from __future__ import annotations
import copy
import json
import math
import os
import re
import sys
import time
import ffmpeg
from datetime import datetime
from dataclasses import dataclass, field
from pathlib import Path
from typing import Any, Callable
from PIL import Image, ImageColor
from shared.utils.audio_video import extract_audio_tracks
from shared.utils.utils import get_video_frame, get_video_info
from shared.deepy.config import (
DEEPY_AUTO_CANCEL_QUEUE_TASKS_DEFAULT,
DEEPY_AUTO_CANCEL_QUEUE_TASKS_KEY,
DEEPY_CONTEXT_TOKENS_DEFAULT,
DEEPY_CONTEXT_TOKENS_KEY,
DEEPY_CUSTOM_SYSTEM_PROMPT_KEY,
DEEPY_VRAM_MODE_ALWAYS_LOADED,
DEEPY_VRAM_MODE_UNLOAD,
DEEPY_VRAM_MODE_UNLOAD_ON_REQUEST,
get_deepy_config_value,
normalize_deepy_auto_cancel_queue_tasks,
normalize_deepy_context_tokens,
normalize_deepy_custom_system_prompt,
normalize_deepy_vram_mode,
)
from shared.deepy import DEFAULT_SYSTEM_PROMPT as ASSISTANT_SYSTEM_PROMPT
from shared.deepy.debug_bootstrap import capture_external_logs
from shared import extra_settings
from shared.deepy import media_registry, tool_settings as deepy_tool_settings, transcription as deepy_transcription, ui_settings as deepy_ui_settings, video_tools as deepy_video_tools, vision as deepy_vision
from shared.gradio import assistant_chat
from shared.prompt_enhancer import qwen35_text
from shared.prompt_enhancer.qwen35_assistant_runtime import (
Qwen35AssistantRuntime,
extract_tool_calls,
render_assistant_messages,
render_text_user_turn_suffix,
render_tool_turn_suffix,
strip_inline_tool_call_text,
strip_tool_blocks,
strip_trailing_stop_markup,
)
ASSISTANT_DEBUG = False
_ENABLE_INCOMPLETE_STOP_ANSWER_HEURISTICS = False
_TOOL_TYPE_MAP = {
"str": "string",
"int": "integer",
"float": "number",
"bool": "boolean",
"list": "array",
"dict": "object",
}
_AI_GEN_NO = 0
_DOCS_DIR = Path(__file__).resolve().parents[2] / "docs"
_DEEPY_DOCS = {
"finetunes": {"title": "Finetunes", "path": _DOCS_DIR / "FINETUNES.md"},
"getting_started": {"title": "Getting Started", "path": _DOCS_DIR / "GETTING_STARTED.md"},
"loras": {"title": "Loras", "path": _DOCS_DIR / "LORAS.md"},
"overview": {"title": "Overview", "path": _DOCS_DIR / "OVERVIEW.md"},
"prompts": {"title": "Prompts", "path": _DOCS_DIR / "PROMPTS.md"},
"vace": {"title": "VACE", "path": _DOCS_DIR / "VACE.md"},
}
_DOC_HEADING_RE = re.compile(r"^(#{1,6})\s+(.+?)\s*$")
_DOC_TOKEN_RE = re.compile(r"[a-z0-9]+")
_SELECTED_REFERENCE_RE = re.compile(r"\b(selected|current(?:ly)?\s+selected|current\s+(?:item|media))\b", flags=re.IGNORECASE)
_RUNTIME_UPDATE_BLOCK_RE = re.compile(r"\s*.*?\s*", flags=re.DOTALL | re.IGNORECASE)
_POST_TRIM_WINDOW_FRACTION = 0.25
_GENERATION_RESERVE_TOKENS = 128
_THINKING_HEADROOM_TOKENS = 512
_VIDEO_TOOL_RUNTIME_REINJECT_TOKENS = 2000
_CONTEXT_LIMIT_MAX_RETRIES = 2
_ASSISTANT_STREAM_INTERVAL_SECONDS = 0.25
_INJECT_LAST_SELECTED_MEDIA_RUNTIME_REFERENCES = False
_INJECT_SELECTED_MEDIA_RUNTIME_UPDATES = False
_RUNTIME_STATUS_VISUAL_KEYS = (
"selected_visual_media_id",
"selected_visual_media_type",
"selected_visual_media_label",
"selected_visual_current_time_seconds",
"selected_visual_current_frame_no",
)
_RUNTIME_STATUS_AUDIO_KEYS = (
"selected_audio_media_id",
"selected_audio_media_type",
"selected_audio_media_label",
)
_RUNTIME_STATUS_ALL_KEYS = _RUNTIME_STATUS_VISUAL_KEYS + _RUNTIME_STATUS_AUDIO_KEYS
_EXTRA_SETTINGS_PARAMETER = {
"type": "object",
"description": "Optional dict of additional exposed UI settings. Call Get Default Settings first and copy one of its extra_settings keys exactly, for example {\"Guidance\": 7.5}.",
"required": False,
}
def set_assistant_debug(enabled: bool) -> None:
global ASSISTANT_DEBUG
ASSISTANT_DEBUG = bool(enabled)
def _json_type_from_annotation(annotation) -> str:
annotation_name = getattr(annotation, "__name__", str(annotation))
if annotation_name.startswith("list["):
return "array"
if annotation_name.startswith("dict["):
return "object"
return _TOOL_TYPE_MAP.get(annotation_name, "string")
def _build_tool_parameter_schema(annotations: dict[str, Any], param_name: str, param_meta: dict[str, Any]) -> dict[str, Any]:
schema = {
"type": param_meta.get("type") or _json_type_from_annotation(annotations.get(param_name, str)),
"description": str(param_meta.get("description", "")).strip(),
}
for meta_key, meta_value in param_meta.items():
if meta_key in {"description", "required", "type"}:
continue
schema[meta_key] = copy.deepcopy(meta_value)
return schema
def _get_main_callable(name: str) -> Any:
main_module = sys.modules.get("__main__")
return None if main_module is None else getattr(main_module, str(name or "").strip(), None)
def _get_main_attribute(name: str) -> Any:
lookup_name = str(name or "").strip()
if len(lookup_name) == 0:
return None
for module_name in ("__main__", "wgp"):
module = sys.modules.get(module_name)
if module is None:
continue
value = getattr(module, lookup_name, None)
if value is not None:
return value
return None
def assistant_tool(
name: str | None = None,
description: str = "",
parameters: dict[str, dict[str, Any]] | None = None,
display_name: str | None = None,
pause_runtime: bool = True,
pause_reason: str = "tool",
):
def decorator(func):
func._assistant_tool = {
"name": str(name or func.__name__).strip(),
"display_name": str(display_name or name or func.__name__).strip(),
"description": str(description or "").strip(),
"parameters": dict(parameters or {}),
"pause_runtime": bool(pause_runtime),
"pause_reason": str(pause_reason or "tool").strip() or "tool",
}
return func
return decorator
def _doc_relative_path(doc_path: Path) -> str:
return str(doc_path.relative_to(_DOCS_DIR.parent)).replace("\\", "/")
def _normalize_extra_setting_lookup_label(label: Any) -> str:
return re.sub(r"\s+", " ", str(label or "").strip()).casefold()
def _normalize_doc_text(value: str) -> str:
return " ".join(_DOC_TOKEN_RE.findall(str(value or "").lower()))
def _tokenize_doc_query(value: str) -> list[str]:
return _DOC_TOKEN_RE.findall(str(value or "").lower())
def _extract_doc_sections(doc_id: str) -> tuple[dict[str, Any], list[dict[str, Any]]]:
lookup_id = str(doc_id or "").strip().lower()
doc_entry = _DEEPY_DOCS.get(lookup_id, None)
if doc_entry is None:
raise KeyError(lookup_id)
doc_path = Path(doc_entry["path"])
content = doc_path.read_text(encoding="utf-8").replace("\r\n", "\n").replace("\r", "\n").strip()
lines = content.split("\n") if len(content) > 0 else []
headings = []
in_code_block = False
for index, line in enumerate(lines):
stripped = line.strip()
if stripped.startswith("```"):
in_code_block = not in_code_block
continue
if in_code_block:
continue
match = _DOC_HEADING_RE.match(line)
if match is None:
continue
headings.append((index, len(match.group(1)), match.group(2).strip()))
include_top_level = not any(level > 1 for _line_no, level, _title in headings)
sections = []
stack: list[tuple[int, str]] = []
for heading_index, (start_line, level, title) in enumerate(headings):
while stack and stack[-1][0] >= level:
stack.pop()
stack.append((level, title))
if not include_top_level and level == 1:
continue
end_line = len(lines)
for next_start_line, next_level, _next_title in headings[heading_index + 1 :]:
if next_level <= level:
end_line = next_start_line
break
section_parts = [item_title for item_level, item_title in stack if include_top_level or item_level > 1]
section_name = " > ".join(section_parts or [title])
markdown = "\n".join(lines[start_line:end_line]).strip()
body = "\n".join(lines[start_line + 1 : end_line]).strip()
sections.append(
{
"section": section_name,
"heading": title,
"heading_level": int(level),
"content": markdown,
"body": body,
}
)
if not sections and len(content) > 0:
sections.append(
{
"section": str(doc_entry["title"]).strip() or lookup_id,
"heading": str(doc_entry["title"]).strip() or lookup_id,
"heading_level": 1,
"content": content,
"body": content,
}
)
return {
"doc_id": lookup_id,
"title": str(doc_entry["title"]).strip() or lookup_id,
"path": _doc_relative_path(doc_path),
}, sections
def _build_doc_excerpt(section: dict[str, Any], query: str, query_tokens: list[str], limit: int = 260) -> str:
lines = [line.strip() for line in str(section.get("body", "") or "").splitlines() if len(line.strip()) > 0]
if not lines:
lines = [line.strip() for line in str(section.get("content", "") or "").splitlines() if len(line.strip()) > 0]
if not lines:
return ""
query_lower = str(query or "").strip().lower()
best_line = ""
if len(query_lower) > 0:
best_line = next((line for line in lines if query_lower in line.lower()), "")
if len(best_line) == 0 and query_tokens:
best_line = max(lines, key=lambda line: sum(token in line.lower() for token in query_tokens))
if len(best_line) == 0:
best_line = lines[0]
best_line = re.sub(r"\s+", " ", best_line).strip()
return best_line if len(best_line) <= limit else best_line[: limit - 3].rstrip() + "..."
def _score_doc_section(query: str, query_tokens: list[str], doc_title: str, section: dict[str, Any]) -> int:
query_lower = str(query or "").strip().lower()
path_text = f"{doc_title} {section.get('section', '')}".lower()
content_text = str(section.get("body", "") or section.get("content", "")).lower()
score = 0
if len(query_lower) > 0 and query_lower in path_text:
score += 100
if len(query_lower) > 0 and query_lower in content_text:
score += 40
for token in query_tokens:
if token in path_text:
score += 12
if token in content_text:
score += 3
return score
def _resolve_doc_section(doc_id: str, section_name: str) -> tuple[dict[str, Any], dict[str, Any], list[str]]:
doc_info, sections = _extract_doc_sections(doc_id)
normalized_target = _normalize_doc_text(section_name)
if len(normalized_target) == 0:
return doc_info, {}, []
exact_path_matches = [section for section in sections if _normalize_doc_text(section["section"]) == normalized_target]
if len(exact_path_matches) == 1:
return doc_info, exact_path_matches[0], []
exact_heading_matches = [section for section in sections if _normalize_doc_text(section["heading"]) == normalized_target]
if len(exact_path_matches) == 0 and len(exact_heading_matches) == 1:
return doc_info, exact_heading_matches[0], []
partial_matches = [section for section in sections if normalized_target in _normalize_doc_text(section["section"])]
if len(exact_path_matches) == 0 and len(exact_heading_matches) == 0 and len(partial_matches) == 1:
return doc_info, partial_matches[0], []
candidate_matches = exact_path_matches or exact_heading_matches or partial_matches
candidate_names = [str(section["section"]) for section in candidate_matches[:5]]
return doc_info, {}, candidate_names
def _format_avg_tokens_per_second(value: float) -> str:
try:
speed = float(value or 0.0)
except Exception:
speed = 0.0
if not math.isfinite(speed) or speed < 0.0:
speed = 0.0
return f"{speed:.1f}"
def build_assistant_chat_stats(
session: AssistantSessionState,
*,
max_tokens: int,
active_sequence_token_count: int | None = None,
live_prefill_tokens: int = 0,
live_prefill_seconds: float = 0.0,
live_generated_tokens: int = 0,
live_generation_seconds: float = 0.0,
) -> dict[str, Any]:
max_tokens = max(0, int(max_tokens or 0))
consumed_tokens = None if active_sequence_token_count is None else max(0, int(active_sequence_token_count))
if consumed_tokens is None:
snapshot_sequence = None if session.runtime_snapshot is None else session.runtime_snapshot.get("sequence", None)
if isinstance(snapshot_sequence, dict):
snapshot_token_ids = snapshot_sequence.get("token_ids", []) or []
if len(snapshot_token_ids) > 0:
consumed_tokens = len(snapshot_token_ids)
if consumed_tokens is None:
consumed_tokens = len(session.rendered_token_ids or [])
total_prefill_tokens = max(0, int(session.prefill_token_total or 0)) + max(0, int(live_prefill_tokens or 0))
total_prefill_seconds = max(0.0, float(session.prefill_seconds_total or 0.0)) + max(0.0, float(live_prefill_seconds or 0.0))
total_generated_tokens = max(0, int(session.generated_token_total or 0)) + max(0, int(live_generated_tokens or 0))
total_generation_seconds = max(0.0, float(session.generated_seconds_total or 0.0)) + max(0.0, float(live_generation_seconds or 0.0))
avg_prefill_tokens_per_second = (float(total_prefill_tokens) / float(total_prefill_seconds)) if total_prefill_seconds > 1e-9 else 0.0
avg_generated_tokens_per_second = (float(total_generated_tokens) / float(total_generation_seconds)) if total_generation_seconds > 1e-9 else 0.0
return {
"visible": True,
"text": f"prefill {_format_avg_tokens_per_second(avg_prefill_tokens_per_second)} tk/s | gen {_format_avg_tokens_per_second(avg_generated_tokens_per_second)} tk/s | {int(consumed_tokens):,} / {int(max_tokens):,} tk",
"avg_prefill_tokens_per_second": avg_prefill_tokens_per_second,
"avg_generated_tokens_per_second": avg_generated_tokens_per_second,
"consumed_tokens": int(consumed_tokens),
"max_tokens": int(max_tokens),
}
@dataclass(slots=True)
class AssistantSessionState:
messages: list[dict[str, Any]] = field(default_factory=list)
rendered_token_ids: list[int] = field(default_factory=list)
rendered_messages_len: int = 0
runtime_snapshot: dict[str, Any] | None = None
discard_runtime_snapshot_on_release: bool = False
media_registry: list[dict[str, Any]] = field(default_factory=list)
media_registry_counter: int = 0
chat_html: str = ""
chat_transcript: list[dict[str, Any]] = field(default_factory=list)
chat_transcript_counter: int = 0
interrupt_requested: bool = False
drop_state_requested: bool = False
worker_active: bool = False
control_queue: Any | None = None
queued_job_count: int = 0
queued_cancel_count: int = 0
chat_epoch: int = 0
release_vram_callback: Callable[[], None] | None = None
force_loading_status_once: bool = False
current_turn: dict[str, Any] | None = None
interruption_notice: str = ""
interruption_history: list[dict[str, Any]] = field(default_factory=list)
runtime_status_note: str = ""
runtime_status_signature: str = ""
rendered_system_prompt_signature: str = ""
rendered_context_window_tokens: int = 0
pending_replay_reason: str = ""
tool_ui_settings: dict[str, Any] = field(default_factory=dict)
prefill_token_total: int = 0
prefill_seconds_total: float = 0.0
generated_token_total: int = 0
generated_seconds_total: float = 0.0
runtime_max_model_len: int = 0
chat_stats_signature: str = ""
seen_video_gallery_paths: list[str] = field(default_factory=list)
seen_audio_gallery_paths: list[str] = field(default_factory=list)
generated_client_ids: list[str] = field(default_factory=list)
selected_visual_runtime_signature: str = ""
selected_audio_runtime_signature: str = ""
video_tool_runtime_variants: dict[str, str] = field(default_factory=dict)
video_tool_runtime_signature: str = ""
video_tool_runtime_last_injected_tokens: int = 0
reset_base_token_ids: list[int] = field(default_factory=list)
reset_base_snapshot: dict[str, Any] | None = None
reset_base_signature: str = ""
reset_base_context_window_tokens: int = 0
reset_to_base_callback: Callable[[], bool] | None = None
@dataclass(slots=True)
class AssistantRuntimeHooks:
acquire_gpu: Callable[[], None]
release_gpu: Callable[..., None]
register_gpu_resident: Callable[[Callable[[], None] | None, bool], None]
clear_gpu_resident: Callable[[], None]
ensure_loaded: Callable[[], tuple[Any, Any]]
unload_runtime: Callable[[], None]
unload_weights: Callable[[], None]
ensure_vision_loaded: Callable[[], tuple[Any, Any]] | None = None
def get_or_create_assistant_session(state) -> AssistantSessionState:
session = state.get("assistant_session", None)
if isinstance(session, AssistantSessionState):
return session
session = AssistantSessionState()
state["assistant_session"] = session
return session
def clear_assistant_session(session: AssistantSessionState) -> None:
session.messages.clear()
session.rendered_token_ids.clear()
session.rendered_messages_len = 0
session.runtime_snapshot = None
session.discard_runtime_snapshot_on_release = False
session.media_registry.clear()
session.media_registry_counter = 0
session.chat_html = ""
session.queued_job_count = 0
session.queued_cancel_count = 0
session.release_vram_callback = None
session.force_loading_status_once = False
session.current_turn = None
session.interruption_notice = ""
session.interruption_history.clear()
session.runtime_status_note = ""
session.runtime_status_signature = ""
session.rendered_system_prompt_signature = ""
session.rendered_context_window_tokens = 0
session.pending_replay_reason = ""
session.tool_ui_settings = {}
session.prefill_token_total = 0
session.prefill_seconds_total = 0.0
session.generated_token_total = 0
session.generated_seconds_total = 0.0
session.runtime_max_model_len = 0
session.chat_stats_signature = ""
session.seen_video_gallery_paths = []
session.seen_audio_gallery_paths = []
session.generated_client_ids = []
session.selected_visual_runtime_signature = ""
session.selected_audio_runtime_signature = ""
session.video_tool_runtime_variants = {}
session.video_tool_runtime_signature = ""
session.video_tool_runtime_last_injected_tokens = 0
session.reset_base_token_ids = []
session.reset_base_snapshot = None
session.reset_base_signature = ""
session.reset_base_context_window_tokens = 0
session.reset_to_base_callback = None
assistant_chat.reset_session_chat(session)
def invalidate_assistant_reset_base(session: AssistantSessionState) -> None:
session.reset_base_token_ids = []
session.reset_base_snapshot = None
session.reset_base_signature = ""
session.reset_base_context_window_tokens = 0
session.reset_to_base_callback = None
def reset_assistant_session_to_base(session: AssistantSessionState, rendered_system_prompt_signature: str) -> bool:
base_token_ids = [int(token_id) for token_id in list(session.reset_base_token_ids or [])]
base_snapshot = None if session.reset_base_snapshot is None else copy.deepcopy(session.reset_base_snapshot)
base_signature = str(session.reset_base_signature or "")
try:
base_context_window_tokens = int(session.reset_base_context_window_tokens or 0)
except Exception:
base_context_window_tokens = 0
if len(base_token_ids) == 0 or base_snapshot is None or len(base_signature) == 0 or base_context_window_tokens <= 0:
return False
release_vram_callback = session.release_vram_callback
reset_to_base_callback = session.reset_to_base_callback
clear_assistant_session(session)
session.reset_base_token_ids = base_token_ids
session.reset_base_snapshot = base_snapshot
session.reset_base_signature = base_signature
session.reset_base_context_window_tokens = base_context_window_tokens
session.rendered_token_ids = list(base_token_ids)
session.runtime_snapshot = copy.deepcopy(base_snapshot)
session.rendered_messages_len = 0
session.rendered_system_prompt_signature = str(rendered_system_prompt_signature or "")
session.rendered_context_window_tokens = base_context_window_tokens
session.pending_replay_reason = ""
session.release_vram_callback = release_vram_callback
session.reset_to_base_callback = reset_to_base_callback
return True
def begin_assistant_turn(session: AssistantSessionState, user_message_id: str, user_text: str) -> None:
session.current_turn = {
"user_message_id": str(user_message_id or "").strip(),
"user_text": str(user_text or "").strip(),
"messages_len": len(session.messages),
"committed_messages_len": len(session.messages),
"rendered_token_ids": list(session.rendered_token_ids),
"rendered_messages_len": int(session.rendered_messages_len or 0),
"runtime_snapshot": session.runtime_snapshot,
"rendered_system_prompt_signature": session.rendered_system_prompt_signature,
"rendered_context_window_tokens": session.rendered_context_window_tokens,
"assistant_message_id": "",
"interrupt_recorded": False,
"chat_transcript": copy.deepcopy(session.chat_transcript),
"chat_transcript_counter": int(session.chat_transcript_counter or 0),
}
def mark_assistant_turn_message(session: AssistantSessionState, message_id: str) -> None:
checkpoint = session.current_turn
if not isinstance(checkpoint, dict):
return
checkpoint["assistant_message_id"] = str(message_id or "").strip()
def checkpoint_assistant_turn(session: AssistantSessionState) -> bool:
checkpoint = session.current_turn
if not isinstance(checkpoint, dict):
return False
checkpoint["committed_messages_len"] = len(session.messages)
return True
def _transcript_record_has_visible_content(record: dict[str, Any] | None) -> bool:
if not isinstance(record, dict):
return False
for block in list(record.get("blocks", []) or []):
if not isinstance(block, dict):
continue
block_type = str(block.get("type", "")).strip().lower()
if block_type == "tool":
return True
if len(str(block.get("text", "")).strip()) > 0:
return True
return any(isinstance(attachment, dict) for attachment in list(record.get("attachments", []) or []))
def build_interruption_notice(user_text: str) -> str:
collapsed = re.sub(r"\s+", " ", str(user_text or "").strip())
if len(collapsed) > 280:
collapsed = collapsed[:277].rstrip() + "..."
if len(collapsed) == 0:
return "The previous user request was interrupted by the user before completion. Do not continue that cancelled turn unless the user explicitly asks to resume it."
return f"The previous user request was interrupted by the user before completion. Do not continue that cancelled turn unless the user explicitly asks to resume it. Cancelled request: {collapsed}"
_INTERRUPTION_NOTICE_PREFIX = "The previous user request was interrupted by the user before completion."
def _is_interruption_notice_text(text: str) -> bool:
return str(text or "").strip().startswith(_INTERRUPTION_NOTICE_PREFIX)
def _extract_preserved_interruption_tail(messages: list[dict[str, Any]]) -> list[dict[str, Any]]:
preserved: list[dict[str, Any]] = []
tail = list(messages or [])
idx = 0
while idx < len(tail):
message = tail[idx] if isinstance(tail[idx], dict) else None
if not isinstance(message, dict):
idx += 1
continue
role = str(message.get("role", "")).strip().lower()
content = str(message.get("content", "") or "").strip()
if role == "user" and idx + 1 < len(tail):
next_message = tail[idx + 1] if isinstance(tail[idx + 1], dict) else None
next_role = "" if not isinstance(next_message, dict) else str(next_message.get("role", "")).strip().lower()
next_content = "" if not isinstance(next_message, dict) else str(next_message.get("content", "") or "").strip()
if next_role == "assistant" and _is_interruption_notice_text(next_content):
if len(content) > 0:
preserved.append({"role": "user", "content": content})
preserved.append({"role": "assistant", "content": next_content})
idx += 2
continue
if role == "assistant" and _is_interruption_notice_text(content):
preserved.append({"role": "assistant", "content": content})
idx += 1
return preserved
def _summarize_interrupted_committed_messages(messages: list[dict[str, Any]]) -> str:
summary_parts: list[str] = []
for message in list(messages or []):
if not isinstance(message, dict):
continue
role = str(message.get("role", "")).strip().lower()
if role == "assistant":
tool_calls = list(message.get("tool_calls", []) or [])
if len(tool_calls) > 0:
tool_names = []
for tool_call in tool_calls:
function_payload = dict(tool_call.get("function", {}) or {}) if isinstance(tool_call, dict) else {}
tool_name = str(function_payload.get("name", "") or "").strip()
if len(tool_name) > 0:
tool_names.append(tool_name)
if len(tool_names) > 0:
summary_parts.append("assistant called " + ", ".join(tool_names))
continue
model_content = str(message.get("model_content", "") or message.get("content", "") or "").strip()
if len(model_content) > 0:
cleaned = qwen35_text._clean_generated_text(model_content)
cleaned = re.sub(r"\s+", " ", cleaned).strip()
if len(cleaned) > 0:
summary_parts.append(f"assistant said: {cleaned[:140]}{'...' if len(cleaned) > 140 else ''}")
elif role == "tool":
content = str(message.get("content", "") or "").strip()
tool_name = ""
status = ""
if len(content) > 0:
try:
payload = dict(json.loads(content) or {})
except Exception:
payload = {}
tool_name = str(payload.get("tool", "") or payload.get("tool_id", "") or "").strip()
status = str(payload.get("status", "") or "").strip()
if len(tool_name) > 0 or len(status) > 0:
summary_parts.append(f"tool result: {tool_name or 'tool'} ({status or 'ok'})")
return "; ".join(summary_parts[:4]).strip()
def _normalize_interrupted_committed_messages(messages: list[dict[str, Any]]) -> list[dict[str, Any]]:
normalized_messages: list[dict[str, Any]] = []
for message in list(messages or []):
if not isinstance(message, dict):
continue
role = str(message.get("role", "")).strip().lower()
if len(role) == 0:
continue
normalized_message: dict[str, Any] = {"role": role}
if role == "user":
content = str(message.get("content", "") or "").strip()
if len(content) > 0:
normalized_message["content"] = content
else:
content = str(message.get("content", "") or "").strip()
if len(content) > 0:
normalized_message["content"] = content
model_content = str(message.get("model_content", "") or "").strip()
if len(model_content) > 0:
normalized_message["model_content"] = model_content
if role == "assistant" and isinstance(message.get("tool_calls"), list) and len(message.get("tool_calls") or []) > 0:
normalized_message["tool_calls"] = copy.deepcopy(list(message.get("tool_calls") or []))
if role == "tool":
tool_call_id = str(message.get("tool_call_id", "") or "").strip()
if len(tool_call_id) > 0:
normalized_message["tool_call_id"] = tool_call_id
normalized_messages.append(normalized_message)
return normalized_messages
def _merge_visible_fragment_text(existing_text: str, visible_text: str) -> str:
existing = str(existing_text or "").strip()
visible = str(visible_text or "").strip()
if len(visible) == 0:
return existing
if len(existing) == 0 or visible.startswith(existing):
return visible
if existing.startswith(visible):
return existing
return visible
def _build_interrupted_assistant_content(reasoning_text: str, answer_text: str) -> str:
reasoning = str(reasoning_text or "").strip()
answer = str(answer_text or "").strip()
if len(reasoning) > 0:
return f"\n{reasoning}\n\n\n{answer}".strip() if len(answer) > 0 else f"\n{reasoning}\n"
return answer
def _merge_interrupted_visible_assistant_fragments(session: AssistantSessionState, assistant_message_id: str, committed_messages: list[dict[str, Any]]) -> list[dict[str, Any]]:
message_id = str(assistant_message_id or "").strip()
if len(message_id) == 0:
return committed_messages
visible_reasoning = str(assistant_chat.get_message_reasoning_content(session, message_id) or "").strip()
visible_answer = str(assistant_chat.get_message_content(session, message_id) or "").strip()
if len(visible_reasoning) == 0 and len(visible_answer) == 0:
return committed_messages
if len(committed_messages) > 0:
last_message = committed_messages[-1]
if str(last_message.get("role", "")).strip().lower() == "assistant" and not last_message.get("tool_calls"):
existing_content = str(last_message.get("content", "") or last_message.get("model_content", "") or "").strip()
existing_reasoning, existing_answer = qwen35_text._split_generated_text(existing_content)
merged_reasoning = _merge_visible_fragment_text(existing_reasoning, visible_reasoning)
merged_answer = _merge_visible_fragment_text(existing_answer, visible_answer)
merged_content = _build_interrupted_assistant_content(merged_reasoning, merged_answer)
if len(merged_content) == 0:
return committed_messages
if merged_content == existing_content:
return committed_messages
last_message["content"] = merged_content
last_message["model_content"] = merged_content
return committed_messages
merged_content = _build_interrupted_assistant_content(visible_reasoning, visible_answer)
if len(merged_content) == 0:
return committed_messages
committed_messages.append({"role": "assistant", "content": merged_content, "model_content": merged_content})
return committed_messages
def record_interruption_history(session: AssistantSessionState, user_text: str, interruption_notice: str, committed_messages: list[dict[str, Any]] | None = None) -> None:
collapsed = re.sub(r"\s+", " ", str(user_text or "").strip())
if len(collapsed) == 0:
return
entry = {
"user_text": collapsed,
"notice": str(interruption_notice or "").strip(),
"committed_summary": _summarize_interrupted_committed_messages(list(committed_messages or [])),
}
session.interruption_history.append(entry)
if len(session.interruption_history) > 24:
session.interruption_history = session.interruption_history[-24:]
def _describe_prefix_mismatch(current_token_ids: list[int], target_tokens: list[int]) -> str:
current_len = len(current_token_ids)
target_len = len(target_tokens)
shared = min(current_len, target_len)
mismatch_index = next((idx for idx, (current_token, target_token) in enumerate(zip(current_token_ids, target_tokens)) if int(current_token) != int(target_token)), shared)
if mismatch_index >= shared:
if current_len == target_len:
return f"live sequence and canonicalized prompt had the same length ({current_len} tokens) but different token identity at the end"
if current_len < target_len:
return f"canonicalized prompt diverged right after the live prefix at token {mismatch_index} (live={current_len}, canonical={target_len})"
return f"live runtime contained {current_len - target_len} extra trailing tokens beyond the canonicalized prompt (live={current_len}, canonical={target_len})"
return f"live sequence diverged from canonicalized prompt at token {mismatch_index} (live={current_len}, canonical={target_len})"
def rollback_assistant_turn(session: AssistantSessionState, interrupted_badge: str = "Interrupted", rendered_system_prompt_signature: str | None = None) -> bool:
checkpoint = session.current_turn
if not isinstance(checkpoint, dict):
return False
interruption_notice = build_interruption_notice(checkpoint.get("user_text", ""))
base_len = int(checkpoint.get("messages_len", len(session.messages)))
target_len = max(base_len, int(checkpoint.get("committed_messages_len", base_len)))
committed_messages = _normalize_interrupted_committed_messages(copy.deepcopy(session.messages[base_len:target_len]))
committed_messages = _merge_interrupted_visible_assistant_fragments(session, checkpoint.get("assistant_message_id", ""), committed_messages)
preserved_tail_interruptions = _extract_preserved_interruption_tail(session.messages[target_len:])
if len(session.messages) > base_len:
del session.messages[base_len:]
if len(committed_messages) > 0:
session.messages.extend(copy.deepcopy(committed_messages))
interrupted_user_text = str(checkpoint.get("user_text", "") or "").strip()
if target_len <= base_len and len(interrupted_user_text) > 0:
session.messages.append({"role": "user", "content": interrupted_user_text})
session.messages.append({"role": "assistant", "content": interruption_notice})
if len(preserved_tail_interruptions) > 0:
session.messages.extend(preserved_tail_interruptions)
session.rendered_token_ids = [int(token_id) for token_id in checkpoint.get("rendered_token_ids", []) or []]
try:
session.rendered_messages_len = int(checkpoint.get("rendered_messages_len", 0) or 0)
except Exception:
session.rendered_messages_len = 0
session.runtime_snapshot = checkpoint.get("runtime_snapshot", None)
session.rendered_system_prompt_signature = str(checkpoint.get("rendered_system_prompt_signature", "") or "")
try:
session.rendered_context_window_tokens = int(checkpoint.get("rendered_context_window_tokens", 0) or 0)
except Exception:
session.rendered_context_window_tokens = 0
remembered_message_count = len(session.messages)
if (
remembered_message_count != int(session.rendered_messages_len or 0)
and session.reset_base_snapshot is not None
and len(session.reset_base_token_ids or []) > 0
):
session.rendered_token_ids = [int(token_id) for token_id in list(session.reset_base_token_ids or [])]
session.runtime_snapshot = copy.deepcopy(session.reset_base_snapshot)
session.rendered_messages_len = 0
session.rendered_system_prompt_signature = str(rendered_system_prompt_signature or session.rendered_system_prompt_signature or "")
try:
session.rendered_context_window_tokens = int(session.reset_base_context_window_tokens or session.rendered_context_window_tokens or 0)
except Exception:
session.rendered_context_window_tokens = int(session.rendered_context_window_tokens or 0)
if (
len(session.rendered_token_ids) == 0
and session.runtime_snapshot is None
and session.reset_base_snapshot is not None
and len(session.reset_base_token_ids or []) > 0
):
session.rendered_token_ids = [int(token_id) for token_id in list(session.reset_base_token_ids or [])]
session.runtime_snapshot = copy.deepcopy(session.reset_base_snapshot)
session.rendered_messages_len = 0
session.rendered_system_prompt_signature = str(rendered_system_prompt_signature or session.rendered_system_prompt_signature or "")
try:
session.rendered_context_window_tokens = int(session.reset_base_context_window_tokens or session.rendered_context_window_tokens or 0)
except Exception:
session.rendered_context_window_tokens = int(session.rendered_context_window_tokens or 0)
assistant_message_id = str(checkpoint.get("assistant_message_id", "") or "").strip()
has_visible_assistant_trace = False
if len(assistant_message_id) > 0:
assistant_record = assistant_chat._find_message(session, assistant_message_id)
if _transcript_record_has_visible_content(assistant_record):
has_visible_assistant_trace = True
assistant_chat.set_message_badge(session, assistant_message_id, interrupted_badge)
else:
assistant_chat.remove_message(session, assistant_message_id)
user_message_id = str(checkpoint.get("user_message_id", "") or "").strip()
if len(user_message_id) > 0:
assistant_chat.set_message_badge(session, user_message_id, interrupted_badge)
if not has_visible_assistant_trace and len(user_message_id) == 0:
assistant_chat.add_assistant_note(session, interruption_notice, badge=interrupted_badge, author="System")
session.interruption_notice = interruption_notice
record_interruption_history(session, checkpoint.get("user_text", ""), interruption_notice, committed_messages=committed_messages)
checkpoint["interrupt_recorded"] = True
return True
def finish_assistant_turn(session: AssistantSessionState) -> None:
session.current_turn = None
def request_assistant_interrupt(session: AssistantSessionState) -> None:
session.interrupt_requested = True
def request_assistant_reset(session: AssistantSessionState) -> None:
request_assistant_interrupt(session)
session.drop_state_requested = True
session.chat_epoch += 1
session.queued_job_count = 0
session.queued_cancel_count = 0
def set_assistant_tool_ui_settings(session: AssistantSessionState, **kwargs) -> dict[str, Any]:
normalized = deepy_ui_settings.normalize_assistant_tool_ui_settings(**kwargs)
session.tool_ui_settings = dict(normalized)
return session.tool_ui_settings
def _next_ai_client_id() -> str:
global _AI_GEN_NO
_AI_GEN_NO += 1
return f"ai_{datetime.now().strftime('%Y%m%d_%H%M%S')}_{_AI_GEN_NO}"
def _json_dumps(payload: Any) -> str:
