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EFFECTIVE TOOLS AND TECHNIQUES

Effective tools and techniques
Data science involves multiple tools and programming languages to visualize the huge amount of data. they are:
  • Python
  • R programming
  • SQL
  • Hadoop
  • Tableau
  • Weka

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