SlideShare a Scribd company logo
BrightTALK Machine Learning and Data
Science Summit – May 21, 2015
Machine Learning – where to next?
Contents
• Speaker Bio
• What is Machine Learning?
• History
• Applications
• Companies
• People
• Robotics
• Opportunities
• Threats
• Predictions?
• References
Speaker Bio
• Peter Morgan CEO Zepto Ventures
– Help connect hi-tech (ML, AI) companies with funding
• Entrepreneur
– Have started my own companies
• Ten years in telecoms industry
– IBM, Cisco, BT Labs
• Last three years Data Science and Machine Learning
– Teaching and Implementing
• Currently working towards building my own AI company
• PhD physics (ABD) + MBA
• LinkedIn
https://www.linkedin.com/profile/view?id=2949259
Machine Learning
“Every aspect of learning or any other feature of intelligence
can in principle be so precisely described that a machine can be
made to simulate it. Machines will solve the kinds of problems
now reserved for humans, and improve themselves ”.
Dartmouth Summer Research Project on A.I., 1956.
What is Machine Learning?
• Machines that learn and adapt to their environments
– Similar to living organisms
– Multimodal is goal
– AGI - endgame
• New software/algorithms
– Neural networks
– Deep learning
• New hardware
– GPU’s
– Neuromorphic chips
• Cloud Enabled
– Intelligence in the cloud
– MLaaS, IaaS (Watson)
The Big Picture
Universe Computer
Science
AI Machine
Learning
ML History I
• 1940’s – First computers
• 1950 – Turing Machine
– Turing, A.M., Computing Machinery and Intelligence, Mind 49: 433-460, 1950
• 1951 – Minsky builds SNARC, a neural network at MIT
• 1956 - Dartmouth Summer Research Project on A.I.
• 1959 - John McCarthy and Marvin Minsky founded the MIT AI Lab.
• 1960’s - Ray Solomonoff lays the foundations of a mathematical theory of
AI, introducing universal Bayesian methods for inductive inference and
prediction
ML History II
• 1969 - Shakey the robot at Stanford
• 1970s – AI Winter I
• 1970s - Natural Language Processing (Symbolic)
• 1980s - Rule Based Expert Systems (Symbolic)
• 1990s - AI Winter II (Narrow AI)
• 1997 - Deep Blue beats Gary Kasparov
• 2010s - Statistical Machine Learning, algorithms that learn from raw
data
• 2011 - Watson beats Ken Jennings and Brad Rutter on Jeopardy
• 2012+ Deep Learning (Sub-Symbolic)
• 2013 - E.U. Human Brain Project (model brain by 2023)
• 2014 – Human vision surpassed by ML systems at Google, Baidu,
Facebook
http://en.wikipedia.org/wiki/Timeline_of_artificial_intelligence
ML Applications
• Finance
– Asset allocation
– Algo trading
• Fraud detection
• Cybersecurity
• eCommerce
• Search
• Manufacturing
• Medicine
• Law
• Business Analytics
• Ad placement
• Recommendation engines
• Robotics
– Business
– Consumer
• UAV (cars, drones etc.)
• Scientific discovery
• Mathematical theorems
• Route Planning
• Virtual Assistants
• Personalisation
• Smart homes
• Compose music
• Write stories
ML Applications - cntd
• Computer vision
• Speech recognition
• NLP
• Translation
• Call centres
• Rescue operations
• Policing
• Military
• Political
• National security
• Anything a human can do but faster and more accurate –
creating, reasoning, decision making, prediction
• Google – introduced 50 ML products in last 2 years (Jeff
Dean)
ML Applications - Examples
• AI can do all these things already today:
– Translating an article from Chinese to English
– Translating speech from Chinese to English, in real
time
– Identifying all the chairs/faces in an image
– Transcribing a conversation at a party (with
background noise)
– Folding your laundry (robotics)
– Proving new theorems (ATP)
– Automatically replying to your email, and scheduling
Learning and doing from watching videos
• Researchers at the University of Maryland, funded by DARPA’s
Mathematics of Sensing, Exploitation and Execution (MSEE) program
• System that enables robots to process visual data from a series of
“how to” cooking videos on YouTube - and then cook a meal
ML Companies - established
• IBM Watson
• Google Deepmind etc.
• Microsoft Project Adam
• Facebook
• Baidu
• Yahoo!
• *MLaaS*
ML Companies - startups
• Numenta
• OpenCog
• Vicarious
• Clarafai
• Sentient
• Nurture
• wit.ai
• cortical.io
• Viv.ai
Number is growing rapidly
ML “Rockstars”
• Andrew Ng (Baidu)
• Geoff Hinton (Google)
• Yan LeCun (Facebook)
• Yoshua Bengio*
• Michael Jordan*
• Jurgen Schmidhuber*
• Marcus Hutter *
* academia
Some (Famous) ML Research Groups
• Godel Machine (IDSIA)
• AIXI (IDSIA/ANU)
• CSAIL (MIT)
• CBL Lab (Cambridge)
• Oxford
• AmpLab (Berkeley)
• Stanford
• Imperial College
• CMU
• NYU
• DARPA (funding)
Robotics - Embodied ML
1. Industrial Robotics
• Manufacturing (Baxter)
• Warehousing (Amazon)
• Police/Security
• Military
• Surgery
• Drones (UAV’s)
– Self-driving cars
– Trains
– Ships
– Planes
– Underwater
2. Personal Robotics – Robots in the Home
• Robots with friendly user interface that can understand
user’s emotions
– Visual; facial emotions
– Tone of voice
• Caretaking
– Elderly
– Young
• Education
• Home security
• Housekeeping
• Companionship
• Artificial limbs
• Exoskeletons
Robots & Robotics Companies
• Sawyer (ReThink)
• Nao (Aldebaran)
• iCub (EU)
• Asimo (Honda)
• Many (Google)
• Roomba (iRobot)
• Kiva (Amazon)
• Pepper (Softbank)
• Many (KUKA)
• Jibo (startup)
• Milo (Robokind)
• Oshbot (Fellows)
• Valkyrie (NASA)
DARPA Robotics Challenge
• http://www.theroboticschallenge.org/
• 25 entries, $2million 1st place, 5th June 2015
ML/AI/Robotics Websites
• Robotics Business review
http://www.roboticsbusinessreview.com/
• AI Hub
http://aihub.net/
• AZoRobotics
http://www.azorobotics.com/
• Robohub
http://robohub.org/
• Robotics News
http://www.roboticsnews.co.uk/
• I-Programmer
http://www.i-programmer.info/news/105-artificial-intelligence.html
Opportunities
• Free humans to pursue arts and sciences
– The Venus Project
• Solve deep challenges (political, economic, scientific,
social)
• Accelerate new discoveries in science, technology,
medicine (illness and aging)
• Creation of new types of jobs
• Increased efficiencies in every market space
– Industry 4.0 (steam, electric, digital, intelligence)
• Faster, cheaper, more accurate
• Replace mundane, repetitive jobs
• Human-Robot collaboration
• A smarter planet
Threats
• Unemployment due to automation
– Replace some jobs but create new ones?
– What will these be?
• Widen the inequality gap
– New economic paradigm needed
– Basic Income Guarantee?
• Existential risk
– AI Safety
– FHI/FLI/CSER/MIRI
• Legal issues
– New laws
– Machine rights
– Personhood
• “The robotic takeover of the human decision space is incremental, inevitable
