Multiple Choice
A company runs its containerized batch jobs on Amazon ECS. The jobs are scheduled by submitting a container image, a task definition, and the relevant data to an Amazon S3 bucket. Container images may be unique per job. Running the jobs as quickly as possible is of utmost importance, so submitting job artifacts to the S3 bucket triggers the job to run immediately. Sometimes there may be no jobs running at all. However, jobs of any size can be submitted with no prior warning to the IT Operations team. Job definitions include CPU and memory resource requirements. What solution will allow the batch jobs to complete as quickly as possible after being scheduled?
A) Schedule the jobs on an Amazon ECS cluster using the Amazon EC2 launch type. Use Service Auto Scaling to increase or decrease the number of running tasks to suit the number of running jobs.
B) Schedule the jobs directly on EC2 instances. Use Reserved Instances for the baseline minimum load, and use On-Demand Instances in an Auto Scaling group to scale up the platform based on demand.
C) Schedule the jobs on an Amazon ECS cluster using the Fargate launch type. Use Service Auto Scaling to increase or decrease the number of running tasks to suit the number of running jobs.
D) Schedule the jobs on an Amazon ECS cluster using the Fargate launch type. Use Spot Instances in an Auto Scaling group to scale the platform based on demand. Use Service Auto Scaling to increase or decrease the number of running tasks to suit the number of running jobs.
Correct Answer:

Verified
Correct Answer:
Verified
Q637: In a VPC, can you modify a
Q638: A company is adding a new approved
Q639: During a security audit of a Service
Q640: A Solutions Architect is designing a network
Q641: A company has multiple lines of business
Q643: A company has an existing on-premises three-tier
Q644: Which of the following Amazon RDS storage
Q645: A company needs to store and process
Q646: A solutions architect is building a web
Q647: The CFO of a company wants to