Why is there such a undersupply of data scientists for Bid Data?
There is a huge supply of data scientists out there who actually want to provide and maintain the data, explore the data in order to serve as a data scientist. But in order to understand the big data which involve a massive amount of data and a wide variety of data, we need more expertise in the field of data science. There is a current undersupply of data scientists for the Big Data market because it requires both soft skills such as creativity, curiosity, communication, and domain expertise, along with technical skills such as data knowledge, scripting, and current tools and technologies
Thus there are many people out there who want to become and serve as the data scientist but the type of knowledge and expertise which big data demands is still not supplied and thus there is undersupply of data scientists for big data.
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