Machine Learning with BigQuery ML
eBook - ePub

Machine Learning with BigQuery ML

Alessandro Marrandino

Condividi libro
  1. 344 pagine
  2. English
  3. ePUB (disponibile sull'app)
  4. Disponibile su iOS e Android
eBook - ePub

Machine Learning with BigQuery ML

Alessandro Marrandino

Dettagli del libro
Anteprima del libro
Indice dei contenuti
Citazioni

Informazioni sul libro

Manage different business scenarios with the right machine learning technique using Google's highly scalable BigQuery MLKey Features• Gain a clear understanding of AI and machine learning services on GCP, learn when to use these, and find out how to integrate them with BigQuery ML• Leverage SQL syntax to train, evaluate, test, and use ML models• Discover how BigQuery works and understand the capabilities of BigQuery ML using examplesBook DescriptionBigQuery ML enables you to easily build machine learning (ML) models with SQL without much coding. This book will help you to accelerate the development and deployment of ML models with BigQuery ML. The book starts with a quick overview of Google Cloud and BigQuery architecture. You'll then learn how to configure a Google Cloud project, understand the architectural components and capabilities of BigQuery, and find out how to build ML models with BigQuery ML. The book teaches you how to use ML using SQL on BigQuery. You'll analyze the key phases of a ML model's lifecycle and get to grips with the SQL statements used to train, evaluate, test, and use a model. As you advance, you'll build a series of use cases by applying different ML techniques such as linear regression, binary and multiclass logistic regression, k-means, ARIMA time series, deep neural networks, and XGBoost using practical use cases. Moving on, you'll cover matrix factorization and deep neural networks using BigQuery ML's capabilities. Finally, you'll explore the integration of BigQuery ML with other Google Cloud Platform components such as AI Platform Notebooks and TensorFlow along with discovering best practices and tips and tricks for hyperparameter tuning and performance enhancement. By the end of this BigQuery book, you'll be able to build and evaluate your own ML models with BigQuery ML.What you will learn• Discover how to prepare datasets to build an effective ML model• Forecast business KPIs by leveraging various ML models and BigQuery ML• Build and train a recommendation engine to suggest the best products for your customers using BigQuery ML• Develop, train, and share a BigQuery ML model from previous parts with AI Platform Notebooks• Find out how to invoke a trained TensorFlow model directly from BigQuery• Get to grips with BigQuery ML best practices to maximize your ML performanceWho this book is forThis book is for data scientists, data analysts, data engineers, and anyone looking to get started with Google's BigQuery ML. You'll also find this book useful if you want to accelerate the development of ML models or if you are a business user who wants to apply ML in an easy way using SQL. Basic knowledge of BigQuery and SQL is required.

Domande frequenti

Come faccio ad annullare l'abbonamento?
È semplicissimo: basta accedere alla sezione Account nelle Impostazioni e cliccare su "Annulla abbonamento". Dopo la cancellazione, l'abbonamento rimarrà attivo per il periodo rimanente già pagato. Per maggiori informazioni, clicca qui
È possibile scaricare libri? Se sì, come?
Al momento è possibile scaricare tramite l'app tutti i nostri libri ePub mobile-friendly. Anche la maggior parte dei nostri PDF è scaricabile e stiamo lavorando per rendere disponibile quanto prima il download di tutti gli altri file. Per maggiori informazioni, clicca qui
Che differenza c'è tra i piani?
Entrambi i piani ti danno accesso illimitato alla libreria e a tutte le funzionalità di Perlego. Le uniche differenze sono il prezzo e il periodo di abbonamento: con il piano annuale risparmierai circa il 30% rispetto a 12 rate con quello mensile.
Cos'è Perlego?
Perlego è un servizio di abbonamento a testi accademici, che ti permette di accedere a un'intera libreria online a un prezzo inferiore rispetto a quello che pagheresti per acquistare un singolo libro al mese. Con oltre 1 milione di testi suddivisi in più di 1.000 categorie, troverai sicuramente ciò che fa per te! Per maggiori informazioni, clicca qui.
Perlego supporta la sintesi vocale?
Cerca l'icona Sintesi vocale nel prossimo libro che leggerai per verificare se è possibile riprodurre l'audio. Questo strumento permette di leggere il testo a voce alta, evidenziandolo man mano che la lettura procede. Puoi aumentare o diminuire la velocità della sintesi vocale, oppure sospendere la riproduzione. Per maggiori informazioni, clicca qui.
Machine Learning with BigQuery ML è disponibile online in formato PDF/ePub?
Sì, puoi accedere a Machine Learning with BigQuery ML di Alessandro Marrandino in formato PDF e/o ePub, così come ad altri libri molto apprezzati nelle sezioni relative a Ciencia de la computación e Tratamiento de datos. Scopri oltre 1 milione di libri disponibili nel nostro catalogo.

