I train my survival model with the following lines:

```
wft = WeibullAFTFitter()
wft.fit(train, 'duration', event_col='y')
```

After this I wish to see what the survival probability at the current time (`duration`

column).

The way that I am currently doing this if by using the following for loop:

```
p_surv = np.zeros(len(test))
for i in range(len(p_surv)):
row = test.iloc[i:i+1].drop(dep_var, axis=1)
t = test.iloc[i:i+1, col_num]
p_surv[i] = wft.predict_survival_function(row, t).values[0][0]
```

However, this is really slow considering Im using a for loop (200k+ rows). The other alternative to do `wft.predict_survival_function(test, test['duration'])`

would create a 200000x200000 matrix since it checks each row against all provided times.

I just wish to check the survival probability against its own duration. Is there a function in `lifelines`

that does this?