KDnuggets Home » News :: 2013 :: Sep :: Publications :: Big Data Journal: Call For Papers ( 13:n22 )

Big Data Journal: Call For Papers

          


Big Data, a highly innovative, peer-reviewed journal, is seeking high-quality, innovative submissions: original articles, reviews, commentaries and perspectives, brief reports, point/counterpoint articles, and letters to the editor.

Big Data JournalBig Data, a highly innovative, peer-reviewed journal, with Editor-in-Chief Edd Dumbill, provides a unique forum for world-class research exploring the challenges and opportunities in collecting, analyzing, and disseminating vast amounts of data, including data science, big data infrastructure and analytics, and pervasive computing.

The Journal is currently seeking high-quality, innovative submissions to be published in future issues. Submissions are accepted in the form of original articles, reviews, commentaries and perspectives, brief reports, point/counterpoint articles, and letters to the editor.

Benefits of publishing in Big Data include:

  • Fast and user-friendly electronic submission
  • Rapid, high-quality peer-review: average of 6 weeks from submission to first decision
  • Rapid publication: less than 90 days from acceptance to online publication
  • Maximum exposure: all original peer-reviewed content will be published open access
  • A diversity of article types

For manuscript submission guidelines and further information about the Journal, please visit the Big Data website www.liebertpub.com/big.

We look forward to receiving your manuscripts and to your active participation in the Journal!








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KDnuggets Home » News :: 2013 :: Sep :: Publications :: Big Data Journal: Call For Papers ( 13:n22 )