convex-queries
About
This skill provides specialized guidance for implementing Convex query functions. Use it when defining, registering, and optimizing queries, including for pagination, full-text search, and indexing patterns. It offers comprehensive best practices and reference documentation for developers working with the Convex database.
Quick Install
Claude Code
Recommended/plugin add https://github.com/Sstobo/convex-skillsgit clone https://github.com/Sstobo/convex-skills.git ~/.claude/skills/convex-queriesCopy and paste this command in Claude Code to install this skill
Documentation
Convex Queries Skill
This skill provides specialized guidance for implementing Convex query functions, including best practices for function definition, registration, calling patterns, pagination, indexing, and full text search.
When to Use This Skill
Use this skill when:
- Defining new query functions to fetch data from the Convex database
- Implementing pagination for large result sets
- Setting up indexes for efficient querying
- Using full text search functionality
- Calling queries from other Convex functions
- Optimizing query performance
Skill Resources
This skill includes comprehensive reference documentation in references/query-guidelines.md that covers:
Core Query Development
- Function definition syntax using the new function syntax
- Query registration (
queryandinternalQuery) - Argument validators and their usage
- Function calling patterns (
ctx.runQuery) - Function references (
apiandinternalobjects) - File-based routing for query paths
Query Optimization
- Query guidelines (avoiding
filter, using indexes withwithIndex) - Ordering results with
.order('asc')and.order('desc') - Using
.unique()for single document retrieval - Async iteration with
for awaitsyntax - Query limits and performance considerations
Advanced Query Features
- Pagination: Implementing paginated queries with
paginationOptsValidator- Understanding
paginationOpts(numItems and cursor) - Reading paginated results (page, isDone, continueCursor)
- Understanding
- Full Text Search: Setting up and querying search indexes
- Indexing: Creating and using indexes for efficient lookups
- Built-in indexes (by_id, by_creation_time)
- Custom index naming and field ordering
- Nested queries with multiple indexes
Database Queries
- Reading from the Convex database with
ctx.db.query() - Index usage with
.withIndex() - Result collection with
.collect()and.take(n)
How to Use This Skill
- Read the reference documentation at
references/query-guidelines.mdto understand the complete query patterns - Follow the syntax examples for defining query functions with proper validators
- Use indexes for efficient filtering instead of the
filtermethod - Implement pagination when dealing with large datasets
- Leverage full text search for text-based filtering needs
- Optimize ordering by understanding how Convex orders results
Key Query Guidelines
- ALWAYS include argument validators for all query functions
- Do NOT use
filterin queries; usewithIndexinstead - Use
ctx.runQueryto call queries from mutations or actions - Specify return type annotations when calling queries in the same file (TypeScript circularity workaround)
- Queries execute for at most 1 second and can read up to 16384 documents
- Return
nullimplicitly if your query doesn't have an explicit return value
Example: Basic Query with Index
import { query } from "./_generated/server";
import { v } from "convex/values";
export const getMessagesByChannel = query({
args: {
channelId: v.id("channels"),
},
handler: async (ctx, args) => {
return await ctx.db
.query("messages")
.withIndex("by_channel", (q) => q.eq("channelId", args.channelId))
.order("desc")
.take(20);
},
});
For more detailed information and additional patterns, refer to the complete reference documentation.
GitHub Repository
Related Skills
content-collections
MetaThis skill provides a production-tested setup for Content Collections, a TypeScript-first tool that transforms Markdown/MDX files into type-safe data collections with Zod validation. Use it when building blogs, documentation sites, or content-heavy Vite + React applications to ensure type safety and automatic content validation. It covers everything from Vite plugin configuration and MDX compilation to deployment optimization and schema validation.
langchain
MetaLangChain is a framework for building LLM applications using agents, chains, and RAG pipelines. It supports multiple LLM providers, offers 500+ integrations, and includes features like tool calling and memory management. Use it for rapid prototyping and deploying production systems like chatbots, autonomous agents, and question-answering services.
Algorithmic Art Generation
MetaThis skill helps developers create algorithmic art using p5.js, focusing on generative art, computational aesthetics, and interactive visualizations. It automatically activates for topics like "generative art" or "p5.js visualization" and guides you through creating unique algorithms with features like seeded randomness, flow fields, and particle systems. Use it when you need to build reproducible, code-driven artistic patterns.
webapp-testing
TestingThis Claude Skill provides a Playwright-based toolkit for testing local web applications through Python scripts. It enables frontend verification, UI debugging, screenshot capture, and log viewing while managing server lifecycles. Use it for browser automation tasks but run scripts directly rather than reading their source code to avoid context pollution.
