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A.I.: The next frontier
Amparo Alonso Betanzos
CITIC-UDC
Grupo LIDIA
The Primeval Soup: The perfect storm
Batch
Streaming
Aman Naimat.
“The new Artificial Intelligence Market.
The Big data Market”. O´Reilly, 2016
 During 2017 the tendency of data
generation has showed sustained growth.
 The appetite of corporates, industry and
public sector for data driven initiatives has
not decreased.
 There is a change of landscape that by
2017 has started to become apparent.
Data Industry Landscape
Infrastructure Challenges
Data storage
High
performance
in
interchange
and sharing
Data format
and protocols
Advancing hardware
Regulation and Ethics
Safety
Data rich
vs Data
poor
Confidentialit
y and
scientific
transparency
Reproducibilit
y Free data
https://www.linkedin.com/pulse/national-artificial-intelligence-research-development-nco-
nitrd/
High dimensionality data
Sparse data
Heterogeneous data
Missing data
Noisy data
Adversarial data
Untrustworthy data
Data Science
• Machine Learning is as valuable as how exploitable its results
are.
• Lagging behind in some areas:
• Visualization of clusters
• Data drift
• Results Assurance
• Biased data
2017 Big Data Coruña. Statistical inference for big-but-biased data
https://www.youtube.com/watch?v=luTJbX3aVKAMore work
is needed
on:
• Feature engineering
• Regression
• Anomaly detection
• Practical non convex optimization
• Effective parameter selection
• Scalable transfer learning
• Data integration
• Data visualization
Reliable Machine Learning
Feature
Engineering
Distributed FS algorithms
Missing Data
Heterogeneou
s data
Unbalanced
data
NormalizedDiscountedCumulativeGain(NDC
• MNIST, 256 relevant features(576pixels)
• 20% missing (MAR)
• Imputation using median and SVD (Singular Value Decomposition)
B. Seijo-Pardo, A. Alonso-Betanzos, K. Bennett, V. Bolón-Canedo, I. Guyon, M. Saeed. Analysis of imputation
bias for feature selection with missing data. ESANN 2018
FS Original
FS Median Imputation
FS, SVD imputation
Size matters
• The study of methodologies that increase the
scalability of ML principles and algorithms.
• Scalability should be seen as an abstract concept
that not only includes the case of dealing with
huge amounts of data points.
• Just measuring the challenge in storage units will
be a narrow minded view that will be oblivious to
the challenge that current times is putting on the
shoulders of ML
Networks of AI systems
Scalability
• Models that can learn under
privacy and anonimity
constraints
• Share parameter values, not
data
• Using aggregated data
• Adequate accuracy?
• Private data reconstruction?
Privacy-preserving
ML
D. Fernández-Francos, O. Fontenla-Romero, A. Alonso-Betanzos. One-class
convex hull-based algorithm for classification in distributed environments.
IEEE Transactions on Systems, Man and Cybernetics: Systems (in press)
Learning to Learn
http://bair.berkeley.edu/blog/2017/07/18/learning-to-learn/
https://spectrum.ieee.org/static/ai-vs-doctors
NarrownichevsGeneral
“Armed with machine learning, a manager becomes a supermanager, a scientist a superscie
a superengineer. The future belongs to those who understand at a very deep level how to c
expertise with what algorithms do best.”
Pedro Domingos, The Master Algorithm: How the Quest for the Ultimate Learning Machine Will Remake
https://www.itnonline.com/content/
new-report-highlights-five-reasons-why-radiology-needs-artificial-intelligence
Human-in-the-loop
• Deep Learning is not the AI future, https://
www.kdnuggets.com/2017/08/deep-learning-not-ai-futu
re.html
• The National AI R&D Strategic plan (USA)
https
://www.linkedin.com/pulse/national-artificial-intelligenc
e-research-development-nco-nitrd
/
• General Data Protection Regulation, UE
http://ec.europa.eu/justice/data-
protection/reform/files/regulation_oj_en.pdf
Explainabilit
y
Transportation
service robots
Public safety, security
AI Applications
Education
Low-resource communities
AI Applications
Entertainment
Social risk of diminishing interpersonal interacti
pplications: Employment and workp
The 6 Laws proposed by EU
All intelligent machine should have an
emergency switch
An intelligent machine could not
damage a human being
It is forbidden to establish emotional
links with a machine or electronic
person
The biggest machines should have an
obligatory insurance
Electronic persons will have rights
and obligations.
