# Tuple pairs, finding minimum using python

I want to find the minimum of a list of tuples sorting by a given column. I have some data arranged as a list of 2-tuples for example.

``````data = [ (1, 7.57), (2, 2.1), (3, 1.2), (4, 2.1), (5, 0.01),
(6, 0.5), (7, 0.2), (8, 0.6)]
``````

How may I find the min of the dataset by the comparison of the second number in the tuples only?

i.e.

``````data = 7.57
data = 2.1
``````

min( data ) = `(5, 0.01)`

`min( data )` returns `(1, 7.57)`, which I accept is correct for the minimum of index 0, but I want minimum of index 1.

``````In : min(data, key = lambda t: t)
Out: (5, 0.01)
``````

or:

``````In : import operator

In : min(data, key=operator.itemgetter(1))
Out: (5, 0.01)
``````

Using numpy, you can use these commands to get the tuple in list where item is minimum:

The ingredients that make this work are numpy's advanced array slicing and argsort features.

``````import numpy as np
#create a python list of tuples and convert it to a numpy ndarray of floats
data = np.array([ (1, 7.57), (2, 2.1), (3, 1.2),
(4, 2.1), (5, 0.01), (6, 0.5), (7, 0.2), (8, 0.6)])

print("data is")
print(data)

#Generate sortIndices from second column
sortIndices = np.argsort(data[:,1])

print("sortIndices using index 1 is:" )
print(sortIndices)
print("The column at index 1 is:")
print(data[:,1])
print("Index 1 put into order using column 1")
print(data[sortIndices,1])
print("The tuples put into order using column 1")
print(data[sortIndices,:])
print("The tuple with minimum value at index 1")
print(data[sortIndices,:])
print("The tuple with maximum value at index 1")
print(data[sortIndices[-1],:])
``````

Which prints:

``````data is
[[ 1.    7.57]
[ 2.    2.1 ]
[ 3.    1.2 ]
[ 4.    2.1 ]
[ 5.    0.01]
[ 6.    0.5 ]
[ 7.    0.2 ]
[ 8.    0.6 ]]

sortIndices using index 1 is:
[4 6 5 7 2 1 3 0]

The column at index 1 is:
[ 7.57  2.1   1.2   2.1   0.01  0.5   0.2   0.6 ]

Index 1 put into order using column 1
[ 0.01  0.2   0.5   0.6   1.2   2.1   2.1   7.57]

The tuples put into order using column 1
[[ 5.    0.01]
[ 7.    0.2 ]
[ 6.    0.5 ]
[ 8.    0.6 ]
[ 3.    1.2 ]
[ 2.    2.1 ]
[ 4.    2.1 ]
[ 1.    7.57]]

The tuple with minimum value at index 1
[ 5.    0.01]

The tuple with maximum value at index 1
[ 1.    7.57]
``````

Even though Lev's answer is correct, I wanted to add the sort Method as well, in case someone is interested in the first `n` minimas. One thing to consider is that the `min` operation's runtime is `O(N)` where the sort's is `O(N Log N)`

``````data = [ (1, 7.57), (2, 2.1), (3, 1.2), (4, 2.1), (5, 0.01), (6, 0.5), (7, 0.2), (8, 0.6)]
data.sort(key=lambda x:x)
print data

>>> [(5, 0.01), (7, 0.2), (6, 0.5), (8, 0.6), (3, 1.2), (2, 2.1), (4, 2.1), (1, 7.57)]
``````

https://www.ics.uci.edu/~pattis/ICS-33/lectures/complexitypython.txt