Java Code Examples for org.nd4j.linalg.factory.Nd4j#saveBinary()
The following examples show how to use
org.nd4j.linalg.factory.Nd4j#saveBinary() .
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Example 1
Source File: ArraySavingListener.java From deeplearning4j with Apache License 2.0 | 6 votes |
@Override public void opExecution(SameDiff sd, At at, MultiDataSet batch, SameDiffOp op, OpContext opContext, INDArray[] outputs) { List<String> outNames = op.getOutputsOfOp(); for(int i=0; i<outputs.length; i++ ){ String filename = (count++) + "_" + outNames.get(i).replaceAll("/", "__") + ".bin"; File outFile = new File(dir, filename); INDArray arr = outputs[i]; try { Nd4j.saveBinary(arr, outFile); System.out.println(outFile.getAbsolutePath()); } catch (IOException e){ throw new RuntimeException(e); } } }
Example 2
Source File: NormalizerMinMaxScaler.java From nd4j with Apache License 2.0 | 5 votes |
/** * Save the current min and max * * @param files the statistics to save * @throws IOException * @deprecated use {@link NormalizerSerializer instead} */ public void save(File... files) throws IOException { Nd4j.saveBinary(getMin(), files[0]); Nd4j.saveBinary(getMax(), files[1]); if (isFitLabel()) { Nd4j.saveBinary(getLabelMin(), files[2]); Nd4j.saveBinary(getLabelMax(), files[3]); } }
Example 3
Source File: NormalizerMinMaxScaler.java From deeplearning4j with Apache License 2.0 | 5 votes |
/** * Save the current min and max * * @param files the statistics to save * @throws IOException * @deprecated use {@link NormalizerSerializer instead} */ public void save(File... files) throws IOException { Nd4j.saveBinary(getMin(), files[0]); Nd4j.saveBinary(getMax(), files[1]); if (isFitLabel()) { Nd4j.saveBinary(getLabelMin(), files[2]); Nd4j.saveBinary(getLabelMax(), files[3]); } }
Example 4
Source File: IntDataBufferTests.java From nd4j with Apache License 2.0 | 4 votes |
@Test public void testBasicSerde1() throws Exception { DataBuffer dataBuffer = Nd4j.createBuffer(new int[] {1, 2, 3, 4, 5}); DataBuffer shapeBuffer = Nd4j.getShapeInfoProvider().createShapeInformation(new int[] {1, 5}).getFirst(); INDArray intArray = Nd4j.createArrayFromShapeBuffer(dataBuffer, shapeBuffer); File tempFile = File.createTempFile("test", "test"); tempFile.deleteOnExit(); Nd4j.saveBinary(intArray, tempFile); InputStream stream = new FileInputStream(tempFile); BufferedInputStream bis = new BufferedInputStream(stream); DataInputStream dis = new DataInputStream(bis); INDArray loaded = Nd4j.read(dis); assertEquals(DataBuffer.Type.INT, loaded.data().dataType()); assertEquals(DataBuffer.Type.LONG, loaded.shapeInfoDataBuffer().dataType()); assertEquals(intArray.data().length(), loaded.data().length()); assertArrayEquals(intArray.data().asInt(), loaded.data().asInt()); }
Example 5
Source File: IntDataBufferTests.java From deeplearning4j with Apache License 2.0 | 4 votes |
@Test public void testBasicSerde1() throws Exception { DataBuffer dataBuffer = Nd4j.createBuffer(new int[] {1, 2, 3, 4, 5}); DataBuffer shapeBuffer = Nd4j.getShapeInfoProvider().createShapeInformation(new long[] {1, 5}, DataType.INT).getFirst(); INDArray intArray = Nd4j.createArrayFromShapeBuffer(dataBuffer, shapeBuffer); File tempFile = File.createTempFile("test", "test"); tempFile.deleteOnExit(); Nd4j.saveBinary(intArray, tempFile); InputStream stream = new FileInputStream(tempFile); BufferedInputStream bis = new BufferedInputStream(stream); DataInputStream dis = new DataInputStream(bis); INDArray loaded = Nd4j.read(dis); assertEquals(DataType.INT, loaded.data().dataType()); assertEquals(DataType.LONG, loaded.shapeInfoDataBuffer().dataType()); assertEquals(intArray.data().length(), loaded.data().length()); assertArrayEquals(intArray.data().asInt(), loaded.data().asInt()); }
Example 6
Source File: DistributionStats.java From nd4j with Apache License 2.0 | 2 votes |
/** * Save distribution statistics to the file system * * @param meanFile file to contain the means * @param stdFile file to contain the standard deviations */ public void save(@NonNull File meanFile, @NonNull File stdFile) throws IOException { Nd4j.saveBinary(getMean(), meanFile); Nd4j.saveBinary(getStd(), stdFile); }
Example 7
Source File: StandardScaler.java From nd4j with Apache License 2.0 | 2 votes |
/** * Save the current mean and std * @param mean the mean * @param std the std * @throws IOException */ public void save(File mean, File std) throws IOException { Nd4j.saveBinary(this.mean, mean); Nd4j.saveBinary(this.std, std); }
Example 8
Source File: DistributionStats.java From deeplearning4j with Apache License 2.0 | 2 votes |
/** * Save distribution statistics to the file system * * @param meanFile file to contain the means * @param stdFile file to contain the standard deviations */ public void save(@NonNull File meanFile, @NonNull File stdFile) throws IOException { Nd4j.saveBinary(getMean(), meanFile); Nd4j.saveBinary(getStd(), stdFile); }
Example 9
Source File: StandardScaler.java From deeplearning4j with Apache License 2.0 | 2 votes |
/** * Save the current mean and std * @param mean the mean * @param std the std * @throws IOException */ public void save(File mean, File std) throws IOException { Nd4j.saveBinary(this.mean, mean); Nd4j.saveBinary(this.std, std); }