return json.dumps(payload, ensure_ascii=True, sort_keys=True)
def _strip_partial_tool_markup(text: str) -> str:
stripped = strip_trailing_stop_markup(str(text or ""))
lowered = stripped.lower()
cut_points = []
for marker in ("", "= 0:
cut_points.append(idx)
if cut_points:
stripped = stripped[: min(cut_points)]
return stripped.rstrip()
def _has_unbalanced_trailing_delimiter(text: str) -> bool:
sample = str(text or "")
pairs = (('"', '"'), ("'", "'"), ("(", ")"), ("[", "]"), ("{", "}"))
for opening, closing in pairs:
if opening == closing:
if sample.count(opening) % 2 == 1:
return True
continue
if sample.count(opening) > sample.count(closing):
return True
return False
def _trim_incomplete_answer_tail(answer_text: str) -> str:
answer = str(answer_text or "").strip()
if len(answer) == 0:
return answer
paragraphs = [paragraph.strip() for paragraph in re.split(r"\n\s*\n", answer) if len(paragraph.strip()) > 0]
if len(paragraphs) == 0:
return answer
last_paragraph = paragraphs[-1]
ends_with_ellipsis = re.search(r"(?:\.{3}|\u2026)(?:[\"')\]])?\s*$", last_paragraph) is not None
if not ends_with_ellipsis and re.search(r"[.!?](?:[\"')\]])?\s*$", last_paragraph):
return answer
dangling_word = re.search(r"(?i)\b(?:a|an|and|because|but|for|from|if|in|into|of|on|or|that|the|to|when|where|which|with)\s*$", last_paragraph) is not None
trailing_soft_break = re.search(r"[,;:\-–—/](?:[\"')\]])?\s*$", last_paragraph) is not None
short_tail = len(last_paragraph.split()) <= 8
suspicious_tail = _has_unbalanced_trailing_delimiter(last_paragraph) or dangling_word or ends_with_ellipsis or trailing_soft_break
if len(paragraphs) > 1:
if not suspicious_tail:
return answer
sentence_matches = list(re.finditer(r"[.!?](?:[\"')\]])?(?=\s|$)", last_paragraph))
trimmed_last_paragraph = last_paragraph[: sentence_matches[-1].end()].strip() if sentence_matches else ""
kept_paragraphs = paragraphs[:-1]
if len(trimmed_last_paragraph) > 0:
kept_paragraphs.append(trimmed_last_paragraph)
return "\n\n".join(kept_paragraphs).strip()
if not (suspicious_tail or short_tail):
return answer
sentence_matches = list(re.finditer(r"[.!?](?:[\"')\]])?(?=\s|$)", answer))
if sentence_matches:
return answer[: sentence_matches[-1].end()].strip()
return ""
class tools:
def __init__(self, gen, get_processed_queue, send_cmd, session: AssistantSessionState | None = None, get_output_filepath: Callable[[str, bool, bool], str] | None = None, record_file_metadata: Callable[..., None] | None = None, get_server_config: Callable[[], dict[str, Any]] | None = None):
self.gen = gen
self.get_processed_queue = get_processed_queue
self.send_cmd = send_cmd
self.session = session
self.get_output_filepath = get_output_filepath
self.record_file_metadata = record_file_metadata
self.get_server_config = get_server_config
self._vision_query_callback: Callable[[dict[str, Any], str], dict[str, Any]] | None = None
self._tool_progress_callback: Callable[..., None] | None = None
def _log(self, message: str) -> None:
if ASSISTANT_DEBUG:
print(f"[AssistantTool] {message}")
def _is_interrupted(self) -> bool:
return self.session is not None and self.session.interrupt_requested
def _interrupted_result(self, client_id: str, task: dict[str, Any], *, force_cancel_queue: bool = False) -> dict[str, Any]:
self._log(f"Generation interrupted for {client_id}")
cancel_result = {}
if (force_cancel_queue or self._auto_cancel_queue_tasks_enabled()) and len(str(client_id or "").strip()) > 0:
queue = list((self.gen or {}).get("queue", []) or [])
if self._queue_contains_client_id(queue, client_id):
self.send_cmd("abort_client_id", str(client_id))
cancel_result = {"client_id": str(client_id), "mode": "abort_client_id"}
elif self._clear_inline_queue_client_id(client_id):
cancel_result = {"client_id": str(client_id), "mode": "inline_queue"}
result = {
"status": "interrupted",
"client_id": client_id,
"output_file": "",
"prompt": task["prompt"],
"resolution": task["resolution"],
"error": "Interrupted by user.",
}
if isinstance(cancel_result, dict) and len(cancel_result) > 0:
result["queue_cancel"] = cancel_result
self._update_tool_progress("error", "Interrupted", result)
return result
def _set_status(self, text: str | None, kind: str = "working") -> None:
self.send_cmd("chat_output", assistant_chat.build_status_event(text, kind=kind, visible=text is not None and len(str(text).strip()) > 0))
def bind_runtime_tools(self, vision_query_callback: Callable[[dict[str, Any], str], dict[str, Any]] | None = None, tool_progress_callback: Callable[..., None] | None = None) -> None:
self._vision_query_callback = vision_query_callback
self._tool_progress_callback = tool_progress_callback
def _update_tool_progress(self, status: str | None = None, status_text: str | None = None, result: dict[str, Any] | None = None) -> None:
if callable(self._tool_progress_callback):
self._tool_progress_callback(status=status, status_text=status_text, result=result)
def _get_tool_ui_settings(self) -> dict[str, Any]:
if self.session is not None and isinstance(self.session.tool_ui_settings, dict) and len(self.session.tool_ui_settings) > 0:
return deepy_ui_settings.normalize_assistant_tool_ui_settings(**self.session.tool_ui_settings)
return deepy_ui_settings.normalize_assistant_tool_ui_settings()
def _auto_cancel_queue_tasks_enabled(self) -> bool:
return normalize_deepy_auto_cancel_queue_tasks(self._server_config().get(DEEPY_AUTO_CANCEL_QUEUE_TASKS_KEY, DEEPY_AUTO_CANCEL_QUEUE_TASKS_DEFAULT))
def _clear_inline_queue_client_id(self, client_id: str) -> bool:
client_id = str(client_id or "").strip()
if len(client_id) == 0 or not isinstance(self.gen, dict):
return False
def _matches(item):
if not isinstance(item, dict):
return False
if str(item.get("client_id", "") or "").strip() == client_id:
return True
params = item.get("params", None)
return isinstance(params, dict) and str(params.get("client_id", "") or "").strip() == client_id
inline_queue = self.gen.get("inline_queue", None)
if _matches(inline_queue):
self.gen.pop("inline_queue", None)
return True
if isinstance(inline_queue, list):
remaining_inline = [item for item in inline_queue if not _matches(item)]
if len(remaining_inline) != len(inline_queue):
if remaining_inline:
self.gen["inline_queue"] = remaining_inline
else:
self.gen.pop("inline_queue", None)
return True
return False
def _get_effective_tool_model_def(self, tool_name: str) -> dict[str, Any]:
variant = self.get_tool_variant(tool_name)
if len(variant) == 0:
return {}
try:
model_def = deepy_tool_settings.get_tool_variant_model_def(tool_name, variant)
except Exception:
return {}
return dict(model_def or {}) if isinstance(model_def, dict) else {}
def _get_deepy_tool_config(self, tool_name: str) -> dict[str, Any]:
deepy_tools = self._get_effective_tool_model_def(tool_name).get("deepy_tools", None)
if not isinstance(deepy_tools, dict):
return {}
tool_config = deepy_tools.get(str(tool_name or "").strip(), None)
return dict(tool_config or {}) if isinstance(tool_config, dict) else {}
def _get_image_start_target(self, tool_name: str) -> str:
target = str(self._get_deepy_tool_config(tool_name).get("image_start", "image_start") or "image_start").strip()
return "image_refs" if target == "image_refs" else "image_start"
def get_tool_variant(self, tool_name: str) -> str:
lookup_name = str(tool_name or "").strip()
setting_key = {
"gen_image": "image_generator_variant",
"edit_image": "image_editor_variant",
"gen_video": "video_generator_variant",
"gen_video_with_speech": "video_with_speech_variant",
"gen_speech_from_description": "speech_from_description_variant",
"gen_speech_from_sample": "speech_from_sample_variant",
}.get(lookup_name, "")
if len(setting_key) > 0:
return str(self._get_tool_ui_settings().get(setting_key, "") or "").strip()
return ""
def get_tool_template_filename(self, tool_name: str) -> str:
try:
variant = self.get_tool_variant(tool_name)
except Exception:
variant = ""
if len(variant) == 0:
return ""
template_name = Path(variant).name
if len(template_name) == 0:
return ""
if template_name.lower().endswith(".json"):
return template_name
return f"{template_name}.json"
def get_tool_transcript_label(self, tool_name: str) -> str:
label = self.get_tool_display_name(tool_name)
if str(tool_name or "").strip() not in {"gen_image", "edit_image", "gen_video", "gen_speech_from_description", "gen_speech_from_sample", "gen_video_with_speech"}:
return label
template_label = Path(self.get_tool_template_filename(tool_name)).stem.strip()
return label if len(template_label) == 0 else f"{label} [{template_label}]"
def _parse_generation_resolution(self, resolution: Any) -> tuple[int | None, int | None]:
width_text, separator, height_text = str(resolution or "").strip().lower().partition("x")
if separator != "x":
return None, None
try:
return int(width_text), int(height_text)
except Exception:
return None, None
def _is_video_generation_tool(self, tool_name: str) -> bool:
return str(tool_name or "").strip() in {"gen_video", "gen_video_with_speech"}
def _supports_inference_steps_override(self, tool_name: str) -> bool:
return str(tool_name or "").strip() in {"gen_image", "edit_image", "gen_video", "gen_video_with_speech"}
def _compute_effective_video_fps(self, task: dict[str, Any]) -> int | None:
force_fps = str(task.get("force_fps", "") or "").strip()
model_type = str(task.get("model_type", "") or task.get("base_model_type", "") or "").strip()
video_guide = str(task.get("video_guide", "") or "").strip() or None
video_source = str(task.get("video_source", "") or "").strip() or None
get_computed_fps = _get_main_callable("get_computed_fps")
if callable(get_computed_fps) and len(model_type) > 0:
try:
return int(round(float(get_computed_fps(force_fps, model_type, video_guide, video_source))))
except Exception:
pass
if len(force_fps) > 0:
try:
return int(force_fps)
except Exception:
pass
get_base_model_type = _get_main_callable("get_base_model_type")
base_model_type = model_type
if callable(get_base_model_type) and len(model_type) > 0:
try:
base_model_type = str(get_base_model_type(model_type) or model_type).strip() or model_type
except Exception:
base_model_type = model_type
get_model_fps = _get_main_callable("get_model_fps")
if callable(get_model_fps) and len(base_model_type) > 0:
try:
return int(round(float(get_model_fps(base_model_type))))
except Exception:
return None
return None
def _get_effective_video_latent_size(self, task: dict[str, Any]) -> int | None:
model_type = str(task.get("model_type", "") or task.get("base_model_type", "") or "").strip()
get_base_model_type = _get_main_callable("get_base_model_type")
base_model_type = model_type
if callable(get_base_model_type) and len(model_type) > 0:
try:
base_model_type = str(get_base_model_type(model_type) or model_type).strip() or model_type
except Exception:
base_model_type = model_type
get_model_min_frames_and_step = _get_main_callable("get_model_min_frames_and_step")
if callable(get_model_min_frames_and_step) and len(base_model_type) > 0:
try:
_frames_minimum, _frames_steps, latent_size = get_model_min_frames_and_step(base_model_type)
latent_size = int(latent_size)
if latent_size > 0:
return latent_size
except Exception:
pass
get_model_def = _get_main_callable("get_model_def")
if callable(get_model_def) and len(base_model_type) > 0:
try:
model_def = get_model_def(base_model_type)
except Exception:
model_def = None
if isinstance(model_def, dict):
try:
latent_size = int(model_def.get("latent_size", model_def.get("frames_steps", 0)) or 0)
except Exception:
latent_size = 0
if latent_size > 0:
return latent_size
return None
@staticmethod
def _snap_video_frame_count_to_latent_grid(frame_count: int, latent_size: int | None) -> int:
raw_frames = int(frame_count)
if raw_frames <= 0:
return raw_frames
if latent_size is None or int(latent_size) <= 0:
return raw_frames
step = int(latent_size)
return max(1, int(round((raw_frames - 1) / float(step))) * step + 1)
def _get_generation_extra_settings_info(self, task: dict[str, Any]) -> dict[str, dict[str, Any]]:
try:
raw_info = extra_settings.get_info(copy.deepcopy(task))
except Exception:
raw_info = {}
if not isinstance(raw_info, dict):
return {}
info: dict[str, dict[str, Any]] = {}
for raw_label, raw_entry in raw_info.items():
label = str(raw_label or "").strip()
if len(label) == 0 or not isinstance(raw_entry, dict):
continue
key = str(raw_entry.get("key", "") or "").strip()
if len(key) == 0:
continue
entry_type = str(raw_entry.get("type", "number") or "number").strip().lower()
if entry_type in {"int", "integer"}:
entry_type = "integer"
elif entry_type in {"float", "number"}:
entry_type = "number"
else:
entry_type = "string"
info[label] = {
"key": key,
"value": raw_entry.get("value", None),
"type": entry_type,
"custom": bool(raw_entry.get("custom", False)),
"min": raw_entry.get("min", None),
"max": raw_entry.get("max", None),
}
return info
@staticmethod
def _parse_extra_setting_override_value(label: str, raw_value: Any, entry_type: str) -> tuple[Any, str | None]:
if entry_type == "integer":
if isinstance(raw_value, bool):
return None, f"extra_settings['{label}'] must be an integer."
if isinstance(raw_value, int):
return raw_value, None
if isinstance(raw_value, float):
if raw_value.is_integer():
return int(raw_value), None
return None, f"extra_settings['{label}'] must be an integer."
try:
return int(str(raw_value).strip()), None
except Exception:
try:
parsed_float = float(str(raw_value).strip())
except Exception:
return None, f"extra_settings['{label}'] must be an integer."
return (int(parsed_float), None) if parsed_float.is_integer() else (None, f"extra_settings['{label}'] must be an integer.")
if entry_type == "number":
if isinstance(raw_value, bool):
return None, f"extra_settings['{label}'] must be a number."
try:
return float(raw_value), None
except Exception:
return None, f"extra_settings['{label}'] must be a number."
text = str(raw_value or "").strip()
return (text, None) if len(text) > 0 else (None, f"extra_settings['{label}'] must be a non-empty string.")
def _apply_extra_settings_overrides(self, tool_name: str, task: dict[str, Any], extra_settings: dict[str, Any] | None) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
if extra_settings is None:
return task, None
if not isinstance(extra_settings, dict):
return None, {
"status": "error",
"client_id": str(task.get("client_id", "") or "").strip(),
"output_file": "",
"prompt": str(task.get("prompt", "") or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": "extra_settings must be an object.",
}
if len(extra_settings) == 0:
return task, None
settings_info = self._get_generation_extra_settings_info(task)
if len(settings_info) == 0:
return None, {
"status": "error",
"client_id": str(task.get("client_id", "") or "").strip(),
"output_file": "",
"prompt": str(task.get("prompt", "") or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": f"Tool '{tool_name}' does not expose any extra_settings right now.",
}
normalized_info = {_normalize_extra_setting_lookup_label(label): (label, entry) for label, entry in settings_info.items()}
custom_settings = task.get("custom_settings", None)
if not isinstance(custom_settings, dict):
custom_settings = {}
for raw_label, raw_value in extra_settings.items():
label_key = _normalize_extra_setting_lookup_label(raw_label)
if len(label_key) == 0:
return None, {
"status": "error",
"client_id": str(task.get("client_id", "") or "").strip(),
"output_file": "",
"prompt": str(task.get("prompt", "") or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": "extra_settings keys must be non-empty strings.",
}
matched = normalized_info.get(label_key, None)
if matched is None:
available = ", ".join(sorted(settings_info))
return None, {
"status": "error",
"client_id": str(task.get("client_id", "") or "").strip(),
"output_file": "",
"prompt": str(task.get("prompt", "") or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": f"Unknown extra setting '{raw_label}' for tool '{tool_name}'. Call Get Default Settings first and use one of: {available}.",
}
label, entry = matched
parsed_value, parse_error = self._parse_extra_setting_override_value(label, raw_value, entry.get("type", "number"))
if parse_error is not None:
return None, {
"status": "error",
"client_id": str(task.get("client_id", "") or "").strip(),
"output_file": "",
"prompt": str(task.get("prompt", "") or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": parse_error,
}
range_error = extra_settings.validate_setting_value(label, parsed_value, entry.get("type", "number"), entry.get("min", None), entry.get("max", None))
if range_error is not None:
return None, {
"status": "error",
"client_id": str(task.get("client_id", "") or "").strip(),
"output_file": "",
"prompt": str(task.get("prompt", "") or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": range_error,
}
if entry.get("custom", False):
custom_settings[str(entry["key"])] = parsed_value
else:
task[str(entry["key"])] = parsed_value
if len(custom_settings) > 0:
task["custom_settings"] = custom_settings
return task, None
def _get_effective_generation_defaults(self, tool_name: str) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
lookup_name = str(tool_name or "").strip()
if lookup_name not in deepy_tool_settings.GENERATION_TOOL_IDS:
return None, {
"status": "error",
"tool_id": lookup_name,
"error": f"tool_id must be one of: {', '.join(deepy_tool_settings.GENERATION_TOOL_IDS)}.",
}
generator_variant = self.get_tool_variant(lookup_name)
try:
task = deepy_tool_settings.build_generation_task(lookup_name, generator_variant, prompt="", client_id="__deepy_defaults__")
except Exception as exc:
return None, {
"status": "error",
"tool_id": lookup_name,
"template": generator_variant,
"error": str(exc),
}
include_num_frames = self._is_video_generation_tool(lookup_name)
task, error_result = self._apply_generation_overrides(lookup_name, task, include_num_frames=include_num_frames)
if error_result is not None:
error_result["tool_id"] = lookup_name
error_result["template"] = generator_variant
return None, error_result
model_def = self._get_effective_tool_model_def(lookup_name)
audio_only = bool(model_def.get("audio_only", False))
width = height = None
if not audio_only:
width, height = self._parse_generation_resolution(task.get("resolution", ""))
seed = task.get("seed", None)
try:
seed = None if seed is None or str(seed).strip() == "" else int(seed)
except Exception:
seed = None
result = {
"status": "ok",
"tool_id": lookup_name,
"template": generator_variant,
"width": width,
"height": height,
"seed": seed,
}
if self._supports_inference_steps_override(lookup_name):
try:
num_inference_steps = task.get("num_inference_steps", None)
result["num_inference_steps"] = None if num_inference_steps is None or str(num_inference_steps).strip() == "" else int(num_inference_steps)
except Exception:
result["num_inference_steps"] = None
if include_num_frames:
result["num_frames"] = None if task.get("video_length", None) is None else int(task.get("video_length"))
result["fps"] = self._compute_effective_video_fps(task)
if lookup_name == "gen_video":
result["multimedia_generation"] = bool(model_def.get("multimedia_generation", False))
result["extra_settings"] = {label: entry.get("value", None) for label, entry in self._get_generation_extra_settings_info(task).items()}
return result, None
def _apply_generation_overrides(
self,
tool_name: str,
task: dict[str, Any],
*,
include_num_frames: bool,
width: int | None = None,
height: int | None = None,
num_frames: int | None = None,
duration_seconds: float | None = None,
fps: int | None = None,
num_inference_steps: int | None = None,
extra_settings: dict[str, Any] | None = None,
) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
ui_settings = self._get_tool_ui_settings()
if ui_settings["use_template_properties"]:
base_resolution = str(task.get("resolution", "") or "").strip()
base_num_frames = task.get("video_length", None) if include_num_frames else None
else:
base_resolution = f"{ui_settings['width']}x{ui_settings['height']}"
task["seed"] = int(ui_settings["seed"])
if include_num_frames:
base_num_frames = int(ui_settings["num_frames"])
default_width = default_height = None
if len(base_resolution) > 0:
default_width, default_height = self._parse_generation_resolution(base_resolution)
try:
width = None if width is None or str(width).strip() == "" else int(width)
height = None if height is None or str(height).strip() == "" else int(height)
except Exception:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": base_resolution, "error": "width and height must be integers."}
if width is None or height is None:
if default_width is None or default_height is None or default_width <= 0 or default_height <= 0:
if width is not None or height is not None:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": base_resolution, "error": "width and height must both be provided because the template/default settings do not define a valid resolution."}
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": base_resolution, "error": "Template/default settings do not define a valid resolution."}
width = default_width if width is None else width
height = default_height if height is None else height
min_dim = int(deepy_ui_settings.ASSISTANT_OVERRIDE_DIMENSION_MIN)
max_dim = int(deepy_ui_settings.ASSISTANT_OVERRIDE_DIMENSION_MAX)
if width < min_dim or width > max_dim or height < min_dim or height > max_dim:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": f"{width}x{height}", "error": f"width and height must stay between {min_dim} and {max_dim}."}
parsed_duration_seconds = None
if include_num_frames:
parsed_duration_seconds, error_result = self._parse_time_value(duration_seconds, "duration_seconds", required=False)
if error_result is not None:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": f"{width}x{height}", "error": str(error_result.get("error", "") or "duration_seconds is invalid.")}
if parsed_duration_seconds is not None:
if parsed_duration_seconds <= 0:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": f"{width}x{height}", "error": "duration_seconds must be > 0."}
if num_frames is not None and str(num_frames).strip() != "":
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": f"{width}x{height}", "error": "Specify either num_frames or duration_seconds, not both."}
task["resolution"] = f"{width}x{height}"
if fps is not None:
try:
fps = int(fps)
except Exception:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": task["resolution"], "error": "fps must be an integer."}
if fps < 15 or fps > 60:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": task["resolution"], "error": "fps must stay between 15 and 60."}
task["force_fps"] = str(int(fps))
if include_num_frames:
if parsed_duration_seconds is not None:
effective_fps = int(fps) if fps is not None else self._compute_effective_video_fps(task)
if effective_fps is None or effective_fps <= 0:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": task["resolution"], "error": "Could not determine FPS to convert duration_seconds. Pass fps explicitly."}
num_frames = int(round(float(parsed_duration_seconds) * float(effective_fps)))
num_frames = self._snap_video_frame_count_to_latent_grid(num_frames, self._get_effective_video_latent_size(task))
try:
num_frames = base_num_frames if num_frames is None or str(num_frames).strip() == "" else int(num_frames)
except Exception:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": task["resolution"], "error": "num_frames must be an integer."}
min_frames = int(deepy_ui_settings.ASSISTANT_OVERRIDE_FRAMES_MIN)
max_frames = int(deepy_ui_settings.ASSISTANT_OVERRIDE_FRAMES_MAX)
if num_frames is None or num_frames < min_frames or num_frames > max_frames:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": task["resolution"], "error": f"num_frames must stay between {min_frames} and {max_frames}."}
task["video_length"] = int(num_frames)
if num_inference_steps is not None:
try:
num_inference_steps = int(num_inference_steps)
except Exception:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": task["resolution"], "error": "num_inference_steps must be an integer."}
if num_inference_steps <= 0:
return None, {"status": "error", "client_id": str(task.get("client_id", "") or "").strip(), "output_file": "", "prompt": str(task.get("prompt", "") or "").strip(), "resolution": task["resolution"], "error": "num_inference_steps must be a positive integer."}
task["num_inference_steps"] = int(num_inference_steps)
return self._apply_extra_settings_overrides(tool_name, task, extra_settings)
def _build_generation_task(self, tool_name: str, variant: str, *, prompt: str, client_id: str, **kwargs) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
self._remember_generated_client_id(client_id)
try:
task = deepy_tool_settings.build_generation_task(tool_name, variant, prompt=prompt, client_id=client_id, **kwargs)
except ValueError as exc:
return None, {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": str(prompt or "").strip(),
"error": str(exc),
}
return task, None
def _sync_recent_media(self, max_items: int = 5) -> None:
if self.session is None:
return
file_list, file_settings_list, audio_file_list, audio_file_settings_list = self.get_processed_queue(self.gen)
media_registry.sync_recent_generated_media(self.session, file_list, file_settings_list, max_items=max_items)
media_registry.sync_recent_generated_media(self.session, audio_file_list, audio_file_settings_list, max_items=max_items)
def _remember_generated_client_id(self, client_id: str) -> None:
if self.session is None:
return
normalized_client_id = str(client_id or "").strip()
if len(normalized_client_id) == 0:
return
generated_client_ids = [str(value or "").strip() for value in list(self.session.generated_client_ids or []) if len(str(value or "").strip()) > 0]
if normalized_client_id in generated_client_ids:
return
generated_client_ids.append(normalized_client_id)
self.session.generated_client_ids = generated_client_ids
def _register_gallery_media_record(self, media_path: str, settings: dict[str, Any] | None) -> dict[str, Any] | None:
if self.session is None:
return None
normalized_path = str(media_path or "").strip()
if len(normalized_path) == 0:
return None
resolved_settings = settings if isinstance(settings, dict) else None
client_id = "" if resolved_settings is None else str(resolved_settings.get("client_id", "") or "").strip()
return media_registry.register_media(
self.session,
normalized_path,
settings=resolved_settings,
source="deepy" if client_id in {str(value or "").strip() for value in list(self.session.generated_client_ids or []) if len(str(value or "").strip()) > 0} else "wangp",
client_id=client_id,
)
def _get_new_user_gallery_media(self) -> dict[str, dict[str, Any]]:
if self.session is None:
return {}
file_list, file_settings_list, audio_file_list, audio_file_settings_list = self.get_processed_queue(self.gen)
generated_client_ids = {str(value or "").strip() for value in list(self.session.generated_client_ids or []) if len(str(value or "").strip()) > 0}
media_updates = {}
gallery_groups = (
("seen_video_gallery_paths", list(file_list or []), list(file_settings_list or [])),
("seen_audio_gallery_paths", list(audio_file_list or []), list(audio_file_settings_list or [])),
)
for session_attr, gallery_files, gallery_settings in gallery_groups:
previous_files = [str(path or "").strip() for path in getattr(self.session, session_attr, []) if len(str(path or "").strip()) > 0]
current_pairs = [(str(path or "").strip(), gallery_settings[index] if index < len(gallery_settings) and isinstance(gallery_settings[index], dict) else None) for index, path in enumerate(gallery_files) if len(str(path or "").strip()) > 0]
current_files = [path for path, _settings in current_pairs]
appended_start = len(previous_files) if len(previous_files) <= len(current_files) and current_files[: len(previous_files)] == previous_files else len(current_files)
setattr(self.session, session_attr, list(current_files))
if appended_start >= len(current_pairs):
continue
for media_path, settings in current_pairs[appended_start:]:
client_id = "" if not isinstance(settings, dict) else str(settings.get("client_id", "") or "").strip()
if len(client_id) > 0 and client_id in generated_client_ids:
continue
media_record = self._register_gallery_media_record(media_path, settings)
media_type = "" if media_record is None else str(media_record.get("media_type", "") or "").strip()
if media_type in {"image", "video", "audio"}:
media_updates[media_type] = media_record
return media_updates
def _get_selected_gallery_media_updates(self) -> list[dict[str, Any]]:
if self.session is None:
return []
updates: list[dict[str, Any]] = []
visual_media_record, _error_result = self._get_selected_media_record_from_source("video", "all")
visual_signature = "" if visual_media_record is None else f"{str(visual_media_record.get('media_type', '') or '').strip()}:{str(visual_media_record.get('media_id', '') or '').strip()}"
if visual_signature != str(self.session.selected_visual_runtime_signature or "") and visual_media_record is not None:
visual_media_type = str(visual_media_record.get("media_type", "") or "").strip()
if visual_media_type in {"image", "video"}:
media_entry = self._runtime_media_entry(
visual_media_record,
action="selected",
gallery_label="Image / Video Gallery",
reference_label="selected",
selected_payload=True,
)
if media_entry is not None:
updates.append(media_entry)
self.session.selected_visual_runtime_signature = visual_signature
audio_media_record, _error_result = self._get_selected_media_record_from_source("audio", "audio")
audio_signature = "" if audio_media_record is None else f"audio:{str(audio_media_record.get('media_id', '') or '').strip()}"
if audio_signature != str(self.session.selected_audio_runtime_signature or "") and audio_media_record is not None:
media_entry = self._runtime_media_entry(
audio_media_record,
action="selected",
gallery_label="Audio Gallery",
reference_label="selected",
selected_payload=True,
)
if media_entry is not None:
updates.append(media_entry)
self.session.selected_audio_runtime_signature = audio_signature
return updates
def _queue_contains_client_id(self, queue: list[Any], client_id: str) -> bool:
lookup_client_id = str(client_id or "").strip()
if len(lookup_client_id) == 0:
return False
return any(isinstance(item, dict) and isinstance(item.get("params"), dict) and str(item["params"].get("client_id", "") or "").strip() == lookup_client_id for item in list(queue or []))
@staticmethod
def _get_media_description(record: dict[str, Any]) -> str:
return str(record.get("prompt_summary", "") or "").strip() or str(record.get("label", "") or "").strip()
@staticmethod
def _get_runtime_media_source_label(record: dict[str, Any]) -> str:
return "Deepy" if str(record.get("source", "") or "").strip().lower() == "deepy" else "WanGP"
def _compact_runtime_media_payload(self, record: dict[str, Any]) -> dict[str, Any]:
payload = {
"type": str(record.get("media_type", "") or "").strip(),
"source": self._get_runtime_media_source_label(record),
}
filename = str(record.get("filename", "") or "").strip()
if len(filename) > 0:
payload["filename"] = filename
description = self._get_media_description(record)
if len(description) > 0:
payload["description"] = description
return payload
def _normalize_selected_media_type(self, media_type: str | None, reference: str | None = None) -> str:
normalized = str(media_type or "").strip().lower()
if normalized in {"image", "video", "audio"}:
return normalized
if normalized in {"", "any", "all"}:
inferred = media_registry.normalize_media_type("any", reference=reference)
return "all" if inferred == "any" else inferred
return "all"
def _selected_runtime_media_payload(self, media_record: dict[str, Any]) -> dict[str, Any]:
payload = self._compact_runtime_media_payload(media_record)
video_position = self._get_selected_video_position(media_record)
current_time = video_position.get("current_time_seconds", None)
current_frame = video_position.get("current_frame_no", None)
if isinstance(current_time, (int, float)) and float(current_time) > 0:
payload["current_time_seconds"] = video_position["current_time_seconds"]
if isinstance(current_frame, int) and int(current_frame) > 0:
payload["current_frame_no"] = video_position["current_frame_no"]
return payload
def _selected_media_payload(self, media_record: dict[str, Any], why: str = "") -> dict[str, Any]:
payload = {
"media_id": media_record.get("media_id", ""),
"media_type": media_record.get("media_type", ""),
"filename": media_record.get("filename", ""),
}
description = self._get_media_description(media_record)
if len(description) > 0:
payload["description"] = description
if len(str(why or "").strip()) > 0:
payload["why"] = str(why).strip()
video_position = self._get_selected_video_position(media_record)
if "current_time_seconds" in video_position:
payload["current_time_seconds"] = video_position["current_time_seconds"]
if "current_frame_no" in video_position:
payload["current_frame_no"] = video_position["current_frame_no"]
return payload
@staticmethod
def _merge_runtime_media_payload(current_payload: dict[str, Any] | None, extra_payload: dict[str, Any] | None) -> dict[str, Any]:
merged = dict(current_payload or {})
for key, value in dict(extra_payload or {}).items():
if value in (None, "", [], {}):
continue
merged[key] = value
return merged
@staticmethod
def _join_runtime_words(words: list[str], conjunction: str) -> str:
normalized_words = [str(word or "").strip() for word in list(words or []) if len(str(word or "").strip()) > 0]
if len(normalized_words) == 0:
return ""
if len(normalized_words) == 1:
return normalized_words[0]
if len(normalized_words) == 2:
return f"{normalized_words[0]} {conjunction} {normalized_words[1]}"
return f"{', '.join(normalized_words[:-1])}, {conjunction} {normalized_words[-1]}"
def _format_runtime_media_reference_line(self, media_id: str, media_type: str, gallery_label: str, references: list[tuple[str, str]]) -> str:
action_order = {"added": 0, "selected": 1}
reference_order = {"last": 0, "selected": 1}
actions = sorted({str(action or "").strip() for action, _reference_label in list(references or []) if len(str(action or "").strip()) > 0}, key=lambda value: (action_order.get(value, 99), value))
reference_labels = sorted({str(reference_label or "").strip() for _action, reference_label in list(references or []) if len(str(reference_label or "").strip()) > 0}, key=lambda value: (reference_order.get(value, 99), value))
action_text = self._join_runtime_words(actions, "and")
reference_text = self._join_runtime_words(reference_labels, "or")
return (
f"The user has {action_text} {media_type} id {media_id} in the {gallery_label}. "
f"Use this media id if the user asks you to work on the {reference_text} {media_type}."
