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Improvement
Medium
I ran torchfix on this repo and got the following message.
~/earth2mip$ torchfix . earth2mip/beta/perturbation/bv.py:104:17: TOR101 Use of deprecated function torch.norm earth2mip/beta/perturbation/bv.py:104:33: TOR101 Use of deprecated function torch.norm build/lib/earth2mip/diagnostic/climate_net.py:556:31: TOR102 [*] `torch.load` without `weights_only` parameter is unsafe. Explicitly set `weights_only` to False only if you trust the data you load and full pickle functionality is needed, otherwise set `weights_only=True`. earth2mip/diagnostic/climate_net.py:556:31: TOR102 [*] `torch.load` without `weights_only` parameter is unsafe. Explicitly set `weights_only` to False only if you trust the data you load and full pickle functionality is needed, otherwise set `weights_only=True`. build/lib/earth2mip/ensemble_utils.py:229:13: TOR101 Use of deprecated function torch.norm build/lib/earth2mip/ensemble_utils.py:229:29: TOR101 Use of deprecated function torch.norm earth2mip/ensemble_utils.py:231:13: TOR101 Use of deprecated function torch.norm earth2mip/ensemble_utils.py:231:29: TOR101 Use of deprecated function torch.norm --- /home/ethan/earth2mip/earth2mip/diagnostic/climate_net.py +++ /home/ethan/earth2mip/earth2mip/diagnostic/climate_net.py @@ -551,11 +551,11 @@ model = CGNetModule( channels=len(IN_CHANNELS), classes=len(OUT_CHANNELS), ) weights_path = package.get("weights.tar") - model.load_state_dict(torch.load(weights_path, map_location=device)) + model.load_state_dict(torch.load(weights_path, map_location=device, weights_only=True)) model.eval() input_center = torch.Tensor(np.load(package.get("global_means.npy")))[ :, None, None ] --- /home/ethan/earth2mip/build/lib/earth2mip/diagnostic/climate_net.py +++ /home/ethan/earth2mip/build/lib/earth2mip/diagnostic/climate_net.py @@ -551,11 +551,11 @@ model = CGNetModule( channels=len(IN_CHANNELS), classes=len(OUT_CHANNELS), ) weights_path = package.get("weights.tar") - model.load_state_dict(torch.load(weights_path, map_location=device)) + model.load_state_dict(torch.load(weights_path, map_location=device, weights_only=True)) model.eval() input_center = torch.Tensor(np.load(package.get("global_means.npy")))[ :, None, None ] build/lib/earth2mip/networks/fcnv2_sm.py:155:15: TOR102 [*] `torch.load` without `weights_only` parameter is unsafe. Explicitly set `weights_only` to False only if you trust the data you load and full pickle functionality is needed, otherwise set `weights_only=True`. --- /home/ethan/earth2mip/build/lib/earth2mip/networks/fcnv2_sm.py +++ /home/ethan/earth2mip/build/lib/earth2mip/networks/fcnv2_sm.py @@ -150,11 +150,11 @@ local_center = np.load(package.get("global_means.npy")) local_std = np.load(package.get("global_stds.npy")) weights_path = package.get("weights.tar") - weights = torch.load(weights_path, map_location=device) + weights = torch.load(weights_path, map_location=device, weights_only=True) fixed_weights = _fix_state_dict_keys(weights["model_state"], add_module=False) core_model.load_state_dict(fixed_weights) grid = earth2mip.grid.equiangular_lat_lon_grid(721, 1440) dt = datetime.timedelta(hours=6) earth2mip/networks/fcnv2_sm.py:155:15: TOR102 [*] `torch.load` without `weights_only` parameter is unsafe. Explicitly set `weights_only` to False only if you trust the data you load and full pickle functionality is needed, otherwise set `weights_only=True`. --- /home/ethan/earth2mip/earth2mip/networks/fcnv2_sm.py +++ /home/ethan/earth2mip/earth2mip/networks/fcnv2_sm.py @@ -150,11 +150,11 @@ local_center = np.load(package.get("global_means.npy")) local_std = np.load(package.get("global_stds.npy")) weights_path = package.get("weights.tar") - weights = torch.load(weights_path, map_location=device) + weights = torch.load(weights_path, map_location=device, weights_only=True) fixed_weights = _fix_state_dict_keys(weights["model_state"], add_module=False) core_model.load_state_dict(fixed_weights) grid = earth2mip.grid.equiangular_lat_lon_grid(721, 1440) dt = datetime.timedelta(hours=6) Finished checking 118 files.
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Is this a new feature, an improvement, or a change to existing functionality?
Improvement
How would you describe the priority of this feature request
Medium
Please provide a clear description of problem you would like to solve.
I ran torchfix on this repo and got the following message.
Describe any alternatives you have considered
No response
The text was updated successfully, but these errors were encountered: