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Machine Learning Misconceptions in Business by Emerj AI Research
In this TechEmergence Consensus, we contacted
a total of 30 artificial intelligence executives and
researchers to ask them about the biggest mis-
conception that executives and businesspeople
have in applyting machine learning to business
opportunities.
This slide deck displays the major trends of
responses as well as some of the most poignant
quotes from the recognized experts we spoke with.
Access to complete data sets and all quotes
and answers from our Machine Learning in
Business Consensus is available for free
download as a spreadsheet or Google Sheet in
the link below. This series includes:
	 + Machine Learning Industry Predictions
	 + Deriving Value From Machine Learning in Business
	 + Misconceptions in Machine Learning
	 + Applications of Machine Learning
>> CLICK HERE
Download the complete response set below:
© TechEmergence Consensus July 2016
“What do you believe to be the biggest misconception that
executives and businesspeople have in applying machine
learning to business opportunities?”
Wrong Expectations of Capabilities/Applications
Percentage of Responses
0 10 20 30 40 50
Underestimating Resources/Staff Needed
Technical Misunderstandings
Not Understanding What AI Is or Does
Other
* Answers from the respondants were submitted in an open ended text format later categorized and sorted
after submission by techemergence.com
We’ve selected three quotes from each of the
major response categories. Beneath each quote
is a link (if available) of our complete interview
with this guest on the TechEmergence Podcast.
* These consensus answers were recorded seperately from our podcasts interviews, but most podcasts are focused on
related topics around the ethical implications of emerging technologies.
WRONG EXPECTATIONS OF
CAPABILITIES/APPLICATIONS
“There are two misconceptions. One, that ML can solve every-
thing, like a magic box. The other is exactly the opposite, that
ML is useless and can solve only toy like problems where the
solution is obvious. I believe the truth is in the middle, ML is
very good at classification, but is bad at real time control, and
motion planning, where continuous solution is required.”
- Dr. Amir Shapiro
Associate Professor, Ben Gurion University
WRONG EXPECTATIONS OF
CAPABILITIES/APPLICATIONS
“There is this misconception that with sufficient data you
can train a machine to solve any task. At least with the cur-
rent state of the field of machine learning there are types of
problems that are distinctly more or less suited for a machine
learning solution.”
- Dr. Pieter J. Mosterman
Chief Research Scientist, MathWorks
>> CLICK HERE
Listen to or read our full interview with Dr. Mosterman at techemergence.com:
WRONG EXPECTATIONS OF
CAPABILITIES/APPLICATIONS
“That it will be costly (it is not at all if you have the data),
complicated (most graduate in Computer Science can get you
a long way), and risky (the evaluation technics are simple and
will tell you how your system compare to a human).”
- Dr. Philippe Pasquier
Associate Professor, Simon Fraser University
>> CLICK HERE
Listen to or read our full interview with Dr. Pasquier at techemergence.com:
UNDERESTIMATING
RESOURCES/STAFF NEEDED
“Many business people looking only for complete machine
learning solutions and underestimate the role of the data
scientists on their team.”
- Dr. Timur Luguev
CEO, Clevapi
UNDERESTIMATING
RESOURCES/STAFF NEEDED
“A common misconception is that machine learning and AI
tools contain within themselves certain level of intelligence,
but they don’t. Machine learning and AI are only tools in hands
of more or less skilled people, and solely the intellectual
capabilities of these people eventually make a difference
between success and failure.”
- Dr. Danko Nikolic
Senior Professional: Data Science, CSC
>> CLICK HERE
Listen to or read our full interview with Dr. Nikolic at techemergence.com:
UNDERESTIMATING
RESOURCES/STAFF NEEDED
“That it is straightforward to develop and train ML systems
that solve real world problems. The amount of AI engineering
and training work required to bring ML systems to a useful
level is greater than what is assumed by the industry
executives.”
- Dr. Mika Rautiainen
CEO, Valossa Labs Oy
TECHNICAL
MISUNDERSTANDINGS
“ML is purely correlative - and correlation does not imply
causation. As many times as one sees this, the mistakes
made by people who don’t understand the difference leads to
significant negative consequences for business.”
- Dr. James Hendler
Professor, Rensselaer Polytechnic Institute
>> CLICK HERE
Listen to or read our full interview with Dr. Hendler at techemergence.com:
TECHNICAL
MISUNDERSTANDINGS
“General statements on classifier and techniques
performance. The accuracy performance depends not only on
the technique itself but on the data set you are analyzing.”
