This commit is contained in:
dj
2026-04-16 20:00:51 +08:00
6 changed files with 1664 additions and 147 deletions

View File

@@ -12,6 +12,7 @@ from app.services.excel_ai_service import excel_ai_service
from app.services.markdown_ai_service import markdown_ai_service
from app.services.template_fill_service import template_fill_service
from app.services.word_ai_service import word_ai_service
from app.services.txt_ai_service import txt_ai_service
logger = logging.getLogger(__name__)
@@ -153,8 +154,9 @@ async def analyze_text(
@router.post("/analyze/md")
async def analyze_markdown(
file: UploadFile = File(...),
analysis_type: str = Query("summary", description="分析类型: summary, outline, key_points, questions, tags, qa, statistics, section"),
file: Optional[UploadFile] = File(None),
doc_id: Optional[str] = Query(None, description="文档ID从数据库读取"),
analysis_type: str = Query("summary", description="分析类型: summary, outline, key_points, questions, tags, qa, statistics, section, charts"),
user_prompt: str = Query("", description="用户自定义提示词"),
section_number: Optional[str] = Query(None, description="指定章节编号,如 '''(一)'")
):
@@ -162,7 +164,8 @@ async def analyze_markdown(
上传并使用 AI 分析 Markdown 文件
Args:
file: 上传的 Markdown 文件
file: 上传的 Markdown 文件(与 doc_id 二选一)
doc_id: 文档ID从数据库读取
analysis_type: 分析类型
user_prompt: 用户自定义提示词
section_number: 指定分析的章节编号
@@ -170,16 +173,8 @@ async def analyze_markdown(
Returns:
dict: 分析结果
"""
# 检查文件类型
if not file.filename:
raise HTTPException(status_code=400, detail="文件名为空")
file_ext = file.filename.split('.')[-1].lower()
if file_ext not in ['md', 'markdown']:
raise HTTPException(
status_code=400,
detail=f"不支持的文件类型: {file_ext},仅支持 .md 和 .markdown"
)
filename = None
tmp_path = None
# 验证分析类型
supported_types = markdown_ai_service.get_supported_analysis_types()
@@ -189,46 +184,96 @@ async def analyze_markdown(
detail=f"不支持的分析类型: {analysis_type},支持的类型: {', '.join(supported_types)}"
)
try:
# 读取文件内容
content = await file.read()
# 保存到临时文件
with tempfile.NamedTemporaryFile(mode='wb', suffix='.md', delete=False) as tmp:
tmp.write(content)
tmp_path = tmp.name
if doc_id:
# 从数据库读取文档
try:
logger.info(f"开始分析 Markdown 文件: {file.filename}, 分析类型: {analysis_type}, 章节: {section_number}")
from app.core.database.mongodb import mongodb
doc = await mongodb.get_document(doc_id)
if not doc:
raise HTTPException(status_code=404, detail=f"文档不存在: {doc_id}")
# 调用 AI 分析服务
result = await markdown_ai_service.analyze_markdown(
file_path=tmp_path,
analysis_type=analysis_type,
user_prompt=user_prompt,
section_number=section_number
filename = doc.get("metadata", {}).get("original_filename", "unknown.md")
file_ext = filename.split('.')[-1].lower()
if file_ext not in ['md', 'markdown']:
raise HTTPException(status_code=400, detail=f"文档类型不是 Markdown: {file_ext}")
content = doc.get("content", "")
if not content:
raise HTTPException(status_code=400, detail="文档内容为空")
# 保存到临时文件
with tempfile.NamedTemporaryFile(mode='wb', suffix='.md', delete=False) as tmp:
tmp.write(content.encode('utf-8'))
tmp_path = tmp.name
logger.info(f"从数据库加载 Markdown 文档: {filename}, 长度: {len(content)}")
except HTTPException:
raise
except Exception as e:
logger.error(f"从数据库读取 Markdown 文档失败: {str(e)}")
raise HTTPException(status_code=500, detail=f"读取文档失败: {str(e)}")
else:
# 文件上传模式
if not file:
raise HTTPException(status_code=400, detail="请提供文件或文档ID")
if not file.filename:
raise HTTPException(status_code=400, detail="文件名为空")
file_ext = file.filename.split('.')[-1].lower()
if file_ext not in ['md', 'markdown']:
raise HTTPException(
status_code=400,
detail=f"不支持的文件类型: {file_ext},仅支持 .md 和 .markdown"
)
logger.info(f"Markdown 分析完成: {file.filename}, 成功: {result['success']}")
try:
# 读取文件内容
content = await file.read()
if not result['success']:
raise HTTPException(status_code=500, detail=result.get('error', '分析失败'))
# 保存到临时文件
with tempfile.NamedTemporaryFile(mode='wb', suffix='.md', delete=False) as tmp:
tmp.write(content)
tmp_path = tmp.name
return result
filename = file.filename
finally:
# 清理临时文件,确保在所有情况下都能清理
try:
if tmp_path and os.path.exists(tmp_path):
os.unlink(tmp_path)
except Exception as cleanup_error:
logger.warning(f"临时文件清理失败: {tmp_path}, error: {cleanup_error}")
except Exception as e:
logger.error(f"读取 Markdown 文件失败: {str(e)}")
raise HTTPException(status_code=500, detail=f"读取文件失败: {str(e)}")
try:
logger.info(f"开始分析 Markdown 文件: {filename}, 分析类型: {analysis_type}, 章节: {section_number}")
# 调用 AI 分析服务
result = await markdown_ai_service.analyze_markdown(
file_path=tmp_path,
analysis_type=analysis_type,
user_prompt=user_prompt,
section_number=section_number
)
logger.info(f"Markdown 分析完成: {filename}, 成功: {result['success']}")
if not result['success']:
raise HTTPException(status_code=500, detail=result.get('error', '分析失败'))
return result
except HTTPException:
raise
except Exception as e:
logger.error(f"Markdown AI 分析过程中出错: {str(e)}")
raise HTTPException(status_code=500, detail=f"分析失败: {str(e)}")
finally:
# 清理临时文件
if tmp_path and os.path.exists(tmp_path):
try:
os.unlink(tmp_path)
except Exception as cleanup_error:
logger.warning(f"临时文件清理失败: {tmp_path}, error: {cleanup_error}")
@router.post("/analyze/md/stream")
@@ -346,67 +391,100 @@ async def get_markdown_outline(
@router.post("/analyze/txt")
async def analyze_txt(
file: UploadFile = File(...),
file: Optional[UploadFile] = File(None),
doc_id: Optional[str] = Query(None, description="文档ID从数据库读取"),
analysis_type: str = Query("structured", description="分析类型: structured, charts")
):
"""
上传并使用 AI 分析 TXT 文本文件,提取结构化数据
上传并使用 AI 分析 TXT 文本文件,提取结构化数据或生成图表
将非结构化文本转换为结构化表格数据,便于后续填表使用
当 analysis_type=charts 时,可生成可视化图表
Args:
file: 上传的 TXT 文件
file: 上传的 TXT 文件(与 doc_id 二选一)
doc_id: 文档ID从数据库读取
analysis_type: 分析类型 - "structured"(默认,提取结构化数据)或 "charts"(生成图表)
Returns:
dict: 分析结果,包含结构化表格数据
dict: 分析结果,包含结构化表格数据或图表数据
"""
if not file.filename:
raise HTTPException(status_code=400, detail="文件名为空")
file_ext = file.filename.split('.')[-1].lower()
if file_ext not in ['txt', 'text']:
raise HTTPException(
status_code=400,
detail=f"不支持的文件类型: {file_ext},仅支持 .txt"
)
try:
# 读取文件内容
content = await file.read()
# 保存到临时文件
with tempfile.NamedTemporaryFile(mode='wb', suffix='.txt', delete=False) as tmp:
tmp.write(content)
tmp_path = tmp.name
filename = None
text_content = None
if doc_id:
# 从数据库读取文档
try:
logger.info(f"开始 AI 分析 TXT 文件: {file.filename}")
from app.core.database.mongodb import mongodb
doc = await mongodb.get_document(doc_id)
if not doc:
raise HTTPException(status_code=404, detail=f"文档不存在: {doc_id}")
# 使用 template_fill_service 的 AI 分析方法
result = await template_fill_service.analyze_txt_with_ai(
content=content.decode('utf-8', errors='replace'),
filename=file.filename
filename = doc.get("metadata", {}).get("original_filename", "unknown.txt")
file_ext = filename.split('.')[-1].lower()
if file_ext not in ['txt', 'text']:
raise HTTPException(status_code=400, detail=f"文档类型不是 TXT: {file_ext}")
# 使用数据库中的 content
text_content = doc.get("content", "")
if not text_content:
raise HTTPException(status_code=400, detail="文档内容为空")
logger.info(f"从数据库加载 TXT 文档: {filename}, 长度: {len(text_content)}")
except HTTPException:
raise
except Exception as e:
logger.error(f"从数据库读取 TXT 文档失败: {str(e)}")
raise HTTPException(status_code=500, detail=f"读取文档失败: {str(e)}")
else:
# 文件上传模式
if not file:
raise HTTPException(status_code=400, detail="请提供文件或文档ID")
if not file.filename:
raise HTTPException(status_code=400, detail="文件名为空")
file_ext = file.filename.split('.')[-1].lower()
if file_ext not in ['txt', 'text']:
raise HTTPException(
status_code=400,
detail=f"不支持的文件类型: {file_ext},仅支持 .txt"
)
if result:
logger.info(f"TXT AI 分析成功: {file.filename}")
return {
"success": True,
"filename": file.filename,
"structured_data": result
}
else:
logger.warning(f"TXT AI 分析返回空结果: {file.filename}")
return {
"success": False,
"filename": file.filename,
"error": "AI 分析未能提取到结构化数据",
"structured_data": None
}
# 读取文件内容
content = await file.read()
text_content = content.decode('utf-8', errors='replace')
filename = file.filename
finally:
# 清理临时文件
if os.path.exists(tmp_path):
os.unlink(tmp_path)
try:
logger.info(f"开始 AI 分析 TXT 文件: {filename}, analysis_type={analysis_type}")
# 使用 txt_ai_service 的 AI 分析方法
result = await txt_ai_service.analyze_txt_with_ai(
content=text_content,
filename=filename,
analysis_type=analysis_type
)
if result:
logger.info(f"TXT AI 分析成功: {filename}")
return {
"success": result.get("success", True),
"filename": filename,
"analysis_type": analysis_type,
"result": result
}
else:
logger.warning(f"TXT AI 分析返回空结果: {filename}")
return {
"success": False,
"filename": filename,
"error": "AI 分析未能提取到结构化数据",
"result": None
}
except HTTPException:
raise
@@ -419,21 +497,89 @@ async def analyze_txt(
@router.post("/analyze/word")
async def analyze_word(
file: UploadFile = File(...),
user_hint: str = Query("", description="用户提示词,如'请提取表格数据'")
file: Optional[UploadFile] = File(None),
doc_id: Optional[str] = Query(None, description="文档ID从数据库读取"),
user_hint: str = Query("", description="用户提示词,如'请提取表格数据'"),
analysis_type: str = Query("structured", description="分析类型: structured, charts")
):
"""
使用 AI 解析 Word 文档,提取结构化数据
使用 AI 解析 Word 文档,提取结构化数据或生成图表
适用于从非结构化的 Word 文档中提取表格数据、键值对等信息
当 analysis_type=charts 时,可生成可视化图表
Args:
file: 上传的 Word 文件
file: 上传的 Word 文件(与 doc_id 二选一)
doc_id: 文档ID从数据库读取
user_hint: 用户提示词
analysis_type: 分析类型 - "structured"(默认,提取结构化数据)或 "charts"(生成图表)
Returns:
dict: 包含结构化数据的解析结果
dict: 包含结构化数据的解析结果或图表数据
"""
# 获取文件名和扩展名
filename = None
file_ext = None
if doc_id:
# 从数据库读取文档
try:
from app.core.database.mongodb import mongodb
doc = await mongodb.get_document(doc_id)
if not doc:
raise HTTPException(status_code=404, detail=f"文档不存在: {doc_id}")
filename = doc.get("metadata", {}).get("original_filename", "unknown.docx")
file_ext = filename.split('.')[-1].lower()
if file_ext not in ['docx']:
raise HTTPException(status_code=400, detail=f"文档类型不是 Word: {file_ext}")
# 使用数据库中的 content 进行分析
content = doc.get("content", "")
tables = doc.get("structured_data", {}).get("tables", [])
# 调用 AI 分析服务,传入数据库内容
if analysis_type == "charts":
result = await word_ai_service.generate_charts_from_db(
content=content,
tables=tables,
filename=filename,
user_hint=user_hint
)
else:
result = await word_ai_service.parse_word_with_ai_from_db(
content=content,
tables=tables,
filename=filename,
user_hint=user_hint or "请提取文档中的所有结构化数据,包括表格、键值对等"
)
if result.get("success"):
return {
"success": True,
"filename": filename,
"analysis_type": analysis_type,
"result": result
}
else:
return {
"success": False,
"filename": filename,
"error": result.get("error", "AI 解析失败"),
"result": None
}
except HTTPException:
raise
except Exception as e:
logger.error(f"从数据库读取 Word 文档失败: {str(e)}")
raise HTTPException(status_code=500, detail=f"读取文档失败: {str(e)}")
# 文件上传模式
if not file:
raise HTTPException(status_code=400, detail="请提供文件或文档ID")
if not file.filename:
raise HTTPException(status_code=400, detail="文件名为空")
@@ -453,16 +599,25 @@ async def analyze_word(
tmp_path = tmp.name
try:
# 使用 AI 解析 Word 文档
result = await word_ai_service.parse_word_with_ai(
file_path=tmp_path,
user_hint=user_hint or "请提取文档中的所有结构化数据,包括表格、键值对等"
)
# 根据 analysis_type 选择处理方式
if analysis_type == "charts":
# 生成图表
result = await word_ai_service.generate_charts(
file_path=tmp_path,
user_hint=user_hint
)
else:
# 提取结构化数据
result = await word_ai_service.parse_word_with_ai(
file_path=tmp_path,
user_hint=user_hint or "请提取文档中的所有结构化数据,包括表格、键值对等"
)
if result.get("success"):
return {
"success": True,
"filename": file.filename,
"analysis_type": analysis_type,
"result": result
}
else:

View File

@@ -405,7 +405,7 @@ async def process_documents_batch(task_id: str, files: List[dict]):
if content and len(content) > 50:
await index_document_to_rag(doc_id, filename, result, file_info["ext"])
return {"index": index, "filename": filename, "doc_id": doc_id, "success": True}
return {"index": index, "filename": filename, "doc_id": doc_id, "file_path": file_info["path"], "success": True}
except Exception as e:
logger.error(f"处理文件 {filename} 失败: {e}")

View File

@@ -0,0 +1,352 @@
"""
TXT 文档 AI 分析服务
使用 LLM 对 TXT 文本文件进行深度分析,提取结构化数据并生成可视化图表
"""
import logging
import re
from typing import Any, Dict, List, Optional
from app.services.llm_service import llm_service
from app.services.visualization_service import visualization_service
from app.core.document_parser.txt_parser import TxtParser
logger = logging.getLogger(__name__)
class TxtAIService:
"""TXT 文档 AI 分析服务"""
def __init__(self):
self.parser = TxtParser()
async def analyze_txt_with_ai(
self,
content: str,
filename: str = "",
user_hint: str = "",
analysis_type: str = "structured"
) -> Dict[str, Any]:
"""
使用 AI 解析 TXT 文本文件
Args:
content: 文本内容
filename: 文件名(可选)
user_hint: 用户提示词
analysis_type: 分析类型 - "structured"(默认,提取结构化数据)或 "charts"(生成图表)
Returns:
Dict: 包含结构化数据的分析结果
"""
try:
if not content or not content.strip():
return {
"success": False,
"error": "文档内容为空"
}
# 根据分析类型选择处理方式
if analysis_type == "charts":
return await self.generate_charts(content, filename, user_hint)
# 默认:提取结构化数据
return await self._extract_structured_data(content, filename, user_hint)
except Exception as e:
logger.error(f"TXT AI 分析失败: {str(e)}")
return {
"success": False,
"error": str(e)
}
async def _extract_structured_data(
self,
content: str,
filename: str = "",
user_hint: str = ""
) -> Dict[str, Any]:
"""
从文本中提取结构化数据
Args:
content: 文本内容
filename: 文件名
user_hint: 用户提示词
Returns:
结构化数据
"""
try:
# 截断内容避免超出 token 限制
max_content_len = 8000
text_preview = content[:max_content_len] if len(content) > max_content_len else content
