com.intel.analytics.bigdl.python.api

PythonBigDL

class PythonBigDL[T] extends Serializable

Implementation of Python API for BigDL

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Instance Constructors

  1. new PythonBigDL()(implicit arg0: ClassTag[T], ev: TensorNumeric[T])

Value Members

  1. final def !=(arg0: AnyRef): Boolean

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  3. final def ##(): Int

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  6. def activityToJTensors(outputActivity: Activity): List[JTensor]

  7. def addScheduler(seq: SequentialSchedule, scheduler: LearningRateSchedule, maxIteration: Int): SequentialSchedule

  8. final def asInstanceOf[T0]: T0

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  9. def batching(dataset: DataSet[dataset.Sample[T]], batchSize: Int): DataSet[MiniBatch[T]]

  10. def clone(): AnyRef

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    @throws( ... )
  11. def createAbs(): Abs[T]

  12. def createAbsCriterion(sizeAverage: Boolean = true): AbsCriterion[T]

  13. def createActivityRegularization(l1: Double, l2: Double): ActivityRegularization[T]

  14. def createAdadelta(decayRate: Double = 0.9, Epsilon: Double = 1e-10): Adadelta[T]

  15. def createAdagrad(learningRate: Double = 1e-3, learningRateDecay: Double = 0.0, weightDecay: Double = 0.0): Adagrad[T]

  16. def createAdam(learningRate: Double = 1e-3, learningRateDecay: Double = 0.0, beta1: Double = 0.9, beta2: Double = 0.999, Epsilon: Double = 1e-8): Adam[T]

  17. def createAdamax(learningRate: Double = 0.002, beta1: Double = 0.9, beta2: Double = 0.999, Epsilon: Double = 1e-38): Adamax[T]

  18. def createAdd(inputSize: Int): Add[T]

  19. def createAddConstant(constant_scalar: Double, inplace: Boolean = false): AddConstant[T]

  20. def createAspectScale(scale: Int, scaleMultipleOf: Int, maxSize: Int, resizeMode: Int = 1, useScaleFactor: Boolean = true, minScale: Double = 1): FeatureTransformer

  21. def createAttention(hiddenSize: Int, numHeads: Int, attentionDropout: Float): Attention[T]

  22. def createBCECriterion(weights: JTensor = null, sizeAverage: Boolean = true): BCECriterion[T]

  23. def createBatchNormalization(nOutput: Int, eps: Double = 1e-5, momentum: Double = 0.1, affine: Boolean = true, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null): BatchNormalization[T]

  24. def createBiRecurrent(merge: AbstractModule[Table, Tensor[T], T] = null): BiRecurrent[T]

  25. def createBifurcateSplitTable(dimension: Int): BifurcateSplitTable[T]

  26. def createBilinear(inputSize1: Int, inputSize2: Int, outputSize: Int, biasRes: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): Bilinear[T]

  27. def createBilinearFiller(): BilinearFiller.type

  28. def createBinaryThreshold(th: Double, ip: Boolean): BinaryThreshold[T]

  29. def createBinaryTreeLSTM(inputSize: Int, hiddenSize: Int, gateOutput: Boolean = true, withGraph: Boolean = true): BinaryTreeLSTM[T]

  30. def createBottle(module: AbstractModule[Activity, Activity, T], nInputDim: Int = 2, nOutputDim1: Int = Int.MaxValue): Bottle[T]

  31. def createBrightness(deltaLow: Double, deltaHigh: Double): Brightness

  32. def createBytesToMat(byteKey: String): BytesToMat

  33. def createCAdd(size: List[Int], bRegularizer: Regularizer[T] = null): CAdd[T]

  34. def createCAddTable(inplace: Boolean = false): CAddTable[T, T]

  35. def createCAveTable(inplace: Boolean = false): CAveTable[T]

  36. def createCDivTable(): CDivTable[T]

  37. def createCMaxTable(): CMaxTable[T]

  38. def createCMinTable(): CMinTable[T]

  39. def createCMul(size: List[Int], wRegularizer: Regularizer[T] = null): CMul[T]

  40. def createCMulTable(): CMulTable[T]

  41. def createCSubTable(): CSubTable[T]

  42. def createCategoricalCrossEntropy(): CategoricalCrossEntropy[T]

  43. def createCenterCrop(cropWidth: Int, cropHeight: Int, isClip: Boolean): CenterCrop

  44. def createChannelNormalize(meanR: Double, meanG: Double, meanB: Double, stdR: Double = 1, stdG: Double = 1, stdB: Double = 1): FeatureTransformer

  45. def createChannelOrder(): ChannelOrder

  46. def createChannelScaledNormalizer(meanR: Int, meanG: Int, meanB: Int, scale: Double): ChannelScaledNormalizer

  47. def createClamp(min: Int, max: Int): Clamp[T]

  48. def createClassNLLCriterion(weights: JTensor = null, sizeAverage: Boolean = true, logProbAsInput: Boolean = true): ClassNLLCriterion[T]

  49. def createClassSimplexCriterion(nClasses: Int): ClassSimplexCriterion[T]

  50. def createColorJitter(brightnessProb: Double = 0.5, brightnessDelta: Double = 32, contrastProb: Double = 0.5, contrastLower: Double = 0.5, contrastUpper: Double = 1.5, hueProb: Double = 0.5, hueDelta: Double = 18, saturationProb: Double = 0.5, saturationLower: Double = 0.5, saturationUpper: Double = 1.5, randomOrderProb: Double = 0, shuffle: Boolean = false): ColorJitter

  51. def createConcat(dimension: Int): Concat[T]

  52. def createConcatTable(): ConcatTable[T]

  53. def createConstInitMethod(value: Double): ConstInitMethod

  54. def createContiguous(): Contiguous[T]

  55. def createContrast(deltaLow: Double, deltaHigh: Double): Contrast

  56. def createConvLSTMPeephole(inputSize: Int, outputSize: Int, kernelI: Int, kernelC: Int, stride: Int = 1, padding: Int = 1, activation: TensorModule[T] = null, innerActivation: TensorModule[T] = null, wRegularizer: Regularizer[T] = null, uRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, cRegularizer: Regularizer[T] = null, withPeephole: Boolean = true): ConvLSTMPeephole[T]

  57. def createConvLSTMPeephole3D(inputSize: Int, outputSize: Int, kernelI: Int, kernelC: Int, stride: Int = 1, padding: Int = 1, wRegularizer: Regularizer[T] = null, uRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, cRegularizer: Regularizer[T] = null, withPeephole: Boolean = true): ConvLSTMPeephole3D[T]

  58. def createCosine(inputSize: Int, outputSize: Int): Cosine[T]

  59. def createCosineDistance(): CosineDistance[T]

