import json from typing import Dict, List, Optional, Union import os from dataclasses import dataclass from datetime import datetime from pathlib import Path @dataclass class QA: question: str answer: Optional[str] evidence: List[str] category: Optional[int] = None adversarial_answer: Optional[str] = None @property def final_answer(self) -> Optional[str]: """Get the appropriate answer based on category.""" if self.category == 5: return self.adversarial_answer return self.answer @dataclass class Turn: speaker: str dia_id: str text: str @dataclass class Session: session_id: int date_time: str turns: List[Turn] @dataclass class Conversation: speaker_a: str speaker_b: str sessions: Dict[int, Session] @dataclass class EventSummary: events: Dict[str, Dict[str, List[str]]] # session -> speaker -> events @dataclass class Observation: observations: Dict[str, Dict[str, List[List[str]]]] # session -> speaker -> [observation, evidence] @dataclass class LoCoMoSample: """A single sample from the LoComo dataset""" sample_id: str qa: List[QA] conversation: Conversation event_summary: EventSummary observation: Observation session_summary: Dict[str, str] def parse_session(session_data: List[dict], session_id: int, date_time: str) -> Session: """Parse a single session's data, including turns with images by using their captions.""" turns = [] for turn in session_data: # For turns with images, combine caption and text text = turn.get("text", "") if "img_url" in turn and "blip_caption" in turn: caption_text = f"[Image: {turn['blip_caption']}]" if text: text = f"{caption_text} {text}" else: text = caption_text turns.append(Turn( speaker=turn["speaker"], dia_id=turn["dia_id"], text=text )) return Session(session_id=session_id, date_time=date_time, turns=turns) def parse_conversation(conv_data: dict) -> Conversation: """Parse conversation data.""" sessions = {} for key, value in conv_data.items(): if key.startswith("session_") and isinstance(value, list): session_id = int(key.split("_")[1]) date_time = conv_data.get(f"{key}_date_time") if date_time: session = parse_session(value, session_id, date_time) # Only add sessions that have turns after filtering if session.turns: sessions[session_id] = session return Conversation( speaker_a=conv_data["speaker_a"], speaker_b=conv_data["speaker_b"], sessions=sessions ) def load_locomo_dataset(file_path: Union[str, Path]) -> List[LoCoMoSample]: """ Load the LoComo dataset from a JSON file, including image-based content by using captions. Args: file_path: Path to the JSON file containing the dataset Returns: List of LoCoMoSample objects containing the parsed data """ if isinstance(file_path, str): file_path = Path(file_path) if not file_path.exists(): raise FileNotFoundError(f"Dataset file not found at {file_path}") with open(file_path, 'r', encoding='utf-8') as f: data = json.load(f) samples = [] total_qa = 0 total_image_qa = 0 qa_counts_per_sample = [] for sample_idx, sample in enumerate(data): try: # Parse QA data qa_list = [] sample_qa_count = 0 sample_image_qa_count = 0 for qa_idx, qa in enumerate(sample["qa"]): try: # Check if QA has image evidence has_image_evidence = False for evidence_id in qa.get("evidence", []): if ":" not in evidence_id: continue turn_id = evidence_id.split(":")[1] for session in sample["conversation"].values(): if isinstance(session, list): for turn in session: if turn.get("dia_id", "").endswith(turn_id): if "img_url" in turn or "blip_caption" in turn: has_image_evidence = True break if has_image_evidence: sample_image_qa_count += 1 qa_obj = QA( question=qa["question"], answer=qa.get("answer"), evidence=qa.get("evidence", []), category=qa.get("category"), adversarial_answer=qa.get("adversarial_answer") ) qa_list.append(qa_obj) sample_qa_count += 1 except KeyError as e: print(f"Error in sample {sample_idx}, QA pair {qa_idx}:") print(f"QA data: {qa}") raise e except Exception as e: print(f"Unexpected error in sample {sample_idx}, QA pair {qa_idx}:") print(f"QA data: {qa}") raise e # Parse conversation conversation = parse_conversation(sample["conversation"]) # Parse event summary event_summary = EventSummary(events=sample["event_summary"]) # Parse observation observation = Observation(observations=sample["observation"]) # Get session summary session_summary = sample.get("session_summary", {}) # Create sample object sample_obj = LoCoMoSample( sample_id=str(sample_idx), qa=qa_list, conversation=conversation, event_summary=event_summary, observation=observation, session_summary=session_summary ) samples.append(sample_obj) total_qa += sample_qa_count total_image_qa += sample_image_qa_count qa_counts_per_sample.append(sample_qa_count) # Print statistics for this sample print(f"\nSample {sample_idx}:") print(f" Total QAs: {sample_qa_count}") print(f" QAs with image evidence: {sample_image_qa_count}") except Exception as e: print(f"Error processing sample {sample_idx}:") print(str(e)) raise e # Print overall statistics print("\nOverall Statistics:") print(f"Total QAs: {total_qa}") print(f"Total QAs with image evidence: {total_image_qa}") print(f"Average QAs per sample: {total_qa / len(samples):.2f}") print(f"Min QAs in a sample: {min(qa_counts_per_sample)}") print(f"Max QAs in a sample: {max(qa_counts_per_sample)}") return samples def get_dataset_statistics(samples: List[LoCoMoSample]) -> Dict: """ Get basic statistics about the text-only dataset. Args: samples: List of LoCoMoSample objects Returns: Dictionary containing various statistics about the dataset """ stats = { "num_samples": len(samples), "total_qa_pairs": sum(len(sample.qa) for sample in samples), "total_sessions": sum(len(sample.conversation.sessions) for sample in samples), "total_turns": sum( sum(len(session.turns) for session in sample.conversation.sessions.values()) for sample in samples ), "qa_with_adversarial": sum( sum(1 for qa in sample.qa if qa.adversarial_answer is not None) for sample in samples ) } return stats if __name__ == "__main__": # Example usage dataset_path = Path(__file__).parent / "data" / "locomo10.json" try: print(f"Loading dataset from: {dataset_path}") samples = load_locomo_dataset(dataset_path) for sample_idx, sample in enumerate(samples): print(f"\nSample {sample_idx}:") for _,turns in sample.conversation.sessions.items(): for turn in turns.turns: print(turn) break # stats = get_dataset_statistics(samples) # print("\nDataset Statistics (Text-only content):") # for key, value in stats.items(): # print(f"{key}: {value}") # print(len(samples)) # for sample in samples: # print(sample) # break except Exception as e: print(f"Error loading dataset: {e}") raise