首页 文章

dplyr :: slice in data.table [duplicate]

提问于
浏览
3

这个问题在这里已有答案:

data.table 中执行以下操作的惯用方法是什么?

library(dplyr)
df %>% 
  group_by(b) %>% 
  slice(1:10)

我可以

library(data.table)
df[, .SD[1:10]
   , by = b]

但这看起来要慢得多 . 有没有更好的办法?

set.seed(0)
df <- rep(1:500, sample(500:1000, 500, T)) %>% 
        data.table(a = runif(length(.))
                  ,b = .)

f1 <- function(df){
  df %>% 
    group_by(b) %>% 
    slice(1:10)
}
f2 <- function(df){
  df[, .SD[1:10]
     , by = b]
}

library(microbenchmark)
microbenchmark(f1(df), f2(df))
#Unit: milliseconds
#   expr      min       lq      mean   median        uq      max neval
# f1(df) 17.67435 19.50381  22.06026 20.50166  21.42668  78.3318   100
# f2(df) 69.69554 79.43387 119.67845 88.25585 106.38661 581.3067   100

==========使用建议方法的基准==========

set.seed(0)
df <- rep(1:500, sample(500:1000, 500, T)) %>% 
        data.table(a = runif(length(.))
                  ,b = .)

use.slice <- function(df){
  df %>% 
    group_by(b) %>% 
    slice(1:10)
}
IndexSD <- function(df){
  df[, .SD[1:10]
     , by = b]
}
Index.I <- function(df) {
  df[df[, .I[seq_len(10)], by = b]$V1]
}
use.head <- function(df){
  df[, head(.SD, 10)
     , by = b]
}

library(microbenchmark)
microbenchmark(use.slice(df)
              , IndexSD(df)
              , Index.I(df)
              , use.head(df)
              , unit = "relative"
              , times = 100L)

#Unit: relative
#          expr       min        lq      mean    median        uq       max neval
# use.slice(df)  9.804549 10.269234  9.167413  8.900060  8.782862  6.520270   100
#   IndexSD(df) 38.881793 42.548555 39.044095 38.636523 39.942621 18.981748   100
#   Index.I(df)  1.000000  1.000000  1.000000  1.000000  1.000000  1.000000   100
#  use.head(df)  3.666898  4.033038  3.728299  3.408249  3.545258  3.951565   100

1 回答

  • 4

    我们可以使用 .I 来提取行索引,并且应该更快

    out <- df[df[, .I[seq_len(10)], by = b]$V1]
    dim(out)
    #[1] 5000    2
    

    检查是否有NA(如OP评论)

    any(out[, Reduce(`|`, lapply(.SD, is.na))])
    #[1] FALSE
    
    
    dim(df)
    #[1] 374337      2
    

    基准

    f3 <- function(df) {
      df[df[, .I[seq_len(10)], by = b]$V1]
     }
    
    microbenchmark(f1(df), f2(df), f3(df), unit = "relative", times = 10L)
    #Unit: relative
    #   expr       min        lq      mean    median        uq      max neval cld
    # f1(df)  5.727822  5.480741  4.945486  5.672206  4.317531  5.10003    10  b 
    # f2(df) 24.572633 23.774534 17.842622 23.070634 16.099822 11.58287    10   c
    # f3(df)  1.000000  1.000000  1.000000  1.000000  1.000000  1.00000    10 a
    

相关问题