  60. def createCosineDistanceCriterion(sizeAverage: Boolean = true): CosineDistanceCriterion[T]

  61. def createCosineEmbeddingCriterion(margin: Double = 0.0, sizeAverage: Boolean = true): CosineEmbeddingCriterion[T]

  62. def createCosineProximityCriterion(): CosineProximityCriterion[T]

  63. def createCropping2D(heightCrop: List[Int], widthCrop: List[Int], dataFormat: String = "NCHW"): Cropping2D[T]

  64. def createCropping3D(dim1Crop: List[Int], dim2Crop: List[Int], dim3Crop: List[Int], dataFormat: String = Cropping3D.CHANNEL_FIRST): Cropping3D[T]

  65. def createCrossEntropyCriterion(weights: JTensor = null, sizeAverage: Boolean = true): CrossEntropyCriterion[T]

  66. def createCrossProduct(numTensor: Int = 0, embeddingSize: Int = 0): CrossProduct[T]

  67. def createDLClassifier(model: Module[T], criterion: Criterion[T], featureSize: ArrayList[Int], labelSize: ArrayList[Int]): DLClassifier[T]

  68. def createDLClassifierModel(model: Module[T], featureSize: ArrayList[Int]): DLClassifierModel[T]

  69. def createDLEstimator(model: Module[T], criterion: Criterion[T], featureSize: ArrayList[Int], labelSize: ArrayList[Int]): DLEstimator[T]

  70. def createDLImageTransformer(transformer: FeatureTransformer): DLImageTransformer

  71. def createDLModel(model: Module[T], featureSize: ArrayList[Int]): DLModel[T]

  72. def createDatasetFromImageFrame(imageFrame: ImageFrame): DataSet[ImageFeature]

  73. def createDefault(): Default

  74. def createDenseToSparse(): DenseToSparse[T]

  75. def createDetectionCrop(roiKey: String, normalized: Boolean): DetectionCrop

  76. def createDetectionOutputFrcnn(nmsThresh: Float = 0.3f, nClasses: Int, bboxVote: Boolean, maxPerImage: Int = 100, thresh: Double = 0.05): DetectionOutputFrcnn

  77. def createDetectionOutputSSD(nClasses: Int, shareLocation: Boolean, bgLabel: Int, nmsThresh: Double, nmsTopk: Int, keepTopK: Int, confThresh: Double, varianceEncodedInTarget: Boolean, confPostProcess: Boolean): DetectionOutputSSD[T]

  78. def createDiceCoefficientCriterion(sizeAverage: Boolean = true, epsilon: Float = 1.0f): DiceCoefficientCriterion[T]

  79. def createDistKLDivCriterion(sizeAverage: Boolean = true): DistKLDivCriterion[T]

  80. def createDistriOptimizer(model: AbstractModule[Activity, Activity, T], trainingRdd: JavaRDD[Sample], criterion: Criterion[T], optimMethod: Map[String, OptimMethod[T]], endTrigger: Trigger, batchSize: Int): Optimizer[T, MiniBatch[T]]

  81. def createDistriOptimizerFromDataSet(model: AbstractModule[Activity, Activity, T], trainDataSet: DataSet[ImageFeature], criterion: Criterion[T], optimMethod: Map[String, OptimMethod[T]], endTrigger: Trigger, batchSize: Int): Optimizer[T, MiniBatch[T]]

  82. def createDistributedImageFrame(imageRdd: JavaRDD[JTensor], labelRdd: JavaRDD[JTensor]): DistributedImageFrame

  83. def createDotProduct(): DotProduct[T]

  84. def createDotProductCriterion(sizeAverage: Boolean = false): DotProductCriterion[T]

  85. def createDropout(initP: Double = 0.5, inplace: Boolean = false, scale: Boolean = true): Dropout[T]

  86. def createELU(alpha: Double = 1.0, inplace: Boolean = false): ELU[T]

  87. def createEcho(): Echo[T]

  88. def createEuclidean(inputSize: Int, outputSize: Int, fastBackward: Boolean = true): Euclidean[T]

  89. def createEveryEpoch(): Trigger

  90. def createExp(): Exp[T]

  91. def createExpand(meansR: Int = 123, meansG: Int = 117, meansB: Int = 104, minExpandRatio: Double = 1.0, maxExpandRatio: Double = 4.0): Expand

  92. def createExpandSize(targetSizes: List[Int]): ExpandSize[T]

  93. def createExponential(decayStep: Int, decayRate: Double, stairCase: Boolean = false): Exponential

  94. def createFeedForwardNetwork(hiddenSize: Int, filterSize: Int, reluDropout: Float): FeedForwardNetwork[T]

  95. def createFiller(startX: Double, startY: Double, endX: Double, endY: Double, value: Int = 255): Filler

  96. def createFixExpand(eh: Int, ew: Int): FixExpand

  97. def createFixedCrop(wStart: Double, hStart: Double, wEnd: Double, hEnd: Double, normalized: Boolean, isClip: Boolean): FixedCrop

  98. def createFlattenTable(): FlattenTable[T]

  99. def createFtrl(learningRate: Double = 1e-3, learningRatePower: Double = 0.5, initialAccumulatorValue: Double = 0.1, l1RegularizationStrength: Double = 0.0, l2RegularizationStrength: Double = 0.0, l2ShrinkageRegularizationStrength: Double = 0.0): Ftrl[T]

  100. def createGRU(inputSize: Int, outputSize: Int, p: Double = 0, activation: TensorModule[T] = null, innerActivation: TensorModule[T] = null, wRegularizer: Regularizer[T] = null, uRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): GRU[T]

  101. def createGaussianCriterion(): GaussianCriterion[T]

  102. def createGaussianDropout(rate: Double): GaussianDropout[T]

  103. def createGaussianNoise(stddev: Double): GaussianNoise[T]

  104. def createGaussianSampler(): GaussianSampler[T]

  105. def createGradientReversal(lambda: Double = 1): GradientReversal[T]

  106. def createHFlip(): HFlip

  107. def createHardShrink(lambda: Double = 0.5): HardShrink[T]

  108. def createHardSigmoid: HardSigmoid[T]

  109. def createHardTanh(minValue: Double = 1, maxValue: Double = 1, inplace: Boolean = false): HardTanh[T]

  110. def createHighway(size: Int, withBias: Boolean, activation: TensorModule[T] = null, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): Graph[T]

  111. def createHingeEmbeddingCriterion(margin: Double = 1, sizeAverage: Boolean = true): HingeEmbeddingCriterion[T]

  112. def createHitRatio(k: Int = 10, negNum: Int = 100): ValidationMethod[T]

  113. def createHue(deltaLow: Double, deltaHigh: Double): Hue

  114. def createIdentity(): Identity[T]

