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"""
Data Models for Enterprise Agentic Reliability Framework
Fixed version with security patches and validation improvements
"""
from pydantic import BaseModel, Field, field_validator, computed_field, ConfigDict
from typing import Optional, List, Literal
from enum import Enum
from datetime import datetime, timezone
import hashlib
import re
class EventSeverity(Enum):
"""Event severity levels"""
LOW = "low"
MEDIUM = "medium"
HIGH = "high"
CRITICAL = "critical"
class HealingAction(Enum):
"""Available healing actions for policy engine"""
RESTART_CONTAINER = "restart_container"
SCALE_OUT = "scale_out"
TRAFFIC_SHIFT = "traffic_shift"
CIRCUIT_BREAKER = "circuit_breaker"
ROLLBACK = "rollback"
ALERT_TEAM = "alert_team"
NO_ACTION = "no_action"
class HealthStatus(Enum):
"""Component health status"""
HEALTHY = "healthy"
DEGRADED = "degraded"
UNHEALTHY = "unhealthy"
UNKNOWN = "unknown"
class PolicyCondition(BaseModel):
"""
Structured policy condition - replaces Dict[str, Any]
Provides type safety and validation
"""
metric: Literal["latency_p99", "error_rate", "cpu_util", "memory_util", "throughput"]
operator: Literal["gt", "lt", "eq", "gte", "lte"]
threshold: float = Field(ge=0)
model_config = ConfigDict(frozen=True)
class ReliabilityEvent(BaseModel):
"""
Core reliability event model with comprehensive validation
SECURITY FIX: Changed timestamp from str to datetime
SECURITY FIX: Changed fingerprint from MD5 to SHA-256
IMPROVEMENT: Added frozen=True for immutability
IMPROVEMENT: Added validators for all fields
"""
# FIXED: timestamp is now datetime instead of string
timestamp: datetime = Field(
default_factory=lambda: datetime.now(timezone.utc),
description="Event timestamp in UTC"
)
component: str = Field(
min_length=1,
max_length=255,
description="Component identifier (alphanumeric and hyphens only)"
)
service_mesh: str = Field(
default="default",
min_length=1,
max_length=100
)
# Metrics with proper bounds
latency_p99: float = Field(
ge=0,
lt=300000, # 5 minutes max
description="P99 latency in milliseconds"
)
error_rate: float = Field(
ge=0,
le=1,
description="Error rate between 0 and 1"
)
throughput: float = Field(
ge=0,
description="Requests per second"
)
cpu_util: Optional[float] = Field(
default=None,
ge=0,
le=1,
description="CPU utilization (0-1)"
)
memory_util: Optional[float] = Field(
default=None,
ge=0,
le=1,
description="Memory utilization (0-1)"
)
revenue_impact: Optional[float] = Field(
default=None,
ge=0,
description="Estimated revenue impact in dollars"
)
user_impact: Optional[int] = Field(
default=None,
ge=0,
description="Number of affected users"
)
upstream_deps: List[str] = Field(
default_factory=list,
description="List of upstream dependencies"
)
downstream_deps: List[str] = Field(
default_factory=list,
description="List of downstream dependencies"
)
severity: EventSeverity = EventSeverity.LOW
# FIXED: Frozen model means no mutable fingerprint field
# Use computed_field instead
model_config = ConfigDict(
frozen=True, # Immutability for data integrity
validate_assignment=True
)
@field_validator("component")
@classmethod
def validate_component_id(cls, v: str) -> str:
"""Validate component ID format (alphanumeric and hyphens only)"""
if not re.match(r"^[a-z0-9-]+$", v):
raise ValueError(
"Component ID must contain only lowercase letters, numbers, and hyphens"
)
return v
@field_validator("upstream_deps", "downstream_deps")
@classmethod
def validate_dependency_format(cls, v: List[str]) -> List[str]:
"""Validate dependency names"""
for dep in v:
if not re.match(r"^[a-z0-9-]+$", dep):
raise ValueError(
f"Dependency '{dep}' must contain only lowercase letters, numbers, and hyphens"
)
return v
@computed_field # FIXED: Use computed_field instead of __init__ override
@property
def fingerprint(self) -> str:
"""
Generate deterministic fingerprint for event deduplication
SECURITY FIX: Changed from MD5 to SHA-256
IMPROVEMENT: Removed timestamp from fingerprint for determinism
"""
components = [
self.component,
self.service_mesh,
f"{self.latency_p99:.2f}",
f"{self.error_rate:.4f}",
f"{self.throughput:.2f}"
]
fingerprint_str = ":".join(components)
# SECURITY FIX: SHA-256 instead of MD5
return hashlib.sha256(fingerprint_str.encode()).hexdigest()
def model_post_init(self, __context) -> None:
"""Validate cross-field constraints after initialization"""
# Check for circular dependencies
upstream_set = set(self.upstream_deps)
downstream_set = set(self.downstream_deps)
circular = upstream_set & downstream_set
if circular:
raise ValueError(
f"Circular dependencies detected: {circular}. "
"A component cannot be both upstream and downstream."
)
class HealingPolicy(BaseModel):
"""
Policy definition for automated healing actions
IMPROVEMENT: Changed conditions from Dict[str, Any] to List[PolicyCondition]
"""
name: str = Field(
min_length=1,
max_length=255,
description="Policy name"
)
# FIXED: Structured conditions instead of Dict[str, Any]
conditions: List[PolicyCondition] = Field(
min_length=1,
description="List of conditions (all must match)"
)
actions: List[HealingAction] = Field(
min_length=1,
description="Actions to execute when policy triggers"
)
priority: int = Field(
ge=1,
le=5,
default=3,
description="Policy priority (1=highest, 5=lowest)"
)
cool_down_seconds: int = Field(
ge=0,
default=300,
description="Cooldown period between executions"
)
enabled: bool = Field(
default=True,
description="Whether policy is active"
)
max_executions_per_hour: int = Field(
ge=1,
default=10,
description="Rate limit: max executions per hour"
)
model_config = ConfigDict(frozen=True)
class AnomalyResult(BaseModel):
"""Result from anomaly detection"""
is_anomaly: bool
confidence: float = Field(ge=0, le=1)
anomaly_score: float = Field(ge=0, le=1)
affected_metrics: List[str] = Field(default_factory=list)
detection_timestamp: datetime = Field(
default_factory=lambda: datetime.now(timezone.utc)
)
model_config = ConfigDict(frozen=True)
class ForecastResult(BaseModel):
"""Result from predictive forecasting"""
metric: str
predicted_value: float
confidence: float = Field(ge=0, le=1)
trend: Literal["increasing", "decreasing", "stable"]
time_to_threshold: Optional[float] = Field(
default=None,
description="Minutes until threshold breach"
)
risk_level: Literal["low", "medium", "high", "critical"]
forecast_timestamp: datetime = Field(
default_factory=lambda: datetime.now(timezone.utc)
)
model_config = ConfigDict(frozen=True)