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Python

"""YAML loader for model catalog files under ``application/core/models/``.
Each ``*.yaml`` file declares one provider's static model catalog. Files
are validated with Pydantic at load time; any parse, schema, or alias
error aborts startup with the offending file path in the message.
For most providers, one YAML maps to one catalog. The
``openai_compatible`` provider is special: each YAML file represents a
distinct logical endpoint (Mistral, Together, Ollama, ...) with its own
``api_key_env`` and ``base_url``. The loader returns a flat list so the
registry can distinguish multiple files with the same ``provider:`` value.
"""
from __future__ import annotations
import logging
from pathlib import Path
from typing import Dict, List, Optional, Sequence
import yaml
from pydantic import BaseModel, ConfigDict, Field, field_validator
from application.core.model_settings import (
AvailableModel,
ModelCapabilities,
ModelProvider,
)
logger = logging.getLogger(__name__)
BUILTIN_MODELS_DIR = Path(__file__).parent / "models"
DEFAULTS_FILENAME = "_defaults.yaml"
# Accepted reasoning_effort values across the OpenAI reasoning lineup. This
# is the union of all models; the set a given model actually accepts is a
# subset (older o-series take low/medium/high only; GPT-5.5 adds xhigh;
# none/minimal are GPT-5-era additions). Validated at YAML load so a typo
# aborts boot rather than surfacing as a provider 400.
VALID_REASONING_EFFORTS = frozenset(
{"none", "minimal", "low", "medium", "high", "xhigh"}
)
# Accepted api_flavor values: which OpenAI wire protocol a model speaks.
VALID_API_FLAVORS = frozenset({"chat_completions", "responses"})
class _DefaultsFile(BaseModel):
"""Schema for ``_defaults.yaml``. Currently just attachment aliases."""
model_config = ConfigDict(extra="forbid")
attachment_aliases: Dict[str, List[str]] = Field(default_factory=dict)
class _CapabilityFields(BaseModel):
"""Capability fields shared between provider ``defaults:`` and per-model overrides.
All fields are optional so a per-model override can selectively replace
a single field from the provider-level defaults.
"""
model_config = ConfigDict(extra="forbid")
supports_tools: Optional[bool] = None
supports_structured_output: Optional[bool] = None
supports_streaming: Optional[bool] = None
attachments: Optional[List[str]] = None
context_window: Optional[int] = None
input_cost_per_token: Optional[float] = None
output_cost_per_token: Optional[float] = None
reasoning_effort: Optional[str] = None
api_flavor: Optional[str] = None
@field_validator("reasoning_effort")
@classmethod
def _valid_reasoning_effort(cls, v: Optional[str]) -> Optional[str]:
if v is not None and v not in VALID_REASONING_EFFORTS:
valid = ", ".join(sorted(VALID_REASONING_EFFORTS))
raise ValueError(
f"reasoning_effort must be one of [{valid}], got {v!r}"
)
return v
@field_validator("api_flavor")
@classmethod
def _valid_api_flavor(cls, v: Optional[str]) -> Optional[str]:
if v is not None and v not in VALID_API_FLAVORS:
valid = ", ".join(sorted(VALID_API_FLAVORS))
raise ValueError(
f"api_flavor must be one of [{valid}], got {v!r}"
)
return v
class _ModelEntry(_CapabilityFields):
"""Schema for one model row inside a YAML's ``models:`` list."""
id: str
display_name: Optional[str] = None
description: str = ""
enabled: bool = True
base_url: Optional[str] = None
upstream_model_id: Optional[str] = None
aliases: List[str] = Field(default_factory=list)
@field_validator("id")
@classmethod
def _id_nonempty(cls, v: str) -> str:
if not v or not v.strip():
raise ValueError("model id must be a non-empty string")
return v
class _ProviderFile(BaseModel):
"""Schema for one ``<provider>.yaml`` catalog file."""
model_config = ConfigDict(extra="forbid")
provider: str
defaults: _CapabilityFields = Field(default_factory=_CapabilityFields)
models: List[_ModelEntry] = Field(default_factory=list)
# openai_compatible metadata. Optional for other providers.
display_provider: Optional[str] = None
api_key_env: Optional[str] = None
base_url: Optional[str] = None
class ProviderCatalog(BaseModel):
"""One YAML file's parsed contents, ready for the registry.
