Compare commits
3 Commits
| Author | SHA1 | Date | |
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76d1ef610d | ||
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4092e24c2a | ||
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17dc9f3bbf |
@@ -19,14 +19,13 @@ jobs:
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{ os: "ubuntu", target: "i686-unknown-linux-gnu" },
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{ os: "ubuntu", target: "wasm32-unknown-unknown" },
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{ os: "macos", target: "aarch64-apple-darwin" },
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{ os: "ubuntu", target: "wasm32-wasi" },
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]
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env:
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TZ: "/usr/share/zoneinfo/your/location"
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steps:
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- uses: actions/checkout@v3
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- uses: actions/checkout@v4
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- name: Cache .cargo and target
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uses: actions/cache@v2
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uses: actions/cache@v4
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with:
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path: |
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~/.cargo
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@@ -36,16 +35,13 @@ jobs:
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- name: Install Rust toolchain
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uses: actions-rs/toolchain@v1
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with:
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toolchain: 1.81 # 1.82 seems to break wasm32 tests https://github.com/rustwasm/wasm-bindgen/issues/4274
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toolchain: stable
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target: ${{ matrix.platform.target }}
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profile: minimal
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default: true
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- name: Install test runner for wasm
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if: matrix.platform.target == 'wasm32-unknown-unknown'
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run: curl https://rustwasm.github.io/wasm-pack/installer/init.sh -sSf | sh
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- name: Install test runner for wasi
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if: matrix.platform.target == 'wasm32-wasi'
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run: curl https://wasmtime.dev/install.sh -sSf | bash
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- name: Stable Build with all features
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uses: actions-rs/cargo@v1
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with:
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@@ -65,13 +61,7 @@ jobs:
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- name: Tests in WASM
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if: matrix.platform.target == 'wasm32-unknown-unknown'
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run: wasm-pack test --node -- --all-features
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- name: Tests in WASI
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if: matrix.platform.target == 'wasm32-wasi'
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run: |
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export WASMTIME_HOME="$HOME/.wasmtime"
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export PATH="$WASMTIME_HOME/bin:$PATH"
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cargo install cargo-wasi && cargo wasi test
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check_features:
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runs-on: "${{ matrix.platform.os }}-latest"
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strategy:
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@@ -81,9 +71,9 @@ jobs:
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env:
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TZ: "/usr/share/zoneinfo/your/location"
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steps:
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- uses: actions/checkout@v3
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- uses: actions/checkout@v4
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- name: Cache .cargo and target
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uses: actions/cache@v2
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uses: actions/cache@v4
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with:
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path: |
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~/.cargo
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@@ -12,9 +12,9 @@ jobs:
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env:
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TZ: "/usr/share/zoneinfo/your/location"
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steps:
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- uses: actions/checkout@v2
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- uses: actions/checkout@v4
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- name: Cache .cargo
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uses: actions/cache@v2
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uses: actions/cache@v4
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with:
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path: |
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~/.cargo
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@@ -14,7 +14,7 @@ jobs:
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steps:
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- uses: actions/checkout@v2
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- name: Cache .cargo and target
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uses: actions/cache@v2
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uses: actions/cache@v4
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with:
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path: |
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~/.cargo
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+1
-1
@@ -2,7 +2,7 @@
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name = "smartcore"
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description = "Machine Learning in Rust."
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homepage = "https://smartcorelib.org"
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version = "0.4.0"
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version = "0.4.1"
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authors = ["smartcore Developers"]
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edition = "2021"
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license = "Apache-2.0"
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@@ -18,4 +18,4 @@
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-----
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[](https://github.com/smartcorelib/smartcore/actions/workflows/ci.yml)
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To start getting familiar with the new smartcore v0.3 API, there is now available a [**Jupyter Notebook environment repository**](https://github.com/smartcorelib/smartcore-jupyter). Please see instructions there, contributions welcome see [CONTRIBUTING](.github/CONTRIBUTING.md).
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To start getting familiar with the new smartcore v0.4 API, there is now available a [**Jupyter Notebook environment repository**](https://github.com/smartcorelib/smartcore-jupyter). Please see instructions there, contributions welcome see [CONTRIBUTING](.github/CONTRIBUTING.md).
