Artwork

תוכן מסופק על ידי Machine Learning Street Talk (MLST). כל תוכן הפודקאסטים כולל פרקים, גרפיקה ותיאורי פודקאסטים מועלים ומסופקים ישירות על ידי Machine Learning Street Talk (MLST) או שותף פלטפורמת הפודקאסט שלהם. אם אתה מאמין שמישהו משתמש ביצירה שלך המוגנת בזכויות יוצרים ללא רשותך, אתה יכול לעקוב אחר התהליך המתואר כאן https://he.player.fm/legal.
Player FM - אפליקציית פודקאסט
התחל במצב לא מקוון עם האפליקציה Player FM !

Prof. Jakob Foerster - ImageNet Moment for Reinforcement Learning?

53:31
 
שתפו
 

Manage episode 467295186 series 2803422
תוכן מסופק על ידי Machine Learning Street Talk (MLST). כל תוכן הפודקאסטים כולל פרקים, גרפיקה ותיאורי פודקאסטים מועלים ומסופקים ישירות על ידי Machine Learning Street Talk (MLST) או שותף פלטפורמת הפודקאסט שלהם. אם אתה מאמין שמישהו משתמש ביצירה שלך המוגנת בזכויות יוצרים ללא רשותך, אתה יכול לעקוב אחר התהליך המתואר כאן https://he.player.fm/legal.

Prof. Jakob Foerster, a leading AI researcher at Oxford University and Meta, and Chris Lu, a researcher at OpenAI -- they explain how AI is moving beyond just mimicking human behaviour to creating truly intelligent agents that can learn and solve problems on their own. Foerster champions open-source AI for responsible, decentralised development. He addresses AI scaling, goal misalignment (Goodhart's Law), and the need for holistic alignment, offering a quick look at the future of AI and how to guide it.

SPONSOR MESSAGES:

***

CentML offers competitive pricing for GenAI model deployment, with flexible options to suit a wide range of models, from small to large-scale deployments. Check out their super fast DeepSeek R1 hosting!

https://centml.ai/pricing/

Tufa AI Labs is a brand new research lab in Zurich started by Benjamin Crouzier focussed on o-series style reasoning and AGI. They are hiring a Chief Engineer and ML engineers. Events in Zurich.

Goto https://tufalabs.ai/

***

TRANSCRIPT/REFS:

https://www.dropbox.com/scl/fi/yqjszhntfr00bhjh6t565/JAKOB.pdf?rlkey=scvny4bnwj8th42fjv8zsfu2y&dl=0

Prof. Jakob Foerster

https://x.com/j_foerst

https://www.jakobfoerster.com/

University of Oxford Profile:

https://eng.ox.ac.uk/people/jakob-foerster/

Chris Lu:

https://chrislu.page/

TOC

1. GPU Acceleration and Training Infrastructure

[00:00:00] 1.1 ARC Challenge Criticism and FLAIR Lab Overview

[00:01:25] 1.2 GPU Acceleration and Hardware Lottery in RL

[00:05:50] 1.3 Data Wall Challenges and Simulation-Based Solutions

[00:08:40] 1.4 JAX Implementation and Technical Acceleration

2. Learning Frameworks and Policy Optimization

[00:14:18] 2.1 Evolution of RL Algorithms and Mirror Learning Framework

[00:15:25] 2.2 Meta-Learning and Policy Optimization Algorithms

[00:21:47] 2.3 Language Models and Benchmark Challenges

[00:28:15] 2.4 Creativity and Meta-Learning in AI Systems

3. Multi-Agent Systems and Decentralization

[00:31:24] 3.1 Multi-Agent Systems and Emergent Intelligence

[00:38:35] 3.2 Swarm Intelligence vs Monolithic AGI Systems

[00:42:44] 3.3 Democratic Control and Decentralization of AI Development

[00:46:14] 3.4 Open Source AI and Alignment Challenges

[00:49:31] 3.5 Collaborative Models for AI Development

REFS

[[00:00:05] ARC Benchmark, Chollet

https://github.com/fchollet/ARC-AGI

[00:03:05] DRL Doesn't Work, Irpan

https://www.alexirpan.com/2018/02/14/rl-hard.html

[00:05:55] AI Training Data, Data Provenance Initiative

https://www.nytimes.com/2024/07/19/technology/ai-data-restrictions.html

[00:06:10] JaxMARL, Foerster et al.

