官术网_书友最值得收藏!

Datasets

We will be working on a variety of datasets in this book, and we will analyze their data. We will make many charts along the way. Here is how we will go about it:

  • Visualizing data distributions:
    • Headlines
    • Distributions
    • Comparisons
  • Finding trends in time series or multi-feature datasets:
    • Joint distributions with time series data
    • Joint distributions with a size feature
    • Joint distributions
  • Discovering hierarchical and graphical relationships between features:
    • Hierarchical maps
    • Path maps
  • Plotting features with location information on maps:
    • Heatmaps using Mapbox
    • 2D maps using Mapbox
    • 3D maps using MapGL
    • World map

Superset plugs into any SQL database that has a Python SQLAlchemy connector, such as PostgreSQL, MySQL, SQLite, MongoDB, and Snowflake. The data stored in any of the databases is fetched for making chartsMost database documents have a requirement for the Python SQLAlchemy connector.

In this book, we will use Google BigQuery and PostgreSQL as our database. Our datasets will be public tables from Google BigQuery and .csv files from a variety of web resources, which we will upload to PostgreSQL. The datasets cover topics such as Ethereum, globally traded commodities, airports, flight routes, and a reading list of books, because the generating process for each of these datasets is different. It will be interesting to visualize and analyze the datasets.

Hopefully, the experience that we will gain over the course of this book will help us in becoming effective at using Superset for data visualization and dashboarding.

主站蜘蛛池模板: 鸡西市| 唐河县| 砚山县| 济源市| 大厂| 德昌县| 张家口市| 嵩明县| 威宁| 汤原县| 和林格尔县| 西林县| 海城市| 四会市| 玛纳斯县| 南昌市| 耒阳市| 友谊县| 宝清县| 洛南县| 师宗县| 原阳县| 连南| 盐源县| 怀宁县| 克拉玛依市| 彭州市| 仙桃市| 女性| 凤庆县| 巴彦淖尔市| 商南县| 张家港市| 黔南| 绥芬河市| 陇川县| 交城县| 朝阳区| 乐至县| 介休市| 武汉市|