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A Python package to analyze magnetic molecular orbitals (SOMOs) from Gaussian outputs

Project description

SOMOs

SOMOs

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A Python library to identify and analyze Single Occupied Molecular Orbitals (SOMOs) from Gaussian 09 or Gaussian 16 .log files.


Installation

pip install SOMOs

Capabilities Overview

SOMOs is a Python toolkit for analyzing molecular orbitals (MOs) from Gaussian log files, with a focus on identifying SOMOs (Singly Occupied Molecular Orbitals) in open-shell systems.


🚀 Main Features

Load Gaussian Log Files

  • Parses .log and .log.gz Gaussian output files
  • Extracts orbital energies, coefficients, overlap matrices, and spin
from somos import io
alpha_df, beta_df, alpha_mat, beta_mat, nbasis, S, info = io.load_mos_from_cclib(logfolder, logfile)

Cosine Similarity & SOMO Detection

  • Computes cosine similarities between alpha and beta orbitals
  • Identifies SOMO candidates from orbital projections
from somos import cosim
listMOs, coeffMOs, nBasis, dfSOMOs, S = cosim.analyzeSimilarity(logfolder, logfile)

Projection-Based Analysis

  • Projects occupied and virtual alpha MOs onto virtual beta MOs
  • Decomposes projection matrix to extract leading contributions
from somos import proj
df_proj, info = proj.project_occupied_alpha_onto_beta(logfolder, logfile)
display(proj.show_alpha_to_homo(df_proj, logfolder, logfile))

📊 Visualization Tools

Heatmaps

  • Interactive or static heatmaps of MO similarities
  • Highlights SOMO-related regions and orbital clustering

t-SNE (Dimensionality Reduction)

  • Projects high-dimensional orbital space to 2D for visual exploration
  • Enables inspection of orbital families and similarity patterns
cosim.heatmap_MOs(listMOs, coeffMOs, nBasis, S, logfolder, logfile)          # Generates heatmap from cosine similarities
cosim.tsne(listMOs, coeffMOs, S, logfolder,logfile)                          # Generates 2D layout from cosine similarities
proj.projection_heatmap_from_df(df_proj, info["nbasis"], logfolder, logfile) # Generates heatmap from the projection scheme

📁 Output

  • .xlsx tables of SOMO similarity and projections
  • .png images of heatmaps and projections
  • All results saved in the logs/ folder

✅ Example Used in Notebook

  • H2CO_T1_g09_wOverlaps.log.gz (compressed Gaussian file)

Examples

see the SOMOs-examples.ipynb Jupyter notebook


Technical and scsientific documentation

This document describes two complementary methods to identify singly occupied molecular orbitals (SOMOs) in open-shell systems:

  • Orbital projection analysis, where occupied α orbitals are projected onto the β orbital basis using the AO overlap matrix;
  • Cosine similarity mapping, which computes the angular similarity between α and β orbitals and matches them using the Kuhn–Munkres (Hungarian) algorithm.

An example based on the triplet state (T₁) of formaldehyde (H₂CO) is included.

📄 projection-v2.pdf


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