DJL de Java Deep Learning crea la red DenseNet

package com.example.demo.djl;

import ai.djl.Model;
import ai.djl.ModelException;
import ai.djl.basicdataset.FashionMnist;
import ai.djl.metric.Metrics;
import ai.djl.modality.cv.transform.Resize;
import ai.djl.modality.cv.transform.ToTensor;
import ai.djl.ndarray.NDArray;
import ai.djl.ndarray.NDArrays;
import ai.djl.ndarray.NDList;
import ai.djl.ndarray.NDManager;
import ai.djl.ndarray.types.DataType;
import ai.djl.ndarray.types.Shape;
import ai.djl.nn.AbstractBlock;
import ai.djl.nn.Activation;
import ai.djl.nn.Block;
import ai.djl.nn.SequentialBlock;
import ai.djl.nn.convolutional.Conv2d;
import ai.djl.nn.core.Linear;
import ai.djl.nn.norm.BatchNorm;
import ai.djl.nn.pooling.Pool;
import ai.djl.training.DefaultTrainingConfig;
import ai.djl.training.EasyTrain;
import ai.djl.training.ParameterStore;
import ai.djl.training.Trainer;
import ai.djl.training.dataset.Dataset;
import ai.djl.training.dataset.RandomAccessDataset;
import ai.djl.training.evaluat

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Origin blog.csdn.net/zsj777/article/details/113730433
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