Chatopus / app /law_document_chunker.py
VietCat's picture
update log to debug level
96d59ac
import re
import os
import uuid
from typing import List, Dict, Optional, Tuple, Any
from dataclasses import dataclass
from loguru import logger
from .supabase_db import SupabaseClient
from .embedding import EmbeddingClient
from .config import get_settings
@dataclass
class ChunkMetadata:
"""Metadata cho một chunk."""
id: str
content: str
vanbanid: int
cha: Optional[str] = None
document_title: str = ""
article_number: Optional[int] = None
article_title: str = ""
clause_number: str = ""
sub_clause_letter: str = ""
context_summary: str = ""
class LawDocumentChunker:
"""Module xử lý chunking văn bản luật và tích hợp với Supabase."""
def __init__(self):
"""Khởi tạo chunker với các regex patterns."""
settings = get_settings()
self.supabase_client = SupabaseClient(settings.supabase_url, settings.supabase_key)
self.embedding_client = EmbeddingClient()
self.llm_client: Optional[Any] = None
# Regex patterns cho các cấp độ cấu trúc - SỬA LẠI ĐỂ CHÍNH XÁC HƠN
# Đảm bảo mỗi pattern có đúng số group
self.PHAN_REGEX = r"^(Phần|PHẦN|Phần thứ)\s+(\d+|[IVXLCDM]+|nhất|hai|ba|tư|năm|sáu|bảy|tám|chín|mười)\.?\s*(.*)"
self.PHU_LUC_REGEX = r"^(Phụ lục|PHỤ LỤC)\s+(\d+|[A-Z]+)\.?\s*(.*)"
self.CHUONG_REGEX = r"^(Chương|CHƯƠNG)\s+(\d+|[IVXLCDM]+)\.?\s*(.*)"
self.MUC_REGEX = r"^(Mục|MỤC)\s+(\d+)\.?\s*(.*)"
self.DIEU_REGEX = r"^Điều\s+(\d+)\.\s*(.*)"
self.KHOAN_REGEX = r"^\s*(\d+(\.\d+)*)\.\s*(.*)"
self.DIEM_REGEX_A = r"^\s*([a-zđ])\)\s*(.*)"
self.DIEM_REGEX_NUM = r"^\s*(\d+\.\d+\.\d+)\.\s*(.*)"
# Cấu hình chunking
self.CHUNK_SIZE = 500
self.CHUNK_OVERLAP = 100
logger.info("[CHUNKER] Initialized LawDocumentChunker")
def _create_data_directory(self):
"""Tạo thư mục data nếu chưa tồn tại."""
data_dir = "data"
if not os.path.exists(data_dir): # noqa
os.makedirs(data_dir)
logger.info(f"[CHUNKER] Created directory: {data_dir}")
return data_dir
def _extract_document_title(self, file_path: str) -> str:
"""Trích xuất tiêu đề văn bản từ tên file."""
filename = os.path.basename(file_path)
# Loại bỏ extension
name_without_ext = os.path.splitext(filename)[0]
# Thay _ bằng khoảng trắng và viết hoa chữ cái đầu
title = name_without_ext.replace('_', ' ').title() # noqa
logger.info(f"[CHUNKER] Extracted document title: {title}")
return title
def _read_document(self, file_path: str) -> str:
"""Đọc nội dung văn bản từ file."""
try:
with open(file_path, 'r', encoding='utf-8') as f:
content = f.read()
logger.debug(f"[CHUNKER] Read document: {file_path}, length: {len(content)}")
return content
except Exception as e:
logger.error(f"[CHUNKER] Error reading file {file_path}: {e}")
raise
def _detect_structure_level(self, line: str) -> Tuple[str, Optional[str], Optional[str]]:
"""Phát hiện cấp độ cấu trúc của một dòng."""
