发现data science & ml类别的 Claude 技能。浏览 61 个技能,找到适合您 AI 工作流程的完美功能。
Manages, executes, and converts Jupyter notebooks to streamline data science and machine learning workflows.
Guides users through an interactive interview and research process to build custom AI agents using the OpenHands SDK.
Powers local LLM integration and performance tuning for private, cost-effective AI development using Ollama.
Orchestrates unified AI memory by combining local knowledge graphs with semantic cloud search for persistent, high-context retrieval.
Designs and manages robust state schemas for AI agent workflows using LangGraph best practices and modern design patterns.
Implements real-time voice agents, high-accuracy transcription, and text-to-speech using leading audio AI providers.
Orchestrates multi-agent workflows using a central supervisor pattern to intelligently route tasks between specialized worker agents.
Simplifies Large Language Model fine-tuning and alignment using parameter-efficient techniques like LoRA, QLoRA, and DPO.
Optimizes LLM performance and reduces API costs by implementing Redis-powered vector similarity caching.
Enhances search precision in RAG pipelines by re-scoring retrieved documents using high-accuracy Cross-Encoders and LLM relevance patterns.
Converts text into high-dimensional vector representations for semantic search, document similarity, and RAG pipelines.
Improves semantic search accuracy by generating hypothetical answer documents to bridge vocabulary gaps in RAG pipelines.
Implements dynamic workflow routing, retry loops, and semantic branching for LangGraph-based AI agents.
Implements high-performance parallel execution patterns for LangGraph workflows using fan-out/fan-in and map-reduce strategies.
Curates high-quality evaluation datasets for AI models using multi-agent validation and automated quality scoring.
Implements Anthropic's contextual retrieval technique to improve RAG performance by prepending situational metadata to document chunks.
Implements advanced retrieval-augmented generation systems that integrate text and image data for hybrid search and visual question answering.
Enhances RAG pipelines by prepending situational context to document chunks to preserve semantic meaning and significantly improve retrieval accuracy.
Implements autonomous reasoning patterns like ReAct and Plan-and-Execute to enable LLMs to solve complex, multi-step tasks.
Optimizes LLM performance through production-ready patterns including Chain-of-Thought, dynamic few-shot learning, and automated prompt tuning.
Integrates advanced vision-language models for image analysis, document understanding, and multimodal reasoning within Claude Code.
Enhances RAG retrieval quality by generating and embedding hypothetical answer documents to bridge vocabulary gaps between queries and data.
Builds self-correcting RAG systems using LangGraph for adaptive retrieval, document grading, and web search fallbacks.
Coordinates complex multi-agent workflows using a centralized supervisor-worker orchestration pattern.
Persists semantic context and project decisions across multiple Claude Code sessions using Mem0.
Builds production-ready AI workflows using Python decorators for task orchestration and parallel execution.
Implements advanced Self-RAG and Corrective-RAG architectures for self-correcting AI retrieval systems.
Implements dynamic workflow branching and retry logic for AI agentic systems using LangGraph patterns.
Optimizes AI application performance through production-ready prompt engineering patterns, versioning, and automated tuning.
Implements autonomous agentic workflows and reasoning patterns for complex, multi-step LLM tasks.
Scroll for more results...