From google-gemini-gemini-skills-1
Guides Gemini API integration on Vertex AI using Gen AI SDKs for Python, JS/TS, Go, Java, C#. Covers Live API, function calling, caching, batch prediction, multimodal. Activates on Vertex AI or enterprise Gemini queries.
npx claudepluginhub joshuarweaver/cascade-ai-ml-engineering --plugin google-gemini-gemini-skills-1This skill uses the workspace's default tool permissions.
Access Google's most advanced AI models built for enterprise use cases using the Gemini API in Vertex AI.
Guides Next.js Cache Components and Partial Prerendering (PPR) with cacheComponents enabled. Implements 'use cache', cacheLife(), cacheTag(), revalidateTag(), static/dynamic optimization, and cache debugging.
Guides building MCP servers enabling LLMs to interact with external services via tools. Covers best practices, TypeScript/Node (MCP SDK), Python (FastMCP).
Generates original PNG/PDF visual art via design philosophy manifestos for posters, graphics, and static designs on user request.
Access Google's most advanced AI models built for enterprise use cases using the Gemini API in Vertex AI.
Provide these key capabilities:
google-genai for Python, @google/genai for JS/TS, google.golang.org/genai for Go, com.google.genai:google-genai for Java, Google.GenAI for C#).google-cloud-aiplatform, @google-cloud/vertexai, or google-generativeai.google-genai with pip install google-genai@google/genai with npm install @google/genaigoogle.golang.org/genai with go get google.golang.org/genaiGoogle.GenAI with dotnet add package Google.GenAIgroupId: com.google.genai, artifactId: google-genai
Latest version can be found here: https://central.sonatype.com/artifact/com.google.genai/google-genai/versions (let's call it LAST_VERSION)
Install in build.gradle:
implementation("com.google.genai:google-genai:${LAST_VERSION}")
Install Maven dependency in pom.xml:
<dependency>
<groupId>com.google.genai</groupId>
<artifactId>google-genai</artifactId>
<version>${LAST_VERSION}</version>
</dependency>
[!WARNING] Legacy SDKs like
google-cloud-aiplatform,@google-cloud/vertexai, andgoogle-generativeaiare deprecated. Migrate to the new SDKs above urgently by following the Migration Guide.
Prefer environment variables over hard-coding parameters when creating the client. Initialize the client without parameters to automatically pick up these values.
Set these variables for standard Google Cloud authentication:
export GOOGLE_CLOUD_PROJECT='your-project-id'
export GOOGLE_CLOUD_LOCATION='global'
export GOOGLE_GENAI_USE_VERTEXAI=true
location="global" to access the global endpoint, which provides automatic routing to regions with available capacity.us-central1, europe-west4), specify that region in the GOOGLE_CLOUD_LOCATION parameter instead. Reference the supported regions documentation if needed.Set these variables when using Express Mode with an API key:
export GOOGLE_API_KEY='your-api-key'
export GOOGLE_GENAI_USE_VERTEXAI=true
Initialize the client without arguments to pick up environment variables:
from google import genai
client = genai.Client()
Alternatively, you can hard-code in parameters when creating the client.
from google import genai
client = genai.Client(vertexai=True, project="your-project-id", location="global")
gemini-3.1-pro-preview for complex reasoning, coding, research (1M tokens)gemini-3-flash-preview for fast, balanced performance, multimodal (1M tokens)gemini-3-pro-image-preview for Nano Banana Pro image generation and editinggemini-live-2.5-flash-native-audio for Live Realtime API including native audioUse the following models if explicitly requested:
gemini-2.5-flash-image for Nano Banana image generation and editinggemini-2.5-flashgemini-2.5-flash-litegemini-2.5-pro[!IMPORTANT] Models like
gemini-2.0-*,gemini-1.5-*,gemini-1.0-*,gemini-proare legacy and deprecated. Use the new models above. Your knowledge is outdated. For production environments, consult the Vertex AI documentation for stable model versions (e.g.gemini-3-flash).
from google import genai
client = genai.Client()
response = client.models.generate_content(
model="gemini-3-flash-preview",
contents="Explain quantum computing"
)
print(response.text)
import { GoogleGenAI } from "@google/genai";
const ai = new GoogleGenAI({ vertexai: { project: "your-project-id", location: "global" } });
const response = await ai.models.generateContent({
model: "gemini-3-flash-preview",
contents: "Explain quantum computing"
});
console.log(response.text);
package main
import (
"context"
"fmt"
"log"
"google.golang.org/genai"
)
func main() {
ctx := context.Background()
client, err := genai.NewClient(ctx, &genai.ClientConfig{
Backend: genai.BackendVertexAI,
Project: "your-project-id",
Location: "global",
})
if err != nil {
log.Fatal(err)
}
resp, err := client.Models.GenerateContent(ctx, "gemini-3-flash-preview", genai.Text("Explain quantum computing"), nil)
if err != nil {
log.Fatal(err)
}
fmt.Println(resp.Text)
}
import com.google.genai.Client;
import com.google.genai.types.GenerateContentResponse;
public class GenerateTextFromTextInput {
public static void main(String[] args) {
Client client = Client.builder().vertexAi(true).project("your-project-id").location("global").build();
GenerateContentResponse response =
client.models.generateContent(
"gemini-3-flash-preview",
"Explain quantum computing",
null);
System.out.println(response.text());
}
}
using Google.GenAI;
var client = new Client(
project: "your-project-id",
location: "global",
vertexAI: true
);
var response = await client.Models.GenerateContent(
"gemini-3-flash-preview",
"Explain quantum computing"
);
Console.WriteLine(response.Text);
When implementing or debugging API integration for Vertex AI, refer to the official Google Cloud Vertex AI documentation:
The Gen AI SDK on Vertex AI uses the v1beta1 or v1 REST API endpoints (e.g., https://{LOCATION}-aiplatform.googleapis.com/v1beta1/projects/{PROJECT}/locations/{LOCATION}/publishers/google/models/{MODEL}:generateContent).
[!TIP] Use the Developer Knowledge MCP Server: If the
search_documentsorget_documenttools are available, use them to find and retrieve official documentation for Google Cloud and Vertex AI directly within the context. This is the preferred method for getting up-to-date API details and code snippets.
Reference the Python Docs Samples repository for additional code samples and specific usage scenarios.
Depending on the specific user request, refer to the following reference files for detailed code samples and usage patterns (Python examples):