Abstract

The quick and intelligent requests and answers in artificial intelligence (AI) are inseparable from intelligent data. Knowledge graph makes data more intelligent by establishing association among data, which provides convenience for intelligent search, reasoning and analysis of data. Resource Description Framework (RDF) is an effective data representation model of knowledge graph. This paper takes RDF as the research object and proposes an incremental partition method of intelligent data (IPID) to realize the distributed storage of large-scale AI data. First, IPID gives a mixed object function integrating edge cut and load balancing. Second, IPID devises the initial and incremental partitioning algorithms of RDF. The initial partition divides the original RDF graph into kernel vertices, boundary vertices and free vertices. The boundary and freedom nodes select the kernel vertex with the maximum gain of object function to form a sub-partition. And the incremental partition is in charge of the selection of sub-partition of new and deleted data by the object function. Meanwhile, the incremental partition algorithm would also execute a dynamic adjustment strategy at a certain time interval according to the balance and tightness of sub-partition to satisfy the partitioning object. Finally, IPID is tested on the knowledge graph datasets. The experimental results show that the object function guarantees the quality of knowledge graph partition in edge cut and load balancing, and effectively realizes the incremental partition.

Highlights

  • IntroductionThe society has entered the era of artificial intelligence (AI)

  • At present, the society has entered the era of artificial intelligence (AI)

  • Knowledge graph includes a large number of domain knowledge, which can effectively reflect the relationship between knowledge

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Summary

Introduction

The society has entered the era of artificial intelligence (AI). The development of AI has given birth to a large number of intelligent applications. Such as intelligent transportation, researchers around the world have been working on new automotive applications to create a comfortable and safer driving environment [1], [2]. Researchers around the world have been working on new automotive applications to create a comfortable and safer driving environment [1], [2] These works are inseparable from the intelligent retrieval and reasoning. The intelligent retrieval and reasoning are based on intelligent Data. Knowledge graph effectively reflects the intelligence of data by establishing the fragmented data association [3]

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