prompt = f"""你是一个专业的数据提取专家。请从以下文本中提取结构化数据。
【用户需求】
{user_hint if user_hint else "请提取文档中的所有结构化数据,包括表格数据、键值对、列表项等。"}
【文档内容】({"" + str(max_content_len) + "字符,仅显示部分" if len(content) > max_content_len else "全文"}
{text_preview}
请按照以下 JSON 格式输出:
{{
"type": "structured_text",
"tables": [{{"headers": [...], "rows": [...]}}],
"key_values": {{"键1": "值1", "键2": "值2", ...}},
"list_items": ["项1", "项2", ...],
"summary": "文档内容摘要"
}}
重点:
- 如果文档包含表格数据(制表符、空格对齐等),提取到 tables 中
- 如果文档包含键值对(如 名称: 张三),提取到 key_values 中
- 如果文档包含列表项,提取到 list_items 中
- 如果无法提取到结构化数据,至少提供一个详细的摘要
"""
messages = [
{"role": "system", "content": "你是一个专业的数据提取助手。请严格按JSON格式输出。"},
{"role": "user", "content": prompt}
]
response = await self.llm.chat(
messages=messages,
temperature=0.1,
max_tokens=50000
)
content_text = self.llm.extract_message_content(response)
result = self._parse_json_response(content_text)
if result:
logger.info(f"TXT 结构化数据提取成功: type={result.get('type')}")
return {
"success": True,
"type": result.get("type", "structured_text"),
"tables": result.get("tables", []),
"key_values": result.get("key_values", {}),
"list_items": result.get("list_items", []),
"summary": result.get("summary", "")
}
else:
return {
"success": True,
"type": "text",
"summary": text_preview[:500],
"raw_text_preview": text_preview[:500]
}
except Exception as e:
logger.error(f"TXT 结构化数据提取失败: {str(e)}")
return {
"success": False,
"error": str(e)
}
async def generate_charts(
self,
content: str,
filename: str = "",
user_hint: str = ""
) -> Dict[str, Any]:
"""
从文本中提取数据并生成可视化图表
Args:
content: 文本内容
filename: 文件名
user_hint: 用户提示词
Returns:
包含图表数据和统计信息的结果
"""
try:
# 截断内容避免超出 token 限制
max_content_len = 8000
text_preview = content[:max_content_len] if len(content) > max_content_len else content
# 使用 LLM 提取可用于图表的数据
prompt = f"""你是一个专业的数据可视化助手。请从以下文本中提取可用于可视化的数据。
文档标题:{filename}
文档内容:
{text_preview}
请完成以下任务:
1. 识别文本中的表格数据(制表符分隔、空格对齐的表格等)
2. 识别文本中的关键统计数据(百分比、数量、趋势等)
3. 识别可用于比较的分类数据
请用 JSON 格式返回以下结构的数据(如果没有表格数据,返回空结构):
{{
"tables": [
{{
"description": "表格的描述",
"columns": ["列名1", "列名2", ...],
"rows": [
["值1", "值2", ...],
["值1", "值2", ...]
]
}}
],
"key_statistics": [
{{
"name": "指标名称",
"value": "数值",
"trend": "增长/下降/持平",
"description": "指标说明"
}}
],
"chart_suggestions": [
{{
"chart_type": "bar/line/pie",
"title": "图表标题",
"data_source": "数据来源说明"
}}
]
}}
如果没有表格数据,返回空结构:{{"tables": [], "key_statistics": [], "chart_suggestions": []}}
请确保返回的是合法的 JSON 格式。"""
messages = [
{"role": "system", "content": "你是一个专业的数据可视化助手,擅长从文本中提取数据并生成图表。"},
{"role": "user", "content": prompt}
]
response = await self.llm.chat(
messages=messages,
temperature=0.1,
max_tokens=50000
)
content_text = self.llm.extract_message_content(response)
chart_data = self._parse_json_response(content_text)
if not chart_data:
return {
"success": False,
"error": "无法从文本中提取有效的数据结构"
}
# 检查是否有表格数据
tables = chart_data.get("tables", [])
key_statistics = chart_data.get("key_statistics", [])
if not tables:
return {
"success": False,
"error": "文档中没有可用于图表的表格数据",
"key_statistics": key_statistics,
"chart_suggestions": chart_data.get("chart_suggestions", [])
}
# 使用第一个表格生成图表
first_table = tables[0]
columns = first_table.get("columns", [])
rows = first_table.get("rows", [])
if not columns or not rows:
return {
"success": False,
"error": "表格数据为空"
}
# 转换为 visualization_service 需要的格式
viz_data = {
"columns": columns,
"rows": rows
}
# 生成可视化图表
logger.info(f"开始生成图表,列数: {len(columns)}, 行数: {len(rows)}")
vis_result = visualization_service.analyze_and_visualize(viz_data)
if vis_result.get("success"):
return {
"success": True,
"charts": vis_result.get("charts", {}),
"statistics": vis_result.get("statistics", {}),
"distributions": vis_result.get("distributions", {}),
"row_count": vis_result.get("row_count", 0),
"column_count": vis_result.get("column_count", 0),
"key_statistics": key_statistics,
"chart_suggestions": chart_data.get("chart_suggestions", []),
"table_description": first_table.get("description", "")
}
else:
return {
"success": False,
"error": vis_result.get("error", "可视化生成失败"),
"key_statistics": key_statistics
}
except Exception as e:
logger.error(f"TXT 图表生成失败: {str(e)}")
return {
"success": False,
"error": str(e)
}
def _parse_json_response(self, content: str) -> Optional[Dict]:
"""解析 JSON 响应,处理各种格式问题"""
if not content:
return None
import json
# 清理 markdown 标记
cleaned = content.strip()
cleaned = re.sub(r'^```json\s*', '', cleaned, flags=re.MULTILINE)
cleaned = re.sub(r'^```\s*', '', cleaned, flags=re.MULTILINE)
cleaned = cleaned.strip()
# 找到 JSON 开始位置
json_start = -1
for i, c in enumerate(cleaned):
if c == '{':
json_start = i
break
if json_start == -1:
logger.warning("无法找到 JSON 开始位置")
return None
json_text = cleaned[json_start:]
# 尝试直接解析
try:
return json.loads(json_text)
except json.JSONDecodeError:
pass
# 尝试修复并解析
try:
# 找到闭合括号
depth = 0
end_pos = -1
for i, c in enumerate(json_text):
if c == '{':
depth += 1
elif c == '}':
depth -= 1
if depth == 0:
end_pos = i + 1
break
if end_pos > 0:
fixed = json_text[:end_pos]
# 移除末尾逗号
fixed = re.sub(r',\s*([}]])', r'\1', fixed)
return json.loads(fixed)
except Exception as e:
logger.warning(f"JSON 修复失败: {e}")
return None
# 全局单例
txt_ai_service = TxtAIService()

View File

@@ -8,6 +8,7 @@ from typing import Dict, Any, List, Optional
import json
from app.services.llm_service import llm_service
from app.services.visualization_service import visualization_service
from app.core.document_parser.docx_parser import DocxParser
logger = logging.getLogger(__name__)
@@ -634,6 +635,272 @@ class WordAIService:
return values
async def generate_charts(
self,
file_path: str,
user_hint: str = ""
) -> Dict[str, Any]:
"""
使用 AI 解析 Word 文档并生成可视化图表
# 全局单例
word_ai_service = WordAIService()
从 Word 文档中提取表格数据,然后生成统计图表
Args:
file_path: Word 文件路径
user_hint: 用户提示词,指定要提取的内容类型
Returns:
Dict: 包含图表数据和统计信息的结果
"""
try:
# 1. 先用基础解析器提取原始内容
parse_result = self.parser.parse(file_path)
if not parse_result.success:
return {
"success": False,
"error": parse_result.error,
"structured_data": None
}
# 2. 获取原始数据
raw_data = parse_result.data
paragraphs = raw_data.get("paragraphs", [])
tables = raw_data.get("tables", [])
content = raw_data.get("content", "")
logger.info(f"Word 基础解析完成: {len(paragraphs)} 个段落, {len(tables)} 个表格")
# 3. 优先处理表格数据
if tables and len(tables) > 0:
structured_data = await self._extract_tables_with_ai(
tables, paragraphs, 0, user_hint, parse_result.metadata
)
elif paragraphs and len(paragraphs) > 0:
structured_data = await self._extract_from_text_with_ai(
paragraphs, content, 0, [], user_hint
)
else:
return {
"success": False,
"error": "文档内容为空",
"structured_data": None
}
# 4. 检查是否有表格数据用于可视化
if not structured_data.get("success"):
return {
"success": False,
"error": structured_data.get("error", "解析失败"),
"structured_data": None
}
