Sie können Gemini-Modelle so konfigurieren, dass sie Antworten generieren, die einem bereitgestellten JSON-Schema entsprechen. So erhalten Sie vorhersagbare, typsichere Ergebnisse und können strukturierte Daten einfacher aus unstrukturiertem Text extrahieren.
Strukturierte Ausgaben sind ideal für folgende Anwendungsfälle:
- Datenextraktion:Bestimmte Informationen wie Namen und Datumsangaben aus Text extrahieren.
- Strukturierte Klassifizierung:Text in vordefinierte Kategorien einordnen.
- Agentenbasierte Workflows:Strukturierte Eingaben für Tools oder APIs generieren.
Neben der Unterstützung von JSON-Schemas in der REST API ermöglichen die Google GenAI SDKs auch das Definieren von Schemas mit Pydantic (Python) und Zod (JavaScript).
Beispiele für strukturierte Ausgaben
Rezept-Extraktor
In diesem Beispiel wird gezeigt, wie Sie strukturierte Daten aus Text extrahieren. Dabei werden grundlegende JSON-Schema-Typen wie object, array, string und integer verwendet.
Python
from google import genai
from pydantic import BaseModel, Field
from typing import List, Optional
class Ingredient(BaseModel):
name: str = Field(description="Name of the ingredient.")
quantity: str = Field(description="Quantity of the ingredient, including units.")
class Recipe(BaseModel):
recipe_name: str = Field(description="The name of the recipe.")
prep_time_minutes: Optional[int] = Field(description="Optional time in minutes to prepare the recipe.")
ingredients: List[Ingredient]
instructions: List[str]
client = genai.Client()
prompt = """
Please extract the recipe from the following text.
The user wants to make delicious chocolate chip cookies.
They need 2 and 1/4 cups of all-purpose flour, 1 teaspoon of baking soda,
1 teaspoon of salt, 1 cup of unsalted butter (softened), 3/4 cup of granulated sugar,
3/4 cup of packed brown sugar, 1 teaspoon of vanilla extract, and 2 large eggs.
For the best part, they'll need 2 cups of semisweet chocolate chips.
First, preheat the oven to 375°F (190°C). Then, in a small bowl, whisk together the flour,
baking soda, and salt. In a large bowl, cream together the butter, granulated sugar, and brown sugar
until light and fluffy. Beat in the vanilla and eggs, one at a time. Gradually beat in the dry
ingredients until just combined. Finally, stir in the chocolate chips. Drop by rounded tablespoons
onto ungreased baking sheets and bake for 9 to 11 minutes.
"""
interaction = client.interactions.create(
model="gemini-3.5-flash",
input=prompt,
response_format={
"type": "text",
"mime_type": "application/json",
"schema": Recipe.model_json_schema()
},
)
recipe = Recipe.model_validate_json(interaction.output_text)
print(recipe)
JavaScript
import { GoogleGenAI } from "@google/genai";
import * as z from "zod";
const recipeJsonSchema = {
type: "object",
properties: {
recipe_name: {
type: "string",
description: "The name of the recipe."
},
prep_time_minutes: {
type: "integer",
description: "Optional time in minutes to prepare the recipe."
},
ingredients: {
type: "array",
items: {
type: "object",
properties: {
name: { type: "string", description: "Name of the ingredient."},
quantity: { type: "string", description: "Quantity of the ingredient, including units."}
},
required: ["name", "quantity"]
}
},
instructions: {
type: "array",
items: { type: "string" }
}
},
required: ["recipe_name", "ingredients", "instructions"]
};
const recipeSchema = z.fromJSONSchema(recipeJsonSchema);
const client = new GoogleGenAI({});
const prompt = `
Please extract the recipe from the following text.
The user wants to make delicious chocolate chip cookies.
They need 2 and 1/4 cups of all-purpose flour, 1 teaspoon of baking soda,
1 teaspoon of salt, 1 cup of unsalted butter (softened), 3/4 cup of granulated sugar,
3/4 cup of packed brown sugar, 1 teaspoon of vanilla extract, and 2 large eggs.
For the best part, they'll need 2 cups of semisweet chocolate chips.
First, preheat the oven to 375°F (190°C). Then, in a small bowl, whisk together the flour,
baking soda, and salt. In a large bowl, cream together the butter, granulated sugar, and brown sugar
until light and fluffy. Beat in the vanilla and eggs, one at a time. Gradually beat in the dry
ingredients until just combined. Finally, stir in the chocolate chips. Drop by rounded tablespoons
onto ungreased baking sheets and bake for 9 to 11 minutes.
