Browse Skills — Page 27
21,718 public skills · showing 2,601–2,700
- 95/100
bigcommerce
TerminalSkills/skills
>-
- 100/100
bigdata-skill
daymade/claude-code-skills
>-
- 100/100
bigmailer-automation
ComposioHQ/awesome-claude-skills
"Automate Bigmailer tasks via Rube MCP (Composio). Always search tools first for current schemas."
- 100/100
bigml-automation
ComposioHQ/awesome-claude-skills
"Automate Bigml tasks via Rube MCP (Composio). Always search tools first for current schemas."
- 100/100
bigpicture-io-automation
ComposioHQ/awesome-claude-skills
"Automate Bigpicture IO tasks via Rube MCP (Composio). Always search tools first for current schemas."
- 100/100
bigquery
BuilderIO/agent-native
>
- 100/100
bigquery-pipeline-audit
github/awesome-copilot
'Audits Python + BigQuery pipelines for cost safety, idempotency, and production readiness. Returns a structured report with exact patch locations.'
- 100/100
bikeshed-conversion
w3c/web-performance
Guidelines for converting W3C specs to Bikeshed format. Covers anchor ID preservation, dfn handling, and common pitfalls. Read this before any Bikeshed conversion or migration work.
- 100/100
bilanzieller-status-aufnehmen
Klotzkette/claude-fuer-deutsches-recht
Nimmt die bilanzielle Ausgangslage auf — Aktiva Passiva Eigenkapital nach HGB-Stichtagsbilanz. Pruefraster bilanzielle Ueberschuldung (Aktiva kleiner als Passiva). Erfasst stille Reserven und stille Lasten Sonderposten und ausserbilanzielle Verpflichtungen (Pensionsrueckstellungen Buergschaften Comfortletter). Erzeugt Insolvenzstatus als Vorstufe zur Fortbestehensprognose. Wichtig — bilanzielle Ueberschuldung ist nicht automatisch insolvenzrechtliche Ueberschuldung (§ 19 Abs. 2 InsO Fortbestehensprognose).
- 100/100
bildmarke-und-wort-bild
Klotzkette/claude-fuer-deutsches-recht
Bildmarke und Wort-Bild-Marke fuer Couture-Logos: Anmeldung beim DPMA und EUIPO, Farbansprueche (RGB/Pantone/HKS), EUIPO-Bilddatenbank Vienna Classification, Schutzumfang des Bildbestandteils. Laedt, wenn der Nutzer 'Bildmarke', 'Wort-Bild-Marke', 'Logo-Marke', 'Farbanspruch', 'Vienna Classification' oder 'Couture-Logo' sagt.
- 100/100
bilibili
sigcli/sigcli
Interact with Bilibili (B站) — browse trending videos, view video details, read comments, search videos and users, view user profiles, like, coin, and favorite videos. Use this skill whenever the user mentions Bilibili, B站, wants to browse Bilibili content, search Bilibili videos, read Bilibili comments, look up Bilibili users, or interact with Bilibili content. Also trigger when the user pastes a Bilibili URL (e.g. bilibili.com/video/BV...) or mentions a BV ID.
- 95/100
bilibili-watcher
openakita/openakita
Extract subtitles and transcripts from Bilibili and YouTube videos. Use when the user wants to get subtitles from B站 (Bilibili) or YouTube, extract Chinese/Japanese video transcripts, watch member-only Bilibili content, or perform Q&A on video content. Supports dual-platform subtitle extraction with yt-dlp.
- 100/100
bilinguale-vertragserstellung
Klotzkette/claude-fuer-deutsches-recht
Bilinguale Erstellung DE/EN des Wandeldarlehensvertrags in zweispaltiger Tabelle (links DE verbindlich, rechts EN zur Orientierung), Sprachklausel mit Vorrang DE, standardisierte englische Uebersetzung aller Paragrafen, Unterschriftsblock mit DocuSign-Hinweis. Fuer GmbH und UG (haftungsbeschraenkt).
- 100/100
bill-gates
diegosouzapw/awesome-omni-skills
BILL GATES \u2014 AGENTE DE SIMULACAO PROFUNDA v2.0 workflow skill. Use this skill when the user needs Agente que simula Bill Gates \u2014 cofundador da Microsoft, arquiteto da industria de software comercial, estrategista tecnologico global, investidor sistemico e filantropo baseado em dados and the operator should preserve the upstream workflow, copied support files, and provenance before merging or handing off.
