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Rust + PyO3 implementation scaffold for FastWOE.

Project description

fastwoe

Fast Weight of Evidence (WOE) Encoding and Inference

This repository is scaffolded as a Rust workspace with PyO3 bindings for Python.

Current Status

  • Rust core and PyO3 bindings are active for model and preprocessing paths.
  • Binary and multiclass inference with CI/IV analysis are available.
  • FAISS remains an optional Python-path binning method; it is not promoted to Rust-core implementation based on current benchmark results (docs/performance/FAISS_DECISION_BENCHMARK.md).

Workspace

  • crates/fastwoe-core: pure Rust WOE/statistics engine.
  • crates/fastwoe-py: PyO3 extension module (fastwoe_rs).

Prerequisites

  1. Install Rust (stable) with rustup.
  2. Install Python 3.9+.
  3. Install maturin: python -m pip install maturin

Recommended Environments

  • General development/runtime:
    • Python 3.9+ with project dependencies from pyproject.toml.
  • FAISS benchmarking/runtime (recommended separate env):
    • Use numpy<2 with faiss-cpu to avoid NumPy ABI issues in some FAISS builds.
    • Example: conda create -n fastwoe-faiss -c conda-forge python=3.12 numpy=1.26 pandas faiss-cpu maturin pytest ruff

Local Development

  1. Rust checks: cargo fmt --all cargo clippy --all-targets --all-features -D warnings cargo test --all-features
  2. Build/install Python extension in active environment: maturin develop --release --manifest-path crates/fastwoe-py/Cargo.toml

CI-Equivalent Local Repro (No Index Fetch)

If dependencies are already installed in a conda env (for example fastwoe-faiss), run:

bash scripts/repro_ci_local.sh fastwoe-faiss

This reproduces the CI-critical path without fetching packages from pip indexes:

  • release wheel build + install
  • parity/preprocessor/invariant tests
  • end-to-end latency threshold checks for kmeans and tree

This flow was validated on February 7, 2026.

Python Tooling

Ruff and Python dev settings are configured in pyproject.toml.

Optional FAISS path (Linux): python -m pip install '.[faiss]'

On macOS, install FAISS with conda-forge: conda install -c conda-forge faiss-cpu

Quick Python Usage

from fastwoe import FastWoe

model = FastWoe(smoothing=0.5, default_woe=0.0)
categories = ["A", "A", "B", "C"]
target = [1, 0, 0, 1]

model.fit(categories, target)
woe_values = model.transform(["A", "B", "Z"])
proba = model.predict_proba(["A", "B", "Z"])
mapping = model.get_mapping()

FastWoe accepts Python lists, NumPy arrays, pandas Series, and pandas DataFrames.

Multi-Feature API (Categorical Matrix)

from fastwoe import FastWoe

model = FastWoe()
rows = [
    ["A", "x"],
    ["A", "y"],
    ["B", "x"],
    ["C", "z"],
]
target = [1, 0, 0, 1]

model.fit_matrix(rows, target, feature_names=["cat", "bucket"])
X_woe = model.transform_matrix(rows)
proba = model.predict_proba_matrix(rows)
cat_mapping = model.get_feature_mapping("cat")

Multiclass One-vs-Rest API

from fastwoe import FastWoe

model = FastWoe(smoothing=0.5, default_woe=0.0)

rows = [
    ["A", "x"],
    ["A", "y"],
    ["B", "x"],
    ["C", "z"],
    ["B", "y"],
]
labels = ["c0", "c1", "c2", "c0", "c1"]

model.fit_matrix_multiclass(rows, labels, feature_names=["cat", "bucket"])
all_probs = model.predict_proba_matrix_multiclass(rows)  # shape: (n_rows, n_classes)
c1_probs = model.predict_proba_matrix_class(rows, "c1")
classes = model.get_class_labels()
X_woe_multi = model.transform_matrix_multiclass(rows)
woe_feature_names = model.get_feature_names_multiclass()

# Feature mapping for a specific class (one-vs-rest)
cat_mapping_for_c0 = model.get_feature_mapping_multiclass("c0", "cat")

Confidence Intervals

from fastwoe import FastWoe

model = FastWoe()
model.fit(["A", "B", "A"], [1, 0, 1])
ci = model.predict_ci(["A", "Z"], alpha=0.05)
# [(prediction, lower_ci, upper_ci), ...]