and proceeds not at the insistence of the robots but at ours”
http://www.nextgov.com/defense/2015/01/pentagon-wants-real-roadmap-artificial-
intelligence/102297
Predictions?*
• More robots (exponential increase)
• More automation (everywhere)
– Endgame is to automate all work
– 50% will be automated by 2035
• Loosely autonomous agents (2015)
• Semi-automomous agents (2020)
• Fully autonomous agents (2025)
• Cyborgs (has started - biohackers)
• Singularity (2029?) – smarter than us
• Self-aware? (personhood)
• Quantum computing
– Game changer
– Quantum algorithms
– Dwave
• Advances in science and medicine
• Ethics (more debate)
• Regulation (safety issues)
*Remembering that progress in tech follows an
exponentially increasing curve - see “The Singularity is Near”, by Ray Kurzweil.
Rise of the Robots*
What are the jobs of the future? How many will there be? And who will have them? We might
imagine—and hope—that today’s industrial revolution will unfold like the last: even as some jobs are
eliminated, more will be created to deal with the new innovations of a new era. In Rise of the Robots,
Silicon Valley entrepreneur Martin Ford argues that this is absolutely not the case. As technology
continues to accelerate and machines begin taking care of themselves, fewer people will be necessary.
Artificial intelligence is already well on its way to making “good jobs” obsolete: many paralegals,
journalists, office workers, and even computer programmers are poised to be replaced by robots and
smart software. As progress continues, blue and white collar jobs alike will evaporate, squeezing
working- and middle-class families ever further.
In Rise of the Robots, Ford details what machine intelligence and robotics can accomplish, and implores
employers, scholars, and policy makers alike to face the implications. The past solutions to
technological disruption, especially more training and education, aren’t going to work, and we must
decide, now, whether the future will see broad-based prosperity or catastrophic levels of inequality
and economic insecurity. Rise of the Robots is essential reading for anyone who wants to understand
what accelerating technology means for their own economic prospects—not to mention those of their
children—as well as for society as a whole.
*Martin Ford, Rise of the Robots: Technology and the Threat of a Jobless Future, Basic Books, May 2015
It’s not all bad?
DARPA Launches Robots4Us Video Contest for High School Students
How will the growing use of robots change people’s lives and make a
difference for society? How do teens want robots to make a difference in the
future? As ever more capable robots evolve from the realm of science fiction
to real-world devices, these questions are becoming increasingly important.
And who better to address them than members of the generation that may
be the first to fully co-exist with robots in the future? Through its new
Robots4Us student video contest, DARPA is asking high school students to
address these issues creatively by producing short videos about the robotics-
related possibilities they foresee and the kind of robot-assisted society in
which they would like to live.
“Today’s high school students are tomorrow’s technologists, policymakers,
and robotics users. They are the people who will be most affected by the
practical, ethical, and societal implications of the robotic technologies that
are today being integrated into our homes, our businesses, and the military,”
said Dr. Arati Prabhakar, DARPA director. “Now is the time to get them
engaged and invested by encouraging them to ask questions and provide
their views.”
http://www.darpa.mil/NewsEvents/Releases/2015/02/11.aspx
References I
• Rise of the Machines – The Economist, May 9th, 2015
http://www.economist.com/news/briefing/21650526-artificial-intelligence-scares-
peopleexcessively-so-rise-machines
• Microsoft Challenges Google’s Artificial Brain with “Project Adam”
http://www.wired.com/2014/07/microsoft-adam/
• The Future of Artificial Intelligence According to Ben Goertzel
http://techemergence.com/the-future-of-artificial-intelligence-according-to-Ben-
goertzel/
• Kurzweil: Human-Level AI Is Coming By 2029
http://uk.businessinsider.com/ray-kurzweil-thinks-well-have-human-level-ai-by-2029-
2014-12?r=US
• Zuckerberg and Musk back software startup that mimics human learning
http://www.theguardian.com/technology/2014/mar/21/zuckerberg-invest-startup-
brain-software-vicarious
• Computer with human-like learning will program itself
http://www.newscientist.com/article/mg22429932.200-computer-with-humanlike-
learning-will-program-itself.html#.VLQccHs5XUs
• Google’s Grand Plan to Make Your Brain Irrelevant
http://www.wired.com/2014/01/google-buying-way-making-brain-irrelevant/
References II
• The Race to Buy the Human Brains Behind Deep Learning Machines
http://www.businessweek.com/articles/2014-01-27/the-race-to-buy-the-human-
brains-behind-deep-learning-machines
• Smarter algorithms will power our future digital lives
http://www.computerworld.com/article/2687902/smarter-algorithms-will-power-
our-future-digital-lives.html
• What We Know About Deep Learning Is Just The Tip Of The Iceberg
https://wtvox.com/2014/12/know-deep-learning-just-tip-iceberg/
• 10 Signs You Should Invest In Artificial Intelligence
http://www.33rdsquare.com/2014/10/10-signs-you-should-invest-in.html
• Towards Intelligent Humanoid Robots
http://www.33rdsquare.com/2013/02/towards-intelligent-humanoid-robots.html
• The Deep Mind of Demis Hassabis
https://medium.com/backchannel/the-deep-mind-of-demis-hassabis-
156112890d8a4a
• Google isn’t the only company working on artificial intelligence, it’s just the richest
https://gigaom.com/2014/01/29/google-isnt-the-only-company-working-on-
artificial-intelligence-its-just-the-richest/
Bibliography
• Barrat, James, Our Final Invention, St. Martin's Griffin, 2014
• Brynjolfsson, Erik and Andrew McAfee, The Second
Machine Age, W.W. Norton & Co., 2014
• Ford, Martin, Rise of the Robots: Technology and the Threat
of a Jobless Future, Basic Books, May 2015
• Hawkins, Jeff, On Intelligence, St Martin’s Griffin, 2004
• Kaku, Michio, The Future of the Mind, Doubleday, 2014
• Kurzweil, Ray, The Singularity is Near, Penguin Books, 2006
• Kurzweil, Ray, How to Create a Mind, Penguin Books, 2013
• Nowak, Peter, Humans 3.0: The Upgrading of the Species,
Lyons Press, Jan 2015
• Russell and Norvig, Artificial Intelligence, A Modern
Approach, Pearson, 2009
Questions
“A company that cracks human level intelligence
will be worth ten Microsofts” – Bill Gates.
Ad

