DeepSeek V3.2: Efficiency Meets Innovation in ARC-AGI-1 Challenge
DeepSeek V3.2, with its novel pipeline approach, drastically improves ARC-AGI-1 task performance without fine-tuning, achieving a significant 67.25% pass rate.
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