Stay ahead by continuously learning and advancing your career.. Learn More

AWS Sagemaker

Practice Exam
Take Free Test

AWS Sagemaker

AWS SageMaker is a fully managed machine learning (ML) SaaS (Software as a service) by Amazon Web Services (AWS) which provides tools and features to developers and data scientists to build, train, and deploy ML models at scale. The SaaS service has tools for labeling data, preparing datasets, choosing algorithms, training models, tuning hyperparameters, and deploying models in production environments. SageMaker streamlines the ML workflow by providing tools for automation, collaboration, and scalability.

Certification in AWS SageMaker validates your skills and knowledge to use SageMaker for developing, training, deploying, and managing ML models. It also attests to your expertise in using SageMaker's features to optimize ML workflows and deliver AI-driven solutions.
Why is AWS Sagemaker important?

  • The certification validates your expertise in cloud-based ML workflows.
  • Boosts career opportunities in AI and data science.
  • Shows your knowledge of using SageMaker for scalable ML solutions.
  • Acts as a competitive edge in machine learning roles.
  • Increases your credibility with employers and clients.

Who should take the AWS Sagemaker Exam?

  • Machine Learning Engineer
  • Data Scientist
  • AI Specialist
  • Cloud Architect
  • Data Engineer
  • Research Scientist
  • Business Intelligence Developer

AWS Sagemaker Certification Course Outline
The course outline for AWS Sagemaker certification is as below -

1. Introduction to AWS SageMaker
2. Data Preparation and Management
3. Model Building and Training
4. Deployment and Inference
5. Advanced Features
6. Integration with AWS Services
7. Security and Best Practices
8. Troubleshooting and Debugging

 

AWS Sagemaker FAQs

It is a credential validating expertise in building and managing machine learning solutions using AWS SageMaker.

Data scientists, ML engineers, and cloud architects aiming to specialize in cloud-based machine learning.

Experience with Python, ML concepts, and basic AWS services is recommended.

Data preparation, model training, deployment, optimization, and integration with AWS services.

You can directly go to the AWS Sagemaker certification exam page, click- Add to Cart, make payment and register for the exam.

You will be required to re-register and appear for the AWS Sagemaker certification exam. There is no limit on exam retake.

There will be 50 questions of 1 mark each in the AWS Sagemaker certification exam.

No there is no negative marking in the AWS Sagemaker certification exam.

You have to score 25/50 to pass the AWS Sagemaker certification exam.

The result will be declared immediately on exam submission.