Files

Abstract

In a science utopia, every research repository would be accompanied by a database of rich, searchable metadata that users can quickly and confidently query to discover, retrieve, and organize the many artifacts of research workflows. In practice, science is far from this utopia; repositories commonly decay into disorganized data swamps that overwhelm scientists and result in crucial research data being inaccessible to those who could use them. To dredge data swamps, I describe an automated metadata extraction system for science---Xtract---that crawls large repositories, dynamically constructs extraction workflows by intelligently mapping extractors to diverse file types, scalably executes these workflows on distributed research cyberinfrastructure, and publishes the derived metadata into a search index. I show via a user study that an Xtract-generated search index drastically increases the speed and confidence with which researchers navigate their science collections. Finally, I highlight the benefits of this approach by applying Xtract to real-world repositories collectively spanning over 6 million files and 1PB of data across materials science, climate science, battery modeling, and spectroscopy repositories.

Details

Actions

PDF

from
to
Export
Download Full History