| name | ai-provider-openai-sdk |
| description | Official OpenAI SDK patterns for TypeScript/Node.js — client setup, Chat Completions, Responses API, streaming, structured outputs, function calling, embeddings, vision, audio, and production best practices |
OpenAI SDK Patterns
Quick Guide: Use the official openai npm package (v6+) to interact with OpenAI's API directly. Use client.responses.create() (Responses API) for new projects with built-in tools and server-side state, or client.chat.completions.create() (Chat Completions) for stateless chat flows. Use zodResponseFormat and client.chat.completions.parse() for structured outputs. Use .stream() or stream: true for streaming. Supports GPT-5.x family, GPT-4o, o4-mini, embeddings, vision, audio, and batch processing.
<critical_requirements>
CRITICAL: Before Using This Skill
All code must follow project conventions in CLAUDE.md (kebab-case, named exports, import ordering, import type, named constants)
(You MUST use the Responses API (client.responses.create()) for new projects -- it provides better performance, built-in tools, and server-side conversation state)
(You MUST use zodResponseFormat() from openai/helpers/zod for structured outputs -- do NOT manually construct JSON schemas)
(You MUST handle errors using OpenAI.APIError and its subclasses -- never use bare catch blocks without error type checking)
(You MUST configure appropriate retries and timeouts for production use -- the SDK retries 2 times by default on 429/5xx errors)
(You MUST never hardcode API keys -- always use environment variables via process.env.OPENAI_API_KEY)
</critical_requirements>
Auto-detection: OpenAI, openai, client.chat.completions, client.responses.create, client.responses.parse, client.embeddings, client.audio, zodResponseFormat, zodTextFormat, zodFunction, zodResponsesFunction, runTools, GPT-5, GPT-4o, o4-mini, gpt-5-mini, text-embedding-3, whisper, tts, OPENAI_API_KEY, toFile
When to use:
- Building applications that call OpenAI models directly (GPT-5.x, GPT-4o, o4-mini, etc.)
- Implementing chat completions with streaming responses
- Using the Responses API for agentic workflows with built-in tools (web search, file search, code interpreter)
- Extracting structured data from LLM responses with Zod schema validation
- Implementing function calling / tool use with the Chat Completions or Responses API
- Creating embeddings for RAG pipelines or semantic search
- Processing images with vision models or audio with Whisper/TTS
- Running batch jobs for high-volume, cost-efficient processing
Key patterns covered:
- Client initialization and configuration (retries, timeouts, proxies)
- Chat Completions API (messages, streaming, function calling)
- Responses API (input, instructions, built-in tools, server-side state)
- Structured outputs with
zodResponseFormat and client.chat.completions.parse()
- Streaming with
for await...of, .stream() helper, and event handling
- Embeddings API (
text-embedding-3-small, text-embedding-3-large)
- Vision (image URLs, base64), Audio (Whisper transcription, TTS), Batch API
- Error handling, retries, timeouts, and production best practices
When NOT to use:
- Multi-provider applications where you need to switch between OpenAI, Anthropic, Google, etc. -- use a unified provider SDK instead
- React-specific chat UI hooks (
useChat, useCompletion) -- use a framework-integrated AI SDK
- When you need a higher-level abstraction over multiple LLM providers
Examples Index
- Core: Setup & Configuration -- Client init, production config, Azure, error handling, request overrides
- Chat Completions -- Basic chat, multi-turn, token tracking, output length control
- Streaming --
stream: true, .stream() helper, Responses API streaming, abort
- Tool/Function Calling -- Manual tools,
zodFunction, runTools automation, Responses API tools
- Structured Output --
zodResponseFormat, zodTextFormat, refusal handling
- Embeddings, Vision & Audio -- Semantic search, image analysis, transcription, TTS, batch processing
- Quick API Reference -- Model IDs, method signatures, error types, streaming events
Philosophy
The official OpenAI SDK provides direct, low-level access to OpenAI's full API surface. It is the thinnest possible wrapper over the REST API, auto-generated from OpenAI's OpenAPI specification using Stainless.
Core principles:
- Direct API access -- No abstractions or provider layers. You get the exact API that OpenAI documents, with full TypeScript types. Every API feature is available immediately when OpenAI releases it.
- Two API paradigms -- The Responses API (
client.responses.create()) is the newer, recommended API with built-in tools and server-side state. The Chat Completions API (client.chat.completions.create()) remains fully supported for stateless chat flows.
- Built-in resilience -- The SDK handles retries (2 by default on 429/5xx), timeouts (10 min default), and auto-pagination out of the box.
