Skip to content

Latest commit

 

History

History
 
 

gemini

Generative AI - Gemini

Welcome to the Google Cloud Generative AI - Gemini folder.

Gemini

Welcome to the Gemini era

Gemini is a family of generative AI models developed by Google DeepMind that is designed for multimodal use cases. The Gemini API gives you access to the Gemini Pro Vision and Gemini Pro models.

Gemini API in Vertex AI

On Google Cloud, the Gemini API in Vertex AI provides a unified interface for interacting with Gemini models. There are currently two models available in the Gemini API:

  • Gemini Pro model (gemini-pro): Designed to handle natural language tasks, multi-turn text and code chat, and code generation.
  • Gemini Pro Vision model (gemini-pro-vision): Supports multimodal prompts. You can include text, images, and video in your prompt requests and get text or code responses.

The notebooks and samples in this folder focus on using the Vertex AI SDK for Python to call the Gemini API in Vertex AI.

Using this repository

Description
flag
getting-started/
Get started with the Gemini API in Vertex AI:
  • gemini-1.5-pro model
  • gemini-1.5-flash model
deployed_code
sample-apps/
Discover sample apps using Gemini
manufacturing
use-cases/
Explore industry use-cases enabled by Gemini (e.g. retail, education)
radar
evaluation/
Learn how to evaluate Gemini with Vertex AI Model Evaluation for Generative AI
terminal
function-calling/
Learn how to use the function calling feature of Gemini
grass
grounding/
Learn how to use the grounding feature of Gemini
neurology
knowledge-engine/
Discover how to utilize the Knowledge Engine feature of Vertex AI
media_link
prompts/
Learn how to create and use effective prompts with Gemini.
question_answer
qa-ops/
Learn about the question-answer operations available in Gemini
build
reasoning-engine/
Discover how to utilize the Reasoning Engine feature of Vertex AI
health_and_safety
responsible-ai/
Learn best practices for responsible AI and security with the Gemini API in Vertex AI.
tune
tuning/
Learn how to tune and customize the Gemini models for specific use-cases.

Contributing

Contributions welcome! See the Contributing Guide.

Getting help

Please use the issues page to provide suggestions, feedback or submit a bug report.

Disclaimer

This repository itself is not an officially supported Google product. The code in this repository is for demonstrative purposes only.