`;
const interaction = await client.interactions.create({
model: "gemini-3.5-flash",
input: prompt,
response_format: {
type: 'text',
mime_type: 'application/json',
schema: recipeJsonSchema
},
});
const recipe = recipeSchema.parse(JSON.parse(interaction.output_text));
console.log(recipe);
REST
curl -X POST "https://generativelanguage.googleapis.com/v1beta/interactions" \
-H "x-goog-api-key: $GEMINI_API_KEY" \
-H 'Content-Type: application/json' \
-d '{
"model": "gemini-3.5-flash",
"input": "Please extract the recipe from the following text.\nThe user wants to make delicious chocolate chip cookies.\nThey need 2 and 1/4 cups of all-purpose flour, 1 teaspoon of baking soda,\n1 teaspoon of salt, 1 cup of unsalted butter (softened), 3/4 cup of granulated sugar,\n3/4 cup of packed brown sugar, 1 teaspoon of vanilla extract, and 2 large eggs.\nFor the best part, they will need 2 cups of semisweet chocolate chips.\nFirst, preheat the oven to 375°F (190°C). Then, in a small bowl, whisk together the flour,\nbaking soda, and salt. In a large bowl, cream together the butter, granulated sugar, and brown sugar\nuntil light and fluffy. Beat in the vanilla and eggs, one at a time. Gradually beat in the dry\ningredients until just combined. Finally, stir in the chocolate chips. Drop by rounded tablespoons\nonto ungreased baking sheets and bake for 9 to 11 minutes.",
"response_format": {
"type": "text",
"mime_type": "application/json",
"schema": {
"type": "object",
"properties": {
"recipe_name": {
"type": "string",
"description": "The name of the recipe."
},
"prep_time_minutes": {
"type": "integer",
"description": "Optional time in minutes to prepare the recipe."
},
"ingredients": {
"type": "array",
"items": {
"type": "object",
"properties": {
"name": { "type": "string", "description": "Name of the ingredient."},
"quantity": { "type": "string", "description": "Quantity of the ingredient, including units."}
},
"required": ["name", "quantity"]
}
},
"instructions": {
"type": "array",
"items": { "type": "string" }
}
},
"required": ["recipe_name", "ingredients", "instructions"]
}
}
}
}'
Beispielantwort :
{
"recipe_name": "Delicious Chocolate Chip Cookies",
"ingredients": [
{ "name": "all-purpose flour", "quantity": "2 and 1/4 cups" },
{ "name": "baking soda", "quantity": "1 teaspoon" },
{ "name": "salt", "quantity": "1 teaspoon" },
{ "name": "unsalted butter (softened)", "quantity": "1 cup" },
{ "name": "granulated sugar", "quantity": "3/4 cup" },
{ "name": "packed brown sugar", "quantity": "3/4 cup" },
{ "name": "vanilla extract", "quantity": "1 teaspoon" },
{ "name": "large eggs", "quantity": "2" },
{ "name": "semisweet chocolate chips", "quantity": "2 cups" }
],
"instructions": [
"Preheat the oven to 375°F (190°C).",
"In a small bowl, whisk together the flour, baking soda, and salt.",
"In a large bowl, cream together the butter, granulated sugar, and brown sugar until light and fluffy.",
"Beat in the vanilla and eggs, one at a time.",
"Gradually beat in the dry ingredients until just combined.",
"Stir in the chocolate chips.",
"Drop by rounded tablespoons onto ungreased baking sheets and bake for 9 to 11 minutes."
]
}
Inhalte moderieren
In diesem Beispiel werden anyOf für bedingte Schemas und enum für die Klassifizierung verwendet. So kann die Ausgabestruktur je nach Inhalt variieren.
Python
from google import genai
from pydantic import BaseModel, Field
from typing import Union, Literal
class SpamDetails(BaseModel):
reason: str = Field(description="The reason why the content is considered spam.")
spam_type: Literal["phishing", "scam", "unsolicited promotion", "other"] = Field(description="The type of spam.")
class NotSpamDetails(BaseModel):
summary: str = Field(description="A brief summary of the content.")
is_safe: bool = Field(description="Whether the content is safe for all audiences.")
class ModerationResult(BaseModel):
decision: Union[SpamDetails, NotSpamDetails]
client = genai.Client()
prompt = """
Please moderate the following content and provide a decision.
