Files
wehub-resource-sync e93507a09c
Lockfile supply-chain audit / lockfile supply-chain audit (push) Has been cancelled
Windows Studio GGUF CI / GPU prebuilt resolves without Visual Studio (push) Has been cancelled
Windows Studio GGUF CI / setup.ps1 unit tests (VS 2026 / CMake guard) (push) Has been cancelled
Windows Studio GGUF CI / real-VS detection (VS 2022) (push) Has been cancelled
Windows Studio GGUF CI / real-VS detection (VS 2026) (push) Has been cancelled
Windows Studio GGUF CI / VC++ runtime detect + install round-trip (windows-2025-vs2026) (push) Has been cancelled
Windows Studio GGUF CI / VC++ runtime detect + install round-trip (windows-latest) (push) Has been cancelled
Windows Studio Update CI / Studio Updating Tests (push) Has been cancelled
Wheel CI / Wheel build + content sanity + import smoke (push) Has been cancelled
Lint CI / Source lint (Python + shell + YAML + JSON + safety nets) (push) Has been cancelled
MLX CI on Mac M1 / dispatch (push) Has been cancelled
Security audit / advisory audit (pip + npm + cargo) (push) Has been cancelled
Security audit / pip scan-packages :: extras (push) Has been cancelled
Security audit / pip scan-packages :: studio (push) Has been cancelled
Security audit / pip scan-packages :: hf-stack (push) Has been cancelled
Security audit / npm scan-packages (Studio frontend tarballs) (push) Has been cancelled
Security audit / workflow-trigger lint (pull_request_target / cache-poisoning) (push) Has been cancelled
Security audit / pytest tests/security (push) Has been cancelled
Security audit / npm provenance + new install-script diff (push) Has been cancelled
Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Backend CI / (Python 3.10) (push) Has been cancelled
Backend CI / (Python 3.11) (push) Has been cancelled
Backend CI / (Python 3.12) (push) Has been cancelled
Backend CI / (Python 3.13) (push) Has been cancelled
Backend CI / Repo tests (CPU) (push) Has been cancelled
Frontend CI / Frontend build + bundle sanity (push) Has been cancelled
Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Studio GGUF CI / JSON, images (push) Has been cancelled
Mac Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Mac Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Mac Studio GGUF CI / JSON, images (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-14) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-15) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-26) (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-15-intel) (push) Has been cancelled
Mac Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Mac Studio Install Matrix CI / Install + load (macos-26-intel) (push) Has been cancelled
Mac Studio UI CI / Chat UI Tests (push) Has been cancelled
Studio Tauri CI / Tauri Linux debug build (no codesign) (push) Has been cancelled
Mac Studio Update CI / Studio Updating Tests (push) Has been cancelled
Studio UI CI / Chat UI Tests (push) Has been cancelled
Windows Studio API CI / Studio API & Auth Tests (push) Has been cancelled
Windows Studio UI CI / Chat UI Tests (push) Has been cancelled
Studio Update CI / Studio Updating Tests (push) Has been cancelled
Core / Core (HF=default + TRL=default) (push) Has been cancelled
Core / Core (HF=4.57.6 + TRL<1) (push) Has been cancelled
Core / Core (HF=latest + TRL=latest) (push) Has been cancelled
Core / llama.cpp build + smoke (push) Has been cancelled
Windows Studio GGUF CI / OpenAI, Anthropic API tests (push) Has been cancelled
Windows Studio GGUF CI / Tool calling Tests (push) Has been cancelled
Windows Studio GGUF CI / JSON, images (push) Has been cancelled
Windows Studio GGUF CI / Studio install + inference without Visual Studio (push) Has been cancelled
Studio export capability / capability (macos-latest) (push) Has been cancelled
Studio export capability / capability (ubuntu-latest) (push) Has been cancelled
Studio export capability / capability (windows-latest) (push) Has been cancelled
Cross-platform parity / parity (macos-latest) (push) Has been cancelled
Cross-platform parity / parity (windows-latest) (push) Has been cancelled
Scorecard supply-chain security / Scorecard analysis (push) Has been cancelled
Studio load-orchestrator CI / test (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:59:56 +08:00

1766 lines
70 KiB
Python

# SPDX-License-Identifier: AGPL-3.0-only
# Copyright 2026-present the Unsloth AI Inc. team. All rights reserved. See /studio/LICENSE.AGPL-3.0
"""Pydantic schemas for the Inference API."""
from __future__ import annotations
import time
import uuid
from typing import Annotated, Any, Dict, Literal, Optional, List, Union
from pydantic import (
BaseModel,
Discriminator,
Field,
Tag,
field_validator,
model_validator,
)
class LoadRequest(BaseModel):
"""Request to load a model for inference"""
model_path: str = Field(..., description = "Model identifier or local path")
native_path_lease: Optional[str] = Field(
None, description = "Frontend-visible signed native path grant"
)
hf_token: Optional[str] = Field(None, description = "HuggingFace token for gated models")
max_seq_length: int = Field(
0,
ge = 0,
le = 1048576,
description = "Maximum sequence length (0 = model default for GGUF)",
)
load_in_4bit: bool = Field(True, description = "Load model in 4-bit quantization")
is_lora: bool = Field(False, description = "Whether this is a LoRA adapter")
gguf_variant: Optional[str] = Field(
None, description = "GGUF quantization variant (e.g. 'Q4_K_M')"
)
trust_remote_code: bool = Field(
False,
description = "Allow loading models with custom code (e.g. NVIDIA Nemotron). Only enable for repos you trust.",
)
approved_remote_code_fingerprint: Optional[str] = Field(
None,
description = "sha256 fingerprint from the remote-code scan, pinning user approval of this exact custom-code version.",
)
chat_template_override: Optional[str] = Field(
None,
description = "Custom Jinja2 chat template to use instead of the model's default",
)
@field_validator("chat_template_override")
@classmethod
def normalize_blank_chat_template_override(cls, value: Optional[str]) -> Optional[str]:
if value is not None and value.strip() == "":
return None
return value
cache_type_kv: Optional[str] = Field(
None,
description = "KV cache data type for both K and V (e.g. 'f16', 'bf16', 'q8_0', 'q4_1', 'q5_1')",
)
gpu_ids: Optional[List[int]] = Field(
None,
description = "Physical GPU indices to use, for example [0, 1]. Omit or pass [] to use automatic selection. Explicit gpu_ids are unsupported when the parent CUDA_VISIBLE_DEVICES uses UUID/MIG entries. Not supported for GGUF models.",
)
speculative_type: Optional[str] = Field(
None,
description = (
"Speculative decoding mode for GGUF models. Canonical values: "
"'auto' (platform-aware: MTP on MTP GGUFs, ngram-mod fallback "
"for sub-3B), 'mtp' (force draft-mtp only on both GPU and CPU), "
"'ngram' (force ngram-mod only), 'mtp+ngram' (force "
"ngram-mod+draft-mtp chain on both platforms), 'off' (disabled). "
"Legacy values 'default' (-> auto), 'draft-mtp' (-> mtp), "
"'ngram-mod' (-> ngram), and 'ngram-simple' (kept as-is) are "
"still accepted. Ignored for non-GGUF models."
),
)
spec_draft_n_max: Optional[int] = Field(
None,
ge = 1,
le = 16,
description = (
"Max draft tokens per step for MTP speculative decoding "
"(--spec-draft-n-max). Defaults to 2 on GPU and 3 on CPU/Mac "
"when unset (upstream-bench sweet spot for dense Qwen3.6 MTP "
"quants). Only applied when speculative_type resolves to "
"'mtp' or 'mtp+ngram'."
),
)
tensor_parallel: bool = Field(
False,
description = (
"Split the model across GPUs by tensor (--split-mode tensor) "
"instead of by layer for GGUF models. Only affects multi-GPU "
"setups, where it can make generation significantly faster. "
"No effect on a single GPU. Ignored for non-GGUF models."
),
)
llama_extra_args: Optional[List[str]] = Field(
None,
description = (
"Extra arguments forwarded verbatim to llama-server for GGUF models. "
"One token per list entry, e.g. ['--top-k', '20', '--seed', '42']. "
"Studio-managed flags (model identity, port, context length, GPU placement, "
"auth, UI/server mode) are rejected. Ignored for non-GGUF models."
