SlideShare una empresa de Scribd logo
1 de 33
Descargar para leer sin conexión
BigQuery Basics

Paris 2014
BigQuery Basics

Who? Why?
Ido Green
Solutions Architect
plus.google.com/greenido

greenido.wordpress.com
BigQuery Basics

Topics we cover in this lesson
●
●
●
●
●
●
●

BigQuery Overview
Typical Uses
Project Hierarchy
Access Control and Security
Datasets and Tables
Tools
Demos
BigQuery Basics

How does BigQuery fit in the analytics landscape?
● MapReduce based analysis can be slow for ad-hoc queries
● Managing data centers and tuning software takes time & money
● Analytics tools should be services
BigQuery Basics

Why BigQuery?
● Generate big data reports require expensive servers
and skilled database administrators
● Interacting with big data has been expensive, slow and
inefficient
● BigQuery changes all that
○ Reducing time and expense to query data
BigQuery Basics

What's BigQuery?
● Service for interactive analysis of massive datasets (TBs)
○ Query billions of rows: seconds to write, seconds to return
○ Uses a SQL-style query syntax
○ It's a service, accessed by a RESTful API
● Reliable and secure
○ Replicated across multiple sites
○ Secured through Access Control Lists
● Scalable
○ Store hundreds of terabytes
○ Pay only for what you use
● Fast (really)
○ Run ad hoc queries on multi-terabyte data sets in seconds
BigQuery Basics

Analyzing Large Amount of Data
.....at high speed

demobigquery.appspot.com
Uses
BigQuery Basics

Typical Uses
Analyzing query results using a visualization library such as Google
Charts Tools API
BigQuery Basics

Typical Uses
Another way to analyze query results with Google Spreadsheets
○

greenido.wordpress.com/2013/12/16/big-query-and-google-spreadsheet-intergration/

○

greenido.wordpress.com/2013/07/24/big-query-power-with-javascript/
BigQuery Basics

BigQuery Use Cases
● Log Analysis. Making sense of computer generated records
● Retailer. Using data to forecast product sales
● Ads Targeting. Targeting proper customer sections
● Sensor Data. Collect and visualize ambient data
● Data Mashup. Query terabytes of heterogeneous data
BigQuery Basics

Some Customer Case Studies
Uses BigQuery to hone ad targeting
and gain insights into their business
Dashboards using BigQuery to
analyze booking and inventory data

Use BigQuery to provide their
customers ways to expand game
engagement and find new channels for
monetization
Used BigQuery, App Engine and the
Visualizaton API to build a business
intelligence solution
BigQuery Basic Technical Details
BigQuery Basics

Project Hierarchy
● Project. All data in BigQuery belongs inside a project
○ Set of users, APIs, authentication, billing information
● Dataset. Holds one or more tables
○ Lowest access control unit (to which ACLs are applied)
● Table. Row-column structure that contains actual data
● Job. Used to start potentially long running queries
BigQuery Basics

Datasets and Tables
Table name is represented as
follows:
● Current Project
<dataset>.<table
name>
● Different Project
<project>:<dataset>.<table>

e.g. publicdata:samples.wikipedia
BigQuery Basics

Schema Example
● Demographics about names occurrence table schema
name:string,gender:string,count:integer
BigQuery Basics

Data Types
●
●
●
●
●

String
○ UTF-8 encoded, <64kB
Integer
○ 64 bit signed
Float
Boolean
○ "true" or "false", case insensitive
Timestamp
○ String format
■ YYYY-MM-DD HH:MM:SS[.sssss] [+/-][HH:MM]
○ Numeric format (seconds from UNIX epoch)
■ 1234567890, 1.234567890123456E9

(*) Max row size: 64kB
Date type is supported as timestamp
BigQuery Basics

Data Format
BigQuery supports the following format for loading data:
1. Comma Separated Values (CSV)
2. JSON
a. BigQuery can load data faster,
embedded newlines.
b. Supports nested/repeated data fields

if your data con
BigQuery Basics

Repeated and Nested Fields

[
[

Schema
example

{
{
"fields": [
"fields": [
{
{

Loading data with repeated and
nested fields is supported by
JSON data format only

"mode":
"mode":
"name":
"name":

"nullable",
"nullable",
"country",
"country",

"type": "string"
"type": "string"
},
},
{
{
"mode": "nullable",
"mode": "nullable",
"name": "city",
"name": "city",
"type": "string"
"type": "string"
}
}
],
],
"mode": "repeated",
"mode": "repeated",
"name": "location",
"name": "location",
"type": "record"
"type": "record"
},
},
...........
...........
BigQuery Basics

Accessing BigQuery
● BigQuery Web browser
○

Imports/exports data, runs
queries

● bq command line tool
○ Performs operations from
the command line

● Service API
○ RESTful API to access
BigQuery programmatically

○

Requires authorization by
OAuth2

○

Google client libraries for
Python, Java, JavaScript,
PHP, ...

