机器学习的声明式系统方法

G. Babu, Ch. Phaneendra Varma, P. K. Sree, G. Sai Chaitanya Kumar
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引用次数: 0

摘要

在过去的20年里,人工智能(AI) (ML)自然地从一个研究项目发展成为一种创新,现在几乎应用于计算的每个元素。今天,基于机器学习的组件已经融入到我们现代生活的方方面面,从建议看什么到预测我们的研究目标,再到在风险和购买情况下帮助低端参与者。此外,随着机器学习在内在科学领域的不断发展,现在很明显,机器学习可以用来解决人类目前面临的一些最具挑战性的现实问题。由于这些原因,机器学习已经发展成为技术业务方法的基础,并且比以往任何时候都受到学术界的关注。大多数创建和使用机器学习模型的工程师现在通常都有高等学位,并在大型组织工作,但ML框架的涌入可能会为更多的用户打开大门,甚至可能是那些没有编程经验的用户。类似的差事也在进行。这些新的机器学习框架将为客户提供一个更动态的连接点,这不是一个请求,而是更容易被识别,而不是期望他们完全理解模型如何创建和用于预测的每一个细微差别(一个巨大的转移障碍)。清晰的交互点是实现这一目标的理想选择,因为它们隐藏了复杂性,促进了利益分化,从而提高了效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Declarative Systematic Approach to Machine Learning
In the last 20 years, artificial intelligence (AI) (ML) has naturally evolved from a research project to an innovation that is now used in almost every element of computing. Today, ML-based components are integrated into every aspect of our modern life, from making suggestions about what to look at to predicting our research aim to assisting low- end participants in risky and purchasing situations. Additionally, as machine learning continues to advance in the intrinsic sciences, it is now clear that ML may be utilised to solve some of the most challenging real-world issues currently facing humanity. For these reasons, ML has evolved into the foundation of technological businesses' methodologies and has received more attention from the academic community than ever before. The majority of engineers who create and use machine learning models now often have advanced degrees and work for large organisations, but the incoming flood of ML frameworks could open the door to many more users—possibly even those with little programming experience—playing. similar errands are run. These new ML frameworks will give clients a more dynamic connection point that isn't both a request and instead more recognised, rather than expecting them to completely understand every nuance of how models are created and utilised for forecasting (a huge barrier to transfer). The clear points of interaction are ideal for achieving this goal because they hide complexity and promote interest differentiation, which leads to increased efficiency.
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