sfu-db/dataprep
DataPrep: Data Preparation in Python
repo name | sfu-db/dataprep |
repo link | https://github.com/sfu-db/dataprep |
homepage | http://dataprep.ai |
language | Python |
size (curr.) | 33931 kB |
stars (curr.) | 498 |
created | 2019-05-12 |
license | MIT License |
Dataprep lets you prepare your data using a single library with a few lines of code.
Currently, you can use dataprep
to:
- Collect data from common data sources (through
dataprep.connector
) - Do your exploratory data analysis (through
dataprep.eda
) - …more modules are coming
Releases
Installation
pip install -U dataprep
Examples & Usages
The following examples can give you an impression of what dataprep can do:
EDA
There are common tasks during the exploratory data analysis stage, like a quick look at the columnar distribution, or understanding the correlations between columns.
The EDA module categorizes these EDA tasks into functions helping you finish EDA tasks with a single function call.
- Want to understand the distributions for each DataFrame column? Use
plot
.
- Want to understand the correlation between columns? Use
plot_correlation
.
- Or, if you want to understand the impact of the missing values for each column, use
plot_missing
.
You can drill down to get more information by given plot
, plot_correlation
and plot_missing
a column name.: E.g. for plot_missing
for numerical column usingplot
:
for categorical column usingplot
:
Don’t forget to checkout the examples folder for detailed demonstration!
Connector
Connector provides a simple way to collect data from different websites, offering several benefits:
- A unified API: you can fetch data using one or two lines of code to get data from many websites.
- Auto Pagination: it automatically does the pagination for you so that you can specify the desired count of the returned results without even considering the count-per-request restriction from the API.
- Smart API request strategy: it can issue API requests in parallel while respecting the rate limit policy.
In the following examples, you can download the Yelp business search result into a pandas DataFrame, using only two lines of code, without taking deep looking into the Yelp documentation! More examples can be found here: Examples
Contribute
There are many ways to contribute to Dataprep.
- Submit bugs and help us verify fixes as they are checked in.
- Review the source code changes.
- Engage with other Dataprep users and developers on StackOverflow.
- Help each other in the Dataprep Community Discord and Mail list & Forum.
- Contribute bug fixes.
- Providing use cases and writing down your user experience.
Please take a look at our wiki for development documentations!
Acknowledgement
Some functionalities of DataPrep are inspired by the following packages.
-
Inspired the report functionality and insights provided in DataPrep.eda.
-
Inspired the missing value analysis in DataPrep.eda.