Files
deer-flow/backend/packages/harness/deerflow/runtime/converters.py
T
rayhpeng 9d0a42c1fb refactor(runtime): restructure runs module with new execution architecture
Major refactoring of deerflow/runtime/:
- runs/callbacks/ - new callback system (builder, events, title, tokens)
- runs/internal/ - execution internals (executor, supervisor, stream_logic, registry)
- runs/internal/execution/ - execution artifacts and events handling
- runs/facade.py - high-level run facade
- runs/observer.py - run observation protocol
- runs/types.py - type definitions
- runs/store/ - simplified store interfaces (create, delete, query, event)

Refactor stream_bridge/:
- Replace old providers with contract.py and exceptions.py
- Remove async_provider.py, base.py, memory.py

Add documentation:
- README.md and README_zh.md for runtime module

Remove deprecated:
- manager.py moved to internal/
- worker.py, schemas.py
- user_context.py

Co-Authored-By: Claude Opus 4.5 <noreply@anthropic.com>
2026-04-22 11:28:01 +08:00

135 lines
4.5 KiB
Python

"""Pure functions to convert LangChain message objects to OpenAI Chat Completions format.
Used by run callbacks to build content dicts for event storage.
"""
from __future__ import annotations
import json
from typing import Any
_ROLE_MAP = {
"human": "user",
"ai": "assistant",
"system": "system",
"tool": "tool",
}
def langchain_to_openai_message(message: Any) -> dict:
"""Convert a single LangChain BaseMessage to an OpenAI message dict.
Handles:
- HumanMessage → {"role": "user", "content": "..."}
- AIMessage (text only) → {"role": "assistant", "content": "..."}
- AIMessage (with tool_calls) → {"role": "assistant", "content": null, "tool_calls": [...]}
- AIMessage (text + tool_calls) → both content and tool_calls present
- AIMessage (list content / multimodal) → content preserved as list
- SystemMessage → {"role": "system", "content": "..."}
- ToolMessage → {"role": "tool", "tool_call_id": "...", "content": "..."}
"""
msg_type = getattr(message, "type", "")
role = _ROLE_MAP.get(msg_type, msg_type)
content = getattr(message, "content", "")
if role == "tool":
return {
"role": "tool",
"tool_call_id": getattr(message, "tool_call_id", ""),
"content": content,
}
if role == "assistant":
tool_calls = getattr(message, "tool_calls", None) or []
result: dict = {"role": "assistant"}
if tool_calls:
openai_tool_calls = []
for tc in tool_calls:
args = tc.get("args", {})
openai_tool_calls.append(
{
"id": tc.get("id", ""),
"type": "function",
"function": {
"name": tc.get("name", ""),
"arguments": json.dumps(args) if not isinstance(args, str) else args,
},
}
)
# If no text content, set content to null per OpenAI spec
result["content"] = content if (isinstance(content, list) and content) or (isinstance(content, str) and content) else None
result["tool_calls"] = openai_tool_calls
else:
result["content"] = content
return result
# user / system / unknown
return {"role": role, "content": content}
def _infer_finish_reason(message: Any) -> str:
"""Infer OpenAI finish_reason from an AIMessage.
Returns "tool_calls" if tool_calls present, else looks in
response_metadata.finish_reason, else returns "stop".
"""
tool_calls = getattr(message, "tool_calls", None) or []
if tool_calls:
return "tool_calls"
resp_meta = getattr(message, "response_metadata", None) or {}
if isinstance(resp_meta, dict):
finish = resp_meta.get("finish_reason")
if finish:
return finish
return "stop"
def langchain_to_openai_completion(message: Any) -> dict:
"""Convert an AIMessage and its metadata to an OpenAI completion response dict.
Returns:
{
"id": message.id,
"model": message.response_metadata.get("model_name"),
"choices": [{"index": 0, "message": <openai_message>, "finish_reason": <inferred>}],
"usage": {"prompt_tokens": ..., "completion_tokens": ..., "total_tokens": ...} or None,
}
"""
resp_meta = getattr(message, "response_metadata", None) or {}
model_name = resp_meta.get("model_name") if isinstance(resp_meta, dict) else None
openai_msg = langchain_to_openai_message(message)
finish_reason = _infer_finish_reason(message)
usage_metadata = getattr(message, "usage_metadata", None)
if usage_metadata is not None:
input_tokens = usage_metadata.get("input_tokens", 0) or 0
output_tokens = usage_metadata.get("output_tokens", 0) or 0
usage: dict | None = {
"prompt_tokens": input_tokens,
"completion_tokens": output_tokens,
"total_tokens": input_tokens + output_tokens,
}
else:
usage = None
return {
"id": getattr(message, "id", None),
"model": model_name,
"choices": [
{
"index": 0,
"message": openai_msg,
"finish_reason": finish_reason,
}
],
"usage": usage,
}
def langchain_messages_to_openai(messages: list) -> list[dict]:
"""Convert a list of LangChain BaseMessages to OpenAI message dicts."""
return [langchain_to_openai_message(m) for m in messages]