I am a bioinformatics graduate student with hands-on experience in scRNA-seq, RNA-seq, spatial transcriptomics, and scATAC-seq analysis. I have worked on end-to-end NGS workflows that include quality control, read alignment, quantification, differential expression, batch-effect correction, and cell-type annotation using R and Python.
I have developed multi-omics integration approaches to align tens of thousands of cells across platforms and improve cross-modal correspondence. My work includes using tools such as Seurat, DESeq2, STAR, FASTQC, Scanpy, and optimal transport-based methods to support reproducible genomic analysis pipelines in Linux-based environments.
In my current research roles, I collaborate with wet-lab and translational R&D teams to process high-dimensional spatial and single-cell datasets. I also optimize computational workflows through parameter tuning and parallelization, and I evaluate alignment performance using statistical and machine learning metrics.
Alongside research, I have experience as a teaching assistant, where I support students in applied programming for biomedical data analysis. I help with Python programming, data analysis, bioinformatics lab exercises, grading, and academic support.
My technical background spans programming, bioinformatics, database work, pathway analysis, and data visualization. I have also completed projects in survival analysis, biomarker classification, gene expression analysis, algorithm comparison, and database design, which strengthened my analytical and problem-solving skills.
I am motivated by research-driven work at the intersection of biology, computation, and data science. I enjoy building scalable analysis pipelines, interpreting complex biological data, and contributing to projects that advance biomedical discovery.
Graduate program in bioinformatics.
Undergraduate degree in agriculture.
Process and analyze high-dimensional spatial and single-cell datasets using Python-based tools. Apply optimal transport-based methods to align RNA and ATAC modalities, generate gene activity matrices, perform clustering and visualization, optimize workflows on Linux systems, and evaluate alignment performance.
Performed mouse tail lysis, genomic DNA extraction, PCR amplification, agarose gel electrophoresis, tissue collection, homogenization, and Western blotting. Processed 10-30 mouse samples per experiment while maintaining sterile technique, biosafety compliance, and accurate records.
Guided students in applied programming for biomedical data analysis, assisted with Python programming and bioinformatics lab exercises, graded assignments, and provided academic support.
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