Files
wifi-densepose/vendor/ruvector/npm/packages/agentic-synth/examples/dspy-complete-example.d.ts

118 lines
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TypeScript

/**
* COMPREHENSIVE DSPy.ts + AgenticSynth Integration Example
*
* E-commerce Product Data Generation with DSPy Optimization
*
* This example demonstrates:
* 1. ✅ Real DSPy.ts (v2.1.1) module usage - ChainOfThought, Predict, Refine
* 2. ✅ Integration with AgenticSynth for baseline data generation
* 3. ✅ BootstrapFewShot optimizer for learning from high-quality examples
* 4. ✅ Quality metrics and comparison (baseline vs optimized)
* 5. ✅ Production-ready error handling and progress tracking
* 6. ✅ Multiple LM provider support (OpenAI, Anthropic)
*
* Usage:
* ```bash
* export OPENAI_API_KEY=sk-...
* export GEMINI_API_KEY=...
* npx tsx examples/dspy-complete-example.ts
* ```
*
* @author rUv
* @license MIT
*/
import 'dotenv/config';
interface Product {
id?: string;
name: string;
category: string;
description: string;
price: number;
rating: number;
features?: string[];
tags?: string[];
}
interface QualityMetrics {
completeness: number;
coherence: number;
persuasiveness: number;
seoQuality: number;
overall: number;
}
interface ComparisonResults {
baseline: {
products: Product[];
avgQuality: number;
metrics: QualityMetrics;
generationTime: number;
cost: number;
};
optimized: {
products: Product[];
avgQuality: number;
metrics: QualityMetrics;
generationTime: number;
cost: number;
};
improvement: {
qualityGain: number;
speedChange: number;
costEfficiency: number;
};
}
/**
* Calculate quality metrics for a product description
*/
declare function calculateQualityMetrics(product: Product): QualityMetrics;
/**
* Calculate average quality across multiple products
*/
declare function calculateAverageQuality(products: Product[]): {
avgQuality: number;
metrics: QualityMetrics;
};
/**
* Generate baseline product data using AgenticSynth (Gemini)
*/
declare function generateBaseline(count: number): Promise<{
products: Product[];
time: number;
cost: number;
}>;
/**
* Create high-quality training examples for DSPy
*/
declare function createTrainingExamples(): Array<{
category: string;
priceRange: string;
product: Product;
}>;
/**
* Setup DSPy with OpenAI and create optimized module
*/
declare function setupDSPyOptimization(): Promise<{
optimizedModule: any;
setupTime: number;
}>;
/**
* Generate products using optimized DSPy module
*/
declare function generateWithDSPy(optimizedModule: any, count: number): Promise<{
products: Product[];
time: number;
cost: number;
}>;
/**
* Compare baseline vs optimized results
*/
declare function compareResults(baselineData: {
products: Product[];
time: number;
cost: number;
}, optimizedData: {
products: Product[];
time: number;
cost: number;
}): ComparisonResults;
export { generateBaseline, setupDSPyOptimization, generateWithDSPy, compareResults, calculateQualityMetrics, calculateAverageQuality, createTrainingExamples };
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