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Suppose in PyTorch I have model1 and model2 which have the same architecture. They were further trained on same data or one model is an earlier version of the othter, but it is not technically relevant for the question. Now I want to set the weights of model to be the average of the weights of model1 and model2. How would I do that in PyTorch?

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  • Why would you do that? The mean of weights doesn't mean anything at all.
    – Dr. Snoopy
    Feb 1, 2018 at 10:20
  • For example I could want to do Polyakov averaging. Feb 1, 2018 at 10:25
  • Whatever transformation you want to do on the weights won't produce any meaningful value that will have high accuracy or low loss.
    – Dr. Snoopy
    Feb 1, 2018 at 10:27
  • As mentioned, I doubt its worth but see if this is of any help. You could grab the parameters, transform and load them back but make sure the dimensions match.
    – Littleone
    Feb 1, 2018 at 13:22
  • @Littleone thank you! I will try that :) Feb 1, 2018 at 14:56

1 Answer 1

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beta = 0.5 #The interpolation parameter    
params1 = model1.named_parameters()
params2 = model2.named_parameters()

dict_params2 = dict(params2)

for name1, param1 in params1:
    if name1 in dict_params2:
        dict_params2[name1].data.copy_(beta*param1.data + (1-beta)*dict_params2[name1].data)

model.load_state_dict(dict_params2)

Taken from pytorch forums. You could grab the parameters, transform and load them back but make sure the dimensions match.

Also I would be really interested in knowing about your findings with these..

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    Thank you :) ! Typically in stackoverflow, when you link to an outside source, you also want to recopy the relevant information in your answer because the link might eventually become a deadlink or the information there might change. I upvoted, but if you could provide a complete answer by re-copying the relevant parts of the page you link to I will be able to accept the answer. Feb 2, 2018 at 7:25
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    @patapouf_ai Didn't know that. Thank you.
    – Littleone
    Feb 2, 2018 at 10:04

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