HOME > Development > GCP- Complete Google Data Engineer and Cloud Architect Guide

GCP- Complete Google Data Engineer and Cloud Architect Guide

  • Development
  • May 01, 2025
SynopsisGCP: Complete Google Data Engineer and Cloud Architect Guide,...
GCP- Complete Google Data Engineer and Cloud Architect Guide  No.1

GCP: Complete Google Data Engineer and Cloud Architect Guide, available at $99.99, has an average rating of 3.6, with 230 lectures, 6 quizzes, based on 7352 reviews, and has 50325 subscribers.

You will learn about Deploy Managed Hadoop apps on the Google Cloud Build deep learning models on the cloud using TensorFlow Make informed decisions about Containers, VMs and AppEngine Use big data technologies such as BigTable, Dataflow, Apache Beam and Pub/Sub This course is ideal for individuals who are Yep! Anyone looking to use the Google Cloud Platform in their organizations or Yep! Any one who is interesting in architecting compute, networking, loading balancing and other solutions using the GCP or Yep! Any one who wants to deploy serverless analytics and big data solutions on the Google Cloud or Yep! Anyone looking to build TensorFlow models and deploy them on the cloud It is particularly useful for Yep! Anyone looking to use the Google Cloud Platform in their organizations or Yep! Any one who is interesting in architecting compute, networking, loading balancing and other solutions using the GCP or Yep! Any one who wants to deploy serverless analytics and big data solutions on the Google Cloud or Yep! Anyone looking to build TensorFlow models and deploy them on the cloud.

Enroll now: GCP: Complete Google Data Engineer and Cloud Architect Guide

Summary

Title: GCP: Complete Google Data Engineer and Cloud Architect Guide

Price: $99.99

Average Rating: 3.6

Number of Lectures: 230

Number of Quizzes: 6

Number of Published Lectures: 226

Number of Published Quizzes: 5

Number of Curriculum Items: 236

Number of Published Curriculum Objects: 231

Original Price: $89.99

Quality Status: approved

Status: Live

What You Will Learn

  • Deploy Managed Hadoop apps on the Google Cloud
  • Build deep learning models on the cloud using TensorFlow
  • Make informed decisions about Containers, VMs and AppEngine
  • Use big data technologies such as BigTable, Dataflow, Apache Beam and Pub/Sub
  • Who Should Attend

  • Yep! Anyone looking to use the Google Cloud Platform in their organizations
  • Yep! Any one who is interesting in architecting compute, networking, loading balancing and other solutions using the GCP
  • Yep! Any one who wants to deploy serverless analytics and big data solutions on the Google Cloud
  • Yep! Anyone looking to build TensorFlow models and deploy them on the cloud
  • Target Audiences

  • Yep! Anyone looking to use the Google Cloud Platform in their organizations
  • Yep! Any one who is interesting in architecting compute, networking, loading balancing and other solutions using the GCP
  • Yep! Any one who wants to deploy serverless analytics and big data solutions on the Google Cloud
  • Yep! Anyone looking to build TensorFlow models and deploy them on the cloud
  • This course is a really comprehensive guide to the Google Cloud Platform – it has ~25?hours of content and?~60 demos.

    The Google Cloud Platform is not currently the most popular cloud offering out there – that’s AWS of course – but it is possibly the best cloud offering for high-end machine learning applications. That’s because TensorFlow, the super-popular deep learning technology is also from Google.

    What’s Included:

  • Compute and Storage?– AppEngine, Container Enginer (aka Kubernetes) and Compute Engine
  • Big Data and Managed Hadoop?– Dataproc, Dataflow, BigTable, BigQuery, Pub/Sub?
  • TensorFlow on the Cloud – what neural networks and deep learning really are, how neurons work and how neural networks are trained.
  • DevOps stuff?– StackDriver logging, monitoring, cloud deployment manager
  • Security – Identity and Access Management, Identity-Aware proxying, OAuth, API?Keys, service accounts
  • Networking – Virtual Private Clouds, shared VPCs, Load balancing at the network, transport and HTTP layer; VPN, Cloud Interconnect and CDN?Interconnect
  • Hadoop Foundations: A quick look at the open-source cousins (Hadoop, Spark, Pig, Hive?and HBase)
  • Course Curriculum

    Chapter 1: You, This Course and Us

    Lecture 1: You, This Course and Us

    Lecture 2: Course Materials

    Chapter 2: Introduction

    Lecture 1: Theory, Practice and Tests

    Lecture 2: Lab: Setting Up A GCP Account

    Lecture 3: Lab: Using The Cloud Shell

    Lecture 4: Important! Delete unused GCP projects/instances

    Chapter 3: Compute

    Lecture 1: About this section

    Lecture 2: Compute Options

    Lecture 3: Google Compute Engine (GCE)

    Lecture 4: Lab: Creating a VM Instance

    Lecture 5: More GCE

    Lecture 6: Lab: Editing a VM Instance

    Lecture 7: Lab: Creating a VM Instance Using The Command Line

    Lecture 8: Lab: Creating And Attaching A Persistent Disk

    Lecture 9: Google Container Engine – Kubernetes (GKE)

