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AIF-C01 AWS Certified AI Practitioner Exam Question and Answers

Question # 4

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 # 5

A company is developing an ML model to predict customer churn.

Which evaluation metric will assess the model's performance on a binary classification task such as predicting chum?

A.

F1 score

B.

Mean squared error (MSE)

C.

R-squared

D.

Time used to train the model

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Question # 6

Sated and order the steps from the following bat to correctly describe the ML Lifecycle for a new custom modal Select each step one time. (Select and order FOUR.)

• Define the business objective.

• Deploy the modal.

• Develop and tram the model.

• Process the data.

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Question # 7

A company is monitoring a predictive model by using Amazon SageMaker Model Monitor. The company notices data drift beyond a defined threshold. The company wants to mitigate a potentially adverse impact on the predictive model.

A.

Restart the SageMaker AI endpoint.

B.

Adjust the monitoring sensitivity.

C.

Re-train the model with fresh data.

D.

Set up experiments tracking.

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Question # 8

A company wants to use AI to protect its application from threats. The AI solution needs to check if an IP address is from a suspicious source.

A.

Build a speech recognition system.

B.

Create a natural language processing (NLP) named entity recognition system.

C.

Develop an anomaly detection system.

D.

Create a fraud forecasting system.

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Question # 9

Which option is a use case for generative AI models?

A.

Improving network security by using intrusion detection systems

B.

Creating photorealistic images from text descriptions for digital marketing

C.

Enhancing database performance by using optimized indexing

D.

Analyzing financial data to forecast stock market trends

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Question # 10

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 # 11

A company is using a pre-trained large language model (LLM) to build a chatbot for product recommendations. The company needs the LLM outputs to be short and written in a specific language.

Which solution will align the LLM response quality with the company's expectations?

A.

Adjust the prompt.

B.

Choose an LLM of a different size.

C.

Increase the temperature.

D.

Increase the Top K value.

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Question # 12

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 # 13

A company is building a chatbot to improve user experience. The company is using a large language model (LLM) from Amazon Bedrock for intent detection. The company wants to use few-shot learning to improve intent detection accuracy.

Which additional data does the company need to meet these requirements?

A.

Pairs of chatbot responses and correct user intents

B.

Pairs of user messages and correct chatbot responses

C.

Pairs of user messages and correct user intents

D.

Pairs of user intents and correct chatbot responses

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Question # 14

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 # 15

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 # 16

Which AWS service makes foundation models (FMs) available to help users build and scale generative AI applications?

A.

Amazon Q Developer

B.

Amazon Bedrock

C.

Amazon Kendra

D.

Amazon Comprehend

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Question # 17

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 # 18

Which prompting attack directly exposes the configured behavior of a large language model (LLM)?

A.

Prompted persona switches

B.

Exploiting friendliness and trust

C.

Ignoring the prompt template

D.

Extracting the prompt template

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Question # 19

Which strategy will determine if a foundation model (FM) effectively meets business objectives?

A.

Evaluate the model's performance on benchmark datasets.

B.

Analyze the model's architecture and hyperparameters.

C.

Assess the model's alignment with specific use cases.

D.

Measure the computational resources required for model deployment.

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Question # 20

A company is using Amazon SageMaker to deploy a model that identifies if social media posts contain certain topics. The company needs to show how different input features influence model behavior.

A.

SageMaker Canvas

B.

SageMaker Clarify

C.

SageMaker Feature Store

D.

SageMaker Ground Truth

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Question # 21

A company uses an open-source pre-trained model to analyze user sentiment for a newly released product.

Which action must the company perform, according to MLOps best practices?

A.

Use deep learning to perform hyperparameter tuning.

B.

Collect user reviews and label each review as positive or negative.

C.

Continuously monitor outputs in production.

D.

Perform feature engineering on the input dataset.

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Question # 22

A company trains image and text generation models on Amazon SageMaker AI. The company releases the models by using Amazon Bedrock. The company must retain a tamper-proof, queryable record of every API call from SageMaker AI, Amazon Bedrock, and AWS Identity and Access Management (IAM).

Which AWS service will meet these requirements?

A.

AWS Trusted Advisor

B.

Amazon Macie

C.

AWS CloudTrail Lake

D.

Amazon Inspector

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Question # 23

A company wants to build an ML model by using Amazon SageMaker. The company needs to share and manage variables for model development across multiple teams.

Which SageMaker feature meets these requirements?

A.

Amazon SageMaker Feature Store

B.

Amazon SageMaker Data Wrangler

C.

Amazon SageMaker Clarify

D.

Amazon SageMaker Model Cards

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Question # 24

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 # 25

An ecommerce company wants to improve search engine recommendations by customizing the results for each user of the company's ecommerce platform. Which AWS service meets these requirements?

A.

Amazon Personalize

B.

Amazon Kendra

C.

Amazon Rekognition

D.

Amazon Transcribe

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Question # 26

An online learning company with large volumes of educational materials wants to use enterprise search. Which AWS service meets these requirements?

A.

Amazon Comprehend

B.

Amazon Textract

C.

Amazon Kendra

D.

Amazon Personalize

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Question # 27

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 # 28

Which task describes a use case for intelligent document processing (IDP)?

A.

Predict fraudulent transactions.

B.

Personalize product offerings.

C.

Analyze user feedback and perform sentiment analysis.

D.

Automatically extract and format data from scanned files.

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Question # 29

A company designed an AI-powered agent to answer customer inquiries based on product manuals.

Which strategy can improve customer confidence levels in the AI-powered agent's responses?

A.

Writing the confidence level in the response

B.

Including referenced product manual links in the response

C.

Designing an agent avatar that looks like a computer

D.

Training the agent to respond in the company's language style

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Question # 30

A company stores customer personally identifiable information (PII) data. The company must store the PII data within the company’s AWS Region.

Which aspect of governance does this describe?

A.

Data mining

B.

Data residency

C.

Pre-training bias

D.

Geolocation routing

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Question # 31

An AI practitioner is using an LLM-as-a-judge in Amazon Bedrock to evaluate the quality of agent responses in a production environment. The AI practitioner wants to apply a built-in metric that assesses how thoroughly the agent responses address all parts of each prompt or question.

Which metric will meet these requirements?

A.

Recall-Oriented Understudy for Gisting Evaluation (ROUGE)

B.

Completeness

C.

Following instructions

D.

Refusal

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Question # 32

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 # 33

A company is using supervised learning to train an AI model on a small labeled dataset that is specific to a target task. Which step of the foundation model (FM) lifecycle does this describe?

A.

Fine-tuning

B.

Data selection

C.

Pre-training

D.

Evaluation

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Question # 34

A company has guidelines for data storage and deletion.

Which data governance strategy does this describe?

A.

Data de-identification

B.

Data quality standards

C.

Data retention

D.

Log storage

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Question # 35

A company uses a third-party model on Amazon Bedrock to analyze confidential documents. The company is concerned about data privacy. Which statement describes how Amazon Bedrock protects data privacy?

A.

User inputs and model outputs are anonymized and shared with third-party model providers.

B.

User inputs and model outputs are not shared with any third-party model providers.

C.

User inputs are kept confidential, but model outputs are shared with third-party model providers.

D.

User inputs and model outputs are redacted before the inputs and outputs are shared with third-party model providers.

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Question # 36

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 # 37

A company wants to build an ML model to detect abnormal patterns in sensor data. The company does not have labeled data for training. Which ML method will meet these requirements?

A.

Linear regression

B.

Classification

C.

Decision tree

D.

Autoencoders

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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 is deploying AI/ML models by using AWS services. The company wants to offer transparency into the models' decision-making processes and provide explanations for the model outputs.

A.

Amazon SageMaker Model Cards

B.

Amazon Rekognition

C.

Amazon Comprehend

D.

Amazon Lex

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Question # 40

A company deployed a model to production. After 4 months, the model inference quality degraded. The company wants to receive a notification if the model inference quality degrades. The company also wants to ensure that the problem does not happen again.

Which solution will meet these requirements?

A.

Retrain the model. Monitor model drift by using Amazon SageMaker Clarify.

B.

Retrain the model. Monitor model drift by using Amazon SageMaker Model Monitor.

C.

Build a new model. Monitor model drift by using Amazon SageMaker Feature Store.

D.

Build a new model. Monitor model drift by using Amazon SageMaker JumpStart.

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Question # 41

A global financial company has developed an ML application to analyze stock market data and provide stock market trends. The company wants to continuously monitor the application development phases and ensure that company policies and industry regulations are followed.

Which AWS services will help the company assess compliance with these requirements? (Select TWO.)

A.

AWS Audit Manager

B.

AWS Config

C.

Amazon Inspector

D.

Amazon CloudWatch

E.

AWS CloudTrail

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Question # 42

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 # 43

A company needs to build its own large language model (LLM) based on only the company's private data. The company is concerned about the environmental effect of the training process.

Which Amazon EC2 instance type has the LEAST environmental effect when training LLMs?

A.

Amazon EC2 C series

B.

Amazon EC2 G series

C.

Amazon EC2 P series

D.