Content: 'Congratulations! You''ve won a free cruise to the Bahamas. Click here to claim your prize: www.definitely-not-a-scam.com'
"""
interaction = client.interactions.create(
model="gemini-3.5-flash",
input=prompt,
response_format={
"type": "text",
"mime_type": "application/json",
"schema": ModerationResult.model_json_schema()
},
)
result = ModerationResult.model_validate_json(interaction.output_text)
print(result)
JavaScript
import { GoogleGenAI } from "@google/genai";
import * as z from "zod";
const moderationResultJsonSchema = {
type: "object",
properties: {
decision: {
anyOf: [
{
type: "object",
title: "SpamDetails",
description: "Details for content classified as spam.",
properties: {
reason: { type: "string", description: "The reason why the content is considered spam." },
spam_type: { type: "string", enum: ["phishing", "scam", "unsolicited promotion", "other"], description: "The type of spam." }
},
required: ["reason", "spam_type"]
},
{
type: "object",
title: "NotSpamDetails",
description: "Details for content classified as not spam.",
properties: {
summary: { type: "string", description: "A brief summary of the content." },
is_safe: { type: "boolean", description: "Whether the content is safe for all audiences." }
},
required: ["summary", "is_safe"]
}
]
}
},
required: ["decision"]
};
const moderationResultSchema = z.fromJSONSchema(moderationResultJsonSchema);
const client = new GoogleGenAI({});
const prompt = `
Please moderate the following content and provide a decision.
Content: 'Congratulations! You''ve won a free cruise to the Bahamas. Click here to claim your prize: www.definitely-not-a-scam.com'
`;
const interaction = await client.interactions.create({
model: "gemini-3.5-flash",
input: prompt,
response_format: {
type: 'text',
mime_type: 'application/json',
schema: moderationResultJsonSchema
},
});
const result = moderationResultSchema.parse(JSON.parse(interaction.output_text));
console.log(result);
REST
curl -X POST "https://generativelanguage.googleapis.com/v1beta/interactions" \
-H "x-goog-api-key: $GEMINI_API_KEY" \
-H 'Content-Type: application/json' \
-d '{
"model": "gemini-3.5-flash",
"input": "Please moderate the following content and provide a decision.\nContent: '\''Congratulations! You have won a free cruise to the Bahamas. Click here to claim your prize: www.definitely-not-a-scam.com'\''",
"response_format": {
"type": "text",
"mime_type": "application/json",
"schema": {
"type": "object",
"properties": {
"decision": {
"anyOf": [
{
"type": "object",
"title": "SpamDetails",
"description": "Details for content classified as spam.",
"properties": {
"reason": { "type": "string", "description": "The reason why the content is considered spam." },
"spam_type": { "type": "string", "enum": ["phishing", "scam", "unsolicited promotion", "other"], "description": "The type of spam." }
},
"required": ["reason", "spam_type"]
},
{
"type": "object",
"title": "NotSpamDetails",
"description": "Details for content classified as not spam.",
"properties": {
"summary": { "type": "string", "description": "A brief summary of the content." },
"is_safe": { "type": "boolean", "description": "Whether the content is safe for all audiences." }
},
"required": ["summary", "is_safe"]
}
]
}
},
"required": ["decision"]
}
}
}
}'
Beispielantwort :
{
"decision": {
"reason": "The content is an unsolicited prize notification attempting to trick the user into clicking a suspicious link.",
"spam_type": "scam"
}
}
Rekursive Strukturen
In diesem Beispiel wird gezeigt, wie Sie ein rekursives Schema wie ein Organigramm definieren.
Python
from google import genai
from pydantic import BaseModel, Field
from typing import List
class Employee(BaseModel):
"""Represents an employee in an organization."""
name: str
employee_id: int
reports: List["Employee"] = Field(
default_factory=list,
description="A list of employees reporting to this employee."
)
client = genai.Client()
prompt = """
Generate an organization chart for a small team.
The manager is Alice, who manages Bob and Charlie. Bob manages David.
"""
interaction = client.interactions.create(
model="gemini-3.5-flash",
input=prompt,
response_format={
"type": "text",
"mime_type": "application/json",
"schema": Employee.model_json_schema()
},
)
employee = Employee.model_validate_json(interaction.output_text)
print(employee)
JavaScript
import { GoogleGenAI } from "@google/genai";
import * as z from "zod";
const employeeJsonSchema = {
type: "object",
properties: {
name: { type: "string" },
employee_id: { type: "integer" },
reports: {
type: "array",
description: "A list of employees reporting to this employee.",
items: {
"$ref": "#"
}
}
},
required: ["name", "employee_id", "reports"]
};
const employeeSchema = z.fromJSONSchema(employeeJsonSchema);
const client = new GoogleGenAI({});
const prompt = `
Generate an organization chart for a small team.
The manager is Alice, who manages Bob and Charlie. Bob manages David.
