This question already has an answer here:
I am new to Python and am uncertain why I am seeing memory usage spike so dramatically when I use Numpy
hstack to join together two
pandas data frames. The performance with
pandas.concat was even worse - if it would finish at all - so I am using NumPy.
The two data frames are relatively large, but I have 20 gb free RAM (using 11GB, including the two data frames I want to copy).
The data frames a and b have shapes:
a.shape (66377, 30) b.shape (66377, 11100)
when I use
np.hstack((a,b)) the free 20GB is had is completely used up.