comaniac commented on PR #11326:
URL: https://github.com/apache/tvm/pull/11326#issuecomment-1144492424

   Ah I see. You were saying whether the weight is a constant or a var. 
   
   Well, this is not about training or inference mode. Model definition is 
always separated with the model weight values, so when users convert a model to 
Relay, weights are vars. Since TVM is mainly for inference, it doesn't make 
sense to have "training" mode and I don't think it's a problem.
   
   Meanwhile, Relay allows users to bind parameters with trained weights to let 
them become constants.
   
   Since this is user options, as a codegen, you have deal with both cases. If 
weights are vars, then you have to transpose them in runtime; otherwise you 
could use constant updater to transpose them at compile time.


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