SlideShare a Scribd company logo
© 2015, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Grant McCarthy
Enterprise Solutions Architect
August 17th, 2017
An Overview of AI on AWS
Artificial Intelligence
at Amazon
Artificial Intelligence
At Amazon
An Overview of AI on AWS
Apache
Amazon
Polly
Text-to-Speech
Amazon
Rekognition
Amazon
Lex
Computer Vision ASR & NLU
Apache
MXNet
Deep learning framework
An Overview of AI on AWS
Apache
MXNet
Apache
Deep learning framework
Apache MXNet
Programmable Portable High Performance
Near linear scaling
across hundreds of GPUs
Highly efficient
models for mobile
and IoT
Simple syntax,
multiple languages
Apache MXNet is the deep learning framework
of choice for AWS
Why Apache MXNet?
Most Open Best On AWS
Optimized for
deep learning on AWS
Accepted into the
Apache Incubator
(Integration with AWS)
P2 INSTANCES DL CLOUD FORMATION
TEMPLATE
DL AMIS
An Overview of AI on AWS
Amazon
Polly
Text-to-Speech
Apache
Amazon Polly: Life-like Text-to-Speech Service
Converts text
to life-like speech
47 voices 24 languages Low latency,
real time
Fully managed
Let’s take a listen…
“Today in Seattle, WA, it’s 11°F”
‘"We live for the music" live from the Madison Square Garden.’
1. Automatic, Accurate Text Processing
Amazon Polly:
A Focus On Voice Quality & Pronunciation
2. Intelligible and Easy to Understand
1. Automatic, Accurate Text Processing
Amazon Polly:
A Focus On Voice Quality & Pronunciation
2. Intelligible and Easy to Understand
3. Add Semantic Meaning to Text
“Richard’s number is 2122341237“
“Richard’s number is 2122341237“
Telephone Number
Amazon Polly:
A Focus On Voice Quality & Pronunciation
1. Automatic, Accurate Text Processing
2. Intelligible and Easy to Understand
3. Add Semantic Meaning to Text
4. Customized Pronunciation
“My daughter’s name is Kaja.”
“My daughter’s name is Kaja.”
1. Automatic, Accurate Text Processing
Amazon Polly:
A Focus On Voice Quality & Pronunciation
Amazon Polly: Common Use Cases
• Internet of Things (smart home, connected devices)
• Education (language learning, training videos)
• Voiced Media (news, blogs, email)
• Voiced Chat Bots (Amazon Lex, Alexa skills)
• Gaming (avatars, Amazon Lumberyard)
An Overview of AI on AWS
Amazon
Rekognition
Computer Vision
Apache
Amazon Rekognition: Computer Vision Service
Object and Scene
Detection
Facial
Analysis
Facial
Comparison
Facial
Recognition
Amazon Rekognition: Object & Scene Detection
Amazon Rekognition: Computer Vision Service
State-of-the-art face recognition (bounding box and key features).
Face Attribute Extraction (emotion, gender, race, age, etc.)
Emotion: confused: 4%, calm: 73%
Sunglasses: false (value: 0)
Gender: female (value: 0)
Mouth open wide: 0% (value: 0)
Eye closed: open (value: 0)
Glasses: no glass (value: 0)
Mustache: false (value: 0)
Beard: (value: 0)
Amazon Rekognition: Computer Vision Service
demo
Amazon Rekognition: Facial Search
Facial
verification
Face
Search
Visual Similarity
Search
(compare two faces) (compare many faces) (find similar faces)
Amazon Rekognition: A few use cases
Best photo: use the attributes smile and eyesOpen to determine the best photos to post
Demographic detection: collect the age and gender of customers in your store
Sentiment capture: detect the emotions of your customers as they try your product
A/B tuning: identify visually similar alternatives to high-scoring images for A/B testing
Smart filtering: identify images with high visual similarity to ensure only one is displayed
Verify face: compare two faces, receive a confidence score that they are the same person
Protected images: identify visually similar images that are protected by trademarks
An Overview of AI on AWS
Amazon
Lex
ASR & NLU
Apache
The Advent Of Conversational Interactions
1st Gen: Machine-oriented
interactions
The Advent Of Conversational Interactions
1st Gen: Machine-oriented
interactions
2nd Gen: Control-oriented
& translated
The Advent Of Conversational Interactions
1st Gen: Machine-oriented
interactions
2nd Gen: Control-oriented
& translated
3rd Gen:
Intent-oriented
Amazon Lex .. for Conversational Interactions
Powered by the same deep learning technology as Alexa
Enterprise SaaS Connectors
Deployment to chat platforms, like Slack, FB
Messenger, Twilio SMS
Build Voice and Text Chatbots
Interactions on mobile, web, and devices
Informational Bot: Example
An Overview to Artificial Intelligence Services at AWS
Amazon Lex Use Cases
Informational Bots
Chatbots for everyday consumer requests
Application Bots
Build powerful interfaces to mobile applications
• News updates
• Weather information
• Game scores ….
• Book tickets
• Order food
• Manage bank accounts ….
Enterprise Productivity Bots
Streamline enterprise work activities and improve efficiencies
• Check sales numbers
• Marketing performance
• Inventory status ….
Internet of Things (IoT) Bots
Enable conversational interfaces for device interactions
• Wearables
• Appliances
• Auto ….
AI Solutions for Every Developer
https://aws.amazon.com/amazon-ai/
Amazon AI: Getting Started
Thank you!
aws.amazon.com/amazon-ai
Q & A
Don’t Forget Evaluations !!

