I have a data structure which serves as a wrapper to a 2D numpy array in order to use labeled indices and perform statements such as
myMatrix[ "rowLabel", "colLabel" ] = 1.0
Basically this is implemented as
def __setitem__( self, row, col, value ): ... # Check validity of row/col labels. self.__matrixRepresentation[ ( self.__rowMap[row], self.__colMap[col] ) ] = value
I am assigning the values in a database table to this data structure, and it was straightforward to write a loop for this. However, I want to execute this loop 100 million or more times, and iteratively retrieving chunks of values from the database table and moving them to this structure takes more time than I would prefer.
All of the values I retrieve from the database table have different (row,column) pairs. Therefore, it seems that I could parallelize the above assignment, but I don't know if numpy arrays permit simultaneous assignment using some sort of internal locking mechanism for atomic operations, or if it altogether prohibits any such thought process. If anyone has suggestions or criticisms, I would appreciate it. (If possible, in this case I'd prefer not to resort to cython or PyPy.)