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Auteurs principaux: Wang, Shuhui, Sun, Zihan, Hu, Chaochen, Li, Chao, Zhang, Yong, Yao, Yandong, Wang, Hao, Xing, Chunxiao
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2406.05462
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author Wang, Shuhui
Sun, Zihan
Hu, Chaochen
Li, Chao
Zhang, Yong
Yao, Yandong
Wang, Hao
Xing, Chunxiao
author_facet Wang, Shuhui
Sun, Zihan
Hu, Chaochen
Li, Chao
Zhang, Yong
Yao, Yandong
Wang, Hao
Xing, Chunxiao
contents Recent years have seen massive time-series data generated in many areas. This different scenario brings new challenges, particularly in terms of data ingestion, where existing technologies struggle to handle such massive time-series data, leading to low loading speed and poor timeliness. To address these challenges, this paper presents MatrixGate, a new and efficient data ingestion approach for massive time-series data. MatrixGate implements both single-instance and multi-instance parallel procedures, which is based on its unique ingestion strategies. First, MatrixGate uses policies to tune the slots that are synchronized with segments to ingest data, which eliminates the cost of starting transactions and enhance the efficiency. Second, multi-coroutines are responsible for transfer data, which can increase the degree of parallelism significantly. Third, lock-free queues are used to enable direct data transfer without the need for disk storage or lodging in the master instance. Experiment results on multiple datasets show that MatrixGate outperforms state-of-the-art methods by 3 to 100 times in loading speed, and cuts down about 80% query latency. Furthermore, MatrixGate scales out efficiently under distributed architecture, achieving scalability of 86%.
format Preprint
id arxiv_https___arxiv_org_abs_2406_05462
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle MatrixGate: A High-performance Data Ingestion Tool for Time-series Databases
Wang, Shuhui
Sun, Zihan
Hu, Chaochen
Li, Chao
Zhang, Yong
Yao, Yandong
Wang, Hao
Xing, Chunxiao
Databases
Recent years have seen massive time-series data generated in many areas. This different scenario brings new challenges, particularly in terms of data ingestion, where existing technologies struggle to handle such massive time-series data, leading to low loading speed and poor timeliness. To address these challenges, this paper presents MatrixGate, a new and efficient data ingestion approach for massive time-series data. MatrixGate implements both single-instance and multi-instance parallel procedures, which is based on its unique ingestion strategies. First, MatrixGate uses policies to tune the slots that are synchronized with segments to ingest data, which eliminates the cost of starting transactions and enhance the efficiency. Second, multi-coroutines are responsible for transfer data, which can increase the degree of parallelism significantly. Third, lock-free queues are used to enable direct data transfer without the need for disk storage or lodging in the master instance. Experiment results on multiple datasets show that MatrixGate outperforms state-of-the-art methods by 3 to 100 times in loading speed, and cuts down about 80% query latency. Furthermore, MatrixGate scales out efficiently under distributed architecture, achieving scalability of 86%.
title MatrixGate: A High-performance Data Ingestion Tool for Time-series Databases
topic Databases
url https://arxiv.org/abs/2406.05462