More Related Content

What's hot (19)

Robotics
RoboticsRobotics
Robotics
IjajAhmedJaman
 
Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16
Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16
Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16
jeffmau
 
20106959 artificial-intelligence
20106959 artificial-intelligence20106959 artificial-intelligence
20106959 artificial-intelligence
Shrikantkumar21
 
Social Impacts of Artificial intelligence
Social Impacts of Artificial intelligenceSocial Impacts of Artificial intelligence
Social Impacts of Artificial intelligence
Saqib Raza
 
Human robot interaction
Human robot interactionHuman robot interaction
Human robot interaction
PrakashSoft
 
Artificial intelligence submitted by shiv
Artificial intelligence submitted by shivArtificial intelligence submitted by shiv
Artificial intelligence submitted by shiv
Shiv Bindal
 
Artificial Intelligence Journey
Artificial Intelligence JourneyArtificial Intelligence Journey
Artificial Intelligence Journey
Nazli Abdul Rahman
 
What is Artificial Intelligence?
What is Artificial Intelligence?What is Artificial Intelligence?
What is Artificial Intelligence?
Erdogan Dagdelenli
 
Introduction to Artificial Intelligence
Introduction to Artificial IntelligenceIntroduction to Artificial Intelligence
Introduction to Artificial Intelligence
snehal_152
 
Ai project | Presentation on AI | Project on Artificial intelligence| College...
Ai project | Presentation on AI | Project on Artificial intelligence| College...Ai project | Presentation on AI | Project on Artificial intelligence| College...
Ai project | Presentation on AI | Project on Artificial intelligence| College...
Kiran Banstola
 
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
Carol Smith
 
Dynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in Toronto
Dynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in TorontoDynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in Toronto
Dynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in Toronto
Carol Smith
 
Artificial Intelligence AI robotics
Artificial Intelligence AI robotics Artificial Intelligence AI robotics
Artificial Intelligence AI robotics
VEER BAHADUR SINGH PURVANCHAL UNIVERSITY
 
AI & robotics: Past, Present and Future
AI & robotics: Past, Present and FutureAI & robotics: Past, Present and Future
AI & robotics: Past, Present and Future
Hongmei He
 
The Turing Test - A sociotechnological analysis and prediction - Machine Inte...
The Turing Test - A sociotechnological analysis and prediction - Machine Inte...The Turing Test - A sociotechnological analysis and prediction - Machine Inte...
The Turing Test - A sociotechnological analysis and prediction - Machine Inte...
piero scaruffi
 
Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...
Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...
Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...
Bohyun Kim
 
Elements of AI Luxembourg - session 2
Elements of AI Luxembourg - session 2Elements of AI Luxembourg - session 2
Elements of AI Luxembourg - session 2
Jeremie Dauphin
 
Artificial intelligence
Artificial intelligenceArtificial intelligence
Artificial intelligence
shonalikedar
 
Ai ml-demystified-mwux2017-final-171016011705
Ai ml-demystified-mwux2017-final-171016011705Ai ml-demystified-mwux2017-final-171016011705
Ai ml-demystified-mwux2017-final-171016011705
Sayali Surve
 
Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16
Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16
Jeff Mau - AI is the New UX - IXDA Chicago 05-19-16
jeffmau
 
20106959 artificial-intelligence
20106959 artificial-intelligence20106959 artificial-intelligence
20106959 artificial-intelligence
Shrikantkumar21
 
Social Impacts of Artificial intelligence
Social Impacts of Artificial intelligenceSocial Impacts of Artificial intelligence
Social Impacts of Artificial intelligence
Saqib Raza
 
Human robot interaction
Human robot interactionHuman robot interaction
Human robot interaction
PrakashSoft
 
Artificial intelligence submitted by shiv
Artificial intelligence submitted by shivArtificial intelligence submitted by shiv
Artificial intelligence submitted by shiv
Shiv Bindal
 
Artificial Intelligence Journey
Artificial Intelligence JourneyArtificial Intelligence Journey
Artificial Intelligence Journey
Nazli Abdul Rahman
 
What is Artificial Intelligence?
What is Artificial Intelligence?What is Artificial Intelligence?
What is Artificial Intelligence?
Erdogan Dagdelenli
 
Introduction to Artificial Intelligence
Introduction to Artificial IntelligenceIntroduction to Artificial Intelligence
Introduction to Artificial Intelligence
snehal_152
 
Ai project | Presentation on AI | Project on Artificial intelligence| College...
Ai project | Presentation on AI | Project on Artificial intelligence| College...Ai project | Presentation on AI | Project on Artificial intelligence| College...
Ai project | Presentation on AI | Project on Artificial intelligence| College...
Kiran Banstola
 
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
IA in the Age of AI: Embracing Abstraction and Change at IA Summit 2018
Carol Smith
 
Dynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in Toronto
Dynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in TorontoDynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in Toronto
Dynamic UXR: Ethical Responsibilities and AI. Carol Smith at Strive in Toronto
Carol Smith
 
AI & robotics: Past, Present and Future
AI & robotics: Past, Present and FutureAI & robotics: Past, Present and Future
AI & robotics: Past, Present and Future
Hongmei He
 
The Turing Test - A sociotechnological analysis and prediction - Machine Inte...
The Turing Test - A sociotechnological analysis and prediction - Machine Inte...The Turing Test - A sociotechnological analysis and prediction - Machine Inte...
The Turing Test - A sociotechnological analysis and prediction - Machine Inte...
piero scaruffi
 
Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...
Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...
Taking on a New Leadership Challenge: Student-Focused Learning in Artificial ...
Bohyun Kim
 
Elements of AI Luxembourg - session 2
Elements of AI Luxembourg - session 2Elements of AI Luxembourg - session 2
Elements of AI Luxembourg - session 2
Jeremie Dauphin
 
Artificial intelligence
Artificial intelligenceArtificial intelligence
Artificial intelligence
shonalikedar
 
Ai ml-demystified-mwux2017-final-171016011705
Ai ml-demystified-mwux2017-final-171016011705Ai ml-demystified-mwux2017-final-171016011705
Ai ml-demystified-mwux2017-final-171016011705
Sayali Surve
 

Viewers also liked (15)

A brief history of machine learning
A brief history of  machine learningA brief history of  machine learning
A brief history of machine learning
Robert Colner
 
Introduction to Machine Learning* Prof. D. Spears
Introduction to Machine Learning* Prof. D. SpearsIntroduction to Machine Learning* Prof. D. Spears
Introduction to Machine Learning* Prof. D. Spears
butest
 
introducción a Machine Learning
introducción a Machine Learningintroducción a Machine Learning
introducción a Machine Learning
butest
 
02 history of cv from image processing to computer vision
02  history of cv from image processing to computer vision02  history of cv from image processing to computer vision
02 history of cv from image processing to computer vision
zukun
 
A field guide the machine learning zoo
A field guide the machine learning zoo A field guide the machine learning zoo
A field guide the machine learning zoo
Theodoros Vasiloudis
 
04 history of cv computer vision, neural networks and pattern recognition - ...
04  history of cv computer vision, neural networks and pattern recognition - ...04  history of cv computer vision, neural networks and pattern recognition - ...
04 history of cv computer vision, neural networks and pattern recognition - ...
zukun
 
Actividad 02
Actividad 02Actividad 02
Actividad 02
Alejandra Perez
 
L1. State of the Art in Machine Learning
L1. State of the Art in Machine LearningL1. State of the Art in Machine Learning
L1. State of the Art in Machine Learning
Machine Learning Valencia
 