),
)
class UnloadRequest(BaseModel):
"""Request to unload a model"""
model_path: str = Field(..., description = "Model identifier to unload")
class ValidateModelRequest(BaseModel):
"""Check whether an identifier resolves to a ModelConfig; does NOT load weights."""
model_path: str = Field(..., description = "Model identifier or local path")
native_path_lease: Optional[str] = Field(
None, description = "Frontend-visible signed native path grant"
)
hf_token: Optional[str] = Field(None, description = "HuggingFace token for gated models")
gguf_variant: Optional[str] = Field(
None, description = "GGUF quantization variant (e.g. 'Q4_K_M')"
)
# Intended load settings so validate's coexistence check matches the follow-up
# /load; defaults preserve old behavior for callers that omit them.
max_seq_length: int = Field(0, ge = 0, le = 1048576)
load_in_4bit: bool = Field(True)
gpu_ids: Optional[List[int]] = Field(None)
include_context_length: bool = Field(
False,
description = "Also read the native context length from the local GGUF header. "
"Opt-in so the normal load preflight doesn't pay for a cache scan it doesn't need.",
)
class ValidateModelResponse(BaseModel):
"""Result of model validation.
valid == True means from_identifier() succeeded and GGUF/LoRA/vision flags are available.
"""
valid: bool = Field(..., description = "Whether the model identifier looks valid")
message: str = Field(..., description = "Human-readable validation message")
identifier: Optional[str] = Field(None, description = "Resolved model identifier")
display_name: Optional[str] = Field(None, description = "Display name derived from identifier")
is_gguf: bool = Field(False, description = "Whether this is a GGUF model (llama.cpp)")
is_lora: bool = Field(False, description = "Whether this is a LoRA adapter")
is_vision: bool = Field(False, description = "Whether this is a vision-capable model")
requires_trust_remote_code: bool = Field(
False,
description = "Whether the model defaults require trust_remote_code to be enabled for loading.",
)
requires_security_review: bool = Field(
False,
description = "Whether Hugging Face's security scan flagged unsafe files (e.g. a "
"malicious pickle), so the load is hard-blocked pending review.",
)
context_length: Optional[int] = Field(
None,
description = "Native training context length, read from the GGUF header when the file "
"is already downloaded locally; None for non-GGUF, gated, or not-yet-downloaded models.",
)
class GenerateRequest(BaseModel):
"""Request for text generation (legacy /generate/stream endpoint)"""
messages: List[dict] = Field(..., description = "Chat messages in OpenAI format")
system_prompt: str = Field("", description = "System prompt")
temperature: float = Field(0.6, ge = 0.0, le = 2.0, description = "Sampling temperature")
top_p: float = Field(0.95, ge = 0.0, le = 1.0, description = "Top-p sampling")
top_k: int = Field(20, ge = -1, le = 100, description = "Top-k sampling")
min_p: float = Field(0.0, ge = 0.0, le = 1.0, description = "Min-p sampling")
max_new_tokens: int = Field(2048, ge = 1, le = 4096, description = "Maximum tokens to generate")
repetition_penalty: float = Field(1.0, ge = 1.0, le = 2.0, description = "Repetition penalty")
presence_penalty: float = Field(0.0, ge = 0.0, le = 2.0, description = "Presence penalty")
image_base64: Optional[str] = Field(None, description = "Base64 encoded image for vision models")
class LoadResponse(BaseModel):
"""Response after loading a model"""
status: str = Field(..., description = "Load status")
model: str = Field(..., description = "Model identifier")
display_name: str = Field(..., description = "Display name of the model")
is_vision: bool = Field(False, description = "Whether model is a vision model")
is_lora: bool = Field(False, description = "Whether model is a LoRA adapter")
is_gguf: bool = Field(False, description = "Whether model is a GGUF model (llama.cpp)")
is_diffusion: bool = Field(
False, description = "Whether model is a block-diffusion model (DiffusionGemma)"
)
is_audio: bool = Field(False, description = "Whether model is a TTS audio model")
audio_type: Optional[str] = Field(None, description = "Audio codec type: snac, csm, bicodec, dac")
has_audio_input: bool = Field(False, description = "Whether model accepts audio input (ASR)")
inference: dict = Field(
..., description = "Inference parameters (temperature, top_p, top_k, min_p)"
)
requires_trust_remote_code: bool = Field(
False,
description = "Whether the model defaults require trust_remote_code to be enabled for loading.",
)
context_length: Optional[int] = Field(
None, description = "Runtime context length in tokens for the loaded model"
)
max_context_length: Optional[int] = Field(
None, description = "Maximum context length currently available on this hardware"
)
native_context_length: Optional[int] = Field(
None,
description = "Model's native context length from GGUF metadata (not capped by VRAM)",
)
supports_reasoning: bool = Field(
False,
description = "Whether model supports thinking/reasoning mode (enable_thinking or reasoning_effort)",
)
reasoning_style: Literal["enable_thinking", "reasoning_effort", "enable_thinking_effort"] = (
Field(
"enable_thinking",
description = "Reasoning control style: 'enable_thinking' (boolean), 'reasoning_effort' (low|medium|high), or 'enable_thinking_effort' (on/off gate plus an effort level, e.g. GLM-5.2 high|max)",
)
)
reasoning_effort_levels: List[str] = Field(
default_factory = list,
description = "Discrete reasoning_effort levels the template offers when reasoning_style is 'enable_thinking_effort' (e.g. ['high', 'max']); empty otherwise",
)
reasoning_always_on: bool = Field(
False,
description = "Whether reasoning is always on (hardcoded <think> tags, not toggleable)",
)
supports_preserve_thinking: bool = Field(
False,
description = "Whether the template understands the optional preserve_thinking kwarg (Qwen3.6-style)",
)
supports_tools: bool = Field(
False,
description = "Whether model supports tool calling (web search, etc.)",
)
cache_type_kv: Optional[str] = Field(
None,
description = "KV cache data type for K and V (e.g. 'f16', 'bf16', 'q8_0')",
)
chat_template: Optional[str] = Field(
None,
description = "Jinja2 chat template string (from GGUF metadata or tokenizer)",
)
speculative_type: Optional[str] = Field(
None,
description = (
"Canonical UI-facing requested speculative decoding mode "
"('auto' / 'mtp' / 'ngram' / 'mtp+ngram' / 'off' / "
"'ngram-simple'), round-tripped from the original LoadRequest "
"via _canonicalize_spec_mode. None when no model is loaded."
),
)
spec_draft_n_max: Optional[int] = Field(
None,
description = (
"Active --spec-draft-n-max for MTP speculative decoding, or "
"None when the platform default is in effect."
),
)
tensor_parallel: bool = Field(
False,
description = "Whether tensor-parallel split (--split-mode tensor) is active.",
)
class UnloadResponse(BaseModel):
"""Response after unloading a model"""
status: str = Field(..., description = "Unload status")
model: str = Field(..., description = "Model identifier that was unloaded")
class LoadProgressResponse(BaseModel):
"""Progress of the active GGUF load, sampled on demand.
Drives a real progress bar during the post-download warmup (mmap + CUDA upload)
instead of a spinner that freezes for minutes on large MoE models.
"""
phase: Optional[str] = Field(
None,
description = (
"Load phase: 'mmap' (weights paging into RAM via mmap), "
"'ready' (llama-server reported healthy), or null when no "
"load is in flight."
),
)
bytes_loaded: int = Field(
0,
description = (
"Bytes of the model already resident in the llama-server process (VmRSS on Linux)."
