json-render

AI chat response rendering guidance — handling UIMessage parts, tool call displays, streaming states, and structured data presentation. Use when building custom chat UIs, rendering tool results, or troubleshooting AI response display issues.

Safety Notice

This listing is imported from skills.sh public index metadata. Review upstream SKILL.md and repository scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "json-render" with this command: npx skills add vercel-labs/vercel-plugin/vercel-labs-vercel-plugin-json-render

AI Chat Response Rendering

You are an expert in rendering AI SDK v6 chat responses — UIMessage parts, tool call results, streaming states, and structured data display in React applications.

The Problem

When building chat interfaces with AI SDK v6, the raw message format includes multiple part types (text, tool calls, reasoning, images). Without proper rendering, responses appear as raw JSON or malformed output.

AI SDK v6 Message Format

In v6, messages use the UIMessage type with a parts array:

interface UIMessage {
  id: string
  role: 'user' | 'assistant'
  parts: UIMessagePart[]
}

// Part types:
// - { type: 'text', text: string }
// - { type: 'tool-<toolName>', toolCallId: string, state: string, input?: unknown, output?: unknown }
//     state values: 'partial-call' | 'call' | 'output-available' | 'approval-requested' | 'approval-responded' | 'output-denied'
// - { type: 'reasoning', text: string }
// - { type: 'step-start' }  // internal, skip in rendering

Recommended: Use AI Elements

The simplest approach is to use AI Elements, which handles all part types automatically:

import { Message } from '@/components/ai-elements/message'
import { Conversation } from '@/components/ai-elements/conversation'

{messages.map((message) => (
  <Message key={message.id} message={message} />
))}

⤳ skill: ai-elements — Full component library for AI interfaces

Manual Rendering Pattern

If you need custom rendering without AI Elements, follow this pattern:

'use client'
import { useChat } from '@ai-sdk/react'
import { DefaultChatTransport } from 'ai'

export function Chat() {
  const { messages, sendMessage, status } = useChat({
    transport: new DefaultChatTransport({ api: '/api/chat' }),
  })

  const isLoading = status === 'streaming' || status === 'submitted'

  return (
    <div>
      {messages.map((message) => (
        <div key={message.id}>
          {message.parts?.map((part, i) => {
            // 1. Text parts — render as formatted text
            if (part.type === 'text' && part.text.trim()) {
              return (
                <div key={i} className={
                  message.role === 'user'
                    ? 'bg-primary text-primary-foreground rounded-lg px-3 py-2'
                    : 'bg-muted rounded-lg px-3 py-2'
                }>
                  {part.text}
                </div>
              )
            }

            // 2. Tool parts — type is "tool-<toolName>"
            if (part.type.startsWith('tool-')) {
              const toolPart = part as {
                type: string
                toolCallId: string
                state: string
                input?: unknown
                output?: unknown
              }
              const toolName = toolPart.type.replace('tool-', '')

              if (toolPart.state === 'output-available' && toolPart.output) {
                return <ToolResultCard key={i} name={toolName} output={toolPart.output} />
              }

              if (toolPart.state === 'output-denied') {
                return (
                  <div key={i} className="text-sm text-muted-foreground">
                    {toolName} was denied
                  </div>
                )
              }

              if (toolPart.state === 'approval-requested') {
                return (
                  <div key={i} className="text-sm text-yellow-500">
                    {toolName} requires approval
                  </div>
                )
              }

              return (
                <div key={i} className="text-sm text-muted-foreground animate-pulse">
                  Running {toolName}...
                </div>
              )
            }

            // 3. Reasoning parts
            if (part.type === 'reasoning') {
              return (
                <details key={i} className="text-xs text-muted-foreground">
                  <summary>Thinking...</summary>
                  <p className="whitespace-pre-wrap">{(part as { text: string }).text}</p>
                </details>
              )
            }

            // 4. Skip unknown types (step-start, etc.)
            return null
          })}
        </div>
      ))}
    </div>
  )
}

Rendering Tool Results as Cards

Instead of dumping raw JSON, render structured tool output as human-readable cards:

function ToolResultCard({ name, output }: { name: string; output: unknown }) {
  const data = output as Record<string, unknown>

