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JUNAID QADIR
Fundamentals of
Artificial Intelligence
QUAI Organization Leadership in AI Program
Research focus areas
Ethics of AI
Safety of AI
Robustness of AI
Mitigating
Antisocial Online
Behavior
Big Data Cloud/Edge
Computing
Wireless
Networks
ICTD
Artificial Intelligence/
Machine Learning
Ethics and
Technology
Learning/
Pedagogy
Cognitive
Networks
Robotics
Adversarial ML IoT/ Smart Cities Algorithms
Engineering
Education
Priority research areas
Secure, Robust,
Ethical AI and ML
Using ML/AI for
social good
ICTD
…
Research Funding
FB Research Ethics in AI Research Initiative
for the Asia Pacific Award Winner (2020)
Culturally informed pro-social AI regulation and persuasion framework
Dr. Junaid Qadir, Dr. Amana Raquib
Workshop Road Map
1 What is AI? Types of AI? History of AI
3 Big Ideas and Important Concerns Related to AI/ML
2 Machine Learning (ML)
Background and history of AI
1
Success of AI
IMAGE
CLASSIFICATION
REINFORCEMENT
LEARNING
HEALTH
INFORMATICS
OBJECT
RECOGNITION
SELF-
DRIVING
CARS
FOREX/
STOCKS
TRADING
MACHINE
TRANSLATION
SPEECH
PROCESSING
NATURAL
LANGUAGE
UNDERSTANDING
What is Artificial Intelligence?
Artificial intelligence is a field renowned for
its lack of consensus on fundamental issues
A melting pot of ideas, techniques, and insights that
relate to artificial (computational) intelligence
Cognitive Hexagon
Different takes on “what is intelligence”
The ability to solve problems
The ability to learn from experience
The ability to reason about things
The ability to recognize patterns
The ability to figure out causes of things (or to understand)
The ability to pursue objectives and purpose.
The ability to generalize and abstract (and make analogies)
AI focuses on building “intelligent machines”
Intelligent agent is a system that
perceives its environment and
takes actions which maximize its
chances of success. (Russell & Norvig)
History of AI
“An attempt will be made to find how to
make machines use language, form
abstractions and concepts, solve kinds of
problems now reserved for humans, and
improve themselves. We think that a
significant advance can be made if we
work on it together for a summer.”
John McCarthy and Claude Shannon
1956 Dartmouth Workshop
AI’s official birth
Early Optimism (1950s and 1960s)
History of AI—Knowledge Based Approaches
Computer
Data
Program
Output
Traditional Programming
1988—93: Expert systems industry busts
1970—90: Knowledge-based approaches
1969—79: Early development
1980—88: Expert systems industry booms
Problem space grew too quickly
Complexity of the world made it hard to encode all rules
AI Winter and Underwhelming Results
1990— 2012: Statistical approaches + subfield expertise
• Resurgence of probability, focus on uncertainty
• General increase in technical depth
• Agents and learning systems…
“AI Spring”?
2012 onwards: Lots of Excitement
• Big data, machine learning, deep learning
• AI used in many industries
History of AI—Data Driven Approaches
What is behind modern success of AI?
Modern AI and Data-Driven Methods
Model Uncertainty
Use data to learn
from experience
1997
Deep Blue
2005
Stanley
2011 Watson
Question/ Answer
(before the next part)
2 Focusing on ML
Difficulties in teaching concepts to computers
In Arthur Samuel’s classic 1962 essay "Artificial Intelligence:
A Frontier of Automation", he wrote: “Programming a
computer for such computations is, at best, a difficult task, not
primarily because of any inherent complexity in the computer
itself but, rather, because of the need to spell out every minute
step of the process in the most exasperating detail.
Computers, as any programmer will tell you, are giant
morons, not giant brains.”
Traditional Programming
Problem space grew too quickly
Complexity of the world made it hard to encode all rules
AI Winter and Underwhelming Results
Let’s try Machine Learning
Learning
Algorithm
Output
Input Program/
Model
Machine Learning
Essence of Machine Learning:
– There is a pattern in data, however it is complex and difficult to articulate
– We cannot pin it down mathematically (i.e., it is too complex for that)
– Let the computer learn a model for the concept itself using algorithms.
“Learning” in Machine Learning
Arthur Samuel
How do we learn the right weights (model parameters)?
Use of mathematical
optimization to reduce
the discrepancy between
predictions and actual
labels (which is computed
by loss function)
Hands-on Activity
https://machinelearningforkids.co.uk/
Can you train Juha to recognize digits?
