Hy, I'm trying build a recommendation system with Spark
I have a data frame with users email and movie rating.
df = pd.DataFrame(np.array([["aa@gmail.com",2,3],["aa@gmail.com",5,5],["bb@gmail.com",8,2],["cc@gmail.com",9,3]]), columns=['user','movie','rating'])
sparkdf = sqlContext.createDataFrame(df, samplingRatio=0.1)
user movie rating
aa@gmail.com 2 3
aa@gmail.com 5 5
bb@gmail.com 8 2
cc@gmail.com 9 3
My first doubt it is, pySpark MLlib doesn't accept emails I'm correct? Because this I need to change the email by a Primary key.
My approach was create a temporary table, select distinct user and now I want add a new column with a row number (and this number will be the primary key for each user.
sparkdf.registerTempTable("sparkdf")
DistinctUsers = sqlContext.sql("Select distinct user FROM sparkdf")
What I have
+------------+
| user|
+------------+
|bb@gmail.com|
|aa@gmail.com|
|cc@gmail.com|
+------------+
What I want
+------------+
| user| PK
+------------+
|bb@gmail.com| 1
|aa@gmail.com| 2
|cc@gmail.com| 3
+------------+
Next I will do a join and obtain my final data frame to use in MLlib
user movie rating
1 2 3
1 5 5
2 8 2
3 9 3
Regards and thanks for your time.
Primary keys with Apache Spark practically answers your question but in this particular case using
StringIndexer
could be a better choice: