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I have 2 Spark dataframes

library(SparkR); library(magrittr)

df1 <- createDataFrame(data.frame(var1 = c("rat", "cat", "bat")))
df2 <- createDataFrame(data.frame(var2 = c("cat3", "bat1", "dog", "toy")))

I need to fuzzy match different lengthed var1 and var2 from different Spark DataFrames df1 and df2 using SparkR's levenshtein function so that the desired output becomes.

desired_df <- createDataFrame(data.frame(var2 = c("cat3", "bat1", "dog", "toy"),
                                  var3 = c("cat", "bat", NA_character_, NA_character_)))

I started with the following code:

df3 <- df2 %>% SparkR::mutate(dist = levenshtein(df2$var2, df1$var1))

but got stuck with errors:

org.apache.spark.sql.AnalysisException: Resolved attribute(s) var1#176 missing from var2#178 in operator !Project [var2#178, levenshtein(var2#178, var1#176) AS dist#181].;;
!Project [var2#178, levenshtein(var2#178, var1#176) AS dist#181]

Please advise.

1

You're mistake is to reference columns from a table not present in the execution plan. Adding crossJoin would fix that:

dist_df <- df1 %>%
  crossJoin(df2) %>% 
  withColumn("dist", levenshtein(df1$var1, df2$var2)) 
dist_df %>% head()
  var1 var2 dist              
1  rat cat3    2
2  rat bat1    2
3  rat  dog    3
4  rat  toy    3
5  cat cat3    1
6  cat bat1    2

From here you could use standard methods (How to select the first row of each group?) to find the closest match, for example:

best_matches <- dist_df %>% 
  groupBy("var2") %>% 
  agg(struct(dist_df$dist, dist_df$var1) %>% min() %>% alias("match"))

threshold <- 1  # Maximum match distance to keep

result <- best_matches %>% 
  select(
    best_matches$var2, 
    when(best_matches$match.dist <= threshold, best_matches$match.var1) %>% 
      alias("var1"))

result %>% head()
  var2 var1
1  dog <NA>
2 bat1  bat
3 cat3  cat
4  toy <NA>

Please keep in mind, that these approach is very inefficient. Spark provides better options (Efficient string matching in Apache Spark), but these are not exposed in SparkR yet, and only partially implemented in sparklyr.

If you want to keep all records, not matter the quality, just remove when:

best_matches %>% select(best_matches$var2, best_matches$match.var1) %>% head()
  var2 var1
1  dog  bat
2 bat1  bat
3 cat3  cat
4  toy  bat

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