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Reinforcement Learning for Molecular Design Guided by Quantum Mechanics
A unifying representation of single cell expression profiles that quantifies similarity between expression states and generalizes to represent new studies without additional training.
Epigenomics Program pipeline to analyze SHARE-seq data.
Interactive 2D scatter plot widget for Jupyter Lab and Notebook. Scales to millions of points!
🤗 Diffusers: State-of-the-art diffusion models for image, video, and audio generation in PyTorch and FLAX.
Single sample Gene Set Enrichment analysis (ssGSEA) and PTM Enrichment Analysis (PTM-SEA)
Chai-1, SOTA model for biomolecular structure prediction
Deep count autoencoder for denoising scRNA-seq data
Python bindings for hictk: read and write .cool and .hic files directly from Python
LoRNA-SH: A long-context RNA foundation model for predicting transcriptome architecture. Pre-processing and downstream analysis scripts.
Sequential Optimal Experimental Design of Perturbation Screens Guided by Multimodal Priors
Python library for array programming on biological datasets. Documentation available at: https://bionumpy.github.io/bionumpy/
Quantifying metabolism activity at the single-cell resolution
MAGIC (Markov Affinity-based Graph Imputation of Cells), is a method for imputing missing values restoring structure of large biological datasets.
TorchCFM: a Conditional Flow Matching library
Single-Cell (Perturbation) Model Library
Implementation of Autoregressive Diffusion in Pytorch
Implementation of Denoising Diffusion Probabilistic Model in Pytorch
Implementation of a framework for Genie2 in Pytorch
R toolkit for inference, visualization and analysis of cell-cell communication from single-cell and spatially resolved transcriptomics
Python package to find communication-driven intercellular flows from single-cell RNA-sequencing and spatial transcriptomics data.