• Stars
    star
    11
  • Rank 1,644,418 (Top 34 %)
  • Language
    R
  • Created about 4 years ago
  • Updated almost 3 years ago

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Repository Details

This application was built and submitted as part of R Shiny competition 2020. It can be used for creation of projects and related tasks. The user will be able to carry out all the basic CRUD operations on the data and save the changes.

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