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Future Applications of Big Data

 There’s several ways in which the Big data in future applications some of which are:

The increasing volume of big data analytics which in the future will focus on the freshness of the data with real time analysis which helps to make better decisions which have more information and additionally increase competition. It also is essential for gaining real life vision however can have some implications because of higher risk of having inaccurate or incomplete data. E.g ‘Snowflake’ announced ‘Snowpipe’ they republished their Kafka connector which made it so that when data lands in Snowflake it is immediately questioned which results in a 10x lower latency. 

Being able to see the data that’s happening right this second so things like trading bitcoin etc. Because of this is that it has shaken up industries such as finance and social media. For example Walmart has created one of the largest hybrid clouds to help manage their supply chains and analyse sales n that moment and not a eeek later than it was needed. 

https://www.montecarlodata.com/blog-the-future-of-big-data-analytics-and-data-science/

https://www.simplilearn.com/future-of-big-data-article

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