There are no reviews yet. Be the first to send feedback to the community and the maintainers!
EquiReact
cell2mol
volcanic
A program to automatically generate volcano plots for catalysis.NaviCat
A platform for catalyst discoveryQ-stack
Stack of codes for dedicated pre- and post-processing tasks for Quantum Machine Learning (QML)molecular_data_explorer
Python script to create a web app with Dash to visualize molecular data and molecular geometriesRHO-Decomposition
Code to support the paper: A. Fabrizio, A. Grisafi, B. Meyer, M. Ceriotti, and C. Corminboeuf, “Electron density learning of non-covalent systems”, Chem. Sci. 10, 9492 (2019)mikimo
A program to automatically perform microkinetic modeling and generate microkinetic volcano plots for homogeneous catalysis reactions using energy data.NaviCatGA
A flexible Genetic Algorithm Optimizer for the NaviCat project.MLKRR
Code for the Metric Learning for Kernel Ridge Regression algorithmmarc
A tool to select a subset of most representative conformers from a large conformational ensemble.BDML4Chem
intro-to-qml
Introduction to QML representations, both how they are constructed and how to generate them using the qmlcode.MORESIM
Modular Replica Exchange SimulatorFORMED_ML
Machine learning models for the FORMED database and downstream tasks.EPSim
Energy Profile Similarity MapsSPAHM
Code to support the paper: A. Fabrizio, K. R. Briling, and C. Corminboeuf, “SPAHM: the Spectrum of Approximated Hamiltonian Matrices representations”, Digital Discovery, 2022, 1, 286–294cibo
FB-ECDA
Fragment decomposition analysis tool for electronic coupling in charge transfer process of organic semiconductorsb2r2-reaction-rep
rafbl
molassembler_script
Using the Molassembler python API to generate an ensemble of TS guesses from a template.benchmark-barrier-learning
Benchmarking reaction representations for the learning of reaction barriersreply-physics-reactions
Code to accompany the reply to comment on "Physics-based representations for machine learning properties of chemical reactions".OTPD-basis
Code to support the paper: A. Fabrizio, K. R. Briling, D. D. Girardier, and C. Corminboeuf, “Learning on-top: regressing the on-top pair density for real-space visualization of electron correlation”, J. Chem. Phys. 153, 204111 (2020)ILPSelect
Love Open Source and this site? Check out how you can help us