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Introduction to Vertex Forecasting and Time Series in Practice

Google Cloud via Coursera

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Overview

Introduction to Vertex Forecasting and Time Series in Practice is a hands-on course designed to familiarize learners with the fundamentals of time series analysis and forecasting using Google Cloud’s Vertex AI platform. This course provides practical experience in leveraging Vertex Forecasting tools to build, train, and deploy robust predictive models for time-dependent data. The course begins with foundational concepts of time series data, including trends, seasonality, and noise, followed by an introduction to forecasting techniques. Learners explore how Vertex AI’s...

Syllabus

  • Introduction
    • This module addresses the reasons to build a forecasting solution on Google Cloud and introduces the learning objectives.
  • Time series and forecasting fundamentals
    • This module provides a theoretical foundation of types of sequence models, time series patterns and analysis, and forecasting notations.
  • Forecasting options on Google Cloud
    • This module introduces two major options to build a forecasting solution on Google Cloud: BigQuery ML and Vertex AI Forecast (AutoML). It also investigates the unique features of Vertex AI Forecast and explores an end-to-end workflow with AutoML.
  • Data preparation
    • This module explores the transformation of original data to the data types and format supported by Vertex AI. It also introduces the different types of features in time series and the best practices for data ingestion.
  • Model training
    • This module walks learners through the model training and demonstrates the configuration details such as the setup of context window, forecast horizon, and optimization objective.
  • Model evaluation
    • This module describes the training data split, demonstrates the evaluation metrics, and recommends the approaches to improve the model performance.
  • Model deployment
    • This module demonstrates model prediction, specifically the batch prediction with Vertex AI Forecast. It also explores machine learning operations (MLOps) and the transition from development to production.
  • Model monitoring
    • This module describes model drift and the approach of model retraining. It also demonstrates the automation of the forecasting workflow by using Vertex AI Pipelines.
  • Vertex forecasting in retail
    • This module describes a use case to build a forecasting solution with Vertex AI Forecast in a retail store. It demonstrates the steps and considerations, walks through a pilot study with two different datasets, and discusses the challenges and lessons.
  • Summary
    • This module addresses the main features of Vertex AI Forecast and summarizes the main topics of each module.
Introduction to Vertex Forecasting and Time Series in Practice
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Google Cloud via Coursera

15 hours 7 minutes

Paid Certificate Available

English

On-Demand

Advanced

Instructor

Google Cloud Training

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