Exam Name: AWS Certified Machine Learning Engineer – Associate
Exam Code: MLA-C01
Related Certification(s): Amazon Associate Certification
Certification Provider: Amazon
Actual Exam Duration: 130 Minutes
Number of MLA-C01 Practice Questions: 207 (updated: )
Q1#
An ML engineer is setting up a CI/CD pipeline for an ML workflow in Amazon SageMaker AI.
The pipeline must automatically retrain, test, and deploy a model whenever new data is uploaded to an Amazon S3 bucket.
New data files are approximately 10 GB in size.
The ML engineer also needs to track model versions for auditing.
Which solution will meet these requirements?
Q2#
An ML engineer needs to use Amazon SageMaker to fine-tune a large language model (LLM) for text summarization.
The ML engineer must follow a low-code no-code (LCNC) approach.
Which solution will meet these requirements?
Q3#
A company has used Amazon SageMaker to deploy a predictive ML model in production.
The company is using SageMaker Model Monitor on the model.
After a model update, an ML engineer notices data quality issues in the Model Monitor checks.
What should the ML engineer do to mitigate the data quality issues that Model Monitor has identified?
Q4#
An ML engineer needs to implement a solution to host a trained ML model.
The rate of requests to the model will be inconsistent throughout the day.
The ML engineer needs a scalable solution that minimizes costs when the model is not in use.
The solution also must maintain the model’s capacity to respond to requests during times of peak usage.
Which solution will meet these requirements?
Q5#
An ML engineer needs to use Amazon SageMaker to fine-tune a large language model (LLM) for text summarization.
The ML engineer must follow a low-code no-code (LCNC) approach.
Which solution will meet these requirements?