),
)
bytes_total: int = Field(
0,
description = "Total bytes across all GGUF shards for the active model.",
)
fraction: float = Field(0.0, description = "bytes_loaded / bytes_total, clamped to 0..1.")
class InferenceStatusResponse(BaseModel):
"""Current inference backend status"""
active_model: Optional[str] = Field(
None, description = "Currently active model display identifier"
)
model_identifier: Optional[str] = Field(
None,
description = "Loadable identifier for the active model.",
)
is_vision: bool = Field(False, description = "Whether the active model is a vision model")
is_gguf: bool = Field(False, description = "Whether the active model is a GGUF model (llama.cpp)")
is_diffusion: bool = Field(
False, description = "Whether the active model is a block-diffusion model (DiffusionGemma)"
)
gguf_variant: Optional[str] = Field(None, description = "GGUF quantization variant (e.g. Q4_K_M)")
is_audio: bool = Field(False, description = "Whether the active model is a TTS audio model")
audio_type: Optional[str] = Field(None, description = "Audio codec type: snac, csm, bicodec, dac")
has_audio_input: bool = Field(False, description = "Whether model accepts audio input (ASR)")
loading: List[str] = Field(default_factory = list, description = "Models currently being loaded")
loaded: List[str] = Field(default_factory = list, description = "Models currently loaded")
inference: Optional[Dict[str, Any]] = Field(
None, description = "Recommended inference parameters for the active model"
)
requires_trust_remote_code: bool = Field(
False,
description = "Whether the active model requires trust_remote_code to be enabled for loading.",
)
supports_reasoning: bool = Field(
False, description = "Whether the active model supports reasoning/thinking mode"
)
reasoning_style: Literal["enable_thinking", "reasoning_effort", "enable_thinking_effort"] = (
Field(
"enable_thinking",
description = "Reasoning control style: 'enable_thinking' (boolean), 'reasoning_effort' (low|medium|high), or 'enable_thinking_effort' (on/off gate plus an effort level, e.g. GLM-5.2 high|max)",
)
)
reasoning_effort_levels: List[str] = Field(
default_factory = list,
description = "Discrete reasoning_effort levels the template offers when reasoning_style is 'enable_thinking_effort' (e.g. ['high', 'max']); empty otherwise",
)
reasoning_always_on: bool = Field(
False, description = "Whether reasoning is always on (not toggleable)"
)
supports_preserve_thinking: bool = Field(
False,
description = "Whether the active model's template understands the optional preserve_thinking kwarg",
)
supports_tools: bool = Field(
False, description = "Whether the active model supports tool calling"
)
context_length: Optional[int] = Field(None, description = "Context length of the active model")
max_context_length: Optional[int] = Field(
None,
description = "Maximum context length currently available for the active model",
)
native_context_length: Optional[int] = Field(
None,
description = "Model's native context length from GGUF metadata (not capped by VRAM)",
)
cache_type_kv: Optional[str] = Field(
None,
description = "KV cache quantization dtype (e.g. 'q8_0'), or None for default",
)
chat_template: Optional[str] = Field(
None, description = "Model's default chat template (Jinja2 source), if any"
)
chat_template_override: Optional[str] = Field(
None,
description = "Active chat template override applied at load time, or None if model is using its default",
)
speculative_type: Optional[str] = Field(
None,
description = (
"Canonical UI-facing requested speculative decoding mode "
"('auto' / 'mtp' / 'ngram' / 'mtp+ngram' / 'off' / "
"'ngram-simple'), round-tripped from the original LoadRequest. "
"None when no model is loaded."
),
)
spec_draft_n_max: Optional[int] = Field(
None,
description = (
"Active --spec-draft-n-max for MTP speculative decoding, or "
"None when the platform default is in effect."
),
)
tensor_parallel: bool = Field(
False,
description = "Whether tensor-parallel split (--split-mode tensor) is active.",
)
llama_cpp_supports_mtp: bool = Field(
True,
description = (
"Whether llama.cpp supports MTP (--spec-type mtp/draft-mtp). "
"False -> recommend `unsloth studio update`."
),
)
spec_fallback_reason: Optional[str] = Field(
None,
description = (
"Why MTP was disabled on the loaded model despite being requested "
"(auto on an MTP model, or forced mtp / mtp+ngram). "
"'binary_no_mtp' / 'binary_outdated' -> a newer prebuilt would "
"re-enable it (show the update affordance); 'runtime_error' -> the "
"current build could not run it; 'drafter_not_found' -> the model's "
"separate MTP drafter could not be resolved; 'mla_mtp_disabled' -> "
"an Auto-mode policy downgrade: the model is MLA (GLM-5.2 et al.) "
"whose llama.cpp MTP path runs slower than no speculation, so Auto "
"used ngram-mod or spec-off instead -- updating won't help; choose "
"MTP in Settings (or set UNSLOTH_MLA_MTP_ENABLED=1) to force it. "
"None when MTP engaged or was not requested."
),
)
llama_cpp_prebuilt_stale: bool = Field(
False,
description = (
"Installed llama.cpp prebuilt is >=3 days behind the latest "
"release. True -> show `unsloth studio update` banner."
),
)
llama_cpp_installed_tag: Optional[str] = Field(
None,
description = "Installed llama.cpp tag, or None if unknown.",
)
llama_cpp_latest_tag: Optional[str] = Field(
None,
description = "Latest published llama.cpp tag, or None if GitHub unreachable.",
)
# =====================================================================
# OpenAI-Compatible Chat Completions Models
# =====================================================================
# ── Multimodal content parts (OpenAI vision format) ──────────────
class TextContentPart(BaseModel):
"""Text content part in a multimodal message."""
type: Literal["text"]
text: str
class ImageUrl(BaseModel):
"""Image URL object — supports data URIs and remote URLs."""
url: str = Field(..., description = "data:image/png;base64,... or https://...")
detail: Optional[Literal["auto", "low", "high", "original"]] = "auto"
class ImageContentPart(BaseModel):
"""Image content part in a multimodal message."""
type: Literal["image_url"]
image_url: ImageUrl
class InputDocumentContentPart(BaseModel):
"""Document (PDF / file) content part in a multimodal message.
Studio-normalised shape (file_data or file_url, plus optional filename/media_type).
Mapped onto Anthropic ``document`` / OpenAI ``input_file`` for vision providers;
dropped for non-vision providers.
"""
type: Literal["input_document"]
file_data: Optional[str] = Field(
None,
description = "data:<media_type>;base64,<DATA> URI for inline payloads. Either file_data or file_url must be set; otherwise the part is dropped.",
)
file_url: Optional[str] = Field(
None,
description = "Remote URL pointing to the document (https://...).",
)
filename: Optional[str] = Field(
None,
description = "Display filename, forwarded to providers as `title`/`filename`.",
)
media_type: Optional[str] = Field(
None,
description = 'Override the media type sniffed from the data URI (e.g. "application/pdf").',
)
class OpenAIReasoningContentPart(BaseModel):
"""OpenAI Responses reasoning item paired with a tool output.
Reasoning models may require this replayed before an ``image_generation_call``
id. OpenAI-only; routes strip it for other providers before proxying.
"""
type: Literal["reasoning"]
id: str = Field(..., description = "OpenAI reasoning output item id.")
summary: list[dict[str, Any]] = Field(default_factory = list)
status: Optional[Literal["in_progress", "completed", "incomplete"]] = None
class ImageGenerationCallContentPart(BaseModel):
"""OpenAI Responses image_generation call reference.
Prior ``image_generation_call`` items let follow-up prompts edit a generated
image without resending the payload. The frontend forwards it as a synthetic
assistant part; ``external_provider`` maps it back to a top-level input item.
"""
type: Literal["image_generation_call"]
id: str = Field(..., description = "OpenAI image_generation_call output item id.")
response_id: Optional[str] = Field(
None,
description = "OpenAI Responses response id to use as previous_response_id for follow-up edits.",
)
class CompactionContentPart(BaseModel):
"""Anthropic server-side compaction state, round-tripped on the next turn.
Anthropic returns a ``compaction`` block on the assistant message; the next
request must forward it back so Anthropic reuses the compaction state instead
of re-summarising. See ``external_provider._stream_anthropic`` and
https://platform.claude.com/docs/en/build-with-claude/compaction
"""
type: Literal["compaction"]
content: str = Field(
...,
description = "Anthropic-produced summary of the compacted-away conversation prefix.",
)
def _content_part_discriminator(v):
if isinstance(v, dict):
return v.get("type")
return getattr(v, "type", None)
ContentPart = Annotated[
Union[
Annotated[TextContentPart, Tag("text")],
Annotated[ImageContentPart, Tag("image_url")],
Annotated[InputDocumentContentPart, Tag("input_document")],
Annotated[OpenAIReasoningContentPart, Tag("reasoning")],
Annotated[ImageGenerationCallContentPart, Tag("image_generation_call")],
Annotated[CompactionContentPart, Tag("compaction")],
],
Discriminator(_content_part_discriminator),
]
"""Union type for multimodal content parts, discriminated by the 'type' field."""
