Is it possible to use TQDM progress bar when importing and indexing large datasets using Pandas?

Here is an example of of some 5-minute data I am importing, indexing, and using to_datetime. It takes a while and it would be nice to see a progress bar.

#Import csv files into a Pandas dataframes and convert to Pandas datetime and set to index

eurusd_ask = pd.read_csv('EURUSD_Candlestick_5_m_ASK_01.01.2012-05.08.2017.csv')
eurusd_ask.index = pd.to_datetime(eurusd_ask.pop('Gmt time'))
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    No, it isn't possible. – cs95 Nov 3 '17 at 3:26

Find length by getting shape

for index, row in tqdm(df.iterrows(), total=df.shape[0]):
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    I think this is a better solution than from @sonance207, as this does not convert the iterator to a list, but accesses a given property. – guerda Nov 13 '18 at 12:53
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    this solution doesn't seem to work with df.itertuples() ? – Giacomo Apr 26 '19 at 11:27
  • no, but he is asking while reading...if you have a dataframe already are you assuming the file has been read once? – mithunpaul Oct 25 '19 at 3:57
  • doesn't iterrows slow down processing by a lot? – Matthew May 14 '20 at 17:00
  • Basically, the example shows that you can use df.shape[0] to get a length of the list. Otherwise, you can replace df.iterrows() any other compatible method. – Arjun Kava Jun 9 '20 at 15:08
with tqdm(total=Df.shape[0]) as pbar:    
    for index, row in Df.iterrows():
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    It is a good solution, I think we could also replace the len(list(Df.iterrows())) to Df.shape[0]. – Weijie Sun Mar 10 '20 at 18:16

There is a workaround for tqdm > 4.24. As per https://github.com/tqdm/tqdm#pandas-integration:

    from tqdm import tqdm

    # Register `pandas.progress_apply` and `pandas.Series.map_apply` with `tqdm`
    # (can use `tqdm_gui`, `tqdm_notebook`, optional kwargs, etc.)
    tqdm.pandas(desc="my bar!")
    eurusd_ask['t_stamp'] = eurusd_ask['Gmt time'].progress_apply(lambda x: pd.Timestamp)
    eurusd_ask.set_index(['t_stamp'], inplace=True)

You could fill a pandas data frame in line by line by reading the file normally and simply add each new line as a new row to the dataframe, though this would be a fair bit slower than just using Pandas own reading methods.

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