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| @@ -0,0 +1,19 @@ | |||
| import requests | |||
| from core.tools.errors import ToolProviderCredentialValidationError | |||
| from core.tools.provider.builtin_tool_provider import BuiltinToolProviderController | |||
| class SiliconflowProvider(BuiltinToolProviderController): | |||
| def _validate_credentials(self, credentials: dict) -> None: | |||
| url = "https://api.siliconflow.cn/v1/models" | |||
| headers = { | |||
| "accept": "application/json", | |||
| "authorization": f"Bearer {credentials.get('siliconFlow_api_key')}", | |||
| } | |||
| response = requests.get(url, headers=headers) | |||
| if response.status_code != 200: | |||
| raise ToolProviderCredentialValidationError( | |||
| "SiliconFlow API key is invalid" | |||
| ) | |||
| @@ -0,0 +1,21 @@ | |||
| identity: | |||
| author: hjlarry | |||
| name: siliconflow | |||
| label: | |||
| en_US: SiliconFlow | |||
| zh_CN: 硅基流动 | |||
| description: | |||
| en_US: The image generation API provided by SiliconFlow includes Flux and Stable Diffusion models. | |||
| zh_CN: 硅基流动提供的图片生成 API,包含 Flux 和 Stable Diffusion 模型。 | |||
| icon: icon.svg | |||
| tags: | |||
| - image | |||
| credentials_for_provider: | |||
| siliconFlow_api_key: | |||
| type: secret-input | |||
| required: true | |||
| label: | |||
| en_US: SiliconFlow API Key | |||
| placeholder: | |||
| en_US: Please input your SiliconFlow API key | |||
| url: https://cloud.siliconflow.cn/account/ak | |||
| @@ -0,0 +1,44 @@ | |||
| from typing import Any, Union | |||
| import requests | |||
| from core.tools.entities.tool_entities import ToolInvokeMessage | |||
| from core.tools.tool.builtin_tool import BuiltinTool | |||
| FLUX_URL = ( | |||
| "https://api.siliconflow.cn/v1/black-forest-labs/FLUX.1-schnell/text-to-image" | |||
| ) | |||
| class FluxTool(BuiltinTool): | |||
| def _invoke( | |||
| self, user_id: str, tool_parameters: dict[str, Any] | |||
| ) -> Union[ToolInvokeMessage, list[ToolInvokeMessage]]: | |||
| headers = { | |||
| "accept": "application/json", | |||
| "content-type": "application/json", | |||
| "authorization": f"Bearer {self.runtime.credentials['siliconFlow_api_key']}", | |||
| } | |||
| payload = { | |||
| "prompt": tool_parameters.get("prompt"), | |||
| "image_size": tool_parameters.get("image_size", "1024x1024"), | |||
| "seed": tool_parameters.get("seed"), | |||
| "num_inference_steps": tool_parameters.get("num_inference_steps", 20), | |||
| } | |||
| response = requests.post(FLUX_URL, json=payload, headers=headers) | |||
| if response.status_code != 200: | |||
| return self.create_text_message(f"Got Error Response:{response.text}") | |||
| res = response.json() | |||
| result = [self.create_json_message(res)] | |||
| for image in res.get("images", []): | |||
| result.append( | |||
| self.create_image_message( | |||
| image=image.get("url"), save_as=self.VARIABLE_KEY.IMAGE.value | |||
| ) | |||
| ) | |||
| return result | |||
| @@ -0,0 +1,73 @@ | |||
| identity: | |||
| name: flux | |||
| author: hjlarry | |||
| label: | |||
| en_US: Flux | |||
| icon: icon.svg | |||
| description: | |||
| human: | |||
| en_US: Generate image via SiliconFlow's flux schnell. | |||
| llm: This tool is used to generate image from prompt via SiliconFlow's flux schnell model. | |||
| parameters: | |||
| - name: prompt | |||
| type: string | |||
| required: true | |||
| label: | |||
