|
|
Line 1: |
Line 1: |
| {{Event | | {{Event |
− | |Acronym=DaWaK 2020 | + | |Acronym=ESWEEK 2020 |
− | |Title=22nd International Conference on Big Data Analytics and Knowledge Discovery | + | |Title=Embedded Systems Week |
− | |Type=Conference | + | |Ordinal=16 |
− | |Homepage=http://www.dexa.org/dawak2020
| + | |In Event Series=Event Series:Cdee022a-45e8-43ce-b77c-755268b309cf |
− | |Twitter account=https://twitter.com/DEXASociety
| |
− | |City=Bratislava
| |
− | |Country=Country:SK
| |
− | |Submitting link=https://easychair.org/conferences/?conf=dawak2020
| |
− | |has general chair=Bernhard Moser
| |
− | |has program chair=Min Song, Il-Yeol Song
| |
− | |pageCreator=User:Curator 53
| |
− | |pageEditor=User:Curator 53
| |
− | |contributionType=1
| |
− | |In Event Series=Event Series:DaWaK | |
| |Single Day Event=no | | |Single Day Event=no |
− | |Start Date=2020/09/14 | + | |Start Date=2020/09/20 |
− | |End Date=2020/09/17 | + | |End Date=2020/09/25 |
| |Event Status=as scheduled | | |Event Status=as scheduled |
− | |Event Mode=on site | + | |Event Mode=online |
− | }}
| + | |Academic Field=Embedded Systems |
− | {{Event Deadline
| |
− | |Paper Deadline=2020/04/14
| |
− | |Notification Deadline=2020/05/20
| |
− | |Camera-Ready Deadline=2020/06/19
| |
− | |Submission Deadline=2020/04/14 | |
| }} | | }} |
| {{Event Deadline}} | | {{Event Deadline}} |
| {{S Event}} | | {{S Event}} |
− | === 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
| |