data science & ml Claude 스킬을 발견하세요. 61개의 스킬을 탐색하고 AI 워크플로우에 완벽한 기능을 찾아보세요.
Performs comprehensive Bayesian statistical modeling and posterior analysis using Stan-based R packages like brms and rstanarm.
Analyzes R machine learning code to detect data leakage, resampling violations, and workflow anti-patterns using tidymodels principles.
Streamlines data preprocessing and feature engineering using R's Tidymodels recipes framework.
Identifies and verifies recurring structural patterns across diverse domains to validate novelty and discover universal insights.
Performs comprehensive MCMC diagnostic checks and posterior predictive assessments for Bayesian models implemented in Stan or JAGS.
Implements industry-standard clinical trial design and statistical analysis workflows using regulatory-compliant R packages.
Stress-tests research findings and syntheses through recursive adversarial testing to uncover hidden biases and overlooked evidence.
Analyzes information gaps and silences across multiple sources to reveal structural biases, funding influences, and hidden narrative frames.
Enables developers to programmatically build, design, and orchestrate autonomous AI agents using the Claude Agent SDK.
Provides expert guidance and R implementation patterns for survival analysis methods and non-proportional hazards in clinical trials.
Generates high-performance text embeddings for RAG systems, semantic search, and document clustering using the Gemini API.
Optimizes machine learning models using advanced hyperparameter tuning strategies within the R tidymodels ecosystem.
Implements advanced Bayesian survival and time-to-event models with support for censoring and frailty effects.
Performs causal inference using genetic variants as instrumental variables through comprehensive R-based Mendelian Randomization workflows.
Provides comprehensive methodological guidance for Multilevel Network Meta-Regression (ML-NMR) using the multinma package and NICE DSU standards.
Manages a centralized catalog of AI coaching skills, TypeScript contracts, and safety guardrails for the Run-Smart platform.
Implements advanced Bayesian regression models including linear, logistic, and robust variations using Stan and JAGS.
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