import types from typing import List, Optional from openai.types.image import Image from litellm.types.utils import ImageResponse class AmazonStabilityConfig: """ Reference: https://us-west-2.console.aws.amazon.com/bedrock/home?region=us-west-2#/providers?model=stability.stable-diffusion-xl-v0 Supported Params for the Amazon / Stable Diffusion models: - `cfg_scale` (integer): Default `7`. Between [ 0 .. 35 ]. How strictly the diffusion process adheres to the prompt text (higher values keep your image closer to your prompt) - `seed` (float): Default: `0`. Between [ 0 .. 4294967295 ]. Random noise seed (omit this option or use 0 for a random seed) - `steps` (array of strings): Default `30`. Between [ 10 .. 50 ]. Number of diffusion steps to run. - `width` (integer): Default: `512`. multiple of 64 >= 128. Width of the image to generate, in pixels, in an increment divible by 64. Engine-specific dimension validation: - SDXL Beta: must be between 128x128 and 512x896 (or 896x512); only one dimension can be greater than 512. - SDXL v0.9: must be one of 1024x1024, 1152x896, 1216x832, 1344x768, 1536x640, 640x1536, 768x1344, 832x1216, or 896x1152 - SDXL v1.0: same as SDXL v0.9 - SD v1.6: must be between 320x320 and 1536x1536 - `height` (integer): Default: `512`. multiple of 64 >= 128. Height of the image to generate, in pixels, in an increment divible by 64. Engine-specific dimension validation: - SDXL Beta: must be between 128x128 and 512x896 (or 896x512); only one dimension can be greater than 512. - SDXL v0.9: must be one of 1024x1024, 1152x896, 1216x832, 1344x768, 1536x640, 640x1536, 768x1344, 832x1216, or 896x1152 - SDXL v1.0: same as SDXL v0.9 - SD v1.6: must be between 320x320 and 1536x1536 """ cfg_scale: Optional[int] = None seed: Optional[float] = None steps: Optional[List[str]] = None width: Optional[int] = None height: Optional[int] = None def __init__( self, cfg_scale: Optional[int] = None, seed: Optional[float] = None, steps: Optional[List[str]] = None, width: Optional[int] = None, height: Optional[int] = None, ) -> None: locals_ = locals() for key, value in locals_.items(): if key != "self" and value is not None: setattr(self.__class__, key, value) @classmethod def get_config(cls): return { k: v for k, v in cls.__dict__.items() if not k.startswith("__") and not isinstance( v, ( types.FunctionType, types.BuiltinFunctionType, classmethod, staticmethod, ), ) and v is not None } @classmethod def get_supported_openai_params(cls, model: Optional[str] = None) -> List: return ["size"] @classmethod def map_openai_params( cls, non_default_params: dict, optional_params: dict, ): _size = non_default_params.get("size") if _size is not None: width, height = _size.split("x") optional_params["width"] = int(width) optional_params["height"] = int(height) return optional_params @classmethod def transform_response_dict_to_openai_response( cls, model_response: ImageResponse, response_dict: dict ) -> ImageResponse: image_list: List[Image] = [] for artifact in response_dict["artifacts"]: _image = Image(b64_json=artifact["base64"]) image_list.append(_image) model_response.data = image_list return model_response