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AIF-C01 AWS Certified AI Practitioner Exam Question and Answers

Question # 4

A company wants to create an application by using Amazon Bedrock. The company has a limited budget and prefers flexibility without long-term commitment.

Which Amazon Bedrock pricing model meets these requirements?

A.

On-Demand

B.

Model customization

C.

Provisioned Throughput

D.

Spot Instance

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Question # 5

A company is building an ML model to analyze archived data. The company must perform inference on large datasets that are multiple GBs in size. The company does not need to access the model predictions immediately.

Which Amazon SageMaker inference option will meet these requirements?

A.

Batch transform

B.

Real-time inference

C.

Serverless inference

D.

Asynchronous inference

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Question # 6

A company is using Amazon Bedrock Agents to build an application to automate business workflows.

A.

To invoke foundation models (FMs) to process visual, audio, and text inputs

B.

To enhance foundation models (FMs) with a prompting strategy

C.

To provide users with full control of querying external data sources and APIs

D.

To evaluate user inputs and orchestrate actions for multiple tasks

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Question # 7

A company needs to train an ML model to classify images of different types of animals. The company has a large dataset of labeled images and will not label more data. Which type of learning should the company use to train the model?

A.

Supervised learning.

B.

Unsupervised learning.

C.

Reinforcement learning.

D.

Active learning.

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Question # 8

A company uses Amazon SageMaker for its ML pipeline in a production environment. The company has large input data sizes up to 1 GB and processing times up to 1 hour. The company needs near real-time latency.

Which SageMaker inference option meets these requirements?

A.

Real-time inference

B.

Serverless inference

C.

Asynchronous inference

D.

Batch transform

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Question # 9

A company has documents that are missing some words because of a database error. The company wants to build an ML model that can suggest potential words to fill in the missing text.

Which type of model meets this requirement?

A.

Topic modeling

B.

Clustering models

C.

Prescriptive ML models

D.

BERT-based models

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Question # 10

A bank is fine-tuning a large language model (LLM) on Amazon Bedrock to assist customers with questions about their loans. The bank wants to ensure that the model does not reveal any private customer data.

Which solution meets these requirements?

A.

Use Amazon Bedrock Guardrails.

B.

Remove personally identifiable information (PII) from the customer data before fine-tuning the LLM.

C.

Increase the Top-K parameter of the LLM.

D.

Store customer data in Amazon S3. Encrypt the data before fine-tuning the LLM.

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Question # 11

A retail store wants to predict the demand for a specific product for the next few weeks by using the Amazon SageMaker DeepAR forecasting algorithm.

Which type of data will meet this requirement?

A.

Text data

B.

Image data

C.

Time series data

D.

Binary data

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Question # 12

A company is building a mobile app for users who have a visual impairment. The app must be able to hear what users say and provide voice responses.

Which solution will meet these requirements?

A.

Use a deep learning neural network to perform speech recognition.

B.

Build ML models to search for patterns in numeric data.

C.

Use generative AI summarization to generate human-like text.

D.

Build custom models for image classification and recognition.

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Question # 13

A company uses Amazon SageMaker AI to generate article summaries in multiple languages. The company needs a metric to evaluate the quality of the summary translations in multiple languages. Which evaluation metric will meet these requirements?

A.

Recall-Oriented Understudy for Gisting Evaluation (ROUGE)

B.

Bilingual evaluation understudy (BLEU)

C.

Area Under the ROC Curve (AUC)

D.

Precision

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Question # 14

A company has petabytes of unlabeled customer data to use for an advertisement campaign. The company wants to classify its customers into tiers to advertise and promote the company's products.

Which methodology should the company use to meet these requirements?

A.

Supervised learning

B.

Unsupervised learning

C.

Reinforcement learning

D.

Reinforcement learning from human feedback (RLHF)

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Question # 15

An e-commerce company wants to build a solution to determine customer sentiments based on written customer reviews of products.

Which AWS services meet these requirements? (Select TWO.)

A.

Amazon Lex

B.

Amazon Comprehend

C.

Amazon Polly

D.

Amazon Bedrock

E.

Amazon Rekognition

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Question # 16

A financial company uses a generative AI model to assign credit limits to new customers. The company wants to make the decision-making process of the model more transparent to its customers.

A.

Use a rule-based system instead of an ML model

B.