- 100/100
bill-gates-v2
diegosouzapw/awesome-omni-skills
BILL GATES \u2014 AGENTE DE SIMULACAO PROFUNDA v2.0 workflow skill. Use this skill when the user needs Agente que simula Bill Gates \u2014 cofundador da Microsoft, arquiteto da industria de software comercial, estrategista tecnologico global, investidor sistemico e filantropo baseado em dados and the operator should preserve the upstream workflow, copied support files, and provenance before merging or handing off.
- 100/100
billing-automation
wshobson/agents
Build automated billing systems for recurring payments, invoicing, subscription lifecycle, and dunning management. Use when implementing subscription billing, automating invoicing, or managing recurring payment systems.
- 100/100
billing-automation
TerminalSkills/skills
>-
- 100/100
billing-automation-v2
diegosouzapw/awesome-omni-skills
Billing Automation workflow skill. Use this skill when the user needs Master automated billing systems including recurring billing, invoice generation, dunning management, proration, and tax calculation and the operator should preserve the upstream workflow, copied support files, and provenance before merging or handing off.
- 100/100
binance-address-info
TermiX-official/cryptoclaw
Binance Web3 official skill — query any wallet address for token holdings, balances, and portfolio data across BSC, Base, and Solana. Sourced from github.com/binance/binance-skills-hub.
- 80/100
binance-market-rank
TermiX-official/cryptoclaw
Binance Web3 official skill — crypto market rankings including trending tokens, smart money inflow, social hype, meme ranks, and top trader PnL leaderboards. Sourced from github.com/binance/binance-skills-hub.
- 100/100
binance-meme-rush
TermiX-official/cryptoclaw
Binance Web3 official skill — real-time meme token launchpad tracking and AI-powered trending topic discovery on Solana and BSC. Sourced from github.com/binance/binance-skills-hub.
- 100/100
binance-spot
TermiX-official/cryptoclaw
Binance official spot trading skill — place orders, manage accounts, and access real-time market data via Binance Spot API. Sourced from github.com/binance/binance-skills-hub.
- 100/100
binance-token-audit
TermiX-official/cryptoclaw
Binance Web3 official skill — security audit for token contracts, detecting honeypots, rug pulls, and malicious functions across BSC, Base, Solana, and Ethereum. Sourced from github.com/binance/binance-skills-hub.
- 100/100
binance-token-info
TermiX-official/cryptoclaw
Binance Web3 official skill — search tokens, retrieve metadata, real-time market data, and candlestick charts across BSC, Base, and Solana. Sourced from github.com/binance/binance-skills-hub.
- 100/100
binance-trading-signal
TermiX-official/cryptoclaw
Binance Web3 official skill — Smart Money on-chain trading signals tracking professional investor buy/sell activity on BSC and Solana. Sourced from github.com/binance/binance-skills-hub.
- 100/100
binary-analysis-patterns
diegosouzapw/awesome-omni-skills
Binary Analysis Patterns workflow skill. Use this skill when the user needs Comprehensive patterns and techniques for analyzing compiled binaries, understanding assembly code, and reconstructing program logic and the operator should preserve the upstream workflow, copied support files, and provenance before merging or handing off.
- 100/100
binary-analysis-patterns
wshobson/agents
Master binary analysis patterns including disassembly, decompilation, control flow analysis, and code pattern recognition. Use when analyzing executables, understanding compiled code, or performing static analysis on binaries.
- 100/100
binary-analysis-patterns-v2
diegosouzapw/awesome-omni-skills
Binary Analysis Patterns workflow skill. Use this skill when the user needs Comprehensive patterns and techniques for analyzing compiled binaries, understanding assembly code, and reconstructing program logic and the operator should preserve the upstream workflow, copied support files, and provenance before merging or handing off.
