A Researcher's View on (Big) Data Analytics in Austria Results from an Online Survey

@inproceedings{Bierig2014ARV,
  title={A Researcher's View on (Big) Data Analytics in Austria Results from an Online Survey},
  author={Ralf Bierig and Allan Hanbury and Florina Piroi and Marita Haas and Helmut Berger and Mihai Lupu and Michael Dittenbach},
  booktitle={DATA},
  year={2014}
}
We present results from questionnaire data that were collected from leading data analytics researchers and experts across Austria. The online survey addresses very pressing questions in the area of (big) data analysis. Our findings provide valuable insights about what top Austrian data scientists think about data analytics, what they consider as important application areas that can benefit from big data and data processing, the challenges of the future and how soon these challenges will become… 
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