ISSN :2582-9793

Integration of an Autoencoder Model with Actor-Oriented System

Original Research (Published On: 27-Sep-2024 )
Integration of an Autoencoder Model with Actor-Oriented System
DOI : https://dx.doi.org/10.54364/AAIML.2024.43153

Sithembiso Dyubele and Noxolo Pretty Cele

Adv. Artif. Intell. Mach. Learn., 4 (3):2629-2647

Sithembiso Dyubele : Durban University of Technology

Noxolo Pretty Cele : Durban University of Technology

Download PDF Here

DOI: https://dx.doi.org/10.54364/AAIML.2024.43153

Article History: Received on: 03-Jul-24, Accepted on: 20-Sep-24, Published on: 27-Sep-24

Corresponding Author: Sithembiso Dyubele

Email: ctheradyubele@gmail.com

Citation: Sithembiso Dyubele, Noxolo Pretty Cele, Lubabalo Mbangata. (2024). Integration of an Autoencoder Model with Actor-Oriented System. Adv. Artif. Intell. Mach. Learn., 4 (3 ):2629-2647.


Abstract

    

Traditional machine learning frameworks often struggle with scalability, modularity, and efficient resource management, especially when dealing with vast data. Actor-Oriented Systems offer a robust framework for building such scalable systems, allowing concurrent processing and efficient handling of large datasets. This study investigated the integration of Autoencoders (AE), which are pivotal in unsupervised learning, with Actor-Oriented Systems to enhance the modularity, scalability, and maintainability of the model training process. The study seeks to leverage the capabilities of AE and Actor-Oriented Systems to achieve high-quality image reconstruction and efficient processing. The study also attempted to understand the underlying patterns in the data, assess the performance of the model, and demonstrate the benefits of modular and scalable systems. Key findings from the results showed significant improvements in training efficiency and performance of the model, especially when using Actor-Oriented Systems. The training time was reduced from 16.96 seconds to 14.21 seconds, and the validation loss improved from 0.2768 to 0.2100, indicating better generalisation and learning. Data augmentation techniques further enhanced the robustness of the model, leading to more accurate reconstructions of the test images. Actor-Oriented Systems facilitated concurrent processing, improved modularity, and enabled the system to scale efficiently with increasing data volume. This study also highlighted the practical benefits of integrating AE with Actor-Oriented Systems, providing valuable insights into building more robust, maintainable, and scalable machine learning workflows.

Statistics

   Article View: 114
   PDF Downloaded: 2