First question here in a very long time as been having picking Python back up at work recently. I've been working on cleaning / prepping some data with pandas and I've found that when applying a function to a smaller sample (500000 rows) of the total data (~30000000 rows) it is taking a very long time to run a specific chunk of my code (~8 mins). My thinking is that I've written something that works but isn't very optimal for what I'm trying to do and that it's going to become a very long process when applied to the whole data set. I'm not completely sure but I think running this kind of thing is a programme like alteryx would be much faster and so I'm thinking I must have done something wrong. Any help or ideas to make it faster massively appreciated!

Dataframe example:

po_data = pd.DataFrame({'Order Quantity Received Type':['Order Cancelled - None Received','Order Partially Fulfilled'],Order Quantity Change Type':['Order Cancelled','Increased','c'],'Received Quantity':[0,3],Current Order Quantity:[0,5]})


def order_quantity_received(df,output_col,cancelled,received_quant,ordered_quant):
    if (df[cancelled] == "Order Cancelled") & (df[received_quant] == 0):
        df[output_col] = "Order Cancelled - None Received"
    elif (df[cancelled] == "Order Cancelled") & (df[received_quant] == 0):
        df[output_col] = "Order Cancelled - Items Received"
    elif df[received_quant] > df[ordered_quant]:
        df[output_col] = "Order Over Fufilled"
    elif (df[received_quant] < df[ordered_quant]) & (df[received_quant] > 0):
        df[output_col] = "Order Partially Fufilled"
    elif df[received_quant] == df[ordered_quant]:
        df[output_col] = "Order Fully Fufilled"
    elif (df[received_quant] == 0) & (df[ordered_quant] > 0):
        df[output_col] = "Order Not Fufilled"
        df[output_col] = "Error"
    return df

func call:

po_data = po_data.apply(lambda po_data: order_quantity_received(po_data,'Order Quantity Received Type','Order Quantity Change Type','Received Quantity','Current Order Quantity'),axis=1)

1 Answer 1


The fastest way to work with Pandas and Numpy is to vectorize your functions. Running functions element by element along an array or a series using for loops, list comprehension, or apply() is a bad practice.

I would just give an example for "cancelled orders":

def order_cancelled(a, b):
    ## define your function logic however you want
    return a - b

And then vectorize your function:

df['output_col'] = np.vectorize(order_cancelled)(df['cancelled'], df['received_quant'])
  • 1
    This is a game changer! Has sped up my code to pretty much instantaneous. Thank you! Jan 21, 2022 at 15:15

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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