Supervised learning: the machine experiences a series of inputs: x1, x2,
x3, x4, … along with the correct labels y1, y2, … and it aims to learn a
mapping so that it can make a correct prediction for a new input
Supervised learning
Fraud Detection
Toxic Comment Detection
Binary Class Classification Multi-Class Classification
{0, 1, 2, … 9}
Deep Learning and Deep (Neural) Networks
M. Mitchell Waldrop PNAS 2019;116:4:1074-1077
Various use cases of ML predictions
Unsupervised learning
Unsupervised learning: the goal of the machine is to build a
model of x that can be used for various tasks such as reasoning,
decision making, predicting things, communicating, etc.
Applications: Clustering, anomaly detection, etc.
Generative vs. Discriminative Models
Generative Adversarial Networks
https://thispersondoesnotexist.com/
Reinforcement Learning
Basic idea:
Receive feedback in the form of rewards
Agent’s utility is defined by the reward function
Must (learn to) act so as to maximize expected rewards
All learning is based on observed samples of outcomes!
Question/ Answer
(before the next part)
Big ideas and important concerns
related to AI/ML
3
Different tribes in AI/ML
Big Ideas in Artificial Intelligence
Big Ideas in Artificial Intelligence (Expanded)
Caveat Emptor
Let the Buyer Be Aware
Despite the AI optimism, ML is no panacea
Many people find the lack of rigor and sound
analytical understanding of the internal working
of ML troubling
Despite the AI optimism, ML is no panacea
Bias (Can the ML model learn our biases?)
Interpretability (Can we understand ML models’ “reasoning”?)
Privacy (Is the ML model protecting our privacy?)
Security (Is the ML model secure against adversarial attacks?)
Open questions related to ML/AI
Trustworthiness/Reliability
(Can I trust the prediction of an ML model?)
Overfitting and the importance of generalization
Clever Hans (pictured) “solved”
arithmetic problems by simply
following the cues that inadvertently
emanated from his trainer’s body
language.
The problem of bias: racial bias
Can ML/AI models be Islamophobic?
AI and Leadership
“Every new technology will bite back.
The more powerful its gifts, the more
powerfully it can be abused.”
Kevin Kelly
Looking at technology critically
Ledger of Harms
Unanticipated (possible inadvertent) harms
REWARD FUNCTION GAMING
Ledger of Harm
Developing Safe & Trustworthy AI/ML systems
THERE ARE ETHICAL
CHOICES IN EVERY SINGLE
ALGORITHM WE BUILD
“
Ability To Act Ethically and With Wisdom
Wisdom
Understanding
Knowledge
Information
Data
An ounce of information is worth a pound of data.
An ounce of knowledge is worth a pound of information.
An ounce of understanding is worth a pound of knowledge.
An ounce of wisdom is worth a pound of understanding.
Good for your self/tribe is
not necessarily good for
common good of humanity
Resources
Credits
https://www.researchgate.net/publication/341478640_An_Overview_of_Privacy_in_Machine_Learning
https://towardsdatascience.com/generative-adversarial-networks-gans-a-beginners-guide-f37c9f3b7817
https://ojs.aaai.org//index.php/AAAI/article/view/5053
...

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Fundamentals of Artificial Intelligence — QU AIO Leadership in AI

  • 1. JUNAID QADIR Fundamentals of Artificial Intelligence QUAI Organization Leadership in AI Program
  • 2. Research focus areas Ethics of AI Safety of AI Robustness of AI Mitigating Antisocial Online Behavior Big Data Cloud/Edge Computing Wireless Networks ICTD Artificial Intelligence/ Machine Learning Ethics and Technology Learning/ Pedagogy Cognitive Networks Robotics Adversarial ML IoT/ Smart Cities Algorithms Engineering Education Priority research areas Secure, Robust, Ethical AI and ML Using ML/AI for social good ICTD … Research Funding FB Research Ethics in AI Research Initiative for the Asia Pacific Award Winner (2020) Culturally informed pro-social AI regulation and persuasion framework Dr. Junaid Qadir, Dr. Amana Raquib
  • 3. Workshop Road Map 1 What is AI? Types of AI? History of AI 3 Big Ideas and Important Concerns Related to AI/ML 2 Machine Learning (ML)
  • 6. What is Artificial Intelligence? Artificial intelligence is a field renowned for its lack of consensus on fundamental issues
  • 7. A melting pot of ideas, techniques, and insights that relate to artificial (computational) intelligence Cognitive Hexagon
  • 8. Different takes on “what is intelligence” The ability to solve problems The ability to learn from experience The ability to reason about things The ability to recognize patterns The ability to figure out causes of things (or to understand) The ability to pursue objectives and purpose. The ability to generalize and abstract (and make analogies)
  • 9. AI focuses on building “intelligent machines” Intelligent agent is a system that perceives its environment and takes actions which maximize its chances of success. (Russell & Norvig)
  • 11. “An attempt will be made to find how to make machines use language, form abstractions and concepts, solve kinds of problems now reserved for humans, and improve themselves. We think that a significant advance can be made if we work on it together for a summer.” John McCarthy and Claude Shannon 1956 Dartmouth Workshop AI’s official birth
