I have the following code which throws me error:

RuntimeError: Optimal parameters not found: Number of calls to function has reached maxfev = 1000

I think it is due to the def func in the loop. How can it be fixed?

I am using curve_fit from scipy and I want to find better values for many independent groups.

I is working WITHOUT LOOP perfectly.

thanks!

```
RuntimeError: Optimal parameters not found: Number of calls to function has reached maxfev = 1000.
df_fit = pd.DataFrame()
for (group, df_gp) in df.groupby(['label']):
df_gp.sort_values(['animal']).reset_index(drop=True)
if len(df_gp) > 0:
if len(df_gp) % 2 == 0:
df_gp = pd.concat([df_gp, df_gp.tail(1)], axis=0);
x = np.arange(1,len(df_gp)+1)
y = df_gp['price']
xx = np.linspace(x.min(),x.max(), len(df_gp))
# interpolate + smooth
itp = interp1d(x,y, kind='linear') #kind = 'linear', 'nearest' (dobre vysledky), slinear (taky ok), cubic (nebrat), quadratic - nebrat
# window size must be odd
window_size, poly_order = len(df_gp), 2
yy_sg = savgol_filter(itp(xx), window_size, poly_order)
def func(x, A, B, x0, sigma):
return A+B*np.tanh((x-x0)/sigma)
fit, _ = curve_fit(func, x, y)
yy_fit = func(xx, *fit)
#fit1 = np.poly1d(np.polyfit(x, y, 3))
#df_gp = df_gp.drop_duplicates(subset= 'sku',keep = 'first', inplace =True)
# pridani promennych do dataframe
df_gp['yy_fit'] = yy_fit
df_gp['yy_sg'] = yy_sg
df_fit = pd.concat([df_fit,df_gp], axis = 0)
df_fit = df_fit.sort_values(['sku']).reset_index(drop=True)
```