parse_type = structured_data.get("type", "")
# 5. 提取可用于图表的数据
chart_data = None
if parse_type == "table_data":
headers = structured_data.get("headers", [])
rows = structured_data.get("rows", [])
if headers and rows:
chart_data = {
"columns": headers,
"rows": rows
}
elif parse_type == "structured_text":
tables = structured_data.get("tables", [])
if tables and len(tables) > 0:
first_table = tables[0]
headers = first_table.get("headers", [])
rows = first_table.get("rows", [])
if headers and rows:
chart_data = {
"columns": headers,
"rows": rows
}
# 6. 生成可视化图表
if chart_data:
logger.info(f"开始生成图表,列数: {len(chart_data['columns'])}, 行数: {len(chart_data['rows'])}")
vis_result = visualization_service.analyze_and_visualize(chart_data)
if vis_result.get("success"):
return {
"success": True,
"charts": vis_result.get("charts", {}),
"statistics": vis_result.get("statistics", {}),
"distributions": vis_result.get("distributions", {}),
"structured_data": structured_data,
"row_count": vis_result.get("row_count", 0),
"column_count": vis_result.get("column_count", 0)
}
else:
return {
"success": False,
"error": vis_result.get("error", "可视化生成失败"),
"structured_data": structured_data
}
else:
return {
"success": False,
"error": "文档中没有可用于图表的表格数据",
"structured_data": structured_data
}
except Exception as e:
logger.error(f"Word 文档图表生成失败: {str(e)}")
return {
"success": False,
"error": str(e),
"structured_data": None
}
async def parse_word_with_ai_from_db(
self,
content: str,
tables: List[Dict],
filename: str = "",
user_hint: str = ""
) -> Dict[str, Any]:
"""
使用 AI 解析从数据库读取的 Word 文档内容,提取结构化数据
Args:
content: 文档文本内容
tables: 表格数据列表
filename: 文件名
user_hint: 用户提示词
Returns:
Dict: 包含结构化数据的解析结果
"""
try:
# 解析段落
paragraphs = [p.strip() for p in content.split('\n') if p.strip()]
logger.info(f"从数据库解析 Word: {len(paragraphs)} 个段落, {len(tables)} 个表格")
# 优先处理表格数据
if tables and len(tables) > 0:
structured_data = await self._extract_tables_with_ai(
tables, paragraphs, 0, user_hint, {"filename": filename}
)
elif paragraphs and len(paragraphs) > 0:
structured_data = await self._extract_from_text_with_ai(
paragraphs, content, 0, [], user_hint
)
else:
structured_data = {
"success": True,
"type": "empty",
"message": "文档内容为空"
}
return structured_data
except Exception as e:
logger.error(f"从数据库解析 Word 文档失败: {str(e)}")
return {
"success": False,
"error": str(e)
}
async def generate_charts_from_db(
self,
content: str,
tables: List[Dict],
filename: str = "",
user_hint: str = ""
) -> Dict[str, Any]:
"""
使用 AI 解析从数据库读取的 Word 文档并生成可视化图表
Args:
content: 文档文本内容
tables: 表格数据列表
filename: 文件名
user_hint: 用户提示词
Returns:
Dict: 包含图表数据和统计信息的结果
"""
try:
# 解析段落
paragraphs = [p.strip() for p in content.split('\n') if p.strip()]
logger.info(f"从数据库生成 Word 图表: {len(paragraphs)} 个段落, {len(tables)} 个表格")
# 优先处理表格数据
if tables and len(tables) > 0:
structured_data = await self._extract_tables_with_ai(
tables, paragraphs, 0, user_hint, {"filename": filename}
)
elif paragraphs and len(paragraphs) > 0:
structured_data = await self._extract_from_text_with_ai(
paragraphs, content, 0, [], user_hint
)
else:
return {
"success": False,
"error": "文档内容为空"
}
# 提取可用于图表的数据
chart_data = None
if structured_data.get("type") == "table_data":
headers = structured_data.get("headers", [])
rows = structured_data.get("rows", [])
if headers and rows:
chart_data = {
"columns": headers,
"rows": rows
}
elif structured_data.get("type") == "structured_text":
tables_data = structured_data.get("tables", [])
if tables_data and len(tables_data) > 0:
first_table = tables_data[0]
headers = first_table.get("headers", [])
rows = first_table.get("rows", [])
if headers and rows:
chart_data = {
"columns": headers,
"rows": rows
}
# 生成可视化图表
if chart_data:
logger.info(f"开始生成图表,列数: {len(chart_data['columns'])}, 行数: {len(chart_data['rows'])}")
vis_result = visualization_service.analyze_and_visualize(chart_data)
if vis_result.get("success"):
return {
"success": True,
"charts": vis_result.get("charts", {}),
"statistics": vis_result.get("statistics", {}),
"distributions": vis_result.get("distributions", {}),
"structured_data": structured_data,
"row_count": vis_result.get("row_count", 0),
"column_count": vis_result.get("column_count", 0)
}
else:
return {
"success": False,
"error": vis_result.get("error", "可视化生成失败"),
"structured_data": structured_data
}
else:
return {
"success": False,
"error": "文档中没有可用于图表的表格数据",
"structured_data": structured_data
}
except Exception as e:
logger.error(f"从数据库生成 Word 图表失败: {str(e)}")
return {
"success": False,
"error": str(e)
}

View File

@@ -250,6 +250,98 @@ export interface AIExcelAnalyzeResult {
error?: string;
}
// ==================== Word/TXT AI 分析类型 ====================
export type WordAnalysisType = 'structured' | 'charts';
export type TxtAnalysisType = 'structured' | 'charts';
export interface WordAIStructuredResult {
success: boolean;
result?: {
success?: boolean;
type?: string;
headers?: string[];
rows?: string[][];
key_values?: Record<string, string>;
list_items?: string[];
summary?: string;
error?: string;
};
error?: string;
}
export interface WordAIChartsResult {
success: boolean;
result?: {
success?: boolean;
charts?: {
histograms?: Array<any>;
bar_charts?: Array<any>;
box_plots?: Array<any>;
correlation?: any;
};
statistics?: {
numeric?: Record<string, any>;
categorical?: Record<string, any>;
};
distributions?: Record<string, any>;
row_count?: number;
column_count?: number;
error?: string;
};
error?: string;
}
export interface TxtAIStructuredResult {
success: boolean;
result?: {
success?: boolean;
type?: string;
tables?: Array<{
headers?: string[];
rows?: string[][];
}>;
key_values?: Record<string, string>;
list_items?: string[];
summary?: string;
error?: string;
};
error?: string;
}
export interface TxtAIChartsResult {
success: boolean;
result?: {
success?: boolean;
charts?: {
histograms?: Array<any>;
bar_charts?: Array<any>;
box_plots?: Array<any>;
correlation?: any;
};
statistics?: {
numeric?: Record<string, any>;
categorical?: Record<string, any>;
};
distributions?: Record<string, any>;
row_count?: number;
column_count?: number;
key_statistics?: Array<{
name?: string;
value?: string;
trend?: string;
description?: string;
}>;
chart_suggestions?: Array<{
chart_type?: string;
title?: string;
data_source?: string;
}>;
error?: string;
};
error?: string;
}
// ==================== API 封装 ====================
export const backendApi = {
@@ -1187,15 +1279,21 @@ export const aiApi = {
* 上传并使用 AI 分析 Markdown 文件
*/
async analyzeMarkdown(
file: File,
file: File | null,
options: {
docId?: string;
analysisType?: MarkdownAnalysisType;
userPrompt?: string;
sectionNumber?: string;
} = {}
): Promise<AIMarkdownAnalyzeResult> {
const formData = new FormData();
formData.append('file', file);
if (file) {
formData.append('file', file);
