Questions tagged [apache-spark-mllib]
MLlib is a machine learning library for Apache Spark
apache-spark-mllib
2,235
questions
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Can we create custom Estimators
I want to create my own Estimator for Spark ml pipeline purpose so that I can use my own custom business logic.
If any one can guide me in this using Java will be very helpful.
Update:
I created one ...
0
votes
1
answer
224
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Best way to Create a custom Transformer In Java spark ml
I am learning Big data using Apache spark and I want to create a custom transformer for Spark ml so that I can execute some aggregate functions or can perform other possible operation on it
0
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1
answer
1k
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Apply vectors.Dense() to an array float column in pyspark 3.2.1
In order to apply PCA from pyspark.ml.feature, I need to convert a org.apache.spark.sql.types.ArrayType:array<float> to org.apache.spark.ml.linalg.VectorUDT
Say I have the following dataframe :
...
0
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1
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182
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Implementing RL algorithm on apache spark
I want to run RL algorithm on Apache Spark. However, RL does not exists in Spark's MLib.
Is it possible to implement it? any links may help.
Thank you in advance
2
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0
answers
104
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Spark Java: How can we access the p Values in UnivariateFeatureSelector
I am using Spark 3.1.3 and I am trying to take the pValues from the result dataframe of UnivariateFeatureSelector.
UnivariateFeatureSelector selector = new UnivariateFeatureSelector()
....
0
votes
1
answer
187
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matrix factorization model returning much smaller dataframe after predicting ratings in pyspark
I'm trying to create a product recommender with the code below. I'm using matrix factorization from spark ml. I have data that has a customer_id, product_id, and a numeric rating value that has been ...
0
votes
1
answer
121
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How do I extract feature_importances from my model in SparklyR?
I would like to extract feature_importances from my model in SparklyR. So far I have the following reproducible code that is working:
library(sparklyr)
library(dplyr)
sc <- spark_connect(method = &...
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1
answer
446
views
Generate sparse vector for all the column values in spark dataframe
column1
column2
1
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Now I want to calculate the hash or sparse vector of all the values in column1 and column2
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165
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How to groupBy and perform data scaling over each and every group using MlLib Pyspark?
I have a dataset just like in the example below and I am trying to group all rows from a given symbol and perform standard scaling of each group so that at the end all my data is scaled by groups. How ...
0
votes
1
answer
419
views
Pyspark Pipeline Performance
Is there any performance difference between using 2 separate pipelines vs 1 combined pipeline?
For example, 2 separate pipelines:
from pyspark.ml import Pipeline
from pyspark.ml.feature import ...
1
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0
answers
96
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PySpark MLLib equivalent of sklearn DictVectorizer
I am converting a sklearn build to a spark build. My data looks like this:
+-------+--------------------+
| source| feature|
+-------+--------------------+
|7593648|Map(8495310 -> 9,...|...
0
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1
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172
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How to convert a DataFrame to an Array of dense vectors?
How would I convert the following DataFrame
val df = Seq(
(5.0, 1.0, 1.0, 3.0, 7.0),
(2.0, 0.0, 3.0, 4.0, 5.0),
(4.0, 0.0, 0.0, 6.0, 7.0)).toDF("m1", "m2", "m3", &...
1
vote
0
answers
36
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Spark Streaming analytics on a twiter dataset streamed on tcp port
I am streaming a dataset stored locally on a PC in batch sizes of 10 and this is done to TCP port 6100
on the other hand I am fetching these files from this port as JSON files with the format shown ...
1
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1
answer
420
views
Adding custom metadata to DataFrame schema using iceberg table format
I'm adding custom metadata into the DataFrames schema in my PySpark application using StructField's metadata field
It worked fine when I wrote parquet files directly into s3.
The custom metadata was ...
0
votes
1
answer
140
views
Training/Test data with SparkML in Scala
I've been facing with an issue for the past couple of hours.
In theory, when we split data for training and testing, we should standardize the data for training independently, so as not to introduce ...
1
vote
1
answer
284
views
Multiple Evaluators in CrossValidator - Spark ML
Is it possible to have more than 1 evaluator in a CrossValidator to get R2 and RMSE at the same time?
Instead of having two different CrossValidator:
val lr_evaluator_rmse = new ...
4
votes
1
answer
3k
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Error while I am using DataFrame show method in Pyspark
I try to show the Pyspark Dataframe, and I encounter such error:
Py4JJavaError: An error occurred while calling o607.showString.
: org.apache.spark.SparkException: Job aborted due to stage failure: ...
