I am trying to filter a pandas data frame using thresholds for three columns

```
import pandas as pd
df = pd.DataFrame({"A" : [6, 2, 10, -5, 3],
"B" : [2, 5, 3, 2, 6],
"C" : [-5, 2, 1, 8, 2]})
df = df.loc[(df.A > 0) & (df.B > 2) & (df.C > -1)].reset_index(drop = True)
df
A B C
0 2 5 2
1 10 3 1
2 3 6 2
```

However, I want to do this inside a function where the names of the columns and their thresholds are given to me in a dictionary. Here's my first try that works ok. Essentially I am putting the filter inside `cond`

variable and just run it:

```
df = pd.DataFrame({"A" : [6, 2, 10, -5, 3],
"B" : [2, 5, 3, 2, 6],
"C" : [-5, 2, 1, 8, 2]})
limits_dic = {"A" : 0, "B" : 2, "C" : -1}
cond = "df = df.loc["
for key in limits_dic.keys():
cond += "(df." + key + " > " + str(limits_dic[key])+ ") & "
cond = cond[:-2] + "].reset_index(drop = True)"
exec(cond)
df
A B C
0 2 5 2
1 10 3 1
2 3 6 2
```

Now, finally I put everything inside a function and it stops working (perhaps `exec`

function does not like to be used inside a function!):

```
df = pd.DataFrame({"A" : [6, 2, 10, -5, 3],
"B" : [2, 5, 3, 2, 6],
"C" : [-5, 2, 1, 8, 2]})
limits_dic = {"A" : 0, "B" : 2, "C" : -1}
def filtering(df, limits_dic):
cond = "df = df.loc["
for key in limits_dic.keys():
cond += "(df." + key + " > " + str(limits_dic[key])+ ") & "
cond = cond[:-2] + "].reset_index(drop = True)"
exec(cond)
return(df)
df = filtering(df, limits_dic)
df
A B C
0 6 2 -5
1 2 5 2
2 10 3 1
3 -5 2 8
4 3 6 2
```

I know that `exec`

function acts differently when used inside a function but was not sure how to address the problem. Also, I am wondering there must be a more elegant way to define a function to do the filtering given two input: 1)`df`

and 2)`limits_dic = {"A" : 0, "B" : 2, "C" : -1}`

. I would appreciate any thoughts on this.

`cond = "df2 = df.loc["`

and`return(locals()['df2'])`

) it works. i tried to add dicts to`exec`

to no avail`pd.eval()`

family of functions, their features and use cases, please visit Dynamic Expression Evaluation in pandas using pd.eval().