- Streaming as a first-class pattern -- Use
stream: true for SSE-based streaming, .stream() helper for event-based consumption, or for await...of for simple iteration.
- Type-safe structured outputs --
zodResponseFormat() and client.chat.completions.parse() convert Zod schemas to JSON Schema and parse responses, giving you validated, typed objects.
When to use the OpenAI SDK directly:
- You only use OpenAI models and want the simplest, most direct integration
- You need access to OpenAI-specific features (Responses API, Batch, Realtime)
- You want minimal dependencies and zero abstraction overhead
- You need the latest API features on day one
When NOT to use:
- You need to switch between providers (OpenAI, Anthropic, Google) -- use a unified provider SDK
- You want React-specific chat UI hooks -- use a framework-integrated AI SDK
- You want a higher-level agent framework -- consider OpenAI Agents SDK (
@openai/agents)
Core Patterns
Pattern 1: Client Setup
Initialize the OpenAI client. It auto-reads OPENAI_API_KEY from the environment.
import OpenAI from "openai";
const client = new OpenAI();
export { client };
const TIMEOUT_MS = 30_000;
const MAX_RETRIES = 3;
const client = new OpenAI({ timeout: TIMEOUT_MS, maxRetries: MAX_RETRIES });
Why good: Minimal setup, env var auto-detected, named constants for production settings
See: examples/core.md for Azure OpenAI, per-request overrides, error handling patterns
Pattern 2: Chat Completions API
Stateless text generation. You manage conversation history.
const completion = await client.chat.completions.create({
model: "gpt-4o",
messages: [
{ role: "developer", content: "You are a helpful coding assistant." },
{ role: "user", content: "Explain TypeScript generics." },
],
});
console.log(completion.choices[0].message.content);
Why good: Clear message roles, developer message for system instructions, direct content access
const res = await client.chat.completions.create({
model: "gpt-4o",
messages: [{ role: "user", content: "do something" }],
});
Why bad: No system instruction means unpredictable behavior, vague prompt
See: examples/chat.md for multi-turn, token tracking, output length control
Pattern 3: Responses API (Recommended for New Projects)
Newer API with built-in tools, server-side state, and better performance with reasoning models.
const response = await client.responses.create({
model: "gpt-4o",
instructions: "You are a coding assistant.",
input: "What are TypeScript generics?",
});
console.log(response.output_text);
Why good: Clean separation of instructions and input, output_text helper, simpler than messages array
const response = await client.responses.create({
model: "gpt-4o",
messages: [{ role: "user", content: "Hello" }],
});
Why bad: Responses API uses input and instructions, not messages
Built-in Tools
Web search ({ type: "web_search_preview" }), file search ({ type: "file_search" }), code interpreter ({ type: "code_interpreter" }). Chain conversations with previous_response_id and store: true.
See: examples/tools.md for Responses API function calling with tool outputs
Pattern 4: Streaming
Use streaming for user-facing responses.
const stream = await client.chat.completions.create({
model: "gpt-4o",
messages: [{ role: "user", content: "Explain async/await." }],
stream: true,
});
for await (const chunk of stream) {
const content = chunk.choices[0]?.delta?.content;
if (content) process.stdout.write(content);
}
const stream = client.chat.completions.stream({
model: "gpt-4o",
messages: [{ role: "user", content: "Tell me a story." }],
});
stream.on("content", (delta) => process.stdout.write(delta));
const finalContent = await stream.finalContent();
Why good: Progressive output for better UX, event-based API for granular control
const stream = await client.chat.completions.create({
model: "gpt-4o",
messages: [{ role: "user", content: "Hello" }],
stream: true,
});
Why bad: Stream must be consumed via iteration or event handlers, otherwise tokens are lost
See: examples/streaming.md for Responses API streaming, abort, stream methods
Pattern 5: Structured Outputs with Zod
Use zodResponseFormat() and .parse() for type-safe structured responses.
import { zodResponseFormat } from "openai/helpers/zod";
import { z } from "zod";
const CalendarEvent = z.object({
name: z.string(),
date: z.string(),
participants: z.array(z.string()),
});
const completion = await client.chat.completions.parse({
model: "gpt-4o",
messages: [
{ role: "developer", content: "Extract event details." },
{ role: "user", content: "Alice and Bob meet next Tuesday for lunch." },
],
response_format: zodResponseFormat(CalendarEvent, "calendar_event"),
});
const event = completion.choices[0].message.parsed;
Why good: Auto-converts schema, validates output, fully typed result, handles refusals
See: examples/structured-output.md for Responses API (zodTextFormat), refusal handling, complex schemas
Pattern 6: Function Calling / Tool Use
Define functions the model can call. Use zodFunction() for type-safe definitions.
