Files
resolutionflow/backend/app/services/unified_chat_service.py
chihlasm e8e12cc7e5 fix: move session lifecycle actions to header bar in AssistantChatPage
- Add persistent session header with title, status badge, Resolve,
  Escalate, and Update Ticket/Share Update buttons — mirrors
  FlowPilotSessionPage pattern exactly
- Update Ticket label when psa_ticket_id present, Share Update otherwise
- Full mobile support via ⋯ overflow menu (Resolve, Escalate, Update, Pause)
- Strip _(not yet completed)_ markers from stored conversation_messages
  in unified_chat_service to prevent stale task lane items from prior
  turns leaking into new sessions via the AI's re-include instruction
- Add currentChatRef guard to handleResumeNew (was missing unlike handleSend)
- Remove Update/Conclude from chatbar — toolbar is now input utilities only

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-07 06:31:24 +00:00

425 lines
16 KiB
Python

"""Unified chat service — chat sessions on ai_sessions table.
Replaces assistant_chat_service for new chat sessions. Messages are stored
in ai_sessions.conversation_messages JSONB. Reuses the same AI calling
infrastructure and system prompt from assistant_chat_service.
"""
import json
import logging
import re
from typing import Any
from uuid import UUID
from sqlalchemy import select
from sqlalchemy.ext.asyncio import AsyncSession
from app.models.ai_session import AISession
from app.services.assistant_chat_service import (
ASSISTANT_SYSTEM_PROMPT,
_call_ai,
_auto_title,
)
from app.services.rag_service import search as rag_search, build_rag_context, extract_suggested_flows
logger = logging.getLogger(__name__)
def _parse_fork_marker(ai_content: str) -> tuple[str, dict[str, Any] | None]:
"""Extract [FORK]...[/FORK] JSON from AI response.
Returns (cleaned_content, fork_data_or_None).
The fork marker is stripped from the display text.
"""
match = re.search(r'\[FORK\]\s*([\s\S]*?)\s*\[/FORK\]', ai_content)
if not match:
return ai_content, None
try:
raw = match.group(1).strip()
# Strip markdown fences if AI wrapped it
if raw.startswith("```"):
raw = re.sub(r'^```(?:json)?\s*', '', raw)
raw = re.sub(r'\s*```$', '', raw)
fork_data = json.loads(raw)
except (json.JSONDecodeError, ValueError) as e:
logger.warning("Failed to parse [FORK] marker: %s", e)
return ai_content, None
# Validate structure
if not isinstance(fork_data, dict) or "options" not in fork_data:
logger.warning("Invalid [FORK] data — missing 'options'")
return ai_content, None
options = fork_data["options"]
if not isinstance(options, list) or len(options) < 2:
logger.warning("Invalid [FORK] data — need at least 2 options")
return ai_content, None
# Strip the marker from display text
cleaned = ai_content[:match.start()] + ai_content[match.end():]
cleaned = cleaned.strip()
return cleaned, fork_data
def _parse_actions_marker(ai_content: str) -> tuple[str, list[dict[str, Any]] | None]:
"""Extract [ACTIONS]...[/ACTIONS] JSON from AI response.
Returns (cleaned_content, actions_list_or_None).
The actions marker is stripped from the display text.
"""
match = re.search(r'\[ACTIONS\]\s*([\s\S]*?)\s*\[/ACTIONS\]', ai_content)
if not match:
return ai_content, None
try:
raw = match.group(1).strip()
if raw.startswith("```"):
raw = re.sub(r'^```(?:json)?\s*', '', raw)
raw = re.sub(r'\s*```$', '', raw)
actions = json.loads(raw)
except (json.JSONDecodeError, ValueError) as e:
logger.warning("Failed to parse [ACTIONS] marker: %s", e)
return ai_content, None
if not isinstance(actions, list) or len(actions) == 0:
logger.warning("Invalid [ACTIONS] data — need at least 1 action")
return ai_content, None
# Validate each action has at minimum a label
valid_actions = []
for a in actions:
if isinstance(a, dict) and a.get("label"):
valid_actions.append({
"label": a["label"],
"command": a.get("command"),
"description": a.get("description", ""),
})
if not valid_actions:
return ai_content, None
cleaned = ai_content[:match.start()] + ai_content[match.end():]
cleaned = cleaned.strip()
return cleaned, valid_actions
def _parse_questions_marker(ai_content: str) -> tuple[str, list[dict[str, Any]] | None]:
"""Extract [QUESTIONS]...[/QUESTIONS] JSON from AI response.
Returns (cleaned_content, questions_list_or_None).
The questions marker is stripped from the display text.
