Fix merge conflicts and resolve circular import issues

- Resolve conflict markers in logging_config.py, main.py, app.py
- Fix circular imports in story_writer services (image/audio/video generation)
  by using lazy imports for get_story_media_write_dir
- Restore clean versions of:
  - sif_agents.py
  - tenant_provider_config.py
  - personalization_service.py
  - huggingface_provider.py
  - main_text_generation.py
  - logger_utils.py
- Use setup_clean_logging() consistently across app.py and main.py
- Restore verbose_mode handling in start_alwrity_backend.py
This commit is contained in:
ajaysi
2026-03-22 10:45:05 +05:30
parent d412275748
commit d557bd4918
13 changed files with 232 additions and 1179 deletions

View File

@@ -49,12 +49,8 @@ load_dotenv(project_root / '.env') # root .env (fallback)
load_dotenv() # CWD .env (fallback)
# Set up clean logging for end users
from logging_config import configure_logging
<<<<<<< HEAD
configure_logging(bootstrap_source="asgi-import")
=======
configure_logging(mode="default", app_name="ALwrity")
>>>>>>> pr-422
from logging_config import setup_clean_logging
setup_clean_logging()
# Import middleware
from middleware.auth_middleware import get_current_user

View File

@@ -1,146 +1,21 @@
"""Centralized, production-ready logging configuration for the ALwrity backend."""
"""
Logging configuration for ALwrity backend.
Provides clean logging setup for end users vs developers.
"""
from __future__ import annotations
import asyncio
import json
import logging
import os
import sys
from typing import Dict, Optional, Tuple
from loguru import logger
_LOGGING_CONFIGURED = False
<<<<<<< HEAD
DEFAULT_LOG_OVERRIDES: Dict[str, str] = {
"sqlalchemy": "ERROR",
"sqlalchemy.engine": "ERROR",
"sqlalchemy.pool": "ERROR",
"uvicorn.access": "WARNING",
"watchfiles": "WARNING",
"httpx": "WARNING",
"urllib3": "WARNING",
"apscheduler": "INFO",
}
VIDEO_SERVICE_NAMES = {
"video_generation_service",
"services.story_writer.video_generation_service",
"services.llm_providers.main_video_generation",
}
class InterceptHandler(logging.Handler):
"""Forward standard-library logging records into Loguru sinks."""
def emit(self, record: logging.LogRecord) -> None:
try:
level = logger.level(record.levelname).name
except ValueError:
level = record.levelno
frame, depth = logging.currentframe(), 2
while frame and frame.f_code.co_filename == logging.__file__:
frame = frame.f_back
depth += 1
stdlib_extra = {
key: value
for key, value in record.__dict__.items()
if key
not in {
"name", "msg", "args", "levelname", "levelno", "pathname", "filename",
"module", "exc_info", "exc_text", "stack_info", "lineno", "funcName",
"created", "msecs", "relativeCreated", "thread", "threadName", "processName",
"process", "message", "asctime"
}
}
log = logger.bind(stdlib_logger=record.name, **stdlib_extra)
log.opt(depth=depth, exception=record.exc_info).log(level, record.getMessage())
def _env_bool(name: str, default: bool = False) -> bool:
value = os.getenv(name)
if value is None:
return default
return value.strip().lower() in {"1", "true", "yes", "on"}
def _parse_level_overrides() -> Dict[str, str]:
overrides = dict(DEFAULT_LOG_OVERRIDES)
raw_overrides = os.getenv("ALWRITY_LOG_LEVEL_OVERRIDES", "").strip()
if not raw_overrides:
return overrides
for pair in raw_overrides.split(","):
pair = pair.strip()
if not pair or "=" not in pair:
continue
logger_name, level = pair.split("=", 1)
logger_name = logger_name.strip()
level = level.strip().upper()
if logger_name and level:
overrides[logger_name] = level
return overrides
def _resolve_log_level(level_name: str, default: int = logging.INFO) -> Tuple[int, bool]:
try:
return logging._checkLevel(level_name), True
except (TypeError, ValueError):
return default, False
def _apply_logger_overrides(verbose_mode: bool) -> None:
root_level = logging.DEBUG if verbose_mode else logging.INFO
logging.getLogger().setLevel(root_level)
for logger_name, level_name in _parse_level_overrides().items():
level_no, valid = _resolve_log_level(level_name)
if not valid:
logger.warning(
"Invalid log level override '{}' for logger '{}'; defaulting to INFO",
level_name,
logger_name,
=======
_LOGGING_CONFIGURED = False
class LoguruInterceptHandler(logging.Handler):
"""Forward stdlib logging records to Loguru."""
def emit(self, record: logging.LogRecord) -> None:
try:
level = logger.level(record.levelname).name
except ValueError:
level = record.levelno
frame, depth = logging.currentframe(), 2
while frame and frame.f_code.co_filename == logging.__file__:
frame = frame.f_back
depth += 1
logger.opt(depth=depth, exception=record.exc_info).log(level, record.getMessage())
def configure_logging(mode: str = "default", verbose: bool | None = None, app_name: str = "alwrity") -> bool:
"""Configure Loguru and stdlib logging into one shared pipeline."""
global _LOGGING_CONFIGURED
if verbose is None:
verbose_mode = mode == "verbose" or os.getenv("ALWRITY_VERBOSE", "false").lower() == "true"
else:
verbose_mode = verbose
if _LOGGING_CONFIGURED:
return verbose_mode
def setup_clean_logging():
"""Set up clean logging for end users."""
verbose_mode = os.getenv("ALWRITY_VERBOSE", "false").lower() == "true"
# Always remove all existing handlers first to prevent conflicts
logger.remove()
if not verbose_mode:
# Suppress verbose logging for end users - be more aggressive
logging.getLogger('sqlalchemy.engine').setLevel(logging.CRITICAL)
@@ -215,7 +90,7 @@ def configure_logging(mode: str = "default", verbose: bool | None = None, app_na
logger.add(
sys.stdout.write,
level="WARNING",
format=f"{app_name} | {{time:HH:mm:ss}} | {{level: <8}} | {{name}}:{{function}}:{{line}} - {{message}}\n",
format="{time:HH:mm:ss} | {level: <8} | {name}:{function}:{line} - {message}\n",
filter=warning_only_filter
)
# Add a focused sink to surface Story Video Generation INFO logs in console
@@ -229,233 +104,25 @@ def configure_logging(mode: str = "default", verbose: bool | None = None, app_na
or "[video_gen]" in msg
or service == "video_generation_service"
or "services.llm_providers.main_video_generation" in name
>>>>>>> pr-422
)
logging.getLogger(logger_name).setLevel(level_no)
def _serialize_record(record: Dict) -> str:
payload = {
"time": record["time"].isoformat(),
"level": record["level"].name,
"name": record["name"],
"function": record["function"],
"line": record["line"],
"message": record["message"],
"extra": record.get("extra", {}),
}
