I have a set of x, y points and I'd like to find the line of best fit such that the line is below all points using SciPy. I'm trying to use leastsq for this, but I'm unsure how to adjust the line to be below all points instead of the line of best fit. The coefficients for the line of best fit can be produced via:

```
def linreg(x, y):
fit = lambda params, x: params[0] * x - params[1]
err = lambda p, x, y: (y - fit(p, x))**2
# initial slope/intercept
init_p = np.array((1, 0))
p, _ = leastsq(err, init_p.copy(), args=(x, y))
return p
xs = sp.array([1, 2, 3, 4, 5])
ys = sp.array([10, 20, 30, 40, 50])
print linreg(xs, ys)
```

The output is the coefficients for the line of best fit:

```
array([ 9.99999997e+00, -1.68071668e-15])
```

How can I get the coefficients of the line of best fit that is below all points?

`fit`

function such that all points on the line of best fit are < y. I'm uncertain as to how to implement this in SciPy. – user1728853 Jan 23 '13 at 23:03