Expression #1 of SELECT list is not in GROUP BY clause and contains nonaggregated column 'n.id' which is not functionally dependent on columns in GROUP BY clause; this is incompatible with sql_mode=only_full_group_by
Expression #1 of SELECT list is not in GROUP BY clause and contains nonaggregated column 'n.id' which is not functionally dependent on columns in GROUP BY clause; this is incompatible with sql_mode=only_full_group_by BIG PROSPECTS AND PROBLEMS OF BIG DATA TECHNOLOGY - İTP Jurnalı
AZERBAIJAN NATIONAL ACADEMY OF SCIENCES
BIG PROSPECTS AND PROBLEMS OF BIG DATA TECHNOLOGY
Imamverdiyev Yadigar N.

Big Data covers technologies and tools for collecting, processing, analyzing and extracting useful knowledge from structured and unstructured data of large volumes generated at high speed by different sources. Recently, scientific and popular literature promotes Big Data as technology, which opens new perspectives and revolutionary changes in e-government, business, health, science, industry and other fields. In order to determine the true potential of arguments supporting these assertions and to choose the right strategy for Big Data, this paper critically examines essentials, characteristics, basic building components and analytical capabilities of Big Data, and identifies advantages, prospects and existing problems (pp.21-30).

Keywords:Big Data; Big Data analytics; Data Mining; Hadoop; predictive model
DOI : 10.25045/jpis.v07.i1.03
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