Private
Public Access
0
0

refactor(ai_client): _send_minimax_result() returns Result[str]

This commit is contained in:
2026-06-12 18:44:33 -04:00
parent 87cac3808f
commit e384afce9c
+36 -33
View File
@@ -2299,46 +2299,49 @@ def _list_grok_models() -> list[str]:
from src.vendor_capabilities import list_models_for_vendor
return list_models_for_vendor("grok")
def _send_minimax(md_content: str, user_message: str, base_dir: str,
def _send_minimax_result(md_content: str, user_message: str, base_dir: str,
file_items: list[dict[str, Any]] | None = None,
discussion_history: str = "",
stream: bool = False,
pre_tool_callback: Optional[Callable[[str, str, Optional[Callable[[str], str]]], Optional[str]]] = None,
qa_callback: Optional[Callable[[str], str]] = None,
stream_callback: Optional[Callable[[str], None]] = None,
patch_callback: Optional[Callable[[str, str], Optional[str]]] = None) -> str:
patch_callback: Optional[Callable[[str, str], Optional[str]]] = None) -> Result[str]:
from src.openai_compatible import OpenAICompatibleRequest
_ensure_minimax_client()
tools: list[dict[str, Any]] | None = _get_deepseek_tools() or None
_repair_minimax_history(_minimax_history)
if discussion_history and not _minimax_history:
_minimax_history.append({"role": "user", "content": f"[DISCUSSION HISTORY]\n\n{discussion_history}\n\n---\n\n{user_message}"})
else:
_minimax_history.append({"role": "user", "content": user_message})
def _build_minimax_request(_round_idx: int) -> OpenAICompatibleRequest:
with _minimax_history_lock:
messages: list[dict[str, Any]] = [{"role": "system", "content": f"{_get_combined_system_prompt()}\n\n<context>\n{md_content}\n</context>"}]
messages.extend(_minimax_history)
return OpenAICompatibleRequest(
messages=messages, model=_model, temperature=_temperature, top_p=_top_p,
max_tokens=min(_max_tokens, 8192), stream=stream, stream_callback=stream_callback,
tools=tools, tool_choice="auto" if tools else "auto",
)
def _extract_minimax_reasoning(raw_response: Any) -> str:
if raw_response and hasattr(raw_response, "choices"):
choice = raw_response.choices[0]
if hasattr(choice.message, "reasoning_details") and choice.message.reasoning_details:
return choice.message.reasoning_details[0].get("text", "") or ""
return ""
caps = get_capabilities("minimax", _model)
return run_with_tool_loop(
_minimax_client, _build_minimax_request, capabilities=caps,
pre_tool_callback=pre_tool_callback, qa_callback=qa_callback, stream_callback=stream_callback,
patch_callback=patch_callback, base_dir=base_dir, vendor_name="minimax",
history_lock=_minimax_history_lock, history=_minimax_history,
trim_func=lambda h: _trim_minimax_history(_build_minimax_request(0).messages, h),
reasoning_extractor=_extract_minimax_reasoning if caps.reasoning else None,
)
try:
_ensure_minimax_client()
tools: list[dict[str, Any]] | None = _get_deepseek_tools() or None
_repair_minimax_history(_minimax_history)
if discussion_history and not _minimax_history:
_minimax_history.append({"role": "user", "content": f"[DISCUSSION HISTORY]\n\n{discussion_history}\n\n---\n\n{user_message}"})
else:
_minimax_history.append({"role": "user", "content": user_message})
def _build_minimax_request(_round_idx: int) -> OpenAICompatibleRequest:
with _minimax_history_lock:
messages: list[dict[str, Any]] = [{"role": "system", "content": f"{_get_combined_system_prompt()}\n\n<context>\n{md_content}\n</context>"}]
messages.extend(_minimax_history)
return OpenAICompatibleRequest(
messages=messages, model=_model, temperature=_temperature, top_p=_top_p,
max_tokens=min(_max_tokens, 8192), stream=stream, stream_callback=stream_callback,
tools=tools, tool_choice="auto" if tools else "auto",
)
def _extract_minimax_reasoning(raw_response: Any) -> str:
if raw_response and hasattr(raw_response, "choices"):
choice = raw_response.choices[0]
if hasattr(choice.message, "reasoning_details") and choice.message.reasoning_details:
return choice.message.reasoning_details[0].get("text", "") or ""
return ""
caps = get_capabilities("minimax", _model)
return Result(data=run_with_tool_loop(
_minimax_client, _build_minimax_request, capabilities=caps,
pre_tool_callback=pre_tool_callback, qa_callback=qa_callback, stream_callback=stream_callback,
patch_callback=patch_callback, base_dir=base_dir, vendor_name="minimax",
history_lock=_minimax_history_lock, history=_minimax_history,
trim_func=lambda h: _trim_minimax_history(_build_minimax_request(0).messages, h),
reasoning_extractor=_extract_minimax_reasoning if caps.reasoning else None,
))
except Exception as exc:
return Result(data="", errors=[_classify_minimax_error(exc, source="ai_client.minimax")])
#endregion: MiniMax Provider