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Attention Co-Inventor: AI's Next Leap Isn't More Data
#AI #MachineLearning #DeepLearning
What’s going to be the next big step function that blasts us forward in AI capabilities? To find out, @JonKrohnLearns sits down with Professor Kyunghyun Cho, whose 200,000 citations and co-authorship of the first paper on attention place him among the most influential AI researchers in the world. In this episode, Kyunghyun explains why today’s models have already captured most correlations in passive data, making the real challenge about actively choosing which data to collect. He also weighs in on the open debate around world models, whether AI needs high-fidelity, step-by-step imagination or whether a high-level latent representation that lets it skip ahead is sufficient and shares the surprising discovery that 80% of his 200 computer science students had never installed a coding agent.
This episode is brought to you by:
• Cisco: https://agntcy.org/
• Acceldata: https://www.acceldata.io/free-trial
• ODSC, the Open Data Science Conference: https://odsc.ai/
Interested in sponsoring a SuperDataScience Podcast episode? Email natalie@superdatascience.com for sponsorship information.
In this episode you will learn:
• (00:00:00) Introduction
• (00:06:43) The story behind the attention mechanism
• (00:27:24) Sample efficiency and active data collection
• (00:41:00) World models and latent planning
• (00:51:00) Teaching undergrads with coding agents
• (00:59:58) Reranking, multi-stage ranking, and the foundations of RAG
Additional materials: https://www.superdatascience.com/977
Видео Attention Co-Inventor: AI's Next Leap Isn't More Data канала Super Data Science: ML & AI Podcast with Jon Krohn
What’s going to be the next big step function that blasts us forward in AI capabilities? To find out, @JonKrohnLearns sits down with Professor Kyunghyun Cho, whose 200,000 citations and co-authorship of the first paper on attention place him among the most influential AI researchers in the world. In this episode, Kyunghyun explains why today’s models have already captured most correlations in passive data, making the real challenge about actively choosing which data to collect. He also weighs in on the open debate around world models, whether AI needs high-fidelity, step-by-step imagination or whether a high-level latent representation that lets it skip ahead is sufficient and shares the surprising discovery that 80% of his 200 computer science students had never installed a coding agent.
This episode is brought to you by:
• Cisco: https://agntcy.org/
• Acceldata: https://www.acceldata.io/free-trial
• ODSC, the Open Data Science Conference: https://odsc.ai/
Interested in sponsoring a SuperDataScience Podcast episode? Email natalie@superdatascience.com for sponsorship information.
In this episode you will learn:
• (00:00:00) Introduction
• (00:06:43) The story behind the attention mechanism
• (00:27:24) Sample efficiency and active data collection
• (00:41:00) World models and latent planning
• (00:51:00) Teaching undergrads with coding agents
• (00:59:58) Reranking, multi-stage ranking, and the foundations of RAG
Additional materials: https://www.superdatascience.com/977
Видео Attention Co-Inventor: AI's Next Leap Isn't More Data канала Super Data Science: ML & AI Podcast with Jon Krohn
Kyunghyun Cho attention mechanism neural machine translation world models sample efficiency transformer architecture deep learning NLP natural language processing vanishing gradient RAG reranking coding agents vibe coding NYU Global AI Frontier Lab Yoshua Bengio Yann LeCun latent dynamics multimodal learning AI research machine learning large language models LLM ICML scaling laws active data collection AI education SuperDataScience Jon Krohn
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24 марта 2026 г. 16:01:40
01:16:51
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