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Amii
Canada
Приєднався 1 гру 2016
Discover the future of machine intelligence with Amii, the Alberta Machine Intelligence Institute.
Tune in regularly for the latest in artificial intelligence and machine learning, including educational videos, research presentations and demonstrations of the latest applications from our world-class researchers and Alberta's growing machine intelligence ecosystem.
Learn more about Amii: www.amii.ca
Tune in regularly for the latest in artificial intelligence and machine learning, including educational videos, research presentations and demonstrations of the latest applications from our world-class researchers and Alberta's growing machine intelligence ecosystem.
Learn more about Amii: www.amii.ca
Are Prosthetics About to Get a WHOLE LOT Smarter?
AI is revolutionizing prosthetics - watch and learn how! 🧠
Curious about the research happening at Amii? 🤔 Visit amii.ca/ac to discover more.
On this episode of Approximately Correct, we chat with Amii fellow and Canada CIFAR AI Chair Patrick Pilarski about the amazing ways AI is being used to build better prosthetic limbs. 🦿
Watch more episodes of Approximately Correct here - ua-cam.com/play/PLKlhhkvvU8-ZWnapBRKKwWJnKhLrvIm1S.html
#AI #ArtificialIntelligence #MachineLearning #Prosthetics #Bionics #Robotics #Cybathlon #AssistiveTechnology #Healthcare #Technology #Innovation #Research #Science #Amii #AlbertaMachineIntelligenceInstitute #UniversityofAlberta #Podcast #STEM #Education #FutureofTech #Accessibility #Disability #Inclusion #Amputee #Engineering #BiomedicalEngineering #NeuralNetworks #DeepLearning #ComputerVision #HumanComputerInteraction #Rehabilitation #MedicalDevices #HealthTech #DigitalHealth #Neurotechnology #Cybernetics #HumanEnhancement #Augmentation #Transhumanism #FutureofHealthcare #ParticipatoryResearch #ParticipatoryDesign #Ethics #SocialImpact #ScienceCommunication #TechnologyPodcast #SciencePodcast
✨Listen to Approximately Correct✨
Spotify: open.spotify.com/show/3GwbDft0b4xfatxmW8kW5c
Apple Podcasts: podcasts.apple.com/us/podcast/approximately-correct-an-ai-podcast-from-amii/id1725553442
✨Social Media✨
Instagram: amiithinks
Tiktok: www.tiktok.com/@amiithinks
Twitter: AmiiThinks
LinkedIn: linkedin.com/company/amii
00:00:00 Introduction
00:01:00 What is the BlincLab?
00:07:40 Targeted Reinnervation
00:11:40 The Researcher/Participant Relationship
00:15:50 Outcomes of Perspective Shift
00:19:30 Concrete Example of End User Influence
00:27:40 Language Difference: 'Participants' vs 'Partners'
00:31:00 The Cybathlon
00:37:00 Benchmarks
00:39:10 Conclusion
Curious about the research happening at Amii? 🤔 Visit amii.ca/ac to discover more.
On this episode of Approximately Correct, we chat with Amii fellow and Canada CIFAR AI Chair Patrick Pilarski about the amazing ways AI is being used to build better prosthetic limbs. 🦿
Watch more episodes of Approximately Correct here - ua-cam.com/play/PLKlhhkvvU8-ZWnapBRKKwWJnKhLrvIm1S.html
#AI #ArtificialIntelligence #MachineLearning #Prosthetics #Bionics #Robotics #Cybathlon #AssistiveTechnology #Healthcare #Technology #Innovation #Research #Science #Amii #AlbertaMachineIntelligenceInstitute #UniversityofAlberta #Podcast #STEM #Education #FutureofTech #Accessibility #Disability #Inclusion #Amputee #Engineering #BiomedicalEngineering #NeuralNetworks #DeepLearning #ComputerVision #HumanComputerInteraction #Rehabilitation #MedicalDevices #HealthTech #DigitalHealth #Neurotechnology #Cybernetics #HumanEnhancement #Augmentation #Transhumanism #FutureofHealthcare #ParticipatoryResearch #ParticipatoryDesign #Ethics #SocialImpact #ScienceCommunication #TechnologyPodcast #SciencePodcast
✨Listen to Approximately Correct✨
Spotify: open.spotify.com/show/3GwbDft0b4xfatxmW8kW5c
Apple Podcasts: podcasts.apple.com/us/podcast/approximately-correct-an-ai-podcast-from-amii/id1725553442
✨Social Media✨
Instagram: amiithinks
Tiktok: www.tiktok.com/@amiithinks
Twitter: AmiiThinks
LinkedIn: linkedin.com/company/amii
00:00:00 Introduction
00:01:00 What is the BlincLab?
