I have a loop where in each iteration I generate a named numeric vector and add the contents to a dataframe. This dataframe has one row for each vector, and each column is a unique word. As different vectors might contain different words, with each newly added row a column might be added which is NA for the other rows.
However, this is a very slow process as the dataframe grows bigger, I think because the data frame is being copied everytime a new row is added. My current approach is therefore not feasible to deploy to a big dataset (on my laptop, ~650 rows of a few thousand unique words already takes hours)
I've found some suggested solutions such as preallocating memory, but this is not an option for me as I don't know the number of unique words (columns) beforehand. Also, using a data.table is supposed to be faster but then checking for the column is hard and I need a dataframe for later use.
This is my approach right now:
# example vectors
named_num1 = c(alpha = 1, beta = 4, gamma =2)
named_num2 = c(alpha = 5, pi = 2, gamma = 18)
named_num3 = c(beta = 10, omega = 12, alpha = 2)
list_of_nums = list(named_num1,named_num2,named_num3)
df = data.frame()
# add vectors to dataframe
for (num in list_of_nums){
temp_df = data.frame(as.list(num))
df = dplyr::bind_rows(df, temp_df)
}
df[is.na(df)] = 0
I'm kind of lost on how to improve on this. Do you have an approach that works faster while still being able to add the columns? Thanks a lot for any help!
rbind_list
fromdplyr
, which - to my surprise - works as opposed tobind_rows
. So tryrbind_list(list_of_nums)
df = dplyr::bind_rows(df, temp_df)
so I think I'm searching for an alternative for thatbind_rows()
? This would speed up your code significantlyrbind_list(list_of_nums)
instead of your whole loop. See my answer for a benchmark.bind_rows()
is what makes your code so slow. If you do this each time you initalize a newtibble
in each iteration which is a lot slower than just initializing vectors in a loop beforehand.