Skip to main content
Palette Desktop
Quiet
#5675 Radar 31

AI agents work on shared folders with team approval for non-technical teams.

Gallery Image 1
1/2
Loading signal evidence

Product memo

Palette Desktop gives non-technical teams a familiar folder-based interface for AI agents, moving beyond engineering-focused tools. It allows users to use specific AI models like Claude Code and Codex for tasks such as writing, research, and planning. The app integrates directly with existing shared file structures and offers granular control over AI-generated changes.

For who

Non-technical teams using AI agents on shared folders

Solves what

Enables AI agents like Claude Code and Codex to work on shared folders for non-coding.

  • Works on shared folders
  • Supports multiple AI agents
  • Approve changes before saving

In their own words

Palette Desktop

The easiest way to work with agents (like Claude Code & Codex) on shared folders with your team.

For everything but coding.

Commercial cues

Pricing snapshot subscription with free tier

Model

subscription

Free tier

Yes

Trial

No

No public pricing tiers captured.

Pricing Strategy

Key Tactics
  • Flat organizational pricing removes per-seat friction for team adoption.
  • A free tier acts as a lead magnet, offering 200 monthly Palette.

Operator context

Operating setup

Founded

May 2026

HQ

Denmark

Platform

Desktop

Audience

General

Builder Strategy

Strategy Type
Niche Specialist
Stage
Pre Revenue
Effort
Small Team
About Palette Desktop Expand

Palette Desktop helps non-technical teams integrate AI agents directly into their existing shared folder workflows. It moves beyond typical engineering-focused AI tools by providing a familiar interface for models like Claude Code and Codex, allowing them to assist with tasks such as writing, research, and planning.

This makes advanced AI accessible to a broader audience without requiring coding expertise. The product's flat organizational pricing removes per-seat friction, encouraging team-wide adoption and making it a cost-effective product for collaborative AI work.