| | from zipfile import ZipFile, ZIP_DEFLATED |
| | import json |
| | import os |
| | import copy |
| | import zipfile |
| | from tqdm import tqdm |
| | import re |
| | from collections import Counter |
| | from shutil import rmtree |
| | from convlab.util.file_util import read_zipped_json, write_zipped_json |
| | from pprint import pprint |
| | import random |
| |
|
| |
|
| | descriptions = { |
| | "uber_lyft": { |
| | "uber_lyft": "order a car for a ride inside a city", |
| | "location.from": "pickup location", |
| | "location.to": "destination of the ride", |
| | "type.ride": "type of ride", |
| | "num.people": "number of people", |
| | "price.estimate": "estimated cost of the ride", |
| | "duration.estimate": "estimated duration of the ride", |
| | "time.pickup": "time of pickup", |
| | "time.dropoff": "time of dropoff", |
| | }, |
| | "movie_ticket": { |
| | "movie_ticket": "book movie tickets for a film", |
| | "name.movie": "name of the movie", |
| | "name.theater": "name of the theater", |
| | "num.tickets": "number of tickets", |
| | "time.start": "start time of the movie", |
| | "location.theater": "location of the theater", |
| | "price.ticket": "price of the ticket", |
| | "type.screening": "type of the screening", |
| | "time.end": "end time of the movie", |
| | "time.duration": "duration of the movie", |
| | }, |
| | "restaurant_reservation": { |
| | "restaurant_reservation": "searching for a restaurant and make reservation", |
| | "name.restaurant": "name of the restaurant", |
| | "name.reservation": "name of the person who make the reservation", |
| | "num.guests": "number of guests", |
| | "time.reservation": "time of the reservation", |
| | "type.seating": "type of the seating", |
| | "location.restaurant": "location of the restaurant", |
| | }, |
| | "coffee_ordering": { |
| | "coffee_ordering": "order a coffee drink from either Starbucks or Peets for pick up", |
| | "location.store": "location of the coffee store", |
| | "name.drink": "name of the drink", |
| | "size.drink": "size of the drink", |
| | "num.drink": "number of drinks", |
| | "type.milk": "type of the milk", |
| | "preference": "user preference of the drink", |
| | }, |
| | "pizza_ordering": { |
| | "pizza_ordering": "order a pizza", |
| | "name.store": "name of the pizza store", |
| | "name.pizza": "name of the pizza", |
| | "size.pizza": "size of the pizza", |
| | "type.topping": "type of the topping", |
| | "type.crust": "type of the crust", |
| | "preference": "user preference of the pizza", |
| | "location.store": "location of the pizza store", |
| | }, |
| | "auto_repair": { |
| | "auto_repair": "set up an auto repair appointment with a repair shop", |
| | "name.store": "name of the repair store", |
| | "name.customer": "name of the customer", |
| | "date.appt": "date of the appointment", |
| | "time.appt": "time of the appointment", |
| | "reason.appt": "reason of the appointment", |
| | "name.vehicle": "name of the vehicle", |
| | "year.vehicle": "year of the vehicle", |
| | "location.store": "location of the repair store", |
| | } |
| | } |
| |
|
| | def normalize_domain_name(domain): |
| | if domain == 'auto': |
| | return 'auto_repair' |
| | elif domain == 'pizza': |
| | return 'pizza_ordering' |
| | elif domain == 'coffee': |
| | return 'coffee_ordering' |
| | elif domain == 'uber': |
| | return 'uber_lyft' |
| | elif domain == 'restaurant': |
| | return 'restaurant_reservation' |
| | elif domain == 'movie': |
| | return 'movie_ticket' |
| | assert 0 |
| |
|
| |
|
| | def format_turns(ori_turns): |
| | |
| | new_turns = [] |
| | previous_speaker = None |
| | utt_idx = 0 |
| | for i, turn in enumerate(ori_turns): |
| | speaker = 'system' if turn['speaker'] == 'ASSISTANT' else 'user' |
| | turn['speaker'] = speaker |
| | if turn['text'] == '(deleted)': |
| | continue |
| | if not previous_speaker: |
| | |
| | assert speaker != previous_speaker |
| | if speaker != previous_speaker: |
| | |
| | previous_speaker = speaker |
