| name | ai-core/adapter-configuration |
| description | Provider adapter selection and configuration: openaiText, anthropicText, geminiText, ollamaText, grokText, groqText, openRouterText, bedrockText, openaiCompatible. Per-model type safety with modelOptions, reasoning/thinking configuration, runtime adapter switching, extendAdapter() for custom models, createModel(). Generic OpenAI-compatible providers (DeepSeek, Together, Fireworks, etc.) via openaiCompatible({ baseURL, apiKey, models }) from @tanstack/ai-openai/compatible. API key env vars: OPENAI_API_KEY, ANTHROPIC_API_KEY, GOOGLE_API_KEY/GEMINI_API_KEY, XAI_API_KEY, GROQ_API_KEY, OPENROUTER_API_KEY, OLLAMA_HOST, BEDROCK_API_KEY (or AWS_BEARER_TOKEN_BEDROCK).
|
| type | sub-skill |
| library | tanstack-ai |
| library_version | 0.10.0 |
| sources | ["TanStack/ai:docs/adapters/openai.md","TanStack/ai:docs/adapters/anthropic.md","TanStack/ai:docs/adapters/gemini.md","TanStack/ai:docs/adapters/ollama.md","TanStack/ai:docs/advanced/per-model-type-safety.md","TanStack/ai:docs/advanced/runtime-adapter-switching.md","TanStack/ai:docs/advanced/extend-adapter.md"] |
Adapter Configuration
Dependency: This skill builds on ai-core. Read it first for critical rules.
Before implementing: Ask the user which provider and model they want.
Then fetch the latest available models from the provider's source code
(check the adapter's model metadata file, e.g. packages/ai-openai/src/model-meta.ts)
or from the provider's API/docs to recommend the most current model.
The model lists in this skill and its reference files may be outdated.
Always verify against the source before recommending a specific model.
Setup
Create an adapter and use it with chat():
import { chat, toServerSentEventsResponse } from '@tanstack/ai'
import { openaiText } from '@tanstack/ai-openai'
const stream = chat({
adapter: openaiText('gpt-5.2'),
messages,
modelOptions: {
temperature: 0.7,
max_output_tokens: 1000,
},
})
return toServerSentEventsResponse(stream)
The adapter factory function takes the model name as a string literal and an
optional config object (API key, base URL, etc.). The model name is passed
into the factory, not into chat().
Sampling options (temperature, token limits, top_p/topP, etc.) live
inside modelOptions using each provider's native key — they are not
top-level options on chat(). See the per-provider table in
Configuring Sampling below.
Core Patterns
1. Adapter Selection
Each provider has a dedicated package with tree-shakeable adapter factories.
The text adapter is the primary one for chat/completions:
| Provider | Package | Factory | Env Var |
|---|
| OpenAI | @tanstack/ai-openai | openaiText | OPENAI_API_KEY |
| Anthropic | @tanstack/ai-anthropic | anthropicText | ANTHROPIC_API_KEY |
| Gemini | @tanstack/ai-gemini | geminiText | GOOGLE_API_KEY or GEMINI_API_KEY |
| Grok (xAI) | @tanstack/ai-grok | grokText | XAI_API_KEY |
| Groq | @tanstack/ai-groq | groqText | GROQ_API_KEY |
| OpenRouter | @tanstack/ai-openrouter | openRouterText | OPENROUTER_API_KEY |
| Ollama | @tanstack/ai-ollama | ollamaText | OLLAMA_HOST (default: http://localhost:11434) |
| Bedrock | @tanstack/ai-bedrock | bedrockText | BEDROCK_API_KEY or AWS_BEARER_TOKEN_BEDROCK |
| OpenAI-compatible | @tanstack/ai-openai/compatible | openaiCompatible / openaiCompatibleText | provider-specific (passed via apiKey) |
import { openaiText } from '@tanstack/ai-openai'
import { anthropicText } from '@tanstack/ai-anthropic'
import { geminiText } from '@tanstack/ai-gemini'
import { grokText } from '@tanstack/ai-grok'
import { groqText } from '@tanstack/ai-groq'
import { openRouterText } from '@tanstack/ai-openrouter'
import { ollamaText } from '@tanstack/ai-ollama'
import { bedrockText } from '@tanstack/ai-bedrock'
const adapter = openaiText('gpt-5.2')
const adapter2 = anthropicText('claude-sonnet-4-6')
const adapter3 = geminiText('gemini-2.5-pro')
const adapter4 = grokText('grok-4')
const adapter5 = groqText('llama-3.3-70b-versatile')
const adapter6 = openRouterText('anthropic/claude-sonnet-4')
const adapter7 = ollamaText('llama3.3')
const adapter8 = bedrockText('us.anthropic.claude-3-7-sonnet-20250219-v1:0')
const adapterWithKey = openaiText('gpt-5.2', {
apiKey: 'sk-...',
})
@tanstack/ai-bedrock (Amazon Bedrock) branches on config.api:
bedrockText(model) or bedrockText(model, { api: 'converse' }) (the default) — Bedrock's native Converse API via @aws-sdk/client-bedrock-runtime (adapter name bedrock-converse). Reaches the broad catalog: Claude, Nova, Llama, Mistral, DeepSeek, and more.
