I work with microbial ecology, multi-omics data analysis, and reproducible workflows in R and Python.
My experience includes 16S metagenomics, functional prediction, targeted transcriptomics, and LC–MS/MS-based lipid data processing.
- Microbiome analysis (skin, scalp, and environmental samples)
- Multi-omics integration (taxonomic, functional, transcript, lipid data)
- Reproducible pipelines (R, Python, Snakemake, Bash)
- Data visualization and statistical analysis
Tools: DADA2, QIIME2, phyloseq, DESeq2, MZmine, Snakemake, FastQC, GROMACS
Databases: SILVA, Greengenes, RefSeq
Methods: Diversity analysis, differential abundance, QC workflows, functional prediction
Languages: R, Python, Bash
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Assembly and long-read analysis: Pipeline for long-read assembly and functional profiling using public datasets.
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Bioinformatics Study Notebooks: Exploratory analyses and templates for microbial and multi-omics workflows.
Some industry projects are not public due to IP restrictions.
Public repositories reflect study materials, workflow templates, and reproducible examples.

