Use wgpu by default and ndarray for convert
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@@ -6,7 +6,7 @@ edition = "2021"
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# See more keys and their definitions at https://doc.rust-lang.org/cargo/reference/manifest.html
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[features]
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default = ["torch-backend"]
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default = ["wgpu-backend"]
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torch-backend = ["burn-tch"]
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wgpu-backend = ["burn-wgpu"]
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@@ -22,6 +22,7 @@ optional = true
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[dependencies]
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burn = { git = "https://github.com/burn-rs/burn.git" }
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burn-ndarray = { package = "burn-ndarray", git = "https://github.com/burn-rs/burn.git" }
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serde = {version = "1.0.171", features = ["std", "derive"]}
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npy = "0.4.0"
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num-traits = "0.2.15"
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13
README.md
13
README.md
@@ -20,18 +20,19 @@ Start by downloading the SDv1-4.bin model provided on HuggingFace.
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wget https://huggingface.co/Gadersd/Stable-Diffusion-Burn/resolve/main/V1/SDv1-4.bin
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```
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Next, set the appropriate CUDA version. It may be possible to run the model using wgpu without the need for torch in the future using `cargo run --features wgpu-backend...` but currently wgpu doesn't support buffer sizes large enough for Stable Diffusion.
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```bash
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export TORCH_CUDA_VERSION=cu113
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```
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### Step 2: Run the Sample Binary
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Invoke the sample binary provided in the rust code, as shown below:
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Invoke the sample binary provided in the rust code. By default, wgpu is used which requires a gpu with at least 10 GB of VRAM (will be lower in the future), but torch can be used with the `torch-backend` feature and can run on a 6 GB gpu.
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```bash
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# wgpu (NEEDS >= 10 GB VRAM)
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# Arguments: <model_type(burn or dump)> <model> <unconditional_guidance_scale> <n_diffusion_steps> <prompt> <output_image>
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cargo run --release --bin sample burn SDv1-4 7.5 20 "An ancient mossy stone." img
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# torch (at least 6 GB VRAM, possibly less)
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export TORCH_CUDA_VERSION=cu113
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# Arguments: <model_type(burn or dump)> <model> <unconditional_guidance_scale> <n_diffusion_steps> <prompt> <output_image>
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cargo run --release --features torch-backend --bin sample burn SDv1-4 7.5 20 "An ancient mossy stone." img
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```
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This command will generate an image according to the provided prompt, which will be saved as 'img0.png'.
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@@ -14,13 +14,7 @@ use burn::{
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},
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};
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cfg_if::cfg_if! {
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if #[cfg(feature = "torch-backend")] {
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use burn_tch::{TchBackend, TchDevice};
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} else if #[cfg(feature = "wgpu-backend")] {
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use burn_wgpu::{WgpuBackend, WgpuDevice, AutoGraphicsApi};
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}
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}
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use burn_ndarray::{NdArrayBackend, NdArrayDevice};
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use burn::record::{self, Recorder, BinFileRecorder, FullPrecisionSettings};
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@@ -43,15 +37,8 @@ fn save_model_file<B: Backend>(model: StableDiffusion<B>, name: &str) -> Result<
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}
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fn main() {
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cfg_if::cfg_if! {
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if #[cfg(feature = "torch-backend")] {
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type Backend = TchBackend<f32>;
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let device = TchDevice::Cpu;
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} else if #[cfg(feature = "wgpu-backend")] {
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type Backend = WgpuBackend<AutoGraphicsApi, f32, i32>;
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let device = WgpuDevice::CPU;
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}
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}
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type Backend = NdArrayBackend<f32>;
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let device = NdArrayDevice::Cpu;
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let args: Vec<String> = env::args().collect();
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if args.len() != 3 {
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@@ -78,7 +78,7 @@ fn main() {
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let sd = sd.to_device(&device);
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let unconditional_context = sd.unconditional_context(&tokenizer);
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let context = sd.context(&tokenizer, prompt).unsqueeze().repeat(0, 2); // generate 2 samples
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let context = sd.context(&tokenizer, prompt).unsqueeze::<3>();//.repeat(0, 2); // generate 2 samples
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println!("Sampling image...");
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let images = sd.sample_image(context, unconditional_context, unconditional_guidance_scale, n_steps);
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@@ -59,6 +59,11 @@ impl<B: Backend> StableDiffusion<B> {
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let [n_batch, _, _] = context.dims();
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let latent = self.sample_latent(context, unconditional_context, unconditional_guidance_scale, n_steps);
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self.latent_to_image(latent)
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}
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pub fn latent_to_image(&self, latent: Tensor<B, 4>) -> Vec<Vec<u8>> {
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let [n_batch, _, _, _] = latent.dims();
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let image = self.autoencoder.decode_latent(latent * (1.0 / 0.18215));
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let n_channel = 3;
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@@ -157,7 +162,7 @@ impl<B: Backend> StableDiffusion<B> {
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}
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pub fn context(&self, tokenizer: &SimpleTokenizer, text: &str) -> Tensor<B, 3> {
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let device = &self.devices()[0];
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let device = &self.clip.devices()[0];
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let text = format!("<|startoftext|>{}<|endoftext|>", text);
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let tokenized: Vec<_> = tokenizer.encode(&text).into_iter().map(|v| v as i32).collect();
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