Files
Business-Management/backend/app/core/app_config.py
T
curo1305 88c1ea297e Add shared ai-service container as AI provider intermediary
All feature containers now POST messages to ai-service (port 8010) instead
of calling AI providers directly. ai-service routes to LM Studio, Ollama,
or Anthropic based on /config/ai_service_config.json. doc-service AI
providers removed; replaced by httpx ai_client.py. Backend settings
restructured to /api/settings/ai. Frontend gets dedicated AIAdminSettingsPage
and AI Service card in AppsPage.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-04-14 12:30:45 +02:00

137 lines
4.1 KiB
Python

"""
Per-service runtime config helpers.
Config files live on the shared `app_config` Docker volume at /config/.
Each service has its own JSON file.
Atomic write pattern: write to .tmp in same dir, then os.replace() so
services never read a partial file.
"""
import copy
import json
import os
from pathlib import Path
from pydantic import BaseModel
_CONFIG_DIR = Path(os.environ.get("APP_CONFIG_DIR", "/config"))
# ── AI service config schemas ──────────────────────────────────────────────────
class AnthropicConfig(BaseModel):
api_key: str = ""
model: str = "claude-haiku-4-5-20251001"
class OllamaConfig(BaseModel):
base_url: str = "http://host.docker.internal:11434/v1"
model: str = "llama3.2"
api_key: str = "ollama"
class LMStudioConfig(BaseModel):
base_url: str = "http://host.docker.internal:1234/v1"
model: str = "local-model"
api_key: str = "lm-studio"
class AIServiceConfig(BaseModel):
provider: str = "lmstudio"
timeout_seconds: int = 60
max_retries: int = 2
anthropic: AnthropicConfig = AnthropicConfig()
ollama: OllamaConfig = OllamaConfig()
lmstudio: LMStudioConfig = LMStudioConfig()
# ── Doc service config schemas ─────────────────────────────────────────────────
class DocumentsConfig(BaseModel):
max_pdf_bytes: int = 20 * 1024 * 1024
class DocServiceConfig(BaseModel):
documents: DocumentsConfig = DocumentsConfig()
# ── Masking ────────────────────────────────────────────────────────────────────
def _mask_key(key: str) -> str:
if not key or len(key) <= 8:
return "••••"
return key[:7] + "••••"
def _mask_ai_config(data: dict) -> dict:
masked = copy.deepcopy(data)
for provider in ("anthropic", "ollama", "lmstudio"):
if provider in masked and "api_key" in masked[provider]:
masked[provider]["api_key"] = _mask_key(masked[provider]["api_key"])
return masked
# ── Load / Save ────────────────────────────────────────────────────────────────
def _config_path(service: str) -> Path:
return _CONFIG_DIR / f"{service}_config.json"
def load_service_config(service: str) -> dict:
path = _config_path(service)
if not path.exists():
if service == "ai_service":
return AIServiceConfig().model_dump()
if service == "doc_service":
return DocServiceConfig().model_dump()
return {}
with path.open() as f:
return json.load(f)
def save_service_config(service: str, data: dict) -> None:
path = _config_path(service)
path.parent.mkdir(parents=True, exist_ok=True)
tmp = path.with_suffix(".tmp")
tmp.write_text(json.dumps(data, indent=2))
os.replace(tmp, path)
# AI service helpers
def load_ai_service_config() -> AIServiceConfig:
raw = load_service_config("ai_service")
return AIServiceConfig.model_validate(raw)
def save_ai_service_config(config: AIServiceConfig) -> None:
save_service_config("ai_service", config.model_dump())
def load_ai_service_config_masked() -> dict:
raw = load_service_config("ai_service")
return _mask_ai_config(raw)
# Doc service helpers
def load_doc_service_config() -> DocServiceConfig:
raw = load_service_config("doc_service")
return DocServiceConfig.model_validate(raw)
def save_doc_service_config(config: DocServiceConfig) -> None:
save_service_config("doc_service", config.model_dump())
def load_doc_service_config_masked() -> dict:
return load_service_config("doc_service")
def _merge_api_key(new_key: str, existing_key: str) -> str:
"""If new_key is empty or a masked value, keep the existing key."""
if not new_key or "••••" in new_key:
return existing_key
return new_key