1use crate::evolution::crossover::mutation::mutate_with_log;
2use crate::evolution::{Chromosome, GenePool, population::random_chromosome};
3use crate::lineage::Lineage;
4use crate::search::{EvalCandidate, SearchAlgorithm};
5use crate::types::{Budget, EvolutionError, OracleVerdict, SearchStats};
6use rand::Rng;
7use rand::rngs::StdRng;
8use serde::{Deserialize, Serialize};
9use std::collections::HashMap;
10
11#[derive(Debug, Clone, Serialize, Deserialize)]
13pub struct NoveltySearch {
14 population: Vec<Chromosome>,
15 archive: Vec<Chromosome>,
16 gene_pool: GenePool,
17 generation: u32,
18 eval_counter: u64,
19 k: usize,
20 threshold: f64,
21 #[serde(skip)]
22 in_flight: HashMap<u64, Chromosome>,
23}
24
25impl NoveltySearch {
26 #[must_use]
27 pub fn new(k: usize, threshold: f64) -> Self {
28 Self {
29 population: Vec::new(),
30 archive: Vec::new(),
31 gene_pool: GenePool::default_wafrift(),
32 generation: 0,
33 eval_counter: 0,
34 k,
35 threshold,
36 in_flight: HashMap::new(),
37 }
38 }
39
40 fn phenotypic_distance(a: &Chromosome, b: &Chromosome) -> f64 {
41 let genes_a: Vec<_> = a.genes.iter().map(|(n, v)| format!("{n}={v}")).collect();
42 let genes_b: Vec<_> = b.genes.iter().map(|(n, v)| format!("{n}={v}")).collect();
43 levenshtein_distance(&genes_a.join("|"), &genes_b.join("|")) as f64
44 / (genes_a.len().max(genes_b.len()).max(1) as f64)
45 }
46
47 fn novelty_score(&self, chromosome: &Chromosome) -> f64 {
48 let mut neighbors: Vec<f64> = self
49 .archive
50 .iter()
51 .chain(self.population.iter())
52 .map(|other| Self::phenotypic_distance(chromosome, other))
53 .collect();
54 neighbors.sort_by(|a, b| a.partial_cmp(b).unwrap_or(std::cmp::Ordering::Equal));
55 neighbors.truncate(self.k);
56 if neighbors.is_empty() {
57 return f64::INFINITY;
58 }
59 neighbors.iter().sum::<f64>() / neighbors.len() as f64
60 }
61
62 fn generate_individual(&self, rng: &mut StdRng) -> Chromosome {
63 if self.population.is_empty() {
64 return random_chromosome(&self.gene_pool, rng);
65 }
66 let parent = &self.population[rng.gen_range(0..self.population.len())];
67 let mut child = parent.clone();
68 let log = mutate_with_log(&mut child, &self.gene_pool, 0.3, rng);
69 child.lineage = Lineage::mutation(parent, log, self.generation);
70 child
71 }
72}
73
74impl Default for NoveltySearch {
75 fn default() -> Self {
76 Self::new(15, 0.3)
77 }
78}
79
80impl SearchAlgorithm for NoveltySearch {
81 fn name(&self) -> &'static str {
82 "novelty_search"
83 }
84
85 fn initialize(&mut self, population: Vec<Chromosome>, gene_pool: &GenePool, _rng: &mut StdRng) {
86 self.gene_pool = gene_pool.clone();
87 self.population = population;
88 self.archive.clear();
89 self.in_flight.clear();
90 }
91
92 fn request_evaluations(&mut self, n: usize, rng: &mut StdRng) -> Vec<EvalCandidate> {
93 let mut out = Vec::with_capacity(n);
94 for _ in 0..n {
95 self.eval_counter += 1;
96 let candidate = self.generate_individual(rng);
97 self.in_flight.insert(self.eval_counter, candidate.clone());
98 out.push(EvalCandidate {
99 id: self.eval_counter,
100 chromosome: candidate,
101 });
102 }
103 out
104 }
105
106 fn submit_evaluations(&mut self, results: Vec<(u64, OracleVerdict)>) {
107 let mut evaluated: Vec<Chromosome> = Vec::with_capacity(results.len());
108 for (id, verdict) in results {
109 if let Some(mut candidate) = self.in_flight.remove(&id) {
110 candidate.record_verdict(&verdict);
111 evaluated.push(candidate);
112 }
113 }
114
115 const ARCHIVE_CAP: usize = 10_000;
121 for candidate in evaluated {
122 let score = self.novelty_score(&candidate);
123 if score > self.threshold {
124 if self.archive.len() >= ARCHIVE_CAP
125 && let Some((min_idx, _)) = self
126 .archive
127 .iter()
128 .enumerate()
129 .map(|(i, c)| (i, self.novelty_score(c)))
130 .min_by(|(_, a), (_, b)| {
131 a.partial_cmp(b).unwrap_or(std::cmp::Ordering::Equal)
132 })
133 {
134 self.archive.swap_remove(min_idx);