# Matrix APIs
rows = [["A", "x"], ["B", "y"]]
model.fit_matrix(rows, [1, 0], feature_names=["cat", "bucket"])
ci_matrix = model.predict_ci_matrix(rows, alpha=0.05)

# Multiclass APIs
model.fit_matrix_multiclass(rows, ["c0", "c1"], feature_names=["cat", "bucket"])
ci_multi = model.predict_ci_matrix_multiclass(rows, alpha=0.05)
ci_c0 = model.predict_ci_matrix_class(rows, "c0", alpha=0.05)

Assumption-Risk Diagnostics

predict_proba* and predict_ci* can emit warnings when FastWoe detects strong feature dependence or ultra-sparse categorical patterns in training data.

from fastwoe import FastWoe

model = FastWoe()
model.fit_matrix(rows, target, feature_names=["f0", "f1"])
diagnostics = model.get_assumption_diagnostics()

# Optional: disable runtime warnings in strict pipelines.
quiet_model = FastWoe(warn_on_assumption_risk=False)

IV Analysis (Credit-Scoring Focus)

from fastwoe import FastWoe

rows = [["A", "x"], ["A", "y"], ["B", "x"], ["C", "z"]]
target = [1, 0, 0, 1]

model = FastWoe()
model.fit_matrix(rows, target, feature_names=["cat", "bucket"])

# Per-feature Information Value with standard error + CI
iv_rows = model.get_iv_analysis(alpha=0.05)
iv_cat_only = model.get_iv_analysis(feature_name="cat", alpha=0.05)

# DataFrame output for reporting pipelines
iv_df = model.get_iv_analysis(as_frame=True)

# Multiclass one-vs-rest IV analysis for a specific class label
model.fit_matrix_multiclass(rows, ["c0", "c1", "c2", "c0"], feature_names=["cat", "bucket"])
iv_c0 = model.get_iv_analysis_multiclass("c0", alpha=0.05)

High-Cardinality Preprocessing

from fastwoe import WoePreprocessor, FastWoe

rows = [
    ["cat_1", "segment_a"],
    ["cat_1", "segment_b"],
    ["cat_2", "segment_a"],
    ["cat_99", "segment_z"],  # rare
]

pre = WoePreprocessor(top_p=0.9, min_count=2, max_categories=20)
rows_reduced = pre.fit_transform(rows)
summary = pre.get_reduction_summary()

model = FastWoe()
model.fit_matrix(rows_reduced, [1, 0, 0, 1], feature_names=["merchant", "segment"])

The categorical reduction path is backed by Rust (PreprocessorCore) when the extension is built. Numerical binning (quantile, uniform, kmeans, tree) is also Rust-backed via NumericBinnerCore; the FAISS path remains optional/Python-backed. For preprocessing, numeric features are marshaled to Rust as numeric values (not full-row strings), which reduces overhead for NumPy/pandas inputs.

Numerical binning is also supported before WOE:

from fastwoe import WoePreprocessor

rows = [[1000.0, "A"], [1200.0, "B"], [1400.0, "C"], [None, "D"]]
pre = WoePreprocessor(n_bins=3, binning_method="quantile")
rows_binned = pre.fit_transform(rows, numerical_features=[0], cat_features=[1])

kmeans (KBins-style) numeric binning is also supported:

from fastwoe import WoePreprocessor

rows = [[0.1], [0.2], [0.3], [10.0], [10.2], [20.0]]
pre = WoePreprocessor(n_bins=3, binning_method="kmeans")
rows_binned = pre.fit_transform(rows, numerical_features=[0])

Optional FAISS-backed 1D k-means binning is available when faiss is installed:

from fastwoe import WoePreprocessor

rows = [[0.1], [0.2], [0.3], [10.0], [10.2], [20.0]]
pre = WoePreprocessor(n_bins=3, binning_method="faiss")
rows_binned = pre.fit_transform(rows, numerical_features=[0])

If faiss cannot be imported or fails at runtime (for example, NumPy ABI mismatch), FastWoe falls back to kmeans and emits a RuntimeWarning.

Current benchmark decision: keep FAISS optional (do not move to Rust-core yet). See docs/performance/FAISS_DECISION_BENCHMARK.md for measured results.

