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iSQI Exam CT-AI Topic 9 Question 4 Discussion

Actual exam question for iSQI's CT-AI exam
Question #: 4
Topic #: 9
[All CT-AI Questions]

Which ONE of the following tests is MOST likely to describe a useful test to help detect different kinds of biases in ML pipeline?

SELECT ONE OPTION

Show Suggested Answer Hide Answer
Suggested Answer: B

Detecting biases in the ML pipeline involves various tests to ensure fairness and accuracy throughout the ML process.

Testing the distribution shift in the training data for inappropriate bias (A): This involves checking if there is any shift in the data distribution that could lead to bias in the model. It is an important test but not the most direct method for detecting biases.

Test the model during model evaluation for data bias (B): This is a critical stage where the model is evaluated to detect any biases in the data it was trained on. It directly addresses potential data biases in the model.

Testing the data pipeline for any sources for algorithmic bias (C): This test is crucial as it helps identify biases that may originate from the data processing and transformation stages within the pipeline. Detecting sources of algorithmic bias ensures that the model does not inherit biases from these processes.

Check the input test data for potential sample bias (D): While this is an important step, it focuses more on the input data and less on the overall data pipeline.

Hence, the most likely useful test to help detect different kinds of biases in the ML pipeline is B. Test the model during model evaluation for data bias.


ISTQB CT-AI Syllabus Section 8.3 on Testing for Algorithmic, Sample, and Inappropriate Bias discusses various tests that can be performed to detect biases at different stages of the ML pipeline.

Sample Exam Questions document, Question #32 highlights the importance of evaluating the model for biases.

Contribute your Thoughts:

Herschel
5 months ago
Well, well, well, if it isn't my old friend, algorithmic bias. Option C is the one to tame that beast, I reckon.
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Rex
5 months ago
I agree with Joesph, testing distribution shift is key to detecting biases.
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Amina
5 months ago
Option C is the way to go. Gotta love those data pipeline tests, they're the secret sauce to catching those pesky biases. Yum, yum!
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Mi
4 months ago
Absolutely, checking the data pipeline is crucial to detect algorithmic bias.
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Ronna
4 months ago
Testing the data pipeline for any sources for algorithmic bias.
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Antonio
4 months ago
Option C is the way to go. Gotta love those data pipeline tests, they're the secret sauce to catching those pesky biases. Yum, yum!
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Alesia
4 months ago
C) Testing the data pipeline for any sources for algorithmic bias.
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Lawanda
4 months ago
B) Test the model during model evaluation for data bias.
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Glendora
4 months ago
A) Testing the distribution shift in the training data for inappropriate bias.
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Emerson
5 months ago
I think option D is crucial to detect sample bias.
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Carla
5 months ago
Option D for the win! Checking the test data for sample bias is a must. Can't have a biased model if your test data is already biased, right?
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Johnna
5 months ago
I disagree, I believe option C is more important.
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Jose
5 months ago
Hmm, I'm not sure. Option A seems to focus more on the training data, which is important, but I think option C is a bit more comprehensive in addressing bias.
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Willard
4 months ago
I agree, but option C seems to cover a wider range of bias sources in the data pipeline.
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Mireya
4 months ago
I think option A is important to check the training data for bias.
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Alica
5 months ago
Option B sounds good to me. Evaluating the model for data bias is a key step in the ML pipeline.
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Joesph
5 months ago
I think option A is the most useful test.
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Quiana
5 months ago
I think option C is the most relevant here. Testing the data pipeline for algorithmic bias is crucial to ensure the model doesn't perpetuate any biases.
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India
5 months ago
I think option A is also crucial to detect distribution shift in training data.
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Valene
5 months ago
I agree, option C is important to prevent algorithmic bias.
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Dalene
5 months ago
I think checking the input test data for potential sample bias is also important.
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Corinne
5 months ago
I agree, testing the data pipeline for algorithmic bias is essential.
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