Getting the most out of limited resources allows advances in natural language processing (NLP) research and practice while being conservative with resources. Those resources may be data, time, storage, or energy. Recent work in NLP has yielded interesting results from scaling; however, using only scale to improve results means that resource consumption also scales. That relationship motivates research into efficient methods that require less resources to achieve similar results. This survey relates and synthesises methods and findings in those efficiencies in NLP, aiming to guide new researchers in the field and inspire the development of new methods.
翻译:由于资源有限,自然语言处理(NLP)的研究和实践能够取得进展,同时对资源持保守态度。这些资源可以是数据、时间、储存或能源。国家语言处理(NLP)的近期工作通过扩大规模取得了令人感兴趣的成果;然而,仅仅利用规模来改进成果意味着资源消耗的规模也在扩大。这种关系促使研究效率方法,而这种效率方法需要较少资源才能取得类似成果。这项调查涉及并综合了国家语言处理(NLP)中效率的方法和结果,目的是指导新的实地研究人员并激励开发新方法。