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chore: import upstream snapshot with attribution
2026-07-13 12:02:32 +08:00

454 lines
15 KiB
Python

import json
from collections.abc import Mapping
from dataclasses import dataclass
from typing import Any, TypeVar, overload
import httpx
from anthropic import (
APIConnectionError,
APIStatusError,
AsyncAnthropic,
NotGiven,
RateLimitError,
omit,
)
from anthropic.types import CacheControlEphemeralParam, Message, ToolParam
from anthropic.types.model_param import ModelParam
from anthropic.types.text_block import TextBlock
from anthropic.types.tool_choice_tool_param import ToolChoiceToolParam
from httpx import Timeout
from pydantic import BaseModel
from browser_use.llm.anthropic.serializer import AnthropicMessageSerializer
from browser_use.llm.base import BaseChatModel
from browser_use.llm.exceptions import ModelOutputTruncatedError, ModelProviderError, ModelRateLimitError
from browser_use.llm.messages import BaseMessage
from browser_use.llm.schema import SchemaOptimizer
from browser_use.llm.views import ChatInvokeCompletion, ChatInvokeUsage
T = TypeVar('T', bound=BaseModel)
@dataclass
class ChatAnthropic(BaseChatModel):
"""
A wrapper around Anthropic's chat model.
"""
# Model configuration
model: str | ModelParam
max_tokens: int = 8192
temperature: float | None = None
top_p: float | None = None
seed: int | None = None
output_config: dict[str, Any] | None = None
thinking: dict[str, Any] | None = None
betas: list[str] | None = None
fallbacks: list[dict[str, Any]] | None = None
inference_geo: str | None = None
# Client initialization parameters
api_key: str | None = None
auth_token: str | None = None
base_url: str | httpx.URL | None = None
timeout: float | Timeout | None | NotGiven = NotGiven()
max_retries: int = 10
default_headers: Mapping[str, str] | None = None
default_query: Mapping[str, object] | None = None
http_client: httpx.AsyncClient | None = None
# Static
@property
def provider(self) -> str:
return 'anthropic'
def _get_client_params(self) -> dict[str, Any]:
"""Prepare client parameters dictionary."""
# Define base client params
base_params = {
'api_key': self.api_key,
'auth_token': self.auth_token,
'base_url': self.base_url,
'timeout': self.timeout,
'max_retries': self.max_retries,
'default_headers': self.default_headers,
'default_query': self.default_query,
'http_client': self.http_client,
}
# Create client_params dict with non-None values and non-NotGiven values
client_params = {}
for k, v in base_params.items():
if v is not None and v is not NotGiven():
client_params[k] = v
return client_params
def _is_adaptive_thinking_only_model(self) -> bool:
model = self.name.lower()
return 'claude-fable-5' in model or 'claude-mythos-5' in model
def _requires_auto_tool_choice(self) -> bool:
model = self.name.lower()
if 'claude-fable-5' in model or 'claude-mythos-5' in model:
return True
if self.thinking is None:
return False
return self.thinking.get('type') != 'disabled'
def _validate_thinking_config(self) -> None:
if not self.thinking or not self._is_adaptive_thinking_only_model():
return
thinking_type = self.thinking.get('type')
if thinking_type in {'enabled', 'disabled'} or 'budget_tokens' in self.thinking:
raise ValueError(
f'{self.model} only supports adaptive thinking. Omit thinking or use adaptive display options such as '
'{"type": "adaptive", "display": "summarized"}.'
)
def _get_betas_for_invoke(self) -> list[str] | None:
betas = self.betas
if self.fallbacks is None:
return betas
betas = list(betas or [])
if not any(beta.startswith('server-side-fallback-') for beta in betas):
betas.append('server-side-fallback-2026-06-01')
return betas
def _get_extra_body_for_invoke(self) -> dict[str, Any] | None:
extra_body: dict[str, Any] = {}
if self.output_config is not None:
extra_body['output_config'] = self.output_config
if self.fallbacks is not None:
extra_body['fallbacks'] = self.fallbacks
if self.inference_geo is not None:
extra_body['inference_geo'] = self.inference_geo
return extra_body or None
def _get_client_params_for_invoke(self) -> dict[str, Any]:
"""Prepare client parameters dictionary for invoke."""
self._validate_thinking_config()
client_params = {}
if self.temperature is not None:
client_params['temperature'] = self.temperature
if self.max_tokens is not None:
client_params['max_tokens'] = self.max_tokens
if self.top_p is not None:
client_params['top_p'] = self.top_p
if self.seed is not None:
client_params['seed'] = self.seed
if self.thinking is not None:
client_params['thinking'] = self.thinking
betas = self._get_betas_for_invoke()
if betas is not None:
client_params['betas'] = betas
extra_body = self._get_extra_body_for_invoke()
if extra_body is not None:
client_params['extra_body'] = extra_body
return client_params
def get_client(self) -> AsyncAnthropic:
"""
Returns an AsyncAnthropic client.
