first_embedding_dim=32 second_embedding_dim=16 z1_dim=32 z2_dim=32 z_dim=32 enc_h1_dim=32 enc_h2_dim=16 taskenc_h1_dim=32 taskenc_h2_dim=32 taskenc_final_dim=16 clusters_k=10 temperature=1.0 lambda=1.0 dec_h1_dim=32 dec_h2_dim=32 dec_h3_dim=16 dropout_rate=0 lr=0.0001 optim='adam' num_epoch=100 batch_size=32 train_ratio=0.7 valid_ratio=0.1 support_size=20 query_size=10 max_len=200 context_min=20 CUDA_VISIBLE_DEVICES=0 python train_TaNP.py \ --first_embedding_dim $first_embedding_dim \ --second_embedding_dim $second_embedding_dim \ --z1_dim $z1_dim \ --z2_dim $z2_dim \ --z_dim $z_dim \ --enc_h1_dim $enc_h1_dim \ --enc_h2_dim $enc_h2_dim \ --taskenc_h1_dim $taskenc_h1_dim \ --taskenc_h2_dim $taskenc_h2_dim \ --taskenc_final_dim $taskenc_final_dim \ --clusters_k $clusters_k \ --lambda $lambda \ --temperature $temperature \ --dec_h1_dim $dec_h1_dim \ --dec_h2_dim $dec_h2_dim \ --dec_h3_dim $dec_h3_dim \ --lr $lr \ --dropout_rate $dropout_rate \ --optim $optim \ --num_epoch $num_epoch \ --batch_size $batch_size \ --train_ratio $train_ratio \ --valid_ratio $valid_ratio \ --support_size $support_size \ --query_size $query_size \ --max_len $max_len \ --context_min $context_min