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I have data set including TimeStamp and wind speed :

 TimeStamp MeanWindSpeed102.5 MeanWindSpeed100.0 MeanWindSpeed76.6
2 2013-08-27 17:30:00               4.25               4.19              3.94
3 2013-08-27 17:40:00               4.39               4.34              4.16
4 2013-08-27 17:50:00               4.83               4.76              4.29
5 2013-08-27 18:00:00               4.96               4.91              4.22
6 2013-08-27 18:10:00               5.22               5.18              4.47
7 2013-08-27 18:20:00               5.18               5.15              5.01 

I tried to use dplyr package as follow :

a = data %>% 
  dplyr::select(TimeStamp, matches("MeanWindSpeed")) %>%
  dplyr::mutate(m = month(TimeStamp)) %>%
  dplyr::group_by(m) %>%
  dplyr::summarise_each(funs(mean(., na.rm = TRUE)))

I'm getting error like :

Error in mutate_impl(.data, dots) : 
  Evaluation error: could not find function "month".

but my TimeStamp format is correct :

str(data$TimeStamp)
 POSIXct[1:54459], format: "2013-08-27 17:30:00" "2013-08-27 17:40:00" "2013-08-27 17:50:00" ...

and if I just comment that line to proceed like :

a = data %>% 
  dplyr::select(TimeStamp, matches("MeanWindSpeed")) %>%
  #dplyr::mutate(m = month(TimeStamp)) %>%
  #dplyr::group_by(m) %>%
  dplyr::summarise_each(funs(mean(., na.rm = TRUE)))

the summerise_each function does not work as well :

`summarise_each()` is deprecated.
Use `summarise_all()`, `summarise_at()` or `summarise_if()` instead.
To map `funs` over all variables, use `summarise_all()`

Do I miss something ? Any idea why I'm getting these errors ?

  • 4
    I think you need to add library (lubridate) and use summarize_at instead if summarize_each – Benjamin Sep 16 '17 at 12:37
  • 3
    summarise_all() is closer to summarise_each() per the warning message. summarise_at() will require specificying columns – Nate Sep 16 '17 at 14:08

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