Ignit Logo

Text Generation for Applications using Gen AI Studio (TGAGAS)

Virtual Learning: 550€ + IVA

REF: TGAGAS Catálogo: Google Cloud Área: Infrastructure Modernization

Duração icon

Duração:

1 dia

Próxima Data icon

Próxima Data:

Consulte-nos

Local icon

Local:

Online

Descrição

Generative AI is being used to develop new products and services across multiple industries, such as personalized marketing communications, chatbots for interacting with customers, and virtual assistants. For example, it can also be used to create chatbots that can answer customer questions and provide customer support.

In this course, you will explore the use of text generation models using Gen AI Studio on Vertex AI and learn how to incorporate those models into your application using the PaLM API and client libraries. You will learn how to design and tune prompts to ensure the best outputs for your applications and discuss how to fine-tune foundational models to improve model output quality.

*PVP por participante. A realização do curso nas datas apresentadas está sujeita a um quórum mínimo de inscrições.

Destinatários

Application developers leverage Generative AI in their applications and machine learning practitioners supporting the development of GenAI-powered applications.

  • Área: Google Cloud

Quero inscrever-me.

Programa:

Module 1 - Generative AI on Vertex AI

  • Vertex AI on Google Cloud
  • Generative AI Options on Google Cloud
  • Introduction to the Course Use Case (Text Generation)

Module 2- Gen AI Studio

  • Introduction to GenAI Studio
  • Available models and use cases
  • Designing and testing prompts in the Cloud Console
  • Data governance in GenAI Studio
  • Lab: Getting started with Vertex AI Gen AI Studio's User Interface

Module 3 - Prompt Design

  • Why is prompt design so important?
  • Zero-shot vs. few-shot prompting
  • Providing additional context and instruction-tuning
  • Best practices
  • Lab: Question Answering with Generative Models on Vertex AI

Module 4 - Implementing the PaLM API

  • Lab: Getting Started with the Vertex AI PaLM API & Python SDK
  • Introduction to the PaLM API
  • Utilizing generative models using the Python SDK
  • Understanding model parameters for text generation
  • Lab: Use the PaLM API to integrate GenAI into Applications

Module 5 - Fine-tuning Models

  • Scenarios to use model tuning
  • Workflow for model tuning
  • Preparing your model tuning dataset
  • Create a model tuning job
  • Loading a tuned model
  • Demo: Fine-tuning models for your specific use case

Pré-requisitos:

Basic understanding of one or more of the following:

  • Programming in Python
  • Leveraging APIs in applications
  • Basic familiarity with Google Cloud and Vertex AI as covered in the Google Cloud Fundamentals: Big Data and Machine Learning (GCF-BDM) course

Quero inscrever-me.

Partilha:

We meet future and then we make it spark slogan

Precisas de ajuda a encontrar o teu futuro?

A background of the Ignit sparks