SlideShare a Scribd company logo
1 of 7
Download to read offline
How Amazon Works



     S1170151
    Hideyuki Sato
Amazon Technology I

Amazon's Progress
Amazon has four software development centers worldwide.

These units are constantly creating new features for Amazon.com and developing
the technology to support them.

The massive technology core that keeps Amazon running is entirely Linux based.

As of 2005, Amazon has the world's three largest Linux databases, with a total
capacity of 7.8 TB, 18.5 TB and 24.7 TB respectively.

The central Amazon data warehouse is made up of 28 Hewlett Packard servers,
with four CPUs per node, running Oracle 9i database software.
Amazon Technology II

Amazon Data Warehouse
The data warehouse is roughly divided into three functions.

・ETL (Extract, Transform and Load)
 The ETL cluster (7.8 TB capacity) contains 5 TB of raw data.
 A primary database function that pulls data from one source and integrates it
 into another.

・Historical Data
 The click history servers (18.5 TB capacity) hold 14 TB of raw data.

・Query
 The query servers (24.7 TB capacity) contain 15 TB of raw data.
Amazon Technology III

Amazon's Security Measures
In addition to automatically encrypting credit card numbers during the checkout
process, Amazon lets users choose to encrypt every piece of information they
enter, like their name, address and gender.

Amazon employs the Netscape Secure Commerce Server using the SSL protocol.

It stores all credit card numbers in a separate database that's not Internet access-
ible, cutting off that possible entry point for hackers.

Customers who are particularly cautious can choose to enter only a partial credit
card number over the Internet and then provide the rest by phone once the online
order is submitted.
Amazon E-commerce I

Small sellers of used and new goods go to Amazon Marketplace, Amazon zShops
or Amazon Auctions.
An item listed on them appears in a box beside the Amazon.com item so buyers
can see if someone else is selling the product for less in one of the other sales
channels.

・Amazon Marketplace
 Sellers offer goods at a fixed price.

・Amazon zShops
 Features only used goods at fixed prices.

・Amazon Auctions
 Sellers sell their stuff to the highest bidder.
Amazon E-commerce II

Amazon Advantage
Sellers can sell new books, music and movies directly from the Amazon ware-
house instead of from their home or store.
Sellers ship a number of units to Amazon, and Amazon handles the entire sales
transaction from start to finish.

Amazon Services
Amazon sells its sales platform, providing complete Amazon e-commerce pack-
ages to companies looking to establish or revamp their e-commerce business.
Amazon sets up complete Web sites and technology backbones for other e-com-
merce companies using Amazon software and technology.

Amazon's Associate Program
The Web site's affiliate program is one of the most famous on the Web.
Anyone with a Web site can post a link to Amazon.com and earn some money.
Amazon Historical Fact

1994: Amazon.com is incorporated.
1995: Amazon.com sells its first book.
1996: Amazon.com launches its affiliate program ("Associates Program").
1997: Amazon.com goes public.
1998: Amazon.com buys the Internet Movie Database (IMDb).
1999: Amazon.com launches Amazon Auctions and zShops.
2000: Amazon.com launches Amazon France, Amazon Japan and Amazon
      Marketplace.
2001: Amazon.com introduces the "Look Inside the Book" function and teams up
      with Target stores.
2002: Amazon.com launches Amazon Canada and Amazon Web Services.
2003: Amazon.com launches Amazon Services and A9.com subsidiaries.
2004: Amazon.com buys Joyo.com (which becomes Amazon China).

More Related Content

What's hot

Assig b w14p1
Assig b w14p1Assig b w14p1
Assig b w14p1Haruqa01
 
Amazon ppt
Amazon pptAmazon ppt
Amazon pptaftabssm
 
How Amazon Works
How Amazon WorksHow Amazon Works
How Amazon Worksyu
 
Slides s1150033 week4
Slides s1150033 week4Slides s1150033 week4
Slides s1150033 week4s1150033
 
Slides week4
Slides week4Slides week4
Slides week4s1150049
 

What's hot (7)

Assig b w14p1
Assig b w14p1Assig b w14p1
Assig b w14p1
 
Week13
Week13Week13
Week13
 
Amazon ppt
Amazon pptAmazon ppt
Amazon ppt
 
How Amazon Works
How Amazon WorksHow Amazon Works
How Amazon Works
 
Slides s1150033 week4
Slides s1150033 week4Slides s1150033 week4
Slides s1150033 week4
 
Slides week4
Slides week4Slides week4
Slides week4
 
Amazon logisics
Amazon logisics Amazon logisics
Amazon logisics
 

Similar to $ii7oi5i-13

Similar to $ii7oi5i-13 (20)

How amazon works
How amazon worksHow amazon works
How amazon works
 
How amazon works_english
How amazon works_englishHow amazon works_english
How amazon works_english
 
How Amazon Works
How Amazon WorksHow Amazon Works
How Amazon Works
 
week13
week13week13
week13
 
Person # 1 in the group section a
Person # 1 in the group   section aPerson # 1 in the group   section a
Person # 1 in the group section a
 
