hvPlot provides one API to explore data of many different types. Previous sections have exclusively worked with tabular data stored in pandas (or pandas-like) DataFrames. The other most common type of data are n-dimensional arrays. hvPlot aims to eventually support different array libraries but for now focuses on [xarray](https://xarray.pydata.org/en/stable/). XArray provides a convenient and very powerful wrapper to label the axis and coordinates of multi-dimensional (n-D) arrays. This user guide will cover how to leverage ``xarray`` and ``hvplot`` to visualize and explore data of different dimensionality ranging from simple 1D data, to 2D image-like data, to multi-dimensional cubes of data. For these examples we’ll use the North American air temperature dataset: ```python import xarray as xr import hvplot.xarray # noqa air_ds = xr.tutorial.open_dataset('air_temperature').load() air = air_ds.air air_ds ``` ## 1D Plots Selecting the data at a particular lat/lon coordinate we get a 1D dataset of air temperatures over time: ```python air1d = air.sel(lat=40, lon=285) air1d.hvplot() ``` Notice how the axes are already appropriately labeled, because xarray stores the metadata required. We can also further subselect the data and use `*` to overlay plots: ```python air1d_sel = air1d.sel(time='2013-01') air1d_sel.hvplot(color='purple') * air1d_sel.hvplot.scatter(marker='o', color='blue', size=15) ``` ```python air.lat ``` ### Selecting multiple If we select multiple coordinates along one axis and plot a chart type, the data will automatically be split by the coordinate: ```python air.sel(lat=[20, 40, 60], lon=285).hvplot.line() ``` To plot a different relationship we can explicitly request to display the latitude along the y-axis and use the ``by`` keyword to color each longitude (or 'lon') differently (note that this differs from the ``hue`` keyword xarray uses): ```python air.sel(time='2013-02-01 00:00', lon=[280, 285]).hvplot.line(y='lat', by='lon', legend='top_right') ``` ## 2D Plots By default the ``DataArray.hvplot()`` method generates an image if the data is two-dimensional. ```python air2d = air.sel(time='2013-06-01 12:00') air2d.hvplot(width=400) ``` Alternatively we can also plot the same data using the ``contour`` and ``contourf`` methods, which provide a ``levels`` argument to control the number of iso-contours to draw: ```python air2d.hvplot.contour(width=400, levels=20) + air2d.hvplot.contourf(width=400, levels=8) ``` ## n-D Plots If the data has more than two dimensions it will default to a histogram without providing it further hints: ```python air.hvplot() ``` However we can tell it to apply a ``groupby`` along a particular dimension, allowing us to explore the data as images along that dimension with a slider: ```python air.hvplot(groupby='time', width=500) ``` By default, for numeric types you'll get a slider and for non-numeric types you'll get a selector. Use ``widget_type`` and ``widget_location`` to control the look of the widget. To learn more about customizing widget behavior see [Widgets](Widgets.ipynb). ```python air.hvplot(groupby='time', width=600, widget_type='scrubber', widget_location='bottom') ``` If we pick a different, lower dimensional plot type (such as a 'line') it will automatically apply a groupby over the remaining dimensions: ```python air.hvplot.line(width=600) ``` ## Statistical plots Statistical plots such as histograms, kernel-density estimates, or violin and box-whisker plots aggregate the data across one or more of the coordinate dimensions. For instance, plotting a KDE provides a summary of all the air temperature values but we can, once again, use the ``by`` keyword to view each selected latitude (or 'lat') separately: ```python air.sel(lat=[25, 50, 75]).hvplot.kde('air', by='lat', alpha=0.5) ``` Using the ``by`` keyword we can break down the distribution of the air temperature across one or more variables: ```python air.hvplot.violin('air', by='lat', color='lat', cmap='Category20') ``` ## Rasterizing If you are plotting a large amount of data at once, you can consider using the hvPlot interface to [Datashader](https://datashader.org), which can be enabled simply by setting `rasterize=True`. Note that by declaring that the data should not be grouped by another coordinate variable, i.e. by setting `groupby=[]`, we can plot all the datapoints, showing us the spread of air temperatures in the dataset: ```python air.hvplot.scatter('time', groupby=[], rasterize=True) *\ air.mean(['lat', 'lon']).hvplot.line('time', color='indianred') ``` Here we also overlaid a non-datashaded line plot of the average temperature at each time. If you enable the appropriate hover tool, the overlaid data supports hovering and zooming even in a static export such as on a web server or in an email, while the raw-data plot has been aggregated spatially before it is sent to the browser, and thus it has only the fixed spatial binning available at that time. If you have a live Python process, the raw data will be aggregated each time you pan or zoom, letting you see the entire dataset regardless of size.