Haoli Bai
2026
MTR-DuplexBench: Towards a Comprehensive Evaluation of Multi-Round Conversations for Full-Duplex Speech Language Models
Zhang He | Wenqian Cui | Haoning Xu | Xiao-Hui Li | Lei Zhu | Haoli Bai | Ma Shaohua | Irwin King
Findings of the Association for Computational Linguistics: ACL 2026
Zhang He | Wenqian Cui | Haoning Xu | Xiao-Hui Li | Lei Zhu | Haoli Bai | Ma Shaohua | Irwin King
Findings of the Association for Computational Linguistics: ACL 2026
Full-Duplex Speech Language Models (FD-SLMs) enable real-time, overlapping conversational interactions, offering a more dynamic user experience compared to traditional half-duplex models. However, existing benchmarks primarily focus on evaluating single-round interactions, neglecting the complexities of multi-round communication. Evaluating FD-SLMs in multi-round settings poses significant challenges, including blurred turn boundaries in communication and context inconsistency during model inference. Also, existing benchmarks often focus solely on evaluating conversational features, neglecting other critical aspects. To address these gaps, we introduce MTR-DuplexBench, a novel benchmark designed for a comprehensive multi-round evaluation of FD-SLMs. MTR-DuplexBench not only segments continuous full-duplex dialogues into discrete turns for turn-by-turn assessment but also incorporates various evaluation aspects, including conversational features, dialogue quality, instruction following, and safety. Experimental results reveal that current FD-SLMs face difficulties in maintaining consistent performance across multiple rounds and evaluation dimensions, highlighting the necessity and effectiveness of our benchmark.
Benchmarking Post-Training Quantization of Large Language Models under Microscaling Floating Point Formats
Manyi Zhang | Ji-Fu Li | Zhongao Sun | Haoli Bai | Hui-Ling Zhen | Zhenhua Dong | Xianzhi Yu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Manyi Zhang | Ji-Fu Li | Zhongao Sun | Haoli Bai | Hui-Ling Zhen | Zhenhua Dong | Xianzhi Yu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Microscaling Floating-Point (MXFP) has emerged as a promising low-precision format for large language models (LLMs). Despite various post-training quantization (PTQ) algorithms being proposed, they mostly focus on integer quantization, while their applicability and behavior under MXFP formats remain largely unexplored. To address this gap, this work conducts a systematic investigation of PTQ under MXFP formats, encompassing over 7 PTQ algorithms, 15 evaluation benchmarks, and 3 LLM families. The key findings include: 1) MXFP8 consistently achieves near-lossless performance, while MXFP4 introduces substantial accuracy degradation and remains challenging; 2) PTQ effectiveness under MXFP depends strongly on format compatibility, with some algorithmic paradigms being consistently more effective than others; 3) PTQ performance exhibits highly consistent trends across model families and modalities, in particular, quantization sensitivity is dominated by the language model rather than the vision encoder in multimodal LLMs; 4) The scaling factor of quantization is a critical error source in MXFP4, and a simple pre-scale optimization strategy can significantly mitigate its impact. Together, these results provide practical guidance on adapting existing PTQ methods to MXFP quantization.
2025
Faster and Better LLMs via Latency-Aware Test-Time Scaling
Zili Wang | Tianyu Zhang | Haoli Bai | Lu Hou | Xianzhi Yu | Wulong Liu | Shiming Xiang | Lei Zhu
Findings of the Association for Computational Linguistics: EMNLP 2025
Zili Wang | Tianyu Zhang | Haoli Bai | Lu Hou | Xianzhi Yu | Wulong Liu | Shiming Xiang | Lei Zhu
Findings of the Association for Computational Linguistics: EMNLP 2025
Test-Time Scaling (TTS) has proven effective in improving the performance of Large Language Models (LLMs) during inference. However, existing research has overlooked the efficiency of TTS from a latency-sensitive perspective. Through a latency-aware evaluation of representative TTS methods, we demonstrate that a compute-optimal TTS does not always result in the lowest latency in scenarios where latency is critical. To address this gap and achieve latency-optimal TTS, we propose two key approaches by optimizing the concurrency configurations: (1) branch-wise parallelism, which leverages multiple concurrent inference branches, and (2) sequence-wise parallelism, enabled by speculative decoding. By integrating these two approaches and allocating computational resources properly to each, our latency-optimal TTS enables a 32B model to reach 82.3% accuracy on MATH-500 within 1 minute and a smaller 3B model to achieve 72.4% within 10 seconds. Our work emphasizes the importance of latency-aware TTS and demonstrates its ability to deliver both speed and accuracy in latency-sensitive scenarios.
