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jsosolvers.jl's Introduction

JSOSolvers.jl

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This package provides optimization solvers curated by the JuliaSmoothOptimizers organization for unconstrained optimization

min f(x)

and bound-constrained optimization

min f(x)     s.t.  ℓ ≤ x ≤ u

This package provides an implementation of four classic algorithms for unconstrained/bound-constrained nonlinear optimization:

  • lbfgs: an implementation of a limited-memory BFGS line-search method for unconstrained minimization;

    D. C. Liu, J. Nocedal. (1989). On the limited memory BFGS method for large scale optimization. Mathematical Programming, 45(1), 503-528. DOI: 10.1007/BF01589116

  • R2: a first-order quadratic regularization method for unconstrained optimization;

    E. G. Birgin, J. L. Gardenghi, J. M. Martínez, S. A. Santos, Ph. L. Toint. (2017). Worst-case evaluation complexity for unconstrained nonlinear optimization using high-order regularized models. Mathematical Programming, 163(1), 359-368. DOI: 10.1007/s10107-016-1065-8

  • fomo: a first-order method with momentum for unconstrained optimization;

  • tron: a pure Julia implementation of TRON, a trust-region solver for bound-constrained optimization described in

    Chih-Jen Lin and Jorge J. Moré, Newton's Method for Large Bound-Constrained Optimization Problems, SIAM J. Optim., 9(4), 1100–1127, 1999. DOI: 10.1137/S1052623498345075

    as well as a variant for nonlinear least-squares;

  • trunk: a trust-region solver for unconstrained optimization using exact second derivatives. Our implementation follows the description given in

    A. R. Conn, N. I. M. Gould, and Ph. L. Toint, Trust-Region Methods, volume 1 of MPS/SIAM Series on Optimization. SIAM, Philadelphia, USA, 2000. DOI: 10.1137/1.9780898719857

    The package also contains a variant for nonlinear least-squares.

Installation

pkg> add JSOSolvers

Example

using JSOSolvers, ADNLPModels

# Rosenbrock
nlp = ADNLPModel(x -> 100 * (x[2] - x[1]^2)^2 + (x[1] - 1)^2, [-1.2; 1.0])
stats = lbfgs(nlp) # or trunk, tron, R2

How to cite

If you use JSOSolvers.jl in your work, please cite using the format given in CITATION.cff.

Bug reports and discussions

If you think you found a bug, feel free to open an issue. Focused suggestions and requests can also be opened as issues. Before opening a pull request, start an issue or a discussion on the topic, please.

If you want to ask a question not suited for a bug report, feel free to start a discussion here. This forum is for general discussion about this repository and the JuliaSmoothOptimizers, so questions about any of our packages are welcome.

jsosolvers.jl's People

Contributors

tmigot avatar abelsiqueira avatar github-actions[bot] avatar dpo avatar amontoison avatar jay-sanjay avatar nathanemac avatar monssaftoukal avatar paraynaud avatar d-monnet avatar farhadrclass avatar hpmouton avatar juliatagbot avatar

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