○
BigQuery Basics

Third-party Tools
ETL tools for loading data into BigQuery

Visualization and Business Intelligence
BigQuery Basics

Example of Visualization Tools
Using commercial visualization tools to graph the query results
BigQuery Basics

Loading Data Using the Web Browser
●
●
●
●

Upload from local disk or from Cloud Storage
Start the Web browser
Select Dataset
Create table and follow the wizard steps
BigQuery Basics

Loading Data Using bq Tool
"bq load" command
Syntax
bq load [--source_format=NEWLINE_DELIMITED_JSON|CSV]
destination_table data_source_uri table_schema

●
●
●

●

If not specified, the default file format is CSV (comma separated values)
The files can also use newline delimited JSON format
Schema
○ Either a filename or a comma-separated list of column_name:datatype
pairs that describe the file format.
Data source may be on local machine or on Cloud Storage
BigQuery Basics

Load Limitations
● 1,000 import jobs per table per day
● 10,000 import jobs per project per day
● File size (for both CSV and JSON)
○ 1GB for compressed file
○ 1TB for uncompressed
■ 4GB for uncompressed CSV with newlines in strings
● 10,000 files per import job
● 1TB per import job
BigQuery Basics

A Few Best Practices
CSV/JSON must be split into chunks less than 1TB
● "split" command with --line-bytes option
● Split to smaller files
○ Easier error recovery
○ To smaller data unit (day, month instead of year)
● Uploading to Cloud Storage is recommended

Cloud Storage

BigQuery
BigQuery Basics

A Few Best Practices
● Split Tables by Dates
○ Minimize cost of data scanned
○ Minimize query time
● Upload Multiple Files to Cloud Storage
○ Allows parallel upload into BigQuery
● Denormalize your data
BigQuery Basics

Exercise & Questions
BigQuery Basics

Exercise
Work through Big Query Exercise 1 -- Basics
● Use the BigQuery UI
● Use the bq command line tool
● Upload a dataset
You will query the public sample GSOD (global summary of
day) weather dataset.
You will get and upload earthquake data.
BigQuery Basics

Questions
● What are the different ways to load data into
BigQuery?
● What is the maximum size of data in a BigQuery
table?
● How can we import data into BigQuery?
○ What's the limitation?
○ What formats does BigQuery accept?
BigQuery Basics

Google I/O Data Sensing
● Start the BigQuery Web browser
● Click on Display Project in the project chooser dialog window
● Enter data-sensing-lab when prompted
● In the dataset data-sensing-lab:io_sensor_data, select the table
moscone_io13
● In the New Query box, enter the following query:
SELECT * FROM [data-sensing-lab:io_sensor_data.moscone_io13] LIMIT 10

● Click Run Query button
● Scroll to see relevant results
BigQuery Basics

Data Structure
● Define table schema when creating table
● Data is stored in per-column structure
● Each column is handled separately and only combined when
necessary
Advantage of this data structure:
● No need to set index in advance
● Load only the relevant Columns
BigQuery Basics

Thank you!
Questions?

Más contenido relacionado

La actualidad más candente

BigQuery walk through.pptx
BigQuery walk through.pptxBigQuery walk through.pptx
BigQuery walk through.pptxVikRam S
 
Azure data platform overview
Azure data platform overviewAzure data platform overview
Azure data platform overviewJames Serra
 
Big Data Analytics with Google BigQuery. By Javier Ramirez. All your base Co...
Big Data Analytics with Google BigQuery.  By Javier Ramirez. All your base Co...Big Data Analytics with Google BigQuery.  By Javier Ramirez. All your base Co...
Big Data Analytics with Google BigQuery. By Javier Ramirez. All your base Co...javier ramirez
 
Google BigQuery Best Practices
Google BigQuery Best PracticesGoogle BigQuery Best Practices
Google BigQuery Best PracticesMatillion
 
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and HadoopGoogle Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoophuguk
 
Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptxAlex Ivy
 
Google BigQuery - Features & Benefits
Google BigQuery - Features & BenefitsGoogle BigQuery - Features & Benefits
Google BigQuery - Features & BenefitsAndreas Raible
 
DW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDatabricks
 
[pgday.Seoul 2022] PostgreSQL with Google Cloud
[pgday.Seoul 2022] PostgreSQL with Google Cloud[pgday.Seoul 2022] PostgreSQL with Google Cloud
[pgday.Seoul 2022] PostgreSQL with Google CloudPgDay.Seoul
 
Google Cloud Composer
Google Cloud ComposerGoogle Cloud Composer
Google Cloud ComposerPierre Coste
 
Spark with Delta Lake
Spark with Delta LakeSpark with Delta Lake
Spark with Delta LakeKnoldus Inc.
 
ClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEO
ClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEOClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEO
ClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEOAltinity Ltd
 
Google BigQuery for Everyday Developer
Google BigQuery for Everyday DeveloperGoogle BigQuery for Everyday Developer
Google BigQuery for Everyday DeveloperMárton Kodok
 
Pinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ UberPinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ UberXiang Fu
 
You might be paying too much for BigQuery
You might be paying too much for BigQueryYou might be paying too much for BigQuery
You might be paying too much for BigQueryRyuji Tamagawa
 
Data Lake Overview
Data Lake OverviewData Lake Overview
Data Lake OverviewJames Serra
 

La actualidad más candente (20)

BigQuery walk through.pptx
BigQuery walk through.pptxBigQuery walk through.pptx
BigQuery walk through.pptx
 
Azure data platform overview
Azure data platform overviewAzure data platform overview
Azure data platform overview
 
Big Data Analytics with Google BigQuery. By Javier Ramirez. All your base Co...
Big Data Analytics with Google BigQuery.  By Javier Ramirez. All your base Co...Big Data Analytics with Google BigQuery.  By Javier Ramirez. All your base Co...
Big Data Analytics with Google BigQuery. By Javier Ramirez. All your base Co...
 
Google BigQuery Best Practices
Google BigQuery Best PracticesGoogle BigQuery Best Practices
Google BigQuery Best Practices
 
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and HadoopGoogle Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
Google Cloud Dataproc - Easier, faster, more cost-effective Spark and Hadoop
 
Redshift VS BigQuery
Redshift VS BigQueryRedshift VS BigQuery
Redshift VS BigQuery
 
Databricks Platform.pptx
Databricks Platform.pptxDatabricks Platform.pptx
Databricks Platform.pptx
 
Google BigQuery - Features & Benefits
Google BigQuery - Features & BenefitsGoogle BigQuery - Features & Benefits
Google BigQuery - Features & Benefits
 
DW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptxDW Migration Webinar-March 2022.pptx
DW Migration Webinar-March 2022.pptx
 
[pgday.Seoul 2022] PostgreSQL with Google Cloud
[pgday.Seoul 2022] PostgreSQL with Google Cloud[pgday.Seoul 2022] PostgreSQL with Google Cloud
[pgday.Seoul 2022] PostgreSQL with Google Cloud
 
Google Cloud Composer
Google Cloud ComposerGoogle Cloud Composer
Google Cloud Composer
 
Spark with Delta Lake
Spark with Delta LakeSpark with Delta Lake
Spark with Delta Lake
 
Google Cloud Dataflow
Google Cloud DataflowGoogle Cloud Dataflow
Google Cloud Dataflow
 
ClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEO
ClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEOClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEO
ClickHouse tips and tricks. Webinar slides. By Robert Hodges, Altinity CEO
 
Google BigQuery for Everyday Developer
Google BigQuery for Everyday DeveloperGoogle BigQuery for Everyday Developer
Google BigQuery for Everyday Developer
 
Pinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ UberPinot: Near Realtime Analytics @ Uber
Pinot: Near Realtime Analytics @ Uber
 
You might be paying too much for BigQuery
You might be paying too much for BigQueryYou might be paying too much for BigQuery
You might be paying too much for BigQuery
 
Presto: SQL-on-anything
Presto: SQL-on-anythingPresto: SQL-on-anything
Presto: SQL-on-anything
 
Data Lake Overview
Data Lake OverviewData Lake Overview
Data Lake Overview
 
Azure storage
Azure storageAzure storage
Azure storage
 

Similar a Big Query Basics

Big Query - Women Techmarkers (Ukraine - March 2014)
Big Query - Women Techmarkers (Ukraine - March 2014)Big Query - Women Techmarkers (Ukraine - March 2014)
Big Query - Women Techmarkers (Ukraine - March 2014)Ido Green
 
[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use Cases
[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use Cases[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use Cases
[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use CasesTatvic Analytics
 
Supercharge your data analytics with BigQuery
Supercharge your data analytics with BigQuerySupercharge your data analytics with BigQuery
Supercharge your data analytics with BigQueryMárton Kodok
 
Quick Intro to Google Cloud Technologies
Quick Intro to Google Cloud TechnologiesQuick Intro to Google Cloud Technologies
Quick Intro to Google Cloud TechnologiesChris Schalk
 
Executive Intro to BigQuery
Executive Intro to BigQueryExecutive Intro to BigQuery
Executive Intro to BigQueryWilliam M. Cohee
 
Building Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud TechnologiesBuilding Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud TechnologiesChris Schalk
 
Using ClickHouse for Experimentation
Using ClickHouse for ExperimentationUsing ClickHouse for Experimentation
Using ClickHouse for ExperimentationGleb Kanterov
 