For most providers, multiple catalogs with the same ``provider`` get
merged later by the registry. The ``openai_compatible`` provider is
the exception: each catalog is treated as a distinct endpoint, with
its own ``api_key_env`` and ``base_url``.
"""
provider: str
models: List[AvailableModel]
source_path: Optional[Path] = None
display_provider: Optional[str] = None
api_key_env: Optional[str] = None
base_url: Optional[str] = None
model_config = ConfigDict(arbitrary_types_allowed=True)
class ModelYAMLError(ValueError):
"""Raised when a model YAML fails parsing, schema, or alias validation."""
def _expand_attachments(
attachments: Sequence[str], aliases: Dict[str, List[str]], source: str
) -> List[str]:
"""Resolve attachment shorthands (``image``, ``pdf``) to MIME types.
Raw MIME-typed entries (containing ``/``) pass through unchanged.
Unknown aliases raise ``ModelYAMLError``.
"""
expanded: List[str] = []
seen: set = set()
for entry in attachments:
if "/" in entry:
if entry not in seen:
expanded.append(entry)
seen.add(entry)
continue
if entry not in aliases:
valid = ", ".join(sorted(aliases.keys())) or "<none defined>"
raise ModelYAMLError(
f"{source}: unknown attachment alias '{entry}'. "
f"Valid aliases: {valid}. "
"(Or use a raw MIME type like 'image/png'.)"
)
for mime in aliases[entry]:
if mime not in seen:
expanded.append(mime)
seen.add(mime)
return expanded
def _load_defaults(directory: Path) -> Dict[str, List[str]]:
"""Load ``_defaults.yaml`` from ``directory`` if it exists."""
path = directory / DEFAULTS_FILENAME
if not path.exists():
return {}
try:
raw = yaml.safe_load(path.read_text(encoding="utf-8")) or {}
except yaml.YAMLError as e:
raise ModelYAMLError(f"{path}: invalid YAML: {e}") from e
try:
parsed = _DefaultsFile.model_validate(raw)
except Exception as e:
raise ModelYAMLError(f"{path}: schema error: {e}") from e
return parsed.attachment_aliases
def _resolve_provider_enum(name: str, source: Path) -> ModelProvider:
try:
return ModelProvider(name)
except ValueError as e:
valid = ", ".join(p.value for p in ModelProvider)
raise ModelYAMLError(
f"{source}: unknown provider '{name}'. Valid: {valid}"
) from e
def _build_model(
entry: _ModelEntry,
defaults: _CapabilityFields,
provider: ModelProvider,
aliases: Dict[str, List[str]],
source: Path,
display_provider: Optional[str] = None,
) -> AvailableModel:
"""Merge defaults + per-model overrides into a final ``AvailableModel``."""
def pick(field_name: str, fallback):
v = getattr(entry, field_name)
if v is not None:
return v
d = getattr(defaults, field_name)
if d is not None:
return d
return fallback
raw_attachments = entry.attachments
if raw_attachments is None:
raw_attachments = defaults.attachments
if raw_attachments is None:
raw_attachments = []
expanded = _expand_attachments(
raw_attachments, aliases, f"{source} [model={entry.id}]"
)
caps = ModelCapabilities(
supports_tools=pick("supports_tools", False),
supports_structured_output=pick("supports_structured_output", False),
supports_streaming=pick("supports_streaming", True),
supported_attachment_types=expanded,
context_window=pick("context_window", 128000),
input_cost_per_token=pick("input_cost_per_token", None),
output_cost_per_token=pick("output_cost_per_token", None),
reasoning_effort=pick("reasoning_effort", None),
api_flavor=pick("api_flavor", "chat_completions"),
)
return AvailableModel(
id=entry.id,
provider=provider,
display_name=entry.display_name or entry.id,
description=entry.description,
capabilities=caps,
enabled=entry.enabled,
base_url=entry.base_url,
upstream_model_id=entry.upstream_model_id,
display_provider=display_provider,
)
def _load_one_yaml(
path: Path, aliases: Dict[str, List[str]]
) -> ProviderCatalog:
try:
raw = yaml.safe_load(path.read_text(encoding="utf-8")) or {}
except yaml.YAMLError as e:
raise ModelYAMLError(f"{path}: invalid YAML: {e}") from e
try:
parsed = _ProviderFile.model_validate(raw)
except Exception as e:
raise ModelYAMLError(f"{path}: schema error: {e}") from e
provider_enum = _resolve_provider_enum(parsed.provider, path)
models = [
_build_model(
entry,
parsed.defaults,
provider_enum,
aliases,
path,
display_provider=parsed.display_provider,
)
for entry in parsed.models
]
return ProviderCatalog(
provider=parsed.provider,
models=models,
source_path=path,
display_provider=parsed.display_provider,
api_key_env=parsed.api_key_env,
base_url=parsed.base_url,
)
_BUILTIN_ALIASES_CACHE: Optional[Dict[str, List[str]]] = None
def builtin_attachment_aliases() -> Dict[str, List[str]]:
"""Return the built-in attachment alias map from ``_defaults.yaml``.
