Book Image

Machine Learning with BigQuery ML

By : Alessandro Marrandino
Book Image

Machine Learning with BigQuery ML

By: Alessandro Marrandino

Overview of this book

BigQuery 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.
Table of Contents (20 chapters)
1
Section 1: Introduction and Environment Setup
5
Section 2: Deep Learning Networks
9
Section 3: Advanced Models with BigQuery ML
15
Section 4: Further Extending Your ML Capabilities with GCP

Converting BigQuery ML models into TensorFlow

In this section, we'll train the same deep neural network that we trained in Chapter 11, Implementing Deep Neural Networks, and then export this model into the TensorFlow SavedModel format.

Training the BigQuery ML to export it

Before we start training the model, let's access BigQuery to create the dataset and the tables that will be used for training and prediction:

  1. Log into our Google Cloud Console and access the BigQuery user interface from the navigation menu.
  2. Create a new dataset under the project that we' created in Chapter 2, Setting Up Your GCP and BigQuery Environment. For this use case, we'll create a dataset called 13_tensorflow_model with the default options.
  3. Now, we're ready to create the table that will contain the training dataset. Let's execute the following SQL statement:
    CREATE OR REPLACE TABLE `13_tensorflow_model.training_table` AS
          ...