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AIF-C01 AWS Certified AI Practitioner Exam Question and Answers

Question # 4

An AI practitioner wants to use a foundation model (FM) to design a search application. The search application must handle queries that have text and images.

Which type of FM should the AI practitioner use to power the search application?

A.

Multi-modal embedding model

B.

Text embedding model

C.

Multi-modal generation model

D.

Image generation model

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Question # 5

An AI practitioner must fine-tune an open source large language model (LLM) for text categorization. The dataset is already prepared.

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

A.

Create a custom model training job in PartyRock on Amazon Bedrock.

B.

Use Amazon SageMaker JumpStart to create a training job.

C.

Use a custom script to run an Amazon SageMaker AI model training job.

D.

Create a Jupyter notebook on an Amazon EC2 instance. Use the notebook to train the model.

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Question # 6

A manufacturing company wants to create product descriptions in multiple languages.

Which AWS service will automate this task?

A.

Amazon Translate

B.

Amazon Transcribe

C.

Amazon Kendra

D.

Amazon Polly

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Question # 7

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 # 8

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 # 9

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 # 10

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 # 11

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 # 12

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 # 13

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 # 14

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 # 15

A company has implemented a generative AI solution to create personalized exercise routines for premium subscription users. The company offers free basic subscriptions and paid premium subscriptions. The company wants to evaluate the AI solution's return on investment over time.

A.

The average revenue per user (ARPU) over the past month

B.

The number of daily interactions by basic subscription users

C.

The conversion rate and the customer retention rate

D.

The decrease in the number of premium customer queries and issue volume

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Question # 16

A company has created a custom model by fine-tuning an existing large language model (LLM) from Amazon Bedrock. The company wants to deploy the model to production and use the model to handle a steady rate of requests each minute.

Which solution meets these requirements MOST cost-effectively?

A.

Deploy the model by using an Amazon EC2 compute optimized instance.

B.

Use the model with on-demand throughput on Amazon Bedrock.

C.

Store the model in Amazon S3 and host the model by using AWS Lambda.

D.

Purchase Provisioned Throughput for the model on Amazon Bedrock.

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Question # 17

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 # 18

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 # 19

A food service company wants to develop an ML model to help decrease daily food waste and increase sales revenue. The company needs to continuously improve the model's accuracy.

Which solution meets these requirements?

A.

Use Amazon SageMaker AI and iterate with the most recent data.

B.

Use Amazon Personalize and iterate with historical data.

C.

Use Amazon CloudWatch to analyze customer orders.

D.

Use Amazon Rekognition to optimize the model.

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Question # 20

An AI practitioner is developing a prompt for an Amazon Titan model. The model is hosted on Amazon Bedrock. The AI practitioner is using the model to solve numerical reasoning challenges. The AI practitioner adds the following phrase to the end of the prompt: "Ask the model to show its work by explaining its reasoning step by step."

Which prompt engineering technique is the AI practitioner using?

A.

Chain-of-thought prompting

B.

Prompt injection

C.

Few-shot prompting

D.

Prompt templating

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Question # 21

A student at a university is copying content from generative AI to write essays.

Which challenge of responsible generative AI does this scenario represent?

A.

Toxicity

B.

Hallucinations

C.

Plagiarism

D.

Privacy

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Question # 22

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 # 23

Which technique can a company use to lower bias and toxicity in generative AI applications during the post-processing ML lifecycle?

A.

Human-in-the-loop

B.

Data augmentation

C.

Feature engineering

D.

Adversarial training

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Question # 24

A company wants to create a chatbot to answer employee questions about company policies. Company policies are updated frequently. The chatbot must reflect the changes in near real time. The company wants to choose a large language model (LLM).

A.

Fine-tune an LLM on the company policy text by using Amazon SageMaker.

B.

Select a foundation model (FM) from Amazon Bedrock to build an application.

C.

Create a Retrieval Augmented Generation (RAG) workflow by using Amazon Bedrock Knowledge Bases.

D.

Use Amazon Q Business to build a custom Q App.

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Question # 25

A company has built a solution by using generative AI. The solution uses large language models (LLMs) to translate training manuals from English into other languages. The company wants to evaluate the accuracy of the solution by examining the text generated for the manuals.

Which model evaluation strategy meets these requirements?

A.

Bilingual Evaluation Understudy (BLEU)

B.

Root mean squared error (RMSE)

C.

Recall-Oriented Understudy for Gisting Evaluation (ROUGE)

D.

F1 score

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Question # 26

A company is building a customer service chatbot. The company wants the chatbot to improve its responses by learning from past interactions and online resources.

Which AI learning strategy provides this self-improvement capability?

A.

Supervised learning with a manually curated dataset of good responses and bad responses

B.

Reinforcement learning with rewards for positive customer feedback

C.

