1use neurons::{activation, network, objective, optimizer, plot, tensor};
4
5use std::fs::File;
6use std::io::{BufReader, Read, Result};
7
8fn read(reader: &mut dyn Read) -> Result<u32> {
9 let mut buffer = [0; 4];
10 reader.read_exact(&mut buffer)?;
11 Ok(u32::from_be_bytes(buffer))
12}
13
14fn load_mnist(path: &str) -> Result<Vec<tensor::Tensor>> {
15 let mut reader = BufReader::new(File::open(path)?);
16 let mut images: Vec<tensor::Tensor> = Vec::new();
17
18 let _magic_number = read(&mut reader)?;
19 let num_images = read(&mut reader)?;
20 let num_rows = read(&mut reader)?;
21 let num_cols = read(&mut reader)?;
22
23 for _ in 0..num_images {
24 let mut image: Vec<Vec<f32>> = Vec::new();
25 for _ in 0..num_rows {
26 let mut row: Vec<f32> = Vec::new();
27 for _ in 0..num_cols {
28 let mut pixel = [0];
29 reader.read_exact(&mut pixel)?;
30 row.push(pixel[0] as f32 / 255.0);
31 }
32 image.push(row);
33 }
34 images.push(tensor::Tensor::triple(vec![image]).resize(tensor::Shape::Triple(1, 14, 14)));
35 }
36
37 Ok(images)
38}
39
40fn load_labels(file_path: &str, numbers: usize) -> Result<Vec<tensor::Tensor>> {
41 let mut reader = BufReader::new(File::open(file_path)?);
42 let _magic_number = read(&mut reader)?;
43 let num_labels = read(&mut reader)?;
44
45 let mut _labels = vec![0; num_labels as usize];
46 reader.read_exact(&mut _labels)?;
47
48 Ok(_labels
49 .iter()
50 .map(|&x| tensor::Tensor::one_hot(x as usize, numbers))
51 .collect())
52}
53
54fn main() {
55 let x_train = load_mnist("./examples/datasets/mnist/train-images-idx3-ubyte").unwrap();
56 let y_train = load_labels("./examples/datasets/mnist/train-labels-idx1-ubyte", 10).unwrap();
57 let x_test = load_mnist("./examples/datasets/mnist/t10k-images-idx3-ubyte").unwrap();
58 let y_test = load_labels("./examples/datasets/mnist/t10k-labels-idx1-ubyte", 10).unwrap();
59 println!(
60 "Train: {} images, Test: {} images",
61 x_train.len(),
62 x_test.len()
63 );
64
65 let x_train: Vec<&tensor::Tensor> = x_train.iter().collect();
66 let y_train: Vec<&tensor::Tensor> = y_train.iter().collect();
67 let x_test: Vec<&tensor::Tensor> = x_test.iter().collect();
68 let y_test: Vec<&tensor::Tensor> = y_test.iter().collect();
69
70 let mut network = network::Network::new(tensor::Shape::Triple(1, 14, 14));
71
72 network.convolution(
73 1,
74 (3, 3),
75 (1, 1),
76 (1, 1),
77 (1, 1),
78 activation::Activation::ReLU,
79 None,
80 );
81 network.convolution(
82 1,
83 (3, 3),
84 (1, 1),
85 (1, 1),
86 (1, 1),
87 activation::Activation::ReLU,
88 None,
89 );
90 network.convolution(
91 1,
92 (3, 3),
93 (1, 1),
94 (1, 1),
95 (1, 1),
96 activation::Activation::ReLU,
97 None,
98 );
99 network.maxpool((2, 2), (2, 2));
100 network.dense(10, activation::Activation::Softmax, true, None);
101
102 network.connect(0, 3);
103
104 network.set_optimizer(optimizer::Adam::create(0.001, 0.9, 0.999, 1e-8, None));
105 network.set_objective(
106 objective::Objective::CrossEntropy, None, );
109
110 println!("{}", network);
111
112 let (train_loss, val_loss, val_acc) = network.learn(
114 &x_train,
115 &y_train,
116 Some((&x_test, &y_test, 10)),
117 32,
118 25,
119 Some(5),
120 );
121 plot::loss(
122 &train_loss,
123 &val_loss,
124 &val_acc,
125 "SKIP : MNIST",
126 "./output/mnist/skip.png",
127 );
128
129 let (val_loss, val_acc) = network.validate(&x_test, &y_test, 1e-6);
131 println!(
132 "Final validation accuracy: {:.2} % and loss: {:.5}",
133 val_acc * 100.0,
134 val_loss
135 );
136
137 let prediction = network.predict(x_test.get(0).unwrap());
139 println!(
140 "Prediction on input: Target: {}. Output: {}.",
141 y_test[0].argmax(),
142 prediction.argmax()
143 );
144
145 }