I am considering creating a numpy table as key/value database. The inputs/update would be multi-theaded.
Exploring the idea, Problem: would GIL stop theads and only allow one update at time. Problem: can numpy table (tablespace) be mutlitheaded.
Some numpy functions are not atomic, so if two threads were to operate on the same array by calling some non-atomic numpy functions, then the array will become mangled because the order of operations will be mixed up in some non-anticipated way.
There are many examples, but just to be concrete, numpy.apply_along_axis is a long sequence of Python statements, clearly not atomic.
The GIL will not help you since it could stop one thread while it is only partly through some non-atomic numpy function, then start another thread which is operating on the same array...
So to be thread-safe, you would need to use a
Having to use a lock everywhere calls into question whether there is any benefit to having multiple threads operating on same array. Note that sometimes multithreading on a CPU-bound problem may result in slower performance than a comparable single-threaded version.
See also the ParallelProgramming with numpy and scipy page for more alternatives and discussion.