Palette MCP

Created By
kelvinzer09 months ago
PaletteMCP is a command-line tool written in Go that takes a hexadecimal color code and returns the name of the closest matching color from a predefined list of CSS colors. The output is provided in JSON format, making it easy to integrate with other scripts and systems.
Overview

what is Palette MCP?

Palette MCP is a command-line tool written in Go that takes a hexadecimal color code and returns the name of the closest matching color from a predefined list of CSS colors.

how to use Palette MCP?

To use Palette MCP, run the command line tool with a hexadecimal color code as an argument, and it will output the closest matching CSS color name in JSON format.

key features of Palette MCP?

  • Converts hexadecimal color codes to CSS color names.
  • Outputs results in JSON format for easy integration.
  • Written in Go for performance and efficiency.

use cases of Palette MCP?

  1. Web developers can quickly find CSS color names for design purposes.
  2. Graphic designers can convert color codes for use in web applications.
  3. Automation scripts can utilize the tool to process color data.

FAQ from Palette MCP?

  • Can Palette MCP handle all color codes?

Palette MCP is designed to work with valid hexadecimal color codes.

  • Is Palette MCP free to use?

Yes! Palette MCP is open-source and free to use.

  • How accurate is the color matching?

Palette MCP uses a predefined list of CSS colors to find the closest match, ensuring high accuracy.

Server Config

{
  "theme": "ANSI Light",
  "selectedAuthType": "oauth-personal",
  "mcpServers": {
    "get-color-info": {
      "command": "/usr/local/bin/palette-mcp",
      "args": [
        "server"
      ],
      "trust": true
    }
  }
}
Project Info
Created At
9 months ago
Updated At
9 months ago
Author Name
kelvinzer0
Star
-
Language
-
License
-

Recommend Servers

View All
Tavily Mcp
@tavily-ai

JavaScript
a year ago
奇门遁甲

5 hours ago
Shivang

3 days ago
Scratchpad Mcp
@MikePressure

scratchpad-mcp is an MCP server that gives AI agents persistent, token-efficient storage. It solves a specific waste problem: agents constantly re-read files they've already seen, re-summarize documents they've already processed, and re-load context they've already understood. Every one of those round-trips burns tokens for no new information. This server fixes that with eight tools designed around how agents actually work: Versioned writes. write_file automatically versions every write and keeps the 10 most recent versions per file. Storage is append-only on success and atomic on failure partial writes can't corrupt state. Structured diffs. read_file accepts a since_version parameter and returns a JSON line-diff against that prior version instead of the full content. Agents that have already seen v1 can ask "what changed in v3?" and get a small structured payload they can reason about, not the entire file again. Append-only logs. append_log and read_log give agents an event-stream they can replay. Cursor-based pagination (since_entry + last_entry_id + has_more) means an agent can checkpoint where it left off and resume cheaply. On-demand summaries. summarize_file calls Claude Haiku to summarize files over ~2000 estimated tokens. Summaries are cached per file version, so repeat calls on an unchanged file cost nothing. The threshold is enforced server-side you can't accidentally pay to summarize something small. Per-agent isolation. Every operation is scoped by an agent_id parameter, so one server instance can serve many agents without leaking state between them. Storage limits. 1 MB per file write, 64 KB per log entry, 1000 files / 100k log entries / 100 MB total per agent sane multi-tenant guardrails out of the box. Backed by a single SQLite file (Postgres migration is on the roadmap). All SQL is parameterized, paths are validated against a strict allowlist, and the security model is documented honestly it's safe for one-user-per-process deployments today, and the V2 plan derives agent_id from the caller's API key for true multi-tenancy. Build agents that remember what they've already seen.

3 hours ago