https://arxiv.org/html/2311.10090v5

[00:08:50] M-FOS, Lu et al.

https://arxiv.org/abs/2205.01447

[00:09:45] JAX Library, Google Research

https://github.com/jax-ml/jax

[00:12:10] Kinetix, Mike and Michael

https://arxiv.org/abs/2410.23208

[00:12:45] Genie 2, DeepMind

https://deepmind.google/discover/blog/genie-2-a-large-scale-foundation-world-model/

[00:14:42] Mirror Learning, Grudzien, Kuba et al.

https://arxiv.org/abs/2208.01682

[00:16:30] Discovered Policy Optimisation, Lu et al.

https://arxiv.org/abs/2210.05639

[00:24:10] Goodhart's Law, Goodhart

https://en.wikipedia.org/wiki/Goodhart%27s_law

[00:25:15] LLM ARChitect, Franzen et al.

https://github.com/da-fr/arc-prize-2024/blob/main/the_architects.pdf

[00:28:55] AlphaGo, Silver et al.

https://arxiv.org/pdf/1712.01815.pdf

[00:30:10] Meta-learning, Lu, Towers, Foerster

https://direct.mit.edu/isal/proceedings-pdf/isal2023/35/67/2354943/isal_a_00674.pdf

[00:31:30] Emergence of Pragmatics, Yuan et al.

https://arxiv.org/abs/2001.07752

[00:34:30] AI Safety, Amodei et al.

https://arxiv.org/abs/1606.06565

[00:35:45] Intentional Stance, Dennett

https://plato.stanford.edu/entries/ethics-ai/

[00:39:25] Multi-Agent RL, Zhou et al.

https://arxiv.org/pdf/2305.10091

[00:41:00] Open Source Generative AI, Foerster et al.

https://arxiv.org/abs/2405.08597

  continue reading

230 פרקים

Artwork
iconשתפו
 
Manage episode 467295186 series 2803422
תוכן מסופק על ידי Machine Learning Street Talk (MLST). כל תוכן הפודקאסטים כולל פרקים, גרפיקה ותיאורי פודקאסטים מועלים ומסופקים ישירות על ידי Machine Learning Street Talk (MLST) או שותף פלטפורמת הפודקאסט שלהם. אם אתה מאמין שמישהו משתמש ביצירה שלך המוגנת בזכויות יוצרים ללא רשותך, אתה יכול לעקוב אחר התהליך המתואר כאן https://he.player.fm/legal.

Prof. Jakob Foerster, a leading AI researcher at Oxford University and Meta, and Chris Lu, a researcher at OpenAI -- they explain how AI is moving beyond just mimicking human behaviour to creating truly intelligent agents that can learn and solve problems on their own. Foerster champions open-source AI for responsible, decentralised development. He addresses AI scaling, goal misalignment (Goodhart's Law), and the need for holistic alignment, offering a quick look at the future of AI and how to guide it.

SPONSOR MESSAGES:

***

CentML offers competitive pricing for GenAI model deployment, with flexible options to suit a wide range of models, from small to large-scale deployments. Check out their super fast DeepSeek R1 hosting!

https://centml.ai/pricing/

Tufa AI Labs is a brand new research lab in Zurich started by Benjamin Crouzier focussed on o-series style reasoning and AGI. They are hiring a Chief Engineer and ML engineers. Events in Zurich.

