I have the following code, that creates a million objects of a class foo:
for i in range(1000000): bar = foo() list_bar.append(bar)
The bar object is only 96 bytes, as determined by
getsizeof(). However, the append step takes almost 8GB of ram. Once the code exits the loop, the ram usage drops to expected amounts (size of the list + some overhead ~103MB). Only while the loop is running does the ram usage skyrocket. Why does this happen? Any workarounds?
PS: Using a generator is not an option, it has to be a list.
xrange doesn't help, using Python 3. The memory usage stays high only during the loop execution, and drops after the loop is through. Could
append have some non-obvious overhead?