Backend

ai-model-nodejs

tencentcloudbase/skills · updated Apr 8, 2026

$npx skills add https://github.com/tencentcloudbase/skills --skill ai-model-nodejs
summary

AI text and image generation for Node.js backends and CloudBase cloud functions.

  • Supports text generation (non-streaming and streaming) via Hunyuan and DeepSeek models, with recommended models hunyuan-2.0-instruct-20251111 and deepseek-v3.2
  • Image generation exclusive to Node.js SDK using Hunyuan Image model with configurable size, style, negative prompts, and seed control
  • Requires @cloudbase/node-sdk version 3.16.0 or higher; set cloud function timeouts to 60–120 seconds for text ope
skill.md

When to use this skill

Use this skill for calling AI models in Node.js backend or CloudBase cloud functions using @cloudbase/node-sdk.

Use it when you need to:

  • Integrate AI text generation in backend services
  • Generate images with Hunyuan Image model
  • Call AI models from CloudBase cloud functions
  • Server-side AI processing

Do NOT use for:

  • Browser/Web apps → use ai-model-web skill
  • WeChat Mini Program → use ai-model-wechat skill
  • HTTP API integration → use http-api skill

Available Providers and Models

CloudBase provides these built-in providers and models:

Provider Models Recommended
hunyuan-exp hunyuan-turbos-latest, hunyuan-t1-latest, hunyuan-2.0-thinking-20251109, hunyuan-2.0-instruct-20251111 hunyuan-2.0-instruct-20251111
deepseek deepseek-r1-0528, deepseek-v3-0324, deepseek-v3.2 deepseek-v3.2

Installation

npm install @cloudbase/node-sdk

⚠️ AI feature requires version 3.16.0 or above. Check with npm list @cloudbase/node-sdk.


Initialization

In Cloud Functions

const tcb = require('@cloudbase/node-sdk');
const app = tcb.init({ env: '<YOUR_ENV_ID>' });

exports.main = async (event, context) => {
  const ai = app.ai();
  // Use AI features
};

Cloud Function Configuration for AI Models

⚠️ Important: When creating cloud functions that use AI models (especially generateImage() and large language model generation), set a longer timeout as these operations can be slow.

Using MCP Tool manageFunctions(action="createFunction"):

Legacy compatibility: if an older prompt still says createFunction, keep the same payload shape but execute it through manageFunctions(action="createFunction").

Set the timeout parameter in the func object:

  • Parameter: func.timeout (number)
  • Unit: seconds
  • Range: 1 - 900
  • Default: 20 seconds (usually too short for AI operations)

Recommended timeout values:

  • Text generation (generateText): 60-120 seconds
  • Streaming (streamText): 60-120 seconds
  • Image generation (generateImage): 300-900 seconds (recommended: 900s)
  • Combined operations: 900 seconds (maximum allowed)

In Regular Node.js Server

const tcb = require('@cloudbase/node-sdk');
const app = tcb.init({
  env: '<YOUR_ENV_ID>',
  secretId: '<YOUR_SECRET_ID>',
  secretKey: '<YOUR_SECRET_KEY>'
});

const ai = app.ai();

generateText() - Non-streaming

const model = ai.createModel("hunyuan-exp");

const result = await model.generateText({
  model: "hunyuan-2.0-instruct-20251111",  // Recommended model
  messages: [{ role: "user", content: "你好,请你介绍一下李白" }],
});

console.log(result.text);           // Generated text string
console.log(result.usage);          // { prompt_tokens, completion_tokens, total_tokens }
console.log(result.messages);       // Full message history
console.log(result.rawResponses);   // Raw model responses

Error Handling Pattern

const model = ai.createModel("deepseek");

try {
  const result = await model.generateText({
    model: "deepseek-v3.2",
    messages: [{ role: "user", content: "Summarize today's deployment logs" }],
  });

  console.log(result.text);
} catch (error) {
  console.error("AI request failed", error);
}

streamText() - Streaming

const model = ai.createModel("hunyuan-exp");

const res = await model.streamText({
  model: "hunyuan-2.0-instruct-20251111",  // Recommended model
  messages: [{ role: "user", content: "你好,请你介绍一下李白" }],
});

