DiscoverMachine Learning Street Talk (MLST)Francois Chollet - ARC reflections - NeurIPS 2024
Francois Chollet - ARC reflections - NeurIPS 2024

Francois Chollet - ARC reflections - NeurIPS 2024

Update: 2025-01-09
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François Chollet discusses the outcomes of the ARC-AGI (Abstraction and Reasoning Corpus) Prize competition in 2024, where accuracy rose from 33% to 55.5% on a private evaluation set.




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Read about the recent result on o3 with ARC here (Chollet knew about it at the time of the interview but wasn't allowed to say):


https://arcprize.org/blog/oai-o3-pub-breakthrough




TOC:


1. Introduction and Opening


[00:00:00 ] 1.1 Deep Learning vs. Symbolic Reasoning: François’s Long-Standing Hybrid View


[00:00:48 ] 1.2 “Why Do They Call You a Symbolist?” – Addressing Misconceptions


[00:01:31 ] 1.3 Defining Reasoning




3. ARC Competition 2024 Results and Evolution


[00:07:26 ] 3.1 ARC Prize 2024: Reflecting on the Narrative Shift Toward System 2


[00:10:29 ] 3.2 Comparing Private Leaderboard vs. Public Leaderboard Solutions


[00:13:17 ] 3.3 Two Winning Approaches: Deep Learning–Guided Program Synthesis and Test-Time Training




4. Transduction vs. Induction in ARC


[00:16:04 ] 4.1 Test-Time Training, Overfitting Concerns, and Developer-Aware Generalization


[00:19:35 ] 4.2 Gradient Descent Adaptation vs. Discrete Program Search




5. ARC-2 Development and Future Directions


[00:23:51 ] 5.1 Ensemble Methods, Benchmark Flaws, and the Need for ARC-2


[00:25:35 ] 5.2 Human-Level Performance Metrics and Private Test Sets


[00:29:44 ] 5.3 Task Diversity, Redundancy Issues, and Expanded Evaluation Methodology




6. Program Synthesis Approaches


[00:30:18 ] 6.1 Induction vs. Transduction


[00:32:11 ] 6.2 Challenges of Writing Algorithms for Perceptual vs. Algorithmic Tasks


[00:34:23 ] 6.3 Combining Induction and Transduction


[00:37:05 ] 6.4 Multi-View Insight and Overfitting Regulation




7. Latent Space and Graph-Based Synthesis


[00:38:17 ] 7.1 Clément Bonnet’s Latent Program Search Approach


[00:40:10 ] 7.2 Decoding to Symbolic Form and Local Discrete Search


[00:41:15 ] 7.3 Graph of Operators vs. Token-by-Token Code Generation


[00:45:50 ] 7.4 Iterative Program Graph Modifications and Reusable Functions




8. Compute Efficiency and Lifelong Learning


[00:48:05 ] 8.1 Symbolic Process for Architecture Generation


[00:50:33 ] 8.2 Logarithmic Relationship of Compute and Accuracy


[00:52:20 ] 8.3 Learning New Building Blocks for Future Tasks




9. AI Reasoning and Future Development


[00:53:15 ] 9.1 Consciousness as a Self-Consistency Mechanism in Iterative Reasoning


[00:56:30 ] 9.2 Reconciling Symbolic and Connectionist Views


[01:00:13 ] 9.3 System 2 Reasoning - Awareness and Consistency


[01:03:05 ] 9.4 Novel Problem Solving, Abstraction, and Reusability




10. Program Synthesis and Research Lab


[01:05:53 ] 10.1 François Leaving Google to Focus on Program Synthesis


[01:09:55 ] 10.2 Democratizing Programming and Natural Language Instruction




11. Frontier Models and O1 Architecture


[01:14:38 ] 11.1 Search-Based Chain of Thought vs. Standard Forward Pass


[01:16:55 ] 11.2 o1’s Natural Language Program Generation and Test-Time Compute Scaling


[01:19:35 ] 11.3 Logarithmic Gains with Deeper Search




12. ARC Evaluation and Human Intelligence


[01:22:55 ] 12.1 LLMs as Guessing Machines and Agent Reliability Issues


[01:25:02 ] 12.2 ARC-2 Human Testing and Correlation with g-Factor


[01:26:16 ] 12.3 Closing Remarks and Future Directions




SHOWNOTES PDF:


https://www.dropbox.com/scl/fi/ujaai0ewpdnsosc5mc30k/CholletNeurips.pdf?rlkey=s68dp432vefpj2z0dp5wmzqz6&st=hazphyx5&dl=0

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Francois Chollet - ARC reflections - NeurIPS 2024

Francois Chollet - ARC reflections - NeurIPS 2024

Machine Learning Street Talk (MLST)