2026 6th International Conference on Big Data, Artificial Intelligence and Risk Management (ICBAR 2026)
Online
CONFERENCE
Event Details
Date: May 15-17, 2026
Locations: Shanghai, China & Jeju Island, South Korea
Conference Website: https://ais.cn/u/vMNj2q
Call for Papers
Topics of Interest
Submissions are invited on the following topics (but are not limited to):
- Big Data, Artificial Intelligence, and Risk Management
- Data analysis
- Data mining
- Modeling
- Natural language processing (NLP)
- Risk management systems
- Data integration and visualization
- Data management, analysis, and information retrieval
- Object detection and recognition
- Network security
- Open knowledge computing
- Distributed data processing and integration
- Risk recognition
- Artificial intelligence algorithms
- Big data-driven management and decision-making
- Scientific research based on big data
- Decision management
- Risk and emergency governance systems
- Reliability engineering
- Big data-driven risk analysis and management
- Risk governance and big data
- Application of big data in epidemic risk management
- Risk analysis and management based on artificial intelligence technology
Publication
All submitted papers will undergo peer review by the conference committees. Accepted papers, following registration and presentation, will be published in the ICBAR 2026 Conference Proceedings. These proceedings will be submitted to EI Compendex and Scopus for indexing.
Important Dates
- Full Paper Submission Deadline: April 15, 2026
- Registration Deadline: April 25, 2026
- Final Paper Submission & Conference Dates: May 15-17, 2026
Paper Submission
Please submit your full paper (Word + PDF) via the submission system:
- Shanghai, China Venue: https://ais.cn/u/vMNj2q
- Jeju Island, South Korea Venue: https://www.aischolar.com/conference/icbar2026/submission?invite=conf2go
For further details, visit the official conference website: https://ais.cn/u/vMNj2q
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