English13
English13English13
English13
 
Week4
Week4Week4
Week4
 
Person1
Person1Person1
Person1
 
無題プレゼンテーション2
無題プレゼンテーション2無題プレゼンテーション2
無題プレゼンテーション2
 
Amazonda
AmazondaAmazonda
Amazonda
 
Amazonda
AmazondaAmazonda
Amazonda
 
Amazon
AmazonAmazon
Amazon
 
Amazonda
AmazondaAmazonda
Amazonda
 
Amazonda
AmazondaAmazonda
Amazonda
 
Amazonda
AmazondaAmazonda
Amazonda
 
Slide4
Slide4Slide4
Slide4
 
Slide4
Slide4Slide4
Slide4
 
business works
business worksbusiness works
business works
 
How amazon works
How amazon worksHow amazon works
How amazon works
 
Roy kadai
Roy kadaiRoy kadai
Roy kadai
 

More from Hideyuki Sato (12)

Cmap B
Cmap BCmap B
Cmap B
 
Cmap A
Cmap ACmap A
Cmap A
 
$ii7oi5i-13
$ii7oi5i-13$ii7oi5i-13
$ii7oi5i-13
 
$ii7oi5i-13
$ii7oi5i-13$ii7oi5i-13
$ii7oi5i-13
 
$ii7oi5i-13
$ii7oi5i-13$ii7oi5i-13
$ii7oi5i-13
 
$ii7oi5i-13
$ii7oi5i-13$ii7oi5i-13
$ii7oi5i-13
 
$ii7oi5i-13
$ii7oi5i-13$ii7oi5i-13
$ii7oi5i-13
 
$ii7oi5i-13
$ii7oi5i-13$ii7oi5i-13
$ii7oi5i-13
 
$ii7oi5i-13
$ii7oi5i-13$ii7oi5i-13
$ii7oi5i-13
 
$ii7oi5i-12
$ii7oi5i-12$ii7oi5i-12
$ii7oi5i-12
 
$ii7oi5i-11
$ii7oi5i-11$ii7oi5i-11
$ii7oi5i-11
 
$ii7oi5i-10
$ii7oi5i-10$ii7oi5i-10
$ii7oi5i-10
 

Recently uploaded

AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAnitaRaj43
 
Cyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptx
Cyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptxCyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptx
Cyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptxMasterG
 
2024 May Patch Tuesday
2024 May Patch Tuesday2024 May Patch Tuesday
2024 May Patch TuesdayIvanti
 
“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdf
“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdf“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdf
“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdfMuhammad Subhan
 
Oauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoftOauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoftshyamraj55
 
ChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps ProductivityChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps ProductivityVictorSzoltysek
 
JavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate GuideJavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate GuidePixlogix Infotech
 
Frisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdf
Frisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdfFrisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdf
Frisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdfAnubhavMangla3
 
WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024Lorenzo Miniero
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontologyjohnbeverley2021
 
Generative AI Use Cases and Applications.pdf
Generative AI Use Cases and Applications.pdfGenerative AI Use Cases and Applications.pdf
Generative AI Use Cases and Applications.pdfalexjohnson7307
 
State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!Memoori
 
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...panagenda
 
Event-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingEvent-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingScyllaDB
 
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...Skynet Technologies
 
Design and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data ScienceDesign and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data SciencePaolo Missier
 
Vector Search @ sw2con for slideshare.pptx
Vector Search @ sw2con for slideshare.pptxVector Search @ sw2con for slideshare.pptx
Vector Search @ sw2con for slideshare.pptxjbellis
 
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...ScyllaDB
 
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptxHarnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptxFIDO Alliance
 

Recently uploaded (20)

AI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by AnitarajAI in Action: Real World Use Cases by Anitaraj
AI in Action: Real World Use Cases by Anitaraj
 
Cyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptx
Cyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptxCyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptx
Cyber Insurance - RalphGilot - Embry-Riddle Aeronautical University.pptx
 
Overview of Hyperledger Foundation
Overview of Hyperledger FoundationOverview of Hyperledger Foundation
Overview of Hyperledger Foundation
 
2024 May Patch Tuesday
2024 May Patch Tuesday2024 May Patch Tuesday
2024 May Patch Tuesday
 
“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdf
“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdf“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdf
“Iamnobody89757” Understanding the Mysterious of Digital Identity.pdf
 
Oauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoftOauth 2.0 Introduction and Flows with MuleSoft
Oauth 2.0 Introduction and Flows with MuleSoft
 
ChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps ProductivityChatGPT and Beyond - Elevating DevOps Productivity
ChatGPT and Beyond - Elevating DevOps Productivity
 
JavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate GuideJavaScript Usage Statistics 2024 - The Ultimate Guide
JavaScript Usage Statistics 2024 - The Ultimate Guide
 
Frisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdf
Frisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdfFrisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdf
Frisco Automating Purchase Orders with MuleSoft IDP- May 10th, 2024.pptx.pdf
 
WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024WebRTC and SIP not just audio and video @ OpenSIPS 2024
WebRTC and SIP not just audio and video @ OpenSIPS 2024
 
Six Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal OntologySix Myths about Ontologies: The Basics of Formal Ontology
Six Myths about Ontologies: The Basics of Formal Ontology
 
Generative AI Use Cases and Applications.pdf
Generative AI Use Cases and Applications.pdfGenerative AI Use Cases and Applications.pdf
Generative AI Use Cases and Applications.pdf
 
State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!State of the Smart Building Startup Landscape 2024!
State of the Smart Building Startup Landscape 2024!
 