import { zodFunction } from "openai/helpers/zod";
import { z } from "zod";
const GetWeatherParams = z.object({
location: z.string().describe("City name"),
unit: z.enum(["celsius", "fahrenheit"]).default("celsius"),
});
const completion = await client.chat.completions.parse({
model: "gpt-4o",
messages: [{ role: "user", content: "Weather in Paris?" }],
tools: [zodFunction({ name: "get_weather", parameters: GetWeatherParams })],
});
const toolCall = completion.choices[0].message.tool_calls?.[0];
if (toolCall?.type === "function") {
console.log(toolCall.function.parsed_arguments);
}
Why good: zodFunction provides type-safe argument parsing, .describe() guides the model
Use runTools() for automated tool execution loops that handle the call-respond cycle automatically.
See: examples/tools.md for runTools, manual tool definitions, Responses API function calling
Pattern 7: Embeddings, Vision & Audio
- Embeddings:
client.embeddings.create({ model: "text-embedding-3-small", input: [...] }) -- batch multiple inputs in one call
- Vision: Multi-part content array with
{ type: "image_url", image_url: { url } } for URL or base64 images
- Audio:
client.audio.transcriptions.create() for speech-to-text, client.audio.speech.create() for TTS
- Files:
client.files.create() with ReadStream, Buffer (via toFile), or fetch() Response
- Batch API: Upload JSONL, create batch with
client.batches.create(), poll for completion at 50% cost
See: examples/embeddings-vision-audio.md for full examples with cosine similarity, base64 images, timestamps, TTS voice instructions, batch processing
Pattern 8: Error Handling
Always catch OpenAI.APIError and its subclasses. Re-throw unexpected errors.
try {
const completion = await client.chat.completions.create({
model: "gpt-4o",
messages: [{ role: "user", content: "Hello" }],
});
} catch (error) {
if (error instanceof OpenAI.APIError) {
console.error(
`API Error [${error.status}]: ${error.message} (${error.request_id})`,
);
} else {
throw error;
}
}
Why good: Specific error types with status codes, request ID for debugging, re-throws unexpected errors
See: examples/core.md for full production error handling, stream errors, error type hierarchy
Performance Optimization
Model Selection for Cost/Speed
General purpose -> gpt-5.4 (most capable) or gpt-4o (proven, lower cost)
Cost-sensitive / high-vol -> gpt-5-mini or gpt-5-nano (cheapest)
Complex reasoning -> gpt-5.4 or o4-mini
Structured output -> gpt-5.4 or gpt-4o (best schema adherence)
Embeddings -> text-embedding-3-small (cheapest) or text-embedding-3-large (highest quality)
Transcription -> whisper-1 or gpt-4o-transcribe (higher accuracy)
TTS -> tts-1 (fast) or tts-1-hd (quality) or gpt-4o-mini-tts (voice control)
Batch processing -> gpt-5-mini at 50% batch discount
Key Optimization Patterns
- Track token usage via
completion.usage for cost visibility
- Check
finish_reason === "length" to detect truncated output
- Use
temperature: 0 for deterministic output (enables caching)
- Use
AbortController to cancel long-running requests
- Use Batch API for high-volume jobs at 50% cost reduction
<decision_framework>
Decision Framework
Which API to Use
Building a new application?
+-- YES -> Need built-in tools (web search, file search, code interpreter)?
| +-- YES -> Use Responses API (client.responses.create())
| +-- NO -> Need server-side conversation state?
| +-- YES -> Use Responses API with store: true
| +-- NO -> Either API works, prefer Responses for new code
+-- Existing Chat Completions code?
+-- Working fine? -> Keep using Chat Completions (fully supported)
+-- Need new features? -> Consider migrating to Responses API
Which Model to Choose
What is your task?
+-- General text generation -> gpt-5.4 (most capable) or gpt-4o (lower cost)
+-- Fast + cheap simple tasks -> gpt-5-mini or gpt-5-nano
+-- Complex reasoning / math -> gpt-5.4 or o4-mini
+-- Structured output -> gpt-5.4 or gpt-4o (best schema adherence)
+-- Vision (images) -> gpt-5.4 or gpt-4o
+-- Embeddings -> text-embedding-3-small (default) or text-embedding-3-large
+-- Transcription -> whisper-1 or gpt-4o-transcribe
+-- Text-to-speech -> tts-1 (fast) or gpt-4o-mini-tts (voice instructions)
+-- Batch processing -> gpt-5-mini (cheapest at 50% batch discount)
Streaming vs Non-Streaming
Is the response user-facing?
