what is an efficient way to get the most variable rows from a (numeric) pandas DataFrame? by most variable rows, I mean the rows that are most variable with respect to column values - rows with the highest standard deviation, but since each row might be on a different scale, can't just take the largest absolute standard deviation of each row across column. One way to define this is to compute the absolute coefficient of variation:

```
df = pandas.DataFrame({"a": np.random.randn(10), "b": np.random.randn(10), "c": np.random.randn(10)})
new_df = df.std(axis=1).div(df.mean(axis=1)).abs()
var_df = df[new_df.max(axis=1) > np.percentile(new_df.max(axis=1),80)]
```

is there a better more concise/efficient way to do this in pandas/numpy?