# `pp_range_disc` — Range Discretizer _Group_: **Preprocessing** · _Binding_: `n4m.sklearn.RangeDiscretizer` · _C ABI_: `n4m_pp_range_disc_*` ## Description Integer binning against monotonic numeric edges. ### Parameters | Name | Type | Default | |------|------|---------| | `edges` | `Sequence[float] | None` | `None` | | `edges_csv` | `str | None` | `None` | ## Explanations ### Bibliographic source _Standard spectroscopic operator — see the nirs4all preprocessing / augmentation handbook and the cited literature within the binding docstring._ ### Mathematical principle Integer binning against monotonic numeric edges. ### Implementation C ABI `n4m_pp_range_disc_*` in libn4m (create / apply / destroy lifecycle), wrapped by `n4m.sklearn.RangeDiscretizer`. The same numerical kernel backs every language binding. ### Usage ```python from n4m.sklearn import RangeDiscretizer op = RangeDiscretizer() X_transformed = op.fit_transform(X) ``` ### Benchmarks Adaptive wall-clock per cell measured against [`full_matrix.csv`](../benchmarks/overview.md). Only backends that implement this method are listed; libraries without the method are omitted. **Verdict** · ✓ ref / ≈ ref / ~ shape mark a reference-gate pass at strict / relaxed / qualitative tolerance · ✓ bind = pls4all binding agrees with the C++ baseline · ✗ divergent · ⚠ error · — not run. The fastest backend per column is marked 🏆. **Reference gate**: strict — numeric equivalence (`rmse_rel_tol ≤ 1e-12`). ::::{tab-set} :class: parity-tabs :::{tab-item} 1 thread :sync: threads-1
| Backend | Parity | 50×250 (ms) | 250×50 (ms) |
|---|---|---|---|
| C++ native · libn4m | |||
pls4all.cpp.blas+omp | ✓ ref | — | — |
| Python · external | |||
ref.python_numpy | source | — | — |