# # Copyright 2024 The InfiniFlow Authors. All Rights Reserved. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. # import asyncio try: import nest_asyncio nest_asyncio.apply() except Exception: pass import inspect import json import os import random import re import logging import tempfile from functools import partial from typing import Any from agent.component.base import ComponentBase, ComponentParamBase from jinja2.sandbox import SandboxedEnvironment _jinja2_sandbox = SandboxedEnvironment() from common.connection_utils import timeout from common.misc_utils import get_uuid from common import settings from api.db.joint_services.memory_message_service import queue_save_to_memory_task class MessageParam(ComponentParamBase): """ Define the Message component parameters. """ def __init__(self): super().__init__() self.content = [] self.stream = True self.output_format = None # default output format self.auto_play = False self.outputs = { "content": { "type": "str" }, "downloads": { "type": "list" } } def check(self): self.check_empty(self.content, "[Message] Content") self.check_boolean(self.stream, "[Message] stream") return True class Message(ComponentBase): component_name = "Message" @staticmethod def _is_download_info(value: Any) -> bool: return isinstance(value, dict) and all( key in value for key in ("doc_id", "filename", "mime_type") ) @staticmethod def _download_info_includes_content(value: Any) -> bool: return isinstance(value, dict) and bool(value.get("include_download_info_in_content")) @staticmethod def _normalize_download_info(value: Any) -> Any: if isinstance(value, list): return [Message._normalize_download_info(item) for item in value] if not isinstance(value, dict): return value normalized = value.copy() normalized.pop("include_download_info_in_content", None) return normalized def _extract_downloads(self, value: Any) -> list[dict[str, Any]]: if isinstance(value, str): try: value = json.loads(value) except Exception: return [] if self._is_download_info(value): return [value] if isinstance(value, list) and all(self._is_download_info(item) for item in value): return value return [] def _stringify_message_value( self, value: Any, delimiter: str = None, downloads: list[dict[str, Any]] | None = None, fallback_to_str: bool = False, ) -> str: extracted_downloads = self._extract_downloads(value) if extracted_downloads: if downloads is not None: downloads.extend(self._normalize_download_info(item) for item in extracted_downloads) if any(self._download_info_includes_content(item) for item in extracted_downloads): if isinstance(value, str): try: value = json.loads(value) except Exception: return value try: return json.dumps(self._normalize_download_info(value), ensure_ascii=False) except Exception: if fallback_to_str: return str(value) return "" return "" if value is None: return "" if isinstance(value, list) and delimiter: return delimiter.join([str(vv) for vv in value]) if isinstance(value, str): return value try: return json.dumps(value, ensure_ascii=False) except Exception: if fallback_to_str: return str(value) return "" def get_input_elements(self) -> dict[str, Any]: return self.get_input_elements_from_text("".join(self._param.content)) def get_kwargs( self, script: str, kwargs: dict = {}, delimiter: str = None, downloads: list[dict[str, Any]] | None = None, ) -> tuple[str, dict[str, str | list | Any]]: for k,v in self.get_input_elements_from_text(script).items(): if k in kwargs: continue v = v["value"] if not v: v = "" ans = "" if isinstance(v, partial): iter_obj = v() if inspect.isasyncgen(iter_obj): ans = asyncio.run(self._consume_async_gen(iter_obj)) else: for t in iter_obj: ans += t else: ans = self._stringify_message_value(v, delimiter, downloads) if not ans: ans = "" kwargs[k] = ans self.set_input_value(k, ans) _kwargs = {} for n, v in kwargs.items(): _n = re.sub("[@:.]", "_", n) script = re.sub(r"\{%s\}" % re.escape(n), _n, script) _kwargs[_n] = v return script, _kwargs async def _consume_async_gen(self, agen): buf = "" async for t in agen: buf += t return buf async def _stream(self, rand_cnt:str): s = 0 all_content = "" cache = {} downloads = [] for r in re.finditer(self.variable_ref_patt, rand_cnt, flags=re.DOTALL): if self.check_if_canceled("Message streaming"): return all_content += rand_cnt[s: r.start()] yield rand_cnt[s: r.start()] s = r.end() exp = r.group(1) if exp in cache: yield cache[exp] all_content += cache[exp] continue v = self._canvas.get_variable_value(exp) if v is None: v = "" if isinstance(v, partial): cnt = "" iter_obj = v() if inspect.isasyncgen(iter_obj): async for t in iter_obj: if self.check_if_canceled("Message streaming"): return all_content += t cnt += t yield t else: for t in iter_obj: if self.check_if_canceled("Message streaming"): return all_content += t cnt += t yield t self.set_input_value(exp, cnt) continue elif inspect.isawaitable(v): v = await v v = self._stringify_message_value( v, downloads=downloads, fallback_to_str=True ) yield v self.set_input_value(exp, v) all_content += v cache[exp] = v if s < len(rand_cnt): if self.check_if_canceled("Message streaming"): return all_content += rand_cnt[s: ] yield rand_cnt[s: ] self.set_output("downloads", downloads) self.set_output("content", all_content) self._convert_content(all_content) await self._save_to_memory(all_content) def _is_jinjia2(self, content:str) -> bool: patt = [ r"\{%.*%\}", "{{", "}}" ] return any([re.search(p, content) for p in patt]) @timeout(int(os.environ.get("COMPONENT_EXEC_TIMEOUT", 10*60))) def _invoke(self, **kwargs): if self.check_if_canceled("Message processing"): return rand_cnt = random.choice(self._param.content) if self._param.stream and not self._is_jinjia2(rand_cnt): self.set_output("content", partial(self._stream, rand_cnt)) return downloads = [] rand_cnt, kwargs = self.get_kwargs(rand_cnt, kwargs, downloads=downloads) template = _jinja2_sandbox.from_string(rand_cnt) try: content = template.render(kwargs) except Exception as e: logging.warning(f"Jinja2 template rendering failed: {e}") content = rand_cnt # fallback to unrendered content if self.check_if_canceled("Message processing"): return for n, v in kwargs.items(): content = re.sub(n, v, content) self.set_output("downloads", downloads) self.set_output("content", content) self._convert_content(content) self._save_to_memory(content) def thoughts(self) -> str: return "" def _parse_markdown_table_lines(self, table_lines: list): """ Parse a list of Markdown table lines into a pandas DataFrame. Args: table_lines: List of strings, each representing a row in the Markdown table (excluding separator lines like |---|---|) Returns: pandas DataFrame with the table data, or None if parsing fails """ import pandas as pd if not table_lines: return None rows = [] headers = None def _coerce_excel_cell_type(cell: str): # Convert markdown cell text to native numeric types when safe,so Excel writes numeric cells instead of text. if not isinstance(cell, str): return cell value = cell.strip() if value == "": return "" # Keep values like "00123" as text to avoid losing leading zeros. if re.match(r"^[+-]?0\d+$", value): return cell # Support thousand separators like 1,234 or 1,234.56 numeric_candidate = value if re.match(r"^[+-]?\d{1,3}(,\d{3})+(\.\d+)?$", value): numeric_candidate = value.replace(",", "") if re.match(r"^[+-]?\d+$", numeric_candidate): try: return int(numeric_candidate) except ValueError: return cell if re.match(r"^[+-]?(\d+\.\d+|\d+\.|\.\d+)([eE][+-]?\d+)?$", numeric_candidate) or re.match(r"^[+-]?\d+[eE][+-]?\d+$", numeric_candidate): try: return float(numeric_candidate) except ValueError: return cell return cell for line in table_lines: # Split by | and clean up cells = [cell.strip() for cell in line.split('|')] # Remove empty first and last elements from split (caused by leading/trailing |) cells = [c for c in cells if c] if headers is None: headers = cells else: cells = [_coerce_excel_cell_type(c) for c in cells] rows.append(cells) if headers and rows: # Ensure all rows have same number of columns as headers normalized_rows = [] for row in rows: while len(row) < len(headers): row.append('') normalized_rows.append(row[:len(headers)]) return pd.DataFrame(normalized_rows, columns=headers) return None def _convert_content(self, content): if not self._param.output_format: return import pypandoc doc_id = get_uuid() if self._param.output_format.lower() not in {"markdown", "html", "pdf", "docx", "xlsx"}: self._param.output_format = "markdown" try: if self._param.output_format in {"markdown", "html"}: if isinstance(content, str): converted = pypandoc.convert_text( content, to=self._param.output_format, format="markdown", ) else: converted = pypandoc.convert_file( content, to=self._param.output_format, format="markdown", ) binary_content = converted.encode("utf-8") elif self._param.output_format == "xlsx": import pandas as pd from io import BytesIO # Debug: log the content being parsed logging.info(f"XLSX Parser: Content length={len(content) if content else 0}, first 500 chars: {content[:500] if content else 'None'}") # Try to parse ALL Markdown tables from the content # Each table will be written to a separate sheet tables = [] # List of (sheet_name, dataframe) if isinstance(content, str): lines = content.strip().split('\n') logging.info(f"XLSX Parser: Total lines={len(lines)}, lines starting with '|': {sum(1 for line in lines if line.strip().startswith('|'))}") current_table_lines = [] current_table_title = None pending_title = None in_table = False table_count = 0 for i, line in enumerate(lines): stripped = line.strip() # Check for potential table title (lines before a table) # Look for patterns like "Table 1:", "## Table", or markdown headers if not in_table and stripped and not stripped.startswith('|'): # Check if this could be a table title lower_stripped = stripped.lower() if (lower_stripped.startswith('table') or stripped.startswith('#') or ':' in stripped): pending_title = stripped.lstrip('#').strip() if stripped.startswith('|') and '|' in stripped[1:]: # Check if this is a separator line (|---|---|) cleaned = stripped.replace(' ', '').replace('|', '').replace('-', '').replace(':', '') if cleaned == '': continue # Skip separator line if not in_table: # Starting a new table in_table = True current_table_lines = [] current_table_title = pending_title pending_title = None current_table_lines.append(stripped) elif in_table and not stripped.startswith('|'): # End of current table - save it if current_table_lines: df = self._parse_markdown_table_lines(current_table_lines) if df is not None and not df.empty: table_count += 1 # Generate sheet name if current_table_title: # Clean and truncate title for sheet name sheet_name = current_table_title[:31] sheet_name = sheet_name.replace('/', '_').replace('\\', '_').replace('*', '').replace('?', '').replace('[', '').replace(']', '').replace(':', '') else: sheet_name = f"Table_{table_count}" tables.append((sheet_name, df)) # Reset for next table in_table = False current_table_lines = [] current_table_title = None # Check if this line could be a title for the next table if stripped: lower_stripped = stripped.lower() if (lower_stripped.startswith('table') or stripped.startswith('#') or ':' in stripped): pending_title = stripped.lstrip('#').strip() # Don't forget the last table if content ends with a table if in_table and current_table_lines: df = self._parse_markdown_table_lines(current_table_lines) if df is not None and not df.empty: table_count += 1 if current_table_title: sheet_name = current_table_title[:31] sheet_name = sheet_name.replace('/', '_').replace('\\', '_').replace('*', '').replace('?', '').replace('[', '').replace(']', '').replace(':', '') else: sheet_name = f"Table_{table_count}" tables.append((sheet_name, df)) # Fallback: if no tables found, create single sheet with content if not tables: df = pd.DataFrame({"Content": [content if content else ""]}) tables = [("Data", df)] # Write all tables to Excel, each in a separate sheet excel_io = BytesIO() with pd.ExcelWriter(excel_io, engine='openpyxl') as writer: used_names = set() for sheet_name, df in tables: # Ensure unique sheet names original_name = sheet_name counter = 1 while sheet_name in used_names: suffix = f"_{counter}" sheet_name = original_name[:31-len(suffix)] + suffix counter += 1 used_names.add(sheet_name) df.to_excel(writer, sheet_name=sheet_name, index=False) excel_io.seek(0) binary_content = excel_io.read() logging.info(f"Generated Excel with {len(tables)} sheet(s): {[t[0] for t in tables]}") else: # pdf, docx with tempfile.NamedTemporaryFile(suffix=f".{self._param.output_format}", delete=False) as tmp: tmp_name = tmp.name try: if isinstance(content, str): pypandoc.convert_text( content, to=self._param.output_format, format="markdown", outputfile=tmp_name, ) else: pypandoc.convert_file( content, to=self._param.output_format, format="markdown", outputfile=tmp_name, ) with open(tmp_name, "rb") as f: binary_content = f.read() finally: if os.path.exists(tmp_name): os.remove(tmp_name) settings.STORAGE_IMPL.put(self._canvas._tenant_id, doc_id, binary_content) self.set_output("attachment", { "doc_id":doc_id, "format":self._param.output_format, "file_name":f"{doc_id[:8]}.{self._param.output_format}"}) logging.info(f"Converted content uploaded as {doc_id} (format={self._param.output_format})") except Exception as e: logging.error(f"Error converting content to {self._param.output_format}: {e}") async def _save_to_memory(self, content): if not hasattr(self._param, "memory_ids") or not self._param.memory_ids: return True, "No memory selected." user_id = self._param.user_id if hasattr(self._param, "user_id") else "" if user_id: import re # is variable if re.match(r"^{.*}$", user_id): user_id = self._canvas.get_variable_value(user_id) message_dict = { "user_id": user_id, "agent_id": self._canvas._id, "session_id": self._canvas.task_id, "user_input": self._canvas.get_sys_query(), "agent_response": content } return await queue_save_to_memory_task(self._param.memory_ids, message_dict)