  115. def createImageFeature(data: JTensor = null, label: JTensor = null, uri: String = null): ImageFeature

  116. def createImageFrameToSample(inputKeys: List[String], targetKeys: List[String], sampleKey: String): ImageFrameToSample[T]

  117. def createIndex(dimension: Int): Index[T]

  118. def createInferReshape(size: List[Int], batchMode: Boolean = false): InferReshape[T]

  119. def createInput(): ModuleNode[T]

  120. def createJoinTable(dimension: Int, nInputDims: Int): JoinTable[T]

  121. def createKLDCriterion(sizeAverage: Boolean): KLDCriterion[T]

  122. def createKullbackLeiblerDivergenceCriterion: KullbackLeiblerDivergenceCriterion[T]

  123. def createL1Cost(): L1Cost[T]

  124. def createL1HingeEmbeddingCriterion(margin: Double = 1): L1HingeEmbeddingCriterion[T]

  125. def createL1L2Regularizer(l1: Double, l2: Double): L1L2Regularizer[T]

  126. def createL1Penalty(l1weight: Int, sizeAverage: Boolean = false, provideOutput: Boolean = true): L1Penalty[T]

  127. def createL1Regularizer(l1: Double): L1Regularizer[T]

  128. def createL2Regularizer(l2: Double): L2Regularizer[T]

  129. def createLBFGS(maxIter: Int = 20, maxEval: Double = Double.MaxValue, tolFun: Double = 1e-5, tolX: Double = 1e-9, nCorrection: Int = 100, learningRate: Double = 1.0, verbose: Boolean = false, lineSearch: LineSearch[T] = null, lineSearchOptions: Map[Any, Any] = null): LBFGS[T]

  130. def createLSTM(inputSize: Int, hiddenSize: Int, p: Double = 0, activation: TensorModule[T] = null, innerActivation: TensorModule[T] = null, wRegularizer: Regularizer[T] = null, uRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): LSTM[T]

  131. def createLSTMPeephole(inputSize: Int, hiddenSize: Int, p: Double = 0, wRegularizer: Regularizer[T] = null, uRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): LSTMPeephole[T]

  132. def createLayerNormalization(hiddenSize: Int): LayerNormalization[T]

  133. def createLeakyReLU(negval: Double = 0.01, inplace: Boolean = false): LeakyReLU[T]

  134. def createLinear(inputSize: Int, outputSize: Int, withBias: Boolean, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null): Linear[T]

  135. def createLocalImageFrame(images: List[JTensor], labels: List[JTensor]): LocalImageFrame

  136. def createLocalOptimizer(features: List[JTensor], y: JTensor, model: AbstractModule[Activity, Activity, T], criterion: Criterion[T], optimMethod: Map[String, OptimMethod[T]], endTrigger: Trigger, batchSize: Int, localCores: Int): Optimizer[T, MiniBatch[T]]

  137. def createLocallyConnected1D(nInputFrame: Int, inputFrameSize: Int, outputFrameSize: Int, kernelW: Int, strideW: Int = 1, propagateBack: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null): LocallyConnected1D[T]

  138. def createLocallyConnected2D(nInputPlane: Int, inputWidth: Int, inputHeight: Int, nOutputPlane: Int, kernelW: Int, kernelH: Int, strideW: Int = 1, strideH: Int = 1, padW: Int = 0, padH: Int = 0, propagateBack: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null, withBias: Boolean = true, dataFormat: String = "NCHW"): LocallyConnected2D[T]

  139. def createLog(): Log[T]

  140. def createLogSigmoid(): LogSigmoid[T]

  141. def createLogSoftMax(): LogSoftMax[T]

  142. def createLookupTable(nIndex: Int, nOutput: Int, paddingValue: Double = 0, maxNorm: Double = Double.MaxValue, normType: Double = 2.0, shouldScaleGradByFreq: Boolean = false, wRegularizer: Regularizer[T] = null): LookupTable[T]

  143. def createLookupTableSparse(nIndex: Int, nOutput: Int, combiner: String = "sum", maxNorm: Double = 1, wRegularizer: Regularizer[T] = null): LookupTableSparse[T]

  144. def createLoss(criterion: Criterion[T]): ValidationMethod[T]

  145. def createMAE(): ValidationMethod[T]

  146. def createMM(transA: Boolean = false, transB: Boolean = false): MM[T]

  147. def createMSECriterion: MSECriterion[T]

  148. def createMV(trans: Boolean = false): MV[T]

  149. def createMapTable(module: AbstractModule[Activity, Activity, T] = null): MapTable[T]

  150. def createMarginCriterion(margin: Double = 1.0, sizeAverage: Boolean = true, squared: Boolean = false): MarginCriterion[T]

  151. def createMarginRankingCriterion(margin: Double = 1.0, sizeAverage: Boolean = true): MarginRankingCriterion[T]

  152. def createMaskedSelect(): MaskedSelect[T]

  153. def createMasking(maskValue: Double): Masking[T]

  154. def createMatToFloats(validHeight: Int = 300, validWidth: Int = 300, validChannels: Int = 3, outKey: String = ImageFeature.floats, shareBuffer: Boolean = true): MatToFloats

  155. def createMatToTensor(toRGB: Boolean = false, tensorKey: String = ImageFeature.imageTensor): MatToTensor[T]

  156. def createMax(dim: Int = 1, numInputDims: Int = Int.MinValue): Max[T]

  157. def createMaxEpoch(max: Int): Trigger

  158. def createMaxIteration(max: Int): Trigger

  159. def createMaxScore(max: Float): Trigger

  160. def createMaxout(inputSize: Int, outputSize: Int, maxoutNumber: Int, withBias: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: Tensor[T] = null, initBias: Tensor[T] = null): Maxout[T]

  161. def createMean(dimension: Int = 1, nInputDims: Int = 1, squeeze: Boolean = true): Mean[T]

  162. def createMeanAbsolutePercentageCriterion: MeanAbsolutePercentageCriterion[T]

  163. def createMeanSquaredLogarithmicCriterion: MeanSquaredLogarithmicCriterion[T]

  164. def createMin(dim: Int = 1, numInputDims: Int = Int.MinValue): Min[T]

  165. def createMinLoss(min: Float): Trigger

  166. def createMixtureTable(dim: Int = Int.MaxValue): MixtureTable[T]

  167. def createModel(input: List[ModuleNode[T]], output: List[ModuleNode[T]]): Graph[T]

  168. def createModelPreprocessor(preprocessor: AbstractModule[Activity, Activity, T], trainable: AbstractModule[Activity, Activity, T]): Graph[T]

  169. def createMsraFiller(varianceNormAverage: Boolean = true): MsraFiller

  170. def createMul(): Mul[T]