Unsupervised learning to find clusters of similar customer inquiries

D.

Supervised learning with a continuously updated FAQ database

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Question # 27

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 # 28

A hospital is developing an AI system to assist doctors in diagnosing diseases based on patient records and medical images. To comply with regulations, the sensitive patient data must not leave the country the data is located in.

Which data governance strategy will ensure compliance and protect patient privacy?

A.

Data residency

B.

Data quality

C.

Data discoverability

D.

Data enrichment

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Question # 29

A company is using a pre-trained large language model (LLM). The LLM must perform multiple tasks that require specific domain knowledge. The LLM does not have information about several technical topics in the domain. The company has unlabeled data that the company can use to fine-tune the model.

Which fine-tuning method will meet these requirements?

A.

Full training

B.

Supervised fine-tuning

C.

Continued pre-training

D.

Retrieval Augmented Generation (RAG)

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Question # 30

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 # 31

A company has an ML model. The company wants to know how the model makes predictions. Which term refers to understanding model predictions?

A.

Model interpretability

B.

Model training

C.

Model interoperability

D.

Model performance

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Question # 32

What is the purpose of vector embeddings in a large language model (LLM)?

A.

Splitting text into manageable pieces of data

B.

Grouping a set of characters to be treated as a single unit

C.

Providing the ability to mathematically compare texts

D.

Providing the count of every word in the input

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Question # 33

An AI practitioner is using Amazon Bedrock Prompt Management to create a reusable prompt. The prompt must be able to interact with external services by calling an external API. Which solution will meet this requirement?

A.

Use special tokens.

B.

Use a tools configuration.

C.

Use prompt variables.

D.

Use a stop sequence.

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Question # 34

An AI practitioner has built a deep learning model to classify the types of materials in images. The AI practitioner now wants to measure the model performance.

Which metric will help the AI practitioner evaluate the performance of the model?

A.

Confusion matrix

B.

Correlation matrix

C.

R2 score

D.

Mean squared error (MSE)

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Question # 35

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 # 36

A company is using domain-specific models. The company wants to avoid creating new models from the beginning. The company instead wants to adapt pre-trained models to create models for new, related tasks.

Which ML strategy meets these requirements?

A.

Increase the number of epochs.

B.

Use transfer learning.

C.

Decrease the number of epochs.

D.

Use unsupervised learning.

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Question # 37

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 # 38

In which stage of the generative AI model lifecycle are tests performed to examine the model's accuracy?

A.

Deployment

B.

Data selection

C.

Fine-tuning

D.

Evaluation

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Question # 39

A documentary filmmaker wants to reach more viewers. The filmmaker wants to automatically add subtitles and voice-overs in multiple languages to their films.

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

A.

Use Amazon Transcribe and Amazon Translate to generate subtitles in other languages

B.

Use Amazon Textract and Amazon Translate to generate subtitles in other languages

C.

Use Amazon Polly to generate voice-overs in other languages

D.

Use Amazon Translate to generate voice-overs in other languages

E.

Use Amazon Textract to generate voice-overs in other languages

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Question # 40

A law firm wants to build an AI application by using large language models (LLMs). The application will read legal documents and extract key points from the documents.

Which solution meets these requirements?

A.

Build an automatic named entity recognition system.

B.

Create a recommendation engine.

C.

Develop a summarization chatbot.

D.

Develop a multi-language translation system.

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Question # 41

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 # 42

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 # 43

A company wants to build an interactive application for children that generates new stories based on classic stories. The company wants to use Amazon Bedrock and needs to ensure that the results and topics are appropriate for children.

Which AWS service or feature will meet these requirements?

A.

Amazon Rekognition

B.

Amazon Bedrock playgrounds

C.

Guardrails for Amazon Bedrock

D.

Agents for Amazon Bedrock

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Question # 44

A company uses Amazon Bedrock to implement a generative AI assistant on a website. The AI assistant helps customers with product recommendations and purchasing decisions. The company wants to measure the direct impact of the AI assistant on sales performance.

A.

The conversion rate of customers who purchase products after AI assistant interactions

B.

The number of customer interactions with the AI assistant

C.

Sentiment analysis scores from customer feedback after AI assistant interactions

D.

Natural language understanding accuracy rates

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Question # 45

Which term refers to the Instructions given to foundation models (FMs) so that the FMs provide a more accurate response to a question?

A.

Prompt

B.

Direction

C.

Dialog

D.

Translation

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Question # 46

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 # 47

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 # 48

Which technique breaks a complex task into smaller subtasks that are sent sequentially to a large language model (LLM)?

A.

One-shot prompting

B.

Prompt chaining

C.

Tree of thoughts

D.