Returns:
AsyncAnthropic: An instance of the AsyncAnthropic client.
"""
client_params = self._get_client_params()
return AsyncAnthropic(**client_params)
@property
def name(self) -> str:
return str(self.model)
async def _create_message(self, **params: Any) -> Any:
betas = params.pop('betas', None)
client = self.get_client()
if betas is not None:
return await client.beta.messages.create(**params, betas=betas)
return await client.messages.create(**params)
def _is_message_like_response(self, response: Any) -> bool:
return all(hasattr(response, attr) for attr in ('content', 'usage', 'stop_reason'))
def _get_cache_creation_tokens(self, response: Any) -> tuple[int | None, int | None]:
cache_creation = getattr(response.usage, 'cache_creation', None)
if cache_creation is None:
return None, None
return (
getattr(cache_creation, 'ephemeral_5m_input_tokens', None),
getattr(cache_creation, 'ephemeral_1h_input_tokens', None),
)
def _get_pricing_multiplier(self) -> float | None:
if self.inference_geo == 'us':
return 1.1
return None
def _get_usage(self, response: Any) -> ChatInvokeUsage | None:
cache_creation_5m_tokens, cache_creation_1h_tokens = self._get_cache_creation_tokens(response)
usage = ChatInvokeUsage(
prompt_tokens=response.usage.input_tokens
+ (
response.usage.cache_read_input_tokens or 0
), # Total tokens in Anthropic are a bit fucked, you have to add cached tokens to the prompt tokens
completion_tokens=response.usage.output_tokens,
total_tokens=response.usage.input_tokens + response.usage.output_tokens,
prompt_cached_tokens=response.usage.cache_read_input_tokens,
prompt_cache_creation_tokens=response.usage.cache_creation_input_tokens,
prompt_cache_creation_5m_tokens=cache_creation_5m_tokens,
prompt_cache_creation_1h_tokens=cache_creation_1h_tokens,
prompt_image_tokens=None,
pricing_multiplier=self._get_pricing_multiplier(),
)
return usage
def _get_stop_details(self, response: Any) -> dict[str, Any] | None:
stop_details = getattr(response, 'stop_details', None)
if stop_details is None:
return None
if hasattr(stop_details, 'model_dump'):
return stop_details.model_dump()
if isinstance(stop_details, dict):
return stop_details
return {key: getattr(stop_details, key) for key in ('type', 'category', 'explanation') if hasattr(stop_details, key)}
def _extract_content_blocks(self, response: Any) -> tuple[str, str | None, str | None]:
text_parts: list[str] = []
thinking_parts: list[str] = []
redacted_thinking_parts: list[str] = []
for content_block in response.content:
block_type = getattr(content_block, 'type', None)
if isinstance(content_block, TextBlock) or block_type == 'text':
text = getattr(content_block, 'text', None)
if text:
text_parts.append(text)
elif block_type == 'thinking':
thinking_text = getattr(content_block, 'thinking', None)
if thinking_text:
thinking_parts.append(thinking_text)
elif block_type == 'redacted_thinking':
redacted_text = getattr(content_block, 'data', None) or getattr(content_block, 'redacted_thinking', None)
if redacted_text:
redacted_thinking_parts.append(str(redacted_text))
if text_parts:
completion = ''.join(text_parts)
elif response.content:
completion = str(response.content[0])
else:
completion = ''
thinking = '\n'.join(thinking_parts) if thinking_parts else None
redacted_thinking = '\n'.join(redacted_thinking_parts) if redacted_thinking_parts else None
return completion, thinking, redacted_thinking
def _json_candidates_from_text(self, text: str) -> list[str]:
candidates: list[str] = []
stripped = text.strip()
if stripped:
candidates.append(stripped)
if stripped.startswith('```') and stripped.endswith('```'):
lines = stripped.splitlines()
if len(lines) >= 3:
candidates.append('\n'.join(lines[1:-1]).strip())
for start_char, end_char in (('{', '}'), ('[', ']')):
start = stripped.find(start_char)
end = stripped.rfind(end_char)
if start != -1 and end > start:
candidates.append(stripped[start : end + 1])
return list(dict.fromkeys(candidate for candidate in candidates if candidate))
def _completion_from_text_response(
self, response: Any, output_format: type[T], usage: ChatInvokeUsage | None
) -> ChatInvokeCompletion[T] | None:
response_text, thinking, redacted_thinking = self._extract_content_blocks(response)
for candidate in self._json_candidates_from_text(response_text):
try:
completion = output_format.model_validate_json(candidate)
except Exception:
try:
completion = output_format.model_validate(json.loads(candidate))
except Exception:
continue
return ChatInvokeCompletion(
completion=completion,
thinking=thinking,
redacted_thinking=redacted_thinking,
usage=usage,
stop_reason=response.stop_reason,
stop_details=self._get_stop_details(response),
)
return None
@overload
async def ainvoke(
self, messages: list[BaseMessage], output_format: None = None, **kwargs: Any
) -> ChatInvokeCompletion[str]: ...