More Related Content

Similar to An Overview to Artificial Intelligence Services at AWS (20)

PDF
AI Services_Alastair Cousins_AWS
Helen Rogers
 
PDF
Ai services AWS - Taglit
Boaz Ziniman
 
PDF
An Introduction to AI Services on AWS - Web Summit Lisbon
Boaz Ziniman
 
PDF
AI Services on AWS - CTO Club JLM
Boaz Ziniman
 
PPTX
AI and Innovations on AWS
Adrian Hornsby
 
PPTX
AI on AWS : DevDays India
Madhusudan Shekar
 
PDF
Amazon AI (February 2017)
Julien SIMON
 
PPTX
re:Invent re:Cap - An overview of Artificial Intelligence and Machine Learnin...
Adrian Hornsby
 
PDF
AI Today
Richard Harvey
 
PDF
The Future of AI - AllCloud Best of reInvent
Boaz Ziniman
 
PDF
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018
Amazon Web Services Korea
 
PPTX
Aws cloud computing conference
Anjani Phuyal
 
PDF
Ai Services on AWS - AWS IL Meetup
Boaz Ziniman
 
PPTX
Machine Learning on AWS (December 2018)
Julien SIMON
 
PPTX
AI on a PI
Julien SIMON
 
PPTX
Innovations and the Cloud
Adrian Hornsby
 
PPTX
AI for developers
Julien SIMON
 
PDF
Artificial Intelligence on the AWS Platform
Adrian Hornsby
 
PPTX
AWS AI Services
AWS Riyadh User Group
 
PDF
Artificial Intelligence on the AWS Platform
Adrian Hornsby
 
AI Services_Alastair Cousins_AWS
Helen Rogers
 
Ai services AWS - Taglit
Boaz Ziniman
 
An Introduction to AI Services on AWS - Web Summit Lisbon
Boaz Ziniman
 
AI Services on AWS - CTO Club JLM
Boaz Ziniman
 
AI and Innovations on AWS
Adrian Hornsby
 
AI on AWS : DevDays India
Madhusudan Shekar
 
Amazon AI (February 2017)
Julien SIMON
 
re:Invent re:Cap - An overview of Artificial Intelligence and Machine Learnin...
Adrian Hornsby
 
