## Basic model info - Model name: tencent-hunyuan/tencent-hunyuan hunyuan3d-v3.1 - Model description: Rapidly generate 3D models from images using Hunyuan 3D. - Endpoint name: part ## Model schema The model schema is defined in the OpenAPI schema: [OpenAPI Schema](https://oapi.sunra.ai/main/tencent-hunyuan/hunyuan3d-v3.1/latest.json) ### Model input schema The model input schema is: ```json { "description": "Input schema for Hunyuan3D V3.1 part decomposition.", "properties": { "model_file": { "anyOf": [ { "format": "uri", "maxLength": 2083, "minLength": 1, "type": "string" }, { "type": "string" } ], "description": "URL of the 3D model file (GLB/OBJ) to decompose into parts.", "title": "Model File", "x-sr-order": 301 } }, "required": [ "model_file" ], "title": "PartInput", "type": "object" } ``` ### Model output schema The model output schema is: ```json { "description": "Unified output schema for Hunyuan3D V3.1.", "properties": { "model": { "description": "URL of the generated 3D model", "properties": { "content_type": { "description": "The mime type of the file.", "title": "Content Type", "type": "string" }, "file_name": { "description": "The name of the file. It will be auto-generated if not provided.", "title": "File Name", "type": "string" }, "file_size": { "description": "The size of the file in bytes.", "title": "File Size", "type": "integer" }, "url": { "description": "The URL where the file can be downloaded from.", "title": "Url", "type": "string" } }, "required": [ "content_type", "file_name", "file_size", "url" ], "title": "SunraFile", "type": "object" }, "score": { "description": "Billing score for image-to-3d: base + add-ons", "title": "Score", "type": "number" } }, "required": [ "model" ], "title": "Hunyuan3DV31Output", "type": "object" } ``` ## Example inputs and outputs Use the following example inputs and outputs to understand the model. ### Input example ```json { "model_file": "" } ``` ### Output example ```json { } ``` ## Model code examples ### JavaScript ```javascript import { sunra } from "@sunra/client"; const result = await sunra.subscribe("tencent-hunyuan/hunyuan3d-v3.1/part", { input: { model_file: '' }, logs: true, onQueueUpdate: (update) => { console.log(`Status Update: ${update.status}, Request ID: ${update.request_id}`); }, }); console.log(result.data); console.log(result.requestId); ``` ### Python ```python import sunra_client result = sunra_client.subscribe( "tencent-hunyuan/hunyuan3d-v3.1/part", arguments={ "model_file": "" }, with_logs=True, on_enqueue=print, on_queue_update=print, ) print(result) ``` ### Java ```java import ai.sunra.client.*; import java.util.Map; import com.google.gson.JsonObject; var client = SunraClient.withEnvCredentials(); var response = client.subscribe( "tencent-hunyuan/hunyuan3d-v3.1/part", SubscribeOptions.builder() .input(Map.of( "model_file", "")) .resultType(JsonObject.class) .onQueueUpdate(update -> System.out.printf( "\nStatus Update: %s, Request ID: %s%n", update.getStatus(), update.getRequestId() )) .logs(true) .build() ); System.out.println("Completed!"); System.out.println(response.getData()); ``` ### Kotlin ```kotlin import ai.sunra.client.kt.* import com.google.gson.JsonObject val client = createSunraClient() val response = client.subscribe( endpointId = "tencent-hunyuan/hunyuan3d-v3.1/part", input = mapOf( "model_file" to ""), options = ai.sunra.client.kt.SubscribeOptions(logs = true), onUpdate = { update -> println("\nStatus Update: ${update.status}, Request ID: ${update.requestId}") } ) println("Completed!") println(response.data) ``` ### Curl ```bash curl --request POST \ --url https://api.sunra.ai/v1/queue/tencent-hunyuan/hunyuan3d-v3.1/part \ --header "Authorization: Key $SUNRA_KEY" \ --header "Content-Type: application/json" \ --data '{"model_file":""}' ``` ## Model readme undefined