).strip()
def _runtime_media_entry(self, media_record: dict[str, Any], *, action: str, gallery_label: str, reference_label: str, selected_payload: bool = False) -> dict[str, Any] | None:
media_type = str(media_record.get("media_type", "") or "").strip()
media_id = str(media_record.get("media_id", "") or "").strip()
if len(media_type) == 0 or len(media_id) == 0:
return None
payload = self._selected_runtime_media_payload(media_record) if selected_payload else self._compact_runtime_media_payload(media_record)
return {
"media_id": media_id,
"media_type": media_type,
"action": str(action or "").strip(),
"reference_label": str(reference_label or "").strip(),
"gallery_label": str(gallery_label or "").strip(),
"detail_payload": payload,
}
def _get_selected_runtime_snapshot(self) -> dict[str, Any] | None:
snapshot = {}
visual_media_record, _error_result = self._get_selected_media_record_from_source("video", "all")
if visual_media_record is not None:
snapshot["selected_visual_media_id"] = str(visual_media_record.get("media_id", "") or "").strip()
snapshot["selected_visual_media_type"] = str(visual_media_record.get("media_type", "") or "").strip()
label = str(visual_media_record.get("label", "") or "").strip()
if len(label) > 0:
snapshot["selected_visual_media_label"] = label
if snapshot["selected_visual_media_type"] == "video":
video_position = self._get_selected_video_position(visual_media_record)
if "current_time_seconds" in video_position:
snapshot["selected_visual_current_time_seconds"] = video_position["current_time_seconds"]
if "current_frame_no" in video_position:
snapshot["selected_visual_current_frame_no"] = video_position["current_frame_no"]
audio_media_record, _error_result = self._get_selected_media_record_from_source("audio", "audio")
if audio_media_record is not None:
snapshot["selected_audio_media_id"] = str(audio_media_record.get("media_id", "") or "").strip()
snapshot["selected_audio_media_type"] = str(audio_media_record.get("media_type", "") or "").strip()
label = str(audio_media_record.get("label", "") or "").strip()
if len(label) > 0:
snapshot["selected_audio_media_label"] = label
return snapshot if len(snapshot) > 1 else None
def _is_selected_reference(self, reference: str) -> bool:
return _SELECTED_REFERENCE_RE.search(str(reference or "").strip()) is not None
def _get_current_turn_selected_media_snapshot(self, source: str) -> dict[str, Any] | None:
if self.session is None or not isinstance(self.session.current_turn, dict):
return None
snapshot_key = "selected_audio_media_snapshot" if str(source or "").strip().lower() == "audio" else "selected_visual_media_snapshot"
snapshot = self.session.current_turn.get(snapshot_key, None)
return copy.deepcopy(snapshot) if isinstance(snapshot, dict) else None
def _get_selected_media_record_from_source(self, source: str, requested_media_type: str = "all") -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
requested_label = self._normalize_selected_media_type(requested_media_type)
if self.session is None:
return None, {"status": "error", "media_type": requested_label, "error": "Assistant session is not available."}
file_list, file_settings_list, audio_file_list, audio_file_settings_list = self.get_processed_queue(self.gen)
source = "audio" if str(source or "").strip().lower() == "audio" else "video"
if source == "audio":
raw_choice = (self.gen or {}).get("audio_selected", -1)
file_list, file_settings_list = list(audio_file_list or []), list(audio_file_settings_list or [])
else:
raw_choice = (self.gen or {}).get("selected", -1)
file_list, file_settings_list = list(file_list or []), list(file_settings_list or [])
try:
choice = int(raw_choice if raw_choice is not None else -1)
except Exception:
choice = -1
if len(file_list) > 0 and choice == len(file_list):
choice = len(file_list) - 1
if choice < 0 or choice >= len(file_list):
snapshot = self._get_current_turn_selected_media_snapshot(source)
if snapshot is not None:
return snapshot, None
gallery_label = "audio gallery" if source == "audio" else "image/video gallery"
return None, {"status": "error", "media_type": requested_label, "error": f"No media is currently selected in the WanGP {gallery_label}."}
selected_path = str(file_list[choice] or "").strip()
selected_settings = file_settings_list[choice] if choice < len(file_settings_list) and isinstance(file_settings_list[choice], dict) else None
selected_client_id = str((selected_settings or {}).get("client_id", "") or "").strip()
selected_gallery_media_type = "audio" if source == "audio" else "video"
if len(selected_client_id) > 0 and (source == "audio" or deepy_video_tools.has_video_extension(selected_path)):
latest_path, latest_settings = media_registry.find_last_gallery_media_by_client(file_list, file_settings_list, selected_client_id, media_type=selected_gallery_media_type)
if latest_path is not None:
selected_path = latest_path
selected_settings = latest_settings if isinstance(latest_settings, dict) else None
media_record = media_registry.register_media(
self.session,
selected_path,
settings=selected_settings,
source="deepy" if str((selected_settings or {}).get("client_id", "") or "").strip().startswith("ai_") else "wangp",
client_id=str((selected_settings or {}).get("client_id", "") or "").strip(),
)
if media_record is None:
snapshot = self._get_current_turn_selected_media_snapshot(source)
if snapshot is not None:
return snapshot, None
return None, {"status": "error", "media_type": requested_label, "error": "The currently selected gallery item is not a supported media file."}
actual_media_type = str(media_record.get("media_type", "") or "").strip() or "unknown media type"
resolved_media_type = media_registry.normalize_media_type(requested_media_type)
if resolved_media_type != "any" and actual_media_type != resolved_media_type:
return None, {
"status": "error",
"media_type": resolved_media_type,
"selected_media_type": actual_media_type,
"actual_media_type": actual_media_type,
"error": f"The currently selected media is a {actual_media_type}, not a {resolved_media_type}.",
}
return media_record, None
def _get_all_selected_media_records(self) -> tuple[dict[str, Any] | None, dict[str, Any] | None, dict[str, Any] | None]:
visual_media_record, _visual_error = self._get_selected_media_record_from_source("video", "all")
audio_media_record, _audio_error = self._get_selected_media_record_from_source("audio", "audio")
if visual_media_record is None and audio_media_record is None:
return None, None, {"status": "error", "media_type": "all", "error": "No media is currently selected in either WanGP gallery."}
return visual_media_record, audio_media_record, None
def _get_selected_media_record(self, requested_media_type: str = "all") -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
resolved_media_type = self._normalize_selected_media_type(requested_media_type)
if resolved_media_type == "audio":
return self._get_selected_media_record_from_source("audio", "audio")
if resolved_media_type in {"image", "video"}:
return self._get_selected_media_record_from_source("video", resolved_media_type)
visual_media_record, audio_media_record, error_result = self._get_all_selected_media_records()
if error_result is not None:
return None, error_result
if visual_media_record is None:
return audio_media_record, None
if audio_media_record is None:
return visual_media_record, None
return None, {
"status": "error",
"media_type": "all",
"error": "Both a visual selection and an audio selection exist. Request image, video, or audio explicitly, or use Get Selected Media with media_type='all'.",
}
def _get_selected_video_position(self, media_record: dict[str, Any]) -> dict[str, Any]:
if str(media_record.get("media_type", "") or "").strip() != "video":
return {}
try:
current_time = float((self.gen or {}).get("selected_video_time", 0.0) or 0.0)
except Exception:
current_time = 0.0
current_time = max(0.0, current_time)
try:
media_path = str(media_record.get("path", "")).strip()
_fps, _width, _height, _frame_count = get_video_info(media_path)
except Exception:
media_path = ""
try:
frame_no = deepy_video_tools.resolve_video_frame_no(media_path, time_seconds=current_time) if len(media_path) > 0 else 0
except Exception:
frame_no = 0
return {"current_time_seconds": round(current_time, 3), "current_frame_no": frame_no}
def _register_tool_media(self, path: str, settings: dict[str, Any], label: str | None = None) -> dict[str, Any] | None:
if self.session is None:
return None
return media_registry.register_media(
self.session,
path,
settings=settings,
source="deepy",
client_id=str(settings.get("client_id", "") or "").strip(),
label=label,
)
def _resolve_direct_output_path(self, file_path: str, is_image: bool, audio_only: bool) -> str:
file_path = str(file_path or "").strip()
if len(file_path) == 0:
raise RuntimeError("Output file path is empty.")
if callable(self.get_output_filepath):
resolved = str(self.get_output_filepath(file_path, is_image, audio_only) or "").strip()
if len(resolved) > 0:
return resolved
return os.path.abspath(os.path.normpath(file_path))
def _record_direct_media(self, output_path: str, settings: dict[str, Any], *, is_image: bool, audio_only: bool, label: str | None = None, persist_metadata: bool = True) -> dict[str, Any] | None:
if not os.path.isfile(output_path):
raise RuntimeError(f"Output file was not created: {output_path}")
if not callable(self.record_file_metadata):
raise RuntimeError("WanGP direct media recording is not available.")
self.record_file_metadata(output_path, settings if persist_metadata else None, is_image, audio_only, self.gen)
self.send_cmd("refresh_gallery", {"path": output_path})
return self._register_tool_media(output_path, settings, label=label)
def _server_config(self) -> dict[str, Any]:
if callable(self.get_server_config):
return dict(self.get_server_config() or {})
return {}
def _get_video_output_settings(self) -> tuple[str, str]:
server_config = self._server_config()
return str(server_config.get("video_output_codec", "libx264_8") or "libx264_8"), str(server_config.get("video_container", "mp4") or "mp4")
def _get_standalone_audio_output_codec(self) -> str:
server_config = self._server_config()
return str(server_config.get("audio_stand_alone_output_codec", "wav") or "wav")
def _get_video_audio_output_codec(self) -> str:
server_config = self._server_config()
return str(server_config.get("audio_output_codec", "aac_128") or "aac_128")
def _resolve_image_media(self, media_id: str, parameter_name: str) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
media_id = str(media_id or "").strip()
if len(media_id) == 0:
return None, None
if self.session is None:
return None, {"status": "error", parameter_name: media_id, "error": "Assistant session is not available."}
media_record = media_registry.get_media_record(self.session, media_id)
if media_record is None:
return None, {"status": "error", parameter_name: media_id, "error": f"Unknown media id for {parameter_name}."}
if media_record.get("media_type") != "image":
actual_media_type = str(media_record.get("media_type", "") or "").strip() or "unknown media type"
return None, {
"status": "error",
parameter_name: media_record.get("media_id", ""),
"actual_media_type": actual_media_type,
"media_type": actual_media_type,
"error": f"{parameter_name} must reference an image, not a {actual_media_type}.",
}
return media_record, None
def _resolve_video_media(self, media_id: str, parameter_name: str) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
media_id = str(media_id or "").strip()
if len(media_id) == 0:
return None, {"status": "error", parameter_name: media_id, "error": f"{parameter_name} is required."}
if self.session is None:
return None, {"status": "error", parameter_name: media_id, "error": "Assistant session is not available."}
media_record = media_registry.get_media_record(self.session, media_id)
if media_record is None:
return None, {"status": "error", parameter_name: media_id, "error": f"Unknown media id for {parameter_name}."}
if media_record.get("media_type") != "video":
actual_media_type = str(media_record.get("media_type", "") or "").strip() or "unknown media type"
return None, {
"status": "error",
parameter_name: media_record.get("media_id", ""),
"actual_media_type": actual_media_type,
"media_type": actual_media_type,
"error": f"{parameter_name} must reference a video, not a {actual_media_type}.",
}
return media_record, None
def _resolve_audio_media(self, media_id: str, parameter_name: str) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
media_id = str(media_id or "").strip()
if len(media_id) == 0:
return None, {"status": "error", parameter_name: media_id, "error": f"{parameter_name} is required."}
if self.session is None:
return None, {"status": "error", parameter_name: media_id, "error": "Assistant session is not available."}
media_record = media_registry.get_media_record(self.session, media_id)
if media_record is None:
return None, {"status": "error", parameter_name: media_id, "error": f"Unknown media id for {parameter_name}."}
if media_record.get("media_type") != "audio":
actual_media_type = str(media_record.get("media_type", "") or "").strip() or "unknown media type"
return None, {
"status": "error",
parameter_name: media_record.get("media_id", ""),
"actual_media_type": actual_media_type,
"media_type": actual_media_type,
"error": f"{parameter_name} must reference an audio file, not a {actual_media_type}.",
}
return media_record, None
def _resolve_audio_or_video_media(self, media_id: str, parameter_name: str) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
media_id = str(media_id or "").strip()
if len(media_id) == 0:
return None, {"status": "error", parameter_name: media_id, "error": f"{parameter_name} is required."}
if self.session is None:
return None, {"status": "error", parameter_name: media_id, "error": "Assistant session is not available."}
media_record = media_registry.get_media_record(self.session, media_id)
if media_record is None:
return None, {"status": "error", parameter_name: media_id, "error": f"Unknown media id for {parameter_name}."}
if media_record.get("media_type") not in {"audio", "video"}:
actual_media_type = str(media_record.get("media_type", "") or "").strip() or "unknown media type"
return None, {
"status": "error",
parameter_name: media_record.get("media_id", ""),
"actual_media_type": actual_media_type,
"media_type": actual_media_type,
"error": f"{parameter_name} must reference an audio or video file, not a {actual_media_type}.",
}
return media_record, None
def _parse_time_value(self, value: Any, parameter_name: str, *, required: bool = False) -> tuple[float | None, dict[str, Any] | None]:
if value is None or str(value).strip() == "":
return (None, {"status": "error", "error": f"{parameter_name} is required."}) if required else (None, None)
try:
resolved = float(value)
except Exception:
return None, {"status": "error", "error": f"{parameter_name} must be a number."}
if resolved < 0:
return None, {"status": "error", "error": f"{parameter_name} must be >= 0."}
return resolved, None
def _parse_int_value(self, value: Any, parameter_name: str, *, required: bool = False) -> tuple[int | None, dict[str, Any] | None]:
if value is None or str(value).strip() == "":
return (None, {"status": "error", "error": f"{parameter_name} is required."}) if required else (None, None)
try:
resolved = int(value)
except Exception:
return None, {"status": "error", "error": f"{parameter_name} must be an integer."}
if resolved < 0:
return None, {"status": "error", "error": f"{parameter_name} must be >= 0."}
return resolved, None
def _parse_bool_value(self, value: Any, parameter_name: str, *, required: bool = False) -> tuple[bool | None, dict[str, Any] | None]:
if value is None or str(value).strip() == "":
return (None, {"status": "error", "error": f"{parameter_name} is required."}) if required else (None, None)
if isinstance(value, bool):
return value, None
normalized = str(value).strip().lower()
if normalized in {"true", "1", "yes", "on"}:
return True, None
if normalized in {"false", "0", "no", "off"}:
return False, None
return None, {"status": "error", "error": f"{parameter_name} must be true or false."}
def _resolve_segment_args(
self,
source_media: dict[str, Any],
*,
start_time: Any = None,
end_time: Any = None,
duration: Any = None,
start_frame: Any = None,
end_frame: Any = None,
num_frames: Any = None,
allow_empty: bool = False,
) -> tuple[dict[str, Any] | None, dict[str, Any] | None]:
time_inputs = (start_time, end_time, duration)
frame_inputs = (start_frame, end_frame, num_frames)
has_time_args = any(value is not None and str(value).strip() != "" for value in time_inputs)
has_frame_args = any(value is not None and str(value).strip() != "" for value in frame_inputs)
if has_time_args and has_frame_args:
return None, {"status": "error", "error": "Use either time-based arguments or frame-based arguments, not both."}
if not has_time_args and not has_frame_args:
if allow_empty:
return {"mode": "time", "start_time": None, "end_time": None, "duration": None, "start_frame": None, "end_frame": None, "num_frames": None}, None
return None, {"status": "error", "error": "Provide at least one of start_time, end_time, duration, start_frame, end_frame, or num_frames."}
if has_frame_args:
if str(source_media.get("media_type", "") or "").strip() != "video":
return None, {"status": "error", "error": "Frame-based extraction is only supported when media_id references a video."}
start_frame, error_result = self._parse_int_value(start_frame, "start_frame")
if error_result is not None:
return None, error_result
end_frame, error_result = self._parse_int_value(end_frame, "end_frame")
if error_result is not None:
return None, error_result
num_frames, error_result = self._parse_int_value(num_frames, "num_frames")
if error_result is not None:
return None, error_result
if end_frame is not None and num_frames is not None:
return None, {"status": "error", "error": "Specify either end_frame or num_frames, not both."}
start_frame = 0 if start_frame is None else start_frame
if num_frames is not None and num_frames <= 0:
return None, {"status": "error", "error": "num_frames must be > 0."}
media_path = str(source_media.get("path", "")).strip()
try:
fps, _width, _height, frame_count = get_video_info(media_path)
except Exception as exc:
return None, {"status": "error", "error": str(exc)}
precise_fps = deepy_video_tools.get_precise_video_fps(media_path)
effective_fps = float(precise_fps) if precise_fps is not None and precise_fps > 0 else float(fps or 0)
if effective_fps <= 0:
return None, {"status": "error", "error": "Could not determine source video FPS for frame-based extraction."}
max_frame = max(0, int(frame_count) - 1)
if start_frame > max_frame:
return None, {"status": "error", "error": f"start_frame must be between 0 and {max_frame}."}
resolved_end_frame = max_frame
if end_frame is not None:
if end_frame < start_frame:
return None, {"status": "error", "error": "end_frame must be >= start_frame."}
resolved_end_frame = min(end_frame, max_frame)
elif num_frames is not None:
resolved_end_frame = min(start_frame + num_frames - 1, max_frame)
resolved_num_frames = max(0, resolved_end_frame - start_frame + 1)
resolved_start_time = start_frame / effective_fps
if end_frame is not None:
resolved_end_time = (resolved_end_frame + 1) / effective_fps
resolved_duration = None
elif num_frames is not None:
resolved_end_time = None
resolved_duration = resolved_num_frames / effective_fps
else:
resolved_end_time = None
resolved_duration = None
return {
"mode": "frame",
"start_time": resolved_start_time,
"end_time": resolved_end_time,
"duration": resolved_duration,
"start_frame": start_frame,
"end_frame": resolved_end_frame,
"num_frames": resolved_num_frames,
}, None
start_time, error_result = self._parse_time_value(start_time, "start_time")
if error_result is not None:
return None, error_result
end_time, error_result = self._parse_time_value(end_time, "end_time")
if error_result is not None:
return None, error_result
duration, error_result = self._parse_time_value(duration, "duration")
if error_result is not None:
return None, error_result
if end_time is not None and duration is not None:
return None, {"status": "error", "error": "Specify either end_time or duration, not both."}
if start_time is None:
start_time = 0.0
return {"mode": "time", "start_time": start_time, "end_time": end_time, "duration": duration, "start_frame": None, "end_frame": None, "num_frames": None}, None
def _build_deepy_settings(self, prompt: str, comments: str = "", **updates: Any) -> dict[str, Any]:
wangp_version = str(_get_main_attribute("WanGP_version") or "").strip()
settings = {
"type": f"WanGP v{wangp_version} DeepBeepMeep - Deepy" if len(wangp_version) > 0 else "WanGP DeepBeepMeep - Deepy",
"model_type": "Deepy",
"prompt": str(prompt or "").strip(),
"client_id": _next_ai_client_id(),
}
self._remember_generated_client_id(settings["client_id"])
settings["comments"] = str(comments or "").strip()
end_time = time.time()
settings["creation_date"] = datetime.fromtimestamp(end_time).isoformat(timespec="seconds")
settings["creation_timestamp"] = int(end_time)
for key, value in updates.items():
if value is not None:
settings[key] = value
return settings
def _build_direct_media_settings(self, source_media: dict[str, Any], comments: str, fallback_prompt: str | None = None, **updates: Any) -> dict[str, Any]:
settings = dict(source_media.get("settings", {}) or {})
if fallback_prompt is not None and (len(settings) == 0 or str(settings.get("model_type", "") or "").strip() == "Deepy"):
return self._build_deepy_settings(fallback_prompt, comments, **updates)
settings["client_id"] = _next_ai_client_id()
self._remember_generated_client_id(settings["client_id"])
settings["comments"] = str(comments or "").strip()
end_time = time.time()
settings["creation_date"] = datetime.fromtimestamp(end_time).isoformat(timespec="seconds")
settings["creation_timestamp"] = int(end_time)
for key, value in updates.items():
if value is not None:
settings[key] = value
return settings
def _build_direct_image_settings(self, comments: str, width: int, height: int, **updates: Any) -> dict[str, Any]:
return self._build_deepy_settings(updates.pop("prompt", f"An image at {int(width)}x{int(height)}."), comments, image_mode=1, resolution=f"{int(width)}x{int(height)}", **updates)
def _update_video_metadata_fields(self, output_path: str, settings: dict[str, Any]) -> None:
try:
fps, width, height, frames_count = get_video_info(output_path)
settings["resolution"] = f"{width}x{height}"
settings["video_length"] = int(frames_count)
if fps > 0:
settings["duration_seconds"] = round(frames_count / fps, 3)
except Exception:
pass
def _update_audio_metadata_fields(self, output_path: str, settings: dict[str, Any]) -> None:
duration = deepy_video_tools.get_media_duration(output_path)
if duration is not None:
settings["duration_seconds"] = round(duration, 3)
def _get_output_duration_seconds(self, output_path: str, file_settings: dict[str, Any] | None = None) -> float | None:
duration = deepy_video_tools.get_media_duration(output_path)
return None if duration is None else round(duration, 3)
def _queue_generation_task(self, task: dict[str, Any], *, activity_label: str, output_label: str | None = None, gallery_media_type: str = "image") -> dict[str, Any]:
if not isinstance(self.gen, dict):
raise RuntimeError("WanGP generation queue is not available.")
client_id = str(task.get("client_id", "") or "").strip()
prompt = str(task.get("prompt", "") or "").strip()
resolution = str(task.get("resolution", "") or "").strip()
gen = self.gen
self.get_processed_queue(gen)
self._set_status(f"Queueing {activity_label}...", kind="tool")
self._update_tool_progress("running", "Queued", {"status": "queued", "client_id": client_id, "prompt": prompt, "resolution": resolution})
task["priority"] = True
gen["inline_queue"] = task
self.send_cmd("load_queue_trigger", {"client_id": client_id})
self._log(f"Queued {activity_label} for {client_id}")
with capture_external_logs():
queue_wait_started_at = time.time()
queue_wait_suspended = False
queue_wait_suspend_logged = False
activity_console_label = activity_label.capitalize()
while True:
if self._is_interrupted():
return self._interrupted_result(client_id, task, force_cancel_queue=True)
queue_errors = gen.get("queue_errors", None) or {}
if client_id in queue_errors:
error_text = str(queue_errors[client_id][0])
self._log(f"Queue error detected for {client_id}: {error_text}")
self._set_status(f"{activity_label.capitalize()} failed: {error_text}", kind="error")
result = {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": prompt,
"resolution": resolution,
"error": error_text,
}
self._update_tool_progress("error", "Error", result)
return result
file_list, file_settings_list, audio_file_list, audio_file_settings_list = self.get_processed_queue(gen)
media_file_list = list(audio_file_list or []) if gallery_media_type == "audio" else list(file_list or [])
media_settings_list = list(audio_file_settings_list or []) if gallery_media_type == "audio" else list(file_settings_list or [])
file_path, file_settings = media_registry.find_last_gallery_media_by_client(media_file_list, media_settings_list, client_id, media_type=gallery_media_type)
if file_path is not None and isinstance(file_settings, dict):
self._log(f"{activity_label.capitalize()} already completed before queue admission wait observed for {client_id}; skipping browser-style queue admission wait.")
self._set_status(f"{activity_label.capitalize()} started...", kind="tool")
self._update_tool_progress("running", "Running", {"status": "running", "client_id": client_id, "prompt": prompt, "resolution": resolution})
break
queue = list(gen.get("queue", []) or [])
if self._queue_contains_client_id(queue, client_id):
if queue_wait_suspended:
print(f"WanGP back in focus tool {activity_console_label} resumed")
self._set_status(f"{activity_label.capitalize()} started...", kind="tool")
self._update_tool_progress("running", "Running", {"status": "running", "client_id": client_id, "prompt": prompt, "resolution": resolution})
break
if not queue_wait_suspend_logged and time.time() - queue_wait_started_at >= 10:
print(f"Tool {activity_console_label} suspended while waiting than WanGP Video Generator gets in focus")
queue_wait_suspend_logged = True
queue_wait_suspended = True
time.sleep(0.25)
while True:
if self._is_interrupted():
return self._interrupted_result(client_id, task, force_cancel_queue=True)
queue_errors = gen.get("queue_errors", None) or {}
if client_id in queue_errors:
error_text = str(queue_errors[client_id][0])
self._log(f"Generation error detected for {client_id}: {error_text}")
self._set_status(f"{activity_label.capitalize()} failed: {error_text}", kind="error")
result = {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": prompt,
"resolution": resolution,
"error": error_text,
}
self._update_tool_progress("error", "Error", result)
return result
file_list, file_settings_list, audio_file_list, audio_file_settings_list = self.get_processed_queue(gen)
media_file_list = list(audio_file_list or []) if gallery_media_type == "audio" else list(file_list or [])
media_settings_list = list(audio_file_settings_list or []) if gallery_media_type == "audio" else list(file_settings_list or [])
queue = list(gen.get("queue", []) or [])
client_id_still_in_queue = self._queue_contains_client_id(queue, client_id)
if client_id_still_in_queue:
time.sleep(0.5)
continue
file_path, file_settings = media_registry.find_last_gallery_media_by_client(media_file_list, media_settings_list, client_id, media_type=gallery_media_type)
if file_path is not None and isinstance(file_settings, dict):
media_record = self._register_tool_media(str(file_path), file_settings, label=output_label)
result = {
"status": "done",
"client_id": client_id,
"output_file": str(file_path),
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"prompt": prompt,
"resolution": resolution,
"error": "",
}
if gallery_media_type in {"video", "audio"}:
result["output_duration"] = self._get_output_duration_seconds(str(file_path), file_settings)
self._log(f"{activity_label.capitalize()} completed for {client_id}: {file_path}")
self._set_status(f"{activity_label.capitalize()} finished.", kind="tool")
self.send_cmd("refresh_gallery", {"path": str(file_path)})
self._update_tool_progress("done", "Done", result)
return result
error_text = f"{activity_label.capitalize()} finished queue processing but no {gallery_media_type} output with client_id '{client_id}' was found in the gallery."
