An Efficient Priority Queue Data Structure for Big Data Applications

James Rhodes, E. Doncker
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Abstract

 Abstract —We have designed and developed an efficient priority queue data structure that utilizes buckets into which data elements are inserted and from which data elements are deleted. The data structure leverages hashing to determine the appropriate bucket to place a data element based on the data element’s key value. This allows the data structure to access data elements that are in the queue with an O(1) time complexity. Heaps access data elements that are in the queue with an O(log n) time complexity, where n is the number of nodes on the heap. Thus, the data structure improves the performance of applications that utilize a min/max heap. Targeted areas include big data applications, data science, artificial intelligence, and parallel processing. In this paper, we present results several applications. We demonstrate that the data structure when used to replace a min/max heap improves the performance applications by reducing the execution time. The performance improvement increases as the number of data elements placed in the queue increases. Also, in addition to being designed as a double-ended priority queue (DEPQ), the data structure can be configured to be a queue (FIFO), a stack (LIFO), and a set (which doesn’t allow duplicates).
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面向大数据应用的高效优先队列数据结构
摘要-我们设计并开发了一种高效的优先队列数据结构,该结构利用桶来插入数据元素并从中删除数据元素。数据结构利用散列来根据数据元素的键值确定放置数据元素的适当桶。这允许数据结构以0(1)的时间复杂度访问队列中的数据元素。堆访问队列中的数据元素的时间复杂度为O(log n),其中n是堆上的节点数。因此,这种数据结构提高了利用最小/最大堆的应用程序的性能。目标领域包括大数据应用、数据科学、人工智能和并行处理。在本文中,我们给出了一些应用结果。我们演示了当使用该数据结构替换min/max堆时,通过减少执行时间来提高应用程序的性能。随着放置在队列中的数据元素数量的增加,性能的提高也会增加。此外,除了被设计为双端优先级队列(DEPQ)之外,数据结构还可以配置为队列(FIFO)、堆栈(LIFO)和集合(不允许重复)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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