dx.doi.org/10.5281/zenodo.13866
Preview meta tags from the dx.doi.org website.
Linked Hostnames
15- 18 links todx.doi.org
- 10 links toabout.zenodo.org
- 3 links tohelp.zenodo.org
- 2 links todevelopers.zenodo.org
- 2 links togithub.com
- 2 links tozenodo.org
- 1 link toblog.zenodo.org
- 1 link tocommission.europa.eu
Search Engine Appearance
glueviz v0.4: multidimensional data exploration
Glue is a Python library to explore relationships within and among related datasets. Its main features include: Linked Statistical Graphics. With Glue, users can create scatter plots, histograms and images (2D and 3D) of their data. Glue is focused on the brushing and linking paradigm, where selections in any graph propagate to all others. Flexible linking across data. Glue uses the logical links that exist between different data sets to overlay visualizations of different data, and to propagate selections across data sets. These links are specified by the user, and are arbitrarily flexible. Full scripting capability. Glue is written in Python, and built on top of its standard scientific libraries (i.e., Numpy, Matplotlib, Scipy). Users can easily integrate their own python code for data input, cleaning, and analysis.
Bing
glueviz v0.4: multidimensional data exploration
Glue is a Python library to explore relationships within and among related datasets. Its main features include: Linked Statistical Graphics. With Glue, users can create scatter plots, histograms and images (2D and 3D) of their data. Glue is focused on the brushing and linking paradigm, where selections in any graph propagate to all others. Flexible linking across data. Glue uses the logical links that exist between different data sets to overlay visualizations of different data, and to propagate selections across data sets. These links are specified by the user, and are arbitrarily flexible. Full scripting capability. Glue is written in Python, and built on top of its standard scientific libraries (i.e., Numpy, Matplotlib, Scipy). Users can easily integrate their own python code for data input, cleaning, and analysis.
DuckDuckGo
glueviz v0.4: multidimensional data exploration
Glue is a Python library to explore relationships within and among related datasets. Its main features include: Linked Statistical Graphics. With Glue, users can create scatter plots, histograms and images (2D and 3D) of their data. Glue is focused on the brushing and linking paradigm, where selections in any graph propagate to all others. Flexible linking across data. Glue uses the logical links that exist between different data sets to overlay visualizations of different data, and to propagate selections across data sets. These links are specified by the user, and are arbitrarily flexible. Full scripting capability. Glue is written in Python, and built on top of its standard scientific libraries (i.e., Numpy, Matplotlib, Scipy). Users can easily integrate their own python code for data input, cleaning, and analysis.
General Meta Tags
19- titleglueviz v0.4: multidimensional data exploration
- charsetutf-8
- X-UA-CompatibleIE=edge
- viewportwidth=device-width, initial-scale=1
- google-site-verification5fPGCLllnWrvFxH9QWI0l1TadV7byeEvfPcyK2VkS_s
Open Graph Meta Tags
4- og:titleglueviz v0.4: multidimensional data exploration
- og:descriptionGlue is a Python library to explore relationships within and among related datasets. Its main features include: Linked Statistical Graphics. With Glue, users can create scatter plots, histograms and images (2D and 3D) of their data. Glue is focused on the brushing and linking paradigm, where selections in any graph propagate to all others. Flexible linking across data. Glue uses the logical links that exist between different data sets to overlay visualizations of different data, and to propagate selections across data sets. These links are specified by the user, and are arbitrarily flexible. Full scripting capability. Glue is written in Python, and built on top of its standard scientific libraries (i.e., Numpy, Matplotlib, Scipy). Users can easily integrate their own python code for data input, cleaning, and analysis.
- og:urlhttps://zenodo.org/records/13866
- og:site_nameZenodo
Twitter Meta Tags
4- twitter:cardsummary
- twitter:site@zenodo_org
- twitter:titleglueviz v0.4: multidimensional data exploration
- twitter:descriptionGlue is a Python library to explore relationships within and among related datasets. Its main features include: Linked Statistical Graphics. With Glue, users can create scatter plots, histograms and images (2D and 3D) of their data. Glue is focused on the brushing and linking paradigm, where selections in any graph propagate to all others. Flexible linking across data. Glue uses the logical links that exist between different data sets to overlay visualizations of different data, and to propagate selections across data sets. These links are specified by the user, and are arbitrarily flexible. Full scripting capability. Glue is written in Python, and built on top of its standard scientific libraries (i.e., Numpy, Matplotlib, Scipy). Users can easily integrate their own python code for data input, cleaning, and analysis.
Link Tags
9- alternatehttps://zenodo.org/records/13866/files/glueviz-0.4.0.tar.gz
- apple-touch-icon/static/apple-touch-icon-120.png
- apple-touch-icon/static/apple-touch-icon-152.png
- apple-touch-icon/static/apple-touch-icon-167.png
- apple-touch-icon/static/apple-touch-icon-180.png
Links
46- http://information-technology.web.cern.ch/about/computer-centre
- https://about.zenodo.org
- https://about.zenodo.org/contact
- https://about.zenodo.org/cookie-policy
- https://about.zenodo.org/infrastructure