NAB
With macro leaps in technology from AI to 5G converging at
pace, perhaps the only way to understand how to act is to apply big data. Using
big data to R&D tech development is the key to staying relevant in today’s
highly competitive tech market, writes Natasha Lane at the
appropriately titled online publication insideBIGDATA.
https://amplify.nabshow.com/articles/why-big-data-is-the-key-to-tech-rd/
From a purely business perspective, using big data in
R&D has several important benefits.
For one, it’s an effective way to save both time and money.
Particularly so when using already available information or investing in the
continuous collection and analysis of data.
Secondly, it’s a more accurate way to collect, interpret,
and apply information. Well-made collection systems allow businesses to gain
access to more relevant data.
Thirdly, using big data for research and development moves
businesses from historical to predictive decision-making. This allows them to
stay ahead of the market. Moreover, it encourages R&D departments to
develop solutions relevant to the near future instead of the rapidly passing
present.
In other words, “Using the right data prevents brands from
spending their money and energy on products and services that are predestined
to fail,” says Lane.
As an example, she cites Tesla’s use of in-car sensors that
track user behavior and car performance. Analysis of this data helped the
company successfully diagnose an overheating issue in 2014 which it then
resolved with a firmware update.
“Big companies like Tesla or Apple are not the only ones who
can utilize data to develop relevant products. Thanks to the wide availability
of data sources, almost any player in the tech industry can do the same.”
Software solutions like eye tracking add-ons can
help web designers develop UX features fully optimized for emerging consumer
behaviors. Similarly, product developers can keep an eye out for relevant
automation shortcuts on service websites like IFTTT.
“However, to get the absolute most out of the available
information, organizations must understand the importance of consistent
collection methods, expert interpretation, and the concept of the margin of
error,” Lane says. “Only then can they look for ways to integrate big data into
their R&D processes.”
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