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9
Cargo.lock
generated
9
Cargo.lock
generated
@@ -5451,6 +5451,7 @@ name = "strafe-ai"
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version = "0.1.0"
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dependencies = [
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"burn",
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"glam",
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"pollster",
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"strafesnet_common",
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"strafesnet_graphics",
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@@ -5478,9 +5479,9 @@ dependencies = [
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[[package]]
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name = "strafesnet_graphics"
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version = "0.0.11-depth"
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version = "0.0.11-depth2"
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source = "sparse+https://git.itzana.me/api/packages/strafesnet/cargo/"
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checksum = "16266ca7e57ce802b7abd24c6cd8f9b8d95752f7eaead27e42b431b9768d6135"
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checksum = "829804ab9c167365e576de8ebd8a245ad979cb24558b086e693e840697d7956c"
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dependencies = [
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"bytemuck",
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"ddsfile",
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@@ -5515,9 +5516,9 @@ dependencies = [
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[[package]]
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name = "strafesnet_roblox_bot_player"
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version = "0.6.2-depth"
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version = "0.6.2-depth2"
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source = "sparse+https://git.itzana.me/api/packages/strafesnet/cargo/"
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checksum = "12d1aa21c174f23f7f7ede583292a8c82e4b3c483fb0d950e58f84d52807f6ed"
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checksum = "f39e7dfc0cb23e482089dc7eac235ad4b274ccfdb8df7617889a90e64a1e247a"
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dependencies = [
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"glam",
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"strafesnet_common",
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@@ -8,9 +8,10 @@ burn = { version = "0.20.1", features = ["cuda", "autodiff"] }
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wgpu = "29.0.0"
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strafesnet_common = { version = "0.9.0", registry = "strafesnet" }
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strafesnet_graphics = { version = "=0.0.11-depth", registry = "strafesnet" }
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strafesnet_graphics = { version = "=0.0.11-depth2", registry = "strafesnet" }
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strafesnet_physics = { version = "=0.0.2-surf", registry = "strafesnet" }
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strafesnet_roblox_bot_file = { version = "0.9.4", registry = "strafesnet" }
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strafesnet_roblox_bot_player = { version = "=0.6.2-depth", registry = "strafesnet" }
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strafesnet_roblox_bot_player = { version = "=0.6.2-depth2", registry = "strafesnet" }
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strafesnet_snf = { version = "0.4.0", registry = "strafesnet" }
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pollster = "0.4.0"
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glam = "0.32.1"
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61
src/main.rs
61
src/main.rs
@@ -1,7 +1,7 @@
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use burn::backend::Autodiff;
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use burn::nn::loss::{MseLoss, Reduction};
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use burn::nn::{Linear, LinearConfig, Relu};
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use burn::optim::{GradientsParams, Optimizer, SgdConfig};
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use burn::optim::{AdamConfig, GradientsParams, Optimizer};
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use burn::prelude::*;
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type InferenceBackend = burn::backend::Cuda<f32>;
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@@ -14,15 +14,7 @@ use strafesnet_roblox_bot_file::v0;
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const SIZE_X: usize = 64;
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const SIZE_Y: usize = 36;
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const INPUT: usize = SIZE_X * SIZE_Y;
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const HIDDEN: [usize; 7] = [
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INPUT >> 1,
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INPUT >> 2,
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INPUT >> 3,
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INPUT >> 4,
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INPUT >> 5,
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INPUT >> 6,
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INPUT >> 7,
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];
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const HIDDEN: [usize; 2] = [INPUT >> 3, INPUT >> 7];
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// MoveForward
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// MoveLeft
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// MoveBack
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@@ -89,6 +81,9 @@ fn training() {
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.unwrap();
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let timelines =
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strafesnet_roblox_bot_file::v0::read_all_to_block(std::io::Cursor::new(bot_file)).unwrap();
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let bot = strafesnet_roblox_bot_player::bot::CompleteBot::new(timelines).unwrap();
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let world_offset = bot.world_offset();
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let timelines = bot.timelines();
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// setup graphics
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let desc = wgpu::InstanceDescriptor::new_without_display_handle_from_env();
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@@ -151,7 +146,7 @@ fn training() {
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// training data
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let training_samples = timelines.input_events.len() - 1;
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let input_size = (size.x * size.y) as usize * size_of::<f32>();
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let input_size = INPUT * size_of::<f32>();
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let mut inputs = Vec::with_capacity(input_size * training_samples);
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let mut targets = Vec::with_capacity(OUTPUT * training_samples);
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@@ -229,24 +224,22 @@ fn training() {
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.unwrap(),
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};
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fn p(v: v0::Vector3) -> [f32; 3] {
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[v.x, v.y, v.z]
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fn vec3(v: v0::Vector3) -> glam::Vec3 {
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glam::vec3(v.x, v.y, v.z)
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}
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fn a(a: v0::Vector3) -> [f32; 2] {
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[a.y, a.x]
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fn angles(a: v0::Vector3) -> glam::Vec2 {
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glam::vec2(a.y, a.x)
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}
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let pos = vec3(output_event.event.position) - world_offset;
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let angles = angles(output_event.event.angles);
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let mut encoder = device.create_command_encoder(&wgpu::CommandEncoderDescriptor {
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label: Some("wgpu encoder"),
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});
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// render!
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graphics.encode_commands(
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&mut encoder,
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&graphics_texture_view,
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p(output_event.event.position).into(),
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a(output_event.event.angles).into(),
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);
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graphics.encode_commands(&mut encoder, &graphics_texture_view, pos, angles);
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// copy the depth texture into ram
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encoder.copy_texture_to_buffer(
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@@ -301,18 +294,30 @@ fn training() {
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texture_data.clear();
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}
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// normalize inputs
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let global_min = *inputs
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.iter()
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.min_by(|a, b| a.partial_cmp(b).unwrap())
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.unwrap();
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let global_max = *inputs
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.iter()
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.max_by(|a, b| a.partial_cmp(b).unwrap())
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.unwrap();
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let global_range = global_max - global_min;
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println!("Normalizing to range {global_min} - {global_max}");
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inputs.iter_mut().for_each(|value| {
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*value = 1.0 - (*value - global_min) / global_range;
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});
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let device = burn::backend::cuda::CudaDevice::new(gpu_id);
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let mut model: Net<TrainingBackend> = Net::init(&device);
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println!("Training model ({} parameters)", model.num_params());
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let mut optim = SgdConfig::new().init();
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let mut optim = AdamConfig::new().init();
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let inputs = Tensor::from_data(
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TensorData::new(
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inputs,
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Shape::new([training_samples, (size.x * size.y) as usize]),
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),
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TensorData::new(inputs, Shape::new([training_samples, INPUT])),
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&device,
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);
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let targets = Tensor::from_data(
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@@ -320,8 +325,8 @@ fn training() {
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&device,
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);
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const LEARNING_RATE: f64 = 0.5;
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const EPOCHS: usize = 10000;
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const LEARNING_RATE: f64 = 0.001;
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const EPOCHS: usize = 100000;
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for epoch in 0..EPOCHS {
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let predictions = model.forward(inputs.clone());
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