Skip to main content

Python wrapper for lawkit - Statistical law analysis toolkit for fraud detection and data quality assessment

Project description

lawkit-python

Python wrapper for the lawkit CLI tool - Statistical law analysis toolkit for fraud detection and data quality assessment.

Installation

pip install lawkit-python

This includes the lawkit binary embedded in the wheel - no download required.

Quick Start

import lawkit

# Analyze financial data with Benford Law
result = lawkit.analyze_benford('financial_data.csv')
print(result)

# Get structured JSON output
json_result = lawkit.analyze_benford(
    'accounting.csv',
    lawkit.LawkitOptions(format='json')
)
print(f"Risk level: {json_result.risk_level}")
print(f"P-value: {json_result.p_value}")

# Check if data follows Pareto principle (80/20 rule)
pareto_result = lawkit.analyze_pareto(
    'sales_data.csv',
    lawkit.LawkitOptions(format='json', gini_coefficient=True)
)
print(f"Gini coefficient: {pareto_result.gini_coefficient}")
print(f"80/20 concentration: {pareto_result.concentration_80_20}")

Features

Statistical Laws Supported

  • Benford Law: Detect fraud and anomalies in numerical data
  • Pareto Principle: Analyze 80/20 distributions and concentration
  • Zipf Law: Analyze word frequencies and power-law distributions
  • Normal Distribution: Test for normality and detect outliers
  • Poisson Distribution: Analyze rare events and count data

Advanced Analysis

  • Multi-law Comparison: Compare multiple statistical laws on the same data
  • Outlier Detection: Advanced anomaly detection algorithms
  • Time Series Analysis: Trend and seasonality detection
  • International Numbers: Support for various number formats (Japanese, Chinese, etc.)
  • Memory Efficient: Handle large datasets with streaming analysis

File Format Support

  • CSV, JSON, YAML, TOML, XML: Standard structured data formats
  • Excel Files: .xlsx and .xls support
  • PDF Documents: Extract and analyze numerical data from PDFs
  • Word Documents: Analyze data from .docx files
  • PowerPoint: Extract data from presentations

Usage Examples

Command Line Interface (CLI) via Python Module

# Install and use immediately - binary included automatically
pip install lawkit-python

# Use lawkit CLI directly through Python module
python -m lawkit benf financial_data.csv
python -m lawkit pareto sales_data.csv --gini-coefficient
python -m lawkit analyze --laws all dataset.csv
python -m lawkit validate dataset.csv --consistency-check
python -m lawkit diagnose dataset.csv --report detailed

# Generate sample data for testing
python -m lawkit generate benf --samples 1000 --output-file test_data.csv
python -m lawkit generate pareto --samples 500 --concentration 0.8

Modern API (Recommended)

import lawkit

# Analyze with Benford Law
result = lawkit.analyze_benford('invoice_data.csv')
print(result)

# Get detailed JSON analysis
json_result = lawkit.analyze_benford(
    'financial_statements.xlsx',
    lawkit.LawkitOptions(
        format='excel',
        output='json',
        confidence=0.95,
        verbose=True
    )
)

if json_result.risk_level == "High":
    print("⚠️  High risk of fraud detected!")
    print(f"Chi-square: {json_result.chi_square}")
    print(f"P-value: {json_result.p_value}")
    print(f"MAD: {json_result.mad}%")

# Pareto analysis for business insights
pareto_result = lawkit.analyze_pareto(
    'customer_revenue.csv',
    lawkit.LawkitOptions(
        output='json',
        gini_coefficient=True,
        business_analysis=True,
        percentiles="70,80,90"
    )
)

print(f"Top 20% customers generate {pareto_result.concentration_80_20:.1f}% of revenue")
print(f"Income inequality (Gini): {pareto_result.gini_coefficient:.3f}")

# Normal distribution analysis with outlier detection
normal_result = lawkit.analyze_normal(
    'quality_measurements.csv',
    lawkit.LawkitOptions(
        output='json',
        outlier_detection=True,
        test_type='shapiro'
    )
)

if normal_result.p_value < 0.05:
    print("Data does not follow normal distribution")
    if normal_result.outliers:
        print(f"Found {len(normal_result.outliers)} outliers")

# Multi-law analysis
analysis = lawkit.analyze_laws(
    'complex_dataset.csv',
    lawkit.LawkitOptions(format='json', laws='benf,pareto,zipf')
)
print(f"Analysis results: {analysis.data}")
print(f"Overall risk level: {analysis.risk_level}")

# Data validation
validation = lawkit.validate_laws(
    'complex_dataset.csv',
    lawkit.LawkitOptions(format='json', consistency_check=True)
)
print(f"Validation status: {validation.data}")