00:07:40 Targeted Reinnervation
00:11:40 The Researcher/Participant Relationship
00:15:50 Outcomes of Perspective Shift
00:19:30 Concrete Example of End User Influence
00:27:40 Language Difference: 'Participants' vs 'Partners'
00:31:00 The Cybathlon
00:37:00 Benchmarks
00:39:10 Conclusion
Переглядів: 144
Відео
1Minute Research: Jacob Adkins, A Method for Evaluating Hyperparameter Sensitivity in RL
Переглядів 164Місяць тому
The Neural Information Processing Systems Conference, NeurIPS, is taking place in Vancouver this year. And once again, we put the call out for brave Amii students to explain their NeurIPS papers in under 1-minute. This time, Jacob Adkins rose to the challenge - here, he gives a breakdown for a general audience of "A Method for Evaluating Hyperparameter Sensitivity in RL".
1Minute Research: Simone Parisi, Exploration With Partially Observable Rewards
Переглядів 143Місяць тому
The Neural Information Processing Systems Conference, NeurIPS, is taking place in Vancouver this year. And once again, we put the call out for brave Amii students to explain their NeurIPS papers in under 1-minute. This time, Simone Parisi rose to the challenge - here, he gives a breakdown for a general audience of "Exploration With Partially Observable Rewards".
Can AI Predict Your Survival?
Переглядів 135Місяць тому
In this episode, Russ Greiner reveals how artificial intelligence is revolutionizing healthcare through personalized predictions and treatments. Learn how AI is evolving beyond diagnosis to create individual health trajectories, helping patients and doctors make better decisions. Discover the groundbreaking ways machine learning is transforming medical care, from cancer treatment to ALS managem...
1Minute Research: Gautham Vasan, Deep Policy Gradient Methods Without Batch Updates, Target Netwo...
Переглядів 236Місяць тому
The Neural Information Processing Systems Conference, NeurIPS, is taking place in Vancouver this year. And once again, we put the call out for brave Amii students to explain their NeurIPS papers in under 1-minute. This time, Gautham Vasan rose to the challenge - here, he gives a breakdown for a general audience of "Deep Policy Gradient Methods Without Batch Updates, Target Networks, or Replay B...
1Minute Research: Davide Maran, The Key for No-regret Reinforcement Learning in Continuous MDPs
Переглядів 217Місяць тому
The Neural Information Processing Systems Conference, NeurIPS, is taking place in Vancouver this year. And once again, we put the call out for brave Amii students to explain their NeurIPS papers in under 1-minute. This time, Davide Maran rose to the challenge - here, he gives a breakdown for a general audience of "The Key for No-regret Reinforcement Learning in Continuous MDPs".
AI Seminar: Leveraging RL for Player Interaction Gameplay Mechanics Generation, Johor Jara Gonzalez
Переглядів 80Місяць тому
The AI Seminar is a weekly meeting at the University of Alberta where researchers interested in artificial intelligence (AI) can share their research. Presenters include both local speakers from the University of Alberta and visitors from other institutions. Topics can be related in any way to artificial intelligence, from foundational theoretical work to innovative applications of AI technique...
AI Seminar Series 2024: Essential Offline RL Theories for Algorithm Developers, Fengdi Che
Переглядів 166Місяць тому
The AI Seminar is a weekly meeting at the University of Alberta where researchers interested in artificial intelligence (AI) can share their research. Presenters include both local speakers from the University of Alberta and visitors from other institutions. Topics can be related in any way to artificial intelligence, from foundational theoretical work to innovative applications of AI technique...
AI Seminar: PulseMedica: Applying ML Technologies to Screen and Treat Eye Floaters, Chris Ceroici
Переглядів 1,1 тис.Місяць тому
The AI Seminar is a weekly meeting at the University of Alberta where researchers interested in artificial intelligence (AI) can share their research. Presenters include both local speakers from the University of Alberta and visitors from other institutions. Topics can be related in any way to artificial intelligence, from foundational theoretical work to innovative applications of AI technique...
