Harnessing Big Data Analytics for Enhanced Machine Learning Algorithms

Authors

  • Ghulam Husain Department of Computer Science, University of Multan, Pakistan Author

Keywords:

Big Data Analytics, Machine Learning, Algorithm Enhancement, Data-driven Insights, Predictive Accuracy

Abstract

In the contemporary age of information, the importance of Big Data Analytics (BDA) is paramount. The continuous generation of vast datasets daily presents an unparalleled opportunity to capitalize on this information deluge for the advancement of Machine Learning (ML) algorithms. This paper provides an in-depth exploration of the symbiotic relationship between Big Data Analytics and Machine Learning, shedding light on methodologies, challenges, and advancements in the strategic integration of large-scale data to enhance algorithmic performance and predictive accuracy. The study begins by acknowledging the pervasive nature of data generation in various domains and industries, emphasizing the need for robust analytical tools to extract meaningful insights. The methodologies section dissects the techniques employed in leveraging big data, including data preprocessing, feature engineering, and model optimization, to bolster the capabilities of machine learning models. Challenges inherent in this synergy are critically examined, addressing issues related to data quality, privacy concerns, and computational complexity. The ultimate goal of this research is to provide a comprehensive understanding of how big data analytics can be effectively employed to propel machine learning algorithms to new heights of performance and accuracy. By synthesizing insights from existing literature and practical implementations, this paper aims to contribute to the expanding body of knowledge in the intersection of Big Data Analytics and Machine Learning, fostering innovation and progress in data-driven decision-making paradigms.

Downloads

Published

2023-12-11

How to Cite

Harnessing Big Data Analytics for Enhanced Machine Learning Algorithms. (2023). Journal Of Environmental Sciences And Technology, 2(2), 26-40. https://jest.com.pk/index.php/jest/article/view/8