| en_US: prompt | |||
| zh_Hans: 提示词 | |||
| human_description: | |||
| en_US: The text prompt used to generate the image. | |||
| zh_Hans: 用于生成图片的文字提示词 | |||
| llm_description: this prompt text will be used to generate image. | |||
| form: llm | |||
| - name: image_size | |||
| type: select | |||
| required: true | |||
| options: | |||
| - value: 1024x1024 | |||
| label: | |||
| en_US: 1024x1024 | |||
| - value: 768x1024 | |||
| label: | |||
| en_US: 768x1024 | |||
| - value: 576x1024 | |||
| label: | |||
| en_US: 576x1024 | |||
| - value: 512x1024 | |||
| label: | |||
| en_US: 512x1024 | |||
| - value: 1024x576 | |||
| label: | |||
| en_US: 1024x576 | |||
| - value: 768x512 | |||
| label: | |||
| en_US: 768x512 | |||
| default: 1024x1024 | |||
| label: | |||
| en_US: Choose Image Size | |||
| zh_Hans: 选择生成的图片大小 | |||
| form: form | |||
| - name: num_inference_steps | |||
| type: number | |||
| required: true | |||
| default: 20 | |||
| min: 1 | |||
| max: 100 | |||
| label: | |||
| en_US: Num Inference Steps | |||
| zh_Hans: 生成图片的步数 | |||
| form: form | |||
| human_description: | |||
| en_US: The number of inference steps to perform. More steps produce higher quality but take longer. | |||
| zh_Hans: 执行的推理步骤数量。更多的步骤可以产生更高质量的结果,但需要更长的时间。 | |||
| - name: seed | |||
| type: number | |||
| min: 0 | |||
| max: 9999999999 | |||
| label: | |||
| en_US: Seed | |||
| zh_Hans: 种子 | |||
| human_description: | |||
| en_US: The same seed and prompt can produce similar images. | |||
| zh_Hans: 相同的种子和提示可以产生相似的图像。 | |||
| form: form | |||
| @@ -0,0 +1,51 @@ | |||
| from typing import Any, Union | |||
| import requests | |||
| from core.tools.entities.tool_entities import ToolInvokeMessage | |||
| from core.tools.tool.builtin_tool import BuiltinTool | |||
| SDURL = { | |||
| "sd_3": "https://api.siliconflow.cn/v1/stabilityai/stable-diffusion-3-medium/text-to-image", | |||
| "sd_xl": "https://api.siliconflow.cn/v1/stabilityai/stable-diffusion-xl-base-1.0/text-to-image", | |||
| } | |||
| class StableDiffusionTool(BuiltinTool): | |||
| def _invoke( | |||
| self, user_id: str, tool_parameters: dict[str, Any] | |||
| ) -> Union[ToolInvokeMessage, list[ToolInvokeMessage]]: | |||
| headers = { | |||
| "accept": "application/json", | |||
| "content-type": "application/json", | |||
| "authorization": f"Bearer {self.runtime.credentials['siliconFlow_api_key']}", | |||
| } | |||
| model = tool_parameters.get("model", "sd_3") | |||
| url = SDURL.get(model) | |||
| payload = { | |||
| "prompt": tool_parameters.get("prompt"), | |||
| "negative_prompt": tool_parameters.get("negative_prompt", ""), | |||
| "image_size": tool_parameters.get("image_size", "1024x1024"), | |||
| "batch_size": tool_parameters.get("batch_size", 1), | |||
| "seed": tool_parameters.get("seed"), | |||
| "guidance_scale": tool_parameters.get("guidance_scale", 7.5), | |||
| "num_inference_steps": tool_parameters.get("num_inference_steps", 20), | |||
| } | |||
| response = requests.post(url, json=payload, headers=headers) | |||
| if response.status_code != 200: | |||
| return self.create_text_message(f"Got Error Response:{response.text}") | |||
| res = response.json() | |||
| result = [self.create_json_message(res)] | |||
| for image in res.get("images", []): | |||
| result.append( | |||
| self.create_image_message( | |||
| image=image.get("url"), save_as=self.VARIABLE_KEY.IMAGE.value | |||
| ) | |||
