A. Bednar, James Bokeh and HoloViews for labeling Machine Learning data in Python <div>A variety of special-purpose tools like https://github.com/tzutalin/labelImg are available for annotating/tagging/labeling data for machine-learning pipelines. </div><div>If those work well for your project, great! But what if you need something more customized to your particular workflow? Do you have to build a new tool from scratch? Not if you use Python, where you can now easily build custom apps based on Bokeh.org's drawing tools to collect user input. This talk goes through example Python code in a Jupyter notebook available from https://examples.pyviz.org/ml_annotators/ml_annotators.html . These examples show how to build custom labeling apps using the high-level holoviews.org/geoviews.org interfaces that can make full-featured custom tools in just a few lines of Python code, fitting naturally into your Python-based data-processing pipelines.</div><div><br></div><div>This presentation was given at the Earth Science Information Partners (ESIP) Winter Meeting held in Bethesda, MD in January 2020.<br></div> labeling data;visualization;Python;machine learning;ESIP Winter 2020;Neural, Evolutionary and Fuzzy Computation;Open Software;Web Technologies (excl. Web Search);Library and Information Studies not elsewhere classified;Knowledge Representation and Machine Learning 2020-01-30
    https://esip.figshare.com/articles/presentation/Bokeh_and_HoloViews_for_labeling_Machine_Learning_data_in_Python/11591739
10.6084/m9.figshare.11591739.v1