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model_name=TimeMixer |
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seq_len=96 |
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e_layers=3 |
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down_sampling_layers=3 |
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down_sampling_window=2 |
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learning_rate=0.01 |
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d_model=16 |
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d_ff=32 |
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batch_size=32 |
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train_epochs=20 |
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patience=10 |
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python -u run.py \ |
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--task_name long_term_forecast \ |
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--is_training 1 \ |
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--root_path ./dataset/electricity/ \ |
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--data_path electricity.csv \ |
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--model_id ECL_$seq_len'_'96 \ |
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--model $model_name \ |
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--data custom \ |
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--features M \ |
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--seq_len $seq_len \ |
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--label_len 0 \ |
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--pred_len 96 \ |
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--e_layers $e_layers \ |
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--d_layers 1 \ |
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--factor 3 \ |
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--enc_in 321 \ |
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--dec_in 321 \ |
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--c_out 321 \ |
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--des 'Exp' \ |
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--itr 1 \ |
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--d_model $d_model \ |
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--d_ff $d_ff \ |
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--batch_size $batch_size \ |
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--learning_rate $learning_rate \ |
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--train_epochs $train_epochs \ |
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--patience $patience \ |
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--down_sampling_layers $down_sampling_layers \ |
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--down_sampling_method avg \ |
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--down_sampling_window $down_sampling_window |
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python -u run.py \ |
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--task_name long_term_forecast \ |
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--is_training 1 \ |
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--root_path ./dataset/electricity/ \ |
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--data_path electricity.csv \ |
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--model_id ECL_$seq_len'_'192 \ |
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--model $model_name \ |
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--data custom \ |
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--features M \ |
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--seq_len $seq_len \ |
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--label_len 0 \ |
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--pred_len 192 \ |
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--e_layers $e_layers \ |
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--d_layers 1 \ |
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--factor 3 \ |
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--enc_in 321 \ |
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--dec_in 321 \ |
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--c_out 321 \ |
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--des 'Exp' \ |
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--itr 1 \ |
|
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--d_model $d_model \ |
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--d_ff $d_ff \ |
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--batch_size $batch_size \ |
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--learning_rate $learning_rate \ |
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--train_epochs $train_epochs \ |
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--patience $patience \ |
|
|
--down_sampling_layers $down_sampling_layers \ |
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--down_sampling_method avg \ |
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--down_sampling_window $down_sampling_window |
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python -u run.py \ |
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--task_name long_term_forecast \ |
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--is_training 1 \ |
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--root_path ./dataset/electricity/ \ |
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--data_path electricity.csv \ |
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--model_id ECL_$seq_len'_'336 \ |
|
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--model $model_name \ |
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--data custom \ |
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--features M \ |
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--seq_len $seq_len \ |
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--label_len 0 \ |
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--pred_len 336 \ |
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--e_layers $e_layers \ |
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--d_layers 1 \ |
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--factor 3 \ |
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--enc_in 321 \ |
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--dec_in 321 \ |
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--c_out 321 \ |
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--des 'Exp' \ |
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--itr 1 \ |
|
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--d_model $d_model \ |
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--d_ff $d_ff \ |
|
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--batch_size $batch_size \ |
|
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--learning_rate $learning_rate \ |
|
|
--train_epochs $train_epochs \ |
|
|
--patience $patience \ |
|
|
--down_sampling_layers $down_sampling_layers \ |
|
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--down_sampling_method avg \ |
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--down_sampling_window $down_sampling_window |
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python -u run.py \ |
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--task_name long_term_forecast \ |
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--is_training 1 \ |
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--root_path ./dataset/electricity/ \ |
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--data_path electricity.csv \ |
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|
--model_id ECL_$seq_len'_'720 \ |
|
|
--model $model_name \ |
|
|
--data custom \ |
|
|
--features M \ |
|
|
--seq_len $seq_len \ |
|
|
--label_len 0 \ |
|
|
--pred_len 720 \ |
|
|
--e_layers $e_layers \ |
|
|
--d_layers 1 \ |
|
|
--factor 3 \ |
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--enc_in 321 \ |
|
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--dec_in 321 \ |
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--c_out 321 \ |
|
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--des 'Exp' \ |
|
|
--itr 1 \ |
|
|
--d_model $d_model \ |
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--d_ff $d_ff \ |
|
|
--batch_size $batch_size \ |
|
|
--learning_rate $learning_rate \ |
|
|
--train_epochs $train_epochs \ |
|
|
--patience $patience \ |
|
|
--down_sampling_layers $down_sampling_layers \ |
|
|
--down_sampling_method avg \ |
|
|
--down_sampling_window $down_sampling_window |