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在星火ML / pyspark创建特征向量编程

更新时间:2023-02-26 14:36:19

您可以使用 VectorAssembler

 从pyspark.ml.feature进口VectorAssembler无视= ['身份证','标签','binomial_label']
汇编= VectorAssembler(
    inputCols = [X在df.columns x如果X,它不会在忽略]
    outputCol ='功能')assembler.transform(DF)

可以使用ML管道K-均值相结合:

 从pyspark.ml进口管道管道=管线(阶段= [汇编,kmeans_estimator])
模型= pipeline.fit(DF)

I'm wondering if there is a concise way to run ML (e.g KMeans) on a DataFrame in pyspark if I have the features in multiple numeric columns.

I.e. as in the Iris dataset:

(a1=5.1, a2=3.5, a3=1.4, a4=0.2, id=u'id_1', label=u'Iris-setosa', binomial_label=1)

I'd like to use KMeans without recreating the DataSet with the feature vector added manually as a new column and the original columns hardcoded repeatedly in the code.

The solution I'd like to improve:

from pyspark.mllib.linalg import Vectors
from pyspark.sql.types import Row
from pyspark.ml.clustering import KMeans, KMeansModel

iris = sqlContext.read.parquet("/opt/data/iris.parquet")
iris.first()
# Row(a1=5.1, a2=3.5, a3=1.4, a4=0.2, id=u'id_1', label=u'Iris-setosa', binomial_label=1)

df = iris.map(lambda r: Row(
                    id = r.id,
                    a1 = r.a1,
                    a2 = r.a2,
                    a3 = r.a3,
                    a4 = r.a4,
                    label = r.label,
                    binomial_label=r.binomial_label,
                    features = Vectors.dense(r.a1, r.a2, r.a3, r.a4))
                    ).toDF()


kmeans_estimator = KMeans()\
    .setFeaturesCol("features")\
    .setPredictionCol("prediction")\
kmeans_transformer = kmeans_estimator.fit(df)

predicted_df = kmeans_transformer.transform(df).drop("features")
predicted_df.first()
# Row(a1=5.1, a2=3.5, a3=1.4, a4=0.2, binomial_label=1, id=u'id_1', label=u'Iris-setosa', prediction=1)

I'm looking for a solution, which is something like:

feature_cols = ["a1", "a2", "a3", "a4"]
prediction_col_name = "prediction"
<dataframe independent code for KMeans>
<New dataframe is created, extended with the `prediction` column.>

You can use VectorAssembler:

from pyspark.ml.feature import VectorAssembler

ignore = ['id', 'label', 'binomial_label']
assembler = VectorAssembler(
    inputCols=[x for x in df.columns if x not in ignore],
    outputCol='features')

assembler.transform(df)

It can be combined with k-means using ML Pipeline:

from pyspark.ml import Pipeline

pipeline = Pipeline(stages=[assembler, kmeans_estimator])
model = pipeline.fit(df)