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import asyncio
import logging
from dataclasses import dataclass, field
from datetime import datetime, timezone
from enum import Enum
from typing import Any
from pydantic import SecretStr
from app.models.providers.base import (
BaseProvider,
CompletionResponse,
ModelInfo,
ProviderError,
RateLimitError,
TaskType,
TokenUsage,
)
from app.models.providers.openai import OpenAIProvider
from app.models.providers.anthropic import AnthropicProvider
from app.models.providers.google import GoogleProvider
from app.models.providers.groq import GroqProvider
from app.models.providers.nvidia import NVIDIAProvider
logger = logging.getLogger(__name__)
class RoutingStrategy(str, Enum):
"""Model routing strategies."""
BEST_QUALITY = "best_quality" # Use highest quality model
BEST_SPEED = "best_speed" # Use fastest model
BEST_VALUE = "best_value" # Balance quality/cost
LOWEST_COST = "lowest_cost" # Use cheapest model
ROUND_ROBIN = "round_robin" # Rotate between models
@dataclass
class ModelScore:
"""Scoring for model routing decisions."""
model_id: str
provider: str
quality_score: float = 0.0 # 0-1, higher is better
speed_score: float = 0.0 # 0-1, higher is faster
cost_score: float = 0.0 # 0-1, higher is cheaper
overall_score: float = 0.0
@dataclass
class RoutingConfig:
"""Configuration for model routing."""
default_strategy: RoutingStrategy = RoutingStrategy.BEST_VALUE
max_fallback_attempts: int = 3
fallback_delay_seconds: float = 1.0
enable_caching: bool = True
cache_ttl_seconds: int = 300
# Task-specific model preferences
task_preferences: dict[TaskType, list[str]] = field(default_factory=lambda: {
TaskType.GENERAL: ["gpt-4o", "claude-3-5-sonnet-20241022", "gemini-2.5-pro", "deepseek-r1"],
TaskType.CODE: ["claude-3-5-sonnet-20241022", "gpt-4o", "devstral-2-123b", "gemini-2.5-pro"],
TaskType.REASONING: ["claude-3-opus-20240229", "deepseek-r1", "gpt-4o", "step-3.5-flash"],
TaskType.EXTRACTION: ["gpt-4o-mini", "claude-3-haiku-20240307", "gemini-2.5-flash"],
TaskType.SUMMARIZATION: ["gpt-4o-mini", "claude-3-5-haiku-20241022", "gemini-2.5-flash"],
TaskType.CLASSIFICATION: ["gpt-4o-mini", "claude-3-haiku-20240307", "llama-3.1-8b-instant"],
TaskType.CREATIVE: ["claude-3-5-sonnet-20241022", "gpt-4o", "gemini-2.5-pro"],
TaskType.FAST: ["llama-3.1-8b-instant", "gemini-2.5-flash", "gpt-4o-mini"],
})
@dataclass
class CostTracker:
"""Track costs across providers and models."""
total_cost: float = 0.0
cost_by_provider: dict[str, float] = field(default_factory=dict)
cost_by_model: dict[str, float] = field(default_factory=dict)
request_count: int = 0
total_tokens: TokenUsage = field(default_factory=TokenUsage)
start_time: datetime = field(default_factory=datetime.utcnow)
def track(self, response: CompletionResponse) -> None:
"""Track a completion response."""
self.total_cost += response.cost
self.request_count += 1
self.total_tokens = self.total_tokens + response.usage
# By provider
self.cost_by_provider[response.provider] = (
self.cost_by_provider.get(response.provider, 0.0) + response.cost
)
# By model
self.cost_by_model[response.model] = (
self.cost_by_model.get(response.model, 0.0) + response.cost
)
def get_summary(self) -> dict[str, Any]:
"""Get cost summary."""