Amazon EC2 Trn series

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Question # 44

A manufacturing company has an application that ingests consumer complaints from publicly available sources. The application uses complex hard-coded logic to process the complaints. The company wants to scale this logic across markets and product lines.

Which advantage do generative AI models offer for this scenario?

A.

Predictability of outputs

B.

Adaptability

C.

Less sensitivity to changes in inputs

D.

Explainability

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Question # 45

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 # 46

A company has a generative AI application that uses a pre-trained foundation model (FM) on Amazon Bedrock. The company wants the FM to include more context by using company information.

Which solution meets these requirements MOST cost-effectively?

A.

Use Amazon Bedrock Knowledge Bases.

B.

Choose a different FM on Amazon Bedrock.

C.

Use Amazon Bedrock Agents.

D.

Deploy a custom model on Amazon Bedrock.

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Question # 47

A company is building a custom AI solution in Amazon SageMaker Studio to analyze financial transactions for fraudulent activity in real time. The company needs to ensure that the connectivity from SageMaker Studio to Amazon Bedrock traverses the company’s VPC.

Which solution meets these requirements?

A.

Configure AWS Identity and Access Management (IAM) roles and policies for SageMaker Studio to access Amazon Bedrock.

B.

Configure Amazon Macie to proxy requests from SageMaker Studio to Amazon Bedrock.

C.

Configure AWS PrivateLink endpoints for the Amazon Bedrock API endpoints in the VPC that SageMaker Studio is connected to.

D.

Configure a new VPC for the Amazon Bedrock usage. Register the VPCs as peers.

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Question # 48

A customer service team is developing an application to analyze customer feedback and automatically classify the feedback into different categories. The categories include product quality, customer service, and delivery experience.

Which AI concept does this scenario present?

A.

Computer vision

B.

Natural language processing (NLP)

C.

Recommendation systems

D.

Fraud detection

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Question # 49

A company is implementing the Amazon Titan foundation model (FM) by using Amazon Bedrock. The company needs to supplement the model by using relevant data from the company's private data sources.

Which solution will meet this requirement?

A.

Use a different FM

B.

Choose a lower temperature value

C.

Create an Amazon Bedrock knowledge base

D.

Enable model invocation logging

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Question # 50

A company stores millions of PDF documents in an Amazon S3 bucket. The company needs to extract the text from the PDFs, generate summaries of the text, and index the summaries for fast searching.

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

A.

Amazon Translate

B.

Amazon Bedrock

C.

Amazon Transcribe

D.

Amazon Polly

E.

Amazon Textract

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Question # 51

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 # 52

A company wants to create a chatbot that answers questions about human resources policies. The company is using a large language model (LLM) and has a large digital documentation base.

Which technique should the company use to optimize the generated responses?

A.

Use Retrieval Augmented Generation (RAG).

B.

Use few-shot prompting.

C.

Set the temperature to 1.

D.

Decrease the token size.

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Question # 53

A company has built a chatbot that can respond to natural language questions with images. The company wants to ensure that the chatbot does not return inappropriate or unwanted images.

Which solution will meet these requirements?

A.

Implement moderation APIs.

B.

Retrain the model with a general public dataset.

C.

Perform model validation.

D.

Automate user feedback integration.

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Question # 54

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 # 55

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 # 56

Which AWS service helps select foundation models (FMs) for generative AI use cases?

A.

Amazon Personalize

B.

Amazon Bedrock

C.

Amazon Q Developer

D.

Amazon Rekognition

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Question # 57

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 # 58

What is the benefit of fine-tuning a foundation model (FM)?

A.

Fine-tuning reduces the FM's size and complexity and enables slower inference.

B.

Fine-tuning uses specific training data to retrain the FM from scratch to adapt to a specific use case.

C.

Fine-tuning keeps the FM's knowledge up to date by pre-training the FM on more recent data.

D.

Fine-tuning improves the performance of the FM on a specific task by further training the FM on new labeled data.

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Question # 59

A social media company wants to use a large language model (LLM) to summarize messages. The company has chosen a few LLMs that are available on Amazon SageMaker JumpStart. The company wants to compare the generated output toxicity of these models.

Which strategy gives the company the ability to evaluate the LLMs with the LEAST operational overhead?

A.

Crowd-sourced evaluation

B.

Automatic model evaluation

C.

Model evaluation with human workers

D.

Reinforcement learning from human feedback (RLHF)

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Question # 60

What are tokens in the context of generative AI models?

A.

Tokens are the basic units of input and output that a generative AI model operates on, representing words, subwords, or other linguistic units.

B.

Tokens are the mathematical representations of words or concepts used in generative AI models.

C.

