Sepp Hochreiter - LSTM: The Comeback Story?

12 Feb 2025 • 67 min • EN
67 min
00:00
01:07:01
No file found

Sepp Hochreiter, the inventor of LSTM (Long Short-Term Memory) networks – a foundational technology in AI. Sepp discusses his journey, the origins of LSTM, and why he believes his latest work, XLSTM, could be the next big thing in AI, particularly for applications like robotics and industrial simulation. He also shares his controversial perspective on Large Language Models (LLMs) and why reasoning is a critical missing piece in current AI systems. 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 AND BACKGROUND READING: https://www.dropbox.com/scl/fi/n1vzm79t3uuss8xyinxzo/SEPPH.pdf?rlkey=fp7gwaopjk17uyvgjxekxrh5v&dl=0 Prof. Sepp Hochreiter https://www.nx-ai.com/ https://x.com/hochreitersepp https://scholar.google.at/citations?user=tvUH3WMAAAAJ&hl=en TOC: 1. LLM Evolution and Reasoning Capabilities [00:00:00] 1.1 LLM Capabilities and Limitations Debate [00:03:16] 1.2 Program Generation and Reasoning in AI Systems [00:06:30] 1.3 Human vs AI Reasoning Comparison [00:09:59] 1.4 New Research Initiatives and Hybrid Approaches 2. LSTM Technical Architecture [00:13:18] 2.1 LSTM Development History and Technical Background [00:20:38] 2.2 LSTM vs RNN Architecture and Computational Complexity [00:25:10] 2.3 xLSTM Architecture and Flash Attention Comparison [00:30:51] 2.4 Evolution of Gating Mechanisms from Sigmoid to Exponential 3. Industrial Applications and Neuro-Symbolic AI [00:40:35] 3.1 Industrial Applications and Fixed Memory Advantages [00:42:31] 3.2 Neuro-Symbolic Integration and Pi AI Project [00:46:00] 3.3 Integration of Symbolic and Neural AI Approaches [00:51:29] 3.4 Evolution of AI Paradigms and System Thinking [00:54:55] 3.5 AI Reasoning and Human Intelligence Comparison [00:58:12] 3.6 NXAI Company and Industrial AI Applications REFS: [00:00:15] Seminal LSTM paper establishing Hochreiter's expertise (Hochreiter & Schmidhuber) https://direct.mit.edu/neco/article-abstract/9/8/1735/6109/Long-Short-Term-Memory [00:04:20] Kolmogorov complexity and program composition limitations (Kolmogorov) https://link.springer.com/article/10.1007/BF02478259 [00:07:10] Limitations of LLM mathematical reasoning and symbolic integration (Various Authors) https://www.arxiv.org/pdf/2502.03671 [00:09:05] AlphaGo’s Move 37 demonstrating creative AI (Google DeepMind) https://deepmind.google/research/breakthroughs/alphago/ [00:10:15] New AI research lab in Zurich for fundamental LLM research (Benjamin Crouzier) https://tufalabs.ai [00:19:40] Introduction of xLSTM with exponential gating (Beck, Hochreiter, et al.) https://arxiv.org/abs/2405.04517 [00:22:55] FlashAttention: fast & memory-efficient attention (Tri Dao et al.) https://arxiv.org/abs/2205.14135 [00:31:00] Historical use of sigmoid/tanh activation in 1990s (James A. McCaffrey) https://visualstudiomagazine.com/articles/2015/06/01/alternative-activation-functions.aspx [00:36:10] Mamba 2 state space model architecture (Albert Gu et al.) https://arxiv.org/abs/2312.00752 [00:46:00] Austria’s Pi AI project integrating symbolic & neural AI (Hochreiter et al.) https://www.jku.at/en/institute-of-machine-learning/research/projects/ [00:48:10] Neuro-symbolic integration challenges in language models (Diego Calanzone et al.) https://openreview.net/forum?id=7PGluppo4k [00:49:30] JKU Linz’s historical and neuro-symbolic research (Sepp Hochreiter) https://www.jku.at/en/news-events/news/detail/news/bilaterale-ki-projekt-unter-leitung-der-jku-erhaelt-fwf-cluster-of-excellence/ YT: https://www.youtube.com/watch?v=8u2pW2zZLCs <truncated, see show notes/YT>

From "Machine Learning Street Talk (MLST)"

Listen on your iPhone

Download our iOS app and listen to interviews anywhere. Enjoy all of the listener functions in one slick package. Why not give it a try?

App Store Logo
application screenshot

Popular categories