Retrieval Augmented Generation (RAG)

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Question # 49

A company wants to use a large language model (LLM) on Amazon Bedrock for sentiment analysis. The company wants to know how much information can fit into one prompt.

Which consideration will inform the company's decision?

A.

Temperature

B.

Context window

C.

Batch size

D.

Model size

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Question # 50

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 # 51

A financial institution is using Amazon Bedrock to develop an AI application. The application is hosted in a VPC. To meet regulatory compliance standards, the VPC is not allowed access to any internet traffic.

Which AWS service or feature will meet these requirements?

A.

AWS PrivateLink

B.

Amazon Macie

C.

Amazon CloudFront

D.

Internet gateway

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Question # 52

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 # 53

A company deployed an AI/ML solution to help customer service agents respond to frequently asked questions. The questions can change over time. The company wants to give customer service agents the ability to ask questions and receive automatically generated answers to common customer questions. Which strategy will meet these requirements MOST cost-effectively?

A.

Fine-tune the model regularly.

B.

Train the model by using context data.

C.

Pre-train and benchmark the model by using context data.

D.

Use Retrieval Augmented Generation (RAG) with prompt engineering techniques.

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Question # 54

A company is using a large language model (LLM) on Amazon Bedrock to build a chatbot. The chatbot processes customer support requests. To resolve a request, the customer and the chatbot must interact a few times.

Which solution gives the LLM the ability to use content from previous customer messages?

A.

Turn on model invocation logging to collect messages.

B.

Add messages to the model prompt.

C.

Use Amazon Personalize to save conversation history.

D.

Use Provisioned Throughput for the LLM.

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Question # 55

A company is creating a model to label credit card transactions. The company has a large volume of sample transaction data to train the model. Most of the transaction data is unlabeled. The data does not contain confidential information. The company needs to obtain labeled sample data to fine-tune the model.

A.

Run batch inference jobs on the unlabeled data

B.

Run an Amazon SageMaker AI training job that uses the PyTorch Distributed library to label data

C.

Use an Amazon SageMaker Ground Truth labeling job with Amazon Mechanical Turk workers

D.

Use an optical character recognition model trained on labeled samples to label unlabeled samples

E.

Run an Amazon SageMaker AI labeling job

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Question # 56

A company wants to implement a generative AI solution to improve its marketing operations. The company wants to increase its revenue in the next 6 months.

Which approach will meet these requirements?

A.

Immediately start training a custom FM by using the company’s existing data.

B.

Conduct stakeholder interviews to refine use cases and set measurable goals.

C.

Implement a prebuilt AI assistant solution and measure its impact on customer satisfaction.

D.

Analyze industry AI implementations and replicate the most successful features.

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Question # 57

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 # 58

Which type of ML technique provides the MOST explainability?

A.

Linear regression

B.

Support vector machines

C.

Random cut forest (RCF)

D.

Neural network

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Question # 59

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 # 60

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 # 61

A company wants to use a large language model (LLM) to generate product descriptions. The company wants to give the model example descriptions that follow a format.

Which prompt engineering technique will generate descriptions that match the format?

A.

Zero-shot prompting

B.

Chain-of-thought prompting

C.

One-shot prompting

D.

Few-shot prompting

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Question # 62

A company has developed a large language model (LLM) and wants to make the LLM available to multiple internal teams. The company needs to select the appropriate inference mode for each team.

Select the correct inference mode from the following list for each use case. Each inference mode should be selected one or more times. (Select THREE.)

* Batch transform

* Real-time inference

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Question # 63

A company is creating a model to label credit card transactions. The company has a large volume of sample transaction data to train the model. Most of the transaction data is unlabeled. The data does not contain confidential information. The company needs to obtain labeled sample data to fine-tune the model.

A.

Run batch inference jobs on the unlabeled data

B.

Run an Amazon SageMaker AI training job that uses the PyTorch Distributed library to label data

C.

Use an Amazon SageMaker Ground Truth labeling job with Amazon Mechanical Turk workers

D.

Use an optical character recognition model trained on labeled samples to label unlabeled samples

E.

Run an Amazon SageMaker AI labeling job

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Question # 64

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 # 65

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 # 66

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 # 67

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 # 68

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 # 69

A company wants to develop a solution that uses generative AI to create content for product advertisements, Including sample images and slogans.

Select the correct model type from the following list for each action. Each model type should be selected one time. (Select THREE.)

• Diffusion model

• Object detection model

• Transformer-based model

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Question # 70

A company has a foundation model (FM) that was customized by using Amazon Bedrock to answer customer queries about products. The company wants to validate the model's responses to new types of queries. The company needs to upload a new dataset that Amazon Bedrock can use for validation.

Which AWS service meets these requirements?

A.

Amazon S3

B.

Amazon Elastic Block Store (Amazon EBS)

C.

Amazon Elastic File System (Amazon EFS)

D.