+-- YES -> Use streaming (stream: true or .stream())
| +-- Need event-level control? -> .stream() with event handlers
| +-- Simple text output? -> stream: true with for await
+-- NO -> Use non-streaming
+-- Background processing -> client.chat.completions.create()
+-- Structured output -> client.chat.completions.parse()
+-- High volume -> Batch API
When to Use This SDK vs a Provider-Agnostic SDK
Do you need multiple LLM providers (OpenAI + others)?
+-- YES -> Not this skill's scope -- use a unified provider SDK
+-- NO -> Do you need OpenAI-specific features?
+-- YES -> Use OpenAI SDK directly
| Examples: Responses API, Batch API,
| Realtime API, built-in web search/file search
+-- NO -> OpenAI SDK is simplest for OpenAI-only use
</decision_framework>
<red_flags>
RED FLAGS
High Priority Issues:
- Hardcoding API keys instead of using environment variables (security breach risk)
- Using bare
catch blocks without checking OpenAI.APIError (hides API errors)
- Not consuming streams returned by
stream: true (tokens are silently lost)
- Using
JSON.parse() on completion content without zodResponseFormat (fragile, no validation)
- Sending full conversation history every request when Responses API's
previous_response_id could manage state
Medium Priority Issues:
- Not setting
maxRetries / timeout for production deployments (10 min default timeout may be too long)
- Missing
developer role message (no system instruction = unpredictable output style)
- Using deprecated
system role instead of developer role in Chat Completions
- Not checking
finish_reason for 'length' truncation
- Ignoring
usage data (no cost visibility)
Common Mistakes:
- Confusing Responses API (
client.responses.create()) with Chat Completions (client.chat.completions.create()) parameters -- they use different shapes
- Using
messages parameter with Responses API (it uses input and instructions)
- Using
response_format with models that don't support structured outputs (need gpt-4o or later)
- Using
max_tokens with reasoning models (o4-mini, gpt-5.x) -- use max_completion_tokens instead
- Not handling the case where
completion.choices[0].message.tool_calls is undefined
- Forgetting that
runTools() defaults to max 10 completions -- set maxChatCompletions explicitly
Gotchas & Edge Cases:
- The SDK auto-retries on 429 (rate limit) and 5xx errors -- 2 retries by default. Disable with
maxRetries: 0 if you handle retries yourself.
stream: true returns raw SSE chunks. Use .stream() helper for a nicer event-based API.
client.chat.completions.parse() throws LengthFinishReasonError if finish_reason is 'length' and ContentFilterFinishReasonError if 'content_filter'.
- Embedding responses return
Array<number> (the SDK requests base64 by default and decodes via Float32 internally for performance). No conversion needed -- you get a plain number array.
- File uploads support
ReadStream, File, fetch() Response, and toFile() helper -- use whichever matches your data source.
- The Responses API's
store: true enables server-side state but also means OpenAI stores your conversations. Set store: false for sensitive data.
developer role replaces system role in newer models (gpt-4o and later).
- Batch API has a 24h completion window and 50,000 request limit per batch.
- Audio transcription has a 25 MB file size limit.
- Zod schemas with
zodResponseFormat must use additionalProperties: false -- the SDK handles this automatically.
zodTextFormat and zodResponseFormat are NOT compatible with Zod v4 -- use Zod v3.x until the SDK adds v4 support.
- The Assistants API is deprecated (sunset August 2026) -- use the Responses API for new code.
</red_flags>
<critical_reminders>
CRITICAL REMINDERS
All code must follow project conventions in CLAUDE.md (kebab-case, named exports, import ordering, import type, named constants)
(You MUST use the Responses API (client.responses.create()) for new projects -- it provides better performance, built-in tools, and server-side conversation state)
(You MUST use zodResponseFormat() from openai/helpers/zod for structured outputs -- do NOT manually construct JSON schemas)
(You MUST handle errors using OpenAI.APIError and its subclasses -- never use bare catch blocks without error type checking)
(You MUST configure appropriate retries and timeouts for production use -- the SDK retries 2 times by default on 429/5xx errors)
(You MUST never hardcode API keys -- always use environment variables via process.env.OPENAI_API_KEY)
Failure to follow these rules will produce insecure, unreliable, or poorly-typed AI integrations.
</critical_reminders>