| import numpy as np |
| import random |
| import torch |
|
|
| from tqdm import tqdm |
| from transformers import AutoTokenizer |
| from utils.classifier_model import SchemaItemClassifier |
| from transformers.trainer_utils import set_seed |
|
|
| def prepare_inputs_and_labels(sample, tokenizer): |
| table_names = [table["table_name"] for table in sample["schema"]["schema_items"]] |
| column_names = [table["column_names"] for table in sample["schema"]["schema_items"]] |
| column_num_in_each_table = [len(table["column_names"]) for table in sample["schema"]["schema_items"]] |
|
|
| |
| column_name_word_indices, table_name_word_indices = [], [] |
| |
| input_words = [sample["text"]] |
| for table_id, table_name in enumerate(table_names): |
| input_words.append("|") |
| input_words.append(table_name) |
| table_name_word_indices.append(len(input_words) - 1) |
| input_words.append(":") |
| |
| for column_name in column_names[table_id]: |
| input_words.append(column_name) |
| column_name_word_indices.append(len(input_words) - 1) |
| input_words.append(",") |
| |
| |
| input_words = input_words[:-1] |
|
|
| tokenized_inputs = tokenizer( |
| input_words, |
| return_tensors="pt", |
| is_split_into_words = True, |
| padding = "max_length", |
| max_length = 512, |
| truncation = True |
| ) |
|
|
| |
| |
| column_name_token_indices, table_name_token_indices = [], [] |
| word_indices = tokenized_inputs.word_ids(batch_index = 0) |
|
|
| |
| for column_name_word_index in column_name_word_indices: |
| column_name_token_indices.append([token_id for token_id, word_index in enumerate(word_indices) if column_name_word_index == word_index]) |
|
|
| |
| for table_name_word_index in table_name_word_indices: |
| table_name_token_indices.append([token_id for token_id, word_index in enumerate(word_indices) if table_name_word_index == word_index]) |
|
|
| encoder_input_ids = tokenized_inputs["input_ids"] |
| encoder_input_attention_mask = tokenized_inputs["attention_mask"] |
|
|
| |
|
|
| if torch.cuda.is_available(): |
| encoder_input_ids = encoder_input_ids.cuda() |
| encoder_input_attention_mask = encoder_input_attention_mask.cuda() |
|
|
| return encoder_input_ids, encoder_input_attention_mask, \ |
| column_name_token_indices, table_name_token_indices, column_num_in_each_table |
|
|
| def get_schema(tables_and_columns): |
| schema_items = [] |
| table_names = list(dict.fromkeys([t for t, c in tables_and_columns])) |
| for table_name in table_names: |
| schema_items.append( |
| { |
| "table_name": table_name, |
| "column_names": [c for t, c in tables_and_columns if t == table_name] |
| } |
| ) |
| |
| return {"schema_items": schema_items} |
|
|
| def get_sequence_length(text, tables_and_columns, tokenizer): |
| table_names = [t for t, c in tables_and_columns] |
| |
| table_names = list(dict.fromkeys(table_names)) |
| |
| column_names = [] |
| for table_name in table_names: |
| column_names.append([c for t, c in tables_and_columns if t == table_name]) |
| |
| input_words = [text] |
| for table_id, table_name in enumerate(table_names): |
| input_words.append("|") |
| input_words.append(table_name) |
| input_words.append(":") |
| for column_name in column_names[table_id]: |
| input_words.append(column_name) |
| input_words.append(",") |
| |
| input_words = input_words[:-1] |
|
|
| tokenized_inputs = tokenizer(input_words, is_split_into_words = True) |
|
|
| return len(tokenized_inputs["input_ids"]) |
|
|
| |
| def split_sample(sample, tokenizer): |
| text = sample["text"] |
|
|
| table_names = [] |
| column_names = [] |
| for table in sample["schema"]["schema_items"]: |
| table_names.append(table["table_name"] + " ( " + table["table_comment"] + " ) " \ |
| if table["table_comment"] != "" else table["table_name"]) |
| column_names.append([column_name + " ( " + column_comment + " ) " \ |
| if column_comment != "" else column_name \ |
| for column_name, column_comment in zip(table["column_names"], table["column_comments"])]) |
|
|
| splitted_samples = [] |
| recorded_tables_and_columns = [] |
|
|
| for table_idx, table_name in enumerate(table_names): |
| for column_name in column_names[table_idx]: |
| if get_sequence_length(text, recorded_tables_and_columns + [[table_name, column_name]], tokenizer) < 500: |
