data science & ml Claude 스킬을 발견하세요. 61개의 스킬을 탐색하고 AI 워크플로우에 완벽한 기능을 찾아보세요.
Evaluates research rigor and scientific claims by assessing methodology, statistical validity, and potential biases using standardized frameworks.
Performs specialized biological validation for ChIP-seq data by calculating cross-correlation metrics and fraction of reads in peaks.
Performs transcription factor footprinting and differential binding detection on ATAC-seq data using the TOBIAS framework.
Automates the retrieval of SageMaker backtest results from Amazon S3 for local analysis and performance comparison.
Implements intrinsic motivation for AI agents by rewarding compression progress and the discovery of learnable patterns.
Performs ultra-fast portfolio backtesting and trading strategy analysis using the Polars library.
Optimizes trade execution using advanced algorithms like TWAP, VWAP, and Iceberg orders to minimize market impact and slippage.
Synthesizes multiple advanced theoretical frameworks from world-class researchers to solve complex problems through high-level meta-reasoning.
Implements interventional and counterfactual reasoning patterns for deliberate System 2 deep learning and causal world modeling.
Generates structured plans to decompose complex AI include chains into modular, reusable components.
Evaluates research rigor, methodology, and statistical validity to perform critical analysis of scientific claims.
Composes complex 3D environments and terrains for robotic simulation and reinforcement learning training.
Provides a unified framework for humanoid robot development, reinforcement learning training, and sim-to-real deployment.
Manipulates, analyzes, and visualizes phylogenetic trees and genomic data with the Environment for Tree Exploration (ETE) framework.
Integrates polynomial functors and category-theoretic operads to model complex interaction patterns and dynamical systems within AI workflows.
Deploys and manages cloud-based AI agent swarms using event-driven workflow automation and intelligent coordination.
Implements high-performance persistent memory and learning patterns for AI agents using AgentDB.
Processes and analyzes complex physiological signals including ECG, EEG, and EDA for psychophysiology research and medical data science.
Implements sheaf-theoretic neural network coordination for distributed consensus and complex graph-based multi-agent systems.
Orchestrates a polyglot environment for social network analysis and multimedia processing using Clojure, Julia, and DuckDB.
Performs Gene Ontology and KEGG pathway enrichment analysis from genomic regions or gene lists with automated R-based visualizations.
Trains and deploys complex neural networks across distributed E2B sandbox environments directly within Claude.
Enables Claude to perform complex scientific research by providing access to over 600 bioinformatics, genomics, and cheminformatics tools.
Implements high-performance adaptive learning and experience replay for AI agents using AgentDB's ultra-fast vector storage.
Transforms raw datasets into impactful visual narratives using advanced data visualization techniques and narrative design principles.
Streamlines the development of data processing pipelines, ABAP integrations, and machine learning scenarios within SAP Data Intelligence Cloud.
Automates the retrieval of training and test data dependencies from S3 for local machine learning model development and backtesting.
Streamlines in-database machine learning workflows within SAP HANA using the Python hana-ml library.
Analyzes protein-mediated chromatin interactions to identify and visualize regulatory communities from ChIA-PET datasets.
Streamlines the deployment and management of enterprise AI/ML workloads and LLM orchestration on SAP BTP.
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