Initial upload: mockapi - OpenAPI Mock Server Generator
Some checks failed
CI / test (push) Has been cancelled
CI / build (push) Has been cancelled

This commit is contained in:
2026-03-22 21:06:23 +00:00
parent 8738e9e9c6
commit 7378dc79c1

View File

@@ -0,0 +1,204 @@
"""Random Data Generator for JSON schemas."""
import random
import uuid
from typing import Any, Dict, List, Optional
from faker import Faker
class DataGenerator:
"""Generates realistic random test data from JSON schemas."""
def __init__(self, seed: Optional[int] = None, schemas: Optional[Dict[str, Any]] = None):
"""Initialize the data generator.
Args:
seed: Random seed for reproducible data generation
schemas: Dictionary of schemas for $ref resolution
"""
self.seed = seed
self.faker = Faker()
if seed is not None:
Faker.seed(seed)
random.seed(seed)
self._schemas_dict = schemas or {}
self._faker_providers = {
"email": lambda: self.faker.email(),
"uuid": lambda: str(uuid.uuid4()),
"uri": lambda: self.faker.uri(),
"url": lambda: self.faker.url(),
"date": lambda: self.faker.date(),
"date-time": lambda: self.faker.iso8601(),
"datetime": lambda: self.faker.iso8601(),
"time": lambda: self.faker.time(),
"phone": lambda: self.faker.phone_number(),
"name": lambda: self.faker.name(),
"first_name": lambda: self.faker.first_name(),
"last_name": lambda: self.faker.last_name(),
"company": lambda: self.faker.company(),
"address": lambda: self.faker.address(),
"city": lambda: self.faker.city(),
"country": lambda: self.faker.country(),
"sentence": lambda: self.faker.sentence(),
"paragraph": lambda: self.faker.paragraph(),
"text": lambda: self.faker.text(),
"username": lambda: self.faker.user_name(),
"password": lambda: self.faker.password(),
"ip_v4": lambda: self.faker.ipv4(),
"ip_v6": lambda: self.faker.ipv6(),
"slug": lambda: self.faker.slug(),
"color": lambda: self.faker.color_name(),
"currency": lambda: self.faker.currency()[0],
"currency_code": lambda: self.faker.currency_code(),
}
def generate(self, schema: Dict[str, Any]) -> Any:
"""Generate data from a JSON schema.
Args:
schema: JSON schema definition
Returns:
Generated data matching the schema
"""
if not schema or not isinstance(schema, dict):
return None
if "$ref" in schema:
return self._resolve_ref(schema["$ref"])
schema_type = schema.get("type")
if schema_type == "null":
return None
elif schema_type == "boolean":
return self._generate_boolean(schema)
elif schema_type == "integer":
return self._generate_integer(schema)
elif schema_type == "number":
return self._generate_number(schema)
elif schema_type == "string":
return self._generate_string(schema)
elif schema_type == "array":
return self._generate_array(schema)
elif schema_type == "object":
return self._generate_object(schema)
return None
def _resolve_ref(self, ref: str) -> Any:
"""Resolve a $ref reference.
Args:
ref: Reference string like #/components/schemas/User
Returns:
Resolved schema or None
"""
parts = ref.lstrip("#/").split("/")
skip_prefixes = ["components", "schemas"]
start_idx = 0
for i, part in enumerate(parts):
if i < len(skip_prefixes) and part == skip_prefixes[i]:
start_idx = i + 1
else:
break
parts = parts[start_idx:]
if not parts:
return None
current = self._schemas_dict
for part in parts:
if isinstance(current, dict):
current = current.get(part, {})
else:
return None
if isinstance(current, dict):
return self.generate(current)
return current
def _generate_boolean(self, schema: Dict[str, Any]) -> bool:
"""Generate a random boolean."""
if "enum" in schema:
return random.choice(schema["enum"])
return random.choice([True, False])
def _generate_integer(self, schema: Dict[str, Any]) -> int:
"""Generate a random integer."""
if "enum" in schema:
return random.choice(schema["enum"])
minimum = schema.get("minimum", 0)
maximum = schema.get("maximum", 10000)
return random.randint(int(minimum), int(maximum))
def _generate_number(self, schema: Dict[str, Any]) -> float:
"""Generate a random number."""
if "enum" in schema:
return random.choice(schema["enum"])
minimum = schema.get("minimum", 0.0)
maximum = schema.get("maximum", 10000.0)
return random.uniform(float(minimum), float(maximum))
def _generate_string(self, schema: Dict[str, Any]) -> str:
"""Generate a random string."""
if "enum" in schema:
return random.choice(schema["enum"])
format_type = schema.get("format", "")
if format_type in self._faker_providers:
return self._faker_providers[format_type]()
if "pattern" in schema:
return self._generate_by_pattern(schema["pattern"])
min_length = schema.get("minLength", 1)
max_length = schema.get("maxLength", 255)
return self.faker.text(max_nb_chars=random.randint(min_length, max_length))
def _generate_by_pattern(self, pattern: str) -> str:
"""Generate a string matching a regex pattern.
This is a simplified implementation.
"""
return self.faker.word()
def _generate_array(self, schema: Dict[str, Any]) -> List[Any]:
"""Generate a random array."""
items = schema.get("items", {})
min_items = schema.get("minItems", 1)
max_items = schema.get("maxItems", 10)
count = random.randint(int(min_items), int(max_items))
return [self.generate(items) for _ in range(count)]
def _generate_object(self, schema: Dict[str, Any]) -> Dict[str, Any]:
"""Generate a random object."""
properties = schema.get("properties", {})
result = {}
for prop_name, prop_schema in properties.items():
result[prop_name] = self.generate(prop_schema)
additional_props = schema.get("additionalProperties")
if additional_props and isinstance(additional_props, dict):
min_props = schema.get("minProperties", 0)
max_props = schema.get("maxProperties", 5)
count = random.randint(int(min_props), int(max_props))
for _ in range(count):
result[self.faker.word()] = self.generate(additional_props)
return result