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What is Data Mining?

 Data Mining is extraction of potentially useful information or patterns from the available huge data. It is also known as Knowledge discovery in database (KDD).

Searching in Google, searching products in ecommerce portals or searching flight tickets in booking websites are not data mining. These are all simple query from the currently available existing data in database. 

Data mining is a process of extracting knowledge from the historical data.  

Different types of data

  • Sensor data
  • Time Series data
  • Graphical data
  • Heterogeneous data
  • Spatial data
  • Multimedia data
  • Text data
  • Web data

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Data Cleaning Process

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