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Cloud Computing Trends for Mass Data Usage

The rapid growth of technological innovations and inventions is forcing to adapt, or risk struggling to maintain their consumers or even being edged out of business. Cloud computing enables business enterprises and government database to store their company information in thousands of virtual servers which eliminates the need for the traditional storage hardware such as hard drives and flash discs. This technology also enables the organization’s management and staff to access the information regarding the business from any geographical location with internet access. This means that the company management can access vital business data such as the inventory and sales information through a mobile device such as a tablet or a smartphone. Cloud computing is one of those techniques that will ensure that you maintain relevance in the 21st-century global financial market.




It is expected that cloud storage is set to have exponential growth as cloud computing becomes more of an essential tool for both the small to medium enterprises rather than a preserve for big corporations. A survey concluded that government databases and business corporations around the globe would generate 600 EB of data while the amount of information stored in data centres would increase to 370 EB by the end of 2017. In 2018, the survey estimated that the generated data would increase to the tune of 1.1 ZB which marks over 100% increase from what was generated in 2017. Forward-thinking businesses will capitalize on the expanded infrastructure that will be offered by cloud computing service providers to take care of the increased demand for storage space in the cloud. 

Major tracks summoned are Artificial Intelligence, Cognitive Computing, Self-Organizing Neural Networks, Backpropagation, Computational Creativity, Artificial Neural Networks, Deep Learning, Ambient Intelligence, Perceptrons, Cloud Computing, Autonomous Robots, Support Vector Machines, Parallel Processing, Bioinformatics, Ubiquitous Computing, Natural Language Processing, and Entrepreneurs Investment Meet.

For furthermore updates on the availing research proficiency, do visit: https://neuralnetworks.conferenceseries.com/events-list/cloud-computing

For details about the webpage, go through the link provided; PS: https://neuralnetworks.conferenceseries.com/  

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