You can use PyTables to create a Hierarchical Data Format (HDF) file to store the data. This provides some interesting in-memory options that link the object you're working with to the file it's saved in.
Here is another StackOverflow questions that demonstrates how to do this: "How to store a NumPy multidimensional array in PyTables."
If you are willing to work with your array as a Pandas DataFrame object, you can also use the Pandas interface to PyTables / HDF5, e.g.:
import numpy as np
a = np.ones((43200, 4000)) # Not recommended.
x = pandas.HDFStore("some_file.hdf")
x.append("a", pandas.DataFrame(a)) # <-- This will take a while.
# Then later on...
my_data = pandas.HDFStore("some_file.hdf") # might also take a while
usable_a_copy = my_data["a"] # Be careful of the way changes to
# `usable_a_copy` affect the saved data.
copy_as_nparray = usable_a_copy.values
With files of this size, you might consider whether your application can be performed with a parallel algorithm and potentially applied to only subsets of the large arrays rather than needing to consume all of the array before proceeding.