I have the data below:

seed = 1   
N = 1000
df <- data.frame(a = sample(x = c("a1","a2"),size = N,replace = TRUE),
                 b = sample(x = c("b1","b2","b3","b4"),size = N,replace = TRUE),
                 p = rnorm(n = N)) 

Which package should I use in my shiny app to:

  1. Summarize the data based on any combination of filter on column a and b (like an excel pivot table, with the ability to filter)

  2. Use dynamic input to manipulate p: for example scale p by a factor of 2 for when a is "a1" and b is "b1" but summarise the impact on p for a is "a1" only (no filter on b).

Please note N could be very large (N = 1e9) and I am familiar with data.table for fast computations on large data sets.

Thank you.

put on hold as too broad by MrFlick, BigDataScientist, shadow, Chris, thewaywewere Mar 15 at 6:34

Please edit the question to limit it to a specific problem with enough detail to identify an adequate answer. Avoid asking multiple distinct questions at once. See the How to Ask page for help clarifying this question. If this question can be reworded to fit the rules in the help center, please edit the question.

  • 3
    Have you tried anything yet? Where exactly are you getting stuck? This seems like to covers too much ground to be a good question for StackOverflow. You should ask one clear programming question at a time and show the research you've done to try to answer the question yourself. – MrFlick Mar 14 at 21:54
  • @MrFlick I have edited the question, let me know if it is better. – Louis Mar 15 at 6:18

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