DBAIOct 14, 2020

Data Readiness Report

arXiv:2010.07213v234 citations
Originality Synthesis-oriented
AI Analysis

This addresses data governance and management challenges for AI practitioners, though it is incremental as it builds on existing documentation frameworks like Datasheets and Model Cards.

The paper tackles the problem of arbitrary and non-reusable data cleaning and readiness assessment in AI pipelines by introducing a Data Readiness Report, which documents data quality insights, transformations, and lineage to enhance transparency and productivity.

Data exploration and quality analysis is an important yet tedious process in the AI pipeline. Current practices of data cleaning and data readiness assessment for machine learning tasks are mostly conducted in an arbitrary manner which limits their reuse and results in loss of productivity. We introduce the concept of a Data Readiness Report as an accompanying documentation to a dataset that allows data consumers to get detailed insights into the quality of input data. Data characteristics and challenges on various quality dimensions are identified and documented keeping in mind the principles of transparency and explainability. The Data Readiness Report also serves as a record of all data assessment operations including applied transformations. This provides a detailed lineage for the purpose of data governance and management. In effect, the report captures and documents the actions taken by various personas in a data readiness and assessment workflow. Overtime this becomes a repository of best practices and can potentially drive a recommendation system for building automated data readiness workflows on the lines of AutoML [8]. We anticipate that together with the Datasheets [9], Dataset Nutrition Label [11], FactSheets [1] and Model Cards [15], the Data Readiness Report makes significant progress towards Data and AI lifecycle documentation.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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