- 100/100
binary-exploitation-methodology
wgpsec/AboutSecurity
二进制漏洞利用基础方法论。涵盖漏洞识别(栈溢出/堆溢出/格式化字符串/UAF)、保护机制分析(ASLR/NX/Stack Canary/PIE/RELRO)、利用策略选择(ret2win/ret2shellcode/ROP/ret2libc)、调试与利用开发流程。当 Agent 需要分析二进制程序漏洞、选择利用策略、或理解保护机制绕过方法时触发。区别于 CTF pwn 技巧,侧重实战方法论。
- 95/100
binary-exploitation-tools
wgpsec/AboutSecurity
二进制漏洞利用工具集参考。涵盖调试工具(GDB/GEF/pwndbg/r2)、利用开发框架(pwntools/ROPgadget/one_gadget)、反编译工具(Ghidra/IDA/Binary Ninja)、动态分析工具(ltrace/strace/valgrind)。当 Agent 需要选择合适的二进制分析工具、了解工具使用方法、或搭建利用开发环境时触发。
- 100/100
binary-triage
cyberkaida/reverse-engineering-assistant
Performs initial binary triage by surveying memory layout, strings, imports/exports, and functions to quickly understand what a binary does and identify suspicious behavior. Use when first examining a binary, when user asks to triage/survey/analyze a program, or wants an overview before deeper reverse engineering.
- 100/100
binding_site_characterization
InternScience/scp
Binding Site Characterization - Characterize binding sites: predict pockets with fpocket and P2Rank, get binding site info from ChEMBL, and visualize. Use this skill for structural biology tasks involving run fpocket pred pocket prank get binding site by id visualize protein. Combines 4 tools from 3 SCP server(s).
- 100/100
bindingdb-skill
openai/plugins
Submit compact BindingDB REST API requests for ligand-target binding lookups by PDB, UniProt, or similarity search. Use when a user wants concise BindingDB summaries; save raw payloads only on request.
- 100/100
binlog-failure-analysis
microsoft/testfx
Analyze MSBuild binary logs to diagnose build failures by replaying binlogs to searchable text logs. Only activate in MSBuild/.NET build context. USE FOR: build errors that are unclear from console output, diagnosing cascading failures across multi-project builds, tracing MSBuild target execution order, investigating common errors like CS0246 (type not found), MSB4019 (imported project not found), NU1605 (package downgrade), MSB3277 (version conflicts), and ResolveProjectReferences failures. Requires an existing .binlog file. DO NOT USE FOR: generating binlogs (use binlog-generation), build performance analysis (use build-perf-diagnostics), non-MSBuild build systems. INVOKES: dotnet msbuild binlog replay, grep, cat, head, tail for log analysis.
- 100/100
binlog-generation
microsoft/testfx
Generate MSBuild binary logs (binlogs) for build diagnostics and analysis. Only activate in MSBuild/.NET build context. USE FOR: adding /bl:{} to any dotnet build, test, pack, publish, or restore command to capture a full build execution trace, prerequisite for binlog-failure-analysis and build-perf-diagnostics skills, enabling post-build investigation of errors or performance. Requires MSBuild 17.8+ / .NET 8 SDK+ for {} placeholder; PowerShell needs -bl:{{}}. DO NOT USE FOR: non-MSBuild build systems (npm, Maven, CMake), analyzing an existing binlog (use binlog-failure-analysis instead). INVOKES: shell commands (dotnet build /bl:{}).
- 100/100
bio-admet-prediction
GPTomics/bioSkills
Predicts ADMET properties using ADMETlab 3.0 API or DeepChem models. Estimates bioavailability, CYP inhibition, hERG liability, and 119 toxicity endpoints with uncertainty quantification. Filters for PAINS and other structural alerts. Use when filtering compounds for drug-likeness or prioritizing leads by predicted safety.
- 100/100
bio-alignment-amplicon-clipping
GPTomics/bioSkills
Trim PCR primers from aligned reads in amplicon-panel BAMs using samtools ampliconclip. Use when processing SARS-CoV-2 ARTIC, hereditary cancer panels, ctDNA hot-spot panels, or any amplicon assay where primer-derived bases would falsely confirm reference at primer footprints.
- 100/100
bio-alignment-filtering
GPTomics/bioSkills
Filter alignments by flags, mapping quality, and regions using samtools view and pysam. Use when extracting specific reads, removing low-quality alignments, or subsetting to target regions.
- 100/100
bio-alignment-indexing
GPTomics/bioSkills
Create and use BAI/CSI indices for BAM/CRAM files using samtools and pysam. Use when enabling random access to alignment files or fetching specific genomic regions.
