Source code for nvflare.app_opt.pt.tensor_params_converter

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# Licensed under the Apache License, Version 2.0 (the "License");
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#     http://www.apache.org/licenses/LICENSE-2.0
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from typing import Dict

import numpy as np
import torch

from nvflare.app_common.abstract.params_converter import ParamsConverter


[docs] class PTReceiveParamsConverter(ParamsConverter):
[docs] def convert(self, params: Dict, fl_ctx) -> Dict: tensor_shapes = fl_ctx.get_prop("tensor_shapes") exclude_vars = fl_ctx.get_prop("exclude_vars") return_params = {} for k, v in params.items(): if isinstance(v, torch.Tensor): return_params[k] = v else: # "PT receive, so potentially also need to handle numpy to tensor" if tensor_shapes: if k in tensor_shapes: return_params[k] = torch.as_tensor(np.reshape(v, tensor_shapes[k])) else: return_params[k] = torch.as_tensor(v) else: return_params[k] = torch.as_tensor(v) if exclude_vars: for k, v in exclude_vars.items(): return_params[k] = v return return_params
[docs] class PTSendParamsConverter(ParamsConverter):
[docs] def convert(self, params: Dict, fl_ctx) -> Dict: return_tensors = {} exclude_vars = {} for k, v in params.items(): if isinstance(v, torch.Tensor): return_tensors[k] = v.cpu() else: exclude_vars[k] = v if exclude_vars: fl_ctx.set_prop("exclude_vars", exclude_vars) self.logger.warning( f"{len(exclude_vars)} vars excluded as they were non-tensor type: " f"{list(exclude_vars.keys())}" ) return return_tensors