This is quite a common question for beginners when making multiple conditions in Pandas. Generally speaking, there are two possible conditions causing this error:

**Condition 1: Python Operator Precedence**

There is a paragraph of Boolean indexing | Indexing and selecting data — pandas documentation explains this

Another common operation is the use of boolean vectors to filter the data. The operators are: `|`

for `or`

, `&`

for `and`

, and `~`

for `not`

. These **must** be grouped by using **parentheses**.

By default Python will evaluate an expression such as `df['A'] > 2 & df['B'] < 3`

as `df['A'] > (2 & df['B']) < 3`

, while the desired evaluation order is `(df['A'] > 2) & (df['B'] < 3)`

.

```
# Wrong
df['col'] < -0.25 | df['col'] > 0.25
# Right
(df['col'] < -0.25) | (df['col'] > 0.25)
```

There are some possible ways to get rid off the parentheses, I will cover this later.

**Condition 2: Improper Operator/Statement**

As is explained in previous quotation, you need use `|`

for `or`

, `&`

for `and`

, and `~`

for `not`

```
# Wrong
(df['col'] < -0.25) or (df['col'] > 0.25)
# Right
(df['col'] < -0.25) | (df['col'] > 0.25)
```

Another possible situation is that you are using a boolean Series in `if`

statement.

```
# Wrong
if pd.Series([True, False]):
pass
```

It's clear that Python `if`

statement accepts boolean like expression rather than Pandas Series. You should use `pandas.Series.any`

or methods listed in the error message to convert the Series to a value according to your need.

For example:

```
# Right
if df['col'].eq(0).all():
# If you want all column values equal to zero
print('do something')
# Right
if df['col'].eq(0).any():
# If you want at least one column value equal to zero
print('do something')
```

Let's talk about ways to escape the parentheses in the first situation.

**Use Pandas mathematical functions**

Pandas has defined a lot of mathematical functions including comparison as follows:

As a result, you can use

```
df = df[(df['col'] < -0.25) | (df['col'] > 0.25)]
# is equal to
df = df[df['col'].lt(-0.25) | df['col'].gt(0.25)]
```

**Use **`pandas.Series.between()`

If you want to select rows in between two values, you can use `pandas.Series.between`

`df['col].between(left, right)`

is equal to

`(left <= df['col']) & (df['col'] <= right)`

;
`df['col].between(left, right, inclusive='left)`

is equal to

`(left <= df['col']) & (df['col'] < right)`

;
`df['col].between(left, right, inclusive='right')`

is equal to

`(left < df['col']) & (df['col'] <= right)`

;
`df['col].between(left, right, inclusive='neither')`

is equal to

`(left < df['col']) & (df['col'] < right)`

;

```
df = df[(df['col'] > -0.25) & (df['col'] < 0.25)]
# is equal to
df = df[df['col'].between(-0.25, 0.25, inclusive='neither')]
```

**Use **`pandas.DataFrame.query()`

Document referenced before has a chapter The `query()`

Method explains this well.

`pandas.DataFrame.query()`

can help you select a DataFrame with a condition string. Within the query string, you can use both bitwise operators(`&`

and `|`

) and their boolean cousins(`and`

and `or`

). Moreover, you can omit the parentheses, but I don't recommend for readable reason.

```
df = df[(df['col'] < -0.25) | (df['col'] > 0.25)]
# is equal to
df = df.query('col < -0.25 or col > 0.25')
```

**Use **`pandas.DataFrame.eval()`

`pandas.DataFrame.eval()`

evaluates a string describing operations on DataFrame columns. Thus, we can use this method to build our multiple condition. The syntax is same with `pandas.DataFrame.query()`

.

```
df = df[(df['col'] < -0.25) | (df['col'] > 0.25)]
# is equal to
df = df[df.eval('col < -0.25 or col > 0.25')]
```

`pandas.DataFrame.query()`

and `pandas.DataFrame.eval()`

can do more things than I describe here, you are recommended to read their documentation and have fun with them.

`|`

instead of`or`

`abs(result['var'])>0.25`

`max()`

function. Replacing it with with`numpy.maximum()`

for element-wise maxima between two values solved my problem.