line = line.strip()
try:
# Phần
match = re.match(self.PHAN_REGEX, line, re.IGNORECASE)
if match:
return "PHAN", match.group(1), match.group(2)
# Phụ lục
match = re.match(self.PHU_LUC_REGEX, line, re.IGNORECASE)
if match:
return "PHU_LUC", match.group(1), match.group(2)
# Chương
match = re.match(self.CHUONG_REGEX, line, re.IGNORECASE)
if match:
return "CHUONG", match.group(1), match.group(2)
# Mục
match = re.match(self.MUC_REGEX, line, re.IGNORECASE)
if match:
return "MUC", match.group(1), match.group(2)
# Điều
match = re.match(self.DIEU_REGEX, line)
if match:
return "DIEU", match.group(1), match.group(2)
# Khoản
match = re.match(self.KHOAN_REGEX, line)
if match:
clause_num = match.group(1)
# Kiểm tra không phải điểm (có từ 3 số trở lên)
if len(clause_num.split('.')) < 3:
return "KHOAN", clause_num, match.group(3)
# Điểm chữ cái
match = re.match(self.DIEM_REGEX_A, line)
if match:
return "DIEM", match.group(1), match.group(2)
# Điểm số
match = re.match(self.DIEM_REGEX_NUM, line)
if match:
return "DIEM", match.group(1), match.group(2)
return "CONTENT", None, None
except Exception as e:
logger.error(f"[CHUNKER] Error in _detect_structure_level for line '{line}': {e}")
return "CONTENT", None, None
def _build_structure_summary(self, article_number, clause_number, sub_clause_letter):
if sub_clause_letter and clause_number and article_number:
return f"Điểm {sub_clause_letter} Khoản {clause_number} Điều {article_number}"
elif clause_number and article_number:
return f"Khoản {clause_number} Điều {article_number}"
elif article_number:
return f"Điều {article_number}"
return ""
def _create_chunk_metadata(self, content: str, level: str, level_value: Optional[str],
parent_id: Optional[str], vanbanid: int,
document_title: str, chunk_stack: List[Tuple[str, str, Optional[str], str]], chunk_dict: dict) -> 'ChunkMetadata':
"""Tạo metadata cho chunk."""
chunk_id = str(uuid.uuid4())
metadata = ChunkMetadata(
id=chunk_id,
content=content,
vanbanid=vanbanid,
cha=parent_id,
document_title=document_title
)
# Điền metadata từ chunk hiện tại
if level == "DIEU" and level_value:
metadata.article_number = int(level_value) if level_value.isdigit() else None
metadata.article_title = content.split('\n')[0].strip() if content else ""
elif level == "KHOAN" and level_value:
metadata.clause_number = level_value
elif level == "DIEM" and level_value:
metadata.sub_clause_letter = level_value
# Điền metadata từ parent chunks nếu có
logger.debug(f"[CHUNKER] Creating chunk with level: {level}, parent_id: {parent_id}, stack_size: {len(chunk_stack)}")
if chunk_dict is not None and parent_id:
self._fill_metadata_from_parents(metadata, parent_id, chunk_dict)
else:
logger.debug(f"[CHUNKER] Skipping metadata fill - no parent_id or chunk_dict")
# Gán context_summary theo format pháp lý
metadata.context_summary = self._build_structure_summary(
metadata.article_number, metadata.clause_number, metadata.sub_clause_letter #
)
logger.debug(f"[CHUNKER] Final metadata for chunk {chunk_id[:8]}... - Level: {level}, Article: {metadata.article_number}, Clause: {metadata.clause_number}, Point: {metadata.sub_clause_letter}")
return metadata
def _fill_metadata_from_parents(self, metadata: ChunkMetadata, parent_id: str, chunk_dict: Dict[str, ChunkMetadata]):
"""
Điền metadata từ parent và ancestor (cha, ông, ...), sử dụng dict id->chunk.