Electronic persons and machines
should pay taxeshttp://www.europarl.europa.eu/news/es/news-
room/20170109STO57505/delvaux-propone-normas-
europeas-para-la-rob%C3%B3tica-y-un-seguro-obligatorio
http://computerhoy.com/noticias/life/e
stas-son-seis-leyes-robotica-que-
propone-ue-56972
6,3% (16% in Software Industry)
A.I.: The next frontier
Amparo Alonso Betanzos
CITIC-UDC
Grupo LIDIA

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AI: The next frontier by Amparo Alonso at Big Data Spain 2017

  • 1.
  • 2. A.I.: The next frontier Amparo Alonso Betanzos CITIC-UDC Grupo LIDIA
  • 3. The Primeval Soup: The perfect storm
  • 4. Batch Streaming Aman Naimat. “The new Artificial Intelligence Market. The Big data Market”. O´Reilly, 2016  During 2017 the tendency of data generation has showed sustained growth.  The appetite of corporates, industry and public sector for data driven initiatives has not decreased.  There is a change of landscape that by 2017 has started to become apparent.
  • 10. Data rich vs Data poor Confidentialit y and scientific transparency Reproducibilit y Free data https://www.linkedin.com/pulse/national-artificial-intelligence-research-development-nco- nitrd/
  • 11. High dimensionality data Sparse data Heterogeneous data Missing data Noisy data Adversarial data Untrustworthy data Data Science
  • 12. • Machine Learning is as valuable as how exploitable its results are. • Lagging behind in some areas: • Visualization of clusters • Data drift • Results Assurance • Biased data 2017 Big Data Coruña. Statistical inference for big-but-biased data https://www.youtube.com/watch?v=luTJbX3aVKAMore work is needed on: • Feature engineering • Regression • Anomaly detection • Practical non convex optimization • Effective parameter selection • Scalable transfer learning • Data integration • Data visualization Reliable Machine Learning
  • 13. Feature Engineering Distributed FS algorithms Missing Data Heterogeneou s data Unbalanced data
  • 15. • MNIST, 256 relevant features(576pixels) • 20% missing (MAR) • Imputation using median and SVD (Singular Value Decomposition) B. Seijo-Pardo, A. Alonso-Betanzos, K. Bennett, V. Bolón-Canedo, I. Guyon, M. Saeed. Analysis of imputation bias for feature selection with missing data. ESANN 2018
  • 16. FS Original FS Median Imputation FS, SVD imputation
  • 18. • The study of methodologies that increase the scalability of ML principles and algorithms. • Scalability should be seen as an abstract concept that not only includes the case of dealing with huge amounts of data points. • Just measuring the challenge in storage units will be a narrow minded view that will be oblivious to the challenge that current times is putting on the shoulders of ML Networks of AI systems Scalability
  • 19. • Models that can learn under privacy and anonimity constraints • Share parameter values, not data • Using aggregated data • Adequate accuracy? • Private data reconstruction? Privacy-preserving ML D. Fernández-Francos, O. Fontenla-Romero, A. Alonso-Betanzos. One-class convex hull-based algorithm for classification in distributed environments. IEEE Transactions on Systems, Man and Cybernetics: Systems (in press)
  • 22. “Armed with machine learning, a manager becomes a supermanager, a scientist a superscie a superengineer. The future belongs to those who understand at a very deep level how to c expertise with what algorithms do best.” Pedro Domingos, The Master Algorithm: How the Quest for the Ultimate Learning Machine Will Remake https://www.itnonline.com/content/ new-report-highlights-five-reasons-why-radiology-needs-artificial-intelligence Human-in-the-loop
  • 23. • Deep Learning is not the AI future, https:// www.kdnuggets.com/2017/08/deep-learning-not-ai-futu re.html • The National AI R&D Strategic plan (USA) https ://www.linkedin.com/pulse/national-artificial-intelligenc e-research-development-nco-nitrd / • General Data Protection Regulation, UE http://ec.europa.eu/justice/data- protection/reform/files/regulation_oj_en.pdf Explainabilit y
  • 26. Entertainment Social risk of diminishing interpersonal interacti
  • 27.
  • 29. The 6 Laws proposed by EU All intelligent machine should have an emergency switch An intelligent machine could not damage a human being It is forbidden to establish emotional links with a machine or electronic person The biggest machines should have an obligatory insurance Electronic persons will have rights and obligations. Electronic persons and machines should pay taxeshttp://www.europarl.europa.eu/news/es/news- room/20170109STO57505/delvaux-propone-normas- europeas-para-la-rob%C3%B3tica-y-un-seguro-obligatorio http://computerhoy.com/noticias/life/e stas-son-seis-leyes-robotica-que- propone-ue-56972
  • 30.
  • 31. 6,3% (16% in Software Industry)
  • 32. A.I.: The next frontier Amparo Alonso Betanzos CITIC-UDC Grupo LIDIA