# Step plot by reading from file

I am a newbie to matplotlib. I am trying to plot step function and having some trouble. Right now I am able to read from the file and plot it as shown below. But the graph in the top is not in steps and the one below is not a proper step. I saw examples to plot step function by giving x & y value. I am not sure how to do it by reading from a file though. Can someone help me?

``````from pylab import plotfile, show, gca
import matplotlib.pyplot as plt
import matplotlib.cbook as cbook

fname = cbook.get_sample_data('sample.csv', asfileobj=False)

plotfile(fname, cols=(0,1), delimiter=' ')
plotfile(fname, cols=(0,2), newfig=False, delimiter=' ')
plt.show()
``````

Sample inputs(3 columns):

``````27023927    3   0
27023938    2   0
27023949    3   0
27023961    2   0
27023972    3   0
27023984    2   0
27023995    3   0
27024007    2   0
27024008    2   1
27024018    3   1
27024030    2   1
27024031    2   0
27024041    3   0
27024053    2   0
27024054    2   1
27024098    2   0
``````

Note: I have made the y-axis1 values as 3 & 2 so that this graph can occur in the top and another y-axis2 values 0 & 1 so that it comes in the bottom as shown below

Waveform as it looks now

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Thomas, do you particularly want to plot data from a csv file or are you trying to generally plot a step function? –  Greg Sep 18 '13 at 7:47

Essentially your resolution is too low, for the lower plot the steps (except the last one) occur over `1` unit in x, while the steps are about an order of magnitude larger. This gives the appearance of steps while if you zoom in you will see the vertical lines have a non-infinite gradient (true steps change with an infinite gradient).

This is the same problem for both the top and bottom plots. We can easily remedy this by using the `step` function. You will generally find it easier to import the data, in this example I use the powerful numpy `genfromtxt`. This loads the data as an array `data`:

``````import numpy as np
import matplotlib.pylab as plt

data = np.genfromtxt('test.csv', delimiter=" ")

ax1 = plt.subplot(2,1,1)
ax1.step(data[:,0], data[:,1])

ax2 = plt.subplot(2,1,2)
ax2.step(data[:,0], data[:,2])

plt.show()
``````

If you are new to python then there may be two things to mention, we use two subplots (`ax1` and `ax2`) to plot the data rather than plotting on the same plot (this means you wouldn't need to add values to spatially separate them). We access the elements of the array through the `[]` this gives the `[column, row]` with `:` meaning all columns and and index `i` being the `ith` column

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As a side note, you can control the location of the step relative to your data via the `where` kwarg. See stackoverflow.com/questions/12841847/… –  tcaswell Sep 18 '13 at 14:42

I would propose to load the data to a numpy array

``````import numpy as np
``````

And than plot it:

``````# first point
ax = [data[0,0]]
ay = [data[0,1]]

for i in range(1, data.shape[0]):
if ay[-1] != data[i,1]: # if y value has changed
# add current x and old y
ax.append(data[i,0])
ay.append(ay[-1])
# add current x and current y
ax.append(data[i,0])
ay.append(data[i,1])

import matplotlib.pyplot as plt

plt.plot(ax,ay)
plt.show()
``````

What my solution differs from yours, is that I plot two points for every change in y. The two points produce this 90 degree bend. I Only plot the first curve. Change `[?,1]` to `[?,2]` for the second one.

-

Thanks for the suggestions. I was able to plot it after some research and here is my code,

``````import csv
import datetime
import matplotlib.pyplot as plt
import numpy as np
import dateutil.relativedelta as rd
import bisect
import scipy as sp

fname = "output.csv"

portfolio_list = []
x = []
a = []
b = []

portfolio_list.extend(portfolio)

for data in portfolio_list:
x.append(data['i'])
a.append(data['a'])
b.append(data['b'])

stepList = [0, 1,2,3]

fig = plt.figure(figsize=(20, 10))