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anuraglimdi/README.md

Hi there 👋

I am Anurag Limdi, a Data Scientist at Apriori Bio, where I merge ML modeling and analyses of deep mutational scanning experiments of proteins to understanding genotype to phenotype mapping and inform vaccine design for infectious diseases.

Previously I was a PhD Candidate in Michael Baym's lab in the Department of Biomedical Informatics at the Harvard Medical School where I explored how biological systems function and evolve, through a combination of high-throughput experiments, theory and computational approaches.

In my thesis research, I investigated how fitness landscapes change over thousands of generations of bacterial evolution by generating transposon insertion libraries (with >100,000 mutations) in ancestral and evolved states, and analyzing statistical patterns of changes in fitness effects and gene essentiality (read our preprint here). In the process, I developed an approach for detecting and correcting PCR amplification bias in transposon sequencing by addition of unique molecular identifiers (github repo and paper forthcoming), and wrote a simulations/review paper on tradeoffs in the design of high-throughput sequencing based fitness assays (read our preprint here).

You can find all my papers and preprints here!

Pinned

  1. baymlab/2022_Limdi-TnSeq-LTEE baymlab/2022_Limdi-TnSeq-LTEE Public

    Data processing and analysis code for transposon mutagenesis sequencing of the Lenski Long-term evolution experiment

    Jupyter Notebook

  2. baymlab/2022_Limdi_limits-pooled-fitness-assays baymlab/2022_Limdi_limits-pooled-fitness-assays Public

    Theory, simulations, and data analysis for design of pooled fitness assays

    Jupyter Notebook

  3. lab-protocols lab-protocols Public

    Experimental protocols for transposon insertion sequencing and barcode selection script

    Jupyter Notebook 1

  4. tnseq-essential-genes tnseq-essential-genes Public

    Predicting gene essentiality from transposon insertion sequencing (TnSeq) genomics data with machine learning

    Jupyter Notebook 1

  5. single-cell-analysis-workshop single-cell-analysis-workshop Public

    Exploring and analyzing single cell RNA sequencing datasets with machine learning (from Krishnaswamy lab workshop)

    Jupyter Notebook