From Data to Predictions: Using Physics and Domain Expertise to Maximize AI’s Potential, Afzal Memon
Переглядів 1872 місяці тому
From Data to Predictions: Using Physics and Domain Expertise to Maximize AI’s Potential, Afzal Memon
True Novelty & Out of Distribution Generation through Procedural Content Generation, Matthew Guzdial
Переглядів 1522 місяці тому
True Novelty & Out of Distribution Generation through Procedural Content Generation, Matthew Guzdial
Rich Sutton’s new path for AI | Approximately Correct Podcast
Переглядів 11 тис.3 місяці тому
Rich Sutton’s new path for AI | Approximately Correct Podcast
Synergy of Graph Data Management & Machine Learning in Explainability & Query Answering, Arijit Khan
Переглядів 1543 місяці тому
Synergy of Graph Data Management & Machine Learning in Explainability & Query Answering, Arijit Khan
Rich Sutton, Toward a better Deep Learning
Переглядів 9 тис.4 місяці тому
Rich Sutton, Toward a better Deep Learning
Tea Time Talks 2024: Shang Wang, Reinforcement Learning for Chip Design
Переглядів 1654 місяці тому
Tea Time Talks 2024: Shang Wang, Reinforcement Learning for Chip Design
Tea Time Talks: Farzane Aminmansour, AProp: Decentralized Gradient-Based Learning Algorithm for DNNs
Переглядів 664 місяці тому
Tea Time Talks: Farzane Aminmansour, AProp: Decentralized Gradient-Based Learning Algorithm for DNNs
Tea Time Talks 2024: Parham Panahi, Experience Selection in Deep RL
Переглядів 994 місяці тому
Tea Time Talks 2024: Parham Panahi, Experience Selection in Deep RL
Tea Time Talks 2024: Alex Lewandowski, Continual Learning, Scalability, and Linearity
Переглядів 1334 місяці тому
Tea Time Talks 2024: Alex Lewandowski, Continual Learning, Scalability, and Linearity
Tea Time Talks 2024: Aidan Bush, Multi-agent Deflection Routing with Bandits
Переглядів 944 місяці тому
Tea Time Talks 2024: Aidan Bush, Multi-agent Deflection Routing with Bandits
Tea Time Talks 2024: Alireza Kazemipour, Optimism and Mon-MDPs
Переглядів 524 місяці тому
Tea Time Talks 2024: Alireza Kazemipour, Optimism and Mon-MDPs
Tea Time Talks 2024: Mahshid Rahmani Hanzaki, Tile-coding for Count-based Exploration
Переглядів 654 місяці тому
Tea Time Talks 2024: Mahshid Rahmani Hanzaki, Tile-coding for Count-based Exploration
Tea Time Talks 2024: Yiuqi Wang, Transformers Learn Temporal Difference Methods for In-Context RL
Переглядів 504 місяці тому
Tea Time Talks 2024: Yiuqi Wang, Transformers Learn Temporal Difference Methods for In-Context RL
Tea Time Talks 2024: Bounding-Box Inference for Error-Aware Model-Based RL - Erin Talvitie
Переглядів 384 місяці тому
Tea Time Talks 2024: Bounding-Box Inference for Error-Aware Model-Based RL - Erin Talvitie
Revolutionizing Video Game AI w/ Artificial Agency’s Andrew Butcher | Approximately Correct Podcast
Переглядів 3054 місяці тому
Revolutionizing Video Game AI w/ Artificial Agency’s Andrew Butcher | Approximately Correct Podcast
AI Seminar 2024: Improving Formula-Represented Heuristic Functions in Grid Pathfinding, Shuwei Wang
Переглядів 974 місяці тому
AI Seminar 2024: Improving Formula-Represented Heuristic Functions in Grid Pathfinding, Shuwei Wang
AI Seminar Series 2024: Contrastive Decoding for Concepts in the Brain, Cory Efird
Переглядів 1934 місяці тому
AI Seminar Series 2024: Contrastive Decoding for Concepts in the Brain, Cory Efird
Innovating game design with AI! Meet Amii's Matthew Guzdial
Переглядів 3155 місяців тому
Innovating game design with AI! Meet Amii's Matthew Guzdial
I'm in general a hater to anything I see in shorts. But this is cool, keep helping people achieve goals! :)
A hater? On UA-cam? 😜 Thanks, glad you enjoyed it!