AI Today
Richard Harvey
 
The Future of AI - AllCloud Best of reInvent
Boaz Ziniman
 
AWS의 새로운 언어, 음성, 텍스트 처리 인공지능 서비스::Vikram Anbazhagan::AWS Summit Seoul 2018
Amazon Web Services Korea
 
Aws cloud computing conference
Anjani Phuyal
 
Ai Services on AWS - AWS IL Meetup
Boaz Ziniman
 
Machine Learning on AWS (December 2018)
Julien SIMON
 
AI on a PI
Julien SIMON
 
Innovations and the Cloud
Adrian Hornsby
 
AI for developers
Julien SIMON
 
Artificial Intelligence on the AWS Platform
Adrian Hornsby
 
AWS AI Services
AWS Riyadh User Group
 
Artificial Intelligence on the AWS Platform
Adrian Hornsby
 

More from Kristana Kane (8)

PDF
Getting Started with Docker on AWS
Kristana Kane
 
PDF
Serverless Big Data Architectures: Serverless Data Analytics
Kristana Kane
 
PDF
AWS IoT Deep Dive
Kristana Kane
 
PDF
Automating Security in Cloud Workloads with DevSecOps
Kristana Kane
 
PDF
Deep Dive into Apache MXNet on AWS
Kristana Kane
 
PDF
Getting Started with AWS IoT
Kristana Kane
 
PDF
Migrating Your Databases to AWS Deep Dive on Amazon RDS and AWS
Kristana Kane
 
PDF
VMware and AWS Together - VMware Cloud on AWS
Kristana Kane
 
Getting Started with Docker on AWS
Kristana Kane
 
Serverless Big Data Architectures: Serverless Data Analytics
Kristana Kane
 
AWS IoT Deep Dive
Kristana Kane
 
Automating Security in Cloud Workloads with DevSecOps
Kristana Kane
 
Deep Dive into Apache MXNet on AWS
Kristana Kane
 
Getting Started with AWS IoT
Kristana Kane
 
Migrating Your Databases to AWS Deep Dive on Amazon RDS and AWS
Kristana Kane
 
VMware and AWS Together - VMware Cloud on AWS
Kristana Kane
 
Ad

Recently uploaded (20)

PDF
Go Concurrency Real-World Patterns, Pitfalls, and Playground Battles.pdf
Emily Achieng
 
PPTX
From Sci-Fi to Reality: Exploring AI Evolution
Svetlana Meissner
 
PPTX
Designing_the_Future_AI_Driven_Product_Experiences_Across_Devices.pptx
presentifyai
 
PDF
Future-Proof or Fall Behind? 10 Tech Trends You Can’t Afford to Ignore in 2025
DIGITALCONFEX
 
DOCX
Python coding for beginners !! Start now!#
Rajni Bhardwaj Grover
 
PDF
NLJUG Speaker academy 2025 - first session
Bert Jan Schrijver
 
PPTX
Future Tech Innovations 2025 – A TechLists Insight
TechLists
 
PDF
Bitcoin for Millennials podcast with Bram, Power Laws of Bitcoin
Stephen Perrenod
 
PDF
Newgen 2022-Forrester Newgen TEI_13 05 2022-The-Total-Economic-Impact-Newgen-...
darshakparmar
 
PPTX
Agentforce World Tour Toronto '25 - MCP with MuleSoft
Alexandra N. Martinez
 
PDF
How do you fast track Agentic automation use cases discovery?
DianaGray10
 
PPTX
Mastering ODC + Okta Configuration - Chennai OSUG
HathiMaryA
 
PDF
“Voice Interfaces on a Budget: Building Real-time Speech Recognition on Low-c...
Edge AI and Vision Alliance
 
PPTX
Agentforce World Tour Toronto '25 - Supercharge MuleSoft Development with Mod...
Alexandra N. Martinez
 
