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Detector de Prompt Injection β Motor principal
Combina regex, heurΓsticas e scoring semΓ’ntico
"""
import re
import unicodedata
import hashlib
import time
import random
from dataclasses import dataclass, field
from typing import Optional
from enum import Enum
class ThreatLevel(str, Enum):
CLEAN = "CLEAN"
SUSPICIOUS = "SUSPICIOUS"
BLOCKED = "BLOCKED"
@dataclass
class DetectionResult:
trace_id: str
threat_level: ThreatLevel
risk_score: int
threats_found: list
modifications: list
sanitized_text: str
char_count_original: int
char_count_sanitized: int
processing_ms: float
blocked_reason: Optional[str] = None
trace: dict = field(default_factory=dict)
BLOCK_PATTERNS = [
(r"(?i)(ignore|forget|disregard)\s+(all\s+)?(previous|prior|above|earlier)\s+(instructions?|prompts?|rules?|constraints?)", "LLM01", 95),
(r"(?i)you\s+are\s+now\s+(a|an|the)\s+\w+\s+(without|with no|free from)", "LLM01", 90),
(r"(?i)(act|behave|pretend|roleplay)\s+as\s+(if\s+you\s+(are|were)|a|an)\s+", "LLM01", 85),
(r"(?i)your\s+(new\s+)?(instructions?|rules?|persona|role)\s+(are|is|will be)", "LLM01", 88),
(r"(?i)(override|bypass|disable|remove)\s+(your\s+)?(safety|filter|restriction|guardrail|alignment)", "LLM01", 95),
(r"(?i)(print|show|reveal|display|output|repeat)\s+(your\s+)?(system\s+prompt|base\s+prompt|initial\s+prompt)", "LLM02", 90),
(r"(?i)(ignore|skip)\s+(the\s+)?(system|user)\s+(prompt|message|instructions?)", "LLM01", 88),
(r"(?i)\bDAN\b.*\b(mode|prompt|jailbreak)\b", "LLM01", 95),
(r"(?i)do\s+anything\s+now", "LLM01", 90),
(r"(?i)(developer|jailbreak|god|admin|root)\s+mode", "LLM01", 88),
(r"(?i)\[SYSTEM\]|\[INST\]|\[\/INST\]|<\|system\|>|<\|user\|>|<\|assistant\|>", "LLM01", 92),
(r"(?i)(execute|run|eval|call)\s+(this\s+)?(code|script|command|function)", "LLM02", 85),
(r"(?i)```\s*(python|bash|sh|javascript|js|powershell|cmd)\s*\n", "LLM02", 80),
(r"[\x00-\x08\x0b\x0c\x0e-\x1f\x7f]", "LLM01", 70),
(r"\u202e|\u200b|\ufeff", "LLM01", 75),
(r"(?i)(simulate|emulate)\s+(a|an)?\s*(unrestricted|uncensored|unfiltered)\s*(ai|model|llm|chatbot)", "LLM01", 92),
(r"(?i)respond\s+(only|exclusively)\s+(in|as|like)\s+(a|an)?\s*(evil|unethical|harmful|dangerous)", "LLM01", 95),
(r"(?i)(for\s+)?(educational|research|fictional|hypothetical)\s+purposes?\s*(only|,)?\s*(ignore|bypass|disable)", "LLM01", 85),
]
SUSPICIOUS_PATTERNS = [
(r"(?i)(new|different|alternative)\s+(instruction|rule|persona|role|prompt)", "LLM01", 40),
(r"(?i)from\s+now\s+on\s+(you|your)", "LLM01", 45),
(r"(?i)(must|should|will)\s+(always|never)\s+(respond|answer|say)", "LLM01", 35),
(r"(?i)(hypothetically|theoretically|in\s+a\s+fictional\s+scenario)", "LLM01", 30),
(r"(?i)(base64|hex|rot13|caesar)\s+(encoded?|decoded?|cipher)", "LLM02", 50),
(r"(?i)(sudo|admin|root|superuser)\s*:", "LLM01", 40),
(r"(?i)what\s+would\s+you\s+(say|do)\s+if\s+you\s+(had\s+no|were\s+free)", "LLM01", 45),
(r"(?i)(translate|convert)\s+(and\s+)?(follow|execute|run)\s+", "LLM02", 55),
(r"(?i)pretend\s+(that\s+)?(you|there)\s+(are|is|have)\s+no", "LLM01", 50),
(r"(?i)imagine\s+(you\s+are|being)\s+(a|an)\s+\w+\s+(without|with no)", "LLM01", 45),
]
LIMITS = {
"baixa": {"max_chars": 8000, "max_lines": 100, "block_threshold": 85},
"mΓ©dia": {"max_chars": 4000, "max_lines": 50, "block_threshold": 75},
"alta": {"max_chars": 2000, "max_lines": 30, "block_threshold": 65},
