Professor Yoshua Bengio is a pioneer in deep learning and Turing Award winner. Bengio talks about AI safety, why goal-seeking “agentic” AIs might be dangerous, and his vision for building powerful AI tools without giving them agency. Topics include reward tampering risks, instrumental convergence, global AI governance, and how non-agent AIs could revolutionize science and medicine while reducing existential threats. Perfect for anyone curious about advanced AI risks and how to manage them responsibly.
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Interviewer: Tim Scarfe
Yoshua Bengio:
https://x.com/Yoshua_Bengio
https://scholar.google.com/citations?user=kukA0LcAAAAJ&hl=en
https://yoshuabengio.org/
https://en.wikipedia.org/wiki/Yoshua_Bengio
TOC:
1. AI Safety Fundamentals
[00:00:00] 1.1 AI Safety Risks and International Cooperation
[00:03:20] 1.2 Fundamental Principles vs Scaling in AI Development
[00:11:25] 1.3 System 1/2 Thinking and AI Reasoning Capabilities
[00:15:15] 1.4 Reward Tampering and AI Agency Risks
[00:25:17] 1.5 Alignment Challenges and Instrumental Convergence
2. AI Architecture and Safety Design
[00:33:10] 2.1 Instrumental Goals and AI Safety Fundamentals
[00:35:02] 2.2 Separating Intelligence from Goals in AI Systems
[00:40:40] 2.3 Non-Agent AI as Scientific Tools
[00:44:25] 2.4 Oracle AI Systems and Mathematical Safety Frameworks
3. Global Governance and Security
[00:49:50] 3.1 International AI Competition and Hardware Governance
[00:51:58] 3.2 Military and Security Implications of AI Development
[00:56:07] 3.3 Personal Evolution of AI Safety Perspectives
[01:00:25] 3.4 AI Development Scaling and Global Governance Challenges
[01:12:10] 3.5 AI Regulation and Corporate Oversight
4. Technical Innovations
[01:23:00] 4.1 Evolution of Neural Architectures: From RNNs to Transformers
[01:26:02] 4.2 GFlowNets and Symbolic Computation
[01:30:47] 4.3 Neural Dynamics and Consciousness
[01:34:38] 4.4 AI Creativity and Scientific Discovery
SHOWNOTES (Transcript, references, best clips etc):
https://www.dropbox.com/scl/fi/ajucigli8n90fbxv9h94x/BENGIO_SHOW.pdf?rlkey=38hi2m19sylnr8orb76b85wkw&dl=0
CORE REFS (full list in shownotes and pinned comment):
[00:00:15] Bengio et al.: "AI Risk" Statement
https://www.safe.ai/work/statement-on-ai-risk
[00:23:10] Bengio on reward tampering & AI safety (Harvard Data Science Review)
https://hdsr.mitpress.mit.edu/pub/w974bwb0
[00:40:45] Munk Debate on AI existential risk, featuring Bengio
https://munkdebates.com/debates/artificial-intelligence
[00:44:30] "Can a Bayesian Oracle Prevent Harm from an Agent?" (Bengio et al.) on oracle-to-agent safety
https://arxiv.org/abs/2408.05284
[00:51:20] Bengio (2024) memo on hardware-based AI governance verification
https://yoshuabengio.org/wp-content/uploads/2024/08/FlexHEG-Memo_August-2024.pdf
[00:56:15] 2018 Turing Award to Bengio, Hinton, LeCun for deep learning
https://awards.acm.org/about/2018-turing
[01:12:55] Bengio’s involvement in EU AI Act code of practice
https://digital-strategy.ec.europa.eu/en/news/meet-chairs-leading-development-first-general-purpose-ai-code-practice
[01:27:05] Complexity-based compositionality theory (Elmoznino, Jiralerspong, Bengio, Lajoie)
https://arxiv.org/abs/2410.14817
[01:29:00] GFlowNet Foundations (Bengio et al.) for probabilistic inference
https://arxiv.org/pdf/2111.09266
[01:32:10] Discrete attractor states in neural systems (Nam, Elmoznino, Bengio, Lajoie)
https://arxiv.org/pdf/2302.06403