Who is the target audience for Google Cloud Big Data and Machine Learning Fundamentals course?
This course is ideal for data analysts, data scientists, business analysts, and individuals responsible for designing data pipelines, creating/maintaining machine learning models, querying datasets, and creating reports. It's also suitable for executives and IT decision-makers evaluating Google Cloud for data science purposes.
What are the prerequisites for enrolling in this course?
Prospective learners should have a fundamental understanding of database query languages like SQL, knowledge of the data engineering workflow from extraction to deployment, and familiarity with machine learning models, such as supervised and unsupervised models.
What is covered in the introductory module of the course?
The introductory module of this course, dealing with Google Cloud fundamentals, big data, and machine learning, provides an overview of the course structure and goals. It aims to help learners recognize the data-to-AI lifecycle on Google Cloud and understand the critical connection between data engineering and machine learning.
What can I expect to learn about BigQuery and BigQuery ML?
In this course named Google Cloud Big Data and Machine Learning Fundamentals, Module 3 introduces BigQuery as a fully managed, serverless data warehouse and explores BigQuery ML. Learners will understand BigQuery's essentials, query processing mechanisms, and the phases involved in BigQuery ML projects. Practical labs and quizzes aid in understanding.
How does the course cover machine learning models on Google Cloud?
Module 4 of this course on Google Cloud platform Big Data & Machine Learning Fundamentals explores multiple options for building machine learning models on Google Cloud. It introduces Vertex AI, emphasizing its features, benefits, and application in horizontal and vertical markets. Practical labs and quizzes are included.
What does the Vertex AI module focus on regarding machine learning workflows?
Module 5 of this course, which deals with the Google Cloud Platform's big data and machine learning fundamentals, centers on the three key phases of the machine learning workflow – data preparation, model training, and model preparation – within Vertex AI. Learner’s practice building a machine learning model using AutoML and identify the tools and products supporting each stage through labs and quizzes.
What is Google Cloud machine learning?
Google Cloud Machine Learning (GCP ML) is a comprehensive suite of tools and services offered by Google Cloud Platform (GCP) that allows you to build, train, deploy, and manage machine learning models. It enables organizations of all sizes to leverage machine learning without worrying about the underlying infrastructure or having extensive expertise in the field.