Interior Point Conic Optimization for Julia
Features • Installation • License • Documentation
Clarabel.jl is a Julia implementation of an interior point numerical solver for convex optimization problems using a novel homogeneous embedding. Clarabel.jl solves the following problem:
with decision variables
For more information see the Clarabel Documentation (stable | dev).
Clarabel is also available in a Rust / Python implementation. See here.
Features
- Versatile: Clarabel.jl solves linear programs (LPs), quadratic programs (QPs), second-order cone programs (SOCPs) and semidefinite programs (SDPs). It also solves problems with exponential and power cone constraints.
- Quadratic objectives: Unlike interior point solvers based on the standard homogeneous self-dual embedding (HSDE), Clarabel.jl handles quadratic objectives without requiring any epigraphical reformulation of the objective. It can therefore be significantly faster than other HSDE-based solvers for problems with quadratic objective functions.
- Infeasibility detection: Infeasible problems are detected using a homogeneous embedding technique.
- JuMP / Convex.jl support: We provide an interface to MathOptInterface (MOI), which allows you to describe your problem in JuMP and Convex.jl.
- Arbitrary precision types: You can solve problems with any floating point precision, for example, Float32 or Julia's BigFloat type, using either the native interface, or via MathOptInterface / Convex.jl.
- Open Source: Our code is available on GitHub and distributed under the Apache 2.0 License
Installation
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Clarabel.jl can be added via the Julia package manager (type
]
):pkg> add Clarabel
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License This project is licensed under the Apache License 2.0 - see the LICENSE.md file for details.