0
votes
1
answer
396
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ML Tuning - Cross Validation in Spark
I am looking the cross validation code example found in https://spark.apache.org/docs/latest/ml-tuning.html#cross-validation
It says:
CrossValidator begins by splitting the dataset into a set of ...
1
vote
1
answer
384
views
Importing a trained pipeline model from pyspark to scala?
Is it possible to load a trained pipeline model from a pyspark environment to scala ?
I am trying to do it but I am having this error
requirement failed: Error loading metadata: Expected class name ...
1
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0
answers
128
views
avoid pivot when preprocessing data for vector assembler
I have the pyspark dataframe below called id_predictions_df. I'm pivoting it to get it in the pivot_df2 form show below, so I can then run vectorassembler on it and get it in a form that I can ...
4
votes
1
answer
114
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What is the Exact Apache-Spark NA Treatment Difference Pandas vs MLLib for Covariance Computation?
I recently observed significant differences in results between covariance computation in Pandas and the MLLib equivalent. Results are reasonably close for fully specified inputs (i.e. without any NAs) ...
1
vote
1
answer
140
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Convert RDD of Matrix to RDD of Vector
I have a RDD[Matrix[Double]] and want to convert it to RDD[Vector] (Each row in the Matrix will be converted to a Vector).
I've seen related answer like Convert Matrix to RowMatrix in Apache Spark ...
1
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0
answers
77
views
How to perform Principle Component Analysis on large feature set?
I am using logistic regression to train a dataset with 20,000 features and am also using PCA for dimensionality reduction. The snippet below is directly from the documentation here: https://spark....
0
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1
answer
83
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Mix Smark MLLIB and SparkNLP in pipeline
In a MLLIB pipeline, how can I chain a CountVectorizer (from SparkML) after a Stemmer (from Spark NLP) ?
When I try to use both in a pipeline I get:
myColName must be of type equal to one of the ...
2
votes
2
answers
685
views
Pyspark: How to save and apply IndexToString to convert labels back to original values in a new predicted dataset
I am using pyspark.ml.RandomForestClassifier and one of the steps here involves StringIndexer on the training data target variable to convert it into labels.
indexer = StringIndexer(inputCol = ...
4
votes
1
answer
1k
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How to assign class weights for a Logistic Regression Model in Apache Spark's MLlib (Python)
I am working on a binary classification problem with an imbalanced dataset where 75% of the data belongs to the negative class(0.0) and the rest (25%) belongs to the positive class(1.0).
I am using a ...
1
vote
0
answers
289
views
LibSVM: Understanding the data format
I am currently experimenting with the LibSVM format as a standardized format for exchanging label/feature data sets between Python and Java in a Spark project. However, I am a bit confused by the ...
1
vote
1
answer
829
views
Is there a way to use spark MLLib CrossValidator without parameter grid?
I want to use cross-validation instead of the normal validation set approach just as a means to get a better estimate of the test error rate. I am using spark-MLLib Dataframe based API. However if I ...
1
vote
2
answers
2k
views
Is there any train_test_split in pyspark or MLLib?
Is there any pyspark / MLLib version for this classic sklearm classic train_test_split code below?
from sklearn.model_selection import train_test_split
X_train, X_test, y_train, y_test = ...
0
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1
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700
views
Vertex ai custom model training for pyspark ml model
Is it possible to train a spark/pyspark ML lib model using VertexAI custom container model building? I couldn't find any reference in the vertex ai documents regarding spark model training. For ...
3
votes
1
answer
494
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What is the difference between MulticlassClassificationEvaluator and MultilabelClassificationEvaluator in PySpark?
MulticlassClassificationEvaluator and MultilabelClassificationEvaluator
are two (of many) Classification Algorithm Evaluators found in PySpark.
I can't find/ understand the difference between these ...
1
vote
0
answers
37
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pyspark - preprocessing with a kind of "product-join"
I have 2 datasets that I can represent as:
The first dataframe is my raw data. It contains millions of row and around 6000 areas.
+--------+------+------+-----+-----+
| user | area | time | foo | ...
1
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0
answers
316
views
How to use functions from sklearn into pyspark
I have a training set with 201,917 rows, 3 features and 1 target. My aim is to calculate the strength of the relationship of the individual features with the target. My choice of method for this is ...
2
votes
0
answers
192
views
Log (and then apply) Spark MLlib model from R to MLflow
I'm using Spark MLlib functions (through the sparklyr package) to train a model but now seem unable to save the model in MLflow for future use.
iris_tbl <- sparklyr::copy_to(sc, iris, "...
