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Oct
20
revised Can Go really be that much faster than python?
Tested with types specified ... 1000x became 8,000,000 times
Oct
20
answered Can Go really be that much faster than python?
May
23
answered Why is pyp (python) one-liner so slow?
Oct
10
comment How to describe and format print equivalents
ok. will do in future. thanks.
Oct
10
accepted How to describe and format print equivalents
Oct
9
asked How to describe and format print equivalents
Jun
24
awarded  Teacher
Jun
24
answered Is there a limit to the amount of rows Pandas read_csv can load?
Jun
18
comment Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
Oops ... I see you'd replied. I have done the experiment and shown that you are right :) ... Where speed is important I will use single type dataframes to allow Wes (and team)'s optimizations to work their best.
Jun
18
comment Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
I tried splitting the write so that I wrote a list of 4 to the 4 blank floats and then 4 to the 4 blank ints using the code below but the result was identical. So it seems it must be that this operation on the multi-type array is just much slower. Thanks for the information. ... ... ... self.df.iloc[self.end, 0:4]=[1.0 , 2.0, 3.0, 4.0] ... self.df.iloc[self.end, 4:8]=[11, 12, 13, 14]
Jun
18
comment Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
The add is done with self.df.iloc[self.end] = datarow where datarow is always a list of 4 floats and 4 ints. However your answer does explain why writing it over the existing row would take an order of magnitude longer - it seems likely that pandas has to use code suited to write the list to two different arrays rather than one (all floats) array - perhaps the code is not as optimized. I am going to try one more thing: adding 4 floats to the first half and 4 ints to the second half as two separate writes to see what the timing becomes.
Jun
18
comment Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
Thanks for that BrenBarn. I can see that @Jeff is right and my original question has become too long. In fact I only append every 5000 rows and the loop being timed is actually writing data into a row appended when the main file was read to create the dataframe.
Jun
18
comment Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
Thanks for the suggestion - I need to reconsider how much I am likely to learn and decide how to proceed. I was not aware of this approach at stackoverflow. If I do I will probably ask as new question and provide new, simpler code to demonstrate the issue. Basically, now the question is very simple: - why do different types in the columns of a dataframe make it slower to add a list to an existing row (floats and ints vs floats only)?
Jun
18
revised Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
added 54 characters in body
Jun
18
revised Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
added 634 characters in body
Jun
18
revised Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
added 634 characters in body
Jun
17
revised Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
added 184 characters in body
Jun
17
comment Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
I created a test version that generates a df from a numpy array, then appends 10,000 rows for filling with incoming (dummy) data. This is described in the Edit and you could run it yourself to see if case 1 (writing to df of float 0.0s) differs from case 2 (writing to df with half the columns float 0 and half of them int64 0). I greatly appreciate your questions ... they have driven me to simplify the test as much as possible.
Jun
17
revised Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
added 901 characters in body
Jun
17
revised Pandas: Why should appending to a dataframe of floats and ints be slower than if its full of NaN
added 901 characters in body