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Amazon Web Services SAP-C02 Exam With Confidence Using Practice Dumps

Exam Code:
SAP-C02
Exam Name:
AWS Certified Solutions Architect - Professional
Questions:
674
Last Updated:
Jun 10, 2026
Exam Status:
Stable
Amazon Web Services SAP-C02

SAP-C02: AWS Certified Professional Exam 2025 Study Guide Pdf and Test Engine

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AWS Certified Solutions Architect - Professional Questions and Answers

Question 1

A multi-tenant software as a service (SaaS) customer support platform serves thousands of enterprise clients. The platform must deploy more than 5,000 customized models that use the same ML framework to classify tickets, optimize inference infrastructure costs, and maintain sub-200 ms latency. The platform must operate in a multiaccount AWS architecture that includes separate accounts for development, staging, and production environments.

Which solution will meet these requirements MOST cost-effectively?

Options:

A.

Deploy each model to a dedicated Amazon SageMaker AI real-time endpoint. Provision ml.g5.xlarge instances to handle peak traffic. Use cross-account IAM roles to grant AWS accounts access to model artifacts.

B.

Deploy models by using Amazon SageMaker AI multi-model endpoints with inference components. Enable auto scaling in a centralized production account.

C.

Deploy models to individual Amazon SageMaker AI serverless inference endpoints. Configure auto scaling. Deploy the endpoints in separate AWS accounts for each environment. Use cross-account Amazon S3 bucket policies to share models.

D.

Deploy models to Amazon SageMaker AI asynchronous inference endpoints. Use Amazon S3 to queue requests from multiple accounts. Use batch transform jobs to perform offline processing.

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Question 2

A company is processing videos in the AWS Cloud by using Amazon EC2 instances in an Auto Scaling group. It takes 30 minutes to process a video. Several EC2 instances scale in and out depending on the number of videos in an Amazon Simple Queue Service (Amazon SQS) queue.

The company has configured the SQS queue with a redrive policy that specifies a target dead-letter queue and a maxReceiveCount of 1. The company has set the visibility timeout for the SQS queue to 1 hour. The company has set up an Amazon CloudWatch alarm to notify the development team when there are messages in the dead-letter queue.

Several times during the day, the development team receives notification that messages are in the dead-letter queue and that videos have not been processed properly. An investigation finds no errors in the application logs.

How can the company solve this problem?

Options:

A.

Turn on termination protection for the EC2 instances.

B.

Update the visibility timeout for the SOS queue to 3 hours.

C.

Configure scale-in protection for the instances during processing.

D.

Update the redrive policy and set maxReceiveCount to 0.

Question 3

An online survey company runs its application in the AWS Cloud. The application is distributed and consists of microservices that run in an automatically scaled Amazon Elastic Container Service (Amazon ECS) cluster. The ECS cluster is a target for an Application Load Balancer (ALB). The ALB is a custom origin for an Amazon CloudFront distribution.

The company has a survey that contains sensitive data. The sensitive data must be encrypted when it moves through the application. The application ' s data-handling microservice is the only microservice that should be able to decrypt the data.

Which solution will meet these requirements?

Options:

A.

Create a symmetric AWS Key Management Service (AWS KMS) key that is dedicated to the data-handling microservice. Create a field-level encryption profile and a configuration. Associate the KMS key and the configuration with the CloudFront cache behavior.

B.

Create an RSA key pair that is dedicated to the data-handling microservice. Upload the public key to the CloudFront distribution. Create a field-level encryption profile and a configuration. Add the configuration to the CloudFront cache behavior.

C.

Create a symmetric AWS Key Management Service (AWS KMS) key that is dedicated to the data-handling microservice. Create a Lambda@Edge function. Program the function to use the KMS key to encrypt the sensitive data.

D.

Create an RSA key pair that is dedicated to the data-handling microservice. Create a Lambda@Edge function. Program the function to use the private key of the RSA key pair to encrypt the sensitive data.