data science & ml Claude 스킬을 발견하세요. 61개의 스킬을 탐색하고 AI 워크플로우에 완벽한 기능을 찾아보세요.
Optimizes LLM performance through advanced prompt engineering, RAG architecture design, and agentic system orchestration.
Interacts with diverse large language models through a command-line interface to perform tasks like prompt execution, data extraction, and embedding management.
Streamlines code reviews for the Llama Stack repository by focusing on distributed system patterns, API compatibility, and automated testing fixtures.
Designs and implements sophisticated multi-agent architectures to overcome context limitations and handle complex task decomposition.
Generates static bootstrap packages to initialize MOVA AI models and environments without requiring external LLM calls.
Optimizes embedding models and chunking strategies to enhance semantic search and RAG application performance.
Builds high-performance Retrieval-Augmented Generation systems using vector databases and semantic search to ground AI responses in external knowledge.
Implement advanced LLM prompting techniques like few-shot learning and chain-of-thought to enhance production AI reliability and output quality.
Converts literary works into high-quality supervised fine-tuning (SFT) datasets to train AI models in specific authorial voices.
Builds and orchestrates end-to-end MLOps pipelines from data preparation and model training to production deployment.
Architects and manages the end-to-end lifecycle of LLM-powered applications using agentic development methodologies.
Generates concise, 24-hour tactical financial market briefs across multiple asset classes using real-time global news.
Optimizes AI context windows through strategic compression, masking, and partitioning to handle larger tasks and reduce operational costs.
Implement comprehensive evaluation frameworks for LLM applications using automated metrics, human feedback, and statistical benchmarking.
Builds reactive Python notebooks and interactive data applications using marimo's directed acyclic graph (DAG) execution model.
Implements semantic search and AI-driven discovery for Obsidian vaults using vector embeddings and advanced chunking strategies.
Optimizes and orchestrates advanced prompt engineering workflows for Claude 4.5 using industry-best patterns, guardrails, and context management.
Optimizes Reinforcement Learning training by preventing premature stops and implementing adaptive recovery for trading models.
Enforces high-quality Alpaca API data usage for crypto trading to prevent model failures caused by unreliable data fallbacks.
Synthesizes scientific lab notebooks into structured, publication-quality reports with AI-guided refinement and PDF export.
Performs exact symbolic mathematical computations using SymPy to ensure accuracy without LLM estimation errors.
Facilitates the creation, review, and optimization of Bayesian statistical models using the PyMC 5 framework.
Implements diverse Bayesian regression techniques using Stan and JAGS for advanced statistical modeling and uncertainty quantification.
Build production-grade Retrieval-Augmented Generation (RAG) systems to ground LLM applications in external knowledge.
Integrates Databricks Genie rooms into AI agent workflows to enable conversational BI and natural language data querying.
Builds production-grade MLOps pipelines by orchestrating data preparation, model training, validation, and automated deployment workflows.
Implements robust Retrieval-Augmented Generation systems to connect LLMs with external knowledge bases and vector databases.
Configures and manages diverse LLM providers, streaming callbacks, and token optimization strategies for XSky-based agentic workflows.
Identifies and resolves memory exhaustion issues in Python and PyTorch applications, specifically targeting matplotlib figures and tensor accumulation.
Enforces adherence to PRISM architectural patterns by validating the implementation of Runner and Trainer classes during refactoring.
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