Informazioni

Anno
2021
ISBN
9781800562189

Section 1: Introduction and Environment Setup

This section provides an introduction to machine learning and an overview of the technical tools that will be used in the next sections of the book: Google Cloud Platform, BigQuery, and BigQuery ML, as well as the SQL syntax related to it.
This section comprises the following chapters:
  • Chapter 1, Introduction to Google Cloud and BigQuery
  • Chapter 2, Setting Up Your GCP and BigQuery Environment
  • Chapter 3, Introducing BigQuery Syntax

Chapter 1: Introduction to Google Cloud and BigQuery

The adoption of the public cloud enables companies and users to access innovative and cost-effective technologies. This is particularly valuable in the big data and Artificial Intelligence (AI) areas, where new solutions are providing possibilities that seemed impossible to achieve with on-premises systems only a few years ago. In order to be effective in the day-to-day business of a company, the new AI capabilities need to be shared between different roles and not concentrated only with technicians. Most cloud providers are currently addressing the challenge of democratizing AI across different departments and employees with different skills.
In this context, Google Cloud provides several services to accelerate the processing of large amounts of data and build Machine Learning (ML) applications that can make better decisions.
In this chapter, we'll gradually introduce the main concepts that will be useful in the upcoming hands-on activities. Using an incremental approach, we'll go through the following topics:
  • Introducing Google Cloud Platform
  • Exploring AI and ML services on GCP
  • Introducing BigQuery
  • Discovering BigQuery ML
  • Understanding BigQuery pricing

Introducing Google Cloud Platform

Starting from 1998 with the launch of Google Search, Google has developed one of the largest and most powerful IT infrastructures in the world. Today, this infrastructure is used by billions of users to use services such as Gmail, YouTube, Google Photo, and Maps. After 10 years, in 2008, Google decided to open its network and IT infrastructure to business customers, taking an infrastructure that was initially developed for consumer applications to public service and launching Google Cloud Platform (GCP).
The 90+ services that Google currently provides to large enterprises and small- and medium-sized businesses cover the following categories:
  • Compute: Used to support workloads or applications with virtual machines such as Google Compute Engine, containers with Google Kubernetes Engine, or platforms such as AppEngine.
  • Storage and databases: Used to store datasets and objects in an easy and convenient way. Some examples are Google Cloud Storage, Cloud SQL, and Spanner.
  • Networking: Used to easily connect different locations and data centers across the globe with Virtual Private Clouds (VPCs), firewalls, and fully managed global routers.
  • Big data: Used to store and process large amounts of information in a structured, semi-structured, or unstructured format. Among these services are Google DataProc, the Hadoop services offered by GCP, and BigQuery, which is the main focus of this book.
  • AI and machine learning: This product area provides various tools for different kinds of users, enabling them to leverage AI and ML in their everyday business. Some examples are TensorFlow, AutoML, Vision APIs, and BigQuery ML, the main focus of this book.
  • Identity, security, and management tools: This area includes all the services that are necessary to prevent unauthorized access, ensure security, and monitor all other cloud infrastructure. Identity Access Management, Key Management Service, Cloud Logging, and Cloud Audit Logs are just some of these tools.
  • Internet of Things (IoT): Used to connect plants, vehicles, or any other objects to the GCP infrastructure, enabling the development of modern IoT use cases. The core component of this area is Google IoT Core.
  • API management: Tools to expose services to customers and partners through REST APIs, providing the ability to fully leverage the benefits of interconnectivity. In this pillar, Google Apigee is one of the most famous products and is recognized as the leader of this market segment.
  • Productivity: Used to improve productivity and collaboration for all companies that want to start working with Google and embracing its way of doing business through the powerful tools of Google Workplace (previously GSuite).

Interacting with GCP

All the services just mentioned can be accessed through four different interfaces:
  • Google Cloud Console: The web-based user interface of GCP, easily accessible from compatible web browsers such as Google Chrome, Edge, or Firefox. For the hands-on exercises in this book, we'll mainly use Google Cloud Console:
Figure 1.1 – Screenshot of Google Cloud Console
Figure 1.1 – Screenshot of Google Cloud Console
  • Google Cloud SDK: The client SDK can be installed in order to interact with GCP services through the command line. It can be very useful to automate tasks and operations by scheduling them into scripts.
  • Client libraries: The SDK also includes some client libraries to interact with GCP using the most common programming languages, such as Python, Java, and Node.js.
  • REST APIs: Any task or operation performed on GCP can be executed by invoking a specific REST API from any compatible software.
Now that we've learned how to interact with GCP, let's discover how GCP is different from other cloud providers.

Discovering GCP's key differentiators

GCP is not the only public cloud provider on the market. Oth...

Indice dei contenuti