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mediaproc/core/schema/models/detect_jobs.py
2026-03-27 04:23:21 -03:00

178 lines
4.7 KiB
Python

"""
Detection Job and Checkpoint Schema Definitions
Source of truth for detection pipeline job tracking and stage checkpoints.
Follows the TranscodeJob/ChunkJob pattern.
"""
from dataclasses import dataclass, field
from datetime import datetime
from enum import Enum
from typing import Any, Dict, List, Optional
from uuid import UUID
class DetectJobStatus(str, Enum):
PENDING = "pending"
RUNNING = "running"
PAUSED = "paused"
COMPLETED = "completed"
FAILED = "failed"
CANCELLED = "cancelled"
class RunType(str, Enum):
INITIAL = "initial"
REPLAY = "replay"
RETRY = "retry"
@dataclass
class DetectJob:
"""
A detection pipeline job.
Each invocation of the pipeline (initial run, replay, retry) creates a DetectJob.
Jobs for the same source video are linked via parent_job_id.
"""
id: UUID
# Input
source_asset_id: UUID
video_path: str
profile_name: str = "soccer_broadcast"
# Run lineage
parent_job_id: Optional[UUID] = None # links all runs for the same source
run_type: RunType = RunType.INITIAL
replay_from_stage: Optional[str] = None # null for initial runs
config_overrides: Dict[str, Any] = field(default_factory=dict)
# Status
status: DetectJobStatus = DetectJobStatus.PENDING
current_stage: Optional[str] = None
progress: float = 0.0
error_message: Optional[str] = None
# Results summary
total_detections: int = 0
brands_found: int = 0
cloud_llm_calls: int = 0
estimated_cost_usd: float = 0.0
# Worker tracking
celery_task_id: Optional[str] = None
priority: int = 0
# Timestamps
created_at: Optional[datetime] = None
started_at: Optional[datetime] = None
completed_at: Optional[datetime] = None
@dataclass
class Timeline:
"""
The frame sequence from a source video.
Independent of stages — exists before any stage runs.
Stages annotate the timeline, they don't own it.
Frames are stored in MinIO as JPEGs.
"""
id: UUID
source_asset_id: Optional[UUID] = None
source_video: str = ""
profile_name: str = ""
fps: float = 2.0
# Frame metadata (images in MinIO, metadata here)
frames_prefix: str = "" # s3: timelines/{id}/frames/
frames_manifest: Dict[int, str] = field(default_factory=dict) # seq → s3 key
frames_meta: List[Dict[str, Any]] = field(default_factory=list)
created_at: Optional[datetime] = None
@dataclass
class Checkpoint:
"""
A snapshot of pipeline state on a timeline.
Stage outputs stored as JSONB — each stage serializes to JSON,
the checkpoint stores it without knowing the shape.
parent_id forms a tree: multiple children from the same parent
= different config tries from the same starting point.
"""
id: UUID
timeline_id: UUID
parent_id: Optional[UUID] = None # null = root checkpoint
# Stage outputs — JSONB per stage, opaque to the checkpoint layer
stage_outputs: Dict[str, Any] = field(default_factory=dict)
# Config that produced this checkpoint
config_overrides: Dict[str, Any] = field(default_factory=dict)
# Pipeline state
stats: Dict[str, Any] = field(default_factory=dict)
# Scenario bookmark
is_scenario: bool = False
scenario_label: str = ""
created_at: Optional[datetime] = None
class BrandSource(str, Enum):
"""How a brand was first identified."""
OCR = "ocr"
VLM = "local_vlm"
CLOUD = "cloud_llm"
MANUAL = "manual" # user-added via UI
@dataclass
class KnownBrand:
"""
A brand discovered or registered in the system.
Global — not per-source. Accumulates across all pipeline runs.
Aliases enable fuzzy matching without re-escalating to VLM.
"""
id: UUID
canonical_name: str # normalized display name
aliases: List[str] = field(default_factory=list) # known spellings/variants
first_source: BrandSource = BrandSource.OCR
total_occurrences: int = 0
confirmed: bool = False # manually confirmed by user
created_at: Optional[datetime] = None
updated_at: Optional[datetime] = None
@dataclass
class SourceBrandSighting:
"""
A brand seen in a specific source (video/asset).
Per-source session cache — avoids re-escalating the same brand
on subsequent frames or re-runs of the same source.
"""
id: UUID
source_asset_id: UUID # the video this sighting belongs to
brand_id: UUID # FK to KnownBrand
brand_name: str # denormalized for fast lookup
first_seen_timestamp: float = 0.0
last_seen_timestamp: float = 0.0
occurrences: int = 0
detection_source: BrandSource = BrandSource.OCR
avg_confidence: float = 0.0
created_at: Optional[datetime] = None