1
2impl AI<(Vec<f32>,Vec<f32>),f32> for CrossEntropyLayer{
3 fn forward(&self,(_output,_target):(Vec<f32>,Vec<f32>))->f32{
4 todo!()
9 }
10}
11impl AI<(Vec<f32>,u32),f32> for CrossEntropyLayer{
12 fn forward(&self,(output,target):(Vec<f32>,u32))->f32{
13 let t=self.temperature;
14 -if t.is_nan(){output[target as usize].ln()}else{LogSoftmaxLayer::new(t).forward_fixed(output)[target as usize]}
15 }
16}
17impl AI<Vec<f32>,Vec<f32>> for AbnormalSoftmaxLayer{
18 fn forward(&self,input:Vec<f32>)->Vec<f32>{
19 let max=input.iter().fold(f32::NEG_INFINITY,|x,&y|if x<y{y}else{x});
20 input.into_iter().map(|x|if x==max{1.0}else{(x-max).exp()}).collect()
21 }
22}
23impl AI<Vec<f32>,Vec<f32>> for LogSoftmaxLayer{
24 fn forward(&self,input:Vec<f32>)->Vec<f32>{
25 let t=self.temperature.recip();
26 let mut sum=0.0;
27 input.iter().for_each(|x|sum+=(t*x).exp());
28 let r=sum.ln();
29 let output:Vec<f32>=input.into_iter().map(|x|t*x-r).collect();
30 output
31 }
32}
33impl AI<Vec<f32>,Vec<f32>> for SoftmaxLayer{
34 fn forward(&self,input:Vec<f32>)->Vec<f32>{
35 let t=self.temperature.recip();
36 if t.is_nan(){
37 let mut count=0;
38 let max=input.iter().fold(f32::NEG_INFINITY,|x,&y|if x<y{
39 count=0;
40 y
41 }else{
42 if x==y{count+=1}
43 x
44 });
45 let r=(count as f32).recip();
46 return input.into_iter().map(|x|if x==max{r}else{0.0}).collect();
47 }
48 let max=input.iter().fold(f32::NEG_INFINITY,|x,&y|if x<y{y}else{x});
49 let mut sum=0.0;
50 let intermediate:Vec<f32>=input.into_iter().map(|x|if x==max{1.0}else{((x-max)*t).exp()}).inspect(|y|sum+=y).collect();
51 let r=sum.recip();
52 let output:Vec<f32>=intermediate.into_iter().map(|y|r*y).collect();
53 output
54 }
55}
56impl Op for ChooseLayer{
57 type Output=u32;
58}
59impl Op for CrossEntropyLayer{
60 type Output=Vec<f32>;
61}
62impl<A:AI<X,Y>+Op<Output=Y>,T,X,Y,Z> AI<(X,T),Z> for CrossEntropy<A> where CrossEntropyLayer:AI<(Y,T),Z>{
63 fn forward(&self,(input,target):(X,T))->Z{self.layer.forward((self.inner.forward(input),target))}
64 fn forward_mut(&mut self,(input,target):(X,T))->Z{self.layer.forward_mut((self.inner.forward_mut(input),target))}
65}
66impl<A:Op<Output=Y>,Y> Op for Choose<A> where ChooseLayer:AI<Y,u32>{
67 type Output=u32;
68}
69impl<A:Op<Output=Y>,Y> Op for CrossEntropy<A> where CrossEntropyLayer:AI<(Y,Y),Vec<f32>>{
70 type Output=Vec<f32>;
71}
72
73macro_rules! soft_like{
75 (@aiwrap $layer:ident,$wrap:ident)=>{
76 impl<A:AI<X,Y>+Op<Output=Y>,X,Y,Z> AI<X,Z> for $wrap<A> where $layer:AI<Y,Z>{
77 fn forward(&self,input:X)->Z{self.layer.forward(self.inner.forward(input))}
78 fn forward_mut(&mut self,input:X)->Z{self.layer.forward_mut(self.inner.forward_mut(input))}
79 }
80 };
81 (@declare $layer:ident,$wrap:ident)=>{
82 impl Default for $layer{
83 fn default()->Self{
84 Self{dim:-1,temperature:1.0}
85 }
86 }
87 #[derive(Clone,Copy,Debug,Deserialize,PartialEq,Serialize)]
88 pub struct $layer{dim:i32,temperature:f32}
90 #[derive(Clone,Copy,Debug,Default,Deserialize,PartialEq,Serialize)]pub struct $wrap<A>{inner:A,layer:$layer}
93 };
94 (@decompose $layer:ident,$wrap:ident)=>{
95 impl Decompose for $layer{
96 fn compose((dim,temperature):Self::Decomposition)->Self{
97 Self{dim,temperature}
98 }
99 fn decompose(self)->Self::Decomposition{(self.dim,self.temperature)}