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@@ -173,6 +173,21 @@ impl<'a, T: RealNumber + FloatNumber, M: Array2<T>> FastPair<'a, T, M> {
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}
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}
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///
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/// Return order dissimilarities from closest to furthest
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///
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#[allow(dead_code)]
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pub fn ordered_pairs(&self) -> std::vec::IntoIter<&PairwiseDistance<T>> {
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// improvement: implement this to return `impl Iterator<Item = &PairwiseDistance<T>>`
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// need to implement trait `Iterator` for `Vec<&PairwiseDistance<T>>`
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let mut distances = self
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.distances
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.values()
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.collect::<Vec<&PairwiseDistance<T>>>();
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distances.sort_by(|a, b| a.partial_cmp(b).unwrap());
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distances.into_iter()
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}
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//
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// Compute distances from input to all other points in data-structure.
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// input is the row index of the sample matrix
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@@ -588,4 +603,103 @@ mod tests_fastpair {
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assert_eq!(closest, min_dissimilarity);
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}
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#[test]
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fn fastpair_ordered_pairs() {
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let x = DenseMatrix::<f64>::from_2d_array(&[
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&[5.1, 3.5, 1.4, 0.2],
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&[4.9, 3.0, 1.4, 0.2],
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&[4.7, 3.2, 1.3, 0.2],
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&[4.6, 3.1, 1.5, 0.2],
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&[5.0, 3.6, 1.4, 0.2],
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&[5.4, 3.9, 1.7, 0.4],
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&[4.9, 3.1, 1.5, 0.1],
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&[7.0, 3.2, 4.7, 1.4],
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&[6.4, 3.2, 4.5, 1.5],
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&[6.9, 3.1, 4.9, 1.5],
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&[5.5, 2.3, 4.0, 1.3],
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&[6.5, 2.8, 4.6, 1.5],
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&[4.6, 3.4, 1.4, 0.3],
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&[5.0, 3.4, 1.5, 0.2],
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&[4.4, 2.9, 1.4, 0.2],
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])
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.unwrap();
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let fastpair = FastPair::new(&x).unwrap();
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let ordered = fastpair.ordered_pairs();
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let mut previous: f64 = -1.0;
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for p in ordered {
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if previous == -1.0 {
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previous = p.distance.unwrap();
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} else {
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let current = p.distance.unwrap();
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assert!(current >= previous);
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previous = current;
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}
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}
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}
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#[test]
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fn test_empty_set() {
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let empty_matrix = DenseMatrix::<f64>::zeros(0, 0);
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let result = FastPair::new(&empty_matrix);
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assert!(result.is_err());
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if let Err(e) = result {
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assert_eq!(
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e,
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Failed::because(FailedError::FindFailed, "min number of rows should be 3")
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);
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}
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}
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#[test]
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fn test_single_point() {
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let single_point = DenseMatrix::from_2d_array(&[&[1.0, 2.0, 3.0]]).unwrap();
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let result = FastPair::new(&single_point);
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assert!(result.is_err());
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if let Err(e) = result {
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assert_eq!(
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e,
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Failed::because(FailedError::FindFailed, "min number of rows should be 3")
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);
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}
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}
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#[test]
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fn test_two_points() {
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let two_points = DenseMatrix::from_2d_array(&[&[1.0, 2.0], &[3.0, 4.0]]).unwrap();
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let result = FastPair::new(&two_points);
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assert!(result.is_err());
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if let Err(e) = result {
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assert_eq!(
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e,
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Failed::because(FailedError::FindFailed, "min number of rows should be 3")
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);
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}
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}
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#[test]
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fn test_three_identical_points() {
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let identical_points =
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DenseMatrix::from_2d_array(&[&[1.0, 1.0], &[1.0, 1.0], &[1.0, 1.0]]).unwrap();
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let result = FastPair::new(&identical_points);
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assert!(result.is_ok());
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let fastpair = result.unwrap();
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let closest_pair = fastpair.closest_pair();
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assert_eq!(closest_pair.distance, Some(0.0));
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}
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#[test]
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fn test_result_unwrapping() {
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let valid_matrix =
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DenseMatrix::from_2d_array(&[&[1.0, 2.0], &[3.0, 4.0], &[5.0, 6.0], &[7.0, 8.0]])
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.unwrap();
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let result = FastPair::new(&valid_matrix);
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assert!(result.is_ok());
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// This should not panic
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let _fastpair = result.unwrap();
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}
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}
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@@ -663,6 +663,7 @@ mod tests {
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#[test]
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fn test_instantiate_err_view3() {
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let x = DenseMatrix::from_2d_array(&[&[1., 2., 3.], &[4., 5., 6.], &[7., 8., 9.]]).unwrap();
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#[allow(clippy::reversed_empty_ranges)]
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let v = DenseMatrixView::new(&x, 0..3, 4..3);
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assert!(v.is_err());
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}
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@@ -257,8 +257,7 @@ impl<TY: Number + Ord + Unsigned> BernoulliNBDistribution<TY> {
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/// Fits the distribution to a NxM matrix where N is number of samples and M is number of features.
