Javascript must be enabled to continue!
Advancements in Cloud Security: Leveraging Machine Learning for Threat Detection
View through CrossRef
Cloud security is becoming increasingly vital as organizations migrate their data and services to cloud infrastructures. This paper investigates the integration of machine learning (ML) algorithms into cloud security frameworks to improve threat detection and mitigate security risks. With the advent of complex, distributed cloud environments, traditional security mechanisms often fail to detect sophisticated attacks such as Distributed Denial of Service (DDoS), Advanced Persistent Threats (APTs), and zero-day vulnerabilities. Machine learning models, including supervised, unsupervised, and reinforcement learning, offer new methodologies to detect and respond to security anomalies. The study explores how ML techniques, such as anomaly detection, classification, and clustering, can be applied to large-scale cloud data to identify malicious behaviors in real time. By employing neural networks and decision trees, cloud-based systems can learn from historical attack patterns to improve detection accuracy. The paper presents a comparative analysis of ML models used in threat detection, including Random Forest, Support Vector Machines (SVM), and Convolutional Neural Networks (CNN), demonstrating their effectiveness in enhancing cloud security postures. Moreover, it delves into the challenges of implementing ML in cloud environments, including data privacy, the risk of adversarial attacks on ML models, and the need for real-time processing of large datasets. The paper also proposes a hybrid framework that combines ML-based threat detection with traditional security measures like firewalls and intrusion detection systems (IDS). Future directions for improving ML-driven cloud security are discussed, particularly in the context of emerging technologies like edge computing and the Internet of Things (IoT).
Title: Advancements in Cloud Security: Leveraging Machine Learning for Threat Detection
Description:
Cloud security is becoming increasingly vital as organizations migrate their data and services to cloud infrastructures.
This paper investigates the integration of machine learning (ML) algorithms into cloud security frameworks to improve threat detection and mitigate security risks.
With the advent of complex, distributed cloud environments, traditional security mechanisms often fail to detect sophisticated attacks such as Distributed Denial of Service (DDoS), Advanced Persistent Threats (APTs), and zero-day vulnerabilities.
Machine learning models, including supervised, unsupervised, and reinforcement learning, offer new methodologies to detect and respond to security anomalies.
The study explores how ML techniques, such as anomaly detection, classification, and clustering, can be applied to large-scale cloud data to identify malicious behaviors in real time.
By employing neural networks and decision trees, cloud-based systems can learn from historical attack patterns to improve detection accuracy.
The paper presents a comparative analysis of ML models used in threat detection, including Random Forest, Support Vector Machines (SVM), and Convolutional Neural Networks (CNN), demonstrating their effectiveness in enhancing cloud security postures.
Moreover, it delves into the challenges of implementing ML in cloud environments, including data privacy, the risk of adversarial attacks on ML models, and the need for real-time processing of large datasets.
The paper also proposes a hybrid framework that combines ML-based threat detection with traditional security measures like firewalls and intrusion detection systems (IDS).
Future directions for improving ML-driven cloud security are discussed, particularly in the context of emerging technologies like edge computing and the Internet of Things (IoT).
Related Results
ThreatBased Security Risk Evaluation in the Cloud
ThreatBased Security Risk Evaluation in the Cloud
Research ProblemCyber attacks are targeting the cloud computing systems, where enterprises, governments, and individuals are outsourcing their storage and computational resources f...
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Leveraging Artificial Intelligence for smart cloud migration, reducing cost and enhancing efficiency
Cloud computing has become a critical component of modern IT infrastructure, offering businesses scalability, flexibility, and cost efficiency. Unoptimized cloud migration strategi...
Developing a Cloud Computing Framework for University Libraries
Developing a Cloud Computing Framework for University Libraries
Our understanding of the library context on security challenges on storing research output on the cloud is inadequate and incomplete. Existing research has mostly focused on profit...
Securing the Cloud: A Machine Learning Approach for Threat Detection and Mitigation
Securing the Cloud: A Machine Learning Approach for Threat Detection and Mitigation
As cloud computing continues to play an increasingly integral role in modern IT infrastructures, ensuring the security of cloud environments has become paramount. Leveraging machin...
Hybrid Cloud Scheduling Method for Cloud Bursting
Hybrid Cloud Scheduling Method for Cloud Bursting
In the paper, we consider the hybrid cloud model used for cloud bursting, when the computational capacity of the private cloud provider is insufficient to deal with the peak number...
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
Advanced frameworks for fraud detection leveraging quantum machine learning and data science in fintech ecosystems
The rapid expansion of the fintech sector has brought with it an increasing demand for robust and sophisticated fraud detection systems capable of managing large volumes of financi...
Analysis of Network Security in IoT-based Cloud Computing Using Machine Learning
Analysis of Network Security in IoT-based Cloud Computing Using Machine Learning
Network security in IoT-based cloud computing can benefit greatly from the application of machine learning techniques. IoT devices introduce unique security challenges with their l...
Cloud detection from IASI radiance for climate analysis purposes
Cloud detection from IASI radiance for climate analysis purposes
<p>Clouds are an essential component in our Earth system because of their importance for the weather, the water cycle and the Earth radiation budget. To better unders...

