A valuable page in this cluster because his public role description is unusually specific: post-training, steerability, and AI-generated evaluation data are exactly the kinds of practical problems strong researcher pages should make discoverable.
Researcher Profile
Editor reviewedItay Dalmedigos
Hybrid Transformer–Mamba language models (Jamba)
NLP algorithms team lead for alignment at AI21 Labs
One of the better pages in this cluster because it connects AI21 alignment work to concrete retrieval and grounding research rather than leaving "alignment" as a vague label.
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Labs
About This Page
This profile is meant to help you get oriented quickly: why this researcher matters, what to read first, and where to explore next.
Last reviewed
March 18, 2026
Known For
The ideas, systems, and research directions that make this person worth knowing.
01
Alignment-focused NLP algorithms at AI21 Labs
02
Grounding and retrieval-augmented language models
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Connecting external knowledge use with safer language-model behavior
04
Hybrid Transformer–Mamba language models (Jamba)
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Jamba: A Hybrid Transformer-Mamba Language Model
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Jamba-1.5: Hybrid Transformer-Mamba Models at Scale
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One of the higher-signal people to know in the hybrid-LLM line because he sits at the point where AI21’s research architecture, long-context systems work, and real product deployment meet.
A distinctive page in this AI21 cluster because she brings a linguistics and human-evaluation angle to model work, especially around user interaction, multilingual language behavior, and how LLM performance gets tested in practice.
A worthwhile head-page upgrade because it gives one of the quieter Jamba contributors a concrete place in the stack: the pre- and post-training work that turns a hybrid architecture into an actual usable model.
Worth knowing because his work links earlier dense-retrieval research to later MRKL and Jamba systems, which makes his page a good bridge between classic NLP retrieval and newer hybrid LLM stacks.
A useful page because it points to the research-and-strategy side of AI21 rather than only the product or engineering side, especially where model evaluation and new architectural bets get shaped at the CTO-office level.