Qwen3-4B-A2D-untrained-dllm-convert
This repository contains the Qwen3-4B model converted to the A2D architecture (bidirectional attention), as presented in the paper Data-Efficient Autoregressive-to-Diffusion Language Models via On-Policy Distillation.
This specific artifact serves as an untrained student initialization for the On-Policy Distillation (OPD) process to transform an autoregressive model into a diffusion language model.
- Project Page: https://opdlm.vercel.app/
- GitHub Repository: https://github.com/divelab/OPDLM
- Base model: Qwen/Qwen3-4B
Model Details
- Architecture: A2D-Qwen3 (non-causal attention, same weights as original)
- Parameters: 4.02B
- Vocab size: 151936
- Model type:
a2d-qwen3
This model has the original Qwen3-4B weights with bidirectional (non-causal) attention. It was converted using the dllm convert pipeline. No diffusion pretraining or SFT has been applied.
Mask token registration: The mask token <|MASK|> (ID 151669) is registered in the tokenizer for use with diffusion-based language modeling. The original Qwen3 tokenizer includes <|MASK|> in special_tokens_map.json but does not register it in tokenizer_config.json, so tokenizer.mask_token_id returns None. We fixed this by adding <|MASK|> to the added_tokens_decoder section and the mask_token field in tokenizer_config.json, and adding the full mask_token entry in special_tokens_map.json. After this fix, tokenizer.mask_token_id correctly returns 151669.
Citation
@misc{su2026opdlm,
title={Data-Efficient Autoregressive-to-Diffusion Language Models via On-Policy Distillation},
author={Xingyu Su and Jacob Helwig and Shubham Parashar and Atharv Chagi and Lakshmi Jotsna and Degui Zhi and James Caverlee and Dileep Kalathil and Shuiwang Ji},
year={2026},
eprint={2606.06712},
archivePrefix={arXiv},
primaryClass={cs.CL},
url={https://arxiv.org/abs/2606.06712},
}
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