With the rise of big data and analytics, it is often
difficult for companies to keep pace in developing big data departments. They
want the big data initiative but often don’t have the capital to invest in a
new department. What is a company to do at this point? That is the purpose of
several new start up companies that offer data mining as a service to their
companies. These start up companies, such as Mu Sigma, are designed to take a
company’s data, and upon applying data mining principles and strategies, deliver
meaningful information to their customer. Mu Sigma specifically has a five step
process for their data mining strategy. This process includes :
1.
Input of data
2.
Application of data engineering
3.
Extraction using data sciences
4.
Informatics using decision sciences
5.
Providing information using decision support
(Source 1)
By applying the strategy of outsourcing their data mining,
companies are able to reduce their overhead while still gathering meaningful
information from their data that they have collected. In an inter connected
world, it is often a valuable strategy to explore leveraging other company’s
resources and enterprises before starting from scratch in house.
Mu Sigma is not the only data mining as a service start up
company, yet it has received the highest level of investment from venture
capitalists. Another data mining as service company that has received a high
level of outside investment is Opera Solutions. Opera solutions focuses on
defining signal hubs for their customers which is where the data is stored to
be mined. By gleaning data, Opera Solutions can then offer their processing
products to their customers as a subscription service and gain more capital.
Overall, I see the data mining as a service as a leading
innovator in the data mining field. By providing an alternative to high
investment in IT infrastructure and employees, these companies are able to
target the majority of businesses in their target audience.
Sources:
33. http://www.operasolutions.com/solutions-and-services/
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