Skip to main content

Zero-friction AutoML + Data Cleaning Toolkit

Project description

🚀 KaizenStat

Official Website: www.kaizenstat.com

PyPI Version License: MIT Python Version Code Style: Black

KaizenStat is a zero-friction, production-grade AutoML, automated data cleaning, and model explanation engine. It allows you to audit datasets, repair data issues, benchmark models with hardware-aware optimization, export standalone pipeline code, and host web-based dashboards—all with a single command or Python import.


🎯 Core Philosophy

  • Zero-Friction AutoML: No complex configuration files. Pass your dataset, name your target, and KaizenStat does the rest.
  • Production Crash-Proofing: Automatically handles messy real-world data issues: high-cardinality ID columns, datetime parsing, missing inputs, class imbalance, and label encoding.
  • Explainable AI: Breaks open the "black box" by generating standalone, human-readable Python training code reproducing the best-found pipeline.
  • Hybrid Interface: 100% parity between CLI and Python API.

📦 Installation

Install the core package with zero heavy external dependencies:

pip install kaizenstat

Optional Drivers & Accelerators

Tailor KaizenStat to your specific workload:

pip install kaizenstat[ui]     # Install Streamlit for web dashboards
pip install kaizenstat[gpu]    # Install XGBoost with GPU/MPS support
pip install kaizenstat[fast]   # Install Polars for ultra-fast CSV parsing
pip install kaizenstat[all]    # Install all optional components

⚔️ CLI & Python API Feature Matrix

KaizenStat is designed around a single unified vocabulary. Every CLI command has a direct, equivalent function in the Python SDK.

Command Python API Purpose
kz audit KaizenStat.audit() 🔍 Runs a diagnostic sweep (missing values, duplicates, imbalance, dead features).
kz heal KaizenStat.heal() 🩹 Clean, impute, parse datetimes, drop IDs, and encode string labels.
kz benchmark KaizenStat.benchmark() 🚀 Automatically trains, optimizes, and ranks model pipelines.
kz auto KaizenStat.auto() ⚡ Orchestrates the entire pipeline in sequence (Audit ➔ Heal ➔ Benchmark).
kz explain KaizenStat.explain() 💬 Generates plain-English diagnostic summaries and model recommendations.
kz codegen KaizenStat.codegen() 📝 Generates standalone, dependency-free Python code for the best model.
kz export-model KaizenStat.save_model() 💾 Trains the top pipeline and saves it directly to a .joblib binary.
kz report KaizenStat.report() 📊 Generates a beautiful, interactive HTML profiling report with Chart.js.
kz serve KaizenStat.serve() 🌐 Launches a local web dashboard to explore the data and run predictions.
kz analyze KaizenStat.analyze() 🧠 Executes auto-intelligence analysis over dataset context using LLM reasoning.
kz ask KaizenStat.ask() 🤖 Answers complex developer queries about accuracy, data quality, or anomalies.
kz ask --followup KaizenStat.ask_followup() 🔁 Maintains multi-turn conversation memory with the data reasoning engine.
kz improve KaizenStat.improve() 🚀 Query AI to get next best actions and improvement plans.
kz status 📊 Show active system and dataset context status.
kz reset 🧹 Reset conversational memory and active dataset context.

💡 Quick Start Guide

1. Python SDK Usage

from kaizenstat import KaizenStat
import pandas as pd

# Load your dataset
df = pd.read_csv("dataset.csv")

# 1. Diagnose issues
findings = KaizenStat.audit(df, target="target_column")

# 2. Automatically heal dirty data
clean_df = KaizenStat.heal(df, target="target_column")

# 3. Benchmark models with cross-validation
leaderboard = KaizenStat.benchmark(clean_df, target="target_column")

# 4. Generate standalone code for reproduction
KaizenStat.codegen("dataset.csv", target="target_column", output_path="reproduce.py")

# 5. Dual-Mode Conversational AI (OpenRouter powered)
# Runs automated structured AI analysis
analysis = KaizenStat.analyze(df, target="target_column")

# Ask custom developer queries about data or pipeline
KaizenStat.ask("Why is model accuracy lower or what are the dataset flaws?")

