[VENETO] boboviz
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Joined: 1 Dec 05 Posts: 2063 Credit: 11,359,313 RAC: 11,733
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DeepProtein
DeepProtein: Deep Learning Library and Benchmark for Protein Sequence Learning
• Key Innovation: DeepProtein introduces a comprehensive deep learning library tailored for protein science, offering advanced tools for tasks like protein function prediction, localization, and interaction prediction. The library integrates cutting-edge neural network architectures, including CNNs, RNNs, transformers, and graph neural networks (GNNs).
• Why It’s Exciting: DeepProtein sets a new standard by benchmarking 8 neural network architectures on 7 protein learning tasks, showcasing superior performance in areas like antibody developability and CRISPR repair outcome prediction.
• User-Friendly Focus: A major strength is its accessible, one-command-line interface, designed to help domain experts apply complex models with ease, building on the drug discovery library DeepPurpose.
• Comprehensive Benchmarking: The library offers a curated set of protein datasets and evaluates methods on diverse tasks, such as protein-protein interaction prediction and epitope prediction, which are essential for advancements in biotechnology and medicine.
• Deep Learning on Proteins: Beyond traditional sequence learning methods, DeepProtein incorporates structural-based methods like GNNs and graph transformers, enhancing protein structure representation and function prediction.
• Scalability: The library has been tested on powerful hardware (NVIDIA GPUs) and is optimized for large-scale protein tasks, although it also provides guidance for managing computational complexity on smaller hardware setups.
• Broader Impact: DeepProtein contributes to reproducibility in research with extensive documentation and tutorials, aiming to democratize deep learning applications in proteomics and therapeutic science.
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[VENETO] boboviz
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Joined: 1 Dec 05 Posts: 2063 Credit: 11,359,313 RAC: 11,733
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[03/25] DeepProtein now published three notebooks of dataset loading, training and inference with DeepProtT5 (colab).
[03/25] DeepProtein now supports Fold and Secondary Structure Dataset
[03/25] DeepProtein: Files under the train folders are now simplified, also code in Readme.md file.
[03/25] DeepProtein has now released DeepProtT5 Series Models, which can be found at https://huggingface.co/collections/jiaxie/protlm-67bba5b973db936ce90e7d54
[02/25] DeepProtein now supported BioMistral, BioT5+, ChemLLM_7B, ChemDFM, and LlaSMol on some tasks
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