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Sparse-BitNet: 1.58-bit LLMs are Naturally Friendly to Semi-Structured Sparsity

Public report from Microsoft with 2 connected researchers in the LLMpeople atlas.

MicrosoftUndated2 researchers
Field
Unspecified
Organization
Microsoft
arXiv
2603.05168v1

Canonical link

https://arxiv.org/abs/2603.05168v1

Connected researchers

Song, Ting portrait
Researcher 2 reports

Song, Ting

Microsoft

Ting Song is listed as an author of the BitNet b1.58 2B4T Technical Report; the report states that T. Song is with Microsoft Research.

Microsoft
Xia, Yan portrait
Researcher 2 reports

Xia, Yan

Microsoft

Co-author of the BitNet b1.58 2B4T Technical Report; the report states Yan Xia is with Microsoft Research.

Microsoft

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