Production-Grade AI Coding System for Client-Side Development
- URL: http://arxiv.org/abs/2603.01460v1
- Date: Mon, 02 Mar 2026 05:17:55 GMT
- Title: Production-Grade AI Coding System for Client-Side Development
- Authors: Ruihan Wang, Chencheng Guo, Guangjing Wang,
- Abstract summary: This paper presents a production-grade AI coding system designed for client-side development under realistic industrial constraints.<n>The system adopts a structured, multi-stage pipeline that integrates Figma designs, natural-language PRDs, and domain-specific engineering knowledge into explicit intermediate artifacts.
- Score: 3.002720345105488
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Deploying large language model-based code generation in real-world client-side development remains challenging due to heterogeneous inputs, strict engineering constraints, and complex interaction logic expressed in product requirement documents (PRDs). Existing design-to-code approaches often focus on visual translation or single-shot generation, and struggle to reliably align generated code with production requirements. This paper presents a production-grade AI coding system designed for client-side development under realistic industrial constraints. The system adopts a structured, multi-stage pipeline that integrates Figma designs, natural-language PRDs, and domain-specific engineering knowledge into explicit intermediate artifacts, enabling controlled planning and incremental code generation. By grounding PRD understanding in concrete UI components, the system improves alignment between product requirements and implementation. We evaluate the system on proprietary but realistic datasets derived from production client-side projects. Results show that domain-specific adaptation significantly improves PRD understanding accuracy, while end-to-end evaluations demonstrate high UI fidelity and robust implementation of interaction logic in real-world cases. These findings suggest that structured, artifact-centric pipelines provide a practical foundation for production-grade AI coding systems.
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