Motivation Shedding light on the relationships between protein sequences and functions is a challenging task with many implications in protein evolution, diseases understanding, and protein design. The protein sequence space mapping to specific functions is however hard to comprehend due to its complexity. Generative models help to decipher complex systems thanks to their abilities to learn and recreate data specificity. Applied to proteins, they can capture the sequence patterns associated with functions and point out important relationships between sequence positions. By learning these dependencies between sequences and functions, they can ultimately be used to generate new sequences and navigate through uncharted area of molecular evolut...
Protein engineering seeks to identify protein sequences with optimized properties. When guided by ma...
Recent advances in protein structure determination and prediction offer new opportunities to deciphe...
International audienceThe vast expansion of protein sequence databases provides an opportunity for n...
International audienceMotivation: Shedding light on the relationships between protein sequences and ...
Generative models emerge as promising candidates for novel sequence-data driven approaches to protei...
© 2022 The Author(s)Deep learning technologies have been adopted to predict the functions of newly i...
De novo protein design for catalysis of any desired chemical reaction is a long-standing goal in pro...
International audienceAbstract Generative models emerge as promising candidates for novel sequence-d...
International audienceAbstract Generative models emerge as promising candidates for novel sequence-d...
The rapid growth of sequence databases over the past two decades means that protein engineers faced ...
This thesis introduces the application of deep learning in protein analysis. Three research question...
In the field of artificial intelligence, a combination of scale in data and model capacity enabled b...
In the field of artificial intelligence, a combination of scale in data and model capacity enabled b...
De novo protein design for catalysis of any desired chemical reaction is a long-standing goal in pro...
The vast expansion of protein sequence databases provides an opportunity for new protein design appr...
Protein engineering seeks to identify protein sequences with optimized properties. When guided by ma...
Recent advances in protein structure determination and prediction offer new opportunities to deciphe...
International audienceThe vast expansion of protein sequence databases provides an opportunity for n...
International audienceMotivation: Shedding light on the relationships between protein sequences and ...
Generative models emerge as promising candidates for novel sequence-data driven approaches to protei...
© 2022 The Author(s)Deep learning technologies have been adopted to predict the functions of newly i...
De novo protein design for catalysis of any desired chemical reaction is a long-standing goal in pro...
International audienceAbstract Generative models emerge as promising candidates for novel sequence-d...
International audienceAbstract Generative models emerge as promising candidates for novel sequence-d...
The rapid growth of sequence databases over the past two decades means that protein engineers faced ...
This thesis introduces the application of deep learning in protein analysis. Three research question...
In the field of artificial intelligence, a combination of scale in data and model capacity enabled b...
In the field of artificial intelligence, a combination of scale in data and model capacity enabled b...
De novo protein design for catalysis of any desired chemical reaction is a long-standing goal in pro...
The vast expansion of protein sequence databases provides an opportunity for new protein design appr...
Protein engineering seeks to identify protein sequences with optimized properties. When guided by ma...
Recent advances in protein structure determination and prediction offer new opportunities to deciphe...
International audienceThe vast expansion of protein sequence databases provides an opportunity for n...