Files
triggerdotdev--trigger.dev/docs/ai-chat/actions.mdx
T
2026-07-13 13:32:57 +08:00

112 lines
5.0 KiB
Plaintext

---
title: "Actions"
sidebarTitle: "Actions"
description: "Custom commands sent from the frontend that mutate chat state without consuming a turn — undo, rollback, edit, regenerate."
---
## Overview
Custom actions let the frontend send structured commands (undo, rollback, edit, regenerate) that modify the conversation state. **Actions are not turns**: they fire `hydrateMessages` (if set) and `onAction` only. No turn lifecycle hooks (`onTurnStart` / `prepareMessages` / `onBeforeTurnComplete` / `onTurnComplete`), no `run()`, no turn-counter increment. The trace span is named `chat action`.
Actions wake the agent from suspension the same way a new message does, run their handler against the latest accumulator state, and emit a `trigger:turn-complete` chunk so the frontend's `useChat` knows the action has been applied.
## Defining an action handler
Define an `actionSchema` for validation and an `onAction` handler that uses [`chat.history`](/ai-chat/backend#chat-history) to modify state:
```ts
import { z } from "zod";
export const myChat = chat.agent({
id: "my-chat",
actionSchema: z.discriminatedUnion("type", [
z.object({ type: z.literal("undo") }),
z.object({ type: z.literal("rollback"), targetMessageId: z.string() }),
z.object({ type: z.literal("edit"), messageId: z.string(), text: z.string() }),
]),
onAction: async ({ action }) => {
switch (action.type) {
case "undo":
chat.history.slice(0, -2); // Remove last user + assistant exchange
break;
case "rollback":
chat.history.rollbackTo(action.targetMessageId);
break;
case "edit":
chat.history.replace(action.messageId, {
id: action.messageId,
role: "user",
parts: [{ type: "text", text: action.text }],
});
break;
}
// returning void → side-effect-only, no model call
},
run: async ({ messages, signal }) => {
return streamText({ model: anthropic("claude-sonnet-4-5"), messages, abortSignal: signal });
},
});
```
**Lifecycle flow:** Wake → parse action against `actionSchema` → `hydrateMessages` (if set) → **`onAction`** → apply `chat.history` mutations → emit `trigger:turn-complete` → wait for next message.
## Returning a model response from an action
`onAction` can return a `StreamTextResult`, `string`, or `UIMessage` to produce a response. The returned stream is auto-piped to the frontend just like a normal turn, but the rest of the turn machinery (`onTurnStart`, `onTurnComplete`, etc.) still does not fire.
```ts
onAction: async ({ action, messages }) => {
if (action.type === "regenerate") {
chat.history.slice(0, -1); // drop the last assistant
return streamText({
model: anthropic("claude-sonnet-4-5"),
messages,
stopWhen: stepCountIs(15),
});
}
// other actions return void → side-effect only
}
```
This is useful for actions that both mutate state and want a fresh model response (regenerate-from-here, retry-with-different-style). Persistence is your responsibility inside `onAction` itself; you have access to the streamed response object.
## Gating actions on HITL state
If you have a [human-in-the-loop](/ai-chat/patterns/human-in-the-loop) tool waiting on `addToolOutput`, you usually want to refuse competing actions like `regenerate` until the answer arrives. [`chat.history.getPendingToolCalls()`](/ai-chat/backend#chat-history) gives you exactly that signal:
```ts
onAction: async ({ action, messages, signal }) => {
if (action.type === "regenerate") {
if (chat.history.getPendingToolCalls().length > 0) return; // gated
chat.history.slice(0, -1);
return streamText({ model: anthropic("claude-sonnet-4-5"), messages, abortSignal: signal });
}
},
```
## Sending actions from the frontend
```ts
// Browser — TriggerChatTransport
const stream = await transport.sendAction(chatId, { type: "undo" });
// Server — AgentChat
const stream = await agentChat.sendAction({ type: "rollback", targetMessageId: "msg-3" });
```
The action payload is validated against `actionSchema` on the backend; invalid actions throw and surface as a stream error. The `action` parameter in `onAction` is fully typed from the schema.
<Note>
For silent state changes that should never appear as a turn (e.g. injecting background context), use [`chat.inject()`](/ai-chat/background-injection) instead. Actions are explicit user-driven mutations; injections are agent-side context updates.
</Note>
## See also
- [`chat.history`](/ai-chat/backend#chat-history) — the imperative API actions use to mutate state
- [Sending actions from the frontend](/ai-chat/frontend#sending-actions) — `transport.sendAction` ergonomics
- [`hydrateMessages`](/ai-chat/lifecycle-hooks#hydratemessages) — fires before `onAction` when set
- [Branching conversations](/ai-chat/patterns/branching-conversations) — pairs action handlers with backend-controlled history
- [Human-in-the-loop](/ai-chat/patterns/human-in-the-loop) — gating fresh actions while a tool is waiting