Apply explainable AI techniques to show customers which factors influenced the model's decision

C.

Develop an interactive UI for customers and provide clear technical explanations about the system

D.

Increase the accuracy of the model to reduce the need for transparency

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Question # 17

A company trained an ML model on Amazon SageMaker to predict customer credit risk. The model shows 90% recall on training data and 40% recall on unseen testing data.

Which conclusion can the company draw from these results?

A.

The model is overfitting on the training data.

B.

The model is underfitting on the training data.

C.

The model has insufficient training data.

D.

The model has insufficient testing data.

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Question # 18

A retail company wants to build an ML model to recommend products to customers. The company wants to build the model based on responsible practices. Which practice should the company apply when collecting data to decrease model bias?

A.

Use data from only customers who match the demography of the company's overall customer base.

B.

Collect data from customers who have a past purchase history.

C.

Ensure that the data is balanced and collected from a diverse group.

D.

Ensure that the data is from a publicly available dataset.

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Question # 19

A company wants to use AWS services to build an AI assistant for internal company use. The AI assistant's responses must reference internal documentation. The company stores internal documentation as PDF, CSV, and image files.

Which solution will meet these requirements with the LEAST operational overhead?

A.

Use Amazon SageMaker AI to fine-tune a model.

B.

Use Amazon Bedrock Knowledge Bases to create a knowledge base.

C.

Configure a guardrail in Amazon Bedrock Guardrails.

D.

Select a pre-trained model from Amazon SageMaker JumpStart.

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Question # 20

A company wants to assess internet quality in remote areas of the world. The company needs to collect internet speed data and store the data in Amazon RDS. The company will analyze internet speed variation throughout each day. The company wants to create an AI model to predict potential internet disruptions.

Which type of data should the company collect for this task?

A.

Tabular data

B.

Text data

C.

Time series data

D.

Audio data

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Question # 21

A medical company wants to develop an AI application that can access structured patient records, extract relevant information, and generate concise summaries.

Which solution will meet these requirements?

A.

Use Amazon Comprehend Medical to extract relevant medical entities and relationships. Apply rule-based logic to structure and format summaries.

B.

Use Amazon Personalize to analyze patient engagement patterns. Integrate the output with a general purpose text summarization tool.

C.

Use Amazon Textract to convert scanned documents into digital text. Design a keyword extraction system to generate summaries.

D.

Implement Amazon Kendra to provide a searchable index for medical records. Use a template-based system to format summaries.

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Question # 22

A company wants to deploy a conversational chatbot to answer customer questions. The chatbot is based on a fine-tuned Amazon SageMaker JumpStart model. The application must comply with multiple regulatory frameworks.

Which capabilities can the company show compliance for? (Select TWO.)

A.

Auto scaling inference endpoints

B.

Threat detection

C.

Data protection

D.

Cost optimization

E.

Loosely coupled microservices

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Question # 23

A company is building an AI application to summarize books of varying lengths. During testing, the application fails to summarize some books. Why does the application fail to summarize some books?

A.

The temperature is set too high.

B.

The selected model does not support fine-tuning.

C.

The Top P value is too high.

D.

The input tokens exceed the model's context size.

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Question # 24

A company wants to use generative AI to increase developer productivity and software development. The company wants to use Amazon Q Developer.

What can Amazon Q Developer do to help the company meet these requirements?

A.

Create software snippets, reference tracking, and open-source license tracking.

B.

Run an application without provisioning or managing servers.

C.

Enable voice commands for coding and providing natural language search.

D.

Convert audio files to text documents by using ML models.

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Question # 25

A company makes forecasts each quarter to decide how to optimize operations to meet expected demand. The company uses ML models to make these forecasts.

An AI practitioner is writing a report about the trained ML models to provide transparency and explainability to company stakeholders.

What should the AI practitioner include in the report to meet the transparency and explainability requirements?

A.

Code for model training

B.

Partial dependence plots (PDPs)

C.

Sample data for training

D.

Model convergence tables

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Question # 26

A hospital developed an AI system to provide personalized treatment recommendations for patients. The AI system must provide the rationale behind the recommendations and make the insights accessible to doctors and patients.

Which human-centered design principle does this scenario present?

A.

Explainability

B.

Privacy and security

C.

Fairness

D.

