Worth keeping because it connects an early RWKV byline to a much more visible later research program in agentic AI, biomedical discovery, and code-focused evaluation, which makes the page far more useful than a one-paper ghost profile.
Researcher Profile
Editor reviewedMatteo Grella
RWKV and efficient sequence modeling
Head of the global artificial intelligence team at Crisis24
Worth keeping because he is one of the original RWKV coauthors who clearly did not stop there: his public work moves into production AI for crisis intelligence, security-aware infrastructure tooling, and later open-LLM experimentation.
Organizations
About This Page
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Last reviewed
March 18, 2026
Official And External Links
Known For
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01
Original RWKV authorship
02
Applied AI leadership at Crisis24
03
Security-aware infrastructure and later open-LLM work
04
RWKV and efficient sequence modeling
05
RWKV: Reinventing RNNs for the Transformer Era
06
RWKV (project)
Start Here
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Signature Works
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Supporting Sources
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Related Researchers
People worth exploring next because they share topics, labs, or source material with this profile.
Worth tracking if you care about alternatives to the standard transformer playbook, especially the line of work trying to keep strong language-model performance while making inference and memory use much cheaper.
A distinctive page because his work bridges open-sequence-model experimentation with applied machine learning for molecules, proteins, and structural biology, and he shows up on multiple RWKV-family papers including the hybrid GoldFinch branch rather than only the first release.
A strong open-model and data-centric page because his work sits close to the infrastructure that made OLMo and Dolma useful to the broader research community rather than just another benchmark-driven model release.
Co-authored RWKV: Reinventing RNNs for the Transformer Era.
Useful because it turns an otherwise thin RWKV byline into a real systems profile: after the original paper, his public work tracks toward large-scale pretraining infrastructure, pipeline parallelism, and systems support for frontier-scale models.