Skip to main content

High-performance quantitative finance feature engineering library

Project description

ml4t-engineer

Python 3.12+ PyPI License: MIT

Feature engineering for financial machine learning: validated features, labeling methods, alternative bars, and leakage-safe dataset preparation.

Part of the ML4T Library Ecosystem

This library is one of six interconnected libraries supporting the machine learning for trading workflow described in Machine Learning for Trading:

ML4T Library Ecosystem

Together they cover data infrastructure, feature engineering, modeling, signal evaluation, strategy backtesting, and live deployment.

What This Library Does

Transforming raw price data into predictive features is a core task in quantitative research. ml4t-engineer provides:

  • 120 registry features across 11 categories (momentum, volatility, trend, microstructure, and more)
  • Triple-barrier, ATR-based, percentile, trend-scanning, and meta-labeling methods from Advances in Financial Machine Learning
  • Alternative bar sampling (volume bars, dollar bars, tick imbalance bars)
  • Dataset building, preprocessing, and feature discovery for leakage-safe ML workflows

The library is built on Polars with Numba JIT compilation for numerical operations. 60 features are validated against TA-Lib at 1e-6 tolerance.

ml4t-engineer Architecture

Installation

pip install ml4t-engineer

Optional dependencies:

pip install ml4t-engineer[ta]        # TA-Lib backend
pip install ml4t-engineer[viz]       # Visualization
pip install ml4t-engineer[calendars] # Trading calendars

Quick Start

import polars as pl
from ml4t.engineer import compute_features

df = pl.read_parquet("ohlcv.parquet")

# Compute features with default parameters
result = compute_features(df, ["rsi", "macd", "atr", "obv"])

# Or with custom parameters
result = compute_features(df, [
    {"name": "rsi", "params": {"period": 20}},
    {"name": "bollinger_bands", "params": {"period": 20, "std_dev": 2.0}},
])

Feature Registry

from ml4t.engineer.core.registry import get_registry

registry = get_registry()
print(registry.list_all())                    # All 120 features
print(registry.list_by_category("momentum"))  # 31 momentum indicators
print(registry.list_ta_lib_compatible())      # 60 TA-Lib validated features
print(registry.list_normalized())             # 37 bounded (0-100, -1 to 1)

Feature Categories

Category Count Examples
Momentum 31 RSI, MACD, Stochastic, CCI, ADX, MFI
Microstructure 15 Kyle Lambda, VPIN, Amihud, Roll spread
Volatility 15 ATR, Bollinger, Yang-Zhang, Parkinson
Statistics 14 Variance, Linear Regression, Correlation
ML 14 Fractional Diff, Entropy, Lag features
Trend 10 SMA, EMA, WMA, DEMA, TEMA, KAMA
Risk 6 Max Drawdown, Sortino, CVaR
Price Transform 5 Typical Price, Weighted Close
Regime 4 Hurst Exponent, Choppiness Index
Volume 3 OBV, AD, ADOSC
Math 3 MAX, MIN, SUM

Triple-Barrier Labeling

from ml4t.engineer.config import LabelingConfig
from ml4t.engineer.labeling import triple_barrier_labels, atr_triple_barrier_labels

# Fixed barriers
tb_config = LabelingConfig.triple_barrier(
    upper_barrier=0.02,    # 2% profit target
    lower_barrier=0.01,    # 1% stop loss
    max_holding_period=20, # 20 bars
)
labels = triple_barrier_labels(
    df,
    config=tb_config,
)

# ATR-based dynamic barriers
atr_config = LabelingConfig.atr_barrier(
    atr_tp_multiple=2.0,
    atr_sl_multiple=1.0,
    atr_period=14,
    max_holding_period=20,
)
labels = atr_triple_barrier_labels(
    df,
    config=atr_config,
)

# Time-based horizons
tb_time_config = LabelingConfig.triple_barrier(
    upper_barrier=0.02,
    lower_barrier=0.01,
    max_holding_period="4h",  # 4 hours
)
labels = triple_barrier_labels(
    df,
    config=tb_time_config,
)

