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Microsoft AI-300 Exam Syllabus

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Before starting your AI-300 exam preparation, it is recommended to review the complete Microsoft Operationalizing Machine Learning and Generative AI Solutions exam syllabus and carefully go through the exam objectives listed below. Once you understand the exam structure and objectives, you should practice using our free AI-300 questions. We also provide premium AI-300 practice test, fully updated according to the latest exam objectives, to help you accurately assess your preparedness for the actual exam.

Microsoft
Vendor
AI-300
Exam Code
60
Total Questions
5
Total Exam Domains

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AI-300 EXAM QUESTIONS

Microsoft AI-300 Exam Objectives

Section 1: Design and implement an MLOps infrastructure
Weight:
15-20%
Create and manage resources in a Machine Learning workspace
  • Create and manage a workspace
  • Create and manage datastores
  • Create and manage compute targets
  • Configure identity and access management for workspaces
Create and manage assets in a Machine Learning workspace
  • Create and manage data assets
  • Create and manage environments
  • Create and manage components
  • Share assets across workspaces by using registries
Implement IaC for Machine Learning
  • Configure GitHub integration with Machine Learning to enable secure access
  • Deploy Machine Learning workspaces and resources by using Bicep and Azure CLI
  • Automate resource provisioning by using GitHub Actions workflows
  • Restrict network access to Machine Learning workspaces
  • Manage source control for machine learning projects by using Git
Section 2: Implement machine learning model lifecycle and operations
Weight:
25-30%
Orchestrate model training
  • Configure experiment tracking with MLflow
  • Use automated machine learning to explore optimal models
  • Use notebooks for experimentation and exploration
  • Automate hyperparameter tuning
  • Run model training scripts
  • Manage distributed training for large and deep learning models
  • Implement training pipelines
  • Compare model performance across jobs
Implement model registration and versioning
  • Package a feature retrieval specification with the model artifact
  • Register an MLflow model
  • Evaluate a model by using responsible AI principles
  • Manage model lifecycle, including archiving models
Deploy machine learning models for production environments
  • Deploy models as real-time or batch endpoints with managed inference options
  • Test and troubleshoot model endpoints
  • Implement progressive rollout and safe rollback strategies
Monitor and maintain machine learning models in production
  • Detect and analyze data drift
  • Monitor performance metrics of models deployed to production
  • Configure retraining or alert triggers when thresholds are exceeded
Section 3: Design and implement a GenAIOps infrastructure
Weight:
20-25%
Implement Foundry environments and platform configuration
  • Create and configure Foundry resources and project environments
  • Configure identity and access management with managed identities and role-based access control (RBAC)
  • Implement network security and private networking configurations
  • Deploy infrastructure using Bicep templates and Azure CLI
Deploy and manage foundation models for production workloads
  • Deploy foundation models by using serverless API endpoints and managed compute options
  • Select appropriate models for specific use cases
  • Implement model versioning and production deployment strategies
  • Configure provisioned throughput units for high-volume workloads
Implement prompt versioning and management with source control
  • Design and develop prompts
  • Create prompt variants and compare performance across different prompts
  • Implement version control for prompts by using Git repositories
Section 4: Implement generative AI quality assurance and observability
Weight:
10-15%
Configure evaluation and validation for generative AI applications and agents
  • Create test datasets and data mapping for comprehensive model evaluation
  • Implement AI quality metrics, including groundedness, relevance, coherence, and fluency
  • Configure risk and safety evaluations for harmful content detection
  • Set up automated evaluation workflows by using built-in and custom evaluation metrics
Implement observability for generative AI applications and agents
  • Examine continuous monitoring in Foundry
  • Monitor performance metrics, including latency, throughput, and response times
  • Track and optimize cost metrics, including token consumption and resource usage
  • Configure detailed logging, tracing, and debugging capabilities for production troubleshooting
Section 5: Optimize generative AI systems and model performance
Weight:
10-15%
Optimize retrieval-augmented generation (RAG) performance and accuracy
  • Optimize retrieval performance by tuning similarity thresholds, chunk sizes, and retrieval strategies
  • Select and fine-tune embedding models for domain-specific use cases and accuracy improvements
  • Implement and optimize hybrid search approaches combining semantic and keyword-based retrieval
  • Evaluate and improve RAG system performance by using relevance metrics and A/B testing frameworks
Implement advanced fine-tuning and model customization
  • Design and implement advanced fine-tuning methods
  • Create and manage synthetic data for fine-tuning
  • Monitor and optimize fine-tuned model performance
  • Manage a fine-tuned model from development through production deployment
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