ArXiv TLDR

WebGen-R1: Incentivizing Large Language Models to Generate Functional and Aesthetic Websites with Reinforcement Learning

🐦 Tweet
2604.20398

Juyong Jiang, Chenglin Cai, Chansung Park, Jiasi Shen, Sunghun Kim + 2 more

cs.CLcs.LGcs.SE

TLDR

WebGen-R1 uses reinforcement learning to enable small LLMs to generate functional, aesthetic, multi-page websites, outperforming larger models.

Key contributions

  • Introduces WebGen-R1, an end-to-end RL framework for project-level website generation.
  • Proposes scaffold-driven structured generation to manage the action space and architectural integrity.
  • Designs a novel cascaded multimodal reward for structural, functional, and aesthetic evaluation.
  • Enables a 7B model to generate deployable, aesthetic multi-page websites, outperforming 72B models.

Why it matters

Generating complex, aesthetic multi-page websites with LLMs is challenging due to reward design and open-ended action space. This paper provides a novel RL framework that addresses these issues, allowing smaller models to achieve state-of-the-art performance.

Original Abstract

While Large Language Models (LLMs) excel at function-level code generation, project-level tasks such as generating functional and visually aesthetic multi-page websites remain highly challenging. Existing works are often limited to single-page static websites, while agentic frameworks typically rely on multi-turn execution with proprietary models, leading to substantial token costs, high latency, and brittle integration. Training a small LLM end-to-end with reinforcement learning (RL) is a promising alternative, yet it faces a critical bottleneck in designing reliable and computationally feasible rewards for website generation. Unlike single-file coding tasks that can be verified by unit tests, website generation requires evaluating inherently subjective aesthetics, cross-page interactions, and functional correctness. To this end, we propose WebGen-R1, an end-to-end RL framework tailored for project-level website generation. We first introduce a scaffold-driven structured generation paradigm that constrains the large open-ended action space and preserves architectural integrity. We then design a novel cascaded multimodal reward that seamlessly couples structural guarantees with execution-grounded functional feedback and vision-based aesthetic supervision. Extensive experiments demonstrate that our WebGen-R1 substantially transforms a 7B base model from generating nearly nonfunctional websites into producing deployable, aesthetically aligned multi-page websites. Remarkably, our WebGen-R1 not only consistently outperforms heavily scaled open-source models (up to 72B), but also rivals the state-of-the-art DeepSeek-R1 (671B) in functional success, while substantially exceeding it in valid rendering and aesthetic alignment. These results position WebGen-R1 as a viable path for scaling small open models from function-level code generation to project-level web application generation.

📬 Weekly AI Paper Digest

Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.