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I have a 140MB Excel file I need to analyze using pandas. The problem is that if I open this file as xlsx it takes python 5 minutes simply to read it. I tried to manually save this file as csv and then it takes Python about a second to open and read it! There are different 2012-2014 solutions that why Python 3 don't really work on my end.

Can somebody suggest how to convert very quickly file 'C:\master_file.xlsx' to 'C:\master_file.csv'?

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There is a project aiming to be very pythonic on dealing with data called "rows". It relies on "openpyxl" for xlsx, though. I don't know if this will be faster than Pandas, but anyway:

$ pip install rows openpyxl

And:

import rows
data = rows.import_from_xlsx("my_file.xlsx")
rows.export_to_csv(data, open("my_file.csv", "wb"))
  • Loading everything into memory isn't really advisable here but since you went LGPL I can't code review. – Charlie Clark Dec 8 '17 at 15:05
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    Sorry, you you just "can't code review LGPL" if it is against your religion or something like that. Nothing legaly stops you from reviewing LGPL or contributing LGPL code, and that is pure FUD. What LGPL obliges you to is that if you the software in a private project, and modify it, (not the linked parts, just the software proper), you have to publish back your modifications. "Code reviewing on GitHub" is already "published", so LGPL makes no difference. That said, the project is not mine. – jsbueno Dec 8 '17 at 15:38
  • Yes, it is against my religion. – Charlie Clark Dec 8 '17 at 17:00
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Use read-only mode in openpyxl. Something like the following should work.

import csv
import openpyxl

wb = load_workbook("myfile.xlsx", read_only=True)
ws = wb['sheetname']
with open("myfile.csv", "wb") as out:
    writer = csv.writer(out)
    for row in ws:
        values = (cell.value for cell in row)
        writer.writerow(values)
  • I don't know why but the output of this code gives me a completelt empty 0 KB csv file – Andrea Dec 8 '17 at 13:46
  • Did you change the example "sheetname" acordingly, and does it point to a valid sheet? (Note that this kind of detailing and working around is exactly what "rows" aim to take off the way) – jsbueno Dec 8 '17 at 14:48
  • Andrea, you should probably add some debugging code such as a counter to see whether the sheet has any rows. Please update the code in your initial question with as close as possible to what you are using. We cannot really help you otherwise. – Charlie Clark Dec 8 '17 at 15:02
  • Absolutely. so I have an exce file called heavy_file2017-12-08.xlsx and inside it has a sheet called "Vol_Summary". this is the only sheet I need to save as new csv file. So I don't have an already existing csv file, it should be generated by the code. – Andrea Dec 8 '17 at 16:03
  • wb = load_workbook("c:\\heavy_file2017-12-08.xlsx", read_only=True) ws = wb['Vol_Summary'] with open("c:\\heavy_file2017-12-08.csv", "wb") as out: writer = csv.writer(out) for row in ws: values = (cell.value for cell in row) writer.writerow(values) – Andrea Dec 8 '17 at 16:04
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Fastest way that pops to mind:

  1. pandas.read_excel
  2. pandas.DataFrame.to_csv

As an added benefit, you'll be able to do cleanup of the data before saving it to csv.

import pandas as pd
df = pd.read_excel('C:\master_file.xlsx', header=0) #, sheetname='<your sheet>'
df.to_csv('C:\master_file.csv', index=False, quotechar="'")

At some point, dealing with lots of data will take lots of time. Just a fact of life. Good to look for options if it's a problem, though.

  • thank you man, appreciated your answer. unfortunately, that's what i currently do an the pd.read_excel takes really forever – Andrea Dec 7 '17 at 21:14
  • What are your system specs? Where are you pulling the data from (hdd, ssd, network file system, etc)? How many rows are there in your dataset? The code in my answer, on my system, processes 1.17 gb of data with around 10 million records in about 5 minutes. Since you're using the same approach, if I had to guess, I'd think that your bottleneck might be something besides the python code. – RagingRoosevelt Dec 7 '17 at 23:29
  • The problem with using Pandas to do this is that a dataframe is column-based wheareas both Excel and CSV are row-based. This means that all values must be loaded into memory before a conversion can happen and, hence, that Pandas is unsuitable for this task. – Charlie Clark Dec 8 '17 at 8:23
  • @CharlieClark thank you. I don't need to use pandas in this case. do you think there's a different python solution to perform the conversion? – Andrea Dec 8 '17 at 13:39
  • @RagingRoosevelt thank you - i have a bacth file, size 140MB, 6 sheets inside the file, each with 8 rows and 300 columns. How can I check whatelse could be the bottle neck? – Andrea Dec 8 '17 at 13:40

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