| | new_turns.append(copy.deepcopy(turn)) |
| | utt_idx += 1 |
| | else: |
| | |
| | last_turn = new_turns[-1] |
| | |
| | if turn['text'] in ori_turns[i-1]['text']: |
| | continue |
| | |
| | index_shift = len(last_turn['text']) + 1 |
| | last_turn['text'] += ' '+turn['text'] |
| | if 'segments' in turn: |
| | last_turn.setdefault('segments', []) |
| | for segment in turn['segments']: |
| | segment['start_index'] += index_shift |
| | segment['end_index'] += index_shift |
| | last_turn['segments'] += turn['segments'] |
| | return new_turns |
| |
|
| |
|
| | def preprocess(): |
| | original_data_dir = 'Taskmaster-master' |
| | new_data_dir = 'data' |
| |
|
| | if not os.path.exists(original_data_dir): |
| | original_data_zip = 'master.zip' |
| | if not os.path.exists(original_data_zip): |
| | raise FileNotFoundError(f'cannot find original data {original_data_zip} in tm1/, should manually download master.zip from https://github.com/google-research-datasets/Taskmaster/archive/refs/heads/master.zip') |
| | else: |
| | archive = ZipFile(original_data_zip) |
| | archive.extractall() |
| |
|
| | os.makedirs(new_data_dir, exist_ok=True) |
| |
|
| | ontology = {'domains': {}, |
| | 'intents': { |
| | 'inform': {'description': 'inform the value of a slot or general information.'}, |
| | 'accept': {'description': 'accept the value of a slot or a transaction'}, |
| | 'reject': {'description': 'reject the value of a slot or a transaction'} |
| | }, |
| | 'state': {}, |
| | 'dialogue_acts': { |
| | "categorical": {}, |
| | "non-categorical": {}, |
| | "binary": {} |
| | }} |
| | global descriptions |
| | ori_ontology = {} |
| | for _, item in json.load(open(os.path.join(original_data_dir, "TM-1-2019/ontology.json"))).items(): |
| | ori_ontology[item["id"]] = item |
| | |
| | for domain, item in ori_ontology.items(): |
| | ontology['domains'][domain] = {'description': descriptions[domain][domain], 'slots': {}} |
| | ontology['state'][domain] = {} |
| | for slot in item['required']+item['optional']: |
| | ontology['domains'][domain]['slots'][slot] = { |
| | 'description': descriptions[domain][slot], |
| | 'is_categorical': False, |
| | 'possible_values': [], |
| | } |
| | ontology['state'][domain][slot] = '' |
| |
|
| | dataset = 'tm1' |
| | splits = ['train', 'validation', 'test'] |
| | dialogues_by_split = {split:[] for split in splits} |
| | dialog_files = ["TM-1-2019/self-dialogs.json", "TM-1-2019/woz-dialogs.json"] |
| | for file_idx, filename in enumerate(dialog_files): |
| | data = json.load(open(os.path.join(original_data_dir, filename))) |
| | if file_idx == 0: |
| | |
| | dial_id2split = {} |
| | for data_split in ['train', 'dev', 'test']: |
| | with open(os.path.join(original_data_dir, f"TM-1-2019/train-dev-test/{data_split}.csv")) as f: |
| | for line in f: |
| | dial_id = line.split(',')[0] |
| | dial_id2split[dial_id] = data_split if data_split != 'dev' else 'validation' |
| | else: |
| | |
| | random.seed(42) |
| | dial_ids = [d['conversation_id'] for d in data] |
| | random.shuffle(dial_ids) |
| | dial_id2split = {} |
| | for dial_id in dial_ids[:int(0.8*len(dial_ids))]: |
| | dial_id2split[dial_id] = 'train' |
| | for dial_id in dial_ids[int(0.8*len(dial_ids)):int(0.9*len(dial_ids))]: |
| | dial_id2split[dial_id] = 'validation' |
| | for dial_id in dial_ids[int(0.9*len(dial_ids)):]: |
| | dial_id2split[dial_id] = 'test' |
| |
|
| | for d in tqdm(data, desc='processing taskmaster-{}'.format(filename)): |
| | |
| | if len(d['utterances']) == 0: |
| | continue |
| | if len(set([t['speaker'] for t in d['utterances']])) == 1: |
| | continue |
| | data_split = dial_id2split[d["conversation_id"]] |
| | dialogue_id = f'{dataset}-{data_split}-{len(dialogues_by_split[data_split])}' |
| | cur_domains = [normalize_domain_name(d["instruction_id"].split('-', 1)[0])] |
| | assert len(cur_domains) == 1 and cur_domains[0] in ontology['domains'] |
| | domain = cur_domains[0] |
| | dialogue = { |