Data governance

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Question # 27

What is tokenization used for in natural language processing (NLP)?

A.

To encrypt text data

B.

To compress text files

C.

To break text into smaller units for processing

D.

To translate text between languages

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Question # 28

Which scenario represents a practical use case for generative AI?

A.

Using an ML model to forecast product demand

B.

Employing a chatbot to provide human-like responses to customer queries in real time

C.

Using an analytics dashboard to track website traffic and user behavior

D.

Implementing a rule-based recommendation engine to suggest products to customers

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Question # 29

A financial company wants to build workflows for human review of ML predictions. The company wants to define confidence thresholds for its use case and adjust the threshold over time.

Which AWS service meets these requirements?

A.

Amazon Personalize

B.

Amazon Augmented AI (Amazon A2I)

C.

Amazon Inspector

D.

AWS Audit Manager

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Question # 30

A company has built an image classification model to predict plant diseases from photos of plant leaves. The company wants to evaluate how many images the model classified correctly.

Which evaluation metric should the company use to measure the model's performance?

A.

R-squared score

B.

Accuracy

C.

Root mean squared error (RMSE)

D.

Learning rate

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Question # 31

Which scenario describes a potential risk and limitation of prompt engineering In the context of a generative AI model?

A.

Prompt engineering does not ensure that the model always produces consistent and deterministic outputs, eliminating the need for validation.

B.

Prompt engineering could expose the model to vulnerabilities such as prompt injection attacks.

C.

Properly designed prompts reduce but do not eliminate the risk of data poisoning or model hijacking.

D.

Prompt engineering does not ensure that the model will consistently generate highly reliable outputs when working with real-world data.

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Question # 32

A company is building an application that needs to generate synthetic data that is based on existing data.

Which type of model can the company use to meet this requirement?

A.

Generative adversarial network (GAN)

B.

XGBoost

C.

Residual neural network

D.

WaveNet

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Question # 33

A medical company deployed a disease detection model on Amazon Bedrock. To comply with privacy policies, the company wants to prevent the model from including personal patient information in its responses. The company also wants to receive notification when policy violations occur.

Which solution meets these requirements?

A.

Use Amazon Macie to scan the model's output for sensitive data and set up alerts for potential violations.

B.

Configure AWS CloudTrail to monitor the model's responses and create alerts for any detected personal information.

C.

Use Guardrails for Amazon Bedrock to filter content. Set up Amazon CloudWatch alarms for notification of policy violations.

D.

Implement Amazon SageMaker Model Monitor to detect data drift and receive alerts when model quality degrades.

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Question # 34

A company wants to assess the costs that are associated with using a large language model (LLM) to generate inferences. The company wants to use Amazon Bedrock to build generative AI applications.

Which factor will drive the inference costs?

A.

Number of tokens consumed

B.

Temperature value

C.

Amount of data used to train the LLM

D.

Total training time

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Question # 35

A company is using an Amazon Bedrock base model to summarize documents for an internal use case. The company trained a custom model to improve the summarization quality.

Which action must the company take to use the custom model through Amazon Bedrock?

A.

Purchase Provisioned Throughput for the custom model.

B.

Deploy the custom model in an Amazon SageMaker endpoint for real-time inference.

C.

Register the model with the Amazon SageMaker Model Registry.

D.

Grant access to the custom model in Amazon Bedrock.

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Question # 36

A company is training a foundation model (FM). The company wants to increase the accuracy of the model up to a specific acceptance level.

Which solution will meet these requirements?

A.

Decrease the batch size.

B.

Increase the epochs.

C.

Decrease the epochs.

D.

Increase the temperature parameter.

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Question # 37

A digital devices company wants to predict customer demand for memory hardware. The company does not have coding experience or knowledge of ML algorithms and needs to develop a data-driven predictive model. The company needs to perform analysis on internal data and external data.

Which solution will meet these requirements?

A.

Store the data in Amazon S3. Create ML models and demand forecast predictions by using Amazon SageMaker built-in algorithms that use the data from Amazon S3.

B.

Import the data into Amazon SageMaker Data Wrangler. Create ML models and demand forecast predictions by using SageMaker built-in algorithms.

C.

Import the data into Amazon SageMaker Data Wrangler. Build ML models and demand forecast predictions by using an Amazon Personalize Trending-Now recipe.

D.

