NeuroFlex is a cutting-edge neural network framework built on JAX, Flax, and TensorFlow, designed to address key challenges in modern machine learning: interpretability, generalization, robustness, and fairness. This project integrates state-of-the-art techniques and methodologies for creating more transparent, reliable, and ethical AI systems.
- Advanced Neural Architectures: Support for CNN, RNN, LSTM, GAN, and Spiking Neural Networks.
- Multi-Backend Integration: Seamless integration with JAX, Flax, and TensorFlow.
- 2D and 3D Convolutions: Efficient implementation of both 2D and 3D convolutional layers.
- Quantum Computing: Quantum Neural Network module for next-generation AI.
- Reinforcement Learning: Advanced capabilities with enhanced self-curing algorithms.
- Brain-Computer Interface (BCI): Cutting-edge integration for neurotechnology applications.
- Ethical AI: Fairness constraints and bias mitigation techniques.
- Robustness: Improved adversarial training, interpretability tools (SHAP), and adaptive learning rate adjustment.
- Bioinformatics: AlphaFold integration for protein structure prediction and drug discovery.
- Generative AI: Creative problem-solving and content generation.
- Natural Language Processing: Sentence piece integration and advanced NLP tasks.
- Neuromorphic Computing: Energy-efficient spiking neural networks.
- Self-Healing: Advanced diagnostic and healing processes for improved model performance and stability.
- Consciousness Simulation: Integration of Integrated Information Theory (IIT), Global Workspace Theory (GWT), Attention Schema Theory (AST), and Higher-Order Thoughts (HOT) for advanced consciousness modeling.
- Global Workspace Theory (GWT): Proposes that consciousness arises from a global workspace that integrates and broadcasts information from various specialized cognitive processes. Formula: ( G(x) = \sum_{i=1}^{n} w_i f(x_i) ) where ( x ) represents the input stimulus, ( f(x_i) ) denotes cognitive processes, and ( w_i ) are weights representing each module's contribution.
- Integrated Information Theory (IIT): Measures consciousness in terms of integrated information (( \Phi )) present in a system. Formula: ( \Phi = I(S) - \sum_{i=1}^{n} I(S_i) ) where ( S ) denotes the complete system, ( S_i ) are individual elements, ( I(S) ) is the total system information, and ( I(S_i) ) represents isolated component information.
- Attention Schema Theory (AST): Suggests that consciousness emerges as the brain's internal model of its attention mechanisms. Formula: ( P(A) = \frac{\sum_{i=1}^{n} w_i f(A_i)}{\sum_{j=1}^{m} w_j} ) where ( A_i ) are features, ( w_i ) are weights, and ( f(A_i) ) represents the attention.
- Higher-Order Thoughts (HOT): Proposes that consciousness arises when a system has thoughts about its own thoughts. Formula: ( C(t) = f(T(t)) ) where ( C(t) ) denotes the conscious state, and ( T(t) ) represents internal thought processes.
To install NeuroFlex, please follow these steps:
- Ensure you have Python 3.9 or later installed.
