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Life sciences researchers & bioinformaticians

The Bio Research Stack

Single-cell RNA QC, scVI tools, Nextflow pipeline development, scientific problem selection, instrument data conversion, and research workflow design.

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Skills in this stack

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Bio Research Start

Research

Set up your bio-research environment and explore available tools. Use when first getting oriented with the plugin, checking which literature, drug-discovery, or visualization MCP servers are connected, or surveying available analysis skills before starting a new project.

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Bio Research Scientific Problem Selection

Research

This skill should be used when scientists need help with research problem selection, project ideation, troubleshooting stuck projects, or strategic scientific decisions. Use this skill when users ask to pitch a new research idea, work through a project problem, evaluate project risks, plan research strategy, navigate decision trees, or get help choosing what scientific problem to work on. Typical requests include "I have an idea for a project", "I'm stuck on my research", "help me evaluate this project", "what should I work on", or "I need strategic advice about my research".

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Bio Research Single Cell Rna Qc

Research

Performs quality control on single-cell RNA-seq data (.h5ad or .h5 files) using scverse best practices with MAD-based filtering and comprehensive visualizations. Use when users request QC analysis, filtering low-quality cells, assessing data quality, or following scverse/scanpy best practices for single-cell analysis.

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Bio Research Scvi Tools

Research

Deep learning for single-cell analysis using scvi-tools. This skill should be used when users need (1) data integration and batch correction with scVI/scANVI, (2) ATAC-seq analysis with PeakVI, (3) CITE-seq multi-modal analysis with totalVI, (4) multiome RNA+ATAC analysis with MultiVI, (5) spatial transcriptomics deconvolution with DestVI, (6) label transfer and reference mapping with scANVI/scArches, (7) RNA velocity with veloVI, or (8) any deep learning-based single-cell method. Triggers include mentions of scVI, scANVI, totalVI, PeakVI, MultiVI, DestVI, veloVI, sysVI, scArches, variational autoencoder, VAE, batch correction, data integration, multi-modal, CITE-seq, multiome, reference mapping, latent space.

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Bio Research Nextflow Development

Research

Run nf-core bioinformatics pipelines (rnaseq, sarek, atacseq) on sequencing data. Use when analyzing RNA-seq, WGS/WES, or ATAC-seq data—either local FASTQs or public datasets from GEO/SRA. Triggers on nf-core, Nextflow, FASTQ analysis, variant calling, gene expression, differential expression, GEO reanalysis, GSE/GSM/SRR accessions, or samplesheet creation.

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Bio Research Instrument Data To Allotrope

Research

Convert laboratory instrument output files (PDF, CSV, Excel, TXT) to Allotrope Simple Model (ASM) JSON format or flattened 2D CSV. Use this skill when scientists need to standardize instrument data for LIMS systems, data lakes, or downstream analysis. Supports auto-detection of instrument types. Outputs include full ASM JSON, flattened CSV for easy import, and exportable Python code for data engineers. Common triggers include converting instrument files, standardizing lab data, preparing data for upload to LIMS/ELN systems, or generating parser code for production pipelines.

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Stack details

Skills
6
Audience
Life sciences researchers & bioinformaticians
License
Free & open source

Claude skills for life sciences researchers and bioinformaticians cover the computational and methodological side of modern biology research — from experimental design and scientific problem selection through single-cell RNA-seq workflows, pipeline development, and instrument data standardization. This stack was built for researchers who need structured support for the quantitative and engineering-adjacent work that accompanies wet lab science.

What these skills do

Bio Research Start

Structure the beginning of a research project — defining the scientific question, mapping the experimental approach, identifying the key dependencies and failure modes, and the project framing that keeps complex multi-step research programs on track from day one.

Bio Research Scientific Problem Selection

Evaluate and select research problems — novelty assessment, feasibility analysis, impact framing, and the problem selection process that helps researchers invest in questions that are both tractable and scientifically meaningful. Covers literature-informed framing and gap identification.

Bio Research Single Cell RNA QC

Run quality control on single-cell RNA sequencing data — cell filtering, doublet detection, ambient RNA removal, mitochondrial fraction assessment, and the QC workflow that ensures downstream analysis is built on clean, reliable data. Covers standard scRNA-seq pipelines.

Bio Research scVI Tools

Apply scVI (single-cell Variational Inference) tools to single-cell data — latent space modeling, batch correction, differential expression, and the scVI workflow that handles large-scale single-cell datasets with probabilistic modeling. Covers the scverse ecosystem and related tools.

Bio Research Nextflow Development

Develop and maintain Nextflow bioinformatics pipelines — workflow structure, process definitions, channel logic, executor configuration, and the pipeline engineering that makes reproducible, scalable analyses possible across compute environments including HPC and cloud.

Bio Research Instrument Data to Allotrope

Convert instrument data to the Allotrope Data Format (ADF) — schema mapping, metadata extraction, file conversion, and the standardization workflow that makes instrument output interoperable with downstream analysis and regulatory submission requirements.

Who this is for

  • Computational biologists and bioinformaticians building and running analysis pipelines
  • Life sciences researchers working with single-cell sequencing, spatial transcriptomics, or other high-dimensional data
  • Research engineers at pharma, biotech, and academic labs developing reproducible bioinformatics workflows

For broader data science and statistical analysis tools, see the Data Science & Analytics Stack. For compliance documentation in regulated life sciences contexts, see the Compliance & Quality Stack.