My MWE is as follows

```
def obj(e, p):
S = f(e) + g(p)
return S
```

I would like to minimize this function over only `e`

and pass `p`

as an argument to the function. However, I also would like a constraint that depends on `p`

and `e`

that is of the form `p + e < 1`

I tried

```
cons = {'type': 'ineq',
'fun': lambda e, p: -e -p + 1,
'args': (p)}
```

And then, I try to minimize this for the case of `p = 0.5`

```
minimize(obj, initial_guess, method = 'SLSQP', args = 0.5, constraints = cons)
```

but this doesn't work. I get the error `name 'p' is not defined`

in the line where I define `cons`

. How do I pass the argument `p`

to both the objective function and the constraint?

Full code below

```
from scipy.optimize import minimize
from scipy.stats import entropy
import numpy as np
#Create a probability vector
def p_vector(x):
v = np.array([x, 1-x])
return v
#Write the objective function
def obj(e, p):
S = -1*entropy(p_vector(p + e), base = 2)
return S
##Constraints
cons = {'type': 'ineq',
'fun': lambda e: -p - e + 1,
'args': (p,)
}
initial_guess = 0
result = minimize(obj, initial_guess, method = 'SLSQP', args = (0.5, ), constraints = cons)
print(result)
```

`args`

as tuples use`(p,)`

and`(0.5,)`

. In some cases it may turn a scalar into a tuple for you, but just be safe I'd do that myself.`args=(0.5,)`

sets`p`

within the calls made to`obj`

. But looking at`minimize`

docs, it looks like`args`

in`cons`

, defines what's passed to the lambda. So I'd try`'args': (0.5,)`

. I haven't used`cons`

much, so am working entirely from the docs, not experience.