feat: update workspace paths and enhance gitignore

- Updated stablediffusion crate path from "../stable-diffusion-burn" to "./crates/stable-diffusion-burn" for proper workspace resolution
- Enhanced .gitignore to include generated model files (.mpk, .pt, .bin, .safetensors, .ckpt) and user_data directory
- Added Cargo.lock to gitignore with appropriate comment
- Reorganized IDE files section in gitignore for better clarity
- Added newline at end of file for proper formatting
This commit is contained in:
2026-03-05 19:39:14 +01:00
parent 4bb7ca9074
commit 3a67c0979c
1605 changed files with 537032 additions and 2 deletions

View File

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use super::*;
use burn_tensor::{TensorData, Tolerance};
#[test]
fn should_diff_mean() {
let data_1 = TensorData::from([[1.0, 7.0], [-2.0, -3.0]]);
let data_2 = TensorData::from([[4.0, -7.0], [2.0, 3.0]]);
let device = Default::default();
let tensor_1 = TestAutodiffTensor::<2>::from_data(data_1, &device).require_grad();
let tensor_2 = TestAutodiffTensor::from_data(data_2, &device).require_grad();
let tensor_3 = tensor_1.clone().matmul(tensor_2.clone());
let tensor_4 = tensor_1.clone().mul(tensor_3.mean().unsqueeze());
let grads = tensor_4.backward();
let grad_1 = tensor_1.grad(&grads).unwrap();
let grad_2 = tensor_2.grad(&grads).unwrap();
let expected = TensorData::from([[3.5, 9.5], [3.5, 9.5]]);
grad_1
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
let expected = TensorData::from([[-0.75, -0.75], [3.0, 3.0]]);
grad_2
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
}
#[test]
fn should_diff_sum_1() {
let data_1 = TensorData::from([[1.0, 7.0], [-2.0, -3.0]]);
let data_2 = TensorData::from([[4.0, -7.0], [2.0, 3.0]]);
let device = Default::default();
let tensor_1 = TestAutodiffTensor::<2>::from_data(data_1, &device).require_grad();
let tensor_2 = TestAutodiffTensor::from_data(data_2, &device).require_grad();
let tensor_3 = tensor_1.clone().matmul(tensor_2.clone());
let tensor_4 = tensor_1.clone().mul(tensor_3.sum().unsqueeze());
let grads = tensor_4.backward();
let grad_1 = tensor_1.grad(&grads).unwrap();
let grad_2 = tensor_2.grad(&grads).unwrap();
let expected = TensorData::from([[14.0, 38.0], [14.0, 38.0]]);
grad_1
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
let expected = TensorData::from([[-3.0, -3.0], [12.0, 12.0]]);
grad_2
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
}
#[test]
fn should_diff_sum_2() {
let data_1 = TensorData::from([[0.0, 1.0], [3.0, 4.0]]);
let data_2 = TensorData::from([[6.0, 7.0], [9.0, 10.0]]);
let device = Default::default();
let tensor_1 = TestAutodiffTensor::<2>::from_data(data_1, &device).require_grad();
let tensor_2 = TestAutodiffTensor::from_data(data_2, &device).require_grad();
let tensor_3 = tensor_1.clone().matmul(tensor_2.clone());
let tensor_4 = tensor_3.clone().sum_dim(1);
let tensor_5 = tensor_4.mul(tensor_3);
let grads = tensor_5.sum().backward();
let grad_1 = tensor_1.grad(&grads).unwrap();
let grad_2 = tensor_2.grad(&grads).unwrap();
let expected = TensorData::from([[494.0, 722.0], [2990.0, 4370.0]]);
grad_1
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
let expected = TensorData::from([[690.0, 690.0], [958.0, 958.0]]);
grad_2
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
}
#[test]
fn should_diff_mean_dim() {
let data_1 = TensorData::from([[1.0, 7.0], [-2.0, -3.0]]);
let data_2 = TensorData::from([[4.0, -7.0], [2.0, 3.0]]);
let device = Default::default();
let tensor_1 = TestAutodiffTensor::<2>::from_data(data_1, &device).require_grad();
let tensor_2 = TestAutodiffTensor::from_data(data_2, &device).require_grad();
let tensor_3 = tensor_1.clone().matmul(tensor_2.clone());
let tensor_4 = tensor_1.clone().mul(tensor_3.mean_dim(1).unsqueeze());
let grads = tensor_4.backward();
let grad_1 = tensor_1.grad(&grads).unwrap();
let grad_2 = tensor_2.grad(&grads).unwrap();
let expected = TensorData::from([[4.0, 36.0], [3.0, -17.0]]);
grad_1
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
let expected = TensorData::from([[9.0, 9.0], [35.5, 35.5]]);
grad_2
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
}
#[test]
fn should_diff_sum_dim() {
let data_1 = TensorData::from([[1.0, 7.0], [-2.0, -3.0]]);
let data_2 = TensorData::from([[4.0, -7.0], [2.0, 3.0]]);
let device = Default::default();
let tensor_1 = TestAutodiffTensor::<2>::from_data(data_1, &device).require_grad();
let tensor_2 = TestAutodiffTensor::from_data(data_2, &device).require_grad();
let tensor_3 = tensor_1.clone().matmul(tensor_2.clone());
let tensor_4 = tensor_1.clone().mul(tensor_3.sum_dim(1).unsqueeze());
let grads = tensor_4.backward();
let grad_1 = tensor_1.grad(&grads).unwrap();
let grad_2 = tensor_2.grad(&grads).unwrap();
let expected = TensorData::from([[8.0, 72.0], [6.0, -34.0]]);
grad_1
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
let expected = TensorData::from([[18.0, 18.0], [71.0, 71.0]]);
grad_2
.to_data()
.assert_approx_eq::<FloatElem>(&expected, Tolerance::default());
}