# Conflict diagnosis
diagnosis = lawkit.diagnose_laws(
    'complex_dataset.csv',
    lawkit.LawkitOptions(format='json', report='detailed')
)
print(f"Diagnosis: {diagnosis.data}")

Generate Sample Data

import lawkit

# Generate Benford Law compliant data
benford_data = lawkit.generate_data('benf', samples=1000, seed=42)
print(benford_data)

# Generate normal distribution data
normal_data = lawkit.generate_data('normal', samples=500, mean=100, stddev=15)

# Generate Pareto distribution data
pareto_data = lawkit.generate_data('pareto', samples=1000, concentration=0.8)

# Test the pipeline: generate → analyze
data = lawkit.generate_data('benf', samples=10000, seed=42)
result = lawkit.analyze_string(data, 'benf', lawkit.LawkitOptions(output='json'))
print(f"Generated data risk level: {result.risk_level}")

Analyze String Data Directly

import lawkit

# Analyze CSV data from string
csv_data = """amount
123.45
456.78
789.12
234.56
567.89"""

result = lawkit.analyze_string(
    csv_data,
    'benf',
    lawkit.LawkitOptions(format='json')
)
print(f"Risk assessment: {result.risk_level}")

# Analyze JSON data
json_data = '{"values": [12, 23, 34, 45, 56, 67, 78, 89]}'
result = lawkit.analyze_string(
    json_data,
    'normal',
    lawkit.LawkitOptions(format='json')
)
print(f"Is normal: {result.p_value > 0.05}")

Advanced Options

import lawkit

# High-performance analysis with optimization
result = lawkit.analyze_benford(
    'large_dataset.csv',
    lawkit.LawkitOptions(
        optimize=True,
        parallel=True,
        memory_efficient=True,
        min_count=50,
        threshold=0.001
    )
)

# International number support
result = lawkit.analyze_benford(
    'japanese_accounting.csv',
    lawkit.LawkitOptions(
        international=True,
        format='csv',
        output='json'
    )
)

# Time series analysis
result = lawkit.analyze_normal(
    'sensor_data.csv',
    lawkit.LawkitOptions(
        time_series=True,
        outlier_detection=True,
        output='json'
    )
)

Legacy API (Backward Compatibility)

from lawkit import run_lawkit

# Direct command execution
result = run_lawkit(["benf", "data.csv", "--format", "csv", "--output", "json"])

if result.returncode == 0:
    print("Analysis successful")
    print(result.stdout)
else:
    print("Analysis failed")
    print(result.stderr)

# Legacy analysis functions
from lawkit.compat import run_benford_analysis, run_pareto_analysis

benford_result = run_benford_analysis("financial.csv", format="csv", output="json")
pareto_result = run_pareto_analysis("sales.csv", gini_coefficient=True)

Installation and Setup

Automatic Installation (Recommended)

pip install lawkit-python

The binary is pre-embedded in the wheel for your platform.

Manual Binary Installation

If automatic download fails:

lawkit-download-binary

Development Installation

git clone https://github.com/kako-jun/lawkit
cd lawkit/lawkit-python
pip install -e .[dev]

Verify Installation

import lawkit

# Check if lawkit is available
if lawkit.is_lawkit_available():
    print("✅ lawkit is installed and working")
    print(f"Version: {lawkit.get_version()}")
else:
    print("❌ lawkit is not available")

# Run self-test
if lawkit.selftest():
    print("✅ All tests passed")
else:
    print("❌ Self-test failed")

Use Cases

Financial Fraud Detection

import lawkit

# Analyze invoice amounts for fraud
result = lawkit.analyze_benford('invoices.csv', 
                               lawkit.LawkitOptions(output='json'))

if result.risk_level in ['High', 'Critical']:
    print("🚨 Potential fraud detected in invoice data")
    print(f"Statistical significance: p={result.p_value:.6f}")
    print(f"Deviation from Benford Law: {result.mad:.2f}%")

Business Intelligence

import lawkit

# Analyze customer revenue distribution
result = lawkit.analyze_pareto('customer_revenue.csv',
                              lawkit.LawkitOptions(
                                  output='json',
                                  business_analysis=True,
                                  gini_coefficient=True
                              ))

print(f"Revenue concentration: {result.concentration_80_20:.1f}%")
print(f"Market inequality: {result.gini_coefficient:.3f}")

Quality Control

import lawkit

# Analyze manufacturing measurements
result = lawkit.analyze_normal('measurements.csv',
                              lawkit.LawkitOptions(
                                  output='json',
                                  outlier_detection=True,
                                  test_type='shapiro'
                              ))

if result.p_value < 0.05:
    print("⚠️  Process out of control - not following normal distribution")
    if result.outliers:
        print(f"Found {len(result.outliers)} outlying measurements")

