A Spark DataFrame is already optimized for parallel execution (the parallel executions are handled in the background), but the following UDF-function applied for Spark DataFrame column's data processing runs as a single process:
def ComputeSimilarityValue(article_sample): max_sum = .0 for keyword in keywords_string.split(' '): if keyword in model_vocab: max_sum += max([model.similarity(keyword, w) for w in article_sample.split(' ')]) if not max_sum: max_sum /= float( len(keywords_string.split(' ')) ) return max_sum udf_ComputeSimilarityValue = udf(ComputeSimilarityValue, DoubleType()) df_a_p = df_a_p.withColumn("SimilarityValue", udf_ComputeSimilarityValue("article_sample_processed"))
model is the Word2Vec object (trained model) that should return the similarity value between the given
keyword and the actual word of the provided
article_sample is taking from the
article_sample_processed column of the Spark DataFrame).
Figure 1 is a screenshot of the CPU: CPU when the UDF-function above is running
It's not first time I have this kind of the behaviour using the UDF functions. Any ideas why the parallel execution is not applied for the actual case? Thank you.