# used for continuous evaluation enable_ce: False # The frequency to save trained models when training. save_step: 10000 # The frequency to fetch and print output when training. print_step: 100 # path of the checkpoint, to resume the previous training init_from_checkpoint: "" # path of the pretrain model, to better solve the current task init_from_pretrain_model: "" # path of trained parameter, to make prediction init_from_params: "trained_params/step_100000" save_model_path: "" # the directory for saving checkpoints. save_checkpoint: "trained_ckpts" # the directory for saving trained parameters. save_param: "trained_params" # the directory for saving inference model. inference_model_dir: "infer_model" # Set seed for CE or debug random_seed: None # The pattern to match training data files. training_file: "wmt16_ende_data_bpe/train.tok.clean.bpe.32000.en-de" # The pattern to match test data files. predict_file: "wmt16_ende_data_bpe/newstest2016.tok.bpe.32000.en-de" # The file to output the translation results of predict_file to. output_file: "predict.txt" # The path of vocabulary file of source language. src_vocab_fpath: "wmt16_ende_data_bpe/vocab_all.bpe.32000" # The path of vocabulary file of target language. trg_vocab_fpath: "wmt16_ende_data_bpe/vocab_all.bpe.32000" # The , and tokens in the dictionary. special_token: ["", "", ""] # whether to use cuda use_cuda: True # args for reader, see reader.py for details token_delimiter: " " use_token_batch: True pool_size: 200000 sort_type: "pool" shuffle: True shuffle_batch: True batch_size: 4096 # Hyparams for training: # the number of epoches for training epoch: 30 # the hyper parameters for Adam optimizer. # This static learning_rate will be multiplied to the LearningRateScheduler # derived learning rate the to get the final learning rate. learning_rate: 2.0 beta1: 0.9 beta2: 0.997 eps: 1e-9 # the parameters for learning rate scheduling. warmup_steps: 8000 # the weight used to mix up the ground-truth distribution and the fixed # uniform distribution in label smoothing when training. # Set this as zero if label smoothing is not wanted. label_smooth_eps: 0.1 # Hyparams for generation: # the parameters for beam search. beam_size: 5 max_out_len: 256 # the number of decoded sentences to output. n_best: 1 # Hyparams for model: # These following five vocabularies related configurations will be set # automatically according to the passed vocabulary path and special tokens. # size of source word dictionary. src_vocab_size: 10000 # size of target word dictionay trg_vocab_size: 10000 # index for token bos_idx: 0 # index for token eos_idx: 1 # index for token unk_idx: 2 # max length of sequences deciding the size of position encoding table. max_length: 256 # the dimension for word embeddings, which is also the last dimension of # the input and output of multi-head attention, position-wise feed-forward # networks, encoder and decoder. d_model: 512 # size of the hidden layer in position-wise feed-forward networks. d_inner_hid: 2048 # the dimension that keys are projected to for dot-product attention. d_key: 64 # the dimension that values are projected to for dot-product attention. d_value: 64 # number of head used in multi-head attention. n_head: 8 # number of sub-layers to be stacked in the encoder and decoder. n_layer: 6 # dropout rates of different modules. prepostprocess_dropout: 0.1 attention_dropout: 0.1 relu_dropout: 0.1 # to process before each sub-layer preprocess_cmd: "n" # layer normalization # to process after each sub-layer postprocess_cmd: "da" # dropout + residual connection # the flag indicating whether to share embedding and softmax weights. # vocabularies in source and target should be same for weight sharing. weight_sharing: True