Alternative Bars

from ml4t.engineer.bars import VolumeBarSampler, DollarBarSampler, TickImbalanceBarSampler

# Volume bars (equal volume per bar)
vbars = VolumeBarSampler(volume_per_bar=1000).sample(tick_data)

# Dollar bars (equal dollar volume per bar)
dbars = DollarBarSampler(dollars_per_bar=1_000_000).sample(tick_data)

# Tick imbalance bars (information-driven)
ibars = TickImbalanceBarSampler(expected_ticks_per_bar=100).sample(tick_data)

Documentation

  • Docs Home - library overview and workflow map
  • Quickstart - first working feature and labeling workflow
  • Features - 120 features across 11 registry categories
  • Labeling - 7 labeling methods for supervised learning
  • Dataset Builder - leakage-safe train/test preparation
  • Examples - runnable scripts for complete workflows and focused features

Technical Characteristics

  • Polars-native: All computations use Polars expressions
  • Numba-accelerated: JIT compilation for numerical kernels
  • TA-Lib validated: 60 features validated at 1e-6 tolerance
  • AFML-compliant: Labeling methods verified against Advances in Financial Machine Learning
  • ML-ready outputs: 37 features produce bounded outputs (0-100, -1 to 1) for direct model input; remaining features work with standard preprocessing (returns, z-scores, robust scaling)

Related Libraries

  • ml4t-specs: Shared feed and artifact schema definitions across the ML4T stack
  • ml4t-data: Market data acquisition and storage
  • ml4t-diagnostic: Signal evaluation and statistical validation
  • ml4t-backtest: Event-driven backtesting
  • ml4t-live: Live trading with broker integration

Development

git clone https://github.com/ml4t/engineer.git
cd ml4t-engineer
uv sync
uv run pytest tests/ -q
uv run ty check

References

  • Lopez de Prado, M. (2018). Advances in Financial Machine Learning. Wiley.
  • Lopez de Prado, M. (2020). Machine Learning for Asset Managers. Cambridge.

License

MIT License - see LICENSE for details.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ml4t_engineer-0.1.0b9.tar.gz (542.7 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

ml4t_engineer-0.1.0b9-py3-none-any.whl (365.1 kB view details)

Uploaded Python 3

File details

Details for the file ml4t_engineer-0.1.0b9.tar.gz.

File metadata

  • Download URL: ml4t_engineer-0.1.0b9.tar.gz
  • Upload date:
  • Size: 542.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.13

File hashes

Hashes for ml4t_engineer-0.1.0b9.tar.gz
Algorithm Hash digest
SHA256 7c8aaae89cf57fbab8fb2bb2a75f551f7c688641e2d1512269840e625b7d8598
MD5 6d0225903efdf68861ea6a9a61246ec8
BLAKE2b-256 202bd00615080e3209d0c173d30cbc6b1c2e2923d395d9dc866da713d4cb9fb0

See more details on using hashes here.

Provenance

The following attestation bundles were made for ml4t_engineer-0.1.0b9.tar.gz:

Publisher: release.yml on ml4t/engineer

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file ml4t_engineer-0.1.0b9-py3-none-any.whl.

File metadata

  • Download URL: ml4t_engineer-0.1.0b9-py3-none-any.whl
  • Upload date:
  • Size: 365.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.13

File hashes

Hashes for ml4t_engineer-0.1.0b9-py3-none-any.whl
Algorithm Hash digest
SHA256 8726c8c77df839252c3bf58fdb240c72430c2eb3a0858a78dcedc987ca1c7481
MD5 7b818b4b27d7c65f31baca385df75995
BLAKE2b-256 89e4f54ea7e7e7a270b59e1e00e5476fc957edd84c85a0aa3dd0148f0072deff

See more details on using hashes here.

Provenance

The following attestation bundles were made for ml4t_engineer-0.1.0b9-py3-none-any.whl:

Publisher: release.yml on ml4t/engineer

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page