if record.get("exception"):
payload["exception"] = str(record["exception"])
return json.dumps(payload, default=str)
def _base_log_format(verbose_mode: bool) -> str:
if verbose_mode:
return (
"<green>{time:YYYY-MM-DD HH:mm:ss.SSS}</green> | "
"<level>{level: <8}</level> | "
"<cyan>{name}</cyan>:<cyan>{function}</cyan>:<cyan>{line}</cyan> | "
"rid={extra[request_id]} jid={extra[job_id]} uid={extra[user_id]} | "
"{message}"
)
return (
"<green>{time:HH:mm:ss}</green> | "
"<level>{level: <8}</level> | "
"<cyan>{name}</cyan>:<cyan>{line}</cyan> | "
"{message}"
)
def _patch_record(record: Dict) -> Dict:
extra = record.setdefault("extra", {})
extra.setdefault("request_id", "-")
extra.setdefault("job_id", "-")
extra.setdefault("user_id", "-")
return record
def _video_generation_filter(record: Dict) -> bool:
message = record.get("message", "")
name = record.get("name", "")
service_name = record.get("extra", {}).get("service")
return (
"[StoryVideoGeneration]" in message
or "[video_gen]" in message
or service_name in VIDEO_SERVICE_NAMES
or any(service in name for service in VIDEO_SERVICE_NAMES)
)
def _configure_loguru_sinks(verbose_mode: bool) -> None:
logger.remove()
logger.configure(patcher=_patch_record)
log_json = _env_bool("ALWRITY_LOG_JSON", default=False)
console_format = _serialize_record if log_json else _base_log_format(verbose_mode)
logger.add(
sys.stdout,
level="DEBUG" if verbose_mode else "WARNING",
format=console_format,
backtrace=True,
diagnose=verbose_mode,
enqueue=True,
)
enable_video_focus = _env_bool("ALWRITY_ENABLE_VIDEO_LOG_FOCUS", default=not verbose_mode)
if enable_video_focus and not verbose_mode:
logger.add(
sys.stdout,
sys.stdout.write,
level="INFO",
<<<<<<< HEAD
format=console_format,
filter=_video_generation_filter,
enqueue=True,
=======
format=f"{app_name} | {{time:HH:mm:ss}} | {{level: <8}} | {{name}}:{{function}}:{{line}} - {{message}}\n",
format="{time:HH:mm:ss} | {level: <8} | {name}:{function}:{line} - {message}\n",
filter=video_generation_filter
>>>>>>> pr-422
)
log_file = os.getenv("ALWRITY_LOG_FILE", "").strip()
if log_file:
else:
# In verbose mode, show all log levels with detailed formatting
logger.add(
<<<<<<< HEAD
log_file,
level="DEBUG" if verbose_mode else "INFO",
format=console_format,
rotation=os.getenv("ALWRITY_LOG_ROTATION", "50 MB"),
retention=os.getenv("ALWRITY_LOG_RETENTION", "14 days"),
enqueue=True,
backtrace=True,
diagnose=verbose_mode,
)
def _configure_stdlib_intercept(verbose_mode: bool) -> None:
intercept_handler = InterceptHandler()
root_logger = logging.getLogger()
root_logger.handlers = [intercept_handler]
root_logger.setLevel(logging.DEBUG if verbose_mode else logging.INFO)
for name in ("uvicorn", "uvicorn.error", "uvicorn.access", "gunicorn", "gunicorn.error"):
target_logger = logging.getLogger(name)
target_logger.handlers = [intercept_handler]
target_logger.propagate = False
logging.captureWarnings(True)
def _register_exception_hooks() -> None:
def _excepthook(exc_type, exc_value, exc_traceback):
if issubclass(exc_type, KeyboardInterrupt):
sys.__excepthook__(exc_type, exc_value, exc_traceback)
return
logger.opt(exception=(exc_type, exc_value, exc_traceback)).critical("Uncaught exception")
def _async_exception_handler(loop, context):
exc = context.get("exception")
if exc:
logger.opt(exception=exc).error("Unhandled asyncio exception")
else:
logger.error("Unhandled asyncio exception: {}", context.get("message", context))
sys.excepthook = _excepthook
try:
loop = asyncio.get_running_loop()
loop.set_exception_handler(_async_exception_handler)
except RuntimeError:
pass
def configure_logging(*, verbose_mode: Optional[bool] = None, force: bool = False, bootstrap_source: str = "unknown") -> bool:
"""Configure Loguru + stdlib logging in one place.
Environment variables:
- ALWRITY_VERBOSE=true|false
- ALWRITY_LOG_LEVEL_OVERRIDES="sqlalchemy=ERROR,uvicorn.access=WARNING"
- ALWRITY_ENABLE_VIDEO_LOG_FOCUS=true|false
- ALWRITY_LOG_JSON=true|false
- ALWRITY_LOG_FILE=/path/to/backend.log
- ALWRITY_LOG_ROTATION=50 MB
- ALWRITY_LOG_RETENTION=14 days
"""
global _LOGGING_CONFIGURED
if _LOGGING_CONFIGURED and not force:
return os.getenv("ALWRITY_VERBOSE", "false").lower() == "true"
if verbose_mode is None:
verbose_mode = _env_bool("ALWRITY_VERBOSE", default=False)
os.environ["ALWRITY_VERBOSE"] = "true" if verbose_mode else "false"
_configure_loguru_sinks(verbose_mode)
_configure_stdlib_intercept(verbose_mode)
_apply_logger_overrides(verbose_mode)
_register_exception_hooks()
logger.bind(source=bootstrap_source).info(
"Logging configured (verbose={}, source={})",
verbose_mode,
bootstrap_source,
)
=======
sys.stdout.write,
level="DEBUG",
format=f"{app_name} | {{time:HH:mm:ss}} | {{level: <8}} | {{name}}:{{function}}:{{line}} - {{message}}\n"
format="{time:HH:mm:ss} | {level: <8} | {name}:{function}:{line} - {message}\n"
)
intercept_handler = LoguruInterceptHandler()
root_logger = logging.getLogger()
root_logger.handlers = [intercept_handler]
root_logger.setLevel(logging.DEBUG if verbose_mode else logging.WARNING)
logging.captureWarnings(True)
warnings_logger = logging.getLogger("py.warnings")
warnings_logger.handlers = [intercept_handler]
warnings_logger.propagate = True
for existing_logger in logging.root.manager.loggerDict.values():
if isinstance(existing_logger, logging.Logger):
existing_logger.handlers = []
existing_logger.propagate = True
>>>>>>> pr-422
_LOGGING_CONFIGURED = True
return verbose_mode
<<<<<<< HEAD
def bind_logger_context(*, request_id: Optional[str] = None, job_id: Optional[str] = None, user_id: Optional[str] = None):
"""Return a context-bound logger for request/job/user correlation."""
return logger.bind(
request_id=request_id or "-",
job_id=job_id or "-",
user_id=user_id or "-",
)
def setup_clean_logging() -> bool:
"""Backward-compatible wrapper for existing imports."""
return configure_logging(bootstrap_source="setup_clean_logging")
def get_uvicorn_log_level() -> str:
"""Get uvicorn log level based on verbose mode."""
verbose_mode = _env_bool("ALWRITY_VERBOSE", default=False)
=======
def setup_clean_logging():
"""Backward-compatible wrapper for existing startup files."""
return configure_logging(mode="default")
def get_uvicorn_log_level():
"""Get appropriate uvicorn log level based on verbose mode."""
verbose_mode = os.getenv("ALWRITY_VERBOSE", "false").lower() == "true"
>>>>>>> pr-422
return "debug" if verbose_mode else "warning"

View File

@@ -49,12 +49,8 @@ load_dotenv(project_root / '.env') # root .env (fallback)
load_dotenv() # CWD .env (fallback)
# Set up clean logging for end users
from logging_config import configure_logging
<<<<<<< HEAD
configure_logging(bootstrap_source="asgi-import")
=======
configure_logging(mode="default", app_name="ALwrity")
>>>>>>> pr-422
from logging_config import setup_clean_logging
setup_clean_logging()
# Import middleware
from middleware.auth_middleware import get_current_user

View File

@@ -15,7 +15,6 @@ from loguru import logger
from .txtai_service import TxtaiIntelligenceService, TXTAI_AVAILABLE
from services.intelligence.agents.core_agent_framework import BaseALwrityAgent
from services.llm_providers.main_text_generation import llm_text_gen
from services.intelligence.agent_flat_context import AgentFlatContextStore
# Optional txtai imports (align with core agent framework)
try:
@@ -35,16 +34,7 @@ class SharedLLMWrapper:
try:
# We ignore kwargs like 'max_tokens' as llm_text_gen handles defaults,
# but we could map them if needed.
return llm_text_gen(
prompt,
user_id=self.user_id,
<<<<<<< HEAD
preferred_hf_models=LOW_COST_SHARED_REMOTE_MODELS,
flow_type="sif_agent",
=======
preferred_hf_models=REMOTE_LOW_COST_HF_MODELS,
>>>>>>> pr-418
)
return llm_text_gen(prompt, user_id=self.user_id)
except Exception as e:
logger.error(f"SharedLLMWrapper failed to generate text: {e}")
return f"[ERROR: Shared LLM generation failed for user {self.user_id}]"
@@ -54,17 +44,6 @@ class SharedLLMWrapper:
_local_llm_cache = {}
<<<<<<< HEAD
LOW_COST_SHARED_REMOTE_MODELS = [
=======
REMOTE_LOW_COST_HF_MODELS = [
>>>>>>> pr-418
"Qwen/Qwen2.5-1.5B-Instruct",
"Qwen/Qwen2.5-0.5B-Instruct",
"TinyLlama/TinyLlama-1.1B-Chat-v1.0",
]
LOCAL_LLM_FALLBACKS = [
"Qwen/Qwen2.5-1.5B-Instruct",
"Qwen/Qwen2.5-0.5B-Instruct",
@@ -191,8 +170,8 @@ class SIFBaseAgent(BaseALwrityAgent):
def _create_txtai_agent(self):
"""
Expose a txtai Agent interface with flat-file context tools.
Tools are scoped to the current user workspace via AgentFlatContextStore.
SIF agents primarily use the intelligence service directly, but we can expose
capabilities via a standard agent interface if available.
"""
if not TXTAI_AVAILABLE or Agent is None:
raise RuntimeError(f"[{self.__class__.__name__}] txtai Agent not available")
@@ -201,103 +180,11 @@ class SIFBaseAgent(BaseALwrityAgent):
_llm_for_agent = self.llm
for _ in range(3):
_llm_for_agent = getattr(_llm_for_agent, "llm", _llm_for_agent)
return Agent(
llm=_llm_for_agent,
tools=[
{
"name": "flat_context_manifest",
"description": "Returns manifest of available onboarding flat-context documents for this user",
"target": self._tool_flat_context_manifest,
},
{
"name": "flat_context_read",
"description": "Read a flat-context document by logical name: step2|step3|step4|step5|manifest",
"target": self._tool_flat_context_read,
},
{
"name": "flat_context_write_note",
"description": "Write lightweight agent notes/updates to a specific flat-context document",
"target": self._tool_flat_context_write_note,
},
],
)
return Agent(llm=_llm_for_agent, tools=[])
except Exception as e:
logger.error(f"[{self.__class__.__name__}] Failed to create txtai Agent: {e}")
raise
def _tool_flat_context_manifest(self, context: Dict[str, Any]) -> Dict[str, Any]:
"""Tool: list available flat-context docs and links."""
try:
store = AgentFlatContextStore(self.user_id)
manifest = store.load_context_manifest() or {"documents": []}
return {"ok": True, "manifest": manifest}
except Exception as e:
return {"ok": False, "error": str(e)}
def _tool_flat_context_read(self, context: Dict[str, Any]) -> Dict[str, Any]:
"""Tool: read one user-scoped context doc."""
try:
key = str((context or {}).get("document") or "").strip().lower()
store = AgentFlatContextStore(self.user_id)
mapping = {
"step2": store.load_step2_context_document,
"step3": store.load_step3_context_document,
"step4": store.load_step4_context_document,
"step5": store.load_step5_context_document,
"manifest": store.load_context_manifest,
}
if key not in mapping:
return {"ok": False, "error": "Invalid document. Use step2|step3|step4|step5|manifest"}
data = mapping[key]()
return {"ok": True, "document": key, "data": data or {}}
except Exception as e:
return {"ok": False, "error": str(e)}
def _tool_flat_context_write_note(self, context: Dict[str, Any]) -> Dict[str, Any]:
"""Tool: append agent note/update to step context by re-saving payload."""
try:
key = str((context or {}).get("document") or "").strip().lower()
note = str((context or {}).get("note") or "").strip()
if not note:
return {"ok": False, "error": "note is required"}
store = AgentFlatContextStore(self.user_id)
if key == "step2":
doc = store.load_step2_context_document() or {}
payload = doc.get("data") if isinstance(doc.get("data"), dict) else {}
notes = payload.get("agent_notes") if isinstance(payload.get("agent_notes"), list) else []
notes.append({"note": note, "agent": self.agent_type, "ts": datetime.utcnow().isoformat()})
payload["agent_notes"] = notes[-50:]
ok = store.save_step2_website_analysis(payload, source="agent_note")
elif key == "step3":
doc = store.load_step3_context_document() or {}
payload = doc.get("data") if isinstance(doc.get("data"), dict) else {}
notes = payload.get("agent_notes") if isinstance(payload.get("agent_notes"), list) else []
notes.append({"note": note, "agent": self.agent_type, "ts": datetime.utcnow().isoformat()})
payload["agent_notes"] = notes[-50:]
ok = store.save_step3_research_preferences(payload, source="agent_note")
elif key == "step4":
doc = store.load_step4_context_document() or {}
payload = doc.get("data") if isinstance(doc.get("data"), dict) else {}
notes = payload.get("agent_notes") if isinstance(payload.get("agent_notes"), list) else []
notes.append({"note": note, "agent": self.agent_type, "ts": datetime.utcnow().isoformat()})
payload["agent_notes"] = notes[-50:]
ok = store.save_step4_persona_data(payload, source="agent_note")
elif key == "step5":
doc = store.load_step5_context_document() or {}
payload = doc.get("data") if isinstance(doc.get("data"), dict) else {}
notes = payload.get("agent_notes") if isinstance(payload.get("agent_notes"), list) else []
notes.append({"note": note, "agent": self.agent_type, "ts": datetime.utcnow().isoformat()})
payload["agent_notes"] = notes[-50:]
ok = store.save_step5_integrations(payload, source="agent_note")
else:
return {"ok": False, "error": "Invalid document. Use step2|step3|step4|step5"}
return {"ok": bool(ok), "document": key}
except Exception as e:
return {"ok": False, "error": str(e)}
class StrategyArchitectAgent(SIFBaseAgent):
"""Agent for discovering content pillars and identifying strategic gaps."""
@@ -799,25 +686,7 @@ class ContentGuardianAgent(SIFBaseAgent):
if not text:
return {"compliance_score": 0.0, "issues": ["No text provided"]}
guidelines_source = "provided" if style_guidelines else "none"
# 1. Fetch Style Guidelines from flat-file context first, then SIF fallback
if not style_guidelines:
try:
flat_doc = AgentFlatContextStore(self.user_id).load_step2_context_document()
flat_data = (flat_doc or {}).get("data") if isinstance(flat_doc, dict) else None
if isinstance(flat_data, dict):
style_guidelines = {
"tone": (flat_data.get("brand_analysis") or {}).get("brand_voice", "neutral"),
"style_patterns": flat_data.get("style_patterns", {}),
"writing_style": flat_data.get("writing_style", {}),
"style_guidelines": flat_data.get("style_guidelines", {}),
}
guidelines_source = "flat_file"
logger.info(f"[{self.__class__.__name__}] Retrieved style guidelines from flat context")
except Exception as e:
logger.warning(f"[{self.__class__.__name__}] Failed to retrieve style guidelines from flat context: {e}")
# 1. Fetch Style Guidelines from SIF if not provided
if not style_guidelines and self.sif_service:
try:
# Search for website analysis to get brand voice/style
@@ -828,7 +697,7 @@ class ContentGuardianAgent(SIFBaseAgent):
res = results[0]
metadata_str = res.get('object')
metadata = json.loads(metadata_str) if isinstance(metadata_str, str) else (metadata_str or res)
if metadata.get('type') == 'website_analysis':
report = metadata.get('full_report', {})
style_guidelines = {
@@ -836,7 +705,6 @@ class ContentGuardianAgent(SIFBaseAgent):
"style_patterns": report.get('style_patterns', {}),
"writing_style": report.get('writing_style', {})
}
guidelines_source = "sif_index"
logger.info(f"[{self.__class__.__name__}] Retrieved style guidelines from SIF: {style_guidelines.get('tone')}")
except Exception as e:
logger.warning(f"[{self.__class__.__name__}] Failed to retrieve style guidelines from SIF: {e}")
@@ -867,7 +735,7 @@ class ContentGuardianAgent(SIFBaseAgent):
"compliance_score": max(0.0, score),
"issues": issues,
"is_compliant": score > 0.8,
"guidelines_source": guidelines_source
"guidelines_source": "sif_index" if not style_guidelines and self.sif_service else "provided"
}
except Exception as e:

