Author
Contributions by role
Author 2
Praveen Kumar Myakala
Independent Researcher
Summary
Edited Journals
IECE Contributions

Research Article | 20 May 2025
Privacy-Preserving Federated Learning for IoT Botnet Detection: A Federated Averaging Approach
IECE Transactions on Machine Intelligence | Volume 1, Issue 1: 6-16, 2025 | DOI: 10.62762/TMI.2025.796490
Abstract
Traditional centralized machine learning approaches for IoT botnet detection pose significant privacy risks, as they require transmitting sensitive device data to a central server. This study presents a privacy-preserving Federated Learning (FL) approach that employs Federated Averaging (FedAvg) to detect prevalent botnet attacks, such as Mirai and Gafgyt, while ensuring that raw data remain on local IoT devices. Using the N-BaIoT dataset, which contains real-world benign and malicious traffic, we evaluated both the IID and non-IID data distributions to assess the effects of decentralized training. Our approach achieved 97.5% accuracy in IID and 95.2% in highly skewed non-IID scenarios, clos... More >

Graphical Abstract
Privacy-Preserving Federated Learning for IoT Botnet Detection: A Federated Averaging Approach

Open Access | Research Article | 15 March 2025
Scaling AI with Limited Labeled Data: A Self-Supervised Learning Approach
IECE Transactions on Emerging Topics in Artificial Intelligence | Volume 2, Issue 1: 26-35, 2025 | DOI: 10.62762/TETAI.2025.607708
Abstract
The scalability of modern AI is fundamentally limited by the availability of labeled data. While supervised learning achieves remarkable performance, it relies on large annotated datasets, which are expensive and time-consuming to acquire. This work explores self-supervised learning (SSL) as a promising solution to this challenge, enabling AI to scale effectively in data-scarce scenarios. This study demonstrates the effectiveness of the proposed SSL framework using the EuroSAT dataset, a benchmark for land cover classification where labeled data is limited and costly. The proposed approach integrates contrastive learning with multi-spectral augmentations, such as spectral jittering and band... More >

Graphical Abstract
Scaling AI with Limited Labeled Data: A Self-Supervised Learning Approach