  171. def createMulConstant(scalar: Double, inplace: Boolean = false): MulConstant[T]

  172. def createMultiCriterion(): MultiCriterion[T]

  173. def createMultiLabelMarginCriterion(sizeAverage: Boolean = true): MultiLabelMarginCriterion[T]

  174. def createMultiLabelSoftMarginCriterion(weights: JTensor = null, sizeAverage: Boolean = true): MultiLabelSoftMarginCriterion[T]

  175. def createMultiMarginCriterion(p: Int = 1, weights: JTensor = null, margin: Double = 1.0, sizeAverage: Boolean = true): MultiMarginCriterion[T]

  176. def createMultiRNNCell(cells: List[Cell[T]]): MultiRNNCell[T]

  177. def createMultiStep(stepSizes: List[Int], gamma: Double): MultiStep

  178. def createNDCG(k: Int = 10, negNum: Int = 100): ValidationMethod[T]

  179. def createNarrow(dimension: Int, offset: Int, length: Int = 1): Narrow[T]

  180. def createNarrowTable(offset: Int, length: Int = 1): NarrowTable[T]

  181. def createNegative(inplace: Boolean): Negative[T]

  182. def createNegativeEntropyPenalty(beta: Double): NegativeEntropyPenalty[T]

  183. def createNode(module: AbstractModule[Activity, Activity, T], x: List[ModuleNode[T]]): ModuleNode[T]

  184. def createNormalize(p: Double, eps: Double = 1e-10): Normalize[T]

  185. def createNormalizeScale(p: Double, eps: Double = 1e-10, scale: Double, size: List[Int], wRegularizer: Regularizer[T] = null): NormalizeScale[T]

  186. def createOnes(): Ones.type

  187. def createPGCriterion(sizeAverage: Boolean = false): PGCriterion[T]

  188. def createPReLU(nOutputPlane: Int = 0): PReLU[T]

  189. def createPack(dimension: Int): Pack[T]

  190. def createPadding(dim: Int, pad: Int, nInputDim: Int, value: Double = 0.0, nIndex: Int = 1): Padding[T]

  191. def createPairwiseDistance(norm: Int = 2): PairwiseDistance[T]

  192. def createParallelAdam(learningRate: Double = 1e-3, learningRateDecay: Double = 0.0, beta1: Double = 0.9, beta2: Double = 0.999, Epsilon: Double = 1e-8, parallelNum: Int = Engine.coreNumber()): ParallelAdam[T]

  193. def createParallelCriterion(repeatTarget: Boolean = false): ParallelCriterion[T]

  194. def createParallelTable(): ParallelTable[T]

  195. def createPipeline(list: List[FeatureTransformer]): FeatureTransformer

  196. def createPixelBytesToMat(byteKey: String): PixelBytesToMat

  197. def createPixelNormalize(means: List[Double]): PixelNormalizer

  198. def createPlateau(monitor: String, factor: Float = 0.1f, patience: Int = 10, mode: String = "min", epsilon: Float = 1e-4f, cooldown: Int = 0, minLr: Float = 0): Plateau

  199. def createPoissonCriterion: PoissonCriterion[T]

  200. def createPoly(power: Double, maxIteration: Int): Poly

  201. def createPower(power: Double, scale: Double = 1, shift: Double = 0): Power[T]

  202. def createPriorBox(minSizes: List[Double], maxSizes: List[Double] = null, aspectRatios: List[Double] = null, isFlip: Boolean = true, isClip: Boolean = false, variances: List[Double] = null, offset: Float = 0.5f, imgH: Int = 0, imgW: Int = 0, imgSize: Int = 0, stepH: Float = 0, stepW: Float = 0, step: Float = 0): PriorBox[T]

  203. def createProposal(preNmsTopN: Int, postNmsTopN: Int, ratios: List[Double], scales: List[Double], rpnPreNmsTopNTrain: Int = 12000, rpnPostNmsTopNTrain: Int = 2000): Proposal

  204. def createRMSprop(learningRate: Double = 1e-2, learningRateDecay: Double = 0.0, decayRate: Double = 0.99, Epsilon: Double = 1e-8): RMSprop[T]

  205. def createRReLU(lower: Double = 1.0 / 8, upper: Double = 1.0 / 3, inplace: Boolean = false): RReLU[T]

  206. def createRandomAlterAspect(min_area_ratio: Float, max_area_ratio: Int, min_aspect_ratio_change: Float, interp_mode: String, cropLength: Int): RandomAlterAspect

  207. def createRandomAspectScale(scales: List[Int], scaleMultipleOf: Int = 1, maxSize: Int = 1000): RandomAspectScale

  208. def createRandomCrop(cropWidth: Int, cropHeight: Int, isClip: Boolean): RandomCrop

  209. def createRandomCropper(cropWidth: Int, cropHeight: Int, mirror: Boolean, cropperMethod: String, channels: Int): RandomCropper

  210. def createRandomNormal(mean: Double, stdv: Double): RandomNormal

  211. def createRandomResize(minSize: Int, maxSize: Int): RandomResize

  212. def createRandomSampler(): FeatureTransformer

  213. def createRandomTransformer(transformer: FeatureTransformer, prob: Double): RandomTransformer

  214. def createRandomUniform(): InitializationMethod

  215. def createRandomUniform(lower: Double, upper: Double): InitializationMethod

  216. def createReLU(ip: Boolean = false): ReLU[T]

  217. def createReLU6(inplace: Boolean = false): ReLU6[T]

  218. def createRecurrent(): Recurrent[T]

  219. def createRecurrentDecoder(outputLength: Int): RecurrentDecoder[T]

  220. def createReplicate(nFeatures: Int, dim: Int = 1, nDim: Int = Int.MaxValue): Replicate[T]

  221. def createReshape(size: List[Int], batchMode: Boolean = null): Reshape[T]

  222. def createResize(resizeH: Int, resizeW: Int, resizeMode: Int = Imgproc.INTER_LINEAR, useScaleFactor: Boolean): Resize

  223. def createResizeBilinear(outputHeight: Int, outputWidth: Int, alignCorner: Boolean, dataFormat: String): ResizeBilinear[T]

  224. def createReverse(dimension: Int = 1, isInplace: Boolean = false): Reverse[T]

  225. def createRnnCell(inputSize: Int, hiddenSize: Int, activation: TensorModule[T], isInputWithBias: Boolean = true, isHiddenWithBias: Boolean = true, wRegularizer: Regularizer[T] = null, uRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): RnnCell[T]

  226. def createRoiHFlip(normalized: Boolean = true): RoiHFlip

  227. def createRoiNormalize(): RoiNormalize

  228. def createRoiPooling(pooled_w: Int, pooled_h: Int, spatial_scale: Double): RoiPooling[T]

