I have a panel dataset of countries with several indicators for each year-country observation. For simplicity, I am only reporting two indicators here: GHG and Air emissions
rs = np.random.RandomState(4) pos = rs.randint(-1, 2, (4, 5)).cumsum(axis=1) pos -= pos[:, 0, np.newaxis] pos2 = rs.randint(-4, 3, (4, 5)).cumsum(axis=1) pos2 -= pos[:, 0, np.newaxis] year = np.tile(range(5), 4) walk = np.repeat(range(4), 5) df = pd.DataFrame(np.c_[pos.flat, pos2.flat, year, walk], columns=["Air emissions", 'GHG', "year", "Country ID"])
I want to develop a visualization that shows the trend for each indicator in each country year. Each indicator is shown in a row, while countries are my columns. So far, this is what I have done for one indicator - Air Emission - but I would like to also show GHG trend (and the other indicators not reported here) and add them as row below Air emission: how?
sns.set(style="ticks") # Initialize a grid of plots with an Axes for each walk grid = sns.FacetGrid(df, col="Country ID", hue="year", palette="tab20c", col_wrap=4, height=3) # Draw a line plot to show the trajectory of each random walk grid.map(plt.plot, "year", "Air emissions", marker="o") # Adjust the arrangement of the plots grid.fig.tight_layout(w_pad=1)
how can I do it? Looping? But wouldn't that overwrite the graphs?