Would you (or somebody else) mind comparing/contrasting Data scientist/ML Eng a little more? I'm not sure I understand the difference (and perhaps like many roles/titles in our industry the line is blurry).
Never mind, I mentally flipped the numbers. I read 20/80 and 30/70 but it's actually 20/80 and 70/30. IOW, Data scientist spend a lot more time modeling, and ML eng spend a lot more time engineering. makes a lot of sense. I'll post this comment anyway in case it helps someone else.
I think of ML eng as more infrastructure and scalability. Possibly doing tasks like converting lab models into models that can be run at production scale. There is a blurry line between the two because it makes sense for some tasks to have shared ownership - just like you tend to have with people reaching across the stack to get something done in front-end vs. back-end web roles. As with anything, as you get more experience you get more comfortable jumping around and maintaining a larger set of concerns
Never mind, I mentally flipped the numbers. I read 20/80 and 30/70 but it's actually 20/80 and 70/30. IOW, Data scientist spend a lot more time modeling, and ML eng spend a lot more time engineering. makes a lot of sense. I'll post this comment anyway in case it helps someone else.