| ) | |||
| return result | |||
| @@ -0,0 +1,121 @@ | |||
| identity: | |||
| name: stable_diffusion | |||
| author: hjlarry | |||
| label: | |||
| en_US: Stable Diffusion | |||
| icon: icon.svg | |||
| description: | |||
| human: | |||
| en_US: Generate image via SiliconFlow's stable diffusion model. | |||
| llm: This tool is used to generate image from prompt via SiliconFlow's stable diffusion model. | |||
| parameters: | |||
| - name: prompt | |||
| type: string | |||
| required: true | |||
| label: | |||
| en_US: prompt | |||
| zh_Hans: 提示词 | |||
| human_description: | |||
| en_US: The text prompt used to generate the image. | |||
| zh_Hans: 用于生成图片的文字提示词 | |||
| llm_description: this prompt text will be used to generate image. | |||
| form: llm | |||
| - name: negative_prompt | |||
| type: string | |||
| label: | |||
| en_US: negative prompt | |||
| zh_Hans: 负面提示词 | |||
| human_description: | |||
| en_US: Describe what you don't want included in the image. | |||
| zh_Hans: 描述您不希望包含在图片中的内容。 | |||
| llm_description: Describe what you don't want included in the image. | |||
| form: llm | |||
| - name: model | |||
| type: select | |||
| required: true | |||
| options: | |||
| - value: sd_3 | |||
| label: | |||
| en_US: Stable Diffusion 3 | |||
| - value: sd_xl | |||
| label: | |||
| en_US: Stable Diffusion XL | |||
| default: sd_3 | |||
| label: | |||
| en_US: Choose Image Model | |||
| zh_Hans: 选择生成图片的模型 | |||
| form: form | |||
| - name: image_size | |||
| type: select | |||
| required: true | |||
| options: | |||
| - value: 1024x1024 | |||
| label: | |||
| en_US: 1024x1024 | |||
| - value: 1024x2048 | |||
| label: | |||
| en_US: 1024x2048 | |||
| - value: 1152x2048 | |||
| label: | |||
| en_US: 1152x2048 | |||
| - value: 1536x1024 | |||
| label: | |||
| en_US: 1536x1024 | |||
| - value: 1536x2048 | |||
| label: | |||
| en_US: 1536x2048 | |||
| - value: 2048x1152 | |||
| label: | |||
| en_US: 2048x1152 | |||
| default: 1024x1024 | |||
| label: | |||
| en_US: Choose Image Size | |||
| zh_Hans: 选择生成图片的大小 | |||
| form: form | |||
| - name: batch_size | |||
| type: number | |||
| required: true | |||
| default: 1 | |||
| min: 1 | |||
| max: 4 | |||
| label: | |||
| en_US: Number Images | |||
| zh_Hans: 生成图片的数量 | |||
| form: form | |||
| - name: guidance_scale | |||
| type: number | |||
| required: true | |||
| default: 7 | |||
| min: 0 | |||
| max: 100 | |||
| label: | |||
| en_US: Guidance Scale | |||
| zh_Hans: 与提示词紧密性 | |||
| human_description: | |||
| en_US: Classifier Free Guidance. How close you want the model to stick to your prompt when looking for a related image to show you. | |||
| zh_Hans: 无分类器引导。您希望模型在寻找相关图片向您展示时,与您的提示保持多紧密的关联度。 | |||
| form: form | |||
| - name: num_inference_steps | |||
| type: number | |||
| required: true | |||
| default: 20 | |||
| min: 1 | |||
| max: 100 | |||
| label: | |||
| en_US: Num Inference Steps | |||
| zh_Hans: 生成图片的步数 | |||
| human_description: | |||
| en_US: The number of inference steps to perform. More steps produce higher quality but take longer. | |||
| zh_Hans: 执行的推理步骤数量。更多的步骤可以产生更高质量的结果,但需要更长的时间。 | |||
| form: form | |||
| - name: seed | |||
| type: number | |||
| min: 0 | |||
| max: 9999999999 | |||
| label: | |||
| en_US: Seed | |||
| zh_Hans: 种子 | |||
| human_description: | |||
| en_US: The same seed and prompt can produce similar images. | |||
| zh_Hans: 相同的种子和提示可以产生相似的图像。 | |||
| form: form | |||