data science & ml Claude 스킬을 발견하세요. 61개의 스킬을 탐색하고 AI 워크플로우에 완벽한 기능을 찾아보세요.
Optimizes LLM interactions through advanced prompting techniques like few-shot learning, chain-of-thought, and systematic template design.
Manages fast, reproducible scientific Python environments by unifying the conda and PyPI ecosystems using the Rust-based Pixi tool.
Identifies outliers and unusual patterns in datasets using advanced machine learning algorithms to uncover fraud, defects, or security threats.
Automates the transition of time-series forecasting pipelines from TimeGPT-1 to the enhanced TimeGPT-2 architecture.
Optimizes Large Language Model (LLM) prompts to minimize token consumption, reduce operational costs, and enhance response quality.
Provides expert guidance and best practices for conducting Matching-Adjusted Indirect Comparisons (MAIC) in biostatistical research.
Analyzes GitHub repositories to extract computational methodologies and automatically draft scientific Methods sections.
Generates production-ready Python forecasting pipelines using Nixtla's TimeGPT API to automate complex time-series analysis.
Validates time series forecast quality and detects performance degradation by comparing current metrics against historical benchmarks.
Facilitates the creation, review, and optimization of Bayesian models using PyMC 5 and ArviZ diagnostics.
Scaffolds production-ready time-series forecasting experiments using Nixtla's suite of machine learning and statistical libraries.
Guides the implementation and review of Simulated Treatment Comparisons (STC) using NICE DSU TSD 18 compliant methodologies.
Builds robust Retrieval-Augmented Generation (RAG) systems for LLM applications using vector databases and semantic search.
Automates the creation, selection, and transformation of data features to optimize machine learning model performance and accuracy.
Accesses and analyzes Arxiv research papers directly within Claude to facilitate academic research and technical Q&A.
Builds sophisticated recommendation systems using collaborative filtering, content-based, and hybrid modeling techniques.
Automates the end-to-end process of training, evaluating, and persisting machine learning models from raw datasets.
Automates time series analysis and forecasting to predict future trends and seasonal patterns using advanced machine learning models.
Optimizes LLM performance and reliability through advanced prompting techniques like few-shot learning and chain-of-thought reasoning.
Simplifies the creation and review of Bayesian models using BUGS and JAGS declarative syntax and precision parameterization.
Builds robust Retrieval-Augmented Generation (RAG) systems using vector databases and semantic search to ground AI responses in proprietary knowledge.
Architects sophisticated LLM applications using the LangChain framework to implement agents, memory management, and complex workflow chains.
Automates the end-to-end Support Vector Machine (SVM) workflow for linear and non-linear classification tasks within Teradata Vantage.
Build, automate, and manage end-to-end MLOps pipelines from data ingestion through production deployment.
Deploys machine learning models into full-stack applications using production-ready FastAPI endpoints, Next.js UI components, and Supabase schemas.
Implements intelligent model routing strategies to optimize for cost, performance, and reliability when building AI applications with OpenRouter.
Quantifies forecast uncertainty by generating prediction intervals and confidence bands for time series models using conformal prediction.
Configures cloud GPU environments and provides selection guidance for Modal, Lambda Labs, and RunPod platforms.
Automatically selects and executes the optimal forecasting engine between StatsForecast and TimeGPT based on your data's unique characteristics.
Architects sophisticated LLM applications using LangChain patterns for autonomous agents, conversational memory, and complex workflow orchestration.
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