Visualization is critical for data analysis. It provides a first line of attack, revealing intricate structures in data that cannot be absorbed otherwise. We discover unimaginable effects and question those that have been imagined."
William S. Cleveland (de Visualizing Data, Hobart Press)
Over the years an enormous amount of public information has been generated and stored. This information, if viewed in a linear fashion, consists of a large number of disjointed numbers and facts that, out of context, lack any meaning. For this reason, visualization is presented as an easy solution towards understanding and interpreting information.
To obtain good visualizations, it is necessary to work with data that meets two characteristics:
- It has to be quality data. They need to be accurate, complete, reliable, current and relevant.
- They have to be well treated. That is, conveniently identified, correctly extracted, in a structured way, etc.
Therefore, it is important to properly process the information before its graphic treatment. The treatment of the data and its visualization form an attractive tandem for the user who demands, more and more, to be able to interpret data in an agile and fast way.
There are a large number of tools for this purpose. The report "Data processing and visualization tools" offers us a list of different tools that help us in data processing, from obtaining them to creating a visualization that allows us to interpret them in a simple way.
What can you find in the report?
The guide includes a collection of tools for:
- Web scraping
- Data debugging
- Data conversion
- Data analysis for programmers and non-programmers
- Generic visualization services, geospatial and libraries and APIs.
- Network analysis
All the tools present in the guide have a freely available version so that any user can access them.
New edition 2021: incorporation of new tools
The first version of this report was published in 2016. Five years later it has been updated. The news and changes made are:
- New currently popular data visualization and processing tools such as Talend Open Studio, Python, Kibana or Knime have been incorporated.
- Some outdated tools have been removed.
- The layout has been updated.
If you know of any additional tools, not currently included in the guide, we invite you to share the information in the comments.
In addition, we have prepared a series of posts where the different types of tools that can be found in the report are explained:
Muy buen compendio y muy resumido.
Creo que falta meter QGIS. Ya sea en el apartado de Herramientas de visualización geoespacial o Herramientas de análisis de datos.
Os animo a mantener el documento vivo porque me ha parecido muy útil.
Hola David. Gracias por tu comentario, nos alegra saber que te ha resultdo útil es siempre la intención del proyecto. Este informe es de 2021 y aunque todavía sigue vigente tienes razón en que deberíamos publicar un compendio actualizado. Lo sacaremos próximamente incluyendo QGIS. De nuevo, gracias por tu aporte. Un cordial saludo.
Lo primero que os quiero comentar es que mientras buscaba información para empezar a hacer visualizaciones de datos abiertos (a modo particular por mi curiosidad con los datos) he llegado a esta página.
He estado revisando el contenido, las distintas secciones de la web de datos.gob.es, Github, youtube, las visualizaciones, etc. y sólo puedo decir, que me ha encantado la iniciativa.
Muchas gracias por compartir los procesos de creación. En breve me instalaré Kibana para ir practicando con las visualizaciones que habéis realizado.
Hola Raúl!
Nos alegra mucho leer que te ha resultado interasante todo el contenido que compartimos desde datos.gob.es. La intención es que sea útil para la comunidad así que cualquier feedback constructivo es bienvenido. Muchas gracias. Un saludo!