- It's recommended to use a virtual environment:
python -m venv neuroflex-env source neuroflex-env/bin/activate # On Windows use `neuroflex-env\Scripts\activate`
- Install NeuroFlex using pip:
pip install neuroflex
- If you encounter any issues, ensure that your pip is up to date:
pip install --upgrade pip
- Import NeuroFlex
from NeuroFlex.core_neural_networks.advanced_nn import NeuroFlexNN, train_model, create_neuroflex_nn
from NeuroFlex.bci_integration import BCIIntegration
- Define Your Model
model = create_neuroflex_nn(
features=[128, 64, 32, 10], # Updated feature sizes for better performance
input_shape=(1, 28, 28, 1),
output_shape=(1, 10),
use_cnn=True,
conv_dim=2,
backend='tensorflow' # or 'jax' for JAX/Flax backend
)
- Integrate BCI Components
bci_integration = BCIIntegration(model)
bci_integration.setup_bci()
- Train Your Model
trained_state, trained_model = train_model(
model, train_data, val_data,
num_epochs=20, # Increased epochs for improved training
batch_size=32,
learning_rate=1e-3
)
- Make Predictions
predictions = trained_model(test_data)
- Evaluate Model Performance
accuracy = evaluate_model(trained_model, test_data, test_labels)
print(f"Model Accuracy: {accuracy:.2f}%")
from neuroflex import TensorFlowConvolutions
tf_conv = TensorFlowConvolutions(
features=(32, 64, 128),
input_shape=(1, 28, 28, 1),
conv_dim=2 # Use 3 for 3D convolutions
)
model = tf_conv.create_model()
from neuroflex.utils import convert_array
jax_array = jax.random.uniform(jax.random.PRNGKey(0), shape=(1, 28, 28, 1))
tf_tensor = convert_array(jax_array, 'tensorflow')
from neuroflex import adversarial_training
perturbed_data = adversarial_training(model, params, input_data, epsilon=0.1, step_size=0.01)
We have developed comprehensive pytest tests for all components, including the TensorFlow integration. To run the tests:
pytest tests/
Key test files:
test_neuroflex_nn.py
: Tests for the core NeuroFlexNN functionality.test_tensorflow_convolutions.py
: Tests for TensorFlow convolution implementations.
NeuroFlex supports multiple operating systems:
- Ubuntu
- Windows
- macOS
To set up your environment:
- Clone the repository:
git clone https://github.com/neuroflex/neuroflex.git
- Create a virtual environment:
python -m venv neuroflex-env
- Activate the environment:
- Ubuntu/macOS:
source neuroflex-env/bin/activate
- Windows:
neuroflex-env\Scripts\activate
- Ubuntu/macOS:
- Install dependencies:
pip install -r requirements.txt
The NeuroFlex project is organized into several key directories and files, each serving a specific purpose:
- NeuroFlex.py: Integrates various AI and neural network components, providing a unified interface for core neural networks, quantum neural networks, ethical frameworks, explainable AI, BCI integration, consciousness simulation, protein structure prediction, and more.
- Prompt_Agent: Contains agentic behavior models and related functionalities.
- Transformers: Includes advanced transformer models for text processing and classification.
- Advanced Models: Contains advanced math solving, time series analysis, and multi-modal learning models.
- AI Ethics: Implements ethical frameworks and guidelines for AI, including explainable AI and self-curing algorithms.
- BCI Integration: Facilitates integration with brain-computer interfaces, providing tools for BCI data processing and neuroscience model integration.
- Cognitive Architectures: Implements advanced cognitive architectures with self-healing mechanisms and adaptive algorithms.
- Config: Contains configuration files and constants for the project.
- Core Neural Networks: Provides core neural network models and functionalities.
- Edge AI: Focuses on edge AI optimization and deployment.
- Generative Models: Includes models for generative AI and creative problem-solving.
- Main.py: Demonstrates various components of the NeuroFlex framework.
- Model Monitoring: Contains tools for monitoring and analyzing model performance and health.
- NeuroFlex Integration: Integrates various components of the NeuroFlex system.
- Threat Detection: Provides methods for detecting and analyzing threats using anomaly detection, deep learning, and pattern recognition.
- Utils: Offers utility functions for data handling, preprocessing, and analysis.
For detailed documentation, including API references and tutorials, visit our official documentation.
We welcome contributions! Please see our contributing guidelines for more information on how to get started.
This project is licensed under the MIT License - see the LICENSE file for details.
If you use NeuroFlex in your research, please cite:
@software{neuroflex2024,
authors = {kasinadhsarma, Pandiripalli Naga Chandra Ramu},
title = {NeuroFlex: Advanced Neural Network Framework},
year = {2024},
url = {https://github.com/VishwamAI/NeuroFlex}
}
For questions, feedback, or support, please open an issue on our GitHub repository or contact us at gmail.
- Added Consciousness Simulation section under Key Features and Latest Updates to reflect the integration of IIT and GWT theories.
- Updated the version to v0.1.3.
- General improvements and formatting to ensure clarity and consistency with the latest features.