File: //opt/hc_python/lib64/python3.12/site-packages/sentry_sdk/ai/_openai_completions_api.py
from collections.abc import Iterable
from typing import TYPE_CHECKING
if TYPE_CHECKING:
from typing import Union
from openai.types.chat import (
ChatCompletionContentPartParam,
ChatCompletionMessageParam,
ChatCompletionSystemMessageParam,
)
from sentry_sdk._types import TextPart
def _is_system_instruction(message: "ChatCompletionMessageParam") -> bool:
return isinstance(message, dict) and message.get("role") == "system"
def _get_system_instructions(
messages: "Iterable[ChatCompletionMessageParam]",
) -> "list[ChatCompletionMessageParam]":
if not isinstance(messages, Iterable):
return []
return [message for message in messages if _is_system_instruction(message)]
def _get_text_items(
content: "Union[str, Iterable[ChatCompletionContentPartParam]]",
) -> "list[str]":
if isinstance(content, str):
return [content]
if not isinstance(content, Iterable):
return []
text_items = []
for part in content:
if isinstance(part, dict) and part.get("type") == "text":
text = part.get("text", None)
if text is not None:
text_items.append(text)
return text_items
def _transform_system_instructions(
system_instructions: "list[ChatCompletionSystemMessageParam]",
) -> "list[TextPart]":
instruction_text_parts: "list[TextPart]" = []
for instruction in system_instructions:
if not isinstance(instruction, dict):
continue
content = instruction.get("content")
if content is None:
continue
text_parts: "list[TextPart]" = [
{"type": "text", "content": text} for text in _get_text_items(content)
]
instruction_text_parts += text_parts
return instruction_text_parts