Merge pull request #1013 from willmiao/agent

Hugging Face model metadata AI enrichment
This commit is contained in:
pixelpaws
2026-07-06 12:21:19 +08:00
committed by GitHub
67 changed files with 12666 additions and 2209 deletions

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@@ -0,0 +1,165 @@
"""HTTP route handlers for agent skill endpoints.
These handlers expose the :class:`AgentService` via HTTP, allowing the
frontend to list available skills and execute them on selected models.
Progress is reported via WebSocket broadcast.
"""
from __future__ import annotations
import asyncio
import logging
from typing import Any, Dict
from aiohttp import web
from ...services.agent import AgentService, AgentProgressReporter
from ...services.llm_service import LLMNotConfiguredError
logger = logging.getLogger(__name__)
class AgentHandler:
"""HTTP handler for agent skill operations."""
def __init__(self, agent_service: AgentService | None = None) -> None:
self._agent_service = agent_service
async def _ensure_service(self) -> AgentService:
if self._agent_service is None:
self._agent_service = await AgentService.get_instance()
return self._agent_service
# ------------------------------------------------------------------
# GET /api/lm/agent/skills
# ------------------------------------------------------------------
async def get_agent_skills(self, request: web.Request) -> web.Response:
"""Return a list of available agent skills."""
service = await self._ensure_service()
skills = await service.list_skills()
return web.json_response({"skills": skills})
# ------------------------------------------------------------------
# POST /api/lm/agent/execute/{skill_name}
# ------------------------------------------------------------------
async def execute_agent_skill(self, request: web.Request) -> web.Response:
"""Execute an agent skill on the provided model paths.
Request body::
{"model_paths": ["/path/to/model1.safetensors", ...], "options": {}}
Returns immediately with a task ID. Execution runs in the
background; progress and completion are pushed via WebSocket
events of type ``agent_progress``.
"""
skill_name = request.match_info.get("skill_name", "")
if not skill_name:
return web.json_response(
{"error": "Skill name is required"}, status=400
)
try:
body = await request.json()
except Exception:
return web.json_response(
{"error": "Invalid JSON body"}, status=400
)
model_paths = body.get("model_paths", [])
if not model_paths or not isinstance(model_paths, list):
return web.json_response(
{"error": "model_paths must be a non-empty array"},
status=400,
)
service = await self._ensure_service()
# Validate LLM configuration early for skills that need it
# (fail fast rather than after starting background work)
try:
from ...services.llm_service import LLMService
llm = await LLMService.get_instance()
if not llm.is_configured():
return web.json_response(
{
"error": "LLM provider is not configured. "
"Enable it in Settings → AI Provider.",
},
status=400,
)
except Exception as exc:
logger.error("Failed to check LLM configuration: %s", exc)
# Launch execution in the background
progress_reporter = AgentProgressReporter()
logger.info(
"LLM enrichment '%s' starting for %d model(s)",
skill_name, len(model_paths),
)
async def _run() -> None:
try:
result = await service.execute_skill(
skill_name=skill_name,
input_data={"model_paths": model_paths},
progress_callback=progress_reporter,
)
logger.info(
"LLM enrichment '%s' finished: success=%s, summary='%s', errors=%s",
skill_name, result.success, result.summary, result.errors,
)
except LLMNotConfiguredError as exc:
logger.warning("LLM enrichment '%s' not configured: %s", skill_name, exc)
await progress_reporter.on_progress(
{
"type": "agent_progress",
"skill": skill_name,
"status": "error",
"error": str(exc),
}
)
except Exception as exc:
logger.error("LLM enrichment '%s' failed: %s", skill_name, exc, exc_info=True)
await progress_reporter.on_progress(
{
"type": "agent_progress",
"skill": skill_name,
"status": "error",
"error": str(exc),
}
)
# Fire and forget — progress comes via WebSocket
asyncio.create_task(_run())
return web.json_response(
{
"status": "started",
"skill": skill_name,
"model_count": len(model_paths),
}
)
# ------------------------------------------------------------------
# POST /api/lm/agent/cancel
# ------------------------------------------------------------------
async def cancel_agent_skill(self, request: web.Request) -> web.Response:
"""Cancel a running agent skill.
NOTE: Cancellation is a stub for now — the AgentService processes
models sequentially and does not yet support mid-execution
cancellation. This endpoint exists for API completeness.
"""
# TODO: implement cooperative cancellation in AgentService
return web.json_response(
{"status": "acknowledged", "note": "Cancellation not yet implemented"},
status=200,
)

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@@ -49,6 +49,14 @@ async def _get_hf_api_session() -> aiohttp.ClientSession:
return _hf_api_session
async def close_hf_api_session() -> None:
"""Close the shared HF API session, if it was ever created."""
global _hf_api_session
if _hf_api_session is not None and not _hf_api_session.closed:
await _hf_api_session.close()
_hf_api_session = None
def _infer_model_type(model_root: str) -> tuple[Any, str]:
"""Determine model class and scanner by matching ``model_root`` against the
configured root paths for each model type (from ``Config``).

