Home/Researchers/Jiaming Kong

Researcher Profile

Editor reviewed

Jiaming Kong

RWKV and efficient sequence modeling

Researcher and builder working across automatic speech recognition, efficient language models, and RWKV

A useful profile because his public trail is not just one RWKV coauthorship: it links the original RWKV paper to low-resource ASR work at TalTech and to ongoing hands-on RWKV experimentation in public model hubs.

Organizations

Databaker TechnologyTallinn University of Technology

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.

Known For

The ideas, systems, and research directions that make this person worth knowing.

01

Original RWKV authorship

02

Low-resource ASR and dialect adaptation

03

RWKV experimentation in public model hubs

04

RWKV and efficient sequence modeling

05

RWKV: Reinventing RNNs for the Transformer Era

06

RWKV (project)

Start Here

Canonical papers, project pages, or repositories that anchor this profile.

Related Researchers

People worth exploring next because they share topics, labs, or source material with this profile.

Shared canonical source

Eric Alcaide

RWKV and efficient sequence modeling

5 sources

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.

Start HereEric Alcaide

Shared canonical source

Alon Albalak

RWKV and efficient sequence modeling

5 sources

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.

Start HereAlon Albalak

Shared canonical source

Huanqi Cao

RWKV and efficient sequence modeling

4 sources

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.