I'm running PySpark (2.3) on a Dataproc cluster with
- 3 nodes (4 CPUs)
- 8 GB Memory each.
The data has close to 1.3 million rows with 4 columns namely:
Date,unique_id (Alphanumeric) , category(10 distinct values) and Prediction (0 or 1)
P.S - This is timeseries data
We are using the Facebooks prophet model for predictive modelling and since Prophet only accepts Pandas dataframes as an input, below is what I am doing in order to convert the Spark dataframe to a Pandas dataframe .
def prediction_func(spark_df):
import pandas as pd
# Lines of code to convert spark df to pandas df
# Calling prophet model with the converted pandas df
return pandas_df
predictions = spark_df.groupby('category').apply(prediction_func)
The entire process is taking around 1.5 hours on dataproc.
I am sure there is a better way of grouping and partitioning the data before applying the prediction_func
.
Any advice would be much appreciated.
groupby('category')
?