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Data Literacy for Data Science Data Literacy Data Collection and Organization Introduction - Data Repository is a genral term used to refer to data that has been collected, organized, and isolated - can be for use in business operations, and mined for reporting and data analysis Databases - Collection of data for input, storage, search, retrieval, and modification of data - Database Management S..
Data Literacy for Data Science Understanding Data Understanding Data What is Data? - Data is unorganized information that is processed to make it meaningful - data comprises of facts, observations, perceptions, numbers, characters, symbols, and images that can be interpreted to derive meaning Types of Data - one of the ways in which data can be categorized is by its structure - data can be struc..

Applications and Careers in Data Science Careers and Recruiting in Data Science How Can Someone Become a Data Scientist? - first skill you need is to know how to program, at least have some computational thinking - need to know algebra, at least up to analytics, geometry, and hopefully some calculus, basic probability, basic statistics... really have to understand the difference and different st..
Applications and Careers in Data Science Data Science Application Domains How Should Companies Get Started in Data Science? - first thing to do is to start capturing data, and archive it. do not overwrite it. data never gets old - keep data, capture it, archive it, make sure nothing goes to waste - have proper documentation - start measuring things! - data science inside a company is going to be..
Data Science Topics Deep Learning and Machine Learning Artificial Intelligence and Data Science Big data massive, quickly built, so varied datasets organizations now have the power to analyze these vast data sets velocity, volume, variety, veracity, value ( transforming -> data visualizations Machine Learning subset of AI that uses computer algorithms to analyze data make intelligent decisions b..
Data Science Topics Big Data and Data Mining How Big Data is Driving Digital Transformation DVD로만 보던 영화를 이제는 Netflix로, Overhead Camera를 이용하여 가장 효율적은 play를 하게 된 NBA의 Houston Rockets. video tracking system analyzed... big data for high scores where to shots changed the way the team ~ plays got 3 points more games than any other teams organizations all around us are all changing 우리 주위 대부분의 기관/산업들은 ..