Capability
Few Shot Learning And In Context Adaptation
20 artifacts provide this capability.
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via “few-shot learning and in-context adaptation”
text-generation model by undefined. 94,68,562 downloads.
Unique: Few-shot learning emerges from transformer attention mechanisms learning patterns from in-context examples without explicit meta-learning modules; enables rapid task adaptation by processing examples as part of input context, avoiding fine-tuning overhead
vs others: Faster task adaptation than fine-tuning-based approaches; comparable to GPT-3.5 on few-shot performance but with local control; outperforms Mistral-7B on instruction-following few-shot tasks due to explicit instruction tuning