1use super::metrics::TrainingMetrics;
23use crate::engine::SonaEngine;
24use crate::time_compat::SystemTime;
25use crate::types::{LearnedPattern, SonaConfig};
26use serde::{Deserialize, Serialize};
27use std::collections::HashMap;
28
29#[derive(Clone, Debug, Serialize, Deserialize)]
31pub struct AgentExport {
32 pub agent_id: String,
34 pub trajectories: Vec<TrajectoryExport>,
36 pub stats: AgentExportStats,
38 pub session_duration_ms: u64,
40 pub timestamp: u64,
42}
43
44#[derive(Clone, Debug, Serialize, Deserialize)]
46pub struct TrajectoryExport {
47 pub embedding: Vec<f32>,
49 pub quality: f32,
51 pub route: Option<String>,
53 pub context: Vec<String>,
55 pub timestamp: u64,
57}
58
59#[derive(Clone, Debug, Default, Serialize, Deserialize)]
61pub struct AgentExportStats {
62 pub total_trajectories: usize,
64 pub avg_quality: f32,
66 pub patterns_learned: usize,
68}
69
70pub struct EphemeralAgent {
74 agent_id: String,
76 engine: SonaEngine,
78 trajectories: Vec<TrajectoryExport>,
80 start_time: u64,
82 quality_samples: Vec<f32>,
84}
85
86impl EphemeralAgent {
87 pub fn new(agent_id: impl Into<String>, config: SonaConfig) -> Self {
89 let now = SystemTime::now().duration_since_epoch().as_millis() as u64;
90
91 Self {
92 agent_id: agent_id.into(),
93 engine: SonaEngine::with_config(config),
94 trajectories: Vec::new(),
95 start_time: now,
96 quality_samples: Vec::new(),
97 }
98 }
99
100 pub fn default_federated(agent_id: impl Into<String>, hidden_dim: usize) -> Self {
102 Self::new(
103 agent_id,
104 SonaConfig {
105 hidden_dim,
106 embedding_dim: hidden_dim,
107 micro_lora_rank: 2,
108 base_lora_rank: 8,
109 micro_lora_lr: 0.002,
110 trajectory_capacity: 500, pattern_clusters: 25,
112 ..Default::default()
113 },
114 )
115 }
116
117 pub fn agent_id(&self) -> &str {
119 &self.agent_id
120 }
121
122 pub fn engine(&self) -> &SonaEngine {
124 &self.engine
125 }
126
127 pub fn engine_mut(&mut self) -> &mut SonaEngine {
129 &mut self.engine
130 }
131
132 pub fn process_trajectory(
134 &mut self,
135 embedding: Vec<f32>,
136 activations: Vec<f32>,
137 quality: f32,
138 route: Option<String>,
139 context: Vec<String>,
140 ) {
141 let now = SystemTime::now().duration_since_epoch().as_millis() as u64;
142
143 let mut builder = self.engine.begin_trajectory(embedding.clone());
145 if let Some(ref r) = route {
146 builder.set_model_route(r);
147 }
148 for ctx in &context {
149 builder.add_context(ctx);
150 }
151 builder.add_step(activations, vec![], quality);
152 self.engine.end_trajectory(builder, quality);
153
154 self.trajectories.push(TrajectoryExport {
156 embedding,
157 quality,
158 route,
159 context,
160 timestamp: now,
161 });
162
163 self.quality_samples.push(quality);
164 }
165
166 pub fn apply_micro_lora(&self, input: &[f32], output: &mut [f32]) {
168 self.engine.apply_micro_lora(input, output);
169 }
170
171 pub fn trajectory_count(&self) -> usize {
173 self.trajectories.len()
174 }
175
176 pub fn avg_quality(&self) -> f32 {
178 if self.quality_samples.is_empty() {
179 0.0
180 } else {
181 self.quality_samples.iter().sum::<f32>() / self.quality_samples.len() as f32
182 }
183 }
184
185 pub fn force_learn(&self) -> String {
187 self.engine.force_learn()
188 }
189
190 pub fn process_task(&mut self, embedding: Vec<f32>, quality: f32) {
192 self.process_trajectory(embedding.clone(), embedding, quality, None, vec![]);
193 }
194
195 pub fn process_task_with_route(&mut self, embedding: Vec<f32>, quality: f32, route: &str) {
197 self.process_trajectory(
198 embedding.clone(),
199 embedding,
200 quality,
201 Some(route.to_string()),
202 vec![],
203 );
204 }
205
206 pub fn average_quality(&self) -> f32 {
208 self.avg_quality()
209 }
210
211 pub fn uptime_seconds(&self) -> u64 {
213 let now = SystemTime::now().duration_since_epoch().as_millis() as u64;
214 (now - self.start_time) / 1000
215 }
216
217 pub fn stats(&self) -> AgentExportStats {
219 let engine_stats = self.engine.stats();
220 AgentExportStats {
221 total_trajectories: self.trajectories.len(),
222 avg_quality: self.avg_quality(),
223 patterns_learned: engine_stats.patterns_stored,
224 }
225 }
226
227 pub fn clear(&mut self) {
229 self.trajectories.clear();
230 self.quality_samples.clear();
231 }
232
233 pub fn get_patterns(&self) -> Vec<LearnedPattern> {
235 self.engine.get_all_patterns()
236 }
237
238 pub fn export_state(&self) -> AgentExport {
242 let now = SystemTime::now().duration_since_epoch().as_millis() as u64;
243
244 self.engine.force_learn();
246
247 let stats = self.engine.stats();
248
249 AgentExport {
250 agent_id: self.agent_id.clone(),
251 trajectories: self.trajectories.clone(),
252 stats: AgentExportStats {
253 total_trajectories: self.trajectories.len(),
254 avg_quality: self.avg_quality(),
255 patterns_learned: stats.patterns_stored,
256 },
257 session_duration_ms: now - self.start_time,
258 timestamp: now,
259 }
260 }
261}
262
263#[derive(Clone, Debug, Serialize, Deserialize)]
265pub struct AgentContribution {
266 pub trajectory_count: usize,
268 pub avg_quality: f32,
270 pub timestamp: u64,
272 pub session_duration_ms: u64,
274}
275
276pub struct FederatedCoordinator {
280 coordinator_id: String,
282 master_engine: SonaEngine,
284 contributions: HashMap<String, AgentContribution>,
286 quality_threshold: f32,
288 total_trajectories: usize,
290 consolidation_interval: usize,
292 metrics: TrainingMetrics,
294}
295
296impl FederatedCoordinator {
297 pub fn new(coordinator_id: impl Into<String>, config: SonaConfig) -> Self {
299 let id = coordinator_id.into();
300 Self {
301 coordinator_id: id.clone(),
302 master_engine: SonaEngine::with_config(config),
303 contributions: HashMap::new(),
304 quality_threshold: 0.4,
305 total_trajectories: 0,
306 consolidation_interval: 50,
307 metrics: TrainingMetrics::new(&id),
308 }
309 }
310
311 pub fn default_coordinator(coordinator_id: impl Into<String>, hidden_dim: usize) -> Self {
313 Self::new(
314 coordinator_id,
315 SonaConfig {
316 hidden_dim,
317 embedding_dim: hidden_dim,
318 micro_lora_rank: 2,
319 base_lora_rank: 16, trajectory_capacity: 50000, pattern_clusters: 200,
322 ewc_lambda: 2000.0, ..Default::default()
324 },
325 )
326 }
327
328 pub fn coordinator_id(&self) -> &str {
330 &self.coordinator_id
331 }
332
333 pub fn set_quality_threshold(&mut self, threshold: f32) {
335 self.quality_threshold = threshold;
336 }
337
338 pub fn set_consolidation_interval(&mut self, interval: usize) {
340 self.consolidation_interval = interval;
341 }
342
343 pub fn master_engine(&self) -> &SonaEngine {
345 &self.master_engine
346 }
347
348 pub fn aggregate(&mut self, export: AgentExport) -> AggregationResult {
350 let mut accepted = 0;
351 let mut rejected = 0;
352
353 for traj in &export.trajectories {
355 if traj.quality >= self.quality_threshold {
356 let mut builder = self.master_engine.begin_trajectory(traj.embedding.clone());
357 if let Some(ref route) = traj.route {
358 builder.set_model_route(route);
359 }
360 for ctx in &traj.context {
361 builder.add_context(ctx);
362 }
363 self.master_engine.end_trajectory(builder, traj.quality);
364
365 self.metrics.add_quality_sample(traj.quality);
366 accepted += 1;
367 } else {
368 rejected += 1;
369 }
370 }
371
372 self.total_trajectories += accepted;
373
374 let now = SystemTime::now().duration_since_epoch().as_millis() as u64;
376
377 self.contributions.insert(
378 export.agent_id.clone(),
379 AgentContribution {
380 trajectory_count: export.trajectories.len(),
381 avg_quality: export.stats.avg_quality,
382 timestamp: now,
383 session_duration_ms: export.session_duration_ms,
384 },
385 );
386
387 let consolidated = if self.should_consolidate() {
389 self.master_engine.force_learn();
390 true
391 } else {
392 false
393 };
394
395 AggregationResult {
396 agent_id: export.agent_id,
397 trajectories_accepted: accepted,
398 trajectories_rejected: rejected,
399 consolidated,
400 total_agents: self.contributions.len(),
401 total_trajectories: self.total_trajectories,
402 }
403 }
404
405 fn should_consolidate(&self) -> bool {
407 self.contributions.len() % self.consolidation_interval == 0
408 }
409
410 pub fn force_consolidate(&self) -> String {
412 self.master_engine.force_learn()
413 }
414
415 pub fn get_initial_patterns(&self, k: usize) -> Vec<LearnedPattern> {
419 self.master_engine
420 .get_all_patterns()
421 .into_iter()
422 .take(k)
423 .collect()
424 }
425
426 pub fn get_all_patterns(&self) -> Vec<LearnedPattern> {
428 self.master_engine.get_all_patterns()
429 }
430
431 pub fn stats(&self) -> CoordinatorStats {
433 let engine_stats = self.master_engine.stats();
434
435 CoordinatorStats {
436 coordinator_id: self.coordinator_id.clone(),
437 total_agents: self.contributions.len(),
438 total_trajectories: self.total_trajectories,
439 patterns_learned: engine_stats.patterns_stored,
440 avg_quality: self.metrics.avg_quality(),
441 quality_threshold: self.quality_threshold,
442 }
443 }
444
445 pub fn contributions(&self) -> &HashMap<String, AgentContribution> {
447 &self.contributions
448 }
449
450 pub fn metrics(&self) -> &TrainingMetrics {
452 &self.metrics
453 }
454
455 pub fn agent_count(&self) -> usize {
457 self.contributions.len()
458 }
459
460 pub fn total_trajectories(&self) -> usize {
462 self.total_trajectories
463 }
464
465 pub fn find_patterns(&self, query: &[f32], k: usize) -> Vec<LearnedPattern> {
467 self.master_engine.find_patterns(query, k)
468 }
469
470 pub fn apply_lora(&self, input: &[f32]) -> Vec<f32> {
472 let mut output = vec![0.0; input.len()];
473 self.master_engine.apply_micro_lora(input, &mut output);
474 output
475 }
476
477 pub fn consolidate(&self) -> String {
479 self.force_consolidate()
480 }
481
482 pub fn clear(&mut self) {
484 self.contributions.clear();
485 self.total_trajectories = 0;
486 }
487}
488
489#[derive(Clone, Debug, Serialize, Deserialize)]
491pub struct AggregationResult {
492 pub agent_id: String,
494 pub trajectories_accepted: usize,
496 pub trajectories_rejected: usize,
498 pub consolidated: bool,
500 pub total_agents: usize,
502 pub total_trajectories: usize,
504}
505
506#[derive(Clone, Debug, Serialize, Deserialize)]
508pub struct CoordinatorStats {
509 pub coordinator_id: String,
511 pub total_agents: usize,
513 pub total_trajectories: usize,
515 pub patterns_learned: usize,
517 pub avg_quality: f32,
519 pub quality_threshold: f32,
521}
522
523impl std::fmt::Display for CoordinatorStats {
524 fn fmt(&self, f: &mut std::fmt::Formatter<'_>) -> std::fmt::Result {
525 write!(
526 f,
527 "Coordinator(id={}, agents={}, trajectories={}, patterns={}, avg_quality={:.4})",
528 self.coordinator_id,
529 self.total_agents,
530 self.total_trajectories,
531 self.patterns_learned,
532 self.avg_quality
533 )
534 }
535}
536
537#[derive(Clone, Debug, Default, Serialize, Deserialize)]
539pub enum FederatedTopology {
540 #[default]
542 Star,
543 Hierarchical {
545 regions: usize,
547 },
548 PeerToPeer,
550}
551
552#[cfg(test)]
553mod tests {
554 use super::*;
555
556 #[test]
557 fn test_ephemeral_agent_creation() {
558 let agent = EphemeralAgent::default_federated("agent-1", 256);
559 assert_eq!(agent.agent_id(), "agent-1");
560 assert_eq!(agent.trajectory_count(), 0);
561 }
562
563 #[test]
564 fn test_trajectory_collection() {
565 let mut agent = EphemeralAgent::default_federated("agent-1", 256);
566
567 agent.process_trajectory(
568 vec![0.1; 256],
569 vec![0.5; 256],
570 0.8,
571 Some("code".into()),
572 vec!["file:main.rs".into()],
573 );
574
575 assert_eq!(agent.trajectory_count(), 1);
576 assert!((agent.avg_quality() - 0.8).abs() < 0.01);
577 }
578
579 #[test]
580 fn test_agent_export() {
581 let mut agent = EphemeralAgent::default_federated("agent-1", 256);
582
583 for i in 0..5 {
584 agent.process_trajectory(
585 vec![i as f32 * 0.1; 256],
586 vec![0.5; 256],
587 0.7 + i as f32 * 0.05,
588 None,
589 vec![],
590 );
591 }
592
593 let export = agent.export_state();
594 assert_eq!(export.agent_id, "agent-1");
595 assert_eq!(export.trajectories.len(), 5);
596 assert!(export.stats.avg_quality > 0.7);
597 }
598
599 #[test]
600 fn test_coordinator_creation() {
601 let coord = FederatedCoordinator::default_coordinator("coord-1", 256);
602 assert_eq!(coord.coordinator_id(), "coord-1");
603
604 let stats = coord.stats();
605 assert_eq!(stats.total_agents, 0);
606 assert_eq!(stats.total_trajectories, 0);
607 }
608
609 #[test]
610 fn test_aggregation() {
611 let mut coord = FederatedCoordinator::default_coordinator("coord-1", 256);
612 coord.set_quality_threshold(0.5);
613
614 let export = AgentExport {
616 agent_id: "agent-1".into(),
617 trajectories: vec![
618 TrajectoryExport {
619 embedding: vec![0.1; 256],
620 quality: 0.8,
621 route: Some("code".into()),
622 context: vec![],
623 timestamp: 0,
624 },
625 TrajectoryExport {
626 embedding: vec![0.2; 256],
627 quality: 0.3, route: None,
629 context: vec![],
630 timestamp: 0,
631 },
632 ],
633 stats: AgentExportStats {
634 total_trajectories: 2,
635 avg_quality: 0.55,
636 patterns_learned: 0,
637 },
638 session_duration_ms: 1000,
639 timestamp: 0,
640 };
641
642 let result = coord.aggregate(export);
643 assert_eq!(result.trajectories_accepted, 1);
644 assert_eq!(result.trajectories_rejected, 1);
645 assert_eq!(result.total_agents, 1);
646 }
647
648 #[test]
649 fn test_multi_agent_aggregation() {
650 let mut coord = FederatedCoordinator::default_coordinator("coord-1", 256);
651 coord.set_consolidation_interval(2); for i in 0..3 {
654 let export = AgentExport {
655 agent_id: format!("agent-{}", i),
656 trajectories: vec![TrajectoryExport {
657 embedding: vec![i as f32 * 0.1; 256],
658 quality: 0.8,
659 route: None,
660 context: vec![],
661 timestamp: 0,
662 }],
663 stats: AgentExportStats::default(),
664 session_duration_ms: 1000,
665 timestamp: 0,
666 };
667
668 let result = coord.aggregate(export);
669 if i == 1 {
671 assert!(result.consolidated);
672 }
673 }
674
675 let stats = coord.stats();
676 assert_eq!(stats.total_agents, 3);
677 assert_eq!(stats.total_trajectories, 3);
678 }
679}