| recorded_tables_and_columns.append([table_name, column_name]) |
| else: |
| splitted_samples.append( |
| { |
| "text": text, |
| "schema": get_schema(recorded_tables_and_columns) |
| } |
| ) |
| recorded_tables_and_columns = [[table_name, column_name]] |
| |
| splitted_samples.append( |
| { |
| "text": text, |
| "schema": get_schema(recorded_tables_and_columns) |
| } |
| ) |
|
|
| return splitted_samples |
|
|
| def merge_pred_results(sample, pred_results): |
| |
| |
| table_names = [] |
| column_names = [] |
| for table in sample["schema"]["schema_items"]: |
| table_names.append(table["table_name"] + " ( " + table["table_comment"] + " ) " \ |
| if table["table_comment"] != "" else table["table_name"]) |
| column_names.append([column_name + " ( " + column_comment + " ) " \ |
| if column_comment != "" else column_name \ |
| for column_name, column_comment in zip(table["column_names"], table["column_comments"])]) |
|
|
| merged_results = [] |
| for table_id, table_name in enumerate(table_names): |
| table_prob = 0 |
| column_probs = [] |
| for result_dict in pred_results: |
| if table_name in result_dict: |
| if table_prob < result_dict[table_name]["table_prob"]: |
| table_prob = result_dict[table_name]["table_prob"] |
| column_probs += result_dict[table_name]["column_probs"] |
|
|
| merged_results.append( |
| { |
| "table_name": table_name, |
| "table_prob": table_prob, |
| "column_names": column_names[table_id], |
| "column_probs": column_probs |
| } |
| ) |
| |
| return merged_results |
|
|
| def filter_func(dataset, dataset_type, sic, num_top_k_tables = 5, num_top_k_columns = 5): |
| for data in tqdm(dataset, desc = "filtering schema items for the dataset"): |
| filtered_schema = dict() |
| filtered_schema["schema_items"] = [] |
|
|
| table_names = [table["table_name"] for table in data["schema"]["schema_items"]] |
| table_comments = [table["table_comment"] for table in data["schema"]["schema_items"]] |
| column_names = [table["column_names"] for table in data["schema"]["schema_items"]] |
| column_comments = [table["column_comments"] for table in data["schema"]["schema_items"]] |
|
|
| if dataset_type == "eval": |
| |
| pred_results = sic.predict(data) |
| |
| table_probs = [pred_result["table_prob"] for pred_result in pred_results] |
| table_indices = np.argsort(-np.array(table_probs), kind="stable")[:num_top_k_tables].tolist() |
| elif dataset_type == "train": |
| table_indices = [table_idx for table_idx, table_label in enumerate(data["table_labels"]) if table_label == 1] |
| if len(table_indices) < num_top_k_tables: |
| unused_table_indices = [table_idx for table_idx, table_label in enumerate(data["table_labels"]) if table_label == 0] |
| table_indices += random.sample(unused_table_indices, min(len(unused_table_indices), num_top_k_tables - len(table_indices))) |
| random.shuffle(table_indices) |
|
|
| for table_idx in table_indices: |
| if dataset_type == "eval": |
| column_probs = pred_results[table_idx]["column_probs"] |
| column_indices = np.argsort(-np.array(column_probs), kind="stable")[:num_top_k_columns].tolist() |
| elif dataset_type == "train": |
| column_indices = [column_idx for column_idx, column_label in enumerate(data["column_labels"][table_idx]) if column_label == 1] |
| if len(column_indices) < num_top_k_columns: |
| unused_column_indices = [column_idx for column_idx, column_label in enumerate(data["column_labels"][table_idx]) if column_label == 0] |
| column_indices += random.sample(unused_column_indices, min(len(unused_column_indices), num_top_k_columns - len(column_indices))) |
| random.shuffle(column_indices) |
|
|
| filtered_schema["schema_items"].append( |
| { |
| "table_name": table_names[table_idx], |
| "table_comment": table_comments[table_idx], |
| "column_names": [column_names[table_idx][column_idx] for column_idx in column_indices], |
| "column_comments": [column_comments[table_idx][column_idx] for column_idx in column_indices] |
| } |
| ) |
|
|
| |
| data["schema"] = filtered_schema |
|
|
| if dataset_type == "train": |
| del data["table_labels"] |
| del data["column_labels"] |
| |
| return dataset |
|
|
| def lista_contains_listb(lista, listb): |
| for b in listb: |
| if b not in lista: |
| return 0 |
| |
| return 1 |
|
|
