AWS Certified Machine Learning Specialty Practice Exam
AWS Certified Machine Learning Specialty is a data science specific
certification that validates skills in building, training, tuning, and
deploying machine learning (ML) models on the AWS platform. It is apt
for data scientists, developers, and machine learning practitioners to
validate their knowledge and skills in using AWS services for machine
learning workflows, including data preparation, feature engineering, and
model optimization. This certification enables professionals to
demonstrate their expertise in creating scalable, secure, and
cost-effective ML solutions on AWS.
Why is AWS Certified Machine Learning Specialty important?
- Globally recognized leading certification in the domain of AI and ML.
- Attests to your proficiency in building and deploying machine learning models on AWS.
- Validates expertise in applying machine learning concepts and best practices.
- Shows ability to use AWS ML services like SageMaker, Polly, Rekognition, and more.
- Enhances career prospects in machine learning and data science roles.
- Validates skills in scaling ML workflows and optimizing ML models for performance.
- Sows your ability to automate and secure machine learning models on AWS.
Who should take the AWS Certified Machine Learning Specialty Exam?
- Machine Learning Engineer
- Data Scientist
- AI Specialist
- Data Engineer
- Research Scientist
- Software Developer (with ML focus)
- Cloud Architect (with ML specialization)
- Analytics Specialist
- DevOps Engineer (with ML/AI focus)
- Business Intelligence Engineer
Skills Evaluated
Candidates taking the certification exam on the AWS Certified Machine Learning Specialty is evaluated for the following skills:
- Data engineering and data preparation techniques for ML workflows.
- Feature engineering and model tuning to improve performance.
- Training, deploying, and scaling ML models using AWS services like SageMaker.
- Model monitoring, evaluation, and optimization for performance and cost.
- Machine learning algorithms and frameworks, including supervised and unsupervised learning.
- Using AWS services like Rekognition, Polly, and Transcribe for AI/ML applications.
- Managing security and compliance for machine learning solutions on AWS.
- Automating machine learning tasks and workflows in AWS environments.
- Understanding of deployment strategies for large-scale ML models.
- Optimization of resources for cost-effective machine learning implementations.
AWS Certified Machine Learning Specialty Certification Course Outline
The AWS Certified Machine Learning Specialty certification covers the following topics -
Domain 1: Data Engineering
- Task Statement 1.1: Create data repositories for ML.
- Task Statement 1.2: Identify and implement a data ingestion solution.
- Task Statement 1.3: Identify and implement a data transformation solution.
Domain 2: Exploratory Data Analysis
- Task Statement 2.1: Sanitize and prepare data for modeling.
- Task Statement 2.2: Perform feature engineering.
- Task Statement 2.3: Analyze and visualize data for ML.
Domain 3: Modeling
- Task Statement 3.1: Frame business problems as ML problems.
- Task Statement 3.2: Select the appropriate model(s) for a given ML problem.
- Task Statement 3.3: Train ML models.
- Task Statement 3.4: Perform hyperparameter optimization.
- Task Statement 3.5: Evaluate ML models.
Domain 4: Machine Learning Implementation and Operations
- Task Statement 4.1: Build ML solutions for performance, availability, scalability,
- Task Statement 4.2: Recommend and implement the appropriate ML services and
- Task Statement 4.3: Apply basic AWS security practices to ML solutions.
- Task Statement 4.4: Deploy and operationalize ML solutions.