- Dr.-Ing. Aureli Soria-Frisch
R&D Neuroscience Manager, Starlab Barcelona SL
TECHNICAL
MISUNDERSTANDINGS
“Contrary to popular misconception, the size and quality of
training datasets tend to be significantly more important than
algorithm choice in applying machine learning to business
opportunities.”
- Dr. Alexander D. Wissner-Gross
Founder, President, and Chief Scientist, Gemedy, Inc.
NOT UNDERSTANING WHAT
AI IS OR DOES
“What people call Deep Learning are just a progressive
improvement on Neural Networks, a field that has been
slashed as “done” just a few years ago. The misconception is
that this is new: in reality, this is a decades long effort which
is now being notices thanks to hardware catching up.”
- Dr. Massimiliano Versace
President & CEO, Neurala, Inc.
>> CLICK HERE
Listen to or read our full interview with Dr. Versace at techemergence.com:
NOT UNDERSTANING WHAT
AI IS OR DOES
“The biggest misconception that they have around machine
learning is believing that they understand what it is.
Executives are very likely to be aggressively misinformed.”
- Slater Victoroff
CEO, indico
>> CLICK HERE
Listen to or read our full interview with Slater at techemergence.com:
NOT UNDERSTANING WHAT
AI IS OR DOES
“Artificial Intelligence in the long run is not so much about
robots and intelligent agents, but much broader: it is about
handling complexity in new ways. We will not live next to AI
applications, but inside of artificially intelligent systems.”
- Dr. Joscha Bach
Research Scientist, MIT Media Lab
>> CLICK HERE
Listen to or read our full interview with Dr. Bach at techemergence.com:
If you’ve enjoyed this presentation and you’d like
to see the full dataset of responses, the
consensus is freely available below:
>> CLICK HERE
Thanks for viewing our presentation. If you’d like
to stay ahead of the curve about cutting-edge
research trends and insights in the field of
artificial intelligence, be sure to stay connected on
social media by clicking the icons below:
info@techemergence.com | www.techemergence.com
© TechEmergence LLC 2016 All Rights Reserved | Design by J. Daniel Samples

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Machine Learning Misconceptions in Business by Emerj AI Research

  • 2. In this TechEmergence Consensus, we contacted a total of 30 artificial intelligence executives and researchers to ask them about the biggest mis- conception that executives and businesspeople have in applyting machine learning to business opportunities.
  • 3. This slide deck displays the major trends of responses as well as some of the most poignant quotes from the recognized experts we spoke with.
  • 4. Access to complete data sets and all quotes and answers from our Machine Learning in Business Consensus is available for free download as a spreadsheet or Google Sheet in the link below. This series includes: + Machine Learning Industry Predictions + Deriving Value From Machine Learning in Business + Misconceptions in Machine Learning + Applications of Machine Learning >> CLICK HERE Download the complete response set below:
  • 5. © TechEmergence Consensus July 2016 “What do you believe to be the biggest misconception that executives and businesspeople have in applying machine learning to business opportunities?” Wrong Expectations of Capabilities/Applications Percentage of Responses 0 10 20 30 40 50 Underestimating Resources/Staff Needed Technical Misunderstandings Not Understanding What AI Is or Does Other * Answers from the respondants were submitted in an open ended text format later categorized and sorted after submission by techemergence.com
  • 6. We’ve selected three quotes from each of the major response categories. Beneath each quote is a link (if available) of our complete interview with this guest on the TechEmergence Podcast. * These consensus answers were recorded seperately from our podcasts interviews, but most podcasts are focused on related topics around the ethical implications of emerging technologies.
