I'm reading ascii and binary files that all specify 3 dimensional arrays in fortran order. I want to perform some arbitrary manipulations on these arrays, then export them to the same ascii or binary format.
I'm confused on the best ways to deal with these arrays in my library. My current design seems prone to error because I have to keep reshaping things from the default C order if any new array is created.
I have a few functions that read these files and return numpy arrays. The read functions all behave in a similar way and essentially read in the data and return something like:
return array.reshape((i, j, k), order='F')
The way I understand it, I'm returning a view for fortran order onto the original array.
My code assumes all the arrays are in fortran order. This means any new operations that might create a new array I make sure to use
reshape to convert it back to fortran order.
This seems very error-prone because I have to pay close attention to any operation that creates a new array and make sure to reshape it into fortran order since the default is usually C order.
I later might have to export these arrays to binary or ascii again and need to maintain the fortran ordering. So, I use
numpy.nditer to write each element out in the fortran order.
The current approach seems very error-prone since I typically think in C order. I'm afraid that I'll always be getting bitten by missing calls to
reshapethat forces things in C order.
- I'd like to not have to worry about the ordering of the array elements except when reading the input files or writing the data to the output files.
The current approach seems messy because the indexes can be interpreted different ways and things can get confusing.
- When dealing with fortran arrays the tuple ordering for indexes is backwards, right?
x[(1, 2, 3)]for a fortran array means k = 1, j = 2, and i = 3 whereas
x[(1, 2, 3)]for a C order array means k = 3, j = 2, i = 1 correct?
- This means that me and users of my library must always think of indexes in (k, j, i) order, not what we are C/Python programmers typically think in, (i, j, k).
Is there a best practice for doing this type of thing? In an ideal world I'd like to read in the fortran ordered arrays, then forget about ordering until I export to a file. However, I'm afraid I'll keep misinterpreting the indexes, etc.
I've read through the only numpy documentation on this that I can find, http://docs.scipy.org/doc/numpy/reference/internals.html#multidimensional-array-indexing-order-issues. However, the concept still seems as clear as mud to me. Maybe I just need a different explanation of the numpy docs, http://docs.scipy.org/doc/numpy/reference/internals.html#multidimensional-array-indexing-order-issues.