Backend — live runner - New `POST /api/documents/:id/rag` endpoint. Loads `document_json` from SQLite, reconstructs the DoclingDocument, wraps the model id in `ModelIdentifier(ollama_name=...)`, and calls `agent._rag_loop` off-thread (blocking sync call). Returns a `RAGResult` in the shape the existing v1 import path already consumes, so the frontend overlay is fully reused. - `_rag_loop` is private upstream; we call it because `run()` wraps the answer in a synthetic DoclingDocument and drops the iteration trace. - Settings: `RAG_ENABLED`, `OLLAMA_HOST`, `RAG_MODEL_ID`. Router mounts unconditionally; handler 503s when the flag is off or deps aren't installed. `rag_available` surfaced in `/api/health`. - Maps known docling-agent bugs to readable HTTP errors: 502 with "the model couldn't produce a parseable answer" when `_rag_loop` raises `IndexError` from `find_json_dicts([])[0]` after 3 + 3 rejection-sampling retries (model-dependent). - Tests: 11 cases (flag off, query empty, no analysis, happy path, model_id wrap, Ollama env, IndexError → 502, other errors → 500, deps missing → 503). Backend — bug fix - Default `BATCH_PAGE_SIZE` flipped from `10` to `0` to match the dataclass default. The old default silently dropped `document_json` (see `domain/services.merge_results`) for any doc > 10 pages, which broke the reasoning tunnel. Set `BATCH_PAGE_SIZE>0` explicitly on memory-constrained deploys if batching is wanted. Frontend — runner UX - `features/reasoning/api.ts:runReasoning()` — POST wrapper. - `RunReasoningDialog.vue` — query textarea + optional model_id override. Blocks close while running, 20-40s loading state, synthesises a sidecar-shaped envelope so the panel surfaces query + model the same way an imported trace would. - `ReasoningWorkspace.vue` — primary "Run reasoning" button; "Import trace" relegated to ghost secondary. - Store: `runDialogOpen`, `running`, `setRunning`. Frontend — answer polish - Answer rendered through `marked` + DOMPurify (models emit markdown lists; `pre-wrap` rendered them as plain "1. …" strings). - Dedicated answer block with orange border, "ANSWER" label, "Copy" button (clipboard + "Copied ✓" feedback). - IterationCard: drop the duplicate `response` block (the main answer is authoritative); style reasons equal to `"fallback"` (docling-agent `select_from_failure` placeholder) as italic muted "— no structured rationale". Frontend — node details contents - Clicking a SectionHeader (or any node with compound children) lists its contained elements in `NodeDetailsPanel` under a new "Contents" block. Children come from the same `parentMap` used for Cytoscape compound parenting (explicit PARENT_OF + synthetic section scope), inverted once and cached as a computed. - Click a child row → pan the viewport to it + swap the selection. Housekeeping - `cytoscape-navigator` removed from `package-lock.json` (follow-up from the minimap removal in the previous commit).
217 lines
6.5 KiB
Python
217 lines
6.5 KiB
Python
"""Pydantic schemas — API request/response DTOs.
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All responses use camelCase serialization to match the existing frontend contract
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(originally served by the Spring Boot backend).
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"""
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from __future__ import annotations
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from datetime import datetime
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from pydantic import AliasChoices, BaseModel, ConfigDict, Field, field_validator
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def _to_camel(name: str) -> str:
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parts = name.split("_")
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return parts[0] + "".join(w.capitalize() for w in parts[1:])
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class _CamelModel(BaseModel):
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"""Base model that serializes field names to camelCase."""
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model_config = ConfigDict(
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alias_generator=_to_camel,
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populate_by_name=True,
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serialize_by_alias=True,
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)
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class HealthResponse(_CamelModel):
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status: str
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version: str
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engine: str
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deployment_mode: str
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database: str
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max_page_count: int | None = None
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max_file_size_mb: int | None = None
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ingestion_available: bool = False
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# True when the live-reasoning runner (docling-agent + Ollama) is
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# available: RAG_ENABLED=true AND deps importable. Doesn't imply Ollama
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# itself is reachable — that's checked per-call.
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rag_available: bool = False
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class DocumentResponse(_CamelModel):
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id: str
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filename: str
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status: str = "uploaded" # Document status (always "uploaded" for now)
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content_type: str | None = None
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file_size: int | None = None
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page_count: int | None = None
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created_at: str | datetime
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class AnalysisResponse(_CamelModel):
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id: str
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document_id: str = ""
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document_filename: str | None = None
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status: str
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content_markdown: str | None = None
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content_html: str | None = None
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pages_json: str | None = None
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chunks_json: str | None = None
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has_document_json: bool = False
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error_message: str | None = None
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progress_current: int | None = None
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progress_total: int | None = None
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started_at: str | datetime | None = None
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completed_at: str | datetime | None = None
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created_at: str | datetime
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class PipelineOptionsRequest(BaseModel):
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"""Docling pipeline configuration options."""
