NVIDIA Nemotron Parse 1.1
Chumachenko, Kateryna, Deshmukh, Amala Sanjay, Seppanen, Jarno, Karmanov, Ilia, Chen, Chia-Chih, Voegtle, Lukas, Fischer, Philipp, Wawrzos, Marek, Motiian, Saeid, Ageev, Roman, Wu, Kedi, Milesi, Alexandre, Moosaei, Maryam, Pawelec, Krzysztof, Subramanian, Padmavathy, Samadi, Mehrzad, Yu, Xin, Dear, Celina, Stoddard, Sarah, Diamond, Jenna, Oliver, Jesse, Chraghchian, Leanna, Skelly, Patrick, Balough, Tom, Xu, Yao, Scowcroft, Jane Polak, Korzekwa, Daniel, Hanley, Darragh, Bhaskar, Sandip, Roman, Timo, Sapra, Karan, Tao, Andrew, Catanzaro, Bryan
–arXiv.org Artificial Intelligence
We introduce Nemotron-Parse-1.1, a lightweight document parsing and OCR model that advances the capabilities of its predecessor, Nemoretriever-Parse-1.0. Nemotron-Parse-1.1 delivers improved capabilities across general OCR, markdown formatting, structured table parsing, and text extraction from pictures, charts, and diagrams. It also supports a longer output sequence length for visually dense documents. As with its predecessor, it extracts bounding boxes of text segments, as well as corresponding semantic classes. Nemotron-Parse-1.1 follows an encoder-decoder architecture with 885M parameters, including a compact 256M-parameter language decoder. It achieves competitive accuracy on public benchmarks making it a strong lightweight OCR solution. We release the model weights publicly on Huggingface, as well as an optimized NIM container, along with a subset of the training data as part of the broader Nemotron-VLM-v2 dataset. Additionally, we release Nemotron-Parse-1.1-TC which operates on a reduced vision token length, offering a 20% speed improvement with minimal quality degradation.
arXiv.org Artificial Intelligence
Nov-26-2025