Efficient Inference for Large Language Models –Algorithm, Model, and System
Xuefei Ning | Guohao Dai | Haoli Bai | Lu Hou | Yu Wang | Qun Liu
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing: Tutorial Abstracts
Xuefei Ning | Guohao Dai | Haoli Bai | Lu Hou | Yu Wang | Qun Liu
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing: Tutorial Abstracts
The inference of LLMs incurs high computational costs, memory access overhead, and memory usage, leading to inefficiencies in terms of latency, throughput, power consumption, and storage. To this end, this tutorial focuses on the increasingly important topic of Efficient Inference for LLMs and aims to provide a systematic understanding of key facts and methodologies from a designer’s perspective. We start by introducing the basic concepts of modern LLMs, software and hardware. Following this, we define the efficiency optimization problem. To equip the audience with a designer’s mindset, we briefly explain how to diagnose efficiency bottlenecks for a given workload on specific hardware. After introducing the basics, we will introduce our full-stack taxonomy of efficient inference methods for LLMs. We will walk through each category of methodology, using one to three representative methods as examples for each leaf subcategory, elaborating on the design logic behind each method and which inefficiency factors they primarily address. Finally, we will wrap up with a takeaway summary, and future research directions. The tutorial website is https://haolibai.github.io/emnlp-2025-tutorial-efficiency/.
2024
IntactKV: Improving Large Language Model Quantization by Keeping Pivot Tokens Intact
Ruikang Liu | Haoli Bai | Haokun Lin | Yuening Li | Han Gao | Zhengzhuo Xu | Lu Hou | Jun Yao | Chun Yuan
Findings of the Association for Computational Linguistics: ACL 2024
Ruikang Liu | Haoli Bai | Haokun Lin | Yuening Li | Han Gao | Zhengzhuo Xu | Lu Hou | Jun Yao | Chun Yuan
Findings of the Association for Computational Linguistics: ACL 2024
Large language models (LLMs) excel in natural language processing but demand intensive computation. To mitigate this, various quantization methods have been explored, yet they compromise LLM performance. This paper unveils a previously overlooked type of outliers in LLMs. Such outliers are found to allocate most of the attention scores on initial tokens of input, termed as pivot tokens, which are crucial to the performance of quantized LLMs. Given that, we propose IntactKV to generate the KV cache of pivot tokens losslessly from the full-precision model. The approach is simple and easy to combine with existing quantization solutions with no extra inference overhead. Besides, IntactKV can be calibrated as additional LLM parameters to boost the quantized LLMs further with minimal training costs. Mathematical analysis also proves that IntactKV effectively reduces the upper bound of quantization error. Empirical results show that IntactKV brings consistent improvement over various quantization methods across different LLMs and downstream tasks, leading to the new state-of-the-art for LLM quantization. The codes are available at https://github.com/ruikangliu/IntactKV.
Visually Guided Generative Text-Layout Pre-training for Document Intelligence
Zhiming Mao | Haoli Bai | Lu Hou | Lifeng Shang | Xin Jiang | Qun Liu | Kam-Fai Wong
Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)
Zhiming Mao | Haoli Bai | Lu Hou | Lifeng Shang | Xin Jiang | Qun Liu | Kam-Fai Wong
Proceedings of the 2024 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)
Prior study shows that pre-training techniques can boost the performance of visual document understanding (VDU), which typically requires models to gain abilities to perceive and reason both document texts and layouts (e.g., locations of texts and table-cells). To this end, we propose visually guided generative text-layout pre-training, named ViTLP. Given a document image, the model optimizes hierarchical language and layout modeling objectives to generate the interleaved text and layout sequence. In addition, to address the limitation of processing long documents by Transformers, we introduce a straightforward yet effective multi-segment generative pre-training scheme, facilitating ViTLP to process word-intensive documents of any length. ViTLP can function as a native OCR model to localize and recognize texts of document images. Besides, ViTLP can be effectively applied to various downstream VDU tasks. Extensive experiments show that ViTLP achieves competitive performance over existing baselines on benchmark VDU tasks, including information extraction, document classification, and document question answering.
2023
Wukong-Reader: Multi-modal Pre-training for Fine-grained Visual Document Understanding
Haoli Bai | Zhiguang Liu | Xiaojun Meng | Li Wentao | Shuang Liu | Yifeng Luo | Nian Xie | Rongfu Zheng | Liangwei Wang | Lu Hou | Jiansheng Wei | Xin Jiang | Qun Liu
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Haoli Bai | Zhiguang Liu | Xiaojun Meng | Li Wentao | Shuang Liu | Yifeng Luo | Nian Xie | Rongfu Zheng | Liangwei Wang | Lu Hou | Jiansheng Wei | Xin Jiang | Qun Liu
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Unsupervised pre-training on millions of digital-born or scanned documents has shown promising advances in visual document understanding (VDU). While various vision-language pre-training objectives are studied in existing solutions, the document textline, as an intrinsic granularity in VDU, has seldom been explored so far. A document textline usually contains words that are spatially and semantically correlated, which can be easily obtained from OCR engines. In this paper, we propose Wukong-Reader, trained with new pre-training objectives to leverage the structural knowledge nested in document textlines. We introduce textline-region contrastive learning to achieve fine-grained alignment between the visual regions and texts of document textlines. Furthermore, masked region modeling and textline-grid matching are also designed to enhance the visual and layout representations of textlines. Experiments show that Wukong-Reader brings superior performance on various VDU tasks in both English and Chinese. The fine-grained alignment over textlines also empowers Wukong-Reader with promising localization ability.
