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You may not even know exactly which path you should pursue, since some seemingly similar fields in the data technology sector have surprising differences. We decided to cover some of the most important differences between DataMining vs Data Science in order to finally understand which is which. What is Data Science?
The post DataMining for Predictive Social Network Analysis appeared first on Dataconomy. Indeed, put two or more people together and you have the foundation of a social network. It is therefore no surprise that, in today’s Internet-everywhere world, online social networks have become entirely ubiquitous. Within this.
The post DataMining for Predictive Social Network Analysis appeared first on Dataconomy. Indeed, put two or more people together and you have the foundation of a social network. It is therefore no surprise that, in today’s Internet-everywhere world, online social networks have become entirely ubiquitous. Within this.
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