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
Easier, Faster, and More Powerful – Alles Neu macht der Mai -Wir durchleuchte...
 
Event-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream ProcessingEvent-Driven Architecture Masterclass: Challenges in Stream Processing
Event-Driven Architecture Masterclass: Challenges in Stream Processing
 
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
Human Expert Website Manual WCAG 2.0 2.1 2.2 Audit - Digital Accessibility Au...
 
Design and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data ScienceDesign and Development of a Provenance Capture Platform for Data Science
Design and Development of a Provenance Capture Platform for Data Science
 
Vector Search @ sw2con for slideshare.pptx
Vector Search @ sw2con for slideshare.pptxVector Search @ sw2con for slideshare.pptx
Vector Search @ sw2con for slideshare.pptx
 
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
Event-Driven Architecture Masterclass: Engineering a Robust, High-performance...
 
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptxHarnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
Harnessing Passkeys in the Battle Against AI-Powered Cyber Threats.pptx
 

$ii7oi5i-13

  • 1. How Amazon Works S1170151 Hideyuki Sato
  • 2. Amazon Technology I Amazon's Progress Amazon has four software development centers worldwide. These units are constantly creating new features for Amazon.com and developing the technology to support them. The massive technology core that keeps Amazon running is entirely Linux based. As of 2005, Amazon has the world's three largest Linux databases, with a total capacity of 7.8 TB, 18.5 TB and 24.7 TB respectively. The central Amazon data warehouse is made up of 28 Hewlett Packard servers, with four CPUs per node, running Oracle 9i database software.
  • 3. Amazon Technology II Amazon Data Warehouse The data warehouse is roughly divided into three functions. ・ETL (Extract, Transform and Load) The ETL cluster (7.8 TB capacity) contains 5 TB of raw data. A primary database function that pulls data from one source and integrates it into another. ・Historical Data The click history servers (18.5 TB capacity) hold 14 TB of raw data. ・Query The query servers (24.7 TB capacity) contain 15 TB of raw data.
  • 4. Amazon Technology III Amazon's Security Measures In addition to automatically encrypting credit card numbers during the checkout process, Amazon lets users choose to encrypt every piece of information they enter, like their name, address and gender. Amazon employs the Netscape Secure Commerce Server using the SSL protocol. It stores all credit card numbers in a separate database that's not Internet access- ible, cutting off that possible entry point for hackers. Customers who are particularly cautious can choose to enter only a partial credit card number over the Internet and then provide the rest by phone once the online order is submitted.
  • 5. Amazon E-commerce I Small sellers of used and new goods go to Amazon Marketplace, Amazon zShops or Amazon Auctions. An item listed on them appears in a box beside the Amazon.com item so buyers can see if someone else is selling the product for less in one of the other sales channels. ・Amazon Marketplace Sellers offer goods at a fixed price. ・Amazon zShops Features only used goods at fixed prices. ・Amazon Auctions Sellers sell their stuff to the highest bidder.
  • 6. Amazon E-commerce II Amazon Advantage Sellers can sell new books, music and movies directly from the Amazon ware- house instead of from their home or store. Sellers ship a number of units to Amazon, and Amazon handles the entire sales transaction from start to finish. Amazon Services Amazon sells its sales platform, providing complete Amazon e-commerce pack- ages to companies looking to establish or revamp their e-commerce business. Amazon sets up complete Web sites and technology backbones for other e-com- merce companies using Amazon software and technology. Amazon's Associate Program The Web site's affiliate program is one of the most famous on the Web. Anyone with a Web site can post a link to Amazon.com and earn some money.
  • 7. Amazon Historical Fact 1994: Amazon.com is incorporated. 1995: Amazon.com sells its first book. 1996: Amazon.com launches its affiliate program ("Associates Program"). 1997: Amazon.com goes public. 1998: Amazon.com buys the Internet Movie Database (IMDb). 1999: Amazon.com launches Amazon Auctions and zShops. 2000: Amazon.com launches Amazon France, Amazon Japan and Amazon Marketplace. 2001: Amazon.com introduces the "Look Inside the Book" function and teams up with Target stores. 2002: Amazon.com launches Amazon Canada and Amazon Web Services. 2003: Amazon.com launches Amazon Services and A9.com subsidiaries. 2004: Amazon.com buys Joyo.com (which becomes Amazon China).