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vercel/develop-ai-functions-example

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develop-ai-functions-example

Develop examples for AI SDK functions. Use when creating, running, or modifying examples under examples/ai-functions/src to validate provider support, demonstrate features, or create test fixtures.

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v1.0Saved May 2, 2026

AI Functions Examples

The examples/ai-functions/ directory contains scripts for validating, testing, and iterating on AI SDK functions across providers.

Example Categories

Examples are organized by AI SDK function in examples/ai-functions/src/:

Directory Purpose
generate-text/ Non-streaming text generation with generateText()
stream-text/ Streaming text generation with streamText()
generate-object/ Structured output generation with generateObject()
stream-object/ Streaming structured output with streamObject()
agent/ ToolLoopAgent examples for agentic workflows
embed/ Single embedding generation with embed()
embed-many/ Batch embedding generation with embedMany()
generate-image/ Image generation with generateImage()
generate-speech/ Text-to-speech with generateSpeech()
transcribe/ Audio transcription with transcribe()
rerank/ Document reranking with rerank()
middleware/ Custom middleware implementations
registry/ Provider registry setup and usage
telemetry/ OpenTelemetry integration
complex/ Multi-component examples (agents, routers)
lib/ Shared utilities (not examples)
tools/ Reusable tool definitions

File Naming Convention

Examples follow the pattern: {provider}-{feature}.ts

Pattern Example Description
{provider}.ts openai.ts Basic provider usage
{provider}-{feature}.ts openai-tool-call.ts Specific feature
{provider}-{sub-provider}.ts amazon-bedrock-anthropic.ts Provider with sub-provider
{provider}-{sub-provider}-{feature}.ts google-vertex-anthropic-cache-control.ts Sub-provider with feature

Example Structure

All examples use the run() wrapper from lib/run.ts which:

  • Loads environment variables from .env
  • Provides error handling with detailed API error logging

Basic Template

import { providerName } from '@ai-sdk/provider-name';
import { generateText } from 'ai';
import { run } from '../lib/run';

run(async () => {
  const result = await generateText({
    model: providerName('model-id'),
    prompt: 'Your prompt here.',
  });

  console.log(result.text);
  console.log('Token usage:', result.usage);
  console.log('Finish reason:', result.finishReason);
});

Streaming Template

import { providerName } from '@ai-sdk/provider-name';
import { streamText } from 'ai';
import { printFullStream } from '../lib/print-full-stream';
import { run } from '../lib/run';

run(async () => {
  const result = streamText({
    model: providerName('model-id'),
    prompt: 'Your prompt here.',
  });

  await printFullStream({ result });
});

Tool Calling Template

import { providerName } from '@ai-sdk/provider-name';
import { generateText, tool } from 'ai';
import { z } from 'zod';
import { run } from '../lib/run';

run(async () => {
  const result = await generateText({
    model: providerName('model-id'),
    tools: {
      myTool: tool({
        description: 'Tool description',
        inputSchema: z.object({
          param: z.string().describe('Parameter description'),
        }),
        execute: async ({ param }) => {
          return { result: `Processed: ${param}` };
        },
      }),
    },
    prompt: 'Use the tool to...',
  });

  console.log(JSON.stringify(result, null, 2));
});

Structured Output Template

import { providerName } from '@ai-sdk/provider-name';
import { generateObject } from 'ai';
import { z } from 'zod';
import { run } from '../lib/run';

run(async () => {
  const result = await generateObject({
    model: providerName('model-id'),
    schema: z.object({
      name: z.string(),
      items: z.array(z.string()),
    }),
    prompt: 'Generate a...',
  });

  console.log(JSON.stringify(result.object, null, 2));
  console.log('Token usage:', result.usage);
});

Running Examples

From the examples/ai-functions directory:

pnpm tsx src/generate-text/openai.ts
pnpm tsx src/stream-text/openai-tool-call.ts
pnpm tsx src/agent/openai-generate.ts

When to Write Examples

Write examples when:

