Below are 60 questions. The questions are broken up into topic sections to help with context and preparation. The real exam is not like that.
Section 1: Describe Artificial Intelligence workloads and considerations (Q1–Q10)
Q1. A city wants to automatically adjust traffic light timing based on real‑time vehicle congestion detected from sensors. Which type of AI workload is MOST appropriate?
- A. Classification
- B. Anomaly detection
- C. Prediction and optimization
- D. Computer vision
Q2. (Multi‑select) Which characteristics distinguish AI solutions from traditional software? (Choose two.)
- A. Deterministic logic paths
- B. Ability to learn from data
- C. Adaptation over time
- D. Manual rule updates only
Q3. An application analyzes medical images to identify whether a tumor is benign or malignant. Which AI workload is this?
- A. Regression
- B. Clustering
- C. Classification
- D. Forecasting
Q4. (Matching) Match the Responsible AI principle to its description.
| Principle | Description |
|---|---|
| 1. Reliability & Safety | A. Protects personal and sensitive data |
| 2. Privacy & Security | B. Ensures consistent and dependable performance |
| 3. Transparency | C. Explains how decisions are made |
Q5. Why is explainability especially important in AI systems used for healthcare decisions?
- A. It improves system performance
- B. It reduces infrastructure costs
- C. It builds trust and supports accountability
- D. It eliminates the need for human oversight
Q6. An AI model performs well in testing but fails frequently in real‑world use. Which Responsible AI principle is MOST impacted?
- A. Fairness
- B. Transparency
- C. Reliability & safety
- D. Inclusiveness
Q7. (Multi‑select) Which scenarios require human‑in‑the‑loop decision making? (Choose two.)
- A. Automated photo tagging
- B. Credit approval systems
- C. Medical diagnosis support
- D. Spam email filtering
Q8. Fill in the blank: An AI system that ensures users understand why a specific output was generated is demonstrating __________.
Q9. A retailer predicts next month’s total revenue using historical sales data. What AI workload does this represent?
- A. Classification
- B. Regression
- C. Clustering
- D. Anomaly detection
Q10. Which concern arises when an AI system unintentionally favors one demographic group over others?
- A. Reliability
- B. Bias
- C. Security
- D. Performance
Section 2: Describe fundamental principles of machine learning on Azure (Q11–Q20)
Q11. Which Azure service is designed to build, train, and deploy machine learning models at scale?
- A. Azure AI Vision
- B. Azure Machine Learning
- C. Azure OpenAI
- D. Azure AI Language
Q12. (Multi‑select) Which components are required for supervised learning? (Choose two.)
- A. Labeled data
- B. Features
- C. Unlabeled datasets
- D. Prompt templates
Q13. A model predicts the number of support tickets expected per day. Which ML task is this?
- A. Classification
- B. Regression
- C. Clustering
- D. Ranking
Q14. In machine learning, what is a feature?
- A. The predicted output
- B. An input variable
- C. A training algorithm
- D. A deployment endpoint
Q15. (Matching) Match the learning type to the scenario.
| Learning Type | Scenario |
| 1. Supervised | A. Grouping customers by behavior |
| 2. Unsupervised | B. Predicting house prices |
| 3. Reinforcement | C. Training a robot using rewards |
Q16. Which problem occurs when a model memorizes training data but performs poorly on new data?
- A. Underfitting
- B. Overfitting
- C. Bias
- D. Drift
Q17. Which metric is MOST commonly used to evaluate classification models?
- A. RMSE
- B. Accuracy
- C. MAE
- D. R²
Q18. Why is data split into training and test sets?
- A. To reduce storage requirements
- B. To improve inference speed
- C. To evaluate generalization
- D. To eliminate bias
Q19. Which Azure ML capability allows building models without writing code?
- A. Jupyter notebooks
- B. Azure ML designer
- C. REST endpoints
- D. Pipelines
Q20. Fill in the blank: Using a trained model to make predictions on new data is called __________.
Section 3: Describe features of computer vision workloads on Azure (Q21–Q30)
Q21. Which Azure service provides image analysis, OCR, and object detection?
- A. Azure AI Language
- B. Azure AI Vision
- C. Azure AI Speech
- D. Azure Machine Learning
Q22. A solution identifies people and vehicles in security footage and draws bounding boxes around them. What vision capability is required?
- A. Image classification
- B. Face recognition
- C. Object detection
- D. OCR
Q23. (Multi‑select) Which tasks are computer vision workloads? (Choose two.)
- A. Image tagging
- B. Sentiment analysis
- C. OCR
- D. Language translation
Q24. Extracting printed text from scanned invoices is an example of:
- A. Object detection
- B. OCR
- C. Image segmentation
- D. Face analysis
Q25. Which capability identifies the emotional attributes of a face in an image?
