Skip to main content

growingnn is a cutting-edge Python package that introduces a dynamic neural network architecture learning algorithm. This innovative approach allows the neural network to adapt its structure during training, optimizing both weights and architecture. Leveraging a Stochastic Gradient Descent-based optimizer and guided Monte Carlo tree search, the package provides a powerful tool for enhancing model performance ICCS 2025 update.

Project description

growingnn - Dynamic Neural Network Architecture Learning

The growingnn project introduces an innovative algorithm for data-driven neural network model construction. This algorithm comprises two fundamental components: the first component focuses on weight adjustment, while the second component acts as an orchestrator, launching a guided procedure to dynamically change the network architecture. This architectural modification occurs at regular intervals, specifically every $K$ epochs, and is driven by the outcome of a Monte Carlo tree search. The algorithm's core, outlined in the accompanying research paper, leverages the principles of Stochastic Gradient Descent (SGD) without relying on advanced tools commonly used in neural network training.

Repozytorium GitHub

Click the link above to navigate to the GitHub repository, where you can find the source code, issues, and other project details.

Dokumentacja

This link will take you to the project documentation. Here you'll find instructions, usage information, and other resources helpful for using the project.

Algorithm Overview

Weight Adjustment Component

The first component of the algorithm is dedicated to weight adjustment. It operates within the framework of Stochastic Gradient Descent (SGD), a foundational optimization algorithm for training neural networks. The simplicity of this approach makes it suitable for educational settings, emphasizing fundamental machine learning principles.

Orchestrator and Network Architecture Modification

The second component, the orchestrator, plays a crucial role in initiating a procedure to dynamically change the network architecture. This change occurs systematically at predefined intervals, specifically every $K$ epochs. The decision-making process for architectural changes is facilitated by a guided Monte Carlo tree search. This sophisticated mechanism ensures that architectural modifications are well-informed and contribute to the overall improvement of the neural network model.

Implementation Details

Model Structure

The model is the main structure that stores layers as nodes in a directed graph. It operates based on layer identifiers, treating each layer as an independent structure that contains information about incoming and outgoing connections. The default starting structure is a simple graph with an input and output layer connected by a single connection. In each generation, the algorithm has the flexibility to add new layers or remove existing ones. As the structure grows, each layer gains more incoming and outgoing connections.

Propagation Phase

During the propagation phase, each layer waits until it receives signals from all input layers. Once these signals are received, they are averaged, processed, and propagated through all outgoing connections. This iterative process allows the neural network to dynamically adapt its architecture based on the evolving data and training requirements.

Results and Testing

The proposed algorithm has undergone rigorous testing, particularly in visual pattern classification problems. The results have consistently demonstrated high levels of satisfaction, showcasing the efficacy of the dynamic architecture learning approach in enhancing model performance.

x_train, x_test, y_train, y_test, labels = data_reader.read_mnist_data(mnist_path, 0.9)
gnn.trainer.train(
    x_train = x_train, 
    y_train = y_train, 
    x_test = x_test,
    y_test = y_test,
    labels = labels,
    input_paths = 1,
    path = "./result", 
    model_name = "GNN_model",
    epochs = 10, 
    generations = 10,
    input_size = 28 * 28, 
    hidden_size = 28 * 28, 
    output_size = 10, 
    input_shape = (28, 28, 1), 
    kernel_size = 3, 
    depth = 2
)

This code trains a simple network on the MNIST dataset

Credits

Szymon Swiderski Agnieszka Jastrzebska

Disclosure

This is the first beta version of the growingnn package. We are not liable for the accuracy of the program’s output nor actions performed based upon it.

For more in-depth information on the algorithm, its implementation, and testing results, refer to the accompanying research paper. The provided Python source code is a valuable resource for understanding and implementing the presented method. Feel free to explore, contribute, and adapt it for your specific needs.

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

growingnn-0.3.1.tar.gz (35.7 kB view details)

Uploaded Source

Built Distribution

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

growingnn-0.3.1-py3-none-any.whl (33.6 kB view details)

Uploaded Python 3

File details

Details for the file growingnn-0.3.1.tar.gz.

File metadata

  • Download URL: growingnn-0.3.1.tar.gz
  • Upload date:
  • Size: 35.7 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.0 CPython/3.9.7

File hashes

Hashes for growingnn-0.3.1.tar.gz
Algorithm Hash digest
SHA256 2de0917029a679f5f363cd2ecdb3f9d934e6adc2da829c2fe6ca884ba0149060
MD5 03f06e9bc4627a5b2814ed611c0ccae3
BLAKE2b-256 185eb04521ef8edc3ac091180cd194e2dfdfeb197e746acbc08257c0c11bcc56

See more details on using hashes here.

File details

Details for the file growingnn-0.3.1-py3-none-any.whl.

File metadata

  • Download URL: growingnn-0.3.1-py3-none-any.whl
  • Upload date:
  • Size: 33.6 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.1.0 CPython/3.9.7

File hashes

Hashes for growingnn-0.3.1-py3-none-any.whl
Algorithm Hash digest
SHA256 9719be4caa779014c6efe4fe7a54d5048da58bbfddac70fdeba79e92fe9cee8c
MD5 8e734d2f42a8d098f98ed8baf62277a7
BLAKE2b-256 04b6fb01019430e6c8224f3b5b5dcd8841cb5801a233fba2b1d935df97b8c0b7

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