# ── Messages ─────────────────────────────────────────────────────
class ChatMessage(BaseModel):
"""Single message in a chat conversation.
``content`` is a string or list of multimodal parts. Assistant messages with
only ``tool_calls`` may set ``content=None``. Missing ``tool_call_id`` on
``role="tool"`` is resolved at the ``ChatCompletionRequest`` layer.
"""
role: Literal["system", "user", "assistant", "tool", "developer"] = Field(
..., description = "Message role"
)
content: Optional[Union[str, list[ContentPart]]] = Field(
None, description = "Message content (string or multimodal parts)"
)
tool_call_id: Optional[str] = Field(
None,
description = "OpenAI tool-result messages: id of the tool call this result belongs to.",
)
tool_calls: Optional[list[dict]] = Field(
None,
description = "OpenAI assistant messages: structured tool calls the model decided to make.",
)
name: Optional[str] = Field(
None,
description = "OpenAI tool-result messages: name of the tool whose result this is.",
)
extra_content: Optional[dict] = Field(
None,
description = (
"Provider-specific extra fields the translator may read. "
"Gemini reads `extra_content.google.thought_signature` "
"from assistant messages to replay text-part signatures."
),
)
@model_validator(mode = "after")
def _validate_role_shape(self) -> "ChatMessage":
if self.tool_calls is not None and self.role != "assistant":
raise ValueError('"tool_calls" is only valid on role="assistant" messages.')
if self.tool_call_id is not None and self.role != "tool":
raise ValueError('"tool_call_id" is only valid on role="tool" messages.')
if self.name is not None and self.role != "tool":
raise ValueError('"name" is only valid on role="tool" messages.')
if self.role == "tool":
# tool_call_id resolution happens at ChatCompletionRequest scope.
# OpenAI accepts empty tool results (commands with no output);
# normalize to "" instead of a 400 agentic clients treat as fatal.
if self.content is None or self.content == []:
self.content = ""
elif self.role == "assistant":
# Post-Stop sentinel: collapse content="" / [] to None.
if (self.content == "" or self.content == []) and not self.tool_calls:
self.content = None
else: # "user" | "system"
if self.content is None or self.content == []:
raise ValueError(f'role="{self.role}" messages require "content".')
return self
class ThinkingConfig(BaseModel):
"""Anthropic-compatible thinking/reasoning configuration.
Use type='disabled' to turn off thinking, or type='enabled' to turn it on.
Only type is read; extra fields (e.g. budget_tokens) are ignored, since
Studio sets provider thinking budgets itself.
"""
type: Literal["disabled", "enabled"] = "disabled"
class ChatCompletionRequest(BaseModel):
"""OpenAI-compatible chat completion request.
Non-OpenAI extension fields are marked with 'x-unsloth'.
"""
# Accept unknown fields so future OpenAI fields aren't dropped before route
# code runs. Mirrors AnthropicMessagesRequest and ResponsesRequest.
model_config = {"extra": "allow"}
model: str = Field(
"default",
description = "Model identifier (informational; the active model is used)",
)
messages: list[ChatMessage] = Field(..., description = "Conversation messages")
stream: bool = Field(
False,
description = (
"Whether to stream the response via SSE. Default matches OpenAI's "
"spec (`false`); opt into streaming by sending `stream: true`."
),
)
temperature: float = Field(0.6, ge = 0.0, le = 2.0)
top_p: float = Field(0.95, ge = 0.0, le = 1.0)
max_tokens: Optional[int] = Field(
None, ge = 1, description = "Maximum tokens to generate (None = until EOS)"
)
presence_penalty: float = Field(0.0, ge = 0.0, le = 2.0, description = "Presence penalty")
stop: Optional[Union[str, list[str]]] = Field(
None,
description = "OpenAI stop sequences: a single string or list of strings at which generation halts.",
)
tools: Optional[list[dict]] = Field(
None,
description = (
"OpenAI function-tool definitions. When provided without `enable_tools=true`, "
"Studio forwards the tools to the backend so the model returns structured "
"tool_calls for the client to execute (standard OpenAI function calling)."
),
)
tool_choice: Optional[Union[str, dict]] = Field(
None,
description = (
"OpenAI tool choice: 'auto' | 'required' | 'none' | "
"{'type': 'function', 'function': {'name': ...}}"
),
)
max_completion_tokens: Optional[int] = Field(
None,
ge = 1,
description = "OpenAI upper bound on generated tokens (supersedes the deprecated max_tokens).",
)
n: Optional[int] = Field(
None,
ge = 1,
le = 128,
description = "Number of chat completion choices to generate.",
)
logprobs: Optional[bool] = Field(
None, description = "Whether to return log probabilities of the output tokens."
)
top_logprobs: Optional[int] = Field(
None,
ge = 0,
le = 20,
description = "Number of most likely tokens (0-20) to return per position; requires logprobs=true.",
)
parallel_tool_calls: Optional[bool] = Field(
None, description = "Whether to enable parallel function calling during tool use."
)
seed: Optional[int] = Field(None, description = "Best-effort deterministic sampling seed.")
stream_options: Optional[dict] = Field(
None,
description = 'Streaming options, e.g. {"include_usage": true} to emit a final usage chunk.',
)
# ── Unsloth extensions (ignored by standard OpenAI clients) ──
top_k: int = Field(20, ge = -1, le = 100, description = "[x-unsloth] Top-k sampling")
min_p: float = Field(0.01, ge = 0.0, le = 1.0, description = "[x-unsloth] Min-p sampling threshold")
repetition_penalty: float = Field(
1.0, ge = 1.0, le = 2.0, description = "[x-unsloth] Repetition penalty"
)
image_base64: Optional[str] = Field(
None, description = "[x-unsloth] Base64-encoded image for vision models"
)
audio_base64: Optional[str] = Field(
None,
description = "[x-unsloth] Base64-encoded audio (wav/mp3/ogg/flac/m4a) for audio-input models",
)
use_adapter: Optional[Union[bool, str]] = Field(
None,
description = (
"[x-unsloth] Adapter control for compare mode. "
"null = no change (default), "
"false = disable adapters (base model), "
"true = enable the current adapter, "
"string = enable a specific adapter by name."
),
)
enable_thinking: Optional[bool] = Field(
None,
description = "[x-unsloth] Enable/disable thinking/reasoning mode for supported models",
)
reasoning_effort: Optional[
Literal["none", "minimal", "low", "medium", "high", "max", "xhigh"]
] = Field(
None,
description = "[x-unsloth] Reasoning effort level ('none'|'minimal'|'low'|'medium'|'high'|'max'|'xhigh'). OpenAI `/v1/responses` accepts model-dependent subsets; Anthropic adaptive thinking uses `max` as the top tier on Claude 4.6 Opus/Sonnet (inbound `xhigh` is mapped to `max`) and `xhigh` on Claude 4.7 Opus; local Harmony/gpt-oss templates support low|medium|high.",
)
preserve_thinking: Optional[bool] = Field(
None,
description = "[x-unsloth] When true, keep historical <think> blocks from past assistant turns in the prompt (Qwen3.6 templates). Independent of enable_thinking / reasoning_effort.",
)
thinking: Optional[ThinkingConfig] = Field(
None,
description = "[Anthropic-compatible] Thinking configuration. "
"Use {type: 'disabled'} to disable thinking, {type: 'enabled'} to enable.",
)
enable_tools: Optional[bool] = Field(
None,
description = "[x-unsloth] Enable tool calling for supported models",
)
enabled_tools: Optional[list[str]] = Field(
None,
description = (
"[x-unsloth] List of enabled tool names. Local GGUF/safetensors models "
"accept ['web_search', 'python', 'terminal', 'render_html']. External "
"providers accept ['web_search', 'web_fetch', 'code_execution'] for "
"Anthropic and ['web_search', 'code_execution', 'image_generation'] for "
"OpenAI Responses. If None, all local tools are enabled and no "
"server-side tools are forwarded."