- A. OCR
- B. Face analysis
- C. Image classification
- D. Object detection
Q26. (Matching) Match the vision task to the description.
| Task | Description |
| 1. Image classification | A. Detects text in images |
| 2. OCR | B. Assigns a label to an entire image |
| 3. Object detection | C. Locates objects with bounding boxes |
Q27. Which scenario is NOT a computer vision workload?
- A. Counting people in a store
- B. Detecting defects in products
- C. Converting speech to text
- D. Reading license plates
Q28. (Multi‑select) What are common concerns with facial recognition systems? (Choose two.)
- A. Privacy
- B. Bias
- C. Cost optimization
- D. Network latency
Q29. Which Azure service supports OCR for handwritten text?
- A. Azure Machine Learning
- B. Azure AI Vision
- C. Azure OpenAI
- D. Azure AI Speech
Q30. Fill in the blank: Identifying the location and category of multiple objects in an image is called __________.
Section 4: Describe features of NLP workloads on Azure (Q31–Q40)
Q31. Which Azure service provides sentiment analysis, entity recognition, and key phrase extraction?
- A. Azure AI Vision
- B. Azure AI Language
- C. Azure OpenAI
- D. Azure AI Speech
Q32. An application determines whether customer feedback is positive, negative, or neutral. What NLP task is this?
- A. Translation
- B. Entity recognition
- C. Sentiment analysis
- D. Language modeling
Q33. (Multi‑select) Which tasks fall under NLP workloads? (Choose two.)
- A. Key phrase extraction
- B. Named entity recognition
- C. Image tagging
- D. Object detection
Q34. What is tokenization in NLP?
- A. Translating text
- B. Breaking text into smaller units
- C. Assigning sentiment scores
- D. Detecting entities
Q35. Identifying names of people, places, and organizations in text is known as:
- A. Translation
- B. Sentiment analysis
- C. Entity recognition
- D. Language detection
Q36. (Matching) Match the NLP task to the scenario.
| Task | Scenario |
| 1. Translation | A. Detects emotional tone |
| 2. Sentiment analysis | B. Converts text between languages |
| 3. Key phrase extraction | C. Summarizes main topics |
Q37. Which Azure service converts spoken language into text?
- A. Azure AI Vision
- B. Azure AI Language
- C. Azure AI Speech
- D. Azure OpenAI
Q38. (Multi‑select) Which use cases are appropriate for speech synthesis? (Choose two.)
- A. Voice assistants
- B. Image labeling
- C. Accessibility tools
- D. Object detection
Q39. Fill in the blank: Detecting the language of a document is a __________ task.
Q40. Which Azure service supports both speech‑to‑text and text‑to‑speech?
- A. Azure AI Vision
- B. Azure AI Language
- C. Azure AI Speech
- D. Azure Machine Learning
Section 5: Describe features of generative AI workloads on Azure (Q41–Q60)
Q41. What distinguishes generative AI from predictive ML?
- A. It only classifies data
- B. It creates new content
- C. It requires no training data
- D. It cannot use text input
Q42. Large language models are primarily trained on:
- A. Structured tables only
- B. Images
- C. Massive text datasets
- D. Sensor data
Q43. (Multi‑select) Which are common generative AI use cases? (Choose two.)
- A. Text summarization
- B. Image generation
- C. Fraud detection
- D. Forecasting
Q44. Which Azure service provides access to GPT‑based models?
- A. Azure AI Language
- B. Azure Machine Learning
- C. Azure OpenAI
- D. Azure AI Vision
Q45. A chatbot that answers questions using natural language is an example of:
- A. Computer vision
- B. Predictive ML
- C. Generative AI
- D. Rule‑based automation
Q46. (Matching) Match the concept to its description.
| Concept | Description |
| 1. Prompt | A. AI‑generated incorrect content |
| 2. Hallucination | B. Input provided to a model |
| 3. Grounding | C. Using trusted data sources |
Q47. What is prompt engineering?
- A. Training new models
- B. Designing effective inputs
- C. Deploying endpoints
- D. Cleaning datasets
Q48. (Multi‑select) Which Responsible AI considerations apply to generative AI? (Choose two.)
- A. Content safety
- B. Bias mitigation
- C. Image resolution
- D. Compute scaling
Q49. Which technique helps reduce hallucinations by referencing verified information?
- A. Fine‑tuning
- B. Grounding
- C. Tokenization
- D. Sampling
Q50. Fill in the blank: When a generative AI model produces confident but incorrect outputs, it is known as __________.
Q51. Which Azure platform helps manage, evaluate, and deploy generative AI solutions responsibly?
