DaWaK 2020

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DaWaK 2020
22nd International Conference on Big Data Analytics and Knowledge Discovery
Event in series DaWaK
Dates 2020/09/14 (iCal) - 2020/09/17
Homepage: http://www.dexa.org/dawak2020
Twitter account: https://twitter.com/DEXASociety
Submitting link: https://easychair.org/conferences/?conf=dawak2020
Location
Location: Bratislava, Slovakia
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Important dates
Papers: 2020/04/14
Submissions: 2020/04/14
Notification: 2020/05/20
Camera ready due: 2020/06/19
Committees
General chairs: Bernhard Moser
PC chairs: Min Song, Il-Yeol Song
Table of Contents

Contents

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Scopes

  • Parallel Processing
  • Parallel DBMS Technology
  • Schema-free Data Repositories
  • Modelling diverse big data sources (e.g. text)
  • Conceptual Model Foundations for Big Data
  • Query Languages
  • Query processing and Optimization
  • Semantics for Big Data Intelligence
  • Data Warehouses, Data Lakes
  • Big Data Storage and Indexing
  • Big Data Analytics: Algorithms, Techniques, and Systems
  • Big Data Quality and Provenance Control
  • Distributed System Architectures
  • Cloud Infrastructure for Big Data
  • Scalability and Parallelization using MapReduce, Spark and Related Systems
  • Graph Analytics
  • Visualization
  • Big Data Search and Discovery
  • Big Data Management for Mobile Applications
  • Analytics for Unstructured, Semi-structured, and Structured Data
  • Analytics for Temporal, Spatial, Spatio-temporal, and Mobile Data
  • Analytics for Data Streams and Sensor Data
  • Real-time/Right-time and Event-based Analytics
  • Privacy and Security in Analytics
  • Big Data Application Deployment
  • Pre-processing and Data Cleaning
  • Integration of Data Warehousing, OLAP Cubes and Data Mining
  • Analytic Workflows
  • Novel Applications of Text Mining to Big Data
  • Deep Learning Applications
  • Data Science Products