doi:10.1080/00043125.2018.1414537Additional informationAuthor informationChris GrodoskiChris Grodoski is Visual Art and Media Educator at Franklin Middle School, Wheaton, Illinois. E-mail: cgrodoski@gmail.comChris GrodoskiFranklin Middle SchoolArt Education...
Additional informationAuthor informationChris GrodoskiChris Grodoski is Visual Art and Media Educator at Franklin Middle School, Wheaton, Illinois. E-mail: cgrodoski@gmail.comdoi:10.1080/00043125.2018.1414537Chris GrodoskiArt Education
Lack of diversity in data collection has caused significant failures in machine learning (ML) applications. While ML developers perform post-collection interventions, these are time intensive and rarely comprehensive. Thus, new methods to track and manage data collection, iteration, and model training ...
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Visualization is an essential part of exploring, analyzing, and reporting data. Visualizations are used in all chapters in this monograph and in most scientific papers. Here we review some of the recurring concepts in visualizing genomic and biological data. We discuss scatterplots to investigate the...
Visualizing quantitative data; Graphics for continuous data; Visual displays of numerical dataDefinition Quantitative data are data that can be measured on a numerical scale. Examples of such data are length, height, volume, speed, temperature or cost. A quantitative variable can be transformed into...
Steven Drucker: Well, I – one thing that we’ve done in my group in particular is worked on a research project that was showing data in – we call it unit visualization, where you show every piece of data organized in different ways to show different conclusions. And that was great as...
This paper provides a multi-disciplinary overview of the research issues and achievements in the field of Big Data and its visualization techniques and tools. The main aim is to summarize challenges in visualization methods for existing Big Data, as well
Performing sophisticated data analysis no longer requires a research laboratory, just a cheap machine and some code. Complex data sets can be accessed, explored, and analyzed by the public in a way that simply was not possible in the past. The past 10 years have also brought about significant...
We found that all structures could be visualized in Cryo-ExM, demonstrating the wide range of epitope preservation of this method (Fig. 5a–d and Extended Data Fig. 9). In addition, we assessed whether cryofixation can solve two well-known artifacts of aldehydes fixations: the exclusion of ...