I need to grow a python DataFrame one row at a time.

In R, the `sapply()`

function is fast & efficent. E.g.,

```
sapply(1:100, function(i) rnorm(50) )
```

produces a 50 x 100 matrix of (standard normal random) numbers, which can then be transposed and/or converted into a data frame, as needed

How to do same efficiently in python?

`for`

loop? That's pretty much what`sapply()`

is under the hood.`matrix(rnorm(5000), nrow = 50)`

...`sapply`

, it's more efficient to do`sapply(integer(100), function(i) rnorm(50))`

(what`replicate`

does). Most efficient I can see is`structure(rnorm(5000), .Dim = c(50L, 100L))`

.