Files
MoFin/venv/lib/python3.12/site-packages/litellm/exceptions.py
T
知微 fa45d8aa5f fix: 小果地址统一node122(兼容LAN+EasyTier)
- health_checklist.json: 192.168.1.122→node122
- ocr_client.py: docstring IP→node122
- docs/market-data-requirements.md: IP→node122
- 所有API调用通过ProxyHandler({})绕过系统代理
  Privoxy对node122:18003返回500,直连正常
2026-06-30 02:56:35 +08:00

1256 lines
45 KiB
Python

# +-----------------------------------------------+
# | |
# | Give Feedback / Get Help |
# | https://github.com/BerriAI/litellm/issues/new |
# | |
# +-----------------------------------------------+
#
# Thank you users! We ❤️ you! - Krrish & Ishaan
## LiteLLM versions of the OpenAI Exception Types
import enum
from typing import Any, Dict, Optional, Union
import httpx
import openai
from litellm.types.utils import LiteLLMCommonStrings
class RateLimitErrorCategory(str, enum.Enum):
"""
Category of a rate limit error, allowing callers to distinguish where the rate
limit originated. Exposed on every :class:`RateLimitError` instance via the
``category`` attribute.
Use these values to switch on the rate limit source, e.g.::
try:
...
except litellm.RateLimitError as e:
if e.category == RateLimitErrorCategory.LITELLM_RATE_LIMIT:
... # litellm's own limiter (key/team/user/model RPM/TPM/budget)
elif e.category == RateLimitErrorCategory.VENDOR_RATE_LIMIT:
... # the upstream LLM provider returned 429
"""
VENDOR_RATE_LIMIT = "vendor_rate_limit"
"""The upstream LLM provider returned a rate-limit response (e.g. OpenAI 429)."""
VENDOR_BATCH_RATE_LIMIT = "vendor_batch_rate_limit"
"""The upstream LLM provider returned a rate-limit response on a batch endpoint."""
LITELLM_RATE_LIMIT = "litellm_rate_limit"
"""LiteLLM's own rate limiter (key/team/user/model RPM/TPM, budget, parallel-requests, etc.) blocked the request."""
LITELLM_BATCH_RATE_LIMIT = "litellm_batch_rate_limit"
"""LiteLLM's own batch rate limiter (token/request budget across a batch input file) blocked the request."""
class RateLimitType(str, enum.Enum):
"""
The dimension that was exceeded when a rate-limit error fired.
This is orthogonal to :class:`RateLimitErrorCategory` — *category* tells
callers **who** rate-limited the request (the upstream vendor vs. one of
litellm's own limiters), while *type* tells them **which limit dimension**
was exceeded (an RPM ceiling, a TPM ceiling, a max-parallel-requests
ceiling, a budget cap, or a max-iterations cap).
Surfaced both on every :class:`RateLimitError` instance via the
``rate_limit_type`` attribute and on the structured
``StandardLoggingPayload.error_information.error_rate_limit_type`` field
so custom callbacks / metrics consumers can split rate-limit failures by
cause without parsing free-text error messages.
"""
REQUESTS = "requests"
"""Requests-per-minute (RPM) or requests-per-window ceiling exceeded."""
TOKENS = "tokens"
"""Tokens-per-minute (TPM) or tokens-per-window ceiling exceeded."""
CONCURRENT_REQUESTS = "concurrent_requests"
"""``max_parallel_requests`` — too many in-flight requests at once."""
BUDGET = "budget"
"""Spend budget cap reached (key, team, user, or per-session)."""
MAX_ITERATIONS = "max_iterations"
"""Per-session max-iterations cap reached (agent-style flows)."""
_RATE_LIMIT_CATEGORY_VALUES = frozenset(c.value for c in RateLimitErrorCategory)
_RATE_LIMIT_TYPE_VALUES = frozenset(t.value for t in RateLimitType)
def validate_rate_limit_category(value: Any) -> Optional[str]:
"""Return ``value`` only if it matches a known :class:`RateLimitErrorCategory`.
Used at duck-typed read sites (StandardLoggingPayload extraction, Prometheus
labels) to reject `.category` strings set by unrelated third-party exceptions
— otherwise those would leak into custom-callback payloads and Prometheus
label cardinality.
