Have been trying to load in a large-ish file (~480MB, 5,250,000 records, stock price daily data -dt,o,h,l,c,v,val,adj,fv,sym,code - for about 4,500 instruments) into pandas using read_csv. It runs fine, and creates the DataFrame. I found, however, that on conversion to a Panel, the values for several stocks are way off, and nowhere close to the values in the original csv file.
I then attempted to use the chunksize parameter in read_csv, and used a for loop to:
reader = read_csv("bigfile.csv",index_col=[0,9],parse_dates=True,names=['n1','n2',...,'nn'], chunksize=100000) new_df = DataFrame(reader.get_chunk(1)) for chunk in reader: new_df = concat(new_df, chunk)
This reads in the data, but:
- I get the same erroneous values (edit:) when converting to a Panel
- It takes ages longer than the plain read_csv (no iterator)
Any ideas how to get around this?
Edit: Changed the question to reflect the problem - the dataframe is fine, conversion to a Panel is the problem. Found the error appearing even after splitting the input csv file, merging and then converting to a panel. If i maintain a multi-index DataFrame, there is no problem and the values are represented correctly.