self._log(error_text)
self._set_status(error_text, kind="error")
result = {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": prompt,
"resolution": resolution,
"error": error_text,
}
self._update_tool_progress("error", "Error", result)
return result
@assistant_tool(
display_name="Get Loras",
description="List the available LoRA filenames for one of Deepy's 6 generation tools.",
parameters={
"tool_id": {
"type": "string",
"description": "Generation tool id: gen_image, edit_image, gen_video, gen_video_with_speech, gen_speech_from_description, or gen_speech_from_sample.",
"enum": list(deepy_tool_settings.GENERATION_TOOL_IDS),
},
},
pause_runtime=False,
)
def get_loras(self, tool_id: str) -> dict[str, Any]:
lookup_name = str(tool_id or "").strip()
if lookup_name not in deepy_tool_settings.GENERATION_TOOL_IDS:
return {
"status": "error",
"tool_id": lookup_name,
"loras": [],
"count": 0,
"error": f"tool_id must be one of: {', '.join(deepy_tool_settings.GENERATION_TOOL_IDS)}.",
}
generator_variant = self.get_tool_variant(lookup_name)
template_file = self.get_tool_template_filename(lookup_name)
try:
loras = deepy_tool_settings.list_tool_loras(lookup_name, generator_variant)
except Exception as exc:
return {
"status": "error",
"tool_id": lookup_name,
"generator_variant": generator_variant,
"template_file": template_file,
"loras": [],
"count": 0,
"error": str(exc),
}
return {
"status": "ok",
"tool_id": lookup_name,
"generator_variant": generator_variant,
"template_file": template_file,
"loras": loras,
"count": len(loras),
}
@assistant_tool(
display_name="Get Default Settings",
description="Return the effective default generation settings for one of Deepy's 6 generation tools: the values that WanGP will use if those settings are omitted during generation, including any currently exposed extra_settings keys.",
parameters={
"tool_id": {
"type": "string",
"description": "Generation tool id: gen_image, edit_image, gen_video, gen_video_with_speech, gen_speech_from_description, or gen_speech_from_sample.",
"enum": list(deepy_tool_settings.GENERATION_TOOL_IDS),
},
},
pause_runtime=False,
)
def get_default_settings(self, tool_id: str) -> dict[str, Any]:
result, error_result = self._get_effective_generation_defaults(tool_id)
return result if error_result is None else error_result
@assistant_tool(
display_name="Generate Image",
description="Queue and generate an image from a text prompt inside WanGP, then wait until the output image is available.",
parameters={
"prompt": {
"type": "string",
"description": "The image generation prompt to send to WanGP.",
},
"width": {
"type": "integer",
"description": "Optional output width in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"height": {
"type": "integer",
"description": "Optional output height in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"num_inference_steps": {
"type": "integer",
"description": "Optional number of inference steps. If omitted, keep the template step count.",
"required": False,
},
"extra_settings": copy.deepcopy(_EXTRA_SETTINGS_PARAMETER),
},
)
def gen_image(self, prompt: str, width: int | None = None, height: int | None = None, num_inference_steps: int | None = None, extra_settings: dict[str, Any] | None = None) -> dict[str, Any]:
client_id = _next_ai_client_id()
generator_variant = self._get_tool_ui_settings()["image_generator_variant"]
template_file = self.get_tool_template_filename("gen_image")
task, error_result = self._build_generation_task("gen_image", generator_variant, prompt=prompt, client_id=client_id)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
return error_result
task, error_result = self._apply_generation_overrides("gen_image", task, include_num_frames=False, width=width, height=height, num_inference_steps=num_inference_steps, extra_settings=extra_settings)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
return error_result
if len(task["prompt"]) == 0:
self._set_status("Image generation failed: prompt is empty.", kind="error")
return {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": "",
"resolution": task["resolution"],
"error": "Prompt is empty.",
}
result = self._queue_generation_task(task, activity_label="image generation", output_label="Generated image")
result["generator_variant"] = generator_variant
if len(template_file) > 0:
result["template_file"] = template_file
return result
@assistant_tool(
display_name="Generate Video",
description="Queue and generate a video from a text prompt inside WanGP, optionally using a start image and an end image, then wait until the output video is available.",
parameters={
"prompt": {
"type": "string",
"description": "The video generation prompt to send to WanGP.",
},
"image_start": {
"type": "string",
"description": "Optional media id of the start image returned by Resolve Media.",
"required": False,
},
"image_end": {
"type": "string",
"description": "Optional media id of the end image returned by Resolve Media.",
"required": False,
},
"width": {
"type": "integer",
"description": "Optional output width in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"height": {
"type": "integer",
"description": "Optional output height in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"num_frames": {
"type": "integer",
"description": "Optional output frame count. If omitted, use the current Deepy/template setting.",
"required": False,
},
"duration_seconds": {
"type": "number",
"description": "Optional output duration in seconds. Deepy converts it to num_frames using the effective FPS. Do not pass this together with num_frames.",
"required": False,
},
"fps": {
"type": "integer",
"description": "Optional output FPS between 15 and 60. If omitted, keep the template FPS behavior.",
"required": False,
},
"num_inference_steps": {
"type": "integer",
"description": "Optional number of inference steps. If omitted, keep the template step count.",
"required": False,
},
"extra_settings": copy.deepcopy(_EXTRA_SETTINGS_PARAMETER),
"loras": {
"type": "array",
"description": "Optional list of LoRA filenames to apply. Each item must include `name` and may include `multiplier` as a number like 0.8 or a WanGP multiplier string like `0;1`. Omitted multipliers default to 1.",
"required": False,
"items": {
"type": "object",
"properties": {
"name": {"type": "string", "description": "LoRA filename returned by Get Loras."},
"multiplier": {"description": "Optional LoRA multiplier. Accepts a number or a WanGP multiplier string."},
},
"required": ["name"],
},
},
},
)
def gen_video(
self,
prompt: str,
image_start: str | None = None,
image_end: str | None = None,
width: int | None = None,
height: int | None = None,
num_frames: int | None = None,
duration_seconds: float | None = None,
fps: int | None = None,
num_inference_steps: int | None = None,
extra_settings: dict[str, Any] | None = None,
loras: list[dict[str, Any]] | None = None,
) -> dict[str, Any]:
self._sync_recent_media()
start_media, error_result = self._resolve_image_media(image_start or "", "image_start")
if error_result is not None:
error_result.update({"prompt": str(prompt or "").strip(), "output_file": ""})
return error_result
end_media, error_result = self._resolve_image_media(image_end or "", "image_end")
if error_result is not None:
error_result.update({"prompt": str(prompt or "").strip(), "output_file": ""})
return error_result
client_id = _next_ai_client_id()
generator_variant = self._get_tool_ui_settings()["video_generator_variant"]
template_file = self.get_tool_template_filename("gen_video")
task, error_result = self._build_generation_task(
"gen_video",
generator_variant,
prompt=prompt,
client_id=client_id,
image_start=None if start_media is None else str(start_media.get("path", "")).strip(),
image_end=None if end_media is None else str(end_media.get("path", "")).strip(),
)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
if start_media is not None:
error_result["source_start_media_id"] = start_media.get("media_id", "")
if end_media is not None:
error_result["source_end_media_id"] = end_media.get("media_id", "")
return error_result
try:
task = deepy_tool_settings.apply_tool_loras("gen_video", generator_variant, task, loras)
except Exception as exc:
error_result = {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": str(prompt or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": str(exc),
}
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
if start_media is not None:
error_result["source_start_media_id"] = start_media.get("media_id", "")
if end_media is not None:
error_result["source_end_media_id"] = end_media.get("media_id", "")
return error_result
task, error_result = self._apply_generation_overrides("gen_video", task, include_num_frames=True, width=width, height=height, num_frames=num_frames, duration_seconds=duration_seconds, fps=fps, num_inference_steps=num_inference_steps, extra_settings=extra_settings)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
if start_media is not None:
error_result["source_start_media_id"] = start_media.get("media_id", "")
if end_media is not None:
error_result["source_end_media_id"] = end_media.get("media_id", "")
return error_result
if len(task["prompt"]) == 0:
self._set_status("Video generation failed: prompt is empty.", kind="error")
return {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": "",
"resolution": task.get("resolution", ""),
"error": "Prompt is empty.",
}
result = self._queue_generation_task(task, activity_label="video generation", output_label="Generated video", gallery_media_type="video")
result["generator_variant"] = generator_variant
if len(template_file) > 0:
result["template_file"] = template_file
if start_media is not None:
result["source_start_media_id"] = start_media.get("media_id", "")
if end_media is not None:
result["source_end_media_id"] = end_media.get("media_id", "")
return result
@assistant_tool(
display_name="Generate Video With Speech",
description="Queue and generate a talking video from a text prompt, a start image, and a speech audio clip inside WanGP, then wait until the output video is available.",
parameters={
"prompt": {
"type": "string",
"description": "The video generation prompt to send to WanGP.",
},
"image_start": {
"type": "string",
"description": "The media id of the start image returned by Resolve Media.",
},
"audio_media_id": {
"type": "string",
"description": "The media id of the speech audio returned by Resolve Media.",
},
"width": {
"type": "integer",
"description": "Optional output width in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"height": {
"type": "integer",
"description": "Optional output height in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"num_frames": {
"type": "integer",
"description": "Optional output frame count. If omitted, use the current Deepy/template setting.",
"required": False,
},
"duration_seconds": {
"type": "number",
"description": "Optional output duration in seconds. Deepy converts it to num_frames using the effective FPS. Do not pass this together with num_frames.",
"required": False,
},
"fps": {
"type": "integer",
"description": "Optional output FPS between 15 and 60. If omitted, keep the template FPS behavior.",
"required": False,
},
"num_inference_steps": {
"type": "integer",
"description": "Optional number of inference steps. If omitted, keep the template step count.",
"required": False,
},
"extra_settings": copy.deepcopy(_EXTRA_SETTINGS_PARAMETER),
"loras": {
"type": "array",
"description": "Optional list of LoRA filenames to apply. Each item must include `name` and may include `multiplier` as a number like 0.8 or a WanGP multiplier string like `0;1`. Omitted multipliers default to 1.",
"required": False,
"items": {
"type": "object",
"properties": {
"name": {"type": "string", "description": "LoRA filename returned by Get Loras."},
"multiplier": {"description": "Optional LoRA multiplier. Accepts a number or a WanGP multiplier string."},
},
"required": ["name"],
},
},
},
)
def gen_video_with_speech(
self,
prompt: str,
image_start: str,
audio_media_id: str,
width: int | None = None,
height: int | None = None,
num_frames: int | None = None,
duration_seconds: float | None = None,
fps: int | None = None,
num_inference_steps: int | None = None,
extra_settings: dict[str, Any] | None = None,
loras: list[dict[str, Any]] | None = None,
) -> dict[str, Any]:
self._sync_recent_media()
start_media, error_result = self._resolve_image_media(image_start, "image_start")
if error_result is not None:
error_result.update({"prompt": str(prompt or "").strip(), "output_file": ""})
return error_result
audio_media, error_result = self._resolve_audio_media(audio_media_id, "audio_media_id")
if error_result is not None:
error_result.update({"prompt": str(prompt or "").strip(), "output_file": ""})
return error_result
client_id = _next_ai_client_id()
generator_variant = self.get_tool_variant("gen_video_with_speech")
template_file = self.get_tool_template_filename("gen_video_with_speech")
task, error_result = self._build_generation_task(
"gen_video_with_speech",
generator_variant,
prompt=prompt,
client_id=client_id,
audio_guide=str(audio_media.get("path", "")).strip(),
image_start_target=self._get_image_start_target("gen_video_with_speech"),
image_start=str(start_media.get("path", "")).strip(),
)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
error_result["source_start_media_id"] = start_media.get("media_id", "")
error_result["source_audio_media_id"] = audio_media.get("media_id", "")
error_result["image_start_target"] = self._get_image_start_target("gen_video_with_speech")
return error_result
try:
task = deepy_tool_settings.apply_tool_loras("gen_video_with_speech", generator_variant, task, loras)
except Exception as exc:
error_result = {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": str(prompt or "").strip(),
"resolution": str(task.get("resolution", "") or "").strip(),
"error": str(exc),
}
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
error_result["source_start_media_id"] = start_media.get("media_id", "")
error_result["source_audio_media_id"] = audio_media.get("media_id", "")
error_result["image_start_target"] = self._get_image_start_target("gen_video_with_speech")
return error_result
task, error_result = self._apply_generation_overrides("gen_video_with_speech", task, include_num_frames=True, width=width, height=height, num_frames=num_frames, duration_seconds=duration_seconds, fps=fps, num_inference_steps=num_inference_steps, extra_settings=extra_settings)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
error_result["source_start_media_id"] = start_media.get("media_id", "")
error_result["source_audio_media_id"] = audio_media.get("media_id", "")
error_result["image_start_target"] = self._get_image_start_target("gen_video_with_speech")
return error_result
if len(task["prompt"]) == 0:
self._set_status("Video generation failed: prompt is empty.", kind="error")
return {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": "",
"resolution": task.get("resolution", ""),
"error": "Prompt is empty.",
}
if len(str(task.get("audio_guide", "") or "").strip()) == 0:
return {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": str(prompt or "").strip(),
"resolution": task.get("resolution", ""),
"error": "Speech audio path is empty.",
}
result = self._queue_generation_task(task, activity_label="video generation", output_label="Generated video", gallery_media_type="video")
result["generator_variant"] = generator_variant
if len(template_file) > 0:
result["template_file"] = template_file
result["source_start_media_id"] = start_media.get("media_id", "")
result["source_audio_media_id"] = audio_media.get("media_id", "")
result["image_start_target"] = self._get_image_start_target("gen_video_with_speech")
return result
@assistant_tool(
display_name="Generate Speech From Description",
description="Queue and generate a speech audio clip from text, using a voice description stored in alt_prompt, then wait until the output audio is available.",
parameters={
"prompt": {
"type": "string",
"description": "The speech content to synthesize.",
},
"voice_description": {
"type": "string",
"description": "A short description of the desired voice, tone, or speaking style.",
},
"extra_settings": copy.deepcopy(_EXTRA_SETTINGS_PARAMETER),
},
)
def gen_speech_from_description(self, prompt: str, voice_description: str, extra_settings: dict[str, Any] | None = None) -> dict[str, Any]:
client_id = _next_ai_client_id()
generator_variant = self.get_tool_variant("gen_speech_from_description")
template_file = self.get_tool_template_filename("gen_speech_from_description")
task, error_result = self._build_generation_task("gen_speech_from_description", generator_variant, prompt=prompt, client_id=client_id, alt_prompt=voice_description)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
return error_result
task, error_result = self._apply_extra_settings_overrides("gen_speech_from_description", task, extra_settings)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
return error_result
if len(task["prompt"]) == 0:
self._set_status("Speech generation failed: prompt is empty.", kind="error")
return {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": "",
"error": "Prompt is empty.",
}
if len(str(task.get("alt_prompt", "") or "").strip()) == 0:
self._set_status("Speech generation failed: voice description is empty.", kind="error")
return {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": str(prompt or "").strip(),
"error": "voice_description is required.",
}
result = self._queue_generation_task(task, activity_label="speech generation", output_label="Generated speech", gallery_media_type="audio")
result["generator_variant"] = generator_variant
if len(template_file) > 0:
result["template_file"] = template_file
result["voice_description"] = str(task.get("alt_prompt", "") or "").strip()
return result
@assistant_tool(
display_name="Generate Speech From Sample",
description="Queue and generate a speech audio clip from text, cloning the voice from a previously resolved audio sample, then wait until the output audio is available.",
parameters={
"prompt": {
"type": "string",
"description": "The speech content to synthesize.",
},
"media_id": {
"type": "string",
"description": "The media id of the audio sample returned by Resolve Media.",
},
"extra_settings": copy.deepcopy(_EXTRA_SETTINGS_PARAMETER),
},
)
def gen_speech_from_sample(self, prompt: str, media_id: str, extra_settings: dict[str, Any] | None = None) -> dict[str, Any]:
self._sync_recent_media()
sample_media, error_result = self._resolve_audio_media(media_id, "media_id")
if error_result is not None:
error_result.update({"prompt": str(prompt or "").strip(), "output_file": ""})
return error_result
client_id = _next_ai_client_id()
generator_variant = self.get_tool_variant("gen_speech_from_sample")
template_file = self.get_tool_template_filename("gen_speech_from_sample")
task, error_result = self._build_generation_task(
"gen_speech_from_sample",
generator_variant,
prompt=prompt,
client_id=client_id,
audio_guide=str(sample_media.get("path", "")).strip(),
)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
error_result["source_media_id"] = sample_media.get("media_id", "")
return error_result
task, error_result = self._apply_extra_settings_overrides("gen_speech_from_sample", task, extra_settings)
if error_result is not None:
error_result["generator_variant"] = generator_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
error_result["source_media_id"] = sample_media.get("media_id", "")
return error_result
if len(task["prompt"]) == 0:
self._set_status("Speech generation failed: prompt is empty.", kind="error")
return {
"status": "error",
"client_id": client_id,
"output_file": "",
"prompt": "",
"error": "Prompt is empty.",
}
if len(str(task.get("audio_guide", "") or "").strip()) == 0:
return {
"status": "error",
"client_id": client_id,
"media_id": sample_media.get("media_id", ""),
"output_file": "",
"prompt": str(prompt or "").strip(),
"error": "Audio sample path is empty.",
}
result = self._queue_generation_task(task, activity_label="speech generation", output_label="Generated speech", gallery_media_type="audio")
result["generator_variant"] = generator_variant
if len(template_file) > 0:
result["template_file"] = template_file
result["source_media_id"] = sample_media.get("media_id", "")
return result
@assistant_tool(
display_name="Edit Image",
description="Edit a previously resolved image using an instruction prompt inside WanGP and wait until the edited image is available.",
parameters={
"media_id": {
"type": "string",
"description": "The media id returned by Resolve Media.",
},
"prompt": {
"type": "string",
"description": "The instruction prompt describing how to modify the image.",
},
"width": {
"type": "integer",
"description": "Optional output width in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"height": {
"type": "integer",
"description": "Optional output height in pixels. Only pass this when the user explicitly asks for output size; otherwise omit it and use the current Deepy/template setting.",
"required": False,
},
"num_inference_steps": {
"type": "integer",
"description": "Optional number of inference steps. If omitted, keep the template step count.",
"required": False,
},
"extra_settings": copy.deepcopy(_EXTRA_SETTINGS_PARAMETER),
},
)
def edit_image(
self,
media_id: str,
prompt: str,
width: int | None = None,
height: int | None = None,
num_inference_steps: int | None = None,
extra_settings: dict[str, Any] | None = None,
) -> dict[str, Any]:
self._sync_recent_media()
if self.session is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "prompt": str(prompt or "").strip(), "output_file": "", "error": "Assistant session is not available."}
media_record = media_registry.get_media_record(self.session, media_id)
if media_record is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "prompt": str(prompt or "").strip(), "output_file": "", "error": "Unknown media id."}
if media_record.get("media_type") != "image":
return {
"status": "error",
"media_id": media_record.get("media_id", ""),
"media_type": media_record.get("media_type", ""),
"prompt": str(prompt or "").strip(),
"output_file": "",
"error": "Edit Image currently supports images only.",
}
editor_variant = self._get_tool_ui_settings()["image_editor_variant"]
template_file = self.get_tool_template_filename("edit_image")
client_id = _next_ai_client_id()
task, error_result = self._build_generation_task(
"edit_image",
editor_variant,
prompt=prompt,
client_id=client_id,
image_refs=[str(media_record.get("path", "")).strip()],
)
if error_result is not None:
error_result["editor_variant"] = editor_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
error_result["media_id"] = media_record.get("media_id", "")
return error_result
task, error_result = self._apply_generation_overrides("edit_image", task, include_num_frames=False, width=width, height=height, num_inference_steps=num_inference_steps, extra_settings=extra_settings)
if error_result is not None:
error_result["editor_variant"] = editor_variant
if len(template_file) > 0:
error_result["template_file"] = template_file
error_result["media_id"] = media_record.get("media_id", "")
return error_result
if len(task["prompt"]) == 0:
return {
"status": "error",
"media_id": media_record.get("media_id", ""),
"prompt": "",
"output_file": "",
"error": "Prompt is empty.",
}
result = self._queue_generation_task(task, activity_label="image editing", output_label="Edited image")
result["editor_variant"] = editor_variant
if len(template_file) > 0:
result["template_file"] = template_file
result["source_media_id"] = media_record.get("media_id", "")
return result
@assistant_tool(
display_name="Create Color Frame",
description="Create a solid-color image with the requested width and height, rounded to the nearest multiple of 16, and add it to WanGP galleries. Use this for blank frames, color cards, or transition plates.",
parameters={
"width": {
"type": "integer",
"description": "Output image width in pixels.",
},
"height": {
"type": "integer",
"description": "Output image height in pixels.",
},
"color": {
"type": "string",
"description": "Optional fill color. Accepts common names like black, white, red, or hex values like #000000.",
"required": False,
},
},
pause_runtime=False,
)
def create_color_frame(self, width: int, height: int, color: str = "black") -> dict[str, Any]:
try:
width = int(width)
height = int(height)
except Exception:
return {"status": "error", "width": width, "height": height, "color": str(color or "").strip() or "black", "output_file": "", "error": "width and height must be integers."}
if width <= 0 or height <= 0:
return {"status": "error", "width": width, "height": height, "color": str(color or "").strip() or "black", "output_file": "", "error": "width and height must be >= 1."}
width = max(16, int(round(width / 16.0) * 16))
height = max(16, int(round(height / 16.0) * 16))
resolved_color = str(color or "black").strip() or "black"
try:
rgb_color = ImageColor.getrgb(resolved_color)
except Exception:
return {"status": "error", "width": width, "height": height, "color": resolved_color, "output_file": "", "error": "color must be a valid color name or hex value."}
if len(rgb_color) == 4:
rgb_color = tuple(rgb_color[:3])
safe_color_name = re.sub(r"[^a-z0-9]+", "_", resolved_color.lower()).strip("_") or "color"
output_name = f"color_{safe_color_name}_{width}x{height}.png"
self._set_status("Creating color frame...", kind="tool")
self._update_tool_progress("running", "Creating", {"status": "running", "width": width, "height": height, "color": resolved_color})
output_path = self._resolve_direct_output_path(output_name, True, False)
try:
image = Image.new("RGB", (width, height), rgb_color)
image.save(output_path)
except Exception as exc:
result = {"status": "error", "width": width, "height": height, "color": resolved_color, "output_file": "", "error": str(exc)}
self._update_tool_progress("error", "Error", result)
self._set_status(f"Color frame creation failed: {exc}", kind="error")
return result
settings = self._build_direct_image_settings(f'Created solid {resolved_color} image at {width}x{height}', width, height, prompt=f"A solid {resolved_color} image at {width}x{height}.")
media_record = self._record_direct_media(output_path, settings, is_image=True, audio_only=False, label="Color frame")
result = {
"status": "done",
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"width": width,
"height": height,
"resolution": f"{width}x{height}",
"color": resolved_color,
"output_file": output_path,
"error": "",
}
self._update_tool_progress("done", "Done", result)
self._set_status("Color frame created.", kind="tool")
return result
@assistant_tool(
display_name="Extract Image",
description="Extract one image from a previously resolved video at a specific frame number or exact playback time and add it to WanGP galleries.",
parameters={
"media_id": {
"type": "string",
"description": "The media id for the source video returned by Resolve Media.",
},
"frame_no": {
"type": "integer",
"description": "Optional frame number to extract from the source video.",
"required": False,
},
"time_seconds": {
"type": "number",
"description": "Optional exact playback time in seconds. Prefer this for the currently selected video frame because it matches the player position more accurately.",
"required": False,
},
},
pause_runtime=False,
)
def extract_image(self, media_id: str, frame_no: int | None = None, time_seconds: float | None = None) -> dict[str, Any]:
self._sync_recent_media()
source_media, error_result = self._resolve_video_media(media_id, "media_id")
if error_result is not None:
return error_result
try:
frame_no = None if frame_no is None or str(frame_no).strip() == "" else int(frame_no)
except Exception:
return {"status": "error", "media_id": str(media_id or "").strip(), "frame_no": frame_no, "output_file": "", "error": "frame_no must be an integer."}
time_seconds, error_result = self._parse_time_value(time_seconds, "time_seconds", required=False)
if error_result is not None:
return {"status": "error", "media_id": str(media_id or "").strip(), "frame_no": frame_no, "time_seconds": time_seconds, "output_file": "", "error": error_result["error"]}
if frame_no is None and time_seconds is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "frame_no": None, "time_seconds": None, "output_file": "", "error": "frame_no or time_seconds is required."}
self._set_status("Extracting image...", kind="tool")
self._update_tool_progress("running", "Extracting", {"status": "running", "media_id": source_media.get("media_id", ""), "frame_no": frame_no, "time_seconds": time_seconds})
source_path = str(source_media.get("path", "")).strip()
try:
resolved_frame_no = deepy_video_tools.resolve_video_frame_no(source_path, frame_no=frame_no, time_seconds=time_seconds)
except Exception as exc:
return {"status": "error", "media_id": source_media.get("media_id", ""), "frame_no": frame_no, "time_seconds": time_seconds, "output_file": "", "error": str(exc)}
source_name = os.path.splitext(os.path.basename(source_path))[0]
output_suffix = f"frame{resolved_frame_no}" if time_seconds is None else f"frame{resolved_frame_no}_t{int(round(float(time_seconds or 0.0) * 1000.0))}ms"
output_name = f"{source_name}_{output_suffix}.png"
output_path = self._resolve_direct_output_path(output_name, True, False)
try:
deepy_video_tools.extract_video_frame(source_path, output_path, frame_no=frame_no, time_seconds=time_seconds)
except Exception as exc:
result = {
"status": "error",
"media_id": source_media.get("media_id", ""),
"frame_no": resolved_frame_no,
"time_seconds": time_seconds,
"output_file": "",
"error": str(exc),
}
self._update_tool_progress("error", "Error", result)
self._set_status(f"Image extraction failed: {exc}", kind="error")
return result
comments = f'Extracted frame {resolved_frame_no} from "{os.path.basename(source_path)}"' if time_seconds is None else f'Extracted frame {resolved_frame_no} at {time_seconds:.3f}s from "{os.path.basename(source_path)}"'
prompt_summary = f"An image extracted from a video at {time_seconds:.3f} seconds." if time_seconds is not None else f"An image extracted from frame {resolved_frame_no} of a video."
extracted_settings = self._build_direct_media_settings(source_media, comments, fallback_prompt=prompt_summary)
media_record = self._record_direct_media(output_path, extracted_settings, is_image=True, audio_only=False, label="Extracted image")
result = {
"status": "done",
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"source_media_id": source_media.get("media_id", ""),
"frame_no": resolved_frame_no,
"time_seconds": time_seconds,
"output_file": output_path,
"error": "",
}
self._update_tool_progress("done", "Done", result)
self._set_status("Image extracted.", kind="tool")
return result
@assistant_tool(
display_name="Extract Video",
description="Extract a video segment from a previously resolved video using either time-based arguments (start_time, end_time, duration) or frame-based arguments (start_frame, end_frame, num_frames).",
parameters={
"media_id": {
"type": "string",
"description": "The media id for the source video returned by Resolve Media.",
},
"start_time": {
"type": "number",
"description": "Optional start time in seconds. Defaults to the beginning when only end_time or duration is provided.",
"required": False,
},
"end_time": {
"type": "number",
"description": "Optional end time in seconds.",
"required": False,
},
"duration": {
"type": "number",
"description": "Optional segment duration in seconds.",
"required": False,
},
"start_frame": {
"type": "integer",
"description": "Optional start frame number. Defaults to frame 0 when only end_frame or num_frames is provided.",
"required": False,
},
"end_frame": {
"type": "integer",
"description": "Optional inclusive end frame number.",
"required": False,
},
"num_frames": {
"type": "integer",
"description": "Optional number of frames to keep from start_frame.",
"required": False,
},
},
pause_runtime=False,
)
def extract_video(
self,
media_id: str,
start_time: float | None = None,
end_time: float | None = None,
duration: float | None = None,
start_frame: int | None = None,
end_frame: int | None = None,
num_frames: int | None = None,
) -> dict[str, Any]:
self._sync_recent_media()
source_media, error_result = self._resolve_video_media(media_id, "media_id")
if error_result is not None:
return error_result
segment_args, error_result = self._resolve_segment_args(
source_media,
start_time=start_time,
end_time=end_time,
duration=duration,
start_frame=start_frame,
end_frame=end_frame,
num_frames=num_frames,
)
if error_result is not None:
error_result.update({"media_id": source_media.get("media_id", ""), "output_file": ""})
return error_result
self._set_status("Extracting video...", kind="tool")
progress_payload = {
"status": "running",
"media_id": source_media.get("media_id", ""),
"mode": segment_args["mode"],
"start_time": segment_args["start_time"],
"end_time": segment_args["end_time"],
"duration": segment_args["duration"],
}
if segment_args["mode"] == "frame":
progress_payload.update({"start_frame": segment_args["start_frame"], "end_frame": segment_args["end_frame"], "num_frames": segment_args["num_frames"]})
self._update_tool_progress("running", "Extracting", progress_payload)
source_path = str(source_media.get("path", "")).strip()
video_codec, video_container = self._get_video_output_settings()
base_name = os.path.splitext(os.path.basename(source_path))[0]
output_path = self._resolve_direct_output_path(f"{base_name}_clip{deepy_video_tools.get_video_container_extension(video_container)}", False, False)
try:
output_path = deepy_video_tools.extract_video(
source_path,
output_path,
start_time=segment_args["start_time"],
end_time=segment_args["end_time"],
duration=segment_args["duration"],
video_codec=video_codec,
video_container=video_container,
audio_codec=self._get_video_audio_output_codec(),
)
except Exception as exc:
result = {"status": "error", "media_id": source_media.get("media_id", ""), "output_file": "", "error": str(exc)}
self._update_tool_progress("error", "Error", result)
self._set_status(f"Video extraction failed: {exc}", kind="error")
return result
if segment_args["mode"] == "frame":
comments = f'Extracted video segment from "{os.path.basename(source_path)}" starting at frame {segment_args["start_frame"]} ({segment_args["start_time"]:.3f}s)'
if start_frame is None and (end_frame is not None or num_frames is not None):
comments = f'Extracted video segment from "{os.path.basename(source_path)}" starting at the beginning'
if num_frames is not None:
comments += f" with {segment_args['num_frames']} frame"
if segment_args["num_frames"] != 1:
comments += "s"
elif end_frame is not None:
comments += f" ending at frame {segment_args['end_frame']} ({segment_args['end_time']:.3f}s)"
else:
comments += " through the end of the video"
else:
comments = f'Extracted video segment from "{os.path.basename(source_path)}" starting at {segment_args["start_time"]:.3f}s'
if start_time is None and (end_time is not None or duration is not None):
comments = f'Extracted video segment from "{os.path.basename(source_path)}" starting at the beginning'
if segment_args["end_time"] is not None:
comments += f" ending at {segment_args['end_time']:.3f}s"
elif segment_args["duration"] is not None:
comments += f" with duration {segment_args['duration']:.3f}s"
prompt_summary = "Video extracted from a source media item."
if segment_args["mode"] == "frame" and (start_frame is not None or end_frame is not None or num_frames is not None):
prompt_summary += f" Keep frames starting at {segment_args['start_frame']}."
elif segment_args["start_time"] is not None or segment_args["end_time"] is not None or segment_args["duration"] is not None:
if segment_args["end_time"] is not None:
prompt_summary += f" From {segment_args['start_time']:.3f} to {segment_args['end_time']:.3f} seconds."
elif segment_args["duration"] is not None:
prompt_summary += f" Starting at {segment_args['start_time']:.3f} seconds for {segment_args['duration']:.3f} seconds."