[Webinar] Interacting with BigQuery and Working with Advanced Queries
[Webinar] Interacting with BigQuery and Working with Advanced Queries[Webinar] Interacting with BigQuery and Working with Advanced Queries
[Webinar] Interacting with BigQuery and Working with Advanced QueriesTatvic Analytics
 
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQueryCodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQueryMárton Kodok
 
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...Márton Kodok
 
Google Cloud Platform 2014Q1 - Starter Guide
Google Cloud Platform   2014Q1 - Starter GuideGoogle Cloud Platform   2014Q1 - Starter Guide
Google Cloud Platform 2014Q1 - Starter GuideSimon Su
 
Introduction to Google's Cloud Technologies
Introduction to Google's Cloud TechnologiesIntroduction to Google's Cloud Technologies
Introduction to Google's Cloud TechnologiesChris Schalk
 
Intro to Google's Cloud Technologies
Intro to Google's Cloud TechnologiesIntro to Google's Cloud Technologies
Intro to Google's Cloud TechnologiesChris Schalk
 
Building Apps on Google Cloud Technologies
Building Apps on Google Cloud TechnologiesBuilding Apps on Google Cloud Technologies
Building Apps on Google Cloud TechnologiesChris Schalk
 
Data Provision API with BigQuery - Google Cloud Summit Jakarta 18
Data Provision API with BigQuery  - Google Cloud Summit Jakarta 18Data Provision API with BigQuery  - Google Cloud Summit Jakarta 18
Data Provision API with BigQuery - Google Cloud Summit Jakarta 18Imre Nagi
 
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanelA Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanelData Science Club
 
Implementing google big query automation using google analytics data
Implementing google big query automation using google analytics dataImplementing google big query automation using google analytics data
Implementing google big query automation using google analytics dataCountants
 
Voxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQueryVoxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQueryMárton Kodok
 
Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)Christopher Gutknecht
 
Building Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud TechnologiesBuilding Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud TechnologiesChris Schalk
 

Similar a Big Query Basics (20)

Big Query - Women Techmarkers (Ukraine - March 2014)
Big Query - Women Techmarkers (Ukraine - March 2014)Big Query - Women Techmarkers (Ukraine - March 2014)
Big Query - Women Techmarkers (Ukraine - March 2014)
 
[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use Cases
[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use Cases[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use Cases
[Webinar] Getting Started with BigQuery: Basics, Its Appilcations & Use Cases
 
Supercharge your data analytics with BigQuery
Supercharge your data analytics with BigQuerySupercharge your data analytics with BigQuery
Supercharge your data analytics with BigQuery
 
Quick Intro to Google Cloud Technologies
Quick Intro to Google Cloud TechnologiesQuick Intro to Google Cloud Technologies
Quick Intro to Google Cloud Technologies
 
Executive Intro to BigQuery
Executive Intro to BigQueryExecutive Intro to BigQuery
Executive Intro to BigQuery
 
Building Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud TechnologiesBuilding Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud Technologies
 
Using ClickHouse for Experimentation
Using ClickHouse for ExperimentationUsing ClickHouse for Experimentation
Using ClickHouse for Experimentation
 
[Webinar] Interacting with BigQuery and Working with Advanced Queries
[Webinar] Interacting with BigQuery and Working with Advanced Queries[Webinar] Interacting with BigQuery and Working with Advanced Queries
[Webinar] Interacting with BigQuery and Working with Advanced Queries
 
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQueryCodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
CodeCamp Iasi - Creating serverless data analytics system on GCP using BigQuery
 
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
VoxxedDays Bucharest 2017 - Powering interactive data analysis with Google Bi...
 
Google Cloud Platform 2014Q1 - Starter Guide
Google Cloud Platform   2014Q1 - Starter GuideGoogle Cloud Platform   2014Q1 - Starter Guide
Google Cloud Platform 2014Q1 - Starter Guide
 
Introduction to Google's Cloud Technologies
Introduction to Google's Cloud TechnologiesIntroduction to Google's Cloud Technologies
Introduction to Google's Cloud Technologies
 
Intro to Google's Cloud Technologies
Intro to Google's Cloud TechnologiesIntro to Google's Cloud Technologies
Intro to Google's Cloud Technologies
 
Building Apps on Google Cloud Technologies
Building Apps on Google Cloud TechnologiesBuilding Apps on Google Cloud Technologies
Building Apps on Google Cloud Technologies
 
Data Provision API with BigQuery - Google Cloud Summit Jakarta 18
Data Provision API with BigQuery  - Google Cloud Summit Jakarta 18Data Provision API with BigQuery  - Google Cloud Summit Jakarta 18
Data Provision API with BigQuery - Google Cloud Summit Jakarta 18
 
