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- # copyright (c) 2024 PaddlePaddle Authors. All Rights Reserve.
- #
- # Licensed under the Apache License, Version 2.0 (the "License");
- # you may not use this file except in compliance with the License.
- # You may obtain a copy of the License at
- #
- # http://www.apache.org/licenses/LICENSE-2.0
- #
- # Unless required by applicable law or agreed to in writing, software
- # distributed under the License is distributed on an "AS IS" BASIS,
- # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
- # See the License for the specific language governing permissions and
- # limitations under the License.
- import os
- import json
- import time
- import tarfile
- from pathlib import Path
- import paddle
- from ..base import BaseTrainer, BaseTrainDeamon
- from ...utils.config import AttrDict
- from .model_list import MODELS
- class TSFCTrainer(BaseTrainer):
- """ TS Forecast Model Trainer """
- entities = MODELS
- def build_deamon(self, config: AttrDict) -> "TSFCTrainDeamon":
- """build deamon thread for saving training outputs timely
- Args:
- config (AttrDict): PaddleX pipeline config, which is loaded from pipeline yaml file.
- Returns:
- TSFCTrainDeamon: the training deamon thread object for saving training outputs timely.
- """
- return TSFCTrainDeamon(config)
- def train(self):
- """firstly, update and dump train config, then train model
- """
- rtn = super().train()
- self.make_tar_file()
- return rtn
- def make_tar_file(self):
- """make tar file to package the training outputs
- """
- tar_path = Path(
- self.global_config.output) / "best_accuracy.pdparams.tar"
- with tarfile.open(tar_path, 'w') as tar:
- tar.add(self.global_config.output, arcname='best_accuracy.pdparams')
- def update_config(self):
- """update training config
- """
- self.pdx_config.update_dataset(self.global_config.dataset_dir,
- "TSDataset")
- if self.train_config.input_len is not None:
- self.pdx_config.update_input_len(self.train_config.input_len)
- if self.train_config.time_col is not None:
- self.pdx_config.update_basic_info({
- 'time_col': self.train_config.time_col
- })
- if self.train_config.target_cols is not None:
- self.pdx_config.update_basic_info({
- 'target_cols': self.train_config.target_cols.split(',')
- })
- if self.train_config.freq is not None:
- try:
- self.train_config.freq = int(self.train_config.freq)
- except ValueError:
- pass
- self.pdx_config.update_basic_info({'freq': self.train_config.freq})
- if self.train_config.predict_len is not None:
- self.pdx_config.update_predict_len(self.train_config.predict_len)
- if self.train_config.patience is not None:
- self.pdx_config.update_patience(self.train_config.patience)
- if self.train_config.batch_size is not None:
- self.pdx_config.update_batch_size(self.train_config.batch_size)
- if self.train_config.learning_rate is not None:
- self.pdx_config.update_learning_rate(
- self.train_config.learning_rate)
- if self.train_config.epochs_iters is not None:
- self.pdx_config.update_epochs(self.train_config.epochs_iters)
- if self.global_config.output is not None:
- self.pdx_config.update_save_dir(self.global_config.output)
- def get_train_kwargs(self) -> dict:
- """get key-value arguments of model training function
- Returns:
- dict: the arguments of training function.
- """
- train_args = {"device": self.get_device()}
- if self.global_config.output is not None:
- train_args["save_dir"] = self.global_config.output
- return train_args
- class TSFCTrainDeamon(BaseTrainDeamon):
- """ TSFCTrainResultDemon """
- def get_watched_model(self):
- """ get the models needed to be watched """
- watched_models = []
- watched_models.append("best")
- return watched_models
- def update(self):
- """ update train result json """
- self.processing = True
- for i, result in enumerate(self.results):
- self.results[i] = self.update_result(result, self.train_outputs[i])
- self.save_json()
- self.processing = False
- def update_train_log(self, train_output):
- """ update train log """
- train_log_path = train_output / "train_ct.log"
- with open(train_log_path, 'w') as f:
- seconds = time.time()
- f.write('current training time: ' + time.strftime(
- "%Y-%m-%d %H:%M:%S", time.localtime(seconds)))
- f.close()
- return train_log_path
- def update_result(self, result, train_output):
- """ update every result """
- config = Path(train_output).joinpath("config.yaml")
- if not config.exists():
- return result
- result["config"] = config
- result["train_log"] = self.update_train_log(train_output)
- result["visualdl_log"] = self.update_vdl_log(train_output)
- result["label_dict"] = self.update_label_dict(train_output)
- self.update_models(result, train_output, "best")
- return result
- def update_models(self, result, train_output, model_key):
- """ update info of the models to be saved """
- pdparams = Path(train_output).joinpath("best_accuracy.pdparams.tar")
- if pdparams.exists():
- score = self.get_score(Path(train_output).joinpath("score.json"))
- result["models"][model_key] = {
- "score": "%.3f" % score,
- "pdparams": pdparams,
- "pdema": "",
- "pdopt": "",
- "pdstates": "",
- "inference_config": "",
- "pdmodel": "",
- "pdiparams": pdparams,
- "pdiparams.info": ""
- }
- def get_score(self, score_path):
- """ get the score by pdstates file """
- if not Path(score_path).exists():
- return 0
- return json.load(open(score_path))["metric"]
- def get_best_ckp_prefix(self):
- """ get the prefix of the best checkpoint file """
- pass
- def get_epoch_id_by_pdparams_prefix(self):
- """ get the epoch_id by pdparams file """
- pass
- def get_ith_ckp_prefix(self):
- """ get the prefix of the epoch_id checkpoint file """
- pass
- def get_the_pdema_suffix(self):
- """ get the suffix of pdema file """
- pass
- def get_the_pdopt_suffix(self):
- """ get the suffix of pdopt file """
- pass
- def get_the_pdparams_suffix(self):
- """ get the suffix of pdparams file """
- pass
- def get_the_pdstates_suffix(self):
- """ get the suffix of pdstates file """
- pass
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