| name | output-dev-agent-class |
| description | Use the Agent class for multi-step tool loops, conversation history, and reusable LLM agents. Use when building agents with skills, structured output, or stateful conversations. |
| allowed-tools | ["Read","Write","Edit"] |
Using the Agent Class
Overview
The Agent class extends AI SDK's ToolLoopAgent with Output prompt files and the skills system. Use it when you need multi-step tool execution, conversation history, or a reusable agent instance. For single-shot LLM calls without tools, generateText is simpler.
When to Use This Skill
- Building multi-step agents that call tools in a loop
- Using skills (lazy-loaded instructions) with an agent
- Creating agents with structured output via
Output.object()
- Implementing stateful conversations with
conversationStore
- Deciding between
Agent and generateText
Import Pattern
import { Agent, createMemoryConversationStore, skill, Output } from '@outputai/llm';
import { z } from '@outputai/core';
Agent, createMemoryConversationStore, skill, and Output all come from @outputai/llm. Import z from @outputai/core (never from zod directly).
Construction
The prompt file is loaded and rendered at construction time. Variables, skills, and tools are fixed at construction. The agent is ready to call generate() or stream() immediately.
const agent = new Agent( {
prompt: 'writing_assistant@v1',
variables: {
content_type: input.contentType,
focus: input.focus,
content: input.content
},
skills: [ audienceSkill ],
output: Output.object( { schema: reviewSchema } ),
maxSteps: 5
} );
Constructor Options
| Option | Type | Default | Description |
|---|
prompt | string | (required) | Prompt file name (e.g. 'writing_assistant@v1') |
variables | Record<string, unknown> | {} | Template variables rendered at construction |
skills | Skill[] | [] | Skill packages for the LLM (see output-dev-skill-file) |
tools | ToolSet | {} | AI SDK tools available during the loop |
maxSteps | number | 10 | Maximum tool-loop iterations |
stopWhen | StopCondition | - | Custom stop condition (overrides maxSteps) |
output | Output | - | Structured output spec (e.g. Output.object({ schema })) |
conversationStore | ConversationStore | - | Pluggable store for multi-turn history |
temperature | number | - | Override prompt file temperature |
onStepFinish | Function | - | Callback after each tool-loop step |
prepareStep | Function | - | Customize each step before execution |
generate()
Run the agent and return when complete:
const result = await agent.generate();
console.log( result.text );
console.log( result.output );
console.log( result.usage );
The result has the same shape as generateText: text, result (alias for text), output, usage, finishReason, toolCalls, etc.
Passing Additional Messages
Extend the conversation with extra messages:
const result = await agent.generate( {
messages: [ { role: 'user', content: 'Focus on the introduction section.' } ]
} );
Messages are appended after the initial prompt messages (and any conversation store history).
stream()
Stream the agent's response:
const stream = await agent.stream();
for await ( const chunk of stream.textStream ) {
process.stdout.write( chunk );
}
Like streamText, the stream result provides textStream and fullStream iterables, plus promise-based properties (text, usage, finishReason) that resolve on completion.
Important: stream() does not automatically append messages to the conversation store. If you use streaming with a conversation store, persist messages manually.
Structured Output
Use Output.object() to get typed responses:
const reviewSchema = z.object( {
issues: z.array( z.string() ).describe( 'List of issues found' ),
suggestions: z.array( z.string() ).describe( 'Actionable suggestions' ),
score: z.number().describe( 'Quality score 0-100' ),
summary: z.string().describe( 'Brief overall assessment' )
} );
const agent = new Agent( {
prompt: 'writing_assistant@v1',
variables: { content_type: 'documentation', focus: 'clarity', content: markdownContent },
output: Output.object( { schema: reviewSchema } ),
maxSteps: 5
} );
const { output } = await agent.generate();
Use .describe() on schema fields instead of .min()/.max() for number constraints. Anthropic does not support minimum/maximum JSON Schema constraints in tool definitions.
