I have a very big pyspark.sql.dataframe.DataFrame named df. I need some way of enumerating records- thus, being able to access record with certain index. (or select group of records with indexes range)
In pandas, I could make just
indexes=[2,3,6,7]
df[indexes]
Here I want something similar, (and without converting dataframe to pandas)
The closest I can get to is:
Enumerating all the objects in the original dataframe by:
indexes=np.arange(df.count()) df_indexed=df.withColumn('index', indexes)
- Searching for values I need using where() function.
QUESTIONS:
- Why it doesn't work and how to make it working? How to add a row to a dataframe?
Would it work later to make something like:
indexes=[2,3,6,7] df1.where("index in indexes").collect()
Any faster and simpler way to deal with it?