Import the data into Amazon SageMaker Canvas. Build ML models and demand forecast predictions by selecting the values in the data from SageMaker Canvas.

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Question # 38

A company built a deep learning model for object detection and deployed the model to production.

Which AI process occurs when the model analyzes a new image to identify objects?

A.

Training

B.

Inference

C.

Model deployment

D.

Bias correction

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Question # 39

A company wants to classify human genes into 20 categories based on gene characteristics. The company needs an ML algorithm to document how the inner mechanism of the model affects the output.

Which ML algorithm meets these requirements?

A.

Decision trees

B.

Linear regression

C.

Logistic regression

D.

Neural networks

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Question # 40

A financial company has offices in different countries worldwide. The company requires that all API calls between generative AI applications and foundation models (FM) must not travel across the public internet.

Which AWS service should the company use?

A.

AWS PrivateLink

B.

Amazon

C.

Amazon CloudFront

D.

AWS CloudTrail

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Question # 41

A company wants to improve the accuracy of the responses from a generative AI application. The application uses a foundation model (FM) on Amazon Bedrock.

Which solution meets these requirements MOST cost-effectively?

A.

Fine-tune the FM.

B.

Retrain the FM.

C.

Train a new FM.

D.

Use prompt engineering.

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Question # 42

A company wants to control employee access to publicly available foundation models (FMs). Which solution meets these requirements?

A.

Analyze cost and usage reports in AWS Cost Explorer.

B.

Download AWS security and compliance documents from AWS Artifact.

C.

Configure Amazon SageMaker JumpStart to restrict discoverable FMs.

D.

Build a hybrid search solution by using Amazon OpenSearch Service.

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Question # 43

Which task represents a practical use case to apply a regression model?

A.

Suggest a genre of music for a listener from a list of genres.

B.

Cluster movies based on movie ratings and viewers.

C.

Use historical data to predict future temperatures in a specific city.

D.

Create a picture that shows a specific object.

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Question # 44

A company needs to log all requests made to its Amazon Bedrock API. The company must retain the logs securely for 5 years at the lowest possible cost.

Which combination of AWS service and storage class meets these requirements? (Select TWO.)

A.

AWS CloudTrail

B.

Amazon CloudWatch

C.

AWS Audit Manager

D.

Amazon S3 Intelligent-Tiering

E.

Amazon S3 Standard

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Question # 45

An AI practitioner is building a model to generate images of humans in various professions. The AI practitioner discovered that the input data is biased and that specific attributes affect the image generation and create bias in the model.

Which technique will solve the problem?

A.

Data augmentation for imbalanced classes

B.

Model monitoring for class distribution

C.

Retrieval Augmented Generation (RAG)

D.

Watermark detection for images

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Question # 46

A company has developed a generative text summarization application by using Amazon Bedrock. The company will use Amazon Bedrock automatic model evaluation capabilities.

Which metric should the company use to evaluate the accuracy of the model?

A.

Area Under the ROC Curve (AUC) score

B.

F1 score

C.

BERT Score

D.

Real World Knowledge (RWK) score

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Question # 47

A company wants to create an application to summarize meetings by using meeting audio recordings.

Select and order the correct steps from the following list to create the application. Each step should be selected one time or not at all. (Select and order THREE.)

• Convert meeting audio recordings to meeting text files by using Amazon Polly.

• Convert meeting audio recordings to meeting text files by using Amazon Transcribe.

• Store meeting audio recordings in an Amazon S3 bucket.

• Store meeting audio recordings in an Amazon Elastic Block Store (Amazon EBS) volume.

• Summarize meeting text files by using Amazon Bedrock.

• Summarize meeting text files by using Amazon Lex.

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Question # 48

Which option is a benefit of using Amazon SageMaker Model Cards to document AI models?

A.

Providing a visually appealing summary of a model's capabilities.

B.

Standardizing information about a model's purpose, performance, and limitations.

C.

Reducing the overall computational requirements of a model.

D.

Physically storing models for archival purposes.

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Question # 49

Which AWS feature records details about ML instance data for governance and reporting?

A.

Amazon SageMaker Model Cards

B.

Amazon SageMaker Debugger

C.

Amazon SageMaker Model Monitor

D.

