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Python library for building Grafana dashboards

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修改

1、Fix 中文在 grafana 上显示乱码;
2、Add 视图纵坐标 [0,100] 的展示方式;
3、Add 批量生成视图并更新到 Grafana 的脚本,脚本位置在 example 目录下,attr.txt 为指标文件格式,-- 表示分隔符,格式:一级功能--二级功能--指标名--在prometheus中的metricname

grafanalib

https://circleci.com/gh/weaveworks/grafanalib.svg?style=shield

Do you like Grafana but wish you could version your dashboard configuration? Do you find yourself repeating common patterns? If so, grafanalib is for you.

grafanalib lets you generate Grafana dashboards from simple Python scripts.

Writing dashboards

The following will configure a dashboard with a single row, with one QPS graph broken down by status code and another latency graph showing median and 99th percentile latency:

from grafanalib.core import *


dashboard = Dashboard(
  title="Frontend Stats",
  rows=[
    Row(panels=[
      Graph(
        title="Frontend QPS",
        dataSource='My Prometheus',
        targets=[
          Target(
            expr='sum(irate(nginx_http_requests_total{job="default/frontend",status=~"1.."}[1m]))',
            legendFormat="1xx",
            refId='A',
          ),
          Target(
            expr='sum(irate(nginx_http_requests_total{job="default/frontend",status=~"2.."}[1m]))',
            legendFormat="2xx",
            refId='B',
          ),
          Target(
            expr='sum(irate(nginx_http_requests_total{job="default/frontend",status=~"3.."}[1m]))',
            legendFormat="3xx",
            refId='C',
          ),
          Target(
            expr='sum(irate(nginx_http_requests_total{job="default/frontend",status=~"4.."}[1m]))',
            legendFormat="4xx",
            refId='D',
          ),
          Target(
            expr='sum(irate(nginx_http_requests_total{job="default/frontend",status=~"5.."}[1m]))',
            legendFormat="5xx",
            refId='E',
          ),
        ],
        yAxes=[
          YAxis(format=OPS_FORMAT),
          YAxis(format=SHORT_FORMAT),
        ],
        alert=Alert(
          name="Too many 500s on Nginx",
          message="More than 5 QPS of 500s on Nginx for 5 minutes",
          alertConditions=[
            AlertCondition(
              Target(
                expr='sum(irate(nginx_http_requests_total{job="default/frontend",status=~"5.."}[1m]))',
                legendFormat="5xx",
                refId='A',
              ),
              timeRange=TimeRange("5m", "now"),
              evaluator=GreaterThan(5),
              operator=OP_AND,
              reducerType=RTYPE_SUM,
            ),
          ],
        )
      ),
      Graph(
        title="Frontend latency",
        dataSource='My Prometheus',
        targets=[
          Target(
            expr='histogram_quantile(0.5, sum(irate(nginx_http_request_duration_seconds_bucket{job="default/frontend"}[1m])) by (le))',
            legendFormat="0.5 quantile",
            refId='A',
          ),
          Target(
            expr='histogram_quantile(0.99, sum(irate(nginx_http_request_duration_seconds_bucket{job="default/frontend"}[1m])) by (le))',
            legendFormat="0.99 quantile",
            refId='B',
          ),
        ],
        yAxes=single_y_axis(format=SECONDS_FORMAT),
      ),
    ]),
  ],
).auto_panel_ids()

There is a fair bit of repetition here, but once you figure out what works for your needs, you can factor that out. See our Weave-specific customizations for inspiration.

Generating dashboards

If you save the above as frontend.dashboard.py (the suffix must be .dashboard.py), you can then generate the JSON dashboard with:

$ generate-dashboard -o frontend.json frontend.dashboard.py

Installation

grafanalib is just a Python package, so:

$ pip install grafanalib

Support

This library is in its very early stages. We'll probably make changes that break backwards compatibility, although we'll try hard not to.

grafanalib works with Python 2.7, 3.4, 3.5, and 3.6.

Developing

If you're working on the project, and need to build from source, it's done as follows:

$ virtualenv .env
$ . ./.env/bin/activate
$ pip install -e .

gfdatasource

This module also provides a script and docker image which can configure grafana with new sources, or enable app plugins.

The script answers the --help with full usage information, but basic invocation looks like this:

$ <gfdatasource> --grafana-url http://grafana. datasource --data-source-url http://datasource
$ <gfdatasource> --grafana-url http://grafana. app --id my-plugin

Getting Help

If you have any questions about, feedback for or problems with grafanalib:

Your feedback is always welcome!

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Python library for building Grafana dashboards

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