Text Analysis

import lawkit

# Analyze word frequency in documents
result = lawkit.analyze_zipf('document.txt',
                            lawkit.LawkitOptions(output='json'))

print(f"Text follows Zipf Law: {result.p_value > 0.05}")
print(f"Power law exponent: {result.exponent:.3f}")

API Reference

Main Functions

  • analyze_benford(input_data, options) - Benford Law analysis
  • analyze_pareto(input_data, options) - Pareto principle analysis
  • analyze_zipf(input_data, options) - Zipf Law analysis
  • analyze_normal(input_data, options) - Normal distribution analysis
  • analyze_poisson(input_data, options) - Poisson distribution analysis
  • analyze_laws(input_data, options) - Multi-law analysis
  • validate_laws(input_data, options) - Data validation and consistency check
  • diagnose_laws(input_data, options) - Conflict diagnosis and detailed reporting
  • generate_data(law_type, samples, **kwargs) - Generate sample data
  • analyze_string(content, law_type, options) - Analyze string data directly

Utility Functions

  • is_lawkit_available() - Check if lawkit CLI is available
  • get_version() - Get lawkit version
  • selftest() - Run self-test

Classes

  • LawkitOptions - Configuration options for analysis
  • LawkitResult - Analysis results with structured access
  • LawkitError - Exception class for lawkit errors

Platform Support

  • Windows: x86_64
  • macOS: x86_64, ARM64 (Apple Silicon)
  • Linux: x86_64, ARM64

Requirements

  • Python 3.8+
  • No additional dependencies required

License

This project is licensed under the MIT License.

Support

Contributing

Contributions are welcome! Please read the Contributing Guide 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

lawkit_python-2.4.8.tar.gz (211.7 kB view details)

Uploaded Source

Built Distributions

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

lawkit_python-2.4.8-py3-none-win_amd64.whl (3.5 MB view details)

Uploaded Python 3Windows x86-64

lawkit_python-2.4.8-py3-none-manylinux_2_34_x86_64.whl (3.7 MB view details)

Uploaded Python 3manylinux: glibc 2.34+ x86-64

lawkit_python-2.4.8-py3-none-macosx_11_0_arm64.whl (3.3 MB view details)

Uploaded Python 3macOS 11.0+ ARM64

File details

Details for the file lawkit_python-2.4.8.tar.gz.

File metadata

  • Download URL: lawkit_python-2.4.8.tar.gz
  • Upload date:
  • Size: 211.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: maturin/1.9.1

File hashes

Hashes for lawkit_python-2.4.8.tar.gz
Algorithm Hash digest
SHA256 89ef9202f4734d8caffebdb5f1be1296b8c2ae22699e4cec311adcd9b36029f8
MD5 9f32429ff8bdf34284882746eac49e1a
BLAKE2b-256 24b71040523a4d2284eff62229f34890119bbfa9c2e61886024fc8e68bc6216e

See more details on using hashes here.

File details

Details for the file lawkit_python-2.4.8-py3-none-win_amd64.whl.

File metadata

File hashes

Hashes for lawkit_python-2.4.8-py3-none-win_amd64.whl
Algorithm Hash digest
SHA256 5812ac57424efca39a3d0346891dab3f7eab6a1f554376dbe8b00bf13c5cb5ea
MD5 6a4d67a501f8a70a5f4c6832ee37b45c
BLAKE2b-256 e8c17b818396928bc96f147f0a579f4edd512a612b801b756bf11618ab18bf7c

See more details on using hashes here.

File details

Details for the file lawkit_python-2.4.8-py3-none-manylinux_2_34_x86_64.whl.

File metadata

File hashes

Hashes for lawkit_python-2.4.8-py3-none-manylinux_2_34_x86_64.whl
Algorithm Hash digest
SHA256 0a0978e23402e250def62f553841f8fd8f395c2d75542ad7428460583a389357
MD5 55b70bcf653932f25607acabb264dfac
BLAKE2b-256 577d32fc09bd34a92d33889c67ed0a08385958ac92db032adc3b9ebb29740fa9

See more details on using hashes here.

File details

Details for the file lawkit_python-2.4.8-py3-none-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for lawkit_python-2.4.8-py3-none-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 3173ceaa731b7bd4cef4d8a96a8153efaf3f196293c0c1ab1f7c1e0a7ef5aa3e
MD5 1c92d405ce306c72515b28eef568105f
BLAKE2b-256 cf0bb26dca0851f52f0901e0134d5fdd131f10f83b7b9db989591b90a629b2c8

See more details on using hashes here.

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