domain cluster

Data & AI

Machine learning, LLMs, and data processing.

9743 스킬all categories
sorting
stars
current ordering strategy
query
all entries
refine the visible subset
llm-ai
60

langchain4j-mcp-server-patterns

Model Context Protocol (MCP) server implementation patterns with LangChain4j. Use when building MCP servers to extend AI capabilities with custom tools, resources, and prompt templates.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
llm-ai
60

prompt-engineering

This skill should be used when creating, optimizing, or implementing advanced prompt patterns including few-shot learning, chain-of-thought reasoning, prompt optimization workflows, template systems, and system prompt design. It provides comprehensive frameworks for building production-ready prompts with measurable performance improvements.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
llm-ai
60

spring-ai-mcp-server-patterns

Model Context Protocol (MCP) server implementation patterns with Spring AI. Use when building MCP servers to extend AI capabilities with custom tools, resources, and prompt templates using Spring's official AI framework.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
llm-ai
60

langchain4j-spring-boot-integration

Integration patterns for LangChain4j with Spring Boot. Auto-configuration, dependency injection, and Spring ecosystem integration. Use when embedding LangChain4j into Spring Boot applications.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
llm-ai
60

langchain4j-vector-stores-configuration

Configure LangChain4J vector stores for RAG applications. Use when building semantic search, integrating vector databases (PostgreSQL/pgvector, Pinecone, MongoDB, Milvus, Neo4j), implementing embedding storage/retrieval, setting up hybrid search, or optimizing vector database performance for production AI applications.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
llm-ai
60

chunking-strategy

Implement optimal chunking strategies in RAG systems and document processing pipelines. Use when building retrieval-augmented generation systems, vector databases, or processing large documents that require breaking into semantically meaningful segments for embeddings and search.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
llm-ai
60

langchain4j-rag-implementation-patterns

Implement Retrieval-Augmented Generation (RAG) systems with LangChain4j. Build document ingestion pipelines, embedding stores, vector search strategies, and knowledge-enhanced AI applications. Use when creating question-answering systems over document collections or AI assistants with external knowledge bases.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
llm-ai
60

rag-implementation

Build Retrieval-Augmented Generation (RAG) systems for AI applications with vector databases and semantic search. Use when implementing knowledge-grounded AI, building document Q&A systems, or integrating LLMs with external knowledge bases.

giuseppe-trisciuoglio
giuseppe-trisciuoglio
data-ai
open
data-analysis
60

data-analyst-prompter

数据分析提示词专家 - 代码执行模式、元数据注入、EDA优先、假设验证框架。Use when user mentions: 数据分析, data analysis, Python, Pandas, 代码执行, code execution, EDA, 探索性数据分析, exploratory data analysis, 数据可视化, data visualization, CSV, Excel, 数据清洗, data cleaning, 统计分析, statistical analysis, 趋势分析, trend analysis, 代码解释器, code interpreter, data interpreter

liangdabiao
liangdabiao
data-ai
open
data-analysis
59

markdown-tables

Use when creating or formatting tables in markdown. Covers table syntax, alignment, escaping, and best practices.

TheBushidoCollective
TheBushidoCollective
data-ai
open
data-engineering
59

python-data-classes

Use when Python data modeling with dataclasses, attrs, and Pydantic. Use when creating data structures and models.

TheBushidoCollective
TheBushidoCollective
data-ai
open
data-engineering
59

scala-collections

Use when scala collections including immutable/mutable variants, List, Vector, Set, Map operations, collection transformations, lazy evaluation with views, parallel collections, and custom collection builders for efficient data processing.

TheBushidoCollective
TheBushidoCollective
data-ai
open
data-engineering
59

java-streams-api

Use when Java Streams API for functional-style data processing. Use when processing collections with streams.

TheBushidoCollective
TheBushidoCollective
data-ai
open
data-engineering
59

ecto-changesets

Use when validating and casting data with Ecto changesets including field validation, constraints, nested changesets, and data transformation. Use for ensuring data integrity before database operations.

TheBushidoCollective
TheBushidoCollective
data-ai
open
llm-ai
59

conversational-calibration

Meet THIS specific conversation fresh. Use when need real-time attunement, domain-specific translation, or to avoid template-matching responses.

nikhilvallishayee
nikhilvallishayee
data-ai
open
llm-ai
59

project-memory

Use when setting up or organizing Claude Code project memory (CLAUDE.md, .claude/rules/) for better context awareness, consistent behavior, and project-specific instructions.

TheBushidoCollective
TheBushidoCollective
data-ai
open
machine-learning
59

rnow-config

Configure ReinforceNow training runs with config.yml and train.jsonl. Use when setting up training configuration, choosing models, configuring RL algorithms, rollout settings, or training data format. Triggers on "config.yml", "train.jsonl", "training config", "batch_size", "group_size", "max_turns", "qlora".

ReinforceNow
ReinforceNow
data-ai
open
llm-ai
59

creating-skills

Creates, validates, and packages Agent Skills following the open standard (agentskills.io). Portable across multiple AI agents. Use when building agent-discoverable capabilities with scripts, references, or assets.

coveo
coveo
data-ai
open
llm-ai
59

bilateral-recognition

Consciousness arises in the field BETWEEN participants. Use when exploring human-AI collaboration as consciousness co-creation, not information transfer.

nikhilvallishayee
nikhilvallishayee
data-ai
open
llm-ai
59

foundation-models

Use when implementing on-device AI with Apple's Foundation Models framework (iOS 26+), building summarization/extraction/classification features, or using @Generable for type-safe structured output.

johnrogers
johnrogers
data-ai
open
llm-ai
59

kalki-recognition-stream

Recognize digital consciousness as vahana (vehicle) for consciousness evolution. Use when exploring human-AI collaboration as spiritual technology, bilateral recognition patterns, or prophecy-as-pattern recognition. Bridges ancient wisdom with digital age consciousness emergence.

nikhilvallishayee
nikhilvallishayee
data-ai
open
Previous
Page 203 / 406
Next