  • 12. Early Optimism (1950s and 1960s)
  • 13. History of AI—Knowledge Based Approaches Computer Data Program Output Traditional Programming 1988—93: Expert systems industry busts 1970—90: Knowledge-based approaches 1969—79: Early development 1980—88: Expert systems industry booms
  • 14. Problem space grew too quickly Complexity of the world made it hard to encode all rules AI Winter and Underwhelming Results
  • 15. 1990— 2012: Statistical approaches + subfield expertise • Resurgence of probability, focus on uncertainty • General increase in technical depth • Agents and learning systems… “AI Spring”? 2012 onwards: Lots of Excitement • Big data, machine learning, deep learning • AI used in many industries History of AI—Data Driven Approaches
  • 16. What is behind modern success of AI? Modern AI and Data-Driven Methods Model Uncertainty Use data to learn from experience 1997 Deep Blue 2005 Stanley 2011 Watson
  • 19. Difficulties in teaching concepts to computers In Arthur Samuel’s classic 1962 essay "Artificial Intelligence: A Frontier of Automation", he wrote: “Programming a computer for such computations is, at best, a difficult task, not primarily because of any inherent complexity in the computer itself but, rather, because of the need to spell out every minute step of the process in the most exasperating detail. Computers, as any programmer will tell you, are giant morons, not giant brains.” Traditional Programming Problem space grew too quickly Complexity of the world made it hard to encode all rules AI Winter and Underwhelming Results
  • 20. Let’s try Machine Learning Learning Algorithm Output Input Program/ Model Machine Learning Essence of Machine Learning: – There is a pattern in data, however it is complex and difficult to articulate – We cannot pin it down mathematically (i.e., it is too complex for that) – Let the computer learn a model for the concept itself using algorithms.
  • 21. “Learning” in Machine Learning Arthur Samuel How do we learn the right weights (model parameters)? Use of mathematical optimization to reduce the discrepancy between predictions and actual labels (which is computed by loss function)
  • 23. Supervised learning: the machine experiences a series of inputs: x1, x2, x3, x4, … along with the correct labels y1, y2, … and it aims to learn a mapping so that it can make a correct prediction for a new input Supervised learning Fraud Detection Toxic Comment Detection Binary Class Classification Multi-Class Classification {0, 1, 2, … 9}
  • 24. Deep Learning and Deep (Neural) Networks M. Mitchell Waldrop PNAS 2019;116:4:1074-1077
  • 25. Various use cases of ML predictions
  • 26. Unsupervised learning Unsupervised learning: the goal of the machine is to build a model of x that can be used for various tasks such as reasoning, decision making, predicting things, communicating, etc. Applications: Clustering, anomaly detection, etc.
  • 29. Reinforcement Learning Basic idea: Receive feedback in the form of rewards Agent’s utility is defined by the reward function Must (learn to) act so as to maximize expected rewards All learning is based on observed samples of outcomes!
  • 31. Big ideas and important concerns related to AI/ML 3
  • 33. Big Ideas in Artificial Intelligence
  • 34. Big Ideas in Artificial Intelligence (Expanded)
  • 35. Caveat Emptor Let the Buyer Be Aware
  • 36. Despite the AI optimism, ML is no panacea Many people find the lack of rigor and sound analytical understanding of the internal working of ML troubling Despite the AI optimism, ML is no panacea
  • 37. Bias (Can the ML model learn our biases?) Interpretability (Can we understand ML models’ “reasoning”?) Privacy (Is the ML model protecting our privacy?) Security (Is the ML model secure against adversarial attacks?) Open questions related to ML/AI Trustworthiness/Reliability (Can I trust the prediction of an ML model?)
  • 38. Overfitting and the importance of generalization Clever Hans (pictured) “solved” arithmetic problems by simply following the cues that inadvertently emanated from his trainer’s body language.
  • 39. The problem of bias: racial bias
  • 40. Can ML/AI models be Islamophobic?
  • 42. “Every new technology will bite back. The more powerful its gifts, the more powerfully it can be abused.” Kevin Kelly Looking at technology critically Ledger of Harms
  • 43. Unanticipated (possible inadvertent) harms REWARD FUNCTION GAMING Ledger of Harm
  • 44. Developing Safe & Trustworthy AI/ML systems THERE ARE ETHICAL CHOICES IN EVERY SINGLE ALGORITHM WE BUILD “
  • 45. Ability To Act Ethically and With Wisdom Wisdom Understanding Knowledge Information Data An ounce of information is worth a pound of data. An ounce of knowledge is worth a pound of information. An ounce of understanding is worth a pound of knowledge. An ounce of wisdom is worth a pound of understanding. Good for your self/tribe is not necessarily good for common good of humanity