return {
"total_cost_usd": self.total_cost,
"request_count": self.request_count,
"total_tokens": {
"prompt": self.total_tokens.prompt_tokens,
"completion": self.total_tokens.completion_tokens,
"total": self.total_tokens.total_tokens,
},
"cost_by_provider": self.cost_by_provider,
"cost_by_model": self.cost_by_model,
"avg_cost_per_request": (
self.total_cost / self.request_count if self.request_count > 0 else 0
),
"tracking_since": self.start_time.isoformat(),
}
def reset(self) -> None:
"""Reset cost tracking."""
self.total_cost = 0.0
self.cost_by_provider = {}
self.cost_by_model = {}
self.request_count = 0
self.total_tokens = TokenUsage()
self.start_time = datetime.now(timezone.utc)
class SmartModelRouter:
"""Intelligent model router with fallback and cost tracking."""
# Model quality rankings (subjective, based on benchmarks)
MODEL_QUALITY_SCORES: dict[str, float] = {
# OpenAI
"gpt-4o": 0.95,
"gpt-4-turbo": 0.92,
"gpt-4": 0.90,
"gpt-4o-mini": 0.80,
"gpt-3.5-turbo": 0.70,
# Anthropic
"claude-3-opus-20240229": 0.97,
"claude-3-5-sonnet-20241022": 0.94,
"claude-3-sonnet-20240229": 0.88,
"claude-3-5-haiku-20241022": 0.82,
"claude-3-haiku-20240307": 0.75,
# Google Gemini 2.5 & 3.0
"gemini-2.5-pro": 0.93,
"gemini-2.5-flash": 0.85,
"gemini-3-flash-preview": 0.87,
"gemini-3.1-flash-lite-preview": 0.82,
# Google Gemini 2.0
"gemini-2.0-flash": 0.88,
"gemini-2.0-flash-lite": 0.80,
# Google Gemini 1.5
"gemini-1.5-pro": 0.91,
"gemini-1.5-flash": 0.78,
"gemini-pro": 0.75,
# Groq
"llama-3.3-70b-versatile": 0.85,
"llama-3.2-90b-vision-preview": 0.84,
"llama-3.1-70b-versatile": 0.84,
"llama3-70b-8192": 0.82,
"mixtral-8x7b-32768": 0.78,
"llama-3.1-8b-instant": 0.65,
"llama3-8b-8192": 0.60,
"gemma2-9b-it": 0.62,
# NVIDIA
"deepseek-r1": 0.92,
"deepseek-v3.2": 0.90,
"step-3.5-flash": 0.88,
"glm4.7": 0.87,
"devstral-2-123b": 0.86,
"llama-3.3-70b": 0.85,
"nemotron-70b": 0.83,
}
# Model speed rankings (relative, based on typical latency)
MODEL_SPEED_SCORES: dict[str, float] = {
# Groq is fastest
"llama-3.1-8b-instant": 0.98,
"llama3-8b-8192": 0.97,
"gemma2-9b-it": 0.96,
"mixtral-8x7b-32768": 0.94,
"llama3-70b-8192": 0.92,
"llama-3.1-70b-versatile": 0.91,
"llama-3.3-70b-versatile": 0.90,
"llama-3.2-90b-vision-preview": 0.89,
# Google Flash models
"gemini-2.5-flash": 0.90,
"gemini-3-flash-preview": 0.89,
"gemini-2.0-flash": 0.88,
"gemini-1.5-flash": 0.88,
"gemini-2.0-flash-lite": 0.87,
"gemini-3.1-flash-lite-preview": 0.86,
# NVIDIA models
"step-3.5-flash": 0.85,
"devstral-2-123b": 0.84,
"llama-3.3-70b": 0.83,
"nemotron-70b": 0.82,
"glm4.7": 0.81,
"deepseek-v3.2": 0.80,
"deepseek-r1": 0.79,
# Mini models
"gpt-4o-mini": 0.85,
"claude-3-haiku-20240307": 0.84,
"claude-3-5-haiku-20241022": 0.83,
"gpt-3.5-turbo": 0.82,
# Pro models
"gemini-pro": 0.75,
"gemini-2.5-pro": 0.72,
"gemini-1.5-pro": 0.70,
"gpt-4o": 0.68,
"claude-3-5-sonnet-20241022": 0.65,
"claude-3-sonnet-20240229": 0.62,