| | 'dataset': dataset, |
| | 'data_split': data_split, |
| | 'dialogue_id': dialogue_id, |
| | 'original_id': d["conversation_id"], |
| | 'domains': cur_domains, |
| | 'turns': [] |
| | } |
| | turns = format_turns(d['utterances']) |
| | prev_state = {} |
| | prev_state.setdefault(domain, copy.deepcopy(ontology['state'][domain])) |
| | |
| | for utt_idx, uttr in enumerate(turns): |
| | speaker = uttr['speaker'] |
| | turn = { |
| | 'speaker': speaker, |
| | 'utterance': uttr['text'], |
| | 'utt_idx': utt_idx, |
| | 'dialogue_acts': { |
| | 'binary': [], |
| | 'categorical': [], |
| | 'non-categorical': [], |
| | }, |
| | } |
| | in_span = [0] * len(turn['utterance']) |
| |
|
| | if 'segments' in uttr: |
| | |
| | segments = sorted(uttr['segments'], key=lambda x: len(x['text'])) |
| | for segment in segments: |
| | |
| | |
| | item = segment['annotations'][0] |
| | intent = 'inform' |
| | slot = item['name'].split('.', 1)[-1] |
| | if slot.endswith('.accept') or slot.endswith('.reject'): |
| | |
| | intent = slot[-6:] |
| | slot = slot[:-7] |
| | if slot not in ontology['domains'][domain]['slots']: |
| | |
| | turn['dialogue_acts']['binary'].append({ |
| | 'intent': intent, |
| | 'domain': domain, |
| | 'slot': '', |
| | }) |
| | else: |
| | assert turn['utterance'][segment['start_index']:segment['end_index']] == segment['text'] |
| | |
| | if sum(in_span[segment['start_index']: segment['end_index']]) > 0: |
| | continue |
| | else: |
| | in_span[segment['start_index']: segment['end_index']] = [1]*(segment['end_index']-segment['start_index']) |
| | turn['dialogue_acts']['non-categorical'].append({ |
| | 'intent': intent, |
| | 'domain': domain, |
| | 'slot': slot, |
| | 'value': segment['text'], |
| | 'start': segment['start_index'], |
| | 'end': segment['end_index'] |
| | }) |
| |
|
| | turn['dialogue_acts']['non-categorical'] = sorted(turn['dialogue_acts']['non-categorical'], key=lambda x: x['start']) |
| |
|
| | bdas = set() |
| | for da in turn['dialogue_acts']['binary']: |
| | da_tuple = (da['intent'], da['domain'], da['slot'],) |
| | bdas.add(da_tuple) |
| | turn['dialogue_acts']['binary'] = [{'intent':bda[0],'domain':bda[1],'slot':bda[2]} for bda in sorted(bdas)] |
| | |
| | for da_type in turn['dialogue_acts']: |
| | das = turn['dialogue_acts'][da_type] |
| | for da in das: |
| | ontology["dialogue_acts"][da_type].setdefault((da['intent'], da['domain'], da['slot']), {}) |
| | ontology["dialogue_acts"][da_type][(da['intent'], da['domain'], da['slot'])][speaker] = True |
| |
|
| | for da in turn['dialogue_acts']['non-categorical']: |
| | slot, value = da['slot'], da['value'] |
| | assert slot in prev_state[domain] |
| | |
| | if da['intent'] != 'reject': |
| | prev_state[domain][slot] = value |
| | |
| | if speaker == 'user': |
| | turn['state'] = copy.deepcopy(prev_state) |
| |
|
| | dialogue['turns'].append(turn) |
| | dialogues_by_split[data_split].append(dialogue) |
| | |
| | for da_type in ontology['dialogue_acts']: |
| | ontology["dialogue_acts"][da_type] = sorted([str({'user': speakers.get('user', False), 'system': speakers.get('system', False), 'intent':da[0],'domain':da[1], 'slot':da[2]}) for da, speakers in ontology["dialogue_acts"][da_type].items()]) |
| | dialogues = dialogues_by_split['train']+dialogues_by_split['validation']+dialogues_by_split['test'] |
| | json.dump(dialogues[:10], open(f'dummy_data.json', 'w', encoding='utf-8'), indent=2, ensure_ascii=False) |
| | json.dump(ontology, open(f'{new_data_dir}/ontology.json', 'w', encoding='utf-8'), indent=2, ensure_ascii=False) |
| | json.dump(dialogues, open(f'{new_data_dir}/dialogues.json', 'w', encoding='utf-8'), indent=2, ensure_ascii=False) |
| | with ZipFile('data.zip', 'w', ZIP_DEFLATED) as zf: |
| | for filename in os.listdir(new_data_dir): |
| | zf.write(f'{new_data_dir}/{filename}') |
| | rmtree(original_data_dir) |
| | rmtree(new_data_dir) |
| | return dialogues, ontology |
| |
|
| | if __name__ == '__main__': |
| | preprocess() |
| |
|