Perfetto
Turn natural language into powerful Perfetto trace analysis. Quickly explain jank, diagnose ANRs, spot CPU hot threads, uncover lock contention, and find memory leaks.

Perfetto MCP
Turn natural language into powerful Perfetto trace analysis
A Model Context Protocol (MCP) server that transforms natural-language prompts into focused Perfetto analyses. Quickly explain jank, diagnose ANRs, spot CPU hot threads, uncover lock contention, and find memory leaks β all without writing SQL.
β¨ Features
- Natural Language β SQL: Ask questions in plain English, get precise Perfetto queries
- ANR Detection: Automatically identify and analyze Application Not Responding events
- Performance Analysis: CPU profiling, frame jank detection, memory leak detection
- Thread Contention: Find synchronization bottlenecks and lock contention
- Binder Profiling: Analyze IPC performance and slow system interactions

π Prerequisites
- Python 3.13+ (macOS/Homebrew):
brew install [email protected] - uv (recommended):
brew install uv
π Getting Started
Cursor
Or add to ~/.cursor/mcp.json (global) or .cursor/mcp.json (project):
{
"mcpServers": {
"perfetto-mcp": {
"command": "uvx",
"args": ["perfetto-mcp"]
}
}
}
Claude Code
Run this command. See Claude Code MCP docs for more info.
# Add to user scope
claude mcp add perfetto-mcp --scope user -- uvx perfetto-mcp
Or edit ~/claude.json (macOS) or %APPDATA%\Claude\claude.json (Windows):
{
"mcpServers": {
"perfetto-mcp": {
"command": "uvx",
"args": ["perfetto-mcp"]
}
}
}
VS Code
or add to .vscode/mcp.json (project) or run "MCP: Add Server" command:
{
"mcpServers": {
"perfetto-mcp": {
"command": "uvx",
"args": ["perfetto-mcp"]
}
}
}
Enable in GitHub Copilot Chat's Agent mode.
Codex
Edit ~/.codex/config.toml:
[mcp_servers.perfetto-mcp]
command = "uvx"
args = ["perfetto-mcp"]
Local Install (development server)
cd perfetto-mcp-server
uv sync
uv run mcp dev src/perfetto_mcp/dev.py
Local MCP
{
"mcpServers": {
"perfetto-mcp-local": {
"command": "uv",
"args": [
"--directory",
"/path/to/git/repo/perfetto-mcp",
"run",
"-m",
"perfetto_mcp"
],
"env": { "PYTHONPATH": "src" }
}
}
}
Using pip
pip3 install perfetto-mcp
python3 -m perfetto_mcp
π How to Use
Example starting prompt:
In the perfetto trace, I see that the FragmentManager is taking 438ms to execute. Can you figure out why it's taking so long?
Required Parameters
Every tool needs these two inputs:
| Parameter | Description | Example |
|---|---|---|
| trace_path | Absolute path to your Perfetto trace | /path/to/trace.perfetto-trace |
| process_name | Target process/app name | com.example.app |
In Your Prompts
Be explicit about the trace and process, prefix your prompt with:
"Use perfetto trace /absolute/path/to/trace.perfetto-trace for process com.example.app"
Optional Filters
Many tools support additional filtering (but let your LLM handle that):
- time_range:
{start_ms: 10000, end_ms: 25000} - Tool-specific thresholds:
min_block_ms,jank_threshold_ms,limit
π οΈ Available Tools
π Exploration & Discovery
| Tool | Purpose | Example Prompt |
|---|---|---|
find_slices | Survey slice names and locate hot paths | "Find slice names containing 'Choreographer' and show top examples" |
execute_sql_query | Run custom PerfettoSQL for advanced analysis | "Run custom SQL to correlate threads and frames in the first 30s" |
π¨ ANR Analysis
Note: Helpful if the recorded trace contains ANR
| Tool | Purpose | Example Prompt |
|---|---|---|
detect_anrs | Find ANR events with severity classification | "Detect ANRs in the first 10s and summarize severity" |
anr_root_cause_analyzer | Deep-dive ANR causes with ranked likelihood | "Analyze ANR root cause around 20,000 ms and rank likely causes" |
π― Performance Profiling
| Tool | Purpose | Example Prompt |
|---|---|---|
cpu_utilization_profiler | Thread-level CPU usage and scheduling | "Profile CPU usage by thread and flag the hottest threads" |
main_thread_hotspot_slices | Find longest-running main thread operations | "List main-thread hotspots >50 ms during 10sβ25s" |
π± UI Performance
| Tool | Purpose | Example Prompt |
|---|---|---|
detect_jank_frames | Identify frames missing deadlines | "Find janky frames above 16.67 ms and list the worst 20" |
frame_performance_summary | Overall frame health metrics | "Summarize frame performance and report jank rate and P99 CPU time" |
π Concurrency & IPC
| Tool | Purpose | Example Prompt |
|---|---|---|
thread_contention_analyzer | Find synchronization bottlenecks | "Find lock contention between 15sβ30s and show worst waits" |
binder_transaction_profiler | Analyze Binder IPC performance | "Profile slow Binder transactions and group by server process" |
πΎ Memory Analysis
| Tool | Purpose | Example Prompt |
|---|---|---|
memory_leak_detector | Find sustained memory growth patterns | "Detect memory-leak signals over the last 60s" |
heap_dominator_tree_analyzer | Identify memory-hogging classes | "Analyze heap dominator classes and list top offenders" |
Output Format
All tools return structured JSON with:
- Summary: High-level findings
- Details: Tool-specific results
- Metadata: Execution context and any fallbacks used
π Resources
- Trace Processor Python API - Perfetto's Python interface
- Perfetto SQL Syntax - SQL reference for custom queries
π License
Apache 2.0 License. See LICENSE for details.
GitHub β’ Issues β’ Documentation
Server Terkait
Scout Monitoring MCP
sponsorPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
sponsorAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
seite
AI-native static site generator with built-in MCP server. Build sites, create content, apply themes, search docs, and deploy via Claude Code or any MCP client.
FluidMCP CLI
A command-line tool to run MCP servers from a single file, with support for automatic dependency resolution, environment setup, and package installation from local or S3 sources.
WCAG Aria patterns MCP
MCP server for WCAG practices found at https://github.com/karanshah229/wcag-aria-practices-mcp-skill/tree/main
MCP Server Manager for Claude
Install and manage Model Context Protocol (MCP) servers for Claude Desktop.
Template MCP Server
A CLI template for quickly bootstrapping an MCP server with FastMCP, supporting both stdio and HTTP transport.
MCP Montano Server
A general-purpose server project built with TypeScript.
Skills-ContextManager
Donβt pollute your AI agentβs context with 1,000 skills. Use Skills-ContextManager, a self-hosted web UI for managing AI skills and workflows by providing skills to an AI agent via MCP only when needed. Simply add skills to your library and enable or disable them with a toggle. Choose whether a skill is always loaded into context or dynamically activated when the AI agent determines itβs needed.
Directus
This server enables AI assistants and other MCP clients to interact with Directus instances programmatically.
SSE MCP Server Example
An example MCP Server demonstrating Server-Sent Events (SSE) usage.
Eterna MCP
Managed MCP server for Bybit perpetual futures trading. Isolated sub-accounts, built-in risk management, 12 trading tools.