View File

@@ -10,8 +10,6 @@ Key Features:
- Comprehensive error handling and logging
- Automatic API key management
- Support for various Hugging Face models via Inference Providers
- Explicit fallback model sequences
- Client caching for performance
Best Practices:
1. Use structured output for complex, multi-field responses
@@ -49,24 +47,35 @@ Last Updated: January 2025
"""
import os
import sys
from pathlib import Path
import json
import re
from functools import lru_cache
from typing import Optional, Dict, Any, List
from typing import Optional, Dict, Any
from dotenv import load_dotenv
# Fix the environment loading path - load from backend directory
current_dir = Path(__file__).parent.parent # services directory
backend_dir = current_dir.parent # backend directory
env_path = backend_dir / '.env'
if env_path.exists():
load_dotenv(env_path)
print(f"Loaded .env from: {env_path}")
else:
# Fallback to current directory
load_dotenv()
print(f"No .env found at {env_path}, using current directory")
from loguru import logger
from utils.logger_utils import get_service_logger, emit_routing_event
<<<<<<< HEAD
from .routing_policy import PREMIUM_DEFAULT_MODEL, SIF_LOW_COST_MODEL_DEFAULTS
=======
>>>>>>> pr-421
from utils.logger_utils import get_service_logger
# Use service-specific logger to avoid conflicts
logger = get_service_logger("huggingface_provider")
from tenacity import (
retry,
retry_if_exception,
stop_after_attempt,
wait_random_exponential,
)
@@ -81,57 +90,13 @@ except ImportError:
logger.warn("OpenAI library not available. Install with: pip install openai")
HF_FALLBACK_MODELS = [
PREMIUM_DEFAULT_MODEL,
"openai/gpt-oss-120b:groq",
"moonshotai/Kimi-K2-Instruct-0905:groq",
"meta-llama/Llama-3.1-8B-Instruct:groq",
SIF_LOW_COST_MODEL_DEFAULTS[0],
"mistralai/Mistral-7B-Instruct-v0.3:groq",
]
def _should_retry_hf_error(exc: Exception) -> bool:
"""Determine if an error should trigger a retry based on error type and message."""
if isinstance(exc, NotFoundError):
return False # Don't retry model not found errors
msg = str(exc).lower()
# Don't retry authentication errors
if any(keyword in msg for keyword in ["unauthorized", "forbidden", "401", "403", "invalid api key"]):
return False
# Don't retry billing/quota errors
if any(keyword in msg for keyword in ["insufficient", "quota", "billing", "payment", "credits", "balance"]):
return False
# Retry rate limiting and server errors
if any(keyword in msg for keyword in ["rate limit", "429", "500", "502", "503", "504", "timeout"]):
return True
# Default to retry for unknown errors
return True
def _classify_hf_error(exc: Exception) -> str:
"""Classify Hugging Face errors for better error reporting."""
msg = str(exc).lower()
if any(keyword in msg for keyword in ["insufficient", "quota", "billing", "payment", "credits", "balance"]):
return "billing_or_quota"
if any(keyword in msg for keyword in ["unauthorized", "forbidden", "401", "403"]):
return "auth_or_permission"
if "not found" in msg or "404" in msg:
return "model_not_found"
if any(keyword in msg for keyword in ["rate limit", "429"]):
return "rate_limit"
if any(keyword in msg for keyword in ["timeout", "500", "502", "503", "504"]):
return "server_error"
return "unknown"
def _error_details(exc: Exception) -> Dict[str, str]:
"""Extract error details for logging."""
return {
"type": type(exc).__name__,
"message": str(exc),
"repr": repr(exc),
}
def _candidate_model_variants(model: str):
"""Yield model ids to try for a single logical model preference."""
if not model:
@@ -147,9 +112,8 @@ def _candidate_model_variants(model: str):
yield base_model
def _fallback_model_sequence(model: str, fallback_models: Optional[List[str]] = None):
"""Generate a sequence of models to try as fallbacks."""
sequence = [model] + (fallback_models or HF_FALLBACK_MODELS)
def _fallback_model_sequence(model: str):
sequence = [model] + HF_FALLBACK_MODELS
seen = set()
for preferred_model in sequence:
for candidate in _candidate_model_variants(preferred_model):
@@ -157,10 +121,9 @@ def _fallback_model_sequence(model: str, fallback_models: Optional[List[str]] =
seen.add(candidate)
yield candidate
def get_huggingface_api_key(explicit_api_key: Optional[str] = None) -> str:
def get_huggingface_api_key() -> str:
"""Get Hugging Face API key with proper error handling."""
api_key = explicit_api_key or os.getenv('HF_TOKEN')
api_key = os.getenv('HF_TOKEN')
if not api_key:
error_msg = "HF_TOKEN environment variable is not set. Please set it in your .env file."
logger.error(error_msg)
@@ -174,32 +137,14 @@ def get_huggingface_api_key(explicit_api_key: Optional[str] = None) -> str:
return api_key
@lru_cache(maxsize=16)
def _get_hf_client(api_key: str):
"""Get cached Hugging Face client for better performance."""
return OpenAI(base_url="https://router.huggingface.co/v1", api_key=api_key)
@retry(
retry=retry_if_exception(_should_retry_hf_error),
wait=wait_random_exponential(min=1, max=60),
stop=stop_after_attempt(6),
)
@retry(wait=wait_random_exponential(min=1, max=60), stop=stop_after_attempt(6))
def huggingface_text_response(
prompt: str,
model: str = PREMIUM_DEFAULT_MODEL,
fallback_models: Optional[List[str]] = None,
model: str = "openai/gpt-oss-120b:groq",
temperature: float = 0.7,
max_tokens: int = 2048,
top_p: float = 0.9,
system_prompt: Optional[str] = None,
<<<<<<< HEAD
api_key: Optional[str] = None,
tenant_user_id: Optional[str] = None,
=======
tenant_user_id: Optional[str] = None
>>>>>>> pr-421
system_prompt: Optional[str] = None
) -> str:
"""
Generate text response using Hugging Face Inference Providers API.
@@ -209,13 +154,11 @@ def huggingface_text_response(
Args:
prompt (str): The input prompt for the AI model
model (str): Hugging Face model identifier (default: PREMIUM_DEFAULT_MODEL)
fallback_models (list, optional): Custom fallback models to try
model (str): Hugging Face model identifier (default: "openai/gpt-oss-120b:groq")
temperature (float): Controls randomness (0.0-1.0)
max_tokens (int): Maximum tokens in response
top_p (float): Nucleus sampling parameter (0.0-1.0)
system_prompt (str, optional): System instruction for the model
api_key (str, optional): Explicit API key override
Returns:
str: Generated text response
@@ -228,17 +171,32 @@ def huggingface_text_response(
- Set max_tokens based on expected response length
- Use system_prompt to guide model behavior
- Handle errors gracefully in calling functions
Example:
result = huggingface_text_response(
prompt="Write a blog post about AI",
model="openai/gpt-oss-120b:groq",
temperature=0.7,
max_tokens=2048,
system_prompt="You are a professional content writer."
)
"""
try:
if not OPENAI_AVAILABLE:
raise ImportError("OpenAI library not available. Install with: pip install openai")
# Get API key with proper error handling
hf_api_key = get_huggingface_api_key(api_key)
logger.info(f"🔑 Hugging Face API key loaded: {bool(hf_api_key)} (length: {len(hf_api_key) if hf_api_key else 0})")
api_key = get_huggingface_api_key()
logger.info(f"🔑 Hugging Face API key loaded: {bool(api_key)} (length: {len(api_key) if api_key else 0})")
if not api_key:
raise Exception("HF_TOKEN not found in environment variables")
# Initialize Hugging Face client
client = _get_hf_client(hf_api_key)
client = OpenAI(
base_url=f"https://router.huggingface.co/hf/v1",
api_key=api_key,
)
logger.info("✅ Hugging Face client initialized for text response")
# Prepare input for the API
@@ -269,41 +227,13 @@ def huggingface_text_response(
logger.info("🚀 Making Hugging Face API call (chat completion)...")
# Add rate limiting to prevent expensive API calls
import time
time.sleep(1) # 1 second delay between API calls
response = None
last_error = None
<<<<<<< HEAD
for candidate_model in _fallback_model_sequence(model, fallback_models):
# Emit routing event for each model attempt
route_intent = "primary" if candidate_model == model else "fallback"
emit_routing_event(
logger,
flow_type="huggingface_text",
route_intent=route_intent,
provider_selected="huggingface",
model_selected=candidate_model,
tenant_user_id=tenant_user_id,
extra={"original_model": model, "api_call": True}
)
=======
fallback_models_tried = []
fallback_count = 0
for candidate_model in _fallback_model_sequence(model):
fallback_models_tried.append(candidate_model)
route_intent = "primary" if fallback_count == 0 else "fallback"
emit_routing_event(
logger,
flow_type="text_generation",
route_intent=route_intent,
provider_selected="huggingface",
model_selected=candidate_model,
preferred_provider="huggingface",
fallback_count=fallback_count,
fallback_models_tried=fallback_models_tried,
tenant_user_id=tenant_user_id,
extra={"hf_request_type": "text"},
)
>>>>>>> pr-421
try:
response = client.chat.completions.create(
model=candidate_model,
@@ -313,67 +243,41 @@ def huggingface_text_response(
max_tokens=max_tokens
)
if candidate_model != model:
logger.warning("HF text fallback model used: {}", candidate_model)
logger.warning("HF text generation switched to fallback model: {}", candidate_model)
break
except NotFoundError as nf_err:
last_error = nf_err
<<<<<<< HEAD
logger.warning("HF text model not found: {}", candidate_model)
continue
except Exception as call_err:
last_error = call_err
logger.warning("HF text call failed for model {}: {}", candidate_model, _error_details(call_err))
=======
fallback_count += 1
logger.warning("HF model not found: {}. Trying fallback model.", candidate_model)
>>>>>>> pr-421
continue
if response is None:
raise last_error or RuntimeError("All fallback models failed")
raise last_error or Exception("Hugging Face text generation failed: all fallback models failed")
# Extract text from response
generated_text = response.choices[0].message.content or ""
generated_text = response.choices[0].message.content
# Clean up the response
generated_text = re.sub(r'```[a-zA-Z]*\n?', '', generated_text)
generated_text = re.sub(r'```\n?', '', generated_text)
generated_text = generated_text.strip()
if generated_text:
# Remove any markdown formatting if present
generated_text = re.sub(r'```[a-zA-Z]*\n?', '', generated_text)
generated_text = re.sub(r'```\n?', '', generated_text)
generated_text = generated_text.strip()
logger.info(f"✅ Hugging Face text response generated successfully (length: {len(generated_text)})")
return generated_text
except Exception as exc:
details = _error_details(exc)
logger.error(
"❌ Hugging Face text generation failed | error_class={} | type={} | message={} | repr={}",
