Abstract

At present, big data related technologies are developing rapidly, and major companies provide big data analysis services. However, the big data analysis system formed by the combination method cannot sense each other and lacks cooperation, resulting in a certain amount of waste of resources in the big data analysis system. In order to find the key technology of the data analysis system and conduct in-depth analysis of the media data, this paper proposes a scheduling algorithm based on artificial intelligence (AI) to implement task scheduling and logical data block migration. By analyzing the experimental results, we know that the performance of LAS (Logistic-Block Affinity Scheduler) is improved by 23.97%, 16.11%, and 10.56%, respectively, compared with the other three algorithms. Based on real new media data, this article analyzes the content of media data and user behavior in depth through big data analysis methods. Compared with other methods, the algorithm model in this paper optimizes the accuracy of hot topic extraction, which has important implications for media data mining. In addition, the analysis results of the emotional characteristics, audience characteristics, and hot topic communication characteristics obtained by the research also have practical value. This method improves the recall rate and F value by 5% and 4.7%, respectively, and the overall F value of emotional judgment is about 88.9%.

Highlights

  • In the field of big data, many excellent products have been tested. rough the combination of these products, a variety of big data analysis systems can be formed

  • Based on the analysis of the big data in-depth analysis system, this paper proposes a scheduling algorithm based on artificial intelligence (AI) that uses task scheduling and logical data block migration as implementation methods and verifies the algorithm through experiment and analysis verification [19, 20]

  • Based on real new media data, this article analyzes the content of media data and user behavior in depth through big data analysis methods. e algorithm model in this paper optimizes the accuracy of hot topic extraction and has important implications for media data mining

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Summary

Introduction

In the field of big data, many excellent products have been tested. rough the combination of these products, a variety of big data analysis systems can be formed. In the existing big data analysis system, the parallel processing layer and the data storage layer lack cooperation, which cannot guarantee the locality of tasks, make the system load unbalanced, and make the system resource utilization rate low. In the existing big data analysis system, the parallel processing layer and the data storage layer lack cooperation. Artificial intelligence is the study of making computers to simulate certain human thinking processes and intelligent behaviors (such as learning, reasoning, thinking, planning, etc.). It mainly includes the principles of computer realization of intelligence, manufacturing computers similar to human brain intelligence, and making computers achieve higher level applications

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