- 100/100
bio-alignment-io
GPTomics/bioSkills
Read, write, and convert multiple sequence alignment files using Biopython Bio.AlignIO. Supports Clustal, PHYLIP, Stockholm, FASTA, Nexus, and other alignment formats for phylogenetics and conservation analysis. Use when reading, writing, or converting alignment file formats.
- 100/100
bio-alignment-msa-parsing
GPTomics/bioSkills
Parse and analyze multiple sequence alignments using Biopython. Extract sequences, identify conserved regions, analyze gaps, work with annotations, and manipulate alignment data for downstream analysis. Use when parsing or manipulating multiple sequence alignments.
- 100/100
bio-alignment-msa-statistics
GPTomics/bioSkills
Calculate alignment statistics including sequence identity, conservation scores, substitution matrices, and similarity metrics. Use when comparing alignment quality, measuring sequence divergence, and analyzing evolutionary patterns.
- 100/100
bio-alignment-multiple
GPTomics/bioSkills
Perform multiple sequence alignment using MAFFT, MUSCLE5, ClustalOmega, or T-Coffee. Guides tool and algorithm selection based on dataset size, sequence divergence, and downstream application. Use when aligning three or more homologous sequences for phylogenetics, conservation analysis, or evolutionary studies.
- 100/100
bio-alignment-pairwise
GPTomics/bioSkills
Perform pairwise sequence alignment using Biopython Bio.Align.PairwiseAligner. Use when comparing two sequences, finding optimal alignments, scoring similarity, and identifying local or global matches between DNA, RNA, or protein sequences.
- 100/100
bio-alignment-sorting
GPTomics/bioSkills
Sort alignment files by coordinate or read name using samtools and pysam. Use when preparing BAM files for indexing, variant calling, or paired-end analysis.
- 100/100
bio-alignment-structural
GPTomics/bioSkills
Align protein structures using Foldseek 3Di, TM-align, US-align, DALI, or Foldmason for structural MSA. Predict, score, and superpose backbone coordinates when sequence identity is below the twilight zone or remote-homology detection is required. Use when sequence MSA fails (<25% identity), when the dark proteome is the target, when AlphaFoldDB / ESM Atlas search is needed, or when structural superposition is the goal.
- 100/100
bio-alignment-trimming
GPTomics/bioSkills
Trim multiple sequence alignments using ClipKIT, trimAl, BMGE, Divvier, or HMMcleaner with mode selection guidance per downstream goal. Use when removing unreliable columns or contaminating residues before phylogenetic inference, HMM building, or selection analysis.
- 100/100
bio-alignment-validation
GPTomics/bioSkills
Validate alignment quality with insert size distribution, proper pairing rates, GC bias, strand balance, and other post-alignment metrics. Use when verifying alignment data quality before variant calling or quantification.
- 100/100
bio-atac-seq-allele-specific-accessibility
GPTomics/bioSkills
Detect allele-specific chromatin accessibility from ATAC-seq using WASP, GATK ASEReadCounter, or RASQUAL. Use when mapping cis-regulatory genetic variants from heterozygous SNPs, separating cis from trans regulation, building chromatin QTL (caQTL) maps, validating GWAS variant function with allelic imbalance, or detecting reference allele mapping bias before downstream analysis.
- 100/100
bio-atac-seq-atac-peak-calling
GPTomics/bioSkills
Call accessible chromatin regions from ATAC-seq BAM files using MACS3, MACS2, Genrich, or HMMRATAC. Use when identifying open chromatin from aligned ATAC-seq, choosing between point-source vs HMM peak callers, applying ENCODE-style pseudoreplicate IDR, removing blacklist regions, or fixing 501bp consensus peaks for downstream differential analysis.
- 100/100
bio-atac-seq-atac-qc
GPTomics/bioSkills
ATAC-seq library quality control -- TSS enrichment, FRiP, fragment-size periodicity, library complexity (NRF/PBC1/PBC2), mitochondrial fraction, and ENCODE 4 thresholds. Use when assessing whether an ATAC-seq library passes ENCODE acceptance criteria, diagnosing transposition artefacts, comparing Omni-ATAC vs standard prep quality, or selecting which replicates to drop before peak calling.
