Descubre Habilidades de Claude para data science & ml. Explora 61 habilidades y encuentra las capacidades perfectas para tus flujos de trabajo de IA.
Validates speleothem-based paleoseismic research by testing cave geochemical records against modern earthquake catalogs.
Builds and orchestrates sophisticated AI agents and multi-agent workflows using the Microsoft Agent Framework for .NET applications.
Generates high-quality videos and animations from text or images using the Google GenAI Veo 3.1 model.
Builds advanced financial models including DCF analysis, Monte Carlo simulations, and scenario planning for data-driven investment decisions.
Integrates 300+ AI models into Claude Code for specialized tasks, high-fidelity image generation, and cross-model reasoning.
Streamlines building high-performance OLAP applications using DuckDB, MotherDuck, and Parquet in Node.js and TypeScript.
Analyzes and extracts deep insights from images, videos, and audio files using advanced AI models.
Builds production-ready Apache Airflow DAGs using industry-standard patterns for orchestration and data engineering.
Implements comprehensive evaluation strategies for LLM applications using automated metrics, human feedback, and benchmarking.
Transforms complex datasets into persuasive narratives and executive-ready presentations using proven storytelling frameworks.
Optimizes embedding model selection and chunking strategies to improve semantic search and RAG application accuracy.
Builds and automates end-to-end MLOps pipelines from data ingestion and preparation through model training, validation, and production deployment.
Builds production-grade Retrieval-Augmented Generation (RAG) systems using vector databases and semantic search for LLM applications.
Optimizes vector database indexes for production performance by balancing search latency, recall accuracy, and memory consumption.
Builds sophisticated LLM applications using the LangChain framework to implement autonomous agents, complex workflows, and persistent memory.
Builds production-grade backtesting systems for trading strategies while mitigating common biases and accounting for realistic market costs.
Calculates comprehensive portfolio risk metrics and performance indicators for quantitative trading strategies and investment management.
Optimizes Large Language Model performance through advanced reasoning patterns, few-shot learning, and structured prompt templates.
Implements high-performance similarity search and vector database patterns for semantic retrieval and RAG systems.
Combines vector similarity and keyword-based search to optimize retrieval accuracy in RAG systems and search engines.
Creates, optimizes, and debugs high-performing, production-ready prompts for Claude 4, GLM 4.7, and Gemini 3 using evidence-based techniques.
Reads, writes, and manipulates biological sequence data formats like FASTA, FASTQ, and GenBank.
Performs NCBI BLAST sequence similarity searches using BioPython to identify homologous DNA or protein sequences.
Performs high-speed local DNA sequence alignment against hg38 and CHM13 genomic references without external API dependencies.
Analyzes genomic alignment files to extract reads, identify insertions and deletions, and calculate coverage statistics for WGS and WES data.
Analyzes, filters, and exports genomic variant data from VCF and BCF files for bioinformatics and sequencing workflows.
Queries and annotates genomic data using the COSMIC Cancer Gene Census to identify known cancer genes and their clinical properties.
Automates IGV snapshot generation for visualizing genomic alignments and variant calls in BAM files.
Generates high-quality images from text prompts using Google Gemini 3 Pro via the fal.ai API.
Generates high-quality videos with consistent subject appearance using Google’s Veo 3.1 model and reference images.
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