// Option 1: Iterate text stream (recommended)
for await (let text of res.textStream) {
  console.log(text);  // Incremental text chunks
}

// Option 2: Iterate data stream for full response data
for await (let data of res.dataStream) {
  console.log(data);  // Full response chunk with metadata
}

// Option 3: Get final results
const messages = await res.messages;  // Full message history
const usage = await res.usage;        // Token usage

generateImage() - Image Generation

⚠️ Image generation is only available in Node SDK, not in JS SDK (Web) or WeChat Mini Program.

const imageModel = ai.createImageModel("hunyuan-image");

const res = await imageModel.generateImage({
  model: "hunyuan-image",
  prompt: "一只可爱的猫咪在草地上玩耍",
  size: "1024x1024",
  version: "v1.9",
});

console.log(res.data[0].url);           // Image URL (valid 24 hours)
console.log(res.data[0].revised_prompt);// Revised prompt if revise=true

Image Generation Parameters

interface HunyuanGenerateImageInput {
  model: "hunyuan-image";      // Required
  prompt: string;                       // Required: image description
  version?: "v1.8.1" | "v1.9";         // Default: "v1.8.1"
  size?: string;                        // Default: "1024x1024"
  negative_prompt?: string;             // v1.9 only
  style?: string;                       // v1.9 only
  revise?: boolean;                     // Default: true
  n?: number;                           // Default: 1
  footnote?: string;                    // Watermark, max 16 chars
  seed?: number;                        // Range: [1, 4294967295]
}

interface HunyuanGenerateImageOutput {
  id: string;
  created: number;
  data: Array<{
    url: string;                        // Image URL (24h valid)
    revised_prompt?: string;
  }>;
}

Type Definitions

interface BaseChatModelInput {
  model: string;                        // Required: model name
  messages: Array<ChatModelMessage>;    // Required: message array
  temperature?: number;                 // Optional: sampling temperature
  topP?: number;                        // Optional: nucleus sampling
}

type ChatModelMessage =
  | { role: "user"; content: string }
  | { role: "system"; content: string }
  | { role: "assistant"; content: string };

interface GenerateTextResult {
  text: string;                         // Generated text
  messages: Array<ChatModelMessage>;    // Full message history
  usage: Usage;                         // Token usage
  rawResponses: Array<unknown>;         // Raw model responses
  error?: unknown;                      // Error if any
}

interface StreamTextResult {
  textStream: AsyncIterable<string>;    // Incremental text stream
  dataStream: AsyncIterable<DataChunk>; // Full data stream
  messages: Promise<ChatModelMessage[]>;// Final message history
  usage: Promise<Usage>;                // Final token usage
  error?: unknown;                      // Error if any
}

interface Usage {
  prompt_tokens: number;
  completion_tokens: number;
  total_tokens: number;
}
general reviews

Ratings

4.435 reviews
  • Hana Park· Dec 28, 2024

    Registry listing for ai-model-nodejs matched our evaluation — installs cleanly and behaves as described in the markdown.

  • Ishan Flores· Dec 16, 2024

    Useful defaults in ai-model-nodejs — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.

  • Shikha Mishra· Dec 4, 2024

    I recommend ai-model-nodejs for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.

  • Jin Jackson· Nov 27, 2024

    We added ai-model-nodejs from the explainx registry; install was straightforward and the SKILL.md answered most questions upfront.

  • Yash Thakker· Nov 23, 2024

    Useful defaults in ai-model-nodejs — fewer surprises than typical one-off scripts, and it plays nicely with `npx skills` flows.

  • Jin Chen· Nov 19, 2024

    ai-model-nodejs fits our agent workflows well — practical, well scoped, and easy to wire into existing repos.

  • Sofia Rao· Nov 7, 2024

    I recommend ai-model-nodejs for anyone iterating fast on agent tooling; clear intent and a small, reviewable surface area.

  • Kabir White· Oct 26, 2024

    ai-model-nodejs reduced setup friction for our internal harness; good balance of opinion and flexibility.

  • Min Nasser· Oct 18, 2024

    Solid pick for teams standardizing on skills: ai-model-nodejs is focused, and the summary matches what you get after install.

  • Dhruvi Jain· Oct 14, 2024

    ai-model-nodejs has been reliable in day-to-day use. Documentation quality is above average for community skills.

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