  • 7. WRONG EXPECTATIONS OF CAPABILITIES/APPLICATIONS “There are two misconceptions. One, that ML can solve every- thing, like a magic box. The other is exactly the opposite, that ML is useless and can solve only toy like problems where the solution is obvious. I believe the truth is in the middle, ML is very good at classification, but is bad at real time control, and motion planning, where continuous solution is required.” - Dr. Amir Shapiro Associate Professor, Ben Gurion University
  • 8. WRONG EXPECTATIONS OF CAPABILITIES/APPLICATIONS “There is this misconception that with sufficient data you can train a machine to solve any task. At least with the cur- rent state of the field of machine learning there are types of problems that are distinctly more or less suited for a machine learning solution.” - Dr. Pieter J. Mosterman Chief Research Scientist, MathWorks >> CLICK HERE Listen to or read our full interview with Dr. Mosterman at techemergence.com:
  • 9. WRONG EXPECTATIONS OF CAPABILITIES/APPLICATIONS “That it will be costly (it is not at all if you have the data), complicated (most graduate in Computer Science can get you a long way), and risky (the evaluation technics are simple and will tell you how your system compare to a human).” - Dr. Philippe Pasquier Associate Professor, Simon Fraser University >> CLICK HERE Listen to or read our full interview with Dr. Pasquier at techemergence.com:
  • 10. UNDERESTIMATING RESOURCES/STAFF NEEDED “Many business people looking only for complete machine learning solutions and underestimate the role of the data scientists on their team.” - Dr. Timur Luguev CEO, Clevapi
  • 11. UNDERESTIMATING RESOURCES/STAFF NEEDED “A common misconception is that machine learning and AI tools contain within themselves certain level of intelligence, but they don’t. Machine learning and AI are only tools in hands of more or less skilled people, and solely the intellectual capabilities of these people eventually make a difference between success and failure.” - Dr. Danko Nikolic Senior Professional: Data Science, CSC >> CLICK HERE Listen to or read our full interview with Dr. Nikolic at techemergence.com:
  • 12. UNDERESTIMATING RESOURCES/STAFF NEEDED “That it is straightforward to develop and train ML systems that solve real world problems. The amount of AI engineering and training work required to bring ML systems to a useful level is greater than what is assumed by the industry executives.” - Dr. Mika Rautiainen CEO, Valossa Labs Oy
  • 13. TECHNICAL MISUNDERSTANDINGS “ML is purely correlative - and correlation does not imply causation. As many times as one sees this, the mistakes made by people who don’t understand the difference leads to significant negative consequences for business.” - Dr. James Hendler Professor, Rensselaer Polytechnic Institute >> CLICK HERE Listen to or read our full interview with Dr. Hendler at techemergence.com:
  • 14. TECHNICAL MISUNDERSTANDINGS “General statements on classifier and techniques performance. The accuracy performance depends not only on the technique itself but on the data set you are analyzing.” - Dr.-Ing. Aureli Soria-Frisch R&D Neuroscience Manager, Starlab Barcelona SL
  • 15. TECHNICAL MISUNDERSTANDINGS “Contrary to popular misconception, the size and quality of training datasets tend to be significantly more important than algorithm choice in applying machine learning to business opportunities.” - Dr. Alexander D. Wissner-Gross Founder, President, and Chief Scientist, Gemedy, Inc.
  • 16. NOT UNDERSTANING WHAT AI IS OR DOES “What people call Deep Learning are just a progressive improvement on Neural Networks, a field that has been slashed as “done” just a few years ago. The misconception is that this is new: in reality, this is a decades long effort which is now being notices thanks to hardware catching up.” - Dr. Massimiliano Versace President & CEO, Neurala, Inc. >> CLICK HERE Listen to or read our full interview with Dr. Versace at techemergence.com:
  • 17. NOT UNDERSTANING WHAT AI IS OR DOES “The biggest misconception that they have around machine learning is believing that they understand what it is. Executives are very likely to be aggressively misinformed.” - Slater Victoroff CEO, indico >> CLICK HERE Listen to or read our full interview with Slater at techemergence.com:
  • 18. NOT UNDERSTANING WHAT AI IS OR DOES “Artificial Intelligence in the long run is not so much about robots and intelligent agents, but much broader: it is about handling complexity in new ways. We will not live next to AI applications, but inside of artificially intelligent systems.” - Dr. Joscha Bach Research Scientist, MIT Media Lab >> CLICK HERE Listen to or read our full interview with Dr. Bach at techemergence.com:
  • 19. If you’ve enjoyed this presentation and you’d like to see the full dataset of responses, the consensus is freely available below: >> CLICK HERE
  • 20. Thanks for viewing our presentation. If you’d like to stay ahead of the curve about cutting-edge research trends and insights in the field of artificial intelligence, be sure to stay connected on social media by clicking the icons below: info@techemergence.com | www.techemergence.com © TechEmergence LLC 2016 All Rights Reserved | Design by J. Daniel Samples