73

I am trying to modify a DataFrame df to only contain rows for which the values in the column closing_price are between 99 and 101 and trying to do this with the code below.

However, I get the error

ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all()

and I am wondering if there is a way to do this without using loops.

df = df[(99 <= df['closing_price'] <= 101)]
  • The issue here is that you can't compare a scalar with an array hence the error, for comparisons you have to use the bitwise operators and enclose them in parentheses due to operator precedence – EdChum Jul 24 '15 at 20:21
  • df.query and pd.eval seem like good fits for this use case. For information on the pd.eval() family of functions, their features and use cases, please visit Dynamic Expression Evaluation in pandas using pd.eval(). – cs95 Dec 16 '18 at 4:57
72

You should use () to group your boolean vector to remove ambiguity.

df = df[(df['closing_price'] >= 99) & (df['closing_price'] <= 101)]
100

Consider also series between:

df = df[df['closing_price'].between(99, 101)]
  • 5
    Option inclusive=True is used by default in between, so you can query like this df = df[df['closing_price'].between(99, 101)] – Anton Ermakov Feb 10 '18 at 8:14
  • 3
    this is the best answer! great job! – PEBKAC Sep 28 '18 at 18:53
  • Is there "not between" functionality in pandas? I am not finding it. – dsugasa Apr 23 at 10:16
  • 1
    @dsugasa, use the tilde operator with between. – Parfait Apr 23 at 12:32
17

there is a nicer alternative - use query() method:

In [58]: df = pd.DataFrame({'closing_price': np.random.randint(95, 105, 10)})

In [59]: df
Out[59]:
   closing_price
0            104
1             99
2             98
3             95
4            103
5            101
6            101
7             99
8             95
9             96

In [60]: df.query('99 <= closing_price <= 101')
Out[60]:
   closing_price
1             99
5            101
6            101
7             99

UPDATE: answering the comment:

I like the syntax here but fell down when trying to combine with expresison; df.query('(mean + 2 *sd) <= closing_price <=(mean + 2 *sd)')

In [161]: qry = "(closing_price.mean() - 2*closing_price.std())" +\
     ...:       " <= closing_price <= " + \
     ...:       "(closing_price.mean() + 2*closing_price.std())"
     ...:

In [162]: df.query(qry)
Out[162]:
   closing_price
0             97
1            101
2             97
3             95
4            100
5             99
6            100
7            101
8             99
9             95
  • I like the syntax here but fell down when trying to combine with expresison; df.query('(mean + 2 *sd) <= closing_price <=(mean + 2 *sd)') – mapping dom Aug 21 '17 at 11:42
  • 1
    @mappingdom, what is mean and sd? Are those column names? – MaxU Aug 21 '17 at 12:38
  • no they are the calculated mean and standard deviation stored as a float – mapping dom Aug 21 '17 at 15:13
  • @mappingdom, what you mean saying "stored"? – MaxU Aug 21 '17 at 16:06
  • @mappingdom, i've updated my post - is that what you were asking for? – MaxU Aug 21 '17 at 18:32
4
newdf = df.query('closing_price.mean() <= closing_price <= closing_price.std()')

or

mean = closing_price.mean()
std = closing_price.std()

newdf = df.query('@mean <= closing_price <= @std')
3

you can also use .between() method

emp = pd.read_csv("C:\\py\\programs\\pandas_2\\pandas\\employees.csv")

emp[emp["Salary"].between(60000, 61000)]

Output

enter image description here

0

Instead of this

df = df[(99 <= df['closing_price'] <= 101)]

You should use this

df = df[(df['closing_price']>=99 ) & (df['closing_price']<=101)]

We have to use NumPy's bitwise Logic operators |, &, ~, ^ for compounding queries. Also, the parentheses are important for operator precedence.

For more info, you can visit the link :Comparisons, Masks, and Boolean Logic

0

If you're dealing with multiple values and multiple inputs you could also set up an apply function like this. In this case filtering a dataframe for GPS locations that fall withing certain ranges.

def filter_values(lat,lon):
    if abs(lat - 33.77) < .01 and abs(lon - -118.16) < .01:
        return True
    elif abs(lat - 37.79) < .01 and abs(lon - -122.39) < .01:
        return True
    else:
        return False


df = df[df.apply(lambda x: filter_values(x['lat'],x['lon']),axis=1)]

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