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CT-AI Exam Dumps - ISTQB Certified Tester AI Testing Exam

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Question # 33

Pairwise testing can be used in the context of self-driving cars for controlling an explosion in the number of combinations of parameters.

Which ONE of the following options is LEAST likely to be a reason for this incredible growth of parameters?

SELECT ONE OPTION

A.

Different Road Types

B.

Different weather conditions

C.

ML model metrics to evaluate the functional performance

D.

Different features like ADAS, Lane Change Assistance etc.

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Question # 34

Which of the following is one of the reasons for data mislabelling?

A.

Lack of domain knowledge

B.

Expert knowledge

C.

Interoperability error

D.

Small datasets

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Question # 35

Which statement regarding testing transparency, explainability, or interpretability is MOST correct?

Choose ONE option (1 out of 4)

A.

Tests for explainability and transparency are comparable to exploratory testing and can be performed with little information about development

B.

Since different users have different backgrounds, interpretability testing depends on the comprehensibility of the ML algorithm

C.

Dynamic testing is one way to quantify explainability; however, each method is specific to a particular model type

D.

LIME can precisely state the decisive reason for a change in the output

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Question # 36

Which statement regarding data preparation in the ML workflow is correct?

Choose ONE option (1 out of 4)

A.

A key challenge in data transformation is the removal or correction of erroneous data.

B.

Since data preparation is time-consuming, all steps should be automated.

C.

One challenge of data gathering is obtaining high-quality data from multiple sources.

D.

Sampling is so well researched that it is no longer considered risky.

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