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In the realm of datascience, understanding probability distributions is crucial. Understanding these distributions and their applications empowers data scientists to make informed decisions and build accurate models. For instance, IQ scores in a population tend to follow a normal distribution.
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Improving your business is a daily and tedious task, but using competition data can provide interesting underlying insights. Dataanalysis lets you know how you stack against the competition and how to improve your assets, such as a website, opening hours, extra equipment, etc. This member-only story is on us.
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