I have a dataframe that has over 400K rows and several hundred columns that I have decided to read in with chunks because it does not fit into Memory and gives me MemoryError.
I have managed to read it in in chunks like this:
x = pd.read_csv('Training.csv', chunksize=10000)
and afterwards I can get each of the chunks by doing this:
a = x.get_chunk() b = x.get_chunk()
etc etc keep doing this over 40 times which is obviously slow and bad programming practice.
When I try doing the following in an attempt to create a loop that can save each chunk into a dataframe and somehow concatenate them:
for x in pd.read_csv('Training.csv', chunksize=500): x.get_chunk()
AttributeError: 'DataFrame' object has no attribute 'get_chunk'
What is the easiest way I can read in my file and concatenate all my chunks during the import?
Also, how do I do further manipulation on my dataset to avoid memory error issues (particularly, imputing null values, standardizing/normalizing the dataframe, and then running machine learning models on it using scikit learn?