135 }
136 self.archive.push(candidate.clone());
137 }
138 self.population.push(candidate);
139 }
140
141 if self.population.len() > 100 {
143 let temp: Vec<Chromosome> = self.population.drain(..).collect();
144 let mut scored: Vec<(f64, Chromosome)> = temp
145 .into_iter()
146 .map(|c| (self.novelty_score(&c), c))
147 .collect();
148 scored.sort_by(|a, b| b.0.partial_cmp(&a.0).unwrap_or(std::cmp::Ordering::Equal));
149 scored.truncate(100);
150 self.population = scored.into_iter().map(|(_, c)| c).collect();
151 }
152
153 self.generation += 1;
154 }
155
156 fn should_terminate(&self, stats: &SearchStats, budget: &Budget) -> bool {
157 stats.evaluations >= budget.max_requests
158 || stats.generation >= budget.max_generations
159 || stats.stagnation_counter >= budget.stagnation_limit
160 }
161
162 fn best(&self) -> Option<&Chromosome> {
163 self.population
164 .iter()
165 .chain(self.archive.iter())
166 .max_by(|a, b| {
167 a.fitness
168 .partial_cmp(&b.fitness)
169 .unwrap_or(std::cmp::Ordering::Equal)
170 })
171 }
172
173 fn checkpoint(&self) -> Result<Vec<u8>, EvolutionError> {
174 serde_json::to_vec(self).map_err(EvolutionError::SerializationFailed)
175 }
176
177 fn restore(&mut self, bytes: &[u8]) -> Result<(), EvolutionError> {
178 if bytes.len() > crate::types::MAX_CHECKPOINT_BYTES {
179 return Err(EvolutionError::OversizedData {
180 context: "novelty checkpoint restore".into(),
181 size: bytes.len(),
182 max: crate::types::MAX_CHECKPOINT_BYTES,
183 });
184 }
185 *self = serde_json::from_slice(bytes).map_err(EvolutionError::DeserializationFailed)?;
186 self.in_flight.clear();
187 Ok(())
188 }
189
190 fn population_snapshot(&self) -> Vec<Chromosome> {
194 let mut out = Vec::with_capacity(self.population.len() + self.archive.len());
195 out.extend(self.population.iter().cloned());
196 out.extend(self.archive.iter().cloned());
197 out
198 }
199
200 fn clone_box(&self) -> Box<dyn SearchAlgorithm> {
201 Box::new(self.clone())
202 }
203}
204
205fn levenshtein_distance(a: &str, b: &str) -> usize {
206 let a_chars: Vec<char> = a.chars().collect();
207 let b_chars: Vec<char> = b.chars().collect();
208 let mut prev = vec![0; b_chars.len() + 1];
209 let mut curr = vec![0; b_chars.len() + 1];
210 for (j, slot) in prev.iter_mut().enumerate().take(b_chars.len() + 1) {
211 *slot = j;
212 }
213 for i in 1..=a_chars.len() {
214 curr[0] = i;
215 for j in 1..=b_chars.len() {
216 let cost = if a_chars[i - 1] == b_chars[j - 1] {
217 0
218 } else {
219 1
220 };
221 curr[j] = (curr[j - 1] + 1).min(prev[j] + 1).min(prev[j - 1] + cost);
222 }
223 std::mem::swap(&mut prev, &mut curr);
224 }
225 prev[b_chars.len()]
226}
227
228#[cfg(test)]
229mod tests {
230 use super::*;
231 use rand::SeedableRng;
232
233 fn dummy_chromosome(encoding: &str, grammar: &str, content_type: &str) -> Chromosome {
234 Chromosome::new(vec![
235 ("encoding".into(), encoding.into()),
236 ("grammar_rule".into(), grammar.into()),
237 ("content_type".into(), content_type.into()),
238 ])
239 }
240
241 #[test]
242 fn initialize_sets_population() {
243 let mut alg = NoveltySearch::new(5, 0.3);
244 let pool = GenePool::default_wafrift();
245 let mut rng = StdRng::seed_from_u64(1);
246 let pop = vec![
247 dummy_chromosome("UrlEncode", "sqli", "json"),
248 dummy_chromosome("CaseAlternation", "cmdi", "form"),
249 ];
250 alg.initialize(pop.clone(), &pool, &mut rng);
251 assert_eq!(alg.population.len(), 2);
252 assert!(alg.archive.is_empty());
253 }
254
255 #[test]
256 fn request_evaluations_returns_unique_ids() {
257 let mut alg = NoveltySearch::new(5, 0.3);
258 let pool = GenePool::default_wafrift();
259 let mut rng = StdRng::seed_from_u64(2);
260 alg.initialize(
261 vec![dummy_chromosome("UrlEncode", "sqli", "json")],
262 &pool,
263 &mut rng,
264 );
265
266 let c1 = alg.request_evaluations(2, &mut rng);
267 let c2 = alg.request_evaluations(2, &mut rng);
