The paper presents a vision and roadmap for achieving efficient and green Large Language Models (LLMs) for Software Engineering (LLM4SE). It begins by highlighting the significance of LLM4SE and the need for efficient and green solutions.
Efficient LLM4SE: The paper discusses the challenges of the computationally-intensive and time-consuming nature of training and operating LLMs, which often requires substantial computational resources and incurs high costs. This limits the accessibility of LLM4SE solutions to the broader software engineering community, including startups and individual developers. The paper emphasizes the need for efficient LLM4SE solutions to address these challenges.
Green LLM4SE: The paper also addresses the high energy consumption and carbon emissions associated with training and running LLMs, which contribute to climate change and environmental degradation. It underscores the importance of developing green LLM4SE solutions to mitigate these negative impacts.
Synergy between Efficient and Green LLM4SE: The paper suggests that efficient and green LLM4SE solutions are closely related, and achieving one can lead to the other. However, they are not identical, and the paper advocates for the synergy of efficient and green LLM4SE solutions to achieve the best of both worlds.
Vision for Efficient and Green LLM4SE: The paper outlines a vision for the future of efficient and green LLM4SE from the perspectives of industry, individual practitioners, and society. For industry, it envisions the development of low-cost and low-latency software engineering tools that are more accessible to companies of all sizes. For individual practitioners, it foresees the emergence of private, personalized, trusted, and collaborative software engineering assistants. For society, it highlights the potential of efficient and green LLM4SE to foster better environmental sustainability in the software industry.
Roadmap for Achieving Efficient and Green LLM4SE: The paper proposes a roadmap for future research, outlining specific research paths and potential solutions, including:
The paper aims to inspire the research community to contribute to the LLM4SE research journey, with the ultimate goal of establishing efficient and green LLM4SE as a central element in the future of software engineering.
翻译成其他语言
从原文生成
arxiv.org
更深入的查询