extracted_settings = self._build_direct_media_settings(source_media, comments, fallback_prompt=prompt_summary)
self._update_video_metadata_fields(output_path, extracted_settings)
media_record = self._record_direct_media(output_path, extracted_settings, is_image=False, audio_only=False, label="Extracted video")
result = {
"status": "done",
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"source_media_id": source_media.get("media_id", ""),
"mode": segment_args["mode"],
"start_time": segment_args["start_time"],
"end_time": segment_args["end_time"],
"duration": segment_args["duration"],
"output_file": output_path,
"error": "",
}
if segment_args["mode"] == "frame":
result.update({"start_frame": segment_args["start_frame"], "end_frame": segment_args["end_frame"], "num_frames": segment_args["num_frames"]})
self._update_tool_progress("done", "Done", result)
self._set_status("Video extracted.", kind="tool")
return result
@assistant_tool(
display_name="Extract Audio",
description="Extract audio from a previously resolved video or audio file using either time-based arguments (start_time, end_time, duration) or, for video sources, frame-based arguments (start_frame, end_frame, num_frames).",
parameters={
"media_id": {
"type": "string",
"description": "The media id for the source video or audio returned by Resolve Media.",
},
"start_time": {
"type": "number",
"description": "Optional start time in seconds. Defaults to the beginning.",
"required": False,
},
"end_time": {
"type": "number",
"description": "Optional end time in seconds.",
"required": False,
},
"duration": {
"type": "number",
"description": "Optional segment duration in seconds.",
"required": False,
},
"start_frame": {
"type": "integer",
"description": "Optional start frame number when media_id refers to a video. Defaults to frame 0 when only end_frame or num_frames is provided.",
"required": False,
},
"end_frame": {
"type": "integer",
"description": "Optional inclusive end frame number when media_id refers to a video.",
"required": False,
},
"num_frames": {
"type": "integer",
"description": "Optional number of source video frames to keep when media_id refers to a video.",
"required": False,
},
"audio_track_no": {
"type": "integer",
"description": "Optional 1-based audio track number to extract. Defaults to 1.",
"required": False,
},
},
pause_runtime=False,
)
def extract_audio(
self,
media_id: str,
start_time: float | None = None,
end_time: float | None = None,
duration: float | None = None,
start_frame: int | None = None,
end_frame: int | None = None,
num_frames: int | None = None,
audio_track_no: int | None = None,
) -> dict[str, Any]:
self._sync_recent_media()
if self.session is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "output_file": "", "error": "Assistant session is not available."}
source_media = media_registry.get_media_record(self.session, media_id)
if source_media is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "output_file": "", "error": "Unknown media id."}
if source_media.get("media_type") not in {"audio", "video"}:
actual_media_type = str(source_media.get("media_type", "") or "").strip() or "unknown media type"
return {"status": "error", "media_id": source_media.get("media_id", ""), "actual_media_type": actual_media_type, "media_type": actual_media_type, "output_file": "", "error": f"media_id must reference audio or video, not a {actual_media_type}."}
segment_args, error_result = self._resolve_segment_args(
source_media,
start_time=start_time,
end_time=end_time,
duration=duration,
start_frame=start_frame,
end_frame=end_frame,
num_frames=num_frames,
allow_empty=True,
)
if error_result is not None:
error_result.update({"media_id": source_media.get("media_id", ""), "output_file": ""})
return error_result
try:
audio_track_no = None if audio_track_no is None or str(audio_track_no).strip() == "" else int(audio_track_no)
except Exception:
return {"status": "error", "media_id": source_media.get("media_id", ""), "audio_track_no": audio_track_no, "output_file": "", "error": "audio_track_no must be an integer."}
if audio_track_no is not None and audio_track_no <= 0:
return {"status": "error", "media_id": source_media.get("media_id", ""), "audio_track_no": audio_track_no, "output_file": "", "error": "audio_track_no must be >= 1."}
self._set_status("Extracting audio...", kind="tool")
progress_payload = {
"status": "running",
"media_id": source_media.get("media_id", ""),
"mode": segment_args["mode"],
"start_time": segment_args["start_time"],
"end_time": segment_args["end_time"],
"duration": segment_args["duration"],
"audio_track_no": audio_track_no,
}
if segment_args["mode"] == "frame":
progress_payload.update({"start_frame": segment_args["start_frame"], "end_frame": segment_args["end_frame"], "num_frames": segment_args["num_frames"]})
self._update_tool_progress("running", "Extracting", progress_payload)
source_path = str(source_media.get("path", "")).strip()
base_name = os.path.splitext(os.path.basename(source_path))[0]
audio_codec = self._get_standalone_audio_output_codec()
output_path = self._resolve_direct_output_path(f"{base_name}_audio{deepy_video_tools.get_audio_standalone_extension(audio_codec)}", False, True)
try:
output_path = deepy_video_tools.extract_audio(
source_path,
output_path,
start_time=segment_args["start_time"],
end_time=segment_args["end_time"],
duration=segment_args["duration"],
audio_track_no=audio_track_no,
audio_codec=audio_codec,
)
except Exception as exc:
result = {"status": "error", "media_id": source_media.get("media_id", ""), "audio_track_no": audio_track_no, "output_file": "", "error": str(exc)}
self._update_tool_progress("error", "Error", result)
self._set_status(f"Audio extraction failed: {exc}", kind="error")
return result
comments = f'Extracted audio from "{os.path.basename(source_path)}"'
if audio_track_no is not None:
comments += f" using audio track {audio_track_no}"
if segment_args["mode"] == "frame":
if start_frame is not None or end_frame is not None or num_frames is not None:
comments += f" starting at frame {segment_args['start_frame']} ({segment_args['start_time']:.3f}s)"
if start_frame is None and (end_frame is not None or num_frames is not None):
comments = comments.replace(f" starting at frame {segment_args['start_frame']} ({segment_args['start_time']:.3f}s)", " starting at the beginning")
if num_frames is not None:
comments += f" with {segment_args['num_frames']} frame"
if segment_args["num_frames"] != 1:
comments += "s"
elif end_frame is not None:
comments += f" ending at frame {segment_args['end_frame']} ({segment_args['end_time']:.3f}s)"
else:
comments += " through the end of the source"
else:
if segment_args["start_time"] is not None:
comments += f" starting at {segment_args['start_time']:.3f}s"
if start_time is None and (end_time is not None or duration is not None):
comments = comments.replace(f" starting at {segment_args['start_time']:.3f}s", " starting at the beginning")
if segment_args["end_time"] is not None:
comments += f" ending at {segment_args['end_time']:.3f}s"
elif segment_args["duration"] is not None:
comments += f" with duration {segment_args['duration']:.3f}s"
extracted_settings = self._build_direct_media_settings(source_media, comments)
self._update_audio_metadata_fields(output_path, extracted_settings)
media_record = self._record_direct_media(output_path, extracted_settings, is_image=False, audio_only=True, label="Extracted audio")
result = {
"status": "done",
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"source_media_id": source_media.get("media_id", ""),
"mode": segment_args["mode"],
"start_time": segment_args["start_time"],
"end_time": segment_args["end_time"],
"duration": segment_args["duration"],
"audio_track_no": 1 if audio_track_no is None else audio_track_no,
"output_file": output_path,
"error": "",
}
if segment_args["mode"] == "frame":
result.update({"start_frame": segment_args["start_frame"], "end_frame": segment_args["end_frame"], "num_frames": segment_args["num_frames"]})
self._update_tool_progress("done", "Done", result)
self._set_status("Audio extracted.", kind="tool")
return result
@assistant_tool(
display_name="Transcribe Media",
description="Transcribe the spoken content of a previously resolved audio or video media item with Whisper medium, returning segment timestamps by default and optionally using word timestamps instead.",
parameters={
"media_id": {
"type": "string",
"description": "The media id for the source audio or video returned by Resolve Media.",
},
"timestamp_type": {
"type": "string",
"description": "Optional timestamp detail to include. Use `segment` for segment timestamps, `word` for word timestamps, or `none` to disable timestamps. If omitted, segment timestamps are returned.",
"required": False,
},
"audio_track_no": {
"type": "integer",
"description": "Optional 1-based audio track number when the source media contains multiple audio tracks.",
"required": False,
},
},
)
def transcribe_media(self, media_id: str, timestamp_type: str | None = None, audio_track_no: int | None = None) -> dict[str, Any]:
self._sync_recent_media()
source_media, error_result = self._resolve_audio_or_video_media(media_id, "media_id")
if error_result is not None:
return error_result
try:
normalized_timestamp_type = deepy_transcription.normalize_timestamp_type(timestamp_type)
except Exception as exc:
return {
"status": "error",
"media_id": str(media_id or "").strip(),
"timestamp_type": str(timestamp_type or "").strip(),
"error": str(exc),
}
try:
audio_track_no = None if audio_track_no is None or str(audio_track_no).strip() == "" else int(audio_track_no)
except Exception:
return {
"status": "error",
"media_id": source_media.get("media_id", ""),
"timestamp_type": "" if normalized_timestamp_type is None else normalized_timestamp_type,
"audio_track_no": audio_track_no,
"error": "audio_track_no must be an integer.",
}
if audio_track_no is not None and audio_track_no <= 0:
return {
"status": "error",
"media_id": source_media.get("media_id", ""),
"timestamp_type": "" if normalized_timestamp_type is None else normalized_timestamp_type,
"audio_track_no": audio_track_no,
"error": "audio_track_no must be >= 1.",
}
self._set_status("Transcribing media...", kind="tool")
progress_payload = {
"status": "running",
"media_id": source_media.get("media_id", ""),
"media_type": source_media.get("media_type", ""),
"timestamp_type": "" if normalized_timestamp_type is None else normalized_timestamp_type,
}
if audio_track_no is not None:
progress_payload["audio_track_no"] = audio_track_no
self._update_tool_progress("running", "Transcribing", progress_payload)
source_path = str(source_media.get("path", "")).strip()
try:
payload = deepy_transcription.transcribe_media(source_path, timestamp_type=normalized_timestamp_type, audio_track_no=audio_track_no)
except Exception as exc:
result = {
"status": "error",
"media_id": source_media.get("media_id", ""),
"label": source_media.get("label", ""),
"media_type": source_media.get("media_type", ""),
"path": source_path,
"filename": os.path.basename(source_path),
"timestamp_type": "" if normalized_timestamp_type is None else normalized_timestamp_type,
"error": str(exc),
}
if audio_track_no is not None:
result["audio_track_no"] = audio_track_no
self._update_tool_progress("error", "Error", result)
self._set_status(f"Transcription failed: {exc}", kind="error")
return result
result = {
"status": "done",
"media_id": source_media.get("media_id", ""),
"label": source_media.get("label", ""),
"media_type": source_media.get("media_type", ""),
"path": source_path,
"filename": os.path.basename(source_path),
"error": "",
**payload,
}
if audio_track_no is not None:
result["audio_track_no"] = audio_track_no
self._update_tool_progress("done", "Done", result)
self._set_status("Transcription finished.", kind="tool")
return result
@assistant_tool(
display_name="Mute Video",
description="Create a copy of a previously resolved video with all audio removed.",
parameters={
"media_id": {
"type": "string",
"description": "The media id for the source video returned by Resolve Media.",
},
},
pause_runtime=False,
)
def mute_video(self, media_id: str) -> dict[str, Any]:
self._sync_recent_media()
source_media, error_result = self._resolve_video_media(media_id, "media_id")
if error_result is not None:
return error_result
self._set_status("Muting video...", kind="tool")
self._update_tool_progress("running", "Muting", {"status": "running", "media_id": source_media.get("media_id", "")})
source_path = str(source_media.get("path", "")).strip()
_video_codec, video_container = self._get_video_output_settings()
base_name = os.path.splitext(os.path.basename(source_path))[0]
output_path = self._resolve_direct_output_path(f"{base_name}_muted{deepy_video_tools.get_video_container_extension(video_container)}", False, False)
try:
output_path = deepy_video_tools.mute_video(source_path, output_path)
except Exception as exc:
result = {"status": "error", "media_id": source_media.get("media_id", ""), "output_file": "", "error": str(exc)}
self._update_tool_progress("error", "Error", result)
self._set_status(f"Video muting failed: {exc}", kind="error")
return result
muted_settings = self._build_direct_media_settings(source_media, f'Removed audio from "{os.path.basename(source_path)}"')
self._update_video_metadata_fields(output_path, muted_settings)
media_record = self._record_direct_media(output_path, muted_settings, is_image=False, audio_only=False, label="Muted video")
result = {
"status": "done",
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"source_media_id": source_media.get("media_id", ""),
"output_file": output_path,
"error": "",
}
self._update_tool_progress("done", "Done", result)
self._set_status("Video muted.", kind="tool")
return result
@assistant_tool(
display_name="Replace Audio",
description="Replace the soundtrack of a previously resolved video with a previously resolved audio file.",
parameters={
"video_id": {
"type": "string",
"description": "The media id for the source video returned by Resolve Media.",
},
"audio_id": {
"type": "string",
"description": "The media id for the replacement audio returned by Resolve Media.",
},
},
pause_runtime=False,
)
def replace_audio(self, video_id: str, audio_id: str) -> dict[str, Any]:
self._sync_recent_media()
video_media, error_result = self._resolve_video_media(video_id, "video_id")
if error_result is not None:
return error_result
audio_media, error_result = self._resolve_audio_media(audio_id, "audio_id")
if error_result is not None:
return error_result
self._set_status("Replacing video audio...", kind="tool")
self._update_tool_progress("running", "Replacing", {"status": "running", "video_id": video_media.get("media_id", ""), "audio_id": audio_media.get("media_id", "")})
video_path = str(video_media.get("path", "")).strip()
audio_path = str(audio_media.get("path", "")).strip()
_video_codec, video_container = self._get_video_output_settings()
base_name = os.path.splitext(os.path.basename(video_path))[0]
output_path = self._resolve_direct_output_path(f"{base_name}_audio_replaced{deepy_video_tools.get_video_container_extension(video_container)}", False, False)
try:
output_path = deepy_video_tools.replace_audio(video_path, audio_path, output_path, audio_codec=self._get_video_audio_output_codec())
except Exception as exc:
result = {"status": "error", "video_id": video_media.get("media_id", ""), "audio_id": audio_media.get("media_id", ""), "output_file": "", "error": str(exc)}
self._update_tool_progress("error", "Error", result)
self._set_status(f"Audio replacement failed: {exc}", kind="error")
return result
replaced_settings = self._build_direct_media_settings(video_media, f'Replaced audio of "{os.path.basename(video_path)}" with "{os.path.basename(audio_path)}"')
self._update_video_metadata_fields(output_path, replaced_settings)
media_record = self._record_direct_media(output_path, replaced_settings, is_image=False, audio_only=False, label="Video with replaced audio")
result = {
"status": "done",
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"source_video_id": video_media.get("media_id", ""),
"source_audio_id": audio_media.get("media_id", ""),
"output_file": output_path,
"error": "",
}
self._update_tool_progress("done", "Done", result)
self._set_status("Video audio replaced.", kind="tool")
return result
@assistant_tool(
display_name="Resize Crop",
description="Resize and crop a previously resolved image or video in one step. Crop values can be expressed in pixels or percent. When both width and height are provided, aspect ratio is preserved by default by cropping extra area instead of stretching.",
parameters={
"media_id": {
"type": "string",
"description": "The media id for the source image or video returned by Resolve Media.",
},
"width": {
"type": "integer",
"description": "Optional output width in pixels after cropping.",
"required": False,
},
"height": {
"type": "integer",
"description": "Optional output height in pixels after cropping.",
"required": False,
},
"crop_left": {
"type": "number",
"description": "Optional amount to crop from the left side.",
"required": False,
},
"crop_top": {
"type": "number",
"description": "Optional amount to crop from the top side.",
"required": False,
},
"crop_right": {
"type": "number",
"description": "Optional amount to crop from the right side.",
"required": False,
},
"crop_bottom": {
"type": "number",
"description": "Optional amount to crop from the bottom side.",
"required": False,
},
"crop_unit": {
"type": "string",
"description": "Crop unit: pixels or percent.",
"required": False,
},
"crop_anchor": {
"type": "string",
"description": "Optional. Defaults to center. Controls which area stays in frame when aspect-ratio-preserving auto-crop trims extra area.",
"enum": ["center", "left", "right", "top", "bottom", "top_left", "top_right", "bottom_left", "bottom_right"],
"required": False,
},
"stretch_to_fit": {
"type": "boolean",
"description": "Optional. Defaults to false. When width and height are both provided, set this to true only if the user explicitly wants stretching or distortion instead of cropping extra area.",
"required": False,
},
},
pause_runtime=False,
)
def resize_crop(self, media_id: str, width: int | None = None, height: int | None = None, crop_left: float | None = None, crop_top: float | None = None, crop_right: float | None = None, crop_bottom: float | None = None, crop_unit: str | None = None, crop_anchor: str | None = None, stretch_to_fit: bool | None = None) -> dict[str, Any]:
self._sync_recent_media()
if self.session is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "output_file": "", "error": "Assistant session is not available."}
source_media = media_registry.get_media_record(self.session, media_id)
if source_media is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "output_file": "", "error": "Unknown media id."}
if source_media.get("media_type") not in {"image", "video"}:
actual_media_type = str(source_media.get("media_type", "") or "").strip() or "unknown media type"
return {"status": "error", "media_id": source_media.get("media_id", ""), "actual_media_type": actual_media_type, "media_type": actual_media_type, "output_file": "", "error": f"media_id must reference an image or video, not a {actual_media_type}."}
try:
width = None if width is None or str(width).strip() == "" else int(width)
height = None if height is None or str(height).strip() == "" else int(height)
crop_left = 0 if crop_left is None or str(crop_left).strip() == "" else float(crop_left)
crop_top = 0 if crop_top is None or str(crop_top).strip() == "" else float(crop_top)
crop_right = 0 if crop_right is None or str(crop_right).strip() == "" else float(crop_right)
crop_bottom = 0 if crop_bottom is None or str(crop_bottom).strip() == "" else float(crop_bottom)
except Exception:
return {"status": "error", "media_id": source_media.get("media_id", ""), "output_file": "", "error": "width and height must be integers, crop values must be numbers."}
stretch_to_fit, error_result = self._parse_bool_value(stretch_to_fit, "stretch_to_fit")
if error_result is not None:
error_result["media_id"] = source_media.get("media_id", "")
error_result["output_file"] = ""
return error_result
if stretch_to_fit is None:
stretch_to_fit = False
preserve_aspect_ratio = not bool(stretch_to_fit)
crop_unit = str(crop_unit or "pixels").strip().lower() or "pixels"
if crop_unit not in {"pixels", "percent"}:
return {"status": "error", "media_id": source_media.get("media_id", ""), "output_file": "", "error": "crop_unit must be 'pixels' or 'percent'."}
crop_anchor = str(crop_anchor or "center").strip().lower().replace("-", "_").replace(" ", "_") or "center"
if crop_anchor not in {"center", "left", "right", "top", "bottom", "top_left", "top_right", "bottom_left", "bottom_right"}:
return {"status": "error", "media_id": source_media.get("media_id", ""), "output_file": "", "error": "crop_anchor must be center, left, right, top, bottom, top_left, top_right, bottom_left, or bottom_right."}
source_media_type = str(source_media.get("media_type", "") or "").strip() or "media"
self._set_status(f"Resizing and cropping {source_media_type}...", kind="tool")
self._update_tool_progress("running", "Processing", {"status": "running", "media_id": source_media.get("media_id", ""), "width": width, "height": height, "crop_left": crop_left, "crop_top": crop_top, "crop_right": crop_right, "crop_bottom": crop_bottom, "crop_unit": crop_unit, "crop_anchor": crop_anchor, "stretch_to_fit": stretch_to_fit, "preserve_aspect_ratio": preserve_aspect_ratio})
source_path = str(source_media.get("path", "")).strip()
base_name = os.path.splitext(os.path.basename(source_path))[0]
try:
if source_media_type == "video":
video_codec, video_container = self._get_video_output_settings()
output_path = self._resolve_direct_output_path(f"{base_name}_resized{deepy_video_tools.get_video_container_extension(video_container)}", False, False)
output_path = deepy_video_tools.resize_crop_video(source_path, output_path, width=width, height=height, crop_left=crop_left, crop_top=crop_top, crop_right=crop_right, crop_bottom=crop_bottom, crop_unit=crop_unit, preserve_aspect_ratio=preserve_aspect_ratio, crop_anchor=crop_anchor, video_codec=video_codec, video_container=video_container, audio_codec=self._get_video_audio_output_codec())
else:
image_ext = os.path.splitext(source_path)[1].lower()
if image_ext not in {".png", ".jpg", ".jpeg", ".webp"}:
image_ext = ".png"
output_path = self._resolve_direct_output_path(f"{base_name}_resized{image_ext}", True, False)
output_path = deepy_video_tools.resize_crop_image(source_path, output_path, width=width, height=height, crop_left=crop_left, crop_top=crop_top, crop_right=crop_right, crop_bottom=crop_bottom, crop_unit=crop_unit, preserve_aspect_ratio=preserve_aspect_ratio, crop_anchor=crop_anchor)
except Exception as exc:
result = {"status": "error", "media_id": source_media.get("media_id", ""), "output_file": "", "error": str(exc)}
self._update_tool_progress("error", "Error", result)
self._set_status(f"Resize/crop failed: {exc}", kind="error")
return result
has_manual_crop = any(value > 0 for value in (crop_left, crop_top, crop_right, crop_bottom))
uses_aspect_crop = width is not None and height is not None and not stretch_to_fit
action_text = "cropped" if has_manual_crop or uses_aspect_crop else "resized" if width is not None or height is not None else "processed"
action_label = action_text.capitalize()
comments = f'{action_label} "{os.path.basename(source_path)}"'
if width is not None or height is not None:
comments += f" to {width if width is not None else 'auto'}x{height if height is not None else 'auto'}"
if width is not None and height is not None:
comments += " with stretching" if stretch_to_fit else " with preserved aspect ratio"
if action_text == "cropped" and not stretch_to_fit and crop_anchor != "center":
comments += f" anchored {crop_anchor}"
if has_manual_crop:
comments += f" with crop {crop_left}/{crop_top}/{crop_right}/{crop_bottom} {crop_unit}"
prompt_summary = None
if source_media_type == "image":
if action_text == "cropped":
prompt_summary = f"An image cropped to {width if width is not None else 'auto'}x{height if height is not None else 'auto'}."
if width is not None and height is not None and crop_anchor != "center":
prompt_summary = f"An image cropped to {width}x{height}, keeping the {crop_anchor.replace('_', ' ')} area."
elif action_text == "resized":
prompt_summary = f"An image resized to {width if width is not None else 'auto'}x{height if height is not None else 'auto'}."
resized_settings = self._build_direct_media_settings(source_media, comments, fallback_prompt=prompt_summary)
if source_media_type == "video":
self._update_video_metadata_fields(output_path, resized_settings)
media_record = self._record_direct_media(output_path, resized_settings, is_image=source_media_type == "image", audio_only=False, label=f"{action_label} {source_media_type}")
result = {
"status": "done",
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"source_media_id": source_media.get("media_id", ""),
"output_file": output_path,
"error": "",
}
self._update_tool_progress("done", "Done", result)
self._set_status(f"{source_media_type.capitalize()} resize/crop finished.", kind="tool")
return result
@assistant_tool(
display_name="Merge Videos",
description="Merge two previously resolved videos into one clip, resizing the second video when needed so it matches the first video dimensions.",
parameters={
"video_first": {
"type": "string",
"description": "The media id for the first video returned by Resolve Media.",
},
"video_second": {
"type": "string",
"description": "The media id for the second video returned by Resolve Media.",
},
},
pause_runtime=False,
)
def merge_videos(self, video_first: str, video_second: str) -> dict[str, Any]:
self._sync_recent_media()
first_media, error_result = self._resolve_video_media(video_first, "video_first")
if error_result is not None:
return error_result
second_media, error_result = self._resolve_video_media(video_second, "video_second")
if error_result is not None:
return error_result
self._set_status("Merging videos...", kind="tool")
self._update_tool_progress("running", "Merging", {"status": "running", "video_first": first_media.get("media_id", ""), "video_second": second_media.get("media_id", "")})
first_path = str(first_media.get("path", "")).strip()
second_path = str(second_media.get("path", "")).strip()
first_name = os.path.basename(first_path)
second_name = os.path.basename(second_path)
video_codec, video_container = self._get_video_output_settings()
output_name = f"merged_{first_media.get('media_id', 'video')}_{second_media.get('media_id', 'video')}{deepy_video_tools.get_video_container_extension(video_container)}"
output_path = self._resolve_direct_output_path(output_name, False, False)
output_path = deepy_video_tools.merge_videos(first_path, second_path, output_path=output_path, video_codec=video_codec, video_container=video_container, audio_codec=self._get_video_audio_output_codec())
merged_settings = dict(second_media.get("settings", {}) or {})
merged_settings["client_id"] = _next_ai_client_id()
self._remember_generated_client_id(merged_settings["client_id"])
merged_settings["comments"] = f'Merged from "{first_name} & {second_name}"'
end_time = time.time()
merged_settings["creation_date"] = datetime.fromtimestamp(end_time).isoformat(timespec="seconds")
merged_settings["creation_timestamp"] = int(end_time)
try:
fps, width, height, frames_count = get_video_info(output_path)
merged_settings["resolution"] = f"{width}x{height}"
merged_settings["video_length"] = int(frames_count)
if fps > 0:
merged_settings["duration_seconds"] = round(frames_count / fps, 3)
except Exception:
pass
media_record = self._record_direct_media(output_path, merged_settings, is_image=False, audio_only=False, label="Merged video")
result = {
"status": "done",
"output_file": output_path,
"media_id": "" if media_record is None else media_record.get("media_id", ""),
"video_first": first_media.get("media_id", ""),
"video_second": second_media.get("media_id", ""),
"error": "",
}
self._update_tool_progress("done", "Done", result)
self._set_status("Video merge finished.", kind="tool")
return result
@assistant_tool(
display_name="Search Doc",
description="Search WanGP documentation by keywords and return the best matching sections.",
parameters={
"query": {
"type": "string",
"description": "Keywords or a short natural-language question to search for in WanGP docs.",
},
"doc_id": {
"type": "string",
"description": "Optional documentation id to limit the search to: finetunes, getting_started, loras, overview, prompts, or vace.",
"required": False,
},
},
pause_runtime=False,
)
def search_doc(self, query: str, doc_id: str = "") -> dict[str, Any]:
query = str(query or "").strip()
lookup_id = str(doc_id or "").strip().lower()
if len(query) == 0:
return {"status": "error", "query": "", "doc_id": lookup_id, "matches": [], "error": "query is empty."}
if len(lookup_id) > 0 and lookup_id not in _DEEPY_DOCS:
return {
"status": "error",
"query": query,
"doc_id": lookup_id,
"matches": [],
"available_doc_ids": sorted(_DEEPY_DOCS.keys()),
"error": "Unknown documentation id.",
}
target_doc_ids = [lookup_id] if len(lookup_id) > 0 else sorted(_DEEPY_DOCS.keys())
query_tokens = _tokenize_doc_query(query)
self._set_status("Searching documentation...", kind="tool")
self._update_tool_progress("running", "Searching", {"status": "running", "query": query, "doc_id": lookup_id})
try:
matches = []
for current_doc_id in target_doc_ids:
doc_info, sections = _extract_doc_sections(current_doc_id)
for section in sections:
score = _score_doc_section(query, query_tokens, doc_info["title"], section)
if score <= 0:
continue
matches.append(
{
"doc_id": doc_info["doc_id"],
"title": doc_info["title"],
"path": doc_info["path"],
"section": section["section"],
"heading": section["heading"],
"heading_level": section["heading_level"],
"excerpt": _build_doc_excerpt(section, query, query_tokens),
"score": int(score),
}
)
except Exception as exc:
result = {"status": "error", "query": query, "doc_id": lookup_id, "matches": [], "error": str(exc)}
self._update_tool_progress("error", "Error", result)
return result
matches.sort(key=lambda item: (-int(item["score"]), str(item["doc_id"]), len(str(item["section"]))))
result = {
"status": "done",
"query": query,
"doc_id": lookup_id,
"searched_doc_ids": target_doc_ids,
"matches": matches[:5],
"error": "",
}
self._update_tool_progress("done", "Done", {"status": "done", "query": query, "doc_id": lookup_id, "match_count": len(result["matches"]), "error": ""})
self._set_status("Documentation search finished.", kind="tool")
return result
@assistant_tool(
display_name="Load Doc Section",
description="Load one specific WanGP documentation section using the doc id and section path returned by Search Doc.",
parameters={
"doc_id": {
"type": "string",
"description": "Documentation id: finetunes, getting_started, loras, overview, prompts, or vace.",
},
"section": {
"type": "string",
"description": "The section path returned by Search Doc, for example `Prompt Enhancer > Automatic Versus On-Demand`.",
},
},
pause_runtime=False,
)
def load_doc_section(self, doc_id: str, section: str) -> dict[str, Any]:
lookup_id = str(doc_id or "").strip().lower()
section = str(section or "").strip()
if lookup_id not in _DEEPY_DOCS:
return {
"status": "error",
"doc_id": lookup_id,
"section": section,
"available_doc_ids": sorted(_DEEPY_DOCS.keys()),
"error": "Unknown documentation id.",
}
if len(section) == 0:
return {"status": "error", "doc_id": lookup_id, "section": "", "error": "section is empty."}
self._set_status("Loading documentation section...", kind="tool")
self._update_tool_progress("running", "Loading", {"status": "running", "doc_id": lookup_id, "section": section})
try:
doc_info, resolved_section, candidate_sections = _resolve_doc_section(lookup_id, section)
except Exception as exc:
result = {"status": "error", "doc_id": lookup_id, "section": section, "error": str(exc)}
self._update_tool_progress("error", "Error", result)
return result
if len(resolved_section) == 0:
result = {
"status": "error",
"doc_id": lookup_id,
"section": section,
"matching_sections": candidate_sections,
"error": "Section not found or ambiguous. Use the exact section path returned by Search Doc.",
}
self._update_tool_progress("error", "Error", result)
return result
result = {
"status": "done",
"doc_id": doc_info["doc_id"],
"title": doc_info["title"],
"path": doc_info["path"],
"section": resolved_section["section"],
"heading": resolved_section["heading"],
"heading_level": resolved_section["heading_level"],
"content": resolved_section["content"],
"error": "",
}
self._update_tool_progress("done", "Loaded", {"status": "done", "doc_id": doc_info["doc_id"], "section": resolved_section["section"], "path": doc_info["path"], "error": ""})
self._set_status("Documentation section loaded.", kind="tool")
return result
@assistant_tool(
display_name="Get Selected Media",
description="Return the current selected WanGP gallery media. With media_type=all, return both the selected visual media and the selected audio media. If the selected visual item is a video, also report the current player time and frame number.",
parameters={
"media_type": {
"type": "string",
"description": "Optional desired media type: image, video, audio, or all. all returns both gallery selections.",
"required": False,
},
},
pause_runtime=False,
)
def get_selected_media(self, media_type: str = "all") -> dict[str, Any]:
self._sync_recent_media()
resolved_media_type = self._normalize_selected_media_type(media_type)
if resolved_media_type == "all":
visual_media_record, audio_media_record, error_result = self._get_all_selected_media_records()
if error_result is not None:
return error_result
return {
"status": "done",
"media_type": "all",
"selected_visual_media": None if visual_media_record is None else self._selected_media_payload(visual_media_record),
"selected_audio_media": None if audio_media_record is None else self._selected_media_payload(audio_media_record),
"error": "",
}
media_record, error_result = self._get_selected_media_record(media_type)
if error_result is not None:
return error_result
return {"status": "done", **self._selected_media_payload(media_record), "error": ""}
@assistant_tool(
display_name="Get Media Details",
description="Return detailed local metadata for a previously resolved image, video, or audio.",
parameters={
"media_id": {
"type": "string",
"description": "The media id returned by Resolve Media.",
},
},
pause_runtime=False,
)
def get_media_details(self, media_id: str) -> dict[str, Any]:
self._sync_recent_media()
if self.session is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "error": "Assistant session is not available."}
media_record = media_registry.get_media_record(self.session, media_id)
if media_record is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "error": "Unknown media id."}
media_path = str(media_record.get("path", "")).strip()
media_type = str(media_record.get("media_type", "")).strip().lower()
if media_type not in {"image", "video", "audio"}:
return {
"status": "error",
"media_id": media_record.get("media_id", ""),
"media_type": media_type,
"error": "Detailed media info currently supports images, videos, and audio.",
}
self._set_status("Reading media details...", kind="tool")
self._update_tool_progress("running", "Reading", {"status": "running", "media_id": media_record.get("media_id", ""), "media_type": media_type})
try:
if media_type == "image":
with Image.open(media_path) as image_handle:
width, height = image_handle.size
result = {
"status": "done",
"media_id": media_record.get("media_id", ""),
"label": media_record.get("label", ""),
"media_type": "image",
"filename": os.path.basename(media_path),
"width": int(width),
"height": int(height),
"resolution": f"{int(width)}x{int(height)}",
"frame_count": 1,
"fps": None,
"duration_seconds": None,
"has_audio": False,
"audio_track_count": 0,
"sample_rate": None,
"channels": None,
"error": "",
}
elif media_type == "video":
fps, width, height, frame_count = get_video_info(media_path)
audio_track_count = int(extract_audio_tracks(media_path, query_only=True))
result = {
"status": "done",
"media_id": media_record.get("media_id", ""),
"label": media_record.get("label", ""),
"media_type": "video",
"filename": os.path.basename(media_path),
"width": int(width),
"height": int(height),
"resolution": f"{int(width)}x{int(height)}",
"frame_count": int(frame_count),
"fps": int(fps),
"duration_seconds": (float(frame_count) / float(fps)) if fps > 0 else None,
"has_audio": audio_track_count > 0,
"audio_track_count": audio_track_count,
"sample_rate": None,
"channels": None,
"error": "",
}
else:
probe = ffmpeg.probe(media_path)
audio_streams = [stream for stream in probe.get("streams", []) if str(stream.get("codec_type", "")).strip().lower() == "audio"]
primary_stream = audio_streams[0] if audio_streams else {}
sample_rate = primary_stream.get("sample_rate", None)
channels = primary_stream.get("channels", None)
duration_seconds = probe.get("format", {}).get("duration", None)
try:
duration_seconds = None if duration_seconds in {None, "", "N/A"} else float(duration_seconds)
except Exception:
duration_seconds = None
try:
sample_rate = None if sample_rate in {None, "", "N/A"} else int(sample_rate)
except Exception:
sample_rate = None
try:
channels = None if channels in {None, "", "N/A"} else int(channels)
except Exception:
channels = None
result = {
"status": "done",
"media_id": media_record.get("media_id", ""),
"label": media_record.get("label", ""),
"media_type": "audio",
"filename": os.path.basename(media_path),
"width": None,
"height": None,
"resolution": None,
"frame_count": None,
"fps": None,
"duration_seconds": duration_seconds,
"has_audio": len(audio_streams) > 0,
"audio_track_count": int(len(audio_streams)),
"sample_rate": sample_rate,
"channels": channels,
"error": "",
}
except Exception as exc:
result = {
"status": "error",
"media_id": media_record.get("media_id", ""),
"media_type": media_type,
"filename": os.path.basename(media_path),
"error": str(exc),
}
self._update_tool_progress("error", "Error", result)
return result
self._update_tool_progress("done", "Done", result)
self._set_status("Media details loaded.", kind="tool")
return result
@assistant_tool(
display_name="Resolve Media",
description="Look up previously generated WanGP media by a short reference such as 'last', 'previous', or 'selected' plus media_type, or by a short description.",
parameters={
"reference": {
"type": "string",
"description": "The media reference. Use short aliases such as 'last', 'previous', or 'selected' when media_type already specifies image, video, or audio. Descriptive references such as 'robot on the moon' also work.",
},
"media_type": {
"type": "string",
"description": "The desired media type: image, video, audio, or all. Pair this with short references such as reference='last' or reference='selected'.",
},
},
pause_runtime=False,
)
def resolve_media_reference(self, reference: str, media_type: str) -> dict[str, Any]:
self._sync_recent_media()
resolved_reference = str(reference or "").strip()
resolved_media_type_text = str(media_type or "all").strip() or "all"
if self.session is None:
return {"status": "error", "reference": resolved_reference, "media_type": resolved_media_type_text, "matches": [], "error": "Assistant session is not available."}
if self._is_selected_reference(resolved_reference):
resolved_media_type = self._normalize_selected_media_type(media_type, reference=resolved_reference)
if resolved_media_type == "all":
matches = []
visual_media_record, audio_media_record, error_result = self._get_all_selected_media_records()
if error_result is not None:
error_result.setdefault("reference", resolved_reference)
return error_result
if visual_media_record is not None:
matches.append(self._selected_media_payload(visual_media_record, why="matched selected visual media"))
if audio_media_record is not None:
matches.append(self._selected_media_payload(audio_media_record, why="matched selected audio media"))
if len(matches) == 1:
return {"status": "resolved", "media_type": "all", "reference": resolved_reference, "media": matches[0], "error": ""}
return {"status": "candidates", "media_type": "all", "reference": resolved_reference, "matches": matches, "error": ""}
media_record, error_result = self._get_selected_media_record(resolved_media_type)
if error_result is not None:
error_result.setdefault("reference", resolved_reference)
return error_result
return {"status": "resolved", "media_type": resolved_media_type, "reference": resolved_reference, "media": self._selected_media_payload(media_record, why="matched selected media"), "error": ""}
result = media_registry.resolve_media_reference(self.session, reference, media_type)
result.setdefault("error", "")
return result
@assistant_tool(
display_name="Inspect Media",
description="Ask Deepy to inspect a previously resolved image or a frame from a previously resolved video and answer a visual question about it.",
parameters={
"media_id": {
"type": "string",
"description": "The media id returned by Resolve Media.",
},
"question": {
"type": "string",
"description": "The visual question to answer about that media item.",
},
"frame_no": {
"type": "integer",
"description": "Optional frame number to inspect when media_id refers to a video. If omitted, the first frame is used.",
"required": False,
},
},
pause_runtime=True,
pause_reason="vision",
)
def inspect_media(self, media_id: str, question: str, frame_no: int | None = None) -> dict[str, Any]:
self._sync_recent_media()
try:
frame_no = None if frame_no is None or str(frame_no).strip() == "" else int(frame_no)
except Exception:
return {"status": "error", "media_id": str(media_id or "").strip(), "question": str(question or "").strip(), "answer": "", "error": "frame_no must be an integer."}
self._update_tool_progress("running", "Inspecting", {"status": "running", "media_id": str(media_id or "").strip(), "question": str(question or "").strip(), "frame_no": frame_no})
if self.session is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "question": str(question or "").strip(), "answer": "", "error": "Assistant session is not available."}
media_record = media_registry.get_media_record(self.session, media_id)
if media_record is None:
return {"status": "error", "media_id": str(media_id or "").strip(), "question": str(question or "").strip(), "answer": "", "error": "Unknown media id."}
if media_record.get("media_type") not in {"image", "video"}:
return {
"status": "error",
"media_id": media_record.get("media_id", ""),
"media_type": media_record.get("media_type", ""),
"question": str(question or "").strip(),
"answer": "",
"error": "Visual inspection currently supports images and videos.",
}
if self._vision_query_callback is None:
return {
"status": "error",
"media_id": media_record.get("media_id", ""),
"media_type": media_record.get("media_type", ""),
"question": str(question or "").strip(),
"answer": "",
"error": "Deepy vision inspection is not available.",
}
return self._vision_query_callback(media_record, question, frame_no)
def get_tool_schemas(self) -> list[dict[str, Any]]:
schemas = []
for attr_name in dir(self):
if attr_name.startswith("_"):
continue
method = getattr(self, attr_name)
metadata = getattr(method, "_assistant_tool", None)
if metadata is None:
continue
properties = {}
required = []
annotations = getattr(method, "__annotations__", {})
for param_name, param_meta in metadata["parameters"].items():
properties[param_name] = _build_tool_parameter_schema(annotations, param_name, param_meta)
if bool(param_meta.get("required", True)):
required.append(param_name)
schemas.append(
{
"type": "function",
"function": {
"name": metadata["name"],
"description": metadata["description"],
"parameters": {
"type": "object",
"properties": properties,
"required": required,
},
},
}
)
return schemas
def get_tool_display_name(self, tool_name: str) -> str:
lookup_name = str(tool_name or "").strip()
for attr_name in dir(self):
if attr_name.startswith("_"):
continue
method = getattr(self, attr_name)
metadata = getattr(method, "_assistant_tool", None)
if metadata is None or metadata["name"] != lookup_name:
continue
return str(metadata.get("display_name", lookup_name)).strip() or lookup_name
return lookup_name.replace("_", " ").replace("-", " ").strip().title() or "Tool"
def get_tool_policy(self, tool_name: str) -> dict[str, Any]:
lookup_name = str(tool_name or "").strip()
for attr_name in dir(self):
if attr_name.startswith("_"):
continue
method = getattr(self, attr_name)
metadata = getattr(method, "_assistant_tool", None)
if metadata is None or metadata["name"] != lookup_name:
continue
return {
"pause_runtime": bool(metadata.get("pause_runtime", True)),
"pause_reason": str(metadata.get("pause_reason", "tool") or "tool"),
}
return {"pause_runtime": True, "pause_reason": "tool"}
def validate_tool_call(self, tool_name: str, arguments: dict[str, Any]) -> str:
lookup_name = str(tool_name or "").strip()
call_args = dict(arguments or {})
for attr_name in dir(self):
if attr_name.startswith("_"):
continue
method = getattr(self, attr_name)
metadata = getattr(method, "_assistant_tool", None)
if metadata is None or metadata["name"] != lookup_name:
continue
for param_name, param_meta in metadata["parameters"].items():
if not bool(param_meta.get("required", True)):
continue
value = call_args.get(param_name, None)
if value is None:
return f"{param_name} is required."
