ALLDATA 2026 - The Twelfth International Conference on Big Data, Small Data, Linked Data and Open Data
	May 24, 2026 - May 28, 2026
 ALLDATA 2026
Onsite and Online Options: In order to accommodate various situations, we are offering the option for either physical presence or virtual participation (pdf slides or pre-recorded videos).
	ISSN: 2519-8386
	ISBN: 978-1-68558-397-2 
		ALLDATA 2026 is colocated with the following events as part of NexComm 2026 Congress:
		  - ICDT 2026, The Twenty-First International Conference on Digital Telecommunications
- SPACOMM 2026, The Eighteenth International Conference on Advances in Satellite and Space Communications
- ICN 2026, The Twenty-Fifth International Conference on Networks
- ICONS 2026, The Twenty-First International Conference on Systems
- MMEDIA 2026, The Eighteenth International Conference on Advances in Multimedia
- PESARO 2026, The Sixteenth International Conference on Performance, Safety and Robustness in Complex Systems and Applications
- CTRQ 2026, The Nineteenth International Conference on Communication Theory, Reliability, and Quality of Service
- ALLDATA 2026, The Twelfth International Conference on Big Data, Small Data, Linked Data and Open Data
- SOFTENG 2026, The Twelfth International Conference on Advances and Trends in Software Engineering
ALLDATA  2026 Steering Committee
  
    
      |  |  | Anastasija NikiforovaEuropean Open Science Cloud Task Force "FAIR metrics and data  quality" & University of Tartu
 Estonia
 
 |  |  | Gerold HoelzlUniversity of              Passau
 Germany
 
 | 
    
      |  |  | Vikas Thammanna Gowda Champlain College
 USA
 
 |  |  |  | 
  
 
  
    
      |  |  | Anastasija NikiforovaEuropean Open Science Cloud Task Force "FAIR metrics and data  quality" & University of Tartu
 Estonia
 
 | 
    
      |  |  | Gerold HoelzlUniversity of Passau
 Germany
 
 | 
    
      |  |  | Vikas Thammanna Gowda Champlain College
 USA
 
 | 
  
 
 
ALLDATA 2026 conference tracks:
Challenges in processing Big Data and applications
Data classification: small/big/huge, volume, velocity, veridicity,   value, etc; Data properties: syntax, semantics, sensitivity, similarity,   scarcity, spacial/temporal, completeness, accuracy, compactness, etc.;   Data processing: mining, searching, feature extraction, clustering,   aggregating, rating, filtering, etc.; Data relationships: linked data,   open data, linked open data, etc. Exploiting big/linked data: upgrading   legacy open data, integrating probabilist models, spam detection,   datasets for noise corrections, predicting reliability, pattern mining,   linking heterogeneous dataset collections, exploring type-specific topic   profiles of datasets, efficient large-scale ontology matching etc.;   Applications: event-based linked data, large scale multi-dimensional   network analysis, error detection of atmospheric data,  exploring urban   data in smart cities, studying health fatalities,  estimating the energy   demand at real-time in cellular networks, multilingual word sense   disambiguation, creating open source tool for semantically enriching   data, etc.
	Advanced topics in Deep/Machine learning
Distributed and parallel learning algorithms; Image and video      coding; Deep learning and Internet of Things; Deep learning and Big      data; Data preparation, feature selection, and feature extraction;      Error resilient transmission of multimedia data; 3D video coding and      analysis; Depth map applications; Machine learning programming      models and abstractions; Programming languages for machine learning;      Visualization of data, models, and predictions; Hardware-efficient      machine learning methods; Model training, inference, and serving;      Trust and security for machine learning applications; Testing,      debugging, and monitoring of machine learning  applications; Machine      learning for systems.
	Approaches for Data/Big Data processing using Machine Learning
Machine learning models (supervised, unsupervised, reinforcement,      constrained, etc.);
Generative modeling (Gaussian, HMM, GAN, Bayesian networks,      autoencoders, etc.);
Explainable AI (feature importance, LIME, SHAP, FACT, etc.);
Bayesian learning models;
Prediction uncertainty (approximation learning, similarity);
Training of models (hyperparameter optimization, regularization,      optimizers);
Active learning (partially labels datasets, faulty labels,      semi-supervised);
Applications of machine learning (recommender systems, NLP, computer      vision, etc.);
Data in machine learning (no data, small data, big data, graph data,      time series, sparse data, etc.)
	Big Data
	  Big data foundations; Big data architectures; Big data semantics,   interoperability, search and mining; Big data transformations,   processing and storage; Big Data management lifecycle, Big data   simulation, visualization, modeling tools, and algorithms; Reasoning on   Big data; Big data analytics for prediction; Deep Analytics; Big data   and cloud technologies; Big data and Internet of Things; High   performance computing on Big data; Scalable access to Big Data; Big data   quality and provenance, Big data persistence and preservation; Big data   protection, integrity, privacy, and pseudonymisation mechanisms; Big   data software (libraries, toolkits, etc.); Big Data visualisation and   user experience mechanisms; Big data understanding (knowledge discovery,   learning, consumer intelligence); Unknown in large Data Graphs;   Applications of Big data (geospatial/environment, energy, media,   mobility, health, financial, social, public sector, retail, etc.);   Business-driven Big data; Big Data Business Models; Big data ecosystems;   Big data innovation spaces; Big Data skills development; Policy,   regulation and standardization in Big data; Societal impacts of Big data
	Small Data
	  Social networking small data; Relationship between small data and big   data; Statistics on Small data; Handling Small data sets; Predictive   modeling methods for Small data sets; Small data sets versus Big Data   sets; Small and incomplete data sets; Normality in Small data sets;   Confidence intervals of small data sets; Causal discovery from Small   data sets; Deep Web and Small data sets; Small datasets for benchmarking   and testing; Validation and verification of regression in small data   sets; Small data toolkits; Data summarization
	Linked Data
	  RDF and Linked data; Deploying Linked data; Linked data and Big data;   Linked data and Small data; Evolving the Web into a global data space   via Linked data; Practical semantic Web via Linked data; Structured   dynamics and Linked data sets; Quantifying the connectivity of a   semantic Linked data; Query languages for Linked data; Access control   and security for Linked data; Anomaly detection via Linked data;   Semantics for Linked data; Enterprise internal data 'silos' and Linked   data; Traditional knowledge base and Linked data; Knowledge management   applications and Linked data; Linked data publication; Visualization of   Linked data; Linked data query builders; Linked data quality
	Open Data
	  Open data structures and algorithms; Designing for Open data; Open data   and Linked Open data; Open data government initiatives; Big Open data;   Small Open data; Challenges in using Open data (maps, genomes, chemical   compounds, medical data and practice, bioscience and biodiversity);   Linked open data and Clouds; Private and public Open data; Culture for   Open data or Open government data; Data access, analysis and   manipulation of Open data; Open addressing and Open data; Specification   languages for Open data; Legal aspects for Open data; Open Data   publication methods and technologies, Open Data toolkits; Open Data   catalogues, Applications using Open Data; Economic, environmental, and   social value of Open Data; Open Data licensing; Open Data Business   models; Data marketplaces
	
Deadlines:
	
              | Submission | Feb 07, 2026 | 
              | Notification | Mar 22, 2026 | 
              | Registration | Apr 05, 2026 | 
              | Camera ready | Apr 19, 2026 | 
    
Deadlines differ for special tracks. Please consult the conference home page for special tracks Call for Papers (if any).