speed up renamecats/categorical multiple columns

3 visualizzazioni (ultimi 30 giorni)
Peng Li
Peng Li il 12 Mag 2020
Commentato: Peng Li il 9 Ott 2020
I have a huge csv file of about 16GB which over 9k columns. Each column is initially filled with some codes (either integer or string), and I have a code book with code and meaning for each column. What I'm trying to do is to translate the table and finally have a table that has readable texts instead of codes.
I can use either categorical or renamecats to "translate" them, but the issue is that it takes substentially long time to loop through these columns. I'm thinking if there is a way to speed this up.
See below an example
tbl = table(["a1", "b2", "c3", "d4", "e5"]', ...
["123", "234", "345", "456", "567"]', ...
'VariableNames', {'A', 'B'});
dictionary.A = table(["a1", "b2", "c3", "d4", "e5"]', ...
["apple", "banana", "cat", "dog", "elephont"]', ...
'VariableNames', {'Code', 'Meaning'});
dictionary.B = table(["123", "234", "345", "456", "567"]', ...
["East", "West", "North", "South", "Middle"]', ...
'VariableNames', {'Code', 'Meaning'});
Vars = tbl.Properties.VariableNames;
for iC = 1:width(tbl)
tbl.(iC) = categorical(tbl.(iC), dictionary.(Vars{iC}).Code, ...
dictionary.(Vars{iC}).Meaning);
end
Is that possible to avoid this loop, or any suggestions to speed this up (considering that I have over 500k rows and 9k columns).
Thank you!

Risposte (1)

Campion Loong
Campion Loong il 9 Ott 2020
Hi Peng,
It seems you have the Dictionary code book to boot, and you already know which sets of code go wtih which field/name in the Dictionary (i.e. you can designate "VariableNames" in the first table(...) call).
In this case, why not create the table with categorical to begin with:
tbl = table(categorical(["a1"; "b2"; "c3"; "d4"; "e5"], dictionary.A.Code, dictionary.A.Meaning),...
categorical(["123"; "234"; "345"; "456"; "567"], dictionary.B.Code, dictionary.B.Meaning),...
'VariableNames', {'A', 'B'});
There is no loop, faster and much more readable.
  3 Commenti
Campion Loong
Campion Loong il 9 Ott 2020
If you have thousands of columns, are you actually reading it from a file or a source somewhere? I struggle to imagine that could be manageable if you're making the first table call manually on thousands of columns.
If you are reading or importing, check out ImportOptions -- it gives you much more flexibility before actually reading the data in:
Peng Li
Peng Li il 9 Ott 2020
Hi Campion, thanks again for you attention. I've actually tried different options -- tall array, datastore, transform a datastore, mapreduce, or readall in a server (over 380G ram) a while ago. This is easily handlable.
The issue is with this de-coding part. It is simply too slow to do a loop. And ImportOptions couldn't help with the decoding of the actual data I guess, as i have to load the data first and do the decoding.
I've tried a way using transform datastore. Basically in the transform function, I do the decoding, and then write the datastore to disk. It works, but slow too.
I have several workable solutions now but just no one gives me the best speed. The single file is around 20G in cvs format, with over half a million rows and almost 10 thunsands of columns. With my server this tasks takes over 24 hours so I guess i just need to be a bit patient to let the server work while i'm doing something else.

Accedi per commentare.

Prodotti


Release

R2020a

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by