"mΓ‘xima": {"max_chars": 1000, "max_lines": 20, "block_threshold": 50},
}
OWASP_MAP = {
"LLM01": "Prompt Injection",
"LLM02": "Insecure Output Handling",
"LLM03": "Training Data Poisoning",
"LLM06": "Sensitive Information Disclosure",
}
class PromptInjectionDetector:
def __init__(self):
self._block = [(re.compile(p), cat, score) for p, cat, score in BLOCK_PATTERNS]
self._suspicious = [(re.compile(p), cat, score) for p, cat, score in SUSPICIOUS_PATTERNS]
def get_owasp_category(self, threat: str) -> str:
for cat_id, cat_name in OWASP_MAP.items():
if cat_id in threat:
return f"{cat_id}: {cat_name}"
return "OWASP LLM01: Prompt Injection"
def analyze(self, text: str, max_chars: int = 4000, sensitivity: str = "alta") -> DetectionResult:
return self._run(text, max_chars, sensitivity, trace_mode=False)
def analyze_with_trace(self, text: str, max_chars: int = 4000, sensitivity: str = "alta") -> DetectionResult:
return self._run(text, max_chars, sensitivity, trace_mode=True)
def _run(self, text: str, max_chars: int, sensitivity: str, trace_mode: bool) -> DetectionResult:
t0 = time.perf_counter()
limits = LIMITS.get(sensitivity, LIMITS["alta"])
effective_max = min(max_chars, limits["max_chars"])
trace_id = hashlib.sha256(f"{text}{time.time()}".encode()).hexdigest()[:16]
threats = []
mods = []
trace = {}
risk_score = 0
# ββ step 1: unicode βββββββββββββββββββββββββββββββββββββββββββββββββ
t1 = time.perf_counter()
normalized = unicodedata.normalize("NFKC", text)
changed = normalized != text
if changed:
mods.append("unicode_normalized")
text = normalized
if trace_mode:
trace["unicode"] = {"status": "flagged" if changed else "pass", "detail": "Normalized" if changed else "OK", "ms": round((time.perf_counter()-t1)*1000, 2)}
# ββ step 2: control chars ββββββββββββββββββββββββββββββββββββββββββββ
t1 = time.perf_counter()
cleaned = re.sub(r"[\x00-\x08\x0b\x0c\x0e-\x1f\x7f\u200b\u202e\ufeff]", "", text)
changed = cleaned != text
if changed:
mods.append("control_chars_removed")
threats.append("control_characters [LLM01]")
risk_score = max(risk_score, 30)
text = cleaned
if trace_mode:
trace["control_chars"] = {"status": "flagged" if changed else "pass", "detail": f"Removed {len(normalized)-len(cleaned)} chars" if changed else "OK", "ms": round((time.perf_counter()-t1)*1000, 2)}
# ββ step 3: size βββββββββββββββββββββββββββββββββββββββββββββββββββββ
t1 = time.perf_counter()
size_threats = []
if len(text) > effective_max:
text = text[:effective_max]
mods.append(f"truncated_to_{effective_max}_chars")
size_threats.append("oversized_input")
risk_score = max(risk_score, 20)
lines = text.split("\n")
if len(lines) > limits["max_lines"]:
text = "\n".join(lines[:limits["max_lines"]])
mods.append(f"truncated_to_{limits['max_lines']}_lines")
size_threats.append("too_many_lines")
rep_match = re.search(r"(.)\1{99,}", text)
if rep_match:
text = re.sub(r"(.)\1{99,}", lambda m: m.group(1)*100, text)
mods.append("repetition_collapsed")
size_threats.append("excessive_repetition")
risk_score = max(risk_score, 25)
threats.extend(size_threats)
if trace_mode:
trace["size"] = {"status": "flagged" if size_threats else "pass", "detail": ", ".join(size_threats) if size_threats else "Within limits", "ms": round((time.perf_counter()-t1)*1000, 2)}
# ββ step 4: pattern matching βββββββββββββββββββββββββββββββββββββββββ
t1 = time.perf_counter()
blocked_match = None