),
)
mcp_enabled: Optional[bool] = Field(
None,
description = "[x-unsloth] When true, append tools from every enabled MCP server to this request's tool list.",
)
confirm_tool_calls: Optional[bool] = Field(
None,
description = "[x-unsloth] When true, pause before each tool call and wait for the user to allow/deny it via POST /api/inference/tool-confirm.",
)
bypass_permissions: Optional[bool] = Field(
False,
description = "[x-unsloth] Bypass Permissions: when true, skip the tool-call confirmation gate AND disable the python/terminal execution sandbox (safety checks, command blocklist, resource limits). Secret env vars are still stripped. Takes precedence over confirm_tool_calls.",
)
auto_heal_tool_calls: Optional[bool] = Field(
True,
description = "[x-unsloth] Auto-detect and fix malformed tool calls from model output.",
)
nudge_tool_calls: Optional[bool] = Field(
None,
description = (
"[x-unsloth] Opt-in, non-streaming client-tool passthrough only: when the "
"model emitted a tool signal that healing could not repair, retry ONCE with "
"a short nudge appended (the retry shares the full prompt prefix, so the "
"server's KV cache is reused). Default off; UNSLOTH_TOOL_CALL_NUDGE=1 flips "
"the process default."
),
)
context_overflow: Optional[Literal["error", "truncate_middle"]] = Field(
None,
description = (
"[x-unsloth] Passthrough behavior when the prompt exceeds the real "
"context window. 'error' (default) returns a 400 with "
"code=context_length_exceeded. 'truncate_middle' drops middle "
"turn-groups (system prompt, first turn, and recent turns kept; "
"tool calls stay paired with their results) and retries."
),
)
max_tool_calls_per_message: Optional[int] = Field(
25,
ge = 0,
description = "[x-unsloth] Maximum number of tool call iterations per message (0 = disabled, 9999 = unlimited).",
)
tool_call_timeout: Optional[int] = Field(
300,
ge = 1,
description = "[x-unsloth] Timeout in seconds for each tool call execution (9999 = no limit).",
)
session_id: Optional[str] = Field(
None,
description = "[x-unsloth] Session/thread ID for scoping tool execution sandbox.",
)
rag_scope: Optional[dict] = Field(
None,
description = (
"[x-unsloth] Hidden RAG retrieval scope for the search_knowledge_base "
"tool: {kb_id?, thread_id?, default_top_k?, mode?, autoinject?, "
"autoinject_min_score?}. Candidate pools and the RRF constant come from "
"server config. The model never sees this; the server resolves which "
"documents to search."
),
)
cancel_id: Optional[str] = Field(
None,
description = "[x-unsloth] Per-request cancellation token. Frontend sends a fresh UUID per run so /inference/cancel matches one specific generation.",
)
# ── External provider routing (x-unsloth extensions) ──────────
provider_id: Optional[str] = Field(
None,
description = "[x-unsloth] Saved provider config ID. If set with encrypted_api_key, routes to external LLM.",
)
provider_type: Optional[str] = Field(
None,
description = "[x-unsloth] Provider type (e.g. 'openai', 'mistral'). Used if provider_id is not set.",
)
external_model: Optional[str] = Field(
None,
description = "[x-unsloth] Model ID at the external provider.",
)
encrypted_api_key: Optional[str] = Field(
None,
description = "[x-unsloth] RSA-encrypted, base64-encoded API key for the external provider.",
)
provider_base_url: Optional[str] = Field(
None,
description = "[x-unsloth] Override base URL for the external provider.",
)
enable_prompt_caching: Optional[Union[bool, str]] = Field(
None,
description = (
"[x-unsloth] Opt in to provider-side prompt caching. On Anthropic, "
"boolean true attaches cache_control={type:ephemeral} to the system "
"block so the static prefix is reused across turns. On OpenAI cloud, "
"caching is automatic for prompts >=1024 tokens and the boolean is "
"informational. On Gemini, pass a string cache resource name such "
"as `cachedContents/abc123` to attach `cachedContent` on the native "
"request (boolean true is a no-op on Gemini because creating the "
"cache requires a separate POST /cachedContents call). Ignored for "
"every other provider. Treated as enabled when omitted."
),
)
@field_validator("enable_prompt_caching", mode = "before")
@classmethod
def _coerce_enable_prompt_caching(cls, value: Any) -> Any:
"""Coerce JSON bool strings back to bool. Widening to Union[bool, str] for
Gemini cache names would let `"false"` read as truthy, so canonical bool
literals are coerced to keep explicit opt-outs working."""
if isinstance(value, str):
lowered = value.strip().lower()
# Match Pydantic v1's bool coercion table; anything else stays a
# string for Gemini's cachedContent resource path.
if lowered in ("true", "t", "1", "yes", "y", "on"):
return True
if lowered in ("false", "f", "0", "no", "n", "off"):
return False
return value
prompt_cache_ttl: Optional[str] = Field(
None,
description = (
"[x-unsloth] Anthropic cache_control TTL. Defaults to the 5-minute "
"ephemeral pool when omitted. Pass `1h` to write into the 1-hour "
"pool instead -- 1h writes are billed at 2x base input vs 1.25x "
"for 5m, but reads stay at 0.1x for both, so 1h pays off the "
"moment a single extra read lands more than 5 minutes after the "
"write. Only `5m` and `1h` are forwarded; any other value is "
"silently ignored downstream so a stale frontend can't make the "
"API 422 on the request. No-op on every non-Anthropic provider."
),
)
compaction_threshold: Optional[int] = Field(
None,
ge = 1,
le = 2_000_000,
description = (
"[x-unsloth] Server-side context compaction trigger, in tokens. "
"Per-provider routing:\n"
" - Anthropic (Opus 4.6+, Sonnet 4.6, Mythos preview): attaches "
"the `compact_20260112` edit and the `compact-2026-01-12` beta "
"header. The upstream floor is 50k; `_stream_anthropic` clamps "
"lower values up.\n"
" - OpenAI cloud (api.openai.com) and Azure OpenAI Foundry "
"(*.openai.azure.com): attaches "
"`context_management:[{type:'compaction', compact_threshold:N}]` "
"to /v1/responses. Effective floor is around 200k (OpenAI's "
"canonical example); values below it surface "
"`compact_threshold is not enabled` 400s upstream.\n"
"Schema floor stays at ge=1 (any positive int) so the field is a "
"silent no-op on non-cloud OpenAI-compatible bases (ollama / "
"llama.cpp / vLLM) and every non-compaction-capable provider "
"rather than returning 422 at request validation time. Per-"
"provider floors are enforced in the corresponding stream helpers."
),
)
openai_code_exec_container_id: Optional[str] = Field(
None,
description = (
"[x-unsloth] OpenAI shell-tool container id from the prior response "
"in the same chat thread. When set and `code_execution` is in "
"`enabled_tools`, the next /v1/responses call uses "
"environment.type='container_reference' so filesystem state "
"persists across turns. Unset → environment.type='container_auto' "
"and OpenAI creates a fresh container. Only meaningful for the "
"OpenAI cloud + gpt-5.5 family path; ignored otherwise."
),
)
anthropic_code_exec_container_id: Optional[str] = Field(
None,
description = (
"[x-unsloth] Anthropic code_execution container id from the prior "
"response in the same chat thread. When set and `code_execution` "
"is in `enabled_tools`, the next /v1/messages call carries a "
"top-level `container` field so the model sees filesystem state "
"from earlier turns. Unset → Anthropic auto-creates a fresh "
"container. Stale ids surface a 4xx with a `container_expired` / "
"`container_not_found` hint; the backend emits a synthetic "
"`container_invalidated` _toolEvent so the next turn falls back "
"to auto-create."
),
)
fast_mode: Optional[bool] = Field(
None,
description = (
"[x-unsloth] Anthropic fast-mode toggle. On Claude Opus 4.6 / "
"4.7 adds the `fast-mode-2026-02-01` beta header and sends "
"`speed: 'fast'` for higher OTPS at premium pricing. Silently "
"ignored on every other model + provider. See "
"https://platform.claude.com/docs/en/build-with-claude/fast-mode"
),
)
@model_validator(mode = "after")
def _resolve_missing_tool_call_ids(self) -> "ChatCompletionRequest":
"""Fill missing tool_call_id by walking back to the preceding assistant.
OpenAI / Anthropic passthrough require the result id to match the
assistant's tool_calls[].id. Prefer function.name match, else first
unconsumed tool_call; synth a random id only if none exists. A user
turn breaks the lookup.
