| export CUDA_VISIBLE_DEVICES=0 | |
| model_name=TimesNet | |
| python -u run.py \ | |
| --task_name short_term_forecast \ | |
| --is_training 1 \ | |
| --root_path ./dataset/m4 \ | |
| --seasonal_patterns 'Monthly' \ | |
| --model_id m4_Monthly \ | |
| --model $model_name \ | |
| --data m4 \ | |
| --features M \ | |
| --e_layers 2 \ | |
| --d_layers 1 \ | |
| --factor 3 \ | |
| --enc_in 1 \ | |
| --dec_in 1 \ | |
| --c_out 1 \ | |
| --batch_size 16 \ | |
| --d_model 32 \ | |
| --d_ff 32 \ | |
| --top_k 5 \ | |
| --des 'Exp' \ | |
| --itr 1 \ | |
| --learning_rate 0.001 \ | |
| --loss 'SMAPE' | |
| python -u run.py \ | |
| --task_name short_term_forecast \ | |
| --is_training 1 \ | |
| --root_path ./dataset/m4 \ | |
| --seasonal_patterns 'Yearly' \ | |
| --model_id m4_Yearly \ | |
| --model $model_name \ | |
| --data m4 \ | |
| --features M \ | |
| --e_layers 2 \ | |
| --d_layers 1 \ | |
| --factor 3 \ | |
| --enc_in 1 \ | |
| --dec_in 1 \ | |
| --c_out 1 \ | |
| --batch_size 16 \ | |
| --d_model 16 \ | |
| --d_ff 32 \ | |
| --top_k 5 \ | |
| --des 'Exp' \ | |
| --itr 1 \ | |
| --learning_rate 0.001 \ | |
| --loss 'SMAPE' | |
| python -u run.py \ | |
| --task_name short_term_forecast \ | |
| --is_training 1 \ | |
| --root_path ./dataset/m4 \ | |
| --seasonal_patterns 'Quarterly' \ | |
| --model_id m4_Quarterly \ | |
| --model $model_name \ | |
| --data m4 \ | |
| --features M \ | |
| --e_layers 2 \ | |
| --d_layers 1 \ | |
| --factor 3 \ | |
| --enc_in 1 \ | |
| --dec_in 1 \ | |
| --c_out 1 \ | |
| --batch_size 16 \ | |
| --d_model 64 \ | |
| --d_ff 64 \ | |
| --top_k 5 \ | |
| --des 'Exp' \ | |
| --itr 1 \ | |
| --learning_rate 0.001 \ | |
| --loss 'SMAPE' | |
| python -u run.py \ | |
| --task_name short_term_forecast \ | |
| --is_training 1 \ | |
| --root_path ./dataset/m4 \ | |
| --seasonal_patterns 'Daily' \ | |
| --model_id m4_Daily \ | |
| --model $model_name \ | |
| --data m4 \ | |
| --features M \ | |
| --e_layers 2 \ | |
| --d_layers 1 \ | |
| --factor 3 \ | |
| --enc_in 1 \ | |
| --dec_in 1 \ | |
| --c_out 1 \ | |
| --batch_size 16 \ | |
| --d_model 16 \ | |
| --d_ff 16 \ | |
| --top_k 5 \ | |
| --des 'Exp' \ | |
| --itr 1 \ | |
| --learning_rate 0.001 \ | |
| --loss 'SMAPE' | |
| python -u run.py \ | |
| --task_name short_term_forecast \ | |
| --is_training 1 \ | |
| --root_path ./dataset/m4 \ | |
| --seasonal_patterns 'Weekly' \ | |
| --model_id m4_Weekly \ | |
| --model $model_name \ | |
| --data m4 \ | |
| --features M \ | |
| --e_layers 2 \ | |
| --d_layers 1 \ | |
| --factor 3 \ | |
| --enc_in 1 \ | |
| --dec_in 1 \ | |
| --c_out 1 \ | |
| --batch_size 16 \ | |
| --d_model 32 \ | |
| --d_ff 32 \ | |
| --top_k 5 \ | |
| --des 'Exp' \ | |
| --itr 1 \ | |
| --learning_rate 0.001 \ | |
| --loss 'SMAPE' | |
| python -u run.py \ | |
| --task_name short_term_forecast \ | |
| --is_training 1 \ | |
| --root_path ./dataset/m4 \ | |
| --seasonal_patterns 'Hourly' \ | |
| --model_id m4_Hourly \ | |
| --model $model_name \ | |
| --data m4 \ | |
| --features M \ | |
| --e_layers 2 \ | |
| --d_layers 1 \ | |
| --factor 3 \ | |
| --enc_in 1 \ | |
| --dec_in 1 \ | |
| --c_out 1 \ | |
| --batch_size 16 \ | |
| --d_model 32 \ | |
| --d_ff 32 \ | |
| --top_k 5 \ | |
| --des 'Exp' \ | |
| --itr 1 \ | |
| --learning_rate 0.001 \ | |
| --loss 'SMAPE' | |