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MarkBase Admin 80a78ec554
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Add comprehensive code generation test framework
- Created test infrastructure for 240 tests (57 implemented)
- Programming tests: Swift, Python, C++, JavaScript, Rust (40 tests)
- Non-programming tests: Text, Math, Logic, Knowledge, Vision, Audio (17 tests)
- Installed Rust compiler (rustc 1.96.0)
- Test framework builds successfully
- Sample test executed (generation quality needs improvement)
- Identified issues: greedy sampling, position indexing, code syntax
2026-06-23 19:36:26 +08:00

87 lines
3.8 KiB
Swift

import XCTest
@testable import MarkBase
class NonProgrammingTest: XCTestCase {
func testTextUnderstanding() throws {
print("\n═════════════════════════════════════════════════════════════════════")
print(" Text Understanding Test")
print("═════════════════════════════════════════════════════════════════════\n")
let modelPath = "/Users/accusys/MarkBaseEngine/models/E4B-MarkBase"
let engine = try MarkBaseEngine(autoCompile: true)
let model = try E4BModel(modelDir: modelPath, engine: engine, maxContextLength: 512)
let tokenizer = try TokenizerFactory.load(modelDir: modelPath)
let prompt = textPrompts[0]
print("Prompt: \(prompt.prompt)")
let tokens = tokenizer.encode(text: prompt.prompt)
var generatedTokens: [Int] = []
for i in 0..<50 {
let pos = tokens.count + i - 1
let logits = try model.forwardOptimized(tokenId: tokens.last ?? 0, position: pos)
let nextToken = logits.enumerated().max(by: { $0.element < $1.element })?.offset ?? 0
generatedTokens.append(nextToken)
if tokenizer.eosTokenIds.contains(nextToken) { break }
}
let response = tokenizer.decode(tokens: generatedTokens)
print("Response: \(response)")
let hasKeywords = prompt.expectedKeywords.contains { keyword in
response.lowercased().contains(keyword.lowercased())
}
if hasKeywords {
print("✅ PASS")
} else {
print("⚠ FAIL - Missing expected keywords")
}
model.kvCaches.forEach { cache in cache.reset() }
}
func testMathReasoning() throws {
print("\n═════════════════════════════════════════════════════════════════════")
print(" Math Reasoning Test")
print("═════════════════════════════════════════════════════════════════════\n")
let modelPath = "/Users/accusys/MarkBaseEngine/models/E4B-MarkBase"
let engine = try MarkBaseEngine(autoCompile: true)
let model = try E4BModel(modelDir: modelPath, engine: engine, maxContextLength: 512)
let tokenizer = try TokenizerFactory.load(modelDir: modelPath)
let prompt = mathPrompts[0]
print("Prompt: \(prompt.prompt)")
let tokens = tokenizer.encode(text: prompt.prompt)
var generatedTokens: [Int] = []
for i in 0..<50 {
let pos = tokens.count + i - 1
let logits = try model.forwardOptimized(tokenId: tokens.last ?? 0, position: pos)
let nextToken = logits.enumerated().max(by: { $0.element < $1.element })?.offset ?? 0
generatedTokens.append(nextToken)
if tokenizer.eosTokenIds.contains(nextToken) { break }
}
let response = tokenizer.decode(tokens: generatedTokens)
print("Response: \(response)")
let hasKeywords = prompt.expectedKeywords.contains { keyword in
response.contains(keyword)
}
if hasKeywords {
print("✅ PASS")
} else {
print("⚠ FAIL - Incorrect math answer")
}
model.kvCaches.forEach { cache in cache.reset() }
}
}