- A
SHAP (SHapley Additive exPlanations) values from the test predictions.
Why wrong: SHAP values provide local explanations, not global bias metrics.
- B
A re-run of the training job with a fairness constraint.
Why wrong: Training with fairness constraints addresses bias but does not detect existing bias.
- C
Pre-training bias metrics like Class Imbalance (CI) and Difference in Positive Proportions in Labels (DPPL).
Pre-training metrics identify bias in the training data that could lead to unfair models.
- D
Feature importance values after training.
Why wrong: Feature importance shows which features influence predictions but does not directly measure bias.
Quick Answer
The correct answer is pre-training bias metrics like Class Imbalance (CI) and Difference in Positive Proportions in Labels (DPPL). These metrics are computed on the training data itself to reveal whether certain demographic groups are underrepresented or labeled unfairly before any model is trained, which is exactly what SageMaker Clarify’s pre-training bias analysis measures. On the AWS Certified Machine Learning Engineer Associate MLA-C01 exam, this question tests your ability to distinguish between pre-training and post-training bias detection: pre-training metrics catch data-level bias, while post-training metrics (like difference in positive proportions in predictions) catch prediction-level bias. A common trap is confusing SHAP values or feature importance with bias metrics—SHAP explains predictions but does not directly measure fairness. Remember the memory tip: “Pre-training = data, Post-training = predictions.”
MLA-C01 ML Model Development Practice Question
This MLA-C01 practice question tests your understanding of ml model development. Read the scenario carefully and evaluate each option against the stated constraints before committing to an answer. After answering, compare your reasoning against the explanation and wrong-answer breakdown below. Once you have made your selection, read the full explanation to reinforce the concept and understand why each distractor is designed to mislead on exam day.
A machine learning team wants to detect bias in a binary classification model before deployment. They use SageMaker Clarify. Which type of bias metric should they compute to understand whether the model treats different demographic groups unfairly in predictions?
Answer choices
Why each option matters
Answer the question above first, then reveal the full breakdown to understand why each option is right or wrong.
Correct answer & explanation
Pre-training bias metrics like Class Imbalance (CI) and Difference in Positive Proportions in Labels (DPPL).
Option B is correct because pre-training bias metrics (such as class imbalance, Kullback-Leibler divergence) reveal data bias before modeling, while post-training metrics assess prediction bias. Option A is wrong because feature importance explains model behavior but not bias. Option C is wrong because SHAP values are for model interpretability, not bias metrics per se. Option D is wrong because retraining does not detect bias.
Key principle: NAT direction and interface roles matter as much as the IP address mapping. Inside/outside designation controls which traffic is translated.
Answer analysis
Option-by-option breakdown
For each option: why learners choose it and why it is or isn't the right answer here.
- ✗
SHAP (SHapley Additive exPlanations) values from the test predictions.
Why it's wrong here
SHAP values provide local explanations, not global bias metrics.
- ✗
A re-run of the training job with a fairness constraint.
Why it's wrong here
Training with fairness constraints addresses bias but does not detect existing bias.
- ✓
Pre-training bias metrics like Class Imbalance (CI) and Difference in Positive Proportions in Labels (DPPL).
Why this is correct
Pre-training metrics identify bias in the training data that could lead to unfair models.
Related concept
Static NAT maps one inside address to one outside address.
- ✗
Feature importance values after training.
Why it's wrong here
Feature importance shows which features influence predictions but does not directly measure bias.
Common exam traps
Common exam trap: NAT rules depend on direction and matching traffic
NAT is not only about the public address. The inside/outside interface roles and the ACL or rule that matches traffic are just as important.
Trap categories for this question
Command / output trap
Feature importance shows which features influence predictions but does not directly measure bias.
Detailed technical explanation
How to think about this question
NAT questions usually test address translation, overload/PAT behaviour, static mappings and whether the right traffic is being translated. Read the interface direction and address terms carefully.
KKey Concepts to Remember
- Static NAT maps one inside address to one outside address.
- PAT allows many inside hosts to share one public address using ports.
- Inside local and inside global describe the private and translated addresses.
- NAT ACLs identify traffic for translation, not always security filtering.
TExam Day Tips
- Identify inside and outside interfaces first.
- Check whether the scenario needs static NAT, dynamic NAT or PAT.
- Do not confuse NAT matching ACLs with normal packet-filtering intent.
Key takeaway
NAT direction and interface roles matter as much as the IP address mapping. Inside/outside designation controls which traffic is translated.
Real-world example
How this comes up in practice
An e-commerce site experiences heavy traffic on Black Friday and near-zero traffic during off-peak weeks. Rather than provisioning permanent large VMs, the team uses auto-scaling groups that add capacity automatically under load and reduce it overnight. Questions like this test whether you understand elasticity, availability zones, and cloud compute scaling patterns.
What to study next
Got this wrong? Here's your next step.
Review the four NAT address types (inside local, inside global, outside local, outside global), PAT port overload, and static vs dynamic NAT use cases. Then practise related MLA-C01 NAT questions on configuration and troubleshooting.
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FAQ
Questions learners often ask
What does this MLA-C01 question test?
ML Model Development — This question tests ML Model Development — Static NAT maps one inside address to one outside address..
What is the correct answer to this question?
The correct answer is: Pre-training bias metrics like Class Imbalance (CI) and Difference in Positive Proportions in Labels (DPPL). — Option B is correct because pre-training bias metrics (such as class imbalance, Kullback-Leibler divergence) reveal data bias before modeling, while post-training metrics assess prediction bias. Option A is wrong because feature importance explains model behavior but not bias. Option C is wrong because SHAP values are for model interpretability, not bias metrics per se. Option D is wrong because retraining does not detect bias.
What should I do if I get this MLA-C01 question wrong?
Review the four NAT address types (inside local, inside global, outside local, outside global), PAT port overload, and static vs dynamic NAT use cases. Then practise related MLA-C01 NAT questions on configuration and troubleshooting.
What is the key concept behind this question?
Static NAT maps one inside address to one outside address.
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Last reviewed: Jun 23, 2026
This MLA-C01 practice question is part of Courseiva's free Amazon Web Services certification practice question bank. Courseiva provides original exam-style practice questions with explanations, topic-based practice, mock exams, readiness tracking, and study analytics to help learners prepare for the MLA-C01 exam.
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