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model_config = ConfigDict(populate_by_name=True)
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do_ocr: bool = Field(default=True, validation_alias=AliasChoices("do_ocr", "doOcr"))
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do_table_structure: bool = Field(
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default=True, validation_alias=AliasChoices("do_table_structure", "doTableStructure")
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)
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table_mode: str = Field(
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default="accurate", validation_alias=AliasChoices("table_mode", "tableMode")
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)
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do_code_enrichment: bool = Field(
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default=False, validation_alias=AliasChoices("do_code_enrichment", "doCodeEnrichment")
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)
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do_formula_enrichment: bool = Field(
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default=False, validation_alias=AliasChoices("do_formula_enrichment", "doFormulaEnrichment")
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)
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do_picture_classification: bool = Field(
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default=False,
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validation_alias=AliasChoices("do_picture_classification", "doPictureClassification"),
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)
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do_picture_description: bool = Field(
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default=False,
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validation_alias=AliasChoices("do_picture_description", "doPictureDescription"),
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)
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generate_picture_images: bool = Field(
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default=False,
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validation_alias=AliasChoices("generate_picture_images", "generatePictureImages"),
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)
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generate_page_images: bool = Field(
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default=False, validation_alias=AliasChoices("generate_page_images", "generatePageImages")
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)
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images_scale: float = Field(
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default=1.0, validation_alias=AliasChoices("images_scale", "imagesScale")
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)
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@field_validator("table_mode")
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@classmethod
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def validate_table_mode(cls, v: str) -> str:
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if v not in ("accurate", "fast"):
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raise ValueError('table_mode must be "accurate" or "fast"')
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return v
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@field_validator("images_scale")
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@classmethod
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def validate_images_scale(cls, v: float) -> float:
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if v <= 0 or v > 10:
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raise ValueError("images_scale must be between 0 (exclusive) and 10")
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return v
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class ChunkingOptionsRequest(BaseModel):
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"""Docling chunking configuration options."""
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model_config = ConfigDict(populate_by_name=True)
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chunker_type: str = Field(
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default="hybrid", validation_alias=AliasChoices("chunker_type", "chunkerType")
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)
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max_tokens: int = Field(default=512, validation_alias=AliasChoices("max_tokens", "maxTokens"))
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merge_peers: bool = Field(
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default=True, validation_alias=AliasChoices("merge_peers", "mergePeers")
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)
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repeat_table_header: bool = Field(
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default=True, validation_alias=AliasChoices("repeat_table_header", "repeatTableHeader")
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)
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@field_validator("chunker_type")
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@classmethod
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def validate_chunker_type(cls, v: str) -> str:
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if v not in ("hybrid", "hierarchical"):
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raise ValueError('chunker_type must be "hybrid" or "hierarchical"')
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return v
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@field_validator("max_tokens")
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@classmethod
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def validate_max_tokens(cls, v: int) -> int:
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if v < 64 or v > 8192:
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raise ValueError("max_tokens must be between 64 and 8192")
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return v
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class ChunkBboxResponse(_CamelModel):
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page: int
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bbox: list[float]
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class ChunkResponse(_CamelModel):
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text: str
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headings: list[str] = []
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source_page: int | None = None
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token_count: int = 0
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bboxes: list[ChunkBboxResponse] = []
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modified: bool = False
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deleted: bool = False
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class UpdateChunkTextRequest(BaseModel):
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text: str
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class CreateAnalysisRequest(BaseModel):
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documentId: str = Field(validation_alias=AliasChoices("documentId", "document_id"))
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pipelineOptions: PipelineOptionsRequest | None = Field(
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default=None, validation_alias=AliasChoices("pipelineOptions", "pipeline_options")
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)
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chunkingOptions: ChunkingOptionsRequest | None = Field(
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default=None, validation_alias=AliasChoices("chunkingOptions", "chunking_options")
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)
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class RechunkRequest(BaseModel):
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chunkingOptions: ChunkingOptionsRequest = Field(
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validation_alias=AliasChoices("chunkingOptions", "chunking_options")
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)
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class IngestionResponse(_CamelModel):
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doc_id: str
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chunks_indexed: int
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embedding_dimension: int
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class IngestionStatusResponse(_CamelModel):
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available: bool
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opensearch_connected: bool = False
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class SearchResultItem(_CamelModel):
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"""A single search result with content and metadata."""
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doc_id: str
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filename: str
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content: str
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chunk_index: int
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page_number: int
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score: float
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headings: list[str] = []
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highlights: list[str] = []
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class SearchResponse(_CamelModel):
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results: list[SearchResultItem]
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total: int
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query: str
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