I need to create a function to pass to `curve_fit`

. In my case, the function is best defined as a piecewise function.

I know that the following doesn't work, but I'm showing it since it makes the intent of the function clear:

```
def model_a(X, x1, x2, m1, b1, m2, b2):
'''f(x) has form m1*x + b below x1, m2*x + b2 above x2, and is
a cubic spline between those two points.'''
y1 = m1 * X + b1
y2 = m2 * X + b2
if X <= x1:
return y1 # function is linear below x1
if X >= x2:
return y2 # function is linear above x2
# use a cubic spline to interpolate between lower
# and upper line segment
a, b, c, d = fit_cubic(x1, y1, x2, y2, m1, m2)
return cubic(X, a, b, c, d)
```

The problem, of course, is that X is a pandas Series, and the form `(X <= x1)`

evaluates to a series of booleans, so this fails with the message "The truth value of a Series is ambiguous."

It appears that `np.piecewise()`

is designed for exactly this situation: "Wherever condlist[i] is True, funclist[i](x) is used as the output value." So I tried this:

```
def model_b(X, x1, x2, m1, b1, m2, b2):
def lo(x):
return m1 * x + b1
def hi(x):
return m2 * x + b2
def mid(x):
y1 = m1 * x + b1
y2 = m2 * x + b2
a, b, c, d = fit_cubic(x1, y1, x2, y2, m1, m2)
return a * x * x * x + b * x * x + c * x + d
return np.piecewise(X, [X<=x1, X>=x2], [lo, hi, mid])
```

But this fails at this call:

```
return np.piecewise(X, [X<=x1, X>=x2], [lo, hi, mid])
```

with the message "IndexError: too many indices for array". I'm inclined to think it's objecting to the fact that there are two elements in *condlist* and three elements in *funclist*, but the docs specifically state that the extra element in *funclist* is treated as the default.

Any guidance?