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πŸŽ“ Masterclass in Agentic AI Engineering: Certification & Curriculum Plan ​

Welcome to the Masterclass in Agentic AI Engineering (MAIE) certification path. This curriculum represents a professional, forward-looking certification curriculum built to train and certify elite engineers in the necessary architecture, development, deployment, and optimization of production-grade autonomous agent systems.


πŸ›οΈ Learning Philosophy & Rationale ​

To achieve true commercial-grade mastery in the modern, forward-looking AI landscape, this course focuses on five critical "Engineering Gaps" found in traditional training paths:

  1. Local Inference & Optimization: Transitioning from fragile APIs to robust local serving engines (vLLM, llama.cpp) and quantization formats (AWQ, GGUF).
  2. Context Retrieval (RAG) Quality: Moving beyond basic vector search to advanced retrieval (semantic chunking, parent-child relations) and cross-encoder re-ranking.
  3. Execution Sandbox & Security: Implementing MicroVM virtualizations (gVisor) to safely run agent-generated code.
  4. Evaluation & Telemetry Rigor: Using LLM-as-a-Judge scoring matrices and OpenTelemetry tracing (Langfuse/Phoenix) to ensure production reliability.
  5. Agentic UX: Streaming cognitive thoughts in real-time via SSE/WebSockets for transparent human-agent collaboration.

πŸ—ΊοΈ Masterclass Certification Roadmap ​

PhaseModuleFocus
Phase 1: Foundations[M00: Core Prompting](../01_Core_Foundations/M00-core-prompting/Prompt & Context Engineering)Context Engineering & Parameters
M01: Developer Runtimesuv, conda, & Shell Optimization
M02: Frontier APIs & OpsGemini, Claude, OpenAI, & Jitter Backoff
M03: Local Lightweight ModelsGemma 2 2B, Ollama, & RAG Integration
Phase 2: Data & SafetyM04: Spec-Driven DevOpenAPI & Contract-First Design
M05: Structured OutputsPydantic & Token-Constrained Sampling
M06: Vector Storagepgvector & HNSW Graph Indexing
Phase 3: Retrieval & OpsM07: Advanced RAGSemantic Chunking & Re-ranking
M08: Intelligent Workflow Automationn8n, FastAPI, & Human-in-the-Loop
M09: SandboxingDocker & gVisor Kernel Isolation
Phase 4: ArchitecturesM10: Cloud OpsServerless GPUs & Secret Management
M11: Stateful GraphsLangGraph & Multi-Agent Loops
M12: Hermes ParadigmSelf-Improving Skill Generation
Phase 5: Production UXM13: Bot GatewaysOpenClaw & Mobile Interfaces
M14: Streaming UISSE, Streamlit, & Vercel AI SDK
M15: ObservabilityEvals, Tracing, & CI/CD Pipelines

πŸ“š Syllabus & Learning Objectives ​

Phase 1: Core Foundations ​

  • System Foundations: Install the foundational AI toolbelt (Conda, NVM, Postgres, Docker). View Guide β†’
  • M00: Core Prompting: Master system instructions, temperature tuning, and context window economics. [View Module β†’](../01_Core_Foundations/M00-core-prompting/Prompt & Context Engineering)
  • M01: Developer Runtimes: Build a high-performance Linux environment with uv and lazy-loading shells. View Module β†’
  • M02: API Foundations: Optimize network overhead via connection pooling and exponential jitter backoff. View Module β†’
  • M03: Local Inference: Deploy quantized models on local hardware using PagedAttention memory management. View Module β†’

Phase 2: Data Contracts & Safety ​

  • M04: Spec-Driven Dev: Use OpenAPI to create "contracts" that agents can autonomously parse and execute. View Module β†’
  • M05: Structured Outputs: Ensure 100% type safety using context-free grammar constraints and Pydantic. View Module β†’
  • M06: Vector Storage: Architect long-term agent memory using hybrid SQL/Vector storage with pgvector. View Module β†’

Phase 3: Retrieval & Security ​

  • M07: Advanced RAG: Implement semantic re-ranking and parent-child document mapping for high-precision recall. View Module β†’
  • M08: Event-Driven Automation: Build reactive agent workflows using webhooks, ASGI, and n8n. View Module β†’
  • M09: Sandboxing: Protect host kernels by executing agent-generated code inside gVisor-hardened Docker containers. View Module β†’

Phase 4: Cognitive Architectures ​

  • M10: Cloud Ops: Scale to serverless GPU grids like Modal for high-availability production workloads. View Module β†’
  • M11: Stateful Graphs: Model complex reasoning as cyclical graphs with human-in-the-loop approval gates. View Module β†’
  • M12: Hermes Paradigm: Deploy self-improving agents capable of autonomously generating and debugging their own skills. View Module β†’

Phase 5: Production & UI ​

  • M13: Bot Gateways: Securely expose local agents to Telegram/Slack using OpenClaw Skill middleware. View Module β†’
  • M14: Streaming UI: Implement Server-Sent Events to stream agent "thoughts" into interactive Streamlit frontends. View Module β†’
  • M15: Observability: Instrument full-stack tracing with Langfuse and implement automated LLM-as-a-Judge evals. View Module β†’

πŸ† Practical Examination & Certification Rubric ​

To achieve the Professional Agentic AI Engineer (PAIE) certification, candidates must successfully deploy a unified system matching the following rubric:

MetricFail (0-69%)Pass (70-89%)Honors (90-100%)
System SecurityStandard containers with no kernel boundary.Sandboxed Docker with gVisor.gVisor + Active Llama Guard prompt firewalls.
Parsing SafetyRelies on regex or standard string parses.Strict Pydantic parsing with retries.Guaranteed CFG-constrained sampling via Outlines.
Memory ArchBasic cosine similarity search.Hybrid pgvector search with metadata filters.Hybrid search + HNSW indexes + Temporal decay math.
ObservabilityNo logs or basic console prints.API tracing with Langfuse/Phoenix.Real-time tracing + automated regression evals.