bedrockText(model, { api: 'chat' }) — OpenAI-compatible Chat Completions endpoint (adapter name bedrock). Open-weight models only (gpt-oss, DeepSeek V3.x, Gemma, Qwen, etc.). Does NOT reach Claude, Nova, or Llama.
bedrockText(model, { api: 'responses' }) — OpenAI-compatible Responses API, mantle-only (adapter name bedrock-responses). Currently gpt-oss family.
Use createBedrockText(model, apiKey, config?) to pass the key explicitly. Auth resolves from BEDROCK_API_KEY / AWS_BEARER_TOKEN_BEDROCK, or SigV4 via the standard AWS credential chain (no extra packages needed — handled by @aws-sdk/client-bedrock-runtime).
2. Runtime Adapter Switching
Use an adapter factory map to switch providers dynamically based on user
input or configuration:
import { chat, toServerSentEventsResponse } from '@tanstack/ai'
import type { TextAdapter } from '@tanstack/ai/adapters'
import { openaiText } from '@tanstack/ai-openai'
import { anthropicText } from '@tanstack/ai-anthropic'
import { geminiText } from '@tanstack/ai-gemini'
const adapters: Record<string, () => TextAdapter> = {
'openai/gpt-5.2': () => openaiText('gpt-5.2'),
'anthropic/claude-sonnet-4-6': () => anthropicText('claude-sonnet-4-6'),
'gemini/gemini-2.5-pro': () => geminiText('gemini-2.5-pro'),
}
export function handleChat(providerModel: string, messages: Array<any>) {
const createAdapter = adapters[providerModel]
if (!createAdapter) {
throw new Error(`Unknown provider/model: ${providerModel}`)
}
const stream = chat({
adapter: createAdapter(),
messages,
})
return toServerSentEventsResponse(stream)
}
3. Configuring Reasoning / Thinking
Different providers expose reasoning/thinking through their modelOptions:
import { chat } from '@tanstack/ai'
import { openaiText } from '@tanstack/ai-openai'
import { anthropicText } from '@tanstack/ai-anthropic'
import { geminiText } from '@tanstack/ai-gemini'
const openaiStream = chat({
adapter: openaiText('gpt-5.2'),
messages,
modelOptions: {
reasoning: {
effort: 'high',
summary: 'auto',
},
},
})
const anthropicStream = chat({
adapter: anthropicText('claude-sonnet-4-6'),
messages,
modelOptions: {
max_tokens: 16000,
thinking: {
type: 'enabled',
budget_tokens: 8000,
},
},
})
const adaptiveStream = chat({
adapter: anthropicText('claude-sonnet-4-6'),
messages,
modelOptions: {
max_tokens: 16000,
thinking: {
type: 'adaptive',
},
effort: 'high',
},
})
const geminiStream = chat({
adapter: geminiText('gemini-2.5-pro'),
messages,
modelOptions: {
thinkingConfig: {
includeThoughts: true,
thinkingBudget: 4096,
},
},
})
4. Extending Adapters with Custom Models
Use extendAdapter() and createModel() to add custom or fine-tuned models
while preserving type safety for the original models:
import { extendAdapter, createModel } from '@tanstack/ai'
import { openaiText } from '@tanstack/ai-openai'
const customModels = [
createModel('ft:gpt-5.2:my-org:custom-model:abc123', ['text', 'image']),
createModel('my-local-proxy-model', ['text']),
] as const
const myOpenai = extendAdapter(openaiText, customModels)
const gpt5 = myOpenai('gpt-5.2')
const custom = myOpenai('ft:gpt-5.2:my-org:custom-model:abc123')
At runtime, extendAdapter simply passes through to the original factory.
The _customModels parameter is only used for type inference.
5. Configuring Sampling
Sampling controls (temperature, token limits, nucleus sampling) are passed
inside modelOptions using each provider's native key. They are not
top-level fields on chat()/ai()/generate().
chat({
adapter: openaiText('gpt-5.2'),
messages,
modelOptions: { temperature: 0.7, top_p: 0.9, max_output_tokens: 1000 },
})
chat({
adapter: anthropicText('claude-sonnet-4-6'),
messages,
modelOptions: { temperature: 0.7, top_p: 0.9, max_tokens: 1000 },
})
chat({
adapter: geminiText('gemini-2.5-pro'),
messages,
modelOptions: { temperature: 0.7, topP: 0.9, maxOutputTokens: 1000 },
})
chat({
adapter: ollamaText('llama3.3'),
messages,
modelOptions: {
options: { temperature: 0.7, top_p: 0.9, num_predict: 1000 },
},
})
Per-provider sampling keys (all live inside modelOptions):
| Provider | Temperature | Nucleus | Max output tokens |
|---|
| OpenAI | temperature | top_p | max_output_tokens |
| Anthropic | temperature | top_p | max_tokens |
| Gemini | temperature | topP | maxOutputTokens |
| Grok (xAI) | temperature | top_p | max_tokens |
| Groq | temperature | top_p | max_completion_tokens |
| OpenRouter (chat) | temperature | topP | maxCompletionTokens |
| Ollama | temperature | top_p | num_predict (nested in options) |
temperature is the one key every provider names identically; token limits and
some sampling options use provider-native names. Ollama nests all sampling under
modelOptions.options.
Anthropic max_tokens default: Anthropic's API requires max_tokens,
so the adapter always sends one. When you omit modelOptions.max_tokens, it
defaults to the selected model's full output ceiling (its max_output_tokens
from model metadata — e.g. 64K for Sonnet, 128K for Opus), not a low constant.
max_tokens is a ceiling, not a reservation (billing is per token generated),
so leaving it unset is the right default for codegen / agentic / long-form
output and avoids silent stop_reason: "max_tokens" truncation. Set it only to
cap output below the model ceiling. Other providers treat token limits as
optional and don't apply this flooring.
6. Capability Flag: supportsCombinedToolsAndSchema
Adapters can declare an optional capability method:
supportsCombinedToolsAndSchema?(modelOptions?: TProviderOptions): boolean
When true, the engine wires outputSchema into the regular
chatStream call alongside tools and harvests the schema-constrained
JSON from the agent loop's final-turn text — skipping the separate
structuredOutput / structuredOutputStream finalization round-trip.
When false (or the method is omitted), the legacy finalization path
runs.
Current per-adapter status (#605):
| Adapter | Returns |
|---|
openaiText / openaiChatCompletions | true (all supported models) |
anthropicText | true for Claude 4.5+ (gated by ANTHROPIC_COMBINED_TOOLS_AND_SCHEMA_MODELS), false otherwise |
geminiText | true for Gemini 3.x (gated by GEMINI_COMBINED_TOOLS_AND_SCHEMA_MODELS), false otherwise |
grokText | true for Grok 4 family (gated by GROK_COMBINED_TOOLS_AND_SCHEMA_MODELS), false otherwise |
groqText | false (Groq API rejects schema + tools + stream) |
openRouterText / openRouterResponsesText | false (per-call resolution is a follow-up) |
ollamaText | false (constrained-decoding vs tool-call grammar conflict) |
Subclasses can override to narrow the capability. When extending an
adapter for a custom model that doesn't support the combination, return
false explicitly.
6. OpenAI-Compatible Providers
Any provider that implements the OpenAI Chat Completions API (DeepSeek,
Moonshot/Kimi, Together, Fireworks, Cerebras, Qwen/DashScope, Perplexity,
NVIDIA NIM, LM Studio, etc.) can be used through the generic
openaiCompatible factory from @tanstack/ai-openai/compatible — no
dedicated package required.
import { openaiCompatible } from '@tanstack/ai-openai/compatible'
import { createModel } from '@tanstack/ai'
const deepseek = openaiCompatible({
name: 'deepseek',
baseURL: 'https://api.deepseek.com/v1',
apiKey: process.env.DEEPSEEK_API_KEY!,
models: [
'deepseek-chat',
createModel('deepseek-reasoner', {
input: ['text'],
features: ['reasoning', 'structured_outputs'],
}),
],
})
chat({ adapter: deepseek('deepseek-chat'), messages })
chat({ adapter: deepseek('deepseek-reasoner'), messages })
config also accepts any OpenAI SDK ClientOptions (notably defaultHeaders
and defaultQuery) for providers that need extra auth headers or query params.
For a single model, use the one-shot helper:
import { openaiCompatibleText } from '@tanstack/ai-openai/compatible'
chat({
adapter: openaiCompatibleText('deepseek-chat', {
baseURL: 'https://api.deepseek.com/v1',
apiKey: process.env.DEEPSEEK_API_KEY!,
}),
messages,
})
Pass api: 'responses' to target the OpenAI Responses API instead of Chat
Completions (only for the rare compatible provider that implements it, e.g.
Azure OpenAI); the default is 'chat-completions', which is what nearly all
compatible providers speak.
Verify the provider's current baseURL and model ids against its live docs —
they drift. See docs/adapters/openai-compatible.md for the full provider table.
Common Mistakes
a. HIGH: Confusing legacy monolithic with tree-shakeable adapter
The legacy openai() (and anthropic(), etc.) monolithic adapters are
deprecated. They take the model in chat(), not in the factory.
import { openai } from '@tanstack/ai-openai'
chat({ adapter: openai(), model: 'gpt-5.2', messages })
import { openaiText } from '@tanstack/ai-openai'
chat({ adapter: openaiText('gpt-5.2'), messages })
Source: docs/migration/migration.md
b. MEDIUM: Wrong API key environment variable name
Each provider uses a specific env var name. Using the wrong one causes a
runtime error:
| Provider | Correct Env Var | Common Mistake |
|---|
| OpenAI | OPENAI_API_KEY | |
| Anthropic | ANTHROPIC_API_KEY | |
| Gemini | GOOGLE_API_KEY or GEMINI_API_KEY | GOOGLE_GENAI_API_KEY (does not work) |
| Grok (xAI) | XAI_API_KEY | GROK_API_KEY (does not work) |
| Groq | GROQ_API_KEY | |
| OpenRouter | OPENROUTER_API_KEY | |
| Ollama | OLLAMA_HOST | No API key needed, just the host URL (default: http://localhost:11434) |
| Bedrock | BEDROCK_API_KEY / AWS_BEARER_TOKEN_BEDROCK | Falls back to SigV4 credentials when no API key is set |
Source: adapter source code (utils/client.ts in each adapter package).
References
Detailed per-adapter reference files:
Tension
HIGH Tension: Type safety vs. quick prototyping -- Per-model type safety
requires specific model string literals. Quick prototyping wants dynamic
selection with string variables. Agents optimizing for quick setup silently
lose type safety. If model names come from user input or config files, use
extendAdapter() to add custom names.
Cross-References
- See also:
ai-core/chat-experience/SKILL.md -- Adapter choice affects chat setup
- See also:
ai-core/structured-outputs/SKILL.md -- outputSchema handles provider differences transparently