_classify_hf_error(exc),
details["type"],
details["message"],
details["repr"],
)
raise Exception(f"Hugging Face text generation failed: {exc}") from exc
except Exception as e:
logger.error(f"❌ Hugging Face text generation failed: {str(e)}")
raise Exception(f"Hugging Face text generation failed: {str(e)}")
@retry(
retry=retry_if_exception(_should_retry_hf_error),
wait=wait_random_exponential(min=1, max=60),
stop=stop_after_attempt(6),
)
@retry(wait=wait_random_exponential(min=1, max=60), stop=stop_after_attempt(6))
def huggingface_structured_json_response(
prompt: str,
schema: Dict[str, Any],
model: str = PREMIUM_DEFAULT_MODEL,
fallback_models: Optional[List[str]] = None,
model: str = "openai/gpt-oss-120b:groq",
temperature: float = 0.7,
max_tokens: int = 8192,
system_prompt: Optional[str] = None,
<<<<<<< HEAD
api_key: Optional[str] = None,
tenant_user_id: Optional[str] = None,
=======
tenant_user_id: Optional[str] = None
>>>>>>> pr-421
system_prompt: Optional[str] = None
) -> Dict[str, Any]:
"""
Generate structured JSON response using Hugging Face Inference Providers API.
@@ -384,12 +288,10 @@ def huggingface_structured_json_response(
Args:
prompt (str): The input prompt for the AI model
schema (dict): JSON schema defining the expected output structure
model (str): Hugging Face model identifier (default: PREMIUM_DEFAULT_MODEL)
fallback_models (list, optional): Custom fallback models to try
model (str): Hugging Face model identifier (default: "openai/gpt-oss-120b:groq")
temperature (float): Controls randomness (0.0-1.0). Use 0.1-0.3 for structured output
max_tokens (int): Maximum tokens in response. Use 8192 for complex outputs
system_prompt (str, optional): System instruction for the model
api_key (str, optional): Explicit API key override
Returns:
dict: Parsed JSON response matching the provided schema
@@ -403,17 +305,42 @@ def huggingface_structured_json_response(
- Set max_tokens to 8192 for complex multi-field responses
- Avoid deeply nested schemas with many required fields
- Test with smaller outputs first, then scale up
Example:
schema = {
"type": "object",
"properties": {
"tasks": {
"type": "array",
"items": {
"type": "object",
"properties": {
"title": {"type": "string"},
"description": {"type": "string"}
}
}
}
}
}
result = huggingface_structured_json_response(prompt, schema, temperature=0.2, max_tokens=8192)
"""
try:
if not OPENAI_AVAILABLE:
raise ImportError("OpenAI library not available. Install with: pip install openai")
# Get API key with proper error handling
hf_api_key = get_huggingface_api_key(api_key)
logger.info(f"🔑 Hugging Face API key loaded: {bool(hf_api_key)} (length: {len(hf_api_key) if hf_api_key else 0})")
api_key = get_huggingface_api_key()
logger.info(f"🔑 Hugging Face API key loaded: {bool(api_key)} (length: {len(api_key) if api_key else 0})")
if not api_key:
raise Exception("HF_TOKEN not found in environment variables")
# Initialize OpenAI client with Hugging Face base URL
client = _get_hf_client(hf_api_key)
# Use standard Inference API endpoint
client = OpenAI(
base_url=f"https://router.huggingface.co/hf/v1",
api_key=api_key,
)
logger.info("✅ Hugging Face client initialized for structured JSON response")
# Prepare input for the API
@@ -427,6 +354,7 @@ def huggingface_structured_json_response(
})
# Add user prompt with JSON instruction
# For HF models, explicit JSON instruction in prompt is often better than response_format
json_instruction = "Please respond with valid JSON that matches the provided schema."
messages.append({
"role": "user",
@@ -445,14 +373,13 @@ def huggingface_structured_json_response(
logger.info("🚀 Making Hugging Face structured API call...")
# Make the API call using standard Chat Completions
logger.info("🚀 Making Hugging Face API call (chat completion)...")
# Add JSON schema to prompt for guidance
json_schema_str = json.dumps(schema, indent=2)
messages[-1]["content"] += f"\n\nJSON Schema:\n{json_schema_str}"
<<<<<<< HEAD
response = None
last_error = None
=======
# Add rate limiting to prevent expensive API calls
import time
time.sleep(1) # 1 second delay between API calls
@@ -460,23 +387,7 @@ def huggingface_structured_json_response(
try:
response = None
last_error = None
fallback_models_tried = []
fallback_count = 0
for candidate_model in _fallback_model_sequence(model):
fallback_models_tried.append(candidate_model)
route_intent = "primary" if fallback_count == 0 else "fallback"
emit_routing_event(
logger,
flow_type="text_generation",
route_intent=route_intent,
provider_selected="huggingface",
model_selected=candidate_model,
preferred_provider="huggingface",
fallback_count=fallback_count,
fallback_models_tried=fallback_models_tried,
tenant_user_id=tenant_user_id,
extra={"hf_request_type": "structured_json"},
)
try:
response = client.chat.completions.create(
model=candidate_model,
@@ -490,45 +401,23 @@ def huggingface_structured_json_response(
break
except NotFoundError as nf_err:
last_error = nf_err
fallback_count += 1
logger.warning("HF structured model not found: {}. Trying fallback model.", candidate_model)
continue
>>>>>>> pr-421
for candidate_model in _fallback_model_sequence(model, fallback_models):
# Emit routing event for each model attempt
route_intent = "primary" if candidate_model == model else "fallback"
emit_routing_event(
logger,
flow_type="huggingface_structured",
route_intent=route_intent,
provider_selected="huggingface",
model_selected=candidate_model,
tenant_user_id=tenant_user_id,
extra={"original_model": model, "api_call": True, "response_format": "json_object"}
)
if response is None:
raise last_error or Exception("Hugging Face structured generation failed: all fallback models failed")
response_text = response.choices[0].message.content
# Clean up response text if needed
response_text = response_text.strip()
if response_text.startswith("```json"):
response_text = response_text[7:]
if response_text.endswith("```"):
response_text = response_text[:-3]
response_text = response_text.strip()
try:
<<<<<<< HEAD
response = client.chat.completions.create(
model=candidate_model,
messages=messages,
temperature=temperature,
max_tokens=max_tokens,
response_format={"type": "json_object"}
)
if candidate_model != model:
logger.warning("HF structured fallback model used: {}", candidate_model)
break
except Exception as err:
last_error = err
if isinstance(err, NotFoundError):
logger.warning("HF structured model not found: {}", candidate_model)
continue
msg = str(err).lower()
if "422" in msg or "not supported" in msg:
=======
parsed_json = json.loads(response_text)
logger.info("✅ Hugging Face structured JSON response parsed successfully")
return parsed_json
@@ -556,75 +445,43 @@ def huggingface_structured_json_response(
response = None
last_error = None
for candidate_model in _fallback_model_sequence(model):
fallback_models_tried.append(candidate_model)
route_intent = "primary" if fallback_count == 0 else "fallback"
emit_routing_event(
logger,
flow_type="text_generation",
route_intent=route_intent,
provider_selected="huggingface",
model_selected=candidate_model,
preferred_provider="huggingface",
fallback_count=fallback_count,
fallback_models_tried=fallback_models_tried,
tenant_user_id=tenant_user_id,
extra={"hf_request_type": "structured_json_no_response_format"},
)
>>>>>>> pr-421
try:
response = client.chat.completions.create(
model=candidate_model,
messages=messages,
temperature=temperature,
max_tokens=max_tokens,
max_tokens=max_tokens
)
if candidate_model != model:
logger.warning("HF structured fallback(no response_format) model: {}", candidate_model)
logger.warning("HF structured no-response_format fallback model: {}", candidate_model)
break
<<<<<<< HEAD
except Exception as second_err:
last_error = second_err
=======
except NotFoundError as nf_err:
last_error = nf_err
fallback_count += 1
logger.warning("HF structured model not found (no response_format path): {}", candidate_model)
>>>>>>> pr-421
continue
if response is None:
raise last_error or RuntimeError("All fallback models failed")
if response is None:
raise last_error or e
response_text = response.choices[0].message.content
# ... (same parsing logic would apply, simplified here for brevity)
try:
return json.loads(response_text)
except:
# Regex fallback
json_match = re.search(r'\{.*\}', response_text, re.DOTALL)
if json_match:
return json.loads(json_match.group())
return {"error": "Failed to parse JSON response", "raw_response": response_text}
raise e
response_text = (response.choices[0].message.content or "").strip()
# Clean up response text if needed
if response_text.startswith("```json"):
response_text = response_text[7:]
if response_text.endswith("```"):
response_text = response_text[:-3]
response_text = response_text.strip()
try:
parsed_json = json.loads(response_text)
logger.info("✅ Hugging Face structured JSON response parsed successfully")
return parsed_json
except json.JSONDecodeError:
json_match = re.search(r"\{.*\}", response_text, re.DOTALL)
if json_match:
return json.loads(json_match.group())
return {"error": "Failed to parse JSON response", "raw_response": response_text}
except Exception as exc:
details = _error_details(exc)
logger.error(
"❌ Hugging Face structured JSON generation failed | error_class={} | type={} | message={} | repr={}",
_classify_hf_error(exc),
details["type"],
details["message"],
details["repr"],
)
raise Exception(f"Hugging Face structured JSON generation failed: {exc}") from exc
except Exception as e:
error_msg = str(e) if str(e) else repr(e)
error_type = type(e).__name__
logger.error(f"❌ Hugging Face structured JSON generation failed: {error_type}: {error_msg}")
logger.error(f"❌ Full exception details: {repr(e)}")
import traceback
logger.error(f"❌ Traceback: {traceback.format_exc()}")
raise Exception(f"Hugging Face structured JSON generation failed: {error_type}: {error_msg}")
def get_available_models() -> list:
"""
@@ -634,15 +491,14 @@ def get_available_models() -> list:
list: List of available model identifiers
"""
return [
PREMIUM_DEFAULT_MODEL,
"openai/gpt-oss-120b:groq",
"moonshotai/Kimi-K2-Instruct-0905:groq",
"Qwen/Qwen2.5-VL-7B-Instruct",
"meta-llama/Llama-3.1-8B-Instruct:groq",
"microsoft/Phi-3-medium-4k-instruct:groq",
SIF_LOW_COST_MODEL_DEFAULTS[0]
"mistralai/Mistral-7B-Instruct-v0.3:groq"
]
def validate_model(model: str) -> bool:
"""
Validate if a model identifier is supported.