L5. Data Transformation and Feature Engineering
L5. Data Transformation and Feature EngineeringL5. Data Transformation and Feature Engineering
L5. Data Transformation and Feature Engineering
Machine Learning Valencia
 
Object Recognition
Object RecognitionObject Recognition
Object Recognition
Eman Abed AlWahhab
 
Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry  Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry
Persontyle
 
The Future of Machine Learning
The Future of Machine LearningThe Future of Machine Learning
The Future of Machine Learning
Russell Miles
 
AI in Healthcare 2017
AI in Healthcare 2017AI in Healthcare 2017
AI in Healthcare 2017
Peter Morgan
 
Computer Vision Crash Course
Computer Vision Crash CourseComputer Vision Crash Course
Computer Vision Crash Course
台灣資料科學年會
 
Machine Learning With Spark
Machine Learning With SparkMachine Learning With Spark
Machine Learning With Spark
Shivaji Dutta
 
A brief history of machine learning
A brief history of  machine learningA brief history of  machine learning
A brief history of machine learning
Robert Colner
 
Introduction to Machine Learning* Prof. D. Spears
Introduction to Machine Learning* Prof. D. SpearsIntroduction to Machine Learning* Prof. D. Spears
Introduction to Machine Learning* Prof. D. Spears
butest
 
introducción a Machine Learning
introducción a Machine Learningintroducción a Machine Learning
introducción a Machine Learning
butest
 
02 history of cv from image processing to computer vision
02  history of cv from image processing to computer vision02  history of cv from image processing to computer vision
02 history of cv from image processing to computer vision
zukun
 
A field guide the machine learning zoo
A field guide the machine learning zoo A field guide the machine learning zoo
A field guide the machine learning zoo
Theodoros Vasiloudis
 
04 history of cv computer vision, neural networks and pattern recognition - ...
04  history of cv computer vision, neural networks and pattern recognition - ...04  history of cv computer vision, neural networks and pattern recognition - ...
04 history of cv computer vision, neural networks and pattern recognition - ...
zukun
 
L5. Data Transformation and Feature Engineering
L5. Data Transformation and Feature EngineeringL5. Data Transformation and Feature Engineering
L5. Data Transformation and Feature Engineering
Machine Learning Valencia
 
Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry  Benefiting from Big Data - A New Approach for the Telecom Industry
Benefiting from Big Data - A New Approach for the Telecom Industry
Persontyle
 
The Future of Machine Learning
The Future of Machine LearningThe Future of Machine Learning
The Future of Machine Learning
Russell Miles
 
AI in Healthcare 2017
AI in Healthcare 2017AI in Healthcare 2017
AI in Healthcare 2017
Peter Morgan
 
Machine Learning With Spark
Machine Learning With SparkMachine Learning With Spark
Machine Learning With Spark
Shivaji Dutta
 
Ad

Similar to Machine Learning - Where to Next?, May 2015 (20)

Robotics Overview 2016
Robotics Overview 2016Robotics Overview 2016
Robotics Overview 2016
Peter Morgan
 
Robotics Overview 2016
Robotics Overview 2016Robotics Overview 2016
Robotics Overview 2016
Peter Morgan
 
The Human Dimension of Industry 4.0
The Human Dimension of Industry 4.0The Human Dimension of Industry 4.0
The Human Dimension of Industry 4.0
Andy Fawkes
 
NordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptx
NordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptxNordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptx
NordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptx
home
 
"Taming the machine" - Wie regulieren wir disruptive Technologien?
"Taming the machine" - Wie regulieren wir disruptive Technologien?"Taming the machine" - Wie regulieren wir disruptive Technologien?
"Taming the machine" - Wie regulieren wir disruptive Technologien?
Hans Bellstedt Public Affairs GmbH
 
Artificial Intelligence in Civil Engineering
Artificial Intelligence in Civil EngineeringArtificial Intelligence in Civil Engineering
Artificial Intelligence in Civil Engineering
Ansari Usama
 
20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx
20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx
20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx
home
 
Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...
Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...
Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...
Kalilur Rahman
 
AI and Future Jobs - Public School.pptx
AI and Future Jobs - Public School.pptxAI and Future Jobs - Public School.pptx
AI and Future Jobs - Public School.pptx
David Asirvatham
 
Chapter four AI and modern world part two.pptx
Chapter four AI and modern world part two.pptxChapter four AI and modern world part two.pptx
Chapter four AI and modern world part two.pptx
bestboybulshaawi
 
S0-Stephen.pptx
S0-Stephen.pptxS0-Stephen.pptx
S0-Stephen.pptx
KPradeepkumar8
 
Oas keynote 10 2019
Oas keynote 10 2019Oas keynote 10 2019
Oas keynote 10 2019
Jerome Glenn
 
AI and Healthcare 2023.pdf
AI and Healthcare 2023.pdfAI and Healthcare 2023.pdf
AI and Healthcare 2023.pdf
Kimberley Barker
 
AI and Healthcare 2023.pdf
AI and Healthcare 2023.pdfAI and Healthcare 2023.pdf
AI and Healthcare 2023.pdf
Kimberley Barker
 
Ai morality-today-2018-web
Ai morality-today-2018-webAi morality-today-2018-web
Ai morality-today-2018-web
Tom Daly
 
Spohrer Ntegra 20230324 v12.pptx
Spohrer Ntegra 20230324 v12.pptxSpohrer Ntegra 20230324 v12.pptx
Spohrer Ntegra 20230324 v12.pptx
home
 
Bindu R
Bindu RBindu R
Bindu R
Hilary Ip
 
20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx
20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx
20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx
home
 
AI and ML Series - Introduction to Generative AI and LLMs - Session 1
AI and ML Series - Introduction to Generative AI and LLMs - Session 1AI and ML Series - Introduction to Generative AI and LLMs - Session 1
AI and ML Series - Introduction to Generative AI and LLMs - Session 1
DianaGray10
 
Paul Maglio 20250421 v14 - AI Digital Twins.pptx
Paul Maglio 20250421 v14 - AI Digital Twins.pptxPaul Maglio 20250421 v14 - AI Digital Twins.pptx
Paul Maglio 20250421 v14 - AI Digital Twins.pptx
home
 
Robotics Overview 2016
Robotics Overview 2016Robotics Overview 2016
Robotics Overview 2016
Peter Morgan
 
Robotics Overview 2016
Robotics Overview 2016Robotics Overview 2016
Robotics Overview 2016
Peter Morgan
 
The Human Dimension of Industry 4.0
The Human Dimension of Industry 4.0The Human Dimension of Industry 4.0
The Human Dimension of Industry 4.0
Andy Fawkes
 
NordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptx
NordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptxNordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptx
NordicHouse 20240116 AI Quantum IFTF dfiscussionv7.pptx
home
 
"Taming the machine" - Wie regulieren wir disruptive Technologien?
"Taming the machine" - Wie regulieren wir disruptive Technologien?"Taming the machine" - Wie regulieren wir disruptive Technologien?
"Taming the machine" - Wie regulieren wir disruptive Technologien?
Hans Bellstedt Public Affairs GmbH
 