  229. def createRoiProject(needMeetCenterConstraint: Boolean): RoiProject

  230. def createRoiResize(normalized: Boolean): RoiResize

  231. def createSGD(learningRate: Double = 1e-3, learningRateDecay: Double = 0.0, weightDecay: Double = 0.0, momentum: Double = 0.0, dampening: Double = Double.MaxValue, nesterov: Boolean = false, leaningRateSchedule: LearningRateSchedule = SGD.Default(), learningRates: JTensor = null, weightDecays: JTensor = null): SGD[T]

  232. def createSReLU(shape: ArrayList[Int], shareAxes: ArrayList[Int] = null): SReLU[T]

  233. def createSaturation(deltaLow: Double, deltaHigh: Double): Saturation

  234. def createScale(size: List[Int]): Scale[T]

  235. def createSelect(dimension: Int, index: Int): Select[T]

  236. def createSelectTable(dimension: Int): SelectTable[T]

  237. def createSequenceBeamSearch(vocabSize: Int, beamSize: Int, alpha: Float, decodeLength: Int, eosId: Float, paddingValue: Float, numHiddenLayers: Int, hiddenSize: Int): SequenceBeamSearch[T]

  238. def createSequential(): Container[Activity, Activity, T]

  239. def createSequentialSchedule(iterationPerEpoch: Int): SequentialSchedule

  240. def createSeveralIteration(interval: Int): Trigger

  241. def createSigmoid(): Sigmoid[T]

  242. def createSmoothL1Criterion(sizeAverage: Boolean = true): SmoothL1Criterion[T]

  243. def createSmoothL1CriterionWithWeights(sigma: Double, num: Int = 0): SmoothL1CriterionWithWeights[T]

  244. def createSoftMarginCriterion(sizeAverage: Boolean = true): SoftMarginCriterion[T]

  245. def createSoftMax(): SoftMax[T]

  246. def createSoftMin(): SoftMin[T]

  247. def createSoftPlus(beta: Double = 1.0): SoftPlus[T]

  248. def createSoftShrink(lambda: Double = 0.5): SoftShrink[T]

  249. def createSoftSign(): SoftSign[T]

  250. def createSoftmaxWithCriterion(ignoreLabel: Integer = null, normalizeMode: String = "VALID"): SoftmaxWithCriterion[T]

  251. def createSparseJoinTable(dimension: Int): SparseJoinTable[T]

  252. def createSparseLinear(inputSize: Int, outputSize: Int, withBias: Boolean, backwardStart: Int = 1, backwardLength: Int = 1, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null): SparseLinear[T]

  253. def createSpatialAveragePooling(kW: Int, kH: Int, dW: Int = 1, dH: Int = 1, padW: Int = 0, padH: Int = 0, globalPooling: Boolean = false, ceilMode: Boolean = false, countIncludePad: Boolean = true, divide: Boolean = true, format: String = "NCHW"): SpatialAveragePooling[T]

  254. def createSpatialBatchNormalization(nOutput: Int, eps: Double = 1e-5, momentum: Double = 0.1, affine: Boolean = true, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null, dataFormat: String = "NCHW"): SpatialBatchNormalization[T]

  255. def createSpatialContrastiveNormalization(nInputPlane: Int = 1, kernel: JTensor = null, threshold: Double = 1e-4, thresval: Double = 1e-4): SpatialContrastiveNormalization[T]

  256. def createSpatialConvolution(nInputPlane: Int, nOutputPlane: Int, kernelW: Int, kernelH: Int, strideW: Int = 1, strideH: Int = 1, padW: Int = 0, padH: Int = 0, nGroup: Int = 1, propagateBack: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null, withBias: Boolean = true, dataFormat: String = "NCHW"): SpatialConvolution[T]

  257. def createSpatialConvolutionMap(connTable: JTensor, kW: Int, kH: Int, dW: Int = 1, dH: Int = 1, padW: Int = 0, padH: Int = 0, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): SpatialConvolutionMap[T]

  258. def createSpatialCrossMapLRN(size: Int = 5, alpha: Double = 1.0, beta: Double = 0.75, k: Double = 1.0, dataFormat: String = "NCHW"): SpatialCrossMapLRN[T]

  259. def createSpatialDilatedConvolution(nInputPlane: Int, nOutputPlane: Int, kW: Int, kH: Int, dW: Int = 1, dH: Int = 1, padW: Int = 0, padH: Int = 0, dilationW: Int = 1, dilationH: Int = 1, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): SpatialDilatedConvolution[T]

  260. def createSpatialDivisiveNormalization(nInputPlane: Int = 1, kernel: JTensor = null, threshold: Double = 1e-4, thresval: Double = 1e-4): SpatialDivisiveNormalization[T]

  261. def createSpatialDropout1D(initP: Double = 0.5): SpatialDropout1D[T]

  262. def createSpatialDropout2D(initP: Double = 0.5, dataFormat: String = "NCHW"): SpatialDropout2D[T]

  263. def createSpatialDropout3D(initP: Double = 0.5, dataFormat: String = "NCHW"): SpatialDropout3D[T]

  264. def createSpatialFullConvolution(nInputPlane: Int, nOutputPlane: Int, kW: Int, kH: Int, dW: Int = 1, dH: Int = 1, padW: Int = 0, padH: Int = 0, adjW: Int = 0, adjH: Int = 0, nGroup: Int = 1, noBias: Boolean = false, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): SpatialFullConvolution[T]

  265. def createSpatialMaxPooling(kW: Int, kH: Int, dW: Int, dH: Int, padW: Int = 0, padH: Int = 0, ceilMode: Boolean = false, format: String = "NCHW"): SpatialMaxPooling[T]

  266. def createSpatialSeparableConvolution(nInputChannel: Int, nOutputChannel: Int, depthMultiplier: Int, kW: Int, kH: Int, sW: Int = 1, sH: Int = 1, pW: Int = 0, pH: Int = 0, withBias: Boolean = true, dataFormat: String = "NCHW", wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, pRegularizer: Regularizer[T] = null): SpatialSeparableConvolution[T]

  267. def createSpatialShareConvolution(nInputPlane: Int, nOutputPlane: Int, kernelW: Int, kernelH: Int, strideW: Int = 1, strideH: Int = 1, padW: Int = 0, padH: Int = 0, nGroup: Int = 1, propagateBack: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null, withBias: Boolean = true): SpatialShareConvolution[T]

  268. def createSpatialSubtractiveNormalization(nInputPlane: Int = 1, kernel: JTensor = null): SpatialSubtractiveNormalization[T]

  269. def createSpatialWithinChannelLRN(size: Int = 5, alpha: Double = 1.0, beta: Double = 0.75): SpatialWithinChannelLRN[T]

