User Tools

Site Tools


wiki:ai:cloud_ai_training_plan
Approved 2025/05/14 12:16 by ddehamer (version: 1) | Approver: @ai-us-principals

Cloud AI Training Plan

Phase Audience Topics Courses Duration
Phase 1: Core AI/ML Specialization All team members ML Fundamentals, ML in IT Ops, Responsible AI Google ML Crash Course, AI for Everyone, AWS ML Essentials Weeks 1–4
Phase 2: MLOps, Automation & Monitoring ML Engineers, SREs, DevOps CI/CD for ML, Model Monitoring, Auto-remediation Coursera MLOps, AWS MLOps Workshop, Azure ML MLOps Weeks 5–8
Phase 3: Applied Use Cases All team members NLP for tickets, Forecasting, Log Anomalies, Generative AI Fast.ai, DataCamp NLP, Prompt Engineering Guide Weeks 9–12
Phase 4: Governance, Security, and FinOps Solution Architects, PMs, Security Engineers Responsible AI, FinOps, Multi-cloud Governance AI Governance (Coursera), FinOps Practitioner, Microsoft RA Guide Weeks 13–14
Capstone Project Full team Real-world AI solution with CI/CD, monitoring, dashboards Internal Project Weeks 15–18

AI Cloud Managed Services Policies and Procedures

wiki/ai/cloud_ai_training_plan.txt · Last modified: by ddehamer