AWS Showcone

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Question # 71

A company is implementing intelligent agents to provide conversational search experiences for its customers. The company needs a database service that will support storage and queries of embeddings from a generative AI model as vectors in the database.

Which AWS service will meet these requirements?

A.

Amazon Athena

B.

Amazon Aurora PostgreSQL

C.

Amazon Redshift

D.

Amazon EMR

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Question # 72

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 # 73

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 # 74

A bank is building a chatbot to answer customer questions about opening a bank account. The chatbot will use public bank documents to generate responses. The company will use Amazon Bedrock and prompt engineering to improve the chatbot's responses.

Which prompt engineering technique meets these requirements?

A.

Complexity-based prompting

B.

Zero-shot prompting

C.

Few-shot prompting

D.

Directional stimulus prompting

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Question # 75

A company wants to build and deploy ML models on AWS without writing any code.

Which AWS service or feature meets these requirements?

A.

Amazon SageMaker Canvas

B.

Amazon Rekognition

C.

AWS DeepRacer

D.

Amazon Comprehend

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Question # 76

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 # 77

A company stores customer data in OpenSearch. The company wants an AI solution to retrieve specific customer information from the stored data. The AI solution must convert queries into data requests and generate CSV files from the results. Then, the AI solution must upload the CSV files to Amazon S3.

A.

Create an AI agent to perform the required steps.

B.

Use a single foundation model (FM) with few-shot prompting.

C.

Create a software application without using AI to perform the required steps.

D.

Train a decision tree model to generate a solution based on user questions.

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Question # 78

An airline company wants to build a conversational AI assistant to answer customer questions about flight schedules, booking, and payments. The company wants to use large language models (LLMs) and a knowledge base to create a text-based chatbot interface.

Which solution will meet these requirements with the LEAST development effort?

A.

Train models on Amazon SageMaker Autopilot.

B.

Develop a Retrieval Augmented Generation (RAG) agent by using Amazon Bedrock.

C.

Create a Python application by using Amazon Q Developer.

D.

Fine-tune models on Amazon SageMaker Jumpstart.

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Question # 79

Which option is an example of unsupervised learning?

A.

A model that groups customers based on their purchase history

B.

A model that classifies images as dogs or cats

C.

A model that predicts a house's price based on various features

D.

A model that learns to play chess by using trial and error

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Question # 80

A financial institution is building an AI solution to make loan approval decisions by using a foundation model (FM). For security and audit purposes, the company needs the AI solution's decisions to be explainable.

Which factor relates to the explainability of the AI solution's decisions?

A.

Model complexity

B.

Training time

C.

Number of hyperparameters

D.

Deployment time

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Question # 81

A company wants to set up private access to Amazon Bedrock APIs from the company's AWS account. The company also wants to protect its data from internet exposure.

A.

Use Amazon CloudFront to restrict access to the company's private content

B.

Use AWS Glue to set up data encryption across the company's data catalog

C.

Use AWS Lake Formation to manage centralized data governance and cross-account data sharing

D.

Use AWS PrivateLink to configure a private connection between the company's VPC and Amazon Bedrock

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Question # 82

Which type of AI model makes numeric predictions?

A.

Diffusion

B.

Regression

C.

Transformer

D.

Multi-modal

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Question # 83

Which strategy will prevent model hallucinations?

A.

Fact-check the output of the large language model (LLM).

B.

Compare the output of the large language model (LLM) to the results of an internet search.

C.

Use contextual grounding.

D.

Use relevance grounding.

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Question # 84

Which option is an example of unsupervised learning?

A.

Clustering data points into groups based on their similarity

B.

Training a model to recognize images of animals

C.

Predicting the price of a house based on the house's features

D.

Generating human-like text based on a given prompt

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Question # 85

A loan company is building a generative AI-based solution to offer new applicants discounts based on specific business criteria. The company wants to build and use an AI model responsibly to minimize bias that could negatively affect some customers.

Which actions should the company take to meet these requirements? (Select TWO.)

A.

Detect imbalances or disparities in the data.

B.

Ensure that the model runs frequently.

C.

Evaluate the model's behavior so that the company can provide transparency to stakeholders.

D.

Use the Recall-Oriented Understudy for Gisting Evaluation (ROUGE) technique to ensure that the model is 100% accurate.

E.

Ensure that the model's inference time is within the accepted limits.

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Question # 86

A company wants to implement a large language model (LLM)-based chatbot to provide customer service agents with real-time contextual responses to customers' inquiries. The company will use the company's policies as the knowledge base.

A.

Retrain the LLM on the company policy data.

B.

Fine-tune the LLM on the company policy data.

C.

Implement Retrieval Augmented Generation (RAG) for in-context responses.

D.

Use pre-training and data augmentation on the company policy data.

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