| local env = import "../env.jsonnet"; | |
| local dataset_path = env.str("DATA_PATH", "data/ace/events"); | |
| local ontology_path = "data/ace/ontology.tsv"; | |
| local debug = false; | |
| # embedding | |
| local label_dim = 64; | |
| local pretrained_model = env.str("ENCODER", "roberta-large"); | |
| # module | |
| local dropout = 0.2; | |
| local bio_dim = 512; | |
| local bio_layers = 2; | |
| local span_typing_dims = [256, 256]; | |
| local event_smoothing_factor = env.json("SMOOTHING", "0.0"); | |
| local arg_smoothing_factor = env.json("SMOOTHING", "0.0"); | |
| local layer_fix = 0; | |
| # training | |
| local typing_loss_factor = 8.0; | |
| local grad_acc = env.json("GRAD_ACC", "1"); | |
| local max_training_tokens = 512; | |
| local max_inference_tokens = 1024; | |
| local lr = env.json("LR", "1e-3"); | |
| local cuda_devices = env.json("CUDA_DEVICES", "[0]"); | |
| { | |
| dataset_reader: { | |
| type: "concrete", | |
| debug: debug, | |
| pretrained_model: pretrained_model, | |
| ignore_label: false, | |
| [ if debug then "max_instances" ]: 128, | |
| event_smoothing_factor: event_smoothing_factor, | |
| arg_smoothing_factor: event_smoothing_factor, | |
| }, | |
| train_data_path: dataset_path + "/train.tar.gz", | |
| validation_data_path: dataset_path + "/dev.tar.gz", | |
| test_data_path: dataset_path + "/test.tar.gz", | |
| datasets_for_vocab_creation: ["train"], | |
| data_loader: { | |
| batch_sampler: { | |
| type: "max_tokens_sampler", | |
| max_tokens: max_training_tokens, | |
| sorting_keys: ['tokens'] | |
| } | |
| }, | |
| validation_data_loader: { | |
| batch_sampler: { | |
| type: "max_tokens_sampler", | |
| max_tokens: max_inference_tokens, | |
| sorting_keys: ['tokens'] | |
| } | |
| }, | |
| model: { | |
| type: "span", | |
| word_embedding: { | |
| token_embedders: { | |
| "pieces": { | |
| type: "pretrained_transformer", | |
| model_name: pretrained_model, | |
| } | |
| }, | |
| }, | |
| span_extractor: { | |
| type: 'combo', | |
| sub_extractors: [ | |
| { | |
| type: 'self_attentive', | |
| }, | |
| { | |
| type: 'bidirectional_endpoint', | |
| } | |
| ] | |
| }, | |
| span_finder: { | |
| type: "bio", | |
| bio_encoder: { | |
| type: "lstm", | |
| hidden_size: bio_dim, | |
| num_layers: bio_layers, | |
| bidirectional: true, | |
| dropout: dropout, | |
| }, | |
| no_label: false, | |
| }, | |
| span_typing: { | |
| type: 'mlp', | |
| hidden_dims: span_typing_dims, | |
| }, | |
| metrics: [{type: "srl"}], | |
| ontology_path: ontology_path, | |
| typing_loss_factor: typing_loss_factor, | |
| label_dim: label_dim, | |
| max_decoding_spans: 128, | |
| max_recursion_depth: 2, | |
| debug: debug, | |
| }, | |
| trainer: { | |
| num_epochs: 128, | |
| patience: null, | |
| [if std.length(cuda_devices) == 1 then "cuda_device"]: cuda_devices[0], | |
| validation_metric: "+arg-c_f", | |
| num_gradient_accumulation_steps: grad_acc, | |
| optimizer: { | |
| type: "transformer", | |
| base: { | |
| type: "adam", | |
| lr: lr, | |
| }, | |
| embeddings_lr: 0.0, | |
| encoder_lr: 1e-5, | |
| pooler_lr: 1e-5, | |
| layer_fix: layer_fix, | |
| } | |
| }, | |
| cuda_devices:: cuda_devices, | |
| [if std.length(cuda_devices) > 1 then "distributed"]: { | |
| "cuda_devices": cuda_devices | |
| }, | |
| [if std.length(cuda_devices) == 1 then "evaluate_on_test"]: true, | |
| } | |