EXP_NAME: "semsup_descs_100ep_newds_cosine" EXP_DESC: "SemSup Descriptions ran for 100 epochs" DATA: task_name: wiki1m dataset_name: wiki1m dataset_config_name: null max_seq_length: 512 overwrite_output_dir: false # Set to false, if using one_hour_job overwrite_cache: false pad_to_max_length: true load_from_local: true max_train_samples: null max_eval_samples: null max_predict_samples: null train_file: datasets/Wiki1M/train.jsonl validation_file: datasets/Wiki1M/test_unseen.jsonl test_file: datasets/Wiki1M/test_unseen.jsonl label_max_seq_length: 96 # For names baseline # descriptions_file: datasets/Wiki1M/amzn_curie_descsriptions.json # descriptions_file: datasets/Wiki1M/ner_desc.json descriptions_file: datasets/Wiki1M/wiki_all_final_descs_fixed_dedup.json all_labels : datasets/Wiki1M/all_labels.txt test_labels: datasets/Wiki1M/unseen_labels.txt large_dset: true # tokenized_descs_file: datasets/Wiki1M/tokenized_ner_descs_final_new.npy tokenized_descs_file: datasets/Wiki1M/tokenized_ner_descs_final_fixed_dedup96.npy # train_tfidf_short: datasets/Wiki1M/train_shortlists_4K_fixed.h5 train_tfidf_short: datasets/Wiki1M/train_shortlists_4K_1000.h5 # test_tfidf_short: datasets/Wiki1M/test_unseen_shortlists_4K.h5 test_tfidf_short: datasets/Wiki1M/test_unseen_shortlists_4K_fixed.h5 tok_format: 1 # max_descs_per_label: 5 # contrastive_learning_samples: 1000 # cl_min_positive_descs: 1 # bm_short_file: datasets/eurlex4.3k/train_bmshort.txt # ignore_pos_labels_file: datasets/Amzn13K/ignore_train_split6500_fs5.txt coil_cluster_mapping_path: bert_coil_map_dict_lemma255K_isotropic.json MODEL: model_name_or_path: bert-base-uncased # pretrained_model_path: output/semsup_descs_amzn13k_web_6500_small/checkpoint-20000/pytorch_model.bin config_name: null tokenizer_name: null cache_dir: null use_fast_tokenizer: true model_revision: main use_auth_token: false ignore_mismatched_sizes: false negative_sampling: "none" semsup: true # label_model_name_or_path: bert-base-uncased # prajjwal1/bert-small label_model_name_or_path: prajjwal1/bert-small encoder_model_type: bert use_custom_optimizer: adamw output_learning_rate: 1.e-4 arch_type : 2 add_label_name: false normalize_embeddings: false tie_weights: false coil: true colbert: false # use_precomputed_embeddings: datasets/eurlex4.3k/heir_withdescriptions_4.3k_v1_embs_bert_9_96.npy token_dim: 16 label_frozen_layers: 2 TRAINING: do_train: true do_eval: true do_predict: false per_device_train_batch_size: 2 gradient_accumulation_steps: 4 per_device_eval_batch_size: 1 learning_rate: 5.e-5 # Will point to input encoder lr, if user_custom_optimizer is False num_train_epochs: 1 save_steps: 20000 evaluation_strategy: steps eval_steps: 5000 fp16: true fp16_opt_level: O1 lr_scheduler_type: "linear" # defaults to 'linear' dataloader_num_workers: 16 label_names: [labels] scenario: "unseen_labels" ddp_find_unused_parameters: false max_eval_samples: 15000 ignore_data_skip: true # one_hour_job: true