"""
parent = chunk_dict.get(parent_id)
if not parent:
logger.warning(f"[CHUNKER] Parent chunk {parent_id} not found in chunk_dict")
return
# Điền từ cha
if parent.article_number and not metadata.article_number:
metadata.article_number = parent.article_number
if parent.article_title and not metadata.article_title:
metadata.article_title = parent.article_title #
if parent.clause_number and not metadata.clause_number:
metadata.clause_number = parent.clause_number
if parent.sub_clause_letter and not metadata.sub_clause_letter:
metadata.sub_clause_letter = parent.sub_clause_letter
# Nếu cha là Khoản, tìm ông là Điều
if parent.clause_number and not metadata.article_number: # noqa
grandparent = chunk_dict.get(parent.cha) if parent.cha else None
if grandparent and grandparent.article_number:
metadata.article_number = grandparent.article_number
if grandparent and grandparent.article_title:
metadata.article_title = grandparent.article_title
def _split_into_chunks(self, text: str, chunk_size: int, overlap: int) -> List[str]:
"""Chia text thành các chunk với overlap."""
chunks = []
start = 0
while start < len(text):
end = start + chunk_size
chunk = text[start:end]
# Tìm vị trí kết thúc chunk tốt nhất (cuối câu hoặc cuối từ)
if end < len(text):
# Tìm dấu chấm hoặc xuống dòng gần nhất
last_period = chunk.rfind('.')
last_newline = chunk.rfind('\n')
best_break = max(last_period, last_newline)
if best_break > start + chunk_size * 0.7: # Chỉ break nếu không quá sớm
end = start + best_break + 1
chunk = text[start:end]
chunks.append(chunk)
start = end - overlap
if start >= len(text):
break
return chunks
def _process_document_recursive(self, content: str, vanbanid: int,
document_title: str) -> List[ChunkMetadata]:
"""Xử lý văn bản theo cấu trúc phân cấp."""
lines = content.split('\n')
chunks = []
chunk_stack = [] # (chunk_id, level, level_value, content)
chunk_dict = {} # id -> ChunkMetadata
current_chunk_content = ""
current_level = None
current_level_value = None
current_parent = None
current_level_priority = None
level_priority = {
"PHAN": 1,
"PHU_LUC": 1,
"CHUONG": 2,
"MUC": 3,
"DIEU": 4,
"KHOAN": 5,
"DIEM": 6,
"CONTENT": 7
}
preamble_done = False
for line in lines:
level, level_value, _ = self._detect_structure_level(line)
line_priority = level_priority.get(level, 7)
# Nếu là dòng đầu tiên hoặc preamble
if not preamble_done and (level == "CONTENT" or not level_value):
current_chunk_content += line + "\n"
current_level = "CONTENT"
current_level_value = None
current_parent = None
current_level_priority = 7
continue
if not preamble_done and (level != "CONTENT" and level_value):
# Kết thúc preamble
if current_chunk_content.strip():
metadata = self._create_chunk_metadata(
current_chunk_content.strip(),
"CONTENT",
None,
None,
vanbanid,
document_title,
chunk_stack,
chunk_dict
)
chunks.append(metadata)
chunk_stack.append((metadata.id, "CONTENT", None, current_chunk_content.strip()))
chunk_dict[metadata.id] = metadata
preamble_done = True
current_chunk_content = ""
current_level = level
current_level_value = level_value
current_level_priority = line_priority
current_parent = self._find_parent_for_level(chunk_stack, level, level_priority)
current_chunk_content += line + "\n"
continue
# Nếu gặp level mới
if level != "CONTENT" and level_value:
if current_level is not None and current_level_priority is not None and line_priority <= current_level_priority:
# Kết thúc chunk hiện tại
if current_chunk_content.strip():
metadata = self._create_chunk_metadata(
current_chunk_content.strip(),
str(current_level),
current_level_value,
current_parent,
vanbanid,
document_title,
chunk_stack,
chunk_dict
)
chunks.append(metadata)
chunk_stack.append((metadata.id, str(current_level), current_level_value, current_chunk_content.strip()))
