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KMeansClustering.cs 2.0 kB

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  1. using NumSharp;
  2. using System;
  3. using System.Collections.Generic;
  4. using System.Text;
  5. using Tensorflow;
  6. using Tensorflow.Clustering;
  7. using TensorFlowNET.Examples.Utility;
  8. namespace TensorFlowNET.Examples
  9. {
  10. /// <summary>
  11. /// Implement K-Means algorithm with TensorFlow.NET, and apply it to classify
  12. /// handwritten digit images.
  13. /// https://github.com/aymericdamien/TensorFlow-Examples/blob/master/examples/2_BasicModels/kmeans.py
  14. /// </summary>
  15. public class KMeansClustering : Python, IExample
  16. {
  17. public int Priority => 8;
  18. public bool Enabled { get; set; } = true;
  19. public string Name => "K-means Clustering";
  20. public int? train_size = null;
  21. public int validation_size = 5000;
  22. public int? test_size = null;
  23. public int batch_size = 1024; // The number of samples per batch
  24. Datasets mnist;
  25. NDArray full_data_x;
  26. int num_steps = 50; // Total steps to train
  27. int k = 25; // The number of clusters
  28. int num_classes = 10; // The 10 digits
  29. int num_features = 784; // Each image is 28x28 pixels
  30. public bool Run()
  31. {
  32. // Input images
  33. var X = tf.placeholder(tf.float32, shape: new TensorShape(-1, num_features));
  34. // Labels (for assigning a label to a centroid and testing)
  35. var Y = tf.placeholder(tf.float32, shape: new TensorShape(-1, num_classes));
  36. // K-Means Parameters
  37. var kmeans = new KMeans(X, k, distance_metric: KMeans.COSINE_DISTANCE, use_mini_batch: true);
  38. // Build KMeans graph
  39. var training_graph = kmeans.training_graph();
  40. return false;
  41. }
  42. public void PrepareData()
  43. {
  44. mnist = MnistDataSet.read_data_sets("mnist", one_hot: true, train_size: train_size, validation_size:validation_size, test_size:test_size);
  45. full_data_x = mnist.train.images;
  46. }
  47. }
  48. }

tensorflow框架的.NET版本,提供了丰富的特性和API,可以借此很方便地在.NET平台下搭建深度学习训练与推理流程。