Artificial Intelligence in Civil Engineering
Artificial Intelligence in Civil EngineeringArtificial Intelligence in Civil Engineering
Artificial Intelligence in Civil Engineering
Ansari Usama
 
20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx
20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx
20240919 ACTS_Team_Science v8 Jim_Spohrer.pptx
home
 
Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...
Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...
Artificial Intelligence in testing - A STeP-IN Evening Talk Session Speech by...
Kalilur Rahman
 
AI and Future Jobs - Public School.pptx
AI and Future Jobs - Public School.pptxAI and Future Jobs - Public School.pptx
AI and Future Jobs - Public School.pptx
David Asirvatham
 
Chapter four AI and modern world part two.pptx
Chapter four AI and modern world part two.pptxChapter four AI and modern world part two.pptx
Chapter four AI and modern world part two.pptx
bestboybulshaawi
 
Oas keynote 10 2019
Oas keynote 10 2019Oas keynote 10 2019
Oas keynote 10 2019
Jerome Glenn
 
AI and Healthcare 2023.pdf
AI and Healthcare 2023.pdfAI and Healthcare 2023.pdf
AI and Healthcare 2023.pdf
Kimberley Barker
 
AI and Healthcare 2023.pdf
AI and Healthcare 2023.pdfAI and Healthcare 2023.pdf
AI and Healthcare 2023.pdf
Kimberley Barker
 
Ai morality-today-2018-web
Ai morality-today-2018-webAi morality-today-2018-web
Ai morality-today-2018-web
Tom Daly
 
Spohrer Ntegra 20230324 v12.pptx
Spohrer Ntegra 20230324 v12.pptxSpohrer Ntegra 20230324 v12.pptx
Spohrer Ntegra 20230324 v12.pptx
home
 
20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx
20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx
20250113 Truth and Service in the AI Era - NordicHouse_IFTF 20250113 v9.pptx
home
 
AI and ML Series - Introduction to Generative AI and LLMs - Session 1
AI and ML Series - Introduction to Generative AI and LLMs - Session 1AI and ML Series - Introduction to Generative AI and LLMs - Session 1
AI and ML Series - Introduction to Generative AI and LLMs - Session 1
DianaGray10
 
Paul Maglio 20250421 v14 - AI Digital Twins.pptx
Paul Maglio 20250421 v14 - AI Digital Twins.pptxPaul Maglio 20250421 v14 - AI Digital Twins.pptx
Paul Maglio 20250421 v14 - AI Digital Twins.pptx
home
 
Ad

More from Peter Morgan (10)

Towards AGI Berlin - Building AGI, May 2019
Towards AGI Berlin - Building AGI, May 2019Towards AGI Berlin - Building AGI, May 2019
Towards AGI Berlin - Building AGI, May 2019
Peter Morgan
 
AI in Physics - University of Washington, Jan 2024
AI in Physics - University of Washington, Jan 2024AI in Physics - University of Washington, Jan 2024
AI in Physics - University of Washington, Jan 2024
Peter Morgan
 
Towards a General Theory of Intelligence - April 2018
Towards a General Theory of Intelligence - April 2018Towards a General Theory of Intelligence - April 2018
Towards a General Theory of Intelligence - April 2018
Peter Morgan
 
Simulation Hypothesis 2017
Simulation Hypothesis 2017Simulation Hypothesis 2017
Simulation Hypothesis 2017
Peter Morgan
 
AI Developments Aug 2017
AI Developments Aug 2017AI Developments Aug 2017
AI Developments Aug 2017
Peter Morgan
 
London Exponential Technologies Meetup, July 2017
London Exponential Technologies Meetup, July 2017London Exponential Technologies Meetup, July 2017
London Exponential Technologies Meetup, July 2017
Peter Morgan
 
AI and Blockchain 2017
AI and Blockchain 2017AI and Blockchain 2017
AI and Blockchain 2017
Peter Morgan
 
AI Predictions 2017
AI Predictions 2017AI Predictions 2017
AI Predictions 2017
Peter Morgan
 
AI State of Play Dec 2016 NYC
AI State of Play Dec 2016 NYCAI State of Play Dec 2016 NYC
AI State of Play Dec 2016 NYC
Peter Morgan
 
Big data – An Introduction, July 2013
Big data – An Introduction, July 2013Big data – An Introduction, July 2013
Big data – An Introduction, July 2013
Peter Morgan
 
Towards AGI Berlin - Building AGI, May 2019
Towards AGI Berlin - Building AGI, May 2019Towards AGI Berlin - Building AGI, May 2019
Towards AGI Berlin - Building AGI, May 2019
Peter Morgan
 
AI in Physics - University of Washington, Jan 2024
AI in Physics - University of Washington, Jan 2024AI in Physics - University of Washington, Jan 2024
AI in Physics - University of Washington, Jan 2024
Peter Morgan
 
Towards a General Theory of Intelligence - April 2018
Towards a General Theory of Intelligence - April 2018Towards a General Theory of Intelligence - April 2018
Towards a General Theory of Intelligence - April 2018
Peter Morgan
 
Simulation Hypothesis 2017
Simulation Hypothesis 2017Simulation Hypothesis 2017
Simulation Hypothesis 2017
Peter Morgan
 
AI Developments Aug 2017
AI Developments Aug 2017AI Developments Aug 2017
AI Developments Aug 2017
Peter Morgan
 
London Exponential Technologies Meetup, July 2017
London Exponential Technologies Meetup, July 2017London Exponential Technologies Meetup, July 2017
London Exponential Technologies Meetup, July 2017
Peter Morgan
 
AI and Blockchain 2017
AI and Blockchain 2017AI and Blockchain 2017
AI and Blockchain 2017
Peter Morgan
 
AI Predictions 2017
AI Predictions 2017AI Predictions 2017
AI Predictions 2017
Peter Morgan
 
AI State of Play Dec 2016 NYC
AI State of Play Dec 2016 NYCAI State of Play Dec 2016 NYC
AI State of Play Dec 2016 NYC
Peter Morgan
 
Big data – An Introduction, July 2013
Big data – An Introduction, July 2013Big data – An Introduction, July 2013
Big data – An Introduction, July 2013
Peter Morgan
 

Recently uploaded (20)

tecnologias de las primeras civilizaciones.pdf
tecnologias de las primeras civilizaciones.pdftecnologias de las primeras civilizaciones.pdf
tecnologias de las primeras civilizaciones.pdf
fjgm517
 
Semantic Cultivators : The Critical Future Role to Enable AI
Semantic Cultivators : The Critical Future Role to Enable AISemantic Cultivators : The Critical Future Role to Enable AI
Semantic Cultivators : The Critical Future Role to Enable AI
artmondano
 
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
BookNet Canada
 
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveDesigning Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
ScyllaDB
 
Role of Data Annotation Services in AI-Powered Manufacturing
Role of Data Annotation Services in AI-Powered ManufacturingRole of Data Annotation Services in AI-Powered Manufacturing
Role of Data Annotation Services in AI-Powered Manufacturing
Andrew Leo
 
AI and Data Privacy in 2025: Global Trends
AI and Data Privacy in 2025: Global TrendsAI and Data Privacy in 2025: Global Trends
AI and Data Privacy in 2025: Global Trends
InData Labs
 
2025-05-Q4-2024-Investor-Presentation.pptx
2025-05-Q4-2024-Investor-Presentation.pptx2025-05-Q4-2024-Investor-Presentation.pptx
2025-05-Q4-2024-Investor-Presentation.pptx
Samuele Fogagnolo
 
Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...
Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...
Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...
Impelsys Inc.
 
