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  "notes": "The chart shows a positive correlation between model size and translation performance across varying levels of training data availability.",
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      "text": "MoE(2048,36L) - 600B, MoE(2048,12L) - 200B, MoE(512E,36L) - 150B, MoE(512E,12L) - 50B, MoE(128E,36L) - 37B, MoE(128E,12L) - 12.5B, T(96L) - 2.3B",
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