García et al., 2016 - Google Patents
Big data preprocessing: methods and prospectsGarcía et al., 2016
View HTML- Document ID
- 12899825734570213821
- Author
- García S
- Ramírez-Gallego S
- Luengo J
- Benítez J
- Herrera F
- Publication year
- Publication venue
- Big data analytics
External Links
Snippet
The massive growth in the scale of data has been observed in recent years being a key factor of the Big Data scenario. Big Data can be defined as high volume, velocity and variety of data that require a new high-performance processing. Addressing big data is a …
- 238000007781 pre-processing 0 title abstract description 82
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