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We are currently testing a prediction engine based on Spark's implementation of LDA in Python: https://spark.apache.org/docs/2.2.0/ml-clustering.html#latent-dirichlet-allocation-lda https://spark.apache.org/docs/2.2.0/api/python/pyspark.ml.html#pyspark.ml.clustering.LDA (we are using the pyspark.ml package, not pyspark.mllib)

We were able to succesfuly train a model on a Spark cluster (using Google Cloud Dataproc). Now we are trying to use the model to serve real-time predictions as an API (e.g. flask application).

What would be the best approach to achieve so?

Our main pain point is that it seems we need to bring back the whole Spark environnement in order to load the trained model and run the transform. So far we've tried running Spark in local mode for each received request but this approach gave us:

  1. Poor performances (time to spin-up the SparkSession, load the models, run the transform...)
  2. Poor scalability (inability to process concurrent requests)

The whole approach seems quite heavy, would there be a simpler alternative, or even one that would not need to imply Spark at all?

Bellow are simplified code of the training and prediction steps.

Training code

def train(input_dataset):   
    conf = pyspark.SparkConf().setAppName("lda-train")
    spark = SparkSession.builder.config(conf=conf).getOrCreate()

    # Generate count vectors
    count_vectorizer = CountVectorizer(...)
    vectorizer_model = count_vectorizer.fit(input_dataset)
    vectorized_dataset = vectorizer_model.transform(input_dataset)

    # Instantiate LDA model
    lda = LDA(k=100, maxIter=100, optimizer="em", ...)

    # Train LDA model
    lda_model = lda.fit(vectorized_dataset)

    # Save models to external storage

Prediction code

def predict(input_query):
    conf = pyspark.SparkConf().setAppName("lda-predict").setMaster("local")
    spark = SparkSession.builder.config(conf=conf).getOrCreate()

    # Load models from external storage
    vectorizer_model = CountVectorizerModel.load("gs://...")
    lda_model = DistributedLDAModel.load("gs://...")

    # Run prediction on the input data using the loaded models
    vectorized_query = vectorizer_model.transform(input_query)
    transformed_query = lda_model.transform(vectorized_query)



    return transformed_query

marked as duplicate by T. Gawęda, eliasah apache-spark Sep 18 '17 at 8:08

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.


If you already have a trained Machine Learning model in spark, You can use Hydroshpere Mist to serve the models(testing or prediction) using rest api without creating a Spark Context. This will save you from recreating the spark environment and rely only on web services for prediction


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