"gpt-4-turbo": 0.55,
"gpt-4": 0.50,
"claude-3-opus-20240229": 0.40,
}
def __init__(
self,
openai_api_key: str | SecretStr | None = None,
anthropic_api_key: str | SecretStr | None = None,
google_api_key: str | SecretStr | None = None,
groq_api_key: str | SecretStr | None = None,
nvidia_api_key: str | SecretStr | None = None,
config: RoutingConfig | None = None,
):
self.config = config or RoutingConfig()
self.providers: dict[str, BaseProvider] = {}
self.cost_tracker = CostTracker()
self._initialized = False
self._round_robin_index = 0
# Store API keys (handle SecretStr)
self._api_keys = {
"openai": self._get_key_value(openai_api_key),
"anthropic": self._get_key_value(anthropic_api_key),
"google": self._get_key_value(google_api_key),
"groq": self._get_key_value(groq_api_key),
"nvidia": self._get_key_value(nvidia_api_key),
}
@staticmethod
def _get_key_value(key: str | SecretStr | None) -> str | None:
"""Extract string value from SecretStr if needed."""
if key is None:
return None
if isinstance(key, SecretStr):
return key.get_secret_value()
return key
async def initialize(self) -> None:
"""Initialize all configured providers."""
if self._initialized:
return
# Initialize providers based on available API keys
if self._api_keys["openai"]:
provider = OpenAIProvider(api_key=self._api_keys["openai"])
await provider.initialize()
self.providers["openai"] = provider
logger.info("Initialized OpenAI provider")
if self._api_keys["anthropic"]:
provider = AnthropicProvider(api_key=self._api_keys["anthropic"])
await provider.initialize()
self.providers["anthropic"] = provider
logger.info("Initialized Anthropic provider")
if self._api_keys["google"]:
provider = GoogleProvider(api_key=self._api_keys["google"])
await provider.initialize()
self.providers["google"] = provider
logger.info("Initialized Google provider")
if self._api_keys["groq"]:
provider = GroqProvider(api_key=self._api_keys["groq"])
await provider.initialize()
self.providers["groq"] = provider
logger.info("Initialized Groq provider")
if self._api_keys["nvidia"]:
provider = NVIDIAProvider(api_key=self._api_keys["nvidia"])
await provider.initialize()
self.providers["nvidia"] = provider
logger.info("Initialized NVIDIA provider")
if not self.providers:
logger.warning("No LLM providers configured")
self._initialized = True
async def shutdown(self) -> None:
"""Shutdown all providers."""
for provider in self.providers.values():
await provider.shutdown()
self.providers.clear()
self._initialized = False
def list_providers(self) -> list[str]:
"""Get list of initialized provider names."""
return list(self.providers.keys())
def get_available_models(self) -> list[ModelInfo]:
"""Get all available models across providers."""
models = []
for provider in self.providers.values():
models.extend(provider.get_models())
return models
def get_provider_for_model(self, model: str) -> BaseProvider | None:
"""Get the provider for a specific model.
