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Autori principali: Yoo, Sangmin, Malla, Srikanth, Choi, Chiho, Lu, Wei D., Choi, Joon Hee
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.03700
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author Yoo, Sangmin
Malla, Srikanth
Choi, Chiho
Lu, Wei D.
Choi, Joon Hee
author_facet Yoo, Sangmin
Malla, Srikanth
Choi, Chiho
Lu, Wei D.
Choi, Joon Hee
contents The inference of large language models imposes significant computational workloads, often requiring the processing of billions of parameters. Although early-exit strategies have proven effective in reducing computational demands by halting inference earlier, they apply either to only the first token in the generation phase or at the prompt level in the prefill phase. Thus, the Key-Value (KV) cache for skipped layers remains a bottleneck for subsequent token generation, limiting the benefits of early exit. We introduce ADEPT (Adaptive Dynamic Early-exit Process for Transformers), a novel approach designed to overcome this issue and enable dynamic early exit in both the prefill and generation phases. The proposed adaptive token-level early-exit mechanism adjusts computation dynamically based on token complexity, optimizing efficiency without compromising performance. ADEPT further enhances KV generation procedure by decoupling sequential dependencies in skipped layers, making token-level early exit more practical. Experimental results demonstrate that ADEPT improves efficiency by up to 25% in language generation tasks and achieves a 4x speed-up in downstream classification tasks, with up to a 45% improvement in performance.
format Preprint
id arxiv_https___arxiv_org_abs_2601_03700
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle ADEPT: Adaptive Dynamic Early-Exit Process for Transformers
Yoo, Sangmin
Malla, Srikanth
Choi, Chiho
Lu, Wei D.
Choi, Joon Hee
Computation and Language
Artificial Intelligence
The inference of large language models imposes significant computational workloads, often requiring the processing of billions of parameters. Although early-exit strategies have proven effective in reducing computational demands by halting inference earlier, they apply either to only the first token in the generation phase or at the prompt level in the prefill phase. Thus, the Key-Value (KV) cache for skipped layers remains a bottleneck for subsequent token generation, limiting the benefits of early exit. We introduce ADEPT (Adaptive Dynamic Early-exit Process for Transformers), a novel approach designed to overcome this issue and enable dynamic early exit in both the prefill and generation phases. The proposed adaptive token-level early-exit mechanism adjusts computation dynamically based on token complexity, optimizing efficiency without compromising performance. ADEPT further enhances KV generation procedure by decoupling sequential dependencies in skipped layers, making token-level early exit more practical. Experimental results demonstrate that ADEPT improves efficiency by up to 25% in language generation tasks and achieves a 4x speed-up in downstream classification tasks, with up to a 45% improvement in performance.
title ADEPT: Adaptive Dynamic Early-Exit Process for Transformers
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2601.03700