My small Python script uses a library to work on some relatively large data. The standard algorithm for this task is a dynamic programming algorithm, so presumably the library "under the hood" allocates a large array to keep track of the partial results of the DP. Indeed, when I try to give it fairly large input, it immediately gives a
Preferably without digging into the depths of the library, I want to figure out if it is worth trying this algorithm on a different machine with more memory, or trying to trim down a bit on my input size, or if it's a lost cause for the data size I am trying to use.
When my Python code throws a
MemoryError, is there a "top-down" way for me to investigate what the size of memory was that my code tried to allocate which caused the error, e.g. by inspecting the error object?