Mach-Mind-4-Flash Technical Report
We present Mach-Mind-4-Flash, a 35B-parameter Mixture-of-Experts (MoE) agentic model with 3B activated parameters. Through post-training optimization alone without scaling pre-training compute, the model achieves performance on par with or surpassing that of 100B-parameter-class models. By introducing scalable agentic interaction environments for large-scale reinforcement learning, the model attains significant performance gains on real-world application tasks. Our pipeline comprises three stages: (1) a unified RL/OPD training infrastructure with dynamic multi-teacher scheduling and operator-l
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- LinkedLinked via arxiv author · 85%Foundation Model Team →
“Mach-Mind-4-Flash Technical Report”
- PossiblePossibly related (embedding) · 55%Infini-AI-Lab/astraflow →
- PossiblePossibly related (embedding) · 46%aurelio-labs/semantic-router →
