In our setup, these boys down to the choice of the backbone of the system and how you build your ML pipeline. Once that is in place, I think every other tool has been relatively straightforward to incorporate into this vision. Training with deployment is a version of the artifact. And those, at least to me, are already solved, that they're not going to change it to stay. The result is on the active-active S3 to get shipped to whatever deployment platform that I picked. It's pure Python on PyTorch or TensorFlow, whatever. Again, they need to stay there not going to changing.

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