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Pass the Amazon Web Services AWS Certified AI Practitioner AIF-C01 Questions and answers with ExamsMirror

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Viewing questions 61-70 out of questions
Questions # 61:

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

Question # 61

Options:

Questions # 62:

A company is using a generative AI model to develop a digital assistant. The model's responses occasionally include undesirable and potentially harmful content. Select the correct Amazon Bedrock filter policy from the following list for each mitigation action. Each filter policy should be selected one time. (Select FOUR.)

• Content filters

• Contextual grounding check

• Denied topics

• Word filters

Question # 62

Options:

Questions # 63:

A company wants to make a chatbot to help customers. The chatbot will help solve technical problems without human intervention. The company chose a foundation model (FM) for the chatbot. The chatbot needs to produce responses that adhere to company tone.

Which solution meets these requirements?

Options:

A.

Set a low limit on the number of tokens the FM can produce.

B.

Use batch inferencing to process detailed responses.

C.

Experiment and refine the prompt until the FM produces the desired responses.

D.

Define a higher number for the temperature parameter.

Questions # 64:

Which scenario represents a practical use case for generative AI?

Options:

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

Questions # 65:

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?

Options:

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

Questions # 66:

Which metric measures the runtime efficiency of operating AI models?

Options:

A.

Customer satisfaction score (CSAT)

B.

Training time for each epoch

C.

Average response time

D.

Number of training instances

Questions # 67:

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

Question # 67

Options:

Questions # 68:

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

Options:

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

Questions # 69:

Which strategy evaluates the accuracy of a foundation model (FM) that is used in image classification tasks?

Options:

A.

Calculate the total cost of resources used by the model.

B.

Measure the model's accuracy against a predefined benchmark dataset.

C.

Count the number of layers in the neural network.

D.

Assess the color accuracy of images processed by the model.

Questions # 70:

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?

Options:

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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Viewing questions 61-70 out of questions
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