# Poindexter [![Go Reference](https://pkg.go.dev/badge/github.com/Snider/Poindexter.svg)](https://pkg.go.dev/github.com/Snider/Poindexter) [![CI](https://github.com/Snider/Poindexter/actions/workflows/ci.yml/badge.svg)](https://github.com/Snider/Poindexter/actions) [![Go Report Card](https://goreportcard.com/badge/github.com/Snider/Poindexter)](https://goreportcard.com/report/github.com/Snider/Poindexter) [![Vulncheck](https://img.shields.io/badge/govulncheck-enabled-brightgreen.svg)](https://pkg.go.dev/golang.org/x/vuln/cmd/govulncheck) [![codecov](https://codecov.io/gh/Snider/Poindexter/branch/main/graph/badge.svg)](https://codecov.io/gh/Snider/Poindexter) [![Release](https://img.shields.io/github/v/release/Snider/Poindexter?display_name=tag)](https://github.com/Snider/Poindexter/releases) A Go library package providing utility functions including sorting algorithms with custom comparators. ## Features - šŸ”¢ **Sorting Utilities**: Sort integers, strings, and floats in ascending or descending order - šŸŽÆ **Custom Sorting**: Sort any type with custom comparison functions or key extractors - šŸ” **Binary Search**: Fast search on sorted data - 🧭 **KDTree (NN Search)**: Build a KDTree over points with generic payloads; nearest, k-NN, and radius queries with Euclidean, Manhattan, Chebyshev, and Cosine metrics - šŸ“¦ **Generic Functions**: Type-safe operations using Go generics - āœ… **Well-Tested**: Comprehensive test coverage - šŸ“– **Documentation**: Full documentation available at GitHub Pages ## Installation ```bash go get github.com/Snider/Poindexter ``` ## Quick Start ```go package main import ( "fmt" poindexter "github.com/Snider/Poindexter" ) func main() { // Basic sorting numbers := []int{3, 1, 4, 1, 5, 9} poindexter.SortInts(numbers) fmt.Println(numbers) // [1 1 3 4 5 9] // Custom sorting with key function type Product struct { Name string Price float64 } products := []Product{{"Apple", 1.50}, {"Banana", 0.75}, {"Cherry", 3.00}} poindexter.SortByKey(products, func(p Product) float64 { return p.Price }) // KDTree quick demo pts := []poindexter.KDPoint[string]{ {ID: "A", Coords: []float64{0, 0}, Value: "alpha"}, {ID: "B", Coords: []float64{1, 0}, Value: "bravo"}, {ID: "C", Coords: []float64{0, 1}, Value: "charlie"}, } tree, _ := poindexter.NewKDTree(pts, poindexter.WithMetric(poindexter.EuclideanDistance{})) nearest, dist, _ := tree.Nearest([]float64{0.9, 0.1}) fmt.Println(nearest.ID, nearest.Value, dist) // B bravo ~0.141... } ``` ## Documentation Full documentation is available at [https://snider.github.io/Poindexter/](https://snider.github.io/Poindexter/) Explore runnable examples in the repository: - examples/dht_ping_1d - examples/kdtree_2d_ping_hop - examples/kdtree_3d_ping_hop_geo - examples/kdtree_4d_ping_hop_geo_score ### KDTree performance and notes - Current KDTree queries are O(n) linear scans, which are great for small-to-medium datasets or low-latency prototyping. For 1e5+ points and low/medium dimensions, consider swapping the internal engine to `gonum.org/v1/gonum/spatial/kdtree` (the API here is compatible by design). - Insert is O(1) amortized; delete by ID is O(1) via swap-delete; order is not preserved. - Concurrency: the KDTree type is not safe for concurrent mutation. Protect with a mutex or share immutable snapshots for read-mostly workloads. - See multi-dimensional examples (ping/hops/geo/score) in docs and `examples/`. - Performance guide: see docs/Performance for benchmark guidance and tips: [docs/perf.md](docs/perf.md) • Hosted: https://snider.github.io/Poindexter/perf/ #### Choosing a metric (quick tips) - Euclidean (L2): smooth trade-offs across axes; solid default for blended preferences. - Manhattan (L1): emphasizes per-axis absolute differences; good when each unit of ping/hop matters equally. - Chebyshev (Lāˆž): dominated by the worst axis; useful for strict thresholds (e.g., reject high hop count regardless of ping). - Cosine: angle-based for vector similarity; pair it with normalized/weighted features when direction matters more than magnitude. See the multi-dimensional KDTree docs for end-to-end examples and weighting/normalization helpers: [Multi-Dimensional KDTree (DHT)](docs/kdtree-multidimensional.md). ## License This project is licensed under the European Union Public Licence v1.2 (EUPL-1.2). See [LICENSE](LICENSE) for details. ## Contributing Contributions are welcome! Please feel free to submit a Pull Request.