}
if (options.docId) {
formData.append('doc_id', options.docId);
}
const params = new URLSearchParams();
if (options.analysisType) {
@@ -1337,28 +1435,31 @@ export const aiApi = {
},
/**
* 上传并使用 AI 分析 TXT 文本文件,提取结构化数据
* 上传并使用 AI 分析 TXT 文本文件,提取结构化数据或生成图表
*/
async analyzeTxt(
file: File
file: File | null,
docId: string | null = null,
analysisType: TxtAnalysisType = 'structured'
): Promise<{
success: boolean;
filename?: string;
structured_data?: {
table?: {
columns?: string[];
rows?: string[][];
};
summary?: string;
key_value_pairs?: Array<{ key: string; value: string }>;
numeric_data?: Array<{ name: string; value: number; unit?: string }>;
};
analysis_type?: string;
result?: any;
error?: string;
}> {
const formData = new FormData();
formData.append('file', file);
if (file) {
formData.append('file', file);
}
if (docId) {
formData.append('doc_id', docId);
}
const url = `${BACKEND_BASE_URL}/ai/analyze/txt`;
const params = new URLSearchParams();
params.append('analysis_type', analysisType);
const url = `${BACKEND_BASE_URL}/ai/analyze/txt?${params.toString()}`;
try {
const response = await fetch(url, {
@@ -1480,28 +1581,35 @@ export const aiApi = {
// ==================== Word AI 解析 ====================
/**
* 使用 AI 解析 Word 文档,提取结构化数据
* 使用 AI 解析 Word 文档,提取结构化数据或生成图表
*/
async analyzeWordWithAI(
file: File,
userHint: string = ''
file: File | null,
docId: string | null = null,
userHint: string = '',
analysisType: WordAnalysisType = 'structured'
): Promise<{
success: boolean;
type?: string;
headers?: string[];
rows?: string[][];
key_values?: Record<string, string>;
list_items?: string[];
summary?: string;
filename?: string;
analysis_type?: string;
result?: any;
error?: string;
}> {
const formData = new FormData();
formData.append('file', file);
if (file) {
formData.append('file', file);
}
if (docId) {
formData.append('doc_id', docId);
}
if (userHint) {
formData.append('user_hint', userHint);
}
const url = `${BACKEND_BASE_URL}/ai/analyze/word`;
const params = new URLSearchParams();
params.append('analysis_type', analysisType);
const url = `${BACKEND_BASE_URL}/ai/analyze/word?${params.toString()}`;
try {
const response = await fetch(url, {

View File

@@ -10,7 +10,7 @@ import {
ChevronDown,
ChevronUp,
FileSpreadsheet,
File,
File as FileIcon,
Table,
CheckCircle,
AlertCircle,
@@ -107,6 +107,15 @@ const Documents: React.FC = () => {
const [mdStreaming, setMdStreaming] = useState(false);
const [mdStreamingContent, setMdStreamingContent] = useState('');
// Word AI 分析相关状态
const [wordAnalysis, setWordAnalysis] = useState<any>(null);
const [wordAnalysisType, setWordAnalysisType] = useState<'structured' | 'charts'>('structured');
const [wordUserHint, setWordUserHint] = useState('');
// TXT AI 分析相关状态
const [txtAnalysis, setTxtAnalysis] = useState<any>(null);
const [txtAnalysisType, setTxtAnalysisType] = useState<'structured' | 'charts'>('structured');
// RAG 向量检索相关状态
const [ragStatus, setRagStatus] = useState<{ vector_count: number; collections: string[] } | null>(null);
const [ragSearchQuery, setRagSearchQuery] = useState('');
@@ -114,6 +123,17 @@ const Documents: React.FC = () => {
const [ragResults, setRagResults] = useState<any[]>([]);
const [ragRebuilding, setRagRebuilding] = useState(false);
// 选中的文档详情
const [selectedDocument, setSelectedDocument] = useState<{
doc_id: string;
original_filename: string;
doc_type: string;
content?: string;
structured_data?: any;
metadata?: any;
} | null>(null);
const [loadingDocument, setLoadingDocument] = useState(false);
// 解析选项
const [parseOptions, setParseOptions] = useState({
parseAllSheets: false,
@@ -268,6 +288,33 @@ const Documents: React.FC = () => {
return { ...s, status: 'failed', progress: 0, error: fileResult?.error || '处理失败' };
}
}));
// 设置第一个成功文件的 uploadedFile
const firstSuccessIdx = fileResults.findIndex((fr: any) => fr?.success);
if (firstSuccessIdx >= 0 && acceptedFiles[firstSuccessIdx]) {
const firstFile = acceptedFiles[firstSuccessIdx];
const firstResult = fileResults[firstSuccessIdx];
const ext = firstFile.name.split('.').pop()?.toLowerCase();
// 设置 uploadedFile
setUploadedFile(firstFile);
// 对于 Excel 文件,获取 parseResult
if (ext === 'xlsx' || ext === 'xls') {
// 调用 parseDocument 获取 parseResult
if (firstResult?.file_path) {
try {
const parseResult = await backendApi.parseDocument(firstResult.file_path);
if (parseResult.success) {
setParseResult(parseResult as any);
}
} catch (parseErr) {
console.warn('获取 parseResult 失败:', parseErr);
}
}
}
}
loadDocuments();
return;
} else if (status.status === 'failure') {
@@ -446,24 +493,79 @@ const Documents: React.FC = () => {
// 基于 AI 分析生成图表
const handleGenerateCharts = async () => {
if (!aiAnalysis || !aiAnalysis.success) {
// 检查是否有任何 AI 分析结果
const hasExcelAI = aiAnalysis?.success;
const hasMdAI = mdAnalysis?.success;
const hasWordAI = wordAnalysis?.success;
const hasTxtAI = txtAnalysis?.success;
if (!hasExcelAI && !hasMdAI && !hasWordAI && !hasTxtAI) {
toast.error('请先进行 AI 分析');
return;
}
// 如果是 Markdown 分析已有图表,直接显示
if (hasMdAI && mdAnalysis?.chart_data?.tables) {
setAnalysisCharts({
success: true,
charts: { tables: mdAnalysis.chart_data.tables },
statistics: mdAnalysis.chart_data.key_statistics
});
toast.success('图表生成完成');
return;
}
// 如果是 Word 分析已有图表,直接显示
if (hasWordAI && wordAnalysis?.result?.charts) {
setAnalysisCharts({
success: true,
charts: wordAnalysis.result.charts,
statistics: wordAnalysis.result.statistics
});
toast.success('图表生成完成');
return;
}
// 如果是 TXT 分析已有图表,直接显示
if (hasTxtAI && txtAnalysis?.result?.charts) {
setAnalysisCharts({
success: true,
charts: txtAnalysis.result.charts,
statistics: txtAnalysis.result.statistics
});
toast.success('图表生成完成');
return;
}
// 尝试从各种分析结果中提取文本并生成图表
let analysisText = '';
if (aiAnalysis.analysis?.analysis) {
analysisText = aiAnalysis.analysis.analysis;
} else if (aiAnalysis.analysis?.sheets) {
const sheets = aiAnalysis.analysis.sheets;
if (sheets && Object.keys(sheets).length > 0) {
const firstSheet = Object.keys(sheets)[0];
analysisText = sheets[firstSheet]?.analysis || '';
let fileType = 'unknown';
if (hasExcelAI) {
if (aiAnalysis.analysis?.analysis) {
analysisText = aiAnalysis.analysis.analysis;
fileType = 'excel';
} else if (aiAnalysis.analysis?.sheets) {
const sheets = aiAnalysis.analysis.sheets;
if (sheets && Object.keys(sheets).length > 0) {
const firstSheet = Object.keys(sheets)[0];
analysisText = sheets[firstSheet]?.analysis || '';
fileType = 'excel';
}
}
} else if (hasMdAI && mdAnalysis?.analysis) {
analysisText = mdAnalysis.analysis;
fileType = 'markdown';
} else if (hasWordAI && wordAnalysis?.result?.summary) {
analysisText = wordAnalysis.result.summary;
fileType = 'word';
} else if (hasTxtAI && txtAnalysis?.result?.summary) {
analysisText = txtAnalysis.result.summary;
