# Pandas finding local max and min

I have a pandas data frame with two columns one is temperature the other is time.

I would like to make third and fourth columns called min and max. Each of these columns would be filled with nan's except where there is a local min or max, then it would have the value of that extrema.

Here is a sample of what the data looks like, essentially I am trying to identify all the peaks and low points in the figure.

Are there any built in tools with pandas that can accomplish this?

• Should the result be robust against noise? Otherwise, you could just compare the values of the Series to its shifts. – fuglede Dec 29 '17 at 14:24
• I'm not worried about noise in this case, if it were a noisy signal I would just filter then look for max/min on the filter result – Mustard Tiger Dec 29 '17 at 14:27
• You could alternatively fit a very simple (e.g. linear with one or two covariates) model to the data, and then from the residual terms keep those whose deviations are in the `q`% smallest or largest categories, using pd.quantile. – N. Wouda Dec 29 '17 at 14:50

Assuming that the column of interest is labelled `data`, one solution would be

``````df['min'] = df.data[(df.data.shift(1) > df.data) & (df.data.shift(-1) > df.data)]
df['max'] = df.data[(df.data.shift(1) < df.data) & (df.data.shift(-1) < df.data)]
``````

For example:

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

# Generate a noisy AR(1) sample
np.random.seed(0)
rs = np.random.randn(200)
xs = [0]
for r in rs:
xs.append(xs[-1]*0.9 + r)
df = pd.DataFrame(xs, columns=['data'])

# Find local peaks
df['min'] = df.data[(df.data.shift(1) > df.data) & (df.data.shift(-1) > df.data)]
df['max'] = df.data[(df.data.shift(1) < df.data) & (df.data.shift(-1) < df.data)]

# Plot results
plt.scatter(df.index, df['min'], c='r')
plt.scatter(df.index, df['max'], c='g')
df.data.plot()
``````

The solution offered by fuglede is great but if your data is very noisy (like the one in the picture) you will end up with lots misleading local exterims. I suggest that you use `scipy.signal.argrelextrema` function. `argrelextrema` has its own limitations but it has a cool feature where you can specify the number of points to be compared, kind of like a noise filtering algorithm. for example:

``````import numpy as np
import matplotlib.pyplot as plt
import pandas as pd
from scipy.signal import argrelextrema

# Generate a noisy AR(1) sample
np.random.seed(0)
rs = np.random.randn(200)
xs = [0]
for r in rs:
xs.append(xs[-1]*0.9 + r)
df = pd.DataFrame(xs, columns=['data'])

n=5 # number of points to be checked before and after
# Find local peaks
df['min'] = df.iloc[argrelextrema(df.data.values, np.less_equal, order=n)[0]]['data']
df['max'] = df.iloc[argrelextrema(df.data.values, np.greater_equal, order=n)[0]]['data']

# Plot results
plt.scatter(df.index, df['min'], c='r')
plt.scatter(df.index, df['max'], c='g')
plt.plot(df.index, df['data'])
plt.show()
``````

Some points:

• you might need to check the points afterwards to be sure there no points very close to each other.
• you can play with `n` to filter the noisy points
• `argrelextrema` returns a tuple and the `[0]` at the end extracts a `numpy` array