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LLM agents can code—but can they ask clarifying questions? šŸ¤–šŸ’¬ Tired of coding agents wasting time and API credits, only to output broken code? What if they asked first instead of guessing? šŸš€ (New work led by Sanidhya Vijay: www.linkedin.com/in/sanidhya-...)
Feb 19, 2025
We are now done with all classes for CMU CS11-711 Advanced NLP! Slides: phontron.com/class/anlp-f... Videos: youtube.com/playlist?lis... Hope this is useful to people šŸ˜€
Nov 27, 2024
šŸ’¬ Have you or a loved one compared LM probabilities to human linguistic acceptability judgments? You may be overcompensating for the effect of frequency and length! 🌟 In our new paper, we rethink how we should be controlling for these factors 🧵:
Where does one language model outperform the other? We examine this from first principles, performing unsupervised discovery of "abilities" that one model has and the other does not. Results show interesting differences between model classes, sizes and pre-/post-training.
Nov 20, 2024
Jun 9, 2025
The weekly event schedule.
phontron.com
Nice contribution to the understanding of Long CoT induction arxiv.org/abs/2502.03373 by Edward Yeo and colleagues (advised by @gneubig.bsky.social and @xiangyue96.bsky.social ). Its hard not to see this as mostly a negative result on induction on the 8B scale. šŸ‘‡
Schedule
1/ Introducing į“į“˜į“‡É“źœ±į“„Źœį“ŹŸį“€Ź€: a retrieval-augmented LM to help scientists synthesize knowledge šŸ“š @uwnlp.bsky.social & Ai2 With open models & 45M-paper datastores, it outperforms proprietary systems & match human experts. Try out our demo! openscholar.allen.ai
Feb 8, 2025
Nov 19, 2024
Video
Xuhui Zhou
Scaling inference compute enhances reasoning in large language models (LLMs), with long chains-of-thought (CoTs) enabling strategies like backtracking and error correction. Reinforcement learning (RL)...
arxiv.org
Demystifying Long Chain-of-Thought Reasoning in LLMs
Graham Neubig
Graham Neubig
Lindia Tjuatja
When it comes to text prediction, where does one LM outperform another? If you've ever worked on LM evals, you know this question is a lot more complex than it seems. In our new #acl2025 paper, we developed a method to find fine-grained differences between LMs: 🧵1/9
Ramon Astudillo
Akari Asai
Jun 9, 2025
Lindia Tjuatja