The machine learning frameworks flourished in the last decades, allowing artificial intelligence to get out of academic circles to be applied to enterprise domains. This field has significantly advanced, but there is still some meaningful improvement to reach the subsequent expectations. The proposed framework, named AI$^{2}$, uses a natural language interface that allows a non-specialist to benefit from machine learning algorithms without necessarily knowing how to program with a programming language. The primary contribution of the AI$^{2}$ framework allows a user to call the machine learning algorithms in English, making its interface usage easier. The second contribution is greenhouse gas (GHG) awareness. It has some strategies to evaluate the GHG generated by the algorithm to be called and to propose alternatives to find a solution without executing the energy-intensive algorithm. Another contribution is a preprocessing module that helps to describe and to load data properly. Using an English text-based chatbot, this module guides the user to define every dataset so that it can be described, normalized, loaded and divided appropriately. The last contribution of this paper is about explainability. For decades, the scientific community has known that machine learning algorithms imply the famous black-box problem. Traditional machine learning methods convert an input into an output without being able to justify this result. The proposed framework explains the algorithm's process with the proper texts, graphics and tables. The results, declined in five cases, present usage applications from the user's English command to the explained output. Ultimately, the AI$^{2}$ framework represents the next leap toward native language-based, human-oriented concerns about machine learning framework.
翻译:机器学习框架在过去几十年中蓬勃发展, 允许人工智能从学术圈中流出, 应用于企业领域。 这个领域已经取得了显著的进步, 但仍有一些有意义的改进, 以达到随后的期望。 拟议的框架名为AI$2$2}$, 使用自然语言界面, 使非专家能够受益于机器学习算法, 而不一定知道如何用编程语言进行编程。 AI$2} 框架的主要贡献使用户能够用英语调用机器学习算法, 使其界面的使用更容易。 第二项贡献是温室气体意识。 它有一些战略来评估算法产生的温室气体, 并提议一些替代方法来找到解决办法, 而不执行能源密集型算法。 另一个贡献是一个预处理模块, 使非专家能够从机器学习算法中得益得益。 使用基于英文的聊天平台, 指导用户定义每个数据集, 可以描述、 正常化、 装载和分割。 本文的最后贡献是关于解释性的问题。 数十年来, 科学界已经知道机器的算法 意味着, 将数字算法转换为正版的逻辑框架。