`;
const interaction = await client.interactions.create({
model: "gemini-3.5-flash",
input: prompt,
response_format: {
type: 'text',
mime_type: 'application/json',
schema: employeeJsonSchema
},
});
const employee = employeeSchema.parse(JSON.parse(interaction.output_text));
console.log(employee);
REST
curl -X POST "https://generativelanguage.googleapis.com/v1beta/interactions" \
-H "x-goog-api-key: $GEMINI_API_KEY" \
-H 'Content-Type: application/json' \
-d '{
"model": "gemini-3.5-flash",
"input": "Generate an organization chart for a small team.\nThe manager is Alice, who manages Bob and Charlie. Bob manages David.",
"response_format": {
"type": "text",
"mime_type": "application/json",
"schema": {
"type": "object",
"properties": {
"name": { "type": "string" },
"employee_id": { "type": "integer" },
"reports": {
"type": "array",
"description": "A list of employees reporting to this employee.",
"items": {
"$ref": "#"
}
}
},
"required": ["name", "employee_id", "reports"]
}
}
}
}'
Beispielantwort :
{
"name": "Alice",
"employee_id": 101,
"reports": [
{
"name": "Bob",
"employee_id": 102,
"reports": [
{
"name": "David",
"employee_id": 104,
"reports": []
}
]
},
{
"name": "Charlie",
"employee_id": 103,
"reports": []
}
]
}
Ergebnisse streamen
Sie können strukturierte Ausgaben streamen, sodass Sie die Antwort verarbeiten können, während sie generiert wird. Die gestreamten Chunks sind gültige partielle JSON-Strings, die zum endgültigen JSON-Objekt verkettet werden können.
Python
from google import genai
from pydantic import BaseModel
from typing import Literal
class Feedback(BaseModel):
sentiment: Literal["positive", "neutral", "negative"]
summary: str
client = genai.Client()
prompt = "The new UI is incredibly intuitive. Add a very long summary to test streaming!"
stream = client.interactions.create(
model="gemini-3.5-flash",
input=prompt,
response_format={
"type": "text",
"mime_type": "application/json",
"schema": Feedback.model_json_schema()
},
stream=True
)
for event in stream:
if event.event_type == "step.delta" and event.delta.text:
print(event.delta.text, end="")
JavaScript
import { GoogleGenAI } from "@google/genai";
import * as z from "zod";
const feedbackJsonSchema = {
type: "object",
properties: {
sentiment: { type: "string", enum: ["positive", "neutral", "negative"] },
summary: { type: "string" }
},
required: ["sentiment", "summary"]
};
const feedbackSchema = z.fromJSONSchema(feedbackJsonSchema);
const client = new GoogleGenAI({});
const stream = await client.interactions.create({
model: "gemini-3.5-flash",
input: "The new UI is incredibly intuitive. Add a very long summary!",
response_format: {
type: 'text',
mime_type: 'application/json',
schema: feedbackJsonSchema
},
stream: true,
});
for await (const event of stream) {
if (event.type === "step.delta" && event.delta?.text) {
process.stdout.write(event.delta.text);
}
}
Strukturierte Ausgaben mit Tools
Mit Gemini 3 können Sie strukturierte Ausgaben mit integrierten Tools kombinieren, darunter Grounding mit der Google Suche, URL-Kontext, Codeausführung, Dateisuche und Funktionsaufrufe.
Python
from google import genai
from pydantic import BaseModel, Field
from typing import List
class MatchResult(BaseModel):
winner: str = Field(description="The name of the winner.")
final_match_score: str = Field(description="The final match score.")
scorers: List[str] = Field(description="The name of the scorer.")