Wow a positive post good show guys
Much appreciated! 🙌
This will help millions of people i hope, thank you so muuch for the efforts
This coming out in less than 10 years is the only reason why I haven’t offed myself. It’s sad how this hasn’t been done much sooner when YAG lasers are outdated and decades old. So many people suffer from floaters where this is an obvious no brainer concept that will instantly make anyone who cures it a billionaire
I don’t care how much this costs please release it and get rid of these floaters
Guys, thank you so much for this incredible effort! I'm really rooting for positive results in this research. It could bring much-needed relief to people suffering from eye floaters, myself included. Finally, we may have real hope for a cure in the future.
🎉🎉
Excellent Gautham
Living with Floaters at 17: An Appeal for Innovation in Eye Care Dear PulseMedica and other visionary startups, I'm writing this appeal with hope in my heart, representing not just myself but millions of people worldwide, including young individuals like me, who are silently battling the debilitating effects of chronic eye floaters. At just 17 years old, l've found myself in a struggle that has impacted every corner of my life - my vision, my mental health, my confidence, and my future dreams. Five months ago, I noticed a tiny white dot while preparing for exams. Initially, I brushed it off, but soon after, more floaters began to appear. They varied in shapes-squiggly lines, translucent threads, snake-like figures, and black dots- and they became unrelenting companions. These floaters are particularly evident in bright environments or against light-colored backgrounds, making even simple tasks like studying, reading, or walking outdoors a constant reminder of their presence. Despite assurances from a doctor that my vitreous is stable and healthy, the psychological toll has been devastating. My mental health has spiraled into anxiety and depression. The uncertainty about whether these floaters will worsen fills me with dread. I've spent sleepless nights researching treatments, hoping for a non-invasive solution like femtosecond lasers or gold nanoparticle technology, only to discover that my young age makes even current procedures inaccessible or unsafe for me. This condition isn't just an inconvenience - it's life-altering. The joy of looking at a clear sky, focusing on my education, or simply enjoying a moment of peace has been stolen by these floating shadows. They rob young people of hope, making them question their ability to lead a fulfilling life. Floaters aren't just a "visual nuisance" as many dismiss them; they trigger intense feelings of helplessness and despair, leaving sufferers trapped in a cycle of fear and frustration. For some, the constant visual disturbance becomes so unbearable that they experience suicidal thoughts. Living in a world that demands clear focus and a sharp vision, this condition isolates us, making us feel invisible and unheard. Our struggles are often dismissed as trivial, yet the mental health crisis this causes is real and profound. PulseMedica and other innovative startups, I implore you to prioritize developing non-invasive solutions like femtosecond laser treatments or nanoparticle-based therapies for floaters. Imagine the immense difference a safe, effective procedure could make in the lives of millions who feel their quality of life slipping away. Young individuals like me, who have dreams and aspirations, are being held back by this condition that robs us of our focus and joy. The future of medicine lies in innovation, and the world needs you to lead the charge. Give us hope by creating a treatment that restores clarity, both in our vision and in our lives. Your work could save countless individuals from depression, anxiety, and despair - and give us a chance to see the world clearly once more. With gratitude and hope,ANUSMITA BERA FROM INDIA
when will this be available to people?
somehwhere in 2030 for people in the west if everything goes right, somewhere in 2033-35 if every thing goes right for the rest of the world at affordable rates
Where do you base thst number? @@Debuggingmylife
We are with you guys. Keep going, we are suffering and not enjoying life anymore
Amazing work! How accurate have the real time octs been to patients drawings? I assume if the tracking is evenly remotely good it could be a game changer for future fem to sec and yag - finally have a reasonably accurate idea of where to shoot.
