""" This is OpenAI compatible - no transformation is applied """ from typing import List, Optional, Union import httpx from litellm.litellm_core_utils.litellm_logging import Logging as LiteLLMLoggingObj from litellm.llms.base_llm.chat.transformation import BaseLLMException from litellm.llms.base_llm.embedding.transformation import BaseEmbeddingConfig from litellm.secret_managers.main import get_secret_str from litellm.types.llms.openai import AllEmbeddingInputValues, AllMessageValues from litellm.types.utils import EmbeddingResponse, Usage from ..common_utils import SambaNovaError class SambaNovaEmbeddingConfig(BaseEmbeddingConfig): def __init__(self) -> None: pass def get_complete_url( self, api_base: Optional[str], api_key: Optional[str], model: str, optional_params: dict, litellm_params: dict, stream: Optional[bool] = None, ) -> str: if api_base is None: raise ValueError("api_base is required for SambaNova embeddings") # Remove trailing slashes and ensure clean base URL api_base = api_base.rstrip("/") if not api_base.endswith("/embeddings"): api_base = f"{api_base}/embeddings" return api_base def validate_environment( self, headers: dict, model: str, messages: List[AllMessageValues], optional_params: dict, litellm_params: dict, api_key: Optional[str] = None, api_base: Optional[str] = None, ) -> dict: if api_key is None: api_key = get_secret_str("SAMBANOVA_API_KEY") default_headers = { "Authorization": f"Bearer {api_key}", "accept": "application/json", "Content-Type": "application/json", } # If 'Authorization' is provided in headers, it overrides the default. if "Authorization" in headers: default_headers["Authorization"] = headers["Authorization"] # Merge other headers, overriding any default ones except Authorization return {**default_headers, **headers} def get_supported_openai_params(self, model: str): """ Non additional params supported, placeholder method for future supported params https://docs.sambanova.ai/cloud/api-reference/endpoints/embeddings-api """ return [] def map_openai_params( self, non_default_params: dict, optional_params: dict, model: str, drop_params: bool, ): """ No transformation is applied - SambaNova is openai compatible """ supported_openai_params = self.get_supported_openai_params(model) for param, value in non_default_params.items(): if param in supported_openai_params: optional_params[param] = value return optional_params def transform_embedding_request( self, model: str, input: AllEmbeddingInputValues, optional_params: dict, headers: dict, ) -> dict: return { "input": input, "model": model, **optional_params, } def transform_embedding_response( self, model: str, raw_response: httpx.Response, model_response: EmbeddingResponse, logging_obj: LiteLLMLoggingObj, api_key: Optional[str], request_data: dict, optional_params: dict, litellm_params: dict, ) -> EmbeddingResponse: try: raw_response_json = raw_response.json() except Exception: raise SambaNovaError( message=raw_response.text, status_code=raw_response.status_code, headers=raw_response.headers, ) model_response.model = raw_response_json.get("model") model_response.data = raw_response_json.get("data") model_response.object = raw_response_json.get("object") usage = Usage( prompt_tokens=raw_response_json.get("usage", {}).get("prompt_tokens", 0), total_tokens=raw_response_json.get("usage", {}).get("total_tokens", 0), ) model_response.usage = usage return model_response def get_error_class( self, error_message: str, status_code: int, headers: Union[dict, httpx.Headers] ) -> BaseLLMException: return SambaNovaError( message=error_message, status_code=status_code, headers=headers )