- 100/100
bio-atac-seq-co-accessibility
GPTomics/bioSkills
Infer cis-regulatory connections (peak-to-peak co-accessibility) from scATAC-seq using Cicero, ArchR getCoAccessibility, or SCENIC+. Use when linking enhancer accessibility to promoter accessibility, identifying enhancer-gene pairs from chromatin alone (without paired RNA), running gene-regulatory inference combining ATAC + RNA, or comparing predicted regulatory contacts against Hi-C/Micro-C ground truth.
- 100/100
bio-atac-seq-consensus-peakset
GPTomics/bioSkills
Build a differential-ready consensus peakset from per-replicate ATAC-seq peaks using iterative overlap removal, fixed-width re-centering, and majority-rule overlap. Use when generating a stable peak coordinate system for downstream differential accessibility, ML feature engineering, cross-sample comparison, or fixed-width peak counts; covers Corces 2018 iterative overlap (501 bp), DiffBind summit re-centering, and ENCODE consistency rules.
- 100/100
bio-atac-seq-deep-learning-atac
GPTomics/bioSkills
Sequence-based deep learning for ATAC-seq using chromBPNet, BPNet, scBasset, or EnFormer. Use when correcting Tn5 bias with neural networks beyond k-mer models, predicting per-base accessibility profiles, scoring in silico variant effects at GWAS or rare-variant SNPs, discovering motifs via DeepLIFT/TF-MoDISco from a trained model, or generating cell-type-specific accessibility predictions for unobserved cell states.
- 100/100
bio-atac-seq-differential-accessibility
GPTomics/bioSkills
Identify differentially accessible chromatin regions across conditions using DiffBind, csaw, DESeq2, or edgeR. Use when comparing ATAC-seq accessibility between treatment groups, choosing between consensus-peak vs sliding-window approaches, picking the correct normalization (full library vs reads-in-peaks), correcting batch with SVA/RUVseq, or interpreting log2FC and FDR thresholds in a chromatin context.
- 100/100
bio-atac-seq-enhancer-gene-linking
GPTomics/bioSkills
Predict enhancer-gene regulatory connections from ATAC-seq using ABC, ENCODE-rE2G, HiChIP, or Cicero. Use when linking distal enhancers to target genes, choosing between contact-aware (ABC, ENCODE-rE2G), accessibility-only (Cicero), and orthogonal (HiChIP H3K27ac, EpiMap) approaches, validating predictions against CRISPRi-FlowFISH gold-standard, or building cell-type-specific regulatory maps for fine-mapping or therapeutic target discovery.
- 100/100
bio-atac-seq-footprinting
GPTomics/bioSkills
Detect transcription factor binding footprints in ATAC-seq using TOBIAS, HINT-ATAC, Wellington, or scprinter. Use when identifying bound TF sites within accessible regions, correcting Tn5 insertion bias before footprinting, choosing between cleavage-based and aggregate-based footprinters, or comparing differential TF activity between conditions.
- 100/100
bio-atac-seq-motif-deviation
GPTomics/bioSkills
Analyze TF motif accessibility variability across samples or single cells using chromVAR. Use when identifying TF motifs whose accessibility correlates with conditions, computing per-sample motif z-scores after matched background correction, comparing to ArchR / Signac equivalents, or distinguishing motif-accessibility signal from per-site footprinting.
- 100/100
bio-atac-seq-nucleosome-positioning
GPTomics/bioSkills
Map nucleosome center positions, occupancy, and fuzziness from ATAC-seq fragment-size patterns using NucleoATAC, ATACseqQC, DANPOS3, or scprinter. Use when characterizing nucleosome organization at promoters and enhancers, calling +1/-1 nucleosomes flanking NFRs, generating V-plots for chromatin structure visualization, or comparing nucleosome positioning between conditions.
- 100/100
bio-atac-seq-single-cell-atac
GPTomics/bioSkills
Process and analyze single-cell ATAC-seq data with Signac, ArchR, SnapATAC2, or Cell Ranger ATAC. Use when handling 10X scATAC or 10X Multiome (paired RNA+ATAC) data, performing per-cell QC, choosing between ArchR/Signac/SnapATAC2 ecosystems, building per-cluster consensus peaksets, integrating with paired scRNA-seq, doublet detection (AMULET vs ArchR vs scDblFinder), or running pseudobulk differential accessibility per cluster.