The Evolution of Meme Coins A New Era for Digital Currency ppt.pdf
The Evolution of Meme Coins A New Era for Digital Currency ppt.pdfThe Evolution of Meme Coins A New Era for Digital Currency ppt.pdf
The Evolution of Meme Coins A New Era for Digital Currency ppt.pdf
Abi john
 
ThousandEyes Partner Innovation Updates for May 2025
ThousandEyes Partner Innovation Updates for May 2025ThousandEyes Partner Innovation Updates for May 2025
ThousandEyes Partner Innovation Updates for May 2025
ThousandEyes
 
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager API
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager APIUiPath Community Berlin: Orchestrator API, Swagger, and Test Manager API
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager API
UiPathCommunity
 
Rusty Waters: Elevating Lakehouses Beyond Spark
Rusty Waters: Elevating Lakehouses Beyond SparkRusty Waters: Elevating Lakehouses Beyond Spark
Rusty Waters: Elevating Lakehouses Beyond Spark
carlyakerly1
 
Electronic_Mail_Attacks-1-35.pdf by xploit
Electronic_Mail_Attacks-1-35.pdf by xploitElectronic_Mail_Attacks-1-35.pdf by xploit
Electronic_Mail_Attacks-1-35.pdf by xploit
niftliyevhuseyn
 
TrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business ConsultingTrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business Consulting
Trs Labs
 
Into The Box Conference Keynote Day 1 (ITB2025)
Into The Box Conference Keynote Day 1 (ITB2025)Into The Box Conference Keynote Day 1 (ITB2025)
Into The Box Conference Keynote Day 1 (ITB2025)
Ortus Solutions, Corp
 
What is Model Context Protocol(MCP) - The new technology for communication bw...
What is Model Context Protocol(MCP) - The new technology for communication bw...What is Model Context Protocol(MCP) - The new technology for communication bw...
What is Model Context Protocol(MCP) - The new technology for communication bw...
Vishnu Singh Chundawat
 
Splunk Security Update | Public Sector Summit Germany 2025
Splunk Security Update | Public Sector Summit Germany 2025Splunk Security Update | Public Sector Summit Germany 2025
Splunk Security Update | Public Sector Summit Germany 2025
Splunk
 
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptx
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptxIncreasing Retail Store Efficiency How can Planograms Save Time and Money.pptx
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptx
Anoop Ashok
 
HCL Nomad Web – Best Practices and Managing Multiuser Environments
HCL Nomad Web – Best Practices and Managing Multiuser EnvironmentsHCL Nomad Web – Best Practices and Managing Multiuser Environments
HCL Nomad Web – Best Practices and Managing Multiuser Environments
panagenda
 
AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...
AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...
AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...
Alan Dix
 
tecnologias de las primeras civilizaciones.pdf
tecnologias de las primeras civilizaciones.pdftecnologias de las primeras civilizaciones.pdf
tecnologias de las primeras civilizaciones.pdf
fjgm517
 
Semantic Cultivators : The Critical Future Role to Enable AI
Semantic Cultivators : The Critical Future Role to Enable AISemantic Cultivators : The Critical Future Role to Enable AI
Semantic Cultivators : The Critical Future Role to Enable AI
artmondano
 
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
Transcript: #StandardsGoals for 2025: Standards & certification roundup - Tec...
BookNet Canada
 
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep DiveDesigning Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
Designing Low-Latency Systems with Rust and ScyllaDB: An Architectural Deep Dive
ScyllaDB
 
Role of Data Annotation Services in AI-Powered Manufacturing
Role of Data Annotation Services in AI-Powered ManufacturingRole of Data Annotation Services in AI-Powered Manufacturing
Role of Data Annotation Services in AI-Powered Manufacturing
Andrew Leo
 
AI and Data Privacy in 2025: Global Trends
AI and Data Privacy in 2025: Global TrendsAI and Data Privacy in 2025: Global Trends
AI and Data Privacy in 2025: Global Trends
InData Labs
 
2025-05-Q4-2024-Investor-Presentation.pptx
2025-05-Q4-2024-Investor-Presentation.pptx2025-05-Q4-2024-Investor-Presentation.pptx
2025-05-Q4-2024-Investor-Presentation.pptx
Samuele Fogagnolo
 
Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...
Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...
Enhancing ICU Intelligence: How Our Functional Testing Enabled a Healthcare I...
Impelsys Inc.
 
The Evolution of Meme Coins A New Era for Digital Currency ppt.pdf
The Evolution of Meme Coins A New Era for Digital Currency ppt.pdfThe Evolution of Meme Coins A New Era for Digital Currency ppt.pdf
The Evolution of Meme Coins A New Era for Digital Currency ppt.pdf
Abi john
 
ThousandEyes Partner Innovation Updates for May 2025
ThousandEyes Partner Innovation Updates for May 2025ThousandEyes Partner Innovation Updates for May 2025
ThousandEyes Partner Innovation Updates for May 2025
ThousandEyes
 
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager API
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager APIUiPath Community Berlin: Orchestrator API, Swagger, and Test Manager API
UiPath Community Berlin: Orchestrator API, Swagger, and Test Manager API
UiPathCommunity
 
Rusty Waters: Elevating Lakehouses Beyond Spark
Rusty Waters: Elevating Lakehouses Beyond SparkRusty Waters: Elevating Lakehouses Beyond Spark
Rusty Waters: Elevating Lakehouses Beyond Spark
carlyakerly1
 
Electronic_Mail_Attacks-1-35.pdf by xploit
Electronic_Mail_Attacks-1-35.pdf by xploitElectronic_Mail_Attacks-1-35.pdf by xploit
Electronic_Mail_Attacks-1-35.pdf by xploit
niftliyevhuseyn
 
TrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business ConsultingTrsLabs - Fintech Product & Business Consulting
TrsLabs - Fintech Product & Business Consulting
Trs Labs
 
Into The Box Conference Keynote Day 1 (ITB2025)
Into The Box Conference Keynote Day 1 (ITB2025)Into The Box Conference Keynote Day 1 (ITB2025)
Into The Box Conference Keynote Day 1 (ITB2025)
Ortus Solutions, Corp
 
What is Model Context Protocol(MCP) - The new technology for communication bw...
What is Model Context Protocol(MCP) - The new technology for communication bw...What is Model Context Protocol(MCP) - The new technology for communication bw...
What is Model Context Protocol(MCP) - The new technology for communication bw...
Vishnu Singh Chundawat
 
