dify / api /core /model_manager.py
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import logging
from collections.abc import Callable, Generator, Iterable, Sequence
from typing import IO, Any, Optional, Union, cast
from configs import dify_config
from core.entities.embedding_type import EmbeddingInputType
from core.entities.provider_configuration import ProviderConfiguration, ProviderModelBundle
from core.entities.provider_entities import ModelLoadBalancingConfiguration
from core.errors.error import ProviderTokenNotInitError
from core.model_runtime.callbacks.base_callback import Callback
from core.model_runtime.entities.llm_entities import LLMResult
from core.model_runtime.entities.message_entities import PromptMessage, PromptMessageTool
from core.model_runtime.entities.model_entities import ModelType
from core.model_runtime.entities.rerank_entities import RerankResult
from core.model_runtime.entities.text_embedding_entities import TextEmbeddingResult
from core.model_runtime.errors.invoke import InvokeAuthorizationError, InvokeConnectionError, InvokeRateLimitError
from core.model_runtime.model_providers.__base.large_language_model import LargeLanguageModel
from core.model_runtime.model_providers.__base.moderation_model import ModerationModel
from core.model_runtime.model_providers.__base.rerank_model import RerankModel
from core.model_runtime.model_providers.__base.speech2text_model import Speech2TextModel
from core.model_runtime.model_providers.__base.text_embedding_model import TextEmbeddingModel
from core.model_runtime.model_providers.__base.tts_model import TTSModel
from core.provider_manager import ProviderManager
from extensions.ext_redis import redis_client
from models.provider import ProviderType
logger = logging.getLogger(__name__)
class ModelInstance:
"""
Model instance class
"""
def __init__(self, provider_model_bundle: ProviderModelBundle, model: str) -> None:
self.provider_model_bundle = provider_model_bundle
self.model = model
self.provider = provider_model_bundle.configuration.provider.provider
self.credentials = self._fetch_credentials_from_bundle(provider_model_bundle, model)
self.model_type_instance = self.provider_model_bundle.model_type_instance
self.load_balancing_manager = self._get_load_balancing_manager(
configuration=provider_model_bundle.configuration,
model_type=provider_model_bundle.model_type_instance.model_type,
model=model,
credentials=self.credentials,
)
@staticmethod
def _fetch_credentials_from_bundle(provider_model_bundle: ProviderModelBundle, model: str) -> dict:
"""
Fetch credentials from provider model bundle
:param provider_model_bundle: provider model bundle
:param model: model name
:return:
"""
configuration = provider_model_bundle.configuration
model_type = provider_model_bundle.model_type_instance.model_type
credentials = configuration.get_current_credentials(model_type=model_type, model=model)
if credentials is None:
raise ProviderTokenNotInitError(f"Model {model} credentials is not initialized.")
return credentials
@staticmethod
def _get_load_balancing_manager(
configuration: ProviderConfiguration, model_type: ModelType, model: str, credentials: dict
) -> Optional["LBModelManager"]:
"""
Get load balancing model credentials
:param configuration: provider configuration
:param model_type: model type
:param model: model name
:param credentials: model credentials
:return:
"""
if configuration.model_settings and configuration.using_provider_type == ProviderType.CUSTOM:
current_model_setting = None
# check if model is disabled by admin
for model_setting in configuration.model_settings:
if model_setting.model_type == model_type and model_setting.model == model:
current_model_setting = model_setting
break
# check if load balancing is enabled
if current_model_setting and current_model_setting.load_balancing_configs:
# use load balancing proxy to choose credentials
lb_model_manager = LBModelManager(
tenant_id=configuration.tenant_id,
provider=configuration.provider.provider,
model_type=model_type,
model=model,
load_balancing_configs=current_model_setting.load_balancing_configs,
managed_credentials=credentials if configuration.custom_configuration.provider else None,
)
return lb_model_manager
return None
def invoke_llm(
self,
prompt_messages: Sequence[PromptMessage],
model_parameters: Optional[dict] = None,
tools: Sequence[PromptMessageTool] | None = None,
stop: Optional[Sequence[str]] = None,
stream: bool = True,
user: Optional[str] = None,
callbacks: Optional[list[Callback]] = None,
) -> Union[LLMResult, Generator]:
"""
Invoke large language model
:param prompt_messages: prompt messages
:param model_parameters: model parameters
:param tools: tools for tool calling
:param stop: stop words
:param stream: is stream response
:param user: unique user id
:param callbacks: callbacks
:return: full response or stream response chunk generator result
"""
if not isinstance(self.model_type_instance, LargeLanguageModel):
raise Exception("Model type instance is not LargeLanguageModel")
self.model_type_instance = cast(LargeLanguageModel, self.model_type_instance)
return cast(
Union[LLMResult, Generator],
self._round_robin_invoke(
function=self.model_type_instance.invoke,
model=self.model,
credentials=self.credentials,
prompt_messages=prompt_messages,
model_parameters=model_parameters,
tools=tools,
stop=stop,
stream=stream,
user=user,
callbacks=callbacks,
),
)
def get_llm_num_tokens(
self, prompt_messages: list[PromptMessage], tools: Optional[list[PromptMessageTool]] = None
) -> int:
"""
Get number of tokens for llm
:param prompt_messages: prompt messages
:param tools: tools for tool calling
:return:
"""
if not isinstance(self.model_type_instance, LargeLanguageModel):
raise Exception("Model type instance is not LargeLanguageModel")
self.model_type_instance = cast(LargeLanguageModel, self.model_type_instance)
return cast(
int,
self._round_robin_invoke(
function=self.model_type_instance.get_num_tokens,
model=self.model,
credentials=self.credentials,
prompt_messages=prompt_messages,
tools=tools,
),
)
def invoke_text_embedding(
self, texts: list[str], user: Optional[str] = None, input_type: EmbeddingInputType = EmbeddingInputType.DOCUMENT
) -> TextEmbeddingResult:
"""
Invoke large language model
:param texts: texts to embed
:param user: unique user id
:param input_type: input type
:return: embeddings result
"""
if not isinstance(self.model_type_instance, TextEmbeddingModel):
raise Exception("Model type instance is not TextEmbeddingModel")
self.model_type_instance = cast(TextEmbeddingModel, self.model_type_instance)
return cast(
TextEmbeddingResult,
self._round_robin_invoke(
function=self.model_type_instance.invoke,
model=self.model,
credentials=self.credentials,
texts=texts,
user=user,
input_type=input_type,
),
)
def get_text_embedding_num_tokens(self, texts: list[str]) -> int:
"""
Get number of tokens for text embedding
:param texts: texts to embed
:return:
"""
if not isinstance(self.model_type_instance, TextEmbeddingModel):
raise Exception("Model type instance is not TextEmbeddingModel")
self.model_type_instance = cast(TextEmbeddingModel, self.model_type_instance)
return cast(
int,
self._round_robin_invoke(
function=self.model_type_instance.get_num_tokens,
model=self.model,
credentials=self.credentials,
texts=texts,
),
)
def invoke_rerank(
self,
query: str,
docs: list[str],
score_threshold: Optional[float] = None,
top_n: Optional[int] = None,
user: Optional[str] = None,
) -> RerankResult:
"""
Invoke rerank model
:param query: search query
:param docs: docs for reranking
:param score_threshold: score threshold
:param top_n: top n
:param user: unique user id
:return: rerank result
"""
if not isinstance(self.model_type_instance, RerankModel):
raise Exception("Model type instance is not RerankModel")
self.model_type_instance = cast(RerankModel, self.model_type_instance)
return cast(
RerankResult,
self._round_robin_invoke(
function=self.model_type_instance.invoke,
model=self.model,
credentials=self.credentials,
query=query,
docs=docs,
score_threshold=score_threshold,
top_n=top_n,
user=user,
),
)
def invoke_moderation(self, text: str, user: Optional[str] = None) -> bool:
"""
Invoke moderation model
:param text: text to moderate
:param user: unique user id
:return: false if text is safe, true otherwise
"""
if not isinstance(self.model_type_instance, ModerationModel):
raise Exception("Model type instance is not ModerationModel")
self.model_type_instance = cast(ModerationModel, self.model_type_instance)
return cast(
bool,
self._round_robin_invoke(
function=self.model_type_instance.invoke,
model=self.model,
credentials=self.credentials,
text=text,
user=user,
),
)
def invoke_speech2text(self, file: IO[bytes], user: Optional[str] = None) -> str:
"""
Invoke large language model
:param file: audio file
:param user: unique user id
:return: text for given audio file
"""
if not isinstance(self.model_type_instance, Speech2TextModel):
raise Exception("Model type instance is not Speech2TextModel")
self.model_type_instance = cast(Speech2TextModel, self.model_type_instance)
return cast(
str,
self._round_robin_invoke(
function=self.model_type_instance.invoke,
model=self.model,
credentials=self.credentials,
file=file,
user=user,
),
)
def invoke_tts(self, content_text: str, tenant_id: str, voice: str, user: Optional[str] = None) -> Iterable[bytes]:
"""
Invoke large language tts model
:param content_text: text content to be translated
:param tenant_id: user tenant id
:param voice: model timbre
:param user: unique user id
:return: text for given audio file
"""
if not isinstance(self.model_type_instance, TTSModel):
raise Exception("Model type instance is not TTSModel")
self.model_type_instance = cast(TTSModel, self.model_type_instance)
return cast(
Iterable[bytes],
self._round_robin_invoke(
function=self.model_type_instance.invoke,
model=self.model,
credentials=self.credentials,
content_text=content_text,
user=user,
tenant_id=tenant_id,
voice=voice,
),
)
def _round_robin_invoke(self, function: Callable[..., Any], *args, **kwargs) -> Any:
"""
Round-robin invoke
:param function: function to invoke
:param args: function args
:param kwargs: function kwargs
:return:
"""
if not self.load_balancing_manager:
return function(*args, **kwargs)
last_exception: Union[InvokeRateLimitError, InvokeAuthorizationError, InvokeConnectionError, None] = None
while True:
lb_config = self.load_balancing_manager.fetch_next()
if not lb_config:
if not last_exception:
raise ProviderTokenNotInitError("Model credentials is not initialized.")
else:
raise last_exception
try:
if "credentials" in kwargs:
del kwargs["credentials"]
return function(*args, **kwargs, credentials=lb_config.credentials)
except InvokeRateLimitError as e:
# expire in 60 seconds
self.load_balancing_manager.cooldown(lb_config, expire=60)
last_exception = e
continue
except (InvokeAuthorizationError, InvokeConnectionError) as e:
# expire in 10 seconds
self.load_balancing_manager.cooldown(lb_config, expire=10)
last_exception = e
continue
except Exception as e:
raise e
def get_tts_voices(self, language: Optional[str] = None) -> list:
"""
Invoke large language tts model voices
:param language: tts language
:return: tts model voices
"""
if not isinstance(self.model_type_instance, TTSModel):
raise Exception("Model type instance is not TTSModel")
self.model_type_instance = cast(TTSModel, self.model_type_instance)
return self.model_type_instance.get_tts_model_voices(
model=self.model, credentials=self.credentials, language=language
)
class ModelManager:
def __init__(self) -> None:
self._provider_manager = ProviderManager()
def get_model_instance(self, tenant_id: str, provider: str, model_type: ModelType, model: str) -> ModelInstance:
"""
Get model instance
:param tenant_id: tenant id
:param provider: provider name
:param model_type: model type
:param model: model name
:return:
"""
if not provider:
return self.get_default_model_instance(tenant_id, model_type)
provider_model_bundle = self._provider_manager.get_provider_model_bundle(
tenant_id=tenant_id, provider=provider, model_type=model_type
)
return ModelInstance(provider_model_bundle, model)
def get_default_provider_model_name(self, tenant_id: str, model_type: ModelType) -> tuple[str, str]:
"""
Return first provider and the first model in the provider
:param tenant_id: tenant id
:param model_type: model type
:return: provider name, model name
"""
return self._provider_manager.get_first_provider_first_model(tenant_id, model_type)
def get_default_model_instance(self, tenant_id: str, model_type: ModelType) -> ModelInstance:
"""
Get default model instance
:param tenant_id: tenant id
:param model_type: model type
:return:
"""
default_model_entity = self._provider_manager.get_default_model(tenant_id=tenant_id, model_type=model_type)
if not default_model_entity:
raise ProviderTokenNotInitError(f"Default model not found for {model_type}")
return self.get_model_instance(
tenant_id=tenant_id,
provider=default_model_entity.provider.provider,
model_type=model_type,
model=default_model_entity.model,
)
class LBModelManager:
def __init__(
self,
tenant_id: str,
provider: str,
model_type: ModelType,
model: str,
load_balancing_configs: list[ModelLoadBalancingConfiguration],
managed_credentials: Optional[dict] = None,
) -> None:
"""
Load balancing model manager
:param tenant_id: tenant_id
:param provider: provider
:param model_type: model_type
:param model: model name
:param load_balancing_configs: all load balancing configurations
:param managed_credentials: credentials if load balancing configuration name is __inherit__
"""
self._tenant_id = tenant_id
self._provider = provider
self._model_type = model_type
self._model = model
self._load_balancing_configs = load_balancing_configs
for load_balancing_config in self._load_balancing_configs[:]: # Iterate over a shallow copy of the list
if load_balancing_config.name == "__inherit__":
if not managed_credentials:
# remove __inherit__ if managed credentials is not provided
self._load_balancing_configs.remove(load_balancing_config)
else:
load_balancing_config.credentials = managed_credentials
def fetch_next(self) -> Optional[ModelLoadBalancingConfiguration]:
"""
Get next model load balancing config
Strategy: Round Robin
:return:
"""
cache_key = "model_lb_index:{}:{}:{}:{}".format(
self._tenant_id, self._provider, self._model_type.value, self._model
)
cooldown_load_balancing_configs = []
max_index = len(self._load_balancing_configs)
while True:
current_index = redis_client.incr(cache_key)
current_index = cast(int, current_index)
if current_index >= 10000000:
current_index = 1
redis_client.set(cache_key, current_index)
redis_client.expire(cache_key, 3600)
if current_index > max_index:
current_index = current_index % max_index
real_index = current_index - 1
if real_index > max_index:
real_index = 0
config: ModelLoadBalancingConfiguration = self._load_balancing_configs[real_index]
if self.in_cooldown(config):
cooldown_load_balancing_configs.append(config)
if len(cooldown_load_balancing_configs) >= len(self._load_balancing_configs):
# all configs are in cooldown
return None
continue
if dify_config.DEBUG:
logger.info(
f"Model LB\nid: {config.id}\nname:{config.name}\n"
f"tenant_id: {self._tenant_id}\nprovider: {self._provider}\n"
f"model_type: {self._model_type.value}\nmodel: {self._model}"
)
return config
return None
def cooldown(self, config: ModelLoadBalancingConfiguration, expire: int = 60) -> None:
"""
Cooldown model load balancing config
:param config: model load balancing config
:param expire: cooldown time
:return:
"""
cooldown_cache_key = "model_lb_index:cooldown:{}:{}:{}:{}:{}".format(
self._tenant_id, self._provider, self._model_type.value, self._model, config.id
)
redis_client.setex(cooldown_cache_key, expire, "true")
def in_cooldown(self, config: ModelLoadBalancingConfiguration) -> bool:
"""
Check if model load balancing config is in cooldown
:param config: model load balancing config
:return:
"""
cooldown_cache_key = "model_lb_index:cooldown:{}:{}:{}:{}:{}".format(
self._tenant_id, self._provider, self._model_type.value, self._model, config.id
)
res: bool = redis_client.exists(cooldown_cache_key)
return res
@staticmethod
def get_config_in_cooldown_and_ttl(
tenant_id: str, provider: str, model_type: ModelType, model: str, config_id: str
) -> tuple[bool, int]:
"""
Get model load balancing config is in cooldown and ttl
:param tenant_id: workspace id
:param provider: provider name
:param model_type: model type
:param model: model name
:param config_id: model load balancing config id
:return:
"""
cooldown_cache_key = "model_lb_index:cooldown:{}:{}:{}:{}:{}".format(
tenant_id, provider, model_type.value, model, config_id
)
ttl = redis_client.ttl(cooldown_cache_key)
if ttl == -2:
return False, 0
ttl = cast(int, ttl)
return True, ttl