    Lecture 10: More GKE

    Lecture 11: Lab: Creating A Kubernetes Cluster And Deploying A WordPress Container

    Lecture 12: App Engine

    Lecture 13: Contrasting App Engine, Compute Engine and Container Engine

    Lecture 14: Lab: Deploy And Run An App Engine App

    Chapter 4: Storage

    Lecture 1: About this section

    Lecture 2: Storage Options

    Lecture 3: Quick Take

    Lecture 4: Cloud Storage

    Lecture 5: Lab: Working With Cloud Storage Buckets

    Lecture 6: Lab: Bucket And Object Permissions

    Lecture 7: Lab: Life cycle Management On Buckets

    Lecture 8: Fix for AccessDeniedException: 403 Insufficient Permission

    Lecture 9: Lab: Running A Program On a VM Instance And Storing Results on Cloud Storage

    Lecture 10: Transfer Service

    Lecture 11: Lab: Migrating Data Using The Transfer Service

    Lecture 12: gcloud init

    Lecture 13: Lab: Cloud Storage ACLs and API access with Service Account

    Lecture 14: Lab: Cloud Storage Customer-Supplied Encryption Keys and Life-Cycle Management

    Lecture 15: Lab: Cloud Storage Versioning, Directory Sync

    Chapter 5: Cloud SQL, Cloud Spanner ~ OLTP ~ RDBMS

    Lecture 1: About this section

    Lecture 2: Cloud SQL

    Lecture 3: Lab: Creating A Cloud SQL Instance

    Lecture 4: Lab: Running Commands On Cloud SQL Instance

    Lecture 5: Lab: Bulk Loading Data Into Cloud SQL Tables

    Lecture 6: Cloud Spanner

    Lecture 7: More Cloud Spanner

    Lecture 8: Lab: Working With Cloud Spanner

    Lecture 9: Important! Delete unused GCP projects/instances

    Chapter 6: Hadoop Pre-reqs and Context

    Lecture 1: Hadoop Pre-reqs and Context

    Chapter 7: BigTable ~ HBase = Columnar Store

    Lecture 1: About this section

    Lecture 2: BigTable Intro

    Lecture 3: Columnar Store

    Lecture 4: Denormalised

    Lecture 5: Column Families

    Lecture 6: BigTable Performance

    Lecture 7: Getting the HBase Prompt

    Lecture 8: Lab: BigTable demo

    Lecture 9: Important! Delete unused GCP projects/instances

    Chapter 8: Datastore ~ Document Database

    Lecture 1: About this section

    Lecture 2: Datastore

    Lecture 3: Lab: Datastore demo

    Chapter 9: BigQuery ~ Hive ~ OLAP

    Lecture 1: About this section

    Lecture 2: BigQuery Intro

    Lecture 3: BigQuery Advanced

    Lecture 4: Lab: Loading CSV Data Into Big Query

    Lecture 5: Lab: Running Queries On Big Query

    Lecture 6: Lab: Loading JSON Data With Nested Tables

    Lecture 7: Lab: Public Datasets In Big Query

    Lecture 8: Lab: Using Big Query Via The Command Line

    Lecture 9: Lab: Aggregations And Conditionals In Aggregations

    Lecture 10: Lab: Subqueries And Joins

    Lecture 11: Lab: Regular Expressions In Legacy SQL

    Lecture 12: Lab: Using The With Statement For SubQueries

    Chapter 10: Dataflow ~ Apache Beam

    Lecture 1: About this section

    Lecture 2: Data Flow Intro

    Lecture 3: Apache Beam

    Lecture 4: Lab: Running A Python Data flow Program

    Lecture 5: Lab: Running A Java Data flow Program

    Lecture 6: Lab: Implementing Word Count In Dataflow Java

    Lecture 7: Lab: Executing The Word Count Dataflow

    Lecture 8: Lab: Executing MapReduce In Dataflow In Python

    Lecture 9: Lab: Executing MapReduce In Dataflow In Java

    Lecture 10: Lab: Dataflow With Big Query As Source And Side Inputs

    Lecture 11: Lab: Dataflow With Big Query As Source And Side Inputs 2

    Chapter 11: Dataproc ~ Managed Hadoop

    Lecture 1: About this section

    Lecture 2: Data Proc

    Lecture 3: Lab: Creating And Managing A Dataproc Cluster

    Lecture 4: Lab: Creating A Firewall Rule To Access Dataproc

    Lecture 5: Lab: Running A PySpark Job On Dataproc

    Lecture 6: Lab: Running The PySpark REPL Shell And Pig Scripts On Dataproc

    Lecture 7: Lab: Submitting A Spark Jar To Dataproc

    Instructors

  • GCP- Complete Google Data Engineer and Cloud Architect Guide  No.2
    Loony Corn
    An ex-Google, Stanford and Flipkart team
  • Rating Distribution

  • 1 stars: 170 votes
  • 2 stars: 210 votes
  • 3 stars: 1047 votes
  • 4 stars: 2821 votes
  • 5 stars: 3103 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!