# coding=utf-8 import paddlepalm as palm import json if __name__ == '__main__': # configs max_seqlen = 128 batch_size = 16 num_epochs = 20 print_steps = 5 lr = 2e-5 num_classes = 130 weight_decay = 0.01 num_classes_intent = 26 dropout_prob = 0.1 random_seed = 0 label_map = './data/atis/atis_slot/label_map.json' vocab_path = './pretrain/ERNIE-v2-en-base/vocab.txt' train_slot = './data/atis/atis_slot/train.tsv' train_intent = './data/atis/atis_intent/train.tsv' predict_file = './data/atis/atis_slot/test.tsv' save_path = './outputs/' pred_output = './outputs/predict/' save_type = 'ckpt' pre_params = './pretrain/ERNIE-v2-en-base/params' config = json.load(open('./pretrain/ERNIE-v2-en-base/ernie_config.json')) input_dim = config['hidden_size'] # ----------------------- for training ----------------------- # step 1-1: create readers for training seq_label_reader = palm.reader.SequenceLabelReader(vocab_path, max_seqlen, label_map, seed=random_seed) cls_reader = palm.reader.ClassifyReader(vocab_path, max_seqlen, seed=random_seed) # step 1-2: load the training data seq_label_reader.load_data(train_slot, file_format='tsv', num_epochs=None, batch_size=batch_size) cls_reader.load_data(train_intent, batch_size=batch_size, num_epochs=None) # step 2: create a backbone of the model to extract text features ernie = palm.backbone.ERNIE.from_config(config) # step 3: register the backbone in readers seq_label_reader.register_with(ernie) cls_reader.register_with(ernie) # step 4: create task output heads seq_label_head = palm.head.SequenceLabel(num_classes, input_dim, dropout_prob) cls_head = palm.head.Classify(num_classes_intent, input_dim, dropout_prob) # step 5-1: create a task trainer trainer_seq_label = palm.Trainer("slot", mix_ratio=1.0) trainer_cls = palm.Trainer("intent", mix_ratio=1.0) trainer = palm.MultiHeadTrainer([trainer_seq_label, trainer_cls]) # # step 5-2: build forward graph with backbone and task head loss1 = trainer_cls.build_forward(ernie, cls_head) loss2 = trainer_seq_label.build_forward(ernie, seq_label_head) loss_var = trainer.build_forward() # step 6-1*: use warmup n_steps = seq_label_reader.num_examples * 1.5 * num_epochs // batch_size warmup_steps = int(0.1 * n_steps) sched = palm.lr_sched.TriangularSchedualer(warmup_steps, n_steps) # step 6-2: create a optimizer adam = palm.optimizer.Adam(loss_var, lr, sched) # step 6-3: build backward trainer.build_backward(optimizer=adam, weight_decay=weight_decay) # step 7: fit prepared reader and data trainer.fit_readers_with_mixratio([seq_label_reader, cls_reader], "slot", num_epochs) # step 8-1*: load pretrained parameters trainer.load_pretrain(pre_params) # step 8-2*: set saver to save model save_steps = int(n_steps-batch_size) // 2 # save_steps = 10 trainer.set_saver(save_path=save_path, save_steps=save_steps, save_type=save_type) # step 8-3: start training trainer.train(print_steps=print_steps)