Amazon SageMaker JumpStart

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Question # 50

A bank has fine-tuned a large language model (LLM) to expedite the loan approval process. During an external audit of the model, the company discovered that the model was approving loans at a faster pace for a specific demographic than for other demographics.

How should the bank fix this issue MOST cost-effectively?

A.

Include more diverse training data. Fine-tune the model again by using the new data.

B.

Use Retrieval Augmented Generation (RAG) with the fine-tuned model.

C.

Use AWS Trusted Advisor checks to eliminate bias.

D.

Pre-train a new LLM with more diverse training data.

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Question # 51

A company needs to choose a model from Amazon Bedrock to use internally. The company must identify a model that generates responses in a style that the company's employees prefer.

What should the company do to meet these requirements?

A.

Evaluate the models by using built-in prompt datasets.

B.

Evaluate the models by using a human workforce and custom prompt datasets.

C.

Use public model leaderboards to identify the model.

D.

Use the model InvocationLatency runtime metrics in Amazon CloudWatch when trying models.

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Question # 52

A company manually reviews all submitted resumes in PDF format. As the company grows, the company expects the volume of resumes to exceed the company's review capacity. The company needs an automated system to convert the PDF resumes into plain text format for additional processing.

Which AWS service meets this requirement?

A.

Amazon Textract

B.

Amazon Personalize

C.

Amazon Lex

D.

Amazon Transcribe

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Question # 53

A company needs to apply numerical transformations to a set of images to transpose and rotate the images.

A.

Create a deep neural network by using the images as input.

B.

Create an AWS Lambda function to perform the transformations.

C.

Use an Amazon Bedrock large language model (LLM) with a high temperature.

D.

Use AWS Glue Data Quality to make corrections to each image.

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Question # 54

A company runs a website for users to make travel reservations. The company wants an AI solution to help create consistent branding for hotels on the website. The AI solution needs to generate hotel descriptions for the website in a consistent writing style. Which AWS service will meet these requirements?

A.

Amazon Comprehend

B.

Amazon Personalize

C.

Amazon Rekognition

D.

Amazon Bedrock

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Question # 55

A company wants to develop a large language model (LLM) application by using Amazon Bedrock and customer data that is uploaded to Amazon S3. The company's security policy states that each team can access data for only the team's own customers.

Which solution will meet these requirements?

A.

Create an Amazon Bedrock custom service role for each team that has access to only the team's customer data.

B.

Create a custom service role that has Amazon S3 access. Ask teams to specify the customer name on each Amazon Bedrock request.

C.

Redact personal data in Amazon S3. Update the S3 bucket policy to allow team access to customer data.

D.

Create one Amazon Bedrock role that has full Amazon S3 access. Create IAM roles for each team that have access to only each team's customer folders.

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Question # 56

A company wants to build a lead prioritization application for its employees to contact potential customers. The application must give employees the ability to view and adjust the weights assigned to different variables in the model based on domain knowledge and expertise.

Which ML model type meets these requirements?

A.

Logistic regression model

B.

Deep learning model built on principal components

C.

K-nearest neighbors (k-NN) model

D.

Neural network

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Question # 57

A company has a database of petabytes of unstructured data from internal sources. The company wants to transform this data into a structured format so that its data scientists can perform machine learning (ML) tasks.

Which service will meet these requirements?

A.

Amazon Lex

B.

Amazon Rekognition

C.

Amazon Kinesis Data Streams

D.

AWS Glue

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Question # 58

A company has terabytes of data in a database that the company can use for business analysis. The company wants to build an AI-based application that can build a SQL query from input text that employees provide. The employees have minimal experience with technology.

Which solution meets these requirements?

A.

Generative pre-trained transformers (GPT)

B.

Residual neural network

C.

Support vector machine

D.

WaveNet

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Question # 59

A company is exploring Amazon Nova models in Amazon Bedrock. The company needs a multimodal model that supports multiple languages.

A.

Nova Lite

B.

Nova Pro

C.

Nova Canvas

D.

Nova Reel

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Question # 60

An AI company periodically evaluates its systems and processes with the help of independent software vendors (ISVs). The company needs to receive email message notifications when an ISV's compliance reports become available.

Which AWS service can the company use to meet this requirement?

A.

AWS Audit Manager

B.

AWS Artifact

C.

AWS Trusted Advisor

D.

AWS Data Exchange

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Question # 61

A company is using Amazon SageMaker to develop AI models.

