Episode Details
Back to EpisodesSurfer-H Meets Holo1: Cost-Efficient Web Agent Powered by Open Weights
Description
🤗 Upvotes: 27 | cs.AI
Authors:
Mathieu Andreux, Breno Baldas Skuk, Hamza Benchekroun, Emilien BirĂ©, Antoine Bonnet, Riaz Bordie, Matthias Brunel, Pierre-Louis Cedoz, Antoine Chassang, MickaĂ«l Chen, Alexandra D. Constantinou, Antoine d'AndignĂ©, Hubert de La Jonquière, AurĂ©lien Delfosse, Ludovic Denoyer, Alexis Deprez, Augustin Derupti, Michael Eickenberg, MathĂŻs Federico, Charles Kantor, Xavier Koegler, Yann LabbĂ©, Matthew C. H. Lee, Erwan Le Jumeau de Kergaradec, Amir Mahla, Avshalom Manevich, Adrien Maret, Charles Masson, RafaĂ«l Maurin, Arturo Mena, Philippe Modard, Axel Moyal, Axel Nguyen Kerbel, Julien Revelle, Mats L. Richter, MarĂa Santos, Laurent Sifre, Maxime Theillard, Marc Thibault, Louis Thiry, LĂ©o Tronchon, Nicolas Usunier, Tony Wu
Title:
Surfer-H Meets Holo1: Cost-Efficient Web Agent Powered by Open Weights
Arxiv:
http://arxiv.org/abs/2506.02865v1
Abstract:
We present Surfer-H, a cost-efficient web agent that integrates Vision-Language Models (VLM) to perform user-defined tasks on the web. We pair it with Holo1, a new open-weight collection of VLMs specialized in web navigation and information extraction. Holo1 was trained on carefully curated data sources, including open-access web content, synthetic examples, and self-produced agentic data. Holo1 tops generalist User Interface (UI) benchmarks as well as our new web UI localization benchmark, WebClick. When powered by Holo1, Surfer-H achieves a 92.2% state-of-the-art performance on WebVoyager, striking a Pareto-optimal balance between accuracy and cost-efficiency. To accelerate research advancement in agentic systems, we are open-sourcing both our WebClick evaluation dataset and the Holo1 model weights.