if str(param_meta.get("type", "")).strip().lower() == "string" and len(str(value or "").strip()) == 0:
return f"{param_name} is empty."
return ""
return ""
def infer_tool_calls(self, raw_text: str) -> list[dict[str, Any]]:
candidate_texts = []
thinking_text, answer_text = qwen35_text._split_generated_text(raw_text)
for candidate in (raw_text, answer_text, thinking_text):
candidate = str(candidate or "").strip()
if len(candidate) > 0:
candidate_texts.append(candidate)
by_name = {}
sole_tool_name = None
sole_tool_params = set()
for schema in self.get_tool_schemas():
function_spec = schema.get("function", {})
tool_name = str(function_spec.get("name", "")).strip()
if len(tool_name) == 0:
continue
by_name[tool_name] = set(function_spec.get("parameters", {}).get("properties", {}).keys())
if len(by_name) == 1:
sole_tool_name = next(iter(by_name))
sole_tool_params = by_name[sole_tool_name]
for candidate in candidate_texts:
pseudo_match = re.search(r"Tool call:\s*([A-Za-z_][A-Za-z0-9_]*)\((.*)\)", candidate, flags=re.DOTALL)
if pseudo_match is not None:
tool_name = pseudo_match.group(1).strip()
raw_args = pseudo_match.group(2).strip()
arguments = {}
for arg_name, quoted_value in re.findall(r'([A-Za-z_][A-Za-z0-9_]*)\s*=\s*"([^"]*)"', raw_args):
arguments[arg_name] = quoted_value
for arg_name, quoted_value in re.findall(r"([A-Za-z_][A-Za-z0-9_]*)\s*=\s*'([^']*)'", raw_args):
arguments[arg_name] = quoted_value
if tool_name in by_name:
return [{"name": tool_name, "arguments": arguments}]
fenced_match = re.search(r"```(?:json)?\s*(\{.*?\})\s*```", candidate, flags=re.DOTALL | re.IGNORECASE)
json_candidate = fenced_match.group(1).strip() if fenced_match is not None else strip_trailing_stop_markup(candidate).strip()
try:
parsed = json.loads(json_candidate)
except Exception:
continue
if not isinstance(parsed, dict):
continue
if "name" in parsed and "arguments" in parsed:
tool_name = str(parsed.get("name", "")).strip()
arguments = parsed.get("arguments", {})
if isinstance(arguments, dict) and tool_name in by_name:
return [{"name": tool_name, "arguments": arguments}]
if sole_tool_name is not None and set(parsed.keys()).issubset(sole_tool_params):
return [{"name": sole_tool_name, "arguments": parsed}]
return []
def call(self, tool_name: str, arguments: dict[str, Any]) -> dict[str, Any]:
for attr_name in dir(self):
if attr_name.startswith("_"):
continue
method = getattr(self, attr_name)
metadata = getattr(method, "_assistant_tool", None)
if metadata is None:
continue
if metadata["name"] != tool_name:
continue
return method(**dict(arguments or {}))
raise KeyError(f"Unknown assistant tool: {tool_name}")
class AssistantEngine:
def __init__(self, session: AssistantSessionState, runtime_hooks: AssistantRuntimeHooks, tool_box: tools, send_cmd, debug_enabled: bool | None = None, thinking_enabled: bool = True, vram_mode: str = DEEPY_VRAM_MODE_UNLOAD):
self.session = session
self.runtime_hooks = runtime_hooks
self.tool_box = tool_box
self.send_cmd = send_cmd
self.debug_enabled = ASSISTANT_DEBUG if debug_enabled is None else bool(debug_enabled)
self.thinking_enabled = bool(thinking_enabled)
self.vram_mode = normalize_deepy_vram_mode(vram_mode)
self.runtime: Qwen35AssistantRuntime | None = None
self._gpu_acquired = False
self._skip_pause_snapshot = False
self._active_turn_id = ""
self._active_tool_context: tuple[str, str] | None = None
self._stream_answer_text = ""
self._stream_reasoning_text = ""
self._stream_reasoning_block_id = ""
self._stream_thinking_unknown = False
self._stream_thinking_open = False
self._prefill_started_at: float | None = None
self._live_prefill_tokens = 0
self._segment_started_at: float | None = None
self._segment_generated_tokens = 0
self._current_requested_max_new_tokens = 1024
self._current_status_payload: dict[str, Any] | None = None
self._resume_stream_after_context_trim = False
self._suppress_intermediate_stream_after_context_trim = False
self._skip_generation_context_sync_once = False
self._continued_segment_raw_text = ""
self._continued_segment_token_ids: list[int] = []
bind_runtime_tools = getattr(self.tool_box, "bind_runtime_tools", None)
if callable(bind_runtime_tools):
bind_runtime_tools(vision_query_callback=self._run_visual_query, tool_progress_callback=self._handle_tool_progress)
def _log(self, message: str) -> None:
if self.debug_enabled:
print(f"[Assistant] {message}")
def _emit_chat_event(self, payload: str | None) -> None:
if payload is None or len(str(payload).strip()) == 0:
return
self.send_cmd("chat_output", payload)
def _set_status(self, text: str | None, kind: str = "thinking") -> None:
self._current_status_payload = None if text is None or len(str(text).strip()) == 0 else {"visible": True, "kind": str(kind or "status"), "text": str(text or "").strip()}
self._emit_chat_event(assistant_chat.build_status_event(text, kind=kind, visible=text is not None and len(str(text).strip()) > 0))
self._emit_stats()
def _hide_status(self) -> None:
self._current_status_payload = None
self._emit_chat_event(assistant_chat.build_status_event(None, visible=False))
self._emit_stats(force=True)
def _get_context_window_tokens(self) -> int:
return normalize_deepy_context_tokens(get_deepy_config_value(DEEPY_CONTEXT_TOKENS_KEY, DEEPY_CONTEXT_TOKENS_DEFAULT))
def _active_sequence_token_count(self) -> int | None:
if self.runtime is None:
return None
try:
current_seq = self.runtime._get_active_sequence()
except Exception:
return None
if current_seq is None:
return None
try:
return len(current_seq.token_ids or [])
except Exception:
return None
def _segment_generation_reserve_tokens(self) -> int:
if not bool(self.thinking_enabled):
return _GENERATION_RESERVE_TOKENS
requested_max_new_tokens = max(1, int(self._current_requested_max_new_tokens or 1024))
return max(_GENERATION_RESERVE_TOKENS, requested_max_new_tokens + _THINKING_HEADROOM_TOKENS)
def _resolved_chat_max_tokens(self) -> int:
max_tokens = 0
if self.runtime is not None:
try:
max_tokens = int(self.runtime.get_max_model_len() or 0)
except Exception:
max_tokens = 0
if max_tokens > 0:
self.session.runtime_max_model_len = max_tokens
return max_tokens
try:
max_tokens = int(self.session.runtime_max_model_len or 0)
except Exception:
max_tokens = 0
return max_tokens if max_tokens > 0 else self._get_context_window_tokens()
def _chat_stats_payload(self) -> dict[str, Any]:
live_prefill_seconds = 0.0 if self._prefill_started_at is None else max(0.0, time.perf_counter() - self._prefill_started_at)
live_generation_seconds = 0.0 if self._segment_started_at is None else max(0.0, time.perf_counter() - self._segment_started_at)
return build_assistant_chat_stats(
self.session,
max_tokens=self._resolved_chat_max_tokens(),
active_sequence_token_count=self._active_sequence_token_count(),
live_prefill_tokens=self._live_prefill_tokens,
live_prefill_seconds=live_prefill_seconds,
live_generated_tokens=self._segment_generated_tokens,
live_generation_seconds=live_generation_seconds,
)
def _emit_stats(self, *, force: bool = False) -> None:
stats = self._chat_stats_payload()
signature = _json_dumps(stats)
if not force and signature == str(self.session.chat_stats_signature or ""):
return
self.session.chat_stats_signature = signature
self._emit_chat_event(assistant_chat.build_stats_event(stats))
def _record_prefill_metrics(self, token_count: int, elapsed_seconds: float) -> None:
tokens = max(0, int(token_count or 0))
elapsed = max(0.0, float(elapsed_seconds or 0.0))
if tokens <= 0 or elapsed <= 0.0:
return
self.session.prefill_token_total += tokens
self.session.prefill_seconds_total += elapsed
def _record_generation_metrics(self, token_count: int, elapsed_seconds: float) -> None:
tokens = max(0, int(token_count or 0))
elapsed = max(0.0, float(elapsed_seconds or 0.0))
if tokens <= 0 or elapsed <= 0.0:
return
self.session.generated_token_total += tokens
self.session.generated_seconds_total += elapsed
def _run_prefill_call(self, token_count: int, callback: Callable[[], Any], *, record_if: bool | Callable[[Any], bool] = True) -> Any:
tokens = max(0, int(token_count or 0))
started_at = time.perf_counter()
self._prefill_started_at = started_at if tokens > 0 else None
self._live_prefill_tokens = tokens
completed = False
result = None
try:
result = callback()
completed = True
return result
finally:
elapsed_seconds = max(0.0, time.perf_counter() - started_at)
self._prefill_started_at = None
self._live_prefill_tokens = 0
should_record = record_if(result) if callable(record_if) else bool(record_if)
if completed and should_record:
self._record_prefill_metrics(tokens, elapsed_seconds)
self._emit_stats(force=True)
def _finish_stream_pass(self, token_count: int | None = None) -> None:
elapsed_seconds = 0.0 if self._segment_started_at is None else max(0.0, time.perf_counter() - self._segment_started_at)
recorded_tokens = max(max(0, int(token_count or 0)), max(0, int(self._segment_generated_tokens or 0)))
self._record_generation_metrics(recorded_tokens, elapsed_seconds)
self._segment_started_at = None
self._segment_generated_tokens = 0
self._emit_stats(force=True)
def _max_tokens_hit_context_ceiling(self, result: Any) -> bool:
if str(getattr(result, "stop_reason", "") or "").strip().lower() != "max_tokens":
return False
try:
produced_tokens = int(getattr(result, "token_count", 0) or 0)
except Exception:
produced_tokens = 0
if produced_tokens >= max(1, int(self._current_requested_max_new_tokens or 1024)):
return False
if self.runtime is None:
return False
current_seq = self.runtime._get_active_sequence()
if current_seq is None:
return False
try:
current_tokens = int(current_seq.num_tokens or 0)
except Exception:
current_tokens = len(list(current_seq.token_ids or []))
return current_tokens >= max(1, self._get_context_window_tokens())
def _get_custom_system_prompt(self) -> str:
return normalize_deepy_custom_system_prompt(get_deepy_config_value(DEEPY_CUSTOM_SYSTEM_PROMPT_KEY, ""))
def _build_reset_base_system_prompt(self) -> str:
system_prompt = ASSISTANT_SYSTEM_PROMPT.rstrip()
custom_system_prompt = self._get_custom_system_prompt()
return f"{system_prompt}\n\n{custom_system_prompt}".strip() if len(custom_system_prompt) > 0 else system_prompt
def _build_system_prompt(self, *, log_injections: bool = False) -> str:
return self._build_reset_base_system_prompt()
def _current_system_prompt_signature(self) -> str:
return self._build_system_prompt()
def _current_reset_base_signature(self) -> str:
return _json_dumps({"system_prompt": self._build_reset_base_system_prompt(), "tools": self.tool_box.get_tool_schemas(), "thinking_enabled": bool(self.thinking_enabled)})
def _can_preserve_reset_base(self) -> bool:
return self.vram_mode in (DEEPY_VRAM_MODE_ALWAYS_LOADED, DEEPY_VRAM_MODE_UNLOAD_ON_REQUEST, DEEPY_VRAM_MODE_UNLOAD)
def _render_reset_base_tokens(self) -> list[int]:
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for reset-base rendering.")
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
user_content = self._pending_user_render_content()
if len(user_content) == 0:
raise RuntimeError("Assistant reset-base capture requires a pending user message.")
messages = [
{"role": "system", "content": self._build_reset_base_system_prompt()},
{"role": "user", "content": user_content},
]
suffix_tokens = render_text_user_turn_suffix(self.runtime.tokenizer, user_content, thinking_enabled=thinking_enabled)
for add_generation_prompt in (False, True):
full_tokens = render_assistant_messages(
self.runtime.tokenizer,
messages,
self.tool_box.get_tool_schemas(),
add_generation_prompt=add_generation_prompt,
thinking_enabled=thinking_enabled,
)
if len(suffix_tokens) > 0 and len(full_tokens) > len(suffix_tokens) and full_tokens[-len(suffix_tokens):] == suffix_tokens:
return full_tokens[:-len(suffix_tokens)]
raise RuntimeError("Assistant reset-base capture could not isolate the pending user suffix.")
def _remember_reset_base_render_state(self, base_token_ids: list[int], render_signature: str, base_context_window_tokens: int) -> None:
normalized_base_tokens = [int(token_id) for token_id in list(base_token_ids or [])]
self.session.rendered_token_ids = list(normalized_base_tokens)
self.session.rendered_messages_len = 0
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
self.session.rendered_system_prompt_signature = str(render_signature or "")
self.session.rendered_context_window_tokens = max(0, int(base_context_window_tokens or 0))
def _ensure_reset_base_context(self) -> str:
render_signature = self._current_system_prompt_signature()
reset_base_signature = self._current_reset_base_signature()
base_context_window_tokens = self._get_context_window_tokens()
if (
self.session.reset_base_snapshot is not None
and str(self.session.reset_base_signature or "") == reset_base_signature
and int(self.session.reset_base_context_window_tokens or 0) == base_context_window_tokens
and len(self.session.reset_base_token_ids) > 0
):
self._remember_reset_base_render_state(self.session.reset_base_token_ids, render_signature, base_context_window_tokens)
self.session.runtime_snapshot = copy.deepcopy(self.session.reset_base_snapshot)
return "cached"
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for reset-base capture.")
base_token_ids = self._render_reset_base_tokens()
self.runtime.prime_context(base_token_ids)
self.session.reset_base_token_ids = [int(token_id) for token_id in list(base_token_ids or [])]
self.session.reset_base_snapshot = self.runtime.snapshot_context()
self.session.reset_base_signature = str(reset_base_signature or "")
self.session.reset_base_context_window_tokens = int(base_context_window_tokens)
self._remember_reset_base_render_state(base_token_ids, render_signature, base_context_window_tokens)
return "primed"
def _reset_to_preserved_base(self) -> bool:
if not self._can_preserve_reset_base():
invalidate_assistant_reset_base(self.session)
return False
if self.session.reset_base_snapshot is None or len(self.session.reset_base_token_ids) == 0:
return False
if str(self.session.reset_base_signature or "") != self._current_reset_base_signature():
invalidate_assistant_reset_base(self.session)
return False
if int(self.session.reset_base_context_window_tokens or 0) != self._get_context_window_tokens():
invalidate_assistant_reset_base(self.session)
return False
if not reset_assistant_session_to_base(self.session, self._current_system_prompt_signature()):
invalidate_assistant_reset_base(self.session)
return False
self._log("Assistant chat reset to the preserved header context. [no prefill redone]")
return True
def _remember_render_state(self) -> None:
self.session.rendered_system_prompt_signature = self._current_system_prompt_signature()
self.session.rendered_context_window_tokens = self._get_context_window_tokens()
self.session.rendered_messages_len = len(self.session.messages)
def _message_render_content(self, message: dict[str, Any]) -> str:
model_content = message.get("model_content", None)
if isinstance(model_content, str) and len(model_content) > 0:
if str(message.get("role", "")).strip().lower() == "user":
return model_content
if _INJECT_SELECTED_MEDIA_RUNTIME_UPDATES:
return model_content
return _RUNTIME_UPDATE_BLOCK_RE.sub("\n", model_content).strip()
return str(message.get("content", "") or "")
def _get_pending_render_messages(self) -> list[dict[str, Any]]:
try:
start_idx = int(self.session.rendered_messages_len or 0)
except Exception:
start_idx = 0
start_idx = max(0, min(start_idx, len(self.session.messages)))
return list(self.session.messages[start_idx:])
def _can_append_pending_user_suffix(self) -> bool:
if self.session.rendered_system_prompt_signature != self._current_system_prompt_signature():
return False
if int(self.session.rendered_context_window_tokens or 0) != self._get_context_window_tokens():
return False
pending_messages = self._get_pending_render_messages()
return len(pending_messages) == 1 and str(pending_messages[0].get("role", "")).strip().lower() == "user"
def _pending_user_render_content(self) -> str:
pending_messages = self._get_pending_render_messages()
if len(pending_messages) != 1:
return ""
if str(pending_messages[0].get("role", "")).strip().lower() != "user":
return ""
return self._message_render_content(pending_messages[0]).strip()
def _can_append_pending_tool_suffix(self) -> bool:
if self.session.rendered_system_prompt_signature != self._current_system_prompt_signature():
return False
if int(self.session.rendered_context_window_tokens or 0) != self._get_context_window_tokens():
return False
pending_messages = self._get_pending_render_messages()
return len(pending_messages) > 0 and all(str(message.get("role", "")).strip().lower() == "tool" for message in pending_messages)
def _pending_tool_render_contents(self) -> list[str]:
return [self._message_render_content(message).strip() for message in self._get_pending_render_messages() if str(message.get("role", "")).strip().lower() == "tool" and len(self._message_render_content(message).strip()) > 0]
def _get_runtime_tool_template_label(self, tool_name: str) -> str:
try:
variant = str(self.tool_box.get_tool_variant(tool_name) or "").strip()
except Exception:
variant = ""
if len(variant) == 0:
return ""
template_label = Path(variant).name.strip()
return template_label if len(template_label) > 0 else variant
def _build_video_tool_runtime_instruction(self, tool_name: str, *, changed: bool) -> str:
template_label = self._get_runtime_tool_template_label(tool_name)
if len(template_label) == 0:
return ""
model_def = self.tool_box._get_effective_tool_model_def(tool_name)
image_prompt_types_allowed = str(model_def.get("image_prompt_types_allowed", "") or "").strip()
sentences = [
f"The {tool_name} tool {'has changed and now uses' if changed else 'uses'} Settings '{template_label}'."
]
if tool_name == "gen_video" and bool(model_def.get("multimedia_generation", False)):
sentences.append(
"The gen_video tool can generate a video with an audio output from a text prompt. So if the user provides only a text prompt and wants a talking or voiced video, you must use gen_video directly, keep the spoken words in the prompt, and do not call gen_speech_from_description, gen_speech_from_sample, or gen_video_with_speech first."
)
if "T" in image_prompt_types_allowed:
sentences.append(
f"The {tool_name} tool can generate a video even if a start image is not provided. So if the user does not provide a start image or asks you explicitly to generate the start image, do not create a start image; just describe the starting situation in the prompt."
)
elif "S" in image_prompt_types_allowed:
sentences.append(
f"The {tool_name} tool needs a start image. So if the user does not provide a start image, you will need to create a start image first to use this tool."
)
return " ".join(sentences).strip()
def _get_video_tool_runtime_updates(self) -> list[str]:
if self.session is None:
return []
current_variants: dict[str, str] = {}
current_lines: list[str] = []
for tool_name in ("gen_video", "gen_video_with_speech"):
variant = str(self.tool_box.get_tool_variant(tool_name) or "").strip()
if len(variant) == 0:
continue
current_variants[tool_name] = variant
instruction = self._build_video_tool_runtime_instruction(tool_name, changed=False)
if len(instruction) > 0:
current_lines.append(instruction)
self.session.video_tool_runtime_variants = current_variants
if len(current_lines) == 0:
self.session.video_tool_runtime_signature = ""
self.session.video_tool_runtime_last_injected_tokens = 0
return []
current_signature = _json_dumps(current_lines)
current_token_count = len(self.session.rendered_token_ids or [])
force_emit = len(self.session.messages) == 0 and int(self.session.rendered_messages_len or 0) == 0
last_signature = str(self.session.video_tool_runtime_signature or "").strip()
last_injected_tokens = int(self.session.video_tool_runtime_last_injected_tokens or 0)
should_emit = force_emit or current_signature != last_signature or current_token_count - last_injected_tokens >= _VIDEO_TOOL_RUNTIME_REINJECT_TOKENS
if not should_emit:
return []
self.session.video_tool_runtime_signature = current_signature
self.session.video_tool_runtime_last_injected_tokens = current_token_count
return current_lines
def _ensure_current_turn_video_runtime_update_for_compaction(self) -> bool:
instruction = self._build_video_tool_runtime_instruction("gen_video", changed=False)
if len(instruction) == 0:
return False
user_indexes = [idx for idx, message in enumerate(self.session.messages) if str(message.get("role", "")).strip().lower() == "user"]
if len(user_indexes) == 0:
return False
user_message = self.session.messages[user_indexes[-1]]
model_content = str(user_message.get("model_content", "") or "").strip()
if instruction in model_content:
return False
visible_content = str(user_message.get("content", "") or "").strip()
if len(model_content) == 0:
model_content = visible_content
runtime_match = re.match(r"(?is)\s*\s*(.*?)\s*\s*(.*)\Z", model_content)
if runtime_match is not None:
body = str(runtime_match.group(1) or "").strip()
remainder = str(runtime_match.group(2) or "").strip()
body_lines = [line.rstrip() for line in body.splitlines()]
if instruction not in body:
body_lines.append(instruction)
merged_block = "\n".join(["", *body_lines, ""]).strip()
user_message["model_content"] = f"{merged_block}\n\n{remainder}".strip() if len(remainder) > 0 else merged_block
return True
runtime_block = "\n".join(
[
"",
"Hidden WanGP runtime state. This is environment metadata, not a user message.",
instruction,
"",
]
)
tail_content = model_content if len(model_content) > 0 else visible_content
user_message["model_content"] = f"{runtime_block}\n\n{tail_content}".strip() if len(tail_content) > 0 else runtime_block
return True
def _build_runtime_media_lines(self, media_entries: list[dict[str, Any]]) -> list[str]:
merged_entries: dict[str, dict[str, Any]] = {}
ordered_media_ids: list[str] = []
for entry in list(media_entries or []):
if not isinstance(entry, dict):
continue
media_id = str(entry.get("media_id", "") or "").strip()
media_type = str(entry.get("media_type", "") or "").strip()
action = str(entry.get("action", "") or "").strip()
reference_label = str(entry.get("reference_label", "") or "").strip()
gallery_label = str(entry.get("gallery_label", "") or "").strip()
if len(media_id) == 0 or len(media_type) == 0 or len(action) == 0 or len(reference_label) == 0 or len(gallery_label) == 0:
continue
merged_entry = merged_entries.setdefault(media_id, {"payload": {}, "media_type": media_type, "gallery_label": gallery_label, "references": []})
merged_entry["payload"] = self.tool_box._merge_runtime_media_payload(merged_entry.get("payload"), entry.get("detail_payload"))
merged_entry["media_type"] = media_type or str(merged_entry.get("media_type", "") or "").strip()
merged_entry["gallery_label"] = gallery_label or str(merged_entry.get("gallery_label", "") or "").strip()
reference_tuple = (action, reference_label)
if reference_tuple not in merged_entry["references"]:
merged_entry["references"].append(reference_tuple)
if media_id not in ordered_media_ids:
ordered_media_ids.append(media_id)
runtime_lines = []
for media_id in ordered_media_ids:
merged_entry = merged_entries.get(media_id, {})
payload = dict(merged_entry.get("payload") or {})
if len(payload) > 0:
runtime_lines.append(f"Media {media_id} details: {_json_dumps(payload)}")
runtime_lines.append(
self.tool_box._format_runtime_media_reference_line(
media_id,
str(merged_entry.get("media_type", "") or "").strip(),
str(merged_entry.get("gallery_label", "") or "").strip(),
list(merged_entry.get("references") or []),
)
)
return runtime_lines
def _refresh_runtime_status_note(self) -> None:
runtime_lines = []
media_entries = []
runtime_lines.extend(self._get_video_tool_runtime_updates())
if _INJECT_LAST_SELECTED_MEDIA_RUNTIME_REFERENCES:
new_user_gallery_media = self.tool_box._get_new_user_gallery_media()
if "image" in new_user_gallery_media:
media_entry = self.tool_box._runtime_media_entry(
new_user_gallery_media["image"],
action="added",
gallery_label="Image / Video Gallery",
reference_label="last",
)
if media_entry is not None:
media_entries.append(media_entry)
if "video" in new_user_gallery_media:
media_entry = self.tool_box._runtime_media_entry(
new_user_gallery_media["video"],
action="added",
gallery_label="Image / Video Gallery",
reference_label="last",
)
if media_entry is not None:
media_entries.append(media_entry)
if "audio" in new_user_gallery_media:
media_entry = self.tool_box._runtime_media_entry(
new_user_gallery_media["audio"],
action="added",
gallery_label="Audio Gallery",
reference_label="last",
)
if media_entry is not None:
media_entries.append(media_entry)
media_entries.extend(self.tool_box._get_selected_gallery_media_updates())
runtime_lines.extend(self._build_runtime_media_lines(media_entries))
if _INJECT_SELECTED_MEDIA_RUNTIME_UPDATES:
snapshot = self.tool_box._get_selected_runtime_snapshot()
previous_snapshot = {}
previous_signature = str(self.session.runtime_status_signature or "").strip()
if len(previous_signature) > 0:
try:
previous_snapshot = dict(json.loads(previous_signature) or {})
except Exception:
previous_snapshot = {}
if snapshot is None:
if len(previous_signature) == 0:
normalized_snapshot = None
else:
normalized_snapshot = {key: None for key in _RUNTIME_STATUS_ALL_KEYS}
else:
normalized_snapshot = {key: None for key in _RUNTIME_STATUS_ALL_KEYS}
for key in ("selected_visual_media_id", "selected_visual_media_type", "selected_visual_media_label", "selected_audio_media_id", "selected_audio_media_type", "selected_audio_media_label"):
normalized_snapshot[key] = str(snapshot.get(key, "") or "").strip() or None
for key in ("selected_visual_current_time_seconds", "selected_visual_current_frame_no"):
normalized_snapshot[key] = snapshot.get(key, None)
if normalized_snapshot is not None:
signature = _json_dumps(normalized_snapshot)
if signature != self.session.runtime_status_signature:
changed_keys = [key for key in _RUNTIME_STATUS_ALL_KEYS if previous_snapshot.get(key, None) != normalized_snapshot.get(key, None)]
if len(previous_snapshot) == 0:
emitted_keys = list(_RUNTIME_STATUS_ALL_KEYS)
else:
emitted_keys = []
if any(key in changed_keys for key in _RUNTIME_STATUS_VISUAL_KEYS):
emitted_keys.extend(_RUNTIME_STATUS_VISUAL_KEYS)
if any(key in changed_keys for key in _RUNTIME_STATUS_AUDIO_KEYS):
emitted_keys.extend(_RUNTIME_STATUS_AUDIO_KEYS)
if len(emitted_keys) > 0:
runtime_lines.append("Use it as factual UI context only. Omitted keys keep their previous runtime-update values.")
for key in emitted_keys:
value = normalized_snapshot.get(key, None)
if isinstance(value, str):
rendered_value = value if len(value) > 0 else "none"
else:
rendered_value = "none" if value is None else value
runtime_lines.append(f"{key}: {rendered_value}")
if self.debug_enabled:
self._log(f"Prepared runtime status update: {signature}")
self.session.runtime_status_signature = signature
else:
self.session.runtime_status_signature = ""
self.session.runtime_status_note = (
"\n".join(
[
"",
"Hidden WanGP runtime state. This is environment metadata, not a user message.",
*runtime_lines,
"",
]
)
if len(runtime_lines) > 0
else ""
)
if len(runtime_lines) > 0 and self.debug_enabled:
self._log(f"Prepared runtime update with {len(runtime_lines)} instruction(s).")
