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NeuralNetXor.cs 5.6 kB

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  1. using System;
  2. using System.Collections.Generic;
  3. using System.Text;
  4. using NumSharp;
  5. using Tensorflow;
  6. using TensorFlowNET.Examples.Utility;
  7. namespace TensorFlowNET.Examples
  8. {
  9. /// <summary>
  10. /// Simple vanilla neural net solving the famous XOR problem
  11. /// https://github.com/amygdala/tensorflow-workshop/blob/master/workshop_sections/getting_started/xor/README.md
  12. /// </summary>
  13. public class NeuralNetXor : Python, IExample
  14. {
  15. public int Priority => 10;
  16. public bool Enabled { get; set; } = true;
  17. public string Name => "NN XOR";
  18. public bool ImportGraph { get; set; } = false;
  19. public int num_steps = 10000;
  20. private NDArray data;
  21. private (Operation, Tensor, Tensor) make_graph(Tensor features,Tensor labels, int num_hidden = 8)
  22. {
  23. var stddev = 1 / Math.Sqrt(2);
  24. var hidden_weights = tf.Variable(tf.truncated_normal(new int []{2, num_hidden}, seed:1, stddev: (float) stddev ));
  25. // Shape [4, num_hidden]
  26. var hidden_activations = tf.nn.relu(tf.matmul(features, hidden_weights));
  27. var output_weights = tf.Variable(tf.truncated_normal(
  28. new[] {num_hidden, 1},
  29. seed: 17,
  30. stddev: (float) (1 / Math.Sqrt(num_hidden))
  31. ));
  32. // Shape [4, 1]
  33. var logits = tf.matmul(hidden_activations, output_weights);
  34. // Shape [4]
  35. var predictions = tf.sigmoid(tf.squeeze(logits));
  36. var loss = tf.reduce_mean(tf.square(predictions - tf.cast(labels, tf.float32)), name:"loss");
  37. var gs = tf.Variable(0, trainable: false, name: "global_step");
  38. var train_op = tf.train.GradientDescentOptimizer(0.2f).minimize(loss, global_step: gs);
  39. return (train_op, loss, gs);
  40. }
  41. public bool Run()
  42. {
  43. PrepareData();
  44. float loss_value = 0;
  45. if (ImportGraph)
  46. loss_value = RunWithImportedGraph();
  47. else
  48. loss_value = RunWithBuiltGraph();
  49. return loss_value < 0.0628;
  50. }
  51. private float RunWithImportedGraph()
  52. {
  53. var graph = tf.Graph().as_default();
  54. tf.train.import_meta_graph("graph/xor.meta");
  55. Tensor features = graph.get_operation_by_name("Placeholder");
  56. Tensor labels = graph.get_operation_by_name("Placeholder_1");
  57. Tensor loss = graph.get_operation_by_name("loss");
  58. Tensor train_op = graph.get_operation_by_name("train_op");
  59. Tensor global_step = graph.get_operation_by_name("global_step");
  60. var init = tf.global_variables_initializer();
  61. float loss_value = 0;
  62. // Start tf session
  63. with(tf.Session(graph), sess =>
  64. {
  65. sess.run(init);
  66. var step = 0;
  67. var y_ = np.array(new int[] { 1, 0, 0, 1 }, dtype: np.int32);
  68. while (step < num_steps)
  69. {
  70. // original python:
  71. //_, step, loss_value = sess.run(
  72. // [train_op, gs, loss],
  73. // feed_dict={features: xy, labels: y_}
  74. // )
  75. var result = sess.run(new ITensorOrOperation[] { train_op, global_step, loss }, new FeedItem(features, data), new FeedItem(labels, y_));
  76. loss_value = result[2];
  77. step = result[1];
  78. if (step % 1000 == 0)
  79. Console.WriteLine($"Step {step} loss: {loss_value}");
  80. }
  81. Console.WriteLine($"Final loss: {loss_value}");
  82. });
  83. return loss_value;
  84. }
  85. private float RunWithBuiltGraph()
  86. {
  87. var graph = tf.Graph().as_default();
  88. var features = tf.placeholder(tf.float32, new TensorShape(4, 2));
  89. var labels = tf.placeholder(tf.int32, new TensorShape(4));
  90. var (train_op, loss, gs) = make_graph(features, labels);
  91. var init = tf.global_variables_initializer();
  92. float loss_value = 0;
  93. // Start tf session
  94. with(tf.Session(graph), sess =>
  95. {
  96. sess.run(init);
  97. var step = 0;
  98. var y_ = np.array(new int[] { 1, 0, 0, 1 }, dtype: np.int32);
  99. while (step < num_steps)
  100. {
  101. var result = sess.run(new ITensorOrOperation[] { train_op, gs, loss }, new FeedItem(features, data), new FeedItem(labels, y_));
  102. loss_value = result[2];
  103. step = result[1];
  104. if (step % 1000 == 0)
  105. Console.WriteLine($"Step {step} loss: {loss_value}");
  106. }
  107. Console.WriteLine($"Final loss: {loss_value}");
  108. });
  109. return loss_value;
  110. }
  111. public void PrepareData()
  112. {
  113. data = new float[,]
  114. {
  115. {1, 0 },
  116. {1, 1 },
  117. {0, 0 },
  118. {0, 1 }
  119. };
  120. if (ImportGraph)
  121. {
  122. // download graph meta data
  123. string url = "https://raw.githubusercontent.com/SciSharp/TensorFlow.NET/master/graph/xor.meta";
  124. Web.Download(url, "graph", "xor.meta");
  125. }
  126. }
  127. }
  128. }

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。