"""
if isinstance(value, RateLimitErrorCategory):
return value.value
if isinstance(value, str) and value in _RATE_LIMIT_CATEGORY_VALUES:
return value
return None
def validate_rate_limit_type(value: Any) -> Optional[str]:
"""Return ``value`` only if it matches a known :class:`RateLimitType`.
See :func:`validate_rate_limit_category` for the rationale.
"""
if isinstance(value, RateLimitType):
return value.value
if isinstance(value, str) and value in _RATE_LIMIT_TYPE_VALUES:
return value
return None
_MINIMAL_ERROR_RESPONSE: Optional[httpx.Response] = None
def _get_minimal_error_response() -> httpx.Response:
"""Get a cached minimal httpx.Response object for error cases."""
global _MINIMAL_ERROR_RESPONSE
if _MINIMAL_ERROR_RESPONSE is None:
_MINIMAL_ERROR_RESPONSE = httpx.Response(
status_code=400,
request=httpx.Request(method="GET", url="https://litellm.ai"),
)
return _MINIMAL_ERROR_RESPONSE
class AuthenticationError(openai.AuthenticationError): # type: ignore
def __init__(
self,
message,
llm_provider,
model,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 401
self.message = "litellm.AuthenticationError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
self.response = response or httpx.Response(
status_code=self.status_code,
request=httpx.Request(
method="GET", url="https://litellm.ai"
), # mock request object
)
super().__init__(
self.message, response=self.response, body=None
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
# raise when invalid models passed, example gpt-8
class NotFoundError(openai.NotFoundError): # type: ignore
def __init__(
self,
message,
model,
llm_provider,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 404
self.message = "litellm.NotFoundError: {}".format(message)
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
self.response = response or httpx.Response(
status_code=self.status_code,
request=httpx.Request(
method="GET", url="https://litellm.ai"
), # mock request object
)
super().__init__(
self.message, response=self.response, body=None
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class BadRequestError(openai.BadRequestError): # type: ignore
def __init__(
self,
message,
model,
llm_provider,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
body: Optional[dict] = None,
):
self.status_code = 400
self.message = "litellm.BadRequestError: {}".format(message)
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
# Use response if it's a valid httpx.Response with a request, otherwise use minimal error response
# Note: We check _request (not .request property) to avoid RuntimeError when _request is None
if (
response is not None
and isinstance(response, httpx.Response)
and hasattr(response, "_request")
and getattr(response, "_request", None) is not None
):
self.response = response
else:
self.response = _get_minimal_error_response()
super().__init__(
self.message, response=self.response, body=body
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class ImageFetchError(BadRequestError):
def __init__(
self,
message,
model=None,
llm_provider=None,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
body: Optional[dict] = None,
):
super().__init__(
message=message,
model=model,
llm_provider=llm_provider,
response=response,
litellm_debug_info=litellm_debug_info,
max_retries=max_retries,
num_retries=num_retries,
body=body,
)
class UnprocessableEntityError(openai.UnprocessableEntityError): # type: ignore
def __init__(
self,
message,
model,
llm_provider,
response: httpx.Response,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 422
self.message = "litellm.UnprocessableEntityError: {}".format(message)
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
super().__init__(
self.message, response=response, body=None
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class Timeout(openai.APITimeoutError): # type: ignore
def __init__(
self,
message,
model,
llm_provider,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
headers: Optional[dict] = None,
exception_status_code: Optional[int] = None,
):
request = httpx.Request(
method="POST",
url="https://api.openai.com/v1",
)
super().__init__(
request=request
) # Call the base class constructor with the parameters it needs
self.status_code = exception_status_code or 408
self.message = "litellm.Timeout: {}".format(message)
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
self.headers = headers
# custom function to convert to str
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class PermissionDeniedError(openai.PermissionDeniedError): # type: ignore
def __init__(
self,
message,
llm_provider,
model,
response: httpx.Response,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 403
self.message = "litellm.PermissionDeniedError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
super().__init__(
self.message, response=response, body=None
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class RateLimitError(openai.RateLimitError): # type: ignore
"""
Unified rate-limit error.
Every rate-limit condition surfaced by litellm — whether it originated from
an upstream LLM provider, a vendor batch endpoint, or one of litellm's own
proxy-side limiters (parallel-requests, dynamic-rate, batch-rate, budget,
max-iterations, etc.) — is raised as an instance of this class.
The :attr:`category` attribute lets callers distinguish the source. See
:class:`RateLimitErrorCategory` for the available values.
"""
def __init__(
self,
message,
llm_provider,
model,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
category: Union[str, RateLimitErrorCategory] = (
RateLimitErrorCategory.VENDOR_RATE_LIMIT
),
rate_limit_type: Optional[Union[str, RateLimitType]] = None,
headers: Optional[Dict[str, str]] = None,
detail: Any = None,
):
self.status_code = 429
self.message = "litellm.RateLimitError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
self.category = (
category.value if isinstance(category, RateLimitErrorCategory) else category
)
# Which dimension was exceeded — request count, token count, parallel
# requests, budget, max iterations. None when the source didn't
# classify the failure (e.g. legacy vendor 429 with no header hints).
self.rate_limit_type: Optional[str] = (
rate_limit_type.value
if isinstance(rate_limit_type, RateLimitType)
else rate_limit_type
)
# Headers explicitly attached to the error (e.g. retry-after,
# rate_limit_type, reset_at). Preserved across the proxy boundary so
# clients can react appropriately.
#
# IMPORTANT: we deliberately do NOT auto-populate self.headers from
# response.headers when only `response` is provided. A vendor 429 can
# set arbitrary response headers (Set-Cookie, CORS overrides, …); if
# those leaked into e.headers and a downstream proxy serializer
# forwarded them to the client, a malicious upstream could inject
# browser-interpreted headers for the proxy origin. Vendor response
# headers stay reachable on `e.response.headers` for callers that
# explicitly want them; only the proxy-supplied `headers=` kwarg
# makes it onto `self.headers`.
_response_headers = (
getattr(response, "headers", None) if response is not None else None
)
self.headers: Optional[Dict[str, str]] = (
{k: str(v) for k, v in headers.items()} if headers else None
)
# Mirrors FastAPI HTTPException.detail so the same instance can be
# serialized through both the ProxyException and HTTPException paths.
self.detail = detail if detail is not None else self.message
self.response = httpx.Response(
status_code=429,
headers=_response_headers,
request=httpx.Request(
method="POST",
url=" https://cloud.google.com/vertex-ai/",
),
)
super().__init__(
self.message, response=self.response, body=None
) # Call the base class constructor with the parameters it needs
self.code = "429"
self.type = "throttling_error"
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
# sub class of rate limit error - meant to give more granularity for error handling context window exceeded errors
class ContextWindowExceededError(BadRequestError): # type: ignore
def __init__(
self,
message,
model,
llm_provider,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
):
self.status_code = 400
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
super().__init__(
message=message,
model=self.model, # type: ignore
llm_provider=self.llm_provider, # type: ignore
response=response,
litellm_debug_info=self.litellm_debug_info,
) # Call the base class constructor with the parameters it needs
# set after, to make it clear the raised error is a context window exceeded error
self.message = "litellm.ContextWindowExceededError: {}".format(self.message)
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
# sub class of bad request error - meant to help us catch guardrails-related errors on proxy.
class RejectedRequestError(BadRequestError): # type: ignore
def __init__(
self,
message,
model,
llm_provider,
request_data: dict,
litellm_debug_info: Optional[str] = None,
):
self.status_code = 400
self.message = "litellm.RejectedRequestError: {}".format(message)
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
self.request_data = request_data
request = httpx.Request(method="POST", url="https://api.openai.com/v1")
response = httpx.Response(status_code=400, request=request)
super().__init__(
message=self.message,
model=self.model, # type: ignore
llm_provider=self.llm_provider, # type: ignore
response=response,
litellm_debug_info=self.litellm_debug_info,
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class ContentPolicyViolationError(BadRequestError): # type: ignore
# Error code: 400 - {'error': {'code': 'content_policy_violation', 'message': 'Your request was rejected as a result of our safety system. Image descriptions generated from your prompt may contain text that is not allowed by our safety system. If you believe this was done in error, your request may succeed if retried, or by adjusting your prompt.', 'param': None, 'type': 'invalid_request_error'}}
def __init__(
self,
message,
model,
llm_provider,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
provider_specific_fields: Optional[dict] = None,
body: Optional[dict] = None,
):
self.status_code = 400
self.message = "litellm.ContentPolicyViolationError: {}".format(message)
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
self.provider_specific_fields = provider_specific_fields
super().__init__(
message=self.message,
model=self.model, # type: ignore
llm_provider=self.llm_provider, # type: ignore
response=response,
litellm_debug_info=self.litellm_debug_info,
body=body,
) # Call the base class constructor with the parameters it needs
def __str__(self):
return self._transform_error_to_string()
def __repr__(self):
return self._transform_error_to_string()
def _transform_error_to_string(self) -> str:
"""
Transform the error to a string
"""
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class ServiceUnavailableError(openai.APIStatusError): # type: ignore
def __init__(
self,
message,
llm_provider,
model,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 503
self.message = "litellm.ServiceUnavailableError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
_response_headers = (
getattr(response, "headers", None) if response is not None else None
)
self.response = httpx.Response(
status_code=self.status_code,
headers=_response_headers,
request=httpx.Request(
method="POST",
url=" https://cloud.google.com/vertex-ai/",
),
)
super().__init__(
self.message, response=self.response, body=None
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class BadGatewayError(openai.APIStatusError): # type: ignore
def __init__(
self,
message,
llm_provider,
model,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 502
self.message = "litellm.BadGatewayError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
_response_headers = (
getattr(response, "headers", None) if response is not None else None
)
self.response = httpx.Response(
status_code=self.status_code,
headers=_response_headers,
request=httpx.Request(
method="POST",
url=" https://cloud.google.com/vertex-ai/",
),
)
super().__init__(
self.message, response=self.response, body=None
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class InternalServerError(openai.InternalServerError): # type: ignore
def __init__(
self,
message,
llm_provider,
model,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 500
self.message = "litellm.InternalServerError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
_response_headers = (
getattr(response, "headers", None) if response is not None else None
)
self.response = httpx.Response(
status_code=self.status_code,
headers=_response_headers,
request=httpx.Request(
method="POST",
url=" https://cloud.google.com/vertex-ai/",
),
)
super().__init__(
self.message, response=self.response, body=None
) # Call the base class constructor with the parameters it needs
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
# raise this when the API returns an invalid response object - https://github.com/openai/openai-python/blob/1be14ee34a0f8e42d3f9aa5451aa4cb161f1781f/openai/api_requestor.py#L401
class APIError(openai.APIError): # type: ignore
def __init__(
self,
status_code: int,
message,
llm_provider,
model,
request: Optional[httpx.Request] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = status_code
self.message = "litellm.APIError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
if request is None:
request = httpx.Request(method="POST", url="https://api.openai.com/v1")
super().__init__(self.message, request=request, body=None) # type: ignore
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
# raised if an invalid request (not get, delete, put, post) is made
class APIConnectionError(openai.APIConnectionError): # type: ignore
def __init__(
self,
message,
llm_provider,
model,
request: Optional[httpx.Request] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.message = "litellm.APIConnectionError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.status_code = 500
self.litellm_debug_info = litellm_debug_info
self.request = httpx.Request(method="POST", url="https://api.openai.com/v1")
self.max_retries = max_retries
self.num_retries = num_retries
super().__init__(message=self.message, request=self.request)
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
# raised if an invalid request (not get, delete, put, post) is made
class APIResponseValidationError(openai.APIResponseValidationError): # type: ignore
def __init__(
self,
message,
llm_provider,
model,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.message = "litellm.APIResponseValidationError: {}".format(message)
self.llm_provider = llm_provider
self.model = model
request = httpx.Request(method="POST", url="https://api.openai.com/v1")
response = httpx.Response(status_code=500, request=request)
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
super().__init__(response=response, body=None, message=message)
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
def __repr__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
return _message
class JSONSchemaValidationError(APIResponseValidationError):
def __init__(
self, model: str, llm_provider: str, raw_response: str, schema: str
) -> None:
self.raw_response = raw_response
self.schema = schema
self.model = model
message = "litellm.JSONSchemaValidationError: model={}, returned an invalid response={}, for schema={}.\nAccess raw response with `e.raw_response`".format(
model, raw_response, schema
)
self.message = message
super().__init__(model=model, message=message, llm_provider=llm_provider)
class OpenAIError(openai.OpenAIError): # type: ignore
def __init__(self, original_exception=None):
super().__init__()
self.llm_provider = "openai"
class UnsupportedParamsError(BadRequestError):
def __init__(
self,
message,
llm_provider: Optional[str] = None,
model: Optional[str] = None,
status_code: int = 400,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = 400
self.message = "litellm.UnsupportedParamsError: {}".format(message)
self.model = model
self.llm_provider = llm_provider
self.litellm_debug_info = litellm_debug_info
response = response or httpx.Response(
status_code=self.status_code,
request=httpx.Request(
method="GET", url="https://litellm.ai"
), # mock request object
)
self.max_retries = max_retries
self.num_retries = num_retries
LITELLM_EXCEPTION_TYPES = [
AuthenticationError,
NotFoundError,
BadRequestError,
UnprocessableEntityError,
UnsupportedParamsError,
Timeout,
PermissionDeniedError,
RateLimitError,
ContextWindowExceededError,
RejectedRequestError,
ContentPolicyViolationError,
InternalServerError,
ServiceUnavailableError,
BadGatewayError,
APIError,
APIConnectionError,
APIResponseValidationError,
OpenAIError,
InternalServerError,
JSONSchemaValidationError,
]
class BudgetExceededError(Exception):
def __init__(
self,
current_cost: float,
max_budget: float,
message: Optional[str] = None,
llm_provider: Optional[str] = None,
):
self.current_cost = current_cost
self.max_budget = max_budget
self.status_code = 429
self.llm_provider = llm_provider or ""
# Surface unified rate-limit fields without joining the RateLimitError
# hierarchy so existing `except BudgetExceededError:` handlers keep
# working; custom callbacks reading StandardLoggingPayload pick these
# up via the same `category` / `rate_limit_type` attributes the rest
# of the unified rate-limit error path uses. Stored as plain strings
# to match the normalization RateLimitError.__init__ performs.
self.category: str = RateLimitErrorCategory.LITELLM_RATE_LIMIT.value
self.rate_limit_type: str = RateLimitType.BUDGET.value
message = (
message
or f"Budget has been exceeded! Current cost: {current_cost}, Max budget: {max_budget}"
)
self.message = message
super().__init__(message)
## DEPRECATED ##
class InvalidRequestError(openai.BadRequestError): # type: ignore
def __init__(self, message, model, llm_provider):
self.status_code = 400
self.message = message
self.model = model
self.llm_provider = llm_provider
self.response = httpx.Response(
status_code=400,
request=httpx.Request(
method="GET", url="https://litellm.ai"
), # mock request object
)
super().__init__(
message=self.message, response=self.response, body=None
) # Call the base class constructor with the parameters it needs
class MockException(openai.APIError):
# used for testing
def __init__(
self,
status_code: int,
message,
llm_provider,
model,
request: Optional[httpx.Request] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
):
self.status_code = status_code
self.message = "litellm.MockException: {}".format(message)
self.llm_provider = llm_provider
self.model = model
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
if request is None:
request = httpx.Request(method="POST", url="https://api.openai.com/v1")
super().__init__(self.message, request=request, body=None) # type: ignore
class LiteLLMUnknownProvider(BadRequestError):
def __init__(self, model: str, custom_llm_provider: Optional[str] = None):
self.message = LiteLLMCommonStrings.llm_provider_not_provided.value.format(
model=model, custom_llm_provider=custom_llm_provider
)
super().__init__(
self.message, model=model, llm_provider=custom_llm_provider, response=None
)
def __str__(self):
return self.message
class GuardrailRaisedException(Exception):
def __init__(
self,
guardrail_name: Optional[str] = None,
message: str = "",
should_wrap_with_default_message: bool = True,
status_code: int = 400,
):
default_message = f"Guardrail raised an exception, Guardrail: {guardrail_name}, Message: {message}"
self.guardrail_name = guardrail_name
self.status_code = status_code
self.message = default_message if should_wrap_with_default_message else message
super().__init__(self.message)
class BlockedPiiEntityError(Exception):
def __init__(
self,
entity_type: str,
guardrail_name: Optional[str] = None,
status_code: int = 400,
):
"""
Raised when a blocked entity is detected by a guardrail.
"""
self.entity_type = entity_type
self.guardrail_name = guardrail_name
self.status_code = status_code
self.message = f"Blocked entity detected: {entity_type} by Guardrail: {guardrail_name}. This entity is not allowed to be used in this request."
super().__init__(self.message)
class MidStreamFallbackError(ServiceUnavailableError): # type: ignore
def __init__(
self,
message: str,
model: str,
llm_provider: str,
original_exception: Optional[Exception] = None,
response: Optional[httpx.Response] = None,
litellm_debug_info: Optional[str] = None,
max_retries: Optional[int] = None,
num_retries: Optional[int] = None,
generated_content: str = "",
is_pre_first_chunk: bool = False,
):
original_status = getattr(original_exception, "status_code", None)
self.status_code = int(original_status) if original_status is not None else 503
self.message = f"litellm.MidStreamFallbackError: {message}"
self.model = model
self.llm_provider = llm_provider
self.original_exception = original_exception
self.litellm_debug_info = litellm_debug_info
self.max_retries = max_retries
self.num_retries = num_retries
self.generated_content = generated_content
self.is_pre_first_chunk = is_pre_first_chunk
# Create a response if one wasn't provided
if response is None:
self.response = httpx.Response(
status_code=self.status_code,
request=httpx.Request(
method="POST",
url=f"https://{llm_provider}.com/v1/",
),
)
else:
self.response = response
# Save the original attributes before they are overridden by ServiceUnavailableError
_saved_response = self.response
_saved_request = getattr(self.response, "request", None) or httpx.Request(
method="POST", url=f"https://{llm_provider}.com/v1/"
)
_saved_message = self.message
# Call the parent constructor (which hardcodes status_code=503 and modifies the response object)
super().__init__(
message=self.message,
llm_provider=llm_provider,
model=model,
response=self.response,
litellm_debug_info=self.litellm_debug_info,
max_retries=self.max_retries,
num_retries=self.num_retries,
)
# Restore the propagated status and original response/request objects
self.status_code = int(original_status) if original_status is not None else 503
self.response = _saved_response
self.request = _saved_request
self.message = _saved_message
self.args = (_saved_message,)
def __str__(self):
_message = self.message
if self.num_retries:
_message += f" LiteLLM Retried: {self.num_retries} times"
if self.max_retries:
_message += f", LiteLLM Max Retries: {self.max_retries}"
if self.original_exception:
_message += f" Original exception: {type(self.original_exception).__name__}: {str(self.original_exception)}"
return _message
def __repr__(self):
return self.__str__()
class ModifyResponseException(Exception):
"""
Exception raised when a guardrail wants to modify the response.
This exception carries the synthetic response that should be returned
to the user instead of calling the LLM or instead of the LLM's response.
It should be caught by the proxy and returned with a 200 status code.
This is a base exception that all guardrails can use to replace responses,
allowing violation messages to be returned as successful responses
rather than errors.
"""
def __init__(
self,
message: str,
model: str,
request_data: Dict[str, Any],
guardrail_name: Optional[str] = None,
detection_info: Optional[Dict[str, Any]] = None,
):
self.message = message
self.model = model
self.request_data = request_data
self.guardrail_name = guardrail_name
self.detection_info = detection_info or {}
super().__init__(message)
class GuardrailInterventionNormalStringError(
Exception
): # custom exception to raise when a guardrail intervenes, but we want to return a normal string to the user
def __init__(self, message: str):
self.message = message
super().__init__(self.message)
def __str__(self):
return self.message
def __repr__(self):
return self.__str__()
class SensitiveDataRouteException(Exception):
"""
Exception raised when a guardrail detects sensitive data and wants to reroute the request.
Instead of blocking the request, this exception signals that the request should be
routed to a different model (typically an on-premise model for data privacy).
The proxy catches this exception and:
1. Reroutes the current request to the specified model
2. When sticky_session_routing is True, stores the routing decision in session
cache so all subsequent requests in the same session are routed to the same model
"""
def __init__(
self,
route_to_model: str,
session_id: str,
guardrail_name: Optional[str] = None,
detection_info: Optional[Dict[str, Any]] = None,
message: Optional[str] = None,
sticky_session_routing: bool = True,
):
self.route_to_model = route_to_model
self.session_id = session_id
self.guardrail_name = guardrail_name
self.detection_info = detection_info or {}
self.sticky_session_routing = sticky_session_routing
self.message = (
message
or f"Sensitive data detected by {guardrail_name}. Routing to model: {route_to_model}"
)
super().__init__(self.message)