MiniCPM-SALA
OpenBMBOpen WeightApache 2.0 · Commercial OK
描述
MiniCPM-SALA (Sparse Attention and Linear Attention) is a 9B hybrid model built from a MiniCPM-4.0 checkpoint via continual training (~2T tokens, 25% of training-from-scratch cost). It interleaves 25% InfLLM-V2 sparse attention and 75% Lightning Attention layers, achieving up to 3.5x inference speed over dense baselines at 256K tokens. With HyPE (Hybrid Positional Encoding) and NoPE in sparse layers, the model extrapolates to 2048K tokens despite a 520K training length, enabling 1M-token inference on consumer GPUs like the RTX 5090.
发布日期
2026-02-11
参数规模
9.5B
上下文长度
—
支持模态
—
能力雷达图
70
general
100
coding
80
reasoning
60
science估算
0
agents
0
multimodal
Science 在缺少专门科学评测时使用推理能力代理估算。
排行榜排名
暂无排名数据
基准测试分数 (LLM Stats)
Code
HumanEval
95.1%自报
Finance
MMLU-Pro
67.0%自报
General
MBPP
0.89 / 100自报
CMMLU
81.5%自报
IFEval
76.3%自报
LiveCodeBench v5
60.5%自报
LiveCodeBench v6
52.0%自报
MRCR 64K (2-needle)
29.8%自报
MRCR 128K (2-needle)
28.6%自报
MRCR 64K (4-needle)
20.6%自报
MRCR 128K (4-needle)
19.6%自报
MRCR 64K (8-needle)
16.6%自报
MRCR 128K (8-needle)
10.1%自报
Language
BBH
81.5%自报
Long Context
RULER 64k
92.7%自报
RULER 128k
89.4%自报
RULER 512K
87.1%自报
RULER 1000K
86.3%自报
RULER 2048K
81.6%自报
NoLiMa 32K
54.5%自报
NoLiMa 64K
43.0%自报
NoLiMa 128K
23.9%自报
Math
AIME 2024
83.8%自报
AIME 2025
78.3%自报
AA 评测指数
暂无 AA 评测数据
LLM Stats 分类评分
Code100
Structured Output80
Instruction Following80
Language80
Math80
Reasoning80
Finance70
General70
Healthcare70
Legal70
定价
暂无定价数据
速度
暂无速度数据
可用提供商
(LS 内部计价单位)暂无提供商数据