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Machine learning research for science. Forbes 30 under 30 Science.
iap-cidl. Causal Inference & Deep Learning, MIT IAP 2018
90inDelphi-model. Predictive model for CRISPR-mediated DNA repair outcomes through NHEJ/MMEJ, built with machine learning
32iap-appbml. Applied Probabilistic Programming & Bayesian Machine Learning (MIT IAP 2017)
32gflownet. Python
20piu-analysis. Platform for pump it up data analysis
19indelphi-dataprocessinganalysis. Data Processing, Modeling and Analysis scripts for CRISPR-inDelphi
15inDelphi-app. Heroku/Dash app for inDelphi.
11be_predict_bystander. Deep conditional autoregressive models for genome editing sequence-to-sequence problems
10be_predict_efficiency. Python
7evoracle. A method for reconstructing frequency trajectories and fitnesses of long genotypes from short read data from directed evolution timepoints.
6piu-vis-ss. TypeScript
5piu-annotate. Jupyter Notebook
5hackerargs. Configurable options in 1 line of code
4piu-app. JavaScript
3be-modeling. Code used for training BE-Hive models
2baseedit-app. Heroku web app with Dash Plotly
2lib-analysis. Python
2mylib. A collection of generically useful scripts and functions
1evoracle-dataprocessinganalysis. Jupyter Notebook
1latent-multiGP-inference. Joint inference of 10 latent Gaussian processes on time series data with latent stochastic weekend/holiday/Covid effectsGPyTorch and Pyro
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