Challenge: Prompt compression is important for large language models to increase inference speed, reduce computation cost, and improve user experience.
Approach: They propose a method that compresses natural language contexts into a special token . they propose to reduce computations and memory costs by reducing the complexity .
Outcome: The proposed method reduces computations and memory costs by 27-90% . it retains 70-74% and 77-84% of the LLM capabilities at high compression ratios .

Similar Papers

Prompt Compression for Large Language Models: A Survey (2025.naacl-long)

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Challenge: Current methods for improving LLM efficiency focus on optimizing the model itself, while prompt-centric methods focus on lowering the complexity of input.
Approach: They propose to use prompt compression to optimize the compression encoder and combine hard and soft prompt methods to improve the efficiency of LLMs.
Outcome: The proposed methods are categorized into hard prompt methods and soft prompt methods.
LLMLingua: Compressing Prompts for Accelerated Inference of Large Language Models (2023.emnlp-main)

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Challenge: Large language models (LLMs) are increasingly lengthy and require longer prompts . this paper presents a coarse-to-fine prompt compression method to reduce cost and increase performance.
Approach: They propose a coarse-to-fine prompt compression method that maintains semantic integrity under high compression ratios and a token-level iterative compression algorithm to better model the interdependence between compressed contents.
Outcome: The proposed method yields state-of-the-art performance and allows for up to 20x compression with little performance loss over four datasets from different scenarios.
Style-Compress: An LLM-Based Prompt Compression Framework Considering Task-Specific Styles (2024.findings-emnlp)

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Challenge: Prompt compression reduces inference time and costs while maintaining informativeness for different usage scenarios.
Approach: They propose a framework that adapts a smaller language model to compress prompts for a larger model on a new task without additional training.
Outcome: The proposed framework outperforms two baseline models in four tasks . iteratively generates and selects effective compressed prompts as task-specific demonstrations .
LongLLMLingua: Accelerating and Enhancing LLMs in Long Context Scenarios via Prompt Compression (2024.acl-long)

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Challenge: Longer prompts introduce irrelevant and redundant information, which can weaken LLMs' performance.
Approach: They propose a prompt compression tool that improves LLMs' perception of key information in input prompts by up to 21.4% with around 4x fewer tokens in GPT-3.5-Turbo.
Outcome: The proposed solution improves performance and reduces costs and latency by up to 21.4% with around 4x fewer tokens in the NaturalQuestions benchmark.
Understanding and Improving Information Preservation in Prompt Compression for LLMs (2025.findings-emnlp)

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Challenge: Recent advances in large language models have enabled their successful application to a broad range of tasks.
Approach: They propose a framework that allows for in-depth analysis of prompt compression methods.
Outcome: The proposed framework analyzes state-of-the-art soft and hard compression methods . it shows that some fail to preserve key details from the original prompt, limiting performance on complex tasks.
PromptOptMe: Error-Aware Prompt Compression for LLM-based MT Evaluation Metrics (2025.naacl-long)

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Challenge: Recent efforts to improve the quality of machine-generated natural language content have been limited due to the large token usage required by complex evaluation prompts.
Approach: They propose a prompt optimization approach that uses a smaller, fine-tuned language model to compress input data for evaluation prompt, thus reducing token usage and computational cost when using larger LLMs for downstream evaluation.
Outcome: The proposed approach reduces token usage and costs by 2.37 compared with larger LLMs for downstream evaluation.
Learning to Compress Prompt in Natural Language Formats (2024.naacl-long)

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Challenge: Existing work rely on compressing long contexts into soft prompts, but soft prompt compression encounters limitations in transferability . natural language (NL) prompts are incompatible with back-propagation, and NL prompts lack flexibility in imposing length constraints.
Approach: They propose a framework that compresses long prompts into NL formatted Capsule Prompts.
Outcome: The proposed framework reduces 81.4% of the original length, decreases inference latency up to 4.5x, and saves 80.1% of budget overheads while providing transferability across diverse LLMs and different datasets.
Perception Compressor: A Training-Free Prompt Compression Framework in Long Context Scenarios (2025.findings-naacl)

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Challenge: Long prompts contain redundant information and are sensitive to the position of key information in long context scenarios.
Approach: They propose a training-free prompt compression framework that retains key information at token level while removing distracting tokens.
Outcome: The proposed framework outperforms existing methods on long context benchmarks.
LLMLingua-2: Data Distillation for Efficient and Faithful Task-Agnostic Prompt Compression (2024.findings-acl)

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Challenge: Existing approaches to compress prompts only leverage unidirectional context, causing suboptimal results.
Approach: They propose a task-agnostic prompt compression method that takes tokens from context . they use a Transformer encoder to capture all essential information needed for prompt compression .
Outcome: The proposed method is 3x-6x faster than existing prompt compression methods and faster than baselines.
Prompt Compression and Contrastive Conditioning for Controllability and Toxicity Reduction in Language Models (2022.findings-emnlp)

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Challenge: We explore the idea of compressing the prompts used to condition language models.
Approach: They explore the idea of compressing the prompts used to condition language models . they show that compressed prompts can retain a substantive amount of information about the original prompt .
Outcome: The proposed method can be extended to controllability and toxicity reduction.

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