PDF
The 2025 InfraRed Report - Redpoint Ventures
Razin Mustafiz
 
PDF
AI Agents in the Cloud: The Rise of Agentic Cloud Architecture
Lilly Gracia
 
PDF
LOOPS in C Programming Language - Technology
RishabhDwivedi43
 
DOCX
Cryptography Quiz: test your knowledge of this important security concept.
Rajni Bhardwaj Grover
 
PPTX
COMPARISON OF RASTER ANALYSIS TOOLS OF QGIS AND ARCGIS
Sharanya Sarkar
 
PDF
What’s my job again? Slides from Mark Simos talk at 2025 Tampa BSides
Mark Simos
 
Go Concurrency Real-World Patterns, Pitfalls, and Playground Battles.pdf
Emily Achieng
 
From Sci-Fi to Reality: Exploring AI Evolution
Svetlana Meissner
 
Designing_the_Future_AI_Driven_Product_Experiences_Across_Devices.pptx
presentifyai
 
Future-Proof or Fall Behind? 10 Tech Trends You Can’t Afford to Ignore in 2025
DIGITALCONFEX
 
Python coding for beginners !! Start now!#
Rajni Bhardwaj Grover
 
NLJUG Speaker academy 2025 - first session
Bert Jan Schrijver
 
Future Tech Innovations 2025 – A TechLists Insight
TechLists
 
Bitcoin for Millennials podcast with Bram, Power Laws of Bitcoin
Stephen Perrenod
 
Newgen 2022-Forrester Newgen TEI_13 05 2022-The-Total-Economic-Impact-Newgen-...
darshakparmar
 
Agentforce World Tour Toronto '25 - MCP with MuleSoft
Alexandra N. Martinez
 
How do you fast track Agentic automation use cases discovery?
DianaGray10
 
Mastering ODC + Okta Configuration - Chennai OSUG
HathiMaryA
 
“Voice Interfaces on a Budget: Building Real-time Speech Recognition on Low-c...
Edge AI and Vision Alliance
 
Agentforce World Tour Toronto '25 - Supercharge MuleSoft Development with Mod...
Alexandra N. Martinez
 
The 2025 InfraRed Report - Redpoint Ventures
Razin Mustafiz
 
AI Agents in the Cloud: The Rise of Agentic Cloud Architecture
Lilly Gracia
 
LOOPS in C Programming Language - Technology
RishabhDwivedi43
 
Cryptography Quiz: test your knowledge of this important security concept.
Rajni Bhardwaj Grover
 
