Microsoft Machine Learning for Apache Spark
0.15.dev7
  • Pyspark Library
    • AnalyzeImage
    • AssembleFeatures
    • BinaryFileReader
    • BingImageReader
    • BingImageSearch
    • CNTKLearner
    • CNTKModel
    • Cacher
    • CheckpointData
    • ClassBalancer
    • CleanMissingData
    • ComputeModelStatistics
    • ComputePerInstanceStatistics
    • CustomInputParser
    • CustomOutputParser
    • DataConversion
    • DescribeImage
    • DetectFace
    • DropColumns
    • DynamicMiniBatchTransformer
    • EnsembleByKey
    • EntityDetector
    • Explode
    • FastVectorAssembler
    • Featurize
    • FindBestModel
    • FindSimilarFace
    • FixedMiniBatchTransformer
    • FlattenBatch
    • FluentAPI
    • GenerateThumbnails
    • GroupFaces
    • HTTPTransformer
    • HyperparamBuilder
    • IdentifyFaces
    • ImageFeaturizer
    • ImageLIME
    • ImageReader
    • ImageSetAugmenter
    • ImageTransformer
    • ImageWriter
    • IndexToValue
    • JSONInputParser
    • JSONOutputParser
    • KeyPhraseExtractor
    • Lambda
    • LanguageDetector
    • LightGBMClassifier
    • LightGBMRegressor
    • ModelDownloader
    • MultiColumnAdapter
    • MultiNGram
    • NER
    • OCR
    • PageSplitter
    • PartitionConsolidator
    • PartitionSample
    • PowerBIWriter
    • RankingAdapter
    • RankingAdapterModel
    • RankingEvaluator
    • RankingTrainValidationSplit
    • RankingTrainValidationSplitModel
    • RecognizeDomainSpecificContent
    • RecognizeText
    • RenameColumn
    • Repartition
    • SelectColumns
    • ServingFunctions
    • ServingImplicits
    • SimpleHTTPTransformer
    • StringOutputParser
    • SummarizeData
    • SuperpixelTransformer
    • TagImage
    • TextFeaturizer
    • TextPreprocessor
    • TextSentiment
    • TimeIntervalMiniBatchTransformer
    • Timer
    • TrainClassifier
    • TrainRegressor
    • TuneHyperparameters
    • TypeConversionUtils
    • UDFTransformer
    • UnrollBinaryImage
    • UnrollImage
    • Utils
    • ValueIndexer
    • ValueIndexerModel
    • VerifyFaces
  • Scala Library
Microsoft Machine Learning for Apache Spark
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  • Pyspark Library
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Pyspark LibraryΒΆ

  • AnalyzeImage
  • AssembleFeatures
  • BinaryFileReader
  • BingImageReader
  • BingImageSearch
  • CNTKLearner
  • CNTKModel
  • Cacher
  • CheckpointData
  • ClassBalancer
  • CleanMissingData
  • ComputeModelStatistics
  • ComputePerInstanceStatistics
  • CustomInputParser
  • CustomOutputParser
  • DataConversion
  • DescribeImage
  • DetectFace
  • DropColumns
  • DynamicMiniBatchTransformer
  • EnsembleByKey
  • EntityDetector
  • Explode
  • FastVectorAssembler
  • Featurize
  • FindBestModel
  • FindSimilarFace
  • FixedMiniBatchTransformer
  • FlattenBatch
  • FluentAPI
  • GenerateThumbnails
  • GroupFaces
  • HTTPTransformer
  • HyperparamBuilder
  • IdentifyFaces
  • ImageFeaturizer
  • ImageLIME
  • ImageReader
  • ImageSetAugmenter
  • ImageTransformer
  • ImageWriter
  • IndexToValue
  • JSONInputParser
  • JSONOutputParser
  • KeyPhraseExtractor
  • Lambda
  • LanguageDetector
  • LightGBMClassifier
  • LightGBMRegressor
  • ModelDownloader
  • MultiColumnAdapter
  • MultiNGram
  • NER
  • OCR
  • PageSplitter
  • PartitionConsolidator
  • PartitionSample
  • PowerBIWriter
  • RankingAdapter
  • RankingAdapterModel
  • RankingEvaluator
  • RankingTrainValidationSplit
  • RankingTrainValidationSplitModel
  • RecognizeDomainSpecificContent
  • RecognizeText
  • RenameColumn
  • Repartition
  • SelectColumns
  • ServingFunctions
  • ServingImplicits
  • SimpleHTTPTransformer
  • StringOutputParser
  • SummarizeData
  • SuperpixelTransformer
  • TagImage
  • TextFeaturizer
  • TextPreprocessor
  • TextSentiment
  • TimeIntervalMiniBatchTransformer
  • Timer
  • TrainClassifier
  • TrainRegressor
  • TuneHyperparameters
  • TypeConversionUtils
  • UDFTransformer
  • UnrollBinaryImage
  • UnrollImage
  • Utils
  • ValueIndexer
  • ValueIndexerModel
  • VerifyFaces
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