# irithyll Examples
Examples are organized in four tiers by complexity. Start at tier 1 and go
as deep as your use case demands.
```
examples/
01_quickstart/ -- first 5 minutes: zero-to-prediction
02_essentials/ -- production patterns you ship
03_neural/ -- advanced neural streaming architectures
04_advanced/ -- power-user: AutoML, kernels, projections, custom loss
```
## Quick navigation
| See the smallest possible program | `01_quickstart/hello_streaming` |
| Understand the full SGBT API | `01_quickstart/basic_regression` |
| Chain preprocessing + model | `02_essentials/pipeline_composition` |
| Evaluate models with prequential protocol | `02_essentials/streaming_metrics` |
| Handle concept drift | `02_essentials/drift_detection` |
| Do classification | `02_essentials/classification` |
| Get confidence intervals from RLS | `02_essentials/rls_confidence` |
| Use the async / tokio training API | `02_essentials/async_ingestion` |
| Try a neural architecture (start here) | `03_neural/kan_regression` |
| Run Mamba-3 temporal sequence learning | `03_neural/mamba3_temporal` |
| Tune hyperparameters automatically | `04_advanced/automl` or `04_advanced/factory_racing` |
| Learn a non-linear function with KRLS | `04_advanced/krls_nonlinear` |
| Reduce dimensionality online | `04_advanced/ccipca_reduction` |
## Running examples
```sh
cargo run --example hello_streaming
cargo run --example basic_regression
cargo run --example pipeline_composition
# ... and so on by name
```
All examples are self-contained. No external data files required.