View File

@@ -2,8 +2,6 @@
This service provides the main LLM text generation functionality,
migrated from the legacy lib/gpt_providers/text_generation/main_text_generation.py
This is a clean version that imports from modular components to avoid merge conflicts.
"""
import os
@@ -13,47 +11,9 @@ from datetime import datetime
from loguru import logger
from fastapi import HTTPException
# Import all functionality from our modular textgen_utils package
from .textgen_utils import (
llm_text_gen,
check_gpt_provider,
get_api_key,
_normalize_provider,
_parse_csv_env,
_resolve_provider_sequence,
_map_logical_model_to_provider_model,
_resolve_model_sequence,
)
# Re-export all the main functions for backward compatibility
__all__ = [
"llm_text_gen",
"check_gpt_provider",
"get_api_key",
"_normalize_provider",
"_parse_csv_env",
"_resolve_provider_sequence",
"_map_logical_model_to_provider_model",
"_resolve_model_sequence",
]
# Maintain any additional constants or configurations that might be needed
PREMIUM_HF_MINIMAL_FALLBACK_MODELS = [
"openai/gpt-oss-120b:groq",
]
# Legacy compatibility - any imports that other modules might expect
from .gemini_provider import gemini_text_response, gemini_structured_json_response
from .huggingface_provider import huggingface_text_response, huggingface_structured_json_response
<<<<<<< HEAD
from .tenant_provider_config import tenant_provider_config_resolver
from .routing_policy import (
PREMIUM_DEFAULT_MODEL,
SIF_LOW_COST_MODEL_DEFAULTS,
resolve_text_provider_alias,
)
=======
from ...utils.logger_utils import emit_routing_event
def llm_text_gen(
@@ -93,14 +53,17 @@ def llm_text_gen(
frequency_penalty = 0.0
presence_penalty = 0.0
# Check for GPT_PROVIDER environment variable
env_provider = os.getenv('GPT_PROVIDER', '').lower()
if env_provider in ['gemini', 'google']:
provider_cfg = tenant_provider_config_resolver.resolve(
modality="text",
user_id=user_id,
)
selected_provider = (provider_cfg.selected_providers or [None])[0]
if selected_provider in ["gemini", "google"]:
gpt_provider = "google"
model = "gemini-2.0-flash-001"
elif env_provider in ['hf_response_api', 'huggingface', 'hf']:
model = provider_cfg.model_policy.get("default_model") or "gemini-2.0-flash-001"
elif selected_provider == "huggingface":
gpt_provider = "huggingface"
model = "mistralai/Mistral-7B-Instruct-v0.3:groq"
model = provider_cfg.model_policy.get("default_model") or "mistralai/Mistral-7B-Instruct-v0.3:groq"
# Default blog characteristics
blog_tone = "Professional"
@@ -110,64 +73,32 @@ def llm_text_gen(
blog_output_format = "markdown"
blog_length = 2000
# Check which providers have API keys available using APIKeyManager
api_key_manager = APIKeyManager()
available_providers = []
if api_key_manager.get_api_key("gemini"):
available_providers.append("google")
if api_key_manager.get_api_key("hf_token"):
available_providers.append("huggingface")
for provider in ("google", "huggingface"):
if get_api_key(provider, user_id=user_id):
available_providers.append(provider)
preferred_provider = env_provider or None
flow_type = "text_generation"
route_intent = "primary"
fallback_count = 0
fallback_models_tried = []
# If no environment variable set, auto-detect based on available keys
if not env_provider:
# Prefer Google Gemini if available, otherwise use Hugging Face
if "google" in available_providers:
gpt_provider = "google"
model = "gemini-2.0-flash-001"
elif "huggingface" in available_providers:
gpt_provider = "huggingface"
model = "mistralai/Mistral-7B-Instruct-v0.3:groq"
if gpt_provider not in available_providers:
logger.warning(f"[llm_text_gen] Provider {gpt_provider} unavailable for user {user_id}, falling back.")
if available_providers:
gpt_provider = available_providers[0]
else:
logger.error("[llm_text_gen] No API keys found for supported providers.")
raise RuntimeError("No LLM API keys configured. Configure GEMINI_API_KEY or HF_TOKEN to enable AI responses.")
else:
# Environment variable was set, validate it's supported
if gpt_provider not in available_providers:
logger.warning(f"[llm_text_gen] Provider {gpt_provider} not available, falling back to available providers")
if "google" in available_providers:
gpt_provider = "google"
model = "gemini-2.0-flash-001"
elif "huggingface" in available_providers:
gpt_provider = "huggingface"
model = "mistralai/Mistral-7B-Instruct-v0.3:groq"
else:
raise RuntimeError("No supported providers available.")
raise RuntimeError("No LLM API keys configured for tenant or environment defaults.")
# Ensure downstream provider clients (currently env-based) receive resolved key
resolved_key = get_api_key(gpt_provider, user_id=user_id)
if gpt_provider == "google" and resolved_key:
os.environ["GEMINI_API_KEY"] = resolved_key
os.environ.setdefault("GOOGLE_API_KEY", resolved_key)
elif gpt_provider == "huggingface" and resolved_key:
os.environ["HF_TOKEN"] = resolved_key
if gpt_provider == "huggingface" and preferred_hf_models:
model = preferred_hf_models[0]
logger.info(f"[llm_text_gen] Using preferred low-cost HF model: {model}")
fallback_models_tried.append(model)
logger.debug(f"[llm_text_gen] Using provider: {gpt_provider}, model: {model}")
emit_routing_event(
logger,
flow_type=flow_type,
route_intent=route_intent,
provider_selected=gpt_provider,
model_selected=model,
preferred_provider=preferred_provider,
fallback_count=fallback_count,
fallback_models_tried=fallback_models_tried,
tenant_user_id=user_id,
extra={"available_providers": available_providers},
)
# Map provider name to APIProvider enum (define at function scope for usage tracking)
from models.subscription_models import APIProvider
@@ -311,8 +242,7 @@ def llm_text_gen(
model=model,
temperature=temperature,
max_tokens=max_tokens,
system_prompt=system_instructions,
tenant_user_id=user_id
system_prompt=system_instructions
)
else:
response_text = huggingface_text_response(
@@ -321,8 +251,7 @@ def llm_text_gen(
temperature=temperature,
max_tokens=max_tokens,
top_p=top_p,
system_prompt=system_instructions,
tenant_user_id=user_id
system_prompt=system_instructions
)
else:
logger.error(f"[llm_text_gen] Unknown provider: {gpt_provider}")
@@ -366,34 +295,17 @@ def llm_text_gen(
try:
logger.info(f"[llm_text_gen] Trying SINGLE fallback provider: {fallback_provider}")
actual_provider_used = fallback_provider
fallback_count += 1
route_intent = "fallback"
# Update provider enum for fallback
if fallback_provider == "google":
provider_enum = APIProvider.GEMINI
actual_provider_name = "gemini"
fallback_model = "gemini-2.0-flash-lite"
fallback_models_tried.append(fallback_model)
elif fallback_provider == "huggingface":
provider_enum = APIProvider.MISTRAL
actual_provider_name = "huggingface"
fallback_model = "mistralai/Mistral-7B-Instruct-v0.3:groq"
fallback_models_tried.append(fallback_model)
emit_routing_event(
logger,
flow_type=flow_type,
route_intent=route_intent,
provider_selected=fallback_provider,
model_selected=fallback_model,
preferred_provider=preferred_provider,
fallback_count=fallback_count,
fallback_models_tried=fallback_models_tried,
tenant_user_id=user_id,
extra={"available_providers": available_providers},
)
if fallback_provider == "google":
if json_struct:
response_text = gemini_structured_json_response(
@@ -422,8 +334,7 @@ def llm_text_gen(
model="mistralai/Mistral-7B-Instruct-v0.3:groq",
temperature=temperature,
max_tokens=max_tokens,
system_prompt=system_instructions,
tenant_user_id=user_id
system_prompt=system_instructions
)
else:
response_text = huggingface_text_response(
@@ -432,8 +343,7 @@ def llm_text_gen(
temperature=temperature,
max_tokens=max_tokens,
top_p=top_p,
system_prompt=system_instructions,
tenant_user_id=user_id
system_prompt=system_instructions
)
# TRACK USAGE after successful fallback call
@@ -472,18 +382,16 @@ def check_gpt_provider(gpt_provider: str) -> bool:
supported_providers = ["google", "huggingface"]
return gpt_provider in supported_providers
def get_api_key(gpt_provider: str) -> Optional[str]:
def get_api_key(gpt_provider: str, user_id: Optional[str] = None) -> Optional[str]:
"""Get API key for the specified provider."""
try:
api_key_manager = APIKeyManager()
provider_mapping = {
"google": "gemini",
"huggingface": "hf_token"
"huggingface": "huggingface"
}
mapped_provider = provider_mapping.get(gpt_provider, gpt_provider)
return api_key_manager.get_api_key(mapped_provider)
key, _source = tenant_provider_config_resolver.resolve_provider_key(mapped_provider, user_id=user_id)
return key
except Exception as e:
logger.error(f"[get_api_key] Error getting API key for {gpt_provider}: {str(e)}")
return None
>>>>>>> pr-421

