Artwork

Inhalt bereitgestellt von Machine Learning Street Talk (MLST). Alle Podcast-Inhalte, einschließlich Episoden, Grafiken und Podcast-Beschreibungen, werden direkt von Machine Learning Street Talk (MLST) oder seinem Podcast-Plattformpartner hochgeladen und bereitgestellt. Wenn Sie glauben, dass jemand Ihr urheberrechtlich geschütztes Werk ohne Ihre Erlaubnis nutzt, können Sie dem hier beschriebenen Verfahren folgen https://de.player.fm/legal.
Player FM - Podcast-App
Gehen Sie mit der App Player FM offline!

It's Not About Scale, It's About Abstraction - Francois Chollet

46:21
 
Teilen
 

Manage episode 444895566 series 2803422
Inhalt bereitgestellt von Machine Learning Street Talk (MLST). Alle Podcast-Inhalte, einschließlich Episoden, Grafiken und Podcast-Beschreibungen, werden direkt von Machine Learning Street Talk (MLST) oder seinem Podcast-Plattformpartner hochgeladen und bereitgestellt. Wenn Sie glauben, dass jemand Ihr urheberrechtlich geschütztes Werk ohne Ihre Erlaubnis nutzt, können Sie dem hier beschriebenen Verfahren folgen https://de.player.fm/legal.

François Chollet discusses the limitations of Large Language Models (LLMs) and proposes a new approach to advancing artificial intelligence. He argues that current AI systems excel at pattern recognition but struggle with logical reasoning and true generalization.

This was Chollet's keynote talk at AGI-24, filmed in high-quality. We will be releasing a full interview with him shortly. A teaser clip from that is played in the intro!

Chollet introduces the Abstraction and Reasoning Corpus (ARC) as a benchmark for measuring AI progress towards human-like intelligence. He explains the concept of abstraction in AI systems and proposes combining deep learning with program synthesis to overcome current limitations. Chollet suggests that breakthroughs in AI might come from outside major tech labs and encourages researchers to explore new ideas in the pursuit of artificial general intelligence.

TOC

1. LLM Limitations and Intelligence Concepts

[00:00:00] 1.1 LLM Limitations and Composition

[00:12:05] 1.2 Intelligence as Process vs. Skill

[00:17:15] 1.3 Generalization as Key to AI Progress

2. ARC-AGI Benchmark and LLM Performance

[00:19:59] 2.1 Introduction to ARC-AGI Benchmark

[00:20:05] 2.2 Introduction to ARC-AGI and the ARC Prize

[00:23:35] 2.3 Performance of LLMs and Humans on ARC-AGI

3. Abstraction in AI Systems

[00:26:10] 3.1 The Kaleidoscope Hypothesis and Abstraction Spectrum

[00:30:05] 3.2 LLM Capabilities and Limitations in Abstraction

[00:32:10] 3.3 Value-Centric vs Program-Centric Abstraction

[00:33:25] 3.4 Types of Abstraction in AI Systems

4. Advancing AI: Combining Deep Learning and Program Synthesis

[00:34:05] 4.1 Limitations of Transformers and Need for Program Synthesis

[00:36:45] 4.2 Combining Deep Learning and Program Synthesis

[00:39:59] 4.3 Applying Combined Approaches to ARC Tasks

[00:44:20] 4.4 State-of-the-Art Solutions for ARC

Shownotes (new!): https://www.dropbox.com/scl/fi/i7nsyoahuei6np95lbjxw/CholletKeynote.pdf?rlkey=t3502kbov5exsdxhderq70b9i&st=1ca91ewz&dl=0

[0:01:15] Abstraction and Reasoning Corpus (ARC): AI benchmark (François Chollet)

https://arxiv.org/abs/1911.01547

[0:05:30] Monty Hall problem: Probability puzzle (Steve Selvin)

https://www.tandfonline.com/doi/abs/10.1080/00031305.1975.10479121

[0:06:20] LLM training dynamics analysis (Tirumala et al.)

https://arxiv.org/abs/2205.10770

[0:10:20] Transformer limitations on compositionality (Dziri et al.)

https://arxiv.org/abs/2305.18654

[0:10:25] Reversal Curse in LLMs (Berglund et al.)

https://arxiv.org/abs/2309.12288

[0:19:25] Measure of intelligence using algorithmic information theory (François Chollet)

https://arxiv.org/abs/1911.01547

[0:20:10] ARC-AGI: GitHub repository (François Chollet)

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

[0:22:15] ARC Prize: $1,000,000+ competition (François Chollet)

https://arcprize.org/

[0:33:30] System 1 and System 2 thinking (Daniel Kahneman)

https://www.amazon.com/Thinking-Fast-Slow-Daniel-Kahneman/dp/0374533555

[0:34:00] Core knowledge in infants (Elizabeth Spelke)

https://www.harvardlds.org/wp-content/uploads/2017/01/SpelkeKinzler07-1.pdf

[0:34:30] Embedding interpretive spaces in ML (Tennenholtz et al.)

https://arxiv.org/abs/2310.04475

[0:44:20] Hypothesis Search with LLMs for ARC (Wang et al.)

https://arxiv.org/abs/2309.05660

[0:44:50] Ryan Greenblatt's high score on ARC public leaderboard

https://arcprize.org/

  continue reading

237 Episoden

Artwork
iconTeilen
 
Manage episode 444895566 series 2803422
Inhalt bereitgestellt von Machine Learning Street Talk (MLST). Alle Podcast-Inhalte, einschließlich Episoden, Grafiken und Podcast-Beschreibungen, werden direkt von Machine Learning Street Talk (MLST) oder seinem Podcast-Plattformpartner hochgeladen und bereitgestellt. Wenn Sie glauben, dass jemand Ihr urheberrechtlich geschütztes Werk ohne Ihre Erlaubnis nutzt, können Sie dem hier beschriebenen Verfahren folgen https://de.player.fm/legal.

