AWS Certified AI Practitioner (AIF-C01) Practice Exam

AWS Certified AI Practitioner (AIF-C01) Practice Exam

AWS Certified AI Practitioner (AIF-C01) Practice Exam

 

The AWS Certified AI Practitioner (AIF-C01) is a professional certification that shows expertise in using artificial intelligence (AI) and machine learning (ML) services on the AWS platform. It shows that a person can understand AI concepts, select the right AWS services, and apply AI solutions to solve business problems. This certification is ideal for business analysts, IT professionals, and developers who want to leverage AI technologies to improve business operations and decision-making.

Recognized globally, the AIF-C01 certification helps professionals stand out in AI-focused roles. By earning this credential, individuals demonstrate the ability to identify AI opportunities, implement AWS AI services, and analyze results effectively. Organizations benefit from certified professionals who can use AI solutions to automate processes, gain insights from data, and enhance overall business performance.

 

Who should take the Exam?

This exam is ideal for:

  • Business Analysts
  • Marketing Professionals
  • Product or Project Managers
  • IT Support Specialists
  • Sales Professionals
  • Line-of-Business or IT Managers

 

Skills Required

  • Understanding of AI/ML Concepts
  • Knowledge of AWS Core Services
  • Knowledge of Generative AI
  • Awareness of Responsible AI Practices

 

Knowledge Gained

 

  • AI/ML and Generative AI Concepts
  • AWS AI/ML Services
  • Use Cases for AI/ML
  • Responsible AI Practices


Course Outline

The AWS Certified AI Practitioner (AIF-C01) Exam covers the following topics - 

Domain 1. Data Preparation for Machine Learning (28%)

  • Data formats: Parquet, JSON, CSV, ORC, Avro, RecordIO
  • Ingestion tools: Amazon S3, EFS, FSx, Kinesis, Kafka, Flink
  • Feature engineering: SageMaker Data Wrangler, Feature Store
  • Data transformation: AWS Glue, Apache Spark
  • Troubleshooting ingestion and storage issues
  • Storage decisions based on cost/performance

 

Domain 2. Build ML Solutions (24%)

  • Model selection and training using SageMaker
  • Hyperparameter tuning and optimization
  • Use of built-in algorithms and frameworks
  • Model evaluation metrics (e.g., precision, recall, F1 score)
  • Debugging training jobs and handling failures

 

Domain 3. Deploy and Operationalize ML Solutions (20%)

  • Model deployment strategies: real-time, batch, asynchronous
  • Endpoint configuration and scaling
  • Monitoring and logging with CloudWatch
  • CI/CD pipelines for ML workflows
  • A/B testing and shadow deployments

 

Domain 4. Monitor, Troubleshoot, and Optimize ML Solutions (28%)

  • Model drift detection and retraining
  • Performance monitoring and alerting
  • Cost optimization strategies
  • Security and compliance best practices
  • Troubleshooting deployment and inference issues

 


 

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