fileType = 'txt';
}
if (!analysisText?.trim()) {
toast.error('无法获取 AI 分析结果');
toast.error('无法获取 AI 分析文本结果');
return;
}
@@ -474,7 +576,7 @@ const Documents: React.FC = () => {
const result = await aiApi.extractAndGenerateCharts({
analysis_text: analysisText,
original_filename: uploadedFile?.name || 'unknown',
file_type: 'excel'
file_type: fileType
});
if (result.success) {
@@ -592,6 +694,9 @@ const Documents: React.FC = () => {
const result = await backendApi.deleteDocument(docId);
if (result.success) {
setDocuments(prev => prev.filter(d => d.doc_id !== docId));
if (selectedDocument?.doc_id === docId) {
setSelectedDocument(null);
}
toast.success('文档已删除');
}
} catch (err: any) {
@@ -599,6 +704,95 @@ const Documents: React.FC = () => {
}
};
const handleSelectDocument = async (docId: string) => {
setLoadingDocument(true);
try {
const result = await backendApi.getDocument(docId);
if (result.success && result.document) {
setSelectedDocument(result.document);
const doc = result.document;
// 优先使用 file_path 调用 parseDocument 获取完整解析结果
const filePath = doc.metadata?.file_path;
if (filePath) {
try {
const parseResult = await backendApi.parseDocument(filePath);
if (parseResult.success) {
setParseResult(parseResult as any);
const ext = doc.original_filename.split('.').pop()?.toLowerCase() || doc.doc_type;
const fakeFile = new File([], doc.original_filename, { type: getMimeType(ext) });
setUploadedFile(fakeFile);
toast.success('已加载文档: ' + doc.original_filename);
setLoadingDocument(false);
return;
} else {
console.warn('parseDocument returned success:false, using fallback');
}
} catch (parseErr) {
console.warn('parseDocument failed, fallback to structured_data:', parseErr);
}
}
// 后备:使用 structured_data 构建 parseResult
const ext = doc.original_filename.split('.').pop()?.toLowerCase() || doc.doc_type;
const fakeFile = new File([], doc.original_filename, { type: getMimeType(ext) });
if (doc.structured_data) {
const mockParseResult: ExcelParseResult = {
success: true,
data: {},
metadata: {
filename: doc.filename,
original_filename: doc.original_filename,
extension: doc.doc_type,
doc_type: doc.doc_type as any,
file_size: doc.metadata?.file_size || 0,
}
};
if (doc.structured_data.tables && doc.structured_data.tables.length > 0) {
const firstTable = doc.structured_data.tables[0];
mockParseResult.data = {
columns: firstTable.headers || [],
rows: (firstTable.rows || []).map((row: string[]) => {
const obj: Record<string, any> = {};
(firstTable.headers || []).forEach((h: string, i: number) => {
obj[h] = row[i] || '';
});
return obj;
}),
row_count: firstTable.rows?.length || 0,
column_count: firstTable.headers?.length || 0,
};
}
if (doc.structured_data.sheets) {
mockParseResult.data.sheets = doc.structured_data.sheets;
}
setParseResult(mockParseResult);
} else if (doc.content) {
setParseResult({
success: true,
data: { content: doc.content },
metadata: {
filename: doc.filename,
original_filename: doc.original_filename,
extension: doc.doc_type,
doc_type: doc.doc_type as any,
file_size: doc.metadata?.file_size || 0,
}
});
}
setUploadedFile(fakeFile);
toast.success('已加载文档: ' + doc.original_filename);
} else {
toast.error(result.error || '获取文档详情失败');
}
} catch (err: any) {
toast.error(err.message || '获取文档详情失败');
} finally {
setLoadingDocument(false);
}
};
const filteredDocs = documents.filter(doc =>
doc.original_filename.toLowerCase().includes(search.toLowerCase())
);
@@ -612,7 +806,7 @@ const Documents: React.FC = () => {
case 'doc':
return <FileText size={28} />;
default:
return <File size={28} />;
return <FileIcon size={28} />;
}
};
@@ -632,11 +826,17 @@ const Documents: React.FC = () => {
setMdAnalysis(null);
try {
const result = await aiApi.analyzeMarkdown(uploadedFile, {
analysisType: mdAnalysisType,
userPrompt: mdUserPrompt,
sectionNumber: mdSelectedSection || undefined
});
// 判断是从历史文档还是本地上传
const docId = selectedDocument?.doc_id && uploadedFile.size === 0 ? selectedDocument.doc_id : undefined;
const result = await aiApi.analyzeMarkdown(
uploadedFile.size > 0 ? uploadedFile : null,
{
docId: docId || undefined,
analysisType: mdAnalysisType,
userPrompt: mdUserPrompt,
sectionNumber: mdSelectedSection || undefined
}
);
if (result.success) {
toast.success('Markdown AI 分析完成');
@@ -701,6 +901,71 @@ const Documents: React.FC = () => {
}
};
// Word AI 分析处理
const handleWordAnalyze = async () => {
if (!uploadedFile || !isWordFile(uploadedFile.name)) {
toast.error('请先上传 Word 文件');
return;
}
setAnalyzing(true);
setWordAnalysis(null);
try {
// 判断是从历史文档还是本地上传
const docId = selectedDocument?.doc_id && uploadedFile.size === 0 ? selectedDocument.doc_id : null;
const result = await aiApi.analyzeWordWithAI(
uploadedFile.size > 0 ? uploadedFile : null,
docId,
wordUserHint,
wordAnalysisType
);
if (result.success) {
toast.success('Word AI 分析完成');
setWordAnalysis(result);
} else {
toast.error(result.error || 'AI 分析失败');
}
} catch (error: any) {
toast.error(error.message || 'AI 分析失败');
} finally {
setAnalyzing(false);
}
};
// TXT AI 分析处理
const handleTxtAnalyze = async () => {
if (!uploadedFile || !isTxtFile(uploadedFile.name)) {
toast.error('请先上传 TXT 文件');
return;
}
setAnalyzing(true);
setTxtAnalysis(null);
try {
// 判断是从历史文档还是本地上传
const docId = selectedDocument?.doc_id && uploadedFile.size === 0 ? selectedDocument.doc_id : null;
const result = await aiApi.analyzeTxt(
uploadedFile.size > 0 ? uploadedFile : null,
docId,
txtAnalysisType
);
if (result.success) {
toast.success('TXT AI 分析完成');
setTxtAnalysis(result);
} else {
toast.error(result.error || 'AI 分析失败');
}
} catch (error: any) {
toast.error(error.message || 'AI 分析失败');
} finally {
setAnalyzing(false);
}
};
const getMdAnalysisIcon = (type: string) => {
switch (type) {
case 'summary': return <FileText size={20} />;
@@ -724,6 +989,18 @@ const Documents: React.FC = () => {
return `${(bytes / Math.pow(k, i)).toFixed(2)} ${sizes[i]}`;
};
const getMimeType = (ext: string): string => {
const mimeTypes: Record<string, string> = {
'xlsx': 'application/vnd.openxmlformats-officedocument.spreadsheetml.sheet',
'xls': 'application/vnd.ms-excel',
'docx': 'application/vnd.openxmlformats-officedocument.wordprocessingml.document',
'doc': 'application/msword',
'md': 'text/markdown',
'txt': 'text/plain',
};
return mimeTypes[ext] || 'application/octet-stream';
};
const getAnalysisIcon = (type: string) => {
switch (type) {
case 'general': return <FileText size={20} />;
@@ -739,6 +1016,16 @@ const Documents: React.FC = () => {
return ext === 'xlsx' || ext === 'xls';
};
const isWordFile = (filename: string) => {
const ext = filename.split('.').pop()?.toLowerCase();
return ext === 'docx';
};
const isTxtFile = (filename: string) => {
const ext = filename.split('.').pop()?.toLowerCase();
return ext === 'txt';
};
return (
