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5月31日 - 2026年5月31日

ランク: A* (CORE2023)Offline

ACM SIGMOD-SIGACT-SIGART Conference on Principles of Database Systems

更新日時: 4 days ago
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概要

The annual ACM SIGMOD/PODS Conference is a leading international forum for database researchers, practitioners, developers, and users to explore cutting-edge ideas and results, and to exchange techniques, tools, and experiences. The conference includes a technical program with research and industrial talks, tutorials, demos, and focused workshops. PODS (Principles of Database Systems) is part of this joint conference. Topics of interest include but are not limited to: Data Management Systems, Monitoring, testing, and tuning database systems, Cloud, distributed, decentralized, and parallel data management, Database systems on emerging hardware, Embedded databases, IoT, and Sensor networks, Storage, indexing, and physical database design, Query processing and optimization, Transaction processing, Data warehousing, OLAP, Analytics, Data Models and Languages, Data models and semantics, Declarative programming languages and optimization, Spatial and temporal data management, Graphs, social networks, web data, and semantic web, Multimedia and information retrieval, Data lakes, Uncertain, probabilistic, and approximate databases, Streams and complex event processing, Human-Centric Data Management, Data exploration, visualization, query languages, and user interfaces, User-centric and human-in-the-loop data management, Crowdsourced and collaborative data management, Data Governance, Quality, and Fairness, Data integration, information extraction, and schema matching, Data provenance and workflows, Metadata management, Data security, privacy, and access control, Data quality and data cleaning, Responsible data management and data fairness, Modern AI & Data Management, Structured queries over unstructured data, Natural language queries, Machine learning methods for database engine internals, Machine learning methods for database engineering, Data management and metadata for machine learning pipelines, AI & knowledge bases, Data mining & prescriptive analytics in databases, Systems for AI.

論文募集

The annual ACM SIGMOD/PODS Conference is a leading international forum for database researchers, practitioners, developers, and users to explore cutting-edge ideas and results, and to exchange techniques, tools, and experiences. The conference includes a technical program with research and industrial talks, tutorials, demos, and focused workshops. PODS (Principles of Database Systems) is part of this joint conference. Topics of interest include but are not limited to: Data Management Systems, Monitoring, testing, and tuning database systems, Cloud, distributed, decentralized, and parallel data management, Database systems on emerging hardware, Embedded databases, IoT, and Sensor networks, Storage, indexing, and physical database design, Query processing and optimization, Transaction processing, Data warehousing, OLAP, Analytics, Data Models and Languages, Data models and semantics, Declarative programming languages and optimization, Spatial and temporal data management, Graphs, social networks, web data, and semantic web, Multimedia and information retrieval, Data lakes, Uncertain, probabilistic, and approximate databases, Streams and complex event processing, Human-Centric Data Management, Data exploration, visualization, query languages, and user interfaces, User-centric and human-in-the-loop data management, Crowdsourced and collaborative data management, Data Governance, Quality, and Fairness, Data integration, information extraction, and schema matching, Data provenance and workflows, Metadata management, Data security, privacy, and access control, Data quality and data cleaning, Responsible data management and data fairness, Modern AI & Data Management, Structured queries over unstructured data, Natural language queries, Machine learning methods for database engine internals, Machine learning methods for database engineering, Data management and metadata for machine learning pipelines, AI & knowledge bases, Data mining & prescriptive analytics in databases, Systems for AI.

重要な日付

カンファレンス日程

Conference Date

2026年5月31日

以前:
  • 2026年5月31日 - 2026年6月5日

情報源ランク

情報源: CORE2023

ランク: A*

研究分野: Data management and data science, 使用されていません

地図

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