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Stirling-PDF/engine/scripts/generate_tool_models.py
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2026-05-01 10:19:38 +01:00

287 lines
11 KiB
Python

#!/usr/bin/env python3
"""Generate Python tool models from the Java backend's OpenAPI spec (SwaggerDoc.json).
Uses datamodel-code-generator to convert OpenAPI request schemas to Pydantic models.
Run via:
task engine:tool-models
"""
from __future__ import annotations
import argparse
import json
from collections.abc import Iterable
from dataclasses import dataclass
from pathlib import Path
from typing import Any
from datamodel_code_generator import InputFileType, PythonVersion, generate
from datamodel_code_generator.enums import DataModelType
from datamodel_code_generator.format import Formatter
from referencing import Registry, Resource
from referencing.jsonschema import DRAFT202012
# Fields inherited from PDFFile base class — not tool parameters.
BASE_CLASS_FIELDS = frozenset({"fileInput", "fileId"})
_ENGINE_ROOT = Path(__file__).resolve().parents[1]
_FILE_HEADER = (
"# AUTO-GENERATED FILE. DO NOT EDIT.\n"
"# Generated by scripts/generate_tool_models.py from Java OpenAPI spec (SwaggerDoc.json).\n"
"# ruff: noqa: E501"
)
@dataclass
class ToolSpec:
path: str
enum_name: str
class_name: str
@dataclass
class DiscoveryResult:
tools: list[ToolSpec]
combined_schema: dict[str, Any]
class ToolDiscovery:
"""Discovers tool endpoints from an OpenAPI spec and builds a combined JSON Schema."""
# Namespaces exposed to the LLM as callable tools. Largely matches ``InternalApiClient.java``.
# Note: ``/api/v1/filter/`` is intentionally excluded because those APIs are for pipeline processing,
# not tool execution.
ALLOWED_PATH_PREFIXES = (
"/api/v1/general/",
"/api/v1/misc/",
"/api/v1/security/",
"/api/v1/convert/",
)
def __init__(self, spec: dict[str, Any]):
resource = Resource.from_contents(spec, default_specification=DRAFT202012)
self.resolver = Registry().with_resource("", resource).resolver()
self.spec = spec
def discover(self) -> DiscoveryResult:
tools: list[ToolSpec] = []
defs: dict[str, Any] = {}
used_enum: set[str] = set()
used_class: set[str] = set()
for path, path_item in sorted(self.spec.get("paths", {}).items()):
if "{" in path or not any(path.startswith(p) for p in self.ALLOWED_PATH_PREFIXES):
continue
body_props = self._get_request_properties(path_item) or {}
query_props = self._get_query_parameters(path_item)
# Body properties win on name collision — body is the canonical param source
# for the existing tools; query params are additive.
properties = {**query_props, **body_props}
if not properties:
continue
clean_props = self._filter_properties(properties)
if not clean_props:
continue
enum_name = _deduplicate(_path_to_enum_name(path), used_enum)
class_name = _deduplicate(_path_to_class_name(path), used_class)
defs[class_name] = {"type": "object", "properties": clean_props}
tools.append(ToolSpec(path, enum_name, class_name))
self._inline_component_refs(defs)
combined_schema: dict[str, Any] = {
"$defs": defs,
"anyOf": [{"$ref": f"#/$defs/{t.class_name}"} for t in tools],
}
return DiscoveryResult(tools=tools, combined_schema=combined_schema)
def _inline_component_refs(self, defs: dict[str, Any]) -> None:
"""Pull every component transitively referenced from tool param schemas into ``defs``
and rewrite the refs from ``#/components/schemas/X`` to ``#/$defs/X``.
Without this, nested refs (e.g. ``list[RedactionArea]``) are unresolvable when the
combined schema is handed to datamodel-code-generator, producing ``RootModel[Any]``
shells that downstream JSON-schema strict-mode transformers reject.
"""
schemas = self.spec.get("components", {}).get("schemas", {})
queue: list[object] = list(defs.values())
while queue:
for name in _rewrite_refs(queue.pop()):
if name not in defs and name in schemas:
defs[name] = schemas[name]
queue.append(schemas[name])
def _resolve_ref(self, schema: dict[str, Any]) -> dict[str, Any]:
if "$ref" in schema:
return self.resolver.lookup(schema["$ref"]).contents
return schema
def _get_request_properties(self, path_item: dict[str, Any]) -> dict[str, Any] | None:
post = path_item.get("post")
if not post:
return None
content = post.get("requestBody", {}).get("content", {})
for media_type in ("multipart/form-data", "application/json"):
if media_type in content:
schema = content[media_type].get("schema")
if schema:
return self._resolve_ref(schema).get("properties")
return None
def _get_query_parameters(self, path_item: dict[str, Any]) -> dict[str, Any]:
"""Extract query parameters as a property map — AI tools expose their main
inputs (e.g. ``prompt``, ``tolerance``) here rather than in the request body,
and a handful of converters use query strings alongside multipart files.