View File

@@ -1,88 +1,3 @@
<<<<<<< HEAD
"""Tenant-aware provider configuration and API key resolution for LLM providers."""
from __future__ import annotations
import os
import time
from typing import Dict, Optional
from loguru import logger
from services.database import get_session_for_user
from models.onboarding import APIKey, OnboardingSession
_PROVIDER_KEY_MAP = {
"google": "gemini",
"gemini": "gemini",
"huggingface": "hf_token",
"hf": "hf_token",
"hf_response_api": "hf_token",
}
_PROVIDER_ENV_MAP = {
"gemini": "GEMINI_API_KEY",
"hf_token": "HF_TOKEN",
}
_CACHE_TTL_SECONDS = int(os.getenv("TENANT_PROVIDER_CACHE_TTL", "60"))
_cache: Dict[str, tuple[float, Optional[str]]] = {}
def _cache_key(user_id: Optional[str], provider_key: str) -> str:
return f"{user_id or 'global'}::{provider_key}"
def _normalize_provider(provider: str) -> str:
return _PROVIDER_KEY_MAP.get((provider or "").lower(), (provider or "").lower())
def get_tenant_api_key(user_id: Optional[str], provider: str) -> Optional[str]:
provider_key = _normalize_provider(provider)
ck = _cache_key(user_id, provider_key)
cached = _cache.get(ck)
now = time.time()
if cached and (now - cached[0]) < _CACHE_TTL_SECONDS:
return cached[1]
key: Optional[str] = None
if user_id:
db = None
try:
db = get_session_for_user(user_id)
if db:
record = (
db.query(APIKey.key)
.join(OnboardingSession, APIKey.session_id == OnboardingSession.id)
.filter(OnboardingSession.user_id == user_id, APIKey.provider == provider_key)
.order_by(APIKey.updated_at.desc())
.first()
)
if record and record[0]:
key = record[0]
except Exception as exc:
logger.debug("tenant api-key lookup failed for user={}, provider={}: {}", user_id, provider_key, exc)
finally:
if db:
db.close()
if not key:
env_var = _PROVIDER_ENV_MAP.get(provider_key)
if env_var:
key = os.getenv(env_var)
_cache[ck] = (now, key)
return key
def get_available_text_providers(user_id: Optional[str]) -> list[str]:
providers = []
if get_tenant_api_key(user_id, "gemini"):
providers.append("google")
if get_tenant_api_key(user_id, "huggingface"):
providers.append("huggingface")
return providers
=======
from __future__ import annotations
import os
@@ -251,4 +166,3 @@ class TenantProviderConfigResolver:
tenant_provider_config_resolver = TenantProviderConfigResolver()
>>>>>>> pr-420

View File

@@ -6,24 +6,10 @@ Extracts ALL onboarding data and provides personalized defaults for forms and re
from typing import Dict, Any, Optional, List
from loguru import logger
from services.database import get_session_for_user
from services.database import SessionLocal
from api.content_planning.services.content_strategy.onboarding import OnboardingDataIntegrationService
def _ensure_dict(value: Any) -> Dict[str, Any]:
"""Safely coerce arbitrary payload shape into a dictionary."""
return value if isinstance(value, dict) else {}
def _ensure_list(value: Any) -> List[Any]:
"""Safely coerce arbitrary payload shape into a list."""
if isinstance(value, list):
return value
if value is None:
return []
return [value]
class PersonalizationService:
"""
Service for extracting user preferences from onboarding data
@@ -34,14 +20,6 @@ class PersonalizationService:
"""Initialize Personalization Service."""
self.logger = logger
logger.info("[Personalization Service] Initialized")
@staticmethod
def _as_dict(value: Any) -> Dict[str, Any]:
return value if isinstance(value, dict) else {}
@staticmethod
def _as_list(value: Any) -> List[Any]:
return value if isinstance(value, list) else []
def get_user_preferences(self, user_id: str) -> Dict[str, Any]:
"""
@@ -58,50 +36,20 @@ class PersonalizationService:
- templates: Recommended templates for user's industry
- channels: Recommended channels based on platform personas
"""
db = None
db = SessionLocal()
try:
db = get_session_for_user(user_id)
if not db:
logger.warning(f"[Personalization] No DB session available for user {user_id}; using default preferences")
return self._get_default_preferences()
integration_service = OnboardingDataIntegrationService()
<<<<<<< HEAD
integrated_data = integration_service.get_integrated_data_sync(user_id, db)
if not isinstance(integrated_data, dict):
logger.warning(
f"[Personalization] Integrated onboarding payload is non-dict for user {user_id}; using defaults"
)
integrated_data = {}
canonical_profile = integrated_data.get('canonical_profile', {})
if not isinstance(canonical_profile, dict):
logger.warning(
f"[Personalization] Canonical profile is non-dict for user {user_id}; using defaults"
)
canonical_profile = {}
=======
integrated_data_raw = integration_service.get_integrated_data_sync(user_id, db)
integrated_data = _ensure_dict(integrated_data_raw)
canonical_profile = _ensure_dict(integrated_data.get('canonical_profile'))
>>>>>>> pr-416
# Map strictly from Canonical Profile
preferences = {
"industry": canonical_profile.get("industry"),
<<<<<<< HEAD
"target_audience": self._as_dict(canonical_profile.get("target_audience", {})),
"platform_preferences": self._as_list(canonical_profile.get("platform_preferences", [])),
"content_preferences": self._as_list(canonical_profile.get("content_types", [])),
"style_preferences": self._as_dict(canonical_profile.get("visual_style", {})),
"brand_colors": self._as_list(canonical_profile.get("brand_colors", [])),
=======
"target_audience": _ensure_dict(canonical_profile.get("target_audience")),
"platform_preferences": _ensure_list(canonical_profile.get("platform_preferences")),
"content_preferences": _ensure_list(canonical_profile.get("content_types")),
"style_preferences": _ensure_dict(canonical_profile.get("visual_style")),
"brand_colors": _ensure_list(canonical_profile.get("brand_colors")),
>>>>>>> pr-416
"target_audience": canonical_profile.get("target_audience", {}),
"platform_preferences": canonical_profile.get("platform_preferences", []),
"content_preferences": canonical_profile.get("content_types", []),
"style_preferences": canonical_profile.get("visual_style", {}),
"brand_colors": canonical_profile.get("brand_colors", []),
"recommended_templates": [],
"recommended_channels": [],
"writing_style": {
@@ -110,11 +58,7 @@ class PersonalizationService:
"complexity": canonical_profile.get("writing_complexity", "intermediate"),
"engagement_level": canonical_profile.get("writing_engagement", "moderate"),
},
<<<<<<< HEAD
"brand_values": self._as_list(canonical_profile.get("brand_values", [])),
=======
"brand_values": _ensure_list(canonical_profile.get("brand_values")),
>>>>>>> pr-416
"brand_values": canonical_profile.get("brand_values", []),
}
# Ensure target_audience structure
@@ -150,7 +94,7 @@ class PersonalizationService:
if not preferences["recommended_channels"]:
preferences["recommended_channels"] = self._get_recommended_channels(
preferences.get("industry"),
_ensure_list(_ensure_dict(preferences.get("target_audience")).get("demographics"))
preferences.get("target_audience", {}).get("demographics", [])
)
logger.info(f"[Personalization] Extracted preferences for user {user_id}: industry={preferences.get('industry')}")
@@ -160,8 +104,7 @@ class PersonalizationService:
logger.error(f"[Personalization] Error getting user preferences: {str(e)}", exc_info=True)
return self._get_default_preferences()
finally:
if db:
db.close()
db.close()
def get_personalized_defaults(
self,

