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v2: add embedding tests, multilingual embedding support
2026-07-06 08:01:52 +08:00

81 lines
3.3 KiB
Swift

import XCTest
@testable import MarkBase
final class EmbeddingTest: XCTestCase {
var engine: MarkBaseEngine!
var model: E4BModel!
var embeddingModel: TextEmbeddingModel!
let modelDir = "/Users/accusys/MarkBaseEngine/models/E4B-MarkBase"
override func setUp() {
super.setUp()
guard FileManager.default.fileExists(atPath: modelDir + "/model.safetensors") else {
return
}
engine = try? MarkBaseEngine(autoCompile: true)
model = try? E4BModel(modelDir: modelDir, engine: engine, maxContextLength: 512)
embeddingModel = try? TextEmbeddingModel(modelDir: modelDir, engine: engine, config: TextEmbeddingConfig())
}
func testEmbeddingDimension() throws {
try XCTSkipIf(embeddingModel == nil, "Model not found")
let embedding = try embeddingModel.embed(text: "Hello world")
XCTAssertEqual(embedding.count, 2560, "Embedding dimension should be 2560")
}
func testEmbeddingNormalized() throws {
try XCTSkipIf(embeddingModel == nil, "Model not found")
let embedding = try embeddingModel.embed(text: "Test text")
let norm = sqrt(embedding.reduce(0) { $0 + $1 * $1 })
XCTAssertEqual(norm, 1.0, accuracy: 0.001, "Embedding should be L2 normalized")
}
func testSimilarSentences() throws {
try XCTSkipIf(embeddingModel == nil, "Model not found")
let e1 = try embeddingModel.embed(text: "The cat is sitting on the mat")
let e2 = try embeddingModel.embed(text: "A cat rests on a rug")
let e3 = try embeddingModel.embed(text: "The stock market crashed today")
let sim12 = cosineSimilarity(e1, e2)
let sim13 = cosineSimilarity(e1, e3)
print("Similar(cat, cat): \(sim12)")
print("Similar(cat, stock): \(sim13)")
XCTAssertGreaterThan(sim12, sim13, "Similar sentences should have higher cosine similarity")
}
func testDifferentLengths() throws {
try XCTSkipIf(embeddingModel == nil, "Model not found")
let e1 = try embeddingModel.embed(text: "Hi")
let e2 = try embeddingModel.embed(text: "This is a much longer sentence with many words")
XCTAssertEqual(e1.count, e2.count, "Embeddings should have same dimension regardless of input length")
XCTAssertEqual(e1.count, 2560)
}
func testEmptyInput() throws {
try XCTSkipIf(embeddingModel == nil, "Model not found")
let embedding = try embeddingModel.embed(text: "")
XCTAssertEqual(embedding.count, 0, "Empty input should return empty embedding")
}
func testBatchEmbedding() throws {
try XCTSkipIf(embeddingModel == nil, "Model not found")
let texts = ["Hello", "World", "Test"]
let embeddings = try embeddingModel.embedBatch(texts: texts)
XCTAssertEqual(embeddings.count, 3)
for embedding in embeddings {
XCTAssertEqual(embedding.count, 2560)
}
}
private func cosineSimilarity(_ a: [Float], _ b: [Float]) -> Float {
guard a.count == b.count, !a.isEmpty else { return 0 }
var dot: Float = 0, normA: Float = 0, normB: Float = 0
for i in 0..<a.count {
dot += a[i] * b[i]
normA += a[i] * a[i]
normB += b[i] * b[i]
}
return dot / (sqrt(normA) * sqrt(normB))
}
}