chunk_dict[metadata.id] = metadata
# Bắt đầu chunk mới
current_parent = self._find_parent_for_level(chunk_stack, level, level_priority)
current_chunk_content = line + "\n"
current_level = level
current_level_value = level_value
current_level_priority = line_priority
else:
# Level mới nhưng priority cao hơn (ví dụ: Mục trong Chương)
if current_chunk_content.strip() and current_level is not None:
metadata = self._create_chunk_metadata(
current_chunk_content.strip(),
str(current_level),
current_level_value,
current_parent,
vanbanid,
document_title,
chunk_stack,
chunk_dict
)
chunks.append(metadata)
chunk_stack.append((metadata.id, str(current_level), current_level_value, current_chunk_content.strip()))
chunk_dict[metadata.id] = metadata
current_parent = self._find_parent_for_level(chunk_stack, level, level_priority)
current_chunk_content = line + "\n"
current_level = level
current_level_value = level_value
current_level_priority = line_priority
else:
# CONTENT nối vào chunk hiện tại
current_chunk_content += line + "\n"
# Nếu chunk quá lớn thì chia nhỏ
if len(current_chunk_content) > self.CHUNK_SIZE and current_level is not None:
sub_chunks = self._split_into_chunks(current_chunk_content, self.CHUNK_SIZE, self.CHUNK_OVERLAP)
for sub_chunk in sub_chunks:
metadata = self._create_chunk_metadata(
sub_chunk.strip(),
str(current_level),
current_level_value,
current_parent,
vanbanid,
document_title,
chunk_stack,
chunk_dict
)
chunks.append(metadata)
chunk_stack.append((metadata.id, str(current_level), current_level_value, sub_chunk.strip()))
chunk_dict[metadata.id] = metadata
current_chunk_content = ""
# Lưu chunk cuối cùng
if current_chunk_content.strip() and current_level is not None:
metadata = self._create_chunk_metadata(
current_chunk_content.strip(),
str(current_level),
current_level_value,
current_parent,
vanbanid,
document_title,
chunk_stack,
chunk_dict
)
chunks.append(metadata)
chunk_stack.append((metadata.id, str(current_level), current_level_value, current_chunk_content.strip()))
chunk_dict[metadata.id] = metadata
root_count = sum(1 for chunk in chunks if chunk.cha is None)
logger.info(f"[CHUNKER] Created {len(chunks)} chunks, {root_count} root chunks")
for i, chunk in enumerate(chunks[:10]):
logger.debug(f"[CHUNKER] Chunk {i+1}: {chunk.content[:100]}... -> Parent: {chunk.cha}")
if len(chunks) > 10:
logger.debug(f"[CHUNKER] ... and {len(chunks) - 10} more chunks")
return chunks
def _find_parent_for_level(self, chunk_stack: List[Tuple[str, str, Optional[str], str]],
current_level: str, level_priority: Dict[str, int]) -> Optional[str]:
"""
Tìm parent gần nhất có level cao hơn (priority thấp hơn) cho level hiện tại, kiểm tra hợp lệ cha-con.
"""
current_priority = level_priority.get(current_level, 999)
valid_parents = {
"MUC": ["CHUONG", "PHAN"],
"DIEU": ["MUC", "CHUONG", "PHAN"],
"CHUONG": ["PHAN"],
# Các level khác giữ nguyên logic cũ
}
for chunk_id, level, level_value, content in reversed(chunk_stack):
if level_priority.get(level, 999) < current_priority:
if current_level in valid_parents:
if level in valid_parents[current_level]:
return chunk_id
else:
return chunk_id
return None
async def _create_embeddings_for_chunks(self, chunks: List[ChunkMetadata]) -> int:
"""Tạo embeddings cho các chunks và lưu ngay lập tức vào Supabase."""
logger.info(f"[CHUNKER] Creating embeddings and storing {len(chunks)} chunks")
success_count = 0
failed_count = 0
# Debug: Log chi tiết metadata của từng chunk
logger.debug(f"[CHUNKER] === DETAILED METADATA ANALYSIS ===")
for i, chunk in enumerate(chunks[:20]): # Log 20 chunks đầu tiên
logger.info(f"[CHUNKER] Chunk {i+1}:")
logger.info(f" - ID: {chunk.id[:8]}...")
logger.info(f" - Content: {chunk.content[:100]}...")
