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    /> Gemma 4 und Qwen 3.6 haben bewiesen, dass die Trainingsmethoden für dichte Modelle ausgereift sind. MoEs sind großartig für die Geschwindigkeit, aber DeepSeek Flash &amp; Qwen3.5 397B zeigen genau, wie ungenau sie in Wirklichkeit sind. Dicht  MoE</p>
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