{ "model_save_dir": "models", "model_save_name": "linkage_un_data_en_fine_coarse", "opt_model_description": "This model was trained on a dataset prepared by linking product classifications from [UN stats](https://unstats.un.org/unsd/classifications/Econ). \n This model is designed to link different products to their coarse product classification - trained on variation brought on by product level correspondance. It was trained for 70 epochs using other defaults that can be found in the repo's LinkTransformer config file - LT_training_config.json \n ", "opt_model_lang": "en", "train_batch_size": 64, "num_epochs": 70, "warm_up_perc": 1, "learning_rate": 2e-05, "loss_type": "supcon", "val_perc": 0.2, "wandb_names": { "project": "linkage", "id": "econabhishek", "run": "linkage_un_data_en_fine_coarse", "entity": "econabhishek" }, "add_pooling_layer": false, "large_val": true, "eval_steps_perc": 0.5, "test_at_end": true, "save_val_test_pickles": true, "val_query_prop": 0.5, "loss_params": {}, "eval_type": "retrieval", "training_dataset": "dataframe", "base_model_path": "multi-qa-mpnet-base-dot-v1", "best_model_path": "models/linkage_un_data_en_fine_coarse" }