Conversation Store
By default, Agent is stateless. Each generate() call starts fresh with only the initial prompt messages. Pass a conversationStore to maintain history across calls:
import { Agent, createMemoryConversationStore } from '@outputai/llm';
const store = createMemoryConversationStore();
const chatbot = new Agent( {
prompt: 'chatbot@v1',
conversationStore: store
} );
const r1 = await chatbot.generate( {
messages: [ { role: 'user', content: 'Hello, tell me about Output.' } ]
} );
const r2 = await chatbot.generate( {
messages: [ { role: 'user', content: 'How does it handle retries?' } ]
} );
Custom Store
For production use, implement the ConversationStore interface with your database:
interface ConversationStore {
getMessages(): ModelMessage[] | Promise<ModelMessage[]>;
addMessages(messages: ModelMessage[]): void | Promise<void>;
}
createMemoryConversationStore() is the built-in in-memory implementation.
Using Agent in Workflow Steps
In workflow steps, construct a new Agent per invocation. Variables come from the step input:
import { step, z } from '@outputai/core';
import { Agent, Output } from '@outputai/llm';
const reviewSchema = z.object( {
summary: z.string().describe( 'Brief assessment' ),
issues: z.array( z.string() ).describe( 'Problems found' ),
suggestions: z.array( z.string() ).describe( 'Improvements' ),
score: z.number().describe( 'Quality score 0-100' )
} );
export const reviewContent = step( {
name: 'reviewContent',
description: 'Review technical content using Agent with structured output',
inputSchema: z.object( {
content: z.string().describe( 'The content to review' ),
content_type: z.string().describe( 'Type of content' ),
focus: z.string().describe( 'Review focus areas' )
} ),
outputSchema: reviewSchema,
fn: async input => {
const agent = new Agent( {
prompt: 'writing_assistant@v1',
variables: input,
output: Output.object( { schema: reviewSchema } ),
maxSteps: 5
} );
const { output } = await agent.generate();
return output;
}
} );
This is the standard pattern. Each step invocation is independent, and Agent construction is cheap.
Using Agent with Inline Skills
Combine inline skills with Agent for dynamic expertise:
import { Agent, skill, Output } from '@outputai/llm';
const audienceSkill = skill( {
name: 'audience_adaptation',
description: 'Tailor feedback for the specified expertise level',
instructions: `# Audience Adaptation
When the target audience is specified, adjust your feedback:
**Beginner**: Flag jargon as high-priority issues.
**Expert**: Focus on accuracy and completeness.
Always mention the audience level in your summary.`
} );
const agent = new Agent( {
prompt: 'writing_assistant@v1',
variables: input,
skills: [ audienceSkill ],
output: Output.object( { schema: reviewSchema } ),
maxSteps: 5
} );
const { output } = await agent.generate();
Inline skills are merged with any file-based skills from the prompt's colocated skills/ directory or frontmatter paths. See output-dev-skill-file for the full skills guide.
When to Use Agent vs generateText
| generateText | Agent |
|---|
| Best for | Single-shot LLM calls | Multi-step tool loops |
| Tools | Supported | Supported |
| Skills | Supported | Supported |
| Conversation history | Manual | Built-in with conversationStore |
| Reusable instance | No (function call) | Yes (construct once, call many) |
| Structured output | Output.object() | Output.object() |
Start with generateText. Move to Agent when you need conversation state or a reusable instance with a fixed configuration.
generateText Example (for comparison)
import { generateText } from '@outputai/llm';
const { result } = await generateText( {
prompt: 'generate_summary@v1',
variables: {
company_name: input.name,
website_content: input.websiteContent
}
} );
Verification Checklist
Related Skills
output-dev-skill-file - Creating skill files for agents
output-dev-prompt-file - Creating .prompt files used by agents
output-dev-step-function - Using agents in step functions
output-dev-types-file - Defining Zod schemas for structured output
output-dev-workflow-function - Orchestrating agent-powered steps