"""
match = re.search(r'\[QUESTIONS\]\s*([\s\S]*?)\s*\[/QUESTIONS\]', ai_content)
if not match:
return ai_content, None
try:
raw = match.group(1).strip()
if raw.startswith("```"):
raw = re.sub(r'^```(?:json)?\s*', '', raw)
raw = re.sub(r'\s*```$', '', raw)
questions = json.loads(raw)
except (json.JSONDecodeError, ValueError) as e:
logger.warning("Failed to parse [QUESTIONS] marker: %s", e)
return ai_content, None
if not isinstance(questions, list) or len(questions) == 0:
logger.warning("Invalid [QUESTIONS] data — need at least 1 question")
return ai_content, None
# Validate each question has at minimum a text field
valid_questions = []
for q in questions:
if isinstance(q, dict) and q.get("text"):
valid_questions.append({
"text": q["text"],
"context": q.get("context", ""),
})
if not valid_questions:
return ai_content, None
cleaned = ai_content[:match.start()] + ai_content[match.end():]
cleaned = cleaned.strip()
return cleaned, valid_questions
async def create_chat_session(
user_id: UUID,
account_id: UUID,
team_id: UUID | None,
intake_content: dict[str, Any],
db: AsyncSession,
) -> AISession:
"""Create a new chat session on ai_sessions."""
first_message = intake_content.get("text", "")
title = _auto_title(first_message) if first_message else "New Chat"
session = AISession(
user_id=user_id,
account_id=account_id,
team_id=team_id,
session_type="chat",
title=title,
intake_type="free_text",
intake_content=intake_content,
status="active",
confidence_tier="discovery",
confidence_score=0.0,
conversation_messages=[],
)
db.add(session)
await db.flush()
return session
async def send_chat_message(
session_id: UUID,
user_id: UUID,
account_id: UUID,
message: str,
db: AsyncSession,
images: list[dict[str, Any]] | None = None,
) -> tuple[str, list[dict[str, Any]], AISession, dict[str, Any] | None, list[dict[str, Any]] | None, list[dict[str, Any]] | None]:
"""Send a message in a chat session and get AI response.
Args:
images: Optional list of {"media_type": str, "data": str (base64)}
for vision content attached to this message.
Returns (ai_content, suggested_flows, session, fork_metadata, actions_data, questions_data).
"""
result = await db.execute(
select(AISession).where(
AISession.id == session_id,
AISession.user_id == user_id,
AISession.session_type == "chat",
)
)
session = result.scalar_one_or_none()
if not session:
raise ValueError("Chat session not found")
if session.status not in ("active", "paused"):
raise ValueError(f"Cannot send messages to a {session.status} session")
# If branching is active, route to branch message handler
if session.is_branching and session.active_branch_id:
from app.services.branch_manager import BranchManager
from app.services.branch_aware_prompt_builder import BranchAwarePromptBuilder
from app.models.session_branch import SessionBranch
branch_result = await db.execute(
select(SessionBranch).where(SessionBranch.id == session.active_branch_id)
)
branch = branch_result.scalar_one_or_none()
if branch:
manager = BranchManager(db)
sibling_ctx = await manager.build_cross_branch_context(branch.id)
builder = BranchAwarePromptBuilder()
session_context = f"Problem: {session.problem_summary or 'Unknown'}. Domain: {session.problem_domain or 'Unknown'}."
prompt_args = builder.build(
branch_messages=branch.conversation_messages,
sibling_summaries=sibling_ctx,
session_context=session_context,
attachments=[],
new_message=message,
revival_context=branch.evidence_description if branch.status == "revived" else None,
)
# Override images from prompt_args with actual images if provided
if images:
prompt_args["images"] = images
ai_content, input_tokens, output_tokens = await _call_ai(**prompt_args)
# Update branch conversation
# Strip _(not yet completed)_ markers before storage (same reason as main path)
stored_message = message.replace("_(not yet completed)_", "(pending)").replace("_(skipped)_", "(skipped)")
msgs = list(branch.conversation_messages or [])
msgs.append({"role": "user", "content": stored_message})
msgs.append({"role": "assistant", "content": ai_content})
branch.conversation_messages = msgs
session.total_input_tokens += input_tokens
session.total_output_tokens += output_tokens
session.step_count += 2
if session.status == "paused":
session.status = "active"
# Check for fork, actions, and questions markers in branch response too
branch_display, branch_fork_data = _parse_fork_marker(ai_content)
branch_display, branch_actions_data = _parse_actions_marker(branch_display)
branch_display, branch_questions_data = _parse_questions_marker(branch_display)
if branch_display != ai_content:
# Store stripped content in branch history
msgs[-1] = {"role": "assistant", "content": branch_display}
branch.conversation_messages = msgs
branch_fork_metadata = None
if branch_fork_data:
try:
fork_point, new_branches = await manager.create_fork(
session_id=session.id,
parent_branch_id=branch.id,
trigger_step_id=None,
fork_reason=branch_fork_data.get("fork_reason", ""),
options=[
{"label": o["label"], "description": o.get("description", "")}
