Using Constraints in the fit

Often oen can add soft Gaussian constraint for soem fit parameters, e.g. one can constraing the rsignal resolution:

sigma_MC       = VE( 0.015 , 0.001**2 ) ## 
sigma_cnt      = model.sigma.constrainTo ( sigma_MC , 'sigma_constraint')
my_constraints = ROOT.RooFit.ExternalConstraints ( ROOT.RooArgSet ( sigma_cnt  ) ) 
dataset         = ...
model.fitTo ( dataset , ... , constraints = my_constraints , ....  )

Clearly several constraints can be combined togather

sigma_cnt  = model.sigma.constrainTo ( sigma_MC           , 'sigma_constraint')
peak_cnt   = model.mean .constrainTo ( VE(3.096,0.001**2) , 'mass_constraint' )
my_constraints = ROOT.RooFit.ExternalConstraints ( ROOT.RooArgSet ( sigma_cnt , peak_cnt ) )

For the next version of ostap, one will be able to avoid the explicit creation of ROOT.RooFit.ExternalConstraint and ROOT.RooArgSet

sigma_cnt  = model.sigma.constrainTo ( sigma_MC           , 'sigma_constraint')
peak_cnt   = model.mean .constrainTo ( VE(3.096,0.001**2) , 'mass_constraint' )
model.fitTo ( dataset , ... , constraints = ( sigma_cnt , peak_cnt ) , ....  )

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