def _build_pending_user_message(self, user_text: str) -> dict[str, Any]:
message = {"role": "user", "content": str(user_text or "").strip()}
runtime_note_blocks = [str(self.session.runtime_status_note or "").strip()] if len(str(self.session.runtime_status_note or "").strip()) > 0 else []
user_text_normalized = re.sub(r"\s+", " ", str(user_text or "").strip().lower())
interruption_query = (
"interrupt" in user_text_normalized
or "resume" in user_text_normalized
or "keep on" in user_text_normalized
or "keep going" in user_text_normalized
or "what were you doing" in user_text_normalized
)
if interruption_query and len(self.session.interruption_history) > 0:
lines = [
"",
"Hidden WanGP runtime state. This is environment metadata, not a user message.",
"Interrupted requests recorded in this chat:",
]
for index, entry in enumerate(self.session.interruption_history[-12:], start=1):
user_entry = str(entry.get("user_text", "") or "").strip()
summary_entry = str(entry.get("committed_summary", "") or "").strip()
if len(user_entry) > 0:
lines.append(f"{index}. request: {user_entry}")
if len(summary_entry) > 0:
lines.append(f" committed trace: {summary_entry}")
lines.append("")
runtime_note_blocks.append("\n".join(lines))
runtime_status_note = "\n\n".join([block for block in runtime_note_blocks if len(block) > 0]).strip()
if len(runtime_status_note) == 0:
return message
message["model_content"] = f"{runtime_status_note}\n\n{message['content']}".strip()
self.session.runtime_status_note = ""
if self.debug_enabled:
self._log(f"Queued runtime status update inside hidden user content:\n{runtime_status_note}")
return message
def _record_live_context(self, log_message: str) -> str:
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for live-context recording.")
current_seq = self.runtime._get_active_sequence()
if current_seq is None or len(current_seq.token_ids) == 0:
return self._canonicalize_context(sync_runtime="record_only")
self.session.rendered_token_ids = [int(token_id) for token_id in current_seq.token_ids]
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
self._skip_pause_snapshot = False
self._remember_render_state()
self._log(log_message)
self._emit_stats(force=True)
return "recorded"
def _send_chat(self, text: str) -> None:
text = str(text or "").strip()
if len(text) == 0:
return
self._emit_chat_event(assistant_chat.set_assistant_content(self.session, self._ensure_active_turn(), text))
def _ensure_active_turn(self) -> str:
if len(self._active_turn_id) == 0:
checkpoint = self.session.current_turn
existing_turn_id = "" if not isinstance(checkpoint, dict) else str(checkpoint.get("assistant_message_id", "") or "").strip()
if len(existing_turn_id) > 0 and assistant_chat._find_message(self.session, existing_turn_id) is not None:
self._active_turn_id = existing_turn_id
else:
self._active_turn_id = assistant_chat.create_assistant_turn(self.session)
mark_assistant_turn_message(self.session, self._active_turn_id)
return self._active_turn_id
def _split_for_display(self, raw_text: str) -> tuple[str, str]:
thinking_text, answer_text = qwen35_text._split_generated_text(raw_text)
if self.debug_enabled and len(thinking_text) > 0:
print("[Assistant][Thinking]")
try:
print(thinking_text)
except UnicodeEncodeError:
encoding = getattr(sys.stdout, "encoding", None) or "utf-8"
safe_text = thinking_text.encode(encoding, errors="replace").decode(encoding, errors="replace")
sys.stdout.write(safe_text + "\n")
sys.stdout.flush()
return thinking_text, answer_text
@staticmethod
def _should_print_raw_debug_text(raw_text: str, thinking_text: str, answer_text: str) -> bool:
stripped_raw = strip_trailing_stop_markup(str(raw_text or "")).strip()
if len(stripped_raw) == 0:
return False
if len(str(answer_text or "").strip()) > 0:
return True
raw_without_tools = strip_inline_tool_call_text(strip_tool_blocks(stripped_raw)).strip()
normalized_raw = re.sub(r"^\s*\s*", "", raw_without_tools or stripped_raw, flags=re.IGNORECASE)
normalized_raw = re.sub(r"\s*\s*$", "", normalized_raw, flags=re.IGNORECASE)
normalized_raw = re.sub(r"\s+", " ", normalized_raw).strip()
normalized_thinking = re.sub(r"\s+", " ", str(thinking_text or "").strip()).strip()
return normalized_raw != normalized_thinking
def _start_stream_pass(self) -> None:
turn_id = self._ensure_active_turn()
preserve_existing = bool(self._resume_stream_after_context_trim)
self._resume_stream_after_context_trim = False
thinking_stream_enabled = self.runtime is not None and qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
if preserve_existing:
self._stream_answer_text = assistant_chat.get_message_content(self.session, turn_id)
self._stream_reasoning_text = assistant_chat.get_message_reasoning_content(self.session, turn_id)
self._stream_reasoning_block_id = ""
transcript_record = assistant_chat._find_message(self.session, turn_id)
if isinstance(transcript_record, dict):
for block in list(transcript_record.get("blocks", []) or []):
if isinstance(block, dict) and str(block.get("type", "")).strip() == "reasoning":
self._stream_reasoning_block_id = str(block.get("id", "") or "").strip()
break
else:
self._stream_answer_text = ""
self._stream_reasoning_text = ""
self._stream_reasoning_block_id = ""
self._stream_thinking_unknown = False
self._stream_thinking_open = bool(thinking_stream_enabled and len(self._stream_answer_text.strip()) == 0)
self._segment_started_at = time.perf_counter()
self._segment_generated_tokens = 0
def _current_stream_content(self) -> str:
return self._stream_answer_text
def _split_streaming_text(self, raw_text: str, is_final: bool = False) -> tuple[str, str]:
text = strip_trailing_stop_markup(str(raw_text or "")).replace("\r\n", "\n").replace("\r", "\n")
lowered = text.lower()
open_idx = lowered.find("")
close_idx = lowered.find("")
if open_idx >= 0 and (close_idx < 0 or open_idx < close_idx):
self._stream_thinking_unknown = False
if close_idx < 0:
self._stream_thinking_open = True
return qwen35_text._normalize_generated_text(text[open_idx + len("") :]), ""
self._stream_thinking_open = False
thinking_text, answer_text = qwen35_text._split_generated_text(text)
return thinking_text, qwen35_text._clean_answer_text(_strip_partial_tool_markup(answer_text))
if self._stream_thinking_open and close_idx < 0:
return qwen35_text._normalize_generated_text(text.replace("", "\n")), ""
if close_idx >= 0:
self._stream_thinking_unknown = False
self._stream_thinking_open = False
thinking_text, answer_text = qwen35_text._split_generated_text(text)
return thinking_text, qwen35_text._clean_answer_text(_strip_partial_tool_markup(answer_text))
if self._stream_thinking_unknown and not is_final:
return "", ""
self._stream_thinking_unknown = False
thinking_text, answer_text = qwen35_text._split_generated_text(text)
return thinking_text, qwen35_text._clean_answer_text(_strip_partial_tool_markup(answer_text))
@staticmethod
def _has_malformed_double_close_tool_pattern(raw_text: str) -> bool:
text = strip_trailing_stop_markup(str(raw_text or "")).replace("\r\n", "\n").replace("\r", "\n")
close_matches = list(re.finditer(r"", text, flags=re.IGNORECASE))
if len(close_matches) < 2:
return False
trailing_text = text[close_matches[-1].end() :].lstrip()
return len(trailing_text) == 0 or trailing_text.lower().startswith("")
def _stream_generation_update(self, *, raw_text: str, token_count: int, stop_reason: str | None, is_final: bool) -> None:
turn_id = self._ensure_active_turn()
self._segment_generated_tokens = max(int(self._segment_generated_tokens or 0), max(0, int(token_count or 0)))
if self._suppress_intermediate_stream_after_context_trim and not is_final:
self._emit_stats()
return
if is_final:
self._suppress_intermediate_stream_after_context_trim = False
thinking_text, answer_text = self._split_streaming_text(raw_text, is_final=is_final)
reclaimed_answer_as_reasoning = False
if is_final and self._has_malformed_double_close_tool_pattern(raw_text) and len(self._stream_answer_text.strip()) > 0:
recovered_reasoning = self._merge_text_continuation(self._stream_answer_text, thinking_text)
if len(recovered_reasoning.strip()) > 0 and len(answer_text.strip()) == 0:
thinking_text = recovered_reasoning
answer_text = ""
reclaimed_answer_as_reasoning = True
thinking_text = self._merge_text_continuation(self._stream_reasoning_text, thinking_text)
answer_text = "" if reclaimed_answer_as_reasoning else self._merge_text_continuation(self._stream_answer_text, answer_text)
if not is_final and len(thinking_text) < len(self._stream_reasoning_text):
thinking_text = self._stream_reasoning_text
if not is_final and len(answer_text) < len(self._stream_answer_text):
answer_text = self._stream_answer_text
if reclaimed_answer_as_reasoning and len(self._stream_answer_text) > 0:
self._stream_answer_text = ""
self._emit_chat_event(assistant_chat.clear_assistant_content(self.session, turn_id))
if thinking_text != self._stream_reasoning_text and len(thinking_text) > 0:
self._stream_reasoning_block_id, reasoning_event = assistant_chat.upsert_reasoning_block(self.session, turn_id, self._stream_reasoning_block_id, thinking_text)
self._stream_reasoning_text = thinking_text
self._emit_chat_event(reasoning_event)
if answer_text != self._stream_answer_text and len(answer_text) > 0:
self._stream_answer_text = answer_text
self._emit_chat_event(assistant_chat.set_assistant_content(self.session, turn_id, self._stream_answer_text))
self._emit_stats()
def _handle_tool_progress(self, status: str | None = None, status_text: str | None = None, result: dict[str, Any] | None = None) -> None:
if self._active_tool_context is None:
return
message_id, tool_id = self._active_tool_context
self._emit_chat_event(assistant_chat.update_tool_call(self.session, message_id, tool_id, status=status, status_text=status_text, result=result))
def _acquire_runtime(self) -> Qwen35AssistantRuntime:
acquired_here = False
if not self._gpu_acquired:
self.runtime_hooks.clear_gpu_resident()
self.session.release_vram_callback = None
self.runtime_hooks.acquire_gpu()
self._gpu_acquired = True
acquired_here = True
try:
model, _tokenizer = self.runtime_hooks.ensure_loaded()
model._prompt_enhancer_min_model_len_hint = self._get_context_window_tokens()
if self.runtime is None or self.runtime.model is not model:
self.runtime = Qwen35AssistantRuntime(model, debug_enabled=self.debug_enabled)
return self.runtime
except Exception:
if acquired_here:
self._gpu_acquired = False
self.runtime_hooks.release_gpu()
raise
def _ensure_vision_loaded(self) -> tuple[Any, Any]:
ensure_vision_loaded = self.runtime_hooks.ensure_vision_loaded
if not callable(ensure_vision_loaded):
raise RuntimeError("Deepy vision runtime is not available.")
caption_model, caption_processor = ensure_vision_loaded()
if caption_model is None or caption_processor is None:
raise RuntimeError("Deepy vision runtime is not available.")
return caption_model, caption_processor
def _run_visual_query(self, media_record: dict[str, Any], question: str, frame_no: int | None = None) -> dict[str, Any]:
if not self._gpu_acquired:
self.runtime_hooks.clear_gpu_resident()
self.session.release_vram_callback = None
self.runtime_hooks.acquire_gpu()
self._gpu_acquired = True
media_path = str(media_record.get("path", "")).strip()
if len(media_path) == 0 or not os.path.isfile(media_path):
raise FileNotFoundError(f"Media file not found: {media_path}")
caption_model, caption_processor = self._ensure_vision_loaded()
media_type = str(media_record.get("media_type", "")).strip().lower()
if media_type == "video":
image = get_video_frame(media_path, 0 if frame_no is None else int(frame_no), return_last_if_missing=True, return_PIL=True).convert("RGB")
else:
with Image.open(media_path) as image_handle:
image = image_handle.convert("RGB")
prompt_token_ids, prompt_embeds, prompt_position_ids, position_offset = deepy_vision.build_image_question_prompt(
caption_model,
caption_processor,
image,
question,
)
if self.debug_enabled:
prompt_embeds_shape = None if prompt_embeds is None else tuple(int(x) for x in prompt_embeds.shape)
prompt_position_shape = None if prompt_position_ids is None else tuple(int(x) for x in prompt_position_ids.shape)
prompt_embeds_dtype = None if prompt_embeds is None else str(prompt_embeds.dtype).replace("torch.", "")
prompt_position_dtype = None if prompt_position_ids is None else str(prompt_position_ids.dtype).replace("torch.", "")
self._log(
"Inspect visual query "
f"media_id={media_record.get('media_id', '')} media_type={media_type} image_size={image.size} "
f"question={question!r} prompt_tokens={len(prompt_token_ids)} "
f"prompt_embeds_shape={prompt_embeds_shape} prompt_embeds_dtype={prompt_embeds_dtype} "
f"prompt_position_ids_shape={prompt_position_shape} prompt_position_ids_dtype={prompt_position_dtype} "
f"position_offset={int(position_offset or 0)}"
)
runtime = self._acquire_runtime()
answer = runtime.generate_embedded_answer(
prompt_token_ids,
prompt_embeds,
prompt_position_ids,
position_offset,
max_new_tokens=192,
seed=0,
do_sample=False,
temperature=None,
top_p=None,
top_k=None,
)
return {
"status": "done",
"media_id": media_record.get("media_id", ""),
"media_type": media_type,
"label": media_record.get("label", ""),
"frame_no": None if media_type != "video" else (0 if frame_no is None else int(frame_no)),
"question": str(question or "").strip(),
"answer": answer,
"error": "",
}
def _force_release_vram(self) -> None:
self.runtime_hooks.clear_gpu_resident()
discard_runtime_snapshot = bool(self.session.discard_runtime_snapshot_on_release)
try:
if discard_runtime_snapshot:
self.session.runtime_snapshot = None
if len(self.session.rendered_token_ids) > 0:
self.session.pending_replay_reason = "Deepy RAM unload discarded the cached runtime snapshot"
elif self.runtime is not None and self.session.runtime_snapshot is None and len(self.session.rendered_token_ids) > 0:
self.session.runtime_snapshot = self.runtime.snapshot_context()
except Exception as exc:
self._log(f"Resident snapshot before VRAM release failed: {exc}")
try:
self.runtime_hooks.unload_runtime()
finally:
self.runtime_hooks.unload_weights()
self.runtime = None
self.session.release_vram_callback = None
self.session.discard_runtime_snapshot_on_release = False
def _pause_runtime(self, pause_reason: str = "idle") -> None:
keep_loaded = self.vram_mode in (DEEPY_VRAM_MODE_ALWAYS_LOADED, DEEPY_VRAM_MODE_UNLOAD_ON_REQUEST)
if pause_reason == "vision":
keep_loaded = False
if pause_reason == "tool" and self.vram_mode != DEEPY_VRAM_MODE_ALWAYS_LOADED:
keep_loaded = False
allow_force_release = keep_loaded and self.vram_mode == DEEPY_VRAM_MODE_UNLOAD_ON_REQUEST and pause_reason != "tool"
release_callback = self._force_release_vram if keep_loaded else None
if keep_loaded:
self.session.release_vram_callback = release_callback
else:
self.session.release_vram_callback = None
self.session.reset_to_base_callback = self._reset_to_preserved_base if self._can_preserve_reset_base() and self.session.reset_base_snapshot is not None else None
if not self._gpu_acquired:
if self.session.drop_state_requested:
if callable(self.session.release_vram_callback):
self.session.release_vram_callback()
if not self._reset_to_preserved_base():
clear_assistant_session(self.session)
self.session.drop_state_requested = False
return
try:
if self.runtime is not None and not self.session.drop_state_requested and not self._skip_pause_snapshot:
self.session.runtime_snapshot = self.runtime.snapshot_context()
else:
self.session.runtime_snapshot = None
finally:
try:
if not keep_loaded:
self.runtime_hooks.unload_runtime()
finally:
try:
if not keep_loaded:
self.runtime_hooks.unload_weights()
self.runtime = None
finally:
self.runtime_hooks.release_gpu(
keep_resident=allow_force_release,
release_vram_callback=release_callback,
force_release_on_acquire=allow_force_release,
)
self._gpu_acquired = False
self._skip_pause_snapshot = False
if self.session.drop_state_requested:
if keep_loaded and callable(self.session.release_vram_callback):
self.session.release_vram_callback()
if not self._reset_to_preserved_base():
clear_assistant_session(self.session)
self.session.drop_state_requested = False
def _render_messages(self, add_generation_prompt: bool) -> list[int]:
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for prompt rendering.")
messages = [{"role": "system", "content": self._build_system_prompt(log_injections=True)}]
for message in self.session.messages:
role = str(message.get("role", "")).strip().lower()
if role == "assistant":
model_message = {"role": "assistant"}
model_content = message.get("model_content", None)
if isinstance(model_content, str) and len(model_content) > 0:
model_message["content"] = model_content
elif "content" in message:
model_message["content"] = message["content"]
if "tool_calls" in message:
model_message["tool_calls"] = message["tool_calls"]
messages.append(model_message)
continue
model_message = {"role": role}
model_message["content"] = self._message_render_content(message)
messages.append(model_message)
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
return render_assistant_messages(
self.runtime.tokenizer,
messages,
self.tool_box.get_tool_schemas(),
add_generation_prompt=add_generation_prompt,
thinking_enabled=thinking_enabled,
)
def _render_system_prompt_tokens(self, add_generation_prompt: bool) -> list[int]:
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for prompt rendering.")
if (
self._can_preserve_reset_base()
and self.session.reset_base_snapshot is not None
and len(self.session.reset_base_token_ids or []) > 0
and str(self.session.reset_base_signature or "") == self._current_reset_base_signature()
and int(self.session.reset_base_context_window_tokens or 0) == self._get_context_window_tokens()
):
return [int(token_id) for token_id in list(self.session.reset_base_token_ids or [])]
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
probe_user_content = next(
(self._message_render_content(message).strip() for message in self.session.messages if str(message.get("role", "")).strip().lower() == "user" and len(self._message_render_content(message).strip()) > 0),
"user",
)
suffix_tokens = render_text_user_turn_suffix(self.runtime.tokenizer, probe_user_content, thinking_enabled=thinking_enabled)
probe_messages = [
{"role": "system", "content": self._build_system_prompt(log_injections=True)},
{"role": "user", "content": probe_user_content},
]
for generation_prompt in (add_generation_prompt, not add_generation_prompt):
full_tokens = render_assistant_messages(
self.runtime.tokenizer,
probe_messages,
self.tool_box.get_tool_schemas(),
add_generation_prompt=generation_prompt,
thinking_enabled=thinking_enabled,
)
if len(suffix_tokens) > 0 and len(full_tokens) > len(suffix_tokens) and full_tokens[-len(suffix_tokens):] == suffix_tokens:
return full_tokens[:-len(suffix_tokens)]
raise RuntimeError("Assistant base prompt rendering could not isolate the system/tools prefix.")
def _can_extend_from_preserved_base(self, target_tokens: list[int]) -> bool:
base_tokens = [int(token_id) for token_id in list(self.session.reset_base_token_ids or [])]
return (
self.runtime is not None
and self._can_preserve_reset_base()
and len(base_tokens) > 0
and len(target_tokens) >= len(base_tokens)
and target_tokens[: len(base_tokens)] == base_tokens
and str(self.session.reset_base_signature or "") == self._current_reset_base_signature()
and int(self.session.reset_base_context_window_tokens or 0) == self._get_context_window_tokens()
)
def _extend_context_from_preserved_base(self, target_tokens: list[int]) -> str | None:
if not self._can_extend_from_preserved_base(target_tokens):
return None
base_tokens = [int(token_id) for token_id in list(self.session.reset_base_token_ids or [])]
if self.session.reset_base_snapshot is not None:
self._run_prefill_call(
len(base_tokens),
lambda: self.runtime.restore_or_replay(self.session.reset_base_snapshot, base_tokens),
record_if=lambda result: isinstance(result, tuple) and len(result) > 0 and result[0] == "prefilled",
)
else:
self._run_prefill_call(len(base_tokens), lambda: self.runtime.prime_context(base_tokens))
return self._run_prefill_call(
len(target_tokens),
lambda: self.runtime.extend_context(target_tokens),
record_if=lambda result: result in ("prefilled", "chunk_prefilled"),
)
def _restore_or_replay_session(self, context_label: str = "Session context") -> str:
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for restore.")
runtime = self.runtime
context_label = str(context_label or "Session context").strip() or "Session context"
fallback_tokens = self.session.rendered_token_ids
if len(fallback_tokens) == 0:
return "empty"
try:
live_seq = runtime._get_active_sequence()
except Exception:
live_seq = None
if live_seq is not None:
live_token_ids = [int(token_id) for token_id in live_seq.token_ids]
snapshot_seq = None if self.session.runtime_snapshot is None else self.session.runtime_snapshot.get("sequence", {})
snapshot_token_ids = [] if not isinstance(snapshot_seq, dict) else [int(token_id) for token_id in snapshot_seq.get("token_ids", []) or []]
if len(snapshot_token_ids) > 0 and snapshot_token_ids == live_token_ids:
self._log(f"{context_label} reused live runtime. [no prefill redone]")
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
return "reused"
if fallback_tokens[: len(live_token_ids)] == live_token_ids:
self._log(f"{context_label} reused live runtime. [no prefill redone]")
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
return "reused"
mode, runtime_replay_reason = self._run_prefill_call(
len(fallback_tokens),
lambda: runtime.restore_or_replay(self.session.runtime_snapshot, fallback_tokens),
record_if=lambda result: isinstance(result, tuple) and len(result) > 0 and result[0] == "prefilled",
)
pending_replay_reason = str(self.session.pending_replay_reason or "").strip()
runtime_replay_reason = str(runtime_replay_reason or "").strip()
if len(pending_replay_reason) > 0 and runtime_replay_reason == "no exact runtime snapshot was available":
replay_reason = pending_replay_reason
elif len(pending_replay_reason) > 0 and len(runtime_replay_reason) > 0:
replay_reason = f"{pending_replay_reason}; {runtime_replay_reason}"
else:
replay_reason = pending_replay_reason or runtime_replay_reason
if mode == "prefilled":
if len(replay_reason) > 0:
self._log(f"{context_label} prefilled. Reason: {replay_reason} [prefill redone]")
else:
self._log(f"{context_label} prefilled. [prefill redone]")
elif mode == "restored":
if len(replay_reason) > 0:
self._log(f"{context_label} restored. Reason: {replay_reason} [no prefill redone]")
else:
self._log(f"{context_label} restored. [no prefill redone]")
else:
self._log(f"{context_label} {mode}.")
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
return mode
def _discard_oldest_completed_turn(self) -> str:
messages = self.session.messages
user_indexes = [idx for idx, message in enumerate(messages) if str(message.get("role", "")).strip().lower() == "user"]
if len(user_indexes) > 1:
cut = user_indexes[1]
del messages[:cut]
return f"dropped oldest turn ({cut} messages)"
return ""
def _discard_oldest_current_turn_message(self) -> str:
messages = self.session.messages
user_indexes = [idx for idx, message in enumerate(messages) if str(message.get("role", "")).strip().lower() == "user"]
if len(user_indexes) == 0:
return ""
current_turn_start = user_indexes[-1]
if current_turn_start + 1 >= len(messages):
return ""
dropped_message = messages.pop(current_turn_start + 1)
dropped_role = str(dropped_message.get("role", "") or "message").strip().lower() or "message"
return f"dropped earlier current-turn {dropped_role} message"
def _fit_rendered_messages_to_window(self, *, add_generation_prompt: bool, reserve_tokens: int = 0) -> tuple[list[int], bool]:
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for context fitting.")
max_model_len = self._get_context_window_tokens()
hard_budget = max(1, max_model_len - max(0, int(reserve_tokens)))
base_token_count = len(self._render_system_prompt_tokens(add_generation_prompt))
target_tokens = self._render_messages(add_generation_prompt=add_generation_prompt)
trimmed_any = False
if len(target_tokens) <= hard_budget:
return target_tokens, False
if self._ensure_current_turn_video_runtime_update_for_compaction():
target_tokens = self._render_messages(add_generation_prompt=add_generation_prompt)
history_token_cap = max(0, int(math.ceil(max(0, len(target_tokens) - base_token_count) * _POST_TRIM_WINDOW_FRACTION)))
while max(0, len(target_tokens) - base_token_count) > history_token_cap:
trim_reason = self._discard_oldest_completed_turn()
if len(trim_reason) == 0:
break
trimmed_any = True
self._log(f"Trimming assistant context: {trim_reason}.")
target_tokens = self._render_messages(add_generation_prompt=add_generation_prompt)
while len(target_tokens) > hard_budget:
trim_reason = self._discard_oldest_current_turn_message()
if len(trim_reason) == 0:
raise RuntimeError(f"Current assistant turn alone exceeds the model window ({len(target_tokens)} > {hard_budget}) and will not be cut further.")
trimmed_any = True
self._log(f"Trimming assistant context: {trim_reason}.")
target_tokens = self._render_messages(add_generation_prompt=add_generation_prompt)
if len(target_tokens) > hard_budget:
raise RuntimeError(f"Assistant context exceeds the model window ({len(target_tokens)} > {hard_budget}) and cannot be trimmed further without cutting the current turn.")
if trimmed_any:
self._mark_history_trimmed_trace()
return target_tokens, trimmed_any
def _sync_generation_context(self) -> None:
runtime = self._acquire_runtime()
generation_reserve_tokens = self._segment_generation_reserve_tokens()
had_prior_rendered_context = len(self.session.rendered_token_ids) > 0 or self.session.runtime_snapshot is not None
if len(self.session.rendered_token_ids) == 0 and self._can_preserve_reset_base() and len(self.session.messages) > 0:
pending_messages = self._get_pending_render_messages()
if len(pending_messages) == 1 and str(pending_messages[0].get("role", "")).strip().lower() == "user":
mode = self._run_prefill_call(
len(self.session.reset_base_token_ids or []) if self.session.reset_base_snapshot is not None else len(self._render_reset_base_tokens()),
self._ensure_reset_base_context,
record_if=lambda result: result == "primed",
)
if mode == "primed":
self._log("Generation header context primed for Reset reuse. [prefill redone]" if had_prior_rendered_context else "Generation header context primed for Reset reuse. [prefill done]")
elif mode == "cached":
self._log("Generation header context prepared from the preserved header snapshot. [no prefill redone]")
if len(self.session.rendered_token_ids) > 0:
live_seq = None
try:
live_seq = runtime._get_active_sequence()
except Exception:
live_seq = None
live_token_ids = [] if live_seq is None else [int(token_id) for token_id in list(live_seq.token_ids or [])]
rendered_token_ids = [int(token_id) for token_id in list(self.session.rendered_token_ids or [])]
live_runtime_can_be_reused = len(live_token_ids) > 0 and rendered_token_ids[: len(live_token_ids)] == live_token_ids
if self.session.runtime_snapshot is None and not live_runtime_can_be_reused and self._sync_current_turn_context_from_turn_start_snapshot():
return
restore_mode = self._restore_or_replay_session()
if restore_mode in ("reused", "restored") and self._can_append_pending_tool_suffix():
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
suffix_tokens = render_tool_turn_suffix(runtime.tokenizer, self._pending_tool_render_contents(), thinking_enabled=thinking_enabled)
if len(suffix_tokens) > 0:
prefix_tokens = self._active_sequence_token_count()
prefix_tokens = len(self.session.rendered_token_ids) if prefix_tokens is None else prefix_tokens
if prefix_tokens + len(suffix_tokens) > max(1, self._get_context_window_tokens()):
self._log("Live tool suffix append skipped because history must be trimmed before continuing.")
else:
mode = self._run_prefill_call(len(suffix_tokens), lambda: runtime.append_suffix(suffix_tokens), record_if=lambda result: result in ("prefilled", "chunk_prefilled"))
self._record_live_context(
"Generation context extended from live runtime. [suffix append only]"
if mode == "extended"
else "Generation context chunk-prefilled from live runtime. [chunk prefill]"
if mode == "chunk_prefilled"
else "Generation context prefilled from live runtime. [prefill redone]"
if mode == "prefilled"
else f"Generation context {mode} from live runtime."
)
return
if restore_mode in ("reused", "restored") and self._can_append_pending_user_suffix():
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
suffix_tokens = render_text_user_turn_suffix(runtime.tokenizer, self._pending_user_render_content(), thinking_enabled=thinking_enabled)
if len(suffix_tokens) > 0:
prefix_tokens = self._active_sequence_token_count()
prefix_tokens = len(self.session.rendered_token_ids) if prefix_tokens is None else prefix_tokens
if prefix_tokens + len(suffix_tokens) > max(1, self._get_context_window_tokens() - generation_reserve_tokens):
self._log("Live user suffix append skipped because history must be trimmed before continuing.")
else:
mode = self._run_prefill_call(len(suffix_tokens), lambda: runtime.append_suffix(suffix_tokens), record_if=lambda result: result in ("prefilled", "chunk_prefilled"))
self._record_live_context(
"Generation context extended from live runtime. [suffix append only]"
if mode == "extended"
else "Generation context chunk-prefilled from live runtime. [chunk prefill]"
if mode == "chunk_prefilled"
else "Generation context prefilled from live runtime. [prefill redone]"
if mode == "prefilled"
else f"Generation context {mode} from live runtime."
