Files
wehub-resource-sync 4cd2d4af2b
Test Browser Use CLI Install / uv pip install (ubuntu-latest) (push) Failing after 1s
Test Browser Use CLI Install / uvx browser-use from local wheel (push) Failing after 1s
Test Browser Use CLI Install / uvx browser-use[cli] from PyPI (push) Failing after 1s
package / pip-install-on-macos-latest-py-3.11 (push) Has been skipped
package / pip-install-on-macos-latest-py-3.13 (push) Has been skipped
package / pip-install-on-ubuntu-latest-py-3.11 (push) Has been skipped
package / pip-install-on-windows-latest-py-3.13 (push) Has been skipped
cloud_evals / trigger_cloud_eval_image_build (push) Failing after 1s
docker / build_publish_image (push) Failing after 1s
Test Browser Use CLI Install / browser-use skill sync (push) Failing after 1s
lint / code-style (push) Failing after 0s
lint / type-checker (push) Failing after 1s
package / pip-build (push) Failing after 1s
lint / syntax-errors (push) Failing after 3s
package / pip-install-on-ubuntu-latest-py-3.13 (push) Has been skipped
package / pip-install-on-windows-latest-py-3.11 (push) Has been skipped
test / ${{ matrix.test_filename }} (push) Has been skipped
test / evaluate-tasks (push) Has been skipped
test / setup-chromium (push) Failing after 2s
test / find_tests (push) Failing after 2s
Test Browser Use CLI Install / uv pip install (windows-latest) (push) Has been cancelled
Test Browser Use CLI Install / uv pip install (macos-latest) (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:02:32 +08:00

141 lines
4.1 KiB
Python

"""Utilities for skill schema conversion"""
from typing import Any
from pydantic import BaseModel, Field, create_model
from browser_use.skills.views import ParameterSchema
def convert_parameters_to_pydantic(parameters: list[ParameterSchema], model_name: str = 'SkillParameters') -> type[BaseModel]:
"""Convert a list of ParameterSchema to a pydantic model for structured output
Args:
parameters: List of parameter schemas from the skill API
model_name: Name for the generated pydantic model
Returns:
A pydantic BaseModel class with fields matching the parameter schemas
"""
if not parameters:
# Return empty model if no parameters
return create_model(model_name, __base__=BaseModel)
fields: dict[str, Any] = {}
for param in parameters:
# Map parameter type string to Python types
python_type: Any = str # default
param_type = param.type
if param_type == 'string':
python_type = str
elif param_type == 'number':
python_type = float
elif param_type == 'boolean':
python_type = bool
elif param_type == 'object':
python_type = dict[str, Any]
elif param_type == 'array':
python_type = list[Any]
elif param_type == 'cookie':
python_type = str # Treat cookies as strings
# Check if parameter is required (defaults to True if not specified)
is_required = param.required if param.required is not None else True
# Make optional if not required
if not is_required:
python_type = python_type | None # type: ignore
# Create field with description
field_kwargs = {}
if param.description:
field_kwargs['description'] = param.description
if is_required:
fields[param.name] = (python_type, Field(**field_kwargs))
else:
fields[param.name] = (python_type, Field(default=None, **field_kwargs))
# Create and return the model
return create_model(model_name, __base__=BaseModel, **fields)
def convert_json_schema_to_pydantic(schema: dict[str, Any], model_name: str = 'SkillOutput') -> type[BaseModel]:
"""Convert a JSON schema to a pydantic model
Args:
schema: JSON schema dictionary (OpenAPI/JSON Schema format)
model_name: Name for the generated pydantic model
Returns:
A pydantic BaseModel class matching the schema
Note:
This is a simplified converter that handles basic types.
For complex nested schemas, consider using datamodel-code-generator.
"""
if not schema or 'properties' not in schema:
# Return empty model if no schema
return create_model(model_name, __base__=BaseModel)
fields: dict[str, Any] = {}
properties = schema.get('properties', {})
required_fields = set(schema.get('required', []))
for field_name, field_schema in properties.items():
# Get the field type
field_type_str = field_schema.get('type', 'string')
field_description = field_schema.get('description')
# Map JSON schema types to Python types
python_type: Any = str # default
if field_type_str == 'string':
python_type = str
elif field_type_str == 'number':
python_type = float
elif field_type_str == 'integer':
python_type = int
elif field_type_str == 'boolean':
python_type = bool
elif field_type_str == 'object':
python_type = dict[str, Any]
elif field_type_str == 'array':
# Check if items type is specified
items_schema = field_schema.get('items', {})
items_type = items_schema.get('type', 'string')
if items_type == 'string':
python_type = list[str]
elif items_type == 'number':
python_type = list[float]
elif items_type == 'integer':
python_type = list[int]
elif items_type == 'boolean':
python_type = list[bool]
elif items_type == 'object':
python_type = list[dict[str, Any]]
else:
python_type = list[Any]
# Make optional if not required
is_required = field_name in required_fields
if not is_required:
python_type = python_type | None # type: ignore
# Create field with description
field_kwargs = {}
if field_description:
field_kwargs['description'] = field_description
if is_required:
fields[field_name] = (python_type, Field(**field_kwargs))
else:
fields[field_name] = (python_type, Field(default=None, **field_kwargs))
# Create and return the model
return create_model(model_name, __base__=BaseModel, **fields)