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💬 프롬프트 라이브러리 📖 AI 용어 사전 🔗 유용한 링크

AI 용어집

인공지능 완전 사전

162
카테고리
2,032
하위 카테고리
23,060
용어
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Task-agnostic Training

Training approach where models learn general representations without optimizing for specific tasks. This method promotes flexibility and transfer capabilities to new applications.

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Cross-domain Transfer

Ability of a model to apply knowledge acquired in one domain to tasks in a completely different domain. This transferability is crucial for the success of zero-shot learning.

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Foundation Models

Large-scale models pre-trained on massive and diverse data, serving as a foundation for multiple downstream applications. These models form the backbone of modern zero-shot learning.

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Self-consistency

Inference method that generates multiple reasonings for the same problem and selects the most frequent answer. This approach improves the reliability of zero-shot responses by exploiting redundancy.

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Model Capacity

Measure of the complexity and number of parameters a model can effectively use to store knowledge. Sufficient capacity is required for the emergence of zero-shot capabilities.

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Task Adaptation

Process by which a pre-trained model dynamically adjusts to a new specific task during inference. This adaptation without retraining is at the heart of zero-shot learning.

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Generalization Gap

Performance difference between tasks seen during training and completely new tasks. Reducing this gap is the fundamental objective of zero-shot learning.

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Zero-shot Prompting

Technique consisting of providing a model with only a task description without any examples to guide its response. This method directly tests the model's generalization capabilities.

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