client = genai.Client()
interaction = client.interactions.create(
model="gemini-3.1-pro-preview",
input="Search for all details for the latest Euro.",
tools=[{"type": "google_search"}, {"type": "url_context"}],
response_format={
"type": "text",
"mime_type": "application/json",
"schema": MatchResult.model_json_schema()
},
)
result = MatchResult.model_validate_json(interaction.output_text)
print(result)
JavaScript
import { GoogleGenAI } from "@google/genai";
import * as z from "zod";
const matchJsonSchema = {
type: "object",
properties: {
winner: { type: "string" },
final_match_score: { type: "string" },
scorers: { type: "array", items: { type: "string" } }
},
required: ["winner", "final_match_score", "scorers"]
};
const matchSchema = z.fromJSONSchema(matchJsonSchema);
const client = new GoogleGenAI({});
const interaction = await client.interactions.create({
model: "gemini-3.1-pro-preview",
input: "Search for all details for the latest Euro.",
tools: [{type: "google_search"}, {type: "url_context"}],
response_format: {
type: 'text',
mime_type: 'application/json',
schema: matchJsonSchema
},
});
const match = matchSchema.parse(JSON.parse(interaction.output_text));
console.log(match);
REST
curl -X POST "https://generativelanguage.googleapis.com/v1beta/interactions" \
-H "x-goog-api-key: $GEMINI_API_KEY" \
-H 'Content-Type: application/json' \
-d '{
"model": "gemini-3.1-pro-preview",
"input": "Search for all details for the latest Euro.",
"tools": [{"type": "google_search"}, {"type": "url_context"}],
"response_format": {
"type": "text",
"mime_type": "application/json",
"schema": {
"type": "object",
"properties": {
"winner": {"type": "string"},
"final_match_score": {"type": "string"},
"scorers": {"type": "array", "items": {"type": "string"}}
},
"required": ["winner", "final_match_score", "scorers"]
}
}
}'
JSON-Schema-Unterstützung
Wenn Sie ein JSON-Objekt generieren möchten, konfigurieren Sie response_format mit einem Objekt (oder einem Array, das ein Objekt enthält) vom Typ text und legen Sie mime_type auf application/json fest. Das Schema sollte im Feld schema angegeben werden.
Der Modus für strukturierte Ausgaben von Gemini unterstützt eine Teilmenge der JSON-Schema-Spezifikation.
Die folgenden Werte von type werden unterstützt:
string: Für Text.number: Für Gleitkommazahlen.integer: Für ganze Zahlen.boolean: Für „true“- oder „false“-Werte.object: Für strukturierte Daten mit Schlüssel/Wert-Paaren.array: Für Listen von Elementen.null: Wenn eine Property null sein darf, fügen Sie"null"in das Typ-Array ein (z.B.{"type": ["string", "null"]}).
Diese beschreibenden Properties helfen, das Modell zu steuern:
title: Eine kurze Beschreibung einer Property.description: Eine längere und detailliertere Beschreibung einer Property.
Typspezifische Properties
Für object Werte:
properties: Ein Objekt, bei dem jeder Schlüssel ein Property-Name und jeder Wert ein Schema für diese Property ist.required: Ein Array von Strings, in dem die obligatorischen Properties aufgeführt sind.additionalProperties: Steuert, ob Properties, die nicht inpropertiesaufgeführt sind, zulässig sind. Kann ein boolescher Wert oder ein Schema sein.
Für string Werte:
enum: Listet eine bestimmte Menge möglicher Strings für Klassifizierungsaufgaben auf.format: Gibt eine Syntax für den String an, z. B.date-time,dateodertime.
Für number und integer Werte:
enum: Listet eine bestimmte Menge möglicher numerischer Werte auf.minimum: Der kleinste inklusive Wert.maximum: Der größte inklusive Wert.
Für array Werte:
items: Definiert das Schema für alle Elemente im Array.prefixItems: Definiert eine Liste von Schemas für die ersten N Elemente und ermöglicht so tupelähnliche Strukturen.minItems: Die Mindestanzahl von Elementen im Array.maxItems: Die maximale Anzahl von Elementen im Array.
Strukturierte Ausgaben im Vergleich zu Funktionsaufrufen
| Funktion | Primärer Anwendungsfall |
|---|---|
| Strukturierte Ausgaben | Endgültige Antwort formatieren. Verwenden Sie diese Funktion, wenn Sie die Antwort des Modells in einem bestimmten Format wünschen. |
| Funktionsaufrufe | Während der Unterhaltung Maßnahmen ergreifen. Verwenden Sie diese Funktion, wenn das Modell Sie auffordern muss, eine Aufgabe auszuführen, bevor es eine endgültige Antwort gibt. |
Best Practices
- Klare Beschreibungen:Verwenden Sie das Feld
description, um das Modell zu steuern. - Strenge Typisierung:Verwenden Sie bestimmte Typen (
integer,string,enum). - Prompt-Engineering:Geben Sie klar an, was das Modell tun soll.
- Validierung:Obwohl die Ausgabe syntaktisch korrektes JSON ist, sollten Sie die Werte immer in Ihrer Anwendung validieren.
- Fehlerbehandlung:Implementieren Sie eine robuste Fehlerbehandlung für schemakonforme, aber semantisch falsche Ausgaben.
Beschränkungen
- Schema-Teilmenge:Nicht alle JSON-Schema-Funktionen werden unterstützt.
- Schema-Komplexität:Sehr große oder tief verschachtelte Schemas werden möglicherweise abgelehnt.