EvoDev: An Iterative Feature-Driven Framework for End-to-End Software Development with LLM-based Agents
📰 ArXiv cs.AI
Learn how to apply EvoDev, a feature-driven framework for end-to-end software development using LLM-based agents, to improve iterative development processes
Action Steps
- Apply EvoDev to existing software development projects to identify areas for improvement
- Configure LLM-based agents to automate repetitive tasks and enhance development efficiency
- Test EvoDev's iterative feature-driven approach to refine development workflows
- Integrate EvoDev with existing agile methodologies to enhance flexibility and adaptability
- Evaluate the effectiveness of EvoDev in reducing development time and improving product quality
Who Needs to Know This
Software engineers, DevOps teams, and product managers can benefit from EvoDev to streamline their development workflows and improve collaboration
Key Insight
💡 EvoDev's iterative approach can help streamline software development by automating repetitive tasks and enhancing collaboration
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🚀 Improve software development with EvoDev, an iterative feature-driven framework using LLM-based agents! 💻
Full Article
Title: EvoDev: An Iterative Feature-Driven Framework for End-to-End Software Development with LLM-based Agents
Abstract:
arXiv:2511.02399v2 Announce Type: replace-cross Abstract: Recent advances in large language model agents offer the promise of automating end-to-end software development from natural language requirements. However, existing approaches largely adopt linear, waterfall-style pipelines, which oversimplify the iterative nature of real-world development and struggle with complex, large-scale projects. To address these limitations, we propose EvoDev, an iterative software development framework inspired
Abstract:
arXiv:2511.02399v2 Announce Type: replace-cross Abstract: Recent advances in large language model agents offer the promise of automating end-to-end software development from natural language requirements. However, existing approaches largely adopt linear, waterfall-style pipelines, which oversimplify the iterative nature of real-world development and struggle with complex, large-scale projects. To address these limitations, we propose EvoDev, an iterative software development framework inspired
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