Tokens are the pre-trained weights of a generative AI model that are fine-tuned for specific tasks.

D.

Tokens are the specific prompts or instructions given to a generative AI model to generate output.

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Question # 61

A company needs to use Amazon SageMaker AI for model training and inference. The company must comply with regulatory requirements to run SageMaker jobs in an isolated environment without internet access.

Which solution will meet these requirements?

A.

Run SageMaker training and inference by using SageMaker Experiments.

B.

Run SageMaker training and inference by using network isolation.

C.

Encrypt the data at rest by using encryption for SageMaker geospatial capabilities.

D.

Associate appropriate AWS Identity and Access Management (IAM) roles with the SageMaker jobs.

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Question # 62

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 # 63

A company wants to collaborate with several research institutes to develop an AI model. The company needs standardized documentation of model version tracking and a record of model development.

Which solution meets these requirements?

A.

Track the model changes by using Git.

B.

Track the model changes by using Amazon Fraud Detector.

C.

Track the model changes by using Amazon SageMaker Model Cards.

D.

Track the model changes by using Amazon Comprehend.

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Question # 64

A company wants more customized responses to its generative AI models' prompts.

Select the correct customization methodology from the following list for each use case. Each use case should be selected one time. (Select THREE.)

• Continued pre-training

• Data augmentation

• Model fine-tuning

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Question # 65

A company is developing an ML model to make loan approvals. The company must implement a solution to detect bias in the model. The company must also be able to explain the model's predictions.

Which solution will meet these requirements?

A.

Amazon SageMaker Clarify

B.

Amazon SageMaker Data Wrangler

C.

Amazon SageMaker Model Cards

D.

AWS AI Service Cards

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Question # 66

Which metric measures the runtime efficiency of operating AI models?

A.

Customer satisfaction score (CSAT)

B.

Training time for each epoch

C.

Average response time

D.

Number of training instances

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Question # 67

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 # 68

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 # 69

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 # 70

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 # 71

An online learning company with large volumes of education materials wants to use enterprise search.

A.

Amazon Comprehend

B.

Amazon Textract

C.

Amazon Kendra

D.

Amazon Personalize

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Question # 72

A company wants to develop ML applications to improve business operations and efficiency.

Select the correct ML paradigm from the following list for each use case. Each ML paradigm should be selected one or more times. (Select FOUR.)

• Supervised learning

• Unsupervised learning

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Question # 73

Which type of AI model makes numeric predictions?

A.

Diffusion

B.

Regression

C.

Transformer

D.

Multi-modal

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Question # 74

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 # 75

Which technique involves training AI models on labeled datasets to adapt the models to specific industry terminology and requirements?

A.

Data augmentation

B.

Fine-tuning

C.

Model quantization

D.

Continuous pre-training

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Question # 76

A publishing company built a Retrieval Augmented Generation (RAG) based solution to give its users the ability to interact with published content. New content is published daily. The company wants to provide a near real-time experience to users.

Which steps in the RAG pipeline should the company implement by using offline batch processing to meet these requirements? (Select TWO.)

A.

Generation of content embeddings

B.

Generation of embeddings for user queries

C.

Creation of the search index

D.

Retrieval of relevant content

E.

Response generation for the user

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Question # 77

A company wants to use AI to protect its application from threats. The AI solution needs to check if an IP address is from a suspicious source.

Which solution meets these requirements?

A.

Build a speech recognition system.

B.

Create a natural language processing (NLP) named entity recognition system.

C.

Develop an anomaly detection system.

D.

Create a fraud forecasting system.

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Question # 78

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 # 79

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 # 80

An AI practitioner is using an Amazon Bedrock base model to summarize session chats from the customer service department. The AI practitioner wants to store invocation logs to monitor model input and output data.

A.

Configure AWS CloudTrail as the logs destination for the model.

B.

Enable model invocation logging in Amazon Bedrock.

C.

Configure AWS Audit Manager as the logs destination for the model.

D.

Configure model invocation logging in Amazon EventBridge.

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Question # 81

Which option is a characteristic of AI governance frameworks for building trust and deploying human-centered AI technologies?

A.

Expanding initiatives across business units to create long-term business value

B.

Ensuring alignment with business standards, revenue goals, and stakeholder expectations

C.

Overcoming challenges to drive business transformation and growth

D.

Developing policies and guidelines for data, transparency, responsible AI, and compliance\

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Question # 82

A company wants to implement a generative AI assistant to provide consistent responses to various phrasings of user questions.

Which advantages can generative AI provide in this use case?

A.

Low latency and high throughput

B.

Adaptability and responsiveness

C.