for o in branch_fork_data["options"]
],
)
first_branch = new_branches[0]
await manager.switch_branch(session.id, first_branch.id)
branch_fork_metadata = {
"fork_point_id": str(fork_point.id),
"fork_reason": branch_fork_data.get("fork_reason", ""),
"branches": [
{"branch_id": str(b.id), "label": b.label}
for b in new_branches
],
"active_branch_id": str(first_branch.id),
}
await db.flush()
except Exception:
logger.exception("Failed to create fork within branch for session %s", session.id)
# Persist task lane state on session
if branch_questions_data or branch_actions_data:
session.pending_task_lane = {
"questions": branch_questions_data or [],
"actions": branch_actions_data or [],
}
else:
session.pending_task_lane = None
suggested_flows = extract_suggested_flows(
await rag_search(query=message, account_id=account_id, db=db, limit=8)
)
return branch_display, suggested_flows, session, branch_fork_metadata, branch_actions_data, branch_questions_data
# Auto-title from first message if still default
if session.step_count == 0 and message.strip():
session.title = _auto_title(message)
# Auto-detect problem domain from first message
if not session.problem_summary and message.strip():
session.problem_summary = _auto_title(message)
# RAG search for relevant flows
rag_results = await rag_search(
query=message,
account_id=account_id,
db=db,
limit=8,
)
rag_context = build_rag_context(rag_results)
# Build message history for AI
ai_messages: list[dict[str, Any]] = []
for msg in (session.conversation_messages or []):
if msg.get("role") in ("user", "assistant"):
ai_messages.append({"role": msg["role"], "content": msg["content"]})
# Call AI
ai_content, input_tokens, output_tokens = await _call_ai(
system_base=ASSISTANT_SYSTEM_PROMPT,
rag_context=rag_context,
history=ai_messages,
new_message=message,
images=images,
)
# Check for fork marker in AI response
display_content, fork_data = _parse_fork_marker(ai_content)
# Check for actions marker in AI response
display_content, actions_data = _parse_actions_marker(display_content)
# Check for questions marker in AI response
display_content, questions_data = _parse_questions_marker(display_content)
logger.info(
"Marker parsing results — actions: %s, questions: %s, fork: %s, raw_length: %d, display_length: %d",
bool(actions_data), bool(questions_data), bool(fork_data),
len(ai_content), len(display_content),
)
# Store DISPLAY content (markers stripped) in conversation_messages.
# The format reminder in the user message + system prompt final reminder
# are sufficient to keep the AI emitting markers on subsequent turns.
#
# Strip _(not yet completed)_ task markers from the stored user message.
# The AI processes them correctly on the current turn, but persisting them
# into history causes the AI to re-inject stale task lane items from prior
# turns — even across unrelated topics in a long session.
stored_message = message.replace("_(not yet completed)_", "(pending)").replace("_(skipped)_", "(skipped)")
msgs = list(session.conversation_messages or [])
msgs.append({"role": "user", "content": stored_message})
msgs.append({"role": "assistant", "content": display_content})
session.conversation_messages = msgs
session.step_count += 2 # message count for display
session.total_input_tokens += input_tokens
session.total_output_tokens += output_tokens
# Resume if paused
if session.status == "paused":
session.status = "active"
# If fork was detected, create branches
fork_metadata = None
if fork_data:
try:
from app.services.branch_manager import BranchManager
mgr = BranchManager(db)
# Create root branch if this is the first fork
if not session.is_branching:
await mgr.create_root_branch(session.id)
fork_point, new_branches = await mgr.create_fork(
session_id=session.id,
parent_branch_id=session.active_branch_id,
trigger_step_id=None,
fork_reason=fork_data.get("fork_reason", ""),
options=[
{"label": o["label"], "description": o.get("description", "")}
for o in fork_data["options"]
],
)
# Don't auto-switch — conversation continues on current branch.
# Branches appear in sidebar. User switches when ready.
fork_metadata = {
"fork_point_id": str(fork_point.id),
"fork_reason": fork_data.get("fork_reason", ""),
"branches": [
{"branch_id": str(b.id), "label": b.label}
for b in new_branches
],
"active_branch_id": str(session.active_branch_id) if session.active_branch_id else None,
}
await db.flush()
logger.info("Created fork with %d branches for session %s", len(new_branches), session_id)
except Exception:
logger.exception("Failed to create fork for session %s", session_id)
# Fork failed but chat message still sent — don't break the response
# Persist task lane state on session
if questions_data or actions_data:
session.pending_task_lane = {
"questions": questions_data or [],
"actions": actions_data or [],
}
else:
session.pending_task_lane = None
suggested_flows = extract_suggested_flows(rag_results)
return display_content, suggested_flows, session, fork_metadata, actions_data, questions_data