Examples
Each example in this section is a complete, runnable Python program. The pages walk through the code section by section so you can see how the pieces fit together. Copy any example as a starting point for your own project.
Examples in this section
| Example | What it shows |
|---|---|
| Data extraction pipeline | Use @generative with a typed return to pull structured data from unstructured text |
| Legacy code integration | Apply @mify to existing Python classes so the model can act on them |
| Resilient RAG with fallback | Build a FAISS retrieval pipeline with an LLM relevance filter before generation |
| Traced generation loop | Enable OpenTelemetry application and backend traces with two environment variables |
All example categories
The repository contains many more runnable examples than the four documented
above. Every category has its own README.md and one or more .py files ready
to run.
Core concepts
| Category | What it shows |
|---|---|
instruct_validate_repair/ | The IVR loop end-to-end: basic generation, adding requirements, automatic repair on failure, custom validators |
generative_stubs/ | @generative functions with typed returns, pipeline composition, ChatContext persona injection, pre/postcondition checks |
context/ | Context inspection, sampling with context trees, parallel context branches |
sessions/ | Custom session types and backend selection |
async/ | How to utilize basic async capabilities |
streaming/ | stream_with_chunking() with per-chunk validation, typed event vocabulary, early-exit on fail |
Data and documents
| Category | What it shows |
|---|---|
information_extraction/ | Named entity recognition and type-safe structured extraction with Pydantic |
mobject/ | Table queries and transformations using MObject structured data types |
mify/ | @mify on existing classes — custom string representations, field filtering, funcs_include |
rag/ | FAISS vector search, @generative bool relevance filter, grounding_context for grounded generation |
Agents and tools
| Category | What it shows |
|---|---|
agents/ | ReACT reasoning-and-acting loop, multi-turn tool workflows |
tools/ | @tool definition, code interpreter integration, tool argument validation, safe eval patterns |
mini_researcher/ | Complete research assistant: multi-model architecture, document retrieval, safety checks, custom validation pipeline |
Extensibility
| Category | What it shows |
|---|---|
plugins/ | Plugin system end-to-end: function hooks, class-based plugins, payload modification, scoped and session-scoped plugins, PluginSet composition, execution modes, tool hooks, and testing patterns |
Safety and validation
| Category | What it shows |
|---|---|
intrinsics/ | Guardian Intrinsics: guardian_check() for harm, jailbreak, social bias, groundedness; policy_guardrails(); factuality_detection() / factuality_correction() |
safety/ | (Examples removed — see Guardian how-to guide for the current API. The RepairTemplateStrategy gap is tracked in #1071.) |
Integration and deployment
| Category | What it shows |
|---|---|
m_serve/ | Deploying Mellea programs as REST APIs with production deployment patterns |
m_decompose/ | Decomposing complex prompts into sub-tasks via the CLI and Python API |
library_interop/ | LangChain message conversion, OpenAI format compatibility, cross-library workflows |
mcp/ | MCP tool creation, Claude Desktop integration, Langflow integration |
bedrock/ | Amazon Bedrock backend configuration and usage |
Performance and advanced sampling
| Category | What it shows |
|---|---|
aLora/ | Training aLoRA adapters for fast constraint checking; performance optimisation |
intrinsics/ | (Non-Guardian) Answer relevance, hallucination detection, citation validation, context relevance — specialised adapter-backed checks. For Guardian safety functions see Safety and validation above |
granite-switch/ | Running intrinsics via OpenAI backend with Granite Switch embedded adapters |
sofai/ | Two-tier sampling: fast-model iteration with escalation to a slow model; cost optimisation |
Multimodal
| Category | What it shows |
|---|---|
image_text_models/ | Vision-language models, ImageBlock, multimodal prompting, backend support matrix |
Observability
| Category | What it shows |
|---|---|
telemetry/ | OpenTelemetry application and backend traces; span export configuration |
Experimental
| Category | What it shows |
|---|---|
melp/ | ⚠️ Experimental lazy evaluation — thunks, deferred execution, advanced control flow |
Getting started and tutorials
| Category | What it shows |
|---|---|
hello_world.py | Minimal single-file starting point |
tutorial/ | Python script versions of the tutorials: email generation, IVR, generative stubs, contexts, MObjects, model options, and more |
notebooks/ | Jupyter notebook versions of the same tutorials for interactive, cell-by-cell exploration |
Running the examples
All examples are in the docs/examples/ directory of the repository. Unless
otherwise noted, run them with:
python docs/examples/<folder>/<file>.py
Some examples declare inline script dependencies using the
PEP 723 /// script block and can be
run with uv run instead:
uv run docs/examples/<folder>/<file>.py
Default backend: start_session() with no arguments connects to a local
Ollama instance running IBM Granite 4 Micro
(granite4.1:3b). Make sure Ollama is running before you execute any example.