  270. def createSpatialZeroPadding(padLeft: Int, padRight: Int, padTop: Int, padBottom: Int): SpatialZeroPadding[T]

  271. def createSplitTable(dimension: Int, nInputDims: Int = 1): SplitTable[T]

  272. def createSqrt(): Sqrt[T]

  273. def createSquare(): Square[T]

  274. def createSqueeze(dim: Int = Int.MinValue, numInputDims: Int = Int.MinValue): Squeeze[T]

  275. def createStep(stepSize: Int, gamma: Double): Step

  276. def createSum(dimension: Int = 1, nInputDims: Int = 1, sizeAverage: Boolean = false, squeeze: Boolean = true): Sum[T]

  277. def createTableOperation(operationLayer: AbstractModule[Table, Tensor[T], T]): TableOperation[T]

  278. def createTanh(): Tanh[T]

  279. def createTanhShrink(): TanhShrink[T]

  280. def createTemporalConvolution(inputFrameSize: Int, outputFrameSize: Int, kernelW: Int, strideW: Int = 1, propagateBack: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null, initWeight: JTensor = null, initBias: JTensor = null, initGradWeight: JTensor = null, initGradBias: JTensor = null): TemporalConvolution[T]

  281. def createTemporalMaxPooling(kW: Int, dW: Int): TemporalMaxPooling[T]

  282. def createThreshold(th: Double = 1e-6, v: Double = 0.0, ip: Boolean = false): Threshold[T]

  283. def createTile(dim: Int, copies: Int): Tile[T]

  284. def createTimeDistributed(layer: TensorModule[T]): TimeDistributed[T]

  285. def createTimeDistributedCriterion(critrn: TensorCriterion[T], sizeAverage: Boolean = false): TimeDistributedCriterion[T]

  286. def createTimeDistributedMaskCriterion(critrn: TensorCriterion[T], paddingValue: Int = 0): TimeDistributedMaskCriterion[T]

  287. def createTop1Accuracy(): ValidationMethod[T]

  288. def createTop5Accuracy(): ValidationMethod[T]

  289. def createTrainSummary(logDir: String, appName: String): TrainSummary

  290. def createTransformer(vocabSize: Int, hiddenSize: Int, numHeads: Int, filterSize: Int, numHiddenlayers: Int, postprocessDropout: Double, attentionDropout: Double, reluDropout: Double): Transformer[T]

  291. def createTransformerCriterion(criterion: AbstractCriterion[Activity, Activity, T], inputTransformer: AbstractModule[Activity, Activity, T] = null, targetTransformer: AbstractModule[Activity, Activity, T] = null): TransformerCriterion[T]

  292. def createTranspose(permutations: List[List[Int]]): Transpose[T]

  293. def createTreeNNAccuracy(): ValidationMethod[T]

  294. def createTriggerAnd(first: Trigger, others: List[Trigger]): Trigger

  295. def createTriggerOr(first: Trigger, others: List[Trigger]): Trigger

  296. def createUnsqueeze(pos: Int, numInputDims: Int = Int.MinValue): Unsqueeze[T]

  297. def createUpSampling1D(length: Int): UpSampling1D[T]

  298. def createUpSampling2D(size: List[Int], dataFormat: String): UpSampling2D[T]

  299. def createUpSampling3D(size: List[Int]): UpSampling3D[T]

  300. def createValidationSummary(logDir: String, appName: String): ValidationSummary

  301. def createView(sizes: List[Int], num_input_dims: Int = 0): View[T]

  302. def createVolumetricAveragePooling(kT: Int, kW: Int, kH: Int, dT: Int, dW: Int, dH: Int, padT: Int = 0, padW: Int = 0, padH: Int = 0, countIncludePad: Boolean = true, ceilMode: Boolean = false): VolumetricAveragePooling[T]

  303. def createVolumetricConvolution(nInputPlane: Int, nOutputPlane: Int, kT: Int, kW: Int, kH: Int, dT: Int = 1, dW: Int = 1, dH: Int = 1, padT: Int = 0, padW: Int = 0, padH: Int = 0, withBias: Boolean = true, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): VolumetricConvolution[T]

  304. def createVolumetricFullConvolution(nInputPlane: Int, nOutputPlane: Int, kT: Int, kW: Int, kH: Int, dT: Int = 1, dW: Int = 1, dH: Int = 1, padT: Int = 0, padW: Int = 0, padH: Int = 0, adjT: Int = 0, adjW: Int = 0, adjH: Int = 0, nGroup: Int = 1, noBias: Boolean = false, wRegularizer: Regularizer[T] = null, bRegularizer: Regularizer[T] = null): VolumetricFullConvolution[T]

  305. def createVolumetricMaxPooling(kT: Int, kW: Int, kH: Int, dT: Int, dW: Int, dH: Int, padT: Int = 0, padW: Int = 0, padH: Int = 0): VolumetricMaxPooling[T]

  306. def createWarmup(delta: Double): Warmup

  307. def createXavier(): Xavier.type

  308. def createZeros(): Zeros.type

  309. def criterionBackward(criterion: AbstractCriterion[Activity, Activity, T], input: List[JTensor], inputIsTable: Boolean, target: List[JTensor], targetIsTable: Boolean): List[JTensor]

  310. def criterionForward(criterion: AbstractCriterion[Activity, Activity, T], input: List[JTensor], inputIsTable: Boolean, target: List[JTensor], targetIsTable: Boolean): T

  311. def disableClip(optimizer: Optimizer[T, MiniBatch[T]]): Unit

  312. def distributedImageFrameRandomSplit(imageFrame: DistributedImageFrame, weights: List[Double]): Array[ImageFrame]

  313. def distributedImageFrameToImageTensorRdd(imageFrame: DistributedImageFrame, floatKey: String = ImageFeature.floats, toChw: Boolean = true): JavaRDD[JTensor]

  314. def distributedImageFrameToLabelTensorRdd(imageFrame: DistributedImageFrame): JavaRDD[JTensor]

  315. def distributedImageFrameToPredict(imageFrame: DistributedImageFrame, key: String): JavaRDD[List[Any]]

  316. def distributedImageFrameToSample(imageFrame: DistributedImageFrame, key: String): JavaRDD[Sample]

  317. def distributedImageFrameToUri(imageFrame: DistributedImageFrame, key: String): JavaRDD[String]

  318. def dlClassifierModelTransform(dlClassifierModel: DLClassifierModel[T], dataSet: DataFrame): DataFrame

  319. def dlImageTransform(dlImageTransformer: DLImageTransformer, dataSet: DataFrame): DataFrame

  320. def dlModelTransform(dlModel: DLModel[T], dataSet: DataFrame): DataFrame

  321. def dlReadImage(path: String, sc: JavaSparkContext, minParitions: Int): DataFrame

