An Alternative to Cells for Selective Execution of Data Science Pipelines

Lars Reimann, Günter Kniesel-Wünsche
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Abstract

Data Scientists often use notebooks to develop Data Science (DS) pipelines, particularly since they allow to selectively execute parts of the pipeline. However, notebooks for DS have many well-known flaws. We focus on the following ones in this paper: (1) Notebooks can become littered with code cells that are not part of the main DS pipeline but exist solely to make decisions (e.g. listing the columns of a tabular dataset). (2) While users are allowed to execute cells in any order, not every ordering is correct, because a cell can depend on declarations from other cells. (3) After making changes to a cell, this cell and all cells that depend on changed declarations must be rerun. (4) Changes to external values necessitate partial re-execution of the notebook. (5) Since cells are the smallest unit of execution, code that is unaffected by changes, can inadvertently be re-executed.To solve these issues, we propose to replace cells as the basis for the selective execution of DS pipelines. Instead, we suggest populating a context-menu for variables with actions fitting their type (like listing columns if the variable is a tabular dataset). These actions are executed based on a data-flow analysis to ensure dependencies between variables are respected and results are updated properly after changes. Our solution separates pipeline code from decision making code and automates dependency management, thus reducing clutter and the risk of making errors.
选择性执行数据科学管道的替代单元
数据科学家经常使用笔记本来开发数据科学(DS)管道,特别是因为它们允许有选择地执行管道的部分。然而,DS笔记本电脑有许多众所周知的缺陷。在本文中,我们主要关注以下几个方面:(1)笔记本可能会被不属于主要DS管道的代码单元弄得杂乱无章,这些代码单元仅用于做出决策(例如列出表格数据集的列)。(2)虽然允许用户以任何顺序执行单元格,但不是每个顺序都是正确的,因为一个单元格可以依赖于其他单元格的声明。(3)在对单元格进行更改后,必须重新运行此单元格和所有依赖于更改声明的单元格。(4)更改外部值需要部分重新执行笔记本。(5)由于单元格是最小的执行单元,不受更改影响的代码可能会无意中被重新执行。为了解决这些问题,我们建议替换细胞作为选择性执行DS管道的基础。相反,我们建议使用适合变量类型的操作填充变量的上下文菜单(例如,如果变量是表格数据集,则列出列)。这些操作是基于数据流分析执行的,以确保变量之间的依赖关系得到尊重,并在更改后正确更新结果。我们的解决方案将管道代码从决策代码中分离出来,并自动化依赖关系管理,从而减少了混乱和出错的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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