# Multi-turn conversation with memory context
KaizenStat.ask_followup("What should I do to handle the missing values or high cardinality?")

# 6. Get actionable next-step recommendations
KaizenStat.improve()

2. Command Line Interface (CLI)

# Get quick help and list commands
kz --help

# Run the full pipeline in one command
kz auto dataset.csv --target target_column

# Repair a dataset and save the clean file
kz heal dataset.csv --target target_column -o cleaned_dataset.csv

# Launch a local Streamlit app to preview and test model performance
kz serve dataset.csv --target target_column --port 8501

# Execute AI diagnostic analysis (saves context locally)
kz analyze dataset.csv --target target_column

# Ask conversational queries about data quality
kz ask "Why is model accuracy low?"

# Ask followup query with conversation memory persistence
kz ask "What should I do to handle the missing values?" --followup

# Get next best actions / actionable improvement plan
kz improve

# View active system and dataset context status
kz status

# Reset conversational memory and session cache
kz reset

🧠 Behind the Scenes: Core Engines

1. Hardware-Aware Execution

KaizenStat automatically checks your environment using detect_device(). It leverages CUDA on Nvidia GPUs and MPS on Apple Silicon (M1/M2/M3 Mac) to accelerate training when optional dependencies (like xgboost) are installed.

2. Smart Model Selection

The benchmarking engine adjusts its logic dynamically based on the dataset properties:

  • Large Datasets (>100k rows): Excludes slow estimators (like Gradient Boosting) on standard CPU hosts to prevent compute lockups.
  • High-Cardinality Categoricals: Optimizes feature preprocessors and prioritizes tree-based models (Random Forests, Gradient Boosting, XGBoost).
  • Float Targets: Detects values with a continuous numeric profile and switches the entire pipeline to regression mode automatically.

3. Automatic Imbalance Correction

During data healing, KaizenStat computes target ratios. If target class distribution has a skew larger than 65% / 35%, it adjusts model parameters dynamically (e.g. setting class_weight="balanced" in scikit-learn estimators).


🛠 Developer Guide

Setting up a local workspace

To contribute or run local enhancements:

  1. Clone the repository:
    git clone https://github.com/masuddarrahaman/KaizenStat-Library.git
    cd KaizenStat-Library
    
  2. Install the package in editable mode with all optional drivers:
    pip install -e ".[all]"
    
  3. Run tests or validation:
    python3 -m unittest discover -s tests
    

📄 License

Distributed under the 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

kaizenstat-0.2.10.tar.gz (26.2 kB view details)

Uploaded Source

Built Distribution

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

kaizenstat-0.2.10-py3-none-any.whl (24.1 kB view details)

Uploaded Python 3

File details

Details for the file kaizenstat-0.2.10.tar.gz.

File metadata

  • Download URL: kaizenstat-0.2.10.tar.gz
  • Upload date:
  • Size: 26.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.7

File hashes

Hashes for kaizenstat-0.2.10.tar.gz
Algorithm Hash digest
SHA256 46740595c0ce21c9d706b9e493277facf006ec0ce64549402fff1ef1a0c7943a
MD5 edd8a246011610e937488f61f954af20
BLAKE2b-256 9a6e3a0e4be16205d544121c40874dea4e1457f72d295ced2cb3595c8686f440

See more details on using hashes here.

File details

Details for the file kaizenstat-0.2.10-py3-none-any.whl.

File metadata

  • Download URL: kaizenstat-0.2.10-py3-none-any.whl
  • Upload date:
  • Size: 24.1 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.7

File hashes

Hashes for kaizenstat-0.2.10-py3-none-any.whl
Algorithm Hash digest
SHA256 b2c7fd4b88654a96600ffe06f4e8909a44840db5c92c27bb7de76c0593cef492
MD5 3bf56141623a2e32caa121d222960674
BLAKE2b-256 0d54f40743cf83f9547c7a00e60a1dee8bdf15564b56e083a6e27b76756df5ea

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