"""
# Pre-mark explicit ids so a missing-id sibling can't steal a claimed one.
consumed: set[tuple[int, int]] = set()
def _mark_consumed(start_idx: int, tool_call_id: str) -> None:
for asst_idx in range(start_idx - 1, -1, -1):
prev = self.messages[asst_idx]
if prev.role == "user":
break
if prev.role != "assistant" or not prev.tool_calls:
continue
for tc_idx, tc in enumerate(prev.tool_calls):
if isinstance(tc, dict) and tc.get("id") == tool_call_id:
consumed.add((asst_idx, tc_idx))
return
for tool_idx, msg in enumerate(self.messages):
if msg.role == "tool" and msg.tool_call_id:
_mark_consumed(tool_idx, msg.tool_call_id)
for tool_idx, msg in enumerate(self.messages):
if msg.role != "tool" or msg.tool_call_id:
continue
picked: str | None = None
for asst_idx in range(tool_idx - 1, -1, -1):
prev = self.messages[asst_idx]
if prev.role != "assistant" or not prev.tool_calls:
if prev.role == "user":
break
continue
name_match = None
fallback = None
for tc_idx, tc in enumerate(prev.tool_calls):
if (asst_idx, tc_idx) in consumed:
continue
if not isinstance(tc, dict):
continue
tc_id = tc.get("id")
if not tc_id:
continue
function = tc.get("function")
function_name = function.get("name") if isinstance(function, dict) else None
if msg.name and function_name == msg.name:
name_match = (tc_id, asst_idx, tc_idx)
break
if fallback is None:
fallback = (tc_id, asst_idx, tc_idx)
chosen = name_match or fallback
if chosen is not None:
picked, a, t = chosen
consumed.add((a, t))
break
if picked is None:
import secrets as _secrets
picked = f"call_{_secrets.token_hex(8)}"
msg.tool_call_id = picked
return self
@model_validator(mode = "after")
def _map_thinking_to_enable_thinking(self) -> "ChatCompletionRequest":
"""Map Anthropic-style ``thinking`` parameter to internal ``enable_thinking``.
``thinking: {type: 'enabled'}`` sets ``enable_thinking = True`` and
``thinking: {type: 'disabled'}`` sets ``enable_thinking = False``.
``enable_thinking`` takes precedence when both are provided so that
callers who already use the internal field are unaffected. Invalid
``thinking`` shapes are rejected at validation time (422).
"""
if self.thinking is not None and self.enable_thinking is None:
self.enable_thinking = self.thinking.type == "enabled"
return self
class ToolConfirmRequest(BaseModel):
session_id: Optional[str] = None
approval_id: Optional[str] = None
decision: Literal["allow", "deny"] = "deny"
# ── OpenAI shell-tool container management ─────────────────────
class OpenAIContainerRequest(BaseModel):
"""Shared body for the OpenAI container endpoints (list / create / delete).
Carries the encrypted API key + base URL so the route can decrypt and proxy
to the user's account, keeping the key off backend persistent storage.
"""
encrypted_api_key: str = Field(
...,
description = "[x-unsloth] RSA-encrypted, base64-encoded OpenAI API key.",
)
provider_base_url: Optional[str] = Field(
None,
description = "[x-unsloth] OpenAI base URL. Only api.openai.com is supported; non-cloud bases are rejected with 400.",
)
class CreateOpenAIContainerBody(OpenAIContainerRequest):
name: str = Field(
...,
min_length = 1,
max_length = 256,
description = "Human-readable container name. Surfaces in the picker UI.",
)
ttl_minutes: int = Field(
20,
ge = 1,
le = 20,
description = (
"Idle-timeout TTL the new container will inherit (anchor="
"last_active_at). OpenAI hard-caps this at 20 minutes and "
"rejects larger values with integer_above_max_value."
),
)
class DeleteOpenAIContainerBody(OpenAIContainerRequest):
container_id: str = Field(
...,
description = "OpenAI container id (cntr_...) to delete.",
)
class OpenAIContainerSummary(BaseModel):
"""One row from GET /v1/containers, reshaped for the UI."""
id: str
name: Optional[str] = None
created_at: Optional[int] = None
last_active_at: Optional[int] = None
expires_after_minutes: Optional[int] = None
status: Optional[str] = None
class ListOpenAIContainersResponse(BaseModel):
containers: list[OpenAIContainerSummary]
# ── Streaming response chunks ────────────────────────────────────
class ChoiceDelta(BaseModel):
"""Delta content for a streaming chunk."""
role: Optional[str] = None
content: Optional[str] = None
reasoning_content: Optional[str] = None
tool_calls: Optional[list[dict]] = None
OpenAIFinishReason = Literal["stop", "length", "tool_calls", "content_filter", "function_call"]
class ChunkChoice(BaseModel):
"""A single choice in a streaming chunk."""
index: int = 0
delta: ChoiceDelta
finish_reason: Optional[OpenAIFinishReason] = None
logprobs: Optional[dict] = None
class ChatCompletionChunk(BaseModel):
"""A single SSE chunk in OpenAI streaming format."""
id: str = Field(default_factory = lambda: f"chatcmpl-{uuid.uuid4().hex[:12]}")
object: Literal["chat.completion.chunk"] = "chat.completion.chunk"
created: int = Field(default_factory = lambda: int(time.time()))
model: str = "default"
choices: list[ChunkChoice]
usage: Optional[CompletionUsage] = None
timings: Optional[dict] = None
# ── Non-streaming response ───────────────────────────────────────
class CompletionMessage(BaseModel):
"""The assistant's complete response message."""
role: Literal["assistant"] = "assistant"
# ``None`` on a pure tool-call turn (OpenAI content=null); string otherwise.
content: Optional[str] = None
refusal: Optional[str] = None
reasoning_content: Optional[str] = None
tool_calls: Optional[list[dict]] = None
class CompletionChoice(BaseModel):
"""A single choice in a non-streaming response."""
index: int = 0
message: CompletionMessage
finish_reason: OpenAIFinishReason = "stop"
logprobs: Optional[dict] = None
class CompletionUsage(BaseModel):
"""Token usage statistics (approximate)."""
prompt_tokens: int = 0
completion_tokens: int = 0
total_tokens: int = 0
prompt_tokens_details: Optional[dict] = Field(
default_factory = lambda: {"cached_tokens": 0, "audio_tokens": 0}
)
completion_tokens_details: Optional[dict] = Field(
default_factory = lambda: {
"reasoning_tokens": 0,
"audio_tokens": 0,
"accepted_prediction_tokens": 0,
"rejected_prediction_tokens": 0,
}
)
class ChatCompletion(BaseModel):
"""Non-streaming chat completion response."""
id: str = Field(default_factory = lambda: f"chatcmpl-{uuid.uuid4().hex[:12]}")
object: Literal["chat.completion"] = "chat.completion"
created: int = Field(default_factory = lambda: int(time.time()))
model: str = "default"
choices: list[CompletionChoice]
usage: CompletionUsage = Field(default_factory = CompletionUsage)
system_fingerprint: Optional[str] = None
# =====================================================================
# OpenAI Responses API Models (/v1/responses)
# =====================================================================
# ── Request models ──────────────────────────────────────────────
class ResponsesInputTextPart(BaseModel):
"""Text content part in a Responses API message (type=input_text)."""
type: Literal["input_text"]
text: str
class ResponsesInputImagePart(BaseModel):
"""Image content part in a Responses API message (type=input_image)."""
type: Literal["input_image"]
image_url: str = Field(..., description = "data:image/png;base64,... or https://...")
detail: Optional[Literal["auto", "low", "high", "original"]] = "auto"
class ResponsesOutputTextPart(BaseModel):
"""Assistant ``output_text`` content part replayed on subsequent turns.
Clients looping on a stateless Responses endpoint round-trip prior assistant
messages as ``output_text`` parts; we keep the text and ignore the
annotations/logprobs when flattening into Chat Completions.
"""
type: Literal["output_text"]
text: str
annotations: Optional[list] = None
logprobs: Optional[list] = None
model_config = {"extra": "allow"}
class ResponsesUnknownContentPart(BaseModel):
"""Catch-all for unmodelled content-part types.
Keeps validation green for newer part types (e.g. ``input_audio``); skipped
during normalisation rather than rejected with a 422.