Splunk Security Update | Public Sector Summit Germany 2025
Splunk Security Update | Public Sector Summit Germany 2025Splunk Security Update | Public Sector Summit Germany 2025
Splunk Security Update | Public Sector Summit Germany 2025
Splunk
 
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptx
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptxIncreasing Retail Store Efficiency How can Planograms Save Time and Money.pptx
Increasing Retail Store Efficiency How can Planograms Save Time and Money.pptx
Anoop Ashok
 
HCL Nomad Web – Best Practices and Managing Multiuser Environments
HCL Nomad Web – Best Practices and Managing Multiuser EnvironmentsHCL Nomad Web – Best Practices and Managing Multiuser Environments
HCL Nomad Web – Best Practices and Managing Multiuser Environments
panagenda
 
AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...
AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...
AI Changes Everything – Talk at Cardiff Metropolitan University, 29th April 2...
Alan Dix
 

Machine Learning - Where to Next?, May 2015

  • 1. BrightTALK Machine Learning and Data Science Summit – May 21, 2015 Machine Learning – where to next?
  • 2. Contents • Speaker Bio • What is Machine Learning? • History • Applications • Companies • People • Robotics • Opportunities • Threats • Predictions? • References
  • 3. Speaker Bio • Peter Morgan CEO Zepto Ventures – Help connect hi-tech (ML, AI) companies with funding • Entrepreneur – Have started my own companies • Ten years in telecoms industry – IBM, Cisco, BT Labs • Last three years Data Science and Machine Learning – Teaching and Implementing • Currently working towards building my own AI company • PhD physics (ABD) + MBA • LinkedIn https://www.linkedin.com/profile/view?id=2949259
  • 4. Machine Learning “Every aspect of learning or any other feature of intelligence can in principle be so precisely described that a machine can be made to simulate it. Machines will solve the kinds of problems now reserved for humans, and improve themselves ”. Dartmouth Summer Research Project on A.I., 1956.
  • 5. What is Machine Learning? • Machines that learn and adapt to their environments – Similar to living organisms – Multimodal is goal – AGI - endgame • New software/algorithms – Neural networks – Deep learning • New hardware – GPU’s – Neuromorphic chips • Cloud Enabled – Intelligence in the cloud – MLaaS, IaaS (Watson)
  • 6. The Big Picture Universe Computer Science AI Machine Learning
  • 7. ML History I • 1940’s – First computers • 1950 – Turing Machine – Turing, A.M., Computing Machinery and Intelligence, Mind 49: 433-460, 1950 • 1951 – Minsky builds SNARC, a neural network at MIT • 1956 - Dartmouth Summer Research Project on A.I. • 1959 - John McCarthy and Marvin Minsky founded the MIT AI Lab. • 1960’s - Ray Solomonoff lays the foundations of a mathematical theory of AI, introducing universal Bayesian methods for inductive inference and prediction
  • 8. ML History II • 1969 - Shakey the robot at Stanford • 1970s – AI Winter I • 1970s - Natural Language Processing (Symbolic) • 1980s - Rule Based Expert Systems (Symbolic) • 1990s - AI Winter II (Narrow AI) • 1997 - Deep Blue beats Gary Kasparov • 2010s - Statistical Machine Learning, algorithms that learn from raw data • 2011 - Watson beats Ken Jennings and Brad Rutter on Jeopardy • 2012+ Deep Learning (Sub-Symbolic) • 2013 - E.U. Human Brain Project (model brain by 2023) • 2014 – Human vision surpassed by ML systems at Google, Baidu, Facebook http://en.wikipedia.org/wiki/Timeline_of_artificial_intelligence
  • 9. ML Applications • Finance – Asset allocation – Algo trading • Fraud detection • Cybersecurity • eCommerce • Search • Manufacturing • Medicine • Law • Business Analytics • Ad placement • Recommendation engines • Robotics – Business – Consumer • UAV (cars, drones etc.) • Scientific discovery • Mathematical theorems • Route Planning • Virtual Assistants • Personalisation • Smart homes • Compose music • Write stories
  • 10. ML Applications - cntd • Computer vision • Speech recognition • NLP • Translation • Call centres • Rescue operations • Policing • Military • Political • National security • Anything a human can do but faster and more accurate – creating, reasoning, decision making, prediction • Google – introduced 50 ML products in last 2 years (Jeff Dean)
  • 11. ML Applications - Examples • AI can do all these things already today: – Translating an article from Chinese to English – Translating speech from Chinese to English, in real time – Identifying all the chairs/faces in an image – Transcribing a conversation at a party (with background noise) – Folding your laundry (robotics) – Proving new theorems (ATP) – Automatically replying to your email, and scheduling
  • 12. Learning and doing from watching videos • Researchers at the University of Maryland, funded by DARPA’s Mathematics of Sensing, Exploitation and Execution (MSEE) program • System that enables robots to process visual data from a series of “how to” cooking videos on YouTube - and then cook a meal
  • 13. ML Companies - established • IBM Watson • Google Deepmind etc. • Microsoft Project Adam • Facebook • Baidu • Yahoo! • *MLaaS*
  • 14. ML Companies - startups • Numenta • OpenCog • Vicarious • Clarafai • Sentient • Nurture • wit.ai • cortical.io • Viv.ai Number is growing rapidly
  • 15. ML “Rockstars” • Andrew Ng (Baidu) • Geoff Hinton (Google) • Yan LeCun (Facebook) • Yoshua Bengio* • Michael Jordan* • Jurgen Schmidhuber* • Marcus Hutter * * academia
  • 16. Some (Famous) ML Research Groups • Godel Machine (IDSIA) • AIXI (IDSIA/ANU) • CSAIL (MIT) • CBL Lab (Cambridge) • Oxford • AmpLab (Berkeley) • Stanford • Imperial College • CMU • NYU • DARPA (funding)
  • 17. Robotics - Embodied ML 1. Industrial Robotics • Manufacturing (Baxter) • Warehousing (Amazon) • Police/Security • Military • Surgery • Drones (UAV’s) – Self-driving cars – Trains – Ships – Planes – Underwater
  • 18. 2. Personal Robotics – Robots in the Home • Robots with friendly user interface that can understand user’s emotions – Visual; facial emotions – Tone of voice • Caretaking – Elderly – Young • Education • Home security • Housekeeping • Companionship • Artificial limbs • Exoskeletons
  • 19. Robots & Robotics Companies • Sawyer (ReThink) • Nao (Aldebaran) • iCub (EU) • Asimo (Honda) • Many (Google) • Roomba (iRobot) • Kiva (Amazon) • Pepper (Softbank) • Many (KUKA) • Jibo (startup) • Milo (Robokind) • Oshbot (Fellows) • Valkyrie (NASA)
  • 20. DARPA Robotics Challenge • http://www.theroboticschallenge.org/ • 25 entries, $2million 1st place, 5th June 2015
  • 21. ML/AI/Robotics Websites • Robotics Business review http://www.roboticsbusinessreview.com/ • AI Hub http://aihub.net/ • AZoRobotics http://www.azorobotics.com/ • Robohub http://robohub.org/ • Robotics News http://www.roboticsnews.co.uk/ • I-Programmer http://www.i-programmer.info/news/105-artificial-intelligence.html
  • 22. Opportunities • Free humans to pursue arts and sciences – The Venus Project • Solve deep challenges (political, economic, scientific, social) • Accelerate new discoveries in science, technology, medicine (illness and aging) • Creation of new types of jobs • Increased efficiencies in every market space – Industry 4.0 (steam, electric, digital, intelligence) • Faster, cheaper, more accurate • Replace mundane, repetitive jobs • Human-Robot collaboration • A smarter planet