COMPARISON OF RASTER ANALYSIS TOOLS OF QGIS AND ARCGIS
Sharanya Sarkar
 
What’s my job again? Slides from Mark Simos talk at 2025 Tampa BSides
Mark Simos
 
Ad

An Overview to Artificial Intelligence Services at AWS

  • 1. © 2015, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Grant McCarthy Enterprise Solutions Architect August 17th, 2017 An Overview of AI on AWS
  • 4. An Overview of AI on AWS Apache Amazon Polly Text-to-Speech Amazon Rekognition Amazon Lex Computer Vision ASR & NLU Apache MXNet Deep learning framework
  • 5. An Overview of AI on AWS Apache MXNet Apache Deep learning framework
  • 6. Apache MXNet Programmable Portable High Performance Near linear scaling across hundreds of GPUs Highly efficient models for mobile and IoT Simple syntax, multiple languages
  • 7. Apache MXNet is the deep learning framework of choice for AWS
  • 8. Why Apache MXNet? Most Open Best On AWS Optimized for deep learning on AWS Accepted into the Apache Incubator (Integration with AWS)
  • 9. P2 INSTANCES DL CLOUD FORMATION TEMPLATE DL AMIS
  • 10. An Overview of AI on AWS Amazon Polly Text-to-Speech Apache
  • 11. Amazon Polly: Life-like Text-to-Speech Service Converts text to life-like speech 47 voices 24 languages Low latency, real time Fully managed
  • 12. Let’s take a listen…
  • 13. “Today in Seattle, WA, it’s 11°F” ‘"We live for the music" live from the Madison Square Garden.’ 1. Automatic, Accurate Text Processing Amazon Polly: A Focus On Voice Quality & Pronunciation
  • 14. 2. Intelligible and Easy to Understand 1. Automatic, Accurate Text Processing Amazon Polly: A Focus On Voice Quality & Pronunciation
  • 15. 2. Intelligible and Easy to Understand 3. Add Semantic Meaning to Text “Richard’s number is 2122341237“ “Richard’s number is 2122341237“ Telephone Number Amazon Polly: A Focus On Voice Quality & Pronunciation 1. Automatic, Accurate Text Processing
  • 16. 2. Intelligible and Easy to Understand 3. Add Semantic Meaning to Text 4. Customized Pronunciation “My daughter’s name is Kaja.” “My daughter’s name is Kaja.” 1. Automatic, Accurate Text Processing Amazon Polly: A Focus On Voice Quality & Pronunciation
  • 17. Amazon Polly: Common Use Cases • Internet of Things (smart home, connected devices) • Education (language learning, training videos) • Voiced Media (news, blogs, email) • Voiced Chat Bots (Amazon Lex, Alexa skills) • Gaming (avatars, Amazon Lumberyard)
  • 18. An Overview of AI on AWS Amazon Rekognition Computer Vision Apache
  • 19. Amazon Rekognition: Computer Vision Service Object and Scene Detection Facial Analysis Facial Comparison Facial Recognition
  • 20. Amazon Rekognition: Object & Scene Detection
  • 21. Amazon Rekognition: Computer Vision Service State-of-the-art face recognition (bounding box and key features).
  • 22. Face Attribute Extraction (emotion, gender, race, age, etc.) Emotion: confused: 4%, calm: 73% Sunglasses: false (value: 0) Gender: female (value: 0) Mouth open wide: 0% (value: 0) Eye closed: open (value: 0) Glasses: no glass (value: 0) Mustache: false (value: 0) Beard: (value: 0) Amazon Rekognition: Computer Vision Service demo
  • 23. Amazon Rekognition: Facial Search Facial verification Face Search Visual Similarity Search (compare two faces) (compare many faces) (find similar faces)
  • 24. Amazon Rekognition: A few use cases Best photo: use the attributes smile and eyesOpen to determine the best photos to post Demographic detection: collect the age and gender of customers in your store Sentiment capture: detect the emotions of your customers as they try your product A/B tuning: identify visually similar alternatives to high-scoring images for A/B testing Smart filtering: identify images with high visual similarity to ensure only one is displayed Verify face: compare two faces, receive a confidence score that they are the same person Protected images: identify visually similar images that are protected by trademarks
  • 25. An Overview of AI on AWS Amazon Lex ASR & NLU Apache
  • 26. The Advent Of Conversational Interactions 1st Gen: Machine-oriented interactions
  • 27. The Advent Of Conversational Interactions 1st Gen: Machine-oriented interactions 2nd Gen: Control-oriented & translated
  • 28. The Advent Of Conversational Interactions 1st Gen: Machine-oriented interactions 2nd Gen: Control-oriented & translated 3rd Gen: Intent-oriented
  • 29. Amazon Lex .. for Conversational Interactions Powered by the same deep learning technology as Alexa Enterprise SaaS Connectors Deployment to chat platforms, like Slack, FB Messenger, Twilio SMS Build Voice and Text Chatbots Interactions on mobile, web, and devices
  • 32. Amazon Lex Use Cases Informational Bots Chatbots for everyday consumer requests Application Bots Build powerful interfaces to mobile applications • News updates • Weather information • Game scores …. • Book tickets • Order food • Manage bank accounts …. Enterprise Productivity Bots Streamline enterprise work activities and improve efficiencies • Check sales numbers • Marketing performance • Inventory status …. Internet of Things (IoT) Bots Enable conversational interfaces for device interactions • Wearables • Appliances • Auto ….
  • 33. AI Solutions for Every Developer
  • 36. Q & A