)
return
target_tokens, trimmed_any = self._fit_rendered_messages_to_window(add_generation_prompt=True, reserve_tokens=generation_reserve_tokens)
if len(self.session.rendered_token_ids) > 0:
if not trimmed_any and self._sync_current_turn_context_from_turn_start_snapshot(target_tokens=target_tokens):
return
mode = self._extend_context_from_preserved_base(target_tokens) if trimmed_any else None
if mode is None:
mode = self._append_target_suffix_from_live_runtime(target_tokens)
if mode is None:
raise RuntimeError("Generation context could not be synchronized from the current-turn start snapshot.")
self._remember_render_state()
if mode == "prefilled":
self._log("Generation context prefilled. [prefill redone]")
elif mode == "chunk_prefilled":
self._log("Generation context compacted with preserved header reuse. [chunk prefill]" if trimmed_any else "Generation context chunk-prefilled. [chunk prefill]")
elif mode == "extended":
self._log("Generation context extended. [suffix append only]")
else:
self._log(f"Generation context {mode}.")
return
self._run_prefill_call(len(target_tokens), lambda: runtime.prime_context(target_tokens))
self._remember_render_state()
self._log("Generation context primed. [prefill redone]" if had_prior_rendered_context else "Generation context primed. [prefill done]")
def _canonicalize_context(self, sync_runtime: bool | str = True) -> str:
if self.runtime is None:
raise RuntimeError("Assistant runtime is not available for canonicalization.")
target_tokens, trimmed_any = self._fit_rendered_messages_to_window(add_generation_prompt=False)
if not sync_runtime or sync_runtime == "record_only":
self.session.rendered_token_ids = list(target_tokens)
self.session.runtime_snapshot = None
self.session.pending_replay_reason = "context canonicalization was recorded without syncing runtime"
self._remember_render_state()
self._skip_pause_snapshot = True
self._log("Canonical context recorded without runtime sync.")
return "recorded"
if sync_runtime == "record_preserve_live":
self.session.rendered_token_ids = list(target_tokens)
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
self._remember_render_state()
self._skip_pause_snapshot = False
self._log("Canonical context recorded while preserving live runtime.")
return "recorded"
current_seq = self.runtime._get_active_sequence()
if sync_runtime == "if_cheap":
if current_seq is None or len(current_seq.token_ids) == 0:
self.session.rendered_token_ids = list(target_tokens)
self.session.runtime_snapshot = None
self.session.pending_replay_reason = "no active runtime sequence was available during canonicalization"
self._remember_render_state()
self._skip_pause_snapshot = True
self._log("Canonical context recorded without runtime sync because no active sequence was available.")
return "recorded"
current_token_ids = [int(token_id) for token_id in current_seq.token_ids]
if target_tokens[: len(current_token_ids)] != current_token_ids:
self.session.rendered_token_ids = list(target_tokens)
self.session.runtime_snapshot = None
self.session.pending_replay_reason = _describe_prefix_mismatch(current_token_ids, target_tokens)
self._remember_render_state()
self._skip_pause_snapshot = True
self._log("Canonical context recorded without runtime sync because the live runtime prefix did not match.")
return "recorded"
self._skip_pause_snapshot = False
self.session.pending_replay_reason = ""
if current_seq is None or len(current_seq.token_ids) == 0:
mode = self._extend_context_from_preserved_base(target_tokens) if trimmed_any else None
if mode is None:
self.session.rendered_token_ids = list(target_tokens)
self.session.runtime_snapshot = None
self.session.pending_replay_reason = "no active runtime sequence was available during canonicalization"
self._remember_render_state()
self._skip_pause_snapshot = True
self._log("Canonical context recorded without runtime sync because no active sequence was available.")
return "recorded"
else:
self._log(f"Canonical context {mode}.")
else:
mode = self._extend_context_from_preserved_base(target_tokens) if trimmed_any else None
if mode is None:
mode = self._append_target_suffix_from_live_runtime(target_tokens)
if mode is None:
self.session.rendered_token_ids = list(target_tokens)
self.session.runtime_snapshot = None
self.session.pending_replay_reason = _describe_prefix_mismatch(current_token_ids, target_tokens)
self._remember_render_state()
self._skip_pause_snapshot = True
self._log("Canonical context recorded without runtime sync because the live runtime prefix did not match.")
return "recorded"
self._log(f"Canonical context {mode}.")
self.session.rendered_token_ids = list(target_tokens)
self._remember_render_state()
return mode
def _build_tool_error(self, tool_name: str, arguments: dict[str, Any], error_text: str) -> dict[str, Any]:
return {
"status": "error",
"tool": tool_name,
"arguments": dict(arguments or {}),
"error": str(error_text),
}
def _clear_segment_continuation_state(self) -> None:
self._continued_segment_raw_text = ""
self._continued_segment_token_ids.clear()
def _execute_tool(self, tool_call: dict[str, Any]) -> dict[str, Any]:
tool_name = str(tool_call.get("name", "")).strip()
tool_label = self.tool_box.get_tool_display_name(tool_name)
tool_transcript_label = self.tool_box.get_tool_transcript_label(tool_name)
tool_template = self.tool_box.get_tool_template_filename(tool_name)
tool_policy = self.tool_box.get_tool_policy(tool_name)
arguments = dict(tool_call.get("arguments", {}) or {})
self._log(f"Tool call: {tool_name} {arguments}")
message_id = self._ensure_active_turn()
tool_id, tool_event = assistant_chat.add_tool_call(self.session, message_id, tool_name, arguments, tool_label=tool_transcript_label)
self._emit_chat_event(tool_event)
validation_error = self.tool_box.validate_tool_call(tool_name, arguments)
if len(validation_error) > 0:
result = self._build_tool_error(tool_name, arguments, validation_error)
self._log(f"Tool validation error: {validation_error}")
self._set_status(f"{tool_label} failed: {validation_error}", kind="error")
self._emit_chat_event(assistant_chat.complete_tool_call(self.session, message_id, tool_id, result))
self._emit_chat_event(assistant_chat.build_sync_event(self.session, status=self._current_status_payload, stats=self._chat_stats_payload()))
return result
if len(tool_template) > 0:
self._set_status(f"Using {tool_label} ({Path(tool_template).stem})...", kind="tool")
else:
self._set_status(f"Using {tool_label}...", kind="tool")
if tool_policy.get("pause_runtime", True):
self._pause_runtime(pause_reason=tool_policy.get("pause_reason", "tool"))
try:
self._active_tool_context = (message_id, tool_id)
result = self.tool_box.call(tool_name, arguments)
except Exception as exc:
result = self._build_tool_error(tool_name, arguments, str(exc))
self._log(f"Tool error: {exc}")
finally:
self._active_tool_context = None
self._log(f"Tool result: {_json_dumps(result)}")
self._emit_chat_event(assistant_chat.complete_tool_call(self.session, message_id, tool_id, result))
# Queue-backed tools can finish and immediately trigger another model pass; emit a full
# transcript sync here so the UI materializes the final tool state and attachment first.
self._emit_chat_event(assistant_chat.build_sync_event(self.session, status=self._current_status_payload, stats=self._chat_stats_payload()))
return result
@staticmethod
def _merge_text_continuation(previous: str, current: str) -> str:
previous_text = str(previous or "")
current_text = str(current or "")
if len(previous_text) == 0:
return current_text
if len(current_text) == 0 or previous_text == current_text or previous_text.endswith(current_text):
return previous_text
if current_text.startswith(previous_text):
return current_text
max_overlap = min(len(previous_text), len(current_text))
for overlap in range(max_overlap, 0, -1):
if previous_text[-overlap:] == current_text[:overlap]:
return previous_text + current_text[overlap:]
return previous_text + current_text
@staticmethod
def _merge_token_continuation(previous: list[int] | tuple[int, ...], current: list[int] | tuple[int, ...]) -> list[int]:
previous_tokens = [int(token_id) for token_id in list(previous or [])]
current_tokens = [int(token_id) for token_id in list(current or [])]
if len(previous_tokens) == 0:
return current_tokens
if len(current_tokens) == 0 or previous_tokens == current_tokens or previous_tokens[-len(current_tokens) :] == current_tokens:
return previous_tokens
if len(current_tokens) >= len(previous_tokens) and current_tokens[: len(previous_tokens)] == previous_tokens:
return current_tokens
max_overlap = min(len(previous_tokens), len(current_tokens))
for overlap in range(max_overlap, 0, -1):
if previous_tokens[-overlap:] == current_tokens[:overlap]:
return previous_tokens + current_tokens[overlap:]
return previous_tokens + current_tokens
def _mark_history_trimmed_trace(self) -> None:
checkpoint = self.session.current_turn
if not isinstance(checkpoint, dict) or bool(checkpoint.get("history_trimmed", False)):
return
checkpoint["history_trimmed"] = True
self._log("Earlier chat history was trimmed to fit Deepy's context window.")
note_event = assistant_chat.add_assistant_note(self.session, "Earlier chat history was trimmed to fit Deepy's context window.", badge="History trimmed", author="System")[1]
self._emit_chat_event(note_event)
message_id = str(checkpoint.get("user_message_id", "") or "").strip()
if len(message_id) > 0:
self._emit_chat_event(assistant_chat.set_message_badge(self.session, message_id, "History trimmed"))
self._emit_chat_event(assistant_chat.build_sync_event(self.session, status=self._current_status_payload, stats=self._chat_stats_payload()))
def _restore_turn_start_snapshot(self, *, preserve_current_turn_messages: bool = False) -> bool:
checkpoint = self.session.current_turn
if not isinstance(checkpoint, dict):
return False
try:
target_messages_len = int(checkpoint.get("messages_len", len(self.session.messages)) or 0)
except Exception:
target_messages_len = len(self.session.messages)
target_messages_len = max(0, min(target_messages_len, len(self.session.messages)))
if not preserve_current_turn_messages:
keep_len = target_messages_len
if len(self.session.messages) > target_messages_len and str(self.session.messages[target_messages_len].get("role", "")).strip().lower() == "user":
keep_len = target_messages_len + 1
if len(self.session.messages) > keep_len:
del self.session.messages[keep_len:]
restored_rendered_token_ids = [int(token_id) for token_id in checkpoint.get("rendered_token_ids", []) or []]
restored_runtime_snapshot = copy.deepcopy(checkpoint.get("runtime_snapshot", None))
try:
restored_rendered_messages_len = int(checkpoint.get("rendered_messages_len", 0) or 0)
except Exception:
restored_rendered_messages_len = 0
restored_system_prompt_signature = str(checkpoint.get("rendered_system_prompt_signature", "") or "")
try:
restored_context_window_tokens = int(checkpoint.get("rendered_context_window_tokens", 0) or 0)
except Exception:
restored_context_window_tokens = 0
used_preserved_base = False
if len(restored_rendered_token_ids) == 0 and restored_runtime_snapshot is None:
base_context_window_tokens = self._get_context_window_tokens()
if (
self._can_preserve_reset_base()
and self.session.reset_base_snapshot is not None
and len(self.session.reset_base_token_ids or []) > 0
and str(self.session.reset_base_signature or "") == self._current_reset_base_signature()
and int(self.session.reset_base_context_window_tokens or 0) == base_context_window_tokens
):
restored_rendered_token_ids = [int(token_id) for token_id in list(self.session.reset_base_token_ids or [])]
restored_runtime_snapshot = copy.deepcopy(self.session.reset_base_snapshot)
restored_rendered_messages_len = 0
restored_system_prompt_signature = self._current_system_prompt_signature()
restored_context_window_tokens = base_context_window_tokens
used_preserved_base = True
self.session.rendered_token_ids = restored_rendered_token_ids
self.session.runtime_snapshot = restored_runtime_snapshot
self.session.rendered_messages_len = restored_rendered_messages_len
self.session.rendered_system_prompt_signature = restored_system_prompt_signature
self.session.rendered_context_window_tokens = restored_context_window_tokens
self.session.pending_replay_reason = ""
self._skip_pause_snapshot = False
self._log("Restored the clean turn-start snapshot from the preserved header snapshot." if used_preserved_base else "Restored the clean turn-start snapshot.")
return len(self.session.rendered_token_ids) > 0
def _restore_turn_start_snapshot_for_retry(self) -> bool:
return self._restore_turn_start_snapshot(preserve_current_turn_messages=False)
def _sync_trimmed_answer_from_turn_start_snapshot(self) -> bool:
if not self._restore_turn_start_snapshot(preserve_current_turn_messages=True):
return False
if self.runtime is None:
return False
restore_mode = self._restore_or_replay_session("Interrupted-turn start context")
target_tokens, trimmed_any = self._fit_rendered_messages_to_window(add_generation_prompt=False)
mode = self._extend_context_from_preserved_base(target_tokens) if trimmed_any else None
if mode is None:
mode = self._append_target_suffix_from_live_runtime(target_tokens)
if mode is None:
raise RuntimeError("Interrupted-turn trimmed answer context could not be synchronized from the turn-start snapshot.")
self.session.rendered_token_ids = list(target_tokens)
self._remember_render_state()
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
self._skip_pause_snapshot = False
self._log(
"Assistant context synchronized after trimming an incomplete trailing answer fragment. "
f"(restore={restore_mode}, sync={mode})"
)
self._emit_stats(force=True)
return True
def _render_simple_interrupted_turn_suffix(self, base_messages_len: int) -> list[int] | None:
if self.runtime is None:
return None
current_turn_messages = list(self.session.messages[base_messages_len:] or [])
if len(current_turn_messages) != 2:
return None
user_message, assistant_message = current_turn_messages
if str(user_message.get("role", "")).strip().lower() != "user":
return None
if str(assistant_message.get("role", "")).strip().lower() != "assistant":
return None
if assistant_message.get("tool_calls"):
return None
if str(assistant_message.get("model_content", "") or "").strip():
return None
user_content = self._message_render_content(user_message).strip()
assistant_content = self._message_render_content(assistant_message).strip()
if len(user_content) == 0 or len(assistant_content) == 0:
return None
suffix = f"<|im_start|>user\n{user_content}<|im_end|>\n<|im_start|>assistant\n{assistant_content}<|im_end|>\n"
token_ids = self.runtime.tokenizer.encode(suffix, add_special_tokens=False)
return [int(token_id) for token_id in list(token_ids or [])]
def _append_target_suffix_from_live_runtime(self, target_tokens: list[int]) -> str | None:
if self.runtime is None:
return None
current_seq = self.runtime._get_active_sequence()
current_token_ids = [] if current_seq is None else [int(token_id) for token_id in list(current_seq.token_ids or [])]
if len(current_token_ids) == 0 or target_tokens[: len(current_token_ids)] != current_token_ids:
return None
suffix_tokens = [int(token_id) for token_id in list(target_tokens[len(current_token_ids) :] or [])]
if len(suffix_tokens) == 0:
return "extended"
return self._run_prefill_call(
len(suffix_tokens),
lambda: self.runtime.append_suffix(suffix_tokens),
record_if=lambda result: result in ("prefilled", "chunk_prefilled"),
)
@staticmethod
def _find_token_subsequence(haystack: list[int], needle: list[int]) -> int:
if len(needle) == 0:
return 0
limit = len(haystack) - len(needle)
for start_idx in range(max(0, limit) + 1):
if haystack[start_idx : start_idx + len(needle)] == needle:
return start_idx
return -1
def _render_messages_for_delta(self, messages: list[dict[str, Any]]) -> list[dict[str, Any]]:
return [
{"role": "system", "content": self._build_system_prompt(log_injections=True)},
*[
{"role": str(message.get("role", "")).strip().lower(), "content": self._message_render_content(message)}
if str(message.get("role", "")).strip().lower() != "assistant"
else {
**({"tool_calls": message["tool_calls"]} if "tool_calls" in message else {}),
"role": "assistant",
"content": str(message.get("model_content", "") or message.get("content", "") or ""),
}
for message in list(messages or [])
],
]
def _render_turn_delta_suffix(self, base_messages_len: int, *, add_generation_prompt: bool) -> list[int] | None:
if self.runtime is None:
return None
target_messages = list(self.session.messages or [])
if base_messages_len < 0 or base_messages_len > len(target_messages):
return None
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
tools = self.tool_box.get_tool_schemas()
if base_messages_len == 0:
base_tokens = [int(token_id) for token_id in list(self.session.rendered_token_ids or self.session.reset_base_token_ids or [])]
else:
base_tokens = render_assistant_messages(
self.runtime.tokenizer,
self._render_messages_for_delta(target_messages[:base_messages_len]),
tools,
add_generation_prompt=False,
thinking_enabled=thinking_enabled,
)
target_tokens = render_assistant_messages(
self.runtime.tokenizer,
self._render_messages_for_delta(target_messages),
tools,
add_generation_prompt=bool(add_generation_prompt),
thinking_enabled=thinking_enabled,
)
if target_tokens[: len(base_tokens)] != base_tokens:
return None
return [int(token_id) for token_id in target_tokens[len(base_tokens) :]]
def _render_current_turn_slice_suffix(self, messages: list[dict[str, Any]], *, add_generation_prompt: bool) -> list[int] | None:
if self.runtime is None:
return None
current_turn_messages = list(messages or [])
if len(current_turn_messages) == 0:
return None
if str(current_turn_messages[0].get("role", "")).strip().lower() != "user":
return None
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
rendered_tokens = render_assistant_messages(
self.runtime.tokenizer,
self._render_messages_for_delta(current_turn_messages),
self.tool_box.get_tool_schemas(),
add_generation_prompt=bool(add_generation_prompt),
thinking_enabled=thinking_enabled,
)
user_prefix_tokens = self.runtime.tokenizer.encode("<|im_start|>user\n", add_special_tokens=False)
user_prefix_tokens = [int(token_id) for token_id in list(user_prefix_tokens or [])]
start_idx = self._find_token_subsequence(rendered_tokens, user_prefix_tokens)
if start_idx < 0:
return None
return [int(token_id) for token_id in rendered_tokens[start_idx:]]
def _sync_context_from_turn_start_snapshot(self, *, context_label: str, log_label: str, add_generation_prompt: bool, target_tokens: list[int] | None = None) -> bool:
checkpoint = self.session.current_turn
if not isinstance(checkpoint, dict):
return False
base_messages_len = int(checkpoint.get("messages_len", 0) or 0)
if len(self.session.messages) <= base_messages_len:
return False
if not self._restore_turn_start_snapshot(preserve_current_turn_messages=True):
return False
if self.runtime is None:
self._acquire_runtime()
if self.runtime is None:
return False
restore_mode = self._restore_or_replay_session(context_label)
suffix_tokens = None
if self._can_append_pending_tool_suffix():
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
suffix_tokens = render_tool_turn_suffix(self.runtime.tokenizer, self._pending_tool_render_contents(), thinking_enabled=thinking_enabled)
elif self._can_append_pending_user_suffix():
thinking_enabled = qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
suffix_tokens = render_text_user_turn_suffix(self.runtime.tokenizer, self._pending_user_render_content(), thinking_enabled=thinking_enabled)
if suffix_tokens is None:
suffix_tokens = self._render_turn_delta_suffix(base_messages_len, add_generation_prompt=add_generation_prompt)
if suffix_tokens is None:
suffix_tokens = self._render_simple_interrupted_turn_suffix(base_messages_len)
if suffix_tokens is None:
target_tokens = self._render_messages(add_generation_prompt=add_generation_prompt) if target_tokens is None else [int(token_id) for token_id in list(target_tokens or [])]
mode = self._append_target_suffix_from_live_runtime(target_tokens)
if mode is None:
return False
else:
mode = "extended"
if len(suffix_tokens) > 0:
mode = self._run_prefill_call(len(suffix_tokens), lambda: self.runtime.append_suffix(suffix_tokens), record_if=lambda result: result in ("prefilled", "chunk_prefilled"))
self._record_live_context(f"{log_label} (restore={restore_mode}, sync={mode})")
return True
def _sync_current_turn_context_from_turn_start_snapshot(self, target_tokens: list[int] | None = None) -> bool:
return self._sync_context_from_turn_start_snapshot(
context_label="Current-turn start context",
log_label="Generation context synchronized from current-turn start snapshot.",
add_generation_prompt=True,
target_tokens=target_tokens,
)
def _sync_interrupted_rollback_context_from_turn_start_snapshot(self) -> bool:
checkpoint = self.session.current_turn
if not isinstance(checkpoint, dict):
return False
base_messages_len = int(checkpoint.get("messages_len", 0) or 0)
current_turn_messages = list(self.session.messages[base_messages_len:] or [])
if len(current_turn_messages) == 0:
return False
if not self._restore_turn_start_snapshot(preserve_current_turn_messages=True):
return False
if self.runtime is None:
self._acquire_runtime()
if self.runtime is None:
return False
restore_mode = self._restore_or_replay_session("Interrupted-turn start context")
suffix_tokens = self._render_current_turn_slice_suffix(current_turn_messages, add_generation_prompt=False)
if suffix_tokens is None:
raise RuntimeError("Interrupted-turn slice suffix could not be rendered.")
mode = "extended"
if len(suffix_tokens) > 0:
mode = self._run_prefill_call(len(suffix_tokens), lambda: self.runtime.append_suffix(suffix_tokens), record_if=lambda result: result in ("prefilled", "chunk_prefilled"))
self._record_live_context(f"Interrupted-turn context synchronized before pause. (restore={restore_mode}, sync={mode})")
return True
def _recover_from_context_limit(self, raw_text: str, retry_no: int) -> bool:
if retry_no >= _CONTEXT_LIMIT_MAX_RETRIES:
return False
if self.runtime is None:
return False
current_seq = self.runtime._get_active_sequence()
if current_seq is None or len(current_seq.token_ids or []) == 0:
return False
current_segment_token_ids = [int(token_id) for token_id in list(current_seq.completion_token_ids or [])]
accumulated_completion_token_ids = self._merge_token_continuation(self._continued_segment_token_ids, current_segment_token_ids)
if len(accumulated_completion_token_ids) == 0:
return False
self._set_status("Compacting context...", kind="loading")
generation_reserve_tokens = self._segment_generation_reserve_tokens()
trimmed_generated_token_count = 0
try:
prompt_tokens, trimmed_any = self._fit_rendered_messages_to_window(
add_generation_prompt=True,
reserve_tokens=len(accumulated_completion_token_ids) + generation_reserve_tokens,
)
kept_completion_token_ids = list(accumulated_completion_token_ids)
except RuntimeError as exc:
prompt_tokens, trimmed_any = self._fit_rendered_messages_to_window(add_generation_prompt=True, reserve_tokens=0)
available_completion_tokens = max(0, self._get_context_window_tokens() - len(prompt_tokens) - generation_reserve_tokens)
if available_completion_tokens <= 0:
raise exc
if len(accumulated_completion_token_ids) <= available_completion_tokens:
kept_completion_token_ids = list(accumulated_completion_token_ids)
else:
trimmed_generated_token_count = len(accumulated_completion_token_ids) - available_completion_tokens
kept_completion_token_ids = accumulated_completion_token_ids[trimmed_generated_token_count:]
self._log(
"Trimming assistant continuation context: "
f"dropped {trimmed_generated_token_count} generated tokens from the current turn."
)
target_tokens = [*prompt_tokens, *kept_completion_token_ids]
mode = self._extend_context_from_preserved_base(target_tokens)
if mode is None:
mode = self._run_prefill_call(
len(target_tokens),
lambda: self.runtime.prime_context(target_tokens),
record_if=True,
)
self.session.rendered_token_ids = [int(token_id) for token_id in target_tokens]
self.session.runtime_snapshot = None
self.session.pending_replay_reason = ""
self._skip_pause_snapshot = False
self._remember_render_state()
self._continued_segment_raw_text = str(raw_text or "")
self._continued_segment_token_ids = list(kept_completion_token_ids)
self._resume_stream_after_context_trim = True
self._suppress_intermediate_stream_after_context_trim = True
self._skip_generation_context_sync_once = True
self._emit_stats(force=True)
if trimmed_any:
self._log(
"Context limit reached; compacted live continuation and continuing the current turn. "
f"[{mode}{', trimmed_generated=' + str(trimmed_generated_token_count) if trimmed_generated_token_count > 0 else ''}]"
)
else:
self._log(
"Context limit reached; preserved the live continuation and continuing the current turn. "
f"[{mode}{', trimmed_generated=' + str(trimmed_generated_token_count) if trimmed_generated_token_count > 0 else ''}]"
)
return True
def _append_assistant_message(self, raw_text: str, tool_calls: list[dict[str, Any]] | None = None, merge_with_last: bool = False) -> list[dict[str, Any]]:
cleaned_text = strip_tool_blocks(raw_text)
if tool_calls:
cleaned_text = strip_inline_tool_call_text(cleaned_text)
message = {"role": "assistant"}
stripped_text = strip_trailing_stop_markup(cleaned_text)
stripped_raw_text = strip_trailing_stop_markup(raw_text)
thinking_text, answer_text = qwen35_text._split_generated_text(stripped_text)
thinking_enabled = self.runtime is not None and qwen35_text._prompt_enhancer_thinking_enabled(self.runtime.model, thinking_enabled=self.thinking_enabled)
if thinking_enabled and ("" in stripped_text.lower() or "" in stripped_text.lower() or len(thinking_text) > 0):
content = "\n"
if len(thinking_text) > 0:
content += f"{thinking_text}\n"
content += ""
if len(answer_text) > 0:
content += f"\n\n{answer_text}"
else:
content = answer_text if len(answer_text) > 0 else stripped_text
if len(content) > 0:
message["content"] = content
if len(stripped_raw_text) > 0 and not tool_calls:
message["model_content"] = stripped_raw_text
if merge_with_last and not tool_calls and len(self.session.messages) > 0 and str(self.session.messages[-1].get("role", "")).strip().lower() == "assistant":
last_message = self.session.messages[-1]
if "content" in message:
last_message["content"] = self._merge_text_continuation(str(last_message.get("content", "") or ""), str(message.get("content", "") or ""))
if "model_content" in message:
last_message["model_content"] = self._merge_text_continuation(str(last_message.get("model_content", "") or ""), str(message.get("model_content", "") or ""))
return last_message.get("tool_calls", []) or []
if tool_calls:
message["tool_calls"] = [
{
"id": f"call_{int(time.time() * 1000)}_{idx}",
"type": "function",
"function": {
"name": tool_call["name"],
"arguments": dict(tool_call["arguments"]),
},
}
for idx, tool_call in enumerate(tool_calls)
]
self.session.messages.append(message)
return message.get("tool_calls", [])
def _append_tool_message(self, payload: dict[str, Any], tool_call_id: str | None = None) -> None:
message = {"role": "tool", "content": _json_dumps(payload)}
if tool_call_id:
message["tool_call_id"] = str(tool_call_id)
self.session.messages.append(message)
def run_turn(self, user_text: str, max_new_tokens: int = 1024, seed: int | None = 0, do_sample: bool = True, temperature: float | None = 0.6, top_p: float | None = 0.9, top_k: int | None = None) -> None:
user_text = str(user_text or "").strip()
if len(user_text) == 0:
self._send_chat("Please enter a request.")
return
self._current_requested_max_new_tokens = max(1, int(max_new_tokens or 1024))
if self.debug_enabled:
print("[User]")
print(user_text)
self._active_turn_id = ""
if isinstance(self.session.current_turn, dict):
visual_media_record, _visual_error = self.tool_box._get_selected_media_record_from_source("video", "all")
audio_media_record, _audio_error = self.tool_box._get_selected_media_record_from_source("audio", "audio")
self.session.current_turn["selected_visual_media_snapshot"] = None if visual_media_record is None else copy.deepcopy(visual_media_record)
self.session.current_turn["selected_audio_media_snapshot"] = None if audio_media_record is None else copy.deepcopy(audio_media_record)
self._refresh_runtime_status_note()
self.session.messages.append(self._build_pending_user_message(user_text))
checkpoint_assistant_turn(self.session)
recent_thoughts: list[str] = []
model_passes = 0
context_limit_retries = 0
incomplete_stop_retries = 0
current_seed = seed
final_user_text = ""
turn_completed = False
self._skip_generation_context_sync_once = False
self._clear_segment_continuation_state()
try:
while True:
if self.session.interrupt_requested:
break
show_loading_status = model_passes == 0 and (
self.session.force_loading_status_once
or (len(self.session.rendered_token_ids) == 0 and self.session.runtime_snapshot is None)
)
self._set_status("Loading Deepy..." if show_loading_status else "Thinking...", kind="loading" if show_loading_status else "thinking")
if self._skip_generation_context_sync_once:
self._skip_generation_context_sync_once = False
else:
self._sync_generation_context()
self._emit_stats(force=True)
if self.session.interrupt_requested:
break
if show_loading_status:
self.session.force_loading_status_once = False
self._set_status("Thinking...", kind="thinking")
self._start_stream_pass()
result = None
try:
result = self.runtime.generate_segment(
max_new_tokens=max_new_tokens,
seed=current_seed,
do_sample=do_sample,
temperature=temperature,
top_p=top_p,
top_k=top_k,
thinking_enabled=self.thinking_enabled,
stop_requested=lambda: bool(self.session.interrupt_requested),
stream_callback=self._stream_generation_update,
stream_interval_seconds=_ASSISTANT_STREAM_INTERVAL_SECONDS,
)
finally:
self._finish_stream_pass(None if result is None else result.token_count)
model_passes += 1
if self.session.interrupt_requested or result.stop_reason == "interrupted":
break
segment_raw_text = result.raw_text
segment_thinking_text, _segment_answer_text = qwen35_text._split_generated_text(segment_raw_text)
raw_text = segment_raw_text
if len(self._continued_segment_raw_text) > 0:
raw_text = self._merge_text_continuation(self._continued_segment_raw_text, raw_text)
tool_calls = extract_tool_calls(raw_text)
if len(tool_calls) == 0:
tool_calls = self.tool_box.infer_tool_calls(raw_text)
trimmed_incomplete_stop_answer = False
retry_incomplete_stop_answer = False
if _ENABLE_INCOMPLETE_STOP_ANSWER_HEURISTICS and len(tool_calls) == 0 and result.stop_reason == "stop_token":
raw_text_without_stop = strip_trailing_stop_markup(raw_text)
thinking_preview, answer_preview = qwen35_text._split_generated_text(raw_text_without_stop)
trimmed_answer_preview = _trim_incomplete_answer_tail(answer_preview)
if trimmed_answer_preview != answer_preview:
if len(trimmed_answer_preview) == 0 and incomplete_stop_retries < 1:
retry_incomplete_stop_answer = True
elif len(trimmed_answer_preview) > 0:
trimmed_incomplete_stop_answer = True
raw_text = (
f"\n{thinking_preview}\n\n\n{trimmed_answer_preview}"
if len(str(thinking_preview or "").strip()) > 0
else trimmed_answer_preview
)
dropped_tail = ""
if answer_preview.startswith(trimmed_answer_preview):
dropped_tail = answer_preview[len(trimmed_answer_preview):].strip()
if len(dropped_tail) > 0:
preview = dropped_tail[:120] + ("..." if len(dropped_tail) > 120 else "")
self._log(f"Trimmed an incomplete trailing answer fragment after stop_token. Dropped tail preview: {preview!r}")
else:
self._log("Trimmed an incomplete trailing answer fragment after stop_token.")
if retry_incomplete_stop_answer:
self._clear_segment_continuation_state()
if self._restore_turn_start_snapshot_for_retry():
self._emit_chat_event(assistant_chat.clear_message_blocks(self.session, self._ensure_active_turn()))
incomplete_stop_retries += 1
current_seed = None if current_seed is None else int(current_seed) + incomplete_stop_retries
recent_thoughts.clear()
self._log("Detected an incomplete stop-token answer with no safe trimmed fallback; retrying the current turn once from the clean turn-start snapshot.")
continue
if self._canonicalize_context(sync_runtime="record_only") == "recorded":
self._emit_chat_event(assistant_chat.clear_message_blocks(self.session, self._ensure_active_turn()))
incomplete_stop_retries += 1
current_seed = None if current_seed is None else int(current_seed) + incomplete_stop_retries
recent_thoughts.clear()
self._log("Detected an incomplete stop-token answer with no safe trimmed fallback; retrying the current turn once after canonicalized replay fallback.")
continue
incomplete_stop_retries += 1
thinking_text, answer_text = self._split_for_display(raw_text)
if self.debug_enabled:
self._log(f"Model stop reason: {result.stop_reason}")
if self._should_print_raw_debug_text(raw_text, thinking_text, answer_text):
print("[Assistant][Raw]")
print(raw_text)
normalized_thinking = re.sub(r"\s+", " ", str(segment_thinking_text or "")).strip()
if len(normalized_thinking) == 0:
recent_thoughts.clear()
else:
recent_thoughts.append(normalized_thinking)
if len(recent_thoughts) > 4:
recent_thoughts = recent_thoughts[-4:]
if len(recent_thoughts) >= 3 and recent_thoughts[-1] == recent_thoughts[-2] == recent_thoughts[-3]:
self._send_chat("Assistant stopped because the same thought repeated 3 times in a row.")
turn_completed = True
break
if (
len(recent_thoughts) >= 4
and recent_thoughts[-1] == recent_thoughts[-3]
and recent_thoughts[-2] == recent_thoughts[-4]
and recent_thoughts[-1] != recent_thoughts[-2]
):
self._send_chat("Assistant stopped because the same two thoughts started alternating in a loop.")
turn_completed = True
break
if tool_calls:
stored_tool_calls = self._append_assistant_message(raw_text, tool_calls=tool_calls)
checkpoint_assistant_turn(self.session)
self._clear_segment_continuation_state()
self._record_live_context("Assistant tool-call context recorded from live runtime.")
for tool_call, stored_tool_call in zip(tool_calls, stored_tool_calls):
if self.session.interrupt_requested:
break
tool_result = self._execute_tool(tool_call)
self._append_tool_message(tool_result, stored_tool_call.get("id"))
checkpoint_assistant_turn(self.session)
if self.session.interrupt_requested:
break
continue
if result.stop_reason == "context_limit" or self._max_tokens_hit_context_ceiling(result):
if result.stop_reason == "max_tokens":
self._log("Model hit max_tokens at the context ceiling; compacting the current turn and continuing.")
if self._recover_from_context_limit(raw_text, context_limit_retries):
context_limit_retries += 1
continue
self._append_assistant_message(raw_text)
checkpoint_assistant_turn(self.session)
self._clear_segment_continuation_state()
if trimmed_incomplete_stop_answer:
if not self._sync_trimmed_answer_from_turn_start_snapshot():
self._canonicalize_context(sync_runtime="record_only")
self._log("Assistant context canonicalized after trimming an incomplete trailing answer fragment.")
self._emit_stats(force=True)
else:
self._record_live_context("Assistant context recorded from live runtime.")
final_user_text = "" if len(self._stream_answer_text.strip()) > 0 else (answer_text or qwen35_text._clean_generated_text(raw_text))
turn_completed = True
break
finally:
self._hide_status()
if self.session.interrupt_requested:
rollback_assistant_turn(self.session, rendered_system_prompt_signature=self._current_system_prompt_signature())
try:
if not self._sync_interrupted_rollback_context_from_turn_start_snapshot():
self._skip_pause_snapshot = False
self._log("Interrupted-turn context stayed on the clean turn-start snapshot for the next turn.")
except Exception as exc:
self._skip_pause_snapshot = False
self._log(f"Interrupted-turn context sync failed: {exc}")
self._log("Interrupted-turn context stayed on the clean turn-start snapshot for the next turn.")
if self.debug_enabled and len(str(self.session.interruption_notice or "").strip()) > 0:
self._log(f"Interruption recorded: {self.session.interruption_notice}")
try:
self._pause_runtime(pause_reason="idle")
except Exception as exc:
self._log(f"Pause-after-turn failed: {exc}")
finish_assistant_turn(self.session)
self.session.runtime_status_note = ""
self._prefill_started_at = None
self._live_prefill_tokens = 0
self._segment_started_at = None
self._segment_generated_tokens = 0
self._skip_generation_context_sync_once = False
self._clear_segment_continuation_state()
self._current_requested_max_new_tokens = 1024
self._emit_stats(force=True)
if not self.session.interrupt_requested and len(final_user_text.strip()) > 0:
self._send_chat(final_user_text)
if turn_completed and not self.session.interrupt_requested and len(self.session.interruption_notice.strip()) > 0:
if self.debug_enabled:
self._log("Clearing interruption notice after a successful follow-up turn.")
self.session.interruption_notice = ""