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@@ -38,6 +38,12 @@ from ...services.settings_manager import get_settings_manager
from ...services.websocket_manager import ws_manager
from ...services.downloader import get_downloader
from ...services.errors import ResourceNotFoundError
from ...services.llm_service import (
PROVIDER_PRESETS,
fetch_ollama_models,
get_all_provider_models,
get_provider_model_ids,
)
from ...services.cache_health_monitor import CacheHealthMonitor, CacheHealthStatus
from ...utils.models import BaseModelMetadata
from ...utils.constants import (
@@ -49,6 +55,7 @@ from ...utils.constants import (
VALID_LORA_TYPES,
)
from .hf_handlers import HfHandler
from .agent_handlers import AgentHandler
from ...utils.civitai_utils import rewrite_preview_url
from ...utils.example_images_paths import (
find_non_compliant_items_in_example_images_root,
@@ -1399,8 +1406,9 @@ class SettingsHandler:
"libraries",
"active_library",
# Sensitive — never expose the actual value to the frontend;
# frontend receives a boolean instead (civitai_api_key_set).
# frontend receives a boolean instead (*_set).
"civitai_api_key",
"llm_api_key",
}
)
@@ -1458,6 +1466,8 @@ class SettingsHandler:
# Sensitive fields: only expose a boolean indicating whether set
raw_key = self._settings.get("civitai_api_key")
response_data["civitai_api_key_set"] = bool(raw_key)
raw_llm_key = self._settings.get("llm_api_key")
response_data["llm_api_key_set"] = bool(raw_llm_key)
settings_file = getattr(self._settings, "settings_file", None)
if settings_file:
response_data["settings_file"] = settings_file
@@ -1562,6 +1572,42 @@ class SettingsHandler:
logger.error("Error updating settings: %s", exc, exc_info=True)
return web.Response(status=500, text=str(exc))
async def get_llm_models(self, request: web.Request) -> web.Response:
"""Return the model list for a provider.
For ``ollama`` the list is fetched live from the local Ollama API
(only models actually pulled locally are shown). For all other
providers the opencode model catalog is used.
Query parameters:
provider (required): Internal provider id (``openai``, ``ollama``, etc.).
Returns:
``{"success": true, "models": ["gpt-4o", ...]}``.
"""
provider_id = request.query.get("provider", "").strip()
if not provider_id:
return web.json_response(
{"success": False, "error": "provider query parameter is required", "models": []},
status=400,
)
try:
if provider_id == "ollama":
api_base = request.query.get("api_base", "").strip() or self._settings.get("llm_api_base", "")
if not api_base:
api_base = "http://localhost:11434/v1"
models = await fetch_ollama_models(api_base)
else:
models = await get_provider_model_ids(provider_id)
return web.json_response({"success": True, "models": models})
except Exception as exc:
logger.warning("get_llm_models failed for %s: %s", provider_id, exc)
return web.json_response(
{"success": False, "error": str(exc), "models": []},
status=500,
)
def _validate_example_images_path(self, folder_path: str) -> str | None:
if not os.path.exists(folder_path):
return f"Path does not exist: {folder_path}"
@@ -1584,6 +1630,20 @@ class SettingsHandler:
def _is_dedicated_example_images_folder(self, folder_path: str) -> bool:
return is_valid_example_images_root(folder_path)
async def get_provider_models(self, request: web.Request) -> web.Response:
"""Return the model catalog for all preset providers.
This endpoint is called asynchronously by the settings UI so that
page rendering never blocks on the remote model catalog fetch.
"""
catalog_provider_ids = [p for p in PROVIDER_PRESETS if p != "custom"]
try:
provider_models = await get_all_provider_models(catalog_provider_ids)
return web.json_response({"success": True, "models": provider_models})
except Exception as exc:
logger.warning("Failed to fetch provider models: %s", exc)
return web.json_response({"success": False, "models": {}, "error": str(exc)})
class UsageStatsHandler:
def __init__(self, usage_stats_factory: UsageStatsFactory = UsageStats) -> None:
@@ -3317,6 +3377,7 @@ class MiscHandlerSet:
example_workflows: ExampleWorkflowsHandler,
base_model: BaseModelHandlerSet,
hf_handler: HfHandler | None = None,
agent_handler: AgentHandler | None = None,
) -> None:
self.health = health
self.settings = settings
@@ -3336,6 +3397,7 @@ class MiscHandlerSet:
self.example_workflows = example_workflows
self.base_model = base_model
self.hf_handler = hf_handler
self.agent_handler = agent_handler
def to_route_mapping(
self,
@@ -3351,6 +3413,8 @@ class MiscHandlerSet:
"get_priority_tags": self.settings.get_priority_tags,
"get_settings_libraries": self.settings.get_libraries,
"activate_library": self.settings.activate_library,
"get_llm_models": self.settings.get_llm_models,
"get_provider_models": self.settings.get_provider_models,
"update_usage_stats": self.usage_stats.update_usage_stats,
"get_usage_stats": self.usage_stats.get_usage_stats,
"update_lora_code": self.lora_code.update_lora_code,
@@ -3384,6 +3448,10 @@ class MiscHandlerSet:
# Hugging Face handlers
"get_hf_repo_files": self.hf_handler.get_hf_repo_files,
"download_hf_model": self.hf_handler.download_hf_model,
# Agent skill handlers
"get_agent_skills": self.agent_handler.get_agent_skills,
"execute_agent_skill": self.agent_handler.execute_agent_skill,
"cancel_agent_skill": self.agent_handler.cancel_agent_skill,
# Base model handlers
"get_base_models": self.base_model.get_base_models,
"refresh_base_models": self.base_model.refresh_base_models,

View File

@@ -154,6 +154,14 @@ class ModelPageView:
)
self._template_env._i18n_filter_added = True # type: ignore[attr-defined]
from ...services.llm_service import PROVIDER_PRESETS
# Provider presets are embedded directly (local, no await needed).
# Provider model catalogs are fetched asynchronously by the
# frontend via GET /api/lm/llm/provider-models so page rendering
# never blocks on the remote model catalog (which can take up to
# 30s on cold cache).
template_context = {
"is_initializing": is_initializing,
"settings": self._settings,
@@ -161,6 +169,8 @@ class ModelPageView:
"folders": [],
"t": self._server_i18n.get_translation,
"version": self._get_app_version(),
"provider_presets_json": json.dumps(PROVIDER_PRESETS),
"provider_models_json": "{}",
}
if not is_initializing: