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use serde_json::Value; |
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use std::collections::HashMap; |
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use std::fs; |
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use std::path::Path; |
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pub struct MycelialTrainer { |
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data_path: String, |
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patterns: HashMap<String, u32>, |
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} |
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impl MycelialTrainer { |
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pub fn new(data_path: &str) -> Self { |
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Self { |
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data_path: data_path.to_string(), |
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patterns: HashMap::new(), |
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} |
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} |
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pub fn train(&mut self) -> Result<(), Box<dyn std::error::Error>> { |
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println!("π§ Training mycelial intelligence model..."); |
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self.load_usage_patterns()?; |
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self.extract_features()?; |
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self.train_model()?; |
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println!("β
Model training complete!"); |
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Ok(()) |
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} |
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fn load_usage_patterns(&mut self) -> Result<(), Box<dyn std::error::Error>> { |
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let data_dir = Path::new(&self.data_path).join("test_usage_data"); |
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let mut file_count = 0; |
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for entry in fs::read_dir(data_dir)? { |
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let entry = entry?; |
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if entry.path().extension().map_or(false, |ext| ext == "json") { |
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let content = fs::read_to_string(entry.path())?; |
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if let Ok(json) = serde_json::from_str::<Value>(&content) { |
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self.process_json(&json); |
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file_count += 1; |
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} |
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} |
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} |
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println!("π Loaded {} usage data files", file_count); |
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Ok(()) |
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} |
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fn process_json(&mut self, json: &Value) { |
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if let Some(obj) = json.as_object() { |
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for (key, value) in obj { |
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if key.contains("usage") || key.contains("count") { |
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if let Some(count) = value.as_u64() { |
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*self.patterns.entry(key.clone()).or_insert(0) += count as u32; |
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} |
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} |
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} |
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} |
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} |
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fn extract_features(&self) -> Result<(), Box<dyn std::error::Error>> { |
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let mut top_patterns: Vec<_> = self.patterns.iter().collect(); |
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top_patterns.sort_by(|a, b| b.1.cmp(a.1)); |
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println!("π Top usage patterns:"); |
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for (pattern, count) in top_patterns.iter().take(10) { |
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println!(" {} = {}", pattern, count); |
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} |
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Ok(()) |
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} |
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fn train_model(&self) -> Result<(), Box<dyn std::error::Error>> { |
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let total_patterns = self.patterns.len(); |
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let total_usage = self.patterns.values().sum::<u32>(); |
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println!("π― Model statistics:"); |
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println!(" Total patterns: {}", total_patterns); |
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println!(" Total usage count: {}", total_usage); |
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println!(" Average usage per pattern: {:.2}", total_usage as f64 / total_patterns as f64); |
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let mut weights: Vec<_> = self.patterns.iter().collect(); |
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weights.sort_by(|a, b| b.1.cmp(a.1)); |
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let model_json = serde_json::json!({ |
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"model_type": "mycelial_pattern_classifier", |
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"version": "1.0.0", |
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"features": weights.iter().take(100).map(|(k, v)| { |
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serde_json::json!({"pattern": k, "weight": *v as f64 / total_usage as f64}) |
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}).collect::<Vec<_>>(), |
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"metadata": { |
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"total_patterns": total_patterns, |
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"total_usage": total_usage, |
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"training_files": 9137 |
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} |
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}); |
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fs::write("mycelial_model.json", serde_json::to_string_pretty(&model_json)?)?; |
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println!("πΎ Model saved to mycelial_model.json"); |
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Ok(()) |
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} |
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} |
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