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Answered
Hi, I Just Started Using Clearml And I Really Enjoy It - It Seems Much Easier Than Other Similar Tools. I Got Today A Bit Mysterious Message When Running Experiment: "2023-05-08 15:07:40,206 - Clearml.Frameworks - Info - Found Existing Registered Model Id

Hi, I just started using ClearML and I really enjoy it - it seems much easier than other similar tools. I got today a bit mysterious message when running experiment: "2023-05-08 15:07:40,206 - clearml.frameworks - INFO - Found existing registered model id=77f1e19fac7449fcae41ca2847f00a11 [~/ml_training/params/model_params.pt] reusing it."
What it means?

  
  
Posted 6 months ago
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Answers 7


@<1566596960691949568:profile|UpsetWalrus59> the hyperparameters will be the ones associated with the experiment. The input model you specified has a path to the actual weights file - this message basically means the same weights file is already registered in a model object and thus a new model object will not be created, and the existing one will be used as an input model

  
  
Posted 6 months ago

Hi @<1566596960691949568:profile|UpsetWalrus59> , I think this basically means you have an existing model and it's using it as the starting point.

  
  
Posted 6 months ago

Hyperparameters are connected to the experiment so your config will be right 🙂

  
  
Posted 6 months ago

hyperparams are only for the task, not the model

  
  
Posted 6 months ago

i see, thanks for the explanation, so basically it is initializing the weights to the weights which are saved instead of to the random ones, if i understand correctly? So in this case to prevent this behavior and start from random weights I should just change the name of output file with weights, right?

  
  
Posted 6 months ago

yes, i can see the hyperparams are reflecting correctly, but I mean it shouldn't start from previous model checkpoint if it is different run with different hyperparams

  
  
Posted 6 months ago

hm, but why it happens if my new model has different hyperparameters and is separate experiment with separate name? how to avoid this behavior?

  
  
Posted 6 months ago
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