Julian Wiley

The notebook curriculum for local AI

April 16, 2026· 1 min readAgentic Assistants

How numbered notebooks turn a broad assistant framework into a learning path.

Agentic AssistantsSystems DesignLocal FirstDevelopment Timeline

Why this mattered

The notebooks are more than examples; they are a sequence from core concepts to advanced local-first workflows.

This belongs in the development timeline because Agentic Assistants is not a single feature. It is a local-first assistant framework with a CLI, FastAPI and WebSocket server, MCP bridge, Next.js control panel, indexing, scoped retrieval, knowledge bases, pipelines, discovery, and training workflows. The project only became useful once its infrastructure decisions were written down well enough to be repeated.

Design decision

That sequence helps readers understand indexing, RAG, pipelines, storage, training, and deployment as connected skills.

The practical stack around this decision includes Python, Poetry, Click, FastAPI, WebSockets, MCP, LanceDB, Chroma, DuckDB, Polars, PyArrow, CrewAI, LangChain, LangGraph, Ollama, MLflow, OpenTelemetry, Next.js, Docusaurus. I try to keep the interfaces small: configuration describes intent, runtime code owns behavior, and operational notes explain what a future maintainer should check first.

What I would repeat

A curriculum makes the framework approachable without flattening the architecture.

The repeatable pattern is to make the boring path explicit. For this project that means clear repository boundaries, documented setup, predictable deployment commands, and enough observability to know whether the system is healthy or merely quiet.

Reader takeaway

If you are building something similar, start with the workflow you need to repeat every week. Then add only the platform pieces that make that workflow easier to recover, explain, and extend.