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Data transformations with Python

This is a collection of Python jobs that are supposed to transform data. These jobs are using PySpark to process larger volumes of data and are supposed to run on a Spark cluster (via spark-submit).

Pre-requisites

Please make sure you have the following installed and can run them

  • Python (3.9 or later)
  • Pipenv
  • Java (1.8 or later)

Install all dependencies

pipenv install --dev

Run tests

Run unit tests

pipenv run unit-test

Run integration tests

pipenv run integration-test

Create .egg package

pipenv run packager

Use linter

pipenv run linter

Jobs

There are two applications in this repo: Word Count, and Citibike.

Currently these exist as skeletons, and have some initial test cases which are defined but ignored. For each application, please un-ignore the tests and implement the missing logic.

Word Count

A NLP model is dependent on a specific input file. This job is supposed to preprocess a given text file to produce this input file for the NLP model (feature engineering). This job will count the occurrences of a word within the given text file (corpus).

There is a dump of the datalake for this under resources/word_count/words.txt with a text file.

Input

Simple *.txt file containing text.

Output

A single *.csv file containing data similar to:

"word","count"
"a","3"
"an","5"
...

Run the job

Please make sure to package the code before submitting the spark job (pipenv run packager)

pipenv run spark-submit \
    --master local \
    --py-files dist/data_transformations-0.1.0-py3.9.egg \
    jobs/word_count.py \
    <INPUT_FILE_PATH> \
    <OUTPUT_PATH>

Citibike

For analytics purposes the BI department of a bike share company would like to present dashboards, displaying the distance each bike was driven. There is a *.csv file that contains historical data of previous bike rides. This input file needs to be processed in multiple steps. There is a pipeline running these jobs.

citibike pipeline

There is a dump of the datalake for this under resources/citibike/citibike.csv with historical data.

Ingest

Reads a *.csv file and transforms it to parquet format. The column names will be sanitized (whitespaces replaced).

Input

Historical bike ride *.csv file:

"tripduration","starttime","stoptime","start station id","start station name","start station latitude",...
364,"2017-07-01 00:00:00","2017-07-01 00:06:05",539,"Metropolitan Ave & Bedford Ave",40.71534825,...
...
Output

*.parquet files containing the same content

"tripduration","starttime","stoptime","start_station_id","start_station_name","start_station_latitude",...
364,"2017-07-01 00:00:00","2017-07-01 00:06:05",539,"Metropolitan Ave & Bedford Ave",40.71534825,...
...
Run the job

Please make sure to package the code before submitting the spark job (pipenv run packager)

pipenv run spark-submit \
    --master local \
    --py-files dist/data_transformations-0.1.0-py3.9.egg \
    jobs/citibike_ingest.py \
    <INPUT_FILE_PATH> \
    <OUTPUT_PATH>

Distance calculation

This job takes bike trip information and calculates the "as the crow flies" distance traveled for each trip. It reads the previously ingested data parquet files.

Hint:

Input

Historical bike ride *.parquet files

"tripduration",...
364,...
...
Outputs

*.parquet files containing historical data with distance column containing the calculated distance.

"tripduration",...,"distance"
364,...,1.34
...
Run the job

Please make sure to package the code before submitting the spark job (pipenv run packager)

pipenv run spark-submit \
    --master local \
    --py-files dist/data_transformations-0.1.0-py3.9.egg \
    jobs/citibike_distance_calculation.py \
    <INPUT_PATH> \
    <OUTPUT_PATH>

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