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The Value in Big Data. Truth or myth?
Knowing how Big Data generates from each device and system connected to the Internet makes us question how much value is in such data. According to International Data Corporation (IDC) 37 % of the digital universe will contain data that might be valuable if analysed (Deloitte Insights, 2017). Whether it be feedbacks from social media, inquiries through Alexa, or information about customer locational experiences - this data should be relevant to the objectives regarding which it is collected. The ability to capture enormous volumes of big data but find and trust the value of a certain portion is a skill in today's world of research and collective analysis of big data.
How do we find value in Big Data?
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Source: Mung.io,
2020
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The possibilities to successfully analyse data from
contained systems is higher, rather than from complex and unpredictable systems
which involve human interactions (Tricia Wang, 2017). It happens because of the
constant changes in people’s behaviour.
According to Delloitte, 2017, there exist “the 80 percent rule”, which applies to
unstructured data (traditional and non-traditional). The main difficulties from
big data analytics prospective is how to create the value mostly from
non-traditional unstructured data (video and audio files and still images). Many
organisations across numerous industries, such as retail, healthcare, wholesale
and banking, have potential to gain advantages to utilize their customers data.
For instance, if retailers, who are keen to know what their customers not only
say, but also feel about a new product, they can analyse their facial
expressions and body language. To do so, companies have to use computer vision,
video and sound recognition or advanced pattern recognition (Deloitte Insights, 2017). It allows to explore new opportunities to
understand particular customer.
What are ways of gaining value from Big Data?
Traditional methods such as data lakes and data
warehouses are time-consuming and will not bring sufficiency compared to new
modern procedures.
Modern approach is about machine learning (ML) and
automated programmes (AP) that help people to manage large sets of data and by
identifying patterns, correlations and indicators getting value out of analysed
data (Blake-Plock S., 2017). For instance, Hidden Brains (India) provides
Artificial intelligence, Machine learning and Data science services and works
with Amazon Alexa, Oracle, etc. to improve company-customer interaction (Kh
R., 2019).
Even though, algorithms used in ML and AP need to be checked
from time to time, in such ways valuable information can be gathered.
Personalized way of approaching Big Data which has
been used by Amazon and Microsoft, tell us about existing algorithms that
sufficiently work (Blake-Plock
S., 2017). It happens only
because data about their customers’ experiences (feedbacks, previous purchases,
etc.) are not just stored in data lakes, on the contrary, they understand which
insights is useful for each issue.
As long as new data appears, companies will be encountered
with a variety of issues. Nevertheless, they will need to discover more suitable
approaches.
1.Blake-Plock S. (2017) Where’s The Value In Big
Data? Forbes Technology Council. Available at: https://www.forbes.com/sites/forbestechcouncil/2017/04/14/wheres-the-value-in-big-data/ [Accessed: 11 February 2020].
2.Deloitte Insights (2017). Analyzing dark
data for hidden opportunities Available at: https://www2.deloitte.com/us/en/insights/focus/tech-trends/2017/dark-data-analyzing-unstructured-data.html [Accessed: 13 February 2020].
3.Kh
R. (2019) 30 Top Artificial Intelligence
And Machine Learning Companies (2019) SmartData Collective. Available at: https://www.smartdatacollective.com/30-top-artificial-intelligence-and-machine-learning-companies/ [Accessed: 12 February 2020].
4.Wang T. (2017) The human insights missing from big
data. Ted Talks. Available at: https://www.youtube.com/watch?v=pk35J2u8KqY [Accessed: 13 February 2020].
Comments

Great content! Some great points made! Thanks for the upload
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