0
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0
answers
184
views
alternative to pivoting column to create vector for kmeans in pyspark
I am trying to cluster with kmeans in pyspark. I have data like the id_predictions_df example below. I'm first pivoting the data to create a dataframe where the columns are the id_y indices and the ...
0
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0
answers
94
views
How to decode the one hot encoder values in spark ml
Is it possible to perform oneHotDecoder after using OneHotEncoder in spark ml? Is there any way to achieve this?
StringIndexer dateIndexer = new StringIndexer();
csvData = dateIndexer.setInputCol(&...
0
votes
1
answer
1k
views
Java Spark ML - java.lang.IllegalArgumentException: label does not exist. Available:
Small question regarding a Spark exception I am getting please.
I have a very straightforward dataset:
myCoolDataset.show();
+----------+-----+
| time|value|
+----------+--...
2
votes
1
answer
575
views
requirement failed: OneHotEncoderModel expected x categorical values for input column label, but the input column had metadata specifying n values
While training MultilayerPerceptronClassifier in Pyspark (version 2.4.5), I am getting the following exception:
requirement failed: OneHotEncoderModel expected x categorical values for input column ...
0
votes
1
answer
262
views
How to specify "positive class" in sparkml classification?
How to specify the "positive class" in sparkml (binary) classification? (Or perhaps: How does a MulticlassClassificationEvaluator determine which class is the "positive" one?)
...
0
votes
1
answer
657
views
AttributeError: 'str' object has no attribute 'sc' Pyspark PMML
first time posting here! I am trying to save my Logistic Regression model via pyspark2pmml. However I keep getting the error stated in the title. I will post my pipeline and model code.
from pyspark....
1
vote
0
answers
215
views
how to get score of each fold in 10 fold cross-validation in pyspark?
param=ParamGridBuilder().addGrid(lr.regParam,[0.1,0.01,0.001]).addGrid(lr.maxIter,
[5,10,15,20]).build()
crossval = CrossValidator(estimator=lr,estimatorParamMaps=param,evaluator=evaluator,
numFolds=...
1
vote
1
answer
2k
views
When to use StringIndexer vs StringIndexer+OneHotEncoder?
When / in what context should you use StringIndexer vs StringIndexer+OneHotEncoder?
Looking at the docs for sparkml's StringIndexer (https://spark.apache.org/docs/latest/ml-features#stringindexer) and ...
0
votes
0
answers
336
views
IllegalArgumentException error for running a pyspark mllib example
I am following the Spark MLexample here,
from pyspark.mllib.linalg import Vectors
from pyspark.ml.classification import LogisticRegression
from pyspark.ml.param import Param, Params
# Prepare ...
0
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0
answers
253
views
Declare features and target in a pyspark MLlib decision tree classifier
I want to train a simple decision tree classifier using pyspark.mllib.tree.DecisionTree. I am used to the typical syntax where you declare a model and then explicitly pass a set of features and a ...
1
vote
0
answers
284
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Scala Runtime Error : org.apache.spark.SparkException:Failed to execute user defined function(Tokenizer$$Lambda$../..: (string) => array<string>)
I have the following program which is running in cluster mode of 4 EMR VM
val spark = is a spark session
val file_path = input from args
val wherePutOutput = file_path +"\\output\\"
val ...
1
vote
0
answers
943
views
How to work with BucketedRandomProjectionLSH
I have two datasets dfA (5M) and dfB (6K).
I train the LSH on spark 2.2:
val brp = new BucketedRandomProjectionLSH()
.setBucketLength(2.0)
.setNumHashTables(3)
.setInputCol("features")
...
1
vote
1
answer
486
views
Does SparkML CrossValidator re-fit to the full training data set after selecting the best hyperparameter combo?
After cross-validating a hyperparameter grid on a training dataset, does SparkML's CrossValidator re-fit to the entire training dataset? And if not, from what part of the cross-validation does it ...
0
votes
0
answers
554
views
Spark GBTRegressor gives a RMSE that doesn't match the predictions
This is what my already vectorized train and test datasets look like for mllib:
Train:
Test:
Both have been processed separately to avoid data leakage (Only missing values have been imputed). When I ...
0
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1
answer
429
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PySpark, How to simply count the number of each cluster in Kmeans model?
I trained a Kmeans model:
kmeans = KMeans(k=20, seed=1)
df.show()
kmeans_model = kmeans.fit(df)
I just want to simply count how many elements in each cluster, but I can't find a simple way to achieve ...
0
votes
1
answer
229
views
How to display the result of a BlockMatrix multiplication in PySpark?
This sounds like a simple question, but I am not able to figure out how to display the contents of a pyspark BlockMatrix to the console. What methods should I call on it to actually see my result?