# Adding input variables to plot title/legend in Python

I would like to display the current value of a parameter used to plot a certain function in the plot title/legend/annotated text. As a simple example, let's take a straight line:

``````import numpy
import matplotlib.pyplot as plt

def line(m,c):
x = numpy.linspace(0,1)
y = m*x+c
plt.plot(x,y)
plt.text(0.1, 2.8, "The gradient is" *the current m-value should go here*)
plt.show()

print line(1.0, 2.0)
``````

In this case, I would like my text to say "The gradient is 1.0", but I'm not sure what the syntax is. Moreover, how would I include the second (and more) parameter(s) below, so that it reads:

The intercept is 2.0."

Use string formatting with the `.format()` method:

``````plt.text(0.1, 2.8, "The gradient is {}, the intercept is {}".format(m, c))
``````

Where `m` and `c` are the variables you want to substitute in.

You can directly write the variables like this in Python 3.6+ if you prefix the string with an `f` whcih denotes a formatted string literal:

``````f"the gradient is {m}, the intercept is {c}"
``````

In python 3.6+ you can do it by prefixing the string with `f`, and putting the variable in curly brackets. For earlier python version there have been various ways of doing it, look up string formatting

``````message = f"The slope is {m}"
plt.text(message)
``````

(by the way, gradient is usually called slope when referring to single variable linear equation)

The other answers didn't work for my code, but adaption of it did. Shown below:

Showing y = m*x + c printed on the plot in log format.

``````a1 = coefs[0] # variable 1
a2 = coefs[1] # variable 2

message = f"log(L/Lo) = {a1} * log(M/Mo) + {a2}"

# Define axes
left = 0.01
width = 0.9
bottom  = 0.01
height = 0.9
right = left + width
top = bottom + height
ax = plt.gca()

# Transform axes
ax.set_transform(ax.transAxes)

# Define text
ax.text(0.5 * (left + right), 0.5 * (bottom + top), message,
horizontalalignment='center',
verticalalignment='center',
size= 10,
color='r',
transform=ax.transAxes)

plt.show()
``````