Tengo una lista con 106 tibbles en data_sensor. Cada tibble tiene dos columnas, temperatura y fecha. El vector data_admin tiene 106 valores con fechas. El código funciona correctamente pero el bucle for tratando todos los valores funciona muy lento y no me parece una solución elegante. La media de rows en cada tibble és de unas 10k.
idxend=vector()
for (i in seq_along(data_sensor)){
for (j in seq_along(data_sensor[[i]][[1]])){
if (as.Date(data_sensor[[i]][[1]][[j]]) == as.Date(date_admin[i])){
idxend[i] = j
} else{
idxend[i]=idxend[i]
}
}
}
> idxend
[1] 8862 NA 10594 5538 2372 9151 6998 4258 10732 7133 4554 7276 7127 9996 7276
[16] 10161 12324 4625 6125 5559 5970 4683 6134 4253 8422 7118 6556 6391 9006 3543
[31] 3031 4219 12177 5117 2942 7124 7287 85 5964 7052 7581 13037 6107 5462 6702
[46] 10142 4894 6273 4110 8997 6973 6965 4547 6998 6133 7710 5553 10007 11302 9291
[61] 6991 7859 5260 7136 6035 8569 5025 8639 9296 6127 7132 2095 5256 3902 9991
[76] 7408 8294 7420 4056 8428 6982 6834 4542 6050 11013 5696 11872 7976 9134 8996
[91] 6273 12299 9211 NA 7114 6257 9129 6463 7999 6420 7134 9576 10055 9134 12165
[106] NA
He intentado implementar el mismo código con la librería purrr y distintas funciones de tidyverse sin éxito. ¿Cómo podría reducir el tiempo de computo?
Para intentar explicar mejor el caso, adjunto los valores de mi vector y los valores que coinciden en mis lista de tibbles.
> date_admin
[1] "2018-10-07 UTC" "2018-12-29 UTC" "2018-12-13 UTC" "2019-08-09 UTC" "2019-10-10 UTC"
[6] "2019-04-26 UTC" "2018-11-21 UTC" "2018-08-23 UTC" "2019-07-08 UTC" "2019-11-19 UTC"
[11] "2019-11-07 UTC" "2018-09-05 UTC" "2018-09-03 UTC" "2018-09-24 UTC" "2018-10-11 UTC"
[16] "2018-09-25 UTC" "2019-03-29 UTC" "2018-08-20 UTC" "2018-09-17 UTC" "2019-03-30 UTC"
[21] "2018-11-07 UTC" "2019-01-01 UTC" "2018-08-31 UTC" "2019-03-27 UTC" "2019-11-10 UTC"
[26] "2019-04-04 UTC" "2019-10-18 UTC" "2018-09-06 UTC" "2018-09-23 UTC" "2018-09-22 UTC"
[31] "2019-07-22 UTC" "2018-09-04 UTC" "2019-05-17 UTC" "2018-11-05 UTC" "2018-12-09 UTC"
[36] "2018-09-03 UTC" "2019-05-21 UTC" "2019-02-22 UTC" "2018-08-30 UTC" "2019-06-04 UTC"
[41] "2018-09-13 UTC" "2018-10-14 UTC" "2019-11-08 UTC" "2018-08-30 UTC" "2019-04-12 UTC"
[46] "2018-09-24 UTC" "2018-08-22 UTC" "2018-08-30 UTC" "2018-09-07 UTC" "2018-11-11 UTC"
[51] "2018-11-01 UTC" "2018-10-01 UTC" "2018-10-22 UTC" "2018-12-03 UTC" "2019-06-06 UTC"
[56] "2018-09-09 UTC" "2018-09-10 UTC" "2018-09-24 UTC" "2018-10-11 UTC" "2018-11-30 UTC"
[61] "2018-09-20 UTC" "2019-11-20 UTC" "2018-10-11 UTC" "2018-10-09 UTC" "2018-09-27 UTC"
[66] "2019-11-11 UTC" "2018-10-04 UTC" "2018-09-14 UTC" "2019-04-27 UTC" "2018-09-04 UTC"
[71] "2018-09-11 UTC" "2018-08-14 UTC" "2018-09-01 UTC" "2018-10-01 UTC" "2018-09-25 UTC"
[76] "2018-09-28 UTC" "2018-09-29 UTC" "2018-10-11 UTC" "2019-03-26 UTC" "2018-10-26 UTC"
[81] "2018-11-21 UTC" "2018-12-02 UTC" "2018-09-08 UTC" "2019-01-08 UTC" "2018-11-07 UTC"
[86] "2019-02-05 UTC" "2019-01-21 UTC" "2018-09-11 UTC" "2018-12-17 UTC" "2019-01-15 UTC"
[91] "2018-08-28 UTC" "2019-01-08 UTC" "2019-05-14 UTC" "2019-01-21 UTC" "2018-11-12 UTC"
[96] "2018-10-26 UTC" "2019-12-26 UTC" "2020-01-03 UTC" "2020-01-06 UTC" "2020-02-26 UTC"
[101] "2020-02-14 UTC" "2020-01-27 UTC" "2020-01-21 UTC" "2020-03-16 UTC" "2020-02-26 UTC"
[106] "2019-12-31 UTC"
Así idxend[1] tal cómo se ve en el output me indica que para mi primer tibble, la fecha date_admin[1] se encuentra en la row 8862.
> data_sensor[[1]][[1]][[8862]]
[1] "2018-10-07 23:50:31 UTC"
Del mismo modo, en el tercer tibble, date_admin[3] coincide para el valor 10594:
> data_sensor[[3]][[1]][[10594]]
[1] "2018-12-13 23:58:06 UTC"
Ejemplo de datos en el tercer tibble:
data_sensor[[3]][[1]]
[1] "2018-10-01 10:28:06 UTC" "2018-10-01 10:38:06 UTC" "2018-10-01 10:48:06 UTC"
[4] "2018-10-01 10:58:06 UTC" "2018-10-01 11:08:06 UTC" "2018-10-01 11:18:06 UTC"
[7] "2018-10-01 11:28:06 UTC" "2018-10-01 11:38:06 UTC" "2018-10-01 11:48:06 UTC"
[10] "2018-10-01 11:58:06 UTC" "2018-10-01 12:08:06 UTC" "2018-10-01 12:18:06 UTC"
[13] "2018-10-01 12:28:06 UTC" "2018-10-01 12:38:06 UTC" "2018-10-01 12:48:06 UTC"
[16] "2018-10-01 12:58:06 UTC" "2018-10-01 13:08:06 UTC" "2018-10-01 13:18:06 UTC"
[19] "2018-10-01 13:28:06 UTC" "2018-10-01 13:38:06 UTC" "2018-10-01 13:48:06 UTC"
[22] "2018-10-01 13:58:06 UTC" "2018-10-01 14:08:06 UTC" "2018-10-01 14:18:06 UTC"
[25] "2018-10-01 14:28:06 UTC" "2018-10-01 14:38:06 UTC" "2018-10-01 14:48:06 UTC"