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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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Variable-Level Quantization

Approach using a variable number of bits to represent different parts of the model according to their importance or distribution.

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Quantile Quantization

Technique dividing the weight distribution into intervals containing an equal number of values for balanced representation.

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K-means Clustering Quantization

Method using the K-means algorithm to identify optimal cluster centers as quantization levels.

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Non-Uniform Quantization with Bias

Approach introducing controlled bias in the intervals to favor certain regions of the weight distribution.

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Logarithmic Quantization

Technique using a logarithmic scale for intervals, particularly effective for long-tail distributions.

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Probability Distribution Quantization

Method adapting quantization intervals according to the probability density of weights in each region.

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Hybrid Quantization

Combination of uniform and non-uniform techniques applied to different layers or parts of the neural model.

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Variable-Step Quantization

Approach where the quantization step size varies according to local weight density to minimize reconstruction error.

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Minimum Entropy Quantization

Optimization of quantization levels to minimize the entropy of the overall quantization error.

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KL Optimization Quantization

Method minimizing the Kullback-Leibler divergence between the original and quantized weight distributions.

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Post-Training Non-Uniform Quantization

Application of non-uniform quantization techniques on an already trained model without additional retraining.

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Distribution-Aware Quantization

Approach that analyzes and adapts quantization based on the specific shape of the model's weight distribution.

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Adaptive Histogram Quantization

Technique using an adaptive histogram to determine optimal quantization intervals according to local density.

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Backpropagation Quantization

Method optimizing quantization levels during training via gradient backpropagation.

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Vector Quantization Quantization

Technique grouping weights into vectors and applying non-uniform quantization at the vector level rather than scalar level.

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