from __future__ import annotations import os import pandas as pd df_news = pd.read_csv( "scripts/mind/data/MINDsmall_train/news.tsv", sep="\t", header=None ) df_news = df_news[[0, 3]] df_news.columns = ["id", "text"] df_news.index = df_news["id"] df_behaviours = pd.read_csv( "scripts/mind/data/MINDsmall_train/behaviors.tsv", sep="\t", header=None ) df_behaviours = df_behaviours[[0, 3, 4]] df_behaviours.columns = ["id", "query", "data"] df_behaviours.dropna(inplace=True) # df_behaviours = df_behaviours.iloc[:10] def proc_row(row): docs = row["data"].split() positives, negatives = [], [] for doc in docs: idx, label = doc.split("-") if label == "1": positives.append(idx) elif label == "0": negatives.append(idx) else: raise Exception("Unknown label: {}".format(label)) row["positive"] = [df_news.loc[idx]["text"] for idx in positives] row["negative"] = [df_news.loc[idx]["text"] for idx in negatives] queries = row["query"].split() row["query"] = [df_news.loc[idx]["text"] for idx in queries] return row df_behaviours = df_behaviours.apply(proc_row, axis=1) df_behaviours.drop(columns=["data"], inplace=True) print(df_behaviours) path = "mind" os.makedirs(path, exist_ok=True) df_behaviours.to_json(f"{path}/train.jsonl", orient="records", lines=True)