Asset 3
Asset 1

Overview

A Professional Data Engineer enables data-driven decision making by collecting, transforming, and publishing data. A Data Engineer should be able to design, build, operationalize, secure, and monitor data processing systems with a particular emphasis on security and compliance; scalability and efficiency; reliability and fidelity; and flexibility and portability. A Data Engineer should also be able to leverage, deploy, and continuously train pre-existing machine learning models. Through this course, you will have full of knowledge to take Professional Data Engineer exam.

Duration: 36h

Audience
Asset 4
  • Data analysts, data scientists, and business analysts who are getting started with Google Cloud.
  • Individuals responsible for designing pipelines and architectures for data processing, creating and maintaining machine learning and statistical models, querying datasets, visualizing query results, and creating reports.
prerequisite
  • Hoàn thành khóa học Big Data & Machine learning fundamental
  • Basic proficiency with common query language such as SQL.
  • Experience with data modeling, extract, transform, load activities.
  • Developing applications using a common programming language such Python.
  • Có kinh nghiệm làm việc với Machine Learning hoặc thống kê.
Objective

After completing the course, students will have the following knowledge:

  • Design and build data processing systems on Google Cloud Platform
  • Process batch and streaming data by implementing autoscaling data pipelines on Cloud Dataflow
  • Derive business insights from extremely large datasets using Google BigQuery
  • Train, evaluate and predict using machine learning models using Tensorflow and Cloud ML
  • Leverage unstructured data using Spark and ML APIs on Cloud Dataproc
  • Enable instant insights from streaming data
  • Select and tune the I/O of your choice for your Dataflow pipeline.
  • Use schemas to simplify your Beam code and improve the performance of your pipeline.
  • Develop a Beam pipeline using SQL and DataFrames.
  • Perform monitoring, troubleshooting, testing and CI/CD on Dataflow pipelines
Asset 5
Asset 6

OUTLINE

01

Introduction to Data Engineering

+
Explore the role of a data engineer.
+
Analyze data engineering challenges.
+
Intro to BigQuery.
+
Data Lakes and Data Warehouses.
+
Demo: Federated Queries with BigQuery.
+
Transactional Databases vs Data Warehouses.
+
Website Demo: Finding PII in your dataset with DLP API.
+
Partner effectively with other data teams.
+
Manage data access and governance.
+
Build production-ready pipelines.
+
Review GCP customer case study.
+
Lab: Analyzing Data with BigQuery.

02

Building a Data Lake

+
Introduction to Data Lakes.
+
Data Storage and ETL options on GCP.
+
Building a Data Lake using Cloud Storage.
+
Optional Demo: Optimizing cost with Google Cloud Storage classes and Cloud Functions.
+
Securing Cloud Storage.
+
Storing All Sorts of Data Types.
+
Video Demo: Running federated queries on Parquet and ORC files in BigQuery.
+
Cloud SQL as a relational Data Lake.
+
Lab: Loading Taxi Data into Cloud SQL.

03

Building a Data Warehouse

+
The modern data warehouse.
+
Intro to BigQuery.
+
Demo: Query TB+ of data in seconds.
+
Getting Started.
+
Loading Data.
+
Video Demo: Querying Cloud SQL from BigQuery.
+
Lab: Loading Data into BigQuery.
+
Exploring Schemas.
+
Demo: Exploring BigQuery Public Datasets with SQL using INFORMATION_SCHEMA.
+
Schema Design.
+
Nested and Repeated Fields.
+
Demo: Nested and repeated fields in BigQuery.
+
Lab: Working with JSON and Array data in BigQuery.
+
Optimizing with Partitioning and Clustering.
+
Demo: Partitioned and Clustered Tables in BigQuery.
+
Preview: Transforming Batch and Streaming Data.

04

Introduction to Building Batch Data Pipelines

+
EL, ELT, ETL.
+
Quality considerations.
+
How to carry out operations in BigQuery.
+
Demo: ELT to improve data quality in BigQuery.
+
Shortcomings.
+
ETL to solve data quality issues.

05

Executing Spark on Cloud Dataproc

+
The Hadoop ecosystem.
+
Running Hadoop on Cloud Dataproc.
+
GCS instead of HDFS.
+
Optimizing Dataproc.
+
Lab: Running Apache Spark jobs on Cloud Dataproc.

06

Serverless Data Processing with Cloud Dataflow

+
Cloud Dataflow.
+
Why customers value Dataflow.
+
Dataflow Pipelines.
+
Lab: A Simple Dataflow Pipeline (Python/Java).
+
Lab: MapReduce in Dataflow (Python/Java).
+
Lab: Side Inputs (Python/Java).
+
Dataflow Templates.
+
Dataflow SQL.