  322. final def eq(arg0: AnyRef): Boolean

    Definition Classes
    AnyRef
  323. def equals(arg0: Any): Boolean

    Definition Classes
    AnyRef → Any
  324. def evaluate(module: AbstractModule[Activity, Activity, T]): AbstractModule[Activity, Activity, T]

  325. def featureTransformDataset(dataset: DataSet[ImageFeature], transformer: FeatureTransformer): DataSet[ImageFeature]

  326. def finalize(): Unit

    Attributes
    protected[java.lang]
    Definition Classes
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    Annotations
    @throws( classOf[java.lang.Throwable] )
  327. def findGraphNode(model: Graph[T], name: String): ModuleNode[T]

  328. def fitClassifier(classifier: DLClassifier[T], dataSet: DataFrame): DLModel[T]

  329. def fitEstimator(estimator: DLEstimator[T], dataSet: DataFrame): DLModel[T]

  330. def freeze(model: AbstractModule[Activity, Activity, T], freezeLayers: List[String]): AbstractModule[Activity, Activity, T]

  331. final def getClass(): Class[_]

    Definition Classes
    AnyRef → Any
  332. def getContainerModules(module: Container[Activity, Activity, T]): List[AbstractModule[Activity, Activity, T]]

  333. def getFlattenModules(module: Container[Activity, Activity, T], includeContainer: Boolean): List[AbstractModule[Activity, Activity, T]]

  334. def getHiddenState(rec: Recurrent[T]): JActivity

  335. def getNodeAndCoreNumber(): Array[Int]

  336. def getRealClassNameOfJValue(module: AbstractModule[Activity, Activity, T]): String

  337. def getRunningMean(module: BatchNormalization[T]): JTensor

  338. def getRunningStd(module: BatchNormalization[T]): JTensor

  339. def getWeights(model: AbstractModule[Activity, Activity, T]): List[JTensor]

  340. def hashCode(): Int

    Definition Classes
    AnyRef → Any
  341. def imageFeatureGetKeys(imageFeature: ImageFeature): List[String]

  342. def imageFeatureToImageTensor(imageFeature: ImageFeature, floatKey: String = ImageFeature.floats, toChw: Boolean = true): JTensor

  343. def imageFeatureToLabelTensor(imageFeature: ImageFeature): JTensor

  344. def initEngine(): Unit

  345. def isDistributed(imageFrame: ImageFrame): Boolean

  346. final def isInstanceOf[T0]: Boolean

    Definition Classes
    Any
  347. def isLocal(imageFrame: ImageFrame): Boolean

  348. def isWithWeights(module: Module[T]): Boolean

  349. def jTensorsToActivity(input: List[JTensor], isTable: Boolean): Activity

  350. def loadBigDL(path: String): AbstractModule[Activity, Activity, T]

  351. def loadBigDLModule(modulePath: String, weightPath: String): AbstractModule[Activity, Activity, T]

  352. def loadCaffe(model: AbstractModule[Activity, Activity, T], defPath: String, modelPath: String, matchAll: Boolean = true): AbstractModule[Activity, Activity, T]

  353. def loadCaffeModel(defPath: String, modelPath: String): AbstractModule[Activity, Activity, T]

  354. def loadOptimMethod(path: String): OptimMethod[T]

  355. def loadTF(path: String, inputs: List[String], outputs: List[String], byteOrder: String, binFile: String = null, generatedBackward: Boolean = true): AbstractModule[Activity, Activity, T]

  356. def loadTorch(path: String): AbstractModule[Activity, Activity, T]

  357. def localImageFrameToImageTensor(imageFrame: LocalImageFrame, floatKey: String = ImageFeature.floats, toChw: Boolean = true): List[JTensor]

  358. def localImageFrameToLabelTensor(imageFrame: LocalImageFrame): List[JTensor]

  359. def localImageFrameToPredict(imageFrame: LocalImageFrame, key: String): List[List[Any]]

  360. def localImageFrameToSample(imageFrame: LocalImageFrame, key: String): List[Sample]

  361. def localImageFrameToUri(imageFrame: LocalImageFrame, key: String): List[String]

  362. def modelBackward(model: AbstractModule[Activity, Activity, T], input: List[JTensor], inputIsTable: Boolean, gradOutput: List[JTensor], gradOutputIsTable: Boolean): List[JTensor]

  363. def modelEvaluate(model: AbstractModule[Activity, Activity, T], valRDD: JavaRDD[Sample], batchSize: Int, valMethods: List[ValidationMethod[T]]): List[EvaluatedResult]

  364. def modelEvaluateImageFrame(model: AbstractModule[Activity, Activity, T], imageFrame: ImageFrame, batchSize: Int, valMethods: List[ValidationMethod[T]]): List[EvaluatedResult]

  365. def modelForward(model: AbstractModule[Activity, Activity, T], input: List[JTensor], inputIsTable: Boolean): List[JTensor]

  366. def modelGetParameters(model: AbstractModule[Activity, Activity, T]): Map[Any, Map[Any, List[List[Any]]]]

  367. def modelPredictClass(model: AbstractModule[Activity, Activity, T], dataRdd: JavaRDD[Sample]): JavaRDD[Int]

  368. def modelPredictImage(model: AbstractModule[Activity, Activity, T], imageFrame: ImageFrame, featLayerName: String, shareBuffer: Boolean, batchPerPartition: Int, predictKey: String): ImageFrame

  369. def modelPredictRDD(model: AbstractModule[Activity, Activity, T], dataRdd: JavaRDD[Sample], batchSize: Int = 1): JavaRDD[JTensor]

  370. def modelSave(module: AbstractModule[Activity, Activity, T], path: String, overWrite: Boolean): Unit

  371. final def ne(arg0: AnyRef): Boolean

    Definition Classes
    AnyRef
  372. final def notify(): Unit

    Definition Classes
    AnyRef
  373. final def notifyAll(): Unit

    Definition Classes
    AnyRef
  374. def predictLocal(model: AbstractModule[Activity, Activity, T], features: List[JTensor], batchSize: Int = 1): List[JTensor]

  375. def predictLocalClass(model: AbstractModule[Activity, Activity, T], features: List[JTensor]): List[Int]

  376. def quantize(module: AbstractModule[Activity, Activity, T]): Module[T]

  377. def read(path: String, sc: JavaSparkContext, minPartitions: Int): ImageFrame

  378. def readParquet(path: String, sc: JavaSparkContext): DistributedImageFrame

  379. def redirectSparkLogs(logPath: String): Unit

  380. def saveBigDLModule(module: AbstractModule[Activity, Activity, T], modulePath: String, weightPath: String, overWrite: Boolean): Unit