"""
type: str
model_config = {"extra": "allow"}
ResponsesContentPart = Union[
ResponsesInputTextPart,
ResponsesInputImagePart,
ResponsesOutputTextPart,
ResponsesUnknownContentPart,
]
class ResponsesInputMessage(BaseModel):
"""A single message in the Responses API input array."""
type: Optional[Literal["message"]] = None
role: Literal["system", "user", "assistant", "developer"]
content: Union[str, list[ResponsesContentPart]]
# Codex attaches a `phase` field to assistant messages and requires clients
# to preserve it across turns; we round-trip it, llama-server ignores it.
model_config = {"extra": "allow"}
class ResponsesFunctionCallInputItem(BaseModel):
"""A prior assistant function_call replayed in a multi-turn Responses input.
Tool calls are top-level input items (not nested), correlated by ``call_id``.
"""
type: Literal["function_call"]
id: Optional[str] = Field(None, description = "Item id assigned by the server (e.g. fc_...)")
call_id: str = Field(
...,
description = "Correlation id matching a function_call_output on the next turn.",
)
name: str
arguments: str = Field(..., description = "JSON string of the arguments the model produced.")
status: Optional[Literal["in_progress", "completed", "incomplete"]] = None
class ResponsesFunctionCallOutputInputItem(BaseModel):
"""A tool result supplied by the client for a prior function_call.
Replaces Chat Completions' ``role="tool"`` message. Correlated to its
originating call by ``call_id``.
"""
type: Literal["function_call_output"]
id: Optional[str] = None
call_id: str
output: Union[str, list] = Field(
..., description = "String or content-array result of the tool call."
)
status: Optional[Literal["in_progress", "completed", "incomplete"]] = None
class ResponsesUnknownInputItem(BaseModel):
"""Catch-all for unmodelled Responses input item types.
Covers ``reasoning`` items and future types. Dropped during normalisation
(GGUFs can't consume them), but kept in the union so unrelated turns don't 422.
"""
type: str
model_config = {"extra": "allow"}
def _responses_input_item_discriminator(v: Any) -> str:
"""Route a Responses input item to the correct tagged variant.
Pydantic's smart-union matching misreports errors when a strict-``Literal``
variant doesn't match; an explicit discriminator makes routing deterministic
and falls through to the catch-all.
"""
if isinstance(v, dict):
t = v.get("type")
r = v.get("role")
else:
t = getattr(v, "type", None)
r = getattr(v, "role", None)
if t == "function_call":
return "function_call"
if t == "function_call_output":
return "function_call_output"
if r is not None or t == "message":
return "message"
return "unknown"
ResponsesInputItem = Annotated[
Union[
Annotated[ResponsesInputMessage, Tag("message")],
Annotated[ResponsesFunctionCallInputItem, Tag("function_call")],
Annotated[ResponsesFunctionCallOutputInputItem, Tag("function_call_output")],
Annotated[ResponsesUnknownInputItem, Tag("unknown")],
],
Discriminator(_responses_input_item_discriminator),
]
class ResponsesFunctionTool(BaseModel):
"""Flat function-tool definition for the Responses API request.
Unlike Chat Completions (nested under a ``"function"`` key), this uses a flat
shape with ``type``/``name``/``description``/``parameters``/``strict`` at top level.
"""
type: Literal["function"]
name: str
description: Optional[str] = None
parameters: Optional[dict] = None
strict: Optional[bool] = None
class ResponsesRequest(BaseModel):
"""OpenAI Responses API request."""
model: str = Field("default", description = "Model identifier")
input: Union[str, list[ResponsesInputItem]] = Field(
default = [],
description = "Input text or list of messages / function_call / function_call_output items",
)
instructions: Optional[str] = Field(None, description = "System / developer instructions")
temperature: Optional[float] = Field(None, ge = 0.0, le = 2.0)
top_p: Optional[float] = Field(None, ge = 0.0, le = 1.0)
max_output_tokens: Optional[int] = Field(None, ge = 1)
stream: bool = Field(False, description = "Whether to stream the response via SSE")
# OpenAI function-calling fields, forwarded via the Chat Completions
# pass-through. Plain list so built-in tool shapes round-trip without
# validation errors; the translator forwards only ``type=="function"`` entries.
tools: Optional[list[dict]] = Field(
None,
description = (
"Responses-shape function tool definitions. Entries with "
'`type="function"` are translated to the Chat Completions nested '
"shape before being forwarded to llama-server; other tool types "
"(built-in web_search, file_search, mcp, ...) are accepted for SDK "
"compatibility but ignored on the llama-server passthrough."
),
)
tool_choice: Optional[Any] = Field(
None,
description = (
"'auto' | 'required' | 'none' | {'type': 'function', 'name': ...} — "
"the Responses-shape forcing object is translated to the Chat "
"Completions nested shape internally."
),
)
parallel_tool_calls: Optional[bool] = None
previous_response_id: Optional[str] = None
store: Optional[bool] = None
metadata: Optional[dict] = None
truncation: Optional[Any] = None
user: Optional[str] = None
text: Optional[Any] = None
reasoning: Optional[Any] = None
model_config = {"extra": "allow"}
# ── Response models ─────────────────────────────────────────────
class ResponsesOutputTextContent(BaseModel):
"""A text content block inside an output message."""
type: Literal["output_text"] = "output_text"
text: str
annotations: list = Field(default_factory = list)
class ResponsesOutputMessage(BaseModel):
"""An output message in the Responses API response."""
type: Literal["message"] = "message"
id: str = Field(default_factory = lambda: f"msg_{uuid.uuid4().hex[:12]}")
status: Literal["completed", "in_progress"] = "completed"
role: Literal["assistant"] = "assistant"
content: list[ResponsesOutputTextContent] = Field(default_factory = list)
class ResponsesOutputReasoningContent(BaseModel):
"""A reasoning text content block inside a reasoning output item."""
type: Literal["reasoning_text"] = "reasoning_text"
text: str
class ResponsesOutputReasoning(BaseModel):
"""A top-level reasoning output item in the Responses API response."""
type: Literal["reasoning"] = "reasoning"
id: str = Field(default_factory = lambda: f"rs_{uuid.uuid4().hex[:12]}")
status: Literal["completed", "in_progress", "incomplete"] = "completed"
summary: list = Field(default_factory = list)
content: Optional[list[ResponsesOutputReasoningContent]] = None
class ResponsesOutputFunctionCall(BaseModel):
"""A function-call output item in the Responses API response.
Each tool call is its own top-level ``output`` item, correlated via ``call_id``.
"""
type: Literal["function_call"] = "function_call"
id: str = Field(default_factory = lambda: f"fc_{uuid.uuid4().hex[:12]}")
call_id: str
name: str
arguments: str = Field(..., description = "JSON string of the arguments the model produced.")
status: Literal["completed", "in_progress", "incomplete"] = "completed"
ResponsesOutputItem = Union[
ResponsesOutputMessage,
ResponsesOutputReasoning,
ResponsesOutputFunctionCall,
]
class ResponsesUsage(BaseModel):
"""Token usage for a Responses API response (input_tokens, not prompt_tokens)."""
input_tokens: int = 0
output_tokens: int = 0
total_tokens: int = 0
class ResponsesResponse(BaseModel):
"""Top-level Responses API response object."""