Please bring it to market soon,people are depressed
GPT summary of comments: Rich Sutton, a leading researcher in reinforcement learning, advocates for a shift in AI research toward **continual learning**, criticizing the field's reliance on transient, task-specific models. He highlights the limitations of static approaches and the need for AI systems to adapt dynamically, like humans. Sutton defines intelligence as trial-and-error learning, emphasizing adaptive systems capable of updating and retaining knowledge over time. He critiques current methods such as replay buffers and normalization, which hinder continual learning. Sutton’s vision focuses on creating AI systems that model real-world transitions, adapt to evolving tasks, and redefine intelligence, blending human and machine capabilities.
You guys are genius. Please bring it to market as soon as possibble. I cant wait for this treatment.
Most young adults' floaters are near-retina (less than 1mm) and are rather small. They are most devastating for the patient, because they cast the sharpest and brightest shadows onto the retina. How would the approach deal with these?
Those will be treatable with fem to sec, but aren't treatable using current yag based laser - the target area is too large and can damage the retina.
??
Please answer ... But what if it hits to the retina and its cells got ionised
You guys are absolute heroes. This is real trailblazing that is going to help so many people. Godspeed
Ojalá pronto haya una cura para estás moscas que generan estrés y ansiedad
Thanks for the video, I have high hopes that one day I will be floterless without victrctomy or yag.
love you dr I hope You will help❤❤❤❤ us suffering with floaters
Non biological entities do not have the biological drives at the FLESH CELLULAR LEVEL:AIR, CALORIES, PLEASURE, FEAR of DEATH,..etc. Machines dont efing learn dummies, they just make humans happy that they "appear" (did what humans want them to do to)/ convince humans they are "LEARNING". Take a great detailed photo of a brain down to the cellular level and press CONTINUE on the scan. Thats about it, but you wont be programming it with human hands in scripts. Its insane you are wasiting time on this.
One of my research ideas is to combine reinforcement learning with auto-regressive learning (eg. the training of LLMs and auto-encoders). But I have not gotten very far in this direction... wonder if others have done similar research?
It is definitely better than first time . 😄
I think the AI field is so high on current methods that they just can't grasp Sutton's position. Proof of that is how often they get wrong the bitter lesson. Doesn't matter if you call it a pipeline, where all that enter are "piped" in one direction from the start, or an industrial complex, where all tech companies fight to be nearest that one chair they are circling, or as a superhighway to nowhere. Even AGI, once meant to be the return to the basics of AI research, is just a smudge on the marketing blob seeking unlimited funding. It doesn't matter that people talk about how soon human-level thinking gets here, because no one in industry is on the right path. It will be a black swan moment that big tech is going to demand Gov take control of for them, else, they get zero return on half a trillion in bad bets.
One of the good things about twitter is having to both explain and defend your ideas in very short form.
Enjoyed every slide and every minute of your talk. I am from the Building Digital Twin domain, but every insight you shared and every point you made was sheer AI brilliance. Well done, Afzal! Looking forward to hearing more of your webinars and seminars in person.
Notice the correlation between uncomfortable concepts outside of our current realm of feasibility being discussed and Sutton's eyes lighting up. This is someone who is truly invested & passionate about advancing our very way of being.
Curb your Ai-thusiasm.
Beautiful words, 💯
Great talk❤
I’m submitting research proposals now, so the last 10 minutes were incredibly helpful. Thanks!
thanks
Do more. Talk less.
Be quiet - stop talking and go do something
finally someone who tells the truth unlike the many who almost claim that AGI is just around the corner.
One thing interesting about the mind is that it seems to figure things out without conscious effort. Maybe the main defining principle that could explain what’s happening is the principal of least action. Seems like that would make sense from the stand point of conservation of energy and the primary objective of the mind to help solve problems, find patterns and find optimizations... Just an observation.
The volume is so low. After trying to increase it for the 4th time unsuccessfully on my speaker, I gave up and switched to another podcast. Which then or course more my ears away. Maybe don't put your volume crazy low?
great!
