# Plot x-y data if x entry meets condition python

I would like to perform plots/fits for x-y data, provided that the data set's x values meet a condition (i.e. are greater than 10).

My attempt:

``````x_values, y_values = loadtxt(fname, unpack=True, usecols=[1, 0])

for x in x_values:
if x > 10:
(m,b)=polyfit(x_values,y_values,1)
yp = polyval([m,b],x_values)
plot(x_values,yp)
scatter(x_values,y_values)
else:
pass
``````

Perhaps it would be better to remove x-y entries for rows where the x value condition is not met, and then plot/fit?

-

Sure, just use boolean indexing. You can do things like `y = y[x > 10]`.

E.g.

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

#-- Generate some data...-------
x = np.linspace(-10, 50, 100)
y = x**2 + 3*x + 8

# Add a lot of noise to part of the data...
y[x < 10] += np.random.random(sum(x < 10)) * 300

# Now let's extract only the part of the data we're interested in...
x_filt = x[x > 10]
y_filt = y[x > 10]

# And fit a line to only that portion of the data.
model = np.polyfit(x_filt, y_filt, 2)

# And plot things up
fig, axes = plt.subplots(nrows=2, sharex=True)
axes[0].plot(x, y, 'bo')
axes[1].plot(x_filt, y_filt, 'bo')
axes[1].plot(x, np.polyval(model, x), 'r-')

plt.show()
``````

-
Is it possible to do multiple condition filtering? I.e. `x_filt = x[x<100, x<50]`. –  8765674 Feb 13 '13 at 0:48
Sure! Just combine them with parenthesis and `&` or `|` for "or" (`and` and `or` don't work for reasons I'll skip explaining at the moment). E.g. `x_filt = x[(x < 100) & (x < 50)]` –  Joe Kington Feb 13 '13 at 1:10
You're the best. –  8765674 Feb 13 '13 at 1:59
Is there a way to do something like: `maxY = Y[max[Y]]` and `xAtMaxY = X[max[Y]]`? –  8765674 Feb 19 '13 at 20:20
Have a look at `argmax` docs.scipy.org/doc/numpy/reference/generated/numpy.argmax.html Also, for multi dimensional arrays, you may want to do `x[y == y.max()]` –  Joe Kington Feb 19 '13 at 21:38