RD2Bench:实现以数据为中心的自动研发

Haotian Chen, Xinjie Shen, Zeqi Ye, Xiao Yang, Xu Yang, Weiqing Liu, Jiang Bian
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摘要

人类的进步是由这些成功的发现和无数失败的实验共同推动的。研究人员往往通过阅读来寻找潜在的研究方向,然后通过实验来验证。这一过程给研究人员带来了沉重的负担。在过去十年中,数据驱动的黑盒深度学习方法在广泛的现实世界场景中展示了其有效性,这加重了研究人员的实验负担,从而使潜在的成功发现变得模糊不清。因此,亟需实现研发过程的自动化。在本文中,我们首次提出了一个以真实世界数据为中心的自动研发基准,即 RD2Bench,以此来实现这一目标。RD2Bench 将以数据为中心的自动研发(D-CARD)中的所有操作作为一个整体进行基准测试,以引导未来的工作直接朝着我们的目标前进。我们的重点是评估各种模型能力的相互作用和协同效应,并帮助选择性能良好、值得信赖的模型。尽管 RD2Bench 对最先进(SOTA)的大型语言模型(LLM)GPT-4 来说非常具有挑战性,但 LLM 具有为 D-CARD 带来更多重大发展的潜力:LLM 有潜力为 D-CARD 带来更大的发展:它们能够实现一些简单的方法,而无需采用任何额外的技术。我们呼吁在今后的工作中考虑开发解决自动研发问题的技术,从而为人类生产力的革命性提升带来机遇。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RD2Bench: Toward Data-Centric Automatic R&D
The progress of humanity is driven by those successful discoveries accompanied by countless failed experiments. Researchers often seek the potential research directions by reading and then verifying them through experiments. The process imposes a significant burden on researchers. In the past decade, the data-driven black-box deep learning method demonstrates its effectiveness in a wide range of real-world scenarios, which exacerbates the experimental burden of researchers and thus renders the potential successful discoveries veiled. Therefore, automating such a research and development (R&D) process is an urgent need. In this paper, we serve as the first effort to formalize the goal by proposing a Real-world Data-centric automatic R&D Benchmark, namely RD2Bench. RD2Bench benchmarks all the operations in data-centric automatic R&D (D-CARD) as a whole to navigate future work toward our goal directly. We focuses on evaluating the interaction and synergistic effects of various model capabilities and aiding to select the well-performed trustworthy models. Although RD2Bench is very challenging to the state-of-the-art (SOTA) large language model (LLM) named GPT-4, indicating ample research opportunities and more research efforts, LLMs possess promising potential to bring more significant development to D-CARD: They are able to implement some simple methods without adopting any additional techniques. We appeal to future work to take developing techniques for tackling automatic R&D into consideration, thus bringing the opportunities of the potential revolutionary upgrade to human productivity.
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