I have a huge csv file (14gb) on disk that I need to "melt" (using pd.melt) - I can import the file using pd.read_csv() without issue, but when I apply the melt function I max out my 32gb of memory and hit a "memory error" limit. Can anyone suggest some solutions? The original file is the output of another script, therefore I cannot reduce it by only importing selected columns or removing rows. There are a few hundred columns and over 10 million rows.. I tried something like this (in a much abbreviated version):
chunks = pd.read_csv('file.csv', chunksize=10000) ids = list(set(list(chunks.columns.values)) - set(['1','2','3','4','5'])) out =  for chunk in chunks: df = pd.melt(chunk, id_vars=ids, var_name='foo',value_name='bar') df['a_col'] = df['a_col'].fillna('not_na') out.append(df) full_df = pd.concat(out, ignore_index=False) df_grouped = pd.DataFrame(full_df.groupby(['id_col', 'foo'])['bar'].apply(lambda x: ((x-min(x))/(max(x)-min(x))*100))) df_grouped.columns = ['bar_grouped'] final_df = full_df.merge(df_grouped, how='inner' left_index=True, right_index=True) final_df.to_csv('output.csv', sep='|', index=False)
Clearly this didn't work, as the columns.values attribute is not available for chunks since it is not a data frame. Any suggestions on how to re-code so it works and avoids memory issues are greatly appreciated!