Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Enhancing Big Data Security in Hadoop using Machine Learning

View through CrossRef
In the era of Big Data, where vast amounts of information are generated and analysed to extract valuable insights, ensuring the security of data has become paramount. Hadoop, as a prominent framework for processing and analysing Big Data, presents unique challenges in terms of security due to its distributed and decentralized architecture. Traditional security mechanisms in Hadoop, such as authentication, authorization, and encryption, are essential but may not suffice to address evolving security threats effectively. This research paper proposes an innovative approach to enhance Big Data security in Hadoop using Machine Learning techniques. Machine Learning offers the capability to detect anomalies, identify patterns, and classify data, which can complement traditional security measures and provide proactive defence mechanisms against sophisticated attacks. The literature review highlights the limitations of existing security mechanisms in Hadoop and discusses the potential of Machine Learning in addressing these challenges. Various Machine learning algorithms, including anomaly detection, pattern recognition, and classification, are explored for their applicability in Big Data security. The proposed methodology involves integrating Machine Learning algorithms into the Hadoop ecosystem to analyse data access patterns, detect abnormal behaviour, and identify potential security breaches in real-time. The experimental setup comprises the selection of relevant datasets, implementation details using appropriate tools and frameworks, and evaluation using established metrics. Results from experiments demonstrate the effectiveness of the proposed approach in enhancing Big Data security in Hadoop. By leveraging Machine Learning, organizations can improve their ability to detect and mitigate security threats, thereby safeguarding sensitive data and preserving the integrity of their Big Data infrastructure. The discussion section interprets the findings in the context of existing literature, highlighting the significance of the research and identifying avenues for further exploration. Ultimately, this research contributes to the advancement of Big Data security practices by leveraging Machine Learning techniques to fortify the defences of Hadoop-based systems against evolving cyber threats.
Title: Enhancing Big Data Security in Hadoop using Machine Learning
Description:
In the era of Big Data, where vast amounts of information are generated and analysed to extract valuable insights, ensuring the security of data has become paramount.
Hadoop, as a prominent framework for processing and analysing Big Data, presents unique challenges in terms of security due to its distributed and decentralized architecture.
Traditional security mechanisms in Hadoop, such as authentication, authorization, and encryption, are essential but may not suffice to address evolving security threats effectively.
This research paper proposes an innovative approach to enhance Big Data security in Hadoop using Machine Learning techniques.
Machine Learning offers the capability to detect anomalies, identify patterns, and classify data, which can complement traditional security measures and provide proactive defence mechanisms against sophisticated attacks.
The literature review highlights the limitations of existing security mechanisms in Hadoop and discusses the potential of Machine Learning in addressing these challenges.
Various Machine learning algorithms, including anomaly detection, pattern recognition, and classification, are explored for their applicability in Big Data security.
The proposed methodology involves integrating Machine Learning algorithms into the Hadoop ecosystem to analyse data access patterns, detect abnormal behaviour, and identify potential security breaches in real-time.
The experimental setup comprises the selection of relevant datasets, implementation details using appropriate tools and frameworks, and evaluation using established metrics.
Results from experiments demonstrate the effectiveness of the proposed approach in enhancing Big Data security in Hadoop.
By leveraging Machine Learning, organizations can improve their ability to detect and mitigate security threats, thereby safeguarding sensitive data and preserving the integrity of their Big Data infrastructure.
The discussion section interprets the findings in the context of existing literature, highlighting the significance of the research and identifying avenues for further exploration.
Ultimately, this research contributes to the advancement of Big Data security practices by leveraging Machine Learning techniques to fortify the defences of Hadoop-based systems against evolving cyber threats.

Related Results

Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Secure Cloud  Data with Attribute-based Honey Encryption
Secure Cloud  Data with Attribute-based Honey Encryption
Abstract Encryption is a Technique to convert plain text into Cipher text, which is unreadable without an appropriate decryption key. Hadoop is a platform to process and st...
Hadoop Tools
Hadoop Tools
As the name indicates, this chapter explains the various additional tools provided by Hadoop. The additional tools provided by Hadoop distribution are Hadoop Streaming, Hadoop Arch...
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
CREATING LEARNING MEDIA IN TEACHING ENGLISH AT SMP MUHAMMADIYAH 2 PAGELARAN ACADEMIC YEAR 2020/2021
The pandemic Covid-19 currently demands teachers to be able to use technology in teaching and learning process. But in reality there are still many teachers who have not been able ...
A comprehensive review of machine learning's role in enhancing network security and threat detection
A comprehensive review of machine learning's role in enhancing network security and threat detection
As network security threats continue to evolve in complexity and sophistication, there is a growing need for advanced solutions to enhance network security and threat detection cap...
Development Tasks of AI-based Security Industry
Development Tasks of AI-based Security Industry
Recently, the government's interest in industries utilizing AI has been amplified, with initiatives such as announcing a roadmap aiming to achieve the goal of becoming the world's ...
Hadoop Ecosystem and Cloud Integration
Hadoop Ecosystem and Cloud Integration
The integration of the Hadoop ecosystem with cloud computing marks a transformative evolution in the way organizations manage and analyze large-scale data. This study examines how ...
Critical study of AWS Security Tools and Features for Hadoop Deployments: Review and Future Perspectives
Critical study of AWS Security Tools and Features for Hadoop Deployments: Review and Future Perspectives
As organizations increasingly adopt Hadoop for managing and analyzing vast datasets, ensuring robust security for these deployments becomes critical. Amazon Web Services (AWS) prov...

Back to Top