Persistent cloud sandboxes for AI agents

Give every AI agent a nano computer.

Sandock gives coding agents files, terminal, browser previews, POSIX volumes, and lifecycle APIs so they can keep state, resume work, and evolve across tasks.

A computer-shaped sandbox
Persistent enough to evolve
Built for coding-agent products
AI Agent Infrastructure Builder workspace
Agent team
hard-drive
POSIX persistent volumes
Agent product teams
Running
Capabilities
Keep repos, dependencies, caches, generated files, and task artifacts across agent runs.
Support workflow: AI coding agents
Prepare handoff for Agent product teams
Please run: AI coding agents
Processing workspace context...

Give Claude Code, Codex, or your custom agent a cloud computer that keeps project state.
Output artifactReady for human review
POSIX persistent volumes prepared a reviewable workflow artifact.
The gap

Disposable runtimes make agents forget their work.

Dependencies and generated files vanish between runs.

Browser state, preview URLs, and terminal logs are detached from the agent loop.

Long-running coding work restarts instead of compounding.

Why Buda

Build a workflow around Persistent Cloud Sandbox for AI Agents.

🧠

A computer-shaped sandbox

Files, terminal, browser, preview, volumes, lifecycle, and API in one agent runtime.

💾

Persistent enough to evolve

Agents can pause, resume, inspect prior work, and build on project context instead of starting over.

⚙️

Built for coding-agent products

Run Claude Code, Codex, MCP servers, browser agents, and custom agent workflows without building infra first.

Capabilities

The practical building blocks behind Persistent Cloud Sandbox for AI Agents.

hard-drive

POSIX persistent volumes

Keep repos, dependencies, caches, generated files, and task artifacts across agent runs.

terminal

Terminal and file APIs

Let agents run commands, inspect output, write files, and continue work through API calls.

browser

Browser previews

Support web app debugging loops with preview URLs and browser-oriented workflows.

power

Lifecycle control

Create, start, pause, resume, and delete sandboxes as part of agent orchestration.

Use cases

Start with the workflow that hurts today.

Pick one workflow with repeated demand, visible ownership, and measurable output. Buda gives that team agents, memory, tools, and a shared workspace.

bot
Agent product teams

AI coding agents

Give Claude Code, Codex, or your custom agent a cloud computer that keeps project state.

plug
MCP builders

MCP server hosting

Run MCP tools in isolated environments with controlled files, commands, and lifecycle.

globe
Browser agent developers

Browser automation

Let agents run app previews, inspect behavior, and debug web workflows in the sandbox.

Pilot plan

Start with one useful workflow, then expand.

Week 1

Choose one workflow

Start with AI coding agents. Keep the scope narrow enough that the output is easy to review.

Week 2

Assign agents and controls

Create the workspace, invite members, assign agents, define files, tools, and usage boundaries.

Week 3

Measure output and spend

Review artifacts, credit usage, ownership, and execution history before expanding scope.

Week 4

Expand or stop cleanly

If the workflow proves value, repeat the model in another team. If not, you still have a governed record.

Give your agent a computer it can return to.

Start with a persistent cloud sandbox and build toward long-running agent workflows.

Try Sandock