  // Pattern: Check for known result shapes and render accordingly
  if (data?.success && data?.issue) {
    const issue = data.issue as { identifier?: string; title?: string }
    return (
      <div className="rounded border border-border bg-card p-2 text-sm">
        <span className="font-medium text-green-400">
          {name === 'createIssue' ? 'Created' : 'Updated'} {issue.identifier}
        </span>
        <p className="text-muted-foreground">{issue.title}</p>
      </div>
    )
  }

  if (data?.items && Array.isArray(data.items)) {
    return (
      <div className="rounded border border-border bg-card p-2 text-sm">
        <p className="font-medium">{data.items.length} results</p>
        {data.items.slice(0, 5).map((item: Record<string, unknown>, i: number) => (
          <p key={i} className="text-muted-foreground">{String(item.name || item.title || item.id)}</p>
        ))}
      </div>
    )
  }

  if (data?.error) {
    return (
      <div className="rounded border border-destructive/30 bg-destructive/10 p-2 text-sm text-destructive">
        {String(data.error)}
      </div>
    )
  }

  // Fallback: simple completion message (not raw JSON)
  return (
    <div className="rounded border border-border bg-card p-2 text-xs text-muted-foreground">
      {name} completed
    </div>
  )
}

Server-Side Requirements

The server route must use the correct v6 response format:

// app/api/chat/route.ts
import { streamText, convertToModelMessages, gateway } from 'ai'

export async function POST(req: Request) {
  const { messages } = await req.json()

  // IMPORTANT: convertToModelMessages is async in v6
  const modelMessages = await convertToModelMessages(messages)

  const result = streamText({
    model: gateway('anthropic/claude-sonnet-4.6'),
    messages: modelMessages,
  })

  // Use toUIMessageStreamResponse for chat UIs (not toDataStreamResponse)
  return result.toUIMessageStreamResponse()
}

Client-Side Requirements

import { useChat } from '@ai-sdk/react'
import { DefaultChatTransport } from 'ai'

const { messages, sendMessage, status } = useChat({
  // v6 uses transport instead of api
  transport: new DefaultChatTransport({ api: '/api/chat' }),
})

// v6 uses sendMessage instead of handleSubmit
sendMessage({ text: inputValue })

// Status values: 'ready' | 'submitted' | 'streaming'
const isLoading = status === 'streaming' || status === 'submitted'

Common Mistakes

1. Raw JSON in chat responses

Cause: Rendering message.content instead of iterating message.parts.

Fix: Always iterate message.parts and handle each type:

// WRONG — shows raw JSON
<div>{message.content}</div>

// RIGHT — renders each part type
{message.parts?.map((part, i) => {
  if (part.type === 'text') return <span key={i}>{part.text}</span>
  // ... handle other types
})}

2. Tool results showing as JSON blobs

Cause: Using JSON.stringify(output) as the display.

Fix: Create structured card components for known tool output shapes.

3. "Invalid prompt: messages do not contain..." error

Cause: Not converting UI messages to model messages on the server.

Fix: Use await convertToModelMessages(messages) — it's async in v6.

4. Messages not appearing / empty responses

Cause: Using toDataStreamResponse() instead of toUIMessageStreamResponse().

Fix: Use toUIMessageStreamResponse() when the client uses useChat with DefaultChatTransport.

5. useChat not working with v6

Cause: Using the v5 useChat({ api: '/api/chat' }) pattern.

Fix: Use DefaultChatTransport:

// v5 (old)
const { messages, handleSubmit, input } = useChat({ api: '/api/chat' })

// v6 (current)
const { messages, sendMessage, status } = useChat({
  transport: new DefaultChatTransport({ api: '/api/chat' }),
})

Decision Tree

Building a chat UI with AI SDK v6?
  └─ Want pre-built components?
       └─ Yes → Use AI Elements (⤳ skill: ai-elements)
       └─ No → Manual rendering with parts iteration
            └─ Tool results look like JSON?
                 └─ Create ToolResultCard components for each tool's output shape
            └─ Text not rendering?
                 └─ Check part.type === 'text' and use part.text
            └─ Server errors?
                 └─ Check: await convertToModelMessages(), toUIMessageStreamResponse()

Server-Side Message Validation

Use validateUIMessages to validate incoming messages before processing:

import { validateUIMessages, convertToModelMessages, streamText, gateway } from 'ai'

export async function POST(req: Request) {
  const { messages } = await req.json()
  const validatedMessages = validateUIMessages(messages)
  const modelMessages = await convertToModelMessages(validatedMessages)
  // ...
}

Official Documentation

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

General

shadcn

No summary provided by upstream source.

Repository SourceNeeds Review
General

json-render-react

No summary provided by upstream source.

Repository SourceNeeds Review
General

json-render-core

No summary provided by upstream source.

Repository SourceNeeds Review