Cachebro
FreeNot checkedProvides file caching and diff tracking for AI coding agents, reducing token usage by returning changes or confirming no changes instead of full file contents o
About
Provides file caching and diff tracking for AI coding agents, reducing token usage by returning changes or confirming no changes instead of full file contents on repeated reads.
README
cachebro
File cache with diff tracking for AI coding agents. Powered by Turso, a high-performance embedded database.
Agents waste most of their token budget re-reading files they've already seen. cachebro fixes this: on first read it caches the file, on subsequent reads it returns either "unchanged" (one line instead of the whole file) or a compact diff of what changed. Drop-in replacement for file reads that agents adopt on their own.
Benchmark
We ran a controlled A/B test: the same refactoring task on a 268-file TypeScript codebase (opencode), same agent (Claude Opus), same prompt. The only difference: cachebro enabled vs disabled.
| Without cachebro | With cachebro | |
|---|---|---|
| Total tokens | 158,248 | 117,188 |
| Tool calls | 60 | 58 |
| Files touched | 12 | 12 |
26% fewer tokens. Same task, same result. cachebro saved ~33,000 tokens by serving cached reads and compact diffs instead of full file contents.
The savings compound over sequential tasks on the same codebase:
| Task | Tokens Used | Tokens Saved by Cache | Cumulative Savings |
|---|---|---|---|
| 1. Add session export command | 62,190 | 2,925 | 2,925 |
| 2. Add --since flag to session list | 41,167 | 15,571 | 18,496 |
| 3. Add session stats subcommand | 63,169 | 35,355 | 53,851 |
By task 3, cachebro saved 35,355 tokens in a single task — a 36% reduction. Over the 3-task sequence, 53,851 tokens saved out of 166,526 consumed (~24%).
Agents adopt it without being told
We tested whether agents would use cachebro voluntarily. We launched a coding agent with cachebro configured as an MCP server but gave the agent no instructions about it. The agent chose cachebro.read_file over the built-in Read tool on its own. The tool descriptions alone were enough.
How it works
First read: agent reads src/auth.ts → cachebro caches content + hash → returns full file
Second read: agent reads src/auth.ts → hash unchanged → returns "[unchanged, 245 lines, 1,837 tokens saved]"
After edit: agent reads src/auth.ts → hash changed → returns unified diff (only changed lines)
Partial read: agent reads lines 50-60 → edit changed line 200 → returns "[unchanged in lines 50-60]"
The cache persists in a local Turso (SQLite-compatible) database. Content hashing (SHA-256) detects changes. No network, no external services, no configuration beyond a file path.
Installation
npx cachebro init # auto-configures Claude Code, Cursor, OpenCode
That's it. Restart your editor and cachebro is active. Agents discover it automatically.
Or configure manually — add to your MCP config (.claude.json, .cursor/mcp.json, etc.):
{
"mcpServers": {
"cachebro": {
"command": "npx",
"args": ["cachebro", "serve"]
}
}
}
Usage
As an MCP server (recommended)
The MCP server exposes 4 tools:
| Tool | Description |
|---|---|
read_file |
Read a file with caching. Returns full content on first read, "unchanged" or diff on subsequent reads. Supports offset/limit for partial reads. |
read_files |
Batch read multiple files with caching. |
cache_status |
Show stats: files tracked, tokens saved. |
cache_clear |
Reset the cache. |
Agents discover these tools automatically and prefer them over built-in file reads because the tool descriptions advertise token savings.
As a CLI
cachebro serve # Start the MCP server
cachebro status # Show cache statistics
cachebro help # Show help
Set CACHEBRO_DIR to control where the cache database is stored (default: .cachebro/ in the current directory).
As an SDK
import { createCache } from "cachebro";
const { cache, watcher } = createCache({
dbPath: "./my-cache.db",
sessionId: "my-session-1", // each session tracks reads independently
watchPaths: ["."], // optional: watch for file changes
});
await cache.init();
// First read — returns full content, caches it
const r1 = await cache.readFile("src/auth.ts");
// r1.cached === false
// r1.content === "import { jwt } from ..."
// Second read — file unchanged, returns confirmation
const r2 = await cache.readFile("src/auth.ts");
// r2.cached === true
// r2.content === "[cachebro: unchanged, 245 lines, 1837 tokens saved]"
// r2.linesChanged === 0
// After file is modified — returns diff
const r3 = await cache.readFile("src/auth.ts");
// r3.cached === true
// r3.diff === "--- a/src/auth.ts\n+++ b/src/auth.ts\n@@ -10,3 +10,4 @@..."
// r3.linesChanged === 3
// Partial read — only the lines you need
const r4 = await cache.readFile("src/auth.ts", { offset: 50, limit: 10 });
// Returns lines 50-59, or "[unchanged in lines 50-59]" if nothing changed there
// Stats
const stats = await cache.getStats();
// { filesTracked: 12, tokensSaved: 53851, sessionTokensSaved: 33205 }
// Cleanup
watcher.close();
Architecture
packages/
sdk/ cachebro — the core library
- CacheStore: content-addressed file cache backed by an embedded database
- FileWatcher: fs.watch wrapper for change notification
- computeDiff: line-based unified diff
cli/ cachebro — batteries-included CLI + MCP server
Database: Single Turso database file with file_versions (content-addressed, keyed by path + hash), session_reads (per-session read pointers), and stats/session_stats tables. Multiple sessions and branch switches are handled correctly — each session tracks which version it last saw.
Change detection: On every read, cachebro hashes the current file content and compares it to the cached hash. Same hash = unchanged. Different hash = compute diff, update cache. No polling, no watchers required for correctness — the hash is the source of truth.
Token estimation: ceil(characters * 0.75). Rough but directionally correct for code. Good enough for the "tokens saved" metric.
License
MIT
Install Cachebro in Claude Desktop, Claude Code & Cursor
unyly install cachebroInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add cachebro -- npx -y cachebroFAQ
Is Cachebro MCP free?
Yes, Cachebro MCP is free — one-click install via Unyly at no cost.
Does Cachebro need an API key?
No, Cachebro runs without API keys or environment variables.
Is Cachebro hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install Cachebro in Claude Desktop, Claude Code or Cursor?
Open Cachebro on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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