“…A fundamental technique for solving constrained optimization problems is the augmented Lagrangian (AL) framework, which can effortlessly handle nonsmooth objectives, see e.g. [12,14,16,17,20,28,29,53,54,56] for some recent contributions, and [10,11,15] for some fundamental literature which addresses the setting of standard nonlinear programming. Particularly, Rockafellar extended the approach in [53,54] to the broad setting of (P) with ๐ convex, relying on some local duality to build a connection with the proximal point algorithm (PPA), see [49,50].…”