Karishma Mandyam
2026
AdvancedIF: Rubric-Based Benchmarking and Reinforcement Learning for Advancing LLM Instruction Following
Yun He | Wenzhe Li | Hejia Zhang | Songlin Li | Karishma Mandyam | Sopan Khosla | Yuanhao Xiong | Nanshu Wang | Xiaoliang Peng | Beibin Li | Shengjie Bi | Shishir G Patil | Qi Qi | Shengyu Feng | Julian Katz-Samuels | Richard Yuanzhe Pang | Sujan Kumar Gonugondla | Hunter Lang | Yue Yu | Yundi Qian | Maryam Fazel-Zarandi | Licheng Yu | Amine Benhalloum | Hany Hassan Awadalla | Manaal Faruqui
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yun He | Wenzhe Li | Hejia Zhang | Songlin Li | Karishma Mandyam | Sopan Khosla | Yuanhao Xiong | Nanshu Wang | Xiaoliang Peng | Beibin Li | Shengjie Bi | Shishir G Patil | Qi Qi | Shengyu Feng | Julian Katz-Samuels | Richard Yuanzhe Pang | Sujan Kumar Gonugondla | Hunter Lang | Yue Yu | Yundi Qian | Maryam Fazel-Zarandi | Licheng Yu | Amine Benhalloum | Hany Hassan Awadalla | Manaal Faruqui
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Recent progress in large language models (LLMs) has led to impressive performance on a range of tasks, yet advanced instruction following (IF)—especially for complex, multi-turn, and system-prompted instructions—remains a significant challenge. Rigorous evaluation and effective training for such capabilities are hindered by the lack of high-quality, human-annotated benchmarks and reliable, interpretable reward signals. In this work, we introduce AdvancedIF, a comprehensive benchmark featuring over 1,600 prompts and expert-curated rubrics that assess LLMs’ ability to follow complex, multi-turn, and system-level instructions. We also open-source the evaluation script of AdvancedIF. We further propose RIFL (Rubric-based Instruction-Following Learning), a novel post-training pipeline that leverages rubric generation, a finetuned rubric verifier, and reward shaping to enable effective reinforcement learning for instruction following. Extensive experiments demonstrate that RIFL substantially improves the instruction-following abilities of LLMs, achieving a 6.7% absolute gain on AdvancedIF and strong results on public benchmarks. Our ablation studies confirm the effectiveness of each component in RIFL. This work establishes rubrics as a powerful tool for both training and evaluating advanced IF in LLMs, paving the way for more capable and reliable AI systems.
2022
Time Waits for No One! Analysis and Challenges of Temporal Misalignment
Kelvin Luu | Daniel Khashabi | Suchin Gururangan | Karishma Mandyam | Noah A. Smith
Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies
Kelvin Luu | Daniel Khashabi | Suchin Gururangan | Karishma Mandyam | Noah A. Smith
Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies
When an NLP model is trained on text data from one time period and tested or deployed on data from another, the resulting temporal misalignment can degrade end-task performance. In this work, we establish a suite of eight diverse tasks across different domains (social media, science papers, news, and reviews) and periods of time (spanning five years or more) to quantify the effects of temporal misalignment. Our study is focused on the ubiquitous setting where a pretrained model is optionally adapted through continued domain-specific pretraining, followed by task-specific finetuning. We establish a suite of tasks across multiple domains to study temporal misalignment in modern NLP systems. We find stronger effects of temporal misalignment on task performance than have been previously reported. We also find that, while temporal adaptation through continued pretraining can help, these gains are small compared to task-specific finetuning on data from the target time period. Our findings motivate continued research to improve temporal robustness of NLP models.
2019
Span-based Hierarchical Semantic Parsing for Task-Oriented Dialog
Panupong Pasupat | Sonal Gupta | Karishma Mandyam | Rushin Shah | Mike Lewis | Luke Zettlemoyer
Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing and the 9th International Joint Conference on Natural Language Processing (EMNLP-IJCNLP)
Panupong Pasupat | Sonal Gupta | Karishma Mandyam | Rushin Shah | Mike Lewis | Luke Zettlemoyer
Proceedings of the 2019 Conference on Empirical Methods in Natural Language Processing and the 9th International Joint Conference on Natural Language Processing (EMNLP-IJCNLP)
We propose a semantic parser for parsing compositional utterances into Task Oriented Parse (TOP), a tree representation that has intents and slots as labels of nesting tree nodes. Our parser is span-based: it scores labels of the tree nodes covering each token span independently, but then decodes a valid tree globally. In contrast to previous sequence decoding approaches and other span-based parsers, we (1) improve the training speed by removing the need to run the decoder at training time; and (2) introduce edge scores, which model relations between parent and child labels, to mitigate the independence assumption between node labels and improve accuracy. Our best parser outperforms previous methods on the TOP dataset of mixed-domain task-oriented utterances in both accuracy and training speed.
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Co-authors
- Amine Benhalloum 1
- Shengjie Bi 1
- Manaal Faruqui 1
- Maryam Fazel-Zarandi 1
- Shengyu Feng 1
- Sujan Kumar Gonugondla 1
- Sonal Gupta 1
- Suchin Gururangan 1
- Hany Hassan Awadalla 1
- Yun He 1
- Julian Katz-Samuels 1
- Daniel Khashabi 1
- Sopan Khosla 1
- Hunter Lang 1
- Mike Lewis 1
- Beibin Li 1
- Songlin Li 1
- Wenzhe Li 1
- Kelvin Luu 1
- Richard Yuanzhe Pang 1
- Panupong Pasupat 1
- Shishir G Patil 1
- Xiaoliang Peng 1
- Qi Qi 1
- Yundi Qian 1
- Rushin Shah 1
- Noah A. Smith 1
- Nanshu Wang 1
- Yuanhao Xiong 1
- Licheng Yu 1
- Yue Yu 1
- Luke Zettlemoyer 1
- Hejia Zhang 1