  381. def saveCaffe(module: AbstractModule[Activity, Activity, T], prototxtPath: String, modelPath: String, useV2: Boolean = true, overwrite: Boolean = false): Unit

  382. def saveGraphTopology(model: Graph[T], logPath: String): Graph[T]

  383. def saveOptimMethod(method: OptimMethod[T], path: String, overWrite: Boolean = false): Unit

  384. def saveTF(model: AbstractModule[Activity, Activity, T], inputs: List[Any], path: String, byteOrder: String, dataFormat: String): Unit

  385. def saveTensorDictionary(tensors: HashMap[String, JTensor], path: String): Unit

    Save tensor dictionary to a Java hashmap object file

  386. def seqFilesToImageFrame(url: String, sc: JavaSparkContext, classNum: Int, partitionNum: Int): ImageFrame

  387. def setBatchSizeDLClassifier(classifier: DLClassifier[T], batchSize: Int): DLClassifier[T]

  388. def setBatchSizeDLClassifierModel(dlClassifierModel: DLClassifierModel[T], batchSize: Int): DLClassifierModel[T]

  389. def setBatchSizeDLEstimator(estimator: DLEstimator[T], batchSize: Int): DLEstimator[T]

  390. def setBatchSizeDLModel(dlModel: DLModel[T], batchSize: Int): DLModel[T]

  391. def setCheckPoint(optimizer: Optimizer[T, MiniBatch[T]], trigger: Trigger, checkPointPath: String, isOverwrite: Boolean): Unit

  392. def setConstantClip(optimizer: Optimizer[T, MiniBatch[T]], min: Float, max: Float): Unit

  393. def setCriterion(optimizer: Optimizer[T, MiniBatch[T]], criterion: Criterion[T]): Unit

  394. def setFeatureSizeDLClassifierModel(dlClassifierModel: DLClassifierModel[T], featureSize: ArrayList[Int]): DLClassifierModel[T]

  395. def setFeatureSizeDLModel(dlModel: DLModel[T], featureSize: ArrayList[Int]): DLModel[T]

  396. def setInitMethod(layer: Initializable, initMethods: ArrayList[InitializationMethod]): layer.type

  397. def setInitMethod(layer: Initializable, weightInitMethod: InitializationMethod, biasInitMethod: InitializationMethod): layer.type

  398. def setL2NormClip(optimizer: Optimizer[T, MiniBatch[T]], normValue: Float): Unit

  399. def setLabel(labelMap: Map[String, Float], imageFrame: ImageFrame): Unit

  400. def setLearningRateDLClassifier(classifier: DLClassifier[T], lr: Double): DLClassifier[T]

  401. def setLearningRateDLEstimator(estimator: DLEstimator[T], lr: Double): DLEstimator[T]

  402. def setMaxEpochDLClassifier(classifier: DLClassifier[T], maxEpoch: Int): DLClassifier[T]

  403. def setMaxEpochDLEstimator(estimator: DLEstimator[T], maxEpoch: Int): DLEstimator[T]

  404. def setModelSeed(seed: Long): Unit

  405. def setRunningMean(module: BatchNormalization[T], runningMean: JTensor): Unit

  406. def setRunningStd(module: BatchNormalization[T], runningStd: JTensor): Unit

  407. def setStopGradient(model: Graph[T], layers: List[String]): Graph[T]

  408. def setTrainData(optimizer: Optimizer[T, MiniBatch[T]], trainingRdd: JavaRDD[Sample], batchSize: Int): Unit

  409. def setTrainSummary(optimizer: Optimizer[T, MiniBatch[T]], summary: TrainSummary): Unit

  410. def setValSummary(optimizer: Optimizer[T, MiniBatch[T]], summary: ValidationSummary): Unit

  411. def setValidation(optimizer: Optimizer[T, MiniBatch[T]], batchSize: Int, trigger: Trigger, xVal: List[JTensor], yVal: JTensor, vMethods: List[ValidationMethod[T]]): Unit

  412. def setValidation(optimizer: Optimizer[T, MiniBatch[T]], batchSize: Int, trigger: Trigger, valRdd: JavaRDD[Sample], vMethods: List[ValidationMethod[T]]): Unit

  413. def setValidationFromDataSet(optimizer: Optimizer[T, MiniBatch[T]], batchSize: Int, trigger: Trigger, valDataSet: DataSet[ImageFeature], vMethods: List[ValidationMethod[T]]): Unit

  414. def setWeights(model: AbstractModule[Activity, Activity, T], weights: List[JTensor]): Unit

  415. def showBigDlInfoLogs(): Unit

  416. def summaryReadScalar(summary: Summary, tag: String): List[List[Any]]

  417. def summarySetTrigger(summary: TrainSummary, summaryName: String, trigger: Trigger): TrainSummary

  418. final def synchronized[T0](arg0: ⇒ T0): T0

    Definition Classes
    AnyRef
  419. def testSample(sample: Sample): Sample

  420. def testTensor(jTensor: JTensor): JTensor

  421. def toJSample(psamples: RDD[Sample]): RDD[dataset.Sample[T]]

  422. def toJSample(record: Sample): dataset.Sample[T]

  423. def toJTensor(tensor: Tensor[T]): JTensor

  424. def toPySample(sample: dataset.Sample[T]): Sample

  425. def toSampleArray(Xs: List[Tensor[T]], y: Tensor[T] = null): Array[dataset.Sample[T]]

  426. def toString(): String

    Definition Classes
    AnyRef → Any
  427. def toTensor(jTensor: JTensor): Tensor[T]

  428. def trainTF(modelPath: String, output: String, samples: JavaRDD[Sample], optMethod: OptimMethod[T], criterion: Criterion[T], batchSize: Int, endWhen: Trigger): AbstractModule[Activity, Activity, T]

  429. def transformImageFeature(transformer: FeatureTransformer, feature: ImageFeature): ImageFeature

  430. def transformImageFrame(transformer: FeatureTransformer, imageFrame: ImageFrame): ImageFrame

  431. def unFreeze(model: AbstractModule[Activity, Activity, T], names: List[String]): AbstractModule[Activity, Activity, T]

  432. def uniform(a: Double, b: Double, size: List[Int]): JTensor

  433. def updateParameters(model: AbstractModule[Activity, Activity, T], lr: Double): Unit

  434. final def wait(): Unit

    Definition Classes
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    Annotations
    @throws( ... )
  435. final def wait(arg0: Long, arg1: Int): Unit

    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  436. final def wait(arg0: Long): Unit

    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  437. def writeParquet(path: String, output: String, sc: JavaSparkContext, partitionNum: Int = 1): Unit

Inherited from Serializable

Inherited from Serializable

Inherited from AnyRef

Inherited from Any

Ungrouped