MINING THE DATA GOLDMINE: BIG DATA'S IMPACT ON AI ALGORITHMS AND MODELS

Authors

  • Chris Liu The College of Computer Science and Technology, zhejiang university, China
  • Chen Li The College of Computer Science and Technology, zhejiang university, China

DOI:

https://doi.org/10.53555/eijbms.v8i4.154

Keywords:

Big Data, AI Algorithms, Models, Data Mining, Impact, Machine Learning, Deep Learning, Insights, Transformative, Applications, Innovations

Abstract

In the digital age, the exponential growth of data, often referred to as "Big Data," has become a valuable resource for various fields, including Artificial Intelligence (AI). This research paper, titled "Mining the Data Goldmine: Big Data's Impact on AI Algorithms and Models," delves into the profound influence that the abundance of data has on the development and performance of AI algorithms and models. This paper offers a comprehensive overview of the synergistic relationship between Big Data and AI, highlighting the ways in which large-scale datasets have revolutionized AI applications. It explores how Big Data serves as both the fuel and the testing ground for AI algorithms, shaping their accuracy, robustness, and scalability. Moreover, this study investigates the challenges posed by Big Data, such as data quality, privacy, and storage, and how they affect the development of AI models.  The research dissects the key mechanisms through which AI algorithms extract insights, learn patterns, and make predictions from massive datasets, emphasizing the pivotal role of data preprocessing, feature engineering, and model selection. The research also delves into advanced techniques, such as deep learning, reinforcement learning, and natural language processing, that leverage Big Data to push the boundaries of AI capabilities.

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Published

2022-11-29