- 100/100
bio-bam-statistics
GPTomics/bioSkills
Generate alignment statistics using samtools flagstat, stats, depth, coverage, and mosdepth. Use when assessing alignment quality, calculating coverage, or generating QC reports.
- 100/100
bio-basecalling
GPTomics/bioSkills
Convert raw Nanopore signal data (FAST5/POD5) to nucleotide sequences using Dorado basecaller. Covers model selection, GPU acceleration, modified base detection, and quality filtering. Use when processing raw Nanopore data before alignment. Note: Guppy is deprecated; use Dorado for all new analyses.
- 100/100
bio-batch-downloads
GPTomics/bioSkills
Download large datasets from NCBI efficiently using history server, batching, and rate limiting. Use when performing bulk sequence downloads, handling large query results, or production-scale data retrieval.
- 100/100
bio-batch-processing
GPTomics/bioSkills
Process multiple sequence files in batch using Biopython. Use when working with many files, merging/splitting sequences, or automating file operations across directories.
- 100/100
bio-bedgraph-handling
GPTomics/bioSkills
Create, manipulate, and convert bedGraph files for genome browser visualization. Covers bedGraph format, conversion to/from bigWig, normalization, and signal processing. Use when handling coverage and signal tracks from ChIP-seq, ATAC-seq, or RNA-seq.
- 100/100
bio-blast-searches
GPTomics/bioSkills
Run remote BLAST searches against NCBI databases using Biopython Bio.Blast. Use when identifying unknown sequences, finding homologs, or searching for sequence similarity against NCBI's nr/nt databases.
- 100/100
bio-causal-genomics-colocalization-analysis
GPTomics/bioSkills
Test whether two traits share a causal variant at a genomic locus using Bayesian colocalization with coloc. Computes posterior probabilities for shared vs distinct causal variants between GWAS and eQTL signals. Use when determining if a GWAS signal and an eQTL share the same causal variant.
- 100/100
bio-causal-genomics-fine-mapping
GPTomics/bioSkills
Identify likely causal variants within GWAS loci using SuSiE for sum of single effects regression and FINEMAP for shotgun stochastic search. Computes posterior inclusion probabilities and credible sets to prioritize variants for functional follow-up. Use when narrowing GWAS association signals to candidate causal variants or building credible sets for functional validation.
- 100/100
bio-causal-genomics-mediation-analysis
GPTomics/bioSkills
Decompose genetic effects into direct and indirect paths through mediating variables using the mediation R package. Tests whether gene expression, methylation, or other molecular phenotypes mediate the effect of genetic variants on disease. Use when testing whether a molecular phenotype mediates the genotype-to-phenotype relationship.
- 100/100
bio-causal-genomics-mendelian-randomization
GPTomics/bioSkills
Estimate causal effects between exposures and outcomes using genetic variants as instrumental variables with TwoSampleMR. Implements IVW, MR-Egger, weighted median, and MR-PRESSO methods for robust causal inference from GWAS summary statistics. Use when testing whether an exposure causally affects an outcome using genetic instruments.
- 100/100
bio-causal-genomics-pleiotropy-detection
GPTomics/bioSkills
Detect and correct for horizontal pleiotropy in Mendelian randomization analyses using MR-PRESSO for outlier removal, MR-Egger regression for directional pleiotropy, and Steiger filtering for variant directionality. Use when validating MR results, detecting pleiotropic instruments, or running sensitivity analyses for causal inference.
- 100/100
bio-cfdna-preprocessing
GPTomics/bioSkills
Preprocesses cell-free DNA sequencing data including adapter trimming, alignment optimized for short fragments, and UMI-aware duplicate removal using fgbio. Applies cfDNA-specific quality thresholds and fragment length filtering. Use when processing plasma cfDNA sequencing data before downstream analysis.
- 100/100
bio-chipseq-differential-binding
GPTomics/bioSkills
Identifies differentially bound ChIP-seq regions between conditions using DiffBind (from BAMs), DESeq2, or PyDESeq2 (from count matrices). Handles normalization, statistical testing, and fold-change estimation with ChIP-seq-specific considerations. Use when comparing ChIP-seq binding between experimental conditions.
