data science & ml向けのClaudeスキルを発見してください。61個のスキルを閲覧し、AIワークフローに最適な機能を見つけましょう。
Manages and automates complex text transformation pipelines via the TextCleaner REPL interface.
Transforms raw business data into compelling narratives and persuasive executive presentations using proven storytelling frameworks.
Provides a specialized laboratory environment for experimenting with and implementing advanced Claude capabilities.
Provides foundational strategies for managing AI agent context windows, attention mechanics, and token usage to improve model performance.
Implements robust hybrid search systems by combining vector similarity and keyword-based retrieval for enhanced RAG performance.
Maximizes LLM context efficiency and reduces token costs through strategic compaction, masking, and partitioning techniques.
Provides expert guidance for designing and implementing distributed multi-agent architectures to scale task complexity beyond single-context limits.
Implements sophisticated memory architectures for AI agents to persist state, build knowledge graphs, and maintain long-term context.
Implements high-performance similarity search and vector database patterns for AI-driven applications.
Calculates comprehensive portfolio risk metrics and performance indicators for quantitative trading strategies.
Designs and implements sophisticated LLM applications using LangChain 1.x and LangGraph for advanced agent orchestration and state management.
Builds robust, production-grade backtesting systems to validate trading strategies while eliminating common statistical biases.
Builds and automates end-to-end MLOps pipelines from data preparation and model training to production deployment and monitoring.
Implement comprehensive evaluation strategies for LLM applications using automated metrics, human feedback, and benchmarking.
Facilitates drug discovery and therapeutic machine learning by providing AI-ready datasets, benchmarks, and molecular oracles.
Queries and analyzes over 240 million scholarly works, authors, and institutions using the OpenAlex open-access database.
Builds robust Retrieval-Augmented Generation systems using vector databases, semantic search, and advanced retrieval patterns for LLM applications.
Optimizes vector database performance by tuning HNSW parameters, quantization strategies, and memory usage for efficient AI applications.
Accesses and analyzes protein-protein interaction networks and functional enrichment data using the STRING database API.
Builds, analyzes, and visualizes complex networks and graph data structures using the Python NetworkX library.
Performs differential gene expression analysis on bulk RNA-seq data using the DESeq2 framework within Python.
Automates laboratory workflows and hardware control using a hardware-agnostic Python interface for liquid handlers and analytical equipment.
Queries the ChEMBL database for bioactive molecules, drug targets, and medicinal chemistry data to support drug discovery research.
Queries the NHGRI-EBI GWAS Catalog to retrieve genetic variant associations, study metadata, and comprehensive summary statistics for genomic research.
Master advanced prompt engineering techniques to maximize LLM performance, reliability, and controllability in production environments.
Analyzes biological data including sequences, phylogenetic trees, and microbial community diversity using the scikit-bio Python library.
Optimizes embedding model selection and chunking strategies to improve semantic search and RAG application performance.
Empowers AI agents to conduct scientific research by providing standardized access to over 600 bioinformatics, cheminformatics, and genomics tools.
Manages annotated data matrices for single-cell genomics and large-scale biological datasets using the AnnData Python framework.
Designs, analyzes, and generates protein sequences and structures using Evolutionary Scale Modeling (ESM3 and ESM C).
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