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BDA 2020 : 8th International Conference on Big Data Analytics

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Link: http://www.bda2020.org/
 
When Dec 15, 2020 - Dec 18, 2020
Where Ashoka University, Sonipat, India
Submission Deadline Aug 3, 2020
Notification Due Sep 30, 2020
Final Version Due Oct 15, 2020
Categories    big data   machine learning techniques fo   predictive modelling   streaming data analytics
 

Call For Papers

BDA 2020 Call For Papers
www.bda2020.org

The 8th International Conference on Big Data Analytics (BDA 2020) will be held during December 15-18, 2020 at Ashoka University, India. The conference will be organized by Ashoka University. BDA 2020 provides an international forum for researchers and industry practitioners to share their original research results, practical experiences and thoughts on big data from different perspectives including storage models, data access, computing paradigms, analytics, information sharing and privacy, redesigning mining algorithms, open issues and future research trends.

BDA 2020 invites original, technically sound, high-quality research papers proposing novel solutions addressing the problems related to big data analytics as well as case studies and practical experiences with big data. Major topics of interest to the conference include, but are not limited to:

Analytics as a Service
Architectural Design for Big Data
Big Data Analytics for Governance
Conceptual/cognitive/programming Models for Big data analytics
Clustering of Big Data
Data Fusion and Multi Modal Analytics
Data Models for Big Data Analytics
Domain-specific Analytics
Index Structures for Big Data Analytics
Interaction Design for Exploratory Analytics
Machine Learning techniques for Big Data
Large-scale recommendation systems and graph analysis

Model Discovery from Big Data
NoSQL and non-standard Data Models
Physical Data Organization for Big Data
Predictive Modelling
Rule Mining from Big Data
Scalability and Performance issues
Security, privacy and legal issues specific to big data
Semantics of Big Data
Streaming Data Analytics
Summarization and Materialized views
Topic Modelling
Unstructured and Semi-structured Data Mining

Research track submissions
Each paper should contain an abstract of approximately 300 words having a page limit of 20 pages in the LNCS style. The submissions including the title page, references and appendix. For preparing the manuscript, please see instructions for authors by Springer, in the Lecture Notes in Computer Science series (LNCS)

Submission link: https://easychair.org/my/conference?conf=bda2020

Important Dates: (All times in PST)
Abstract submission: July 6, 2020, 23:59
Full paper submissions: July 13, 2020, 23:59
Research paper notifications: September 14, 2020, 23:59
Camera-ready submission: October 1, 2020, 23:59

Contacts
Ladjel Bellatreche
ENSMA, France
bellatreche@ensma.fr

Hamido Fujita
Iwate Prefectural University, Japan
hfujita-799@acm.org

Vikram Goyal
IIIT Delhi, India
vikram@iiitd.ac.in

Note: Due to the Coronavirus pandemic, the conference is proposed to be held online. We are closely monitoring the situation and shall provide updates as necessary

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