François Chollet discusses the limitations of Large Language Models (LLMs) and proposes a new approach to advancing artificial intelligence. He argues that current AI systems excel at pattern recognition but struggle with logical reasoning and true generalization.

This was Chollet's keynote talk at AGI-24, filmed in high-quality. We will be releasing a full interview with him shortly. A teaser clip from that is played in the intro!

Chollet introduces the Abstraction and Reasoning Corpus (ARC) as a benchmark for measuring AI progress towards human-like intelligence. He explains the concept of abstraction in AI systems and proposes combining deep learning with program synthesis to overcome current limitations. Chollet suggests that breakthroughs in AI might come from outside major tech labs and encourages researchers to explore new ideas in the pursuit of artificial general intelligence.

TOC

1. LLM Limitations and Intelligence Concepts

[00:00:00] 1.1 LLM Limitations and Composition

[00:12:05] 1.2 Intelligence as Process vs. Skill

[00:17:15] 1.3 Generalization as Key to AI Progress

2. ARC-AGI Benchmark and LLM Performance

[00:19:59] 2.1 Introduction to ARC-AGI Benchmark

[00:20:05] 2.2 Introduction to ARC-AGI and the ARC Prize

[00:23:35] 2.3 Performance of LLMs and Humans on ARC-AGI

3. Abstraction in AI Systems

[00:26:10] 3.1 The Kaleidoscope Hypothesis and Abstraction Spectrum

[00:30:05] 3.2 LLM Capabilities and Limitations in Abstraction

[00:32:10] 3.3 Value-Centric vs Program-Centric Abstraction

[00:33:25] 3.4 Types of Abstraction in AI Systems

4. Advancing AI: Combining Deep Learning and Program Synthesis

[00:34:05] 4.1 Limitations of Transformers and Need for Program Synthesis

[00:36:45] 4.2 Combining Deep Learning and Program Synthesis

[00:39:59] 4.3 Applying Combined Approaches to ARC Tasks

[00:44:20] 4.4 State-of-the-Art Solutions for ARC

Shownotes (new!): https://www.dropbox.com/scl/fi/i7nsyoahuei6np95lbjxw/CholletKeynote.pdf?rlkey=t3502kbov5exsdxhderq70b9i&st=1ca91ewz&dl=0

[0:01:15] Abstraction and Reasoning Corpus (ARC): AI benchmark (François Chollet)

https://arxiv.org/abs/1911.01547

[0:05:30] Monty Hall problem: Probability puzzle (Steve Selvin)

https://www.tandfonline.com/doi/abs/10.1080/00031305.1975.10479121

[0:06:20] LLM training dynamics analysis (Tirumala et al.)

https://arxiv.org/abs/2205.10770

[0:10:20] Transformer limitations on compositionality (Dziri et al.)

https://arxiv.org/abs/2305.18654

[0:10:25] Reversal Curse in LLMs (Berglund et al.)

https://arxiv.org/abs/2309.12288

[0:19:25] Measure of intelligence using algorithmic information theory (François Chollet)

https://arxiv.org/abs/1911.01547

[0:20:10] ARC-AGI: GitHub repository (François Chollet)

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

[0:22:15] ARC Prize: $1,000,000+ competition (François Chollet)

https://arcprize.org/

[0:33:30] System 1 and System 2 thinking (Daniel Kahneman)

https://www.amazon.com/Thinking-Fast-Slow-Daniel-Kahneman/dp/0374533555

[0:34:00] Core knowledge in infants (Elizabeth Spelke)

https://www.harvardlds.org/wp-content/uploads/2017/01/SpelkeKinzler07-1.pdf

[0:34:30] Embedding interpretive spaces in ML (Tennenholtz et al.)

https://arxiv.org/abs/2310.04475

[0:44:20] Hypothesis Search with LLMs for ARC (Wang et al.)

https://arxiv.org/abs/2309.05660

[0:44:50] Ryan Greenblatt's high score on ARC public leaderboard

https://arcprize.org/

  continue reading

237 Episoden

Alle Folgen

×
 
Loading …

Willkommen auf Player FM!

Player FM scannt gerade das Web nach Podcasts mit hoher Qualität, die du genießen kannst. Es ist die beste Podcast-App und funktioniert auf Android, iPhone und im Web. Melde dich an, um Abos geräteübergreifend zu synchronisieren.

 

Kurzanleitung

Hören Sie sich diese Show an, während Sie die Gegend erkunden
Abspielen