MalIoT: Scalable and Real-time Malware Traffic Detection for IoT
Networks
- URL: http://arxiv.org/abs/2304.00623v1
- Date: Sun, 2 Apr 2023 20:47:08 GMT
- Title: MalIoT: Scalable and Real-time Malware Traffic Detection for IoT
Networks
- Authors: Ethan Weitkamp, Yusuke Satani, Adam Omundsen, Jingwen Wang, Peilong Li
- Abstract summary: The system can handle the exponential growth of IoT devices thanks to the usage of distributed systems like Apache Kafka and Apache Spark.
These technologies work together to create a system that can give scalable performance and high accuracy.
- Score: 6.426881566121233
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The machine learning approach is vital in Internet of Things (IoT) malware
traffic detection due to its ability to keep pace with the ever-evolving nature
of malware. Machine learning algorithms can quickly and accurately analyze the
vast amount of data produced by IoT devices, allowing for the real-time
identification of malicious network traffic. The system can handle the
exponential growth of IoT devices thanks to the usage of distributed systems
like Apache Kafka and Apache Spark, and Intel's oneAPI software stack
accelerates model inference speed, making it a useful tool for real-time
malware traffic detection. These technologies work together to create a system
that can give scalable performance and high accuracy, making it a crucial tool
for defending against cyber threats in smart communities and medical
institutions.
Related papers
- Enhancing IoT Malware Detection through Adaptive Model Parallelism and Resource Optimization [0.6856683556201506]
This study introduces a novel approach to malware detection tailored for IoT devices.
Based on resource availability, ongoing workload, and communication costs, the malware detection task is dynamically allocated either on-device or offloaded to neighboring IoT nodes.
Experimental results demonstrate that this proposed technique achieves a significant speedup of 9.8 x compared to on-device inference.
arXiv Detail & Related papers (2024-04-12T20:51:25Z) - Effective Intrusion Detection in Heterogeneous Internet-of-Things Networks via Ensemble Knowledge Distillation-based Federated Learning [52.6706505729803]
We introduce Federated Learning (FL) to collaboratively train a decentralized shared model of Intrusion Detection Systems (IDS)
FLEKD enables a more flexible aggregation method than conventional model fusion techniques.
Experiment results show that the proposed approach outperforms local training and traditional FL in terms of both speed and performance.
arXiv Detail & Related papers (2024-01-22T14:16:37Z) - Classification of cyber attacks on IoT and ubiquitous computing devices [49.1574468325115]
This paper provides a classification of IoT malware.
Major targets and used exploits for attacks are identified and referred to the specific malware.
The majority of current IoT attacks continue to be of comparably low effort and level of sophistication and could be mitigated by existing technical measures.
arXiv Detail & Related papers (2023-12-01T16:10:43Z) - Malware Classification using Deep Neural Networks: Performance
Evaluation and Applications in Edge Devices [0.0]
Multiple Deep Neural Networks (DNNs) can be designed to detect and classify malware binaries.
The feasibility of deploying these DNN models on edge devices to enable real-time classification, particularly in resource-constrained scenarios proves to be integral to large IoT systems.
This study contributes to advancing malware detection techniques and emphasizes the significance of integrating cybersecurity measures for the early detection of malware.
arXiv Detail & Related papers (2023-08-21T16:34:46Z) - IoTFlowGenerator: Crafting Synthetic IoT Device Traffic Flows for Cyber
Deception [31.822346303953164]
Honeypots are an important security tool to understand attacker intent and deceive attackers to spend time and resources.
To build better honeypots and enhance cyber deception capabilities, IoT honeypots need to generate realistic network traffic flows.
We propose a novel deep learning based approach for generating traffic flows that mimic real network traffic due to user and IoT device interactions.
arXiv Detail & Related papers (2023-05-01T16:24:07Z) - Efficient Federated Learning with Spike Neural Networks for Traffic Sign
Recognition [70.306089187104]
We introduce powerful Spike Neural Networks (SNNs) into traffic sign recognition for energy-efficient and fast model training.
Numerical results indicate that the proposed federated SNN outperforms traditional federated convolutional neural networks in terms of accuracy, noise immunity, and energy efficiency as well.
arXiv Detail & Related papers (2022-05-28T03:11:48Z) - Enable Deep Learning on Mobile Devices: Methods, Systems, and
Applications [46.97774949613859]
Deep neural networks (DNNs) have achieved unprecedented success in the field of artificial intelligence (AI)
However, their superior performance comes at the considerable cost of computational complexity.
This paper provides an overview of efficient deep learning methods, systems and applications.
arXiv Detail & Related papers (2022-04-25T16:52:48Z) - FPGA-optimized Hardware acceleration for Spiking Neural Networks [69.49429223251178]
This work presents the development of a hardware accelerator for an SNN, with off-line training, applied to an image recognition task.
The design targets a Xilinx Artix-7 FPGA, using in total around the 40% of the available hardware resources.
It reduces the classification time by three orders of magnitude, with a small 4.5% impact on the accuracy, if compared to its software, full precision counterpart.
arXiv Detail & Related papers (2022-01-18T13:59:22Z) - Malware Squid: A Novel IoT Malware Traffic Analysis Framework using
Convolutional Neural Network and Binary Visualisation [2.309914459672557]
We introduce a novel IoT malware traffic analysis approach using neural network and binary visualisation.
The prime motivation of the proposed approach is to faster detect and classify new malware (zero-day malware)
arXiv Detail & Related papers (2021-09-08T00:21:45Z) - Automated Machine Learning Techniques for Data Streams [91.3755431537592]
This paper surveys the state-of-the-art open-source AutoML tools, applies them to data collected from streams, and measures how their performance changes over time.
The results show that off-the-shelf AutoML tools can provide satisfactory results but in the presence of concept drift, detection or adaptation techniques have to be applied to maintain the predictive accuracy over time.
arXiv Detail & Related papers (2021-06-14T11:42:46Z) - IoT Malware Network Traffic Classification using Visual Representation
and Deep Learning [1.7205106391379026]
We propose a novel IoT malware traffic analysis approach using deep learning and visual representation.
The detection of malicious network traffic in the proposed approach works at the package level, significantly reducing the time of detection.
The experimental results of Residual Neural Network (ResNet50) are very promising, providing a 94.50% accuracy rate for detection of malware traffic.
arXiv Detail & Related papers (2020-10-04T22:44:04Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.