Completed
During the past decade ICTS has achieved some measure of success in all its three missions!
Class Central Classrooms beta
YouTube videos curated by Class Central.
Classroom Contents
Artificial Intelligence: Success, Limits, Myths and Threats - Lecture 1
Automatically move to the next video in the Classroom when playback concludes
- 1 DATE: 06 January 2020, 16:00 to
- 2 Lecture 1 Public Lecture: 6 January 2020, PM
- 3 Lecture 2: Tuesday 7th January 2020, PM
- 4 Lecture 3: Wednesday 8th January 2020, PM
- 5 Artificial intelligence: success, limits, myths and threats Lecture 1
- 6 ICTS
- 7 ICTS Campus in Bangalore
- 8 What is the Goal of the ICTS?
- 9 Enabled by 3 interactive missions:
- 10 During the past decade ICTS has achieved some measure of success in all its three missions!
- 11 Programs:
- 12 Sample Programs...
- 13 Programs in Machine Learning
- 14 ICTS-Infosys Foundation Lecture series:
- 15 Research
- 16 ICTS People: Faculty
- 17 Students and Postdocs
- 18 ICTS as a platform for new initiatives:
- 19 Science Outreach
- 20 Public Lectures
- 21 Kaapi with Kuriosity
- 22 Abdus Salam Memorial Lectures
- 23 Einstein Lectures
- 24 Vishveshwara Lectures
- 25 D.D. Kosambi Lectures
- 26 Mathematics of Planet Earth MPE 2013, Bengaluru
- 27 Bangalore Area Science Habba
- 28 Mathematics Circles
- 29 ICTS Organization
- 30 ICTS Resources
- 31 Thank You!
- 32 Artificial Intelligence: Success, Limits, Myths and Threats
- 33 Chapter One - Myths and Reality
- 34 The new era of AI
- 35 ImageNet Database and Challenge
- 36 Convoy of self-driving trucks completes first European cross-border trip
- 37 The new era of AI
- 38 2 - Language understanding
- 39 AlphaGo
- 40 July 2019 : Pluribus
- 41 Chapter Two - Machine learning
- 42 Machine Learning
- 43 Test phase=present new picture, that the machine has not yet seen
- 44 Chapter Three - The Machines: Artificial neural networks
- 45 Everyone recognizes
- 46 Artificial neural networks
- 47 Frank Rosenblatt's perception
- 48 What is new since Rosenblatt's perceptron?
- 49 Neural network reading digits
- 50 Performance on handwritten digits
- 51 Deep neural networks
- 52 Bigger networks, more parameters. Larger database!
- 53 New computing paradigm. Collective representation of information, going to larger scales. Robust.
- 54 Chapter Four - Why deep networks are not yet? a panacea
- 55 Three main problems:
- 56 1- Huge amount of labelled data is necessary for learning in deep networks
- 57 Oh, look at ko bamoule! Do you see ko bamoule?
- 58 Chapter Five - About scientific Intelligence
- 59 Quote from Chris Anderson -The end of Theory: The data deluge makes the scientific method obsolete
- 60 Thought experiment :
- 61 We are still very very far from General Artificial Intelligence
- 62 Conclusion - So, what is going to happen?
- 63 Predicting the future
- 64 Predicting the future ?
- 65 A major concern for the present:
- 66 In 2018:
- 67 Take-home message
- 68 The End
- 69 Q&A