All right guys, I am new here and I am not a native English speaker. I have some troubles in using Matplotlib colorbar, perhaps because of my language skills or its core concept.
suppose I have a matrix of data (shape, N*2). I want to make a scatter plot of this data and add a color scheme based on a column of label (N*1), in float. I know how to use colorbar and scalarmappable. Well something still haunting in my mind.
I am interested in some pivot values in this label column, and I want to present these value in some interesting position of the colorbar. For example, label value 0, I want to position it at 1/3 place or in the middle. Which the colorbar I choose could have a white or grey colour.
But if I have it right, colorbar only takes data array that mapped in [0, 1] from the original data in [min, max]. In this case, the pivot value that I am interested would be end up in somewhere random, unless I define my normalisation function very carefully. So suppose the white colour I prefer for my pivot value is in the middle of the colour bar, I have to defined the normalisation function which not only normalised my data, but also make the pivot value at the position of 0.5.
For my limited Matplotlib experience, this is the solution I know.
Ideally, suppose I have a column of float data, I could pick some pivot value, and give them some special position. and then I get them normalised and give to the colormap. The colorbar, however, I could set special colours for those special positions that I previous defined. and get a corresponding colorbar with the right tick locator and tick labels, that indicate my special pivot value.
I wonder is there any easy way (from the standard lib) that I could achieve these. Or I have to implement these features by coding myself. Or perhaps, Matplotlib could work in this way, just because my awful language skill couldn't understand their docs Or because my limited experience, no body actually ever want to do what I want to do, because I am a newbie and don't know what Kind of the feature I want to produce.