- A. Azure Machine Learning
- B. Azure AI Foundry
- C. Azure AI Vision
- D. Azure AI Language
Q52. What capability does the Azure AI Foundry model catalog provide?
- A. Access to prebuilt and foundation models
- B. Image labeling
- C. Speech transcription
- D. Data storage
Q53. (Multi‑select) Which actions support responsible generative AI deployment? (Choose two.)
- A. Human review
- B. Content filtering
- C. Unlimited model access
- D. Ignoring bias metrics
Q54 (Scenario-Based | Single Select)
A marketing team wants to generate short product descriptions automatically based on a few bullet points provided by users. The solution should generate natural-sounding text and allow control over tone (for example, professional or casual).
Which AI approach is most appropriate?
A. Image classification
B. Predictive regression modeling
C. Generative AI using a large language model
D. Rule-based text templating
Q55 (Scenario-Based | Multi-Select)
You are designing a generative AI solution using Azure OpenAI Service for internal employees. The solution will generate responses to HR-related questions.
Which Responsible AI considerations should be addressed?
(Select all that apply)
A. Data privacy and protection
B. Model transparency
C. Bias and fairness
D. Object detection accuracy
E. Content safety and filtering
Q56 (Matching)
Match each Azure service or capability to its primary use case.
| Azure Service / Capability | Use Case |
|---|---|
| 1. Azure OpenAI Service | A. Analyze sentiment in customer feedback |
| 2. Azure AI Language | B. Generate natural language text from prompts |
| 3. Azure AI Vision | C. Detect objects and extract image features |
| 4. Azure AI Speech | D. Convert spoken language into text |
Q57 (Scenario-Based | Single Select)
A developer wants to experiment with different foundation models, compare their performance, and select a model to deploy for a generative AI chatbot.
Which Azure capability best supports this requirement?
A. Azure Machine Learning pipelines
B. Azure AI Foundry model catalog
C. Azure AI Vision Studio
D. Azure AI Speech Studio
Q58 (Fill in the Blank)
In a generative AI solution, the text or instructions provided by the user to guide the model’s output is called a __________.
Q59 (Scenario-Based | Multi-Select)
An organization plans to deploy a generative AI application that summarizes internal documents. The documents may contain sensitive employee data.
Which actions help reduce risk?
(Select all that apply)
A. Apply role-based access control (RBAC)
B. Use data encryption at rest and in transit
C. Disable content filtering to improve creativity
D. Limit model access to approved users
E. Log and monitor prompt and response usage
Q60 (Scenario-Based | Single Select)
You are evaluating whether a business problem is best solved using generative AI rather than traditional machine learning.
Which scenario is the best candidate for generative AI?
A. Predicting next month’s sales total
B. Classifying emails as spam or not spam
C. Generating a draft response to a customer support request
D. Detecting fraudulent credit card transactions
Practice Exam 2 – Answer Key
(It is recommended that you review the answers after attempting the exam)
Describe AI Workloads & Considerations (Q1–Q10)
Question 1
Correct Answer: C
Explanation:
AI workloads focus on enabling machines to perceive, learn, reason, and act. Automation alone does not imply AI.
Question 2
Correct Answer: B
Explanation:
Image classification is a computer vision AI workload, not a traditional automation or rules-based system.
Question 3
Correct Answer: A
Explanation:
Fairness ensures AI systems do not introduce or reinforce bias against groups of users.
Question 4
Correct Answers: A, C
Explanation:
Reliability and safety focus on consistency, error handling, and preventing harm. Performance tuning alone is not sufficient.
Question 5
Correct Answer: D
Explanation:
Accountability ensures humans remain responsible for AI decisions and outcomes.
Question 6
Correct Answer: B
Explanation:
Transparency requires that users understand how and why AI systems behave as they do.
Question 7
Correct Answers: A, D
Explanation:
Privacy and security focus on protecting data and controlling access.
Question 8
Correct Answer: C
Explanation:
Inclusiveness ensures AI systems are usable by people of different abilities and backgrounds.
Question 9
Correct Answer: B
Explanation:
AI workloads often require training on large datasets, unlike static rule-based systems.
Question 10
Correct Answer: A
Explanation:
Predictive outcomes based on patterns is a defining feature of AI workloads.
Machine Learning Principles (Q11–Q22)
Question 11
Correct Answer: B
Explanation:
Regression predicts continuous numeric values, such as sales or temperature.
Question 12
Correct Answer: A
Explanation:
Classification predicts discrete labels (spam vs. not spam).
Question 13
Correct Answer: C
Explanation:
Clustering groups unlabeled data based on similarity.
Question 14
Correct Answer: D
Explanation:
Features are input variables; labels are the outcomes the model learns to predict.