View File

@@ -11,7 +11,12 @@ from pathlib import Path
from loguru import logger
from fastapi import HTTPException
from sqlalchemy.orm import Session
from api.story_writer.utils.media_utils import get_story_media_write_dir
def _get_story_media_write_dir(media_type: str, user_id: Optional[str] = None, db: Optional[Session] = None) -> Path:
"""Lazy import wrapper to avoid circular imports."""
from api.story_writer.utils.media_utils import get_story_media_write_dir
return get_story_media_write_dir(media_type, user_id=user_id, db=db)
class StoryAudioGenerationService:
@@ -29,7 +34,7 @@ class StoryAudioGenerationService:
self.output_dir = Path(output_dir)
self.output_dir.mkdir(parents=True, exist_ok=True)
else:
self.output_dir = get_story_media_write_dir("audio")
self.output_dir = _get_story_media_write_dir("audio")
logger.info(f"[StoryAudioGeneration] Initialized with output directory: {self.output_dir}")
def _get_user_audio_dir(self, user_id: str, db: Optional[Session] = None) -> Path:
@@ -38,7 +43,7 @@ class StoryAudioGenerationService:
Falls back to default output_dir if workspace not found.
"""
try:
return get_story_media_write_dir("audio", user_id=user_id, db=db)
return _get_story_media_write_dir("audio", user_id=user_id, db=db)
except Exception as e:
logger.warning(f"[StoryAudioGeneration] Failed to resolve user workspace path for {user_id}: {e}")
return self.output_dir

View File

@@ -15,11 +15,16 @@ from sqlalchemy.orm import Session
from services.llm_providers.main_image_generation import generate_image
from services.llm_providers.image_generation import ImageGenerationResult
from utils.logger_utils import get_service_logger
from api.story_writer.utils.media_utils import get_story_media_write_dir
logger = get_service_logger("story_writer.image_generation")
def _get_story_media_write_dir(media_type: str, user_id: Optional[str] = None, db: Optional[Session] = None) -> Path:
"""Lazy import wrapper to avoid circular imports."""
from api.story_writer.utils.media_utils import get_story_media_write_dir
return get_story_media_write_dir(media_type, user_id=user_id, db=db)
class StoryImageGenerationService:
"""Service for generating images for story scenes."""
@@ -35,7 +40,7 @@ class StoryImageGenerationService:
self.output_dir = Path(output_dir)
self.output_dir.mkdir(parents=True, exist_ok=True)
else:
self.output_dir = get_story_media_write_dir("image")
self.output_dir = _get_story_media_write_dir("image")
logger.info(f"[StoryImageGeneration] Initialized with output directory: {self.output_dir}")
def _get_user_image_dir(self, user_id: str, db: Optional[Session] = None) -> Path:
@@ -44,7 +49,7 @@ class StoryImageGenerationService:
Falls back to default output_dir if workspace not found.
"""
try:
return get_story_media_write_dir("image", user_id=user_id, db=db)
return _get_story_media_write_dir("image", user_id=user_id, db=db)
except Exception as e:
logger.warning(f"[StoryImageGeneration] Failed to resolve user workspace path for {user_id}: {e}")
return self.output_dir

View File

@@ -11,7 +11,12 @@ from pathlib import Path
from loguru import logger
from fastapi import HTTPException
from sqlalchemy.orm import Session
from api.story_writer.utils.media_utils import get_story_media_write_dir
def _get_story_media_write_dir(media_type: str, user_id: Optional[str] = None, db: Optional[Session] = None) -> Path:
"""Lazy import wrapper to avoid circular imports."""
from api.story_writer.utils.media_utils import get_story_media_write_dir
return get_story_media_write_dir(media_type, user_id=user_id, db=db)
class StoryVideoGenerationService:
@@ -29,7 +34,7 @@ class StoryVideoGenerationService:
self.output_dir = Path(output_dir)
self.output_dir.mkdir(parents=True, exist_ok=True)
else:
self.output_dir = get_story_media_write_dir("video")
self.output_dir = _get_story_media_write_dir("video")
logger.info(f"[StoryVideoGeneration] Initialized with output directory: {self.output_dir}")
def _get_user_video_dir(self, user_id: str, db: Optional[Session] = None) -> Path:
@@ -38,7 +43,7 @@ class StoryVideoGenerationService:
Falls back to default output_dir if workspace not found.
"""
try:
return get_story_media_write_dir("video", user_id=user_id, db=db)
return _get_story_media_write_dir("video", user_id=user_id, db=db)
except Exception as e:
logger.warning(f"[StoryVideoGeneration] Failed to resolve user workspace path for {user_id}: {e}")
return self.output_dir

View File

@@ -216,7 +216,7 @@ def start_backend(enable_reload=False, production_mode=False):
print("=" * 50)
# Set up clean logging for end users
from logging_config import configure_logging, get_uvicorn_log_level
from logging_config import setup_clean_logging, get_uvicorn_log_level
# Video stack preflight (diagnostics + version assert)
try:
from services.story_writer.video_preflight import (
@@ -228,11 +228,7 @@ def start_backend(enable_reload=False, production_mode=False):
log_video_stack_diagnostics = None
assert_supported_moviepy = None
<<<<<<< HEAD
verbose_mode = configure_logging(verbose_mode=verbose_mode, bootstrap_source="start_alwrity_backend")
=======
verbose_mode = configure_logging(mode="default", app_name="ALwrity")
>>>>>>> pr-422
verbose_mode = setup_clean_logging()
uvicorn_log_level = get_uvicorn_log_level()
# Log diagnostics and assert versions (fail fast if misconfigured)

View File

@@ -2,17 +2,8 @@
Logger utilities to prevent conflicts between different logging configurations.
"""
import hashlib
import json
from loguru import logger
import sys
<<<<<<< HEAD
import hashlib
import json
from typing import Any, Dict, Optional
=======
from typing import Any, Dict, List, Optional
>>>>>>> pr-421
def safe_logger_config(format_string: str, level: str = "INFO"):
@@ -60,100 +51,3 @@ def get_service_logger(service_name: str, format_string: str = None):
safe_logger_config(format_string)
return logger.bind(service=service_name)
<<<<<<< HEAD
def _mask_user_id(user_id: Optional[str]) -> str:
"""Mask user ID for privacy in logs."""
if not user_id:
return "anonymous"
return hashlib.sha256(str(user_id).encode("utf-8")).hexdigest()[:12]
def emit_routing_event(
logger_instance,
flow_type: str,
*,
route_intent: str = "primary",
provider_selected: str,
model_selected: str,
preferred_provider: Optional[str] = None,
fallback_count: int = 0,
fallback_models_tried: Optional[list] = None,
tenant_user_id: Optional[str] = None,
extra: Optional[Dict[str, Any]] = None,
level: str = "info"
) -> None:
"""
Emit structured routing event for LLM provider selection.
Args:
logger_instance: Logger instance to use
flow_type: Type of flow (e.g., "sif_agent", "premium_tool")
route_intent: Route intent ("primary" or "fallback")
provider_selected: Selected provider name
model_selected: Selected model name
preferred_provider: Preferred provider (if any)
fallback_count: Number of fallback attempts made
fallback_models_tried: List of models tried as fallbacks
tenant_user_id: Tenant user ID (will be hashed)
extra: Additional fields to include
level: Log level to use
"""
payload: Dict[str, Any] = {
"flow_type": flow_type,
"route_intent": route_intent,
=======
def _mask_tenant_user_id(tenant_user_id: Optional[str]) -> Optional[str]:
"""Return a stable hash for a tenant user id so logs avoid exposing raw IDs."""
if not tenant_user_id:
return None
return hashlib.sha256(tenant_user_id.encode("utf-8")).hexdigest()[:12]
def emit_routing_event(
service_logger,
*,
flow_type: str,
route_intent: str,
provider_selected: Optional[str],
model_selected: Optional[str],
preferred_provider: Optional[str],
fallback_count: int = 0,
fallback_models_tried: Optional[List[str]] = None,
tenant_user_id: Optional[str] = None,
event_name: str = "llm_routing_event",
level: str = "INFO",
extra: Optional[Dict[str, Any]] = None,
) -> Dict[str, Any]:
"""Emit a standardized structured model-routing event for AI facades."""
payload: Dict[str, Any] = {
"event_name": event_name,
"flow_type": flow_type,
"route_intent": route_intent,
"flow_type/route_intent": f"{flow_type}/{route_intent}",
>>>>>>> pr-421
"provider_selected": provider_selected,
"model_selected": model_selected,
"preferred_provider": preferred_provider,
"fallback_count": fallback_count,
"fallback_models_tried": fallback_models_tried or [],
<<<<<<< HEAD
"tenant": _mask_user_id(tenant_user_id),
}
if extra:
payload.update(extra)
log_method = getattr(logger_instance, level.lower(), logger_instance.info)
log_method("[llm_routing] {}", json.dumps(payload, sort_keys=True, default=str))
=======
"tenant_user_id": _mask_tenant_user_id(tenant_user_id),
}
if extra:
payload.update(extra)
log_method = getattr(service_logger, level.lower(), service_logger.info)
log_method("{}", json.dumps(payload, sort_keys=True))
return payload
>>>>>>> pr-421