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Integrated Analytics Platform - Descriptive, Diagnostic & Predictive Analytics with Sample vs Population Distinction

Project description

BizLens 📊

Business analytics, statistical inference, process mining, and machine learning — all in one package

BizLens is a comprehensive Python library designed for business analysts, data scientists, educators, and students. It combines professional statistical analysis, beautiful Rich tables, interactive visualizations, and built-in business process mining capabilities — all accessible with a simple `pip install`.


🚀 Open in Google Colab — No Installation Needed

Click any badge below to launch the notebook instantly:

Core Analytics

Notebook Colab Link What You'll Learn
Quick Start Open in Colab Overview, frequency tables, outlier detection
Statistical Inference Open in Colab Confidence intervals, t-tests, ANOVA, correlation
Chi-Square & Association Open in Colab Chi-square, contingency tables, Cramér's V
Probability & Distributions Open in Colab Distribution fitting, simulation, sampling

Machine Learning

Notebook Colab Link What You'll Learn
Linear & Multiple Regression Open in Colab OLS regression, diagnostics, predictions
Logistic Regression Open in Colab Binary classification, ROC, confusion matrix
Decision Trees & Random Forests Open in Colab Tree models, feature importance, ensembles
PCA & Clustering Open in Colab Dimensionality reduction, K-Means, DBSCAN
Conjoint Analysis Open in Colab Preference modeling, attribute utilities
Q-Learning Open in Colab Reinforcement learning basics, Q-table

Advanced Analytics & Process Mining

Notebook Colab Link What You'll Learn
Master Process Mining Open in Colab Case metrics, bottlenecks, variants, resources, workflow
Time Series & Anomaly Detection Open in Colab Temporal patterns, trend analysis, anomaly detection

All notebooks automatically install the latest `bizlens` on first run. Just click the badge and run the first cell.


💾 Installation

```bash pip install bizlens ```


✨ Features

  • Descriptive Analytics: Frequency tables, percentiles, contingency tables, data profiling
  • Statistical Inference: Confidence intervals, t-tests, ANOVA, correlation, chi-square
  • Machine Learning: Linear/Logistic regression, Decision Trees, Random Forests, PCA, Clustering, Conjoint Analysis, Q-Learning
  • Process Mining: Case metrics, bottleneck analysis, variant discovery, resource analysis
  • Time Series & Quality: Anomaly detection, completeness reports, dual pandas + polars support
  • Beautiful Rich tables and interactive visualizations out of the box

Made with ❤️ for analysts, educators, and students

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