Supports both formats:
- "gemini-1.5-flash" (bare model name)
- "google/gemini-1.5-flash" (provider/model format)
"""
# Strip provider prefix if present (e.g., "google/gemini-1.5-flash" -> "gemini-1.5-flash")
model_name = model
if "/" in model:
provider_prefix, model_name = model.split("/", 1)
# Try to match provider directly first
if provider_prefix in self.providers:
provider = self.providers[provider_prefix]
try:
if provider.get_model_info(model_name):
return provider
except Exception:
pass
# Check aliases
if hasattr(provider, "MODEL_ALIASES"):
if model_name in provider.MODEL_ALIASES: # type: ignore
return provider
# Fallback: try all providers with both original and stripped names
for provider in self.providers.values():
for name in [model, model_name]:
try:
if provider.get_model_info(name):
return provider
except Exception:
pass
# Check aliases
if hasattr(provider, "MODEL_ALIASES"):
if name in provider.MODEL_ALIASES: # type: ignore
return provider
return None
def _score_model(
self,
model_info: ModelInfo,
strategy: RoutingStrategy,
) -> ModelScore:
"""Score a model based on routing strategy."""
model_id = model_info.id
quality = self.MODEL_QUALITY_SCORES.get(model_id, 0.5)
speed = self.MODEL_SPEED_SCORES.get(model_id, 0.5)
# Calculate cost score (inverse of cost, normalized)
max_cost = 0.1 # $0.10 per 1K tokens as reference
avg_cost = (model_info.cost_per_1k_input + model_info.cost_per_1k_output) / 2
cost_score = 1.0 - min(avg_cost / max_cost, 1.0)
# Calculate overall score based on strategy
if strategy == RoutingStrategy.BEST_QUALITY:
overall = quality * 0.8 + speed * 0.1 + cost_score * 0.1
elif strategy == RoutingStrategy.BEST_SPEED:
overall = quality * 0.1 + speed * 0.8 + cost_score * 0.1
elif strategy == RoutingStrategy.LOWEST_COST:
overall = quality * 0.1 + speed * 0.1 + cost_score * 0.8
else: # BEST_VALUE
overall = quality * 0.4 + speed * 0.3 + cost_score * 0.3
return ModelScore(
model_id=model_id,
provider=model_info.provider,
quality_score=quality,
speed_score=speed,
cost_score=cost_score,
overall_score=overall,
)
def route(
self,
task_type: TaskType = TaskType.GENERAL,
strategy: RoutingStrategy | None = None,
required_features: list[str] | None = None,
) -> tuple[str, BaseProvider] | None:
"""Route to the best model for the task.
Args:
task_type: Type of task to perform
strategy: Routing strategy (uses default if not specified)
required_features: Required model features (e.g., 'functions', 'vision')
Returns:
Tuple of (model_id, provider) or None if no suitable model found
"""
if not self.providers:
return None
strategy = strategy or self.config.default_strategy
# Handle round robin specially
if strategy == RoutingStrategy.ROUND_ROBIN:
models = self.get_available_models()
if not models:
return None
# Filter by features if needed
if required_features:
models = self._filter_by_features(models, required_features)
if not models:
return None
model = models[self._round_robin_index % len(models)]
self._round_robin_index += 1
provider = self.get_provider_for_model(model.id)
return (model.id, provider) if provider else None
# Get task preferences
preferred_models = self.config.task_preferences.get(task_type, [])
# Check preferred models first
for model_id in preferred_models:
provider = self.get_provider_for_model(model_id)
if provider:
model_info = provider.get_model_info(model_id)
if model_info and self._meets_requirements(model_info, required_features):
return (model_id, provider)
# Score all available models
scored_models: list[tuple[ModelScore, BaseProvider]] = []
for provider in self.providers.values():
for model_info in provider.get_models():
if self._meets_requirements(model_info, required_features):
score = self._score_model(model_info, strategy)
scored_models.append((score, provider))
if not scored_models:
return None
# Sort by overall score
scored_models.sort(key=lambda x: x[0].overall_score, reverse=True)
best_score, best_provider = scored_models[0]
return (best_score.model_id, best_provider)
def _meets_requirements(
self,
model_info: ModelInfo,
required_features: list[str] | None,
) -> bool:
"""Check if model meets required features."""
if not required_features:
return True
for feature in required_features:
if feature == "functions" and not model_info.supports_functions:
return False
if feature == "vision" and not model_info.supports_vision:
return False
if feature == "streaming" and not model_info.supports_streaming:
return False
return True
def _filter_by_features(
self,
models: list[ModelInfo],
required_features: list[str],
) -> list[ModelInfo]:
"""Filter models by required features."""
return [m for m in models if self._meets_requirements(m, required_features)]
async def complete(
self,
messages: list[dict[str, Any]],
model: str | None = None,
task_type: TaskType = TaskType.GENERAL,
strategy: RoutingStrategy | None = None,
required_features: list[str] | None = None,
fallback: bool = True,
**kwargs: Any,
) -> CompletionResponse:
"""Generate a completion with automatic routing and fallback.
Args:
messages: List of message dicts
model: Specific model to use (overrides routing)
task_type: Type of task for routing
strategy: Routing strategy
required_features: Required model features
fallback: Enable fallback on failure
**kwargs: Additional completion parameters
Returns:
CompletionResponse from the model
Raises:
ProviderError: If all models fail
"""
if not self._initialized:
await self.initialize()
# Determine model(s) to try
models_to_try: list[tuple[str, BaseProvider]] = []
if model:
# Specific model requested
provider = self.get_provider_for_model(model)
if provider:
models_to_try.append((model, provider))
else:
raise ProviderError(f"Model {model} not found", "router")
else:
# Use routing
route_result = self.route(task_type, strategy, required_features)
if route_result:
models_to_try.append(route_result)
# Add fallback models
if fallback and len(models_to_try) < self.config.max_fallback_attempts:
# Get additional models for fallback
preferred = self.config.task_preferences.get(task_type, [])
for fallback_model in preferred:
if len(models_to_try) >= self.config.max_fallback_attempts:
break
provider = self.get_provider_for_model(fallback_model)
if provider and (fallback_model, provider) not in models_to_try:
models_to_try.append((fallback_model, provider))
if not models_to_try:
raise ProviderError("No suitable models available", "router")
# Try models in order
last_error: Exception | None = None
for i, (model_id, provider) in enumerate(models_to_try):
try:
# Strip provider prefix if present (e.g., "google/gemini-1.5-flash" -> "gemini-1.5-flash")
model_name = model_id.split("/", 1)[1] if "/" in model_id else model_id
logger.info(f"Attempting completion with {provider.PROVIDER_NAME}/{model_name}")
logger.debug(f"Router: model_id={model_id}, model_name={model_name}, provider={provider.PROVIDER_NAME}")
response = await provider.complete(messages, model_name, **kwargs)
# Track cost
self.cost_tracker.track(response)
return response
except RateLimitError as e:
logger.warning(f"Rate limited by {provider.PROVIDER_NAME}: {e}")
last_error = e
if i < len(models_to_try) - 1:
await asyncio.sleep(self.config.fallback_delay_seconds)
except ProviderError as e:
logger.warning(f"Provider error from {provider.PROVIDER_NAME}: {e}")
last_error = e
if i < len(models_to_try) - 1:
await asyncio.sleep(self.config.fallback_delay_seconds)
except Exception as e:
logger.error(f"Unexpected error from {provider.PROVIDER_NAME}: {e}")
last_error = e
# All models failed
raise ProviderError(
f"All models failed. Last error: {last_error}",
"router",
)
def get_cost_summary(self) -> dict[str, Any]:
"""Get cost tracking summary."""
return self.cost_tracker.get_summary()
def reset_cost_tracking(self) -> None:
"""Reset cost tracking."""
self.cost_tracker.reset()
@property
def available_providers(self) -> list[str]:
"""List of initialized provider names."""
return list(self.providers.keys())
def __repr__(self) -> str:
return (
f"SmartModelRouter(providers={list(self.providers.keys())}, "
f"requests={self.cost_tracker.request_count}, "
f"cost=${self.cost_tracker.total_cost:.4f})"
)
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