flamescope

FlameScope is a visualization tool for exploring different time ranges as Flame Graphs.

  • 所有者: Netflix/flamescope
  • 平台:
  • 許可證: Apache License 2.0
  • 分類:
  • 主題:
  • 喜歡:
    0
      比較:

Github星跟蹤圖

FlameScope

FlameScope

Gitter
TravisCI
NetflixOSS Lifecycle
License

FlameScope is a visualization tool for exploring different time ranges as Flame Graphs, allowing quick analysis of performance issues such as perturbations, variance, single-threaded execution, and more.

FlameScope begins by displaying the input data as an interactive subsecond-offset heat map. This shows patterns in the data. You can then select a time range to highlight on different patterns, and a flame graph will be generated just for that time range.

Disclaimer

FlameScope is in early stages of development and under constant change, so bugs and issues are expected. We count on your support to find and report them!

Installation / Instructions

The quickest way to get started is to run the pre-built client bundle:

$ git clone https://github.com/Netflix/flamescope
$ cd flamescope
$ pip install -r requirements.txt
$ python run.py

(Note python3 is assumed, python2 may work)

Then browse to http://127.0.0.1:5000/, and you can begin exploring profiles from the examples directory. You can add new profiles to that directory, collected using Linux perf. Here are instructions for a generic CPU profile at 49 Hertz for 120 seconds:

$ sudo perf record -F 49 -a -g -- sleep 120
$ sudo perf script --header > stacks.myproductionapp.2018-03-30_01
$ gzip stacks.myproductionapp.2018-03-30_01	# optional

If you are profiling C++ code, you may want to pipe stacks through c++filt to get readable frames.

There are extra steps to fetch stacks correctly for some runtimes, depending on the runtime. For example, we've previously published Java steps in Java in Flames: java needs to be running with the -XX:+PreserveFramePointer option, and perf-map-agent must be run immediately after the perf record to dump a JIT symbol table in /tmp.

FlameScope can visualize any Linux perf script output that includes stack traces, including page faults, context switches, and other events. See the References section below for documentation.

FlameScope is composed of two main components, the Python backend, and a React client interface. A pre-built client bundle is distributed with the backend, so the quickest way to get started is to install the Python requirements and start the application, as described earlier.

Although not necessary, we strongly suggest using virtualenv to isolate your Python environment.

By default, FlameScope will load a list of files from the examples directory, which includes a two profile examples.

Configuration Options

FlameScope configuration file can be found in app/config.py.

DEBUG = True # run the web server in debug mode
PROFILE_DIR = 'examples' # path where flamescope will look for profiles
HOST = '127.0.0.1' # web server host
PORT = 5000 # web server port
JSONIFY_PRETTYPRINT_REGULAR = False # pretty print api json responses

Building Client from Source

In order to build the client application from source, the following command line tools must be installed:

Once those tools are available, you will be able to install the project dependencies and generate a build.

$ yarn install
$ npm run webpack

The npm run webpack command will generate a new build under app/public. This directory is exposed by the Python web server.

Webpack can also watch and recompile files whenever they change. To build and start the watch task, run the following command:

$ npm run webpack-watch

Building a Docker Image

FlameScope provides a Dockerfile to build a Docker image:

$ cd flamescope
$ docker build -t flamescope .

The container expects the profiles to be bind-mounted into /profiles and listens on port 5000. To view profiles from /tmp/profiles, start the container with the following command:

$ docker run --rm -it -v /tmp/profiles:/profiles:ro -p 5000:5000 flamescope

Then access FlameScope on http://127.0.0.1:5000

References

主要指標

概覽
名稱與所有者Netflix/flamescope
主編程語言Python
編程語言JavaScript (語言數: 5)
平台
許可證Apache License 2.0
所有者活动
創建於2018-03-30 00:12:04
推送於2023-10-06 14:48:52
最后一次提交2022-04-21 16:47:10
發布數1
最新版本名稱v0.2.0 (發布於 )
第一版名稱v0.2.0 (發布於 )
用户参与
星數3.1k
關注者數359
派生數173
提交數263
已啟用問題?
問題數67
打開的問題數22
拉請求數54
打開的拉請求數18
關閉的拉請求數40
项目设置
已啟用Wiki?
已存檔?
是復刻?
已鎖定?
是鏡像?
是私有?