<div className="space-y-8 pb-10">
<section className="flex flex-col md:flex-row md:items-center justify-between gap-4">
@@ -1055,7 +1342,7 @@ const Documents: React.FC = () => {
<FileText size={12} className="mr-1" /> Markdown
</Badge>
<Badge variant="outline" className="bg-gray-500/10 text-gray-600 border-gray-200 text-xs">
<File size={12} className="mr-1" />
<FileIcon size={12} className="mr-1" />
</Badge>
</div>
</div>
@@ -1064,6 +1351,38 @@ const Documents: React.FC = () => {
)}
</Card>
{/* 从历史文档中选择 */}
{documents.length > 0 && (
<Card className="border-none shadow-md">
<CardHeader className="pb-4">
<CardTitle className="flex items-center gap-2">
<Clock className="text-primary" size={20} />
</CardTitle>
</CardHeader>
<CardContent className="space-y-3">
<Select
value=""
onValueChange={async (docId) => {
if (!docId) return;
await handleSelectDocument(docId);
}}
>
<SelectTrigger className="bg-background">
<SelectValue placeholder="选择历史文档..." />
</SelectTrigger>
<SelectContent>
{documents.slice(0, 20).map((doc) => (
<SelectItem key={doc.doc_id} value={doc.doc_id}>
{doc.original_filename}
</SelectItem>
))}
</SelectContent>
</Select>
</CardContent>
</Card>
)}
{/* Excel 解析选项 */}
{uploadedFile && isExcelFile(uploadedFile.name) && (
<Card className="border-none shadow-md">
@@ -1238,8 +1557,117 @@ const Documents: React.FC = () => {
</Card>
)}
{/* Word AI 分析选项 */}
{uploadedFile && isWordFile(uploadedFile.name) && (
<Card className="border-none shadow-md bg-gradient-to-br from-blue-500/5 to-cyan-500/5">
<CardHeader className="pb-4">
<CardTitle className="flex items-center gap-2">
<Sparkles className="text-blue-500" size={20} />
Word AI
</CardTitle>
</CardHeader>
<CardContent className="space-y-4">
<div className="space-y-2">
<Label htmlFor="word-analysis-type" className="text-sm"></Label>
<Select value={wordAnalysisType} onValueChange={(value: any) => setWordAnalysisType(value)}>
<SelectTrigger id="word-analysis-type" className="bg-background">
<SelectValue />
</SelectTrigger>
<SelectContent>
<SelectItem value="structured">
<div className="flex items-center gap-2">
<FileText size={16} />
<div className="flex flex-col">
<span className="font-medium"></span>
<span className="text-xs text-muted-foreground"></span>
</div>
</div>
</SelectItem>
<SelectItem value="charts">
<div className="flex items-center gap-2">
<TrendingUp size={16} />
<div className="flex flex-col">
<span className="font-medium"></span>
<span className="text-xs text-muted-foreground"></span>
</div>
</div>
</SelectItem>
</SelectContent>
</Select>
</div>
<div className="space-y-2">
<Label htmlFor="word-user-prompt" className="text-sm"></Label>
<Textarea
id="word-user-prompt"
placeholder="例如:请提取文档中的表格数据..."
value={wordUserHint}
onChange={(e) => setWordUserHint(e.target.value)}
className="bg-background resize-none"
rows={2}
/>
</div>
<Button
onClick={handleWordAnalyze}
disabled={analyzing}
className="w-full bg-gradient-to-r from-blue-500 to-cyan-600 hover:from-blue-500/90 hover:to-cyan-600/90"
>
{analyzing ? <><Loader2 className="mr-2 animate-spin" size={16} /> ...</> : <><Sparkles className="mr-2" size={16} /> AI </>}
</Button>
</CardContent>
</Card>
)}
{/* TXT AI 分析选项 */}
{uploadedFile && isTxtFile(uploadedFile.name) && (
<Card className="border-none shadow-md bg-gradient-to-br from-amber-500/5 to-orange-500/5">
<CardHeader className="pb-4">
<CardTitle className="flex items-center gap-2">
<Sparkles className="text-amber-500" size={20} />
TXT AI
</CardTitle>
</CardHeader>
<CardContent className="space-y-4">
<div className="space-y-2">
<Label htmlFor="txt-analysis-type" className="text-sm"></Label>
<Select value={txtAnalysisType} onValueChange={(value: any) => setTxtAnalysisType(value)}>
<SelectTrigger id="txt-analysis-type" className="bg-background">
<SelectValue />
</SelectTrigger>
<SelectContent>
<SelectItem value="structured">
<div className="flex items-center gap-2">
<FileText size={16} />
<div className="flex flex-col">
<span className="font-medium"></span>
<span className="text-xs text-muted-foreground"></span>
</div>
</div>
</SelectItem>
<SelectItem value="charts">
<div className="flex items-center gap-2">
<TrendingUp size={16} />
<div className="flex flex-col">
<span className="font-medium"></span>
<span className="text-xs text-muted-foreground"></span>
</div>
</div>
</SelectItem>
</SelectContent>
</Select>
</div>
<Button
onClick={handleTxtAnalyze}
disabled={analyzing}
className="w-full bg-gradient-to-r from-amber-500 to-orange-600 hover:from-amber-500/90 hover:to-orange-600/90"
>
{analyzing ? <><Loader2 className="mr-2 animate-spin" size={16} /> ...</> : <><Sparkles className="mr-2" size={16} /> AI </>}
</Button>
</CardContent>
</Card>
)}
{/* 数据操作 */}
{parseResult?.success && (
{(parseResult?.success || aiAnalysis?.success || mdAnalysis?.success || wordAnalysis?.success || txtAnalysis?.success) && (
<Card className="border-none shadow-md bg-gradient-to-br from-emerald-500/5 to-blue-500/5">
<CardHeader className="pb-4">
<CardTitle className="flex items-center gap-2">
@@ -1248,7 +1676,7 @@ const Documents: React.FC = () => {
</CardTitle>
</CardHeader>
<CardContent className="space-y-3">
<Button onClick={handleGenerateCharts} disabled={!aiAnalysis?.success || analyzingForCharts} className="w-full bg-gradient-to-r from-primary to-purple-600 hover:from-primary/90 hover:to-purple-600/90">
<Button onClick={handleGenerateCharts} disabled={!(aiAnalysis?.success || mdAnalysis?.success || wordAnalysis?.success || txtAnalysis?.success) || analyzingForCharts} className="w-full bg-gradient-to-r from-primary to-purple-600 hover:from-primary/90 hover:to-purple-600/90">
{analyzingForCharts ? <><Loader2 className="mr-2 animate-spin" size={16} />...</> : <><Brain size={16} className="mr-2" />AI </>}
</Button>
<Button onClick={openExportDialog} variant="outline" className="w-full">
@@ -1338,6 +1766,114 @@ const Documents: React.FC = () => {
</Card>
)}
{/* Word AI 分析结果 */}
{wordAnalysis && (
<Card className="border-none shadow-md border-l-4 border-l-blue-500">
<CardHeader>
<div className="flex items-center justify-between">
<div className="space-y-1">
<CardTitle className="flex items-center gap-2">
<Sparkles className="text-blue-500" size={20} />
Word AI
</CardTitle>
{wordAnalysis.filename && (
<CardDescription>
{wordAnalysis.filename} {wordAnalysis.analysis_type}
</CardDescription>
)}
</div>
</div>
</CardHeader>
<CardContent className="max-h-[500px] overflow-y-auto">
{wordAnalysis.analysis_type === 'charts' && wordAnalysis.result?.charts ? (
<AIChartDisplay
charts={wordAnalysis.result.charts}
statistics={wordAnalysis.result.statistics}
distributions={wordAnalysis.result.distributions}
/>
) : wordAnalysis.result?.success === false ? (
