Machine Gnostics – Example Gallery¶
Explore practical examples and Jupyter notebooks demonstrating the use of Machine Gnostics for data analysis and machine learning.
Each example includes:
- Comprehensive code examples
- Theoretical background and explanations
- Immediate execution via Google Colab
- Source code access on GitHub
Tutorials Library¶
Metrics¶
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Machine Gnostics Basic Metrics
Learn how to calculate and interpret core Gnostics metrics.
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Ideal Gnostic Cycle
Learn interactively how Ideal Gnostic Cycle works.
Data Tests¶
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Data Homogeneity Test
Assess if your data comes from a single population or distribution.
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Homoscedasticity Test
Test for constant variance across your dataset (homoscedasticity).
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Data Membership Test
Evaluate whether new data points belong to the training distribution.
Advanced Analysis¶
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Gnostic Distribution Functions
Visualize and analyze data using Gnostics Distribution Functions.
Open in Colab · GitHub · Play
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Marginal Cluster Analysis
Perform clustering analysis using marginal distributions.
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Marginal Interval Analysis
Analyze data intervals and bounds with marginal analysis.
Open in Colab · GitHub · Play
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Uncertainty Interval Analysis
Quantify and analyze uncertainty within your data intervals.
Regression¶
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Linear Regression
Standard linear regression implementation.
Open in Colab · GitHub · Play
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Polynomial Regression
Regression with polynomial features.
Open in Colab · GitHub · Play
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Wine Quality Regression
Real-world example: Predicting wine quality.
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Decision Tree Regressor
Non-linear regression using Decision Trees.
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Random Forest Regressor
Ensemble regression using Random Forests.
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Boosting Regressor
Advanced regression using Boosting techniques.
Classification¶
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Logistic Regression
Binary classification fundamentals.
Open in Colab · GitHub · Play
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Multiclass Classification
Handling multiple classes in classification tasks.
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Decision Tree Classifier
Classification using Decision Tree algorithms.
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Random Forest Classifier
Robust classification with Random Forests.
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Boosting Classifier
High-performance classification using Boosting.
Clustering¶
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KMeans Clustering
Standard K-Means clustering implementation.
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Gnostic Local Clustering
Clustering based on local Gnostic properties.
Forecasting¶
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AutoRegressor (AR)
Time series forecasting with AutoRegression.
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ARIMA
Forecasting with ARIMA models.
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SARIMA
Seasonal ARIMA for complex time series.
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Deep Learning Models
Advanced neural network architectures using Machine Gnostics.
Coming soon!
MLflow¶
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MLflow Integration
Track experiments and manage models with MLflow.
Notebooks Source
All tutorials are hosted in our GitHub repository. You can download them directly or run them in Colab.