Select the correct SageMaker feature or resource from the following list for each step in the AI model lifecycle workflow. Each

SageMaker feature or resource should be selected one time or not at all. (Select TWO.)

    SageMaker Clarify

    SageMaker Model Registry

    SageMaker Serverless Inference

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Question # 62

An animation company wants to provide subtitles for its content. Which AWS service meets this requirement?

A.

Amazon Comprehend

B.

Amazon Polly

C.

Amazon Transcribe

D.

Amazon Translate

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Question # 63

A company wants to keep its foundation model (FM) relevant by using the most recent data. The company wants to implement a model training strategy that includes regular updates to the FM.

Which solution meets these requirements?

A.

Batch learning

B.

Continuous pre-training

C.

Static training

D.

Latent training

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Question # 64

A research company implemented a chatbot by using a foundation model (FM) from Amazon Bedrock. The chatbot searches for answers to questions from a large database of research papers.

After multiple prompt engineering attempts, the company notices that the FM is performing poorly because of the complex scientific terms in the research papers.

How can the company improve the performance of the chatbot?

A.

Use few-shot prompting to define how the FM can answer the questions.

B.

Use domain adaptation fine-tuning to adapt the FM to complex scientific terms.

C.

Change the FM inference parameters.

D.

Clean the research paper data to remove complex scientific terms.

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Question # 65

An ecommerce company is developing a generative Al solution to create personalized product recommendations for its application users. The company wants to track how effectively the Al solution increases product sales and user engagement in the application.

Select the correct business metric from the following list for each business goal. Each business metric should be selected one time. (Select THREE.)

    Average order value (AOV)

    Click-through rate (CTR)

    Retention rate

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Question # 66

An online media streaming company wants to give its customers the ability to perform natural language-based image search and filtering. The company needs a vector database that can help with similarity searches and nearest neighbor queries.

Which AWS service meets these requirements?

A.

Amazon Comprehend

B.

Amazon Personalize

C.

Amazon Polly

D.

Amazon OpenSearch Service

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Question # 67

An ML research team develops custom ML models. The model artifacts are shared with other teams for integration into products and services. The ML team retains the model training code and data. The ML team wants to builk a mechanism that the ML team can use to audit models.

Which solution should the ML team use when publishing the custom ML models?

A.

Create documents with the relevant information. Store the documents in Amazon S3.

B.

Use AWS A] Service Cards for transparency and understanding models.

C.

Create Amazon SageMaker Model Cards with Intended uses and training and inference details.

D.

Create model training scripts. Commit the model training scripts to a Git repository.

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Question # 68

A company wants to generate synthetic data responses for multiple prompts from a large volume of data. The company wants to use an API method to generate the responses. The company does not need to generate the responses immediately.

A.

Input the prompts into the model. Generate responses by using real-time inference.

B.

Use Amazon Bedrock batch inference. Generate responses asynchronously.

C.

Use Amazon Bedrock agents. Build an agent system to process the prompts recursively.

D.

Use AWS Lambda functions to automate the task. Submit one prompt after another and store each response.

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Question # 69

A company acquires International Organization for Standardization (ISO) accreditation to manage AI risks and to use AI responsibly. What does this accreditation certify?

A.

All members of the company are ISO certified.

B.

All AI systems that the company uses are ISO certified.

C.

All AI application team members are ISO certified.

D.

The company’s development framework is ISO certified.

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Question # 70

A company is developing an ML model to predict heart disease risk. The model uses patient data, such as age, cholesterol, blood pressure, smoking status, and exercise habits. The dataset includes a target value that indicates whether a patient has heart disease.

Which ML technique will meet these requirements?

A.

Unsupervised learning

B.

Supervised learning

C.

Reinforcement learning

D.

Semi-supervised learning

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Question # 71

A financial company is developing a generative AI application for loan approval decisions. The company needs the application output to be responsible and fair.

Which solution meets these requirements?

A.

Review the training data to check for biases. Include data from all demographics in the training data.

B.

Use a deep learning model with many hidden layers.

C.

Keep the model's decision-making process a secret to protect proprietary algorithms.

D.

Continuously monitor the model’s performance on a static test dataset.

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Question # 72

A financial company is developing a fraud detection system that flags potential fraud cases in credit card transactions. Employees will evaluate the flagged fraud cases. The company wants to minimize the amount of time the employees spend reviewing flagged fraud cases that are not actually fraudulent.