Structured Pruning for Efficient Generative Pre-trained Language Models
Chaofan Tao | Lu Hou | Haoli Bai | Jiansheng Wei | Xin Jiang | Qun Liu | Ping Luo | Ngai Wong
Findings of the Association for Computational Linguistics: ACL 2023
Chaofan Tao | Lu Hou | Haoli Bai | Jiansheng Wei | Xin Jiang | Qun Liu | Ping Luo | Ngai Wong
Findings of the Association for Computational Linguistics: ACL 2023
The increasing sizes of large generative Pre-trained Language Models (PLMs) hinder their deploymentin real-world applications. To obtain efficient PLMs, previous studies mostly focus on pruning the attention heads and feed-forward networks (FFNs) of the Transformer. Nevertheless, we find that in generative PLMs, the hidden dimension shared by many other modules (e.g., embedding layer and layer normalization) contains persistent outliers regardless of the network input. This study comprehensively investigates the structured pruning of generative PLMs with all the above compressible components. To identify redundant network structures, we assign learnable masks over compressible components followed by sparse training. Various sizes of PLMs can be flexibly extracted via different thresholds, and are then task-specifically fine-tuned for further improvement. Extensive experiments on language modeling, summarization and machine translation validate the effectiveness of the proposed method. For example, the pruned BART brings 1.51x/6.96x inference speedup on GPU/CPU with 67% size reduction, and can be further combined with quantization for more than 25× compression.
2021
BinaryBERT: Pushing the Limit of BERT Quantization
Haoli Bai | Wei Zhang | Lu Hou | Lifeng Shang | Jin Jin | Xin Jiang | Qun Liu | Michael Lyu | Irwin King
Proceedings of the 59th Annual Meeting of the Association for Computational Linguistics and the 11th International Joint Conference on Natural Language Processing (Volume 1: Long Papers)
Haoli Bai | Wei Zhang | Lu Hou | Lifeng Shang | Jin Jin | Xin Jiang | Qun Liu | Michael Lyu | Irwin King
Proceedings of the 59th Annual Meeting of the Association for Computational Linguistics and the 11th International Joint Conference on Natural Language Processing (Volume 1: Long Papers)
The rapid development of large pre-trained language models has greatly increased the demand for model compression techniques, among which quantization is a popular solution. In this paper, we propose BinaryBERT, which pushes BERT quantization to the limit by weight binarization. We find that a binary BERT is hard to be trained directly than a ternary counterpart due to its complex and irregular loss landscape. Therefore, we propose ternary weight splitting, which initializes BinaryBERT by equivalently splitting from a half-sized ternary network. The binary model thus inherits the good performance of the ternary one, and can be further enhanced by fine-tuning the new architecture after splitting. Empirical results show that our BinaryBERT has only a slight performance drop compared with the full-precision model while being 24x smaller, achieving the state-of-the-art compression results on the GLUE and SQuAD benchmarks. Code will be released.
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- Lu Hou 7
- Qun Liu 5
- Xin Jiang 4
- Irwin King 2
- Lifeng Shang 2
- Jiansheng Wei 2
- Xianzhi Yu 2
- Lei Zhu 2
- Wenqian Cui 1
- Guohao Dai 1
- Zhenhua Dong 1
- Han Gao 1
- Zhang He 1
- Jin Jin 1
- Yuening Li 1
- Xiao-Hui Li 1
- Ji-Fu Li 1
- Haokun Lin 1
- Ruikang Liu 1
- Zhiguang Liu 1
- Shuang Liu 1
- Wulong Liu 1
- Yifeng Luo 1
- Ping Luo 1
- Michael R. Lyu 1
- Zhiming Mao 1
- Xiaojun Meng 1
- Xuefei Ning 1
- Ma Shaohua 1
- Zhongao Sun 1
- Chaofan Tao 1
- Liangwei Wang 1
- Zili Wang 1
- Yu Wang 1
- Li Wentao 1
- Kam-Fai Wong 1
- Ngai Wong 1
- Shiming Xiang 1
- Nian Xie 1
- Zhengzhuo Xu 1
- Haoning Xu 1
- Jun Yao 1
- Chun Yuan 1
- Wei Zhang 1
- Tianyu Zhang 1
- Manyi Zhang 1
- Hui-Ling Zhen 1
- Rongfu Zheng 1