96 lines
3.9 KiB
Python
96 lines
3.9 KiB
Python
from abc import ABC, abstractmethod
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from typing import AsyncGenerator
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from letta.llm_api.llm_client_base import LLMClientBase
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from letta.schemas.letta_message import LettaMessage
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from letta.schemas.letta_message_content import ReasoningContent, RedactedReasoningContent, TextContent
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from letta.schemas.llm_config import LLMConfig
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from letta.schemas.openai.chat_completion_response import ChatCompletionResponse, ToolCall
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from letta.schemas.usage import LettaUsageStatistics
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from letta.schemas.user import User
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from letta.services.telemetry_manager import TelemetryManager
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class LettaLLMAdapter(ABC):
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"""
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Base adapter for handling LLM calls in a unified way.
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This abstract class defines the interface for both blocking and streaming
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LLM interactions, allowing the agent to use different execution modes
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through a consistent API.
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"""
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def __init__(self, llm_client: LLMClientBase, llm_config: LLMConfig) -> None:
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self.llm_client: LLMClientBase = llm_client
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self.llm_config: LLMConfig = llm_config
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self.message_id: str | None = None
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self.request_data: dict | None = None
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self.response_data: dict | None = None
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self.chat_completions_response: ChatCompletionResponse | None = None
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self.reasoning_content: list[TextContent | ReasoningContent | RedactedReasoningContent] | None = None
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self.content: list[TextContent | ReasoningContent | RedactedReasoningContent] | None = None
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self.tool_call: ToolCall | None = None
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self.tool_calls: list[ToolCall] = []
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self.usage: LettaUsageStatistics = LettaUsageStatistics()
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self.telemetry_manager: TelemetryManager = TelemetryManager()
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self.llm_request_finish_timestamp_ns: int | None = None
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@abstractmethod
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async def invoke_llm(
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self,
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request_data: dict,
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messages: list,
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tools: list,
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use_assistant_message: bool,
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requires_approval_tools: list[str] = [],
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step_id: str | None = None,
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actor: User | None = None,
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) -> AsyncGenerator[LettaMessage | None, None]:
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"""
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Execute the LLM call and yield results as they become available.
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Args:
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request_data: The prepared request data for the LLM API
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messages: The messages in context for the request
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tools: The tools available for the LLM to use
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use_assistant_message: If true, use assistant messages when streaming response
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requires_approval_tools: The subset of tools that require approval before use
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step_id: The step ID associated with this request. If provided, logs request and response data.
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actor: The optional actor associated with this request for logging purposes.
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Yields:
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LettaMessage: Chunks of data for streaming adapters, or None for blocking adapters
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"""
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raise NotImplementedError
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@property
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def finish_reason(self) -> str | None:
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"""
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Get the finish_reason from the LLM response.
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Returns:
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str | None: The finish_reason if available, None otherwise
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"""
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if self.chat_completions_response and self.chat_completions_response.choices:
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return self.chat_completions_response.choices[0].finish_reason
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return None
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def supports_token_streaming(self) -> bool:
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"""
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Check if the adapter supports token-level streaming.
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Returns:
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bool: True if the adapter can stream back tokens as they are generated, False otherwise
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"""
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return False
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def log_provider_trace(self, step_id: str | None, actor: User | None) -> None:
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"""
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Log provider trace data for telemetry purposes.
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Args:
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step_id: The step ID associated with this request for logging purposes
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actor: The user associated with this request for logging purposes
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"""
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raise NotImplementedError
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