Deterministic outputs and fixed responses

D.

Hardware acceleration and GPU optimization

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Question # 83

A social media company wants to use a large language model (LLM) for content moderation. The company wants to evaluate the LLM outputs for bias and potential discrimination against specific groups or individuals.

Which data source should the company use to evaluate the LLM outputs with the LEAST administrative effort?

A.

User-generated content

B.

Moderation logs

C.

Content moderation guidelines

D.

Benchmark datasets

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Question # 84

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 # 85

A company wants to use a large language model (LLM) to develop a conversational agent. The company needs to prevent the LLM from being manipulated with common prompt engineering techniques to perform undesirable actions or expose sensitive information.

Which action will reduce these risks?

A.

Create a prompt template that teaches the LLM to detect attack patterns.

B.

Increase the temperature parameter on invocation requests to the LLM.

C.

Avoid using LLMs that are not listed in Amazon SageMaker.

D.

Decrease the number of input tokens on invocations of the LLM.

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Question # 86

A financial company uses AWS to host its generative AI models. The company must generate reports to show adherence to international regulations for handling sensitive customer data.

A.

Amazon Macie

B.

AWS Artifact

C.

AWS Secrets Manager

D.

AWS Config

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Question # 87

A company wants to classify images of different objects based on custom features extracted from a dataset.

Which solution will meet this requirement with the LEAST development effort?

A.

Use traditional ML algorithms with custom features extracted from the dataset.

B.

Use a pre-trained deep learning model and fine-tune the model on the dataset.

C.

Use a generative adversarial network (GAN) model to classify the images.

D.

Use a support vector machine (SVM) with manually engineered features for classification.

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Question # 88

An AI practitioner wants to generate more diverse and more creative outputs from a large language model (LLM).

How should the AI practitioner adjust the inference parameter?

A.

Increase the temperature value.

B.

Decrease the Top K value.

C.

Increase the response length.

D.

Decrease the prompt length.

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Question # 89

A company is using few-shot prompting on a base model that is hosted on Amazon Bedrock. The model currently uses 10 examples in the prompt. The model is invoked once daily and is performing well. The company wants to lower the monthly cost.

Which solution will meet these requirements?

A.

Customize the model by using fine-tuning.

B.

Decrease the number of tokens in the prompt.

C.

Increase the number of tokens in the prompt.

D.

Use Provisioned Throughput.

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Question # 90

Which statement presents an advantage of using Retrieval Augmented Generation (RAG) for natural language processing (NLP) tasks?

A.

RAG can use external knowledge sources to generate more accurate and informative responses

B.

RAG is designed to improve the speed of language model training

C.

RAG is primarily used for speech recognition tasks

D.

RAG is a technique for data augmentation in computer vision tasks

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Question # 91

What does an F1 score measure in the context of foundation model (FM) performance?

A.

Model precision and recall

B.

Model speed in generating responses

C.

Financial cost of operating the model

D.

Energy efficiency of the model's computations

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Question # 92

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 # 93

A company uses Amazon Bedrock to implement a generative AI solution. The AI solution provides customers with personalized product recommendations.

The company wants to evaluate the impact of the AI solution on sales revenue.

Which metric will meet these requirements?

A.

Cross-domain performance

B.

Solution efficiency

C.

User satisfaction

D.

Conversion rate

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Question # 94

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 # 95

A company wants to use a large language model (LLM) on Amazon Bedrock for sentiment analysis. The company needs the LLM to produce more consistent responses to the same input prompt.

Which adjustment to an inference parameter should the company make to meet these requirements?

A.

Decrease the temperature value

B.

Increase the temperature value

C.

Decrease the length of output tokens

D.

Increase the maximum generation length

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Question # 96

Which option describes embeddings in the context of AI?

A.

A method for compressing large datasets

B.

An encryption method for securing sensitive data

C.

A method for visualizing high-dimensional data

D.

A numerical method for data representation in a reduced dimensionality space

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Question # 97

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 # 98

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 # 99

A company wants to display the total sales for its top-selling products across various retail locations in the past 12 months.

Which AWS solution should the company use to automate the generation of graphs?

A.

Amazon Q in Amazon EC2

B.

Amazon Q Developer

C.

Amazon Q in Amazon QuickSight

D.

Amazon Q in AWS Chatbot

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Question # 100

A company that uses multiple ML models wants to identify changes in original model quality so that the company can resolve any issues.

Which AWS service or feature meets these requirements?

A.

Amazon SageMaker JumpStart

B.

Amazon SageMaker HyperPod

C.

Amazon SageMaker Data Wrangler

D.

Amazon SageMaker Model Monitor

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