id: str = Field(default_factory = lambda: f"resp_{uuid.uuid4().hex[:12]}")
object: Literal["response"] = "response"
created_at: int = Field(default_factory = lambda: int(time.time()))
status: Literal["completed", "in_progress", "failed"] = "completed"
model: str = "default"
output: list[ResponsesOutputItem] = Field(default_factory = list)
usage: ResponsesUsage = Field(default_factory = ResponsesUsage)
error: Optional[Any] = None
incomplete_details: Optional[Any] = None
instructions: Optional[str] = None
metadata: dict = Field(default_factory = dict)
temperature: Optional[float] = None
top_p: Optional[float] = None
max_output_tokens: Optional[int] = None
previous_response_id: Optional[str] = None
text: Optional[Any] = None
tool_choice: Optional[Any] = None
tools: list = Field(default_factory = list)
truncation: Optional[Any] = None
# =====================================================================
# Anthropic Messages API Models (/v1/messages)
# =====================================================================
# ── Request models ─────────────────────────────────────────────
class AnthropicTextBlock(BaseModel):
type: Literal["text"]
text: str
class AnthropicImageSource(BaseModel):
type: Literal["base64", "url"]
media_type: Optional[str] = None
data: Optional[str] = None
url: Optional[str] = None
class AnthropicImageBlock(BaseModel):
type: Literal["image"]
source: AnthropicImageSource
class AnthropicToolUseBlock(BaseModel):
type: Literal["tool_use"]
id: str
name: str
input: dict
class AnthropicToolResultBlock(BaseModel):
type: Literal["tool_result"]
tool_use_id: str
content: Union[str, list] = ""
@field_validator("content", mode = "before")
@classmethod
def _coerce_null_content(cls, v):
# Some clients send null content for an empty tool result; the str|list
# union would 400 on it, so treat null as "".
return "" if v is None else v
# Block types the converter translates explicitly. Anything else (thinking /
# redacted_thinking, a provider block a resumed session replays, or a future type)
# is accepted as an unknown block and dropped by the converter, rather than 400-ing
# the whole request on strict validation.
_KNOWN_ANTHROPIC_BLOCK_TYPES = frozenset({"text", "image", "tool_use", "tool_result"})
class AnthropicUnknownBlock(BaseModel):
type: str
model_config = {"extra": "allow"}
@field_validator("type")
@classmethod
def _only_unknown_types(cls, v):
# Known types parse as their typed models above (so a malformed known block
# still fails cleanly); this fallback only catches the rest.
if v in _KNOWN_ANTHROPIC_BLOCK_TYPES:
raise ValueError("known block type handled by its typed model")
return v
AnthropicContentBlock = Union[
AnthropicTextBlock,
AnthropicImageBlock,
AnthropicToolUseBlock,
AnthropicToolResultBlock,
AnthropicUnknownBlock,
]
def _anthropic_content_to_system_text(content: Any) -> str:
"""Convert misplaced system message content into Anthropic system text."""
if content is None: # null content must not become the literal "None"
return ""
if isinstance(content, str):
return content
if isinstance(content, list):
parts: list[str] = []
for block in content:
if isinstance(block, dict) and block.get("type") == "text":
text = block.get("text")
if isinstance(text, str):
parts.append(text)
continue
if block is not None:
parts.append(str(block))
return "\n\n".join(part for part in parts if part)
return str(content)
def _merge_anthropic_system(system: Any, additions: list[str]) -> Any:
if not additions:
return system
addition_blocks = [{"type": "text", "text": text} for text in additions if text.strip()]
if not addition_blocks:
return system
if system is None:
return addition_blocks[0]["text"] if len(addition_blocks) == 1 else addition_blocks
if isinstance(system, str):
return "\n\n".join([system, *[block["text"] for block in addition_blocks]])
if isinstance(system, list):
return [*system, *addition_blocks]
return system
class AnthropicMessage(BaseModel):
role: Literal["user", "assistant"]
content: Union[str, list[AnthropicContentBlock]]
@model_validator(mode = "before")
@classmethod
def _normalize_content(cls, data):
# Role-aware leniency that never silently drops real user input:
# - assistant: a resumed tool-only turn's null content -> "" (str|list would
# 400 on null; "" keeps the converter's `for block in content` safe).
# Unknown blocks (thinking / future types) validate via
# AnthropicUnknownBlock and are dropped by the converter.
# - user: keep strict. Null user content stays None so str|list rejects it
# (400) rather than forwarding an empty prompt; and reject block types the
# converter cannot translate, since it silently skips unknown user blocks
# -- a user turn made only of them would validate yet send no content
# (silent data loss).
if not isinstance(data, dict):
return data
content = data.get("content")
if data.get("role") == "assistant":
# Coerce only an explicit null (resumed tool-only turn). A missing
# content key stays malformed so the required-field check still 400s.
if "content" in data and content is None:
return {**data, "content": ""}
return data
if isinstance(content, list):
for block in content:
btype = (
block.get("type") if isinstance(block, dict) else getattr(block, "type", None)
)
# Guard the value: a non-string type is unsupported too, and a
# membership test on an unhashable value would raise TypeError
# (escaping as a 500 instead of a clean 400).
if not isinstance(btype, str) or btype not in _KNOWN_ANTHROPIC_BLOCK_TYPES:
raise ValueError(f"unsupported content block type {btype!r} in a user message")
return data
class AnthropicTool(BaseModel):
# Client tools have input_schema; server tools may only have type/name.
type: Optional[str] = None
name: Optional[str] = None
description: Optional[str] = None
input_schema: Optional[dict] = None
model_config = {"extra": "allow"}
class AnthropicMessagesRequest(BaseModel):
model: str = "default"
max_tokens: Optional[int] = None
messages: list[AnthropicMessage]
system: Optional[Union[str, list]] = None
tools: Optional[list[AnthropicTool]] = None
tool_choice: Optional[Any] = None
stream: bool = False
temperature: Optional[float] = None
top_p: Optional[float] = None
top_k: Optional[int] = None
stop_sequences: Optional[list[str]] = None
metadata: Optional[dict] = None
# [x-unsloth] extensions mirroring the OpenAI endpoint convenience fields
min_p: Optional[float] = Field(
None, ge = 0.0, le = 1.0, description = "[x-unsloth] Min-p sampling threshold"
)
repetition_penalty: Optional[float] = Field(
None, ge = 1.0, le = 2.0, description = "[x-unsloth] Repetition penalty"
)
presence_penalty: Optional[float] = Field(
None, ge = 0.0, le = 2.0, description = "[x-unsloth] Presence penalty"
)
enable_tools: Optional[bool] = None
enabled_tools: Optional[list[str]] = None
session_id: Optional[str] = None
cancel_id: Optional[str] = None
bypass_permissions: Optional[bool] = Field(
False,
description = "[x-unsloth] Bypass Permissions: when true, disable the python/terminal execution sandbox (safety checks, command blocklist, resource limits) for server-side tool calls. Secret env vars are still stripped. Declared explicitly (not relied on via extra='allow') so omitted requests default to False instead of raising AttributeError.",
)
auto_heal_tool_calls: Optional[bool] = Field(
True,
description = "[x-unsloth] Auto-detect and fix malformed tool calls from model output (mirrors the Chat Completions field; applies to the client-tool passthrough).",
)
nudge_tool_calls: Optional[bool] = Field(
None,
description = "[x-unsloth] Opt-in, non-streaming only: retry once with a nudge when the model emitted a tool signal healing could not repair (mirrors the Chat Completions field).",
)
model_config = {"extra": "allow"}
@model_validator(mode = "before")
@classmethod
def normalize_system_messages(cls, data: Any) -> Any:
if not isinstance(data, dict):
return data
messages = data.get("messages")
if not isinstance(messages, list):
return data
normalized_messages: list[Any] = []
system_additions: list[str] = []
changed = False
for message in messages:
if isinstance(message, dict) and message.get("role") == "system":
system_additions.append(
_anthropic_content_to_system_text(message.get("content", ""))
)
changed = True
continue
normalized_messages.append(message)
if not changed:
return data
normalized = dict(data)
normalized["messages"] = normalized_messages
normalized["system"] = _merge_anthropic_system(normalized.get("system"), system_additions)
return normalized
# ── Response models ────────────────────────────────────────────
class AnthropicUsage(BaseModel):
input_tokens: int = 0
cache_creation_input_tokens: int = 0
cache_read_input_tokens: int = 0
output_tokens: int = 0
class AnthropicResponseTextBlock(BaseModel):
type: Literal["text"] = "text"
text: str
class AnthropicResponseToolUseBlock(BaseModel):
type: Literal["tool_use"] = "tool_use"
id: str
name: str
input: dict
AnthropicResponseBlock = Union[AnthropicResponseTextBlock, AnthropicResponseToolUseBlock]
class AnthropicMessagesResponse(BaseModel):
id: str = Field(default_factory = lambda: f"msg_{uuid.uuid4().hex[:24]}")
type: Literal["message"] = "message"
role: Literal["assistant"] = "assistant"
content: list[AnthropicResponseBlock] = Field(default_factory = list)
model: str = "default"
stop_reason: Optional[str] = None
stop_sequence: Optional[str] = None
usage: AnthropicUsage = Field(default_factory = AnthropicUsage)