@traducerad From a distribution of work perspective you don't want your software guys getting too bogged down in ML. Mostly because ist sa. lot of data analysis work that involves curating the training corpus and models. Very large companies basically do "auto ml" where they black box the ML, and maybe send it to their ML guys if it becomes a priority.
The problem we've had was that there were always a lot more kids who wanted to work on ML (and claimed they had experience) than software engineers. So in some ways its was easier to find an ML guy than an C++ guy.