  • 23. Threats • Unemployment due to automation – Replace some jobs but create new ones? – What will these be? • Widen the inequality gap – New economic paradigm needed – Basic Income Guarantee? • Existential risk – AI Safety – FHI/FLI/CSER/MIRI • Legal issues – New laws – Machine rights – Personhood • “The robotic takeover of the human decision space is incremental, inevitable and proceeds not at the insistence of the robots but at ours” http://www.nextgov.com/defense/2015/01/pentagon-wants-real-roadmap-artificial- intelligence/102297
  • 24. Predictions?* • More robots (exponential increase) • More automation (everywhere) – Endgame is to automate all work – 50% will be automated by 2035 • Loosely autonomous agents (2015) • Semi-automomous agents (2020) • Fully autonomous agents (2025) • Cyborgs (has started - biohackers) • Singularity (2029?) – smarter than us • Self-aware? (personhood) • Quantum computing – Game changer – Quantum algorithms – Dwave • Advances in science and medicine • Ethics (more debate) • Regulation (safety issues) *Remembering that progress in tech follows an exponentially increasing curve - see “The Singularity is Near”, by Ray Kurzweil.
  • 25. Rise of the Robots* What are the jobs of the future? How many will there be? And who will have them? We might imagine—and hope—that today’s industrial revolution will unfold like the last: even as some jobs are eliminated, more will be created to deal with the new innovations of a new era. In Rise of the Robots, Silicon Valley entrepreneur Martin Ford argues that this is absolutely not the case. As technology continues to accelerate and machines begin taking care of themselves, fewer people will be necessary. Artificial intelligence is already well on its way to making “good jobs” obsolete: many paralegals, journalists, office workers, and even computer programmers are poised to be replaced by robots and smart software. As progress continues, blue and white collar jobs alike will evaporate, squeezing working- and middle-class families ever further. In Rise of the Robots, Ford details what machine intelligence and robotics can accomplish, and implores employers, scholars, and policy makers alike to face the implications. The past solutions to technological disruption, especially more training and education, aren’t going to work, and we must decide, now, whether the future will see broad-based prosperity or catastrophic levels of inequality and economic insecurity. Rise of the Robots is essential reading for anyone who wants to understand what accelerating technology means for their own economic prospects—not to mention those of their children—as well as for society as a whole. *Martin Ford, Rise of the Robots: Technology and the Threat of a Jobless Future, Basic Books, May 2015
  • 26. It’s not all bad? DARPA Launches Robots4Us Video Contest for High School Students How will the growing use of robots change people’s lives and make a difference for society? How do teens want robots to make a difference in the future? As ever more capable robots evolve from the realm of science fiction to real-world devices, these questions are becoming increasingly important. And who better to address them than members of the generation that may be the first to fully co-exist with robots in the future? Through its new Robots4Us student video contest, DARPA is asking high school students to address these issues creatively by producing short videos about the robotics- related possibilities they foresee and the kind of robot-assisted society in which they would like to live. “Today’s high school students are tomorrow’s technologists, policymakers, and robotics users. They are the people who will be most affected by the practical, ethical, and societal implications of the robotic technologies that are today being integrated into our homes, our businesses, and the military,” said Dr. Arati Prabhakar, DARPA director. “Now is the time to get them engaged and invested by encouraging them to ask questions and provide their views.” http://www.darpa.mil/NewsEvents/Releases/2015/02/11.aspx
  • 27. References I • Rise of the Machines – The Economist, May 9th, 2015 http://www.economist.com/news/briefing/21650526-artificial-intelligence-scares- peopleexcessively-so-rise-machines • Microsoft Challenges Google’s Artificial Brain with “Project Adam” http://www.wired.com/2014/07/microsoft-adam/ • The Future of Artificial Intelligence According to Ben Goertzel http://techemergence.com/the-future-of-artificial-intelligence-according-to-Ben- goertzel/ • Kurzweil: Human-Level AI Is Coming By 2029 http://uk.businessinsider.com/ray-kurzweil-thinks-well-have-human-level-ai-by-2029- 2014-12?r=US • Zuckerberg and Musk back software startup that mimics human learning http://www.theguardian.com/technology/2014/mar/21/zuckerberg-invest-startup- brain-software-vicarious • Computer with human-like learning will program itself http://www.newscientist.com/article/mg22429932.200-computer-with-humanlike- learning-will-program-itself.html#.VLQccHs5XUs • Google’s Grand Plan to Make Your Brain Irrelevant http://www.wired.com/2014/01/google-buying-way-making-brain-irrelevant/
  • 28. References II • The Race to Buy the Human Brains Behind Deep Learning Machines http://www.businessweek.com/articles/2014-01-27/the-race-to-buy-the-human- brains-behind-deep-learning-machines • Smarter algorithms will power our future digital lives http://www.computerworld.com/article/2687902/smarter-algorithms-will-power- our-future-digital-lives.html • What We Know About Deep Learning Is Just The Tip Of The Iceberg https://wtvox.com/2014/12/know-deep-learning-just-tip-iceberg/ • 10 Signs You Should Invest In Artificial Intelligence http://www.33rdsquare.com/2014/10/10-signs-you-should-invest-in.html • Towards Intelligent Humanoid Robots http://www.33rdsquare.com/2013/02/towards-intelligent-humanoid-robots.html • The Deep Mind of Demis Hassabis https://medium.com/backchannel/the-deep-mind-of-demis-hassabis- 156112890d8a4a • Google isn’t the only company working on artificial intelligence, it’s just the richest https://gigaom.com/2014/01/29/google-isnt-the-only-company-working-on- artificial-intelligence-its-just-the-richest/
  • 29. Bibliography • Barrat, James, Our Final Invention, St. Martin's Griffin, 2014 • Brynjolfsson, Erik and Andrew McAfee, The Second Machine Age, W.W. Norton & Co., 2014 • Ford, Martin, Rise of the Robots: Technology and the Threat of a Jobless Future, Basic Books, May 2015 • Hawkins, Jeff, On Intelligence, St Martin’s Griffin, 2004 • Kaku, Michio, The Future of the Mind, Doubleday, 2014 • Kurzweil, Ray, The Singularity is Near, Penguin Books, 2006 • Kurzweil, Ray, How to Create a Mind, Penguin Books, 2013 • Nowak, Peter, Humans 3.0: The Upgrading of the Species, Lyons Press, Jan 2015 • Russell and Norvig, Artificial Intelligence, A Modern Approach, Pearson, 2009
  • 30. Questions “A company that cracks human level intelligence will be worth ten Microsofts” – Bill Gates.