Which evaluation metric meets these requirements?

A.

Recall

B.

Accuracy

C.

Precision

D.

Lift chart

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Question # 73

A company wants to label training datasets by using human feedback to fine-tune a foundation model (FM). The company does not want to develop labeling applications or manage a labeling workforce. Which AWS service or feature meets these requirements?

A.

Amazon SageMaker Data Wrangler

B.

Amazon SageMaker Ground Truth Plus

C.

Amazon Transcribe

D.

Amazon Macie

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Question # 74

A retail company is tagging its product inventory. A tag is automatically assigned to each product based on the product description. The company created one product category by using a large language model (LLM) on Amazon Bedrock in few-shot learning mode.

The company collected a labeled dataset and wants to scale the solution to all product categories.

Which solution meets these requirements?

A.

Use prompt engineering with zero-shot learning.

B.

Use prompt engineering with prompt templates.

C.

Customize the model with continued pre-training.

D.

Customize the model with fine-tuning.

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Question # 75

An airline company wants to use a generative AI model to convert a flight booking system from one coding language into another coding language. The company must select a model for this task.

Which criteria should the company use to select the correct generative AI model for this task?

A.

Syntax, semantic understanding, and code optimization capabilities

B.

Code generation speed and error handling capabilities

C.

Ability to generate creative content

D.

Model size and resource requirements

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Question # 76

An ecommerce company is deploying a chatbot. The chatbot will give users the ability to ask questions about the company's products and receive details on users' orders. The company must implement safeguards for the chatbot to filter harmful content from the input prompts and chatbot responses.

Which AWS feature or resource meets these requirements?

A.

Amazon Bedrock Guardrails

B.

Amazon Bedrock Agents

C.

Amazon Bedrock inference APIs

D.

Amazon Bedrock custom models

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Question # 77

A security company is using Amazon Bedrock to run foundation models (FMs). The company wants to ensure that only authorized users invoke the models. The company needs to identify any unauthorized access attempts to set appropriate AWS Identity and Access Management (IAM) policies and roles for future iterations of the FMs.

Which AWS service should the company use to identify unauthorized users that are trying to access Amazon Bedrock?

A.

AWS Audit Manager

B.

AWS CloudTrail

C.

Amazon Fraud Detector

D.

AWS Trusted Advisor

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Question # 78

A company is developing a mobile ML app that uses a phone's camera to diagnose and treat insect bites. The company wants to train an image classification model by using a diverse dataset of insect bite photos from different genders, ethnicities, and geographic locations around the world.

Which principle of responsible Al does the company demonstrate in this scenario?

A.

Fairness

B.

Explainability

C.

Governance

D.

Transparency

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Question # 79

A design company is using a foundation model (FM) on Amazon Bedrock to generate images for various projects. The company wants to have control over how detailed or abstract each generated image appears.

Which model parameter should the company modify?

A.

Model checkpoint

B.

Batch size

C.

Generation step

D.

Token length

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Question # 80

A company wants to upload customer service email messages to Amazon S3 to develop a business analysis application. The messages sometimes contain sensitive data. The company wants to receive an alert every time sensitive information is found.

Which solution fully automates the sensitive information detection process with the LEAST development effort?

A.

Configure Amazon Macie to detect sensitive information in the documents that are uploaded to Amazon S3.

B.

Use Amazon SageMaker endpoints to deploy a large language model (LLM) to redact sensitive data.

C.

Develop multiple regex patterns to detect sensitive data. Expose the regex patterns on an Amazon SageMaker notebook.

D.

Ask the customers to avoid sharing sensitive information in their email messages.

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Question # 81

A company is using an Amazon Nova Canvas model to generate images. The model generates images successfully. The company needs to prevent the model from including specific items in the generated images.

Which solution will meet this requirement?

A.

Use a higher temperature value.

B.

Use a more detailed prompt.

C.

Use a negative prompt.

D.

Use another foundation model (FM).

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Question # 82

An AI practitioner is using a large language model (LLM) to create content for marketing campaigns. The generated content sounds plausible and factual but is incorrect.

Which problem is the LLM having?

A.

Data leakage

B.

Hallucination

C.

Overfitting

D.

Underfitting

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