I have a dataframe that looks like this:

```
Out[14]:
impwealth indweight
16 180000 34.200
21 384000 37.800
26 342000 39.715
30 1154000 44.375
31 421300 44.375
32 1210000 45.295
33 1062500 45.295
34 1878000 46.653
35 876000 46.653
36 925000 53.476
```

I want to calculate the weighted median of the column `impwealth`

using the frequency weights in `indweight`

. My pseudo code looks like this:

```
# Sort `impwealth` in ascending order
df.sort('impwealth', 'inplace'=True)
# Find the 50th percentile weight, P
P = df['indweight'].sum() * (.5)
# Search for the first occurrence of `impweight` that is greater than P
i = df.loc[df['indweight'] > P, 'indweight'].last_valid_index()
# The value of `impwealth` associated with this index will be the weighted median
w_median = df.ix[i, 'impwealth']
```

This method seems clunky, and I'm not sure it's correct. I didn't find a built in way to do this in pandas reference. What is the best way to go about finding weighted median?

`df['indweight'].sum() * (.5)`

will give a value of ~`219`

which none of your`indweight`

values exceed. Calling`df['indweight'].median()`

gives 44.835 and`mean()`

gives 43.783`df['indweight'].sum() * (.5)`

should calculate the number of observations that fall under the 50th percentile in the data, since`indweight`

is a frequency weight. So it makes sense that the mean and median of`indweight`

exceed its sum.`.cumsum()`

of`indweight`

, not`indweight`

itself. See my answer below, perhaps.