Contents Menu Expand Light mode Dark mode Auto light/dark, in light mode Auto light/dark, in dark mode Skip to content
NequIP documentation
Logo

Contents:

  • Welcome to NequIP
  • User Guide
    • Getting Started
      • Installation
      • The NequIP Workflow
      • File Types
    • Configuration
      • Config File
      • Data Configuration
      • Model Hyperparameters
      • Loss and Metrics
    • Training Techniques
      • Fine-Tuning
      • Multitask Training
      • Weights and Biases Sweeps
    • Accelerations
      • PyTorch 2.0 Compiled Training
      • Distributed Data Parallel Training
      • GPU Kernel Modifiers
        • OpenEquivariance Acceleration
        • CuEquivariance Acceleration
      • Precision Settings
    • Reference
      • Conventions
      • FAQs
      • PyTorch Version Compatibility
      • Troubleshooting
  • Python API
    • nequip.data
      • Data Fields
      • nequip.data.datamodule
      • nequip.data.dataset
      • nequip.data.transforms
      • Data Modifiers
      • Dataset Statistics
    • nequip.train
      • NequIPLightningModule
      • Loss Function and Error Metrics
      • nequip.train.callbacks
      • nequip.train.SimpleDDPStrategy
      • Custom Optimizers
    • nequip.nn
    • nequip.model
      • NequIP Message Passing GNN Models
      • Saved Models
      • Parameter Groups for Optimizers
    • nequip.integrations.ase
    • nequip.integrations.torchsim
  • Integrations
    • LAMMPS
      • pair_nequip_allegro
      • ML-IAP
    • ASE
    • torch-sim
    • OpenMM
  • Developer Guide
    • Contributing to NequIP
    • Understanding the NequIP Framework
      • NequIP Workflows
        • Model Packaging
    • Extension Packages
      • Getting Started
      • Data Handling
      • Training Techniques
      • Custom Models
      • Inference
    • Building Docs Locally
Back to top
View this page

NequIP WorkflowsΒΆ

This section covers key workflows and processes within the NequIP framework.

Packaging explains the model packaging system that creates portable, version-independent model archives for distribution and deployment.

  • Model Packaging
    • Overview
    • Developer Notes
    • Package Inspection and Maintenance
Next
Model Packaging
Previous
Understanding the NequIP Framework
Copyright © 2025 The NequIP Developers
Made with Sphinx and @pradyunsg's Furo