Add numeric diff support for Python CostFunction bindings + example updates #84
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This PR adds numeric-diff support for Python-defined cost functions so users can skip manual Jacobians, aligning behavior more closely with Ceres’ autodiff-focused docs. It also refreshes the Python examples
(hello world, Powell’s, and curve fitting) and adds an autodiff-style Powell’s + Curve Fitting example that mirrors the Ceres documentation flow.
Core NumericDiff Update
pyrceres.CostFunctionnow has member variableset_use_numerif_diffthat allows users to set toTruefor auto differentiation and skip deriving jacobian movement in cost functionsExample from examples/curve_fitting_autodiff.py
examples updates