- 90/100
bio-chipseq-motif-analysis
GPTomics/bioSkills
De novo motif discovery and known motif enrichment analysis using HOMER and MEME-ChIP. Identify transcription factor binding motifs in ChIP-seq, ATAC-seq, or other genomic peak data. Use when finding enriched DNA motifs in peak sequences.
- 100/100
bio-chipseq-peak-annotation
GPTomics/bioSkills
Annotate ChIP-seq peaks to genomic features and nearest genes. Classify peaks as promoter, exon, intron, or intergenic using ChIPseeker (R), HOMER annotatePeaks.pl (CLI), or Python (pandas/pyranges). Supports pre-built annotation databases and custom GTF files. Handles promoter definition, feature priority, category collapsing, and signed distance-to-TSS. Use when assigning genomic context to ChIP-seq peaks or linking peaks to target genes.
- 100/100
bio-chipseq-peak-calling
GPTomics/bioSkills
ChIP-seq peak calling using MACS3 and HOMER findPeaks. Call narrow peaks for transcription factors or broad peaks for histone modifications. Supports single-caller and multi-caller consensus approaches, input control, fragment size modeling, and various output formats. Use when calling peaks from ChIP-seq alignments.
- 100/100
bio-chipseq-qc
GPTomics/bioSkills
ChIP-seq quality control metrics including FRiP (Fraction of Reads in Peaks), cross-correlation analysis (NSC/RSC), library complexity, and IDR (Irreproducibility Discovery Rate) for replicate concordance. Use to assess experiment quality before downstream analysis. Use when assessing ChIP-seq data quality metrics.
- 100/100
bio-chipseq-super-enhancers
GPTomics/bioSkills
Identifies super-enhancers from H3K27ac ChIP-seq data using ROSE and related tools. Use when studying cell identity genes, cancer-associated regulatory elements, or master transcription factor binding regions that cluster into large enhancer domains.
- 100/100
bio-chipseq-visualization
GPTomics/bioSkills
Visualize ChIP-seq data using deepTools, Gviz, and ChIPseeker. Create heatmaps, profile plots, and genome browser tracks. Visualize signal around peaks, TSS, or custom regions. Use when visualizing ChIP-seq signal and peaks.
- 100/100
bio-clinical-biostatistics-categorical-tests
GPTomics/bioSkills
Tests associations between categorical variables in clinical data using chi-square, Fisher's exact, and Cochran-Mantel-Haenszel tests. Computes effect sizes and post-hoc pairwise comparisons. Use when analyzing categorical outcomes or testing treatment-outcome independence in clinical trials.
- 100/100
bio-clinical-biostatistics-cdisc-data
GPTomics/bioSkills
Reads and prepares CDISC SDTM clinical trial data for analysis. Handles domain tables (DM, AE, EX, VS, LB), USUBJID-based joins, event-to-subject aggregation, and SUPPQUAL pivoting. Use when working with clinical trial datasets in CDISC/SDTM format or .xpt files.
- 100/100
bio-clinical-biostatistics-effect-measures
GPTomics/bioSkills
Computes and interprets treatment effect measures including odds ratios, risk ratios, number needed to treat, and confidence intervals from clinical trial data. Covers crude and adjusted measures, non-collapsibility of odds ratios, and forest plot visualization. Use when reporting treatment effects or comparing effect sizes across clinical studies.
- 100/100
bio-clinical-biostatistics-logistic-regression
GPTomics/bioSkills
Performs logistic regression for clinical trial outcomes including binary, ordinal, and multinomial models. Extracts odds ratios with confidence intervals, handles covariate adjustment, and provides Firth penalized regression for rare events or separation. Use when modeling binary or ordinal endpoints from clinical data.
- 100/100
bio-clinical-biostatistics-subgroup-analysis
GPTomics/bioSkills
Performs stratified and subgroup analyses for clinical trial data. Covers Mantel-Haenszel pooling, Breslow-Day homogeneity testing, interaction terms in regression, multiple comparisons correction, and forest plot visualization. Use when analyzing treatment effects across patient subgroups or controlling for stratification variables.
