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Autores principales: Wang, Bin, Ouyang, Linke, Wu, Fan, Ning, Wenchang, Han, Xiao, Zhao, Zhiyuan, Peng, Jiahui, Jiang, Yiying, Lin, Dahua, He, Conghui
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2405.18315
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author Wang, Bin
Ouyang, Linke
Wu, Fan
Ning, Wenchang
Han, Xiao
Zhao, Zhiyuan
Peng, Jiahui
Jiang, Yiying
Lin, Dahua
He, Conghui
author_facet Wang, Bin
Ouyang, Linke
Wu, Fan
Ning, Wenchang
Han, Xiao
Zhao, Zhiyuan
Peng, Jiahui
Jiang, Yiying
Lin, Dahua
He, Conghui
contents In the era of artificial intelligence, the diversity of data modalities and annotation formats often renders data unusable directly, requiring understanding and format conversion before it can be used by researchers or developers with different needs. To tackle this problem, this article introduces a framework called Dataset Description Language (DSDL) that aims to simplify dataset processing by providing a unified standard for AI datasets. DSDL adheres to the three basic practical principles of generic, portable, and extensible, using a unified standard to express data of different modalities and structures, facilitating the dissemination of AI data, and easily extending to new modalities and tasks. The standardized specifications of DSDL reduce the workload for users in data dissemination, processing, and usage. To further improve user convenience, we provide predefined DSDL templates for various tasks, convert mainstream datasets to comply with DSDL specifications, and provide comprehensive documentation and DSDL tools. These efforts aim to simplify the use of AI data, thereby improving the efficiency of AI development.
format Preprint
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle DSDL: Data Set Description Language for Bridging Modalities and Tasks in AI Data
Wang, Bin
Ouyang, Linke
Wu, Fan
Ning, Wenchang
Han, Xiao
Zhao, Zhiyuan
Peng, Jiahui
Jiang, Yiying
Lin, Dahua
He, Conghui
Artificial Intelligence
Programming Languages
In the era of artificial intelligence, the diversity of data modalities and annotation formats often renders data unusable directly, requiring understanding and format conversion before it can be used by researchers or developers with different needs. To tackle this problem, this article introduces a framework called Dataset Description Language (DSDL) that aims to simplify dataset processing by providing a unified standard for AI datasets. DSDL adheres to the three basic practical principles of generic, portable, and extensible, using a unified standard to express data of different modalities and structures, facilitating the dissemination of AI data, and easily extending to new modalities and tasks. The standardized specifications of DSDL reduce the workload for users in data dissemination, processing, and usage. To further improve user convenience, we provide predefined DSDL templates for various tasks, convert mainstream datasets to comply with DSDL specifications, and provide comprehensive documentation and DSDL tools. These efforts aim to simplify the use of AI data, thereby improving the efficiency of AI development.
title DSDL: Data Set Description Language for Bridging Modalities and Tasks in AI Data
topic Artificial Intelligence
Programming Languages
url https://arxiv.org/abs/2405.18315