data Miner

Question # 10

Which type of machine learning algorithm is used to deal with noise in incoming data?

A.

Classification

B.

Regression

C.

Dimensionality Reduction

D.

Clustering