| class SchemaItemClassifierInference(): |
| def __init__(self, model_save_path): |
| set_seed(42) |
| |
| self.tokenizer = AutoTokenizer.from_pretrained(model_save_path, add_prefix_space = True) |
| |
| self.model = SchemaItemClassifier(model_save_path, "test") |
| |
| self.model.load_state_dict(torch.load(model_save_path + "/dense_classifier.pt", map_location=torch.device('cpu')), strict=False) |
| if torch.cuda.is_available(): |
| self.model = self.model.cuda() |
| self.model.eval() |
| |
| def predict_one(self, sample): |
| encoder_input_ids, encoder_input_attention_mask, column_name_token_indices,\ |
| table_name_token_indices, column_num_in_each_table = prepare_inputs_and_labels(sample, self.tokenizer) |
|
|
| with torch.no_grad(): |
| model_outputs = self.model( |
| encoder_input_ids, |
| encoder_input_attention_mask, |
| [column_name_token_indices], |
| [table_name_token_indices], |
| [column_num_in_each_table] |
| ) |
|
|
| table_logits = model_outputs["batch_table_name_cls_logits"][0] |
| table_pred_probs = torch.nn.functional.softmax(table_logits, dim = 1)[:, 1].cpu().tolist() |
| |
| column_logits = model_outputs["batch_column_info_cls_logits"][0] |
| column_pred_probs = torch.nn.functional.softmax(column_logits, dim = 1)[:, 1].cpu().tolist() |
|
|
| splitted_column_pred_probs = [] |
| |
| for table_id, column_num in enumerate(column_num_in_each_table): |
| splitted_column_pred_probs.append(column_pred_probs[sum(column_num_in_each_table[:table_id]): sum(column_num_in_each_table[:table_id]) + column_num]) |
| column_pred_probs = splitted_column_pred_probs |
|
|
| result_dict = dict() |
| for table_idx, table in enumerate(sample["schema"]["schema_items"]): |
| result_dict[table["table_name"]] = { |
| "table_name": table["table_name"], |
| "table_prob": table_pred_probs[table_idx], |
| "column_names": table["column_names"], |
| "column_probs": column_pred_probs[table_idx], |
| } |
|
|
| return result_dict |
|
|
| def predict(self, test_sample): |
| splitted_samples = split_sample(test_sample, self.tokenizer) |
| pred_results = [] |
| for splitted_sample in splitted_samples: |
| pred_results.append(self.predict_one(splitted_sample)) |
| |
| return merge_pred_results(test_sample, pred_results) |
| |
| def evaluate_coverage(self, dataset): |
| max_k = 100 |
| total_num_for_table_coverage, total_num_for_column_coverage = 0, 0 |
| table_coverage_results = [0]*max_k |
| column_coverage_results = [0]*max_k |
|
|
| for data in dataset: |
| indices_of_used_tables = [idx for idx, label in enumerate(data["table_labels"]) if label == 1] |
| pred_results = sic.predict(data) |
| |
| table_probs = [res["table_prob"] for res in pred_results] |
| for k in range(max_k): |
| indices_of_top_k_tables = np.argsort(-np.array(table_probs), kind="stable")[:k+1].tolist() |
| if lista_contains_listb(indices_of_top_k_tables, indices_of_used_tables): |
| table_coverage_results[k] += 1 |
| total_num_for_table_coverage += 1 |
|
|
| for table_idx in range(len(data["table_labels"])): |
| indices_of_used_columns = [idx for idx, label in enumerate(data["column_labels"][table_idx]) if label == 1] |
| if len(indices_of_used_columns) == 0: |
| continue |
| column_probs = pred_results[table_idx]["column_probs"] |
| for k in range(max_k): |
| indices_of_top_k_columns = np.argsort(-np.array(column_probs), kind="stable")[:k+1].tolist() |
| if lista_contains_listb(indices_of_top_k_columns, indices_of_used_columns): |
| column_coverage_results[k] += 1 |
|
|
| total_num_for_column_coverage += 1 |
|
|
| indices_of_top_10_columns = np.argsort(-np.array(column_probs), kind="stable")[:10].tolist() |
| if lista_contains_listb(indices_of_top_10_columns, indices_of_used_columns) == 0: |
| print(pred_results[table_idx]) |
| print(data["column_labels"][table_idx]) |
| print(data["question"]) |
|
|
| print(total_num_for_table_coverage) |
| print(table_coverage_results) |
| print(total_num_for_column_coverage) |
| print(column_coverage_results) |
| |
| if __name__ == "__main__": |
| dataset_name = "bird_with_evidence" |
| |
| |
| sic = SchemaItemClassifierInference("sic_ckpts/sic_{}".format(dataset_name)) |
| import json |
| dataset = json.load(open("./data/sft_eval_{}_text2sql.json".format(dataset_name))) |
| |
| sic.evaluate_coverage(dataset) |