I'm using Python and Keras (currently using Theano backend, but I have no qualms with switching). I have a neural network that I load and process multiple sources of information with in parallel. Currently, I've been running each one in a separate process and it loads its own copy of the network from the file. This seems like a waste of RAM, so I was thinking it would be more efficient to have a single multi-threaded process with one instance of the network that is used by all threads. However, I'm wondering if Keras is thread safe with either backend. If I run
.predict(x) on two different inputs at the same time in different threads, will I run into race conditions or other issues?