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/// * `x` - training data.
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/// * `y` - vector with target values (classes) of length N.
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/// * `priors` - Optional vector with prior probabilities of the classes. If not defined,
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/// priors are adjusted according to the data.
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/// * `priors` - Optional vector with prior probabilities of the classes. If not defined, priors are adjusted according to the data.
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/// * `alpha` - Additive (Laplace/Lidstone) smoothing parameter.
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/// * `binarize` - Threshold for binarizing.
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fn fit<TX: Number + PartialOrd, X: Array2<TX>, Y: Array1<TY>>(
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@@ -174,8 +174,7 @@ impl<TY: Number + Ord + Unsigned> GaussianNBDistribution<TY> {
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/// Fits the distribution to a NxM matrix where N is number of samples and M is number of features.
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/// * `x` - training data.
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/// * `y` - vector with target values (classes) of length N.
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/// * `priors` - Optional vector with prior probabilities of the classes. If not defined,
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/// priors are adjusted according to the data.
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/// * `priors` - Optional vector with prior probabilities of the classes. If not defined, priors are adjusted according to the data.
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pub fn fit<TX: Number + RealNumber, X: Array2<TX>, Y: Array1<TY>>(
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x: &X,
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y: &Y,
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@@ -207,8 +207,7 @@ impl<TY: Number + Ord + Unsigned> MultinomialNBDistribution<TY> {
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/// Fits the distribution to a NxM matrix where N is number of samples and M is number of features.
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/// * `x` - training data.
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/// * `y` - vector with target values (classes) of length N.
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/// * `priors` - Optional vector with prior probabilities of the classes. If not defined,
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/// priors are adjusted according to the data.
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/// * `priors` - Optional vector with prior probabilities of the classes. If not defined, priors are adjusted according to the data.
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/// * `alpha` - Additive (Laplace/Lidstone) smoothing parameter.
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pub fn fit<TX: Number + Unsigned, X: Array2<TX>, Y: Array1<TY>>(
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x: &X,
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@@ -24,7 +24,7 @@
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//! // &[1.5, 1.0, 0.0, 1.5, 0.0, 0.0, 1.0, 0.0]
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//! // &[1.5, 0.0, 1.0, 1.5, 0.0, 0.0, 0.0, 1.0]
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//! ```
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use std::iter;
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use std::iter::repeat_n;
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use crate::error::Failed;
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use crate::linalg::basic::arrays::Array2;
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@@ -75,11 +75,7 @@ fn find_new_idxs(num_params: usize, cat_sizes: &[usize], cat_idxs: &[usize]) ->
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let offset = (0..1).chain(offset_);
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let new_param_idxs: Vec<usize> = (0..num_params)
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.zip(
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repeats
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.zip(offset)
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.flat_map(|(r, o)| iter::repeat(o).take(r)),
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)
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.zip(repeats.zip(offset).flat_map(|(r, o)| repeat_n(o, r)))
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.map(|(idx, ofst)| idx + ofst)
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.collect();
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new_param_idxs
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@@ -124,7 +120,7 @@ impl OneHotEncoder {
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let (nrows, _) = data.shape();
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// col buffer to avoid allocations
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let mut col_buf: Vec<T> = iter::repeat(T::zero()).take(nrows).collect();
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let mut col_buf: Vec<T> = repeat_n(T::zero(), nrows).collect();
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let mut res: Vec<CategoryMapper<CategoricalFloat>> = Vec::with_capacity(idxs.len());
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Reference in New Issue
Block a user