trictrac/bot/src/burnrl/dqn_big_model.rs
2025-08-20 14:08:04 +02:00

195 lines
6.5 KiB
Rust

use crate::burnrl::environment_big::TrictracEnvironment;
use crate::burnrl::utils::{soft_update_linear, Config};
use burn::backend::{ndarray::NdArrayDevice, NdArray};
use burn::module::Module;
use burn::nn::{Linear, LinearConfig};
use burn::optim::AdamWConfig;
use burn::record::{CompactRecorder, Recorder};
use burn::tensor::activation::relu;
use burn::tensor::backend::{AutodiffBackend, Backend};
use burn::tensor::Tensor;
use burn_rl::agent::DQN;
use burn_rl::agent::{DQNModel, DQNTrainingConfig};
use burn_rl::base::{Action, Agent, ElemType, Environment, Memory, Model, State};
use std::time::SystemTime;
#[derive(Module, Debug)]
pub struct Net<B: Backend> {
linear_0: Linear<B>,
linear_1: Linear<B>,
linear_2: Linear<B>,
}
impl<B: Backend> Net<B> {
#[allow(unused)]
pub fn new(input_size: usize, dense_size: usize, output_size: usize) -> Self {
Self {
linear_0: LinearConfig::new(input_size, dense_size).init(&Default::default()),
linear_1: LinearConfig::new(dense_size, dense_size).init(&Default::default()),
linear_2: LinearConfig::new(dense_size, output_size).init(&Default::default()),
}
}
fn consume(self) -> (Linear<B>, Linear<B>, Linear<B>) {
(self.linear_0, self.linear_1, self.linear_2)
}
}
impl<B: Backend> Model<B, Tensor<B, 2>, Tensor<B, 2>> for Net<B> {
fn forward(&self, input: Tensor<B, 2>) -> Tensor<B, 2> {
let layer_0_output = relu(self.linear_0.forward(input));
let layer_1_output = relu(self.linear_1.forward(layer_0_output));
relu(self.linear_2.forward(layer_1_output))
}
fn infer(&self, input: Tensor<B, 2>) -> Tensor<B, 2> {
self.forward(input)
}
}
impl<B: Backend> DQNModel<B> for Net<B> {
fn soft_update(this: Self, that: &Self, tau: ElemType) -> Self {
let (linear_0, linear_1, linear_2) = this.consume();
Self {
linear_0: soft_update_linear(linear_0, &that.linear_0, tau),
linear_1: soft_update_linear(linear_1, &that.linear_1, tau),
linear_2: soft_update_linear(linear_2, &that.linear_2, tau),
}
}
}
#[allow(unused)]
const MEMORY_SIZE: usize = 8192;
type MyAgent<E, B> = DQN<E, B, Net<B>>;
#[allow(unused)]
// pub fn run<E: Environment + AsMut<TrictracEnvironment>, B: AutodiffBackend>(
pub fn run<
E: Environment + AsMut<TrictracEnvironment>,
B: AutodiffBackend<InnerBackend = NdArray>,
>(
conf: &Config,
visualized: bool,
// ) -> DQN<E, B, Net<B>> {
) -> impl Agent<E> {
let mut env = E::new(visualized);
env.as_mut().max_steps = conf.max_steps;
let model = Net::<B>::new(
<<E as Environment>::StateType as State>::size(),
conf.dense_size,
<<E as Environment>::ActionType as Action>::size(),
);
let mut agent = MyAgent::new(model);
// let config = DQNTrainingConfig::default();
let config = DQNTrainingConfig {
gamma: conf.gamma,
tau: conf.tau,
learning_rate: conf.learning_rate,
batch_size: conf.batch_size,
clip_grad: Some(burn::grad_clipping::GradientClippingConfig::Value(
conf.clip_grad,
)),
};
let mut memory = Memory::<E, B, MEMORY_SIZE>::default();
let mut optimizer = AdamWConfig::new()
.with_grad_clipping(config.clip_grad.clone())
.init();
let mut policy_net = agent.model().as_ref().unwrap().clone();
let mut step = 0_usize;
for episode in 0..conf.num_episodes {
let mut episode_done = false;
let mut episode_reward: ElemType = 0.0;
let mut episode_duration = 0_usize;
let mut state = env.state();
let mut now = SystemTime::now();
while !episode_done {
let eps_threshold = conf.eps_end
+ (conf.eps_start - conf.eps_end) * f64::exp(-(step as f64) / conf.eps_decay);
let action =
DQN::<E, B, Net<B>>::react_with_exploration(&policy_net, state, eps_threshold);
let snapshot = env.step(action);
episode_reward +=
<<E as Environment>::RewardType as Into<ElemType>>::into(snapshot.reward().clone());
memory.push(
state,
*snapshot.state(),
action,
snapshot.reward().clone(),
snapshot.done(),
);
if config.batch_size < memory.len() {
policy_net =
agent.train::<MEMORY_SIZE>(policy_net, &memory, &mut optimizer, &config);
}
step += 1;
episode_duration += 1;
if snapshot.done() || episode_duration >= conf.max_steps {
let envmut = env.as_mut();
let goodmoves_ratio = ((envmut.goodmoves_count as f32 / episode_duration as f32)
* 100.0)
.round() as u32;
println!(
"{{\"episode\": {episode}, \"reward\": {episode_reward:.4}, \"steps count\": {episode_duration}, \"epsilon\": {eps_threshold:.3}, \"goodmoves\": {}, \"ratio\": {}%, \"rollpoints\":{}, \"duration\": {}}}",
envmut.goodmoves_count,
goodmoves_ratio,
envmut.pointrolls_count,
now.elapsed().unwrap().as_secs(),
);
env.reset();
episode_done = true;
now = SystemTime::now();
} else {
state = *snapshot.state();
}
}
}
let valid_agent = agent.valid();
if let Some(path) = &conf.save_path {
save_model(valid_agent.model().as_ref().unwrap(), path);
}
valid_agent
}
pub fn save_model(model: &Net<NdArray<ElemType>>, path: &String) {
let recorder = CompactRecorder::new();
let model_path = format!("{path}.mpk");
println!("info: Modèle de validation sauvegardé : {model_path}");
recorder
.record(model.clone().into_record(), model_path.into())
.unwrap();
}
pub fn load_model(dense_size: usize, path: &String) -> Option<Net<NdArray<ElemType>>> {
let model_path = format!("{path}.mpk");
// println!("Chargement du modèle depuis : {model_path}");
CompactRecorder::new()
.load(model_path.into(), &NdArrayDevice::default())
.map(|record| {
Net::new(
<TrictracEnvironment as Environment>::StateType::size(),
dense_size,
<TrictracEnvironment as Environment>::ActionType::size(),
)
.load_record(record)
})
.ok()
}