Cached after first read so repeat calls are cheap.
"""
global _BUILTIN_ALIASES_CACHE
if _BUILTIN_ALIASES_CACHE is None:
_BUILTIN_ALIASES_CACHE = _load_defaults(BUILTIN_MODELS_DIR)
return _BUILTIN_ALIASES_CACHE
def resolve_attachment_alias(alias: str) -> List[str]:
"""Resolve a single attachment alias (e.g. ``"image"``) to its
canonical MIME-type list. Raises ``ModelYAMLError`` if unknown.
"""
aliases = builtin_attachment_aliases()
if alias not in aliases:
valid = ", ".join(sorted(aliases.keys())) or "<none defined>"
raise ModelYAMLError(
f"Unknown attachment alias '{alias}'. Valid: {valid}"
)
return list(aliases[alias])
def expand_attachments_lenient(
attachments: Sequence[str], source: str
) -> List[str]:
"""Expand attachment aliases to MIME types, tolerating unknowns.
Mirrors ``_expand_attachments`` but logs+skips unknown aliases
rather than raising. Used for runtime call sites (BYOM registry
load) where an operator-side alias-map edit must not drop the
entire user's BYOM layer; the strict raise still happens at the
API validation boundary.
"""
aliases = builtin_attachment_aliases()
expanded: List[str] = []
seen: set = set()
for entry in attachments:
if "/" in entry:
if entry not in seen:
expanded.append(entry)
seen.add(entry)
continue
mime_list = aliases.get(entry)
if mime_list is None:
logger.warning(
"%s: skipping unknown attachment alias %r", source, entry,
)
continue
for mime in mime_list:
if mime not in seen:
expanded.append(mime)
seen.add(mime)
return expanded
def load_model_yamls(directories: Sequence[Path]) -> List[ProviderCatalog]:
"""Load every ``*.yaml`` file (excluding ``_defaults.yaml``) under each
directory in order and return a flat list of catalogs.
Caller is responsible for merging multiple catalogs that target the
same provider plugin. The flat-list shape lets ``openai_compatible``
keep each file separate (one logical endpoint per file).
When the same model ``id`` appears in more than one YAML across the
directory list, a warning is logged. Order in the returned list
preserves load order, so the registry's "later wins" merge gives the
later directory's definition.
"""
catalogs: List[ProviderCatalog] = []
seen_ids: Dict[str, Path] = {}
aliases: Dict[str, List[str]] = {}
for d in directories:
if not d or not d.exists():
continue
aliases.update(_load_defaults(d))
for d in directories:
if not d or not d.exists():
continue
for path in sorted(d.glob("*.yaml")):
if path.name == DEFAULTS_FILENAME:
continue
catalog = _load_one_yaml(path, aliases)
catalogs.append(catalog)
for m in catalog.models:
prior = seen_ids.get(m.id)
if prior is not None and prior != path:
logger.warning(
"Model id %r redefined: %s overrides %s (later wins)",
m.id,
path,
prior,
)
seen_ids[m.id] = path
return catalogs