I agree with him. But solving this problem is also really difficult
**Title**: Rich Sutton’s New Path for AI | Approximately Correct Podcast **Chapter 1: Foundations and Early Inspirations** *Timestamp: **00:00** - **03:05* - Rich Sutton discusses his initial interest in **systems that interact with the world** and learn from it. - Early AI systems lacked **goal-oriented behaviors**, focusing instead on **pattern recognition**. - Sutton describes his drive to create a **goal-based learning framework** and how it led him to contribute to **reinforcement learning (RL)**. - Mentions "Bandits" as an early attempt but points out its limitations due to its **stateless approach**. **Chapter 2: Shift from Goal-Orientation to Pattern Recognition** *Timestamp: **03:06** - **05:53* - The evolution of AI research led to a preference for **supervised learning**, which is simpler and more predictable. - Sutton observes that this shift sidelined **interactive, goal-seeking AI approaches** in favor of **pattern-based models**. - He explains the early trade-offs in AI: **linear mappings** allow adaptability, but **nonlinear mappings** (achieved via backpropagation) restrict continuous learning. - This trade-off, while powerful, has hindered **continual learning capabilities**. **Chapter 3: Present Challenges in Reinforcement Learning** *Timestamp: **05:54** - **08:09* - Sutton critiques the field’s **narrow focus on transient learning**, with a trend of building frozen models for specific tasks. - He compares current AI development to **looking under the streetlamp**, where researchers focus on **what AI can currently do**, neglecting its limitations. - Highlights that **continual learning** remains underexplored, especially as **deep learning** has dominated the field. **Chapter 4: Importance of Continual Learning and Its Definition** *Timestamp: **08:10** - **10:13* - Defines **continual learning** as systems that continuously learn and adapt in real-world environments. - Contrasts it with **transient learning**, where models are trained once and remain static. - Discusses the need for **adaptive, flexible AI** to parallel human learning, retaining and updating knowledge over time. **Chapter 5: Technical Obstacles to Continual Learning** *Timestamp: **10:14** - **12:34* - Sutton explains that AI research has developed techniques (e.g., **replay buffers, normalization, early stopping**) optimized for transient learning. - These methods create **barriers to adopting continual learning** in standard AI benchmarks (ImageNet, Atari). - Sutton calls for a **paradigm shift** to tackle real-world problems that require adaptability. **Chapter 6: A Contrarian Path and Personal Motivation** *Timestamp: **12:35** - **14:53* - Sutton criticizes the field’s focus on transient learning and feels a need to address **the limitations in current AI**. - Embraces a **contrarian approach** by choosing to focus on continual learning, even if it’s less popular or supported. - Expresses disappointment that nonlinear, continual learning methods remain undeveloped, requiring him to take the initiative. **Chapter 7: Defining Intelligence and Future Directions** *Timestamp: **14:54** - **19:26* - Sutton views intelligence as **trial-and-error learning**, creating **models of the world** to achieve specific goals. - Defines the mind as a system capable of **modeling transitions, planning, and operating at multiple abstraction levels**. - Suggests that by 2030, there’s a **25% chance we will understand intelligence enough** to create truly adaptive systems. **Chapter 8: Broader Implications and Human Connection** *Timestamp: **19:27** - **24:50* - Explores the idea of **one unified goal**, driven by a single “reward” or motivational signal, which drives complex behaviors and abstractions. - Predicts AI’s understanding of goals will challenge human perceptions of **motivation and identity**. - Discusses how insights into intelligence might **blur distinctions between human and animal intelligence**. **Chapter 9: Long-Term Impact and Future of AI in Society** *Timestamp: **24:51** - **28:30* - Predicts profound changes in **sociology, technology, and education** as we understand intelligence better. - Believes understanding how minds work could lead to **augmentation**, enhancing human cognition. - Emphasizes that understanding minds will have consequences beyond AI, affecting **self-perception** and **society at large**. **Chapter 10: Advice for Researchers and Students** *Timestamp: **28:31** - **34:36* - Sutton advises keeping a **daily research notebook** to document ideas and work through confusing thoughts. - Stresses the importance of **choosing research topics** based on personal interest and foundational value rather than popularity. - Suggests balancing multiple research ideas to adapt as some ideas may fail, fostering **resilience and flexibility** in research pursuits.
Next-word prediction is a goal.
Where I can find some of his publications? I want cite some of this in my research project.
He knows what he is talking about.
👌👌
Enjoyed it!
i would have loved to hear something about his collaboration with John Carmack
Thank you for your insights! Time to overtake transient learning with continual learning
True
Those research tips at the end are golden.
Loved this quote from Rich: "A good way to lose is to convince other people they should do what you think is important"
Sutton is one of the most forward-thinking researchers I've ever seen in AI.
Indeed, Rich and Barto both.