"""
post = path_item.get("post") or {}
props: dict[str, Any] = {}
for param in post.get("parameters") or []:
if param.get("in") != "query":
continue
name = param.get("name")
schema = param.get("schema")
if not name or not schema:
continue
resolved = dict(self._resolve_ref(schema))
if "description" not in resolved and param.get("description"):
resolved["description"] = param["description"]
props[name] = resolved
return props
def _filter_properties(self, properties: dict[str, Any]) -> dict[str, Any]:
"""Remove base-class fields and binary upload fields, resolving any $refs."""
clean: dict[str, Any] = {}
for name, prop in properties.items():
if name in BASE_CLASS_FIELDS:
continue
prop = self._resolve_ref(prop)
if prop.get("type") == "string" and prop.get("format") == "binary":
continue
clean[name] = prop
return clean
_COMPONENT_REF_PREFIX = "#/components/schemas/"
def _rewrite_refs(obj: object) -> Iterable[str]:
"""Rewrite ``#/components/schemas/X`` refs to ``#/$defs/X`` in place, yielding each
component name encountered so the caller can pull referenced schemas into ``$defs``.
"""
if isinstance(obj, dict):
ref = obj.get("$ref")
if isinstance(ref, str) and ref.startswith(_COMPONENT_REF_PREFIX):
name = ref.removeprefix(_COMPONENT_REF_PREFIX)
obj["$ref"] = "#/$defs/" + name
yield name
for value in obj.values():
yield from _rewrite_refs(value)
elif isinstance(obj, list):
for value in obj:
yield from _rewrite_refs(value)
def _tool_name_segments(path: str) -> str:
"""Extract a descriptive name from the endpoint path.
Converters use two segments (e.g. /api/v1/convert/cbr/pdf → cbr-to-pdf).
Other tools use the last segment (e.g. /api/v1/misc/compress-pdf → compress-pdf).
"""
parts = path.rstrip("/").split("/")
if "/api/v1/convert/" in path and len(parts) >= 6:
return f"{parts[-2]}-to-{parts[-1]}"
return parts[-1]
def _path_to_enum_name(path: str) -> str:
return _tool_name_segments(path).replace("-", "_").upper()
def _path_to_class_name(path: str) -> str:
return "".join(p.capitalize() for p in _tool_name_segments(path).split("-")) + "Params"
def _deduplicate(name: str, used: set[str]) -> str:
"""Return name, appending 2, 3, ... if already in used. Adds result to used."""
candidate = name
n = 2
while candidate in used:
candidate = f"{name}{n}"
n += 1
used.add(candidate)
return candidate
def generate_models_code(combined_schema: dict[str, Any]) -> str:
"""Run datamodel-code-generator once on the combined schema."""
code = generate(
input_=json.dumps(combined_schema, sort_keys=True),
input_file_type=InputFileType.JsonSchema,
output_model_type=DataModelType.PydanticV2BaseModel,
target_python_version=PythonVersion.PY_313,
snake_case_field=True,
base_class="stirling.models.base.ApiModel",
field_constraints=True,
no_alias=True,
set_default_enum_member=True,
additional_imports=["enum.StrEnum"],
enable_version_header=False,
custom_file_header=_FILE_HEADER,
formatters=[Formatter.RUFF_FORMAT, Formatter.RUFF_CHECK],
settings_path=_ENGINE_ROOT / "pyproject.toml",
)
return str(code or "")
def write_output(out_path: Path, tools: list[ToolSpec], models_code: str) -> None:
union_lines = ["type ParamToolModel = ("]
for i, tool in enumerate(tools):
prefix = " | " if i > 0 else " "
union_lines.append(f"{prefix}{tool.class_name}")
union_lines.append(")")
union_lines.append("type ParamToolModelType = type[ParamToolModel]")
enum_lines = [
"class ToolEndpoint(StrEnum):",
*(f' {t.enum_name} = "{t.path}"' for t in tools),
]
ops_lines = [
"OPERATIONS: dict[ToolEndpoint, ParamToolModelType] = {",
*(f" ToolEndpoint.{t.enum_name}: {t.class_name}," for t in tools),
"}",
]
parts = [models_code, "\n", *union_lines, "\n", *enum_lines, "\n", *ops_lines, ""]
out_path.write_text("\n".join(parts), encoding="utf-8")
def main() -> None:
parser = argparse.ArgumentParser(description="Generate Python tool models from Java OpenAPI spec")
parser.add_argument("--spec", required=True, help="Path to SwaggerDoc.json")
parser.add_argument("--output", required=True, help="Path to output tool_models.py")
args = parser.parse_args()
spec_path = Path(args.spec)
if not spec_path.exists():
raise SystemExit(f"OpenAPI spec not found at {spec_path}\nRun 'task engine:tool-models' to generate it.")
output_path = Path(args.output)
with open(spec_path, encoding="utf-8") as f:
spec = json.load(f)
result = ToolDiscovery(spec).discover()
models_code = generate_models_code(result.combined_schema)
write_output(output_path, result.tools, models_code)
print(f"Generated {len(result.tools)} tool models from {spec_path.name}")
for tool in result.tools:
print(f" {tool.enum_name}: {tool.path} -> {tool.class_name}")
if __name__ == "__main__":
main()