logger.info(f" - Parent: {chunk.cha}")
logger.info(f" - Article: {chunk.article_number}")
logger.info(f" - Article Title: {chunk.article_title}")
logger.info(f" - Clause: {chunk.clause_number}")
logger.info(f" - Point: {chunk.sub_clause_letter}")
logger.info(f" - Document: {chunk.document_title}")
logger.info(f" ---")
for i, chunk in enumerate(chunks, 1):
try:
# Tạo embedding
embedding = await self.embedding_client.create_embedding(chunk.content, task_type="retrieval_document")
# Sinh semantic summary bằng LLM
semantic_summary = await self._create_semantic_summary_with_llm(chunk.content)
# Chuẩn bị data cho Supabase
chunk_dict = {
'id': chunk.id,
'content': chunk.content,
'embedding': embedding if embedding is not None else [0.0] * 768, # Sử dụng embedding thực tế nếu có
'vanbanid': chunk.vanbanid, # noqa
'cha': chunk.cha,
'document_title': chunk.document_title,
'article_number': chunk.article_number,
'article_title': chunk.article_title,
'clause_number': chunk.clause_number,
'sub_clause_letter': chunk.sub_clause_letter,
'context_summary': f"Structure: {chunk.context_summary}|Semantic: {semantic_summary}"
}
# Lưu ngay lập tức vào Supabase
success = self.supabase_client.store_document_chunk(chunk_dict)
if success:
success_count += 1 # noqa
if i % 100 == 0: # Log mỗi 100 chunks
logger.info(f"[CHUNKER] Stored chunk {i}/{len(chunks)}: {chunk.id[:8]}...")
else:
failed_count += 1
logger.error(f"[CHUNKER] Failed to store chunk {chunk.id}")
except Exception as e:
failed_count += 1
logger.error(f"[CHUNKER] Error processing chunk {chunk.id}: {e}")
continue
logger.info(f"[CHUNKER] Successfully processed {success_count}/{len(chunks)} chunks, {failed_count} failed")
return success_count
async def _store_chunks_to_supabase(self, chunk_data: List[Dict]) -> bool:
"""Legacy method - không còn sử dụng."""
logger.warning("[CHUNKER] _store_chunks_to_supabase is deprecated, use _create_embeddings_for_chunks instead")
return True
async def process_law_document(self, file_path: str, document_id: int) -> bool:
"""
Hàm chính để xử lý văn bản luật.
Args:
file_path: Đường dẫn đến file văn bản luật
document_id: ID duy nhất của văn bản luật
Returns:
bool: True nếu thành công, False nếu thất bại
"""
try:
logger.info(f"[CHUNKER] Starting processing for file: {file_path}, document_id: {document_id}")
# 1. Tạo thư mục data nếu cần
self._create_data_directory()
# 2. Kiểm tra file tồn tại
if not os.path.exists(file_path):
logger.error(f"[CHUNKER] File not found: {file_path}")
return False
# 3. Đọc văn bản
content = self._read_document(file_path)
# 4. Trích xuất tiêu đề
document_title = self._extract_document_title(file_path)
# 5. Xử lý chunking theo cấu trúc
chunks = self._process_document_recursive(content, document_id, document_title)
if not chunks:
logger.warning(f"[CHUNKER] No chunks created for document {document_id}")
return False
# 6. Tạo embeddings
success_count = await self._create_embeddings_for_chunks(chunks)
if success_count == 0:
logger.error(f"[CHUNKER] No embeddings created for document {document_id}")
return False
logger.info(f"[CHUNKER] Successfully processed document {document_id} with {success_count} chunks")
return True
except Exception as e:
logger.error(f"[CHUNKER] Error processing document {document_id}: {e}") ##
return False
async def _create_semantic_summary_with_llm(self, chunk_content: str) -> str:
"""
Sinh semantic summary ngắn gọn, súc tích cho chunk bằng LLM.
"""
if not hasattr(self, "llm_client") or self.llm_client is None:
logger.warning("[CHUNKER] llm_client chưa được gán, bỏ qua semantic summary.")
return ""
prompt = (
"Tóm tắt thật ngắn gọn, súc tích nội dung luật sau (1-2 câu, không lặp lại tiêu đề, không giải thích):\n"
f"{chunk_content.strip()}"
)
try:
summary = await self.llm_client.generate_text(prompt)
return summary.strip() if summary else ""
except Exception as e:
logger.error(f"[CHUNKER] Lỗi khi sinh semantic summary bằng LLM: {e}")
return ""