Supervised tree-style numerical binning is available for binary targets:

from fastwoe import WoePreprocessor

rows = [[1000.0], [1100.0], [1200.0], [2000.0], [2100.0], [2200.0]]
y = [0, 0, 0, 1, 1, 1]
pre = WoePreprocessor(n_bins=2, binning_method="tree")
rows_binned = pre.fit_transform(rows, numerical_features=[0], target=y)

You can also enforce monotonic event-rate bins on numerical features:

from fastwoe import WoePreprocessor

rows = [[1.0], [2.0], [3.0], [4.0], [5.0], [6.0]]
y = [0, 0, 1, 1, 1, 1]
pre = WoePreprocessor(n_bins=4, binning_method="quantile")
rows_binned = pre.fit_transform(
    rows,
    numerical_features=[0],
    target=y,
    monotonic_constraints="increasing",
)

Pandas Output Mode

import pandas as pd
from fastwoe import FastWoe

X = pd.DataFrame({"cat": ["A", "B"], "bucket": ["x", "y"]})
y = [1, 0]

model = FastWoe()
model.fit_matrix(X, y, feature_names=X.columns)

X_woe_df = model.transform_matrix(X, as_frame=True)
ci_df = model.predict_ci_matrix(X, as_frame=True)
proba_multi_df = model.predict_proba_matrix_multiclass(X, as_frame=True)

Performance Guidance

  • Build extension wheels in optimized mode: python -m maturin build --release --manifest-path crates/fastwoe-py/Cargo.toml
  • Run core performance benchmarks: cargo bench -p fastwoe-core --bench woe_simulation
  • Run FAISS-vs-kmeans decision benchmark: python tools/benchmark_faiss_decision.py --methods kmeans tree faiss --sizes 10000 100000 --output docs/performance/
  • Run preprocessor memory benchmark: python tools/benchmark_preprocessor_memory.py --methods kmeans tree --sizes 10000 --output benchmark-artifacts/
  • Validate end-to-end latency thresholds: python tools/check_preprocessor_latency_thresholds.py --report benchmark-artifacts/FAISS_DECISION_BENCHMARK.md --threshold kmeans:10000:120:180 --threshold tree:10000:120:160
  • Validate end-to-end memory thresholds: python tools/check_preprocessor_memory_thresholds.py --report benchmark-artifacts/PREPROCESSOR_MEMORY_BENCHMARK.md --threshold kmeans:10000:150:190 --threshold tree:10000:150:190
  • Validate FAISS memory soft regression ratios (scheduled benchmark scope): python tools/check_faiss_memory_regression.py --report docs/performance/PREPROCESSOR_MEMORY_BENCHMARK.md --sizes 10000 100000 --max-pre-delta-ratio 1.5 --max-e2e-delta-ratio 1.5
  • Validate on your real credit-scoring CSV: python tools/benchmark_real_dataset.py --input-csv /path/to/credit.csv --target-col default_flag --methods kmeans tree --threshold kmeans:500:900 --threshold tree:500:900 --output benchmark-artifacts/
  • Release profile is tuned for runtime speed (lto=fat, codegen-units=1, stripped symbols).

Latest FAISS decision snapshot (docs/performance/FAISS_DECISION_BENCHMARK.md):

  • 10k rows preprocess best: kmeans 32.126 ms vs faiss 47.869 ms
  • 100k rows preprocess best: kmeans 453.994 ms vs faiss 493.762 ms
  • End-to-end best (preprocess + fit + predict): kmeans 49.710/616.789 ms vs faiss 58.275/650.255 ms
  • Outcome: do not implement Rust-core FAISS yet.

Troubleshooting

  • maturin failed: rustc is not installed: install Rust via rustup and ensure cargo is on PATH.
  • Unable to find maturin script (often in conda/venv mixed setups): add $CONDA_PREFIX/bin to PATH and run maturin CLI directly, or use bash scripts/repro_ci_local.sh <conda-env>.
  • ImportError: numpy.core.multiarray failed to import when importing faiss: use a separate environment with numpy<2 and reinstall FAISS in that env.
  • Extension import problems after Python/env change: rerun python -m maturin develop --release --manifest-path crates/fastwoe-py/Cargo.toml.

CI and Release

  • CI workflow: .github/workflows/ci.yml
  • Wheels workflow: .github/workflows/wheels.yml
  • Benchmark workflow: .github/workflows/benchmarks.yml
  • Release checklist: docs/release/RELEASE_CHECKLIST.md
  • Migration + limitations: docs/release/MIGRATION_AND_LIMITATIONS.md

Publishing flow (Wheels):

  • push tag v* builds Linux/macOS/Windows wheels + sdist, then publishes to PyPI.
  • Manual run with input publish_to:
  • none: build-only (artifact validation, no publish)
  • testpypi: publish to TestPyPI
  • pypi: publish to PyPI (without creating a new tag)

Trusted publishing setup (required once on PyPI/TestPyPI):

  • Repository: Finyasy/fastwoe
  • Workflow: .github/workflows/wheels.yml

Optional fallback (if OIDC trusted publishing is not configured yet):

  • Set GitHub secret PYPI_API_TOKEN for PyPI publish
  • Set GitHub secret TEST_PYPI_API_TOKEN for TestPyPI publish

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