1#![warn(missing_docs)]
28#![warn(clippy::all)]
29#![warn(clippy::pedantic)]
30#![allow(clippy::cast_possible_truncation)]
32#![allow(clippy::cast_sign_loss)]
33#![allow(clippy::cast_precision_loss)]
34#![allow(clippy::cast_possible_wrap)]
35#![allow(clippy::missing_errors_doc)]
36#![allow(clippy::missing_panics_doc)]
37#![allow(clippy::must_use_candidate)]
38#![allow(clippy::module_name_repetitions)]
39#![allow(clippy::similar_names)]
40#![allow(clippy::many_single_char_names)]
41#![allow(clippy::too_many_arguments)]
42#![allow(clippy::doc_markdown)]
43#![allow(clippy::cast_lossless)]
44#![allow(clippy::needless_pass_by_value)]
45#![allow(clippy::redundant_closure_for_method_calls)]
46#![allow(clippy::uninlined_format_args)]
47#![allow(clippy::ptr_arg)]
48#![allow(clippy::return_self_not_must_use)]
49#![allow(clippy::not_unsafe_ptr_arg_deref)]
50#![allow(clippy::items_after_statements)]
51#![allow(clippy::unreadable_literal)]
52#![allow(clippy::if_same_then_else)]
53#![allow(clippy::needless_range_loop)]
54#![allow(clippy::trivially_copy_pass_by_ref)]
55#![allow(clippy::unnecessary_wraps)]
56#![allow(clippy::match_same_arms)]
57#![allow(clippy::unused_self)]
58#![allow(clippy::too_many_lines)]
59#![allow(clippy::single_match_else)]
60#![allow(clippy::fn_params_excessive_bools)]
61#![allow(clippy::struct_excessive_bools)]
62#![allow(clippy::format_push_string)]
63#![allow(clippy::erasing_op)]
64#![allow(clippy::type_repetition_in_bounds)]
65#![allow(clippy::iter_without_into_iter)]
66#![allow(clippy::should_implement_trait)]
67#![allow(clippy::use_debug)]
68#![allow(clippy::case_sensitive_file_extension_comparisons)]
69#![allow(clippy::large_enum_variant)]
70#![allow(clippy::panic)]
71#![allow(clippy::struct_field_names)]
72#![allow(clippy::missing_fields_in_debug)]
73#![allow(clippy::upper_case_acronyms)]
74#![allow(clippy::assigning_clones)]
75#![allow(clippy::option_if_let_else)]
76#![allow(clippy::manual_let_else)]
77#![allow(clippy::explicit_iter_loop)]
78#![allow(clippy::default_trait_access)]
79#![allow(clippy::only_used_in_recursion)]
80#![allow(clippy::manual_clamp)]
81#![allow(clippy::ref_option)]
82#![allow(clippy::multiple_bound_locations)]
83#![allow(clippy::comparison_chain)]
84#![allow(clippy::manual_assert)]
85#![allow(clippy::unnecessary_debug_formatting)]
86
87pub mod adam;
92pub mod grad_scaler;
93pub mod health;
94pub mod lamb;
95pub mod lr_scheduler;
96pub mod optimizer;
97pub mod rmsprop;
98pub mod sgd;
99
100pub use adam::{Adam, AdamW};
105pub use grad_scaler::{GradScaler, GradScalerState};
106pub use health::{
107 AlertKind, AlertSeverity, HealthReport, LossTrend, MonitorConfig, TrainingAlert,
108 TrainingMonitor,
109};
110pub use lamb::LAMB;
111pub use lr_scheduler::{
112 CosineAnnealingLR, ExponentialLR, LRScheduler, MultiStepLR, OneCycleLR, ReduceLROnPlateau,
113 StepLR, WarmupLR,
114};
115pub use optimizer::Optimizer;
116pub use rmsprop::RMSprop;
117pub use sgd::SGD;
118
119pub mod prelude {
125 pub use crate::{
126 Adam, AdamW, CosineAnnealingLR, ExponentialLR, GradScaler, LAMB, LRScheduler, MultiStepLR,
127 OneCycleLR, Optimizer, RMSprop, ReduceLROnPlateau, SGD, StepLR, WarmupLR,
128 };
129}
130
131#[cfg(test)]
136mod tests {
137 use super::*;
138 use axonml_autograd::Variable;
139 use axonml_nn::{Linear, MSELoss, Module, ReLU, Sequential};
140 use axonml_tensor::Tensor;
141
142 #[test]
143 fn test_sgd_optimization() {
144 let model = Sequential::new()
145 .add(Linear::new(2, 4))
146 .add(ReLU)
147 .add(Linear::new(4, 1));
148
149 let mut optimizer = SGD::new(model.parameters(), 0.01);
150 let loss_fn = MSELoss::new();
151
152 let input = Variable::new(
153 Tensor::from_vec(vec![1.0, 2.0, 3.0, 4.0], &[2, 2]).unwrap(),
154 false,
155 );
156 let target = Variable::new(Tensor::from_vec(vec![1.0, 2.0], &[2, 1]).unwrap(), false);
157
158 let initial_loss = loss_fn.compute(&model.forward(&input), &target);
159 let initial_loss_val = initial_loss.data().to_vec()[0];
160
161 for _ in 0..10 {
163 optimizer.zero_grad();
164 let output = model.forward(&input);
165 let loss = loss_fn.compute(&output, &target);
166 loss.backward();
167 optimizer.step();
168 }
169
170 let final_loss = loss_fn.compute(&model.forward(&input), &target);
171 let final_loss_val = final_loss.data().to_vec()[0];
172
173 assert!(final_loss_val <= initial_loss_val);
175 }
176
177 #[test]
178 fn test_adam_optimization() {
179 let model = Sequential::new()
180 .add(Linear::new(2, 4))
181 .add(ReLU)
182 .add(Linear::new(4, 1));
183
184 let mut optimizer = Adam::new(model.parameters(), 0.01);
185 let loss_fn = MSELoss::new();
186
187 let input = Variable::new(
188 Tensor::from_vec(vec![1.0, 2.0, 3.0, 4.0], &[2, 2]).unwrap(),
189 false,
190 );
191 let target = Variable::new(Tensor::from_vec(vec![1.0, 2.0], &[2, 1]).unwrap(), false);
192
193 for _ in 0..20 {
195 optimizer.zero_grad();
196 let output = model.forward(&input);
197 let loss = loss_fn.compute(&output, &target);
198 loss.backward();
199 optimizer.step();
200 }
201
202 let final_output = model.forward(&input);
204 assert_eq!(final_output.shape(), vec![2, 1]);
205 }
206
207 #[test]
208 fn test_lr_scheduler() {
209 let model = Linear::new(10, 5);
210 let mut optimizer = SGD::new(model.parameters(), 0.1);
211 let mut scheduler = StepLR::new(&optimizer, 10, 0.1);
212
213 assert!((optimizer.get_lr() - 0.1).abs() < 1e-6);
214
215 for _ in 0..10 {
216 scheduler.step(&mut optimizer);
217 }
218
219 assert!((optimizer.get_lr() - 0.01).abs() < 1e-6);
220 }
221}