jaxfg - Factor graph-based nonlinear optimization library for JAX.

Overview

jaxfg

Factor graph-based nonlinear optimization library for JAX.

Applications include sensor fusion, control, planning, SLAM. Borrows heavily from a wide set of existing libraries, including: Ceres Solver, g2o, GTSAM, minisam, SwiftFusion.

Features:

  • Autodiff-powered (sparse) Jacobians.
  • Automatic batching of factor computations.
  • Out-of-the-box support for optimization on SO(2), SO(3), SE(2), and SE(3).
  • 100% implemented in Python!

Current limitations:

  • JIT compilation adds significant startup overhead. This could likely be optimized (for example, by specifying more analytical Jacobians) but is mostly unavoidable with JAX/XLA. Limits applications for systems that are online or require dynamic graph alterations.
  • Python >=3.7 only, due to features needed for generic types.

Installation

scikit-sparse require SuiteSparse:

sudo apt update
sudo apt install -y libsuitesparse-dev

Then, from your environment of choice:

git clone https://github.com/brentyi/jaxfg.git
cd jaxfg
pip install -e .

Example scripts

Toy pose graph optimization:

python scripts/pose_graph_simple.py

Pose graph optimization from .g2o files:

python scripts/pose_graph_g2o.py --help

To-do

  • Preliminary graph, variable, factor interfaces
  • Real vector variable types
  • Refactor into package
  • Nonlinear optimization for MAP inference
    • Conjugate gradient linear solver
    • CHOLMOD linear solver
      • Basic implementation. JIT-able, but no vmap, pmap, or autodiff support.
    • Gauss-Newton implementation
    • Termination criteria
    • Damped least squares
    • Dogleg
    • Inexact Newton steps
    • Revisit termination criteria
    • Reduce redundant code
    • Robust losses
  • Marginalization
    • Working prototype using sksparse/CHOLMOD
    • JAX implementation?
  • Validate g2o example
  • Performance
    • More intentional JIT compilation
    • Re-implement parallel factor computation
    • Vectorized linearization
    • Basic (Jacobi) CGLS preconditioning
  • Manifold optimization (mostly offloaded to jaxlie)
    • Basic interface
    • Manifold optimization on SO2
    • Manifold optimization on SE2
    • Manifold optimization on SO3
    • Manifold optimization on SE3
  • Usability + code health (low priority)
    • Basic cleanup/refactor
      • Better parallel factor interface
      • Separate out utils, lie group helpers
      • Put things in folders
    • Resolve typing errors
    • Cleanup/refactor (more)
    • Package cleanup: dependencies, etc
    • Add CI:
      • mypy
      • lint
      • build
      • coverage
    • More comprehensive tests
    • Clean up docstrings
Owner
Brent Yi
Brent Yi
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