07

Manage Data Pipelines with Cloud Data Fusion and Cloud Composer

+
Building Batch Data Pipelines visually with Cloud Data Fusion.
+
Components.
+
UI Overview.
+
Building a Pipeline.
+
Exploring Data using Wrangler.
+
Lab: Building and executing a pipeline graph in Cloud Data Fusion.
+
Orchestrating work between GCP services with Cloud Composer.
+
Apache Airflow Environment.
+
DAGs and Operators.
+
Workflow Scheduling.
+
Optional Long Demo: Event-triggered Loading of data with Cloud Composer, Cloud Functions, Cloud Storage, and BigQuery.
+
Monitoring and Logging.
+
Lab: An Introduction to Cloud Composer.

08

Introduction to Processing Streaming Data

+
Processing Streaming Data.

09

Serverless Messaging with Cloud Pub/Sub

+
Cloud Pub/Sub.
+
Lab: Publish Streaming Data into Pub/Sub.

10

Cloud Dataflow Streaming Features

+
Cloud Dataflow Streaming Features.
+
Lab: Streaming Data Pipelines.

11

High-Throughput BigQuery and Bigtable Streaming Features

+
BigQuery Streaming Features.
+
Lab: Streaming Analytics and Dashboards.
+
Cloud Bigtable.
+
Lab: Streaming Data Pipelines into Bigtable.

12

Advanced BigQuery Functionality and Performance

+
Analytic Window Functions.
+
Using With Clauses.
+
GIS Functions.
+
Demo: Mapping Fastest Growing Zip Codes with BigQuery GeoViz.
+
Performance Considerations.
+
Lab: Optimizing your BigQuery Queries for Performance.
+
Optional Lab: Creating Date-Partitioned Tables in BigQuery.

13

Introduction to Analytics and AI

+
What is AI?.
+
From Ad-hoc Data Analysis to Data Driven Decisions.
+
Options for ML models on GCP.

14

Prebuilt ML model APIs for Unstructured Data

+
Unstructured Data is Hard.
+
ML APIs for Enriching Data.
+
Lab: Using the Natural Language API to Classify Unstructured Text.

15

Big Data Analytics with Cloud AI Platform Notebooks

+
Whats a Notebook.
+
BigQuery Magic and Ties to Pandas.
+
Lab: BigQuery in Jupyter Labs on AI Platform.

16

Production ML Pipelines with Kubeflow

+
Ways to do ML on GCP.
+
Kubeflow.
+
AI Hub.
+
Lab: Running AI models on Kubeflow.

17

Custom Model building with SQL in BigQuery ML

+
BigQuery ML for Quick Model Building.
+
Demo: Train a model with BigQuery ML to predict NYC taxi fares.
+
Supported Models.
+
Lab Option 1: Predict Bike Trip Duration with a Regression Model in BQML.
+
Lab Option 2: Movie Recommendations in BigQuery ML.

18

Custom Model building with Cloud AutoML

+
Why Auto ML?
+
Auto ML Vision.
+
Auto ML NLP.
+
Auto ML Tables.
Study with
Google Cloud expert
Asset 2@2x

Asset 32@2x
Asset 2

Student feedback

Cloud Ace Training
Bringing great experiences to students

Asset 4

Trần Tuấn Anh

IT

After completing the Associate Cloud Engineer course, I knew how to operate and deploy projects on Google Cloud and confidently took the Google Cloud certification exam.

Nguyễn Ngọc Minh Thy

Data Engineer

After completing the Professional Data Engineer course, I have enough knowledge and confidence to take the Google Cloud certification exam to prepare for my upcoming job.

Trương Quốc Thắng

Data Engineer

I learned how to choose tools and apply them to businesses to process data effectively through the Professional Data Engineer course.

Phạm Văn Hùng

IT

Khóa học rất chi tiết và đầy đủ, sau khi học xong khóa học Associate Cloud Engineer, mình rất muốn có cơ hội học thêm các khóa học khác để hiểu rõ hơn về Google Cloud

Dương Minh Phương

Engineer

Sau khi học xong khóa học Associate Cloud Engineer, mình đã hiểu rõ về Google Cloud và có thể đưa ra các giải pháp cho doanh nghiệp triển khai các dự án trên GCP
Asset 5

REGISTER NOW

TO BECOME " GOOGLE CLOUD EXPERT"

Asset 8@2x