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NexGML — Next Generation Machine Learning (educational ML utilities)

Project description

Nexarians - The NexGML Core Repository

PyPI version License: MIT

Installation

pip install nexgml

🔬 Core Philosophy: Transparent, Fast, and Modular

NexGML is a custom Machine Learning utility built for educational and research purposes, emphasizing code transparency and high performance.

Key Features & Technology Stack

  • Modular Helpers: Separates complex logic into focused helper modules (ForLinear, ForTree, Indexing, Metrics, Guardians) for easy customization.
  • Sparse Data Ready: Full support for scipy.sparse matrices (CSR/CSC) for memory efficiency.

💻 Available Modules & Quick Start

1. Classifiers (The Models)

The primary model is the Gradient Supported Intense Classifier (GSIC).

from nexgml.gradient_supported import IntenseClassifier
import numpy as np

# Load data X, y...

model = IntenseClassifier(
    optimizer='adamw', 
    lr_scheduler='plateau', 
    batch_size=32, 
    penalty='elasticnet'
)
model.fit(X_train, y_train)

print(f"Final Training Loss: {model.loss_history[-1]:.6f}")

2. Regressors (The Models)

The primary model is the Gradient Supported Intense Regressor (GSIR).

from nexgml.gradient_supported import IntenseRegressor
import numpy as np

# Load data X, y...

model = IntenseClassifier(
    optimizer='adamw', 
    lr_scheduler='plateau', 
    batch_size=32, 
    penalty='elasticnet'
)
model.fit(X_train, y_train)

print(f"Final Training Loss: {model.loss_history[-1]:.6f}")

2. Helper Modules (Performance Backbone)

These modules contain the high-speed math used internally.

Module Purpose Example Usage
nexgml.amo.forlinear Linear Criteria. Activation/Loss functions (Softmax, CCE, RMSE). forlinear.softmax(logits)
nexgml.amo.fortree Tree Criteria. Impurity measures (Gini, Entropy, Friedman MSE). fortree.gini_impurity(labels)
nexgml.indexing Data Utilities. One-hot encoding, smart feature slicing (standard_indexing). indexing.standard_indexing(n_features, 'sqrt')
nexgml.metrics Model Metrics. Regressor and classifier models metrics computation (R^2, F1, Accuracy Score) accuracy_score(y_true, pred)
nexgml.guardians Numerical stability. Value clipping, invalid value detecting (safe_array, hasinf, hasnan) safe_array(array)

📝 Documentation & Exploration

This repository is dedicated to experimentation, learning, and personal research, primarily in the following fields:

  • 🤖 Artificial Intelligence and Machine Learning
  • 💻 Python development and performance optimization
  • 📖 Technical documentation and concept notes

⚠️ This project is intended for exploration and learning purposes only.

If you find this repo helpful or interesting, feel free to fork, star, or open a pull request.
This is a learning space—no pressure, just passion! 😄

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