Data source: - https://www.kaggle.com/saurav9786/amazon-product-reviews Total rows: ~ 7M (311 MBs)
I am trying to use Pyspark on Jupyter Notebook. I am able to successfully setup a Sparksession, test it and read the above reviews data (locally stored) directly as a spark dataframe. However, I am not able to successfully complete even the simplest of data manipulation jobs, such as simply count the distinct userids , or not able to even show the top 10 rows. The job runs endlessly.
I have setup and configured my sparksession using the below code:
import findspark findspark.init() from pyspark import SparkContext, SparkConf from pyspark.sql import SparkSession conf = pyspark.SparkConf().setAppName('appName').setMaster('local[*]') sc = pyspark.SparkContext(conf=conf) spark = SparkSession(sc) import pyspark.sql.functions as F from pyspark.sql.types import *
I read the dataset as a spark dataframe using the below code:
d_schema = StructType().add("userid","string").add("productid","string").add("rating","integer").add("datetime","string") spark_ratings = spark.read.csv("source_data.csv",schema=d_schema,header=None)
Reads the data in 672 ms.
But After this I tried the following:
And the job keeps running forever, does not throw an error but doesn't deliver the results.
I am a beginner at using Pyspark, am I missing something critical here?
I have a 12 GB RAM and Intel i5 system.