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    • Esben Jannik Bjerrum
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  • About
    • About Cheminformania
    • Esben Jannik Bjerrum

Deep Chemometrics: Deep Learning for Spectroscopy

Esben Jannik Bjerrum/ May 26, 2018

During my postdoc project at the Chemometrics and Analytical Technology section at Copenhagen University I worked with modeling of spectroscopical data with PLS models. Chemometrics is “the

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SMILES enumeration and vectorization for Keras

Esben Jannik Bjerrum/ December 1, 2017

The SMILES enumeration code at GitHub has been revamped and revised into an object for easier use. It can work in conjunction with a SMILES iterator object

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Learn how to teach your computer to "See" Chemistry: Free Chemception models with RDKit and Keras

Esben Jannik Bjerrum/ November 28, 2017

The film Inception with Leonardo Di Caprio is about dreams in dreams, and gave rise to the meme “We need to go deeper”. The title has also

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Recent Comments

  1. esbenbjerrum on A deep Tox21 neural network with RDKit and KerasJanuary 22, 2025

    Yes, it's a single-task network. For a multi-task network, you would need to increase the number of output-neurons to fit…

  2. Elon on A deep Tox21 neural network with RDKit and KerasJanuary 20, 2025

    If I understand correctly, it seems you have used a single-label approach 'SR-MMP' instead of a multi layer approach using…

  3. esbenbjerrum on Generating Unusual Molecules with Genetic AlgorithmsNovember 24, 2024

    Yes, of course that is possible;-) I wrote a follow-up blogpost using molecular log-likelihood estimation to accomplish just that Generating…

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