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AB tests library with simplicity in mind

Project description

ABOBA

AB tests library with simplicity in mind

📚 Documentation

✨ Features

  • Simple & Intuitive API - Easy to learn and use for both beginners and experts
  • Multiple Statistical Tests - t-tests, ANOVA, Kruskal-Wallis, and more
  • Variance Reduction - Built-in CUPED, stratification, and regression adjustments
  • Power Analysis - Simulate synthetic effects to estimate required sample sizes
  • Flexible Pipelines - Chain data processors and splitters for complex workflows
  • Experiment Orchestration - Run and visualize multiple test scenarios simultaneously
  • Extensible Architecture - Easy to create custom tests, splitters, and processors
  • Production Ready - Type hints, comprehensive tests, and detailed documentation

🚀 Quick Start

Installation

pip install aboba

📖 Quick Example

To conduct a test, you need several entities:

  • data
  • data processing
  • data sampling technique
  • the test strategy itself

Data can be a simple pandas dataframe or custom data generator.

General use case

import numpy as np
import pandas as pd
import scipy.stats as sps

from aboba import (
    tests,
    splitters,
    effect_modifiers,
    experiment,
)
from aboba.pipeline import Pipeline

# Create dataset with two groups
data = pd.DataFrame({
    'value'  : np.concatenate([
        sps.norm.rvs(size=1000, loc=0, scale=1),
        sps.norm.rvs(size=1000, loc=0, scale=1),
    ]),
    'is_b_group': np.concatenate([
        np.repeat(0, 1000),
        np.repeat(1, 1000),
    ]),
})

# Configure test
test = tests.AbsoluteIndependentTTest(
    value_column='value',
)

# Create pipeline with splitter
splitter = splitters.GroupSplitter(
    column='is_b_group',
    size=100,
)
pipeline = Pipeline([
    ('splitter', splitter),
])

# Run experiment
n_iter = 500
exp = experiment.AbobaExperiment(draw_cols=1)

group_aa = exp.group(
    name="AA, regular",
    test=test,
    data=data,
    data_pipeline=pipeline,
    n_iter=n_iter
)
group_aa.run()

effect = effect_modifiers.GroupModifier(
    effects={1: 0.3},
    value_column='value',
    group_column='is_b_group',
)

group_ab = exp.group(
    name="AB, regular, effect=0.3",
    test=test,
    data=data,
    data_pipeline=pipeline,
    synthetic_effect=effect,
    n_iter=n_iter
)
group_ab.run()

# Draw results
fig, axes = exp.draw()
fig.savefig('results.png')

🎯 Key Components

  • Tests - Statistical tests for hypothesis testing (t-tests, ANOVA, etc.)
  • Splitters - Control how data is split into groups (random, stratified, grouped)
  • Processors - Transform data before testing (CUPED, bucketing, normalization)
  • Pipelines - Chain multiple processors and splitters together
  • Effect Modifiers - Simulate synthetic effects for power analysis
  • Experiments - Orchestrate multiple test runs and visualize results

📊 Use Cases

  • A/B Testing - Compare two variants to determine which performs better
  • Multivariate Testing - Test multiple variants simultaneously
  • Power Analysis - Determine required sample sizes for detecting effects
  • Variance Reduction - Use CUPED or stratification to improve test sensitivity
  • Custom Tests - Implement domain-specific statistical tests

🤝 Contributing

Contributions are welcome! Please feel free to submit a Pull Request.

📄 License

MIT License - see LICENSE file for details

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