Files
ComfyUI-Lora-Manager/py/services/model_query.py
2025-09-23 19:25:12 +08:00

197 lines
6.7 KiB
Python

from __future__ import annotations
from dataclasses import dataclass
from typing import Any, Dict, Iterable, List, Optional, Sequence, Tuple, Protocol, Callable
from ..utils.constants import NSFW_LEVELS
from ..utils.utils import fuzzy_match as default_fuzzy_match
class SettingsProvider(Protocol):
"""Protocol describing the SettingsManager contract used by query helpers."""
def get(self, key: str, default: Any = None) -> Any:
...
@dataclass(frozen=True)
class SortParams:
"""Normalized representation of sorting instructions."""
key: str
order: str
@dataclass(frozen=True)
class FilterCriteria:
"""Container for model list filtering options."""
folder: Optional[str] = None
base_models: Optional[Sequence[str]] = None
tags: Optional[Sequence[str]] = None
favorites_only: bool = False
search_options: Optional[Dict[str, Any]] = None
class ModelCacheRepository:
"""Adapter around scanner cache access and sort normalisation."""
def __init__(self, scanner) -> None:
self._scanner = scanner
async def get_cache(self):
"""Return the underlying cache instance from the scanner."""
return await self._scanner.get_cached_data()
async def fetch_sorted(self, params: SortParams) -> List[Dict[str, Any]]:
"""Fetch cached data pre-sorted according to ``params``."""
cache = await self.get_cache()
return await cache.get_sorted_data(params.key, params.order)
@staticmethod
def parse_sort(sort_by: str) -> SortParams:
"""Parse an incoming sort string into key/order primitives."""
if not sort_by:
return SortParams(key="name", order="asc")
if ":" in sort_by:
raw_key, raw_order = sort_by.split(":", 1)
sort_key = raw_key.strip().lower() or "name"
order = raw_order.strip().lower()
else:
sort_key = sort_by.strip().lower() or "name"
order = "asc"
if order not in ("asc", "desc"):
order = "asc"
return SortParams(key=sort_key, order=order)
class ModelFilterSet:
"""Applies common filtering rules to the model collection."""
def __init__(self, settings: SettingsProvider, nsfw_levels: Optional[Dict[str, int]] = None) -> None:
self._settings = settings
self._nsfw_levels = nsfw_levels or NSFW_LEVELS
def apply(self, data: Iterable[Dict[str, Any]], criteria: FilterCriteria) -> List[Dict[str, Any]]:
"""Return items that satisfy the provided criteria."""
items = list(data)
if self._settings.get("show_only_sfw", False):
threshold = self._nsfw_levels.get("R", 0)
items = [
item for item in items
if not item.get("preview_nsfw_level") or item.get("preview_nsfw_level") < threshold
]
if criteria.favorites_only:
items = [item for item in items if item.get("favorite", False)]
folder = criteria.folder
options = criteria.search_options or {}
recursive = bool(options.get("recursive", True))
if folder is not None:
if recursive:
if folder:
folder_with_sep = f"{folder}/"
items = [
item for item in items
if item.get("folder") == folder or item.get("folder", "").startswith(folder_with_sep)
]
else:
items = [item for item in items if item.get("folder") == folder]
base_models = criteria.base_models or []
if base_models:
base_model_set = set(base_models)
items = [item for item in items if item.get("base_model") in base_model_set]
tags = criteria.tags or []
if tags:
tag_set = set(tags)
items = [
item for item in items
if any(tag in tag_set for tag in item.get("tags", []))
]
return items
class SearchStrategy:
"""Encapsulates text and fuzzy matching behaviour for model queries."""
DEFAULT_OPTIONS: Dict[str, Any] = {
"filename": True,
"modelname": True,
"tags": False,
"recursive": True,
"creator": False,
}
def __init__(self, fuzzy_matcher: Optional[Callable[[str, str], bool]] = None) -> None:
self._fuzzy_match = fuzzy_matcher or default_fuzzy_match
def normalize_options(self, options: Optional[Dict[str, Any]]) -> Dict[str, Any]:
"""Merge provided options with defaults without mutating input."""
normalized = dict(self.DEFAULT_OPTIONS)
if options:
normalized.update(options)
return normalized
def apply(
self,
data: Iterable[Dict[str, Any]],
search_term: str,
options: Dict[str, Any],
fuzzy: bool = False,
) -> List[Dict[str, Any]]:
"""Return items matching the search term using the configured strategy."""
if not search_term:
return list(data)
search_lower = search_term.lower()
results: List[Dict[str, Any]] = []
for item in data:
if options.get("filename", True):
candidate = item.get("file_name", "")
if self._matches(candidate, search_term, search_lower, fuzzy):
results.append(item)
continue
if options.get("modelname", True):
candidate = item.get("model_name", "")
if self._matches(candidate, search_term, search_lower, fuzzy):
results.append(item)
continue
if options.get("tags", False):
tags = item.get("tags", []) or []
if any(self._matches(tag, search_term, search_lower, fuzzy) for tag in tags):
results.append(item)
continue
if options.get("creator", False):
creator_username = ""
civitai = item.get("civitai")
if isinstance(civitai, dict):
creator = civitai.get("creator")
if isinstance(creator, dict):
creator_username = creator.get("username", "")
if creator_username and self._matches(creator_username, search_term, search_lower, fuzzy):
results.append(item)
continue
return results
def _matches(self, candidate: str, search_term: str, search_lower: str, fuzzy: bool) -> bool:
if not candidate:
return False
candidate_lower = candidate.lower()
if fuzzy:
return self._fuzzy_match(candidate, search_term)
return search_lower in candidate_lower