@overload
async def ainvoke(self, messages: list[BaseMessage], output_format: type[T], **kwargs: Any) -> ChatInvokeCompletion[T]: ...
async def ainvoke(
self, messages: list[BaseMessage], output_format: type[T] | None = None, **kwargs: Any
) -> ChatInvokeCompletion[T] | ChatInvokeCompletion[str]:
anthropic_messages, system_prompt = AnthropicMessageSerializer.serialize_messages(messages)
try:
if output_format is None:
# Normal completion without structured output
response = await self._create_message(
model=self.model,
messages=anthropic_messages,
system=system_prompt or omit,
**self._get_client_params_for_invoke(),
)
# Ensure we have a valid Message object before accessing attributes
if not isinstance(response, Message) and not self._is_message_like_response(response):
raise ModelProviderError(
message=f'Unexpected response type from Anthropic API: {type(response).__name__}. Response: {str(response)[:200]}',
status_code=502,
model=self.name,
)
usage = self._get_usage(response)
response_text, thinking, redacted_thinking = self._extract_content_blocks(response)
return ChatInvokeCompletion(
completion=response_text,
thinking=thinking,
redacted_thinking=redacted_thinking,
usage=usage,
stop_reason=response.stop_reason,
stop_details=self._get_stop_details(response),
)
else:
# Use tool calling for structured output
# Create a tool that represents the output format
tool_name = output_format.__name__
schema = SchemaOptimizer.create_optimized_json_schema(output_format)
# Remove title from schema if present (Anthropic doesn't like it in parameters)
if 'title' in schema:
del schema['title']
tool = ToolParam(
name=tool_name,
description=f'Extract information in the format of {tool_name}',
input_schema=schema,
cache_control=CacheControlEphemeralParam(type='ephemeral'),
)
if self._requires_auto_tool_choice():
tool_choice = {'type': 'auto'}
else:
# Force the model to use this tool
tool_choice = ToolChoiceToolParam(type='tool', name=tool_name)
response = await self._create_message(
model=self.model,
messages=anthropic_messages,
tools=[tool],
system=system_prompt or omit,
tool_choice=tool_choice,
**self._get_client_params_for_invoke(),
)
# Ensure we have a valid Message object before accessing attributes
if not isinstance(response, Message) and not self._is_message_like_response(response):
raise ModelProviderError(
message=f'Unexpected response type from Anthropic API: {type(response).__name__}. Response: {str(response)[:200]}',
status_code=502,
model=self.name,
)
usage = self._get_usage(response)
if response.stop_reason == 'max_tokens':
raise ModelOutputTruncatedError(
message=(
f'Model output was truncated at max_tokens={self.max_tokens}; the structured'
' output is incomplete. Increase max_tokens or request shorter output.'
),
model=self.name,
)
# Extract the tool use block
for content_block in response.content:
if hasattr(content_block, 'type') and content_block.type == 'tool_use':
# Parse the tool input as the structured output
try:
return ChatInvokeCompletion(
completion=output_format.model_validate(content_block.input),
usage=usage,
stop_reason=response.stop_reason,
stop_details=self._get_stop_details(response),
)
except Exception as e:
# If validation fails, try to fix common model output issues
_input = content_block.input
if isinstance(_input, str):
_input = json.loads(_input)
elif isinstance(_input, dict):
# Model sometimes double-serializes fields
for key, value in _input.items():
if isinstance(value, str) and value.startswith(('[', '{')):
try:
_input[key] = json.loads(value)
except json.JSONDecodeError:
cleaned = value.replace('\n', '\\n').replace('\r', '\\r').replace('\t', '\\t')
try:
_input[key] = json.loads(cleaned)
except json.JSONDecodeError:
pass
else:
raise
return ChatInvokeCompletion(
completion=output_format.model_validate(_input),
usage=usage,
stop_reason=response.stop_reason,
stop_details=self._get_stop_details(response),
)
if self._requires_auto_tool_choice():
text_completion = self._completion_from_text_response(response, output_format, usage)
if text_completion is not None:
return text_completion
# If no tool use block found, raise an error
raise ValueError('Expected tool use in response but none found')
except APIConnectionError as e:
raise ModelProviderError(message=e.message, model=self.name) from e
except RateLimitError as e:
raise ModelRateLimitError(message=e.message, model=self.name) from e
except APIStatusError as e:
raise ModelProviderError(message=e.message, status_code=e.status_code, model=self.name) from e
except ModelProviderError:
raise # don't re-wrap with the generic 502
except Exception as e:
raise ModelProviderError(message=str(e), model=self.name) from e