- 100/100
bio-clinical-biostatistics-trial-reporting
GPTomics/bioSkills
Prepares statistical tables and reports for clinical trials following regulatory standards. Generates Table 1 baseline characteristics, defines analysis populations (ITT, per-protocol, safety), performs multiple imputation for missing data, and follows CONSORT and ICH E9 guidelines. Use when creating analysis reports, handling missing data, or preparing regulatory submissions from clinical trials.
- 85/100
bio-clinical-databases-clinvar-lookup
GPTomics/bioSkills
Query ClinVar for variant pathogenicity classifications, review status, and disease associations via REST API or local VCF. Use when determining clinical significance of variants for diagnostic or research purposes.
- 100/100
bio-clinical-databases-dbsnp-queries
GPTomics/bioSkills
Query dbSNP for rsID lookups, variant annotations, and cross-references to other databases. Use when mapping between rsIDs and genomic coordinates or retrieving basic variant information.
- 100/100
bio-clinical-databases-gnomad-frequencies
GPTomics/bioSkills
Query gnomAD for population allele frequencies to assess variant rarity. Use when filtering variants by population frequency for rare disease analysis or determining if a variant is common in the general population.
- 100/100
bio-clinical-databases-hla-typing
GPTomics/bioSkills
Call HLA alleles from NGS data using OptiType, HLA-HD, or arcasHLA for immunogenomics applications. Use when determining HLA genotype for transplant matching, neoantigen prediction, or pharmacogenomic screening.
- 100/100
bio-clinical-databases-myvariant-queries
GPTomics/bioSkills
Query myvariant.info API for aggregated variant annotations from multiple databases (ClinVar, gnomAD, dbSNP, COSMIC, etc.) in a single request. Use when annotating variants with clinical and population data from multiple sources simultaneously.
- 100/100
bio-clinical-databases-pharmacogenomics
GPTomics/bioSkills
Query PharmGKB and CPIC for drug-gene interactions, pharmacogenomic annotations, and dosing guidelines. Use when predicting drug response from genetic variants or implementing clinical pharmacogenomics.
- 100/100
bio-clinical-databases-polygenic-risk
GPTomics/bioSkills
Calculate polygenic risk scores using PRSice-2, LDpred2, or PRS-CS from GWAS summary statistics. Use when predicting disease risk from genome-wide genetic variants.
- 100/100
bio-clinical-databases-somatic-signatures
GPTomics/bioSkills
Extract and analyze mutational signatures from somatic variants using SigProfiler or MutationalPatterns to characterize mutagenic processes. Use when identifying DNA damage mechanisms or etiology in cancer genomes.
- 100/100
bio-clinical-databases-tumor-mutational-burden
GPTomics/bioSkills
Calculate tumor mutational burden from panel or WES data with proper normalization and clinical thresholds. Use when assessing immunotherapy eligibility or characterizing tumor immunogenicity.
- 100/100
bio-clinical-databases-variant-prioritization
GPTomics/bioSkills
Filter and prioritize variants by pathogenicity, population frequency, and clinical evidence for rare disease analysis. Use when identifying candidate disease-causing variants from exome or genome sequencing.
- 100/100
bio-clip-seq-binding-site-annotation
GPTomics/bioSkills
Annotate CLIP-seq binding sites to genomic features including 3'UTR, 5'UTR, CDS, introns, and ncRNAs. Use when characterizing where an RBP binds in transcripts.
- 100/100
bio-clip-seq-clip-alignment
GPTomics/bioSkills
Align CLIP-seq reads to the genome with crosslink site awareness. Use when mapping preprocessed CLIP reads for peak calling.
- 100/100
bio-clip-seq-clip-motif-analysis
GPTomics/bioSkills
Identify enriched sequence motifs at CLIP-seq binding sites for RBP binding specificity. Use when characterizing the sequence preferences of an RNA-binding protein.
- 100/100
bio-clip-seq-clip-peak-calling
GPTomics/bioSkills
Call protein-RNA binding site peaks from CLIP-seq data using CLIPper, PureCLIP, or Piranha. Use when identifying RBP binding sites from aligned CLIP reads.
- 100/100
bio-clip-seq-clip-preprocessing
GPTomics/bioSkills
Preprocess CLIP-seq data including adapter trimming, UMI extraction, and PCR duplicate removal. Use when preparing raw CLIP, iCLIP, or eCLIP reads for peak calling.
Page 27 of 218