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2.8m Gmail.txt Online
: Uses 22k data pairs focusing on textual accuracy (
The paper demonstrates that MSRL significantly outperforms pure SFT models by optimizing for both textual structure and visual fidelity, effectively surpassing the performance limit reached at 2.8M SFT samples [11, 25]. MSRL Stage Max Dataset Size 2.8 million samples [11, 22] 33k curated samples [11] GPU Requirement 16 H800 GPUs [11] 24 H800 GPUs [11] Training Goal Min. Negative Log-Likelihood [22] Hybrid Text-Visual Reward [11] Outcome Performance Plateaus [22] Breaks SFT Performance Limit [11] 2.8M GMAIL.txt
) to ensure the generated code matches the visual intent [11]. : Uses 22k data pairs focusing on textual
: Uses 11k pairs with a balance of textual and visual rewards ( 2.8M GMAIL.txt
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