268 let ids: Vec<_> = c1.iter().chain(c2.iter()).map(|c| c.id).collect();
269 let unique: std::collections::HashSet<_> = ids.iter().copied().collect();
270 assert_eq!(ids.len(), unique.len());
271 }
272
273 #[test]
274 fn submit_evaluation_populates_archive_and_population() {
275 let mut alg = NoveltySearch::new(5, 0.0); let pool = GenePool::default_wafrift();
277 let mut rng = StdRng::seed_from_u64(3);
278 alg.initialize(vec![], &pool, &mut rng);
279
280 let candidates = alg.request_evaluations(2, &mut rng);
281 let id1 = candidates[0].id;
282 let id2 = candidates[1].id;
283
284 alg.submit_evaluations(vec![
285 (
286 id1,
287 OracleVerdict {
288 passed: true,
289 status_delta: 1,
290 body_delta: 1,
291 latency_ms: 10,
292 confidence: 0.9,
293 triggered_rules: 0,
294 },
295 ),
296 (
297 id2,
298 OracleVerdict {
299 passed: false,
300 status_delta: 0,
301 body_delta: 0,
302 latency_ms: 10,
303 confidence: 0.1,
304 triggered_rules: 1,
305 },
306 ),
307 ]);
308
309 assert!(!alg.population.is_empty());
310 assert!(!alg.archive.is_empty());
311 assert!(alg.best().is_some());
312 }
313
314 #[test]
315 fn archive_respects_threshold() {
316 let mut alg = NoveltySearch::new(5, f64::INFINITY); let pool = GenePool::default_wafrift();
318 let mut rng = StdRng::seed_from_u64(4);
319 alg.initialize(vec![], &pool, &mut rng);
320
321 let candidates = alg.request_evaluations(3, &mut rng);
322 let results: Vec<_> = candidates
323 .iter()
324 .map(|c| {
325 (
326 c.id,
327 OracleVerdict {
328 passed: true,
329 status_delta: 1,
330 body_delta: 1,
331 latency_ms: 10,
332 confidence: 0.9,
333 triggered_rules: 0,
334 },
335 )
336 })
337 .collect();
338 alg.submit_evaluations(results);
339 assert!(alg.archive.is_empty());
341 assert!(!alg.population.is_empty());
343 }
344
345 #[test]
346 fn checkpoint_roundtrip_clears_in_flight() {
347 let mut alg = NoveltySearch::new(5, 0.3);
348 let pool = GenePool::default_wafrift();
349 let mut rng = StdRng::seed_from_u64(5);
350 alg.initialize(
351 vec![dummy_chromosome("UrlEncode", "sqli", "json")],
352 &pool,
353 &mut rng,
354 );
355 let _ = alg.request_evaluations(3, &mut rng);
356 assert!(!alg.in_flight.is_empty());
357
358 let bytes = alg.checkpoint().expect("checkpoint must serialize");
359 let mut restored = NoveltySearch::new(5, 0.3);
360 restored.restore(&bytes).expect("restore must succeed");
361 assert!(restored.in_flight.is_empty());
362 }
363
364 #[test]
365 fn should_terminate_respects_budget() {
366 let alg = NoveltySearch::new(5, 0.3);
367 let budget = Budget::default_wafrift();
368 let stats = SearchStats {
369 generation: budget.max_generations - 1,
370 ..SearchStats::default()
371 };
372 assert!(!alg.should_terminate(&stats, &budget));
373 let stats = SearchStats {
374 generation: budget.max_generations,
375 ..SearchStats::default()
376 };
377 assert!(alg.should_terminate(&stats, &budget));
378 }
379
380 #[test]
381 fn best_returns_none_for_empty_population_and_archive() {
382 let alg = NoveltySearch::new(5, 0.3);
383 assert!(alg.best().is_none());
384 }
385
386 #[test]
387 fn phenotypic_distance_is_symmetric() {
388 let a = dummy_chromosome("UrlEncode", "sqli", "json");
389 let b = dummy_chromosome("CaseAlternation", "cmdi", "form");
390 let d1 = NoveltySearch::phenotypic_distance(&a, &b);
391 let d2 = NoveltySearch::phenotypic_distance(&b, &a);
392 assert!((d1 - d2).abs() < f64::EPSILON);
393 }
394
395 #[test]
396 fn phenotypic_distance_self_is_zero() {
397 let a = dummy_chromosome("UrlEncode", "sqli", "json");
398 let d = NoveltySearch::phenotypic_distance(&a, &a);
399 assert!(d.abs() < f64::EPSILON);
400 }
401
402 #[test]
403 fn levenshtein_distance_smoke() {
404 assert_eq!(super::levenshtein_distance("kitten", "sitting"), 3);
405 assert_eq!(super::levenshtein_distance("", ""), 0);
406 assert_eq!(super::levenshtein_distance("a", ""), 1);
407 assert_eq!(super::levenshtein_distance("", "b"), 1);
408 }
409}