I have a large dataframe (>3MM rows) that I'm trying to pass through a function (the one below is largely simplified), and I keep getting a Memory Error message.

I think I'm passing too large of a dataframe into the function, so I'm trying to:

1) Slice the dataframe into smaller chunks (preferably sliced by AcctName)

2) Pass the dataframe into the function

3) Concatenate the dataframes back into one large dataframe

def trans_times_2(df):
    df['Double_Transaction'] = df['Transaction'] * 2

AcctName   Timestamp    Transaction
ABC        12/1         12.12
ABC        12/2         20.89
ABC        12/3         51.93    
DEF        12/2         13.12
DEF        12/8          9.93
DEF        12/9         92.09
GHI        12/1         14.33
GHI        12/6         21.99
GHI        12/12        98.81

I know that my function works properly, since it will work on a smaller dataframe (e.g. 40,000 rows). I tried the following, but I was unsuccessful with concatenating the small dataframes back into one large dataframe.

def split_df(df):
    new_df = []
    AcctNames = df.AcctName.unique()
    DataFrameDict = {elem: pd.DataFrame for elem in AcctNames}
    key_list = [k for k in DataFrameDict.keys()]
    new_df = []
    for key in DataFrameDict.keys():
        DataFrameDict[key] = df[:][df.AcctNames == key]
    rejoined_df = pd.concat(new_df)

How I envision the dataframes being split:

AcctName   Timestamp    Transaction  Double_Transaction
ABC        12/1         12.12        24.24
ABC        12/2         20.89        41.78
ABC        12/3         51.93        103.86

AcctName   Timestamp    Transaction  Double_Transaction
DEF        12/2         13.12        26.24
DEF        12/8          9.93        19.86
DEF        12/9         92.09        184.18

AcctName   Timestamp    Transaction  Double_Transaction
GHI        12/1         14.33        28.66
GHI        12/6         21.99        43.98
GHI        12/12        98.81        197.62
up vote 9 down vote accepted

You can use list comprehension to split your dataframe into smaller dataframes contained in a list.

n = 200000  #chunk row size
list_df = [df[i:i+n] for i in range(0,df.shape[0],n)]

You can access the chunks with:


Then you can assemble it back into a one dataframe using pd.concat.

By AcctName

list_df = []

for n,g in df.groupby('AcctName'):
  • Thanks Scott! Is there a way to split into smaller dataframes based on AcctName instead of chunk size? – Walt Reed Jun 23 '17 at 21:00
  • @WaltReed Try that second part using groupby. – Scott Boston Jun 23 '17 at 21:09
  • Okay great, that worked! I'm calling this inside a function, but when I try to view the new dataframe after running the function, I get the error NameError: name 'new_df' is not defined. What am I missing here? – Walt Reed Jun 23 '17 at 21:30
  • 1
    If you created that list onside the function then it is a local variable. You may need to put the keyword global in front of list_df = [] – Scott Boston Jun 23 '17 at 21:33
  • 1
    of course! Thanks for the reminder and the help. – Walt Reed Jun 24 '17 at 0:19

Your Answer


By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.