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I have these data structures:

  X axis values:
 delta_Array = np.array([1000,2000,3000, 4000, 5000, 6000, 7000, 8000, 9000, 10000])

  Y Axis values
   error_matrix = 
 [[ 24.22468454  24.22570421  24.22589308  24.22595919  24.22598979
    24.22600641  24.22601644  24.22602294  24.2260274   24.22603059]
  [ 28.54275713  28.54503017  28.54545119  28.54559855  28.54566676
    28.54570381  28.54572615  28.54574065  28.5457506   28.54575771]]

How do I plot them as a line plot using matplotlib and python

This code I came up with renders a flat line as follows figure(3) i = 0

 for i in range(error_matrix.shape[0]):
  plot(delta_Array, error_matrix[i,:])


The problem here looks like is scaling of the axes. But im not sure how to fix it. Any ideas, suggestions how to get the curvature showing up properly?

enter image description here

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up vote 3 down vote accepted

You could use ax.twinx to create twin axes:

import matplotlib.pyplot as plt
import numpy as np

delta_Array = np.array([1000,2000,3000, 4000, 5000, 6000, 7000, 8000, 9000, 10000])

error_matrix = np.array(
    [[ 24.22468454, 24.22570421, 24.22589308, 24.22595919, 24.22598979, 24.22600641, 24.22601644, 24.22602294, 24.2260274, 24.22603059],
     [ 28.54275713, 28.54503017, 28.54545119, 28.54559855, 28.54566676, 28.54570381, 28.54572615, 28.54574065, 28.5457506, 28.54575771]])

fig = plt.figure()
ax = []
ax.append(fig.add_subplot(1, 1, 1))
colors = ('red', 'blue')

for i,c in zip(range(error_matrix.shape[0]), colors):
    ax[i].plot(delta_Array, error_matrix[i,:], color = c)


enter image description here

The red line corresponds to error_matrix[0, :], the blue with error_matrix[1, :].

Another possibility is to plot the ratio error_matrix[0, :]/error_matrix[1, :].

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Matplotlib is showing you the right thing. If you want both curves on the same y scale, then they will be flat because their difference is much larger than the variation in each. If you don't mind different y scales, then do as unutbu suggested.

If you want to compare the rate of change between the functions, then I'd suggest normalising by the highest value in each:

import matplotlib.pyplot as plt
import numpy as np

plt.plot(delta_Array, error_matrix[0] / np.max(error_matrix[0]), 'b-')
plt.plot(delta_Array, error_matrix[1] / np.max(error_matrix[1]), 'r-')


And by the way, you don't need to be explicit in the dimensions of your 2D array. When you use error_matrix[i,:], it is the same as error_matrix[i].

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