Comments (2)
Hi @vfdev-5
I agree, we should point out the differences that need to be made to your code in order to convert a normal code to a distributed code using a minimal trainer and model. To do that should we have it as a how to guide which assumes you know how to write the basic Ignite pipeline and just mention the additions for distributed training?
from examples.
To do that should we have it as a how to guide which assumes you know how to write the basic Ignite pipeline and just mention the additions for distributed training?
Yeah, maybe point (1) "minimal DDP code with 1 minimalistic trainer and 1 evaluator (computing accuracy metric) = goal to put the most pertinent info in minimum lines of text" could be a how-to guide
from examples.
Related Issues (20)
- Convert pure pytorch code to ignite
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- could you give an example of how to save checkpoints? HOT 3
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from examples.