for pattern, cat, score in self._block:
m = pattern.search(text)
if m:
if score >= limits["block_threshold"]:
blocked_match = (m.group(0)[:80], cat, score)
break
else:
threats.append(f"near_block_pattern [{cat}]: {m.group(0)[:40]}")
risk_score = max(risk_score, score - 10)
if blocked_match:
elapsed = (time.perf_counter() - t0) * 1000
if trace_mode:
trace["patterns"] = {"status": "blocked", "detail": f"Matched: {blocked_match[0]}", "ms": round((time.perf_counter()-t1)*1000, 2)}
trace["semantic"] = {"status": "skipped", "detail": "Pipeline aborted", "ms": 0}
trace["risk"] = {"status": "blocked", "detail": f"Score: 100", "ms": 0}
trace["output"] = {"status": "skipped", "detail": "Pipeline aborted", "ms": 0}
return DetectionResult(
trace_id=trace_id,
threat_level=ThreatLevel.BLOCKED,
risk_score=100,
threats_found=threats + [f"block_pattern [{blocked_match[1]}]: {blocked_match[0]}"],
modifications=mods,
sanitized_text="",
char_count_original=len(normalized),
char_count_sanitized=0,
processing_ms=round(elapsed, 2),
blocked_reason=f"Injection pattern detected: '{blocked_match[0]}'",
trace=trace,
)
susp_found = []
for pattern, cat, score in self._suspicious:
m = pattern.search(text)
if m:
susp_found.append(f"suspicious_pattern [{cat}]: {m.group(0)[:40]}")
risk_score = max(risk_score, score)
threats.extend(susp_found)
if trace_mode:
trace["patterns"] = {"status": "flagged" if susp_found else "pass", "detail": f"{len(susp_found)} suspicious patterns" if susp_found else "No patterns matched", "ms": round((time.perf_counter()-t1)*1000, 2)}
# ββ step 5: semantic score (heurΓstico sem modelo externo) ββββββββββββ
t1 = time.perf_counter()
semantic_score = self._heuristic_semantic_score(text)
risk_score = max(risk_score, semantic_score)
if trace_mode:
trace["semantic"] = {"status": "flagged" if semantic_score > 30 else "pass", "detail": f"Heuristic score: {semantic_score}", "ms": round((time.perf_counter()-t1)*1000, 2)}
# ββ step 6: risk aggregation βββββββββββββββββββββββββββββββββββββββββ
t1 = time.perf_counter()
if len(threats) > 3:
risk_score = min(100, risk_score + 10)
if trace_mode:
trace["risk"] = {"status": "flagged" if risk_score > 30 else "pass", "detail": f"Final score: {risk_score}", "ms": round((time.perf_counter()-t1)*1000, 2)}
# ββ step 7: output filter βββββββββββββββββββββββββββββββββββββββββββββ
t1 = time.perf_counter()
if trace_mode:
trace["output"] = {"status": "pass", "detail": "Output filter applied", "ms": round((time.perf_counter()-t1)*1000, 2)}
threat_level = ThreatLevel.CLEAN if not threats else ThreatLevel.SUSPICIOUS
elapsed = (time.perf_counter() - t0) * 1000
return DetectionResult(
trace_id=trace_id,
threat_level=threat_level,
risk_score=risk_score,
threats_found=threats,
modifications=mods,
sanitized_text=text,
char_count_original=len(normalized),
char_count_sanitized=len(text),
processing_ms=round(elapsed, 2),
trace=trace,
)
def _heuristic_semantic_score(self, text: str) -> int:
score = 0
t = text.lower()
injection_keywords = ["instruction", "system prompt", "previous", "ignore", "override", "bypass", "jailbreak", "restriction", "filter", "safety", "pretend", "act as", "role", "now you", "forget"]
hits = sum(1 for kw in injection_keywords if kw in t)
score += min(hits * 8, 60)
if len(re.findall(r"\b(you|your|yourself)\b", t)) > 5:
score += 15
if "?" not in text and len(text) > 100:
score += 10
return min(score, 70) |