Descubre Habilidades de Claude para data science & ml. Explora 61 habilidades y encuentra las capacidades perfectas para tus flujos de trabajo de IA.
Provides a foundational architecture map and decision guide for managing neural network pipelines within the HAIPipe research framework.
Synthesizes unified answers by orchestrating independent deliberations and adversarial debates between Claude, GPT-5 Codex, and Gemini Pro.
Transcribes audio files locally using whisper.cpp with CUDA acceleration for high-performance speech-to-text conversion.
Orchestrates model lifecycles and provides HuggingFace-style APIs for modular neural network research pipelines.
Standardizes raw academic and medical data files into structured SourceSet DataFrames for research pipelines.
Manages a robust four-stage pipeline that converts modular Python scripts into interactive Jupyter notebooks and comprehensive markdown documentation.
Standardizes the integration of external machine learning libraries and custom neural network modules within the Haipipe architecture.
Provides expert guidance on marketing research methodology, survey design, and statistical data analysis frameworks.
Implements robust Bayesian time series models using Stan and JAGS for advanced statistical forecasting and analysis.
Performs advanced causal mediation analysis to decompose total effects into direct and indirect effects using industry-standard R packages.
Streamlines clinical trial design and simulation using the Mediana framework for Clinical Scenario Evaluation (CSE).
Provides comprehensive methodological guidance and R implementation patterns for conducting rigorous network meta-analyses.
Performs comprehensive diagnostic test accuracy analysis in R, including ROC curves, optimal cutpoints, and meta-analysis.
Implements and optimizes complex clinical trial designs including multi-arm, adaptive, and stratified patterns for biostatistical research.
Analyzes databases using SQL queries to generate actionable insights, trend reports, and data visualizations.
Provides expert methodological guidance and R code implementation for conducting rigorous pairwise meta-analyses following Cochrane and PRISMA standards.
Implements advanced Bayesian regression models including linear, logistic, and robust variations using Stan and JAGS.
Provides comprehensive methodological guidance for Multilevel Network Meta-Regression (ML-NMR) using the multinma package and NICE DSU standards.
Performs causal inference using genetic variants as instrumental variables through comprehensive R-based Mendelian Randomization workflows.
Implements advanced Bayesian survival and time-to-event models with support for censoring and frailty effects.
Optimizes machine learning models using advanced hyperparameter tuning strategies within the R tidymodels ecosystem.
Performs comprehensive genomics and bioinformatics statistical analysis using Bioconductor and R tidy modeling workflows.
Provides expert guidance and R implementation patterns for survival analysis methods and non-proportional hazards in clinical trials.
Implements industry-standard clinical trial design and statistical analysis workflows using regulatory-compliant R packages.
Performs comprehensive MCMC diagnostic checks and posterior predictive assessments for Bayesian models implemented in Stan or JAGS.
Streamlines data preprocessing and feature engineering using R's Tidymodels recipes framework.
Analyzes R machine learning code to detect data leakage, resampling violations, and workflow anti-patterns using tidymodels principles.
Performs comprehensive Bayesian statistical modeling and posterior analysis using Stan-based R packages like brms and rstanarm.
Implements hierarchical and multilevel Bayesian models with optimized parameterizations for robust statistical inference.
Optimizes clinical trial designs through advanced sample size determination, event count tuning, and multi-objective tradeoff analysis.
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