<p className="text-sm text-destructive">{wordAnalysis.result?.error || wordAnalysis.error || '分析失败'}</p>
) : wordAnalysis.result?.summary ? (
<Markdown content={wordAnalysis.result.summary} />
) : wordAnalysis.result?.headers && wordAnalysis.result?.rows ? (
<div className="space-y-2">
<p className="text-sm font-medium"></p>
<div className="border rounded-lg overflow-x-auto">
<TableComponent>
<TableHeader>
<TableRow>
{wordAnalysis.result.headers.map((header: string, idx: number) => (
<TableHead key={idx}>{header}</TableHead>
))}
</TableRow>
</TableHeader>
<TableBody>
{wordAnalysis.result.rows.slice(0, 20).map((row: string[], idx: number) => (
<TableRow key={idx}>
{row.map((cell: string, cidx: number) => (
<TableCell key={cidx}>{cell}</TableCell>
))}
</TableRow>
))}
</TableBody>
</TableComponent>
</div>
</div>
) : (
<p className="text-sm text-muted-foreground"></p>
)}
</CardContent>
</Card>
)}
{/* TXT AI 分析结果 */}
{txtAnalysis && (
<Card className="border-none shadow-md border-l-4 border-l-amber-500">
<CardHeader>
<div className="flex items-center justify-between">
<div className="space-y-1">
<CardTitle className="flex items-center gap-2">
<Sparkles className="text-amber-500" size={20} />
TXT AI
</CardTitle>
{txtAnalysis.filename && (
<CardDescription>
{txtAnalysis.filename} {txtAnalysis.analysis_type}
</CardDescription>
)}
</div>
</div>
</CardHeader>
<CardContent className="max-h-[500px] overflow-y-auto">
{txtAnalysis.analysis_type === 'charts' && txtAnalysis.result?.charts ? (
<AIChartDisplay
charts={txtAnalysis.result.charts}
statistics={txtAnalysis.result.statistics}
distributions={txtAnalysis.result.distributions}
/>
) : txtAnalysis.result?.success === false ? (
<p className="text-sm text-destructive">{txtAnalysis.result?.error || txtAnalysis.error || '分析失败'}</p>
) : txtAnalysis.result?.summary ? (
<Markdown content={txtAnalysis.result.summary} />
) : txtAnalysis.result?.key_values && Object.keys(txtAnalysis.result.key_values || {}).length > 0 ? (
<div className="space-y-2">
<p className="text-sm font-medium"></p>
<div className="grid grid-cols-2 gap-2">
{Object.entries(txtAnalysis.result.key_values || {}).map(([key, value]: [string, any]) => (
<div key={key} className="flex gap-2 p-2 bg-muted/30 rounded-lg">
<span className="font-medium text-sm">{key}:</span>
<span className="text-sm text-muted-foreground">{String(value)}</span>
</div>
))}
</div>
</div>
) : (
<p className="text-sm text-muted-foreground"></p>
)}
</CardContent>
</Card>
)}
{/* 图表显示 */}
{analysisCharts && (
<Card className="border-none shadow-md border-l-4 border-l-indigo-500">
@@ -1482,6 +2018,95 @@ const Documents: React.FC = () => {
</CardContent>
</Card>
{/* 已上传文档详情 */}
{selectedDocument && (
<Card className="border-none shadow-md border-l-4 border-l-cyan-500">
<CardHeader>
<div className="flex items-center justify-between">
<div className="space-y-1">
<CardTitle className="flex items-center gap-2">
<FileText className="text-cyan-500" size={20} />
</CardTitle>
<CardDescription>
{selectedDocument.original_filename} {selectedDocument.doc_type.toUpperCase()}
</CardDescription>
</div>
<Button variant="ghost" size="sm" onClick={() => setSelectedDocument(null)}>
</Button>
</div>
</CardHeader>
<CardContent className="max-h-[500px] overflow-y-auto">
{loadingDocument ? (
<div className="flex items-center justify-center py-8">
<Loader2 className="animate-spin" size={24} />
<span className="ml-2">...</span>
</div>
) : (
<div className="space-y-4">
{selectedDocument.structured_data?.tables && selectedDocument.structured_data.tables.length > 0 && (
<div className="space-y-2">
<p className="text-sm font-medium"></p>
{selectedDocument.structured_data.tables.slice(0, 3).map((table: any, idx: number) => (
<div key={idx} className="border rounded-lg overflow-x-auto">
{table.headers && (
<TableComponent>
<TableHeader>
<TableRow>
{table.headers.map((header: string, hIdx: number) => (
<TableHead key={hIdx}>{header}</TableHead>
))}
</TableRow>
</TableHeader>
<TableBody>
{(table.rows || []).slice(0, 10).map((row: string[], rIdx: number) => (
<TableRow key={rIdx}>
{row.map((cell: string, cIdx: number) => (
<TableCell key={cIdx}>{cell}</TableCell>
))}
</TableRow>
))}
</TableBody>
</TableComponent>
)}
</div>
))}
</div>
)}
{selectedDocument.structured_data?.key_values && Object.keys(selectedDocument.structured_data.key_values || {}).length > 0 && (
<div className="space-y-2">
<p className="text-sm font-medium"></p>
<div className="grid grid-cols-2 gap-2">
{Object.entries(selectedDocument.structured_data.key_values || {}).map(([key, value]: [string, any]) => (
<div key={key} className="flex gap-2 p-2 bg-muted/30 rounded-lg">
<span className="font-medium text-sm">{key}:</span>
<span className="text-sm text-muted-foreground">{String(value)}</span>
</div>
))}
</div>
</div>
)}
{selectedDocument.content && (
<div className="space-y-2">
<p className="text-sm font-medium"></p>
<div className="p-3 bg-muted/30 rounded-lg max-h-[300px] overflow-y-auto">
<p className="text-sm whitespace-pre-wrap font-mono">
{selectedDocument.content.slice(0, 2000)}
{selectedDocument.content.length > 2000 && '...'}
</p>
</div>
</div>
)}
{!selectedDocument.content && !selectedDocument.structured_data?.tables && !selectedDocument.structured_data?.key_values && (
<p className="text-sm text-muted-foreground text-center py-4"></p>
)}
</div>
)}
</CardContent>
</Card>
)}
{/* 文档列表 */}
<Card className="border-none shadow-md">
<CardHeader>
@@ -1509,7 +2134,14 @@ const Documents: React.FC = () => {
) : (filteredDocs?.length ?? 0) > 0 ? (
<div className="space-y-3">
{(filteredDocs || []).map(doc => (
<div key={doc.doc_id} className="flex items-center gap-4 p-4 rounded-xl border border-transparent hover:bg-muted/30 transition-all group">
<div
key={doc.doc_id}
className={cn(
"flex items-center gap-4 p-4 rounded-xl border border-transparent hover:bg-muted/30 transition-all group cursor-pointer",
selectedDocument?.doc_id === doc.doc_id && "bg-primary/5 border-primary/20"
)}
onClick={() => handleSelectDocument(doc.doc_id)}
>
<div className={cn(
"w-10 h-10 rounded-lg flex items-center justify-center shrink-0",
doc.doc_type === 'xlsx' ? "bg-emerald-500/10 text-emerald-500" : "bg-blue-500/10 text-blue-500"
@@ -1522,7 +2154,10 @@ const Documents: React.FC = () => {
{doc.doc_type.toUpperCase()} {format(new Date(doc.created_at), 'yyyy-MM-dd HH:mm')}
</p>
</div>
<Button variant="ghost" size="icon" className="text-destructive hover:bg-destructive/10 opacity-0 group-hover:opacity-100" onClick={() => handleDelete(doc.doc_id)}>
<Button variant="ghost" size="icon" className="text-destructive hover:bg-destructive/10 opacity-0 group-hover:opacity-100" onClick={(e) => {
e.stopPropagation();
handleDelete(doc.doc_id);
}}>
<Trash2 size={16} />
</Button>
</div>