Conference Information
DaWaK 2026: International Conference on Big Data Analytics and Knowledge Discovery
https://www.dexa.org/2026/dawak2026.html
Submission Date:
2026-03-15
Notification Date:
2026-05-15
Conference Date:
2026-08-11
Location:
Graz, Austria
Years:
28
CORE: b   QUALIS: b1   Viewed: 34001   Tracked: 6   Attend: 0

Call For Papers
Scope

DaWaK conference is a high-quality forum for researchers, practitioners and developers in the field of Big Data Analytics, in a broad sense. The objective is to explore, disseminate and exchange knowledge in this field through scientific and industry talks. The conference covers all aspects of DAWAK research and practice, including data lakes, database design (data warehouse design, ER modelling), big data management (tables + text + files), query languages (SQL and beyond), parallel systems technology (Spark, MapReduce, HDFS), theoretical foundations and applications, text and data mining techniques, and deep learning. 

Topics of Interest

The conference will bring together active researchers from the database systems, cloud computing, programming languages and data science communities worldwide. Main topics include:

    Theoretical models for data storage
    Integration of databases and neural networks
    Conceptual model foundations for big data
    Parallel and scalable data processing
    Distributed and parallel system architectures
    Query processing and optimization
    Semantics for big data
    Data fabric and data lake architectures
    Data Pre-processing and data cleaning
    Polystore and multistore architectures
    SQL alternatives: NoSQL, NewSQL, JSON
    Cloud infrastructure; containers, virtualization
    Metadata for big data frameworks
    Big data storage and indexing
    Mobile applications
    Large-scale AI/ML for Multimodal dataa
    Data Science workflows
    Analytics on Large Graphs
    Large-scale unstructured, semi-structured data
    Data streams: networking and sensor data
    Trustworthy AI on Data Lakes, Data Grid and Data Fabric
    Deep learning on large data sets
Last updated by Dou Sun in 2026-02-01
Related Journals
CCFFull NameImpact FactorPublisherISSN
aIEEE Transactions on Pattern Analysis and Machine Intelligence20.8IEEE0162-8828
aIEEE Transactions on Knowledge and Data Engineering8.9IEEE1041-4347
BioData Mining6.1Springer1756-0381
bACM Transactions on Knowledge Discovery from Data4.8ACM1556-4681
bData Mining and Knowledge Discovery4.3Springer1384-5810
Engineering Analysis with Boundary Elements4.1Elsevier0955-7997
Social Network Analysis and Mining2.8Springer1869-5450
bData & Knowledge Engineering2.6Elsevier0169-023X
cIntelligent Data Analysis0.900IOS Press1088-467X
Archive for Mathematical Logic0.400Springer0933-5846