BIG DATA AND 3VS
Big Data has become one of the most popular buzzwords
in the field of digital technology. Big Data, consisting of structured,
unstructured and semi-structured data, refers to enormous data sets that
surpass the processing capacity of the traditional database systems. It comprises of
large data sets with the complex and diverse structure that are difficult to store
and analyze with the use of conventional tools and techniques (Banit and
Bandyapadhyay, 2016). In other words, when we say Big Data, we are talking
about an array of data set whose size, complexity and rate of growth has made
them challenging to be processed and analyzed with traditional tools and
technologies like visualization packages, software/hardware tools or data
statistics within the time required to make them valuable (Chen et al, 2014). This
has made Big Data to be labeled by three Vs, volume, velocity, and variety,
also known as the 3vs of big data. The 3Vs of Big Data (volume, velocity, and
variety) was first proposed by Doug Laney, an analyst at the META Group in 2001
to describe the technical difficulties for current database management tools
and how they can be addressed (Laney, 2001).
Data Volume
The volume of data being generated is continually on
the increase. The term “volume” can be used to describe data size and is often used
to measure the amount of data accessible to an organization. Volume is one of
the major characteristics that distinguish data from Big Data and is also one
of the reasons why Big Data cannot be handled using the conventional relational
database management systems (Vorhies, 2014).
Data Variety
According to De Mauro et al (2015), variety simply
means the different data structures which are produced. While the data produced
in traditional data are usually structured, in the case of Big Data, the
generated data are usually unstructured or semi-structured in the form of
audio, texts, images, videos, etc (Owais & Hussein, 2016). Data variety also
symbolizes the richness of the data representation and is often referred to as
the major impediment to using the enormous volume of data because of the
variability of inconsistent and incompatible data formats and structures.
Data Velocity
Al Nuaimi et al (2015) defined velocity as the speed
with which data is produced, kept, examined and processed. It measures the
speed of data formation, streaming, and accumulation. Data velocity also
epitomizes the pace at which data is used to support interaction. For Big Data,
the data is created at a very high velocity, which makes it very difficult to analyze.
Originally, these 3Vs were regarded as the three key
extents of Big Data. Today, these three features have become generally
acknowledged and have been recounted in academic literature and by Big Data
practitioners.
References
Al Nuaimi, E., Al Neyadi,
H., Mohamed, N., & Al-Jaroodi, J. (2015). Applications of big data to smart
cities. Journal of Internet Services and
Applications, 6(1), 25.
Banik, A., &
Bandyopadhyay, S.K. (2016). Big Data- A Review on Analysing 3Vs. Journal of Scientific and Engineering
Research, 3(1), 1-5.
Chen, M., Mao, S., &
Liu, Y. (2014). Big data: A survey. Mobile
Networks and Applications, 19(2), 171-209.
De Mauro, A., Greco, M.,
& Grimaldi, M. (2015). What is big data? A consensual definition and a
review of key research topics. AIP
Conference Proceedings, 1644(2015), 97-104.
Laney, D. (2001). 3D Data
Management: Controlling Data Volume, Velocity, and Variety. Gartner, file No.
949. 6 February, http://blogs.gartner.com/douglaney/files/2012/01/ad949-3D-Data-Management-Controlling-Data-Volume-Velocity-and-Variety.pdf
Vorhies, B. (2014). How
Many “V”s in Big Data-The Characteristics that Define Big Data. Data Science Central.

Great job Clinton. Well explained.
ReplyDeleteThanks for the interesting read! Good work
ReplyDeleteThanks for your comment
ReplyDeleteVery informative post!
ReplyDeleteThanks MJ
ReplyDeleteThanks for your comments
ReplyDeleteGreat article
ReplyDeleteThanks @sradha
ReplyDeleteReally informative and nicely written work. Thanks. Visit my blog =) https://marielmontenegro-dbs.blogspot.com/
ReplyDelete