0

I need to display the Top 5 states and cities based on total number of reviews( review count in original schema mentioned below). The description of my DF (from Json file) is given below.

+-------------+--------------------+-------+
|     col_name|           data_type|comment|
+-------------+--------------------+-------+
|   attributes|struct<Accepts Cr...|   null|
|         city|              string|   null|
|neighborhoods|       array<string>|   null|
|         open|             boolean|   null|
| review_count|              bigint|   null|
|        stars|              double|   null|
|        state|              string|   null|
|         type|              string|   null|
+-------------+--------------------+-------+

I tried like order by methods but did not work. Finally got to know about the window Function here

In the code that I wrote the value of review count is not the exact value as it is there in the Json file.

The code that I tried is:

val topcity=spark.sql("select city,state,review_count,RANK() OVER (ORDER BY review_count desc ) AS RANKING from yelp").show(5)

The following is the output that I am getting:

+-------------+-----+------------+-------+
|         city|state|review_count|RANKING|
+-------------+-----+------------+-------+
|   Pittsburgh|   PA|           3|      1|
|     Carnegie|   PA|           3|      2|
|     Carnegie|   PA|           3|      3|
|     Carnegie|   PA|           3|      4|
|   Pittsburgh|   PA|           3|      5|
+-------------+--------------------+-----+

So My review count is only constant value of 3. So my questions are:

  1. Why the review count is constantly 3?
  2. What changes should I make to get the top 5 exact values of review count?
  • Show some data. Why could there not be such a case? – thebluephantom Mar 25 at 17:41
  • Hello @sudarshan could you provide some sample data for the topcity query? Thanks – Alexandros Biratsis Mar 25 at 18:19
1

The next is the implementation assuming that you are looking how to get total of reviews for each combination of state-city (hopefully I got it right):

First we generate some dummy data with:

cities_data = [
            ["Alameda", "California", 1],
            ["Alameda", "California", 3],
            ["Berkeley", "California", 2],
            ["Beverly Hills", "California", 2],
            ["Beverly Hills", "California", 3],
            ["Hollywood", "California", 4],
            ["Miami", "Florida", 3],
            ["Miami", "Florida", 2],
            ["Orlando", "Florida", 1],
            ["Cocoa Beach", "Florida", 1]]

cols = ["city", "state", "review_count"]
df = spark.createDataFrame(cities_data, cols)
df.show(10, False)

This will print:

+-------------+----------+------------+
|city         |state     |review_count|
+-------------+----------+------------+
|Alameda      |California|1           |
|Alameda      |California|3           |
|Berkeley     |California|2           |
|Beverly Hills|California|2           |
|Beverly Hills|California|3           |
|Hollywood    |California|4           |
|Miami        |Florida   |3           |
|Miami        |Florida   |2           |
|Orlando      |Florida   |1           |
|Cocoa Beach  |Florida   |1           |
+-------------+----------+------------+

The data is grouped by state/city in order to get the sum of total_reviews. This is in pyspark but should be very easy to change it to scala:

df = df.groupBy("state", "city") \
        .agg(F.sum("review_count").alias("reviews_count")) \
        .orderBy(F.desc("reviews_count")) \
        .limit(5)

And this should be the output for the scenario above:

+----------+-------------+-------------+
|state     |city         |reviews_count|
+----------+-------------+-------------+
|California|Beverly Hills|5            |
|Florida   |Miami        |5            |
|California|Alameda      |4            |
|California|Hollywood    |4            |
|California|Berkeley     |2            |
+----------+-------------+-------------+
  • ,Thank You...I was expecting the same thing – sudarshan Mar 25 at 20:10
  • You welcome @sudarshan let me know if you need more information. – Alexandros Biratsis Mar 25 at 20:12
  • sure..any way sry for late reply as I had to analyse your code make changes and get back to u... – sudarshan Mar 25 at 20:13
  • No problem at all :) actually there is no need for window function in this case just a group by is enough! Please check the update – Alexandros Biratsis Mar 25 at 20:20

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.