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanelA Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
A Big (Query) Frog in a Small Pond, Jakub Motyl, BuffPanel
 
Implementing google big query automation using google analytics data
Implementing google big query automation using google analytics dataImplementing google big query automation using google analytics data
Implementing google big query automation using google analytics data
 
Voxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQueryVoxxed Days Cluj - Powering interactive data analysis with Google BigQuery
Voxxed Days Cluj - Powering interactive data analysis with Google BigQuery
 
Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)Building Data Products with BigQuery for PPC and SEO (SMX 2022)
Building Data Products with BigQuery for PPC and SEO (SMX 2022)
 
Building Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud TechnologiesBuilding Integrated Applications on Google's Cloud Technologies
Building Integrated Applications on Google's Cloud Technologies
 

Más de Ido Green

How to get things done - Lessons from Yahoo, Google, Netflix and Meta
How to get things done - Lessons from Yahoo, Google, Netflix and Meta How to get things done - Lessons from Yahoo, Google, Netflix and Meta
How to get things done - Lessons from Yahoo, Google, Netflix and Meta Ido Green
 
Crypto 101 and a bit more [Sep-2022]
Crypto 101 and a bit more [Sep-2022]Crypto 101 and a bit more [Sep-2022]
Crypto 101 and a bit more [Sep-2022]Ido Green
 
The Future of Continuous Software Updates Is Here
The Future of Continuous Software Updates Is HereThe Future of Continuous Software Updates Is Here
The Future of Continuous Software Updates Is HereIdo Green
 
Open Source & DevOps Market trends - Open Core Summit
Open Source & DevOps Market trends - Open Core SummitOpen Source & DevOps Market trends - Open Core Summit
Open Source & DevOps Market trends - Open Core SummitIdo Green
 
DevOps as a competitive advantage
DevOps as a competitive advantageDevOps as a competitive advantage
DevOps as a competitive advantageIdo Green
 
Data Driven DevOps & Technologies (swampUP 2019 keynote)
Data Driven DevOps & Technologies (swampUP 2019 keynote)Data Driven DevOps & Technologies (swampUP 2019 keynote)
Data Driven DevOps & Technologies (swampUP 2019 keynote)Ido Green
 
Create An Amazing Apps For The Google Assistant!
Create An Amazing Apps For The Google Assistant!Create An Amazing Apps For The Google Assistant!
Create An Amazing Apps For The Google Assistant!Ido Green
 
Google Assistant - Why? How?
Google Assistant - Why? How?Google Assistant - Why? How?
Google Assistant - Why? How?Ido Green
 
The Google Assistant - Macro View (October 2017)
The Google Assistant - Macro View (October 2017)The Google Assistant - Macro View (October 2017)
The Google Assistant - Macro View (October 2017)Ido Green
 
Actions On Google - GDD Europe 2017
Actions On Google - GDD Europe 2017Actions On Google - GDD Europe 2017
Actions On Google - GDD Europe 2017Ido Green
 
Building conversational experiences with Actions on Google
Building conversational experiences with Actions on GoogleBuilding conversational experiences with Actions on Google
Building conversational experiences with Actions on GoogleIdo Green
 
Actions On Google - How? Why?
Actions On Google - How? Why?Actions On Google - How? Why?
Actions On Google - How? Why?Ido Green
 
Startups Best Practices
Startups Best PracticesStartups Best Practices
Startups Best PracticesIdo Green
 
Progressive Web Apps For Startups
Progressive Web Apps For StartupsProgressive Web Apps For Startups
Progressive Web Apps For StartupsIdo Green
 
Earn More Revenue With Firebase and AdMob
Earn More Revenue With Firebase and AdMobEarn More Revenue With Firebase and AdMob
Earn More Revenue With Firebase and AdMobIdo Green
 
How To Grow Your User Base?
How To Grow Your User Base?How To Grow Your User Base?
How To Grow Your User Base?Ido Green
 
Amp Overview #YGLF 2016
Amp Overview #YGLF 2016Amp Overview #YGLF 2016
Amp Overview #YGLF 2016Ido Green
 
AMP - Accelerated Mobile Pages
AMP - Accelerated Mobile PagesAMP - Accelerated Mobile Pages
AMP - Accelerated Mobile PagesIdo Green
 
From AMP to PWA
From AMP to PWAFrom AMP to PWA
From AMP to PWAIdo Green
 

Más de Ido Green (20)

How to get things done - Lessons from Yahoo, Google, Netflix and Meta
How to get things done - Lessons from Yahoo, Google, Netflix and Meta How to get things done - Lessons from Yahoo, Google, Netflix and Meta
How to get things done - Lessons from Yahoo, Google, Netflix and Meta
 
Crypto 101 and a bit more [Sep-2022]
Crypto 101 and a bit more [Sep-2022]Crypto 101 and a bit more [Sep-2022]
Crypto 101 and a bit more [Sep-2022]
 
The Future of Continuous Software Updates Is Here
The Future of Continuous Software Updates Is HereThe Future of Continuous Software Updates Is Here
The Future of Continuous Software Updates Is Here
 
Open Source & DevOps Market trends - Open Core Summit
Open Source & DevOps Market trends - Open Core SummitOpen Source & DevOps Market trends - Open Core Summit
Open Source & DevOps Market trends - Open Core Summit
 
DevOps as a competitive advantage
DevOps as a competitive advantageDevOps as a competitive advantage
DevOps as a competitive advantage
 
Data Driven DevOps & Technologies (swampUP 2019 keynote)
Data Driven DevOps & Technologies (swampUP 2019 keynote)Data Driven DevOps & Technologies (swampUP 2019 keynote)
Data Driven DevOps & Technologies (swampUP 2019 keynote)
 
Create An Amazing Apps For The Google Assistant!
Create An Amazing Apps For The Google Assistant!Create An Amazing Apps For The Google Assistant!
Create An Amazing Apps For The Google Assistant!
 
VUI Design
VUI DesignVUI Design
VUI Design
 
Google Assistant - Why? How?
Google Assistant - Why? How?Google Assistant - Why? How?
Google Assistant - Why? How?
 
The Google Assistant - Macro View (October 2017)
The Google Assistant - Macro View (October 2017)The Google Assistant - Macro View (October 2017)
The Google Assistant - Macro View (October 2017)
 
Actions On Google - GDD Europe 2017
Actions On Google - GDD Europe 2017Actions On Google - GDD Europe 2017
Actions On Google - GDD Europe 2017
 
Building conversational experiences with Actions on Google
Building conversational experiences with Actions on GoogleBuilding conversational experiences with Actions on Google
Building conversational experiences with Actions on Google
 
Actions On Google - How? Why?
Actions On Google - How? Why?Actions On Google - How? Why?
Actions On Google - How? Why?
 
Startups Best Practices
Startups Best PracticesStartups Best Practices
Startups Best Practices
 
Progressive Web Apps For Startups
Progressive Web Apps For StartupsProgressive Web Apps For Startups
Progressive Web Apps For Startups
 
Earn More Revenue With Firebase and AdMob
Earn More Revenue With Firebase and AdMobEarn More Revenue With Firebase and AdMob
Earn More Revenue With Firebase and AdMob
 
How To Grow Your User Base?
How To Grow Your User Base?How To Grow Your User Base?
How To Grow Your User Base?
 
Amp Overview #YGLF 2016
Amp Overview #YGLF 2016Amp Overview #YGLF 2016
Amp Overview #YGLF 2016
 
AMP - Accelerated Mobile Pages
AMP - Accelerated Mobile PagesAMP - Accelerated Mobile Pages
AMP - Accelerated Mobile Pages
 
From AMP to PWA
From AMP to PWAFrom AMP to PWA
From AMP to PWA
 

Último

Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...itnewsafrica
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfNeo4j
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxLoriGlavin3
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Strongerpanagenda
 
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...BookNet Canada
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Nikki Chapple
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPathCommunity
 
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxGenerative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxfnnc6jmgwh
 
Glenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security ObservabilityGlenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security Observabilityitnewsafrica
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxAna-Maria Mihalceanu
 
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...itnewsafrica
 
Infrared simulation and processing on Nvidia platforms
Infrared simulation and processing on Nvidia platformsInfrared simulation and processing on Nvidia platforms
Infrared simulation and processing on Nvidia platformsYoss Cohen
 
MuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotes
MuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotesMuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotes
MuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotesManik S Magar
 
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical InfrastructureVarsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructureitnewsafrica
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Kaya Weers
 
Landscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfLandscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfAarwolf Industries LLC
 
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...Wes McKinney
 
React Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkReact Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkPixlogix Infotech
 
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality AssuranceInflectra
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxLoriGlavin3
 

Último (20)

Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...Zeshan Sattar- Assessing the skill requirements and industry expectations for...
Zeshan Sattar- Assessing the skill requirements and industry expectations for...
 
Connecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdfConnecting the Dots for Information Discovery.pdf
Connecting the Dots for Information Discovery.pdf
 
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptxThe Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
The Role of FIDO in a Cyber Secure Netherlands: FIDO Paris Seminar.pptx
 
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better StrongerModern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
Modern Roaming for Notes and Nomad – Cheaper Faster Better Stronger
 
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
Transcript: New from BookNet Canada for 2024: BNC SalesData and LibraryData -...
 
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
Microsoft 365 Copilot: How to boost your productivity with AI – Part one: Ado...
 
UiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to HeroUiPath Community: Communication Mining from Zero to Hero
UiPath Community: Communication Mining from Zero to Hero
 
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptxGenerative AI - Gitex v1Generative AI - Gitex v1.pptx
Generative AI - Gitex v1Generative AI - Gitex v1.pptx
 
Glenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security ObservabilityGlenn Lazarus- Why Your Observability Strategy Needs Security Observability
Glenn Lazarus- Why Your Observability Strategy Needs Security Observability
 
A Glance At The Java Performance Toolbox
A Glance At The Java Performance ToolboxA Glance At The Java Performance Toolbox
A Glance At The Java Performance Toolbox
 
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...Abdul Kader Baba- Managing Cybersecurity Risks  and Compliance Requirements i...
Abdul Kader Baba- Managing Cybersecurity Risks and Compliance Requirements i...
 
Infrared simulation and processing on Nvidia platforms
Infrared simulation and processing on Nvidia platformsInfrared simulation and processing on Nvidia platforms
Infrared simulation and processing on Nvidia platforms
 
MuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotes
MuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotesMuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotes
MuleSoft Online Meetup Group - B2B Crash Course: Release SparkNotes
 
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical InfrastructureVarsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
Varsha Sewlal- Cyber Attacks on Critical Critical Infrastructure
 
Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)Design pattern talk by Kaya Weers - 2024 (v2)
Design pattern talk by Kaya Weers - 2024 (v2)
 
Landscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdfLandscape Catalogue 2024 Australia-1.pdf
Landscape Catalogue 2024 Australia-1.pdf
 
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
The Future Roadmap for the Composable Data Stack - Wes McKinney - Data Counci...
 
React Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App FrameworkReact Native vs Ionic - The Best Mobile App Framework
React Native vs Ionic - The Best Mobile App Framework
 
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance[Webinar] SpiraTest - Setting New Standards in Quality Assurance
[Webinar] SpiraTest - Setting New Standards in Quality Assurance
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptx
 

Big Query Basics

  • 2. BigQuery Basics Who? Why? Ido Green Solutions Architect plus.google.com/greenido greenido.wordpress.com
  • 3. BigQuery Basics Topics we cover in this lesson ● ● ● ● ● ● ● BigQuery Overview Typical Uses Project Hierarchy Access Control and Security Datasets and Tables Tools Demos
  • 4. BigQuery Basics How does BigQuery fit in the analytics landscape? ● MapReduce based analysis can be slow for ad-hoc queries ● Managing data centers and tuning software takes time & money ● Analytics tools should be services
  • 5. BigQuery Basics Why BigQuery? ● Generate big data reports require expensive servers and skilled database administrators ● Interacting with big data has been expensive, slow and inefficient ● BigQuery changes all that ○ Reducing time and expense to query data
  • 6. BigQuery Basics What's BigQuery? ● Service for interactive analysis of massive datasets (TBs) ○ Query billions of rows: seconds to write, seconds to return ○ Uses a SQL-style query syntax ○ It's a service, accessed by a RESTful API ● Reliable and secure ○ Replicated across multiple sites ○ Secured through Access Control Lists ● Scalable ○ Store hundreds of terabytes ○ Pay only for what you use ● Fast (really) ○ Run ad hoc queries on multi-terabyte data sets in seconds
  • 7. BigQuery Basics Analyzing Large Amount of Data .....at high speed demobigquery.appspot.com
  • 9. BigQuery Basics Typical Uses Analyzing query results using a visualization library such as Google Charts Tools API
  • 10. BigQuery Basics Typical Uses Another way to analyze query results with Google Spreadsheets ○ greenido.wordpress.com/2013/12/16/big-query-and-google-spreadsheet-intergration/ ○ greenido.wordpress.com/2013/07/24/big-query-power-with-javascript/
  • 11. BigQuery Basics BigQuery Use Cases ● Log Analysis. Making sense of computer generated records ● Retailer. Using data to forecast product sales ● Ads Targeting. Targeting proper customer sections ● Sensor Data. Collect and visualize ambient data ● Data Mashup. Query terabytes of heterogeneous data
  • 12. BigQuery Basics Some Customer Case Studies Uses BigQuery to hone ad targeting and gain insights into their business Dashboards using BigQuery to analyze booking and inventory data Use BigQuery to provide their customers ways to expand game engagement and find new channels for monetization Used BigQuery, App Engine and the Visualizaton API to build a business intelligence solution
  • 14. BigQuery Basics Project Hierarchy ● Project. All data in BigQuery belongs inside a project ○ Set of users, APIs, authentication, billing information ● Dataset. Holds one or more tables ○ Lowest access control unit (to which ACLs are applied) ● Table. Row-column structure that contains actual data ● Job. Used to start potentially long running queries
  • 15. BigQuery Basics Datasets and Tables Table name is represented as follows: ● Current Project <dataset>.<table name> ● Different Project <project>:<dataset>.<table> e.g. publicdata:samples.wikipedia
  • 16. BigQuery Basics Schema Example ● Demographics about names occurrence table schema name:string,gender:string,count:integer
  • 17. BigQuery Basics Data Types ● ● ● ● ● String ○ UTF-8 encoded, <64kB Integer ○ 64 bit signed Float Boolean ○ "true" or "false", case insensitive Timestamp ○ String format ■ YYYY-MM-DD HH:MM:SS[.sssss] [+/-][HH:MM] ○ Numeric format (seconds from UNIX epoch) ■ 1234567890, 1.234567890123456E9 (*) Max row size: 64kB Date type is supported as timestamp
  • 18. BigQuery Basics Data Format BigQuery supports the following format for loading data: 1. Comma Separated Values (CSV) 2. JSON a. BigQuery can load data faster, embedded newlines. b. Supports nested/repeated data fields if your data con
  • 19. BigQuery Basics Repeated and Nested Fields [ [ Schema example { { "fields": [ "fields": [ { { Loading data with repeated and nested fields is supported by JSON data format only "mode": "mode": "name": "name": "nullable", "nullable", "country", "country", "type": "string" "type": "string" }, }, { { "mode": "nullable", "mode": "nullable", "name": "city", "name": "city", "type": "string" "type": "string" } } ], ], "mode": "repeated", "mode": "repeated", "name": "location", "name": "location", "type": "record" "type": "record" }, }, ........... ...........
  • 20. BigQuery Basics Accessing BigQuery ● BigQuery Web browser ○ Imports/exports data, runs queries ● bq command line tool ○ Performs operations from the command line ● Service API ○ RESTful API to access BigQuery programmatically ○ Requires authorization by OAuth2 ○ Google client libraries for Python, Java, JavaScript, PHP, ... ○
  • 21. BigQuery Basics Third-party Tools ETL tools for loading data into BigQuery Visualization and Business Intelligence
  • 22. BigQuery Basics Example of Visualization Tools Using commercial visualization tools to graph the query results
  • 23. BigQuery Basics Loading Data Using the Web Browser ● ● ● ● Upload from local disk or from Cloud Storage Start the Web browser Select Dataset Create table and follow the wizard steps
  • 24. BigQuery Basics Loading Data Using bq Tool "bq load" command Syntax bq load [--source_format=NEWLINE_DELIMITED_JSON|CSV] destination_table data_source_uri table_schema ● ● ● ● If not specified, the default file format is CSV (comma separated values) The files can also use newline delimited JSON format Schema ○ Either a filename or a comma-separated list of column_name:datatype pairs that describe the file format. Data source may be on local machine or on Cloud Storage
  • 25. BigQuery Basics Load Limitations ● 1,000 import jobs per table per day ● 10,000 import jobs per project per day ● File size (for both CSV and JSON) ○ 1GB for compressed file ○ 1TB for uncompressed ■ 4GB for uncompressed CSV with newlines in strings ● 10,000 files per import job ● 1TB per import job
  • 26. BigQuery Basics A Few Best Practices CSV/JSON must be split into chunks less than 1TB ● "split" command with --line-bytes option ● Split to smaller files ○ Easier error recovery ○ To smaller data unit (day, month instead of year) ● Uploading to Cloud Storage is recommended Cloud Storage BigQuery
  • 27. BigQuery Basics A Few Best Practices ● Split Tables by Dates ○ Minimize cost of data scanned ○ Minimize query time ● Upload Multiple Files to Cloud Storage ○ Allows parallel upload into BigQuery ● Denormalize your data
  • 29. BigQuery Basics Exercise Work through Big Query Exercise 1 -- Basics ● Use the BigQuery UI ● Use the bq command line tool ● Upload a dataset You will query the public sample GSOD (global summary of day) weather dataset. You will get and upload earthquake data.
  • 30. BigQuery Basics Questions ● What are the different ways to load data into BigQuery? ● What is the maximum size of data in a BigQuery table? ● How can we import data into BigQuery? ○ What's the limitation? ○ What formats does BigQuery accept?
  • 31. BigQuery Basics Google I/O Data Sensing ● Start the BigQuery Web browser ● Click on Display Project in the project chooser dialog window ● Enter data-sensing-lab when prompted ● In the dataset data-sensing-lab:io_sensor_data, select the table moscone_io13 ● In the New Query box, enter the following query: SELECT * FROM [data-sensing-lab:io_sensor_data.moscone_io13] LIMIT 10 ● Click Run Query button ● Scroll to see relevant results
  • 32. BigQuery Basics Data Structure ● Define table schema when creating table ● Data is stored in per-column structure ● Each column is handled separately and only combined when necessary Advantage of this data structure: ● No need to set index in advance ● Load only the relevant Columns