Question 15
Correct Answer: B
Explanation:
Training data teaches the model; validation data evaluates performance.
Question 16
Correct Answer: A
Explanation:
Automated ML automatically selects algorithms and tunes hyperparameters.
Question 17
Correct Answer: C
Explanation:
Azure Machine Learning provides compute, data management, and model lifecycle tools.
Question 18
Correct Answer: B
Explanation:
Model deployment makes trained models available as web services or endpoints.
Question 19
Correct Answer: D
Explanation:
Deep learning uses multi-layer neural networks to learn complex patterns.
Question 20
Correct Answer: A
Explanation:
Transformers use attention mechanisms to process sequences efficiently.
Question 21
Correct Answer: B
Explanation:
Validation datasets help detect overfitting.
Question 22
Correct Answer: C
Explanation:
Azure ML supports versioning, monitoring, and retraining.
Computer Vision Workloads (Q23–Q32)
Question 23
Correct Answer: A
Explanation:
Image classification assigns labels to images.
Question 24
Correct Answer: B
Explanation:
Object detection identifies objects and their locations.
Question 25
Correct Answer: C
Explanation:
OCR extracts printed or handwritten text from images.
Question 26
Correct Answer: D
Explanation:
Facial detection identifies faces; analysis can infer attributes.
Question 27
Correct Answer: A
Explanation:
Azure AI Vision provides image analysis, OCR, and object detection.
Question 28
Correct Answer: B
Explanation:
Face detection identifies faces without identifying individuals.
Question 29
Correct Answer: C
Explanation:
OCR is ideal for digitizing scanned documents.
Question 30
Correct Answer: D
Explanation:
Computer vision solutions analyze visual content.
Question 31
Correct Answer: A
Explanation:
Bounding boxes are used in object detection.
Question 32
Correct Answer: B
Explanation:
Vision Studio allows testing models without writing code.
NLP Workloads (Q33–Q43)
Question 33
Correct Answer: C
Explanation:
Key phrase extraction identifies important terms in text.
Question 34
Correct Answer: A
Explanation:
Entity recognition identifies names, locations, organizations, etc.
Question 35
Correct Answer: B
Explanation:
Sentiment analysis determines emotional tone.
Question 36
Correct Answer: D
Explanation:
Language models predict the next token in a sequence.
Question 37
Correct Answer: A
Explanation:
Speech recognition converts spoken language into text.
Question 38
Correct Answer: C
Explanation:
Text-to-speech generates spoken output from text.
Question 39
Correct Answer: B
Explanation:
Translation converts text between languages.
Question 40
Correct Answer: A
Explanation:
Azure AI Language provides NLP capabilities.
Question 41
Correct Answer: C
Explanation:
Azure AI Speech handles speech-to-text and text-to-speech.
Question 42
Correct Answer: D
Explanation:
NLP workloads process and analyze human language.
Question 43
Correct Answer: B
Explanation:
Tokenization breaks text into smaller units.
Generative AI Workloads (Q44–Q60)
Question 44
Correct Answer: C
Explanation:
Generative AI creates new content rather than predicting labels.
Question 45
Correct Answer: A
Explanation:
Large Language Models are trained on massive text datasets.
Question 46
Correct Answer: B
Explanation:
Azure OpenAI provides access to generative models.
Question 47
Correct Answer: D
Explanation:
Prompt engineering shapes model output.
Question 48
Correct Answer: A
Explanation:
Generative AI is ideal for summarization and content creation.
Question 49
Correct Answer: C
Explanation:
Responsible AI mitigates hallucinations and bias.
Question 50
Correct Answer: B
Explanation:
Content filtering prevents unsafe outputs.
Question 51
Correct Answer: A
Explanation:
Azure AI Foundry centralizes model experimentation and deployment.
Question 52
Correct Answer: D
Explanation:
Model catalogs allow model discovery and comparison.
Question 53
Correct Answer: B
Explanation:
Generative AI is best for open-ended responses.
Question 54
Correct Answer: C
Explanation:
LLMs generate natural language with tone control.
Question 55
Correct Answers: A, B, C, E
Explanation:
Privacy, fairness, transparency, and content safety are critical.
Question 56
Correct Matches:
1 → B
2 → A
3 → C
4 → D
Question 57
Correct Answer: B
Explanation:
Azure AI Foundry model catalog supports model comparison.
Question 58
Correct Answer: Prompt
Explanation:
Prompts guide model behavior.
Question 59
Correct Answers: A, B, D, E
Explanation:
Security controls and monitoring reduce risk.
Question 60
Correct Answer: C
Explanation:
Generative AI excels at creating human-like text responses.
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