Intelligence in an Open World - with Mengye Ren (NYU)
We talk with Mengye Ren, Assistant Professor at NYU's Center for Data Science, about what intelligence actually means once you step outside a benchmark, and why scaling a single centralized model isn't the whole story.
We get into why intelligence has to be defined in open environments, not closed ones, and what that means for how we measure progress. We push on the creativity question: today's models sample bottom-up from a softmax or a Gaussian, with no internal loop of consideration, and as Mengye puts it, we haven't understood creativity yet and we're already prepared to hand it over.
We also talk about what's missing for the next paradigm: continual learning, memory, embodied grounding, and smaller models that actually accumulate experience instead of re-deriving everything from scratch each call. Along the way, we get into JEPA and latent variables, biology as inspiration vs. blueprint, why frontier labs don't lean on explicit latents, the limits of synthetic data and world models, agent-to-agent communication, model uncertainty and forecasting, and whether ML education still matters when AI writes the experiments.
A grounded, contrarian conversation about where AI research should be looking next, beyond benchmarks, beyond scale.
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TIMELINE
00:00 — Intro and welcome
01:24 — What is intelligence? Defining it relative to objectives and open environments
04:19 — Is intelligence really the path to human flourishing, or is it productivity?
04:57 — Safety, scalable oversight, and whether stronger models help or hurt
06:09 — What does "alignment" actually mean?
07:18 — Centralized vs. decentralized models: objectivity vs. personal meaning
08:50 — Hinton vs. LeCun: where Mengye stands on AI risk
10:29 — Bottom-up vs. top-down architectures and feedback loops
21:28 — Biology and AI: inspiration, not blueprint
24:14 — Biological plausibility, spiking nets, and where the analogy breaks
25:39 — JEPA, Mamba, and architectures beyond the transformer
27:31 — Language as a special modality: abstraction built for communication
29:04 — Are we too locked into the current paradigm? Risk of creativity collapse
30:09 — Synthetic data, simulation, and the brain's own generative models
31:43 — World models and physical AI: how babies actually learn 33:03 — The case for smaller, continually learning models
37:02 — The role of academic research in a frontier-lab world
39:47 — Why LLMs aren't funny: the creativity gap
40:35 — What research areas matter most: embodiment, continual learning, creativity
42:05 — Creativity is bounded by experience — and why bottom-up sampling isn't enough
45:35 — Agent-to-agent communication and the limits of sub-agents
46:39 — Model confidence, epistemic uncertainty, and forecasting
49:44 — Tokenization, static vs. dynamic worlds, and always-learning systems
52:20 — Latent variables, JEPA, and why frontier models skip them
53:40 — The future of ML education when AI writes the experiments
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Music:
* "Kid Kodi" - Blue Dot Sessions - via Free Music Archive - CC BY-NC 4.0.
* "Palms Down" - Blue Dot Sessions - via Free Music Archive - CC BY-NC 4.0.
* Changes: trimmed
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About: The Information Bottleneck is hosted by Ravid Shwartz-Ziv and Allen Roush, featuring in-depth conversations with leading AI researchers about the ideas shaping the future of machine learning.