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Statistical Software for Data Analysis and Clinical Trials01:12

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Statgraphics is a comprehensive statistical software suite designed for both basic and advanced data analysis. Originating in 1980 at Princeton University under Dr. Neil W. Polhemus, it was one of the pioneering tools for statistical computing on personal computers, with its public release in 1982 marking an early milestone in data science software. Over the years, it has evolved into a robust platform for data science, offering tools for regression analysis, ANOVA, multivariate statistics,...
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对数据科学家的AI支持:对工作流程和替代代码建议的经验研究.

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此摘要是机器生成的。

人工智能编码助理可以帮助数据科学任务,但提供替代方案并没有改善建议. 指定数据科学步骤提示对用户来说显著提高了AI助理的实用性.

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人工智能支持 人工智能支持提供替代性建议.编码助手的编码助手计算笔记本电脑笔记本电脑笔记本数据科学工作流程数据科学工作流程快递工程是指快递的工程.用户界面的用户界面.

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科学领域:

  • 计算机科学 计算机科学
  • 数据科学数据科学数据科学
  • 人与计算机的交互

背景情况:

  • 人工智能编码助理很受欢迎,但它们在数据科学任务中的实用性尚未得到充分研究.
  • 探索替代分析路径对于强大的数据科学结论至关重要.
  • 人工智能助手在促进数据科学路径探索方面的作用尚不清楚.

研究的目的:

  • 调查人工智能编码助理如何影响数据科学家的工作流.
  • 确定AI助理是否可以支持对替代数据科学路径的探索.
  • 评估AI代码建议的接受度和有用度,包括替代方案.

主要方法:

  • 进行了一项混合方法研究,数据科学家使用人工智能编码助手.
  • 量化分析评估了人工智能建议 (包括替代方案) 的接受度和有用度.
  • 收集了有关用户交互和挑战的定性见解.

主要成果:

  • 包括数据科学步骤在内,促使建议的接受度大大提高.
  • 替代性建议的存在没有显著影响接受度或帮助度.
  • 描述性和预测性任务之间的建议接受度和有用度有显著差异.

结论:

  • 人工智能助理可以支持数据科学任务,即时工程是关键.
  • 当前的人工智能助理可能无法有效地促进各种分析路径的探索.
  • 用户对人工智能在数据科学方面的帮助的看法通常是积极的.