100 fn decompose_cloned(&self)->Self::Decomposition{(self.dim,self.temperature)}
101 type Decomposition=(i32,f32);
102 }
103 impl<A:Decompose> Decompose for $wrap<A>{
104 fn compose((inner,layer):Self::Decomposition)->Self{
105 Self{inner:A::compose(inner),layer:$layer::compose(layer)}
106 }
107 fn decompose(self)->Self::Decomposition{(self.inner.decompose(),self.layer.decompose())}
108 fn decompose_cloned(&self)->Self::Decomposition{(self.inner.decompose_cloned(),self.layer.decompose_cloned())}
109 type Decomposition=(A::Decomposition,<$layer as Decompose>::Decomposition);
110 }
111 };
112 (@impl $layer:ident,$wrap:ident)=>{
113 impl $layer{
114 pub fn get_dim(&self)->i32{self.dim}
116 pub fn get_temperature(&self)->f32{self.temperature}
118 pub fn new(temperature:f32)->Self{
120 Self{dim:-1,temperature}
121 }
122 pub fn set_dim(&mut self,dim:i32){self.dim=dim}
124 pub fn set_temperature(&mut self,temperature:f32){self.temperature=temperature}
126 pub fn with_dim(mut self,dim:i32)->Self{
128 self.dim=dim;
129 self
130 }
131 pub fn with_temperature(mut self,temperature:f32)->Self{
133 self.temperature=temperature;
134 self
135 }
136 }
137 impl<A:IntoSequence<M>,M:AI<M::Output,M::Output>+Op> IntoSequence<M> for $wrap<A> where $layer:Into<M>{
138 fn into_sequence(self)->Sequential<Vec<M>>{self.inner.into_sequence().with_next(self.layer)}
139 }
140 impl<A:UnwrapInner> UnwrapInner for $wrap<A>{
141 fn unwrap_inner(self)->A::Inner{self.into_inner().unwrap_inner()}
142 type Inner=A::Inner;
143 }
144 impl<A> $wrap<A>{
145 pub fn get_dim(&self)->i32{self.layer.dim}
146 pub fn get_temperature(&self)->f32{self.layer.temperature}
148 pub fn inner(&self)->&A{&self.inner}
150 pub fn inner_mut(&mut self)->&mut A{&mut self.inner}
152 pub fn into_inner(self)->A{self.inner}
154 pub fn new(inner:A,temperature:f32)->Self where Self:Op{
156 Self{inner,layer:$layer::new(temperature)}
157 }
158 pub fn set_dim(&mut self,dim:i32){self.layer.dim=dim}
160 pub fn set_temperature(&mut self,temperature:f32){self.layer.temperature=temperature}
162 pub fn with_dim(mut self,dim:i32)->Self{
164 self.layer.dim=dim;
165 self
166 }
167 pub fn with_inner<B>(self,inner:B)->$wrap<B> where $wrap<B>:Op{
169 $wrap{inner,layer:self.layer}
170 }
171 pub fn with_temperature(mut self,temperature:f32)->Self{
173 self.layer.temperature=temperature;
174 self
175 }
176 }
177 };
178 (@op $layer:ident,$wrap:ident)=>{
179 impl Op for $layer{
180 type Output=Vec<f32>;
181 }
182 impl<A:Op<Output=Y>,Y> Op for $wrap<A> where $layer:AI<Y,Vec<f32>>{
183 type Output=Vec<f32>;
184 }
185 };
186 ($layer:ident,$wrap:ident)=>{
187 soft_like!(@aiwrap @declare @decompose @impl @op $layer,$wrap);
188 };
189 ($(@$command:tt)* $layer:ident,$wrap:ident)=>{
190 $(soft_like!(@$command $layer,$wrap);)*
191 };
192}
193soft_like!(@aiwrap @declare @decompose @impl ChooseLayer,Choose);
194soft_like!(AbnormalSoftmaxLayer,AbnormalSoftmax);
195soft_like!(SoftmaxLayer,Softmax);
196soft_like!(@declare @decompose @impl CrossEntropyLayer,CrossEntropy);
197soft_like!(LogSoftmaxLayer,LogSoftmax);
198use soft_like;
199use crate::{
200 AI,Decompose,IntoSequence,Op,UnwrapInner
201};
202use serde::{Deserialize,Serialize};
203use super::Sequential;