Goto https://tufalabs.ai/

***

TRANSCRIPT/REFS:

https://www.dropbox.com/scl/fi/yqjszhntfr00bhjh6t565/JAKOB.pdf?rlkey=scvny4bnwj8th42fjv8zsfu2y&dl=0

Prof. Jakob Foerster

https://x.com/j_foerst

https://www.jakobfoerster.com/

University of Oxford Profile:

https://eng.ox.ac.uk/people/jakob-foerster/

Chris Lu:

https://chrislu.page/

TOC

1. GPU Acceleration and Training Infrastructure

[00:00:00] 1.1 ARC Challenge Criticism and FLAIR Lab Overview

[00:01:25] 1.2 GPU Acceleration and Hardware Lottery in RL

[00:05:50] 1.3 Data Wall Challenges and Simulation-Based Solutions

[00:08:40] 1.4 JAX Implementation and Technical Acceleration

2. Learning Frameworks and Policy Optimization

[00:14:18] 2.1 Evolution of RL Algorithms and Mirror Learning Framework

[00:15:25] 2.2 Meta-Learning and Policy Optimization Algorithms

[00:21:47] 2.3 Language Models and Benchmark Challenges

[00:28:15] 2.4 Creativity and Meta-Learning in AI Systems

3. Multi-Agent Systems and Decentralization

[00:31:24] 3.1 Multi-Agent Systems and Emergent Intelligence

[00:38:35] 3.2 Swarm Intelligence vs Monolithic AGI Systems

[00:42:44] 3.3 Democratic Control and Decentralization of AI Development

[00:46:14] 3.4 Open Source AI and Alignment Challenges

[00:49:31] 3.5 Collaborative Models for AI Development

REFS

[[00:00:05] ARC Benchmark, Chollet

https://github.com/fchollet/ARC-AGI

[00:03:05] DRL Doesn't Work, Irpan

https://www.alexirpan.com/2018/02/14/rl-hard.html

[00:05:55] AI Training Data, Data Provenance Initiative

https://www.nytimes.com/2024/07/19/technology/ai-data-restrictions.html

[00:06:10] JaxMARL, Foerster et al.

https://arxiv.org/html/2311.10090v5

[00:08:50] M-FOS, Lu et al.

https://arxiv.org/abs/2205.01447

[00:09:45] JAX Library, Google Research

https://github.com/jax-ml/jax

[00:12:10] Kinetix, Mike and Michael

https://arxiv.org/abs/2410.23208

[00:12:45] Genie 2, DeepMind

https://deepmind.google/discover/blog/genie-2-a-large-scale-foundation-world-model/

[00:14:42] Mirror Learning, Grudzien, Kuba et al.

https://arxiv.org/abs/2208.01682

[00:16:30] Discovered Policy Optimisation, Lu et al.

https://arxiv.org/abs/2210.05639

[00:24:10] Goodhart's Law, Goodhart

https://en.wikipedia.org/wiki/Goodhart%27s_law

[00:25:15] LLM ARChitect, Franzen et al.

https://github.com/da-fr/arc-prize-2024/blob/main/the_architects.pdf

[00:28:55] AlphaGo, Silver et al.

https://arxiv.org/pdf/1712.01815.pdf

[00:30:10] Meta-learning, Lu, Towers, Foerster

https://direct.mit.edu/isal/proceedings-pdf/isal2023/35/67/2354943/isal_a_00674.pdf

[00:31:30] Emergence of Pragmatics, Yuan et al.

https://arxiv.org/abs/2001.07752

[00:34:30] AI Safety, Amodei et al.

https://arxiv.org/abs/1606.06565

[00:35:45] Intentional Stance, Dennett

https://plato.stanford.edu/entries/ethics-ai/

[00:39:25] Multi-Agent RL, Zhou et al.

https://arxiv.org/pdf/2305.10091

[00:41:00] Open Source Generative AI, Foerster et al.

https://arxiv.org/abs/2405.08597

  continue reading

230 פרקים

Alle episoder

×
 
Loading …

ברוכים הבאים אל Player FM!

Player FM סורק את האינטרנט עבור פודקאסטים באיכות גבוהה בשבילכם כדי שתהנו מהם כרגע. זה יישום הפודקאסט הטוב ביותר והוא עובד על אנדרואיד, iPhone ואינטרנט. הירשמו לסנכרון מנויים במכשירים שונים.

 

מדריך עזר מהיר

האזן לתוכנית הזו בזמן שאתה חוקר
הפעלה