  1. Adding a new provider: Create basic examples for each supported API (generateText, streamText, generateObject, etc.)

  2. Implementing a new feature: Demonstrate the feature with at least one provider example

  3. Reproducing a bug: Create an example that shows the issue for debugging

  4. Adding provider-specific options: Show how to use providerOptions for provider-specific settings

  5. Creating test fixtures: Use examples to generate API response fixtures (see capture-api-response-test-fixture skill)

Utility Helpers

The lib/ directory contains shared utilities:

File Purpose
run.ts Error-handling wrapper with .env loading
print.ts Clean object printing (removes undefined values)
print-full-stream.ts Colored streaming output for tool calls, reasoning, text
save-raw-chunks.ts Save streaming chunks for test fixtures
present-image.ts Display images in terminal
save-audio.ts Save audio files to disk

Using print utilities

import { print } from '../lib/print';

// Pretty print objects without undefined values
print('Result:', result);
print('Usage:', result.usage, { depth: 2 });

Using printFullStream

import { printFullStream } from '../lib/print-full-stream';

const result = streamText({ ... });
await printFullStream({ result }); // Colored output for text, tool calls, reasoning

Reusable Tools

The tools/ directory contains reusable tool definitions:

import { weatherTool } from '../tools/weather-tool';

const result = await generateText({
  model: openai('gpt-4o'),
  tools: { weather: weatherTool },
  prompt: 'What is the weather in San Francisco?',
});

Best Practices

  1. Keep examples focused: Each example should demonstrate one feature or use case

  2. Use descriptive prompts: Make it clear what the example is testing

  3. Handle errors gracefully: The run() wrapper handles this automatically

  4. Use realistic model IDs: Use actual model IDs that work with the provider

  5. Add comments for complex logic: Explain non-obvious code patterns

  6. Reuse tools when appropriate: Use weatherTool or create new reusable tools in tools/

Files1
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Overall Score

82/100

Grade

B

Good

Safety

85

Quality

84

Clarity

82

Completeness

76

Summary

This skill guides AI agents in developing and maintaining example scripts for AI SDK functions across multiple providers. It provides templates, naming conventions, and best practices for creating examples that validate provider support, demonstrate features, and generate test fixtures in the `examples/ai-functions/` directory.

Static Analysis Findings

1 finding

Patterns detected by deterministic static analysis before AI scoring. Hover over any finding code for detailed information and remediation guidance.

Credential Exposure
SEC-020Direct .env File Access2x in 1 file

Direct .env file access

SKILL.md.env2x

Detected Capabilities

File reading and writing in examples/ directoryTypeScript code generation and validationEnvironment variable loading (.env)Example template instantiationProvider-specific configuration examplesStreaming and non-streaming API examplesTool definition and reusable component examples

Trigger Keywords

Phrases that MCP clients use to match this skill to user intent.

add provider examplevalidate provider supportcreate ai function demogenerate test fixturedemonstrate sdk feature

Risk Signals

INFO

Direct .env file access via run() wrapper

SKILL.md | run() wrapper description and template examples

Referenced Domains

External domains referenced in skill content, detected by static analysis.

www.apache.org

Use Cases

  • Create examples for new AI providers
  • Demonstrate AI SDK function features
  • Build test fixtures for API responses
  • Reproduce bugs with minimal examples
  • Show provider-specific options and configurations

Quality Notes

  • Well-organized with clear directory structure and file naming conventions documented in tables
  • Comprehensive templates provided for all major use cases (text generation, streaming, tool calling, structured output)
  • Utility helpers are well-documented with specific examples of how to use each
  • Best practices section provides actionable guidance on writing maintainable examples
  • Clear distinction between when to write examples and what each example category is for
  • Strong integration with shared utilities (run.ts, print.ts, etc.) reduces duplication
  • No error handling guidance for example failures or provider-specific issues
  • Could benefit from troubleshooting section for common provider configuration errors
Model: claude-haiku-4-5-20251001Analyzed: May 2, 2026

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