# Plotting resulting fitted curve with scipy

According to this, what about if I want to overplot the fitted curve over the data points? Should I define the fitting function again?

Leastsq method has lacking documentation and examples, and I have some troubles in understanding the arguments it needs.

According to that, if I define:

``````def optm(l, x, y):
return skew(x, l[0], l[1], l[2]) - y
``````

Then, is it correct to fit in the following way:

``````out_param = leastsq(optm, v1[:], args = (x_values, y_values), maxfev = 100000, full_output = 1)
``````

(where `v1[:]` is the vector with the initial guess parameters)? And then, again, how can I plot the resulting curve?

I am still trying to understand so any suggestion is really appreciated.

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I have solved in the following way: The string code reported in the question was correct. Then I saved the best-fit parameters in another vector:

``````p = out_param[0]
``````

Then, I used the skew function to obtain the new (fitted) y_values:

``````new_y_val = skew(x_values, p[0], p[1], p[2])
``````

And finally I can make a plot with these new vectors:

``````plot(time1, pl)
``````
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