Files
wifi-densepose/vendor/ruvector/npm/packages/sona/examples/basic-usage.js

71 lines
2.2 KiB
JavaScript

/**
* Basic SONA Usage Example
* Demonstrates core functionality of the SONA engine
*/
const { SonaEngine } = require('../index.js');
function main() {
console.log('🧠 SONA - Self-Optimizing Neural Architecture\n');
// Create engine with hidden dimension
console.log('Creating SONA engine with hidden_dim=256...');
const engine = new SonaEngine(256);
console.log('✓ Engine created\n');
// Simulate some inference trajectories
console.log('Recording inference trajectories...');
for (let i = 0; i < 10; i++) {
// Create query embedding
const queryEmbedding = Array(256).fill(0).map(() => Math.random());
// Start trajectory
const builder = engine.beginTrajectory(queryEmbedding);
// Simulate inference steps
for (let step = 0; step < 3; step++) {
const activations = Array(256).fill(0).map(() => Math.random());
const attentionWeights = Array(64).fill(0).map(() => Math.random());
const reward = 0.7 + Math.random() * 0.3; // Random reward between 0.7-1.0
builder.addStep(activations, attentionWeights, reward);
}
// Set route and context
builder.setRoute(`model_${i % 3}`);
builder.addContext(`context_${i}`);
// Complete trajectory
const quality = 0.75 + Math.random() * 0.25; // Quality between 0.75-1.0
engine.endTrajectory(builder, quality);
}
console.log('✓ Recorded 10 trajectories\n');
// Apply micro-LoRA transformation
console.log('Applying micro-LoRA transformation...');
const input = Array(256).fill(1.0);
const output = engine.applyMicroLora(input);
console.log(`✓ Transformed ${input.length} -> ${output.length} dimensions\n`);
// Find similar patterns
console.log('Finding similar patterns...');
const queryEmbedding = Array(256).fill(0).map(() => Math.random());
const patterns = engine.findPatterns(queryEmbedding, 5);
console.log(`✓ Found ${patterns.length} patterns\n`);
// Get statistics
console.log('Engine statistics:');
const stats = engine.getStats();
console.log(stats);
console.log();
// Force learning cycle
console.log('Running background learning cycle...');
const result = engine.forceLearn();
console.log(`${result}\n`);
console.log('✓ Example completed successfully!');
}
main();